big is a Python package of small functions and classes that aren't big enough to get a package of their own. It's zillions of useful little bits of Python code I always want to have handy.
For years, I've copied-and-pasted all my little helper functions between projects--we've all done it. But now I've finally taken the time to consolidate all those useful little functions into one big package--no more copy-and-paste, I just install one package and I'm ready to go. And, since it's a public package, you can use 'em too!
Not only that, but I've taken my time and re-thought and retooled a lot of this code. All the difficult-to-use, overspecialized, cheap hacks I've lived with for years have been upgraded with elegant, intuitive APIs and dazzling functionality. big is chock full of the sort of little functions and classes we've all hacked together a million times--only with all the API gotchas fixed, and thoroughly tested with 100% coverage. It's the code you would have written... if only you had the time. It's a real pleasure to use!
big requires Python 3.6 or newer. Its only dependencies
is python-dateutil
, and that's optional. The current version is 0.12.4.
Think big!
It's true that much of the code in big is short, and one might reasonably have the reaction "that's so short, it's easier to write it from scratch every time I need it than remember where it is and how to call it". I still see value in these short functions in big because:
- everything in big is tested,
- every interface in big has been thoughtfully considered and designed.
For example, consider
StateManager
.
If you remove the comments and documentation, it's actually pretty
short--easily less than a hundred lines. I myself have written
state machines from scratch using a similar approach many times.
They're easy to write. So why bother using StateManager
?
Why not roll your own each time?
Because StateManager
not only supports all the features you need--consider
accessor
and
dispatch
--its
API is carefully designed to help prevent bugs and logical errors.
In considering the predecessor of StateManager
for inclusion in big,
I realized that if an "observer" initiated a state transition, it would produce
a blurry mess of observer callbacks and entered and exited states,
executed in a confusing order. So StateManager
in big simply
prevents you from executing state transitions in observers.
To use big, just install the big package (and its dependencies) from PyPI using your favorite Python package manager.
Once big is installed, you can simply import it. However, the top-level big package doesn't contain anything but a version number. Internally big is broken up into submodules, aggregated together loosely by problem domain, and you can selectively import just the functions you want. For example, if you only want to use the text functions, just import the text submodule:
import big.text
If you'd prefer to import everything all at once, simply import the big.all module. This one module imports all the other modules, and imports all their symbols too. So, one convenient way to work with big is this:
import big.all as big
That will make every symbol defined in big accessible from the big
object. For example, if you want to use
multisplit
,
you can access it with just big.multisplit
.
You can also use big.all with import *
:
from big.all import *
but that's up to you.
big is licensed using the MIT license. You're free to use it and even ship it in your own programs, as long as you leave my copyright notice on the source code.
Although big is crammed full of fabulous code, a few of its subsystems rise above the rest. If you're curious what big might do for you, here are the five things in big I'm proudest of:
- The
multi-
family of string functions big.state
- Bound inner classes
- Enhanced
TopologicalSorter
lines
and lines modifier functions
And here are five little functions/classes I use all the time:
-
accessor(attribute='state', state_manager='state_manager')
combine_splits(s, *split_arrays)
datetime_ensure_timezone(d, timezone)
datetime_set_timezone(d, timezone)
Delimiter(close, *, escape='', multiline=True, quoting=False)
dispatch(state_manager='state_manager', *, prefix='', suffix='')
encode_strings(o, *, encoding='ascii')
Event(scheduler, event, time, priority, sequence)
fgrep(path, text, *, encoding=None, enumerate=False, case_insensitive=False)
gently_title(s, *, apostrophes=None, double_quotes=None)
get_float(o, default=_sentinel)
get_int_or_float(o, default=_sentinel)
grep(path, pattern, *, encoding=None, enumerate=False, flags=0)
int_to_words(i, *, flowery=True, ordinal=False)
LineInfo.clip_leading(line, s)
LineInfo.clip_trailing(line, s)
lines_convert_tabs_to_spaces(li)
lines_filter_line_comment_lines(li, comment_markers)
lines_containing(li, s, *, invert=False)
lines_grep(li, pattern, *, invert=False, flags=0, match='match')
lines_rstrip(li, separators=None)
lines_sort(li, *, key=None, reverse=False)
lines_strip(li, separators=None)
lines_strip_line_comments(li, line_comment_markers, *, quotes=(), escape='\\', multiline_quotes=())
multipartition(s, separators, count=1, *, reverse=False, separate=True)
multisplit(s, separators, *, keep=False, maxsplit=-1, reverse=False, separate=False, strip=False)
multistrip(s, separators, left=True, right=True)
normalize_whitespace(s, separators=None, replacement=None)
parse_timestamp_3339Z(s, *, timezone=None)
PushbackIterator(iterable=None)
PushbackIterator.next(default=None)
re_partition(text, pattern, count=1, *, flags=0, reverse=False)
re_rpartition(text, pattern, count=1, *, flags=0)
reversed_re_finditer(pattern, string, flags=0)
Scheduler(regulator=default_regulator)
Scheduler.schedule(o, time, *, absolute=False, priority=DEFAULT_PRIORITY)
split_delimiters(s, delimiters={...}, *, state=())
split_quoted_strings(s, quotes=('"', "'"), *, escape='\\', multiline_quotes=(), state='')
split_text_with_code(s, *, tab_width=8, allow_code=True, code_indent=4, convert_tabs_to_spaces=True)
split_title_case(s, *, split_allcaps=True)
StateManager(state, *, on_enter='on_enter', on_exit='on_exit', state_class=None)
timestamp_3339Z(t=None, want_microseconds=None)
timestamp_human(t=None, want_microseconds=None)
TopologicalSorter.remove(node)
TopologicalSorter.View.close()
TopologicalSorter.View.done(*nodes)
TopologicalSorter.View.print(print=print)
TopologicalSorter.View.ready()
TopologicalSorter.View.reset()
translate_filename_to_exfat(s)
unicode_linebreaks_without_crlf
-
The
multi-
family of string functionsWhitespace and line-breaking characters in Python and big
-
This submodule doesn't define any of its own symbols. Instead, it imports every other submodule in big, and uses
import *
to import every symbol from every other submodule, too. Every public symbol in big is available inbig.all
.
-
Class decorators that implement bound inner classes. See the Bound inner classes deep-dive for more information.
-
Class decorator for an inner class. When accessing the inner class through an instance of the outer class, "binds" the inner class to the instance. This changes the signature of the inner class's
__init__
fromdef __init__(self, *args, **kwargs):`
to
def __init__(self, outer, *args, **kwargs):
where
outer
is the instance of the outer class.Compare this to functions:
- If you put a function inside a class, and access it through an instance I of that class, the function becomes a method. When you call the method, I is automatically passed in as the first argument.
- If you put a class inside a class,
and access it through an instance of that class,
the class becomes a bound inner class. When
you call the bound inner class, I is automatically
passed in as the second argument to
__init__
, afterself
.
Note that this has an implication for all subclasses. If class B is decorated with
BoundInnerClass
, and class S is a subclass of B, such thatissubclass(
S,
B)
, class S must be decorated with eitherBoundInnerClass
orUnboundInnerClass
.
-
Class decorator for an inner class that prevents binding the inner class to an instance of the outer class.
If class B is decorated with
BoundInnerClass
, and class S is a subclass of B, such thatissubclass(
S,
B)
returnsTrue
, class S must be decorated with eitherBoundInnerClass
orUnboundInnerClass
.
-
Functions for working with builtins. (Named
builtin
to avoid a name collision with thebuiltins
module.)In general, the idea with these functions is a principle I first read about in either Code Complete or Writing Solid Code:
Don't associate with losers.
The intent here is, try to design APIs where it's impossible to call them the wrong way. Restrict the inputs to your functions to values you can always handle, and you won't ever have to return an error.
The functions in this sub-module are designed to always work. None of them should ever raise an exception--no matter what nonsense you pass in. (But don't take that as a challenge!)
-
Returns
float(o)
, unless that conversion fails, in which case returns the default value. If you don't pass in an explicit default value, the default value iso
.
-
Returns
int(o)
, unless that conversion fails, in which case returns the default value. If you don't pass in an explicit default value, the default value iso
.
-
Converts
o
into a number, preferring an int to a float.If
o
is already an int or float, returnso
unchanged. Otherwise, triesint(o)
. If that conversion succeeds, returns the result. Otherwise, triesfloat(o)
. If that conversion succeeds, returns the result. Otherwise returns the default value. If you don't pass in an explicit default value, the default value iso
.
-
A decorator for class methods. When you have a method in a base class that's "pure virtual"--that must not be called, but must be overridden in child classes--decorate it with
@pure_virtual()
. Calling that method will throw aNotImplementedError
.Note that the body of any function decorated with
@pure_virtual()
is ignored. By convention the body of these methods should contain only a single ellipsis, literally like this:class BaseClass: @big.pure_virtual() def on_reset(self): ...
-
Returns
True
ifo
can be converted into afloat
, andFalse
if it can't.
-
Returns
True
ifo
can be converted into anint
, andFalse
if it can't.
-
Old versions of functions (and classes) from big. These versions are deprecated, either because the name was changed, or the semantics were changed, or both.
Unlike the other modules, the contents of
big.deprecated
aren't automatically imported intobig.all
. (big.all
does import thedeprecated
submodule, it just doesn'tfrom deprected import *
all the symbols.)
-
Functions for working with files, directories, and I/O.
-
Find the lines of a file that match some text, like the UNIX
fgrep
utility program.path
should be an object representing a path to an existing file, one of:- a string,
- a bytes object, or
- a
pathlib.Path
object.
text
should be either string or bytes.encoding
is used as the file encoding when opening the file.- If
text
is a str, the file is opened in text mode. - If
text
is a bytes object, the file is opened in binary mode.encoding
must beNone
when the file is opened in binary mode.
If
case_insensitive
is true, perform the search in a case-insensitive manner.Returns a list of lines in the file containing
text
. The lines are either strings or bytes objects, depending on the type ofpattern
. The lines have their newlines stripped but preserve all other whitespace.If
enumerate
is true, returns a list of tuples of (line_number, line). The first line of the file is line number 1.For simplicity of implementation, the entire file is read in to memory at one time. If
case_insensitive
is true,fgrep
also makes a lowercased copy.
-
Returns the modification time of
path
, in seconds since the epoch. Note that seconds is a float, indicating the sub-second with some precision.
-
Returns the modification time of
path
, in nanoseconds since the epoch.
-
Returns the size of the file at
path
, as an integer representing the number of bytes.
-
Look for matches to a regular expression pattern in the lines of a file, similarly to the UNIX
grep
utility program.path
should be an object representing a path to an existing file, one of:- a string,
- a bytes object, or
- a
pathlib.Path
object.
pattern
should be an object containing a regular expression, one of:- a string,
- a bytes object, or
- an
re.Pattern
, initialized with eitherstr
orbytes
.
encoding
is used as the file encoding when opening the file.If
pattern
uses astr
, the file is opened in text mode. Ifpattern
uses a bytes object, the file is opened in binary mode.encoding
must beNone
when the file is opened in binary mode.flags
is passed in as theflags
argument tore.compile
ifpattern
is a string or bytes. (It's ignored ifpattern
is anre.Pattern
object.)Returns a list of lines in the file matching the pattern. The lines are either strings or bytes objects, depending on the type of
text
. The lines have their newlines stripped but preserve all other whitespace.If
enumerate
is true, returns a list of tuples of(line_number, line)
. The first line of the file is line number 1.For simplicity of implementation, the entire file is read in to memory at one time.
Tip: to perform a case-insensitive pattern match, pass in the
re.IGNORECASE
flag into flags for this function (if pattern is a string or bytes) or when creating your regular expression object (if pattern is anre.Pattern
object.(In older versions of Python,
re.Pattern
was a private type calledre._pattern_type
.)
-
A context manager that temporarily changes the directory. Example:
with big.pushd('x'): pass
This would change into the
'x'
subdirectory before executing the nested block, then change back to the original directory after the nested block.You can change directories in the nested block; this won't affect pushd restoring the original current working directory upon exiting the nested block.
You can safely nest
with pushd
blocks.
-
Ensures that a directory exists at
path
. If this function returns and doesn't raise, it guarantees that a directory exists atpath
.If a directory already exists at
path
,safe_mkdir
does nothing.If a file exists at
path
,safe_mkdir
unlinkspath
then creates the directory.If the parent directory doesn't exist,
safe_mkdir
creates that directory, then createspath
.This function can still fail:
path
could be on a read-only filesystem.- You might lack the permissions to create
path
. - You could ask to create the directory
x/y
andx
is a file (not a directory).
-
Unlinks
path
, ifpath
exists and is a file.
-
Ensures that
path
exists, and its modification time is the current time.If
path
does not exist, creates an empty file.If
path
exists, updates its modification time to the current time.
-
Ensures that all characters in s are legal for a FAT filesystem.
Returns a copy of
s
where every character not allowed in a FAT filesystem filename has been replaced with a character (or characters) that are permitted.
-
Ensures that all characters in s are legal for a UNIX filesystem.
Returns a copy of
s
where every character not allowed in a UNIX filesystem filename has been replaced with a character (or characters) that are permitted.
-
A drop-in replacement for Python's
graphlib.TopologicalSorter
with an enhanced API. This version ofTopologicalSorter
allows modifying the graph at any time, and supports multiple simultaneous views, allowing iteration over the graph more than once.See the Enhanced
TopologicalSorter
deep-dive for more information.
-
Exception thrown by
TopologicalSorter
when it detects a cycle.
-
An object representing a directed graph of nodes. See Python's
graphlib.TopologicalSorter
for concepts and the basic API.
New methods on TopologicalSorter
:
-
Returns a shallow copy of the graph. The copy also duplicates the state of
get_ready
anddone
.
-
Checks the graph for cycles. If no cycles exist, returns None. If at least one cycle exists, returns a tuple containing nodes that constitute a cycle.
-
Prints the internal state of the graph. Used for debugging.
print
is the function used for printing; it should behave identically to the builtinprint
function.
-
Removes
node
from the graph.If any node
P
depends on a nodeN
, andN
is removed, this dependency is also removed, butP
is not removed from the graph.Note that, while
remove()
works, it's slow. (It's O(N).)TopologicalSorter
is optimized for fast adds and fast views.
-
Resets
get_ready
anddone
to their initial state.
-
Returns a new
View
object on this graph.
-
A view on a
TopologicalSorter
graph object. Allows iterating over the nodes of the graph in dependency order.
Methods on a View
object:
-
Returns
True
if more work can be done in the view--if there are nodes waiting to be yielded byget_ready
, or waiting to be returned bydone
.Aliased to
TopologicalSorter.is_active
for compatibility with graphlib.
-
Closes the view. A closed view can no longer be used.
-
Returns a shallow copy of the view, duplicating its current state.
-
Marks nodes returned by
ready
as "done", possibly allowing additional nodes to be available fromready
.
-
Prints the internal state of the view, and its graph. Used for debugging.
print
is the function used for printing; it should behave identically to the builtinprint
function.
-
Returns a tuple of "ready" nodes--nodes with no predecessors, or nodes whose predecessors have all been marked "done".
Aliased to
TopologicalSorter.get_ready
for compatibility withgraphlib
.
-
Resets the view to its initial state, forgetting all "ready" and "done" state.
-
Functions for working with heap objects. Well, just one heap object really.
-
An object-oriented wrapper around the
heapq
library, designed to be easy to use--and easy to remember how to use. Theheapq
library implements a binary heap, a data structure used for sorting; you add objects to the heap, and you can then remove objects in sorted order. Heaps are useful because they have are efficient both in space and in time; they're also inflexible, in that iterating over the sorted items is destructive.The
Heap
API in big mimics thelist
andcollections.deque
objects; this way, all you need to remember is "it works kinda like alist
object". Youappend
new items to the heap, thenpopleft
them off in sorted order.By default
Heap
creates an empty heap. If you pass in an iterablei
to the constructor, this is equivalent to calling theextend(i)
on the freshly-constructedHeap
.In addition to the below methods,
Heap
objects support iteration,len
, thein
operator, and use as a boolean expression. You can also index or slice into aHeap
object, which behaves as if the heap is a list of objects in sorted order. Getting the first item (Heap[0]
, aka peek) is cheap, the other operations can get very expensive.
Methods on a Heap
object:
-
Adds object
o
to the heap.
-
Removes all objects from the heap, resetting it to empty.
-
Returns a shallow copy of the heap. Only duplicates the heap data structures itself; does not duplicate the objects in the heap.
-
Adds all the objects from the iterable
i
to the heap.
-
If object
o
is in the heap, removes it. Ifo
is not in the heap, raisesValueError
.
-
If the heap is not empty, returns the first item in the heap in sorted order. If the heap is empty, raises
IndexError
.
-
Equivalent to calling
Heap.append(o)
immediately followed byHeap.popleft()
. Ifo
is smaller than any other object in the heap at the time it's added, this will returno
.
-
Equivalent to calling
Heap.popleft()
immediately followed byHeap.append(o)
. This method will never returno
, unlesso
was already in the heap before the method was called.
-
Not a method, a property. Returns a copy of the contents of the heap, in sorted order.
-
Functions and classes for working with iteration. Only one entry so far.
-
Wraps any iterator, allowing you to push items back on the iterator. This allows you to "peek" at the next item (or items); you can get the next item, examine it, and then push it back. If any objects have been pushed onto the iterator, they are yielded first, before attempting to yield from the wrapped iterator.
The constructor accepts one argument, an
iterable
, with a default ofNone
. Ifiterable
isNone
, thePushbackIterator
is created in an exhausted state.When the wrapped
iterable
is exhausted (or if you passed inNone
to the constructor) you can still call thepush
method to add items, at which point thePushBackIterator
can be iterated over again.In addition to the following methods,
PushbackIterator
supports the iterator protocol and testing for truth. APushbackIterator
is true if iterating over it will yield at least one value.
-
Equivalent to
next(PushbackIterator)
, but won't raiseStopIteration
. If the iterator is exhausted, returns thedefault
argument.
-
Pushes a value into the iterator's internal stack. When a
PushbackIterator
is iterated over, and there are any pushed values, the top value on the stack will be popped and yielded.PushbackIterator
only yields from the iterator it wraps when this internal stack is empty.
-
A simple and lightweight logging class, useful for performance analysis. Not intended as a full-fledged logging facility like Python's
logging
module.
-
The default clock function used by the
Log
class. This function returns elapsed time in nanoseconds, expressed as an integer.In Python 3.7+, this is
time.monotonic_ns
; in Python 3.6 this is a custom function that callstime.perf_counter
, then converts that time to an integer number of nanoseconds.
-
A simple and lightweight logging class, useful for performance analysis. Not intended as a full-fledged logging facility like Python's
logging
module.Allows nesting, which is literally just a presentation thing.
The
clock
named parameter specifies the function theLog
object should call to get the time. This function should return anint
, representing elapsed time in nanoseconds.To use: first, create your
Log
object.log = Log()
Then log events by calling your
Log
object, passing in a string describing the event.log('text')
Enter a nested subsystem containing events with
log.enter
:log.enter('subsystem')
Then later exit that subsystem with
log.exit
:log.exit()
And finally print the log:
log.print()
You can also iterate over the log events using
iter(log)
. This yields 4-tuples:(start_time, elapsed_time, event, depth)
start_time
andelapsed_time
are times, expressed as an integer number of nanoseconds. The first event is atstart_time
0, and all subsequent start times are relative to that time.event
is the event string you passed in tolog()
(or"<subsystem> start"
or"<subsystem> end"
).depth
is an integer indicating how many subsystems the event is nested in; larger numbers indicate deeper nesting.
-
Notifies the log that you've entered a subsystem. The
subsystem
parameter should be a string describing the subsystem.This is really just a presentation thing; all subsequent logged entries will be indented until you make the corresponding
log.exit()
call.You may nest subsystems as deeply as you like.
-
Exits a logged subsystem. See
Log.enter.
Log.print(*, print=None, title="[event log]", headings=True, indent=2, seconds_width=2, fractional_width=9)
-
Prints the log.
Keyword-only parameters:
print
specifies the print function to use, default isbuiltins.print
.title
specifies the title to print at the beginning. Default is"[event log]"
. To suppress, pass inNone
.headings
is a boolean; ifTrue
(the default), prints column headings for the log.indent
is the number of spaces to indent in front of log entries, and also how many spaces to indent each time we enter a subsystem.seconds_width
is how wide to make the seconds column, default 2.fractional_width
is how wide to make the fractional column, default 9.
-
Resets the log to its initial state. After resetting the log, the log is empty except for the initial
"log start"
message, the elapsed time is zero, and the log has not "entered" any subsystems.
-
Contains metadata about big itself.
-
A
Version
object representing the current version of big.
-
A replacement for Python's
sched.scheduler
object, adding full threading support and a modern Python interface.Python's
sched.scheduler
object was added way back in 1991, and it was full of clever ideas. It abstracted away the concept of time from its interface, allowing it to be adapted to new schemes of measuring time--including mock time, making testing easy and repeatable. Very nice!Unfortunately,
sched.scheduler
predates multithreading becoming common, much less multicore computers. It certainly predates threading support in Python. And its API isn't flexible enough to correctly handle some common scenarios in multithreaded programs:- If one thread is blocking on
sched.scheduler.run
, and the next scheduled event will occur at time T, and a second thread schedules a new event which occurs at a time < T,sched.scheduler.run
won't return any events to the first thread until time T. - If one thread is blocking on
sched.scheduler.run
, and the next scheduled event will occur at time T, and a second thread cancels all events,sched.scheduler.run
won't exit until time T.
big's
Scheduler
object fixes both these problems.Also,
sched.scheduler
is thirty years behind the times in Python API design--its design predates many common modern Python conventions. Its events are callbacks, which it calls directly.Scheduler
fixes this: its events are objects, and you iterate over theScheduler
object to see events as they occur.Scheduler
also benefits from thirty years of experience withsched.scheduler
. In particular, big reimplements the relevant parts of thesched.scheduler
test suite, ensuringScheduler
will never trip over the problems discovered bysched.scheduler
over its lifetime. - If one thread is blocking on
-
An object representing a scheduled event in a
Scheduler
. You shouldn't need to create them manually;Event
objects are created automatically when you add events to aScheduler
.Supports one method:
-
Cancels this event. If this event has already been canceled, raises
ValueError
.
-
An abstract base class for
Scheduler
regulators.A "regulator" handles all the details about time for a
Scheduler
.Scheduler
objects don't actually understand time; it's all abstracted away by theRegulator
.You can implement your own
Regulator
and use it withScheduler
. YourRegulator
subclass must implement three methods:now
,sleep
, andwake
. It must also provide alock
attribute.Normally a
Regulator
represents time using a floating-point number, representing a fractional number of seconds since some epoch. But this isn't strictly necessary. Any Python object that fulfills these requirements will work:- The time class must implement
__le__
,__eq__
,__add__
, and__sub__
, and these operations must be consistent in the same way they are for number objects. - If
a
andb
are instances of the time class, anda.__le__(b)
is true, thena
must either be an earlier time, or a smaller interval of time. - The time class must also implement rich comparison
with numbers (integers and floats), and
0
must represent both the earliest time and a zero-length interval of time.
- The time class must implement
-
A lock object. The
Scheduler
uses this lock to protect its internal data structures.Must support the "context manager" protocol (
__enter__
and__exit__
). Entering the object must acquire the lock; exiting must release the lock.This lock does not need to be recursive.
-
Returns the current time in local units. Must be monotonically increasing; for any two calls to now during the course of the program, the later call must never have a lower value than the earlier call.
A
Scheduler
will only call this method while holding this regulator's lock.
-
Sleeps for some amount of time, in local units. Must support an interval of
0
, which should represent not sleeping. (Though it's preferable that an interval of0
yields the rest of the current thread's remaining time slice back to the operating system.)If
wake
is called on thisRegulator
object while a different thread has called this function to sleep,sleep
must abandon the rest of the sleep interval and return immediately.A
Scheduler
will only call this method while not holding this regulator's lock.
-
Aborts all current calls to
sleep
on thisRegulator
, across all threads.A
Scheduler
will only call this method while holding this regulator's lock.
-
Implements a scheduler. The only argument is the "regulator" object to use; the regulator abstracts away all time-related details for the scheduler. By default
Scheduler
uses an instance ofSingleThreadedRegulator
, which is not thread-safe.(If you need the scheduler to be thread-safe, pass in an instance of a thread-safe
Regulator
class likeThreadSafeRegulator
.)In addition to the below methods,
Scheduler
objects support being evaluated in a boolean context (they are true if they contain any events), and they support being iterated over. Iterating over aScheduler
object blocks until the next event comes due, at which point theScheduler
yields that event. An emptyScheduler
that is iterated over raisesStopIteration
. You can reuseScheduler
objects, iterating over them until empty, then adding more objects and iterating over them again.
-
Schedules an object
o
to be yielded as an event by thisschedule
object at some time in the future.By default the
time
value is a relative time value, and is added to the current time; using atime
value of 0 should schedule this event to be yielded immediately.If
absolute
is true,time
is regarded as an absolute time value.If multiple events are scheduled for the same time, they will be yielded by order of
priority
. Lowever values ofpriority
represent higher priorities. The default value isScheduler.DEFAULT_PRIORITY
, which is 100. If two events are scheduled for the same time, and have the same priority,Scheduler
will yield the events in the order they were added.Returns an
Event
object, which can be used to cancel the event.
-
Cancels a scheduled event.
event
must be an object returned by thisScheduler
object. Ifevent
is not currently scheduled in thisScheduler
object, raisesValueError
.
-
A list of the currently scheduled
Event
objects, in the order they will be yielded.
-
Returns an iterator for the events in the
Scheduler
that only yields the events that are currently due. Never blocks; if the next event is not due yet, raisesStopIteration
.
-
An implementation of
Regulator
designed for use in single-threaded programs. It doesn't support multiple threads, and in particular is not thread-safe. But it's much higher performance than thread-safeRegulator
implementations.
-
A thread-safe implementation of
Regulator
designed for use in multithreaded programs.
-
Library code for working with simple state machines.
There are lots of popular Python libraries for implementing state machines. But they all seem to be designed for large-scale state machines. These libraries are sophisticated and data-driven, with expansive APIs. And, as a rule, they require the state to be a passive object (e.g. an
Enum
), and require you to explicitly describe every possible state transition.This approach is great for massive, super-complex state machines--you need the features of a sophisticated library to manage all that complexity. It also enables clever features like automatically generating diagrams of your state machine, which is great!
But most of the time this level of sophistication is unnecessary. There are lots of use cases for small scale, simple state machines, where this data-driven approach and expansive, complex API only gets in the way. I prefer writing my state machines with active objects--where states are implemented as classes, events are implemented as method calls on those classes, and you transition to a new state by simply overwriting a
state
attribute with a different state instance.big.state
makes this style of state machine easy. It has a deliberately minimal, simple interface--the constructor for the mainStateManager
class only has four parameters, and it only exposes three attributes. The module also has two decorators to make your life easier. And that's it! But even this small API surface area makes it effortless to write large scale state machines.(But you can also write tiny data-driven state machines too. Although
big.state
makes state machines with active states easy to write, it's agnostic about how you actually implement your state machine.big.state
makes it easy to write any kind of state machine you like!)big.state
provides features like:- method calls that get called when entering and exiting a state,
- "observers", callables that get called each time you transition to a new state, and
- safety mechanisms to catch bugs and prevent design mistakes.
The main class in big.state
is StateManager
. This class
maintains the current "state" of your state machine, and
manages transitions to new states. The constructor takes
one required parameter, the initial state.
Here are my recommendations for best practices when working
with StateManager
for medium-sized and larger state machines:
- Your state machine should be implemented as a class.
- You should store
StateManager
as an attribute of that class, preferably calledstate_manager
. (Your state machine should have a "has-a" relationship withStateManager
, not an "is-a" relationship where it inherits fromStateManager
.) - You should decorate your state machine class with the
accessor
decorator--this will save you a lot of boilerplate. If your state machine is stored ino
, decorating withaccessor
lets you can access the current state usingo.state
instead ofo.state_manager.state
.
- You should store
- Every state should be implemented as a class.
- You should have a base class for your state classes, containing whatever functionality they have in common.
- You're encouraged to define these state classes inside
your state machine class, and use
BoundInnerClass
so they automatically get references to the state machine they're a part of.
- Events should be method calls made on your state machine object.
- Your state base class should have a method for every event, decorated with `pure_virtual'.
- As a rule, events should be dispatched from the state machine to a method call on the current state with the same name.
- If all the code to handle a particular event lives in the
states, use the
dispatch
decorator to save you more boilerplate when calling the event method. Similarly toaccessor
, this creates a new method for you that calls the equivalent method on the current state, passing in all the arguments it received.
Here's a simple example demonstrating all this functionality.
It's a state machine with two states, On
and Off
, and
one event method toggle
. Calling toggle
transitions
the state machine from the Off
state to the On
state,
and vice-versa.
from big.all import accessor, BoundInnerClass, dispatch, pure_virtual, StateManager
@accessor()
class StateMachine:
def __init__(self):
self.state_manager = StateManager(self.Off())
@dispatch()
def toggle(self):
...
@BoundInnerClass
class State:
def __init__(self, state_machine):
self.state_machine = state_machine
def __repr__(self):
return f"<{type(self).__name__}>"
@pure_virtual()
def toggle(self):
...
@BoundInnerClass
class Off(State.cls):
def on_enter(self):
print("off!")
def toggle(self):
sm = self.state_machine
sm.state = sm.On() # sm.state is the accessor
@BoundInnerClass
class On(State.cls):
def on_enter(self):
print("on!")
def toggle(self):
sm = self.state_machine
sm.state = sm.Off()
sm = StateMachine()
print(sm.state)
for _ in range(3):
sm.toggle()
print(sm.state)
This code demonstrates both
accessor
and
dispatch
.
accessor
lets us reference the current state with sm.state
instead of sm.state_manager.state
, and dispatch
lets us call
sm.toggle()
instead of sm.state_manager.state.toggle()
.
For a more complete example of working with StateManager
,
see the test_vending_machine
test code in tests/test_state.py
in the big source tree.
-
Class decorator. Adds a convenient state accessor attribute to your class.
When you have a state machine class containing a
StateManager
object, it can be wordy and inconvenient to access the state through the state machine attribute:class StateMachine: def __init__(self): self.state_manager = StateManager(self.InitialState) ... sm = StateMachine() # vvvvvvvvvvvvvvvvvvvv that's a lot! sm.state_manager.state = NextState()
The
accessor
class decorator creates a property for you--a shortcut that directly accesses thestate
attribute of your state manager. Just decorate your state machine class with@accessor()
:@accessor() class StateMachine: def __init__(self): self.state_manager = StateManager(self.InitialState) ... sm = StateMachine() # vvvvvv that's a lot shorter! sm.state = NextState()
The
state
attribute evaluates to the same value:sm.state == sm.state_manager.state
And setting it sets the state on your
StateManager
instance. These two statements now do the same thing:sm.state_manager.state = new_state sm.state = new_state
By default, this decorator assumes your
StateManager
instance is in thestate_manager
attribute, and you want to name the new accessor attributestate
. You can override these defaults; the decorator's first parameter,attribute
, should be the string used for the new accessor attribute, and the second parameter,state_manager
, should be the name of the attribute where yourStateManager
instance is stored.For example, if your state manager is stored in an attribute called
sm
, and you want the short-cut to be calledst
, you'd decorate your state machine class with@accessor(attribute='st', state_manager='sm')
-
Decorator for state machine event methods, dispatching the event from the state machine object to its current state.
dispatch
helps with the following scenario:- You have your own state machine class which contains
a
StateManager
object. - You want your state machine class to have methods representing events.
- Rather than handle those events in your state machine object itself, you want to dispatch them to the current state.
Simply create a method in your state machine class with the correct name and parameters but a no-op body, and decorate it with
@dispatch
. Thedispatch
decorator will rewrite your method so it calls the equivalent method on the current state, passing through all the arguments.For example, instead of writing this:
class StateMachine: def __init__(self): self.state_manager = StateManager(self.InitialState) def on_sunrise(self, time, *, verbose=False): return self.state_manager.state.on_sunrise(time, verbose=verbose)
you can literally write this, which does the same thing:
class StateMachine: def __init__(self): self.state_manager = StateManager(self.InitialState) @dispatch() def on_sunrise(self, time, *, verbose=False): ...
Here, the
on_sunrise
function you wrote is actually thrown away. (That's why the body is simply one"..."
statement.) Your function is replaced with a function that gets thestate_manager
attribute fromself
, then gets thestate
attribute from thatStateManager
instance, then calls a method with the same name as the decorated function, passing in using*args
and**kwargs
.Note that, as a stylistic convention, you're encouraged to literally use a single ellipsis as the body of these functions, as in the example above. This is a visual cue to readers that the body of the function doesn't matter. (In fact, the original
on_sunrise
method above is thrown away inside the decorator, and replaced with a customized method dispatch function.)The
state_manager
argument to the decorator should be the name of the attribute where theStateManager
instance is stored inself
. The default is'state_manager'
, but you can specify a different string if you've stored yourStateManager
in another attribute. For example, if your state manager is in the attributesmedley
, you'd decorate with:@dispatch('smedley')
The
prefix
andsuffix
arguments are strings added to the beginning and end of the method call we call on the current state. For example, if you want the method you call to have an active verb form (e.g.reset
), but you want it to directly call an event handler that starts withon_
by convention (e.g.on_reset
), you could do this:@dispatch(prefix='on_') def reset(self): ...
This is equivalent to:
def reset(self): return self.state_manager.state.on_reset()
If you have more than one event method, instead of decorating every event method with the same copy-and-pasted
dispatch
call, it's better to calldispatch
once, cache the function it returns, and decorate with that. Like so:my_dispatch = dispatch('smedley', prefix='on_') @my_dispatch def reset(self): ... @my_dispatch def sunrise(self): ...
- You have your own state machine class which contains
a
-
Base class for state machine state implementation classes. Use of this base class is optional; states can be instances of any type except
types.NoneType
.
-
Simple, Pythonic state machine manager.
Has three public attributes:
-
state
-
The current state. You transition from one state to another by assigning to this attribute.
-
next
-
The state the
StateManager
is transitioning to, if it's currently in the process of transitioning to a new state. If theStateManager
isn't currently transitioning to a new state, itsnext
attribute isNone
. And if theStateManager
is currently transitioning to a new state, itsnext
attribute will not beNone
.During the time the manager is currently transitioning to a new state, it's illegal to start a second transition. (In other words: you can't assign to
state
whilenext
is notNone
.) -
observers
-
A list of callables that get called during every state transition. It's initially empty; you may add and remove observers to the list as needed.
- The callables will be called with one positional argument, the state manager object.
- Since observers are called during the state transition, they aren't permitted to initiate state transitions.
- You're permitted to modify the list of observers
at any time--even from inside an observer callback.
Note that this won't modify the list of observers called
until the next state transition.
(
StateManager
uses a copy of the observer list.)
The constructor takes the following parameters:
-
state
-
The initial state. It can be any valid state object; by default, any Python value can be a state except
None
. (But also see thestate_class
parameter below.) -
on_enter
-
on_enter
represents a method call on states called when entering that state. The value itself is a string used to look up an attribute on state objects; by defaulton_enter
is the string'on_enter'
, but it can be any legal Python identifier string, or any false value.If
on_enter
is a valid identifier string, and thisStateManager
object transitions to a state object O, and O has an attribute with this name,StateManager
will call that attribute (with no arguments) immediately after transitioning to that state. Passing in a false value foron_enter
disables this behavior.on_enter
is called immediately after the transition is complete, which means you're expressly permitted to make a state transition inside anon_enter
call.If defined,
on_exit
will be called on the initial state object, from inside theStateManager
constructor. -
on_exit
-
on_exit
is similar toon_enter
, except the attribute is called when transitioning away from a state object. Its default value is'on_exit'
.on_exit
is called during the state transition, which means you're expressly forbidden from making a state transition inside anon_exit
call. -
state_class
-
state_class
is used to enforce that thisStateManager
only ever transitions to valid state objects. It should be eitherNone
or a class. If it's a class, theStateManager
object will require every value assigned to itsstate
attribute to be an instance of that class. If it'sNone
, states can be any object (exceptNone
).
To transition to a new state, simply assign to the 'state' attribute.
- If
state_class
isNone
, you may use any value as a state exceptNone
. - It's illegal to assign to
state
while currently transitioning to a new state. (Or, in other words, at any timeself.next
is notNone
.) - If the current state object has an
on_exit
method, it will be called (with zero arguments) during the the transition to the next state. This means it's illegal to initiate a state transition inside anon_exit
call. - If you assign an object to
state
that has anon_enter
attribute, that method will be called (with zero arguments) immediately after we have transitioned to that state. This means it's permitted to initiate a state transition inside anon_enter
call. - It's illegal to attempt to transition to the current
state. If
state_manager.state
is alreadyfoo
,state_manager.state = foo
will raise an exception.
If you have an
StateManager
instance calledstate_manager
, and you transition it tonew_state
:state_manager.state = new_state
StateManager
will execute the following sequence of events:- Set
state_manager.next
tonew_state
.- At of this moment
state_manager
is "transitioning" to the new state.
- At of this moment
- If
state_manager.state
has anon_exit
attribute, callstate_manager.state.on_exit()
. - For every object
o
in thestate_manager.observer
list, callo(self)
. - Set
state_manager.next
toNone
. - Set
state_manager.state
tonew_state
.- As of this moment, the transition is complete, and
state_manager
is now "in" the new state.
- As of this moment, the transition is complete, and
- If
state_manager.state
has anon_enter
attribute, callstate_manager.state.on_enter()
.
-
-
Exception raised when attempting to execute an illegal state transition.
There are only two types of illegal state transitions:
-
An attempted state transition while we're in the process of transitioning to another state. In other words, if
state_manager
is yourStateManager
object, you can't setstate_manager.state
whenstate_manager.next
is notNone
. -
An attempt to transition to the current state. This is illegal:
state_manager = StateManager() state_manager.state = foo state_manager.state = foo # <-- this statement raises TransitionError
-
Note that transitioning to a different but identical object is expressly permitted.
-
-
Functions for working with text strings. There are several families of functions inside the
text
module; for a higher-level view of those families, read the following deep-dives:- The
multi-
family of string functions lines
and lines modifier functions- Word wrapping and formatting
All the functions in
big.text
will work with eitherstr
orbytes
objects, except the three Word wrapping and formatting functions. When working withbytes
, by default the functions will only work with ASCII characters.The big text functions all support both
str
andbytes
. The functions all automatically detect whether you passed instr
orbytes
using an intentionally simple and predictable process, as follows:At the start of each function, it'll test its first "string" argument to see if it's a
bytes
object.is_bytes = isinstance(<argument>, bytes)
If
isinstance
returnsTrue
, the function assumes all arguments arebytes
objects. Otherwise the function assumes all arguments arestr
objects.As a rule, no further testing, casting, or catching exceptions is done.
Functions that take multiple string-like parameters require all such arguments to be the same type. These functions will check that all such arguments are of the same type.
Subclasses of
str
andbytes
will also work; anywhere you should pass in astr
, you can also pass in a subclass ofstr
, and likewise forbytes
. - The
-
A tuple of
str
objects, representing every line-breaking whitespace character defined by ASCII.Useful as a
separator
argument for big functions that accept one, e.g. the big "multi-" family of functions, or thelines
and lines modifier functions.Also contains
'\r\n'
. If you don't want to include this string, useascii_linebreaks_without_crlf
instead. See the deep-dive section on The Unix, Mac, and DOS line-break conventions for more.For more information, please see the Whitespace and line-breaking characters in Python and big deep-dive.
-
Equivalent to
ascii_linebreaks
without'\r\n'
.
-
A tuple of
str
objects, representing every whitespace character defined by ASCII.Useful as a
separator
argument for big functions that accept one, e.g. the big "multi-" family of functions, or thelines
and lines modifier functions.Also contains
'\r\n'
. If you don't want to include this string, useascii_whitespace_without_crlf
instead. See the deep-dive section on The Unix, Mac, and DOS line-break conventions for more.For more information, please see the Whitespace and line-breaking characters in Python and big deep-dive.
-
Equivalent to
ascii_whitespace
without'\r\n'
.
-
A tuple of
bytes
objects, representing every line-breaking whitespace character recognized by the Pythonbytes
object.Useful as a
separator
argument for big functions that accept one, e.g. the big "multi-" family of functions, or thelines
and lines modifier functions.Also contains
b'\r\n'
. If you don't want to include this string, usebytes_linebreaks_without_crlf
instead. See the deep-dive section on The Unix, Mac, and DOS line-break conventions for more.For more information, please see the Whitespace and line-breaking characters in Python and big deep-dive.
-
Equivalent to
bytes_linebreaks
with'\r\n'
removed.
-
A tuple of
bytes
objects, representing every line-breaking whitespace character recognized by the Pythonbytes
object. (bytes.isspace
,bytes.split
, etc will tell you which characters are considered whitespace...)Useful as a
separator
argument for big functions that accept one, e.g. the big "multi-" family of functions, or thelines
and lines modifier functions.Also contains
b'\r\n'
. If you don't want to include this string, usebytes_whitespace_without_crlf
instead. See the deep-dive section on The Unix, Mac, and DOS line-break conventions for more.For more information, please see the Whitespace and line-breaking characters in Python and big deep-dive.
-
Equivalent to
bytes_whitespace
without'\r\n'
.
-
Takes a string
s
, and one or more "split arrays", and applies all the splits tos
. Returns an iterator of the resulting string segments.A "split array" is an array containing the original string, but split into multiple pieces. For example, the string
"a b c d e"
could be split into the split array["a ", "b ", "c ", "d ", "e"]
.For example,
combine_splits('abcde', ['abcd', 'e'], ['a', 'bcde'])
returns
['a', 'bcd', 'e']
.Note that the split arrays must contain all the characters from
s
.''.join(split_array)
must recreates
.combine_splits
only examines the lengths of the strings in the split arrays, and makes no attempt to infer stripped characters. (So, don't use the string's.split
method if you want to usecombine_splits
. Instead, consider big'smultisplit
withkeep=True
orkeep=ALTERNATING
.)
-
Class representing a delimiter for
split_delimiters
.close
is the closing delimiter character. It must be a valid string or bytes object, and cannot be a backslash ('"\"' orb"\\"
).If
escape
is true, it should be a string; when inside this delimiter, you can escape the trailing delimiter with this string. Ifescape
is false, there is no escape string for this delimiter.quoting
is a boolean: does this set of delimiters "quote" the text inside? When an open delimiter enables quoting,split_delimiters
will ignore all other delimiters in the text until it encounters the matching close delimiter. (Single- and double-quotes set this toTrue
.)Currently
escape
andquoting
must either both be true or both be false.If
multiline
is true, the closing delimiter may be on the current line or any subsequent line. Ifmultiline
is false, the closing delimiter must appear on the current line.
-
Converts an object
o
fromstr
tobytes
. Ifo
is a container, recursively converts all objects and containers inside.o
and allobjects
insideo
must be eitherbytes
,str
,dict
,set
,list
,tuple
, or a subclass of one of those.Encodes every string inside using the encoding specified in the encoding parameter, default is
'ascii'
.Handles nested containers.
If
o
is of, or contains, a type not listed above, raisesTypeError
.
-
An implementation of `str.format_map` supporting *nested replacements.*
Unlike
str.format_map
, big'sformat_map
allows you to perform string replacements inside of other string replacements:big.format_map("{{extension} size}", {'extension': 'mp3', 'mp3 size': 8555})
returns the string
'8555'
.Another difference between
str.format_map
and big'sformat_map
is how you escape curly braces. To produce a'{'
or'}'
in the output string, add'\{'
or'\}'
respectively. (To produce a backslash,'\\'
, you must put four backslashes,'\\\\'
.)See the documentation for
str.format_map
for more.
-
Uppercases the first character of every word in
s
, leaving the other letters alone.s
should bestr
orbytes
.(For the purposes of this algorithm, words are any contiguous run of non-whitespace characters.)
This function will also capitalize the letter after an apostrophe if the apostrophe:
- is immediately after whitespace, or
- is immediately after a left parenthesis character (
'('
), or - is the first letter of the string, or
- is immediately after a letter O or D, when that O or D
- is after whitespace, or
- is the first letter of the string.
In this last case, the O or D will also be capitalized.
Finally, this function will capitalize the letter after a quote mark if the quote mark:
- is after whitespace, or
- is the first letter of a string.
(A run of consecutive apostrophes and/or quote marks is considered one quote mark for the purposes of capitalization.)
All these rules mean
gently_title
correctly handles internally quoted strings:He Said 'No I Did Not'
and contractions that start with an apostrophe:
'Twas The Night Before Christmas
as well as certain Irish, French, and Italian names:
Peter O'Toole Lord D'Arcy
If specified,
apostrophes
should be astr
orbytes
object containing characters that should be considered apostrophes. Ifapostrophes
is false, ands
isbytes
,apostrophes
is set to a bytes object containing the only ASCII apostrophe character:'
If
apostrophes
is false and s isstr
,apostrophes
is set to a string containing these Unicode apostrophe code points:'‘’‚‛
Note that neither of these strings contains the "back-tick" character:
`
This is a diacritical used for modifying letters, and isn't used as an apostrophe.
If specified,
double_quotes
should be astr
orbytes
object containing characters that should be considered double-quote characters. Ifdouble_quotes
is false, ands
isbytes
,double_quotes
is set to a bytes object containing the only ASCII double-quote character:"
If
double_quotes
is false ands
isstr
, double_quotes is set to a string containing these Unicode double-quote code points:"“”„‟«»‹›
-
Converts an integer into the equivalent English string.
int_to_words(2) -> "two" int_to_words(35) -> "thirty-five"
If the keyword-only parameter
flowery
is true (the default), you also get commas and the wordand
where you'd expect them. (Whenflowery
is true,int_to_words(i)
produces identical output toinflect.engine().number_to_words(i)
, except for negative numbers:inflect
starts negative numbers with "minus", big starts them with "negative".)If the keyword-only parameter
ordinal
is true, the string produced describes that ordinal number (instead of that cardinal number). Ordinal numbers describe position, e.g. where a competitor placed in a competition. In other words,int_to_words(1)
returns the string'one'
, butint_to_words(1, ordinal=True)
returns the string'first'
.Numbers >=
10**66
(one thousand vigintillion) are only converted usingstr(i)
. Sorry!
-
A tuple of
str
objects, representing every line-breaking whitespace character recognized by the Pythonstr
object. Identical tostr_linebreaks
.Useful as a
separator
argument for big functions that accept one, e.g. the big "multi-" family of functions, or thelines
and lines modifier functions.Also contains
'\r\n'
. See the deep-dive section on The Unix, Mac, and DOS line-break conventions for more.For more information, please see the Whitespace and line-breaking characters in Python and big deep-dive.
-
Equivalent to
linebreaks
without'\r\n'
.
LineInfo(lines, line, line_number, column_number, *, leading=None, trailing=None, end=None, indent=0, match=None, **kwargs)
-
The first object in the 2-tuple yielded by a
lines
iterator, containing metadata about the line. Every parameter to the constructor is stored as an attribute of the newLineInfo
object using the same identifier.line
is the original unmodified line, split from the originals
input tolines
. Note thatline
includes the trailing newline character, if any.line_number
is the line number of this line.is the starting column of the accompanying
linestring (the second entry in the 2-tuple yielded by
lines`).leading
andtrailing
are strings that have been stripped from the beginning or end of the originalline
, if any. (Not counting the line-terminating linebreak character.)end
is the linebreak character that terminated the current line, if any. If thes
passed in tolines
is an iterator yielding strings,end
will always be an empty string.indent
is the indent level of the current line, represented as an integer. Seelines_strip_indent
. If the indent level hasn't been measured yet this should be0
.match
is there.Match
object that matched this line, if any. Seelines_grep
.You can add your own fields by passing them in via
**kwargs
; you can also add new attributes or modify existing attributes as needed from inside a "lines modifier" function.For more information, see the deep-dive on
lines
and lines modifier functions.
-
Clip the leading substring
s
fromline
.s
may be either a string (str
orbytes
) or anint
. Ifs
is a string, it must match the leading substring ofline
you wish clipped. Ifs
is anint
, it should representing the number of characters you want clipped from the beginning ofs
.Returns
line
withs
clipped; also appends the clipped portion toself.leading
, and updatesself.column_number
to represent the column number whereline
now starts. (If the clipped portion ofline
contains tabs, it's detabbed usinglines.tab_width
and thedetab
method on the clipped substring before it is measured.)
-
Clip the trailing substring
s
fromline
.s
may be either a string (str
orbytes
) or anint
. Ifs
is a string, it must match the trailing substring ofline
you wish clipped. Ifs
is anint
, it should representing the number of characters you want clipped from the end ofs
.Returns
line
withs
clipped; also appends the clipped portion toself.trailing
.
lines(s, separators=None, *, clip_linebreaks=True, line_number=1, column_number=1, tab_width=8, **kwargs)
-
A "lines iterator" object. Splits s into lines, and iterates yielding those lines.
When iterated over, yields 2-tuples:
(info, line)
where
info
is aLineInfo
object, andline
is astr
orbytes
object.s
can bestr
,bytes
, or an iterable.If
s
is neitherstr
norbytes
,s
must be an iterable. The iterable should either yield individual strings, which is the line, or it should yield a tuple containing two strings, in which case the strings should be the line and the line-terminating newline respectively. All "string" objects yielded by this iterable should be homogeneous, eitherstr
orbytes
.separators
should either beNone
or an iterable of separator strings, as per theseparators
argument tomultisplit
. Ifs
isstr
orbytes
, it will be split usingmultisplit
, using these separators. Ifseparators
isNone
--which is the default value--ands
isstr
orbytes
,s
will be split at linebreak characters. (Ifs
is neitherstr
norbytes
,separators
must beNone
.)line_number
is the starting line number given to the firstLineInfo
object. This number is then incremented for every subsequent line.column_number
is the starting column number given to everyLineInfo
object. This number represents the leftmost column of every line.tab_width
isn't used by lines itself, but is stored internally and may be used by other lines modifier functions (e.g.lines_strip_indent
,lines_convert_tabs_to_spaces
). Similarly, all keyword arguments passed in via kwargs are stored internally and can be accessed by user-defined lines modifier functions.lines
copies the line-breaking character (usually\n
) from each line toinfo.end
. Ifclip_linebreaks
is true (the default),lines
will clip the line-breaking character off the end of each line. Ifclip_linebreaks
is false,lines
will leave the line-breaking character in place.You can pass in an instance of a subclass of
bytes
orstr
fors
and elements ofseparators
, but the base class for both must be the same (str
orbytes
).lines
will only yieldstr
orbytes
objects forline
.Composable with all the
lines_
modifier functions in thebig.text
module.For more information, see the deep-dive on
lines
and lines modifier functions.
-
A lines modifier function. Converts tabs to spaces for the lines of a "lines iterator", using the
tab_width
passed in tolines
.For more information, see the deep-dive on
lines
and lines modifier functions.
-
A lines modifier function. Filters out the empty lines of a "lines iterator".
Preserves the line numbers. If lines 0 through 2 are empty, line 3 is
'a'``, line 4 is empty, and line 5 is
'b'``, this will yield:(LineInfo(line='a', line_number=3), 'a') (LineInfo(line='b', line_number=5), 'b')
For more information, see the deep-dive on
lines
and lines modifier functions.
-
A lines modifier function. Filters out comment lines from the lines of a "lines iterator". Comment lines are lines whose first non-whitespace characters appear in the iterable of
comment_separators
strings passed in.What's the difference between
lines_strip_line_comments
andlines_filter_line_comment_lines
?lines_filter_line_comment_lines
only recognizes lines that start with a comment separator (ignoring leading whitespace). Also, it filters out those lines completely, rather than modifying the line.lines_strip_line_comments
handles comment markers anywhere in the line, and it can also ignore comments inside quoted strings. It truncates the line but still always yields the line.
For more information, see the deep-dive on
lines
and lines modifier functions.
-
A lines modifier function. Only yields lines that contain
s
. (Filters out lines that don't contains
.)If
invert
is true, returns the opposite--filters out lines that contains
.For more information, see the deep-dive on
lines
and lines modifier functions.
-
A lines modifier function. Only yields lines that match the regular expression
pattern
. (Filters out lines that don't matchpattern
.) Stores the resultingre.Match
object ininfo.match
.pattern
can bestr
,bytes
, or anre.Pattern
object. Ifpattern
is not anre.Pattern
object, it's compiled withre.compile(pattern, flags=flags)
.If
invert
is true, returns the opposite--filters out lines that matchpattern
.The match parameter specifies the
LineInfo
attribute name to write to. By default it writes toinfo.match
; you can specify any valid identifier, and it will instead write there.Match
object (orNone
) to the identifier you specify.For more information, see the deep-dive on
lines
and lines modifier functions.(In older versions of Python,
re.Pattern
was a private type calledre._pattern_type
.)
-
A lines modifier function. Strips trailing whitespace from the lines of a "lines iterator".
separators
is an iterable of separators, like the argument tomultistrip
. The default value isNone
, which meanslines_rstrip
strips all trailing whitespace characters.All characters removed are clipped to
info.trailing
as appropriate. If the line is non-empty before stripping, and empty after stripping, the entire line is clipped toinfo.trailing
.For more information, see the deep-dive on
lines
and lines modifier functions.
-
A lines modifier function. Sorts all input lines before yielding them.
If
key
is specified, it's used as thekey
parameter tolist.sort
. Thekey
function will be called with the(info, line)`` tuple yielded by the *lines iterator.* If
keyis a false value,
lines_sort` sorts the lines lexicographically, from lowest to highest.If
reverse
is true, lines are sorted from highest to lowest.For more information, see the deep-dive on
lines
and lines modifier functions.
-
A lines modifier function. Strips leading and trailing strings from the lines of a "lines iterator".
separators
is an iterable of separators, like the argument tomultistrip
. The default value isNone
, which meanslines_strip
strips all leading and trailing whitespace characters.All characters are clipped to
info.leading
andinfo.trailing
as appropriate. If the line is non-empty before stripping, and empty after stripping, the entire line is clipped toinfo.trailing
.For more information, see the deep-dive on
lines
and lines modifier functions.
-
A lines modifier function. Strips leading whitespace and tracks the indent level.
The indent level is stored in the
LineInfo
object's attributeindent
.indent
is an integer, the ordinal number of the current indent; if the text has been indented three times,indent
will be 3.Strips any leading whitespace from the line, updating the
LineInfo
attributesleading
andcolumn_number
as needed.Uses an intentionally simple algorithm. Only understands tab and space characters as indent characters. Internally detabs to spaces first for consistency, using the
tab_width
passed in to lines.You can only dedent out to a previous indent. Raises
IndentationError
if there's an illegal dedent.For more information, see the deep-dive on
lines
and lines modifier functions.
-
A lines modifier function. Strips comments from the lines of a "lines iterator". Comments are substrings that indicate the rest of the line should be ignored;
lines_strip_line_comments
truncates the line at the beginning of the leftmost comment separator.line_comment_markers
should be an iterable of line comment marker strings. These are strings that denote a "line comment", which is to say, a comment that starts at that marker and extends to the end of the line.By default,
quotes
andmultiline_quotes
are both false, in which caselines_strip_line_comments
will truncate each line, starting at the leftmost comment marker, and yield the resulting line. If the line doesn't contain any comment markers,lines_strip_line_comments
will yield it unchanged.However, the syntax of the text you're parsing might support quoted strings, and if so, comment marks in those quoted strings should be ignored.
lines_strip_quoted_strings
supports this too, with itsescape
,quotes
, andmultiline_quotes
parameters.If
quotes
is true, it must be an iterable of quote characters.lines_strip_line_comments
will parse the line using big'ssplit_quoted_strings
function and ignore comment markers inside quoted strings. Quote marks must be balanced; if you open a quoted string, you must close it. If a line ends with an quoted string still open,lines_strip_line_comments
will raiseSyntaxError
.multiline_quotes
is similar toquotes
, except quoted strings are permitted to span lines. If the iterator stops iteration with a multiline quoted string still open,lines_strip_line_comments
will raiseSyntaxError
.escape
specifies an escape string to allow having the closing quote marker inside a quoted string without closing ending the string. If false, there is no escape string.What's the difference between
lines_strip_line_comments
andlines_filter_line_comment_lines
?lines_filter_line_comment_lines
only recognizes lines that start with a comment separator (ignoring leading whitespace). Also, it filters out those lines completely, rather than modifying the line.lines_strip_line_comments
handles comment markers anywhere in the line, and it can even ignore comments inside quoted strings. It always yields the line, whether or not it's truncated the line.
For more information, see the deep-dive on
lines
and lines modifier functions.
merge_columns(*columns, column_separator=" ", overflow_response=OverflowResponse.RAISE, overflow_before=0, overflow_after=0)
-
Merge an arbitrary number of separate text strings into columns. Returns a single formatted string.
columns
should be an iterable of "column tuples". Each column tuple should contain three items:(text, min_width, max_width)
text
should be a single string, eitherstr
orbytes
, with newline characters separating lines.min_width
andmax_width
are the minimum and maximum permissible widths for that column, not including the column separator (if any).Note that this function does not text-wrap the text of the columns. The text in the columns should already be broken into lines and separated by newline characters. (Lines in that are longer than that column tuple's
max_width
are handled with theoverflow_strategy
, described below.)column_separator
is printed between every column.overflow_strategy
tells merge_columns how to handle a column with one or more lines that are wider than that column'smax_width
. The supported values are:OverflowStrategy.RAISE
: Raise an OverflowError. The default.OverflowStrategy.INTRUDE_ALL
: Intrude into all subsequent columns on all lines where the overflowed column is wider than itsmax_width
.OverflowStrategy.DELAY_ALL
: Delay all columns after the overflowed column, not beginning any until after the last overflowed line in the overflowed column.
When
overflow_strategy
isINTRUDE_ALL
orDELAY_ALL
, and eitheroverflow_before
oroverflow_after
is nonzero, these specify the number of extra lines before or after the overflowed lines in a column.For more information, see the deep-dive on Word wrapping and formatting.
-
Like
str.partition
, but supports partitioning based on multiple separator strings, and can partition more than once.s
can be eitherstr
orbytes
.separators
should be an iterable of objects of the same type ass
.By default, if any of the strings in
separators
are found ins
, returns a tuple of three strings: the portion ofs
leading up to the earliest separator, the separator, and the portion ofs
after that separator. Example:multipartition('aXbYz', ('X', 'Y')) => ('a', 'X', 'bYz')
If none of the separators are found in the string, returns a tuple containing
s
unchanged followed by two empty strings.multipartition
is greedy: if two or more separators appear at the leftmost location ins
,multipartition
partitions using the longest matching separator. For example:multipartition('wxabcyz', ('a', 'abc')) => `('wx', 'abc', 'yz')`
Passing in an explicit
count
lets you control how many timesmultipartition
partitions the string.multipartition
will always return a tuple containing(2*count)+1
elements. Passing in acount
of 0 will always return a tuple containings
.If
separate
is true, multiple adjacent separator strings behave like one separator. Example:big.text.multipartition('aXYbYXc', ('X', 'Y',), count=2, separate=False) => ('a', 'XY', 'b', 'YX', 'c') big.text.multipartition('aXYbYXc', ('X', 'Y',), count=2, separate=True ) => ('a', 'X', '', 'Y', 'bYXc')
If
reverse
is true, multipartition behaves likestr.rpartition
. It partitions starting on the right, scanning backwards through s looking for separators.For more information, see the deep-dive on The
multi-
family of string functions.
multisplit(s, separators=None, *, keep=False, maxsplit=-1, reverse=False, separate=False, strip=False)
-
Splits strings like
str.split
, but with multiple separators and options.s
can bestr
orbytes
.separators
should either beNone
(the default), or an iterable ofstr
orbytes
, matchings
.If
separators
isNone
ands
isstr
,multisplit
will usebig.whitespace
asseparators
. Ifseparators
isNone
ands
isbytes
,multisplit
will usebig.ascii_whitespace
asseparators
.Returns an iterator yielding the strings split from
s
. Ifkeep
is true (orALTERNATING
), andstrip
is false, joining these strings together will recreates
.multisplit
is greedy: if two or more separators start at the same location ins
,multisplit
splits using the longest matching separator. For example:big.multisplit('wxabcyz', ('a', 'abc'))
yields
'wx'
then'yz'
.keep
indicates whether or not multisplit should preserve the separator strings in the strings it yields. It supports four values:-
false (the default)
-
Discard the separators.
-
true (apart from
ALTERNATING
andAS_PAIRS
) -
Append the separators to the end of the split strings. You can recreate the original string by using
"".join
to join the strings yielded bymultisplit
. -
ALTERNATING
-
Yield alternating strings in the output: strings consisting of separators, alternating with strings consisting of non-separators. If "separate" is true, separator strings will contain exactly one separator, and non-separator strings may be empty; if "separate" is false, separator strings will contain one or more separators, and non-separator strings will never be empty, unless "s" was empty. You can recreate the original string by using
"".join
to join the strings yielded bymultisplit
. -
AS_PAIRS
-
Yield 2-tuples containing a non-separator string and its subsequent separator string. Either string may be empty; the separator string in the last 2-tuple will always be empty, and if "s" ends with a separator string, both strings in the final 2-tuple will be empty.
separate
indicates whether multisplit should consider adjacent separator strings ins
as one separator or as multiple separators each separated by a zero-length string. It supports two values:-
false (the default)
-
Group separators together. Multiple adjacent separators behave as if they're one big separator.
-
true
-
Don't group separators together. Each separator should split the string individually, even if there are no characters between two separators. (
multisplit
will behave as if there's a zero-character-wide string between adjacent separators.)
strip
indicates whether multisplit should strip separators from the beginning and/or end ofs
. It supports five values:-
false (the default)
- Don't strip separators from the beginning or end of "s".
-
true (apart from LEFT, RIGHT, and PROGRESSIVE)
- Strip separators from the beginning and end of "s" (similarly to `str.strip`).
-
LEFT
- Strip separators only from the beginning of "s" (similarly to `str.lstrip`).
-
RIGHT
- Strip separators only from the end of "s" (similarly to `str.rstrip`).
-
PROGRESSIVE
- Strip from the beginning and end of "s", unless "maxsplit" is nonzero and the entire string is not split. If splitting stops due to "maxsplit" before the entire string is split, and "reverse" is false, don't strip the end of the string. If splitting stops due to "maxsplit" before the entire string is split, and "reverse" is true, don't strip the beginning of the string. (This is how `str.strip` and `str.rstrip` behave when you pass in `sep=None`.)
maxsplit
should be either an integer orNone
. Ifmaxsplit
is an integer greater than -1, multisplit will splittext
no more thanmaxsplit
times.reverse
changes wheremultisplit
starts splitting the string, and what direction it moves through the string when parsing.-
false (the default)
- Start splitting from the beginning of the string and parse moving right (towards the end).
-
true
- Start splitting from the end of the string and parse moving left (towards the beginning).
Splitting starting from the end of the string and parsing moving left has two effects. First, if
maxsplit
is a number greater than 0, the splits will start at the end of the string rather than the beginning. Second, if there are overlapping instances of separators in the string,multisplit
will prefer the rightmost separator rather than the leftmost. Consider this example, wherereverse
is false:multisplit("A x x Z", (" x ",), keep=big.ALTERNATING) => "A", " x ", "x Z"
If you pass in a true value for
reverse
,multisplit
will prefer the rightmost overlapping separator:multisplit("A x x Z", (" x ",), keep=big.ALTERNATING, reverse=True) => "A x", " x ", "Z"
For more information, see the deep-dive on The
multi-
family of string functions. -
-
Like
str.strip
, but supports stripping multiple substrings froms
.Strips from the string
s
all leading and trailing instances of strings found inseparators
.s
should bestr
orbytes
.separators
should be an iterable of eitherstr
orbytes
objects matching the type ofs
.If
left
is a true value, strips all leading separators froms
.If
right
is a true value, strips all trailing separators froms
.Processing always stops at the first character that doesn't match one of the separators.
Returns a copy of
s
with the leading and/or trailing separators stripped. (Ifleft
andright
are both false, returnss
unchanged.)For more information, see the deep-dive on The
multi-
family of string functions.
-
Returns
s
, but with every run of consecutive separator characters turned into a replacement string. By default turns all runs of consecutive whitespace characters into a single space character.s
may bestr
orbytes
.separators
should be an iterable of eitherstr
orbytes
objects, matchings
.replacement
should be either astr
orbytes
object, also matchings
, orNone
(the default). Ifreplacement
isNone
,normalize_whitespace
will use a replacement string consisting of a single space character.Leading or trailing runs of separator characters will be replaced with the replacement string, e.g.:
normalize_whitespace(" a b c") == " a b c"
-
Like
str.partition
, butpattern
is matched as a regular expression.text
can be a string or a bytes object.pattern
can be a string, bytes, orre.Pattern
object.text
andpattern
(orpattern.pattern
) must be the same type.If
pattern
is found in text, returns a tuple(before, match, after)
where
before
is the text before the matched text,match
is there.Match
object resulting from the match, andafter
is the text after the matched text.If
pattern
appears intext
multiple times,re_partition
will match against the first (leftmost) appearance.If
pattern
is not found intext
, returns a tuple(text, None, '')
where the empty string is
str
orbytes
as appropriate.Passing in an explicit
count
lets you control how many timesre_partition
partitions the string.re_partition
will always return a tuple containing(2*count)+1
elements, and odd-numbered elements will be eitherre.Match
objects orNone
. Passing in acount
of 0 will always return a tuple containings
.If
pattern
is a string or bytes object,flags
is passed in as theflags
argument tore.compile
.If
reverse
is true, partitions starting at the right, likere_rpartition
.(In older versions of Python,
re.Pattern
was a private type calledre._pattern_type
.)
-
Like
str.rpartition
, butpattern
is matched as a regular expression.text
can be astr
orbytes
object.pattern
can be astr
,bytes
, orre.Pattern
object.text
andpattern
(orpattern.pattern
) must be the same type.If
pattern
is found intext
, returns a tuple(before, match, after)
where
before
is the text before the matched text,match
is the re.Match object resulting from the match, andafter
is the text after the matched text.If
pattern
appears intext
multiple times,re_partition
will match against the last (rightmost) appearance.If
pattern
is not found intext
, returns a tuple('', None, text)
where the empty string is
str
orbytes
as appropriate.Passing in an explicit
count
lets you control how many timesre_rpartition
partitions the string.re_rpartition
will always return a tuple containing(2*count)+1
elements, and odd-numbered elements will be eitherre.Match
objects orNone
. Passing in acount
of 0 will always return a tuple containings
.If
pattern
is a string,flags
is passed in as theflags
argument tore.compile
.(In older versions of Python,
re.Pattern
was a private type calledre._pattern_type
.)
-
An iterator. Behaves almost identically to the Python standard library function
re.finditer
, yielding non-overlapping matches ofpattern
instring
. The difference is,reversed_re_finditer
searchesstring
from right to left.pattern
can bestr
,bytes
, or a precompiledre.Pattern
object. If it'sstr
orbytes
, it'll be compiled withre.compile
using theflags
you passed in.string
should be the same type aspattern
(orpattern.pattern
).
-
Splits a string
s
at delimiter substrings.s
may bestr
orbytes
.delimiters
may be eitherNone
or a mapping of open delimiter strings toDelimiter
objects. The open delimiter strings, close delimiter strings, and escape strings must match the type ofs
(eitherstr
orbytes
).If
delimiters
isNone
,split_delimiters
uses a default value matching these pairs of delimiters:() [] {} "" ''
The first three delimiters allow multiline, disable quoting, and have no escape string. The last two (the quote mark delimiters) enable quoting, disallow multiline, and specify their escape string as a single backslash. (This default value automatically supports both
str
andbytes
.)state
specifies the initial state of parsing. It's an iterable of open delimiter strings specifying the initial nested state of the parser, with the innermost nesting level on the right. If you wantedsplit_delimiters
to behave as if it'd already seen a'('
and a'['
, in that order, pass in['(', '[']
tostate
.(Tip: Use a
list
as a stack to track the state ofsplit_delimiters
. Push open delimiters with.append
, and pop them off using.pop
whenever you see a close delimiter. Sincesplit_delimiters
ensures that open and close delimiters match, you don't need to check them yourself!)Yields 3-tuples containing strings:
(text, open, close)
where
text
is the text before the next opening or closing delimiter,open
is the trailing opening delimiter, andclose
is the trailing closing delimiter. At least one of these three strings will always be non-empty. (Ifopen
is non-empty,close
will be empty, and vice-versa.) Ifs
doesn't end with an opening or closing delimiter, the final tuple yielded will have empty strings for bothopen
andclose
.You may not specify backslash (
'\\'
) as an open delimiter.Multiple
Delimiter
objects specified indelimiters
may use the same close delimiter string.split_delimiters
doesn't react if the string ends with unterminated delimiters.See the
Delimiter
object for how delimiters are defined, and how you can define your own delimiters.
-
Splits
s
into quoted and unquoted segments.Returns an iterator yielding 3-tuples:
(leading_quote, segment, trailing_quote)
where
leading_quote
andtrailing_quote
are either empty strings or quote delimiters fromquotes
, andsegment
is a substring ofs
. Joining together all strings yielded recreatess
.s
can be eitherstr
orbytes
.quotes
is an iterable of unique quote delimiters. Quote delimiters may be any non-empty string. They must be the same type ass
, eitherstr
orbytes
. By default,quotes
is('"', "'")
. (Ifs
isbytes
,quotes
defaults to(b'"', b"'")
.) If a newline character appears inside a quoted string,split_quoted_strings
will raiseSyntaxError
.multiline_quotes
is likequotes
, except quoted strings using multiline quotes are permitted to contain newlines. By defaultsplit_quoted_strings
doesn't define any multiline quote marks.escape
is a string of any length. Ifescape
is not an empty string, the string will "escape" (quote) quote delimiters inside a quoted string, like the backslash ('\') character inside strings in Python. By default,escape
is'\\'
. (Ifs
isbytes
,escape
defaults tob'\\'
.)state
is a string. It sets the initial state of the function. The default is an empty string (str
orbytes
, matchings
); this means the parser starts parsing the string in an unquoted state. If you want parsing to start as if it had already encountered a quote delimiter--for example, if you were parsing multiple lines individually, and you wanted to begin a new line continuing the state from the previous line-- pass in the appropriate quote delimiter fromquotes
intostate
. Note that when a non-empty string is passed in tostate
, theleading_quote
in the first 3-tuple yielded bysplit_quoted_strings
will be an empty string:list(split_quoted_strings("a b c'", state="'"))
evaluates to
[('', 'a b c', "'")]
Note:
split_quoted_strings
is agnostic about the length of quoted strings. If you're usingsplit_quoted_strings
to parse a C-like language, and you want to enforce C's requirement that single-quoted strings only contain one character, you'll have to do that yourself.split_quoted_strings
doesn't raise an error ifs
ends with an unterminated quoted string. In that case, the last tuple yielded will have a non-emptyleading_quote
and an emptytrailing_quote
. (If you consider this an error, you'll need to raiseSyntaxError
in your own code.)split_quoted_strings
only supports the opening and closing markers for a string being the same string. If you need the opening and closing markers to be different strings, usesplit_delimiters
.
split_text_with_code(s, *, tab_width=8, allow_code=True, code_indent=4, convert_tabs_to_spaces=True)
-
Splits
s
into individual words, suitable for feeding intowrap_words
.s
may be eitherstr
orbytes
.Paragraphs indented by less than
code_indent
will be broken up into individual words.If
allow_code
is true, paragraphs indented by at leastcode_indent
spaces will preserve their whitespace: internal whitespace is preserved, and the newline is preserved. (This will preserve the formatting of code examples when these words are rejoined into lines bywrap_words
.)For more information, see the deep-dive on Word wrapping and formatting.
-
Splits
s
into words, assuming that upper-case characters start new words. Returns an iterator yielding the split words.Example:
list(split_title_case('ThisIsATitleCaseString'))
is equal to
['This', 'Is', 'A', 'Title', 'Case', 'String']
If
split_allcaps
is a true value (the default), runs of multiple uppercase characters will also be split before the last character. This is needed to handle splitting single-letter words. Consider:list(split_title_case('WhenIWasATeapot', split_allcaps=True))
returns
['When', 'I', 'Was', 'A', 'Teapot']
but
list(split_title_case('WhenIWasATeapot', split_allcaps=False))
returns
['When', 'IWas', 'ATeapot']
Note: uses the
isupper
andislower
methods to determine what are upper- and lower-case characters. This means it only recognizes the ASCII upper- and lower-case letters for bytes strings.
-
A tuple of
str
objects, representing every line-breaking whitespace character recognized by the Pythonstr
object. Identical tolinebreaks
.Useful as a
separator
argument for big functions that accept one, e.g. the big "multi-" family of functions, or thelines
and lines modifier functions.Also contains
'\r\n'
. See the deep-dive section on The Unix, Mac, and DOS line-break conventions for more.For more information, please see the Whitespace and line-breaking characters in Python and big deep-dive.
-
Equivalent to
str_linebreaks
without'\r\n'
.
-
A tuple of
str
objects, representing every whitespace character recognized by the Pythonstr
object. Identical towhitespace
.Useful as a
separator
argument for big functions that accept one, e.g. the big "multi-" family of functions, or thelines
and lines modifier functions.Also contains
'\r\n'
. See the deep-dive section on The Unix, Mac, and DOS line-break conventions for more.For more information, please see the Whitespace and line-breaking characters in Python and big deep-dive.
-
Equivalent to
str_whitespace
without'\r\n'
.
-
A tuple of
str
objects, representing every line-breaking whitespace character defined by Unicode.Useful as a
separator
argument for big functions that accept one, e.g. the big "multi-" family of functions, or thelines
and lines modifier functions.Also contains
'\r\n'
. See the deep-dive section on The Unix, Mac, and DOS line-break conventions for more.For more information, please see the Whitespace and line-breaking characters in Python and big deep-dive.
-
Equivalent to
unicode_linebreaks
without'\r\n'
.
-
A tuple of
str
objects, representing every whitespace character defined by Unicode.Useful as a
separator
argument for big functions that accept one, e.g. the big "multi-" family of functions, or thelines
and lines modifier functions.Also contains
'\r\n'
. See the deep-dive section on The Unix, Mac, and DOS line-break conventions for more.For more information, please see the Whitespace and line-breaking characters in Python and big deep-dive.
-
Equivalent to
unicode_whitespace
without'\r\n'
.
-
A tuple of
str
objects, representing every whitespace character recognized by the Pythonstr
object. Identical tostr_whitespace
.Useful as a
separator
argument for big functions that accept one, e.g. the big "multi-" family of functions, or thelines
and lines modifier functions.Also contains
'\r\n'
. See the deep-dive section on The Unix, Mac, and DOS line-break conventions for more.For more information, please see the Whitespace and line-breaking characters in Python and big deep-dive.
-
Equivalent to
whitespace
without'\r\n'
.
-
Combines
words
into lines and returns the result as a string. Similar totextwrap.wrap
.words
should be an iterator yielding str or bytes strings, and these strings should already be split at word boundaries. Here's an example of a valid argument forwords
:"this is an example of text split at word boundaries".split()
A single
'\n'
indicates a line break. If you want a paragraph break, embed two'\n'
characters in a row.margin
specifies the maximum length of each line. The length of every line will be less than or equal tomargin
, unless the length of an individual element insidewords
is greater thanmargin
.If
two_spaces
is true, elements fromwords
that end in sentence-ending punctuation ('.'
,'?'
, and'!'
) will be followed by two spaces, not one.Elements in
words
are not modified; any leading or trailing whitespace will be preserved. You can use this to preserve whitespace where necessary, like in code examples.For more information, see the deep-dive on Word wrapping and formatting.
-
Functions for working with time. Currently deals specifically with timestamps. The time functions in big are designed to make it easy to use best practices.
-
Ensures that a
datetime.date
object has a timezone set.If
d
has a timezone set, returnsd
. Otherwise, returns a newdatetime.date
object equivalent tod
with itstzinfo
set totimezone
.
-
Returns a new
datetime.date
object identical tod
but with itstzinfo
set totimezone
.
-
Ensures that a
datetime.datetime
object has a timezone set.If
d
has a timezone set, returnsd
. Otherwise, creates a newdatetime.datetime
object equivalent tod
with itstzinfo
set totimezone
.
-
Returns a new
datetime.datetime
object identical tod
but with itstzinfo
set totimezone
.
-
Parses a timestamp string returned by
timestamp_3339Z
. Returns adatetime.datetime
object.timezone
is an optional default timezone, and should be adatetime.tzinfo
object (orNone
). If provided, and the time represented in the string doesn't specify a timezone, thetzinfo
attribute of the returned object will be explicitly set totimezone
.parse_timestamp_3339Z
depends on thepython-dateutil
package. Ifpython-dateutil
is unavailable,parse_timestamp_3339Z
will also be unavailable.
-
Return a timestamp string in RFC 3339 format, in the UTC time zone. This format is intended for computer-parsable timestamps; for human-readable timestamps, use
timestamp_human()
.Example timestamp:
'2021-05-25T06:46:35.425327Z'
t
may be one of several types:- If
t
is None,timestamp_3339Z
uses the current time in UTC. - If
t
is an int or a float, it's interpreted as seconds since the epoch in the UTC time zone. - If
t
is atime.struct_time
object ordatetime.datetime
object, and it's not in UTC, it's converted to UTC. (Technically,time.struct_time
objects are converted to GMT, usingtime.gmtime
. Sorry, pedants!)
If
want_microseconds
is true, the timestamp ends with microseconds, represented as a period and six digits between the seconds and the'Z'
. Ifwant_microseconds
isfalse
, the timestamp will not include this text. Ifwant_microseconds
isNone
(the default), the timestamp ends with microseconds if the type oft
can represent fractional seconds: a float, adatetime
object, or the valueNone
. - If
-
Return a timestamp string formatted in a pleasing way using the currently-set local timezone. This format is intended for human readability; for computer-parsable time, use
timestamp_3339Z()
.Example timestamp:
"2021/05/24 23:42:49.099437"
t
can be one of several types:- If
t
isNone
,timestamp_human
uses the current local time. - If
t
is an int or float, it's interpreted as seconds since the epoch. - If
t
is atime.struct_time
ordatetime.datetime
object, it's converted to the local timezone.
If
want_microseconds
is true, the timestamp will end with the microseconds, represented as ".######". Ifwant_microseconds
is false, the timestamp will not include the microseconds.If
want_microseconds
isNone
(the default), the timestamp ends with microseconds if the type oft
can represent fractional seconds: a float, adatetime
object, or the valueNone
. - If
-
Support for version metadata objects.
Version(s=None, *, epoch=None, release=None, release_level=None, serial=None, post=None, dev=None, local=None)
-
Constructs a
Version
object, which represents a version number.You may define the version one of two ways:
- by passing in a version string to the
s
positional parameter. Example:Version("1.3.24rc37")
- by passing in keyword-only arguments setting the specific fields of the version.
Example:
Version(release=(1, 3, 24), release_level="rc", serial=37)
big's
Version
objects conform to the PEP 440 version scheme, parsing version strings using that PEP's official regular expression.Version
objects support the following features:- They're immutable once constructed.
- They support the following read-only properties:
epoch
release
major
(release[0]
)minor
(a safe version ofrelease[1]
)micro
(a safe version ofrelease[2]
)release_level
serial
post
dev
local
Version
objects are hashable.Version
objects support ordering and comparison; you can ask if twoVersion
objects are equal, or if one is less than the other.str()
on aVersion
object returns a normalized version string for that version.repr()
on aVersion
object returns a string that, ifeval
'd, reconstructs that object.Version
objects normalize themselves at initialization time:- Leading zeroes on version numbers are stripped.
- Trailing zeroes in
release
(and trailing.0
strings in the equivalent part of a version string) are stripped. - Abbreviations and alternate names for
release_level
are normalized.
- Don't tell anybody, but, you can also pass a
sys.version_info
object or apackaging.Version
object into the constructor instead of a version string.
When constructing a
Version
by passing in a strings
, the string must conform to this scheme, where square brackets denote optional substrings and names in angle brackets represent parameterized substrings:[<epoch>!]<major>(.<minor_etc>)*[<release_level>[<serial>]][.post<post>][.dev<dev>][+<local>]
All fields should be non-negative integers except for:
<major>(.<minor_etc>)*
is meant to connote a conventional dotted version number, like1.2
or1.5.3.8
. This section can contain only numeric digits and periods ('.'
). You may have as few or as many periods as you prefer. Trailing.0
entries will be stripped.<release_level>
can only be be one of the following strings:a
, meaning an alpha release,b
, meaning a beta release, orrc
, meaning a release candidate. For a final release, skip therelease_level
(and theserial
).
<local>
represents an arbitrary sequence of alphanumeric characters punctuated by periods.
Alternatively, you can construct a
Version
object by passing in these keyword-only arguments:-
epoch
-
A non-negative
int
orNone
. Represents an "epoch" of version numbers. A version number with a higher "epoch" is always a later release, regardless of all other fields. -
release
-
A tuple containing one or more non-negative integers. Represents the conventional part of the version number; the version string
1.3.8
would translate toVersion(release=(1, 3, 8))
. -
release_level
-
A
str
orNone
. If it's astr
, it must be one of the following strings:a
, meaning an alpha release,b
, meaning a beta release, orrc
, meaning a release candidate.
-
serial
-
A non-negative
int
orNone
. Represents how many releases there have been at thisrelease_level
. (The name is taken from Python'ssys.version_info
.) -
post
-
A non-negative
int
orNone
. Represents "post-releases", extremely minor releases made after a release:Version(release=(1, 3, 5)) < Version(release=(1, 3, 5), post=1)
-
dev
-
A non-negative
int
orNone
. Represents an under-development release. Higherdev
numbers represent later releases, but any release wheredev
is notNone
comes before any release wheredev
isNone
. In other words:Version(release=(1, 3, 5), dev=34) < Version(release=(1, 3, 5), dev=35) Version(release=(1, 3, 5), dev=35) < Version(release=(1, 3, 5))
-
local
-
A
tuple
of one or morestr
objects containing only one or more alphanumeric characters orNone
. Represents a purely local version number, allowing for minor build and patch differences but with no API or ABI changes.
-
Returns a formatted version of
s
, substituting attributes fromself
intos
usingstr.format_map
.For example,
Version("1.3.5").format('{major}.{minor}')
returns the string
'1.3'
.
- by passing in a version string to the
-
This family of string functions was inspired by Python's
str.split
,str.rsplit
, andstr.splitlines
methods. These string splitting methods are well-designed and often do what you want. But they're surprisingly narrow and opinionated. What if your use case doesn't map neatly to one of these functions?str.split
supports two very specific modes of operation--unless you want to split your string in exactly one of those two modes, you probably can't usestr.split
to solve your problem.So what can you use? There's
re.split
, but that can be hard to use.1 Regular expressions can be so hard to get right, and the semantics ofre.split
are subtly different from the usual string splitting functions. Not to mention, it doesn't support reverse!Now there's a new answer:
multisplit
. The goal ofmultisplit
is to be the be-all end-all string splitting function. It's designed to supercede every mode of operation provided bystr.split
,str.rsplit
, andstr.splitlines
, and it can even replacestr.partition
andstr.rpartition
too.multisplit
does it all!The downside of
multisplit
's awesome flexibility is that it can be hard to use... after all, it takes five keyword-only parameters. However, these parameters and their defaults are designed to be easy to remember.The best way to cope with
multisplit
's complexity is to use it as a building block for your own text splitting functions. For example, big usesmultisplit
to implementmultipartition
,normalize_whitespace
,lines
, and several other functions.To use
multisplit
, pass in the string you want to split, the separators you want to split on, and tweak its behavior with its five keyword arguments. It returns an iterator that yields string segments from the original string in your preferred format. The separator list is optional; if you don't pass one in, it defaults to an iterable of whitespace separators (eitherbig.whitespace
orbig.ascii_whitespace
, as appropriate).The cornerstone of
multisplit
is theseparators
argument. This is an iterable of strings, of the same type (str
orbytes
) as the string you want to split (s
).multisplit
will split the string at each non-overlapping instance of any string specified inseparators
.multisplit
lets you fine-tune its behavior via five keyword-only parameters:keep
lets you include the separator strings in the output, in a number of different formats.separate
lets you specify whether adjacent separator strings should be grouped together (likestr.split
operating on whitespace) or regarded as separate (likestr.split
when you pass in an explicit separator).strip
lets you strip separator strings from the beginning, end, or both ends of the string you're splitting. It also supports a special progressive mode that duplicates the behavior ofstr.split
when you useNone
as the separator.maxsplit
lets you specify the maximum number of times to split the string, exactly like themaxsplit
argument tostr.split
.reverse
makesmultisplit
behave likestr.rsplit
, starting at the end of the string and working backwards. (This only changes the behavior ofmultisplit
if you usemaxsplit
, or if your string contains overlapping separators.)
To make it slightly easier to remember, all these keyword-only parameters default to a false value. (Well, technically,
maxsplit
defaults to the special value-1
, for compatibility withstr.split
. But that's its special "don't do anything" magic value. All the other keyword-only parameters default toFalse
.)multisplit
also inspiredmultistrip
andmultipartition
, which also take this sameseparators
arguments. There are also other big functions that take aseparators
argument, for examplecomment_markers
forlines_filter_line_comment_lines
.)To give you a sense of how the five keyword-only parameters changes the behavior of
multisplit
, here's a breakdown of each of these parameters with examples.-
maxsplit
specifies the maximum number of times the string should be split. It behaves the same as themaxsplit
parameter tostr.split
.The default value of
-1
means "split as many times as you can". In our example here, the string can be split a maximum of three times. Therefore, specifying amaxsplit
of-1
is equivalent to specifying amaxsplit
of2
or greater:>>> list(big.multisplit('apple^banana_cookie', ('_', '^'))) # "maxsplit" defaults to -1 ['apple', 'banana', 'cookie'] >>> list(big.multisplit('apple^banana_cookie', ('_', '^'), maxsplit=0)) ['appleXbananaYcookie'] >>> list(big.multisplit('apple^banana_cookie', ('_', '^'), maxsplit=1)) ['apple', 'bananaYcookie'] >>> list(big.multisplit('apple^banana_cookie', ('_', '^'), maxsplit=2)) ['apple', 'banana', 'cookie'] >>> list(big.multisplit('apple^banana_cookie', ('_', '^'), maxsplit=3)) ['apple', 'banana', 'cookie']
maxsplit
has interactions withreverse
andstrip
. For more information, see the documentation regarding those parameters below.
-
keep
indicates whether or notmultisplit
should preserve the separator strings in the strings it yields. It supports four values: false, true, and the special valuesALTERNATING
andAS_PAIRS
.When
keep
is false,multisplit
throws away the separator strings; they won't appear in the output.>>> list(big.multisplit('apple#banana-cookie', ('#', '-'))) # "keep" defaults to False ['apple', 'banana', 'cookie'] >>> list(big.multisplit('apple-banana#cookie', ('#', '-'), keep=False)) ['apple', 'banana', 'cookie']
When
keep
is true,multisplit
keeps the separators, appending them to the end of the separated string:>>> list(big.multisplit('apple$banana~cookie', ('$', '~'), keep=True)) ['appleX', 'bananaY', 'cookie']
When
keep
isALTERNATING
,multisplit
keeps the separators as separate strings. The first string yielded is always a non-separator string, and from then on it always alternates between a separator string and a non-separator string. Put another way, if you store the output ofmultisplit
in a list, entries with an even-numbered index (0, 2, 4, ...) are always non-separator strings, and entries with an odd-numbered index (1, 3, 5, ...) are always separator strings.>>> list(big.multisplit('appleXbananaYcookie', ('X', 'Y'), keep=big.ALTERNATING)) ['apple', 'X', 'banana', 'Y', 'cookie']
Note that
ALTERNATING
always emits an odd number of strings, and the first and last strings yielded are always non-separator strings. Likestr.split
, if the string you're splitting starts or ends with a separator string,multisplit
will emit an empty string at the beginning or end, to preserve the "always begin and end with non-separator string" invariant:>>> list(big.multisplit('1a1z1', ('1',), keep=big.ALTERNATING)) ['', '1', 'a', '1', 'z', '1', '']
Finally, when
keep
isAS_PAIRS
,multisplit
keeps the separators as separate strings. But it doesn't yield bare strings; instead, it yields 2-tuples of strings. Every 2-tuple contains a non-separator string followed by a separator string.If the original string starts with a separator, the first 2-tuple will contain an empty non-separator string and the separator:
>>> list(big.multisplit('^apple-banana^cookie', ('-', '^'), keep=big.AS_PAIRS)) [('', '^'), ('apple', '-'), ('banana', '^'), ('cookie', '')]
The last 2-tuple will always contain an empty separator string:
>>> list(big.multisplit('apple*banana+cookie', ('*', '+'), keep=big.AS_PAIRS)) [('apple', '*'), ('banana', '+'), ('cookie', '')] >>> list(big.multisplit('apple*banana+cookie***', ('*', '+'), keep=big.AS_PAIRS, strip=True)) [('apple', '*'), ('banana', '+'), ('cookie', '')]
(This rule means that
AS_PAIRS
always emits an even number of strings. Contrast that withALTERNATING
, which always emits an odd number of strings, and the last string it emits is always a non-separator string. Put another way: if you ignore the tuples, the list of strings emitted byAS_PAIRS
is the same as those emitted byALTERNATING
, exceptAS_PAIRS
appends an empty string.)Because of this rule, if the original string ends with a separator, and
multisplit
doesn'tstrip
the right side, the final tuple emitted byAS_PAIRS
will be a 2-tuple containing two empty strings:>>> list(big.multisplit('appleXbananaYcookieX', ('X', 'Y'), keep=big.AS_PAIRS)) [('apple', 'X'), ('banana', 'Y'), ('cookie', 'X'), ('', '')]
This looks strange and unnecessary. But it is what you want. This odd-looking behavior is discussed at length in the section below, titled Why do you sometimes get empty strings when you split?
The behavior of
keep
can be affected by the value ofseparate
. For more information, see the next section, onseparate
.
-
separate
indicates whether multisplit should consider adjacent separator strings ins
as one separator or as multiple separators each separated by a zero-length string. It can be either false or true.>>> list(big.multisplit('apple=?banana?=?cookie', ('=', '?'))) # separate defaults to False ['apple', 'banana', 'cookie'] >>> list(big.multisplit('apple=?banana?=?cookie', ('=', '?'), separate=False)) ['apple', 'banana', 'cookie'] >>> list(big.multisplit('apple=?banana?=?cookie', ('=', '?'), separate=True)) ['apple', '', 'banana', '', '', 'cookie']
If
separate
andkeep
are both true values, and your string has multiple adjacent separators,multisplit
will views
as having zero-length non-separator strings between the adjacent separators:>>> list(big.multisplit('appleXYbananaYXYcookie', ('X', 'Y'), separate=True, keep=True)) ['appleX', 'Y', 'bananaY', 'X', 'Y', 'cookie'] >>> list(big.multisplit('appleXYbananaYXYcookie', ('X', 'Y'), separate=True, keep=big.AS_PAIRS)) [('apple', 'X'), ('', 'Y'), ('banana', 'Y'), ('', 'X'), ('', 'Y'), ('cookie', '')]
-
strip
indicates whether multisplit should strip separators from the beginning and/or end ofs
. It supports five values: false, true,big.LEFT
,big.RIGHT
, andbig.PROGRESSIVE
.By default,
strip
is false, which means it doesn't strip any leading or trailing separators:>>> list(big.multisplit('%|apple%banana|cookie|%|', ('%', '|'))) # strip defaults to False ['', 'apple', 'banana', 'cookie', '']
Setting
strip
to true strips both leading and trailing separators:>>> list(big.multisplit('%|apple%banana|cookie|%|', ('%', '|'), strip=True)) ['apple', 'banana', 'cookie']
big.LEFT
andbig.RIGHT
tellmultistrip
to only strip on that side of the string:>>> list(big.multisplit('.?apple.banana?cookie.?.', ('.', '?'), strip=big.LEFT)) ['apple', 'banana', 'cookie', ''] >>> list(big.multisplit('.?apple.banana?cookie.?.', ('.', '?'), strip=big.RIGHT)) ['', 'apple', 'banana', 'cookie']
big.PROGRESSIVE
duplicates a specific behavior ofstr.split
when usingmaxsplit
. It always strips on the left, but it only strips on the right if the string is completely split. Ifmaxsplit
is reached before the entire string is split, andstrip
isbig.PROGRESSIVE
,multisplit
won't strip the right side of the string. Note in this example how the trailing separatorY
isn't stripped from the input string whenmaxsplit
is less than3
.>>> list(big.multisplit('^apple^banana_cookie_', ('^', '_'), strip=big.PROGRESSIVE)) ['apple', 'banana', 'cookie'] >>> list(big.multisplit('^apple^banana_cookie_', ('^', '_'), maxsplit=0, strip=big.PROGRESSIVE)) ['apple^banana_cookie_'] >>> list(big.multisplit('^apple^banana_cookie_', ('^', '_'), maxsplit=1, strip=big.PROGRESSIVE)) ['apple', 'banana_cookie_'] >>> list(big.multisplit('^apple^banana_cookie_', ('^', '_'), maxsplit=2, strip=big.PROGRESSIVE)) ['apple', 'banana', 'cookie_'] >>> list(big.multisplit('^apple^banana_cookie_', ('^', '_'), maxsplit=3, strip=big.PROGRESSIVE)) ['apple', 'banana', 'cookie'] >>> list(big.multisplit('^apple^banana_cookie_', ('^', '_'), maxsplit=4, strip=big.PROGRESSIVE)) ['apple', 'banana', 'cookie']
-
reverse
specifies wheremultisplit
starts parsing the string--from the beginning, or the end--and in what direction it moves when parsing the string--towards the end, or towards the beginning_ It only supports two values: when it's false,multisplit
starts at the beginning of the string, and parses moving to the right (towards the end of the string). But whenreverse
is true,multisplit
starts at the end of the string, and parses moving to the left (towards the beginning of the string).This has two noticable effects on
multisplit
's output. First, this changes which splits are kept whenmaxsplit
is less than the total number of splits in the string. Whenreverse
is true, the splits are counted starting on the right and moving towards the left:>>> list(big.multisplit('apple-banana|cookie', ('-', '|'), reverse=True)) # maxsplit defaults to -1 ['apple', 'banana', 'cookie'] >>> list(big.multisplit('apple-banana|cookie', ('-', '|'), maxsplit=0, reverse=True)) ['apple-banana|cookie'] >>> list(big.multisplit('apple-banana|cookie', ('-', '|'), maxsplit=1, reverse=True)) ['apple-banana', 'cookie'] >>> list(big.multisplit('apple-banana|cookie', ('-', '|'), maxsplit=2, reverse=True)) ['apple', 'banana', 'cookie'] >>> list(big.multisplit('apple-banana|cookie', ('-', '|'), maxsplit=3, reverse=True)) ['apple', 'banana', 'cookie']
The second effect is far more subtle. It's only relevant when splitting strings containing multiple overlapping separators. When
reverse
is false, and there are two (or more) overlapping separators, the string is split by the leftmost overlapping separator. Whenreverse
is true, and there are two (or more) overlapping separators, the string is split by the rightmost overlapping separator.Consider these two calls to
multisplit
. The only difference between them is the value ofreverse
. They produce different results, even though neither one usesmaxsplit
.>>> list(big.multisplit('appleXYZbananaXYZcookie', ('XY', 'YZ'))) # reverse defaults to False ['apple', 'Zbanana', 'Zcookie'] >>> list(big.multisplit('appleXYZbananaXYZcookie', ('XY', 'YZ'), reverse=True)) ['appleX', 'bananaX', 'cookie']
Here are some examples of how you could use
multisplit
to replace some common Python string splitting methods. These exactly duplicate the behavior of the originals.def _multisplit_to_split(s, sep, maxsplit, reverse): separate = sep != None if separate: strip = False else: sep = big.ascii_whitespace if isinstance(s, bytes) else big.whitespace strip = big.PROGRESSIVE result = list(big.multisplit(s, sep, maxsplit=maxsplit, reverse=reverse, separate=separate, strip=strip)) if not separate: # ''.split() == ' '.split() == [] if result and (not result[-1]): result.pop() return result def str_split(s, sep=None, maxsplit=-1): return _multisplit_to_split(s, sep, maxsplit, False) def str_rsplit(s, sep=None, maxsplit=-1): return _multisplit_to_split(s, sep, maxsplit, True) def str_splitlines(s, keepends=False): linebreaks = big.ascii_linebreaks if isinstance(s, bytes) else big.linebreaks l = list(big.multisplit(s, linebreaks, keep=keepends, separate=True, strip=False)) if l and not l[-1]: # yes, ''.splitlines() returns an empty list l.pop() return l def _partition_to_multisplit(s, sep, reverse): if not sep: raise ValueError("empty separator") l = tuple(big.multisplit(s, (sep,), keep=big.ALTERNATING, maxsplit=1, reverse=reverse, separate=True)) if len(l) == 1: empty = b'' if isinstance(s, bytes) else '' if reverse: l = (empty, empty) + l else: l = l + (empty, empty) return l def str_partition(s, sep): return _partition_to_multisplit(s, sep, False) def str_rpartition(s, sep): return _partition_to_multisplit(s, sep, True)
You wouldn't want to use these, of course--Python's built-in functions are so much faster!
Sometimes when you split using
multisplit
, you'll get empty strings in the return value. This might be unexpected, violating the Principle Of Least Astonishment. But there are excellent reasons for this behavior.Let's start by observing what
str.split
does.str.split
really has two major modes of operation: when you don't pass in a separator (or pass inNone
for the separator), and when you pass in an explicit separator string. In this latter mode, the documentation says it regards every instance of a separator string as an individual separator splitting the string. What does that mean? Watch what happens when you have two adjacent separators in the string you're splitting:>>> '1,2,,3'.split(',') ['1', '2', '', '3']
What's that empty string doing between
'2'
and'3'
? Here's how you should think about it: when you pass in an explicit separator,str.split
splits at every occurance of that separator in the string. It always splits the string into two places, whenever there's a separator. And when there are two adjacent separators, conceptually, they have a zero-length string in between them:>>> '1,2,,3'[4:4] ''
The empty string in the output of
str.split
represents the fact that there were two adjacent separators. Ifstr.split
didn't add that empty string, the output would look like this:['1', '2', '3']
But then it'd be indistinguishable from splitting the same string without two separators in a row:
>>> '1,2,3'.split(',') ['1', '2', '3']
This difference is crucial when you want to reconstruct the original string from the split list.
str.split
with a separator should always be reversable usingstr.join
, and with that empty string there it works correctly:>>> ','.join(['1', '2', '3']) '1,2,3' >>> ','.join(['1', '2', '', '3']) '1,2,,3'
Now take a look at what happens when the string you're splitting starts or ends with a separator:
>>> ',1,2,3,'.split(',') ['', '1', '2', '3', '']
This might seem weird. But, just like with two adjacent separators, this behavior is important for consistency. Conceptually there's a zero-length string between the beginning of the string and the first comma. And
str.join
needs those empty strings in order to correctly recreate the original string.>>> ','.join(['', '1', '2', '3', '']) ',1,2,3,'
Naturally,
multisplit
lets you duplicate this behavior. When you wantmultisplit
to behave just likestr.split
does with an explicit separator string, just pass inkeep=False
,separate=True
, andstrip=False
. That is, ifa
andb
are strings,big.multisplit(a, (b,), keep=False, separate=True, strip=False)
always produces the same output as
a.split(b)
For example, here's
multisplit
splitting the strings we've been playing with, using these parameters:>>> list(big.multisplit('1,2,,3', (',',), keep=False, separate=True, strip=False)) ['1', '2', '', '3'] >>> list(big.multisplit(',1,2,3,', (',',), keep=False, separate=True, strip=False)) ['', '1', '2', '3', '']
This "emit an empty string" behavior also has ramifications when
keep
isn't false. The behavior ofkeep=True
is easy to predict;multisplit
just appends the separators to the previous string segment:>>> list(big.multisplit('1,2,,3', (',',), keep=True, separate=True, strip=False)) ['1,', '2,', ',', '3'] >>> list(big.multisplit(',1,2,3,', (',',), keep=True, separate=True, strip=False)) [',', '1,', '2,', '3,', '']
The principle here is that, when you use
keep=True
, you should be able to reconstitute the original string with''.join
:>>> ''.join(['1,', '2,', ',', '3']) '1,2,,3' >>> ''.join([',', '1,', '2,', '3,', '']) ',1,2,3,'
keep=big.ALTERNATING
is much the same, except we insert the separators as their own segments, rather than appending each one to the previous segment:>>> list(big.multisplit('1,2,,3', (',',), keep=big.ALTERNATING, separate=True, strip=False)) ['1', ',', '2', ',', '', ',', '3'] >>> list(big.multisplit(',1,2,3,', (',',), keep=big.ALTERNATING, separate=True, strip=False)) ['', ',', '1', ',', '2', ',', '3', ',', '']
Remember,
ALTERNATING
output always begins and ends with a non-separator string. If the string you're splitting begins or ends with a separator, the output frommultisplit
specifyingkeep=ALTERNATING
will correspondingly begin or end with an empty string.And, as with
keep=True
, you can also recreate the original string by passing these arrays in to''.join
:>>> ''.join(['1', ',', '2', ',', '', ',', '3']) '1,2,,3' >>> ''.join(['', ',', '1', ',', '2', ',', '3', ',', '']) ',1,2,3,'
Finally there's
keep=big.AS_PAIRS
. The behavior here seemed so strange, initially I thought it was wrong. But I've given it a lot of thought, and I've convinced myself that this is correct:>>> list(big.multisplit('1,2,,3', (',',), keep=big.AS_PAIRS, separate=True, strip=False)) [('1', ','), ('2', ','), ('', ','), ('3', '')] >>> list(big.multisplit(',1,2,3,', (',',), keep=big.AS_PAIRS, separate=True, strip=False)) [('', ','), ('1', ','), ('2', ','), ('3', ','), ('', '')]
That tuple at the end, just containing two empty strings:
('', '')
It's so strange. How can that be right?
In short, it's similar to the
str.split
situation. When called withkeep=AS_PAIRS
,multisplit
guarantees that the final tuple will contain an empty separator string. If the string you're splitting ends with a separator, it must emit the empty non-separator string, followed by the empty separator string.Think of it this way: with the tuple of empty strings there, you can easily convert one
keep
format into any another. (Provided that you know what the separators were--either the sourcekeep
format was not false, or you only used one separator string when callingmultisplit
). Without that tuple of empty strings at the end, you'd also have to have anif
statement to add or remove empty stuff from the end.I'll demonstrate this with a simple example. Here's the output of
multisplit
splitting the string'1a1z1'
by the separator'1'
, in each of the fourkeep
formats:>>> list(big.multisplit('1a1z1', '1', keep=False)) ['', 'a', 'z', ''] >>> list(big.multisplit('1a1z1', '1', keep=True)) ['1', 'a1', 'z1', ''] >>> list(big.multisplit('1a1z1', '1', keep=big.ALTERNATING)) ['', '1', 'a', '1', 'z', '1', ''] >>> list(big.multisplit('1a1z1', '1', keep=big.AS_PAIRS)) [('', '1'), ('a', '1'), ('z', '1'), ('', '')]
Because the
AS_PAIRS
output ends with that tuple of empty strings, we can mechanically convert it into any of the other formats, like so:>>> result = list(big.multisplit('1a1z1', '1', keep=big.AS_PAIRS)) >>> result [('', '1'), ('a', '1'), ('z', '1'), ('', '')] >>> [s[0] for s in result] # convert to keep=False ['', 'a', 'z', ''] >>> [s[0]+s[1] for s in result] # convert to keep=True ['1', 'a1', 'z1', ''] >>> [s for t in result for s in t][:-1] # convert to keep=big.ALTERNATING ['', '1', 'a', '1', 'z', '1', '']
If the
AS_PAIRS
output didn't end with that tuple of empty strings, you'd need to add anif
statement to restore the trailing empty strings as needed.str.split
returns an empty list when you split an empty string by whitespace:>>> ''.split() []
But not when you split by an explicit separator:
>>> ''.split('x') ['']
multisplit
is consistent here. If you split an empty string, it always returns an empty string, as long as the separators are valid:>>> list(big.multisplit('')) [''] >>> list(big.multisplit('', ('a', 'b', 'c'))) ['']
Similarly, when splitting a string that only contains whitespace,
str.split
also returns an empty list:>>> ' '.split() []
This is really the same as "splitting an empty string", because when
str.split
splits on whitespace, the first thing it does is strip leading whitespace.If you
multisplit
a string that only contains whitespace, and you split on whitespace characters, it returns two empty strings:>>> list(big.multisplit(' ')) ['', '']
This is because the string conceptually starts with a zero-length string, then has a run of whitespace characters, then ends with another zero-length string. So those two empty strings are the leading and trailing zero-length strings, separated by whitespace. If you tell
multisplit
to also strip the string, you'll get back a single empty string:>>> list(big.multisplit(' ', strip=True)) ['']
And
multisplit
behaves consistently even when you use different separators:>>> list(big.multisplit('ababa', 'ab')) ['', ''] >>> list(big.multisplit('ababa', 'ab', strip=True)) ['']
And I should know--
multisplit
is implemented usingre.split
!
-
Several functions in big take a
separators
argument, an iterable of separator strings. Examples of these functions includelines
andmultisplit
. Although you can use any iterable of strings you like, most often you'll be separating on some form of whitespace. But what, exactly, is whitespace? There's more to this topic than you might suspect.The good news is, you can almost certainly ignore all the complexity. These days the only whitespace characters you're likely to encounter are spaces, tabs, newlines, and maybe carriage returns. Python and big handle all those easily.
With respect to big and these
separators
arguments, big provides four values designed for use asseparators
. All four of these are tuples containing whitespace characters:- When working with
str
objects, you'll want to use eitherbig.whitespace
orbig.linebreaks
.big.whitespace
contains all the whitespace characters,big.linebreaks
contains just the line-breaking whitespace characters. - big also has equivalents for working with
bytes
objects:bytes_whitespace
andbytes_linebreaks
, respectively.
Apart from exceptionally rare occasions, these are all you'll ever need. And if that's all you need, you can stop reading this section now.
But what about those exceptionally rare occasions? You'll be pleased to know big handles them too. The rest of this section is a deep dive into these rare occasions.
Here's the list of all characters recognized by Python
str
objects as whitespace characters:# char decimal hex name ########################################## '\t' , # 9 - 0x0009 - tab '\n' , # 10 - 0x000a - newline '\v' , # 11 - 0x000b - vertical tab '\f' , # 12 - 0x000c - form feed '\r' , # 13 - 0x000d - carriage return '\x1c' , # 28 - 0x001c - file separator '\x1d' , # 29 - 0x001d - group separator '\x1e' , # 30 - 0x001e - record separator '\x1f' , # 31 - 0x001f - unit separator ' ' , # 32 - 0x0020 - space '\x85' , # 133 - 0x0085 - next line '\xa0' , # 160 - 0x00a0 - non-breaking space '\u1680', # 5760 - 0x1680 - ogham space mark '\u2000', # 8192 - 0x2000 - en quad '\u2001', # 8193 - 0x2001 - em quad '\u2002', # 8194 - 0x2002 - en space '\u2003', # 8195 - 0x2003 - em space '\u2004', # 8196 - 0x2004 - three-per-em space '\u2005', # 8197 - 0x2005 - four-per-em space '\u2006', # 8198 - 0x2006 - six-per-em space '\u2007', # 8199 - 0x2007 - figure space '\u2008', # 8200 - 0x2008 - punctuation space '\u2009', # 8201 - 0x2009 - thin space '\u200a', # 8202 - 0x200a - hair space '\u2028', # 8232 - 0x2028 - line separator '\u2029', # 8233 - 0x2029 - paragraph separator '\u202f', # 8239 - 0x202f - narrow no-break space '\u205f', # 8287 - 0x205f - medium mathematical space '\u3000', # 12288 - 0x3000 - ideographic space
This list was derived by iterating over every character defined in Unicode, and testing to see if the
split()
method on a Pythonstr
object splits at that character.The first surprise: this isn't the same as the list of all characters defined by Unicode as whitespace. It's almost the same list, except Python adds four extra characters:
'\x1c'
,'\x1d'
,'\x1e'
, and'\x1f'
, which respectively are called "file separator", "group separator", "record separator", and "unit separator". I'll refer to these as "the four ASCII separator characters".These characters were defined as part of the original ASCII standard, way back in 1963. As their names suggest, they were intended to be used as separator characters for data, the same way Ctrl-Z was used to indicate end-of-file in the CPM and earliest FAT filesystems. But the four ASCII separator characters were rarely used even back in the day. Today they're practically unheard of.
As a rule, printing these characters to the screen generally doesn't do anything--they don't move the cursor, and the screen doesn't change. So their behavior is a bit mysterious. A lot of people (including early Python programmers it seems!) thought that meant they're whitespace. This seems like an odd conclusion to me. After all, all the other whitespace characters move the cursor, either right or down or both; these don't move the cursor at all.
The Unicode standard is unambiguous: these characters are not whitespace. And yet Python's "Unicode object" behaves as if they are. So I'd say this is a bug; Python's Unicode object should implement what the Unicode standard says.
It seems that the C library used by GCC and clang on my workstation agree. I wrote a quick C program to print out what characters are and aren't whitespace, according to the C function isspace(). It seems the C library agrees with Unicode: it doesn't consider the four ASCII separator characters to be whitespace.
Here's the program, in case you want to try it yourself.
#include <stdio.h> #include <ctype.h> int main(int c, char *a[]) { int i; printf("\nisspace table.\nAdd the row and column numbers together (in hex).\n\n"); printf(" | 0 1 2 3 4 5 6 7 8 9 a b c d e f\n"); printf("-----+--------------------------------\n"); for (i = 0 ; i < 256 ; i++) { char *message = isspace(i) ? "Y" : "n"; if ((i % 16) == 0) printf("0x%02x |", i); printf(" %s", message); if ((i % 16) == 15) printf("\n"); } return 0; }
Here's its output on my workstation:
isspace table. Add the row and column numbers together (in hex). | 0 1 2 3 4 5 6 7 8 9 a b c d e f -----+-------------------------------- 0x00 | n n n n n n n n n Y Y Y Y Y n n 0x10 | n n n n n n n n n n n n n n n n 0x20 | Y n n n n n n n n n n n n n n n 0x30 | n n n n n n n n n n n n n n n n 0x40 | n n n n n n n n n n n n n n n n 0x50 | n n n n n n n n n n n n n n n n 0x60 | n n n n n n n n n n n n n n n n 0x70 | n n n n n n n n n n n n n n n n 0x80 | n n n n n n n n n n n n n n n n 0x90 | n n n n n n n n n n n n n n n n 0xa0 | n n n n n n n n n n n n n n n n 0xb0 | n n n n n n n n n n n n n n n n 0xc0 | n n n n n n n n n n n n n n n n 0xd0 | n n n n n n n n n n n n n n n n 0xe0 | n n n n n n n n n n n n n n n n 0xf0 | n n n n n n n n n n n n n n n n
0x1c through 0x1f are represented by the last four
n
characters on the second line, the0x10
line. The fact that they'ren
s tells you that this C standard library doesn't consider those characters to be whitespace.Like many bugs, this one has lingered for a long time. The behavior is present in Python 2, there's a ten-year-old issue on the Python issue tracker about this, and it's not making progress.
The second surprise has to do with
bytes
objects. Of course,bytes
objects represent binary data, and don't necessarily represent characters. Even if they do, they don't have any encoding associated with them. However, for convenience--and backwards-compatibility with Python 2--Python'sbytes
objects support several method calls that treat the data as if it were "ASCII-compatible".The surprise: These methods on Python
bytes
objects recognize a different set of whitespace characters. Here's the list of all bytes recognized by Pythonbytes
objects as whitespace:# char decimal hex name ####################################### '\t' , # 9 - 0x09 - tab '\n' , # 10 - 0x0a - newline '\v' , # 11 - 0x0b - vertical tab '\f' , # 12 - 0x0c - form feed '\r' , # 13 - 0x0d - carriage return ' ' , # 32 - 0x20 - space
This list was derived by iterating over every possible byte value, and testing to see if the
split()
method on a Pythonbytes
object splits at that byte.The good news is, this list is the same as ASCII's list, and it agrees with Unicode. In fact this list is quite familiar to C programmers; it's the same whitespace characters recognized by the standard C function
isspace()
(inctypes.h
). Python has used this function to decide which characters are and aren't whitespace in 8-bit strings since its very beginning.Notice that this list doesn't contain the four ASCII separator characters. That these two types in Python don't agree only enhances the mystery.
The situation is slightly worse with line-breaking characters. Line-breaking characters are a subset of whitespace characters; they're whitespace characters that always move the cursor down. And, as with whitespace generally, Python
str
objects don't agree with Unicode about what is and is not a line-breaking character, and Pythonbytes
objects don't agree with either of those.Here's the list of all Unicode characters recognized by Python
str
objects as line-breaking characters:# char decimal hex name ########################################## '\n' , # 10 0x000a - newline '\v' , # 11 0x000b - vertical tab '\f' , # 12 0x000c - form feed '\r' , # 13 0x000d - carriage return '\x1c' , # 28 0x001c - file separator '\x1d' , # 29 0x001d - group separator '\x1e' , # 30 0x001e - record separator '\x85' , # 133 0x0085 - next line '\u2028', # 8232 0x2028 - line separator '\u2029', # 8233 0x2029 - paragraph separator
This list was derived by iterating over every character defined in Unicode, and testing to see if the
splitlines()
method on a Pythonstr
object splits at that character.Again, this is different from the list of characters defined as line-breaking whitespace in Unicode. And again it's because Python defines some of the four ASCII separator characters as line-breaking characters. In this case it's only the first three; Python doesn't consider the fourth, "unit separator", as a line-breaking character. (I don't know why Python draws this distinction... but then again, I don't know why it considers the first three to be line-breaking. It's all a mystery to me.)
Here's the list of all characters recognized by Python
bytes
objects as line-breaking characters:# char decimal hex name ####################################### '\n' , # 10 0x000a - newline '\r' , # 13 0x000d - carriage return
This list was derived by iterating over every possible byte, and testing to see if the
splitlines()
method on a Pythonbytes
object splits at that byte.It's here we find our final unpleasant surprise: the methods on Python
bytes
objects don't consider'\v'
(vertical tab) and'\f'
(form feed) to be line-break characters. I assert this is also a bug. These are well understood to be line-breaking characters; "vertical tab" is like a "tab", except it moves the cursor down instead of to the right. And "form feed" moves the cursor to the top left of the next "page", which requires advancing at least one line.To be crystal clear: the odds that any of this will cause a problem for you are extremely low. In order for it to make a difference:
- you'd have to encounter text using one of these six characters where Python disagrees with Unicode and ASCII, and
- you'd have to process the input based on some definition of whitespace, and
- it would have to produce different results than you might have other wise expected, and
- this difference in results would have to be important.
It seems extremely unlikely that all of these will be true for you.
In case this does affect you, big has a complete set of predefined whitespace tuples that will handle any of these situations. big defines a total of ten tuples, sorted into five categories.
In every category there are two values: one that contains
whitespace
, the other containslinebreaks
. Thewhitespace
tuple contains all the possible values of whitespace--characters that move the cursor either horizontally, or vertically, or both, but don't print anything visible to the screen. Thelinebreaks
tuple contains the subset of whitespace characters that move the cursor vertically.The most important two values start with
str_
:str_whitespace
andstr_linebreaks
. These contain all the whitespace characters recognized by the Pythonstr
object.Next are two values that start with
unicode_
:unicode_whitespace
andunicode_linebreaks
. These contain all the whitespace characters defined in the Unicode standard. They're the same as thestr_
tuples except we remove the four ASCII separator characters.Third, two values that start with
ascii_
:ascii_whitespace
andascii_linebreaks
. These contain all the whitespace characters defined in ASCII. (Note that these containstr
objects, notbytes
objects.) They're the same as theunicode_
tuples, except we throw away all characters with a code point higher than 127.Fourth, two values that start with
bytes_
:bytes_whitespace
andbytes_linebreaks
. These contain all the whitespace characters recognized by the Pythonbytes
object. These tuples containbytes
objects, encoded using theascii
encoding. The list of characters is distinct from the other sets of tuples, and was derived as described above.Finally we have the two tuples that lack a prefix:
whitespace
andlinebreaks
. These are the tuples you should use most of the time, and several big functions use them as default values. These are simply copies ofstr_whitespace
andstr_linebreaks
respectively.(big actually defines an additional ten tuples, as discussed in the very next section.)
Historically, different platforms used different ASCII characters--or sequences of ASCII characters--to represent "go to the next line" in text files. Here are the most popular conventions:
\n - UNIX, Amiga, macOS 10+ \r - macOS 9 and earlier, many 8-bit computers \r\n - Windows, DOS
(There are a couple more conventions, and a lot more history, in the Wikipedia article on newlines.)
Handling these differing conventions was a stumbling block for a long time--both for computer programs, and in the daily lives of computer users. Python went through several iterations on how to handle this, eventually settling on the "universal newlines" support added in Python 2.3. These days the world seems to be converging on the UNIX standard
'\n'
; Windows supports it, and it's the default on every other modern platform. So in practice you probably don't have end-of-line conversion problems, either.But just in case, big has one more trick. All of the tuples defined in the previous section--from
whitespace
toascii_linebreaks
--also contain this string:'\r\n'
(The two
bytes_
tuples contain thebytes
equivalent,b'\r\n
.)This addition means that, when you use one of these tuples with one of the big functions that take separators, it'll split on
\r\n
as if it was one character. This means that big itself should automatically handle the DOS and Windows end-of-line character sequence, in case one happens to creep into your data.If you don't want this behavior, just add the suffix
_without_crlf
to the end of any of the ten tuples, e.g.whitespace_without_crlf
,bytes_linebreaks_without_crlf
.What if you need to split text by whitespace, or by lines, but that text is in
bytes
format with an unusual encoding? big makes that easy too. If one of the builtin tuples won't work for you, you can can make your own tuple from scratch, or modify an existing tuple to meet your needs.For example, let's say you need to split a document by whitespace, and the document is encoded in code page 850, aka "latin-1". Normally the easiest thing would be to decode it a
str
object using the'latin-1'
text codec, then operate on it normally. But you might have reasons why you don't want to decode it--maybe the document is damaged and doesn't decode properly, and it's easier to work with the encoded bytes than to fix it. If you want to process the text with a big function that accepts aseparator
argument, you could make your own custom tuple of "latin-1" whitespace characters. "latin-1" has the same whitespace characters as ASCII, but adds one more, value 255, which is not line-breaking. So it's easy to make the appropriate tuples yourself:latin_1_whitespace = big.bytes_whitespace + (b'\xff',) latin_1_linebreaks = big.bytes_linebreaks
What if you want to process a
bytes
object containing UTF-8? That's easy too. Just convert one of the existing tuples containingstr
objects usingbig.encode_strings
. For example, to split a UTF-8 encoded bytes objectb
using the Unicode line-breaking characters, you could call:multisplit(b, encode_strings(unicode_linebreaks, encoding='utf-8'))
Note that this technique probably won't work correctly for most other multibyte encodings, for example UTF-16. For these encodings, you should decode to
str
before processing.Why? It's because
multisplit
could find matches in multibyte sequences straddling characters. Consider this example:>>> haystack = '\u0101\u0102' >>> needle = '\u0201' >>> needle in haystack False >>> >>> encoded_haystack = haystack.encode('utf-16-le') >>> encoded_needle = needle.encode('utf-16-le') >>> encoded_needle in encoded_haystack True
The character
'\u0201'
doesn't appear in the original string, but the encoded version appears in the encoded string, as the second byte of the first character and the first byte of the second character:>>> encoded_haystack b'\x01\x01\x02\x01' >>> encoded_needle b'\x01\x02'
- When working with
-
lines
is a function that makes it easy to write well-behaved, feature-rich text parsers.lines
itself iterates over a string, returning an iterator that yields individual lines split from that string. The iterator yields a 2-tuple:(LinesInfo, line)
The
LinesInfo
object provides the line number and starting column number for each line. This makes it easy for your parser to provide line and column information for error messages.This iterator is designed to be modified by "lines modifier" functions. These are functions that consume a lines iterator and re-yield the values, possibly modifying or discarding them along the way. For example, passing a
lines
iterator intolines_filter_empty_lines
results in an iterator that skips over the empty lines. All the lines modifier functions that ship with big start with the stringlines_
.Most lines modifier function names belong to a category, encoded as the second word in the function name (immediately after
lines_
). Some examples:lines_filter_
functions conditionally remove lines from the output. For example,lines_filter_empty_lines
will only yield a line if it isn't empty.lines_strip_
functions may remove one or more substrings from the line. For example,lines_strip_indent
strips the leading whitespace from a line before yielding it. (Whenever a lines modifier removes leading text from a line, it will add aleading
field to the accompanyingLineInfo
object containing the removed substring, and will also update thecolumn_number
of the line to reflect the new starting column.)lines_convert_
functions means this lines modifier may change one or more substrings in the line. For example,lines_convert_tabs_to_spaces
changes tab characters to space characters in any lines it processes.
(big isn't strictly consistent about these category names though. For example,
lines_containing
andlines_grep
are obviously "filter" modifiers, but their names don't start withlines_filter_
.)All lines modifier functions are composable with each other; you can "stack" them together simply by passing the output of one into the input of another. For example,
with open("textfile.txt", "rt") as f: for info, line in big.lines_filter_empty_lines( big.lines_rstrip(lines(f.read()))): ...
will iterate over the lines of
textfile.txt
, skipping over all empty lines and lines that consist only of whitespace.When you stack line modifiers in this way, note that the outer modifiers happen later. In the above example, each line is first "r-stripped", and then discarded if it's empty. If you stacked the line modifiers in the opposite order:
with open("textfile.txt", "rt") as f: for info, line in big.lines_rstrip( big.lines_filter_empty_lines(lines(f.read()))): ...
then it'd filter out empty lines first, and then "r-strip" the lines. So lines in the input that contained only whitespace would still get yielded as empty lines, which is probably not what you want. Ordering is important!
It's probably clearer to constructed nested lines modifiers this way:
with open("textfile.txt", "rt") as f: li = lines(f.read()) li = big.lines_filter_empty_lines(li) li = big.lines_rstrip(li) for info, line in li: ...
This is much easier to read, particularly when one or more lines modifiers take additional arguments.
Of course, you can write your own lines modifier functions. Simply accept a lines iterator as an argument, iterate over it, and yield each line info and line--modifying them (or not yielding them!) as you see fit. You could even write your own lines iterator, a replacement for
lines
, if you need functionalitylines
doesn't provide.Note that if you write your own lines modifier function, and it removes text from the beginning the line, you must update
column_number
in theLineInfo
object manually--it doesn't happen automatically. The easiest way to handle this is also the best way: whenever clipping text from the beginning or end of the line, use theclip_leading
andclip_trailing
methods on theLineInfo
object.Speaking of best practices for lines modifier functions, it's also best practice to modify the existing
LineInfo
object that was yielded to you, rather than throwing it away, creating a new one, and yielding that instead. Previous lines modifier iterators may have added fields to theLineInfo
that you'd to preserve.Generally speaking,
LineInfo
objects obey an invariant. For any(info, line)
pair yielded bylines
or a lines modifier:info.leading + line + info.trailing + info.end == info.line
That is, you can recreate the original line by concatenating the "leading" string, the modified line, the "trailing" string, and the "end" string.
Of course, this won't be true if you use lines modifiers that replace characters in the line. For example,
lines_convert_tabs_to_spaces
replaces tab characters with one or more space characters. If the original line contains tabs, obviously the above invariant will no longer hold true.
-
big contains three functions used to reflow and format text in a pleasing manner. In the order you should use them, they are
split_text_with_code
,wrap_words(),
, and optionallymerge_columns
. This trio of functions gives you the following word-wrap superpowers:- Paragraphs of text representing embedded "code" don't get word-wrapped. Instead, their formatting is preserved.
- Multiple texts can be merged together into multiple columns.
The big word wrapping functions also distinguish between "text" and "code". The main distinction is, "text" lines can get word-wrapped, but "code" lines shouldn't. big considers any line starting with enough whitespace to be a "code" line; by default, this is four spaces. Any non-blank line that starting with four spaces is a "code" line, and any non-blank line that starts with less than four spaces is a "text" line.
In "text" mode:
- words are separated by whitespace,
- initial whitespace on the line is discarded,
- the amount of whitespace between words is irrelevant,
- individual newline characters are ignored, and
- more than two newline characters are converted into exactly two newlines (aka a "paragraph break").
In "code" mode:
- all whitespace is preserved, except for trailing whitespace on a line, and
- all newline characters are preserved.
Also, whenever
split_text_with_code
switches between "text" and "code" mode, it emits a paragraph break.A split text array is an intermediary data structure used by big.text functions to represent text. It's literally just an array of strings, where the strings represent individual word-wrappable substrings.
split_text_with_code
returns a split text array, andwrap_words()
consumes a split text array.You'll see four kinds of strings in a split text array:
- Individual words, ready to be word-wrapped.
- Entire lines of "code", preserving their formatting.
- Line breaks, represented by a single newline:
'\n'
. - Paragraph breaks, represented by two newlines:
'\n\n'
.
This might be clearer with an example or two. The following text:
hello there! this is text. this is a second paragraph!
would be represented in a Python string as:
"hello there!\nthis is text.\n\n\nthis is a second paragraph!"
Note the three newlines between the second and third lines.
If you then passed this string in to
split_text_with_code
, it'd return this split text array:[ 'hello', 'there!', 'this', 'is', 'text.', '\n\n', 'this', 'is', 'a', 'second', 'paragraph!']
split_text_with_code
merged the first two lines together into a single paragraph, and collapsed the three newlines separating the two paragraphs into a "paragraph break" marker (two newlines in one string).Now let's add an example of text with some "code". This text:
What are the first four squared numbers? for i in range(1, 5): print(i**2) Python is just that easy!
would be represented in a Python string as (broken up into multiple strings for clarity):
"What are the first four squared numbers?\n\n" + " for i in range(1, 5):\n\n\n" + " print(i**2)\n\nPython is just that easy!"
split_text_with_code
considers the two lines with initial whitespace as "code" lines, and so the text is split into the following split text array:['What', 'are', 'the', 'first', 'four', 'squared', 'numbers?', '\n\n', ' for i in range(1, 5):', '\n', '\n', '\n', ' print(i**2)', '\n\n', 'Python', 'is', 'just', 'that', 'easy!']
Here we have a "text" paragraph, followed by a "code" paragraph, followed by a second "text" paragraph. The "code" paragraph preserves the internal newlines, though they are represented as individual "line break" markers (strings containing a single newline). Every paragraph is separated by a "paragraph marker".
Here's a simple algorithm for joining a split text array back into a single string:
prev = None a = [] for word in split_text_array: if not (prev and prev.isspace() and word.isspace()): a.append(' ') a.append(word) text = "".join(a)
Of course, this algorithm is too simple to do word wrapping. Nor does it handle adding two spaces after sentence-ending punctuation. In practice, you shouldn't do this by hand; you should use
wrap_words
.merge_columns
merges multiple strings into columns on the same line.For example, it could merge these three Python strings:
[ "Here's the first\ncolumn of text.", "More text over here!\nIt's the second\ncolumn! How\nexciting!", "And here's a\nthird column.", ]
into the following text:
Here's the first More text over here! And here's a column of text. It's the second third column. column! How exciting!
(Note that
merge_columns
doesn't do its own word-wrapping; instead, it's designed to consume the output ofwrap_words
.)Each column is passed in to
merge_columns
as a "column tuple":(s, min_width, max_width)
s
is the string,min_width
is the minimum width of the column, andmax_width
is the minimum width of the column.As you saw above,
s
can contain newline characters, andmerge_columns
obeys those when formatting each column.For each column,
merge_columns
measures the longest line of each column. The width of the column is determined as follows:- If the longest line is less than
min_width
characters long, the column will bemin_width
characters wide. - If the longest line is less than or equal to
min_width
characters long, and less than or equal tomax_width
characters long, the column will be as wide as the longest line. - If the longest line is greater than
max_width
characters long, the column will bemax_width
characters wide, and lines that are longer thanmax_width
characters will "overflow".
What is "overflow"? It's a condition
merge_columns
may encounter when the text in a column is wider than that column'smax_width
.merge_columns
needs to consider both "overflow lines", lines that are longer thanmax_width
, and "overflow columns", columns that contain one or more overflow lines.What does
merge_columns
do when it encounters overflow?merge_columns
supports three "strategies" to deal with this condition, and you can specify which one you want using itsoverflow_strategy
parameter. The three strategies are:-
OverflowStrategy.RAISE
: Raise anOverflowError
exception. The default. -
OverflowStrategy.INTRUDE_ALL
: Intrude into all subsequent columns on all lines where the overflowed column is wider than itsmax_width
. The subsequent columns "make space" for the overflow text by not adding text on those overflowed lines; this is called "pausing" their output. -
OverflowStrategy.DELAY_ALL
: Delay all columns after the overflowed column, not beginning any until after the last overflowed line in the overflowed column. This is like theINTRUDE_ALL
strategy, except that the columns "make space" by pausing their output until the last overflowed line.
When
overflow_strategy
isINTRUDE_ALL
orDELAY_ALL
, and eitheroverflow_before
oroverflow_after
is nonzero, these specify the number of extra lines before or after the overflowed lines in a column where the subsequent columns "pause".
-
big's
TopologicalSorter
is a drop-in replacement forgraphlib.TopologicalSorter
in the Python standard library (new in 3.9). However, the version in big has been greatly upgraded:prepare
is now optional, though it still performs a cycle check.- You can add nodes and edges to a graph at any time, even while iterating over the graph. Adding nodes and edges always succeeds.
- You can remove nodes from graph
g
with the new methodg.remove(node)
. Again, you can do this at any time, even while iterating over the graph. Removing a node from the graph always succeeds, assuming the node is in the graph. - The functionality for iterating over a graph now lives in its own object called
a view. View objects implement the
get_ready
,done
, and__bool__
methods. There's a default view built in to the graph object; theget_ready
,done
, and__bool__
methods on a graph just call into the graph's default view. You can create a new view at any time by calling the newview
method.
Note that if you're using a view to iterate over the graph, and you modify the graph, and the view now represents a state that isn't coherent with the graph, attempting to use that view raises a
RuntimeError
. (I'll define what I mean by view "coherence" in the next subsection.)This implementation also fixes some minor warts with the existing API:
- In Python's implementation,
static_order
andget_ready
/done
are mutually exclusive. If you ever callget_ready
on a graph, you can never callstatic_order
, and vice-versa. The implementaiton in big doesn't have this restriction, because its implementation ofstatic_order
creates and uses a new view object every time it's called. - In Python's implementation, you can only iterate over the graph once, or call
static_order
once. The implementation in big solves this in several ways: it allows you to create as many views as you want, and you can call the newreset
method on a view to reset it to its initial state.
So what does it mean for a view to no longer be coherent with the graph? Consider the following code:
g = big.TopologicalSorter() g.add('B', 'A') g.add('C', 'A') g.add('D', 'B', 'C') g.add('B', 'A') v = g.view() g.ready() # returns ('A',) g.add('A', 'Q')
First this creates a graph
g
with a classic "diamond" dependency pattern. Then it creates a new viewv
, and gets the currently "ready" nodes, which consists just of the node'A'
. Finally it adds a new dependency:'A'
depends on'Q'
.At this moment, view
v
is no longer coherent.'A'
has been marked as "ready", but'Q'
has not. And yet'A'
depends on'Q'
. All those statements can't be true at the same time! So viewv
is no longer coherent, and any attempt to interact withv
raises an exception.To state it more precisely: if view
v
is a view on graphg
, and you callg.add('Z', 'Y')
, and neither of these statements is true in viewv
:'Y'
has been marked asdone
.'Z'
has not yet been yielded byget_ready
.
then
v
is no longer "coherent".(If
'Y'
has been marked asdone
, then it's okay to make'Z'
dependent on'Y'
regardless of what state'Z'
is in. Likewise, if'Z'
hasn't been yielded byget_ready
yet, then it's okay to make'Z'
dependent on'Y'
regardless of what state'Y'
is in.)Note that you can restore a view to coherence. In this case, removing either
Y
orZ
fromg
would resolve the incoherence betweenv
andg
, andv
would start working again.Also note that you can have multiple views, in various states of iteration, and by modifying the graph you may cause some to become incoherent but not others. Views are completely independent from each other.
-
One minor complaint I have about Python regards inner classes. An "inner class" is a class defined inside another class. And, well, inner classes seem kind of half-baked. Unlike functions, inner classes don't get bound to the object.
Consider this Python code:
class Outer(object): def method(self): pass class Inner(object): def __init__(self): pass o = Outer() o.method() i = o.Inner()
When
o.method
is called, Python automatically passes in theo
object as the first parameter (generally calledself
). In object-oriented lingo,o
is bound tomethod
, and indeed Python calls this object a bound method:>>> o.method <bound method Outer.method of <__main__.Outer object at 0x########>>
But that doesn't happen when
o.Inner
is called. (It does pass in aself
, but in this case it's the newly-createdInner
object.) There's just no built-in way for theo.Inner
object being constructed to automatically get a reference too
. If you need one, you must explicitly pass one in, like so:class Outer(object): def method(self): pass class Inner(object): def __init__(self, outer): self.outer = outer o = Outer() o.method() i = o.Inner(o)
This seems redundant. You don't have to pass in
o
explicitly to method calls, why should you have to pass it in explicitly to inner classes?Well--now you don't have to! You just decorate the inner class with
@big.BoundInnerClass
, andBoundInnerClass
takes care of the rest!Let's modify the above example to use our
BoundInnerClass
decorator:from big import BoundInnerClass class Outer(object): def method(self): pass @BoundInnerClass class Inner(object): def __init__(self, outer): self.outer = outer o = Outer() o.method() i = o.Inner()
Notice that
Inner.__init__
now requires anouter
parameter, even though you didn't pass in any arguments too.Inner
. When it's called,o
is magically passed in toouter
! Thanks,BoundInnerClass
! You've saved the day!Decorating an inner class like this always adds a second positional parameter, after
self
. And, likeself
, you don't have to use the nameouter
, you can use any name you like. (Although it's probably a good idea, for consistency's sakes.)Bound inner classes get slightly complicated when mixed with inheritance. It's not all that difficult, you merely need to obey the following rules:
-
A bound inner class can inherit normally from any unbound class.
-
To subclass from a bound inner class while still inside the outer class scope, or when referencing the inner class from the outer class (as opposed to an instance of the outer class), you must actually subclass or reference
classname.cls
. This is because inside the outer class, the "class" you see is actually an instance of aBoundInnerClass
object. -
All classes that inherit from a bound inner class must always call the superclass's
__init__
. You don't need to pass in theouter
parameter; it'll be automatically passed in to the superclass's__init__
as before. -
An inner class that inherits from a bound inner class, and which also wants to be bound to the outer object, should be decorated with
BoundInnerClass
. -
An inner class that inherits from a bound inner class, but doesn't want to be bound to the outer object, should be decorated with
UnboundInnerClass
.
Restating the last two rules: every class that descends from any
BoundInnerClass
should be decorated with eitherBoundInnerClass
orUnboundInnerClass
. Which one you use depends on what behavior you want--whether or not you want your inner subclass to automatically get theouter
instance passed in to its__init__
.Here's a simple example using inheritance with bound inner classes:
from big import BoundInnerClass, UnboundInnerClass class Outer(object): @BoundInnerClass class Inner(object): def __init__(self, outer): self.outer = outer @UnboundInnerClass class ChildOfInner(Inner.cls): def __init__(self): super().__init__() o = Outer() i = o.ChildOfInner()
We followed the rules:
Inner
inherits from object; since object isn't a bound inner class, there are no special rules about inheritanceInner
needs to obey.ChildOfInner
inherits fromInner.cls
, notInner
.- Since
ChildOfInner
inherits from aBoundInnerClass
, it must be decorated with eitherBoundInnerClass
orUnboundInnerClass
. It doesn't want the outer object passed in, so it's decorated withUnboundInnerClass
. ChildOfInner.__init__
callssuper().__init__
.
Note that, because
ChildOfInner
is decorated withUnboundInnerClass
, it doesn't take anouter
parameter. Nor does it pass in anouter
argument when it callssuper().__init__
. But when the constructor forInner
is called, the correctouter
parameter is passed in--like magic! Thanks again,BoundInnerClass
!If you wanted
ChildOfInner
to also get the outer argument passed in to its__init__
, just decorate it withBoundInnerClass
instead ofUnboundInnerClass
, like so:from big import BoundInnerClass class Outer(object): @BoundInnerClass class Inner(object): def __init__(self, outer): self.outer = outer @BoundInnerClass class ChildOfInner(Inner.cls): def __init__(self, outer): super().__init__() assert self.outer == outer o = Outer() i = o.ChildOfInner()
Again,
ChildOfInner.__init__
doesn't need to explicitly pass inouter
when callingsuper.__init__
.You can see more complex examples of using inheritance with
BoundInnerClass
(andUnboundInnerClass
) in the big test suite.-
If you refer to a bound inner class directly from the outer class, rather than using the outer instance, you get the original class. This ensures that references to
Outer.Inner
are consistent; this class is also a base class of all the bound inner classes. Additionally, if you attempt to construct an instance of an unboundOuter.Inner
class without referencing it via an instance, you must pass in the outer parameter by hand--just like you'd have to pass in theself
parameter by hand when calling a method on the class itself rather than on an instance of the class. -
If you refer to a bound inner class from an outer instance, you get a subclass of the original class.
-
Bound classes are cached in the outer object, which both provides a small speedup and ensures that
isinstance
relationships are consistent. -
You must not rename inner classes decorated with either
BoundInnerClass
orUnboundInnerClass
! The implementation ofBoundInnerClass
looks up the bound inner class in the outer object by name in several places. Adding aliases to bound inner classes is harmless, but the original attribute name must always work. -
Bound inner classes from different objects are different classes. This is symmetric with bound methods; if you have two objects
a
andb
that are instances of the same class,a.BoundInnerClass != b.BoundInnerClass
, just asa.method != b.method
. -
The binding only goes one level deep; if you had an inner class
C
inside another inner classB
inside a classA
, the constructor forC
would be called with theB
object, not theA
object. -
Similarly, if you have a bound inner class
B
inside a classA
, and another bound inner classD
inside a classC
, andD
inherits fromB
, the constructor forD
will be called with theB
object but not theA
object. WhenD
callssuper().__init__
it'll have to fill in theouter
parameter by hand. -
There's a race condition in the implementation: if you access a bound inner class through an outer instance from two separate threads, and the bound inner class was not previously cached, the two threads may get different (but equivalent) bound inner class objects, and only one of those instances will get cached on the outer object. This could lead to confusion and possibly cause bugs. For example, you could have two objects that would be considered equal if they were instances of the same bound inner class, but would not be considered equal if instantiated by different instances of that same bound inner class. There's an easy workaround for this problem: access the bound inner class from the
__init__
of the outer class, which should allow the code to cache the bound inner class instance before a second thread could ever get a reference to the outer object.
-
2024/11/15
-
- New function in the
text
module:format_map
. This works like Python'sstr.format_map
method, except it allows nested curly-braces. Example:big.format_map("The {extension} file is {{extension} size} bytes.", {'extension': 'mp3', 'mp3 size': 8555})
- New method:
Version.format
is likestrftime
but forVersion
objects. You pass in a format string withVersion
attributes in curly braces and it formats the string with values from thatVersion
object. - The
Version
constructor now accepts apackaging.Version
object as an initializer. Embrace and extend! lines
now takes two new arguments:clip_linebreaks
, default is true. If true, it clips the linebreaks off the lines before yielding them, otherwise it doesn't. (Either way, the linebreaks are still stored ininfo.end
.)source
, default is an empty string.source
should represent the source of the line in a meaninful way to the user. It's stored in theLinesInfo
objects yielded bylines
, and should be incorporated into error messages.
LineInfo.clip_leading
andLineInfo.clip_trailing
now automatically detect if you've clipped the entire line, and if so move all clipped text toinfo.trailing
(and adjust thecolumn_number
accordingly).LineInfo.clip_leading
andLineInfo.clip_trailing
: Minor performance upgrade. Previously, if the user passed in the string to clip, the two functions would throw it away then recreate it. Now they just use the passed-in string.- Changed the word "newline" to "linebreak" everywhere. They mean the same thing, but the Unicode standard consistently uses the word "linebreak"; I assume the boffins on the committee thought about this a lot and argued and finally settled on this word for good (if unpublished?) reasons.
- Add explicit support (and CI coverage & testing) for Python 3.13. (big didn't need any changes, it was already 100% compatible with 3.13.)
p.s. 56
- New function in the
2024/09/17
-
Optimized
split_delimiters
. The new version uses a much more efficient internal representation of how to react to the various delimiters when processing the text. Perfunctorytimeit
experiments suggest this newsplit_delimiters
is maybe 5-6% faster than it was in 12.2.Minor breaking change:
split_delimiters
now consistently raisesSyntaxError
for mismatched delimiters. (Previously it would sometimes raiseValueError
.)
2024/09/11
-
-
A minor semantic change to
lines_strip_indent
: when it encounters a whitespace-only line, it clips the line to trailing in theLineInfo
object. It used to clip such lines to leading. But this changedLineInfo.column_number
in a nonsensical way.This behavior is policy going forward: if a lines modifer function ever clips the entire line, it must clip it to trailing rather than leading. It shouldn't matter one way or another, as whitespace-only lines arguably shouldn't have any explicit semantics. But it makes intuitive sense to me that their empty line should be at column number 1, rather than 9 or 13 or whatnot. (Especially considering that with
lines_strip_indent
their indent value is synthetic anyway, inferred by looking ahead.) -
Major cleanup to the lines modifier test suites.
-
2024/09/07
-
In fine big tradition, here's an update published immediately after a big release.
Surprisingly, even though this is only a small update, it still adds two new packages to big: metadata and version.
There's sadly one breaking change.
-
New package. A package containing metadata about big itself. Currently only contains one thing: version.
-
New package. A package for working with version information.
-
This API has breaking changes.
The default value for
quotes
has changed. Now it's what it should always have been: empty. No quote marks are defined by default, which means the default behavior oflines_strip_line_comments
is now to simply truncate the line at the leftmost comment marker.Processing quote marks by default was always too opinionated for this function. Consider: having
'
active as a quote marker meant that single-quotes need to be balanced,which means you can't process a line like this that only has one.
Wish I'd figured this out before the release yesterday! Hopefully this will only cause smiles, and no teeth-gnashing.
-
New value. A
Version
object representing the current version of big.
-
New class.
Version
represents a version number. You can construct them from PEP 440-compliant version strings, or specify them using keyword-only parameters.Version
objects are immutable, ordered, and hashable.
-
2024/09/06
Lots of changes this time! Most of 'em are in the
big.text
module, particularly thelines
and lines modifier functions. But plenty of other modules got in on the fun too.big even has a new module:
deprecated
. Deprecated functions and classes get moved into this module. Note that the contents ofdeprecated
are not automatically imported intobig.all
.The following functions and classes have breaking changes:
These functions have been renamed:
-
lines_filter_comment_lines
is nowlines_filter_line_comment_lines
lines_strip_comments
is nowlines_strip_line_comments
parse_delimiters
is nowsplit_delimiters
big has five new functions:
-
Finally, here's an in-depth description of all changes in big 0.12, sorted by API name.
-
Extremely minor change! Python's
bytes
andstr
objects don't agree on which ASCII characters represent line breaks. Thestr
object obeys the Unicode standard, which means there are four:\n \v \f \r
For some reason, Python's
bytes
object only supports two:\n \r
I have no idea why this is. We might fix it. And if we do, big is ready. It now calculates
bytes_linebreaks
andbytes_linebreaks_without_crlf
on the fly to agree with Python. If either (or both) work as newline characters for thesplitlines
method on abytes
object, they'll automatically be inserted into these iterables of bytes linebreaks.
-
New function. If you split a string two different ways, producing two arrays that sum to the original string,
combine_splits
will merge those splits together, producing a new array that splits in every place any of the two split arrays had a split.Example:
>>> big.combine_splits("abcdefg", ['a', 'bcdef', 'g'], ['abc', 'd', 'efg']) ['a, 'bc', 'd', 'ef', 'g']
-
This API has breaking changes.
Delimiter
is a simple data class, representing information about delimiters tosplit_delimiters
(previouslyparse_delimiters
).split_delimiters
has changed, and some of those changes are reflected in theDelimiter
object; also, some changes toDelimiter
are simply better API choices.The old
Delimiter
object is deprecated but still available, asbig.deprecated.Delimiter
. It should only be used withbig.deprecated.parse_delimiters
, which is also deprecated.big.deprecated.Delimiter
will be removed whenbig.deprecated.parse_delimiters
is removed, which will be no sooner than September 2025.Changes:
- The first argument to the old
Delimiter
object wasopen
, and was stored as theopen
attribute. These have both been completely removed. Now, the "open delimiter" is specified as a key in a dictionary of delimiters, mapping open delimiters toDelimiter
objects. - The old
Delimiter
object had a booleanbackslash
attribute; if it was True, that delimiter allows escaping using a backslash. NowDelimiter
has anescape
parameter and attribute, specifying the escape string you want to use inside that set of delimiters. Delimiter
also now has two new attributes,quoting
andmultiline
. These default toFalse
andTrue
respectively; you can specify values for these with keyword-only arguments to the constructor.- The new
Delimiter
object is read-only after construction, and is hashable.
- The first argument to the old
-
Slightly liberalized the types it accepts. It previously required
o
to be a collection; nowo
can be abytes
orstr
object. Also, it now explicitly supportsset
.
-
Minor behavior change. If the
o
you pass in is afloat
, or can be converted tofloat
(but couldn't be converted directly to anint
),get_int_or_float
will experimentally convert thatfloat
to anint
. If the resultingint
compares equal to thatfloat
, it'll return theint
, otherwise it'll return thefloat
.For example,
get_int_or_float("13.5")
still returns13.5
(afloat
), butget_int_or_float("13.0")
now returns13
(anint
). (Previously,get_int_or_float("13.0")
would have returned13.0
.)This better represents the stated aesthetic of the function--it prefers ints to floats. And since the int is exactly equal to the float, I assert this is completely backwards compatible.
-
Minor updates to the documentation and to the text of some exceptions.
-
This API has breaking changes.
Breaking change: the
LineInfo
constructor has a newlines
positional parameter, added in front of the existing positional parameters. This new first argument should be thelines
iterator that yielded thisLineInfo
object. It's stored in thelines
attribute. (Why this change? Thelines
object contains information needed by the lines modifiers, for exampletab_width
.)Minor optimization:
LineInfo
objects previously had many optional fields, which might or might not be added dynamically. Now all fields are pre-added. (This makes the CPython 3.13 runtime happier; it really wants you to set all your class's attributes in its__init__
.)Minor breaking change: the original string stored in the
line
attribute now includes the linebreak character, if any. This means concatenating all theinfo.line
strings will reconstruct the originals
passed in tolines
.New feature: while some methods used to update the
leading
attribute when they clipped leading text from the line, the "lines modifiers" are now very consistent about updatingleading
, and the new symmetrical attributetrailing
.New feature:
LineInfo
now has anend
attribute, which contains the end-of-line character that ended this line.These three attributes allow us to assert a new invariant: as long as you modify the contents of
line
(e.g. turning tabs into spaces),info.leading + line + info.trailing + info.end == info.line
LineInfo
objects now always have these attributes:lines
, which contains the base lines iterator.line
, which contains the original unmodified line.line_number
, which contains the line number of this line.column_number
, which contains the starting column number of the first character of this line.indent
, which contains the indent level of the line if computed, andNone
otherwise.leading
, which contains the string stripped from the beginning of the line. Initially this is the empty string.trailing
, which contains the string stripped from the end of the line. Initially this is the empty string.end
, which is the end-of-line character that ended the current line. For the last line yielded,info.end
will always be the empty string. If the last character of the text split bylines
was an end-of-line character, the lastline
yielded will be the empty string, andinfo.end
will also be the empty string.match
, which contains aMatch
object if this line was matched with a regular expression, andNone
otherwise.
LineInfo
also has two new methods:LineInfo.clip_leading
andLineInfo.clip_trailing(line, s)
. These methods clip a leading or trailing substring from the currentline
, and transfer it to the relevant field inLineInfo
(eitherleading
ortrailing
).clip_leading
also updates thecolumn_number
attribute.The name "clip" was chosen deliberately to be distinct from "strip". "strip" functions on strings remove substrings and throws them away; my "clip" functions on strings removes substrings and puts them somewhere else.
-
lines_filter_comment_lines
has been renamed tolines_filter_line_comment_lines
. For backwards compatibility, the function is also available under the old name; this old name will eventually be removed, but not before September 2025.
-
This API has breaking changes.
New name for
lines_filter_comment_lines
.Correctness improvements:
lines_filter_line_comment_lines
now enforces that single-quoted strings can't span lines, and multi-quoted strings must be closed before the end of the last line.Minor optimization: for every line, it used to
lstrip
a copy of the line, then use a regular expression to see if the line started with one of the comment characters. Now the regular expression itself skips past any leading whitespace.
-
New feature:
lines_grep
has always usedre.search
to examine the lines yielded. It now writes the result toinfo.match
. (If you pass ininvert=True
tolines_grep
,lines_grep
still writes to thematch
attribute--but it always writesNone
.)If you want to write the
re.Match
object to another attribute, pass in the name of that attribute to the keyword-only parametermatch
.
-
New feature:
lines_rstrip
andlines_strip
now both accept aseparators
argument; this is an iterable of separators, like the argument tomultisplit
. The default value ofNone
preserves the previous behavior, stripping whitespace.
-
New feature:
lines_sort
now accepts akey
parameter, which is used as thekey
argument forlist.sort
. The value passed in tokey
is the(info, line)
tuple yielded by the upstream iterator. The default value preserves the previous behavior, sorting by theline
(ignoring theinfo
).
-
This function has been renamed
lines_strip_line_comments
and rewritten, see below. The old deprecated version will be available atbig.deprecated.lines_strip_comments
until at least September 2025.Note that the old version of
line_strip_comments
still uses the current version ofLineInfo
, so use of this deprecated function is still exposed to those breaking changes. (For example,LineInfo.line
now includes the linebreak character that terminated the current line, if any.)
-
Bugfix:
lines_strip_indent
previously required whitespace-only lines to obey the indenting rules, which was a mistake. My intention was always forlines_strip_indent
to behave like Python, and that includes not really caring about the intra-line-whitespace for whitespace-only lines. Nowlines_strip_indent
behaves more like Python: a whitespace-only line behaves as if it has the same indent as the previous line. (Not that the indent value of an empty line should matter--but this behavior is how you'd intuitively expect it to work.)
-
This API has breaking changes.
lines_strip_line_comments
is the new name for the oldlines_strip_comments
lines modifier function. It's also been completely rewritten.Changes:
- The old function required quote marks and the escape string to be single characters. The new function allows quote marks and the escape string to be of any length.
- The old function had a slightly-smelly
triple_quotes
parameter to support multiline strings. The new version supports separate parameters for single-line quote marks (quotes
) and multiline quote marks (multiline_quotes
). - The
backslash
parameter has been renamed toescape
. - The
rstrip
parameter has been removed. If you need to rstrip the line after stripping the comment, wrap yourlines_strip_line_comments
call with alines_rstrip
call. - The old function didn't enforce that strings shouldn't
span lines--single-quoted and triple-quoted strings behaved
identically. The new version raises
SyntaxError
if quoted strings using non-multiline quote marks contain newlines.
(
lines_strip_line_comments
has always been implemented usingsplit_quoted_strings
; this is why it now supports multicharacter quote marks and escape strings. It also benefits from the new optimizations insplit_quoted_strings
.)
-
Minor optimizations.
multisplit
used to locally define a new generator function, then call it and return the generator. I promoted the generator function to module level, which means we no longer rebind it each timemultisplit
is called. As a very rough guess, this can be as much as a 10% speedup formultisplit
run on very short workloads. (It's also never slower.)I also applied this same small optimization to several other functions in the
text
module. In particular,merge_columns
was binding functions inside a loop (!!). (Dumb, huh!) These local functions are still bound insidemerge_columns
, but now at least they're outside the loop.Another minor speedup for
multisplit
: whenreverse=True
, it used to reverse the results three times!multisplit
now explicitly observes and manages the reversed state of the result to avoid needless reversing.
-
This function has been renamed
split_delimiters
and rewritten, see below. The old version is still available, using the namebig.deprecated.parse_delimiters
module, and will be available until at least September 2025.
-
Code cleanups both in the implementation and the test suite, including one minor semantic change.
Cleaned up
Scheduler._next
, the internal method call that implements the heart of the scheduler. The only externally visible change: the previous version would callsleep(0)
every time it yielded an event. On modern operating systems this should yields the rest of the current thread's current time slice back to the OS's scheduler. This can make multitasking smoother, particularly in Python programs. But this is too opinionated for library code--if you want asleep(0)
there, by golly, you can call that yourself when theScheduler
object yields to you. I've restructured the code and eliminated this extraneoussleep(0)
.Also, rewrote big chunks of the test suite (
tests/test_scheduler.py
). The multithreaded tests are now much better synchronized, while also becoming easier to read. Although it seems intractable to purge all race conditions from the test suite, this change has removed most of them.
-
This API has breaking changes.
split_delimiters
is the new name for the oldparse_delimiters
function. The function has also been completely re-tooled and re-written.Changes:
parse_delimiters
took an iterable ofDelimiters
objects, or strings of length 2.split_delimiters
takes a dictionary mapping open delimiter strings toDelimiter
objects, andDelimiter
objects no longer have an "open" attribute.split_delimiters
now accepts anstate
parameter, which specifies the initial state of nested delimiters.split_delimiters
no longer cares if there were unclosed open delimiters at the end of the string. (It used to raiseValueError
.) This includes quote marks; if you don't want quoted strings to span multiple lines, it's up to you to detect it and react (e.g. raise an exception).- The internal implementation has changed completely.
parse_delimiters
manually parsed the input string character by character.split_delimiters
usesmultisplit
, so it zips past the uninteresting characters and only examines the delimiters and escape characters. It's always faster, except for some trivial calls (which are fast enough anyway). - Another benefit of using
multisplit
: open delimiters, close delimiters, and the escape string may now all be any nonzero length. (In the face of ambiguity,split_delimiters
will always choose the longer delimiter.)
See also changes to
Delimiter
.
-
This API has breaking changes.
split_quoted_strings
has been completely re-tooled and re-written. The new API is simpler, easier to understand, and conceptually clarified. It's a major upgrade!Changes:
- The value it yields is different:
- The old version yielded
(is_quote, segment)
, whereis_quote
was a boolean value indicating whether or notsegment
was quoted. Ifsegment
was quoted, it began and ended with (single character) quote marks. To reassemble the original string, join together all thesegment
strings in order. - The new version yields
(leading_quote, segment, trailing_quote)
, whereleading_quote
andtrailing_quote
are either matching quote marks or empty. If they're true values, thesegment
string is inside the quotes. To reassemble the original string, join together all the yielded strings in order.
- The old version yielded
- The
backslash
parameter has been replaced by a new parameter,escape
.escape
allows specifying the escape string, which defaults to '\' (backslash). If you specify a false value, there will be no escape character in strings. - By default
quotes
only contains'
(single-quote) and"
(double-quote). The previous version also recognized"""
and'''
as multiline quote marks by default; this is no longer true, as it's too opinionated and Python-specific. - The old version didn't actually distinguish between
single-quoted strings and triple-quoted strings. It
simply didn't care whether or not there were newlines
inside quoted strings. The new version raises a
SyntaxError
if there's a newline character inside a string delimited with a quote marker fromquotes
. - The old version accepted a stinky
triple_quotes
parameter. That's been removed in favor of a new parameter,multiline_quotes
.multiline_quotes
is likequotes
, except that newline characters are allowed inside their quoted strings. split_quoted_string
accepts another new parameter,state
, which sets the initial state of quoting.- Thd old implementation of
split_quoted_string
used a hand-coded parser, manually analyzing each character in the input text. Now it usesmultisplit
, so it only bothers to examine the interesting substrings.multisplit
has a large startup cost the first time you use a particular set of iterators, but this information is cached for subsequent calls. Bottom line, the new version is much faster for larger workloads. (It can be slower for trivial examples... where speed doesn't matter anyway.) - Another benefit of switching to
multisplit
:quotes
now supports quote delimiters and an escape string of any nonzero length. In the case of ambiguity--if more than one quote delimiter matches at a time--split_quoted_string
will always choose the longer delimiter.
- The value it yields is different:
-
New function.
split_title_case
splits a string at word boundaries, assuming the string is in "TitleCase".
-
Small performance upgrade for
StateManager
. observers.StateManager
always uses a copy of the observer list (specifically, a tuple) when calling the observers; this means it's safe to modify the observer list at any time.StateManager
used to always make a fresh copy every time you called an event; now it uses a cached copy, and only recomputes the tuple when the observer list changes.(Note that it's not thread-safe to modify the observer list from one thread while also dispatching events in another. Your program won't crash, but the list of observers called may be unpredictable based on which thread wins or loses the race. But this has always been true. As with many libraries, the
StateManager
API leaves locking up to you.)
p.s. I'm getting close to declaring big as being version 1.0. I don't want to do it until I'm done revising the APIs.
p.p.s. Updated copyright notices to 2024.
p.p.p.s. Yet again I thank Eric V. Smith for his willingness to humor me in my how-many-parameters-could-dance-on-the-head-of-a-pin API theological discussions.
-
-
released 2023/09/19
-
Breaking change: renamed almost all the old
whitespace
andnewlines
tuples. Worse yet, one symbol has the same name but a different value:ascii_whitespace
! I've also changed the suffix_without_dos
to the more accurate and intuitive_without_crlf
, and similarly changednewlines
tolinebreaks
. Sorry for all the confusion. This resulted from a lot of research into whitespace and newline characters, in Python, Unicode, and ASCII; please see the new deep-dive Whitespace and line-breaking characters in Python and big to see what all the fuss is about. Here's a summary of all the changes to the whitespace tuples:RENAMED TUPLES (old name -> new name) ascii_newlines -> bytes_linebreaks ascii_whitespace -> bytes_whitespace newlines -> linebreaks ascii_newlines_without_dos -> bytes_linebreaks_without_crlf ascii_whitespace_without_dos -> bytes_whitespace_without_crlf newlines_without_dos -> linebreaks_without_crlf whitespace_without_dos -> whitespace_without_crlf REMOVED TUPLES utf8_newlines utf8_whitespace utf8_newlines_without_dos utf8_whitespace_without_dos UNCHANGED TUPLES (same name, same meaning) whitespace NEW TUPLES ascii_linebreaks ascii_whitespace str_linebreaks str_whitespace unicode_linebreaks unicode_whitespace ascii_linebreaks_without_crlf ascii_whitespace_without_crlf str_linebreaks_without_crlf str_whitespace_without_crlf unicode_linebreaks_without_crlf unicode_whitespace_without_crlf
-
Changed
split_text_with_code
implementation to useStateManager
. (No API or semantic changes, just an change to the internal implementation.) -
New function in the
big.text
module:encode_strings
, which takes a container object containingstr
objects and returns an equivalent object containing encoded versions of those strings asbytes
. -
When you call
multisplit
with a type mismatch between 's' and 'separators', the exception it raises now includes the values of 's' and 'separators'. -
Added more tests for
big.state
to exercise all the string arguments ofaccessor
anddispatch
. -
The exhaustive
multisplit
tester now lets you specify test cases as cohesive strings, rather than forcing you to split the string manually. -
The exhaustive
multisplit
tester is better at internally verifying that it's doing the right thing. (There are some internal sanity checks, and those are more accurate now.) -
Whoops! The name of the main class in
big.state
isStateManager
. I accidentally wroteStateMachine
instead in the docs... several times. -
Originally the
multisplit
parameter 'separators' was required. I changed it to optional a while ago, with a default ofNone
. (If you pass inNone
it usesbig.str_whitespace
orbig.bytes_whitespace
, depending on the type ofs
.) But the documentation didn't reflect this change until... now. -
Improved the prose in The
multi-
family of string functions deep-dive. Hopefully now it does a better job of sellingmultisplit
to the reader. -
The usual smattering of small doc fixes and improvements.
My thanks again to Eric V. Smith for his willingness to consider and discuss these issues. Eric is now officially a contributor to big, increasing the project's bus factor to two. Thanks, Eric!
-
released 2023/09/04
- Added the new
big.state
module, with its excitingStateManager
class! int_to_words
now supports the newordinal
keyword-only parameter, to produce ordinal strings instead of cardinal strings. (The number 1 as a cardinal string is'one'
, but as an ordinal string is'first'
).- Added the
pure_virtual
decorator tobig.builtin
. - The documentation is now much prettier! I finally discovered a syntax
I can use to achieve a proper indent in Markdown, supported by both
GitHub and PyPI. You simply nest the text you want indented inside
an HTML description list as the description text, and skip the
description item (
<dl><dd>
). Note that you need a blank line after the<dl><dd>
line, or else Markdown will ignore the markup in the following paragraph. Thanks to Hugo van Kemenade for his help confirming this! Oh, and, Hugo also fixed the image markup so the big banner displays properly on PyPI. Thanks, Hugo!
- Added the new
-
released 2023/07/22
Extremely minor release. No new features or bug fixes.
- Fixed coverage, now back to the usual 100%. (This just required changing the tests, which didn't find any new bugs.)
- Made the tests for
Log
deterministic. They now use a fake clock that always returns the same values. - Added GitHub Actions integration. Tests and coverage are run in the cloud after every checkin. Thanks to Dan Pope for gently walking me through this!
- Fixed metadata in the
pyproject.toml
file. - Added badges for testing, coverage, and supported Python versions.
-
released 2023/06/28
-
released 2023/06/15
-
Bugfix! If an outer class
Outer
had an inner classInner
decorated with@BoundInnerClass
, ando
is an instance ofOuter
, ando
evaluated to false in a boolean context,o.Inner
would be the unbound version ofInner
. Now it's the bound version, as is proper. -
Modified
tests/test_boundinnerclasses.py
:- Added regression test for the above bugfix (of course!).
- It now takes advantage of that newfangled "zero-argument
super
". - Added testing of an unbound subclass of an unbound subclass.
-
-
released 2023/06/11
- Added
int_to_words
. - All tests now insert the local big directory
onto
sys.path
, so you can run the tests on your local copy without having to install. Especially convenient for testing with old versions of Python!
Note: tomorrow, big will be one year old!
- Added
-
released 2023/05/19
- Convert all iterator functions to use my new approach: instead of checking arguments inside the iterator, the function you call checks arguments, then has a nested iterator function which it runs and returns the result. This means bad inputs raise their exceptions at the call site where the iterator is constructed, rather than when the first value is yielded by the iterator!
-
released 2023/05/19
- Added
parse_delimiters
(ed: nowsplit_delimiters
) andDelimiter
.
- Added
-
released 2023/05/18
- Major retooling of
str
andbytes
support inbig.text
.- Functions in
big.text
now uniformly acceptstr
orbytes
or a subclass of either. See the Support for bytes and str section for how it works. - Functions in
big.text
are now more consistent about raisingTypeError
vsValueError
. If you mixbytes
andstr
objects together in one call, you'll get aTypeError
, but if you pass in an empty iterable (of a correct type) where a non-empty iterable is required you'll get aValueError
.big.text
generally tries to give theTypeError
higher priority; if you pass in a value that fails both the type check and the value check, thebig.text
function will raiseTypeError
first.
- Functions in
- Major rewrite of
re_rpartition
. I realized it had the same "reverse mode" problem that I fixed inmultisplit
back in version 0.6.10: the regular expression should really search the string in "reverse mode", from right to left. The difference is whether the regular expression potentially matches against overlapping strings. When in forwards mode, the regular expression should prefer the leftmost overlapping match, but in reverse mode it should prefer the rightmost overlapping match. Most of the time this produces the same list of matches as you'd find searching the string forwards--but sometimes the matches come out very different. This was way harder to fix withre_rpartition
than withmultisplit
, because Python'sre
module only supports searching forwards. I have to emulate reverse-mode searching by manually checking for overlapping matches and figuring out which one(s) to keep--a lot of work! Fortunately it's only a minor speed hit if you don't have overlapping matches. (And if you do have overlapping matches, you're probably just happyre_rpartition
now produces correct results--though I did my best to make it performant anyway.) In the future, big will probably add support for the PyPI packageregex
, which reimplements Python'sre
module but adds many features... including reverse mode! - New function:
reversed_re_finditer
. Behaves almost identically to the Python standard library functionre.finditer
, yielding non-overlapping matches ofpattern
instring
. The difference is,reversed_re_finditer
searchesstring
from right to left. (Written as part of there_rpartition
rewrite mentioned above.) - Added
apostrophes
,double_quotes
,ascii_apostrophes
,ascii_double_quotes
,utf8_apostrophes
, andutf8_double_quotes
to thebig.text
module. Previously the first four of these were hard-coded strings insidegently_title
. (And the last two didn't exist!) - Code cleanup in
split_text_with_code
, removed redundant code. I think it has about the same number ofif
statements; if anything it might be slightly faster. - Retooled
re_partition
andre_rpartition
slightly, should now be very-slightly faster. (Well,re_rpartition
will be slower if your pattern finds overlapping matches. But at least now it's correct!) - Lots and lots of doc improvements, as usual.
- Major retooling of
-
released 2023/03/13
- Tweaked the implementation of
multisplit
. Internally, it does the string splitting usingre.split
, which returns alist
. It used to iterate over the list and yield each element. But that meant keeping the entire list around in memory untilmultisplit
exited. Now,multisplit
reverses the list, pops off the final element, and yields that. This meansmultisplit
drops all references to the split strings as it iterates over the string, which may help in low-memory situations. - Minor doc fixes.
- Tweaked the implementation of
-
released 2023/03/11
- Breaking changes to the
Scheduler
:- It's no longer thread-safe by default, which means it's much faster for non-threaded workloads.
- The lock has been moved out of the
Scheduler
object and into theRegulator
. Among other things, this means that theScheduler
constructor no longer takes alock
argument. Regulator
is now an abstract base class.big.scheduler
also provides two concrete implementations:SingleThreadedRegulator
andThreadSafeRegulator
.Regulator
andEvent
are now defined in thebig.scheduler
namespace. They were previously defined inside theScheduler
class.- The arguments to the
Event
constructor were rearranged. (You shouldn't care, as you shouldn't be manually constructingEvent
objects anyway.) - The
Scheduler
now guarantees that it will only callnow
andwake
on aRegulator
object while holding thatRegulator
's lock.
- Minor doc fixes.
- Breaking changes to the
-
released 2023/03/09
- Retooled
multisplit
andmultistrip
argument verification code. Both functions now consistently check all their inputs, and use consistent error messages when raising an exception.
- Retooled
-
released 2023/03/09
- Fixed a minor crashing bug in
multisplit
: if you passed in a list of separators (orseparators
was of any non-hashable type), andreverse
was true,multisplit
would crash. It usedseparators
as a key into a dict, which meantseparators
had to be hashable. multisplit
now verifies that thes
passed in is eitherstr
orbytes
.- Updated all copyright date notices to 2023.
- Lots of doc fixes.
- Fixed a minor crashing bug in
-
released 2023/02/26
- Fixed Python 3.6 support! Some equals-signs-in-f-strings and some other anachronisms had crept in. 0.6.16 has been tested on all versions from 3.6 to 3.11 (as well as having 100% coverage).
- Made the
dateutils
package an optional dependency. Only one function needs it,parse_timestamp_3339Z()
. - Minor cleanup in
PushbackIterator()
. It also uses slots now, which should make it a bit faster.
-
released 2023/01/07
- Added the new functions
datetime_ensure_timezone(d, timezone)
anddatetime_set_timezone(d, timezone)
. These allow you to ensure or explicitly set a timezone on adatetime.datetime
object. - Added the
timezone
argument toparse_timestamp_3339Z()
. gently_title()
now capitalizes the first letter after a left parenthesis.- Changed the secret
multirpartition
function slightly. Itsreverse
parameter now means to un-reverse its reversing behavior. Stated another way,multipartition(reverse=X)
andmultirpartition(reverse=not X)
now do the same thing.
- Added the new functions
-
released 2022/12/11
- Improved the text of the
RuntimeError
raised byTopologicalSorter.View
when the view is incoherent. Now it tells you exactly what nodes are conflicting. - Expanded the deep dive on
multisplit
.
- Improved the text of the
-
released 2022/12/11
- Changed
translate_filename_to_exfat(s)
behavior: when modifying a string with a colon (':'
) not followed by a space, it used to convert it to a dash ('-'
). Now it converts the colon to a period ('.'
), which looks a little more natural. A colon followed by a space is still converted to a dash followed by a space.
- Changed
-
tagged 2022/12/04
- Bugfix: When calling
TopologicalSorter.print()
, it sorts the list of nodes, for consistency's sakes and for ease of reading. But if the node objects don't support<
or>
comparison, that throws an exception.TopologicalSorter.print()
now catches that exception and simply skips sorting. (It's only a presentation thing anyway.) - Added a secret (otherwise undocumented!) function:
multirpartition
, which is likemultipartition
but withreverse=True
. - Added the list of conflicted nodes to the "node is incoherent" exception text.
Note: although version 0.6.12 was tagged, it was never packaged for release.
- Bugfix: When calling
-
tagged 2022/11/13
- Changed the import strategy. The top-level big module used
to import all its child modules, and
import *
all the symbols from all those modules. But a friend (hi Mark Shannon!) talked me out of this. It's convenient, but if a user doesn't care about a particular module, why make them import it. So now the top-level big module contains nothing but a version number, and you can either import just the submodules you need, or you can import big.all to get all the symbols (like big itself used to do).
Note: although version 0.6.11 was tagged, it was never packaged for release.
- Changed the import strategy. The top-level big module used
to import all its child modules, and
-
released 2022/10/26
- All code changes had to do with
multisplit
:- Fixed a subtle bug. When splitting with a separator that can overlap
itself, like
' x '
,multisplit
will prefer the leftmost instance. But whenreverse=True
, it must prefer the rightmost instance. Thanks to Eric V. Smith for suggesting the clever "reverse everything, callre.split
, and un-reverse everything" approach. That let me fix this bug while still implementing on top ofre.split
! - Implemented
PROGRESSIVE
mode for thestrip
keyword. This behaves likestr.strip
: when splitting, strip on the left, then start splitting. If we don't exhaustmaxsplit
, strip on the right; if we do exhaustmaxsplit
, don't strip on the right. (Similarly forstr.rstrip
whenreverse=True
.) - Changed the default for
strip
toFalse
. It used to beNOT_SEPARATE
. But this was too surprising--I'd forget that it was the default, and turning onkeep
wouldn't return everything I thought I should get, and I'd head off to debugmultisplit
, when in fact it was behaving as specified. The Principle Of Least Surprise tells me thatstrip
defaulting toFalse
is less surprising. Also, maintaining the invariant that all the keyword-only parameters tomultisplit
default toFalse
is a helpful mnemonic device in several ways. - Removed
NOT_SEPARATE
(and the not-yet-implementedSTR_STRIP
) modes forstrip
. They're easy to implement yourself, and this removes some surface area from the already-too-bigmultisplit
API.
- Fixed a subtle bug. When splitting with a separator that can overlap
itself, like
- Modernized
pyproject.toml
metadata to makeflit
happier. This was necessary to ensure thatpip install big
also installs its dependencies.
- All code changes had to do with
-
released 2022/10/16
- Renamed two of the three freshly-added lines modifier functions:
lines_filter_contains
is nowlines_containing
, andlines_filter_grep
is nowlines_grep
.
- Renamed two of the three freshly-added lines modifier functions:
-
released 2022/10/16
- Added three new lines modifier functions
to the
text
module:lines_filter_contains
,lines_filter_grep
, andlines_sort
. gently_title
now acceptsstr
orbytes
. Also added theapostrophes
anddouble_quotes
arguments.
- Added three new lines modifier functions
to the
-
released 2022/10/14
- Fixed a bug in
multisplit
. I thought when usingkeep=AS_PAIRS
that it shouldn't ever emit a 2-tuple containing just empty strings--but on further reflection I've realized that that's correct. This behavior is now tested and documented, along with the reasoning behind it. - Added the
reverse
flag tore_partition
. whitespace_without_dos
andnewlines_without_dos
still had the DOS end-of-line sequence in them! Oops!- Added a unit test to check that. The unit test also ensures that
whitespace
,newlines
, and all the variants (utf8_
,ascii_
, and_with_dos
) exactly match the set of characters Python considers whitespace and newline characters.
- Added a unit test to check that. The unit test also ensures that
- Lots more documentation and formatting fixes.
- Fixed a bug in
-
released 2022/10/13
- Added the new
itertools
module, which so far only containsPushbackIterator
. - Added
lines_strip_comments
[ed: nowlines_strip_line_comments
andsplit_quoted_strings
to thetext
module.
- Added the new
-
released 2022/10/13
- I realized that
whitespace
should contain the DOS end-of-line sequence ('\r\n'
), as it should be considered a single separator when splitting etc. I added that, along withwhitespace_no_dos
, and naturallyutf8_whitespace_no_dos
andascii_whitespace_no_dos
too. - Minor doc fixes.
- I realized that
-
released 2022/10/13
A big upgrade!
- Completely retooled and upgraded
multisplit
, and addedmultistrip
andmultipartition
, collectively called Themulti-
family of string functions. (Thanks to Eric Smith for suggestingmultipartition
! Well, sort of.)[
multisplit](#multisplits-separatorsnone--keepfalse-maxsplit-1-reversefalse-separatefalse-stripfalse)
now supports five (!) keyword-only parameters, allowing the caller to tune its behavior to an amazing degree.- Also, the original implementation of
[
multisplit](#multisplits-separatorsnone--keepfalse-maxsplit-1-reversefalse-separatefalse-stripfalse)
got its semantics a bit wrong; it was inconsistent and maybe a little buggy. multistrip
is likestr.strip
but accepts an iterable of separator strings. It can strip from the left, right, both, or neither (in which case it does nothing).multipartition
is likestr.partition
, but accepts an iterable of separator strings. It can also partition more than once, and supportsreverse=True
which causes it to partition from the right (likestr.rpartition
).- Also added useful predefined lists of separators for use with all
the
multi
functions:whitespace
andnewlines
, withascii_
andutf8_
versions of each, andwithout_dos
variants of all threenewlines
variants.
- Added the
Scheduler
andHeap
classes.Scheduler
is a replacement for Python'ssched.scheduler
class, with a modernized interface and a major upgrade in functionality.Heap
is an object-oriented interface to Python'sheapq
module, used byScheduler
. These are in their own modules,big.heap
andbig.scheduler
. - Added
lines
and all thelines_
modifiers. These are great for writing little text parsers. For more information, please see the deep-dive onlines
and lines modifier functions. - Removed
stripped_lines
andrstripped_lines
from thetext
module, as they're superceded by the far superiorlines
family. - Enhanced
normalize_whitespace
. Added theseparators
andreplacement
parameters, and added support forbytes
objects. - Added the
count
parameter tore_partition
andre_rpartition
.
- Completely retooled and upgraded
-
released 2022/09/12
- Added
stripped_lines
andrstripped_lines
to thetext
module. - Added support for
len
to theTopologicalSorter
object.
- Added
-
released 2022/09/04
- Added
gently_title
andnormalize_whitespace
to thetext
module. - Changed
translate_filename_to_exfat
to handle translating':'
in a special way. If the colon is followed by a space, then the colon is turned into' -'
. This yields a more natural translation when colons are used in text, e.g.'xXx: The Return Of Xander Cage'
is translated to'xXx - The Return Of Xander Cage'
. If the colon is not followed by a space, turns the colon into'-'
. This is good for tiresome modern gobbledygook like'Re:code'
, which will now be translated to'Re-code'
.
- Added
-
released 2022/06/12
- Initial release.
-