Skip to content

podopie/DAT18NYC

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

General Assembly Data Science

NYC 18 Syllabus

Class Schedule

Wk Monday Wednesday
1 1/26/15
Snow Day
1/28/15
Introductions, Course Review
2 2/2/15
Handling Data with Pandas
2/4/15
Visualizing Data in Python
3 2/9/15
Statsmodels and the Linear Regression
2/11/15
Time Series Analysis and Autoregression Techniques
4 2/16/15
No Class - President's Day
2/18/15
Machine Learning Workflow and SKLearn
5 2/23/15
Project 1 Presentations
2/25/15
Logistic Regression
6 3/2/15
NLTK and Text Analysis
3/4/15
Classifying Text with Naive Bayes
7 3/9/15
Decision Trees and Ensembles
3/11/15
Machine Learning Review and where we go from here
8 3/16/15
Project 2 Presentations
3/18/15
Support Vector Machines and Kernels
9 3/23/15
Clustering, KNN, K Means
3/25/15
Dimension Reduction
10 3/30/15
Databases tutorial and Setting up Postgres
4/1/15
Databases in depth and your models
11 4/6/15
Building a Website in Flask
4/8/15
Interacting with models on the web
12 4/13/15
Workshop / Open Lesson
4/15/15
Workshop / Open Lesson
13 4/20/15
Final Presentations

syllabus last updated: 3/11/2015

Assignments

Instructions

Instructions for each assignment is listed in the assignments folder. Each assignment will explain details, goals, where to find the data if necessary, and a benchmark rubric for personal alignment.

All assignments are introduced on Wednesdays and due the coming Monday. Instructors will provide feedback before the coming Wednesday class.

There are no assignments when there are project presentations coming up.

Grading

All weekly assignments are graded on completion only. We understand that students can't always get to everything, or can't always put in 100% effort due to life, work, etc. We will, however, provide feedback to all submitted work, and a placement on the rubric, if there was one. You are always more than welcome to resubmit work, though our priority for feedback will always be what is upcoming.

Submitting

  • Linkable assignments, such as gists, can be submitted by posting to this submission form. We highly recommend using git to checkin your work, as it's a great starting point to a portfolio, but other formats are fine (a blog post you wrote up, a gist, file/archive through google drive or dropbox)

Projects

Instructions

Instructions for each project is listed in the projects folder. Each project will explain details, goals, and a grading rubric.

Consider the three projects as one long project, as the projects should build on top of each other, and show an evolution of work. You are primarily being graded on this evolution, so keep that in mind!

Grading

While assignments are graded on a check system, projects are graded via a rubric. We'll review the rubrics as projects are introduced.

Submitting

Please use the same google form for assignments.

Communication

Office Hours

instructor times avail by
Ed Monday, all day in person, hangouts, slack
       | Wednesday, all day | in person, hangouts, slack

Pooja | Tuesday, 6 - 7 PM | in person, hangouts, slack | Saturday, all day | in person (11:30 AM - 1:30 PM @ GA West 3rd floor), hangouts, slack Julia | Thursday, 6- 7 PM | in person, hangouts, slack | Saturday, all day | in person (11:30 AM - 1:30 PM @ GA West 3rd floor), hangouts, slack

Please use email to reach out about grabbing office hours. Use [office hours] in the subject line as it can help us find the emails easier and reply more quickly.

Slack

You've all been invited to use Slack for chat during class and the day. Please consider this the primary way to contact other students. The TAs will be in Slack during class to handle questions. All instructors will be available on Slack during office hours (listed above).

The Github Repository

If you're not already "watching" the github repository, please do so.

You can check the watcher's list to see if you're on it.

About

General Assembly repo for Data Science 18

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published