Skip to content
/ EasyRec Public
forked from alibaba/EasyRec

A framework for large scale recommendation algorithms.

License

Notifications You must be signed in to change notification settings

hitywt/EasyRec

 
 

Repository files navigation

EasyRec Introduction

 

What is EasyRec?

intro.png

EasyRec is an easy to use framework for Recommendation

EasyRec implements state of the art deep learning models used in common recommendation tasks: candidate generation(matching), scoring(ranking), and multi-task learning. It improves the efficiency of generating high performance models by simple configuration and hyper parameter tuning(HPO).

 

Why EasyRec?

Run everywhere

Diversified input data

Simple to config

  • Flexible feature config and simple model config
  • Efficient and robust feature generation[used in taobao]
  • Nice web interface in development

It is smart

Large scale and easy deployment

  • Support large scale embedding, incremental saving
  • Many parallel strategies: ParameterServer, Mirrored, MultiWorker
  • Easy deployment to EAS: automatic scaling, easy monitoring
  • Consistency guarantee: train and serving

A variety of models

Easy to customize

Fast vector retrieve

 

Get Started

Running Platform:

 

Document

 

Contribute

Any contributions you make are greatly appreciated!

  • Please report bugs by submitting a GitHub issue.
  • Please submit contributions using pull requests.
  • please refer to the Development document for more details.

 

Contact

Join Us

  • DingDing Group: 32260796. (EasyRec usage general discussion.)

  • Email Group: [email protected].

Enterprise Service

  • If you need EasyRec enterprise service support, or purchase cloud product services, you can contact us by DingDing Group.

 

License

EasyRec is released under Apache License 2.0. Please note that third-party libraries may not have the same license as EasyRec.

About

A framework for large scale recommendation algorithms.

Resources

License

Stars

Watchers

Forks

Packages

No packages published

Languages

  • Python 96.3%
  • Lua 2.3%
  • Shell 1.3%
  • Dockerfile 0.1%