Robert Nishihara 0a233b7144 Update hyperparameter optimization example. (#332)
* Update hyperparameter optimization example.

* Remove early stopping.
2017-03-04 10:45:15 -08:00
2017-02-28 18:57:51 -08:00
2016-11-22 17:04:24 -08:00
2016-07-28 13:11:13 -07:00
2017-02-28 18:57:51 -08:00
2016-11-01 23:19:06 -07:00
2016-07-08 12:39:11 -07:00
2016-11-22 17:04:24 -08:00

Ray

Build Status Documentation Status

Ray is an experimental distributed execution engine. It is under development and not ready to be used.

The goal of Ray is to make it easy to write machine learning applications that run on a cluster while providing the development and debugging experience of working on a single machine.

View the documentation.

S
Description
An open source framework that provides a simple, universal API for building distributed applications. Ray is packaged with RLlib, a scalable reinforcement learning library, and Tune, a scalable hyperparameter tuning library.
Readme Multiple Licenses 111 MiB
Languages
Python 56.6%
C++ 28.8%
Java 8.5%
TypeScript 1.7%
Starlark 1.4%
Other 2.8%