Skip to content

Latest commit

 

History

History
63 lines (44 loc) · 2.43 KB

README.md

File metadata and controls

63 lines (44 loc) · 2.43 KB

Machine Learning for the Elastic Stack

https://www.elastic.co/products/x-pack

The ml-cpp repo is a part of Machine Learning for X-Pack and is available with either a trial or platinum license for the Elastic Stack.

This repo only contains the the C++ code that implements the core analytics for machine learning.

Code for integrating into the Elastic Stack and source for its documentation can be found in the main elasticsearch repo.

Elastic License Functionality

Most files in this repository are subject to the Elastic License. The full license can be found in LICENSE.txt. Usage requires a subscription. Files that are not subject to the Elastic License are in the 3rd_party and build-setup directories.

Getting Started

Before starting with Machine Learning for X-Pack, it's a good idea to get some experience with the Elastic Stack first.

To get started with Machine Learning please have a look at https://www.elastic.co/guide/en/x-pack/current/ml-getting-started.html.

Full documentation of Machine Learning can be found at https://www.elastic.co/guide/en/x-pack/current/xpack-ml.html.

Questions/Bug Reports/Help

We are happy to help and to make sure your questions can be answered by the right people, please follow the guidelines below:

  • If you have a general question about functionality please use our discuss forums.
  • If you have a support contract please use your dedicated support channel.
  • For questions regarding subscriptions please contact us.
  • For bug reports, pull requests and feature requests specifically for machine learning analytics, please use this GitHub repository.

Contributing

Please have a look at our contributor guidelines.

Setting up a build environment

You don't need to specifically build the C++ components for machine learning as, by default, the elasticsearch build will download pre-compiled C++ artifacts.

Setting up a build environment for ml-cpp native code is complex. If you are specifically interested in working with the ml-cpp code, then information regarding setting up a build environment can be found in the build-setup directory.