Skip to content

A unified end-to-end machine intelligence platform

License

Notifications You must be signed in to change notification settings

staCCats/MetaSpore

 
 

Repository files navigation

MetaSpore: One-stop machine learning development platform

MetaSpore is a one-stop end-to-end machine learning development platform that provides a full-cycle framework and development interface for from data preprocessing, model training, offline experiments, online predictions to online experiment bucketization and ab-testing.

MetaSpore Architecture

MetaSpore is developed and opensourced by DMetaSoul team. You could also join our slack user discussion space.

Core Features

MetaSpore has the following features:

  1. One-stop end-to-end development, from offline model training to online prediction and bucketing experiments, with a unified development experience across the entire process;
  2. Deep learning training framework, compatible with PyTorch ecology, supports distributed large-scale sparse feature learning;
  3. The training framework is connected with PySpark to seamlessly read the training data from the data lake and data warehouse;
  4. High-performance online prediction service, supports fast inference for neural network, decision tree, Spark ML, SKLearn and other models; supports heterogeneous computing inference acceleration;
  5. In the offline unified feature extraction framework, the online feature reading logic is automatically generated, and the feature extraction logic is unified cross offline and online;
  6. Online algorithm application framework, providing model prediction, experiment bucketing and traffic splitting, dynamic hot loading of parameters and rich debug functions;
  7. Rich industry algorithm examples and end-to-end solutions.

Documentation and examples

Installation package download

We provide a precompiled offline training installation package: download link. This package requires Python 3.8.

After downloading, in the Python 3.8 environment, execute the installation through the command line:

pip install pyspark
pip install torch==1.11.0+cpu -f https://download.pytorch.org/whl/cpu/torch_stable.html
pip install metaspore-1.0.0+9591a50-cp38-cp38-linux_x86_64.whl

Compile the code

Feedback

For questions about usage, you can post questions in GitHub Discussion, or through GitHub Issue.

Mail

Email us at opensource@dmetasoul.com.

Slack

Join our user discussion slack channel: MetaSpore User Discussion

Open source projects

MetaSpore is a completely open source project released under the Apache License 2.0. Participation, feedback, and code contributions are welcome.

About

A unified end-to-end machine intelligence platform

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • C++ 54.2%
  • Python 29.9%
  • Java 9.9%
  • Jupyter Notebook 2.7%
  • CMake 2.5%
  • Shell 0.5%
  • Other 0.3%