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arXiv CM test CM script automation features test MLPerf inference resnet50 CMX: image classification with ONNX

Collective Knowledge

Collective Knowledge (CK, CM, CM4MLOps, CM4MLPerf and CMX) is an educational community project to learn how to run AI, ML and other emerging workloads in the most efficient and cost-effective way across diverse models, data sets, software and hardware: [ white paper ].

It includes the following sub-projects.

Collective Mind (CM)

The Collective Mind framework is a lightweight, Python-based toolset featuring a unified command-line interface (CLI), Python API, and minimal dependencies. It is designed to assist researchers and engineers in automating repetitive, time-consuming tasks such as building, running, benchmarking, and optimizing AI, machine learning, and other applications across diverse and continuously changing models, data, software and hardware.

Collective Mind is continuously enhanced through public and private Git repositories with CM automation recipes and artifacts accessible via unified CM interface.

The CM architecture diagram is available for viewing here.

Notable Collective Mind repositories

CM4MLOps

CM4MLOPS repository powered by CM - a collection of portable, extensible and technology-agnostic automation recipes with a common CLI and Python API (CM scripts) to unify and automate all the manual steps required to compose, run, benchmark and optimize complex ML/AI applications on diverse platforms with any software and hardware.

The two key automations are *script" and cache: see online catalog at CK playground, online MLCommons catalog.

CM scripts extend the concept of cmake with simple Python automations, native scripts and JSON/YAML meta descriptions. They require Python 3.7+ with minimal dependencies and are continuously extended by the community and MLCommons members to run natively on Ubuntu, MacOS, Windows, RHEL, Debian, Amazon Linux and any other operating system, in a cloud or inside automatically generated containers while keeping backward compatibility.

See the online documentation at MLCommons to run MLPerf inference benchmarks across diverse systems using CM.

CM4ABTF

CM4ABTF repository powered by CM - a collection of portable automations and CM scripts to run the upcoming automotive MLPerf benchmark across different models, data sets, software and hardware from different vendors.

CM4MLPerf-results

CM4MLPerf-results powered by CM - a simplified and unified representation of the past MLPerf results in the CM format for further visualization and analysis using CK graphs.

CM4Research

CM4Research repository powered by CM - a unified interface designed to streamline the preparation, execution, and reproduction of experiments in research projects.

Projects powered by Collective Mind

Collective Knowledge Playground

Collective Knowledge Playground - a unified and open-source platform designed to index all CM scripts similar to PYPI, assist users in preparing CM commands to:

These initiatives aim to help academia and industry collaboratively enhance the efficiency and cost-effectiveness of AI systems.

Artifact Evaluation

Artifact Evaluation automation - a community-driven initiative leveraging the Collective Mind framework to automate artifact evaluation and support reproducibility efforts at ML and systems conferences.

Incubator

CMX - the next evolution of the Collective Mind framework, designed to enhance simplicity, flexibility, and extensibility of automations based on user feedback. Follow the project's progress here.

Archived projects

License

Apache 2.0

Copyright

  • Copyright (c) 2021-2024 MLCommons
  • Copyright (c) 2014-2021 cTuning foundation

Author

Citing Collective Mind and Collective Knowledge

If you found the CM automation framework helpful, kindly reference this article: [ ArXiv ], [ BibTex ].

To learn more about the motivation behind CK and CM technology, please explore the following presentations:

  • "Enabling more efficient and cost-effective AI/ML systems with Collective Mind, virtualized MLOps, MLPerf, Collective Knowledge Playground and reproducible optimization tournaments": [ ArXiv ]
  • ACM REP'23 keynote about the MLCommons CM automation framework: [ slides ]
  • ACM TechTalk'21 about Collective Knowledge project: [ YouTube ] [ slides ]
  • Journal of Royal Society'20: [ paper ]

CM Documentation

Acknowledgments

The open-source Collective Knowledge project (CK, CM, CM4MLOps/CM4MLPerf, CM4Research and CMX) was created by Grigori Fursin and sponsored by cTuning.org, OctoAI and HiPEAC. Grigori donated CK to MLCommons to benefit the community and to advance its development as a collaborative, community-driven effort.

We thank MLCommons, FlexAI and cTuning for supporting this project, as well as our dedicated volunteers and collaborators for their feedback and contributions!