framework-determinism

0.1.0last stable release 2 years ago
Complexity Score
Low
Open Issues
N/A
Dependent Projects
0
Weekly Downloadsglobal
47

License

  • Apache-2.0
    • Yesattribution
    • Permissivelinking
    • Permissivedistribution
    • Permissivemodification
    • Yespatent grant
    • Yesprivate use
    • Permissivesublicensing
    • Notrademark grant

Downloads

Readme

Framework Reproducibility (fwr13y)

Repository Name Change

The name of this GitHub repository was changed to framework-reproducibility on 2023-02-14. Prior to this, it was named framework-determinism. Before that, it was named tensorflow-determinism.

“In addition to redirecting all web traffic, all git clone, git fetch, or git push operations targetting the previous location[s] will continue to function as if made to the new location. However, to reduce confusion, we strongly recommend updating any existing local clones to point to the new repository URL.” – GitHub documentation

Repository Intention

This repository is intended to:

  • provide documentation, status, patches, and tools related to determinism (bit-accurate, run-to-run reproducibility) in deep learning frameworks, with a focus on determinism when running on GPUs, and
  • provide a tool, and related guidelines, for reducing variance (Seeder) in deep learning frameworks.

Dependencies

No runtime dependency information found for this package.

CVE IssuesActive
0
Scorecards Score
2.90
Test Coverage
No Data
Follows Semver
Yes
Github Stars
400
Dependenciestotal
0
DependenciesOutdated
0
DependenciesDeprecated
0
Threat Modelling
No Data
Repo Audits
No Data

Learn how to distribute framework-determinism in your own private PyPI registry

pip install framework-determinism
Processing...
Done

2 Releases

PyPI on Cloudsmith

Getting started with PyPI on Cloudsmith is fast and easy.