deepkit-ml
Experiment management tool
An open-source machine learning development and training suite with tools for executing, tracking, and debugging experiments.
The collaborative real-time open-source machine learning devtool and training suite: Experiment execution, tracking, and debugging. With server and project management tools.
367 stars
19 watching
23 forks
Language: TypeScript
last commit: almost 2 years ago
Linked from 1 awesome list
artificial-intelligencedeep-learningdesktopdevtoolsexperimentsguimachine-learning
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