machineJS - Automated machine learning- just give it a data file! Check out the production-ready version of this project at ClimbsRocks/auto_ml

  •        43

I just built out v2 of this project that now gives you analytics info from your models, and is production-ready. machineJS is an amazing research project that clearly proved there's a hunger for automated machine learning. auto_ml tackles this exact same goal, but with more features, cleaner code, and the ability to be copy/pasted into production.

https://github.com/ClimbsRocks/machineJS

Dependencies:

babyparse : ^0.4.3
data-formatter : latest
ensembler : latest
fast-csv : ^0.6.0
longjohn : ^0.2.9
minimist : ^1.1.2
mkdirp : ^0.5.1
python-shell : ^0.2.0

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