goml - On-line Machine Learning in Go (and so much more)

  •        30

While models include traditional, batch learning interfaces, goml includes many models which let you learn in an online, reactive manner by passing data to streams held on channels.The library includes comprehensive tests, extensive documentation, and clean, expressive, modular source code. Community contribution is heavily encouraged.

https://github.com/cdipaolo/goml

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