MiraiML: asynchronous, autonomous and continuous Machine Learning in Python

Overview

https://github.com/arthurpaulino/miraiml/raw/master/docs/img/MiraiML.svg?sanitize=true


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MiraiML

Mirai: future in japanese.

MiraiML is an asynchronous engine for continuous & autonomous machine learning, built for real-time usage.

Usage

  1. Install: $ pip install miraiml
  2. Now, inside a Python environment, you can import the main components:
>>> from miraiml import SearchSpace, Config, Engine

You might want to Read the Docs for a better understanding of MiraiML.

Contributing

Please, follow the guidelines if you want to be part of this project.

Owner
Arthur Paulino
Data Scientist, MSc
Arthur Paulino
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