Simple Machine Learning Tool Kit

Related tags

Machine Learningsmltk
Overview

Getting started

smltk (Simple Machine Learning Tool Kit) package is implemented for helping your work during

  • data preparation
  • testing your model

The goal is to implement this package for each step of machine learning process that can simplify your code.

It is part of the educational repositories to learn how to write stardard code and common uses of the TDD.

Installation

If you want to use this package into your code, you can install by python3-pip:

pip3 install smltk
python3
>>> from smltk.metrics import Metrics
>>> help(Metrics)

The package is not self-consistent. So if you want to contribute, you have to download the package by github and to install the requirements

git clone https://github.com/bilardi/smltk
cd smltk/
pip3 install --upgrade -r requirements.txt

Read the documentation on readthedocs for

  • API
  • Usage
  • Development

Change Log

See CHANGELOG.md for details.

License

This package is released under the MIT license. See LICENSE for details.

Owner
Alessandra Bilardi
Data & Automation Specialist | AWS Enthusiasts | CoderDojo Mentor
Alessandra Bilardi
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