This is an auto-ML tool specialized in detecting of outliers

Overview

forthebadge

Auto-ML tool specialized in detecting of outliers

forthebadge badge-telegram-program

Description

This tool will allows you, with a Dash visualization, to compare 10 models of machine learning in supervised and unsupervised learning.
The data preparation and the settings of the differents models have been specially made for the detection of outliers.

Getting started

  • You need to download the dataset you want to analyze in a CSV format.
  • Install requirements - pip install -r requirements.txt

Launch

Execute the following command in a terminal : python main.py

Then you need to copy the following link in your Web browser :

Screen1

Next step

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