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GitHub / dhaberl / TabularClassificationTemplate
This project aims to create a template for solving classification problems using Scikit-Learn for tabular data. The template shall handle binary as well as multi-class classification problems and shall include a preprocessing pipeline. Further, the template shall be easily adaptable and extendible for an easy integration into larger machine learning workflows.
JSON API: https://repos.ecosyste.ms/api/v1/hosts/GitHub/repositories/dhaberl%2FTabularClassificationTemplate
Fork of cspielvogel/ExplainableTabularAutoML
Stars: 1
Forks: 0
Open Issues: 0
License: gpl-3.0
Language: Python
Repo Size: 17.1 MB
Dependencies:
127
Created: almost 2 years ago
Updated: almost 2 years ago
Last pushed: over 1 year ago
Last synced: about 1 year ago
Files
Dependencies
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