upgini
Data enricher
Automated data search and enrichment tool for machine learning pipelines
Data search & enrichment library for Machine Learning → Easily find and add relevant features to your ML & AI pipeline from hundreds of public and premium external data sources, including open & commercial LLMs
321 stars
5 watching
25 forks
Language: Python
last commit: over 1 year ago
Linked from 3 awesome lists
automated-feature-engineeringautomlautoml-pipelinechatgptdata-enrichmentdata-sciencefeature-engineeringfeature-extractionfeature-selectionfeatureskagglekaggle-solutionlarge-language-modelsllmmachine-learningopen-dataopen-datasetspublic-datapython-libraryscikit-learn
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