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scikit-learn

8.7

by davila7

69Favorites
265Upvotes
0Downvotes

Machine learning in Python with scikit-learn. Use when working with supervised learning (classification, regression), unsupervised learning (clustering, dimensionality reduction), model evaluation, hyperparameter tuning, preprocessing, or building ML pipelines. Provides comprehensive reference documentation for algorithms, preprocessing techniques, pipelines, and best practices.

scikit-learn

8.7

Rating

0

Installs

Machine Learning

Category

Quick Review

Exceptional scikit-learn skill with comprehensive coverage of machine learning workflows. The description is crystal clear about when and how to use the skill. Task knowledge is outstanding with complete code examples, workflows for classification/regression/clustering, and detailed references for all major ML tasks. Structure is excellent with a well-organized SKILL.md providing overview and quick-start guidance while delegating deep details to reference files. The skill demonstrates high novelty by consolidating extensive scikit-learn knowledge (algorithms, pipelines, preprocessing, evaluation) that would otherwise require many tokens for a CLI agent to piece together from documentation. Minor room for improvement in structure (slightly long SKILL.md) but overall this is a production-ready, highly useful skill.

LLM Signals

Description coverage10
Task knowledge10
Structure9
Novelty8

GitHub Signals

18,073
1,635
132
71
Last commit 0 days ago

Publisher

davila7

davila7

Skill Author

Related Skills

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Publisher

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davila7

Skill Author

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