awesome-scikit-learn
An awesome-style curated list of resources, libraries, and tools related to scikit-learn, organized as an "Awesome" directory for the scikit-learn ecosystem.
About this tool
title: awesome-scikit-learn slug: awesome-scikit-learn brand: cybersecurity-dev brand_logo: /cybersecurity-dev.png website_url: https://github.com/cybersecurity-dev/awesome-scikit-learn category: themed-directories tags:
- awesome-lists
- python
- machine-learning featured: false
Overview
awesome-scikit-learn is a curated "Awesome"-style directory of resources related to the scikit-learn ecosystem. It focuses on organizing links to libraries, tools, and learning materials for Python-based machine learning using scikit-learn.
Features
- Curated in the style of the broader Awesome ecosystem
- Focused specifically on the scikit-learn machine learning library
- Collects resources, libraries, and tools that integrate with or extend scikit-learn
- Includes learning and reference materials for scikit-learn users
- Hosted as an open GitHub repository for transparency and community access
- Comes with a LICENSE file defining reuse terms
- README-based directory structure for easy browsing
Usage
Visit the GitHub repository to browse the list and follow links to individual tools and resources within the scikit-learn ecosystem.
Pricing
- Access to the awesome-scikit-learn list is free and open-source (no pricing tiers indicated).
Loading more......
Information
Categories
Tags
Similar Products
6 result(s)An awesome list dedicated to PyTorch, aggregating PyTorch libraries, tutorials, and learning resources as part of the awesome-lists ecosystem.
A curated awesome-list of Torch ecosystem tutorials, projects, libraries, and community resources.
Awesome-LLM-RL is an awesome-style curated list focused on reinforcement learning with large language models. It catalogs open-source frameworks, libraries, and learning resources, including projects built on Ray, vLLM, ZeRO-3, and HuggingFace Transformers, serving as a specialized awesome directory within the broader AI and LLM ecosystem.
An Awesome collection of graph embedding research papers with their corresponding implementations.
An Awesome curated list of network embedding papers and associated implementations.
An awesome-style collection of resources on software engineering practices for production-level machine learning systems.