awesome-repositories.com
Blog
awesome-repositories.com

Descubre los mejores repositorios open-source con nuestra búsqueda potenciada por IA.

ExplorarBúsquedas curadasAlternativas open-sourceSoftware autohospedableBlogMapa del sitio
ProyectoAcerca deCómo clasificamosPrensaServidor MCP
Aviso legalPrivacidadTérminos
© 2026 Bringes Technology SRL·VAT RO45896025·hello@awesome-repositories.com
·

4 repositorios

Awesome GitHub RepositoriesData Science Toolkits

Collections of tools for data analysis and modeling.

Distinguishing note: Focuses on the toolset itself rather than general education.

Explore 4 awesome GitHub repositories matching data & databases · Data Science Toolkits. Refine with filters or upvote what's useful.

Awesome Data Science Toolkits GitHub Repositories

Encuentra los mejores repositorios con IA.Buscaremos los repositorios que mejor coincidan usando IA.
  • academic/awesome-datascienceAvatar de academic

    academic/awesome-datascience

    29,416Ver en GitHub↗

    This project is a comprehensive, community-driven knowledge repository that serves as a centralized hub for data science resources. It provides a structured index of educational materials, software packages, and professional development tools designed to support both students and practitioners in navigating the data science landscape. The repository distinguishes itself through a hierarchical taxonomy that organizes a vast collection of external links into a human-readable, markdown-based document. By relying on distributed contributions, the project maintains an up-to-date snapshot of the fi

    Aggregates essential tools for data science workflows.

    analyticsawesome-listdata-mining
    Ver en GitHub↗29,416
  • biolab/orange3Avatar de biolab

    biolab/orange3

    5,635Ver en GitHub↗

    Orange3 is a visual data mining platform that provides an interactive canvas for building data analysis workflows without writing code. At its core, it offers a widget-based visual programming environment where users connect configurable components to perform data preprocessing, machine learning model training, statistical evaluation, and interactive visualization. The platform is built on NumPy-backed data tables with domain descriptors that define variable names, types, and roles, and includes a lazy SQL query proxy for working with database tables without loading all data into memory. The

    Provides a comprehensive collection of data preprocessing, modeling, and evaluation components for exploratory analysis.

    Python
    Ver en GitHub↗5,635
  • susanli2016/machine-learning-with-pythonAvatar de susanli2016

    susanli2016/Machine-Learning-with-Python

    4,583Ver en GitHub↗

    Este proyecto es una biblioteca de aprendizaje automático de Python y un kit de herramientas de ciencia de datos diseñado para construir modelos predictivos y analizar conjuntos de datos complejos. Proporciona una colección de implementaciones para algoritmos supervisados y no supervisados comunes utilizando el framework Scikit-Learn. El kit de herramientas incluye una suite de modelado predictivo para generar predicciones a partir de datos históricos y un framework de análisis estadístico para aplicar modelado bayesiano y pruebas de causalidad. También cuenta con una suite de visualización de datos basada en Matplotlib para renderizar gráficos y tablas estáticas para interpretar los límites de los clasificadores y las tendencias de los datos. El proyecto cubre flujos de trabajo de agrupamiento de datos para identificar patrones y segmentos, análisis exploratorio de datos y el preprocesamiento de datos utilizando Pandas y NumPy.

    Provides a collection of scripts using Pandas and NumPy for cleaning, preprocessing, and analyzing complex datasets.

    Jupyter Notebook
    Ver en GitHub↗4,583
  • floydhub/dl-dockerAvatar de floydhub

    floydhub/dl-docker

    3,856Ver en GitHub↗

    This project provides a standardized, portable containerized workspace designed to streamline deep learning development. By bundling essential machine learning frameworks and system dependencies into a single image, it eliminates manual configuration and ensures consistent execution across different host machines. The environment facilitates interactive data science workflows by enabling browser-based access to notebooks and monitoring tools through automated network port mapping. It also supports persistent data management by mounting local host directories directly into the container, ensur

    Provides a portable software stack bundling deep learning frameworks, persistent storage, and interactive notebook access.

    Python
    Ver en GitHub↗3,856
  1. Home
  2. Data & Databases
  3. Data Science Toolkits