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2 dépôts

Awesome GitHub RepositoriesData Visualization

Tools for inspecting and displaying dataset characteristics.

Distinguishing note: Focuses on visual inspection of ML datasets.

Explore 2 awesome GitHub repositories matching artificial intelligence & ml · Data Visualization. Refine with filters or upvote what's useful.

Awesome Data Visualization GitHub Repositories

Trouvez les meilleurs dépôts grâce à l'IA.Nous recherchons les dépôts les plus pertinents grâce à l'IA.
  • jakevdp/pythondatasciencehandbookAvatar de jakevdp

    jakevdp/PythonDataScienceHandbook

    48,561Voir sur GitHub↗

    This project is an interactive data science environment that combines code execution, rich media visualization, and narrative documentation into a persistent, browser-based platform. It serves as a comprehensive educational resource for scientific computing, providing a framework for iterative data analysis and machine learning prototyping. The environment is distinguished by its focus on high-performance numerical computing, utilizing vectorized array operations and memory-mapped data structures to handle large-scale computations efficiently. It features a unified estimator interface that st

    Loads and displays image datasets to inspect the quality and characteristics of the input information.

    Jupyter Notebookjupyter-notebookmatplotlibnumpy
    Voir sur GitHub↗48,561
  • apple/turicreateAvatar de apple

    apple/turicreate

    11,171Voir sur GitHub↗

    This project is an automated machine learning framework and toolkit designed for training and tuning custom models for classification, regression, and recommendations. It functions as a multimodal machine learning toolkit capable of processing and training models using a combination of text, image, audio, and sensor data. The framework distinguishes itself as a multimodal data processor that can handle and visualize large datasets on a single machine using column-oriented disk storage. It includes a core machine learning model generator that converts trained models into formats compatible wit

    Provides streaming visualizations to explore dataset characteristics and evaluate model performance.

    C++
    Voir sur GitHub↗11,171
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