Showing 3 open source projects for "youtube export"

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  • 1
    notebooklm-py

    notebooklm-py

    Unofficial Python API and agentic skill for Google NotebookLM

    notebooklm-py is an unofficial Python API and agent-ready integration layer for Google NotebookLM that exposes NotebookLM functionality through code, the command line, and AI agent workflows. Its goal is to provide programmatic access not just to standard notebook operations, but also to many capabilities that are either limited or unavailable in the web interface, making it especially useful for automation and custom pipelines. The project covers notebook management, source ingestion,...
    Downloads: 6 This Week
    Last Update:
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  • 2
    YouTube video web scraper 2 [ISA]

    YouTube video web scraper 2 [ISA]

    YouTube video web scraper 2 [Improved.Simplified.Alternative]

    'YouTube video web scraper 2' is an desktop application developed using python 3.11.4 and other add-on libaries. Finds YouTube video based on user request and view as table. Export the table as excel. Compatible only for windows OS.
    Downloads: 2 This Week
    Last Update:
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  • 3
    YouTube-8M

    YouTube-8M

    Starter code for working with the YouTube-8M dataset

    ...It was developed to support the YouTube-8M Video Understanding Challenge (hosted on Kaggle and featured at ICCV 2019), enabling researchers and practitioners to benchmark video classification models on large-scale datasets with over millions of labeled videos. The code demonstrates how to process frame-level features, train logistic and deep learning models, evaluate them using metrics like global Average Precision (gAP) and mean Average Precision (mAP), and export trained models for MediaPipe inference.
    Downloads: 1 This Week
    Last Update:
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