ningg/happy-llm-colab
happy-llm 实践练习:colab 版本、pynb 格式,GPU 免费
This project offers an interactive learning environment for understanding and building Large Language Models (LLMs) and Natural Language Processing (NLP) applications. It provides pre-configured Python notebooks that you can run directly in your browser using Google Colab's free GPU resources. Students, data scientists, and AI researchers can follow along with practical examples and code to grasp core concepts from NLP basics to advanced LLM training and deployment.
Use this if you want to learn about and experiment with LLMs and NLP concepts without needing to set up a local development environment or access paid GPU resources.
Not ideal if you are looking for a production-ready LLM deployment framework or need to run very large-scale, customized training jobs beyond what a free Colab environment can handle.
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Python
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Feb 28, 2026
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