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@CarlosAlbertoFurtado Thanks for your submission. Although Ollama is widely used for local LLM and a common tool used by Python developers, awesome-python lists Python libraries and frameworks, not applications that happen to have Python bindings. |
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Project
Ollama
Checklist
Add project-name* [project-name](url) - Description ending with period.Why This Project Is Awesome
Which criterion does it meet? (pick one)
Explain:
Ollama is the most widely used tool for running large language models locally, with over 130k GitHub stars. It has become the standard way developers run and interact with LLMs on their own machines.
How It Differs
There is no similar entry for local LLM inference in the Machine Learning section. LangChain and LlamaIndex focus on building LLM applications, while Ollama focuses on running the models themselves locally.