Showing 2 open source projects for "learning app"

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    OpenAI Quickstart Python

    OpenAI Quickstart Python

    Python example app from the OpenAI API quickstart tutorial

    openai-quickstart-python is an official OpenAI repository containing multiple Python quickstart applications that demonstrate how to use different OpenAI API endpoints, including Chat and Assistants. It provides practical, beginner-friendly examples to help developers quickly learn how to send requests, handle responses, and build basic applications using the OpenAI Python SDK. The examples folder includes small, self-contained projects showcasing common use cases like chat completions, tool...
    Downloads: 2 This Week
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    Jan-v1-edge

    Jan-v1-edge

    Jan-v1-edge: efficient 1.7B reasoning model optimized for edge devices

    Jan-v1-edge is a lightweight agentic language model developed by JanHQ, designed for fast and reliable on-device execution. It is the second release in the Jan Family and was distilled from the larger Jan-v1 model, retaining strong reasoning and problem-solving capabilities while reducing its computational footprint. The model was refined through a two-stage post-training process: Supervised Fine-Tuning (SFT) to transfer knowledge from Jan-v1, followed by Reinforcement Learning with...
    Downloads: 0 This Week
    Last Update:
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