DeepSeek Fine-Tuning Made Simple: Create Custom AI Models with Python
Last Updated on January 31, 2025 by Editorial Team
Author(s): Krishan Walia
Originally published on Towards AI.
Learn to fine-tune the DeepSeek R1 model for all your use cases.
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Why be late to leverage the best in class reasoning with this DeepSeek R1 model?
Fine Tune and use it for your awesome project🚀!!
While everyoneβs racing to build applications on ChatGPT, savvy developers are quietly discovering DeepSeek-R1βs fine-tuning capabilities which is a hidden gem that turns a general-purpose AI into your specialized digital expert.
Through this article, you will learn how you can turn a general-purpose DeepSeek R1 model into a specialized, and domain-specific LLM.
There has been an emerging group of developers and founders that are not just discovering the latest and well-performing DeepSeek-R1 but are also looking out for ways by which they can integrate this model into their own products.
By fine-tuning the model we can make it possible to answer in a specialized and more domain-specific way. With the advanced reasoning capabilities of DeepSeek, it becomes an excellent choice for almost every task that involves thinking or problem-solving, all in a more organized and thoughtful manner.
In this article, we will be diving into the process of fine-tuning the DeepSeek-R1 model using Python. Through this article,… Read the full blog for free on Medium.
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Published via Towards AI