Fine-Tuning GPT Models with Python
Ғылым және технология
In this video, we learn how to fine-tune GPT models from OpenAI in Python.
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Пікірлер: 16
most awaited video. looking for more LLM and AI videos
You are making requested videos. Thank you ❤
It is a very informative video for the ones who is trying to understand the mechanism of fine-tuning with gpt models. Thank you very much.
you have done a great job
well done, I would be cool to see the process of fine-tuning an open source model
very cool! thanks! I would have expected it to be more difficult ...
When Creating the dataset to train gpt-3.5-turbo For a conversational AI If I want to train the model to answer something specific to a range of similar questions that can occur during a conversation. *The conversation is a script which the AI follows* Should I include only the question and the response or should I include all the conversation up to where that specific question is asked ?
Very useful lecture to bring out more power out of LLM. Enjoyed it very much!
@elu1
Ай бұрын
what are the solutions for chatgpt to go out and collect/search for structured info as defined by client?
Fine tune ollama models plz ❤ nice vedio
I copied the methods, worked really well.
Does the ChatGPT have the latest meta data of KZread videos? Or isn’t it the video you uploaded earlier for the ChatGPT to learn?
how can i use this finetuned model for the sake of a chatbot in my VR application in unity
Nice
python coding challenge-97 kzread.info/dash/bejne/p4JhzNVwh87Ke6Q.htmlsi=BQcqi6Nw2oZUonMy python coding challenge-98 kzread.info/dash/bejne/fIaWxMqKYsmzdbA.html
First