Limitations of the ChatGPT and LLMs - Part 3
If you haven't watched the Part 1 and Part 2, I highly suggest watching them before watching the Part 3.
Large Language Models (LLMs) have shown a huge potential and recently the have drawn much attention. In this presentation, Ameet Deshpande and Alexander Wettig gives a detailed explanation about how Large Language Models and ChatGPT works. He makes clear that he does not assume that the audience has any prior knowledge about language models. He starts with embedding and give an explanation about Transformers as well. This is the last episode of this amazing serie. Thanks for watching.
Видео Limitations of the ChatGPT and LLMs - Part 3 канала Machine Learning TV
Large Language Models (LLMs) have shown a huge potential and recently the have drawn much attention. In this presentation, Ameet Deshpande and Alexander Wettig gives a detailed explanation about how Large Language Models and ChatGPT works. He makes clear that he does not assume that the audience has any prior knowledge about language models. He starts with embedding and give an explanation about Transformers as well. This is the last episode of this amazing serie. Thanks for watching.
Видео Limitations of the ChatGPT and LLMs - Part 3 канала Machine Learning TV
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