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Every corner you look, everyone is talking about Large Language Models (LLMs).
Are you feeling a bit overwhelmed and looking for a simple intro and guided application of LLMs ?
Many internet companies have a search engine.
In this tutorial, we will cover practical use case of LLMS in improving a search engines such as
1) Understanding user intent in query
2) Checking if query is relevant to a document
3) Fine-tuning LLMs with custom corpus .
4) Updating the search engine documents with LLM knowledge.
This tutorial is meant to be beginner friendly and will focus on the practical use case.
No prior experience on search or advance machine learning needed.
Google Colab and an e-commerce dataset will be provided.
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