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Developing Kaggle Notebooks

You're reading from   Developing Kaggle Notebooks Pave your way to becoming a Kaggle Notebooks Grandmaster

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Product type Paperback
Published in Dec 2023
Publisher Packt
ISBN-13 9781805128519
Length 370 pages
Edition 1st Edition
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Author (1):
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Gabriel Preda Gabriel Preda
Author Profile Icon Gabriel Preda
Gabriel Preda
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Table of Contents (14) Chapters Close

Preface 1. Introducing Kaggle and Its Basic Functions FREE CHAPTER 2. Getting Ready for Your Kaggle Environment 3. Starting Our Travel – Surviving the Titanic Disaster 4. Take a Break and Have a Beer or Coffee in London 5. Get Back to Work and Optimize Microloans for Developing Countries 6. Can You Predict Bee Subspecies? 7. Text Analysis Is All You Need 8. Analyzing Acoustic Signals to Predict the Next Simulated Earthquake 9. Can You Find Out Which Movie Is a Deepfake? 10. Unleash the Power of Generative AI with Kaggle Models 11. Closing Our Journey: How to Stay Relevant and on Top 12. Other Books You May Enjoy
13. Index

Creating a RAG system

In the previous sections, we explored various approaches to interact with Foundation Models – more precisely, available LLMs from Kaggle Models. First, we experimented with prompting, directly using the models. Then, we quantized the models with two different approaches. We also showed that we can use models to generate code. A more complex application included a combination of LangChain with an LLM to create sequences of connected operations, or task sequences.

In all these cases, the answers of the LLM are based on the information already available with the model at the time of training it. If we would like to have the LLM answer queries about information that was never presented to the LLM, the model might provide a deceiving answer by hallucinating. To counter this tendency of models to hallucinate when they do not have the right information, we can fine-tune models with our own data. The disadvantage to this is that it is costly, since the computational...

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