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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

Introducing Kaggle Models

Kaggle Models represent one of the latest innovations on the Kaggle platform. This feature gained prominence in particular after the introduction of code competitions, where participants often train models either on their local hardware or in the cloud. Post-training, they upload these models to Kaggle as a dataset. This practice allows Kagglers to utilize these pre-trained models in their inference notebooks, streamlining the process for code competition submissions. This method significantly reduces the runtime of the inference notebooks, fitting within the stringent time and memory constraints of the competition. Kaggle’s endorsement of this approach aligns well with real-world production systems, where model training and inference typically occur in separate pipelines.

This strategy becomes indispensable with large-scale models, such as those based on Transformer architectures, considering the immense computational resources required for fine...

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