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Developing Kaggle Notebooks

You're reading from  Developing Kaggle Notebooks

Product type Book
Published in Dec 2023
Publisher Packt
ISBN-13 9781805128519
Pages 370 pages
Edition 1st Edition
Languages
Author (1):
Gabriel Preda Gabriel Preda
Profile icon Gabriel Preda

Table of Contents (14) Chapters

Preface 1. Introducing Kaggle and Its Basic Functions 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

Kaggle Models

Models is the newest section introduced on the platform; at the time of writing this book, it is less than one month old. Models started to be contributed quite often by users in several ways and for a few purposes. Most frequently, models were saved as output of Notebooks (Code) after being trained using custom code, often in the context of a competition. Subsequently, these models can be optionally included in a dataset or used directly in code. Also, sometimes, models built outside the platform were uploaded as datasets and then included in the pipeline of users to prepare a solution for a competition. Meantime, model repositories were available either through a public cloud, like Google Cloud, AWS, or Azure, or from a company specialized in such a service, like Hugging Face.

With the concept of downloadable models ready to be used or easy to fine-tune for a custom task, Kaggle chose to include Models in this platform. Currently, you can search in several categories: Text Classification, Image Feature Vector, Object Detection, and Image Segmentation. Alternatively, you can use the Model Finder feature to explore models specialized in a certain modality: Image, Text, Audio, Multimodal, or Video. When searching the Models library, you can apply filters on Task, Data Type, Framework, Language, License, and Size, as well as functional criteria, like Fine Tuneable.

There are no ranking points or performance tiers related to models yet. Models can be upvoted and there is a Code and Discussions section associated with each model. In the future, it is possible that we will see evolution here as well and have models with ranking points as well as performance tiers if they make it possible to contribute models and get recognition for this. Currently, models are contributed by Google only.

We might see the Models feature evolving immensely in the near future, providing the community with a flexible and powerful tool for the creation of modular and scalable solutions to train and add inference to machine learning pipelines on the Kaggle platform.

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Developing Kaggle Notebooks
Published in: Dec 2023 Publisher: Packt ISBN-13: 9781805128519
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