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Developing Kaggle Notebooks

Developing Kaggle Notebooks

By : Gabriel Preda
5 (29)
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Developing Kaggle Notebooks

Developing Kaggle Notebooks

5 (29)
By: Gabriel Preda

Overview of this book

Developing Kaggle Notebooks introduces you to data analysis, with a focus on using Kaggle Notebooks to simultaneously achieve mastery in this fi eld and rise to the top of the Kaggle Notebooks tier. The book is structured as a sevenstep data analysis journey, exploring the features available in Kaggle Notebooks alongside various data analysis techniques. For each topic, we provide one or more notebooks, developing reusable analysis components through Kaggle's Utility Scripts feature, introduced progressively, initially as part of a notebook, and later extracted for use across future notebooks to enhance code reusability on Kaggle. It aims to make the notebooks' code more structured, easy to maintain, and readable. Although the focus of this book is on data analytics, some examples will guide you in preparing a complete machine learning pipeline using Kaggle Notebooks. Starting from initial data ingestion and data quality assessment, you'll move on to preliminary data analysis, advanced data exploration, feature qualifi cation to build a model baseline, and feature engineering. You'll also delve into hyperparameter tuning to iteratively refi ne your model and prepare for submission in Kaggle competitions. Additionally, the book touches on developing notebooks that leverage the power of generative AI using Kaggle Models.
Table of Contents (14 chapters)
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12
Other Books You May Enjoy
13
Index

Preparing the model

The model preparation, depending on the method we will implement, might be more or less complex. In our case, we opt to start the first baseline model with a simple deep learning architecture (which was the standard approach at the time of the competition), including a word embeddings layer (using pretrained word embeddings) and one or more bidirectional LSTM layers. This architecture was a common choice at the time when this competition took place, and it is still a good option for a baseline for a text classification problem. LSTM stands for Long Short-Term Memory. It is a type of recurrent neural network architecture designed to capture and remember long-term dependencies in sequential data. It is particularly effective for text classification problems due to its ability to handle and model intricate relationships and dependencies in sequences of text.

For this, we will need to perform some comment data preprocessing (we also performed preprocessing when...

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