Ensemble Learning for AI Developers: Learn Bagging, Stacking, and Boosting Methods with Use Cases
Use ensemble learning techniques and models to improve your machine learning results.
Ensemble Learning for AI Developers starts you at the beginning with an historical overview and explains key ensemble techniques and why they are needed. You then will learn how to change training data using bagging, bootstrap aggregating, random forest models, and cross-validation methods. Authors Kumar and Jain provide best practices to guide you in combining models and using tools to boost performance of your machine learning projects. They teach you how to effectively implement ensemble concepts such as stacking and boosting and to utilize popular libraries such as Keras, Scikit Learn, TensorFlow, PyTorch, and Microsoft LightGBM. Tips are presented to apply ensemble learning in different data science problems, including time series data, imaging data, and NLP. Recent advances in ensemble learning are discussed. Sample code is provided in the form of scripts and the IPython notebook.

What You Will Learn

  • Understand the techniques and methods utilized in ensemble learning
  • Use bagging, stacking, and boosting to improve performance of your machine learning projects by combining models to decrease variance, improve predictions, and reduce bias
  • Enhance your machine learning architecture with ensemble learning


Who This Book Is For

Data scientists and machine learning engineers keen on exploring ensemble learning

1136691061
Ensemble Learning for AI Developers: Learn Bagging, Stacking, and Boosting Methods with Use Cases
Use ensemble learning techniques and models to improve your machine learning results.
Ensemble Learning for AI Developers starts you at the beginning with an historical overview and explains key ensemble techniques and why they are needed. You then will learn how to change training data using bagging, bootstrap aggregating, random forest models, and cross-validation methods. Authors Kumar and Jain provide best practices to guide you in combining models and using tools to boost performance of your machine learning projects. They teach you how to effectively implement ensemble concepts such as stacking and boosting and to utilize popular libraries such as Keras, Scikit Learn, TensorFlow, PyTorch, and Microsoft LightGBM. Tips are presented to apply ensemble learning in different data science problems, including time series data, imaging data, and NLP. Recent advances in ensemble learning are discussed. Sample code is provided in the form of scripts and the IPython notebook.

What You Will Learn

  • Understand the techniques and methods utilized in ensemble learning
  • Use bagging, stacking, and boosting to improve performance of your machine learning projects by combining models to decrease variance, improve predictions, and reduce bias
  • Enhance your machine learning architecture with ensemble learning


Who This Book Is For

Data scientists and machine learning engineers keen on exploring ensemble learning

49.99 In Stock
Ensemble Learning for AI Developers: Learn Bagging, Stacking, and Boosting Methods with Use Cases

Ensemble Learning for AI Developers: Learn Bagging, Stacking, and Boosting Methods with Use Cases

Ensemble Learning for AI Developers: Learn Bagging, Stacking, and Boosting Methods with Use Cases

Ensemble Learning for AI Developers: Learn Bagging, Stacking, and Boosting Methods with Use Cases

eBook1st ed. (1st ed.)

$49.99 

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Overview

Use ensemble learning techniques and models to improve your machine learning results.
Ensemble Learning for AI Developers starts you at the beginning with an historical overview and explains key ensemble techniques and why they are needed. You then will learn how to change training data using bagging, bootstrap aggregating, random forest models, and cross-validation methods. Authors Kumar and Jain provide best practices to guide you in combining models and using tools to boost performance of your machine learning projects. They teach you how to effectively implement ensemble concepts such as stacking and boosting and to utilize popular libraries such as Keras, Scikit Learn, TensorFlow, PyTorch, and Microsoft LightGBM. Tips are presented to apply ensemble learning in different data science problems, including time series data, imaging data, and NLP. Recent advances in ensemble learning are discussed. Sample code is provided in the form of scripts and the IPython notebook.

What You Will Learn

  • Understand the techniques and methods utilized in ensemble learning
  • Use bagging, stacking, and boosting to improve performance of your machine learning projects by combining models to decrease variance, improve predictions, and reduce bias
  • Enhance your machine learning architecture with ensemble learning


Who This Book Is For

Data scientists and machine learning engineers keen on exploring ensemble learning


Product Details

ISBN-13: 9781484259405
Publisher: Apress
Publication date: 06/18/2020
Sold by: Barnes & Noble
Format: eBook
File size: 3 MB

About the Author

Alok Kumar is an AI practitioner and innovation lead at Publicis Sapient. He has extensiveexperience in leading strategic initiatives and driving cutting-edge, fast-paced innovations. He won several awards and he is passionate about democratizing AI knowledge. He manages multiple non- profit learning and creative groups in NCR.


Mayank Jain currently works as Manager Technology at the Publicis Sapient Innovation Lab Kepler as an AI/ML expert. He has more than 10 years of industry experience working on cutting-edge projects to make computers see and think using techniques such as deep learning, machine learning, and computer vision. He has written several international publications, holds patents in his name, and has been awarded multiple times for his contributions.

Table of Contents

Chapter 1: Why Ensemble Techniques Are Needed.- Chapter 2: Mix Training Data.- Chapter 3: Mix Models.- Chapter 4: Mix Combinations.- Chapter 5: Use Ensemble Learning Libraries.- Chapter 6: Tips and Best Practices.
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