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Aniruddha Choudhury - Continuous Machine Learning with Kubeflow: Performing Reliable MLOps with Capabilities of TFX, Sagemaker and Kubernetes (English Edition)

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Aniruddha Choudhury Continuous Machine Learning with Kubeflow: Performing Reliable MLOps with Capabilities of TFX, Sagemaker and Kubernetes (English Edition)
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Continuous Machine Learning with Kubeflow: Performing Reliable MLOps with Capabilities of TFX, Sagemaker and Kubernetes (English Edition): summary, description and annotation

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An insightful journey to MLOps, DevOps, and Machine Learning in the real environment.

Key Features

Extensive knowledge and concept explanation of Kubernetes components with examples.

An all-in-one knowledge guide to train and deploy ML pipelines using Docker and Kubernetes.

Includes numerous MLOps projects with access to proven frameworks and the use of deep learning concepts.

Description

Continuous Machine Learning with Kubeflow introduces you to the modern machine learning infrastructure, which includes Kubernetes and the Kubeflow architecture. This book will explain the fundamentals of deploying various AI/ML use cases with TensorFlow training and serving with Kubernetes and how Kubernetes can help with specific projects from start to finish.

This book will help demonstrate how to use Kubeflow components, deploy them in GCP, and serve them in production using real-time data prediction. With Kubeflow KFserving, well look at serving techniques, build a computer vision-based user interface in streamlit, and then deploy it to the Google cloud platforms, Kubernetes and Heroku. Next, we also explore how to build Explainable AI for determining fairness and biasness with a What-if tool. Backed with various use-cases, we will learn how to put machine learning into production, including training and serving.

After reading this book, you will be able to build your ML projects in the cloud using Kubeflow and the latest technology. In addition, you will gain a solid knowledge of DevOps and MLOps, which will open doors to various job roles in companies.

What you will learn

Get comfortable with the architecture and the orchestration of Kubernetes.

Learn to containerize and deploy from scratch using Docker and Google Cloud Platform.

Practice how to develop the Kubeflow Orchestrator pipeline for a TensorFlow model.

Create AWS SageMaker pipelines, right from training to deployment in production.

Build the TensorFlow Extended (TFX) pipeline for an NLP application using Tensorboard and TFMA.

Who this book is for

This book is for MLOps, DevOps, Machine Learning Engineers, and Data Scientists who want to continuously deploy machine learning pipelines and manage them at scale using Kubernetes. The readers should have a strong background in machine learning and some knowledge of Kubernetes is required.

Table of Contents

1. Introduction to Kubeflow & Kubernetes Cloud Architecture

2. Developing Kubeflow Pipeline in GCP

3. Designing Computer Vision Model in Kubeflow

4. Building TFX Pipeline

5. ML Model Explainability & Interpretability

6. Building Weights & Biases Pipeline Development

7. Applied ML with AWS Sagemaker

8. Web App Development with Streamlit & Heroku

Aniruddha Choudhury: author's other books


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Performing Reliable MLOps with Capabilities of
TFX, Sagemaker and Kubernetes

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Aniruddha Choudhury
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www.bpbonline.com

FIRST EDITION 2022

Copyright BPB Publications, India

ISBN: 978-93-89898-507

All Rights Reserved. No part of this publication may be reproduced, distributed or transmitted in any form or by any means or stored in a database or retrieval system, without the prior written permission of the publisher with the exception to the program listings which may be entered, stored and executed in a computer system, but they can not be reproduced by the means of publication, photocopy, recording, or by any electronic and mechanical means.

LIMITS OF LIABILITY AND DISCLAIMER OF WARRANTY

The information contained in this book is true to correct and the best of authors and publishers knowledge. The author has made every effort to ensure the accuracy of these publications, but publisher cannot be held responsible for any loss or damage arising from any information in this book.

All trademarks referred to in the book are acknowledged as properties of their respective owners but BPB Publications cannot guarantee the accuracy of this information.

wwwbpbonlinecom Dedicated to My beloved parents and family About the - photo 5

www.bpbonline.com

Dedicated to

My beloved parents and family

About the Author

Aniruddha Choudhury has 5 years of IT professional experience in providing Artificial Intelligence development solutions, MLOPS Kubeflow, Multi Cloud GCP, AWS, Azure and is passionate about providing Data Science and Data Engineering complex solutions in machine learning and deep learning. He is always looking for new opportunities for a new dimensional challenge for high impact business problems to become a valuable contributor for his future employers.

Presently he is working in Publicis Sapient as Senior Data scientist (Full stack MLOPS) for the last 2 year. Previously he worked with Incture technology and before that he has worked at Wells Fargo Bank on diverse financial products AI solutions on various lines of business.

As a tech geek, Aniruddha is always enthusiastic about working in cross-dimensional knowledge. He is working on Kaggle and Google data projects building a statistical and machine learning NLP model with an end-to-end data wrangling and preparation, building model framework with visualization and predictive/text/image analytics and Amazon AWS and Microsoft Azure DataBricks Cloud with Apache scala and spark and finding patterns in all forms of data. He has a passion to break complex problems in data science field and find resolutions with deep learning and machine learning. He is also working on deep learning frameworks like Tensorflow, Keras, and Pytorch. As an individual, Aniruddha always believes in constantly learning new skills and taking the road less travelled. He likes to keep himself updated about the technological world and is always toying with some new innovation.

He has mastered in building Artificial Intelligence solutions and finding complex patterns from research papers to gain optimal solution to current product development and possesses a self-innovative mind alongside.

About the Reviewer

Rajdeep Kumar is a lead data scientist at one of the top consulting companies. He has a Post Graduate Degree in Data Science from BITS Pilani, and is an alumni of IIIT Bangalore. He has more than 11 years of work experience in the IT industry. In his capacity, he drives and contributes to the Data Science activities along with defining the road map, scoping and mentoring the team members. He is an expert in deriving and productionizing end-to-end ML solutions to grow business and have a positive impact on the key business KPIs.

Acknowledgement

There are a few people I want to thank for the continued and ongoing support they have given me during the writing of this book. First and foremost, I would like to thank my parents for continuously encouraging me for writing the book I could have never completed this book without their support. I would like to thank my friend Dr. Someswar Deb, who is working as MSL in Novartis, for his constant support and motivation.

I am grateful to the journey provided from my companies who gave me support throughout the learning process of my career.

Thank you for all the hidden support provided. I gratefully acknowledge Mr. Abhishek Kumar, Senior Director of Public is Sapient for his kind technical help for deployment related stuffs which was helpful for this book. I would like to thank Sivaram Annadurai Senior Manager at Publicis Sapient for his constant motivation in technical and business aspects in machine learning real-time projects.

My gratitude also goes to the team at BPB Publications for being supportive enough to provide me quite a long time to finish the first part of the book and also allow me to publish the book in multiple parts. Since image processing being a vast and very active area of research, it was impossible to deep-dive into different classes of problems in a single book, especially by not making it too voluminous.

Preface

This book focuses on the DevOps and MLOps of deploying and productionising machine learning projects with Kubeflow in Google Cloud platform. The authors feel that in this era of machine learning, lot of companies failed to make production of AI/ML projects in real time which was also a study from Forbes. It is compelling and relevant content for todays practicing DevOps/MLOps teams as this sector is still changing. So, many machine learning platforms today take different approaches to the architecture and solution space of managing machine learning workflows. The core concepts of Kubernetes and Kubeflow and its architecture alongside teaches us how to approach and make your AI/ML projects from training to serving with scale in production with Kubeflow.

This book starts by taking you through todays machine learning infrastructure of Kubernetes and Kubeflow architecture. We then go on to outline the core principles of deploying various AI/ML use cases with TensorFlow training serving with Kubeflow and explain how Kubernetes solves some of the issues that arise. We further show how to use TFX with Kubeflow alongside Explainable AI for determining fairness and biasness with What-if Tool. We learn various serving techniques framework for different use cases with Kubeflow KF serving. After that we look at building sample computer vision based UI in streamlit and deploying that in Google cloud platform Kubernetes and Heroku deployment.

This book is divided into 8 chapters. They cover Kubernetes, Kubeflow basics, advance deployment projects with Kubeflow, AWS Sagemaker deployment and explainable AI with real time examples for deployment and container creation with Docker and building pipeline in Kubeflow. More interest will arise among learners in Machine learning deployment with Kubeflow.

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