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The AI Product Manager's Handbook: Develop a product that takes advantage of machine learning to solve AI problems PDF

250 Pages·2023·7.314 MB·English
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The AI Product Manager’s Handbook Develop a product that takes advantage of machine learning to solve AI problems Irene Bratsis BIRMINGHAM—MUMBAI The AI Product Manager’s Handbook Copyright © 2023 Packt Publishing All rights reserved. No part of this book may be reproduced, stored in a retrieval system, or transmitted in any form or by any means, without the prior written permission of the publisher, except in the case of brief quotations embedded in critical articles or reviews. Every effort has been made in the preparation of this book to ensure the accuracy of the information presented. However, the information contained in this book is sold without warranty, either express or implied. Neither the author(s), nor Packt Publishing or its dealers and distributors, will be held liable for any damages caused or alleged to have been caused directly or indirectly by this book. Packt Publishing has endeavored to provide trademark information about all of the companies and products mentioned in this book by the appropriate use of capitals. However, Packt Publishing cannot guarantee the accuracy of this information. Publishing Product Manager: Dinesh Chaudhary Senior Editor: Tazeen Shaikh Technical Editor: Rahul Limbachiya Copy Editor: Safis Editing Project Coordinator: Farheen Fathima Proofreader: Safis Editing Indexer: Pratik Shirodkar Production Designer: Alishon Mendonca Marketing Coordinators: Shifa Ansari and Vinishka Kalra First published: February 2023 Production reference: 2230223 Published by Packt Publishing Ltd. Livery Place 35 Livery Street Birmingham B3 2PB, UK. ISBN 978-1-80461-293-4 www.packtpub.com For those courageous enough to believe they deserve their heart’s desires… evermore. – Irene Bratsis Contributors About the author Irene Bratsis is a director of digital product and data at the International WELL Building Institute (IWBI). She has a bachelor's in economics, and after completing various MOOCs in data science and big data analytics, she completed a data science program with Thinkful. Before joining IWBI, Irene worked as an operations analyst at Tesla, a data scientist at Gesture, a data product manager at Beekin, and head of product at Tenacity. Irene volunteers as NYC chapter co-lead for Women in Data, has coordinated various AI accelerators, moderated countless events with a speaker series with Women in AI called WaiTalk, and runs a monthly book club focused on data and AI books. About the reviewer Akshat Gurnani is a highly qualified individual with a background in the field of computer science and machine learning. He has a master’s degree in computer science and a deep understanding of various machine learning techniques and algorithms. He has experience working on various projects related to natural language processing, computer vision, and deep learning. He has also published several research papers in top-tier journals and conferences and has a proven track record in the field. He has a passion for keeping up to date with the latest developments in their fields and has a strong desire to continue learning and contributing to the field of artificial intelligence. Table of Contents Preface xiii Part 1 – Lay of the Land – Terms, Infrastructure, Types of AI, and Products Done Well 1 Understanding the Infrastructure and Tools for Building AI Products 3 Definitions – what is and is not AI 4 Data pipelines 14 ML versus DL – understanding the Managing projects – IaaS 15 difference 6 Deployment strategies – what do we ML 6 do with these outputs? 16 DL 7 Shadow deployment strategy 17 Learning types in ML 8 A/B testing model deployment strategy 17 Supervised learning 8 Canary deployment strategy 17 Unsupervised learning 9 Succeeding in AI – how well- Semi-supervised learning 10 managed AI companies do Reinforcement learning 11 infrastructure right 18 The order – what is the optimal flow The promise of AI – where is AI and where does every part of the taking us? 19 process live? 11 Summary 20 Step 1 – Data availability and centralization 11 Additional resources 20 Step 2 – Continuous maintenance 12 References 21 Database 13 Data warehouse 13 Data lake (and lakehouse) 14 viii Table of Contents 2 Model Development and Maintenance for AI Products 23 Understanding the stages of NPD 23 Training – when is a model ready for market? 28 Step 1 – Discovery 24 Step 2 – Define 24 Deployment – what happens after the Step 3 – Design 25 workstation? 32 Step 4 – Implementation 25 Testing and troubleshooting 34 Step 5 – Marketing 25 Refreshing – the ethics of how often Step 6 – Training 26 we update our models 36 Step 7 – Launch 26 Summary 38 Model types – from linear regression Additional resources 39 to neural networks 27 References 40 3 Machine Learning and Deep Learning Deep Dive 41 The old – exploring ML 42 and related tech 52 The new – exploring DL 43 Explainability – optimizing for ethics, caveats, and responsibility 53 Invisible influences 44 A brief history of DL 45 Accuracy – optimizing for success 54 Types of neural networks 46 Summary 55 Emerging technologies – ancillary References 55 4 Commercializing AI Products 59 The professionals – examples of B2B The rebels – examples of red ocean products done right 60 products 64 The artists – examples of B2C The GOAT – examples of products done right 61 differentiated disruptive and The pioneers – examples of blue dominant strategy products 65 ocean products 63 The dominant strategy 66 Table of Contents ix The disruptive strategy 67 Summary 68 The differentiated strategy 67 References 69 5 AI Transformation and Its Impact on Product Management 71 Money and value – how AI could AI and nanotech across healthcare 79 revolutionize our economic systems 72 Basic needs – AI for Good 80 Goods and services – growth in Summary 81 commercial MVPs 74 Additional resources 82 Government and autonomy – how AI References 82 will shape our borders and freedom 77 Sickness and health – the benefits of Part 2 – Building an AI-Native Product 6 Understanding the AI-Native Product 87 Stages of AI product development 88 Customer success 95 Phase 1 – Ideation 88 Marketing/sales/go-to-market team 95 Phase 2 – Data management 89 Investing in your tech stack 95 Phase 3 – Research and development 90 Productizing AI-powered outputs Phase 4 – Deployment 91 – how AI product management is AI/ML product dream team 91 different 96 AI PM 92 AI customization 98 AI/ML/data strategists 92 Selling AI – product management as Data engineer 92 a higher octave Data analyst 93 of sales 99 Data scientist 93 Summary 100 ML engineer 93 References 101 Frontend/backend/full stack engineers 94 UX designers/researchers 94

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