Managing Machine Learning Projects: From Design to Deployment
Thompson, Simon
- 出版商: Manning
- 出版日期: 2023-08-22
- 售價: $1,850
- 貴賓價: 9.5 折 $1,758
- 語言: 英文
- 頁數: 246
- 裝訂: Quality Paper - also called trade paper
- ISBN: 163343902X
- ISBN-13: 9781633439023
-
相關分類:
Machine Learning
-
相關翻譯:
機器學習項目成功交付 (簡中版)
立即出貨 (庫存 < 3)
相關主題
商品描述
Guide machine learning projects from design to production with the techniques in this unique project management guide. No ML skills required! In Managing Machine Learning Projects you'll learn essential machine learning project management techniques, including:
Managing Machine Learning Projects is an end-to-end guide for delivering machine learning applications on time and under budget. It lays out tools, approaches, and processes designed to handle the unique challenges of machine learning project management. You'll follow an in-depth case study through a series of sprints and see how to put each technique into practice. The book's strong consideration to data privacy, and community impact ensure your projects are ethical, compliant with global legislation, and avoid being exposed to failure from bias and other issues. Purchase of the print book includes a free eBook in PDF, Kindle, and ePub formats from Manning Publications. About the Technology Ferrying machine learning projects to production often feels like navigating uncharted waters. From accounting for large data resources to tracking and evaluating multiple models, machine learning technology has radically different requirements than traditional software. Never fear! This book lays out the unique practices you'll need to ensure your projects succeed. About the Book Managing Machine Learning Projects is an amazing source of battle-tested techniques for effective delivery of real-life machine learning solutions. The book is laid out across a series of sprints that take you from a project proposal all the way to deployment into production. You'll learn how to plan essential infrastructure, coordinate experimentation, protect sensitive data, and reliably measure model performance. Many ML projects fail to create real value--read this book to make sure your project is a success. What's Inside
2 Pre-project: From opportunity to requirements
3 Pre-project: From requirements to proposal
4 Getting started
5 Diving into the problem
6 EDA, ethics, and baseline evaluations
7 Making useful models with ML
8 Testing and selection
9 Sprint 3: system building and production
10 Post project (sprint O)
- Understanding an ML project's requirements
- Setting up the infrastructure for the project and resourcing a team
- Working with clients and other stakeholders
- Dealing with data resources and bringing them into the project for use
- Handling the lifecycle of models in the project
- Managing the application of ML algorithms
- Evaluating the performance of algorithms and models
- Making decisions about which models to adopt for delivery
- Taking models through development and testing
- Integrating models with production systems to create effective applications
- Steps and behaviors for managing the ethical implications of ML technology
Managing Machine Learning Projects is an end-to-end guide for delivering machine learning applications on time and under budget. It lays out tools, approaches, and processes designed to handle the unique challenges of machine learning project management. You'll follow an in-depth case study through a series of sprints and see how to put each technique into practice. The book's strong consideration to data privacy, and community impact ensure your projects are ethical, compliant with global legislation, and avoid being exposed to failure from bias and other issues. Purchase of the print book includes a free eBook in PDF, Kindle, and ePub formats from Manning Publications. About the Technology Ferrying machine learning projects to production often feels like navigating uncharted waters. From accounting for large data resources to tracking and evaluating multiple models, machine learning technology has radically different requirements than traditional software. Never fear! This book lays out the unique practices you'll need to ensure your projects succeed. About the Book Managing Machine Learning Projects is an amazing source of battle-tested techniques for effective delivery of real-life machine learning solutions. The book is laid out across a series of sprints that take you from a project proposal all the way to deployment into production. You'll learn how to plan essential infrastructure, coordinate experimentation, protect sensitive data, and reliably measure model performance. Many ML projects fail to create real value--read this book to make sure your project is a success. What's Inside
- Set up infrastructure and resource a team
- Bring data resources into a project
- Accurately estimate time and effort
- Evaluate which models to adopt for delivery
- Integrate models into effective applications
2 Pre-project: From opportunity to requirements
3 Pre-project: From requirements to proposal
4 Getting started
5 Diving into the problem
6 EDA, ethics, and baseline evaluations
7 Making useful models with ML
8 Testing and selection
9 Sprint 3: system building and production
10 Post project (sprint O)
作者簡介
Simon Thompson has spent 25 years developing AI systems. He led the AI research program at BT Labs in the UK, where he helped pioneer Big Data technology in the company and managed an applied research practice for nearly a decade. Simon now works delivering Machine Learning systems for financial services companies in the City of London as the Head of Data Science at GFT Technologies.
作者簡介(中文翻譯)
Simon Thompson在AI系統的開發上已經投入了25年的時間。他曾在英國的BT實驗室領導AI研究計劃,在該公司幫助開創了大數據技術,並在應用研究領域擔任管理職位長達近十年。現在,Simon作為GFT Technologies的數據科學主管,在倫敦金融服務公司提供機器學習系統的交付工作。