Explainable AI for Practitioners designing and implementing explainable ML solutions

Most intermediate-level machine learning books focus on how to optimize models by increasing accuracy or decreasing prediction error. But this approach often overlooks the importance of understanding why and how your ML model makes the predictions that it does. Explainability methods provide an esse...

Full description

Bibliographic Details
Main Author: Munn, Michael
Other Authors: Pitman, David, Taly, Ankur
Format: eBook
Language:English
Published: Sebastapol, CA O'Reilly Media 2022
Subjects:
Online Access:
Collection: O'Reilly - Collection details see MPG.ReNa
LEADER 02597nmm a2200385 u 4500
001 EB002134351
003 EBX01000000000000001272408
005 00000000000000.0
007 cr|||||||||||||||||||||
008 221111 ||| eng
020 |a 9781098119102 
020 |a 9781098119096 
020 |a 109811910X 
050 4 |a Q325.5 
100 1 |a Munn, Michael 
245 0 0 |a Explainable AI for Practitioners  |b designing and implementing explainable ML solutions  |c Michael Munn and David Pitman ; foreword by Ankur Taly 
260 |a Sebastapol, CA  |b O'Reilly Media  |c 2022 
300 |a 1 online resource 
505 0 |a Includes bibliographical references and index 
653 |a Machine learning / http://id.loc.gov/authorities/subjects/sh85079324 
653 |a Machine learning / fast 
653 |a Apprentissage automatique 
700 1 |a Pitman, David 
700 1 |a Taly, Ankur 
041 0 7 |a eng  |2 ISO 639-2 
989 |b OREILLY  |a O'Reilly 
776 |z 1098119134 
776 |z 1098119096 
776 |z 9781098119096 
776 |z 9781098119102 
776 |z 9781098119133 
776 |z 109811910X 
856 4 0 |u https://learning.oreilly.com/library/view/~/9781098119126/?ar  |x Verlag  |3 Volltext 
082 0 |a 006.3/1 
520 |a Most intermediate-level machine learning books focus on how to optimize models by increasing accuracy or decreasing prediction error. But this approach often overlooks the importance of understanding why and how your ML model makes the predictions that it does. Explainability methods provide an essential toolkit for better understanding model behavior, and this practical guide brings together best-in-class techniques for model explainability. Experienced machine learning engineers and data scientists will learn hands-on how these techniques work so that you'll be able to apply these tools more easily in your daily workflow. This essential book provides: A detailed look at some of the most useful and commonly used explainability techniques, highlighting pros and cons to help you choose the best tool for your needs Tips and best practices for implementing these techniques A guide to interacting with explainability and how to avoid common pitfalls The knowledge you need to incorporate explainability in your ML workflow to help build more robust ML systems Advice about explainable AI techniques, including how to apply techniques to models that consume tabular, image, or text data Example implementation code in Python using well-known explainability libraries for models built in Keras and TensorFlow 2.0, PyTorch, and HuggingFace