Sign In Start Free Trial
Account

Add to playlist

Create a Playlist

Modal Close icon
You need to login to use this feature.
  • Book Overview & Buying Responsible AI in the Enterprise
  • Table Of Contents Toc
  • Feedback & Rating feedback
Responsible AI in the Enterprise

Responsible AI in the Enterprise

By : Adnan Masood, Dawe
5 (8)
close
close
Responsible AI in the Enterprise

Responsible AI in the Enterprise

5 (8)
By: Adnan Masood, Dawe

Overview of this book

Responsible AI in the Enterprise is a comprehensive guide to implementing ethical, transparent, and compliant AI systems in an organization. With a focus on understanding key concepts of machine learning models, this book equips you with techniques and algorithms to tackle complex issues such as bias, fairness, and model governance. Throughout the book, you’ll gain an understanding of FairLearn and InterpretML, along with Google What-If Tool, ML Fairness Gym, IBM AI 360 Fairness tool, and Aequitas. You’ll uncover various aspects of responsible AI, including model interpretability, monitoring and management of model drift, and compliance recommendations. You’ll gain practical insights into using AI governance tools to ensure fairness, bias mitigation, explainability, privacy compliance, and privacy in an enterprise setting. Additionally, you’ll explore interpretability toolkits and fairness measures offered by major cloud AI providers like IBM, Amazon, Google, and Microsoft, while discovering how to use FairLearn for fairness assessment and bias mitigation. You’ll also learn to build explainable models using global and local feature summary, local surrogate model, Shapley values, anchors, and counterfactual explanations. By the end of this book, you’ll be well-equipped with tools and techniques to create transparent and accountable machine learning models.
Table of Contents (16 chapters)
close
close
1
Part 1: Bigot in the Machine – A Primer
4
Part 2: Enterprise Risk Observability Model Governance
9
Part 3: Explainable AI in Action

Summary

Data and model drift refer to a phenomenon that occurs when the statistical properties of a dataset or underlying model change over time. In this chapter, we reviewed how this can have an adverse impact on the predictions of models and, hence, on business outcomes. To make sure models function as desired, companies implement an ML life cycle that ensures design, development, deployment, and monitoring best practices are in place. Drifts can happen for a variety of reasons, including changes in the underlying population and changes in the way data is collected. When data drift happens, it can create bias in ML models that are trained on this data, which can be quite problematic for regulations and compliance.

In this chapter, we reviewed several ways to detect and mitigate bias due to data or model drift, and to monitor your training and validation error rates closely using different tools, including open source and commercial hyperscaler products. There are various other...

Unlock full access

Continue reading for free

A Packt free trial gives you instant online access to our library of over 7000 practical eBooks and videos, constantly updated with the latest in tech
bookmark search playlist font-size

Change the font size

margin-width

Change margin width

day-mode

Change background colour

Close icon Search
Country selected

Close icon Your notes and bookmarks

Delete Bookmark

Modal Close icon
Are you sure you want to delete it?
Cancel
Yes, Delete

Confirmation

Modal Close icon
claim successful

Buy this book with your credits?

Modal Close icon
Are you sure you want to buy this book with one of your credits?
Close
YES, BUY