Book Image

Platform and Model Design for Responsible AI

By : Amita Kapoor, Sharmistha Chatterjee
Book Image

Platform and Model Design for Responsible AI

By: Amita Kapoor, Sharmistha Chatterjee

Overview of this book

AI algorithms are ubiquitous and used for tasks, from recruiting to deciding who will get a loan. With such widespread use of AI in the decision-making process, it’s necessary to build an explainable, responsible, transparent, and trustworthy AI-enabled system. With Platform and Model Design for Responsible AI, you’ll be able to make existing black box models transparent. You’ll be able to identify and eliminate bias in your models, deal with uncertainty arising from both data and model limitations, and provide a responsible AI solution. You’ll start by designing ethical models for traditional and deep learning ML models, as well as deploying them in a sustainable production setup. After that, you’ll learn how to set up data pipelines, validate datasets, and set up component microservices in a secure and private way in any cloud-agnostic framework. You’ll then build a fair and private ML model with proper constraints, tune the hyperparameters, and evaluate the model metrics. By the end of this book, you’ll know the best practices to comply with data privacy and ethics laws, in addition to the techniques needed for data anonymization. You’ll be able to develop models with explainability, store them in feature stores, and handle uncertainty in model predictions.
Table of Contents (21 chapters)
1
Part 1: Risk Assessment Machine Learning Frameworks in a Global Landscape
5
Part 2: Building Blocks and Patterns for a Next-Generation AI Ecosystem
9
Part 3: Design Patterns for Model Optimization and Life Cycle Management
14
Part 4: Implementing an Organization Strategy, Best Practices, and Use Cases

Part 3: Design Patterns for Model Optimization and Life Cycle Management

This part of the book delves into crucial ethical considerations and challenges surrounding AI and machine learning systems, focusing on fairness, explainability, and model governance. It begins by examining various fairness notions and the importance of fair data collection, highlighting the impact of biased data on model performance and societal consequences. The discussion then extends to fairness in model optimization, presenting techniques to mitigate biases and ensure equitable outcomes. Model explainability is also addressed; we'll explore methods and tools for interpreting complex models and fostering trust in AI systems. Finally, the broader ethical implications and challenges of AI are tackled, emphasizing the significance of model governance, accountability, and transparency in the development and deployment of AI solutions. By offering a combination of theoretical insights and practical guidance...