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The Deep Learning Architect's Handbook

You're reading from  The Deep Learning Architect's Handbook

Product type Book
Published in Dec 2023
Publisher Packt
ISBN-13 9781803243795
Pages 516 pages
Edition 1st Edition
Languages
Author (1):
Ee Kin Chin Ee Kin Chin
Profile icon Ee Kin Chin

Table of Contents (25) Chapters

Preface Part 1 – Foundational Methods
Chapter 1: Deep Learning Life Cycle Chapter 2: Designing Deep Learning Architectures Chapter 3: Understanding Convolutional Neural Networks Chapter 4: Understanding Recurrent Neural Networks Chapter 5: Understanding Autoencoders Chapter 6: Understanding Neural Network Transformers Chapter 7: Deep Neural Architecture Search Chapter 8: Exploring Supervised Deep Learning Chapter 9: Exploring Unsupervised Deep Learning Part 2 – Multimodal Model Insights
Chapter 10: Exploring Model Evaluation Methods Chapter 11: Explaining Neural Network Predictions Chapter 12: Interpreting Neural Networks Chapter 13: Exploring Bias and Fairness Chapter 14: Analyzing Adversarial Performance Part 3 – DLOps
Chapter 15: Deploying Deep Learning Models to Production Chapter 16: Governing Deep Learning Models Chapter 17: Managing Drift Effectively in a Dynamic Environment Chapter 18: Exploring the DataRobot AI Platform Chapter 19: Architecting LLM Solutions Index Other Books You May Enjoy

Summary

In this chapter, we focused on the critical issue of bias and fairness in machine learning models. The potential negative consequences of deploying biased models, such as legal actions and fines, were emphasized. We covered various types of biases and identified stages in the deep learning life cycle where bias can emerge, including planning, data preparation, model development, and deployment.

Several metrics for detecting and evaluating bias and fairness were also introduced, including equal representation-based metrics, equal error-based metrics, distributional fairness metrics, and individual fairness metrics. This chapter provided recommendations on selecting the right metrics for specific use cases and highlighted the importance of balancing opposing views, such as WAE and WYSIWYG, when evaluating fairness. This chapter also discussed programmatic bias mitigation methods that can be applied during the pre-processing, in-processing, and post-processing stages of model...

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