As Artificial Intelligence (AI) becomes integrated into high-risk domains like healthcare, finance, and criminal justice, it is critical that those responsible for building these systems think outside the black box and develop systems that are not only accurate, but also transparent and trustworthy. This course is a comprehensive, hands-on guide to Interpretable Machine Learning, empowering you to develop AI solutions that are aligned with responsible AI principles. You will also gain an understanding of the emerging field of Mechanistic Interpretability and its use in understanding large language models.

Interpretable Machine Learning
本课程是 Explainable AI (XAI) 专项课程 的一部分
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您将学到什么
Describe and implement regression and generalized interpretable models
Demonstrate knowledge of decision trees, rules, and interpretable neural networks
Explain foundational Mechanistic Interpretability concepts, hypotheses, and experiments
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3 项作业
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该课程共有3个模块
In this module, you will be introduced to the concepts of regression and generalized models for interpretability. You will learn how to describe interpretable machine learning and differentiate between interpretability and explainability, explain and implement regression models in Python, and demonstrate knowledge of generalized models in Python. You will apply these learnings through discussions, guided programming labs, and a quiz assessment.
涵盖的内容
5个视频7篇阅读材料1个作业2个讨论话题3个非评分实验室
In this module, you will be introduced to the concepts of decision trees, decision rules, and interpretability in neural networks. You will learn how to explain and implement decision trees and decision rules in Python and define and explain neural network interpretable model approaches, including prototype-based networks, monotonic networks, and Kolmogorov-Arnold networks. You will apply these learnings through discussions, guided programming labs, and a quiz assessment.
涵盖的内容
8个视频1篇阅读材料1个作业2个讨论话题3个非评分实验室
In this module, you will be introduced to the concept of Mechanistic Interpretability. You will learn how to explain foundational Mechanistic Interpretability concepts, including features and circuits; describe the Superposition Hypothesis; and define Representation Learning to be able to analyze current research on scaling Representation Learning to LLMs. You will apply these learnings through discussions, guided programming labs, and a quiz assessment.
涵盖的内容
6个视频5篇阅读材料1个作业3个讨论话题1个非评分实验室
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学生评论
- 5 stars
82.14%
- 4 stars
10.71%
- 3 stars
3.57%
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已于 Aug 18, 2025审阅
The course is very well organized and Dr. Brinnae Bent demonstrates such mastery that it makes such a complex topic easy to understand.
已于 Oct 16, 2025审阅
A great course which helps one understand the need and ways to understand how AI models work. Dr. Bent provided a wonderful explanation on the topic





