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May 15, 2025, 1:37 p.m.
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(Last updated: May 18, 2025, 2:52 p.m.)
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| Ness R. Causal AI 2025.pdf | 20.9 MB |
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NOTE
SOURCE: Ness R. Causal AI 2025 Final
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COVER

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MEDIAINFO
Textbook in PDF format
Build AI models that can reliably deliver causal inference.
How do you know what might have happened, had you done things differently? Causal AI gives you the insight you need to make predictions and control outcomes based on causal relationships instead of pure correlation, so you can make precise and timely interventions. Causal AI is a practical introduction to building AI models that can reason about causality.
In Causal AI you will learn how to:
Build causal reinforcement learning algorithms
Implement causal inference with modern probabilistic machine tools such as PyTorch and Pyro
Compare and contrast statistical and econometric methods for causal inference
Set up algorithms for attribution, credit assignment, and explanation
Convert domain expertise into explainable causal models
Author Robert Osazuwa Ness, a leading researcher in causal AI at Microsoft Research, brings his unique expertise to this cutting-edge guide. His clear, code-first approach explains essential details of causal machine learning that are hidden in academic papers. Everything you learn can be easily and effectively applied to industry challenges, from building explainable causal models to predicting counterfactual outcomes.
Foreword by Lindsay Edwards.
Purchase of the print book includes a free eBook in PDF and EPUB formats from Manning Publications.
About the technology
Traditional ML models can’t answer causal questions like, “Why did that happen?” or, “What factors should I change to get a particular outcome?” This book blends advanced statistical methods, computational techniques, and new algorithms to create machine learning systems that automate the process of causal inference.
About the book
Causal AI introduces the tools, techniques, and algorithms of causal reasoning for machine learning. This unique book masterfully blends Bayesian and probabilistic approaches to causal inference with practical hands-on examples in Python. Along the way, you’ll learn to integrate causal assumptions into deep learning architectures, including reinforcement learning and large language models. You’ll also use PyTorch, Pyro, and other ML libraries to scale up causal inference.
What’s inside
End-to-end causal inference with DoWhy
Deep Bayesian causal generative AI models
A code-first tour of the do-calculus and Pearl’s causal hierarchy
Code for fine-tuning causal large language models
About the reader
For data scientists and machine learning engineers. Examples in Python.
About the author
Robert Osazuwa Ness is an AI researcher at Microsoft Research and professor at Northeastern University. He is a contributor to open-source causal inference packages such as Python’s DoWhy and R’s bnlearn.
Table of Contents
Part 1
Why causal AI
A primer on probabilistic generative modeling
Part 2
Building a causal graphical model
Testing the DAG with causal constraints
Connecting causality and deep learning
Part 3
Structural causal models
Interventions and causal effects
Counterfactuals and parallel worlds
The general counterfactual inference algorithm
Identification and the causal hierarchy
Part 4
Building a causal inference workflow
Causal decisions and reinforcement learning
Causality and large language models
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