1. Bayesian Inference 2. Exploratory Analysis of Bayesian Models 3. Linear Models and Probabilistic Programming Languages 4. Extending Linear Models 5. Splines 6. Time Series 7. Bayesian Additive Regression Trees 8. Approximate Bayesian Computation 9. End to End Bayesian Workflows 10. Probabilistic Programming Languages 11. Appendiceal Topics
Osvaldo A. Martin is a Researcher at IMASL-CONICET in Argentina and the Department of Computer Science from Aalto University in Finland. He has a PhD in biophysics and structural bioinformatics. Over the years he has become increasingly interested in data analysis problems with a Bayesian flavor. He is especially motivated by the development and implementation of software tools for Bayesian statistics and probabilistic modeling.
Ravin Kumar is a Data Scientist at Google and previously worked at SpaceX and sweetgreen among other companies. He has an M.S in Manufacturing Engineering and a B.S in Mechanical Engineering. He found Bayesian statistics to be an excellent tool for modeling organizations and informing strategy. This interest in flexible statistical modeling led to a warm welcoming open source community which he is honored to be a member of now.
Junpeng Lao is a Data Scientist at Google. Prior to that he did his PhD and subsequently worked as a postdoc in Cognitive Neuroscience. He developed a fondness for Bayesian Statistics and generative modeling after working primarily with Bootstrapping and Permutation during his academic life.
"By far one of the biggest challenges in the practical (and
academic) application of Bayesian Statistics is that practitioners
need both a strong understanding of the mathematics of Bayesian
statistics as well as fairly sophisticated programming ability.
This book does a consistently great job of teaching both of these
simultaneously…One great example of this is that way in which
practical advice, drawing from both academic experience and
software engineering experience, is placed throughout the learning
process. Pointing out tools to help avoid errors in your model,
along with common libraries that make the process easier, really
help the reader feel that they are being onboarded by an
experienced, kind and helpful team of Bayesian Practitioners. This
book is the advanced, practical Bayesian statistics book that is
currently missing from my bookshelf."
-Will Kurt, author of "Bayesian Statistics the Fun Way""From a
technical standpoint, the reviewed chapters are excellent. Too
often, statistical textbooks are mathematically sound, but lacking
in computational sophistication, or vice versa. These chapters are
sound on both fronts. My current primary textbook for Bayesian
computation is Bayesian Data Analysis, by Gelman et al. which is
probably the standard in academia and industry with respect to
applied Bayesian methods. Where Martin et al. differentiate
themselves from Gelman et al. (and others) is in the incorporation
of Python as the computing language used throughout the book…This
manuscript has the potential to be a preferred textbook for those
looking for a practical introduction to these methods."
-Christopher Fonnesbeck, Vanderbilt University Medical Center and
Senior Quantitative Analyst, New York Yankees"I think this book is
particularly appropriate for Master's degree levels classes and
intermediate level users in general. The topics can be quite
advanced and are definitely original--a lot of them are not dealt
with in the other books I know on the market. For instance, if I
want to learn about Bayesian additive models with PyMC or time
series with TFP, there are no other books on these topics yet.
Chapter 8, about approximate Bayesian computation is also very
novel, as it draws on the latest and most advanced research on the
topic (as do chapters 6 and 7 for splines and BARTs). The focus the
authors have on graphs, decision making under uncertainty, and the
technical appendices are very useful. The first two allow for more
concrete courses that alternate with more theoretical chapters and
courses. The technical appendices allow students to concentrate on
the substance during the chapters, and then to dive into the
details of the implementation when it becomes necessary. In short,
I think this book hits two targets that have not been hit yet: an
intermediate-level book, written in Python."
-Alexandre Andorra, PyMC Developer, Cofounder of PyMC Labs, and
Host of the Learning Bayesian Statistics podcast"With the number of
Bayesian statistics books proliferating, a natural question is
‘what sets this one apart’? First, the authors have a deep
understanding of the software as they are contributors and
developers of several Bayesian packages in the Python ecosystem.
Second, the book covers useful but rarely discussed topics such as
Bayesian additive regression trees (BART), fitting models with
approximate Bayesian computation (ABC) methods and probabilistic
programming languages, which takes a computer science perspective
and compares several languages. Third, the book covers not only a
wide range of models (splines, hierarchical, time series and
state-space models are also discussed) but also provides depth of
coverage so that users can apply the methods to their own research.
... The book is ideal for self-study, but end of chapter exercises
could make it suitable for an undergraduate course. Some knowledge
of Python, probability and fitting models to data are need to fully
benefit from the content."
-Stanley E. Lazic in Journal of the Royal Statistical Society
Series A (Statistics in Society), April 2022
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