Graphical Models and Causal Discovery with Python : 100 Exercises for Building Logic

Graphical Models and Causal Discovery with Python : 100 Exercises for Building Logic

Springer Verlag, Singapore

Master the complexities of statistical analysis and machine learning with Graphical Models and Causal Discovery with Python. Authored by Joe Suzuki, this comprehensive guide provides 100 practical exercises designed to help you build robust logical frameworks for causal inference. Whether you are a data scientist or a machine learning enthusiast, this book translates theoretical concepts into actionable code using Python. Each exercise is structured to improve your understanding of graph structures, probability models, and causal discovery algorithms. Gain deep insights into how to represent dependencies and extract causal relationships from complex datasets through hands-on practice. This technical resource is an essential addition for those looking to advance their expertise in advanced data modeling and artificial intelligence. This book covers graphical models, causal discovery techniques, Python programming exercises, logical framework construction, and statistical modeling for data science.

Compare prices (3 shops)

shop Price Action
46,07 GBP Go to shop
47,26 GBP Go to shop
48,89 GBP Go to shop

Similar products