Dive deep into probabilistic modeling and inference with practical exercises designed to elevate your data-driven decision-making skills.
You will learn about:
Foundations of Bayesian Networks
Understand the core concepts: probabilistic reasoning, conditional independence, and graphical representation of dependencies.
Modeling and Inference Techniques
Learn how to construct Bayesian networks, perform parameter estimation, and apply inference algorithms for real-world decision-making.
Hands-On Implementation in Python
Explore practical examples using common Open-Source libraries to build, visualize, and query Bayesian networkshow to construct Bayesian networks.