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Coursera - Applied Bayesian Data Analysis Specialization
![]() Coursera - Applied Bayesian Data Analysis Specialization Released 5/2026 By Konstantinos Pelechrinis - University of Pittsburgh MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch Genre: eLearning | Language: English + subtitle | Duration: 61 Lessons ( 4h 10m ) | Size: 1.4 GB Master Bayesian Methods for Data Analysis. What you'll learn ⚡ Apply Bayes' theorem, conjugate priors, and MCMC methods to perform Bayesian inference and construct credible intervals for parameter estimation. ⚡ Build and validate Bayesian regression models including linear, hierarchical, and GLM models for predictive analytics and model comparison. ⚡ Implement advanced Bayesian methods-variational inference and non-parametric modeling-for complex data analysis and Bayesian decision theory. Skills you'll gain ? Bayesian Statistics ? Data Analysis ? Data Science ? Machine Learning ? Markov Model ? Mathematical Modeling ? Model Evaluation ? Predictive Analytics ? Predictive Modeling ? Probability & Statistics ? Probability Distribution ? Regression Analysis ? Sampling (Statistics) ? Statistical Analysis ? Statistical Inference ? Statistical Machine Learning ? Statistical Modeling ? Statistical Programming ? Statistics ? Show all Tools you'll learn ? Python Programming This Specialization is designed for data scientists, analysts, and applied scientists seeking to develop expertise in Bayesian statistical methods and probabilistic modeling. Through three comprehensive courses, learners will master foundational Bayesian inference techniques, such as Bayes rule for distributions, conjugate priors and MCMC methods. The curriculum progresses to advanced topics including Bayesian regression, hierarchical models, generalized linear models, variational inference, and Bayesian non-parametric methods. Students will gain hands-on experience with modern probabilistic programming tools and apply Bayesian techniques to real-world applications in sports analytics, healthcare, and business decision-making. Applied Learning Project Learners will complete hands-on projects that demonstrate practical application of Bayesian methods to real-world problems. Projects include implementing MCMC algorithms for parameter estimation, building Bayesian regression models for predictive analytics, developing hierarchical Bayesian models for multi-level data, performing Bayesian model selection and comparison, and applying advanced Bayesian techniques to domain-specific problems in sports analytics and medical decision-making under uncertainty. Homepage Код:
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