Learning Bayesian Statistics
Learning Bayesian Statistics
Alexandre Andorra
#155 Probabilistic Programming for the Real World, with Andreas Munk
1 hour 54 minutes Posted Apr 8, 2026 at 11:45 am.
Introduction to Bayesian Inference and Its Barriers00:03:51 Andreas Munch's Journey into Statistics00:10:09 Bridging the Gap: Bayesian Inference in Real-World Applications00:15:56 Deep Learning Meets Probabilistic Programming00:22:05 Understanding Inference Compilation and Amortized Inference00:28:14 Exploring PyProb: A Tool for Amortized Inference00:33:55 Probabilistic Surrogate Networks and Their Applications00:38:10 Building Surrogate Models for Probabilistic Programming00:45:44 The Challenge of Bayesian Inference in Enterprises00:52:57 Communicating Uncertainty to Stakeholders01:01:09 Democratizing Bayesian Inference with Evara01:06:27 Insurance Pricing and Latent Variables01:16:41 Modeling Uncertainty in Predictions01:20:29 Dynamic Inference and Decision-Making01:23:17 Updating Models with Actual Data01:26:11 The Future of Bayesian Sampling in Excel01:31:54 Navigating Business Challenges and Growth01:36:40 Exploring Language Models and Their Applications01:38:35 The Quest for Better Inference Algorithms01:41:01 Dinner with Great Minds: A Thought ExperimentThank you to my Patrons for making this episode possible!Links from the show here.
0:00
1:54:07
Download MP3
Show notes
Support & Resources→ Support the show on Patreon→ Bayesian Modeling Course (first 2 lessons free): Our theme music is « Good Bayesian », by Baba Brinkman (feat MC Lars and Mega Ran). Check out his awesome work Takeaways:Q: Why is bridging deep learning and probabilistic programming so important?A: Deep learning is extraordinarily good at fitting complex functions, but it throws away uncertainty. Probabilistic programming keeps uncertainty explicit throughout. Combining the two – as in inference compilation – lets you get the expressiveness of neural networks while still doing proper Bayesian inference.Q: What is inference compilation and how does it relate to amortized inference?A: Amortized inference is the general idea of training a model upfront so you don't have to run expensive inference from scratch every single time. Inference compilation is a specific form of amortized inference where a neural network is trained to propose good posterior samples for a given probabilistic program – essentially learning to do inference rather than computing it fresh each query.Q: What is PyProb and what problems does it solve?A: PyProb is a probabilistic programming library designed specifically to support amortized inference workflows. It lets you write probabilistic models in Python and then train inference networks on top of them, making methods like inference compilation practical for real-world simulators and scientific models.Full takeaways here.Chapters:00:00:00 Introduction to Bayesian Inference and Its Barriers00:03:51 Andreas Munch's Journey into Statistics00:10:09 Bridging the Gap: Bayesian Inference in Real-World Applications00:15:56 Deep Learning Meets Probabilistic Programming00:22:05 Understanding Inference Compilation and Amortized Inference00:28:14 Exploring PyProb: A Tool for Amortized Inference00:33:55 Probabilistic Surrogate Networks and Their Applications00:38:10 Building Surrogate Models for Probabilistic Programming00:45:44 The Challenge of Bayesian Inference in Enterprises00:52:57 Communicating Uncertainty to Stakeholders01:01:09 Democratizing Bayesian Inference with Evara01:06:27 Insurance Pricing and Latent Variables01:16:41 Modeling Uncertainty in Predictions01:20:29 Dynamic Inference and Decision-Making01:23:17 Updating Models with Actual Data01:26:11 The Future of Bayesian Sampling in Excel01:31:54 Navigating Business Challenges and Growth01:36:40 Exploring Language Models and Their Applications01:38:35 The Quest for Better Inference Algorithms01:41:01 Dinner with Great Minds: A Thought ExperimentThank you to my Patrons for making this episode possible!Links from the show here.