Pierre-Simon Laplace
@learnbayesstats.bsky.social
240 followers 31 following 37 posts
A podcast on #BayesianStats -- the methods, the projects, the people By @alex-andorra.bsky.social Listen: http://tinyurl.com/pvz4ekky Support: http://tinyurl.com/2p8mpxnp
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learnbayesstats.bsky.social
🤔How do you keep Bayesian rigor when the data’s too big to behave?

@gstechschulte.bsky.social joins @alex-andorra.bsky.social on Learning Bayesian Statistics to talk BART and how they’re bridging classic stats with modern, large-scale systems.

🎧 Listen here: learnbayesstats.com/episode/142-...
Reposted by Pierre-Simon Laplace
alex-andorra.bsky.social
How to run #BART and #TreeModels fast in #Python -- new episode is out, with @gstechschulte.bsky.social !
learnbayesstats.bsky.social
🤔How do you keep Bayesian rigor when the data’s too big to behave?

@gstechschulte.bsky.social joins @alex-andorra.bsky.social on Learning Bayesian Statistics to talk BART and how they’re bridging classic stats with modern, large-scale systems.

🎧 Listen here: learnbayesstats.com/episode/142-...
learnbayesstats.bsky.social
🤔How do you keep Bayesian rigor when the data’s too big to behave?

@gstechschulte.bsky.social joins @alex-andorra.bsky.social on Learning Bayesian Statistics to talk BART and how they’re bridging classic stats with modern, large-scale systems.

🎧 Listen here: learnbayesstats.com/episode/142-...
learnbayesstats.bsky.social
🧪 Causal inference is about understanding why things happen, not just what

@alex-andorra.bsky.social talks with Sam Witty about ChiRho & how probabilistic programming is reshaping interventions, counterfactuals, and the future of causal reasoning

🎧 learnbayesstats.com/episode/141-...

#newepisode
learnbayesstats.bsky.social
🏈 NFL meets Bayesian stats!

In this episode @alex-andorra.bsky.social chats with Ron Yurko on

👉 Writing your own models
👉 Building a sports analytics portfolio
👉 Pitfalls of modelling expectations
👉 Using tracking data for player insights
👉 Causal thinking in football data

🎧 lnkd.in/gWz4v2JG
learnbayesstats.bsky.social
What if your optimization algorithm could explain its uncertainty as clearly as its results?” 🤔

In this episode🎙️ @alex-andorra.bsky.social dives into Bayesian optimization, BoTorch, and why uncertainty matters with Maximilian Balandat

🎧 Listen here: lnkd.in/gg6fcfFU

#bayesian #pytorch #podcast
learnbayesstats.bsky.social
Your deep learning model might be confidently wrong — and in medicine or epidemiology, that’s dangerous.

In this episode, @alex-andorra.bsky.social chats with Mélodie Monod, François-Xavier & Yingzhen Li about making neural nets more reliable, Bayesian LLMs & more

🎧 lnkd.in/gcaRQXcb

#bayes #llm
learnbayesstats.bsky.social
Models need more than pattern-matching.
They need causal understanding.

In this episode, Robert Ness joins @alex-andorra.bsky.social to explore:

⚡ Why models need real-world biases
🧠 How causal rep learning is reshaping AI
🤖 What it takes to add causality to DL

🎧 lnkd.in/gUnCkwEP

#bayes #podcast
learnbayesstats.bsky.social
🚨 MCMC or INLA?

🤯 MCMC = slow sampling.
⚡ INLA = fast, smart approximations. No chains, no waiting.

🎙️ On LBS, @alex-andorra.bsky.social talks with Haavard Rue & Janet Van Niekerk about how INLA works, when to use it, and why it’s a game-changer.

🎧 Listen: lnkd.in/gp8D-RuU

#Bayesian #MCMC
learnbayesstats.bsky.social
🚨 Tired of MCMC cooking your CPU for hours?

@alex-andorra.bsky.social chats with Haavard Rue & Janet van Niekerk about INLA, a fast, deterministic game-changer for inference at scale.

✅ Handles huge + complex models
✅ Works with non-Gaussian likelihoods

🎧 www.learnbayesstats.com/episode/136-...
learnbayesstats.bsky.social
🧲 Got 50 predictors, but only 5 that matter?

Try the Horseshoe Prior — a Bayesian approach to sparse regression that shrinks noise, not signal.

Built with Bambi + @pymc.io

🔗 Full demo: bambinos.github.io/bambi/notebo...

#BayesianStatistics #Regression #HorseshoePrior #MarketingAnalytics #PyMC
Reposted by Pierre-Simon Laplace
alex-andorra.bsky.social
New episode is out! A very practical one, where we dive into *how* to make sure your models *actually* answer the questions you're asking...
learnbayesstats.bsky.social
🔍 Most Bayesian models aren’t properly checked

Even when they converge, they might be wrong in ways you won’t see—unless you look differently

In this episode, Teemu Säilynoja joins @alex-andorra.bsky.social to explore, SBC, prior predictive checks and more!

🎧 learnbayesstats.com/episode/135-...
learnbayesstats.bsky.social
🔍 Most Bayesian models aren’t properly checked

Even when they converge, they might be wrong in ways you won’t see—unless you look differently

In this episode, Teemu Säilynoja joins @alex-andorra.bsky.social to explore, SBC, prior predictive checks and more!

🎧 learnbayesstats.com/episode/135-...
learnbayesstats.bsky.social
Your model says 97% confidence
But should you trust it?

Uncertainty in ML is still a hard problem

We’re hosting a meetup at Imperial College London on June 24 to dig into it — with our host @alex-andorra.bsky.social and other researchers working on better ways forward

🔗 lnkd.in/eainEJ9p
Reposted by Pierre-Simon Laplace
alex-andorra.bsky.social
New episode is out! In this one we nerd out quite deep on zero-sum constraints, and how to make your model sample faster 💨
learnbayesstats.bsky.social
🎙️ Ep. 133 is out now!

@alex-andorra.bsky.social chats with ‪ @spinkney.bsky.social
& Adrian Seyboldt about making Bayesian models more efficient without losing rigor — zero-sum constraints, Cholesky tricks, practical wins & more

🎧 learnbayesstats.com/episode/133-...

#Bayesianstats #podcast #LBS
Learning Bayesian Statistics – Laplace to be for new & veteran Bayesians alike!
Laplace to be for new & veteran Bayesians alike!
learnbayesstats.com
learnbayesstats.bsky.social
Thanks again for the guest star appearance @aseyboldt.bsky.social !! You're welcome back anytime ;)
learnbayesstats.bsky.social
Some people think R² doesn’t belong in Bayesian models
👇 David Kohns disagrees, and he has the math to back it

🎙️Ep. 134: @alex-andorra.bsky.social sits down with economist David Kohns to explore how modern Bayesian methods are reshaping time series modelling

🎧 learnbayesstats.com/episode/134-...
Reposted by Pierre-Simon Laplace
spinkney.bsky.social
Ask me any questions you may have about this! #stats
learnbayesstats.bsky.social
🎙️ Ep. 133 is out now!

@alex-andorra.bsky.social chats with ‪ @spinkney.bsky.social
& Adrian Seyboldt about making Bayesian models more efficient without losing rigor — zero-sum constraints, Cholesky tricks, practical wins & more

🎧 learnbayesstats.com/episode/133-...

#Bayesianstats #podcast #LBS
Learning Bayesian Statistics – Laplace to be for new & veteran Bayesians alike!
Laplace to be for new & veteran Bayesians alike!
learnbayesstats.com
learnbayesstats.bsky.social
🎙️ Ep. 133 is out now!

@alex-andorra.bsky.social chats with ‪ @spinkney.bsky.social
& Adrian Seyboldt about making Bayesian models more efficient without losing rigor — zero-sum constraints, Cholesky tricks, practical wins & more

🎧 learnbayesstats.com/episode/133-...

#Bayesianstats #podcast #LBS
Learning Bayesian Statistics – Laplace to be for new & veteran Bayesians alike!
Laplace to be for new & veteran Bayesians alike!
learnbayesstats.com
learnbayesstats.bsky.social
🎙️ In episode #132 of LBS, @alex-andorra.bsky.social talks with Tom Griffiths about Bayesian cognition and human-AI interaction—how we learn from limited data, why priors matter, what AI gets wrong, and why solving real problems beats perfect models & more ...

🔗 learnbayesstats.com/episode/132-...
learnbayesstats.bsky.social
⚽️ New Learning Bayesian Stats ep!

@alex-andorra.bsky.social & Luke Bornn dive into how tracking data, probabilistic models & optimization are reshaping sports decisions.

🎧 Listen now: learnbayesstats.com/episode/131-...

#Datascience #Optimization #SportsAnalytics #BayesStats
#Decisionmaking
learnbayesstats.bsky.social
🚨 LIVE SHOW ALERT 🚨
If you're a Patron, join us tomorrow April 24, 11:00am, US Eastern Time, with David Kohns, co-author of "The ARR2 Prior: Flexible Predictive Prior Definition for Bayesian Auto-Regressions" 🥳
👉 Patreon: www.patreon.com/c/learnbayes...
👉 YouTube: www.youtube.com/@learningbay...
LinkedIn
This link will take you to a page that’s not on LinkedIn
lnkd.in
Reposted by Pierre-Simon Laplace
adamjkucharski.bsky.social
Enjoyed this wide ranging discussion of how we use data and models in epidemic response:
learnbayesstats.bsky.social
🧬 What does real-world impact look like when public health’s on the line?

🎙️ In episode 130 of LBS, @alex-andorra.bsky.social chats with Adam Kucharski on modelling, crisis response & lessons from recent epidemics.

🎧 Listen in: learnbayesstats.com/episode/130-...
Reposted by Pierre-Simon Laplace
claireve.bsky.social
“I think of Bayesian Deep Learning as Bayesian inference in the function space”

This 55 minute interview is a really good primer of the current research questions in this field, definitely recommend it!
learnbayesstats.bsky.social
What if AI could know when it doesn’t know?

🎙️ @alex-andorra.bsky.social talks with @vincefort.bsky.social about Bayesian deep learning, why it matters for uncertainty, calibration & more

🎧 Tune in: learnbayesstats.com/episode/129-...

#BayesianDeepLearning #MachineLearning #ReliableAI #AIResearch
learnbayesstats.bsky.social
Thanks Claire, happy you liked it!