Machine Learning for Scientific Discovery | Yoshua Bengio
If you enjoyed this talk, consider joining the Molecular Modeling and Drug Discovery (M2D2) talks live:
Also consider joining the M2D2 Slack: ~iB23XbZ0QWMYs~A#/shared-invite/email
Title: Machine Learning for Scientific Discovery
Abstract: Machine learning research is expanding its reach, beyond the traditional realm of the tech industry and into the activities of other scientists, opening the door to truly transformative advances in these disciplines. In this lecture I will focus on two aspects, modeling and experimental design, that are intertwined in the theory-experiment-analysis active learning loop that constitutes a core element of the scientific methodology. Computers will be necessary to go beyond the currently purely manual research loop and take advantage of high-throughput experimental setups and large-scale experimental datasets. I will discuss methods related to active learning, reinforcement learning, generative modeling, Bayesian ML, amortized variational learning and causal discovery. I will discuss the notion of epistemic uncertainty and how to estimate it. I will motivate generative policies that can sample a diverse set of candidate solutions to a problem, be it for proposing new experiments or causal hypotheses. Finally, I will describe current research to help us with these questions based on a new deep learning probabilistic framework called GFlowNets and how we plan to apply these in areas of great societal need like the unmet challenge of antimicrobial resistance or the discovery of new materials to help fight climate change.
Speakers: Yoshua Bengio -
Twitter Prudencio:
Twitter Therence:
Twitter Cas:
Twitter Valence Discovery:
~
Chapters:
00:00 Begin
00:54 - Iterative Discovery Process
06:15 - Importance of Diversity in Active Learning
09:13 - Standard Active Learning and Bayesian Optimization
12:53 - Aleatoric vs. Epistemic Uncertainty
22:45 - What is a Causal Model?
30:11 - MCM Methods and Their Limitations
37:29 - GFlowNets
41:45 - Bayesian Posterior over Causal Models
43:37 - Conclusion and Q A
2 views
9
2
1 month ago 00:19:20 1
Blue Ribbon: Story of the Build
2 months ago 00:11:40 1
Earn Over $100 Again and Again with Free Google and AI Tools
2 months ago 00:19:38 1
EDM Rap Songs 2025, Best Collected Songs, Just Saw Fall In Love You Girl, Beat Bass
2 months ago 00:22:22 16
Making REAL Fallout Power Armor (Part 1/6)
2 months ago 00:01:53 1
2025 TE 125 and FE 350 – leading the charge in enduro excellence | Husqvarna Motorcycles
2 months ago 00:00:35 1
Dog Jerky Soft Treats Cold Extruder #PetSnacksColdExtruder #DogChewExtrusionMachine #PetFoodMachine
2 months ago 00:00:35 1
Dog Jerky Soft Treats Cold Extruder #DogChewColdExtruder #PetTreatsColdExtruder #DogSnacksExtruder
2 months ago 00:25:48 1
What do tech pioneers think about the AI revolution? - BBC World Service
2 months ago 00:07:17 1
The Game Of Thrones Theme Song | Fender Custom Shop | Fender
2 months ago 00:17:51 16
How to Make a Multi Purpose Leather Bag | Hybrid Leather Bag PDF PATTERN
2 months ago 00:01:36 1
[Artosis] Wide Protoss Walk
2 months ago 01:03:22 1
SUPERCUT: Lex Fridman’s Interview w/ Neuralink Team (63 Minutes)
2 months ago 00:03:21 1
The Emptiness Machine (Official Music Video) - Linkin Park
2 months ago 00:18:43 1
Wedding Rings Quilt - Stitchin with Abby
2 months ago 00:03:46 1
A 50 year old electrician has shown this ancient and reliable method of connecting wires!