Peter Holderrieth
@peholderrieth
CS PhD student at @MIT • Generative Modeling and AI4Science • Prev: Stats/Neuro @OxfordUni• Math at @HCM_Bonn • Former: @AIatMeta
#FPIworkshop best paper award goes to @peholderrieth @msalbergo and Tommi Jaakkola. Congrats and great talk Peter!
Congratulations to @peholderrieth @msalbergo and Tommi Jaakkola for winning the best paper award for their work entitled "LEAPS: A discrete neural sampler via locally equivariant networks" at this year's Frontiers in Probabilistic Inference workshop #ICLR2025!
Generator Matching is a unifying framework for Markov processes beyond diffusion. This framework allows jumps to update states, and naturally enables combinations of flows and jumps via a Markov superposition of stochastic processes. Oral by @peholderrieth Sat 3:30pm.
What if you could build any kind of generative AI model using one universal tool? @peholderrieth, an @mit PhD student in the lab of @aihealthmit PI Tommi Jaakkola, explains what the future of genAI could look like in ~2 minutes!
Course material for an MIT class "Introduction to Flow Matching and Diffusion Models", looks great if you want a principled and hands on understanding of diffusion models/flow matching
New paper (and #ICLR2025 Oral :)): ProtComposer: Compositional Protein Structure Generation with 3D Ellipsoids arxiv.org/abs/2503.05025 Condition on your 3D layout (of ellipsoids) to generate proteins like this or to get better designability/diversity/novelty tradeoffs. 1/6
Our **Flow Matching Tutorial** from #NeurIPS2024 is now publicly available: neurips.cc/virtual/2024/t… @helibenhamu @RickyTQChen
Want to learn continuous & discrete Flow Matching? We've just released: 📙 A guide covering Flow Matching basics & advanced methods arxiv.org/abs/2412.06264. 💻 An open source codebase with image & text examples github.com/facebookresear…. 🗣️ A Flow Matching tutorial #NeurIPS2024.
Check out our new Flow Matching guide and codebase! It also includes an extended explanation of Generator Matching with more examples! arxiv.org/abs/2412.06264
A new (and comprehensive) Flow Matching guide and codebase released! Join us tomorrow at 9:30AM @NeurIPSConf for the FM tutorial to hear more... arxiv.org/abs/2412.06264 github.com/facebookresear…