Fit For Science
Stephan and Rob explore the ambitious claims made by AI industry leaders about rapid scientific advancement due to AI. They provide an introduction to the "AI for Science" field and analyze the fundamental physical limitations that govern the acceleration of biomedical discovery through AI. 📝Summary Biological data scientists Stephan and Rob evaluate the grand claims made by major tech executives regarding artificial (general) intelligence compressing a century of scientific breakthroughs into a single decade. By analyzing a recent paper co-authored by Stephan, the hosts break down the theoretical limits of general-purpose AI systems when faced with physical world restrictions. They emphasize that while cognitive tasks like literature synthesis, data analysis, and manuscript preparation can be massively accelerated, the time constants of the physical world remain irreducible bottlenecks. The conversation balances the promise of AI for science, including the hosts contributions to and beliefs in the field, with realistic infrastructure and policy demands, and the psychological and technical risks of relying on systems we do not fully comprehend. ⏳Chapters 00:00:00 Machines of Loving Grace: Dario Amodei and compressing a century of progress into a decade 00:04:10 Theoretical Scaffolding: Defining general purpose AI versus narrow machine learning systems 00:06:20 Cognitive vs Physical Domains: Splitting the lifecycle of a scientific research project & irreducible bottlenecks 00:15:35 Human Creativity and Technical Debt: The risk of losing comprehension via vibe engineering 00:19:01 Strategic Proxies: Using predictive biomarkers to capture outcomes early and bypass constraints 00:25:48 Emergence of “AI Co-Scientists”: Discovery of digital biomarkers from wearable datasets 00:38:15 Discovery Deficits: Why modern molecular biology is data-rich but discovery-poor 00:39:23 AI for Science: FutureHouse, Marinka Zitnik's ToolUniverse and James Zou's virtual lab 00:43:54 Simulating biomedicine with AI: What we did with early access to GPT-4 in 2023 00:49:57 Matthias Samwald, the EU General-Purpose AI Code of Practice and Accelerate Europe: Balancing trustworthiness and acceleration 00:54:55 MrBiomics: Automating biomedical data analysis using workflows and AI 00:58:44 Summary: Accelerating scientific discovery is possible, but not easy 📚Resources Stephan's recent paper: What are the limits to biomedical research acceleration through general-purpose AI? [https://www.nature.com/articles/s41598-025-32583-w] Social meda: LinkedIn [https://www.linkedin.com/posts/stephan-reichl_ai4science-biomedicine-research-activity-7419320762605535233-xYLL], X [https://x.com/matthiassamwald/status/2014649978157727921], Press release: Potential and limitations of AI in biomedical research [https://www.meduniwien.ac.at/web/en/about-us/news/2026/news-in-january-2026/potential-and-limitations-of-ai-in-biomedical-research/] A multimodal sleep foundation model for disease prediction [https://www.nature.com/articles/s41591-025-04133-4] -> we discussed this paper before in episode 8: AI is Changing Wearables in 2026(?) and Predicts 130 Diseases from Sleep! (Episode 8) [https://youtu.be/pO2-fBqMdDk] Rob's and Stephan's 2023 AI paper: GPT-4 as a biomedical simulator [https://www.sciencedirect.com/science/article/pii/S0010482524008813] Press release: "ChatGPT" for biomedical simulations [https://www.meduniwien.ac.at/web/en/about-us/news/2024/news-in-july-2024/chatgpt-for-biomedical-simulations-1/] Correction: GPT-4 predates o1-preview by 1 year and 6 months, not 6 months Matthias Samwald [https://samwald.info/] Previously: Co-chair of the Safety & Security chapter of the EU's General-Purpose AI Code of Practice [https://digital-strategy.ec.europa.eu/en/policies/contents-code-gpai] Now: Accelerate Europe [https://accelerate-europe.org/] coordinator Stephan's passion project: MrBiomics: Composable modules and recipes automate bioinformatics for multi-omics analyses [https://github.com/epigen/MrBiomics] …There is MUCH more: complete show notes here [https://docs.google.com/document/d/1LCIm780Aue5573FWVpyDve5Wm_DBTwDqfzoZ5zTqeyY/edit?usp=sharing] 🎙️About Fit For Science is a deep-dive podcast hosted by two biological data scientists, Rob and Stephan, exploring the intersection of research, health tech, and data-driven lifestyle design. The hosts provide evidence-based systems, layered with practical "N=2" personal experimentation, to cut through the noise and enable everyone to become their best N-of-1. Learn more [https://creators.spotify.com/pod/profile/fitforscience/] and subscribe on your favorite platforms: YouTube [https://www.youtube.com/@FitForScience] Spotify [https://open.spotify.com/show/56TjUxuMsPETb0kGEJ7nwf] Apple Podcasts [https://podcasts.apple.com/us/podcast/fit-for-science/id1863479802] Amazon Music [https://music.amazon.de/podcasts/c3e54ee7-4a2c-442e-a59f-553fbfb02b11/fit-for-science] Collection of all show notes [https://docs.google.com/document/d/1LCIm780Aue5573FWVpyDve5Wm_DBTwDqfzoZ5zTqeyY/edit?usp=sharing] ⚠️Disclaimer: This podcast represents our own opinions and is for informational purposes only. It does not constitute medical or financial advice or a professional relationship.
19 episodios
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