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In this special crossover episode from the Latent Space podcast, Mark Zuckerberg and Priscilla Chan discuss their ten-year journey with the Chan Zuckerberg Initiative (CZI) and their vision for revolutionizing biology through AI. (04:27) They share how CZI has evolved from exploring various philanthropic approaches to focusing primarily on science, specifically the intersection of AI and biology. The conversation reveals their strategy of building "frontier biology labs" that work in sync with "frontier AI labs" to accelerate scientific discovery. (33:48) Key highlights include their acquisition of Evolutionary Scale, their plan to develop virtual cell models, and their ultimate goal of enabling true precision medicine where treatments are designed for each individual's unique biology.
Co-founder and CEO of Meta (Facebook), Mark Zuckerberg is also co-founder of the Chan Zuckerberg Initiative alongside his wife Priscilla Chan. Over the past decade, he has shifted significant focus toward philanthropy and scientific research, particularly at the intersection of AI and biology.
A trained pediatrician and philanthropist, Priscilla Chan co-founded the Chan Zuckerberg Initiative with her husband Mark Zuckerberg. She brings medical expertise and a patient-focused perspective to their mission of curing, preventing, and managing all diseases by the end of the century.
Rather than focusing on specific disease cures like other philanthropic organizations, CZI has chosen to build fundamental tools and infrastructure that can accelerate all scientific research. (08:49) Mark explains that while organizations like the Gates Foundation excel at translational work and public health deployment, there's a gap in the ecosystem for long-term tool development requiring 10-15 year timelines and hundreds of millions in investment. This strategy recognizes that major scientific advances historically follow new observational tools - like how telescopes revolutionized astronomy and microscopes transformed biology. By building cutting-edge imaging technology, computational tools, and data collection systems, they aim to give scientists exponentially more powerful instruments for discovery.
One of CZI's most significant innovations has been physically bringing together scientists, engineers, and AI researchers who traditionally work in isolation due to funding structures. (15:42) Mark emphasizes how simply having teams from different disciplines sit together creates breakthrough opportunities, drawing from his experience at Meta where cross-team collaboration consistently produces better outcomes. The Biohub model enables collaboration across institutions like Stanford, UCSF, and Berkeley, which wasn't happening organically despite their geographic proximity. This approach has created hybrid professionals who are "half biologists, half AI engineer," representing a new category of researcher essential for the AI-biology convergence.
CZI is developing virtual cell models that can simulate biological responses computationally, potentially revolutionizing drug discovery and biological understanding. (16:57) These models work hierarchically - understanding proteins enables modeling cellular behavior, which in turn allows simulation of organ systems like the immune system. The approach combines multiple data types: spatial imaging data from their advanced microscopes, transcriptomic data from their Cell Atlas project containing 125 million cells, and temporal data to understand dynamic processes. This represents a fundamental shift from discovery-based science that relies on luck and cleverness to engineering-based approaches where biological systems can be understood and predicted systematically.
The ultimate clinical application involves using AI models to design treatments for each individual based on their unique genetics, cellular behavior, and environmental exposures. (40:59) Priscilla highlights the current frustration with "variants of unknown significance" in genetic testing, where patients receive inconclusive results about potentially dangerous mutations. Future AI models will be able to simulate how each person's specific genetic variations affect cellular behavior and disease pathways. This extends beyond rare diseases to common conditions like depression, where instead of trial-and-error medication approaches taking months to evaluate, doctors could predict which treatments will work best for each patient based on their biological profile.
CZI's acquisition of Evolutionary Scale and appointment of CEO Alex Rivas represents their commitment to building world-class AI capabilities alongside frontier biology. (36:41) This integration allows them to design biological data collection specifically to train AI models, rather than having AI teams work with whatever biological data happens to be available. The strategy requires both cutting-edge computational resources - they were among the first to build large-scale compute clusters for biological research - and the ability to release frontier AI models. This represents a fundamental shift in approach: instead of generating datasets to analyze manually, they're creating datasets specifically to train AI systems that will make discoveries beyond human capability.