
SynBioBeta Speaker
Aaron Blotnick
SynBioBeta
Bay Area Community Manager
Meet Aaron Blotnick. He drinks coffee and he learns things.
As Bay Area Community Manager at SynBioBeta, Aaron works to reconnect a fractured bioeconomy — spanning biotech, agriculture, materials, climate, and medicine.
At SynBioBeta 2026, he'll be moderating two sessions: "Hypothesis Machines," on multi-agent AI systems for scientific discovery, and "The Feedstock Revolution," on next-generation inputs for biomanufacturing.
Outside SynBioBeta, he co-leads the SF Chapter of Bits in Bio, a nonprofit community at the intersection of biology and data.
Every Sunday he publishes a roundup of 10-20 in-person and virtual biotech events happening across the Bay Area.
Follow him at linkedin.com/in/aaronblotnick
Sessions Featuring
Aaron
This Year
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Planetary Health
The Feedstock Revolution: Powering the Future of Biomanufacturing
The next leap in biomanufacturing won’t come from better organisms alone; it will come from better inputs. In this session, Erg Bio explores how rethinking feedstocks is unlocking new pathways to scalable, cost-effective, and sustainable production. Feedstocks that could transcend supply chain issues, those that could enable production at any location and on demand! From alternative carbon sources to waste-derived inputs, advances in feedstock innovation will reshape the emerging trillion-dollar bioeconomy. By aligning biology with abundant, low-cost raw materials, the industry can move beyond traditional constraints and build more resilient supply chains, powering a new generation of biomanufacturing at a global scale.
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Planetary Health
The Feedstock Revolution: Powering the Future of Biomanufacturing
The next leap in biomanufacturing won’t come from better organisms alone; it will come from better inputs. In this session, Erg Bio explores how rethinking feedstocks is unlocking new pathways to scalable, cost-effective, and sustainable production. Feedstocks that could transcend supply chain issues, those that could enable production at any location and on demand! From alternative carbon sources to waste-derived inputs, advances in feedstock innovation will reshape the emerging trillion-dollar bioeconomy. By aligning biology with abundant, low-cost raw materials, the industry can move beyond traditional constraints and build more resilient supply chains, powering a new generation of biomanufacturing at a global scale.
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Tools & Tech
Hypothesis Machines: Multi-Agent Systems for Scientific Insight
What happens when AI systems stop being tools and begin acting like collaborators in scientific thought? Multi-agent architectures such as SciAgents and Google’s “AI Co-Scientist” are pioneering hypothesis generation by dividing scientific reasoning into specialized sub-agents: literature retrievers, causal mappers, and graph-based reasoners. Unlike single models, these teams of agents mimic the structure of scientific collaboration itself — brainstorming, critiquing, and refining ideas. In synthetic biology, such systems could propose new gene circuits, uncover hidden regulatory logic, or suggest underexplored protein folds. This session asks: how far should we trust AI-generated hypotheses, and how do we validate them responsibly? With machine-driven insight now on the horizon, the very architecture of discovery may shift — from lone researchers and teams of humans to networks of humans and machines co-creating the future of biology.
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Tools & Tech
Hypothesis Machines: Multi-Agent Systems for Scientific Insight
What happens when AI systems stop being tools and begin acting like collaborators in scientific thought? Multi-agent architectures such as SciAgents and Google’s “AI Co-Scientist” are pioneering hypothesis generation by dividing scientific reasoning into specialized sub-agents: literature retrievers, causal mappers, and graph-based reasoners. Unlike single models, these teams of agents mimic the structure of scientific collaboration itself — brainstorming, critiquing, and refining ideas. In synthetic biology, such systems could propose new gene circuits, uncover hidden regulatory logic, or suggest underexplored protein folds. This session asks: how far should we trust AI-generated hypotheses, and how do we validate them responsibly? With machine-driven insight now on the horizon, the very architecture of discovery may shift — from lone researchers and teams of humans to networks of humans and machines co-creating the future of biology.
Session lineup still growing
Featuring
Speaker Coming Soon
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Human Health
From Cells to Patients: Solving the Scale Mismatch in Virtual Biology
Drug discovery often measures biology at the cell level while interventions work at the tissue, organ, or whole-patient scale. This mismatch can make accurate cell-level predictions irrelevant in the clinic. This session dives into strategies to bridge that gap: multiscale modeling that nests single-cell dynamics within organ-level simulations, spatial transcriptomics that preserve context, and surrogate models that translate cell-level outputs into clinical biomarkers. Speakers will ask: how do we ensure virtual biology reflects not just what cells do in isolation, but how biology behaves in the real complexity of patients?
Featuring
Speaker Coming Soon













































