
Autopoiesis Sciences builds AI models that help researchers generate and validate scientific discoveries across complex domains. The company develops foundational reasoning capabilities and advanced AI architectures to enable autonomous discovery where traditional methods struggle. It provides a B2B AI platform and model-based tools for research teams, integrating with research workflows and data analysis pipelines. Core technologies include next-generation reasoning models, inference engines, and scalable model deployment for technical users.

Autopoiesis Sciences builds AI models that help researchers generate and validate scientific discoveries across complex domains. The company develops foundational reasoning capabilities and advanced AI architectures to enable autonomous discovery where traditional methods struggle. It provides a B2B AI platform and model-based tools for research teams, integrating with research workflows and data analysis pipelines. Core technologies include next-generation reasoning models, inference engines, and scalable model deployment for technical users.
What they do: Build AI models and platform for scientific discovery in life sciences and biotech
Stage & HQ: Early-stage (Seed); San Francisco, CA
Founders: Joseph Reth; Eike Gerhardt; Larry Callahan
Funding: Seed round with multiple investors (seed close: 2025-07-30)
Scientific discovery and research acceleration for life sciences, chemistry, and medical research.
2025
Biotechnology
Seed round with multiple individual and institutional investors (investors listed across profiles include Adam Grosser, Ally Warson, Alpaca VC, Cross Atlantic Angels, Hiro Mizushima, Informed Ventures, Mike Mahlkow, Tomas Urena Munoz, Vanessa Cann)
“Multiple angel and early-stage investors including individual angels and small VCs”
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About The Role
Autopoiesis Sciences is an applied AI lab based in San Francisco, California on a mission to accelerate scientific discovery across every discipline. We're building AI systems from first principles, developing novel architectures that combine calibrated confidence estimation with reinforcement learning from experimental outcomes. Our approach learns optimal research strategies directly from real-world scientific practice, training on experimental results, publication impact, and validated discoveries rather than static knowledge alone. By closing the loop between AI hypothesis generation and experimental validation, we're creating systems that know what they don't know and improve through ground truth from nature itself. Backed by Informed Ventures, Alpaca VC, VitalStage Ventures, Cross Atlantic Angels, Adam Grosser, Ally Warson, Mike Mahlkow, Hiro Mizushima, and others, we're preparing to release our systems to the research community. We invite you to join us in building the future of scientific intelligence.
The breakthroughs that actually change the world come from people who refuse to accept "impossible" as an answer. We want individuals who approach their work with intellectual humility. People who know that despite all the progress in machine learning, we're still scratching the surface of what's possible. You should be comfortable admitting what you don't know, but absolutely relentless about figuring it out. The kind of person who, when faced with a problem everyone says can't be solved, treats that as the starting point rather than the conclusion.
This isn't a role for people who need their hands held or who expect clear answers to ambiguous problems. Scientific superintelligence won't be built by following established playbooks. It requires questioning assumptions, rebuilding from first principles when necessary, and maintaining conviction even when the path forward is unclear. We need people who derive energy from hard problems and won't settle for "good enough" when breakthrough solutions are possible.
If you're someone who sees the current state of machine learning and thinks "we can do better," who believes the most important work is still ahead of us, and who's willing to put in whatever it takes to get there, we want to hear from you.
Research Areas of Interest
Autopoiesis Sciences is seeking exceptional ML Engineers with expertise in language models and reinforcement learning to help build AI systems that can understand, reason about, and generate scientific knowledge. As an ML Engineer, you will develop and optimize large language models that form the cognitive core of our autonomous research systems, enabling them to comprehend complex scientific literature, reason through multi-step problems, and communicate discoveries effectively. You'll apply RL techniques to improve reasoning capabilities and train models that learn from experimental feedback and scientific validation. While language understanding is central to this role, you'll work on systems that integrate LLMs with broader AI capabilities including autonomous planning, hypothesis generation, and experimental design. This role offers the opportunity to push the boundaries of what language models can achieve when combined with reinforcement learning in scientific contexts.
Responsibilities
Qualifications
Compensation And Benefits
Get To Know Us
We're a dedicated team of scientists, researchers, and engineers who believe deeply in the transformative potential of our work. You'll work closely with our leadership team including Chief Executive Officer Joseph Reth (Attended University for CS at 14, former DARPA) , Chief Business Officer Dr. Eike Gerhardt (University of Tübingen PhD, University of Tübingen staff) , and Chief Scientist Dr. Larry Callahan (University of Chicago PhD, former FDA, former NIH).
Application Process: Due to the high volume of automated applications, we only accept applications through LinkedIn as it helps us connect with genuine candidates. We have systems in place to detect automated submissions and strongly advise against using bots or automated tools in your application process. Please be human in your approach.
Equal Opportunity: Autopoiesis Sciences, Inc. is an equal opportunity employer committed to diversity and inclusion. We welcome applications from all qualified candidates regardless of race, gender, age, religion, sexual orientation, or any other legally protected characteristics.