We’re leveraging AI to solve one of the most consequential challenges in the pursuit of technical progress: the distribution of scientific innovations to the real world. We’re well-funded with top investors and are building a world class team.
For innovations to have broad impact, they must scale beyond the lab. For too long, the transfer of discoveries from lab bench to real-world application has relied on informal handoffs, tacit know-how, and opaque processes and is littered with failed attempts and learnings buried in lab notebooks. The industry has quietly accepted this agonizingly slow process and inability to broadly reproduce and distribute new discoveries. We’re determined to support a new paradigm that ensures new scientific innovations can be more robust, interpretable, and transferable.
We are building processes and cutting-edge AI tools that aim to illuminate and streamline these critical transfers of knowledge. We learn as much, if not much more, from failures as successes, transforming experimental science into robust, scalable solutions.
We aren’t building AI to replace human ingenuity, but rather AI that can be a better partner in understanding and translating that ingenuity to new domains. We seek to build tools that help scientists spend less time documenting and debugging and more time doing the exploration they love. To be clear: we believe this will become critical infrastructure. Without solving for scale and knowledge distribution, the discoveries that will be enabled by great scientists at the bench and generative AI designs will fail to reach their end customer: us.
Work with us:
Your impact starts here. We enthusiastically invite applicants across a broad range of expertise and experience to apply. Maybe you have expertise at the bench and have seen reproducibility challenges first hand, maybe you’re one of the first people to read a new AI benchmarking paper that comes out, or maybe you have a knack for quickly developing and deploying solutions that make mundane tasks easier. Each candidate that joins the team will be a member of the technical staff, and compensation will depend on experience and responsibility. Our team works across AI and biotech innovation, so even if you apply for one role, we may consider you for others as well.
We think in-person collaboration is invaluable, but recognize that talent is broadly distributed, and are open to flexible working arrangements. We’re based in Cambridge, MA, but invite applications from all geographies.
What you can expect from us:
- Opportunity to join a creative and mission-oriented founding team and build with us, from the ground up
- We have a bias for action and are obsessed with solving our customers’ real problems
- We also love bold and audacious science, enabling moonshots, and are motivated to work with and across the entire ecosystem, enabling new and better futures for ourselves and our families
- We also offer a full HR comp stack to include competitive salary, equity, and benefits
What you’ll accomplish with us:
- Design, execute, and optimize experimental protocols across molecular and cellular biology domains with a focus on reproducibility and transferability and integration with AI ML models.
- Partner with our AI/ML and software teams to generate high-quality, structured data from experimental workflows—including edge cases and failure modes—that inform product design.
- Identify critical variables and hidden steps in experimental workflows, documenting processes in a way that enables robust handoff to humans and machines alike.
- Collaborate with internal R&D teams to scale and stress-test protocols across different lab environments, automation platforms, and execution conditions.
- Support customer deployments by embedding into partner labs, piloting new workflows, troubleshooting edge cases, and capturing lessons learned.
- Act as a bridge between the field and our product/engineering teams, articulating real-world constraints and needs to shape the development of tools and infrastructure.
- Develop and maintain experimental benchmarking frameworks to validate reproducibility, accuracy, and scalability across lab settings.
- Play a key role in shaping how we operationalize the capture of tacit biological know-how—from protocol intent to executional nuance.
- Become customer obsessed. Initiate, support, and lead program execution with external partners and collaborators to capture, document, and deliver results.
- Stay on top of the latest research in biomedicine and life sciences with an eye to integrate ML/AI and evaluate its applicability to our platform. We will support opportunities to publish or present where appropriate to establish technical leadership.
Requirements:
- PhD or advanced degree in Molecular Biology, Bioengineering, Computational Biology, or a related field.
- Demonstrated hands-on lab experience (industry or academic) with modern wet lab techniques including cell culture, protein engineering, and/or automation.
- Familiarity with digital lab tools (e.g., ELNs, LIMS, lab automation systems) and a desire to improve scientific workflows.
- Exceptional experimental design skills with a strong bias toward documentation, reproducibility, and iteration.
- Ability to troubleshoot protocols systematically, with attention to both technical detail and human variability.
- Ability to clearly communicate technical concepts to cross-functional teams and collaborate on projects spanning AI, biology, and product.
- Located within commuting distance from Cambridge, MA.
Additional preferences:
- Experience working with or supporting internal lab teams as well as direct customer-facing work in partner or external lab environments.
- Startup or early-stage experience preferred; comfort with ambiguity and rapid iteration is a must.
- Demonstrated experience using AI/ML tools in research, whether for experimental design, data analysis, or predictive modeling.