adaptyv

Software Engineer, Lab Automation

🇨🇭 Lausanne, Suiza Presencial Tecnología Intermedio Publicado Jun 5, 2026
Ubicación Lausanne, Suiza
Modalidad Presencial
Seniority Intermedio
Categoría Tecnología
Categoría IT Ingeniería Back End
Idioma English
Publicado 5 de junio de 2026
Última verificación 5 de junio de 2026
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Resumen del puesto por JobGrid

Software Engineer, Lab Automation at adaptyv: Lausanne, Suiza; Presencial; Intermedio; Tecnología; Ingeniería Back End. This listing is part of JobGrid's Empleos de software engineer en páginas de empresas. JobGrid adds normalized role facts, source context, and a path to the employer application page so candidates can compare the listing before applying.

  • Location and workplace: Lausanne, Suiza, Presencial
  • Role classification: Tecnología, Ingeniería Back End, Intermedio
  • Source freshness: checked by JobGrid on 2026-06-05.
  • Application path: candidates continue to the employer application page with non-personal referral tags.

Adaptyv is building an automated lab thats let AI agents run biology experiments.

We're entering the era of agentic science where AI models can now design novel proteins, propose hypotheses, and iterate on experimental results. But they can't run the experiments themselves - that's still a manual, months-long process. We're building the infrastructure that gives AI agents access to the physical world.

We are one of the fastest growing biotech companies, trusted by leading biopharmas, frontier AI labs, and the techbio companies pushing the field forward. This is a rare chance to help advance some of the most important work happening in biotech today.

Our automated lab is powered by a deep software + hardware stack: lab instruments worth millions of USD reverse-engineered into API-controllable hardware, dozens of devices orchestrated through complex workflows, full observability on everything that happens in the lab, processing pipelines for messy physical-world data, and AI systems that troubleshoot production results and accelerate assay development.

We’re growing rapidly and are hiring for talented people to scale and support the massive demand for AI-driven wet lab experimentation.

About the Role

You'll build work-cell orchestration, instrument drivers, protocol scheduling, error-recovery logic, and monitoring. Physical systems fail in ways pure software doesn't — a plate gets stuck, a liquid handler skips a well, a temperature controller drifts. Your job is to make the system handle all of it gracefully. This is a broad, hands-on role for a strong engineer who wants their code to drive real machines and see it run the same day.

What You'll Do

  • Build orchestration software that coordinates liquid handlers, plate readers, incubators, and robot arms — handling timing dependencies, state, and error recovery.

  • Reverse-engineer and develop instrument drivers and APIs. Each instrument speaks a different protocol (serial, USB, TCP/IP); you work out how it talks and build a clean abstraction over it.

  • Model and execute complex multi-step protocols reliably — a single run can span dozens of steps across multiple instruments.

  • Build error-recovery logic so that when something fails mid-run, the system retries, skips, alerts, or pauses depending on the failure mode.

  • Create monitoring and observability for work-cell health: instrument status, run progress, error rates.

  • Debug across the software–hardware boundary — figuring out whether bad data is a comms, firmware, calibration, or code problem.

  • Work closely with lab automation engineers, the rest of the software team, and the scientists running production.

Stack

TypeScript and Python, Postgres (Supabase), Modal for compute. We control instruments with open-source Python tooling like PyLabRobot and PyHamilton wherever we can, rather than proprietary vendor GUIs.

What We're Looking For

  • Strong software engineering skills. You write production code in Python and/or TypeScript — well-structured and maintainable, not just prototypes.

  • Comfortable at the hardware-software boundary. You've built software that drives physical devices, or you're excited to. You can read a protocol spec, debug a flaky connection, and reason about timing.

  • Lab automation experience is a strong plus. Familiarity with PyHamilton, PyLabRobot, Opentrons, or similar tooling helps — as does a background in robotics, industrial automation, IoT, or embedded systems.

  • Maker and hacker attitude. You like figuring out how closed systems work and building the thing that makes them work better. Bonus if you're comfortable with electronics, microcontrollers, or a 3D printer when an integration needs a physical fix.

  • AI-native builder. It's 2026 — you build with coding agents like Claude Code as a default, and you have sharp judgment about what they produce.

  • Self-starter and independent. You define what needs building from how the lab actually works, not just what's in the ticket.

  • Reliability-minded. The lab runs 24/7; you design systems where one instrument failing doesn't cascade through the whole work cell.

Biology background not required — but you should be excited that the code runs real experiments.

Details

  • Location: Lausanne, Switzerland (on-site — you need hands-on access to physical instruments).

  • Type: Full time

  • Start date: ASAP

Application deadline

We are reviewing applicants on a rolling basis.