IsomorphicLabs
Principal Software Engineer, ML Platform (Stability & Infrastructure)
At a Glance
- Location
- London
- Posted
- 2026-03-26T06:52:10-04:00
Key Requirements
Required Skills
Domain Knowledge
- Engineering
Requirements
Proven experience in architecting and managing large-scale AI/ML workloads in a production environment.
Expertise in cloud compute design, specifically within Google Cloud Platform (GCP).
Orchestration: Significant experience deploying and managing complex workloads within Kubernetes (GKE).
Professional familiarity with NVIDIA GPU generations and the intricacies of high-performance compute.
A career history that spans both ML Software Engineering and Infrastructure SRE roles.
Experience with Google TPU generations and specialized ML-driven R&D cycles.
Responsibilities
We are building the largest foundation models in biotech and applying them immediately to cure disease.
You will play a pivotal role in ensuring the reliability and scalability of the foundations that make this possible.
As a Principal Engineer, you will lead the efforts to harden our systems, ensuring our groundbreaking AI is built on an unshakeable base, working closely with the research team and the Applied ML teams to ensure the infrastructure is stable, reliable and can operate with more data and larger models as we grow.
You will own the end-to-end strategy for platform reliability, with a specific focus on our accelerator (GPU/TPU) infrastructure and workload orchestration.
You will move between high-level architectural design and hands-on systems engineering to eliminate friction in the researcher experience.
You will design and implement a robust "test harness" to safely validate infrastructure upgrades without impacting live research.
About the Company
Isomorphic Labs (IsoLabs) was launched in 2021 to advance human health by building on and beyond the Nobel-winning AlphaFold system. Since then, our interdisciplinary team of drug discovery experts and machine learning specialists has built powerful new predictive and generative AI models that accelerate scientific discovery at digital speed.
Our name comes from the belief that there is an underlying symmetry between biology and information science. By harnessing AI’s powerful capabilities, we can use it to model complex biological phenomena to help design novel molecules, anticipate how drugs will perform and develop innovative medicines to treat and cure some of the world’s most devastating diseases.
We have built a world-leading drug design engine comprising AI models that are capable of working across multiple therapeutic areas and drug modalities. We are continually innovating on model architecture and developing cutting-edge capabilities to advance rational drug design.
Every day, and with each new breakthrough, we’re getting closer to the promise of digital biology, and achieving our ambitious mission to one day solve all disease with the help of AI.
Principal Software Engineer, ML Platform (Stability & Infrastructure)