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We are seeking experienced infrastructure engineers to join our mission of achieving general causal intelligence. You will build and optimize high-throughput inference systems for large-scale AI model evaluation and backtesting. Responsibilities include designing and implementing techniques to improve latency, throughput, and efficiency, optimizing the inference stack for hardware utilization, and extending orchestration frameworks for distributed inference. You will also establish reliability and observability standards and collaborate with researchers on novel architectures. We require experience building or optimizing inference and serving systems, understanding of distributed compute and GPU parallelism, and familiarity with deep learning frameworks.
Our mission is general causal intelligence; AI that is capable of (1) predicting the future and (2) identifying the actions to alter it.
To achieve this breakthrough, we are building a Large Physics foundation Model (LPM) because physical systems, unlike text or images, are governed by verifiable cause and effect. We believe that scaling on physics will enable an understanding of causality required to predict and control physical systems, starting with weather.
Our founding team has built and deployed AI against the physical world in robotics, drug discovery, and particle physics at institutions like DeepMind, Waymo, Cruise, Insitro, Nabla Bio, and CERN.
We look for infrastructure engineers who are excited to tackle unsolved problems. Progress on an LPM is gated by how fast we can evaluate it: large-scale backtesting against decades of physical observations, ensemble generation, and rollout evaluation across model scales.
Responsibilities
Your mission is to make inference so fast and cheap that evaluation never gates research.
What we're looking for
We value a relentless approach to problem-solving, rapid execution, and the ability to quickly learn in unfamiliar domains.