
PhysicsX is a deeptech company with roots in numerical physics and Formula One, dedicated to accelerating hardware innovation at the speed of software. We are building an AI-driven simulationβ¦

PhysicsX is a deeptech company with roots in numerical physics and Formula One, dedicated to accelerating hardware innovation at the speed of software. We are building an AI-driven simulationβ¦
What they do: AI-driven, physics-grounded real-time multiphysics simulation software for engineering and manufacturing
Headquarters: London, United Kingdom
Recent funding: $135M Series B (June 2025) after a $32M Series A (Nov 2023)
Customers / industries: Aerospace & Defense, Automotive, Semiconductors, Energy, Materials
Multiphyics simulation and engineering workflows (design, manufacturing, operations) for advanced industries
Software Development
32000000
Participants included Standard Investments, NGP, Radius Capital and Henry Kravis
135000000
Participants included Temasek, Siemens, Applied Materials, July Fund and continued support from existing investors
155000000
Dealroom reporting of an extension raising over β¬133M (~$155M) with reported participation from NVentures
βSignificant strategic investor participation including Atomico, Temasek, Siemens, Applied Materials and NVenturesβ
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About Us PhysicsX is a deep-tech company with roots in numerical physics and Formula One, dedicated to accelerating hardware innovation at the speed of software.
We are building an AI-driven simulation software stack for engineering and manufacturing across advanced industries. By enabling high-fidelity, multi-physics simulation through AI inference across the entire engineering lifecycle, PhysicsX unlocks new levels of optimization and automation in design, manufacturing, and operations β empowering engineers to push the boundaries of possibility. Our customers include leading innovators in Aerospace & Defense, Materials, Energy, Semiconductors, and Automotive.
Note: We are currently recruiting for multiple positions, however please only apply for the role that best aligns with your skillset and career goals.
The Role
The Senior ML Infrastructure Engineer will extend and operate the infrastructure that powers our research model training, fine-tuning, and serving pipelines. You will be embedded within our Research function, partnering directly with ML engineers and research scientists to ensure they can train Large Physics Models efficiently and reliably at scale.
Team Context
In this role, you will be vertically embedded in Research, working daily with:
You will have end-to-end responsibilities over the research infrastructure, with the autonomy to make architectural decisions and the responsibility to keep data flowing reliably.
Horizontally, you will be part of an infrastructure engineering group responsible for infrastructure across the company.
What you will do
Training Infrastructure
Data I/O and Performance
Model Serving and Deployment
Platform and Tooling
What you bring to the table
Ideally
What We Offer
We value diversity and are committed to equal employment opportunity regardless of sex, race, religion, ethnicity, nationality, disability, age, sexual orientation or gender identity. We strongly encourage individuals from groups traditionally underrepresented in tech to apply. To help make a change, we sponsor bright women from disadvantaged backgrounds through their university degrees in science and mathematics.
We collect diversity and inclusion data solely for the purpose of monitoring the effectiveness of our equal opportunities policies and ensuring compliance with UK employment and equality legislation. This information is confidential, used only in aggregate form, and will not influence the outcome of your application.
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Ability to scope and effectively deliver projects, prioritising activity as needed.
Problem-solving skills and the ability to analyse issues, identify causes, and recommend solutions quickly.
Excellent collaboration and communication skills, especially in a research setting. You can translate "the model isn't converging" into infrastructure hypotheses and solutions, and can bridge technical abstractions with implementations.
5+ years of experience building and operating ML infrastructure at scale:
Deep expertise in distributed training: you've debugged NCCL hangs, optimized collective communication, and know when to use FSDP vs. DDP vs. pipeline parallelism
Strong systems fundamentals: Linux, networking (including domain specific NVLink and InfiniBand), storage I/O, profiling and performance optimization
Production experience with Kubernetes and SLURM for job orchestration on GPU clusters
Proficiency in Python and ML frameworks (PyTorch strongly preferred)
Experience with cloud GPU infrastructure; ideally CoreWeave or similar GPU/HPC-focused clouds