At a Glance
- Tasks: Design and operate cutting-edge ML infrastructure for advanced engineering simulations.
- Company: PhysicsX, a deep-tech innovator with roots in Formula One.
- Benefits: Equity options, flexible working, free lunches, and comprehensive healthcare.
- Other info: Diverse and inclusive workplace with excellent growth opportunities.
- Why this job: Join a team pushing the boundaries of AI-driven engineering and make a real impact.
- Qualifications: 5+ years in ML infrastructure, strong Python skills, and experience with Kubernetes.
The predicted salary is between 70000 - 90000 € per year.
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 — empowering engineers to push the boundaries of possibility. Our customers include leading innovators in Aerospace & Defense, Materials, Energy, Semiconductors, and Automotive.
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:
- Research Scientists who determine the model architectures and methods
- ML Engineers who implement and develop the models
- Simulation Data Engineers who are accountable for upstream data pipelines
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: Design and operate distributed training infrastructure for neural operator architectures (Transolver, Point Cloud Transformer, etc.) on our large NVIDIA DGX B200 platform. Optimize training pipelines for throughput, fault tolerance, and cost efficiency, including checkpointing strategies, gradient accumulation, and multi-node synchronization. Build and maintain experiment tracking and observability systems that give researchers clear visibility into training runs, hyperparameter sweeps, and model performance.
- Data I/O and Performance: Solve data loading bottlenecks for large-scale mesh datasets. Optimize data pipelines for efficient I/O from cloud storage, including prefetching, caching, and format optimization. Work with heterogeneous data sources of varying formats and resolutions.
- Model Serving and Deployment: Build serving infrastructure for pre-trained LPMs, supporting both zero‑shot inference and uncertainty quantification (Monte Carlo Dropout). Design and implement model packaging pipelines for customer deployment. Ensure reproducibility: any model checkpoint should be deployable with consistent behaviour.
- Platform and Tooling: Improve developer experience for the Research team with fast iteration cycles, reliable CI/CD, clear debugging tools. Collaborate with the broader Infrastructure team on shared patterns and standards.
What you bring to the table
- 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.
- 5+ years of experience building and operating ML infrastructure at scale.
- Deep expertise in distributed training.
- 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.
Ideally
- Experience with geometric deep learning or neural operators.
- Background in HPC for simulation engineering.
- Experience building model serving infrastructure with latency and throughput requirements.
- Familiarity with experiment tracking tools (Weights & Biases, MLflow) and observability stacks (Prometheus, Grafana).
What we offer
- Equity options – share in our success and growth.
- 10% employer pension contribution – invest in your future.
- Free office lunches – great food to fuel your workdays.
- Flexible working – balance your work and life in a way that works for you.
- Hybrid setup – enjoy our new Shoreditch office while keeping remote flexibility.
- Enhanced parental leave – support for life’s biggest milestones.
- Private healthcare – comprehensive coverage.
- Personal development – access learning and training to help you grow.
- Work from anywhere – extend your remote setup to enjoy the sun or reconnect with loved ones.
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.
Senior Machine Learning Infrastructure Engineer London, United Kingdom employer: PhysicsX Ltd
At PhysicsX, we pride ourselves on being an exceptional employer, offering a dynamic work culture that fosters innovation and collaboration. Our London-based team enjoys flexible working arrangements, comprehensive benefits including equity options and enhanced parental leave, and ample opportunities for personal development in a cutting-edge environment. Join us to be part of a diverse team dedicated to pushing the boundaries of engineering and manufacturing through AI-driven solutions.
StudySmarter Expert Advice🤫
We think this is how you could land Senior Machine Learning Infrastructure Engineer London, United Kingdom
✨Tip Number 1
Network like a pro! Reach out to current employees at PhysicsX on LinkedIn or other platforms. Ask them about their experiences and any tips they might have for landing the Senior ML Infrastructure Engineer role.
✨Tip Number 2
Prepare for technical interviews by brushing up on your distributed training knowledge and systems fundamentals. Practice explaining complex concepts in simple terms, as communication is key in a research setting.
✨Tip Number 3
Showcase your problem-solving skills during interviews. Be ready to discuss past projects where you tackled infrastructure challenges, especially those related to ML pipelines and data I/O.
✨Tip Number 4
Don’t forget to apply through our website! It’s the best way to ensure your application gets seen by the right people. Plus, it shows you’re genuinely interested in joining the PhysicsX team.
We think you need these skills to ace Senior Machine Learning Infrastructure Engineer London, United Kingdom
Some tips for your application 🫡
Tailor Your CV:Make sure your CV reflects the skills and experiences that align with the Senior ML Infrastructure Engineer role. Highlight your expertise in distributed training, cloud GPU infrastructure, and any relevant projects you've worked on.
Craft a Compelling Cover Letter:Use your cover letter to tell us why you're passionate about this role and how your background fits into our mission at PhysicsX. Share specific examples of your problem-solving skills and collaboration in research settings.
Showcase Your Technical Skills:Don’t forget to mention your proficiency in Python and ML frameworks like PyTorch. If you have experience with Kubernetes or SLURM, make sure to highlight that too, as it’s super relevant for the position.
Apply Through Our Website:We encourage you to apply directly through our website. It’s the best way for us to receive your application and ensures you’re considered for the right role that matches your skills and career goals.
How to prepare for a job interview at PhysicsX Ltd
✨Know Your Tech Inside Out
Make sure you’re well-versed in the technologies mentioned in the job description, especially around distributed training and ML infrastructure. Brush up on your knowledge of Python, Kubernetes, and any specific frameworks like PyTorch. Being able to discuss your hands-on experience with these tools will show that you’re not just familiar but also capable.
✨Prepare for Technical Questions
Expect to dive deep into technical discussions during your interview. Prepare to explain how you've solved data loading bottlenecks or optimised training pipelines in the past. Think about specific examples where you’ve debugged issues or improved performance, as this will demonstrate your problem-solving skills and practical experience.
✨Showcase Collaboration Skills
Since you'll be working closely with research scientists and ML engineers, it’s crucial to highlight your collaboration and communication skills. Be ready to share examples of how you’ve successfully worked in a team setting, especially in a research environment. This will help them see you as a team player who can bridge the gap between technical and non-technical discussions.
✨Ask Insightful Questions
Interviews are a two-way street, so prepare some thoughtful questions about the company’s projects, culture, and future goals. This shows your genuine interest in PhysicsX and helps you assess if it’s the right fit for you. Questions about their approach to AI-driven simulation or how they handle model serving can spark engaging conversations.