- Senior
- Escritório em Bristol
At Rowden, we design and integrate advanced systems and products that sense, connect, and protect data in challenging environments where quick decisions are vital. Our solutions use intelligent automation to enhance speed and efficiency and are built to be reliable and straightforward for critical operations in remote or high-pressure settings.
Headquartered in Bristol (UK), we combine modern engineering methods with cutting-edge commercial technology to create adaptable, mission-critical systems. We focus on solving the tough challenges that others overlook, ensuring our customers can operate effectively in an ever-changing world.
You’ll join an existing ML team that works in close collaboration with software, hardware and systems teams to get useful AI into the hands of users. Our ML team works end-to-end, from R&D to deployment, across traditional ML, deep learning, data engineering and LLM/agentic systems.
No prior defence experience is required. We’re interested in people who’ve built and deployed AI systems in demanding environments and are passionate about delivering tangible value to end users, whatever the sector.
Key areas of responsibility
- Own and ship ML in production: take ideas from R&D to robust, maintainable deployments, often onto edge or embedded hardware.
- End-to-end ownership: data collection/curation, feature engineering, model training, evaluation, deployment, monitoring, and iteration.
- Technical leadership: set direction, guide design, perform reviews, mentor teammates, and raise the engineering bar.
- MLOps/LLMOps: CI/CD for models, containerisation/orchestration, experiment tracking and registry, model evaluation pipelines, safety guardrails, canaries, and performance monitoring.
- Cross-team collaboration: partner with software, systems, and product colleagues; simplify complex topics for other disciplines and customers.
- Data foundations: establish pragmatic data pipelines (batch/stream) that make curation, provenance, and reproducibility first-class.
Key skills, experience and behaviours
- Proven delivery: multiple years leading technical work that delivered measurable impact in production, especially on edge, embedded, or mission-critical systems.
- ML & maths depth: strong grounding in ML/DL (optimisation, generalisation, probability, model architecture) and the ability to reason about these trade-offs in production.
- LLMs & agentic systems: practical experience with prompt optimisation, retrieval/RAG, evaluation, and tool orchestration; aware of latency, cost, and reliability trade-offs.
- MLOps excellence: reproducible pipelines, model versioning, CI/CD, observability, and automated evaluation.
- Data engineering: proficiency with Databricks, Apache Spark, Delta Lake, MLflow, and SQL; experience integrating datasets and maintaining data quality.
- Software development: Strong python skills, experience with low-level languages like Rust is desirable.
- Interpersonal skills: strong communicator who can mentor, influence, and bridge technical and non-technical audiences.
- Education: MSc or equivalent experience required; PhD in AI/ML/CS or related field desirable but not essential.
- Builder mindset: bias to action, ownership over outcomes, and comfort working through ambiguity.
- General tooling and platforms: Databricks, AWS, GitHub, Docker/Kubernetes, MLflow, Jira.
- Edge deployments: Nvidia Jetson (e.g. AGX Orin), Raspberry Pi, or other embedded accelerators.
- LLM/Agent tooling: DSPy, llama.cpp, vLLM, evaluation harnesses, prompt optimisation, agent frameworks.
- Operational practices: incident response, canary deployments, cost/performance optimisation across edge and cloud.