OpenSourced Ltd
Senior AI Platform Engineer (MLOps / ML Infrastructure)
Location: Bristol (On-Site)
Job Type: Full-Time, Permanent
Salary: Dependent on Experience (DOE)
The Opportunity
Our client is building next-generation intelligent robotic systems and is seeking a Senior AI Platform Engineer to own and scale the machine learning infrastructure that powers training, deployment and continuous improvement of advanced AI capabilities.
This role sits at the intersection of cloud infrastructure, machine learning operations, data engineering and robotics, offering a unique opportunity to shape how advanced AI systems are developed and deployed at scale.
The Role
You'll be responsible for building the infrastructure and workflows that connect data collection, training, evaluation, deployment and fleet management into a seamless platform.
Working closely with AI researchers and robotics engineers, you'll transform complex machine learning workflows into scalable, production-ready systems.
Key Responsibilities
- Build and maintain scalable ML infrastructure
- Develop containerised training environments
- Manage cloud GPU orchestration and distributed training
- Implement experiment tracking and model registries
- Build automated data processing pipelines
- Develop model evaluation and deployment workflows
- Improve developer experience for ML teams
- Extend CI/CD with ML-specific validation and testing
- Automate infrastructure provisioning and deployment
Requirements
- Degree in Computer Science, Software Engineering or related discipline
- 3+ years building cloud, platform, ML or data infrastructure
- Strong Python development skills
- Experience with training pipelines and distributed workloads
- Docker and containerisation expertise
- Experience with cloud platforms (GCP preferred)
- Infrastructure-as-Code experience (Terraform preferred)
Desirable Experience
- MLOps for robotics, autonomous systems or embodied AI
- Kubeflow, SkyPilot or similar tooling
- ONNX and TensorRT deployment
- MLflow or experiment tracking platforms
- Event-driven architectures
- GPU orchestration and optimisation
- Simulation and sim-to-real workflows
What's on Offer
- Salary dependent on experience
- Equity opportunities
- Private healthcare
- Conference and training budget
- Opportunity to build infrastructure powering advanced AI and robotics systems
- Collaborative and highly technical engineering culture
To apply for this job please visit www.reed.co.uk.
Make this application stronger
Use these quick checks before applying so your CV, interview preparation and job search are better matched to this vacancy.
Before you apply
Check the key details and make sure the role matches what you are looking for.
- Review the job title, company, location, salary and working pattern if provided.
- Check the skills, experience or qualifications requested by the employer.
- Make sure the commute, hours and contract type are realistic for you.
Tailor your CV
For Healthcare & Nursing Jobs, highlight the most relevant skills, experience and achievements linked to this type of work. Keep it honest, clear and focused on what the employer is asking for.
Use the CV Builder or browse Career Advice.
Prepare for interview
If your application is successful, prepare simple examples that show your motivation, strengths and suitability.
Keep searching smarter
Do not rely on one application. Keep searching similar roles and set up alerts so new vacancies reach you faster.
