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Trainline

MLOps Engineer

Posted 17 Days Ago
Be an Early Applicant
Hybrid
London, Greater London, England, GBR
Junior
Hybrid
London, Greater London, England, GBR
Junior
The MLOps Engineer will build infrastructure for ML systems, improve ML lifecycle processes, and enhance developer experience in a scalable, secure environment.
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About us

We are champions of rail, inspired to build a greener, more sustainable future of travel. Trainline enables millions of travellers to find and book the best value tickets across carriers, fares, and journey options through our highly rated mobile app, website, and B2B partner channels. 

Great journeys start with Trainline 🚄 

Now Europe’s number 1 downloaded rail app, with over 125 million monthly visits and £5.9 billion in annual ticket sales, we collaborate with 270+ rail and coach companies in over 40 countries. We want to create a world where travel is as simple, seamless, eco-friendly and affordable as it should be. 

Today, we're a FTSE 250 company driven by our incredible team of over 1,000 Trainliners from 50+ nationalities, based across London, Paris, Barcelona, Milan, Edinburgh and Madrid. With our focus on growth in the UK and Europe, now is the perfect time to join us on this high-speed journey. 

The Role

As an MLOps Engineer at Trainline, you will build the platform, tooling and infrastructure that enables ML and AI systems to run reliably, securely and at scale.

This is a production-focused engineering role. You will make it easier for ML engineers to move from experimentation to production, while raising the bar on quality, reliability, observability, security and cost efficiency.

You’ll work across both traditional ML and emerging AI systems, helping define the foundations, workflows and standards that allow teams to ship quickly and safely.

Key Responsibilities

  • Build and evolve scalable, secure infrastructure for training, deploying and operating ML and AI systems

  • Improve the end-to-end ML lifecycle, from experimentation and evaluation through to deployment, monitoring and optimisation

  • Create reusable platform patterns and golden paths for productionising models and AI services

  • Improve developer experience for ML practitioners across development, testing and deployment workflows

  • Design and maintain CI/CD pipelines for ML and AI systems

  • Operate reliable batch and real-time inference systems

  • Establish strong observability across ML and AI services, including performance, drift, cost and AI-specific evaluation signals

  • Support LLM and agent-based systems with evaluation frameworks, guardrails and operational controls

  • Ensure ML and AI systems are secure by design, with strong access control, data protection and least-privilege principles

  • Partner with ML, Data and Platform teams to define standards, architecture and operational best practice

  • Drive improvements in reliability, scalability and cost efficiency

  • Contribute to documentation, enablement and knowledge sharing across the organisation

Required Experience

  • 2+ years in MLOps, ML Platform or cloud infrastructure roles supporting production ML systems

  • Strong hands-on AWS experience, including services such as ECS, AWS Batch, EMR, SageMaker and Bedrock

  • Experience designing secure cloud infrastructure using IAM, VPC and least-privilege principles

  • Strong experience with Terraform; Spacelift or similar is a plus

  • Experience building and operating containerised workloads with Docker

  • Experience designing CI/CD pipelines using GitHub Actions, Jenkins or similar

  • Experience supporting the full ML lifecycle, from experimentation to deployment and monitoring

  • Hands-on experience with MLflow

  • Strong Python skills and familiarity with production ML codebases

  • Experience orchestrating workflows with Airflow or similar tools such as Prefect or Dagster

  • Experience running production batch and real-time inference systems

  • Strong understanding of observability, reliability and secure-by-design principles

  • Exposure to modern AI tooling, evaluation platforms and AIOps workflows

More information:

Enjoy fantastic perks like private healthcare & dental insurance, a generous work from abroad policy, 2-for-1 share purchase plans, an EV Scheme to further reduce carbon emissions, extra festive time off, and excellent family-friendly benefits. 

We prioritise career growth with clear career paths, transparent pay bands, personal learning budgets, and regular learning days. Jump on board and supercharge your career from day one! 

We're operate a hybrid model to work and ask that Trainliners work from the office a minimum of 60% of their time over a 12-week period. We also have a 28-day Work from Abroad policy.

Our values represent the things that matter most to us and what we live and breathe everyday, in everything we do: 

  • 💭 Think Big - We're building the future of rail 

  • ✔️ Own It - We focus on every customer, partner and journey 

  • 🤝  Travel Together - We're one team 

  • ♻️ Do Good - We make a positive impact 

We know that having a diverse team makes us better and helps us succeed. And we mean all forms of diversity - gender, ethnicity, sexuality, disability, nationality and diversity of thought. That's why we're committed to creating inclusive places to work, where everyone belongs and differences are valued and celebrated.

Interested in finding out more about what it's like to work at Trainline? Why not check us out on LinkedIn, Instagram and Glassdoor! 

Top Skills

Airflow
AWS
Aws Batch
Bedrock
Dagster
Docker
Ecs
Emr
Github Actions
Jenkins
Mlflow
Prefect
Python
Sagemaker
Terraform
HQ

Trainline London, England Office

3rd Floor, 120 Holborn, London, United Kingdom, EC1N 2TD

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