Senior Machine Learning Engineer

Compare the Market
Manor Park, United Kingdom
19 days ago

Role details

Contract type
Permanent contract
Employment type
Full-time (> 32 hours)
Working hours
Regular working hours
Languages
English
Experience level
Senior
Compensation
£ 83K

Job location

Manor Park, United Kingdom

Tech stack

Java
API
Artificial Intelligence
Airflow
Databases
Continuous Integration
Github
Python
Machine Learning
Software Engineering
Data Streaming
Management of Software Versions
Large Language Models
Cloudformation
Build Management
Kubernetes
Apache Flink
Kafka
Spark Streaming
Machine Learning Operations
Terraform
Databricks

Job description

At Compare the Market, we're scaling our AI capabilities to power intelligent, personalised experiences that help millions make smarter financial decisions. As a Senior Machine Learning Engineer, you'll play a critical role in enabling the deployment, monitoring, and scaling of production-grade ML systems-making sure that our AI ambitions are not only possible, but production-ready.

This role blends hands-on engineering with architectural design, experimentation support, and MLOps best practices. You'll work closely with data scientists, platform engineers, and product teams to build the infrastructure and tooling that powers our most advanced models. You'll also contribute to technical standards, advocate for scalable and responsible ML development, and help shape a high-performance ML Engineering function.

What You'll Be Doing

ML Engineering & Deployment

  • Own the end-to-end delivery of production ML solutions in collaboration with data scientists and product teams
  • Design and build model pipelines for training, validation, and deployment using modern tooling (e.g. MLflow, Kubernetes, Airflow)
  • Contribute hands-on code to model packaging, deployment, and lifecycle automation
  • Build systems that monitor model performance, drift, and operational health in real time
  • Support both batch and real-time ML workloads depending on use case requirements

Platform & Standards

  • Define and promote best practices for reproducibility, testing, CI/CD, and model observability
  • Help evolve our internal ML platform to support experimentation, governance, and collaboration
  • Develop shared tools and libraries that accelerate safe, efficient, and scalable ML development

Collaboration & Technical Leadership

  • Work closely with data scientists to productionise experimental models and turn prototypes into robust services
  • Act as a technical mentor and code reviewer for other engineers and contributors Provide architectural guidance across multiple ML projects and technical design sessions

Culture & Innovation

  • Contribute to a culture of engineering excellence, collaboration, and learning
  • Stay up to date on emerging tools and approaches in MLOps and applied AI
  • Support responsible AI practices by contributing to explainability, auditability, and fairness initiatives in ML systems

Requirements

  • Strong experience deploying ML models into production in cloud-native environments
  • Solid software engineering skills in Python (and optionally one other language, such as Go or Java)
  • Experience with modern ML tooling (e.g. MLflow, TFX, Airflow, Kubeflow, SageMaker, Vertex AI)
  • Familiarity with CI/CD pipelines and infrastructure-as-code (e.g. Terraform, CloudFormation, GitHub Actions)
  • Experience building robust, maintainable, and testable ML pipelines and APIs, including batch or real-time model delivery
  • Strong understanding of ML lifecycle challenges-versioning, testing, monitoring, governance
  • Excellent collaboration and communication skills; able to work across disciplines

Nice to Have

  • Experience working in regulated sectors such as insurance, banking, or financial services
  • Familiarity with platforms such as Databricks, SageMaker, Vertex AI, or Kubeflow
  • Experience deploying real-time or streaming ML models (e.g. Kafka, Flink, Spark Structured Streaming)
  • Exposure to large language models (LLMs), vector databases, or RAG architectures
  • Passion for automation, tooling, and building reusable systems
  • Interest in responsible AI and ML model governance

Apply for this position