Translate data-science prototypes into production ML pipelines and APIs. Deploy, monitor, retrain, and test models in production. Collaborate with data scientists, engineers and product teams to integrate ML solutions, implement MLOps best practices, and maintain CI/CD for reliable, scalable model delivery.
Hometrack is redefining the mortgage journey for lenders, brokers, and consumers by delivering market-leading valuation and property data services to the financial, property, and technology industries. Our key commercial and go-to-market segment is in financial services, primarily mortgage lenders, including nine of the top 10 mortgage providers.
At Hometrack, we are looking for an experienced Senior Machine Learning Engineer, to translate POC model code from data science and analytics into robust pipelines and live APIs.
Responsibilities:
- Oversee the deployment of machine learning models into production, ensuring they perform well in real-world conditions and monitoring their performance over time.
- Work closely with data scientists, software engineers, product managers, and stakeholders to integrate machine learning solutions into our products and services.
- Develop automated workflows for model retraining, testing, and deployment to streamline the machine learning lifecycle.
- Advocate for and implement best practices in software engineering, including code reviews, continuous integration, and continuous delivery (CI/CD) for machine learning models.
Requirements:
- Strong understanding of machine learning applications, development life cycle processes and tools: CI/CD, version control, testing frameworks, MLOps.
- Strong Python experience and knowledge, with the ability to write stable, scalable and maintainable code.
- Experience with data science Python libraries such as Sckit-learn, Pandas, NumPy, PyTorch, PySpark, LightGBM.
- Have worked with a cloud service, such as AWS.
- Familiarity developing Infrastructure as code (e.g Terraform, cloudformation).
- Have some experience with data engineering, building data pipelines with PySpark, SQL (E.g in Databricks, Glue) to power machine learning applications.
- Comfortable working with Docker and containerised applications.
- Experience leveraging AI native engineering tooling.
- Passion for building products that meet customer needs and business objectives.
- Strong sense of responsibility and a track record of delivering high-quality results in a fast-paced environment.
Benefits
- Everyday Flex - greater flexibility over where and when you work
- 25 days annual leave + extra days for years of service
- Day off for your birthday, house move, good deed day, and digital detox day
- Cycle to work and electric car schemes
- Free Calm App membership
- Enhanced Paternity Leave
- Fertility Treatment Financial Support
- Group Income Protection and private medical insurance
- Gym on-site in London – or membership in regional offices
- 7.5% pension contribution by the company
- Discretionary annual bonus up to 10% of base salary
- Talent referral bonus up to £5K
Houseful London, England Office
The Cooperage, 5 Copper Row, London, United Kingdom, SE1 2LH
Similar Jobs
Artificial Intelligence • Semiconductor
Develop and optimize AI models for specialized hardware, collaborating with research and software teams to enhance performance across large-scale systems.
Top Skills:
C++Cloud ComputingCudaHpc SystemsInfinibandJaxKubernetesNvlinkPythonPyTorchRoceTriton
Music
Lead end-to-end ML initiatives: design, prototype, evaluate, and productionize large-scale LLM and multimodal systems. Build robust evaluation frameworks, deploy real-time and batch architectures, mentor engineers, and collaborate cross-functionally to drive content intelligence and AI-assisted development.
Top Skills:
Ai-Assisted DevelopmentBatch ProcessingClaude CodeCursorDeep LearningLarge Language ModelsLlmsModel OrchestrationMultimodal Machine LearningNatural Language UnderstandingNlpPrompt EngineeringPromptingRagReal-Time ProcessingRetrieval SystemsRetrieval-Augmented GenerationVector Databases
News + Entertainment
The Senior Machine Learning Engineer will develop ML infrastructure, perform data analysis, train models, and collaborate with cross-functional teams to enhance ad technology. Required expertise includes statistical modeling, coding skills, and experience in applied machine learning.
Top Skills:
HiveJavaNoSQLPythonSparkTensorFlow
What you need to know about the London Tech Scene
London isn't just a hub for established businesses; it's also a nursery for innovation. Boasting one of the most recognized fintech ecosystems in Europe, attracting billions in investments each year, London's success has made it a go-to destination for startups looking to make their mark. Top U.K. companies like Hoptin, Moneybox and Marshmallow have already made the city their base — yet fintech is just the beginning. From healthtech to renewable energy to cybersecurity and beyond, the city's startups are breaking new ground across a range of industries.


.png)
