ML Platform Engineer

SR2
Charing Cross, United Kingdom
yesterday

Role details

Contract type
Contract
Employment type
Full-time (> 32 hours)
Working hours
Regular working hours
Languages
English
Experience level
Senior
Compensation
£ 150K

Job location

Charing Cross, United Kingdom

Tech stack

Unity
Amazon Web Services (AWS)
Amazon Web Services (AWS)
Continuous Integration
Data Integrity
Data Security
Amazon DynamoDB
Fraud Prevention and Detection
Identity and Access Management
Python
Machine Learning
Redis
Azure
Delivery Pipeline
FastAPI
Data Lake
PySpark
Kafka
Spark Streaming
Machine Learning Operations
Terraform
Databricks

Job description

Senior ML Platform/MLOps Engineer

Remote | Outside IR35 | 6 months | Up to £575 per day Start: August Industry: Global payments

We are looking for a Senior ML Platform/MLOps Engineer to join the ML platform team within a global payments business.

The team builds the Real Time machine learning and feature infrastructure behind fraud detection, scoring transactions at scale within strict latency requirements. This is a hands-on platform engineering role, not a data science position, with Databricks sitting at the heart of the training, feature and model life cycle. What you'll be working on

  • Building and evolving ML platform infrastructure across Databricks and AWS
  • Developing scalable batch and streaming pipelines using PySpark and Spark Structured Streaming
  • Improving Delta Lake architecture, data reliability and online/offline feature parity
  • Working with Unity Catalog to support governance, access control and secure data management
  • Building and improving MLflow-based model tracking, retraining and deployment workflows
  • Supporting feature-store infrastructure across Databricks, DynamoDB and Redis
  • Developing Real Time features using Kafka and stateful streaming patterns
  • Improving model serving, canary releases, shadow deployments and champion/challenger testing
  • Optimising slow and costly training pipelines
  • Managing AWS infrastructure through Terraform
  • Improving observability, security, reliability and multi-region resilience

What we're looking for

  • Strong Python and production ML platform or MLOps engineering experience
  • Deep hands-on Databricks experience across PySpark, Delta Lake, Unity Catalog and MLflow
  • Strong Spark Structured Streaming and Kafka experience
  • Deep AWS experience, ideally across ECS, EC2, DynamoDB, IAM and KMS
  • Strong Terraform and infrastructure-as-code experience
  • Experience deploying and serving models using tools such as FastAPI, Seldon MLServer or NVIDIA Triton
  • Strong understanding of CI/CD, monitoring and safe model rollout strategies
  • Previous consulting or client-facing delivery experience
  • Confidence owning workstreams independently in environments with strict latency, reliability and cost constraints
  • Experience with Redis, feature stores, multi-region AWS, payments, fraud or other low-latency financial services environments would be a strong advantage.

Requirements

  • Strong Python and production ML platform or MLOps engineering experience
  • Deep hands-on Databricks experience across PySpark, Delta Lake, Unity Catalog and MLflow
  • Strong Spark Structured Streaming and Kafka experience
  • Deep AWS experience, ideally across ECS, EC2, DynamoDB, IAM and KMS
  • Strong Terraform and infrastructure-as-code experience
  • Experience deploying and serving models using tools such as FastAPI, Seldon MLServer or NVIDIA Triton
  • Strong understanding of CI/CD, monitoring and safe model rollout strategies
  • Previous consulting or client-facing delivery experience
  • Confidence owning workstreams independently in environments with strict latency, reliability and cost constraints
  • Experience with Redis, feature stores, multi-region AWS, payments, fraud or other low-latency financial services environments would be a strong advantage.

Benefits & conditions

Remote | Outside IR35 | 6 months | Up to £575 per day Start: August Industry: Global payments

Apply for this position