MLOps Engineer
Job Title: MLOps Engineer
Location: On-site, 5 days per week
Total Compensation: Up to £200,000
We are seeking an experienced MLOps Engineer to join a forward-thinking trading organisation. This is an exciting opportunity to design and implement the infrastructure that powers advanced machine learning workflows in a production trading environment.
Key Responsibilities:
- Feature Store & Data Lake: Build scalable infrastructure for time-series feature storage, retrieval, and versioning optimised for ML workloads.
- MLOps Pipelines: Design end-to-end workflows for data ingestion, feature engineering, model training, backtesting, and deployment.
- Data Ingestion Layer: Connect raw data streams into structured, queryable formats (Parquet/Delta Lake).
- Production Serving: Deploy feature computation and model inference with appropriate latency characteristics.
- Integration: Collaborate with existing data capture and execution systems to ensure seamless operations.
- CI/CD Pipeline: Implement and maintain robust continuous integration and deployment pipelines for ML models.
Requirements:
- Strong experience in building and maintaining MLOps pipelines.
- Hands-on experience with feature stores, data lakes, and time-series data.
- Proficiency with modern data formats like Parquet and Delta Lake.
- Familiarity with production ML model deployment and latency optimisation.
- Experience integrating ML workflows with existing data and execution systems.
- Strong understanding of CI/CD practices in ML contexts.
Why This Role:
- Work in a cutting-edge, data-driven trading environment.
- Collaborate with a highly skilled team of engineers and data scientists.
- Opportunity to make a direct impact on ML infrastructure and trading performance.
- Competitive total compensation of up to £200,000.
- Company
- Harrington Starr
- Location
- Slough, Berkshire, UK
- Employment Type
- Full-time
- Posted
- Company
- Harrington Starr
- Location
- Slough, Berkshire, UK
- Employment Type
- Full-time
- Posted