AWS Data Engineer (contract)

Opus Recruitment Solutions
London, United Kingdom
Last month
Applications closed

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AWS Data Engineer | 6m Contract | London, Hybrid - Outside IR35 

Daily Rate: £570 per day (Outside) Team: Data Engineering - Application Development

Overview:

Opus have partnered with a London Financial Services company who're seeking a Senior AWS Data Engineer with a background in Application Development to support in architecting and delivering a new PostgreSQL‑driven data platform which will be used to support core functions across investment reporting, risk analysis, regulatory output, and performance measurement.

This is a high‑impact greenfield build. You’ll take full ownership of the platform’s design and lead the transition away from Databricks and Excel-centric processes—shaping critical infrastructure that underpins the organisation’s investment operations.

What You’ll Work On

You’ll be responsible for designing and developing a scalable, secure PostgreSQL environment capable of supporting:

Portfolio valuation and holdings data

Performance and attribution reporting

Risk and analytics outputs

Regulatory and trustee disclosures

Data governance and operational controls

You’ll also oversee the migration of structured datasets from Databricks (Delta Lake/Spark) and replace manual Excel workflows with automated, well-governed pipelines to meet audit and regulatory standards.

Key Responsibilities

Build and maintain a secure PostgreSQL-based data platform

Lead the shift away from Databricks and spreadsheet‑dependent reporting

Create dimensional data models covering investments, pricing, performance and related domains

Develop reliable ETL/ELT processes in Python

Implement data quality, reconciliation and validation controls

Optimise database performance for analytical and reporting workloads

Ensure compliance with FCA and TPR regulatory guidelines

Set up access controls, security standards and permissioning

Establish monitoring, backup and disaster recovery solutions

Collaborate closely with investment, risk and finance teams

Essential Skills & Experience

5+ years’ experience in data engineering, application development or data platform roles

Strong PostgreSQL knowledge, including indexing, optimisation and partitioning

Background in financial or investment data environments

Advanced SQL and Python skills

Experience migrating data from platforms like Databricks

Confident with dimensional modelling, star schemas, SCDs etc.

Experience within regulated financial services

Desirable

Experience in pensions, asset management or institutional investing

Understanding of performance measurement and attribution

Exposure to Airflow or dbt

Cloud platform familiarity (Azure or AWS)

Knowledge of data governance best practice

About You

Highly detail‑driven with a strong approach to data quality

Comfortable operating in tightly regulated sectors

Able to explain technical concepts clearly to non‑technical audiences

Practical, proactive and solution‑focused

Why This Role?

A rare opportunity to build core investment data infrastructure from the ground up

High visibility and direct engagement with senior stakeholders across multiple business areas

Stable organisation with long‑term goals and purpose

Flexible hybrid arrangement requiring only occasional travel to the London office

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