Data Engineer - Private Equity

McGregor Boyall
London
1 week ago
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Data Engineer - Private Equity Investment Platform London (5 days onsite) | Up to £100,000 + bonus

A London-based private equity real estate firm is hiring a Data Engineer to own and build its data platform, supporting research and investment decision-making across the business.

This is a hands-on role in a lean team, sitting at the intersection of data engineering, analytics and investment research, working directly with stakeholders.

Key responsibilities: * Own end-to-end data platform architecture and modelling * Convert Excel models into scalable Python workflows * Build pipelines using Snowflake + dbt * Implement CI/CD, orchestration and automation * Drive data governance and quality * Develop AI / LLM-based workflows for research and portfolio analysis

Requirements: * 4-6 years Data / Analytics Engineering experience * Strong Python & SQL * Snowflake + dbt experience * Strong data modelling and platform ownership mindset * Comfortable in a fast-paced, high-ownership environment

5 days onsite in London

McGregor Boyall is an equal opportunity employer and do not discriminate on any grounds.

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