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Lead Data Analyst (PM Support Team) | Hedge Fund

Selby Jennings
City of London
1 week ago
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Lead Data Analyst (PM Support Team) | Hedge Fund

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About the Role


You’ll lead the data support function for the Portfolio Manager Support team in London, working alongside global counterparts in the U.S. The team is responsible for ingesting, transforming, and maintaining datasets used across the investment lifecycle, with a strong focus on automation, process improvement, and user experience.


This is a hybrid role combining technical oversight, stakeholder management, and hands‑on problem‑solving. You’ll interface directly with PMs, analysts, and engineers—ensuring data flows smoothly, requests are handled efficiently, and the team delivers consistent, high‑quality support.


Key Responsibilities



  • Lead and mentor a team of data analysts supporting front office users across asset classes
  • Oversee data ingestion, transformation, and delivery workflows using Python, SQL, and cloud‑native tools
  • Manage service levels and expectations across a fast‑paced, high‑demand environment
  • Collaborate with infrastructure and engineering teams to ensure seamless integration of data and systems
  • Act as a point of escalation for complex data issues and drive root cause analysis
  • Work with data vendors (e.g., Bloomberg, FactSet, Refinitiv) to manage external feeds and troubleshoot delivery
  • Identify opportunities to automate workflows and improve data reliability and accessibility
  • Contribute to documentation, training, and knowledge sharing across the global support function

Ideal Candidate Profile



  • 8+ years of experience in data support, implementation, or technical operations within financial services
  • 2+ years in a leadership or team‑lead role
  • Strong Python and SQL skills, with experience in data wrangling, transformation, and automation
  • Familiarity with cloud infrastructure (AWS preferred), Linux environments, and Kubernetes
  • Excellent communication and stakeholder management skills—comfortable interfacing with PMs and analysts
  • Experience working with financial data vendors and understanding their ecosystems
  • Ability to thrive in a fast‑paced, high‑performance culture with competing priorities

Why Apply?



  • Lead a growing team with direct impact on front office data workflows
  • Work in a collaborative, friendly environment with global reach
  • Gain exposure to all datasets flowing into the firm—from vendor feeds to proprietary sources
  • Shape the future of data support at a high‑performing investment firm
  • Enjoy autonomy, visibility, and the opportunity to grow into broader leadership as the team expands

If you're ready to take ownership in a dynamic, data‑driven environment and lead a team that sits at the heart of investment operations, apply today.


Seniority level

Mid‑Senior level


Employment type

Full‑time


Job function

Information Technology


Industries

Investment Management


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