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Mid Data Engineer (SQL, Python)

Toucanberry Tech
City of London
3 weeks ago
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This role is offered by Toucanberry Tech. The base pay range will be determined by your skills and experience—please discuss details with your recruiter.


Role Summary

As a Mid Data Engineer at Toucanberry Tech, you will join one of our high‑performing consultant teams, delivering cutting‑edge solutions for our financial services clients. In this hands‑on role you will advance beyond standard tools like Excel to solve complex data challenges. Working directly with critical data in the reinsurance domain, you will perform data crunching and deliver actionable insights that inform key decisions.


Key Responsibilities

  • Perform complex data manipulation and analysis to support senior business experts and stakeholders.
  • Utilize Python and its analytics libraries (e.g., Pandas, NumPy) to handle large datasets and automate analytical tasks.
  • Design and execute robust data mapping and analysis projects.
  • Collaborate with expert teams to understand client needs and translate them into effective data solutions.

Requirements

  • Investment & financial domain knowledge—experience with an asset‑management operations team and understanding of financial securities data in the last two years.
  • Proficiency in SQL for data manipulation and querying.
  • Strong Python skills, with experience in Pandas, NumPy and related libraries.
  • Experience building on GCP, particularly with BigQuery.
  • Degree in investments, accounting, actuarial science, or a related field from a UK‑based university.

Nice‑to‑Haves

  • Familiarity with tools such as dbt and Databricks.
  • Experience on investment‑related projects or in the reinsurance or life insurance domain.

Benefits

  • Fully remote.
  • Outside IR35.
  • Long‑term contract.


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