Senior Data Engineer Short Term Power Markets

The Cosmo - International School of Southern Denmark
London
6 days ago
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Senior Data Engineer Short Term Power Markets role at Castleton Commodities International (CCI)


Join our Data Science & Technology team to build high‑performance data platforms that power commercial decision‑making. We use a modern cloud‑native stack and GenAI to drive market analysis, forecasting, and risk management for global commodities.


Responsibilities

  • Design, build, and maintain scalable data pipelines for real‑time and historical data for back‑testing, modeling, and trading strategy execution.
  • Integrate and manage data feeds from multiple sources, including fundamental market data, grid operations, weather providers, and internal trading systems.
  • Collaborate closely with Technology and Trading teams to ensure timely availability and reliability of data across all systems supporting the Intraday Power desk.
  • Organize and structure Power data, including reference and transactional data.
  • Monitor, troubleshoot, and optimize streaming data infrastructure, proactively resolving issues to minimize downtime and ensure data integrity.
  • Partner with Technology & Commercial teams to enhance back‑testing and signal generation frameworks that support systematic trading models.
  • Implement best practices in data governance, versioning, and lineage, ensuring compliance and traceability across the data stack.
  • Develop internal tools, APIs, and dashboards that improve data accessibility, transparency, and usability for Traders & Analysts.

Qualifications

  • Bachelor’s degree in Computer Science, Engineering, Mathematics, or related field.
  • 5–10 years of professional experience as a Senior Data Engineer, preferably in real‑time energy markets.
  • Experience with energy commodity time‑series datasets; familiarity with short‑term power market data sources such as EPEX, ENTSO‑E, or Nord Pool is strongly preferred.
  • Understanding of systematic trading workflows, including signal generation, back‑testing, and model validation.
  • Proven ability to work in a high‑frequency, intraday trading environment with tight feedback loops between data, models, and execution.
  • Experience with ETL/ELT frameworks to load millions/billions of records.
  • Advanced skills in writing highly optimized SQL code.
  • Hands‑on experience developing data solutions in Python, Pandas, NumPy, etc.
  • Experience with relational databases; Snowflake highly preferred.
  • Strong communication skills, conveying complex technical concepts to non‑technical stakeholders.

Employee Programs & Benefits

  • Competitive comprehensive medical, dental, retirement, and life insurance benefits
  • Employee assistance & wellness programs
  • Parental and family leave policies
  • Volunteer days, charitable contribution match, tuition assistance, and reimbursement
  • Quarterly Innovation & Collaboration Awards
  • Employee discount program, including access to fitness facilities
  • Competitive paid time off and continued learning opportunities

Seniority level: Mid‑Senior level


Employment type: Contract


Job function: Information Technology, Data Infrastructure and Analytics


Location: London, England, United Kingdom


Visit https://www.cci.com/careers/life-at-cci/# to learn more!


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