Senior Data Analyst; Energy Trading

Eaglecliff
City of London
1 month ago
Applications closed

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Exciting Contract opportunity for a Senior Data Analyst to partner with business and technology teams within a global Energy Trading company, translating complex trading and operational data into actionable insights.


Key Responsibilities

  • Analyse, model, and interpret large datasets and KPIs to support energy trading and business decisions
  • Design data processes and reports to enhance business intelligence and data maturity
  • Work closely with Product Managers, Architects, Data Engineers, Testers, and End Users
  • Perform root cause analysis on data issues and translate business requirements into data solutions
  • Create clear documentation, acceptance criteria, and validate solutions through testing
  • Communicate complex data and technology concepts in clear, business-friendly terms

Required Skills

  • Expertise in Data Analysis Techniques & Processes
  • Strong experience in Data Quality (Cleansing & Mapping) and Data Modelling
  • Hands‑on skills in Data Design, Ingestion, and Integration
  • Experience working with structured and unstructured datasets
  • Excellent analytical and problem‑solving skills, with a strong sense of ownership
  • Experience managing small teams
  • Collibra Certification
  • Exposure to global trading or energy markets
  • Knowledge of BI tools, DevOps, Git, and CI/CD pipelines

With a focus within Energy Trading, Oil & Gas, Financial Markets and Commodities, we offer a transparent Recruitment Service that has proven to be reliable and effective for over 40 years. We are ISO accredited and proud of our excellent TrustPilot Reviews. Your search for a New Contract Assignment or for a New Permanent Job will be in safe hands with Eaglecliff Recruitment. Please telephone for an immediate response or email your CV for a quick response. Eaglecliff Ltd is acting in the capacity of an employment agency for permanent recruitment and an employment business for contractor resourcing.


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