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Data Analyst / Reporting Analyst - SQL

London
1 week ago
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My client is looking for a Reporting / Data Analyst with strong experience within:

  • SQL
  • Python
  • Kraken – Knowledge of reporting off Kraken tables.(NOT ESSENTIAL)
  • Excel / Google Sheets
  • Experience of Utility sector (Gas, Electricity, Water or Telecoms) would be beneficial
    Nice to have skills include:
  • Accounting experience - experience of month end process
  • Building dashboards using Streamlit
  • Experience of modern cloud Data Warehouse environment
  • Experience of building models using dbt
    The successful candidate will be responsible for:
  • Becoming a subject matter on the company's Finance systems and Data
  • Build, maintain and assure reports for the finance teams.
  • Maintain data models used to report on financials from their CRM system.
  • Help with one of deep dive analyses and reconciliations using SQL and Python
  • Build and maintain dashboards and data apps using Streamlit for the finance teams.
  • Build new dbt SQL data models for use in dashboards and month end reports.
    Really need a great communicator that can explain complex technical problems to non - technical teams and distil an effective and efficient tech solution

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