Operations Analyst

Consult Energy UK
London
1 year ago
Applications closed

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Operations Analyst


Consult Energyare working with a supplier who is committed to supplying businesses with 100% clean, UK-generated energy. They are seeking an experiencedOperations Analystwho has strong knowledge inHalf Hourly Meteringto join the business. As an Operations Analyst, you will play a key role in optimising operational processes and ensuring the accuracy and integrity of data management for Half Hourly (HH) and NHH metering and assisting with COT’s, data flows and validating trades.


Key Responsibilities – Operations Analyst

  • Support maintenance of excellent settlement performance across both HH and NHH
  • Ensure accurate processing, validation, and submission of HH data to meet industry standards and regulatory requirements.
  • Collaborate with third-party vendors, to resolve any data discrepancies or issues.
  • Identify and implement improvements in processes to drive efficiency
  • Produce reports and analysis related to HH data, helping guide operational decision-making.
  • Support with wider operational supply tasks such as processing change of tenancies, metering siteworks and dealing with customer queries


Key Skills and Experience – Operations Analyst

  • Proven experience in a similar operations or data analyst role within the UK energy market is essential.
  • In-depth knowledge ofHalf Hourly Meteringprocesses, data flows, and systems, minimum of 3 years HH experience is essential.
  • Strong analytical skills with experience in data analysis, reporting. Advanced user of Excel or Google Sheets. SQL experience is desirable but not essential
  • Ability to communicate clearly with internal and external stakeholders.
  • A proactive, detail-oriented, and problem-solving mindset.
  • Fun and energetic approach to the working day.


Location– Fully remote with occasional travel to office (London)


Salary -£40k to £50k dependent on experience


Benefits

25 days annual leave plus bank holidays

Matched pension scheme

Buy and Sell holidays

Private Medical insurance


Operations Analyst

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