Data Analyst - Renewable Energy PPA

Octopus Energy Ltd
London
1 day ago
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Overview

The Global Energy Markets team makes sure we always have the electricity and gas we need to power our customers' homes and businesses, while supporting the grid to accelerate the transition to Net Zero. To deliver on this mission, we are looking for a Data Analyst to join the Energy Markets team and support our PPA activities by delivering high-quality market, project and portfolio analysis. You'll identify power market trends, run financial and operational analysis of the renewable projects we contract, and assess portfolio-level performance, risk and diversification. You will work closely with commercial, trading and risk teams to turn data into clear decision-ready insights that support PPA structuring, valuation and ongoing portfolio optimisation, ensuring our contracting and risk management decisions are grounded in robust analysis. You'll excel at listening, understanding stakeholder challenges and taking ownership for translating them into pragmatic analysis and scalable data products (reports, models and dashboards). This is a fantastic opportunity to work at the intersection of renewables, markets and data in an award winning team for a high growth business that is at the forefront of the transition to net zero.

We love getting to know our applicants! To make sure we have enough time to give every application a thoughtful review, we may occasionally hit pause on new submissions. If you're excited about this role, we'd love to see your application sooner rather than later.

Responsibilities
  • Work across Octopus Energy Group to support PPA operations and portfolio growth by liaising with Trading, Risk, Forecasting and Engineering teams
  • Become a subject matter expert on power market, generation and PPA-related datasets
  • Analyse power market trends, prices, volatility and capture rates to support contracting decisions
  • Develop and maintain data models used for PPA and portfolio reporting (including testing and version control)
  • Build and maintain dashboards and analytical views for PPA performance and portfolio monitoring (e.g. Streamlit/Lightdash BI tools)
  • Build, maintain and assure analytical reports for commercial, trading and risk financial and operational analysis of renewable projects under contract
  • Perform portfolio-level analysis across technologies, geographies and contract types
  • Support risk management analysis across the PPA portfolio, including price, volume and shape risk
  • Deliver one-off deep dive analyse and investigations using SQL and Python, automating recurring analyses where possible
  • Support valuation, repricing and sensitivity analysis for new and existing PPAs
  • Provide analytical support for internal reviews, audits and regulatory reporting where required
  • Consider and propose creative risk reducing structures, including insurance, derivatives, hybrid, long-term value development
Qualifications
  • At least 2+ years experience working in a similar data position delivering actionable insights that support strategic decision-making
  • A curious and self driven mentality - when faced with a new problem is capable of seeking out an answer with minimal support
  • Highly data literate and numerate - able to make sense of lots of data from various sources and of different types, and shape it into a coherent story
  • A great communicator - can explain complex technical problems to non-technical teams and translate business problems into efficient data solutions
  • Strong attention to detail and a commitment to data quality
  • Learns fast and is enthusiastic about learning new technologies
  • Proficient with SQL, Python, Excel and Google sheets
  • Nice to have:
    • Experience building dashboards or lightweight data apps (e.g. Streamlit or Lightdash)
    • Experience working in the renewable energy industry, ideally with PPA or power market analysis
    • Experience working in a modern cloud data environment, including using cloud data warehouses, version-controlled analytics codebases (e.g. git), and building analytical data models (e.g. using dbt)
    • Experience working collaboratively on codebases using git


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