Energy Data Analyst

City of London
1 year ago
Applications closed

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Energy Data Analyst
London or Edinburgh
Working Arrangements: Hybrid (2 days in office), 35 hours per week

Are you passionate about energy markets and ready to make an impact in a rapidly evolving sector? We are seeking an Energy Data Analyst to join our client's short-term energy markets team. This role is an opportunity to develop market-leading tools and become an expert in both GB and European power markets. If you thrive in a supportive and dynamic environment, this could be the perfect role for you.

Key Responsibilities:

Contribute to the development of cutting-edge power analytics tools, enhancing their ability to predict and respond to market changes.
Engage in in-depth data analysis, leveraging quantitative and qualitative methods to generate valuable insights for their clients.
Collaborate closely with engineering, infrastructure, and delivery teams to maintain and advance their technical stack.
Monitor trends in the GB power market, focusing on areas like balancing, wholesale, and frequency response markets.
Build relationships with industry experts and stakeholders, contributing to thought leadership in the sector.What They're Looking For:

A relevant degree or higher education in a related field.
Intermediate proficiency in coding (C#, Python, or equivalent) with a problem-solving mindset.
Strong data analysis and research skills, with a keen interest in energy market trends.
Excellent communication and project management abilities.
A collaborative team player with a customer-focused approach.What's In It For You:

Hybrid working model with a blend of office and remote work.
A comprehensive benefits package including private medical insurance, generous leave, and professional development support.
Opportunities to build your industry expertise and network within the energy sector.
Work with a supportive and award-winning team dedicated to your personal and professional growth.Join and become a leader in shaping the future of energy markets!

Interested?

Apply today to make an impact on the energy networks of tomorrow!

Allen & York - delivering Sustainable Recruitment Solutions since 1993.

About us

Allen & York have been matching purposeful people with purpose-led organisations for 30 years. We partner with our clients and candidates on roles that build an understanding of climate change, promote sustainability and create inclusive and responsible organisations, working towards a sustainable world for us all.

Committed to inclusiveness in the workplace, we aim to increase diversity across all areas and therefore welcome applications from all qualified candidates, regardless of their ethnicity, race, gender, religious beliefs, sexual orientation, age, or whether or not they have a disability.

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