Graduate Power Scheduling Analyst

Abingdon
1 year ago
Applications closed

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Graduate Power Scheduling Analyst

Location: Abingdon, Oxford (Office-based with shift rotation)

Overview: An exciting opportunity has arisen for a highly motivated Graduate to join the Operations and Analytics team within a leading UK energy company's Trading department. This role is critical in optimizing a portfolio of flexible energy generation assets, managing third-party assets, and overseeing the trading and real-time performance of the generation and storage portfolio.

Key Responsibilities:

Optimize the company's portfolio of generation assets across wholesale and ancillary service markets.
Accurately execute hedging strategies for power and gas contracts.
Ensure compliance with established risk policies.
Maintain effective communication with field-based engineers to ensure safe and efficient asset operations.
Work independently during evenings and weekends as part of a shift rotation schedule.Qualifications & Skills:

Bachelor's degree or equivalent.
Self-motivated and able to work both independently and within a team.
Strong numeracy skills and excellent communication abilities.
Interest in UK Gas and Power markets is a plus (full training will be provided).
Experience with programming or big data analytics (preferably Python) is advantageous.Benefits:

Competitive salary starting at £32k, with an increase to £34k after 6 months.
Performance-based discretionary bonus.
25 days of annual leave plus bank holidays.
Contributory Pension Scheme.
Life Insurance.
Health cashback plan and 24/7 Private GP access.
Comprehensive training and development opportunities.
Salary sacrifice EV scheme and discounts on smart home products.
Dog-friendly office environment.Company Overview: This role is with a dynamic and rapidly growing energy company that is at the forefront of the UK's transition to a low-carbon economy. The company operates an extensive portfolio of flexible power plants and is heavily involved in the development of innovative energy solutions, including battery storage, solar, hydrogen, and stability services. This is a fantastic opportunity to join a supportive and forward-thinking organization that is committed to developing its talent and making a significant impact on the UK's energy landscape.

Because education matters. Dovetail and Slate Limited ((phone number removed)) acts as an Employment Agency

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