Graduate Engineering Trainee

Dahlia Recruitment - Renewables
1 month ago
Applications closed

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Dahlia is recruiting for a highly Analytical Engineering Graduate for a remote working full time position for this exciting Renewables business based in the UK. This is a rare and varied role and an opportunity to join a growing company that offer true career progression. The role requires a high level of numeracy skills with strong competence in Excel (Please note this is NOT a Data Analyst or a Programming position)


The first 6 months will be spent learning about the gas industry and all things related to gas balancing, trading and revenue optimisation. By the end of this initial six months, you will be responsible for ensuring correct and timely data on gas pricing and production is provided for trading and strategy decisions to be made.


Following this there will be four rotations, each lasting approximately three months each. There are numerous routes that can be taken out daily gas operational tasks as part of a rota. You must be available to work occasional weekends


Key business areas include


Analytics

You would carry out numerous pieces of analysis which help to support pitches and key commercial decisions. Most of this work will be using Excel and there would also be opportunities to present your work to senior management and to make recommendations that would shape the direction of the business.


Green Subsidies

Biomethane is central to the business. In this rotation you would work firstly with the certificate trading team. Here you would learn about the green gas subsidy market and assist with origination and analysis that would help the trading team to make decisions and close deals.


Data and Automation

As a growing company, the business are constantly trying to improve and automate processes to free up resources. This rotation is ideal for those with an aptitude for coding and specific knowledge of Python. You would work alongside the data analysts to automate and improve our data and file flows.


Business Development

A significant amount of our time is spent working with new and potential clients to see how the business can help them meet their green energy goals and needs. This rotation would be focused on developing new and innovative concepts and ideas which could be shown to both current and existing clients.


Legal and Regulation

The gas, and specifically biomethane, industry is ever evolving. Some of the changes to support biomethane development are proposed and designed by the company but we also ensure that at all times they are on top of all regulatory changes. In this rotation a lot of your time would be spent with the legal and regulatory team, both discussing possible changes to regulations and attending industry groups and meetings. You would be required to keep abreast of changes and report to senior management and the wider organisation.


The role includes weekday and weekend out of hours working according to a 2-4 week rotational pattern. Payment additional to salary. We will not consider candidates that have not yet Graduated.


Key skills and Experience

· Proficient in Microsoft Office with a particular focus on Microsoft Excel in which you must have advanced skills

· Excellent numerical and data analysis skills.

· Organised with strong attention to detail.

· The ability to work independently and adapt to new areas of the business

· A logical and thoughtful approach to problem-solving.

· An interest in green energy and the desire to work towards decarbonisation.

· A STEM degree is Essential ideally in Engineering or Mathematics

· Flexible regarding working hours.

· Accuracy and an eye for detail.

· The ability to work as part of a team.


Please apply and follow our page for more updateshttps://www.linkedin.com/company/dahlia-recruitment/

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