Data Analyst (Energy Analyst) - Contract - 2611

Enverus Intelligence Research Inc.
Stonehouse
2 days ago
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At Enverus, we’re committed to empowering the global quality of life by helping our customers make energy affordable and accessible to the world. We are the most trusted energy-dedicated SaaS company, with a platform built to maximize value from generative AI, and our innovative solutions are reshaping the way energy is consumed and managed. By offering anytime, anywhere access to analytics and insights, we’re helping our customers make better decisions that help provide communities around the world with clean, affordable energy.


The energy industry is changing fast. But we’ve continued to lead the way in energy technology, creating intelligent connections across the entire energy ecosystem, from renewables, power and utilities, to oil and gas and financial institutions. Our solutions create more efficient production and distribution, capital allocation, renewable energy development, investment, and sourcing, and help reduce costs by automating crucial business operations. Of course, this wouldn’t be possible without our people, which is why we have built a team of individuals from a diverse range of backgrounds.


Are you ready to help power the global quality of life? Join Enverus, and be a part of creating a brighter, more sustainable tomorrow.


The Team

We are currently seeking a Data Analyst for a temporary contract (12-month) to join our Global Intelligence Team based in Stonehouse in the UK. The energy industry is undergoing a major repositioning, with more companies pursuing conventional oil and gas exploration and development, as well as increasing investments in renewable energy. The ideal candidate should be a self-starter with an inquisitive mind and interested in all areas of the energy industry. Enverus embraces a hybrid remote and in-office employment model to balance flexibility and maintain a constructive environment for collaboration, culture, and mentorship.


Performance Objectives

  • Primarily responsible for gathering, interpreting, QC, and entry of information relating to the energy industry into our GIS database system and the generation of our Global Intelligence product.
  • Assist our regional experts in gathering information to include current, planned, and historic activity covering oil & gas licensing, seismic, drilling, field development, production, and renewables.
  • Information processing, standardizing, QC, and entry of energy data into a GIS database, ensuring accurate, complete, and timely population of content.
  • Product generation. Technical production of Enverus Global product suite, ensuring consistent information is delivered to weekly and monthly deadlines, including creation of regional activity maps and contribution to editorial content.
  • Promotion of Enverus Global products. Interfacing with clients and the industry to support the product suite and promote the company at industry events. Opportunities to travel/work internationally.

Competitive Candidate Profile

  • Detail oriented
  • Team player
  • Excellent organizational and problem-solving skills
  • Ability to work independently
  • Educated to degree level, preferably in an earth science
  • Excellent written and spoken English
  • Good IT skills - competent in working in windows environment and using the MS Office suite. Experienced in working with MS Excel
  • Some experience of GIS software and understanding of relational databases, with experience of working with data tables an advantage
  • Experience in the upstream oil & gas industry is desirable


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