GIS & Data Analyst

Brown & May Marine Ltd
Eye
4 days ago
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Job Title

GIS & Data Analyst at Brown & May Marine Ltd

Position Summary

Brown & May Marine, part of RSK Group, is hiring a GIS & Data Analyst to support offshore wind, subsea cables and oil and gas projects across the UK and Europe. The role focuses on GIS workflows, data management and marine‑sector analysis, with an emphasis on practical skill development and participation in real-world projects.

The position is based at Brown & May Marine Ltd’s head office in Eye, Suffolk and offers a flexible hybrid work model, with remote work considered for the right candidate.

Responsibilities
  • Assist with day‑to‑day management of GIS data, databases and filing systems.
  • Support data acquisition by preparing and issuing data requests to UK and European fisheries agencies and other relevant organisations.
  • Collaborate with colleagues to produce high‑quality GIS and data outputs on tight deadlines for fisheries liaison, survey work, impact assessments and technical reporting.
  • Contribute to the improvement of internal data management systems and procedures.
  • Assist in the development of mapping applications and tools, including opportunities to use Python and R driven data analysis.
  • Provide basic GIS and data support to staff across the company.
Qualifications
  • Competent user of ArcGIS software.
  • Good understanding of mapping principles, coordinate systems and projections.
  • Confident user of Microsoft Office applications, including Excel (Access beneficial).
  • Strong attention to detail and accuracy.
  • Well‑organised, efficient and able to work to tight deadlines.
  • Strong IT literacy and problem‑solving abilities.
  • BSc in a relevant discipline (e.g., Geography, Environmental Science, Marine Science, GIS) – desirable.
  • Experience with Python (e.g., arcpy, pandas, matplotlib) – desirable.
  • Basic knowledge of HTML, JavaScript or CSS – desirable.
  • Familiarity with ArcGIS Online, Web App Builder or similar platforms – desirable.
  • Interest in fisheries, environmental science or experience working with marine‑related datasets – desirable.
Salary & Benefits
  • Competitive salary commensurate with experience.
  • Life Assurance.
  • Regular ongoing training and development.
  • Hybrid working.
  • Access to a range of benefits via RSK platform.
About Us

Based in Eye, Suffolk, UK, and Brest, France, Brown & May Marine is a fisheries and marine environmental consultancy with 35 years of experience providing services for fish ecology, commercial fisheries and other marine activities for national and international offshore developments. We work across Scandinavia, the Caribbean, North Africa and more. Brown & May Marine is part of the RSK Group, a leading integrated environmental, engineering and technical services business that fosters a people‑first culture and inclusive workplace.


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