Senior GIS Consultant

Manchester
1 year ago
Applications closed

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FINTEC recruit is supporting hiring for a Senior GIS Consultant working for on UK & international projects for a leading engineering consultancy . The role is based in either Manchester or Southampton. You will be using advanced GIS software working across various industries in water, environment, infrastructure, defence, energy. This is a permanent position, salary negotiable by experience plus benefits.
Responsibilities:
• Source, prepare and analyse data to create graphics, metrics and reports to support non-GIS users
• Use ESRI Technology stack to develop applications for customers
• Updating and maintain datasets for internal & external use
• Supporting the Geospatial team to deliver high quality project outcomes
Skills and experience require for the Senior GIS Consultant roles:
• A relevant degree in GIS, environmental sciences, or geographical sciences, with advanced GIS software knowledge or equivalent work experience.
• Experience with the ESRI stack, particularly ArcGIS Pro, Survey123, Field Maps, and AGOL.
• Proven ability to work efficiently, manage multiple projects simultaneously, and meet deadlines.
• Knowledge of UK environmental and Ordnance Survey datasets.
• Desirable to be familiar with AI and machine learning technologies
• Be familiar with AutoCAD or similar software – not essential
• Knowledge of programming languages eg Arcade, Python, R – not essential
Able to pass UK security clearance is required
Full details of the GIS Consultant roles is available on application. To apply please submit your current CV or apply via our FINTEC recruit web site

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