C# Developer

Idox plc
Theale
1 year ago
Applications closed

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C# Developers

About the role

This is an opportunity for experienced developer to join our Pune team, working closely with the UK based development team to help design, develop and support geospatial software and websites.

Idox Geospatial deliver data solutions and insights to valuable problems by using mapping data to help customers understand issues with their assets, manage risks and make sustainability improvements in their businesses. We are inventing new solutions in Cloud based applications and data streams and beginning to unlock the opportunities in machine learning. We have a thriving online map store that is #2 in the UK market, with many proven products and multi-year customer relationships in the public and private sector.

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