Geospatial Data Engineer

Connor Fox Recruitment Solutions
Edinburgh
3 weeks ago
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New role -  Geospatial Data Engineer!

Our partner is a market leader in the provision 3Ddata to Big Tech customers. They operate globally and are on a rapid growth trajectory. They collect and process petabytes of data across multiple cloud platforms all across the globe.

They are searching for a Data Engineer to join their small but highly professional team.  In this role you will design and implement the systems, tools, and processes needed to effectively manage and utilise location-based data and solutions to solve business problems and meet user needs.

Some of what you will do!

  • Rapidly scale the data quality and data management processes, working with the
    engineering teams to operationalise these in the longer term.
  • Ensure that data is accurately stored, accessed and interoperable across:
    • Product-Engineering development
    • Operations & data governance - to improve data quality and data management practices
    • Commercial/Sales

  • Source data and information and make it accessible and relevant for insights and
    analysis, working with stakeholders and data engineers as appropriate.

  • Lead on the delivery of measurable continuous efficiency improvements (KPIs)
    across data collection, production and supply.

  • Support the management and development of geospatial solutions from a range
    of data sources and use best practices to generate accurate, reproducible work.

  • Get involved in events and industry forums, staying up to date with the latest
    technology, services, techniques and methods, including advancements in
    geospatial solutions and helping us bring the latest innovations into our products
    and services.

What you need to have!

  • Proven experience of working within Data Engineer role using GIS software
  • Experience with some of the following:-
    • GIS software packages- Esri ArcGIS Online, Esri ArcPro, Esri Experience Builder, QGIS
    • Data workflows & ETL:- Azure Data Bricks, AWS Data Factory, Safe FME, AWS Glue, AWS Data Pipeline, AWL CLI
    • 3D Software packages- TerraSolid, Orbit GT etc
    • Visualisation- Lucid/Miro/Mural
    • Database:-Postgres/SQL Server / no-SQL
    • Languages- Python, SQL, Javascript, R

Benefits

  • 33 days holiday
  • Never work your birthday!
  • Flexibility around starting and finishing times
  • Excellent health benefits cash plan
  • Generous pension package
  • Paid time off to volunteer each year
  • Diverse, open and overall awesome company culture!

If this sounds like you and you are keen to find out more please apply so we can discuss further.

We look forward to your receiving your application!



Diversity, Equity & Inclusion at Connor Fox Recruitment Solutions

We are committed to championing diversity, equity, and inclusion in every step of the recruitment process. We believe that diverse talent drives innovation and success, and we strive to connect employers with candidates from all backgrounds, fostering inclusive workplaces where everyone can thrive.

We welcome applications from individuals of all races, ethnicities, genders, sexual orientations, ages, abilities, religions, and backgrounds. Our recruitment processes are based on merit, skills, and potential, ensuring equal opportunities for all.

If you require adjustments during the application process, please let us know we are here to support you.

Lets build a more inclusive workforce together!

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