Geospatial Data Analyst

Portswood
2 months ago
Applications closed

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Geospatial Data Analyst – Southampton – £40,000 - £60,000

VIQU have partnered with a fast growing SaaS and data analytics company who are looking to expand their current team and hire a geospatial data analyst. The ideal candidate will hold experience with modelling physical objects, have extensive experience with Python (or a similar language), and an ability to process big data. 

This position requires you to be on site twice a week in their Southampton office. You will be joining a team of high achievers, working within a rapidly emerging industry with exposure to a range of technologies.

Job duties of the Data Analyst:

Run and develop simulations and experiments, utilising scripting languages to do so, focusing onn geospatial data. 
Utilising a range of data analysis techniques.
Ensuring validity of data, communicating your research internally, helping to intergrate the research to the analytics team.
Managing end to end research projects, using scientific processes.
Staying up to date with relevant research within the industry.
Requirements for the Geospatial Data Analyst:

Must hold experience with modelling physical real time objects/ geospatial data. 
Must hold at least three years professional experience with Python/Pyspark/Pandas. 
Experience with processing data and working with databases/ datalakes. 
Strong understanding of data manipulation, analysis and processing.
Abiliity to communicate to technical and non technical stakeholders. 
Geospatial Data Analyst – Southampton – £40,000 - £60,000. 

To discuss this exciting opportunity in more detail, please APPLY NOW for a no obligation chat with your VIQU Consultant. Additionally, you can contact Jack Mcmanus, by exploring the VIQU IT Recruitment website.

If you know someone who would be ideal for this role, by way of showing our appreciation, VIQU is offering an introduction fee up to £1,000 once your referral has successfully started work with our client (terms apply).

To be the first to hear about other exciting opportunities, technology, and recruitment news, please also follow us at ‘VIQU IT Recruitment’ on LinkedIn, and Twitter: @VIQU_UK

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