Senior Analytics Engineer

Southampton
1 month ago
Applications closed

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Fantastic opportunity for an experienced data analytics engineer to join an excellent client's team in Southampton. The Senior Analytics Engineer will work closely with the software and product teams and lead the development of cutting-edge simulation and analysis techniques. Our client is a small but well-established business who are making a real difference by creating a disruptive next generation technology within an outdated industry. Because of this, they are actively growing out their data and software teams due to the number of projects they have ongoing. The successful candidate will need to be confident in their ability as a data analytics engineer as although this is a role within an established technical team, you will be required to hit the ground running as this role will be a senior role within the business.

This is a hybrid role working from the Southampton office 2 days per week.

Skills & Experience:

Analytical problem-solving skills
A background in STEM or computer science
Strong understanding of how to manipulate and interpret data
Experience with Python
Knowledge of SQL or other equivalent scripting languages
Experience developing quantitative simulations
Experience processing big data and working with databases - Databricks would be beneficial
Excellent communication skills

If you feel you have the skills and experience required for this opportunity, please contact Oliver Wilson at (url removed)

Spectrum IT Recruitment (South) Limited is acting as an Employment Agency in relation to this vacancy

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