Senior Data Scientist

London
8 months ago
Applications closed

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Senior Data Scientist - National Security (TIRE) based in Cheltenham/Hybrid

Senior Data Scientist - London - £75,000

Are you an experienced data scientist who has also been exposed to engineering? Then this could be the role for you…

I'm looking for a data scientist who is skilled in cloud-based infrastructure including AWS and Azure, has experience in SQL and an understanding of coding.

You will be leading client projects as well as assessing their business needs identifying opportunities for data science to be used. Managing client and stakeholder relationships appropriately.

As such, we are looking for a leader who can deliver a range of projects including data analytics, data science and data engineering whilst using appropriate technologies e.g. (Python).

The role is hybrid, with 2-3 days a week working from office or client sites.

Requirements:

-You should have experience in AWS, Azure, SQL and Python.

-An understanding of coding and design patterns.

-Strong communication skills, with the ability to, and experience in creating relationships with stakeholders.

-Must be SC eligible

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