Senior Data Analytics Consultant

Metrica Recruitment
London
2 months ago
Applications closed

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Principal Consultant, Advanced Analytics - Data Science (UK)

A fast-growing technology consultancy, specialising in providing tailored solutions to clients primarily within the UK public sector, is seeking to expand its team. Following the recent award of a significant government contract, they are looking to recruit several individuals for their Data & Analytics work-stream to support a 3-year National Security project.

Please make an application promptly if you are a good match for this role due to high levels of interest.As a Senior Data Consultant, you will have the chance to tackle complex business challenges for prominent UK public sector organisations. You will be integral to nationally significant projects that have a direct impact on people’s everyday lives.Innovation is at the heart of this business, and you can expect to work with a cutting-edge range of technologies, including big data tools (Spark, Hadoop) and cloud platforms (Microsoft Azure, AWS). If you are eager to grow in these areas, comprehensive, top-tier training will be provided.Key Responsibilities:

Strong academic performance, preferably in STEM-related fieldsFamiliarity with technologies such as SQL, Python, R, Tableau, AWS, and AzureProven experience delivering technical solutions to stakeholdersExcellent problem-solving and analytical thinking skillsExisting security clearance or eligibility to work within the public sector.

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