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Data Scientist/ Analyst

Hays
London
1 month ago
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London / Hybrid (Must be UK Based, 1-2 days per week onsite may be required)
I am currently working with a leading consultancy who are looking for a Data Analyst / Data Scientist with strong Microsoft Fabric, Databricks and Power BI skills, and previous experience of working on Finance Programmes to work closely with a high profile end customer.
Proven experience as Data Analyst / Data Scientist within a large Enterprise Scale organisation
Demonstrable experience using Microsoft Fabric, Databricks and Power BI amongst other Microsoft technologies
Working knowledge of AI related Projects / Programmes of work
Flexible approach towards hybrid working when required

Proficiency in Data Science tooling such as R
Immediate availability

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