Data Scientist/Analyst

Identify Solutions
London
1 month ago
Applications closed

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Duration: 6Months

Location: Hybrid (London)

Rate: £400 - £550/day DOE

Status: INSIDE IR35

Clearance: N/A

Start Date: 1 - 2 Weeks


Summary:

My consultancy client is seeking several experienced Data Scientists/Analysts to contribute to critical project work over the next few months. Experience working in Local Government is essential for this assignment, suitable consultants will have a background in the consultancy sector and be available to start within the next 2 weeks.

Consultants should have strong expertise in Python and/or R, with a solid understanding of management and reporting tools such as SSRS and SSMS. A strong working knowledge of the AzureStack, specifically in areas like Synapse, Fabric, and DataFactory, is crucial for this project.


Key Skills:

Data Science/Analytics experience

Strong understanding of complex reporting

Experience with SSMS and SSRS (Reporting and Management tools)

Proficiency with Azure and its services

Familiarity with AzureStack (Synapse, Fabric, Data Factory, etc.)


Desirables:

Any knowledge of Data Strategy, Planning or ‘Road Mapping’ would be beneficial.


If you’d like more information on the assignment, please drop me an email with your latest CV attached!


Data Scientist/Analyst

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