Data Scientist - SC Cleared

London
3 days ago
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Data Scientist - SC Cleared

We are supporting a government department in a GDS environment with the appointment of an SC-cleared Data Scientist to join a high-performing technology team.

This role requires strong hands-on experience across Google BigQuery, DataForm, JavaScript procedures, Python, statistics, and data modelling. You will work with complex datasets to build analytical models, transform and structure data, and generate insight to support operational and strategic decision-making.

Key responsibilities:

Build and maintain analytical and data models
Use BigQuery to query, manage, and optimise large datasets
Develop data transformation workflows using DataForm and JavaScript procedures
Apply Python for analysis, modelling, and automation
Use statistical techniques to identify patterns, trends, and insights
Translate business questions into clear analytical outputs
Work closely with technical and non-technical stakeholders in an agile delivery environmentRequired experience:

Active SC clearance
Strong experience in a Data Scientist or similar analytical role
Hands-on use of Google BigQuery
Experience with DataForm
Strong Python capability
Good understanding of statistics and data modellingDesirable:

Government or public sector experience
Experience in a GDS environment
Exposure to large operational datasets

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