Apprentice Data Analyst - Adult Services Insights

Sunderland City Council
Sunderland
1 month ago
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A local council is seeking an analytical professional to provide data services in Adult Services. The role involves conducting statistical analyses, reporting findings, and advising non-analytical staff on statistical methods. Candidates should have strong problem-solving skills and a positive attitude towards data analytics. The position supports career development through a structured apprenticeship program and offers a hybrid working model with the expectation to be on-site at least 2 days a week.
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