Data Analyst

Chichester
2 days ago
Create job alert

We are seeking a Data Analyst to join one of our clients in the FMCG sector on a 12-month Maternity Cover to develop and deliver BI, data, and reporting solutions. The role involves data visualisation, analysis, and database administration to support evidence-based decision-making and business process improvements. There is the opportunity to work from home 1-2 days a week post probation if required.

Key Responsibilities:

Design and implement business system and process improvements.
Provide data visualisations and analysis to support decision-making.
Act as Database Administrator for MS SQL Server systems.
Develop and test application functions and features.
Analyse data, generate reports, and optimise data efficiency and quality.
Conduct system and user acceptance testing (UAT).
Assist with data migration and transformation.Skills & Experience:

Proven experience as a Data Analyst, BI Analyst, or Business Data Analyst.
Strong expertise in SQL databases, reporting tools, and data visualisation (Power BI, Tableau, Qlik, etc.).
Proficiency in SQL Server administration, T-SQL programming, and database design.
Experience with statistical analysis tools (Excel, SPSS, SAS).
Knowledge of ETL, data warehousing, and business intelligence solutions (desirable).Additional Information:
This role requires a proactive and analytical individual with strong stakeholder collaboration skills. Flexibility is expected as additional duties may be required.

If this sounds like your next move, then please give me a call on (phone number removed) or at

INDOTHER

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