Data Analyst - Excel

Parkside
London
3 days ago
Create job alert

Our client is looking for a detail-focused individual with strong Excel skills to support our quality assurance processes and data validation efforts. The role involves ensuring data accuracy, performing quality checks, and supporting continuous improvement initiatives across projects.
  
This is initially a 3 month temporary position that may last longer.

 The role will start ASAP
 
Salary £15.50-£16.00ph DOE working 9.00-5.30 Monday to Friday, office based in Cannon Street EC4M

Key Responsibilities:

Use Microsoft Excel to analyse and validate data, ensuring accuracy and consistency.
Perform quality assurance checks on datasets and processes to identify errors or discrepancies.
Collaborate with teams to resolve data issues and improve data quality.
Maintain documentation of quality assurance procedures and findings.
Support process improvements by identifying areas where data integrity can be enhanced.
Assist in preparing data summaries or insights as needed to support decision-making.   
  
Required Skills and Qualifications:

Strong proficiency in Microsoft Excel, including formulas, pivot tables, and data manipulation techniques.
Excellent attention to detail and analytical skills.
Experience with quality assurance or data validation processes.
Ability to identify data inconsistencies and troubleshoot issues effectively.
Good communication skills for working with cross-functional teams.
Ability to manage multiple tasks and prioritise work efficiently.   
  
Desirable Attributes:
Familiarity with other data tools or quality frameworks is a plus.
Proactive approach to problem-solving and continuous improvement

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