Data Analyst

SF Recruitment
Carlisle
2 weeks ago
Applications closed

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Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Job Title: Data Analyst (Hybrid - 3 Days On-Site) Location: Carlisle (Hybrid - 3 days on-site per week) Salary: £40,000 - £50,000 per annum Job Type: Full-Time, Permanent Overview: An exciting opportunity has opened up for a skilled Data Analyst to join a dynamic and growing team based in Carlisle. This role is perfect for someone passionate about data accuracy and integrity, with a strong background in data cleaning and preparation. You'll be instrumental in ensuring business-critical data is accurate, consistent, and ready for use across multiple teams. Key Responsibilities: Clean, validate, and structure large datasets from multiple sources Identify data quality issues and proactively implement solutions Work closely with stakeholders to understand data requirements Support the development of dashboards and reports Document data processes and maintain data dictionaries Collaborate with cross-functional teams to ensure data accuracy and usability Skills & Experience: Proven experience in a data analyst or similar data-focused role Strong Excel skills; experience with SQL, Power BI, or similar tools desirable Experience with data cleaning and transformation techniques Excellent attention to detail and a methodical approach to work Strong communication skills and ability to work with non-technical stakeholders Ability to work on-site in Carlisle 3 days a week (hybrid working model) What's on Offer: Competitive salary of £40,000 - £50,000 Hybrid working - 3 days in-office, 2 days remote Opportunity to work in a collaborative and supportive environment Role with real impact and visibility across the business

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