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Data Analyst

Reed
Leeds
1 week ago
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Overview

JUNIOR DATA ANALYST

  • Location: Fully Remote
  • Hours: Monday to Friday, 9am–5pm (Flexible)
  • Salary: £28,000 (flexible depending on experience)
  • Start Date: ASAP

Join an integrated health and wellbeing service that partners with the NHS to deliver essential support across various health initiatives. This fully remote role offers the opportunity to be part of a small, dynamic digital team focused on making a significant impact in public health.


Day-to-day of the role:

  • Manage your own workload with high levels of autonomy and minimal supervision.
  • Proactively identify, initiate, and manage tasks and projects.
  • Utilize SQL for querying databases to retrieve and manipulate data.
  • Employ Excel skills for data cleaning, analysis, creating formulas, and generating visualizations, including pivot tables.
  • Use data visualization tools like Power BI (desirable but not essential) and programming languages like Python or R for data manipulation, statistical analysis, and visualization.
  • Communicate findings and insights effectively to both technical and non-technical team members.

Required Skills & Qualifications
  • Technical Skills:
    • Strong SQL skills for database management.
    • Proficiency in Excel including pivot tables.
    • Familiarity with data visualization tools like Power BI.
    • Knowledge of programming languages such as Python or R is highly beneficial.
  • Analytical & Cognitive Skills:
    • Critical thinking: Ability to evaluate data, identify patterns, and think logically.
    • Problem-solving: Skill in addressing complex data issues and proposing actionable solutions.
    • Attention to detail: Crucial for ensuring accuracy in data analysis and reporting.
  • Soft Skills:
    • Excellent communication skills to convey findings clearly.
    • Effective teamwork capabilities, suitable for remote collaboration.
    • Independence in managing tasks and workload.
  • Qualifications & Experience:
    • A degree in a quantitative field such as mathematics, statistics, computer science, or economics is often preferred.

Benefits
  • 25 days annual leave plus 8 bank holidays.
  • Employee Assistance Programme (EAP).
  • Expenses covered for work-related costs.
  • "Family First" culture promoting work-life balance.
  • Annual benefit pack.

To apply for this Junior Data Analyst position, please submit your CV and a cover letter detailing your relevant experience and why you are interested in this role.


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