Project Manager

Esholt
9 months ago
Applications closed

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Job Title: Project Manager - Data Analyst (Fixed-Term Contract)

Contract Type: 3-Month FTC (Potential to extend to 6 months)

Location: BD17

Salary: £35,000 - £40,000 per annum (Up to £45,000 for exceptional candidates)

Working Hours: Monday - Friday, 9:00am - 5:30pm (40 hours per week)

Overview:

Our client is looking for an experienced Data Analyst to jointheir team on a fixed-term contract.

Key Responsibilities:

Analyse data from our appointment reminder system, which includes letters, texts, and emails
Identify trends and performance metrics to determine which methods are most effective
Produce clear, actionable reports and insights for internal stakeholders
Collaborate closely with the Client Communications and Marketing teams
Build rapport and strong working relationships across the organisation
Support the delivery of key project milestones and objectives
Provide data-driven recommendations to improve communication strategiesEssential Skills & Experience:

Proven experience as a Data Analyst or in a similar analytic role
Advanced proficiency in Microsoft Excel
Strong communication and stakeholder engagement skills
Ability to work independently and collaboratively within cross-functional teams
Strong analytical mindset and attention to detailContract Terms:

Fixed-term for 3 months (extension to 6 months possible)If you are a data-savvy professional with excellent Excel skills and a passion for using data to drive business decisions, we'd love to hear from you.

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