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Data Analyst - 3 MONTHS

Thrupp, Oxfordshire
7 months ago
Applications closed

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Job Description: Data Analyst (Temporary)
Location: Kidlington
Duration: Temporary (3 months)

Role Overview:
We are seeking a detail-oriented and proactive Data Analyst to join our client's team on a temporary basis. The Data Analyst will play a critical role in supporting data-driven decision-making within the business, ensuring the smooth operation and management of our client's aviation services.

Key Responsibilities:
Collect, analyse, and interpret data from various sources to provide insights into business performance.
Support the creation and maintenance of reports and dashboards for key stakeholders.
Assist with the development of data models to forecast trends and performance metrics.
Work closely with various departments to understand their data needs and deliver actionable insights.
Identify areas for process improvements based on data trends.
Ensure the accuracy, integrity, and consistency of data used across the company.
Communicate findings and recommendations clearly to non-technical stakeholders.
Key Requirements:
Strong experience working as a Data Analyst or similar role.
Proficiency in Excel, SQL, and other data analysis tools.
Familiarity with data visualisation software is an advantage.
Excellent problem-solving skills and attention to detail.
Strong communication skills and the ability to present data insights to a non-technical audience.
Ability to work independently and as part of a team.
A background or interest in aviation is a plus, but not required.
Hours:
Ideally, 40 hours per week, but our client can offer flexibility to suit the right candidate.

Pay:
£15-25 per hour, depending on experience.

Application Process:
Interested candidates are invited to submit their CV or call Nelli at Pertemps

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