Senior Data Analytics Specialist

Futura Design
Warwick
3 weeks ago
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Our OEM Client based in Gaydon, is searching for a Senior Data Analytics Specialist to join their team on an Inside IR35 contract.

Umbrella Pay Rate: £33.64 per hour.

Duties:

This role (Data Analytics - Software and Systems Testing) is focused on ensuring the integrity, consistency, and usability of software and systems testing data across all domains created in JIRA and generally visualised in Tableau.

This role bridges the gap between Engineering, Testing, and Development teams by analysing the complex datasets, resolving tooling issues, and preparing high-quality data for decision-making and reporting. Identify patterns, anomalies, and insights to support engineering and quality teams.

Skills Required:

Ability to support project planning with data-driven insights.
Ability to create transparent weekly Top-Management Reporting.
Ability to interact with Key Engineering Stakeholders to ensure metrics are aligned and correct.
Ability to interpret the data to determine the key messages that should be shared.
Ability to ensure data integrity is maintained, by monitoring tickets for common errors.
Ability to coaching other uses of the tooling on data consistency and cleanliness.
 Education Required:

Degree educated or equivalent experience

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