Data Analyst

Gaydon
17 hours ago
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Expleo is seeking a skilled Data Analyst to join our customer's team in Warwick(12 month contract). This role is pivotal in supporting software and systems testing through data analytics, ensuring the integrity, consistency, and usability of testing data across engineering domains. You'll work closely with cross-functional teams to analyse complex datasets, resolve tooling issues, and deliver high-quality insights for decision-making and reporting.

Key Responsibilities

Analyse JIRA-generated datasets and visualise insights using Tableau.
Identify patterns, anomalies, and trends to support engineering and quality teams.
Ensure data integrity by monitoring tickets and resolving common errors.
Prepare and deliver transparent weekly reports for top management.
Collaborate with engineering stakeholders to align and validate metrics.
Interpret data to extract key messages and actionable insights.
Coach team members on data consistency and cleanliness across tooling platforms.

Required Skills & Experience

Strong analytical skills with experience in JIRA and Tableau.
Proven ability to support project planning with data-driven insights.
Experience in preparing executive-level reporting.
Excellent communication skills to engage with engineering stakeholders.
Detail-oriented with a focus on data integrity and quality.
Ability to mentor and coach others on data best practices.

Please submit your CV or reach out to (url removed) for more info

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