Data Analyst Software Systems Test

Jonathan Lee Recruitment
Warwick
1 month ago
Applications closed

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Data Analyst (Software Systems Test) - 36349383 - £34.62/hr umbrella rate (Inside IR35)

Are you ready to take your analytical skills to the next level? This is your chance to join an innovative and forward-thinking company as a Data Analyst (Software Systems Test). Dive into the exciting world of vehicle engineering, where your expertise will play a pivotal role in shaping the future of testing and development. With a focus on cutting-edge software and systems, this role offers an inspiring work environment, career growth opportunities, and the chance to make a real impact. If you're passionate about data integrity, visualisation, and driving decision-making through insights, this is the role for you.

This role 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.

What You Will Do: 

- Ensure the integrity, consistency, and usability of software and systems testing data across all domains.

- Analyse complex datasets created in JIRA and visualised in Tableau to support decision-making.

- Identify patterns,...

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