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LabVIEW Software Developer

Chilton, Oxfordshire
1 week ago
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LabVIEW Software Developer / Didcot, Oxfordshire / £55 per hour (outside IR35)

As a LabVIEW Software Developer, you will be an integral part of a small project development team, contributing to the design, development, testing, and debugging of LabVIEW Software for Raman Spectroscopy products. This role involves working on new and existing products, collaborating with cross-functional teams, and ensuring compliance with regulatory and product security requirements.
Responsibilities:

Design, develop, test, and debug LabVIEW Software for Raman Spectroscopy products
Contribute to new product development and improvement projects
Follow Agile software development processes using Jira
Collaborate with cross-functional teams to define requirements and troubleshoot integration issues
Ensure code maintainability through comprehensive documentation and unit testing
Contribute to continuous improvement activities, internal user groups, and ongoing learning and development
Ensure software meets regulatory and product security requirements
Ideal person

Certified LabVIEW Architect, Developer or similar experience required
Typically 4+ years experience as a LabVIEW software developer.
Experience of object-oriented LabVIEW programming and knowledge/experience of some or all of the following would be beneficial:
Databases (e.g. SQLite)
Source code control (Git, Git-Flow)
This is an 18 month temporary contract

Join a dynamic and recently certified NI Centre of Excellence team at the forefront of R&D, specialising in hardware development, data science, optics, software quality, and marketing. Our team, consisting of approximately 10 employees and contractors, plays a pivotal role in developing cutting-edge products with applications ranging from airport security screening to pharmaceutical quality control.

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Should you require any support or assistance, please contact your local Gi Group office.

Gi Group Holdings Recruitment Limited are proud founding members of Menopause in business, pledge members for Neurodiversity in business, Disability committed members, Silver status pledge members for the Armed Forces Covenant, and Bronze trail blazers for Racial Equality matters.

Gi Group of companies includes Gi Group Holdings Recruitment Ltd, Gi Recruitment Ltd, Draefern Ltd, Excel Resourcing (Recruitment Consultants) Ltd, Gi Recruitment Ltd, INTOO (UK) Ltd, Marks Sattin (UK) Ltd, TACK TMI UK Ltd, TACK International Ltd, Grafton Professional Staffing Ltd, Encore Personnel Services Ltd, Gi Group Staffing Solutions Ltd and Gi Group Ireland Ltd. Gi Group Staffing Solutions Ltd are acting as an Employment Business in relation to this role.

We are committed to protecting the privacy of all our candidates and clients. If you choose to apply, your information will be processed in accordance with the Gi Group Privacy Statement. To view a copy and to help you understand how we collect, use and process your personal data please visit the Privacy page on our Gi Group website.

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