Senior Project Engineer

Gateshead
2 months ago
Applications closed

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Would you like to work for an innovative company that provides smart solutions for critical national infrastructure? We are looking for an experienced Senior Project Engineer to join the Software Systems team. If you have a passion for innovation and a proven track record in delivering complex software systems, we want to hear from you!

Role Overview: As a Senior Project Engineer, you will be instrumental in delivering advanced software solutions for clients. You will manage project lifecycles, work closely with clients and suppliers, and ensure high-quality, efficient end to end project delivery.

Key Responsibilities:

Oversee data engineering and IT infrastructure, and software configuration
Develop and maintain project documentation.
Lead software integration testing and QA processes.
Manage project activities to meet schedules and budgets.
Provide technical support and troubleshoot issues.
Contribute to engineering standards and best practices.
Mentor and support less experienced staff.Candidate Profile: We are looking for someone with:

A Bachelor's degree in Software Engineering, Computer Science, or a related field.
Extensive experience in IT/software/automation systems.
Proficiency with tools like GIT, JIRA, and Confluence.
Excellent analytical, problem-solving, and communication skills.
A proactive, detail-oriented, and results-driven attitude.
Any experience with safety critical software would be advantageousWhy Apply?

Be part of an innovative and forward-thinking company.
Work in a collaborative environment that encourages growth.
Lead and mentor a talented team.
Competitive salary and benefits.Apply with your updated CV

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