Software Team Manchester

Manchester
1 month ago
Applications closed

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An opportunity to join a company going through big growth looking to hire a hands off team leader to drive technology and change. This role will Lead a team of super talented multi-skilled engineers, building slick digital consumer products, relying on complex and modern technology.

The tech is complex, it needs to be resilient, scalable and slick for consumers and colleagues.

The Software Engineering Manager will run a team of senior engineers who are extremely proficient in a range of technologies

Skills required

Ability to inspire and lead very talented engineers to build amazing solutions.
Technical depth/strength
You will have a software engineering or data engineering background
Well versed and practical experience managing TDD, automation, CICD, OOP…
The culture/values

Very down-to-earth
Zero politics
Kindness
High standards
Flexibility and fairness
 
If you are intrigued or interested to know more, get in touch please in complete confidence (see below)

 Key pointers – SDM, software development manager, software engineering manager, head of software, agile, DevOps, cloud, international, leadership, AWS, CI, CD, TDD, OOP

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