Software Engineering Manager, Python, Bioinformatics, COR7181

Beautyk Creative
Oxford
1 week ago
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Software Engineering Manager, Python, Bioinformatics, COR7181

This is a rare opportunity for an experienced Software Engineering Manager to join an extremely well-funded R&D institute at a time of huge investment and growth.

The Role

Working in a "scale-up" environment, the Software Engineering Manager will build and lead a team of software engineers across the full stack, as they work with bioinformatics pipelines and build and deliver exceptional analytical tools processing data from multiple sources such as sequencing machines. Working in a "hands-on" capacity, the Software Engineering Manager will work to develop a scalable architecture/infrastructure, introducing DevOps practices, whilst maintaining technical oversight to ensure best practices in architecture, coding standards, and testing alongside the engineers.

Benefits include:

  • Hybrid working - 2-3 days on site
  • Bonus scheme to 10%
  • 28 days holiday
  • Enhanced pension
  • Health insurance

What Experience do I need?

  • A solid background in software engineering across the full stack, with proven experience of leading and developing teams
  • Experience of working within a start-up/scale-up environment preferred
  • Experience of working with data at scale/data pipelines, with any experience of bioinformatics/genome data advantageous. Experience of data processing platforms such as Kafka and Spark would also be useful
  • Strong experience with Python, with any additional skills with R and/or C++ of benefit
  • Experience of building a scalable architecture/infrastructure using tools such as Terraform, Kubernetes and Cloud technologies
  • Experience with DevOps practices

I want to do that!

If you have any questions or would simply welcome a chat about this excellent Software Engineering Manager position and company, just call me or drop me an email, as I’d love to hear from you! If you think this role could be right for you and you’d like to learn more, then please apply now.

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