Full Stack Developer

McGregor Boyall
London
1 year ago
Applications closed

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A leading investment bank is looking for a Full Stack Developer to join their team on an initial 12 month contract. Paying up to £900 per day you will be working out of their London offices with hybrid remote working options (2/3 days a week).

Responsibilities:

  • To work as a developer in the Generative AI team on their core platform built in Python and React / TypeScript.
  • Participate in an agile based software development lifecycle including technical analysis, documentation, development, testing, code reviews and working with infrastructure teams as needed.
  • Supporting the Generative AI platform service and ensuring it's availability and continuous improvement to new language models and techniques and use cases.

Requirements:

  • Development on core web application in Python and React / TypeScript.
  • Proven track record of Python3+ and Django, fastAPI
  • Knowledge of Kubernetes and Docker
  • Familiar with CI/CD processes nominally Jenkins, Ansible
  • Competent DB / SQL skills
  • Knowledge of Machine Learning - Model Testing, popular ML Libraries etc

If you think you have the necessary skills and experience then please apply now!


McGregor Boyall is an equal opportunity employer and do not discriminate on any grounds.

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