Python GENERATIVE AI Developer - Enterprise/AI - Investment Bank

Adlam Consulting Ltd
London
1 year ago
Applications closed

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Python GENERATIVE AI Developer - Enterprise/AI - Investment Bank

  • Python and strong attitude are core requirements
  • Proven track record of Python3+ and Django, fastAPI
  • The core platform is a Web Application built in Python and React/TypeScript.
  • 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.
  • Excellent analytical skills with the ability to translate technical concepts and provide specialist guidance and advice to others.
  • Ability to work with individuals to set individual objectives and manage performance to ensure their delivery.
  • Ability to liaise with stakeholders to act as bridging point

ROLE

  • To work as a developer in the Generative AI team which is split between London and Lisbon
  • Participate in an agile based software development life cycle 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.
  • Proactively manage all issue facing the team - technical, functional or organisational.

Background in C#, Java, .NET or Enterprise language. Understand Dev Ops, Kubernates, Monitoring tools, API
Experience - Blue chip/Investment Banking ideally but solid dev experience in a large corporation building apps.

Prior experience of operating in a complex and diverse IT environment systems. Results orientated with a clear understanding of how the results impact the business counterparts.

Person will need to know how to Productionise models, moneterise applications.
Seeking enterprise python engineering skills 10-15 years ideally,

This role offers hybrid working 50% and is inside IR35 Umbrella

Adlam Consulting operates as an Employment Agency & an Employment Business Applicants must be eligible to work in the specified location

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