Python Developer Contract

Harnham - Data & Analytics Recruitment
London
1 year ago
Applications closed

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OverviewHarnham is working with an large retail business who are in the advertising space. We're excited to be working with a subsidiary of the business who is supporting AI initiatives for the wider company.The CompanyJoin an exciting team who are operating as a start up within a large organisation, giving you a chance to wear multiple hats and support as a strategic partner in the team!THE ROLEAs a Python Engineer, You Will

  • Refactor API backend code to implement best practices using FastAPI
  • Bridge the gap between 2 subsidiary businesses' using Python
  • Enhance and create a website scraper, and parse the workflow
  • Work with the Data Scientists and Product managers to understand best practise for the project

Your Skills And Experience

  • Experience writing code Python and developing Fast APIs
  • Have a numerical approach for impact of work
  • Experience in the marketing industry
  • You are happy to work in a fast paced environment wearing multiple hats

...

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