Python Data Engineer

Anankai Limited
City of London
1 month ago
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Qualifications

  • Minimum 5 years experience in Core python development with version 3.7 or better.
  • Hands‑on experience developing software for HTTP, REST API with handling HTTP Status codes is a must.
  • Able to handle JSON and XML payloads. Including processing incoming payloads and sending out JSON and XML payloads.
  • Knowledge of libraries, Parsers (XMLParser), and utilities to help with highly productive code development. class based coding.
  • Knowledge of micro‑services architecture design and ability to develop to such an architecture is a big plus.
  • Highly preferred to have AWS Lambda functions, layers, VPC configuration, Triggers and other AWS Lambda related services experience.
  • Ability to self‑manage, plan, and deliver results in an Agile, fast‑paced environment with minimal direction.
  • High interaction with other team members, business analysts on remote calls and team meeting chats including screensharing and collaborating is essential.
  • Must have such experience and be comfortable with this culture.
  • Documentation of Code including “inline documentation” and product documentation.
  • Experience using collaborative wire‑frame tools like Miro and Figma.
  • Fintech experience is a plus.

Location

  • London, UK
  • Anywhere

Work Hours

9AM-6PM GMT+1


Key Personal Qualities

  • A Team Player
  • Forward Thinking
  • Good written, verbal, and analytical skills
  • Attention to detail while managing priorities in a fast‑paced environment
  • Drive to solve problems by trying without fear of failure


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