Senior Data Engineer

Searchability®
London
1 month ago
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Overview

WHO WE ARE

We are a fast-growing SaaS company, operating for over two years, at the cutting edge of technology. Our all-in-one integrated platform is powered by AI and designed to transform the way our industry operates.

What you will be doing

As a key member of our tech team, you will take ownership of building Fornax – our AI-powered data migration platform. This system is designed to seamlessly transfer data from outdated legacy systems into our own platform, enabling rapid onboarding of new clients and driving our continued growth.

Essential skills
  • Strong SQL querying skills
  • Proven experience in data migrations and data pipeline development
  • Proficiency in writing clean, maintainable code and collaborating effectively within a team environment
To be considered

Please apply online or email me directly at .

For further information, call me on .

By applying for this role, you are giving express consent for us to process your application (subject to required skills) in conjunction with this vacancy only.

Key skills

Python, Scala, SQL, AWS, Spark

Seniority level
  • Mid-Senior level
Employment type
  • Full-time
Job function
  • Information Technology
  • Industries: Software Development and IT System Custom Software Development

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