Junior AI Data Engineer

London
1 month ago
Applications closed

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Take the next step in your data career & work with cutting-edge AI driven data migration projects!

Small, but mighty data transformation company, operating in the financial services & banking arena are looking for a Data Analyst / Data Engineer to work on a freshly built AI data migration & pipeline application platform.

A most excellent opportunity for an ambitious “junior” to move on in their career & work with agentic AI at the forefront of data manipulation.

Job title: Data Engineer / Data Analyst.

Location: We have a London office (Liverpool Street) but operate remotely across the UK. However, for this role, we’d like someone “commutable” to London (London or home counties, maybe?) V flexible on office / home-based work though.

Salary: £40K - £45K + Bens

What you’ll be doing:

  • Working with our newly built, in-house agentic AI data migration, transformation & schema building platform!

     - SQL / Python scripting: Prompt > test > validate > deliver. 

     - Working closely with our Senior Data Engineer & Data Project delivery manager on client projects

     - Learning a great deal about complex financial data sets, migration, schemas & AI data platforms!

    What you’ll need to bring:

  • SQL & Python coding knowledge. Working with complex financial data (migration, ETL, Schemas, etc) would be great, but any sphere is totally fine.

     - Data related, STEM, Computer science, etc type degree, or equivalent experience.

     - Inquisitive, questioning nature with oodles of critical thinking!

    That’s it. 

    We’d love to hear form you, so please do hit the apply now button, or get in touch to be considered

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