Python Data Engineer

LTS Resourcing
Caddington
2 days ago
Create job alert

Our client is a market leader investing heavily in its technology and data landscape and is looking to hire an experienced Python Data Engineer to join a growing, well-funded technology function. This role requires two days onsite.

This is an opportunity for a Python Data Engineer to play a key role in modernising data platforms, building scalable data solutions, and enabling analytics and insight across a complex, multi-site business.

Key Responsibilities
  • Build and maintain data pipelines and ETL processes
  • Integrating legacy and modern systems
  • Deliver data migrations, including mapping, transformation, and validation
  • Ensure data quality, performance, and reliability
  • Collaborate with technology and business stakeholders
Skills and Experience
  • Essential to possess strong Python development skills
  • Solid SQL experience (e.g. SQL Server, Snowflake or similar)
  • Proven experience integrating multiple systems
  • Hands‑on experience with legacy‑to‑new data migrations
  • Experience working with large datasets, data warehouses, and batch processing
  • Experience integrating REST APIs
  • Exposure to cloud platforms (Azure or GCP)

This role would suit a Python Data Engineer at heart who enjoys solving complex integration and migration challenges. Comfortable working in a fast‑paced, change‑driven environment.


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