AWS Data Engineer

Tenth Revolution Group
London
4 days ago
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Data Engineer - 14-Week Contract (Outside IR35) Likely to Extend

Start Date: 12th JanuaryRate: £350 per dayLocation: Remote (UK-based)Interview: Immediate - Offer before Christmas

We are seeking an experienced Data Engineer to join a 14-week project focused on building robust data pipelines and integrating complex data sources. This is an outside IR35 engagement, offering flexibility and autonomy.

Key Responsibilities

  • Design and implement ETL/ELT pipelines with strong error handling and retry logic.
  • Develop incremental data processing patterns for large-scale datasets.
  • Work with AWS services including Glue, Step Functions, S3, DynamoDB, Redshift, Lambda, and EventBridge.
  • Build and optimise vector database solutions and embedding generation pipelines for semantic search.
  • Implement document processing workflows (PDF parsing, OCR, metadata extraction).
  • Integrate data from REST APIs, PIM systems, and potentially SAP.
  • Ensure data quality, governance, and lineage tracking throughout the project.

Required Skills

  • ETL/ELT pipeline design<...

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