Senior Teradata Engineer

London
10 months ago
Applications closed

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Our client is looking for a Senior Teradata Engineer to join their team on a transformation project, needing someone with hands on experience with Teradata and other Data warehouses and a deep understanding of Teradata architecture.

This role is a six month initial contract, need a candidate that can go to site in London two days a week, with the rest of the days from home.

Key Skills

  • Hands-on experience working with Teradata and other Datawarehouses.<br />
  • Deep expertise in Teradata architecture, star schema, snowflake schema, SQL optimization, and Data Modelling.<br />
  • Experience in implementation of Teradata utilities (BTEQ, Fast Load, Multiload, TPT etc.) for efficient Data loading.<br />
  • Expertise in Teradata utilities Viewpoint, Query Grid, TD Stats, and TDWM.<br />
  • Strong understanding of Data Warehouse concepts and ETL processes.<br />
  • Experience with Teradata performance tuning, workload management (TASM), and partitioning strategies.<br />
  • Experience with Teradata in GCP.<br />


LA International is a HMG approved ICT Recruitment and Project Solutions Consultancy, operating globally from the largest single site in the UK as an IT Consultancy or as an Employment Business & Agency depending upon the precise nature of the work, for security cleared jobs or non-clearance vacancies, LA International welcome applications from all sections of the community and from people with diverse experience and backgrounds.

Award Winning LA International, winner of the Recruiter Awards for Excellence, Best IT Recruitment Company, Best Public Sector Recruitment Company and overall Gold Award winner, has now secured the most prestigious business award that any business can receive, The Queens Award for Enterprise: International Trade, for the second consecutive period

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