Data Engineer

Devonshire Hayes Recruitment Specialists Ltd.
Glasgow
3 days ago
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If you are an experienced Data Engineer with excellent communication skills and a proven track record of working on large scale data enablement projects, we have a new contract we would like to discuss with you. Please note this role requires onsite attendance once a week and has been deemed inside IR35.


Requirement:



  • Experience in Azure Synapse, ETL, Pyspark, SQL , data Modelling and Data Bricks.
  • Design and develop Azure Pipelines including data transformation and data cleansing
  • Document source-to-target mappings
  • Re-engineer manual data flows to enable scaling and repeatable use
  • Build accessible datasets for distribution and analysis
  • Development of Azure Pipelines for transforming data
  • A scalable meta-data driven ingestion and transformation framework
  • Aligning transformation pipelines and datasets with Purview
  • Experience of working with Azure Data Lakes, Data warehousing, and pipelines and Storage accounts
  • Experience in building and managing Pipelines including: building data interfaces to source systems, combining and transforming data into appropriate storage formats
  • Experience identifying and resolving issues in databases, data processes, data products and services.
  • Proficiency in T-SQL and Python to develop automation


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