Azure Synapse Data Engineer

Key Talent Indicator
Glasgow
11 months ago
Applications closed

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Somos unaHR Techenfocada en ofrecer servicios dedescubrimientode Talento. 

Nos centramos principalmente enla personapara poder proporcionar el mejor camino al desarrollo delTalento



The Wise Seekeris the leading HR technology company in unbiased talent evaluation.

With over 15 years in the industry analyzing the needs and demands of the job market, we are capable of identifying the best talent for each company thanks to our team of professionals and our SaaS platform integrated with Artificial Intelligence.

We are efficient, evaluate talent objectively without bias, and close hiring times in record time, delivering optimal results.

We are looking for Azure synapse data engineer to work for a major energy company in Glasgow.

Location: Glasgow


Functions

  • Several projects in Azure Synape.
  • Sql scripts (store procedures) and pyspark notebooks.
  • Developing ingestion, ETL & ELT process.
  • Synapse pipelines.
  • Working with Github branches.
  • Power BI basic.
  • Agile methodology (scrum/kanban).
  • Flexible working (23 days in office)


Requirements

  • Residence in Glasgow
  • Experience with Azure Synape

Benefits

  • Stable contract
  • Hybrid in Glasgow office 2 office days
  • Competitive salary

#LI-CM1

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