GCP Data Engineer (Java, Spark, ETL)

Staffworx
Bristol
10 months ago
Applications closed

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  • Proficiency in programming languages such as Python, PySpark and Java
  • develop ETL processes for Data ingestion & preparation
  • SparkSQL
  • CloudRun, DataFlow, CloudStorage
  • GCP BigQuery
  • Google Cloud Platform Data Studio
  • Unix/Linux Platform
  • Version control tools (Git, GitHub), automated deployment tools
  • Google Cloud Platform services, Pub/Sub, BigQuery Streaming and related technologies.
  • Deep understanding of real-time data processing and event-driven architectures.
  • Familiarity with data orchestration tools Google Cloud Platform cloud composer.
  • Google Cloud Platform certification(s) is a strong advantage.
  • Develop, implement, and optimize real-time data processing workflows using Google Cloud Platform services such as Dataflow, Pub/Sub, and BigQuery Streaming.


6 months initial, likely long term extensions


This advert was posted by Staffworx Limited - a UK based recruitment consultancy supporting the global E-commerce, software & consulting sectors. Services advertised by Staffworx are those of an Agency and/or an Employment Business.

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