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Senior Data Engineer

Entain plc
City of London
1 week ago
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This role will suit an experienced Data and BI Engineer, with experience working for a Technology department and interested to use the latest cloud tech.

  • Design, code, deploy, and manage data cloud solutions
  • Automate data pipeline orchestration, scheduling and monitoring
  • Implement data security and access controls
  • Implement data governance frameworks
  • Optimize cloud resources for performance, scalability, and cost efficiency.
  • Provide ongoing operational support for analytics platforms in the cloud.
  • Troubleshoot and resolve issues related to infrastructure, performance, and availability.
  • Implement monitoring and alerting systems to proactively identify and address potential issues.
  • Respond to and resolve incidents, ensuring minimal impact on analytics operations.
  • Collaborate with data engineers, analysts, and other stakeholders to understand data requirements.
  • Work closely with cross-functional teams to ensure seamless integration of analytics solutions.
  • Implement and enforce security best practices for cloud-based analytics infrastructure.
  • Maintain comprehensive documentation for cloud infrastructure configurations, processes, and operational procedures


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