Senior Data Engineer

Harvey Nash
Leeds
1 month ago
Applications closed

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In this Role, you will

  • Platform owner for Bank`s Cloud Data Platform / digital experience layer and Enterprise Data Lake (EDL).
  • Define, develop and embed Cloudera / CDP best practices, standard methodology and controls to ensure and maintain optimal platform performance and workload management.
  • Leverage the latest capabilities from an evolving technology stack - NiFi/Kafka, Hive/Impala, Ranger/Atlas, Hbase/Phonix, Terraform/IaC.
  • Guiding the implementation of solutions on CDP in the cloud (AWS / Azure).
  • Leverage inherent cloud capabilities to protect and scale the Cloud Data Platform.
  • Protect platform cost management and drive cost efficiencies.
  • Ensure ongoing ITSCM data integrity and drive stability / improvements.
  • Vendor Governance - drive weekly and monthly governance for batch stability, issue resolution and consistent performance, ensuring batch completion within agreed OLA`s.
  • Support platform upgrades and architectural design efficiencies.


What will make you stand out?

You have 10+ years of experience in similar data role Cloudera (CDP) product knowledge and skills. You have exposure to Teradata, Hadoop, Terraform IaC and Control-M / Tableau integration. You have Cloudera platform management experience and its integration with underlying cloud infrastructure (AWS / Azure / GCP).

You have a proven track record implementing enterprise data infrastructure solutions working with multiple partners and project delivery teams. You are adaptable, bias for action, result driven and focused on execution excellence. You have the ability to take a lead role and take ownership of complex integration deliveries.


Note - Only British Passport/ILR/Irish/Stamp4 holder can apply for this role.

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