ETL Data Engineer - Talend - 100% remote - Outside IR35

Berkeley Square IT
Coventry
4 days ago
Applications closed

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ETL Data Engineer - Talend - 100% remote - Outside IR35

My client is seeking an experienced data engineer with experience in using Talend for ETL processes and also for Data Quality.

This role is 100% remote and sits Outside of IR35

Must have technologies
  • Experience in an ETL toolset (Talend, Pentaho, SAS DI, Informatica etc)
  • Snowflake
  • Experience in a Database (Oracle, RDS, Redshift, MySQL, Hadoop, Postgres, etc)
  • Experience in data modelling (Data Warehouse, Marts)
  • Job Scheduling toolset (Job Scheduler, TWS, etc)
  • Programming and scripting languages (PL/SQL, SQL, Unix, Java, Python, Hive, HiveQL, HDFS, Impala, etc)
Good to have
  • Data virtualisation tools (Denodo)
  • Reporting (Pentaho BA, Power BI, Business Objects)
  • Data Analytics toolset (SAS Viya)
  • Cloud (AWS, Azure, GCP)
  • ALM Tooling (Jira, Confluence, Bitbucket)
  • CI/CD toolsets (Gitlab, Jenkins, Ansible)

CVs to Nick ASAP for immediate review

Required Skills
  • Informatica
  • Data Quality Objects
  • CVS
  • Hadoop
  • SAS
  • Ansible
  • Bitbucket
  • Gitlab
  • PL/SQL
  • Data Analytics
  • Confluence
  • Unix
  • Power BI
  • Jenkins
  • Analytics
  • Programming
  • Oracle
  • JIRA
  • MySQL
  • Scheduling
  • Java
  • Python
  • SQL
  • Business


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