Data Modeler

Confidential
London
2 months ago
Applications closed

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Role: Data Modeler Consultant

Location: London, UK

Type: Contract


Job Description:

  • Bachelor’s degree in Computer Science, Information Technology, or a related field (or equivalent experience).
  • Proven experience in data modeling for cloud-based environments, especially within Microsoft Azure.
  • Strong knowledge of Azure Synapse Analytics, Azure SQL Database, Azure Data Factory, Azure Data Lake, and related Azure data services.
  • Expertise in designing and optimizing relational and dimensional data models (star schema, snowflake schema).
  • Experience with ETL tools and data integration techniques.
  • Proficient in SQL and other data querying languages.
  • Understanding of data governance practices, data security, and best practices in data modeling.
  • Familiarity with DevOps practices and automation tools in Azure (such as Azure DevOps).
  • Excellent communication skills with the ability to work effectively with business and technical teams.


Preferred Qualifications:

  • Experience with NoSQL databases (e.g., Azure Cosmos DB) and big data technologies.
  • Familiarity with Power BI and other reporting/visualization tools.
  • Knowledge of Azure Machine Learning and Data Science workflows.
  • Azure certifications such as Microsoft Certified: Azure Data Engineer Associate or Azure Solutions Architect Expert.

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