Databricks Solutions Architect

London
5 days ago
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Databricks, Spark, PySpark, Unity Catalog, Databricks Certified Data Engineer Professional, Solutions Architecture
A leading Databricks Partner Consultancy have need of strong Databricks Solutions Architects with excellent Databricks knowledge and skills to work on an exciting project for a blue-chip customer.
In an initial 6 month contract, wou will be tasked with working on a new Data Platform design & build on Databricks, Cluster Optimisation etc
Key skills and experience for this role includes;

  • Expert experience with Data Engineering, Data Platforms and Analytics and Consulting
  • Multiple projects delivered with hands-on experience in development on databricks
  • Strong knowledge of Cloud ecosystems (AWS, Azure, GCP) with deep experience in at least one
  • Deep experience with distributed computing with Spark with knowledge of Spark runtime internals
  • Familiarity with CI/CD for production deployments and ideally Databricks Asset Bundles
  • Current knowledge across the breadth of Databricks product and platform features
  • Familiarity with optimisations for performance and scalability
  • Databricks Certifications are preffered
    This role will be an initial 6 month contract, outside of IR35, that is likely to be extended. Rates will be paid at circa £600 - £700 per day, depending on skills and experience.
    For more information on this excellent role, please respond with an up to date CV via the links provided and conntact Joe Ingleby at Primus Connect

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