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Solution Architect (Databricks)

City of London
9 months ago
Applications closed

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Location: London or Manchester (Hybrid)
Salary: £120,000 - £130,000 + Bonus & Benefits
Industry: Tech Consultancy | FTSE 250 Clients

We're hiring a Databricks Solution Architect for a leading consultancy working with FTSE 250 clients. You'll design and deliver scalable data platforms using Databricks and cloud technologies - we are searching for a true Consultant who can help deliver commercial value for their clients.

Responsibilities:

Architect and implement Databricks solutions for enterprise clients
Define best practices for data engineering, AI/ML, and analytics
Work with Azure, AWS, or GCP to ensure seamless cloud integration
Guide and mentor technical teams on best practicesRequirements:

Strong experience as a Solution Architect in Databricks and cloud platforms
Expertise in Apache Spark, Delta Lake, and data lakehouse architectures
Hands-on with Azure, AWS, or GCP (Azure preferred)
Excellent client-facing and stakeholder management skillsWhy Join?

Work on enterprise-scale data transformation projects
Be part of a fast-growing consultancy with a strong reputation
Competitive salary, flexible working, and career progression

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