Senior Data Architect

Tenth Revolution Group
Manchester
4 days ago
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My client, a leading data and AI consultancy, is expanding its architecture practice and is seeking an accomplished Data Architect to design and oversee modern data platforms built on Databricks. You will play a key role in shaping cutting‑edge lakehouse solutions that support enterprise analytics, machine learning, and scalable data engineering across a wide range of industries.

This is a high-impact role where you’ll collaborate closely with senior stakeholders, translate complex requirements into elegant architectural designs, and guide delivery teams to ensure solutions are reliable, secure, and future‑ready.

Salary and Benefits
  • Competitive salary of £110k - £125k (Dependent on seniority grade qualification)
  • 10% bonus
  • Hybrid working (1-2 days per week in Manchester office)
  • 25 days annual leave plus bank holidays
  • Private medical
  • Company pension scheme
  • And many more
Role and Responsibilities
  • Designing and implementing Databricks Lakehouse architectures that support ingestion, transformation, governance, and analytics at scale.
  • Advising clients on modern data platform best practices, architectural patterns, and strategic roadmaps.
  • Leading architectural engagements and ensuring technical quality across design, build, performance optimisation, and cost efficiency.
  • Collaborating with business and technical stakeholders to capture requirements and shape robust end‑to‑end solutions.
  • Implementing security and governance frameworks, including RBAC, IAM, encryption, lineage, and cataloging.
  • Helping teams adopt CI/CD, DevOps, and automation practices using tools like GitHub Actions, Azure DevOps, and Databricks Repos.
  • Troubleshooting and optimising Databricks workloads, improving reliability, scalability, and cloud resource consumption.
  • Contributing to internal architecture frameworks, reusable patterns, proof‑of‑concepts, and pre‑sales activities.
Required Experience & Skills
  • Deep understanding of Lakehouse Architecture, Delta Lake, and supporting ML/AI workloads.
  • Proven background in data modelling (3NF, Kimball, Data Vault) across both structured and unstructured sources.
  • Hands‑on expertise with Spark, Delta Lake, PySpark, and Databricks Workflows or Delta Live Tables/Lakeflow Spark Declarative Pipelines.
  • Confident coding abilities in Python, Scala, or SQL.
  • Experience with at least one major cloud platform (Azure, AWS, or GCP), including storage, compute, and networking considerations for Databricks deployments.
  • Knowledge of Databricks security, governance, and workspace configuration.


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