Data Architect

SoCode Limited
Cambridge
2 days ago
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We’re working with an organisation looking to bring in a Technical Architect with a strong data focus to help shape and guide the strategy of a growing data platform environment.
This role is ideal for someone who enjoys sitting close to the technology while influencing the bigger architectural direction. You’ll play a key part in defining how the organisation approaches modern data platforms, bringing structure, governance, and strategic oversight to an environment where multiple teams are developing solutions.
You’ll work closely with platform engineers, solution architects, and product owners, helping ensure that new solutions align with a clear and scalable platform strategy.
What You’ll Be Doing
Owning and shaping the data platform strategy
Providing architectural guidance and governance across data initiatives
Working closely with engineering and product teams to ensure solutions align with the wider platform vision
Supporting the design of modern enterprise data architectures
Helping bring clarity and structure to a growing and evolving data ecosystem
Influencing technical decisions while staying close to the implementationTechnology Environment The platform landscape includes technologies and concepts such as:

Databricks
Data Fabric / Data Mesh principles
Hive / HiveQL
Event-driven data architectures
Enterprise data platformsExperience with these technologies, or the ability to understand and guide ...

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