Design and implement end-to-end data architecture role-6months-Nottingham

Kirtana Consulting
Nottingham
2 months ago
Applications closed

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Kirtana consulting is looking for Design and implement end-to-end data architecture role for 6months rolling contract in Nottingham.

Job description:

Role Title: Senior Technology Architect

Minimum years of experience: 8 to 10 years

Design and implement end-to-end data architecture for cloud-based analytics platforms.

Conduct current state assessments and define future-state architectures for clients.

Lead data modernization and digital transformation initiatives.

Develop data models, data lakes, and data pipelines for structured and unstructured data.

Ensure data governance, security, and compliance across all data assets.

Collaborate with cross-functional teams including data engineers, analysts, and business stakeholders.

Evaluate and recommend data management tools, platforms, and technologies.

Drive data integration from multiple sources and ensure high data quality.

Lead design review workshops, create technical documentation, and present solutions to stakeholders.

Support pre-sales activities, including proposal development and client presentations.

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