Data Solution Architect

Leeds
1 week ago
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Data Solution Architect

A dynamic and innovative Cloud & Data consultancy that is at the forefront of digital transformation are looking for an experienced Data Architect to join their forever growing Professional Services team. Their mission is to empower businesses with cutting-edge data solutions that drive efficiency, innovation, and growth.

With a strong focus on customer satisfaction, they deliver tailored solutions that meet the unique needs of their broad range of enterprise scale clients. Their team of experts is dedicated to staying ahead of industry trends and leveraging the latest technologies to provide exceptional service.

Key Responsibilities:

Design and implement scalable, secure, and high-performance data solutions on the Azure platform.
Collaborate with clients to understand their data requirements and deliver tailored solutions.
Lead data architecture projects, ensuring best practices and standards are followed.
Integrate data from various sources to create comprehensive data solutions.
Provide technical expertise and guidance to development teams.
Ideal Candidate:

Deep knowledge and significant experience in delivering Big Data architecture and design solutions, specifically Azure
Extensive experience with Azure data services (e.g., Azure SQL, Azure Data Lake, Azure Databricks).
Strong understanding of data architecture principles and best practices.
Proficient in data integration and ETL processes.
Excellent problem-solving skills and ability to work independently.
Strong communication and collaboration skills.
An understanding of and/or experience in Infrastructure as Code (IaC), CI/CD (ADO) and cloud services (IaaS, SaaS, PaaS).would be desirable.

Remote based.

Paying up to 90k + benefits.

Must be eligible to work in the UK

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