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Data Architect

Asset Resourcing Limited
Manchester
3 weeks ago
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Remote Data Architect sought by a well-established company in their industry; our client is seeking an adept professional to spearhead strategic leadership and technical expertise within their data solutions landscape, focussed on cloud data platforms, but including IoT analytics, data integration, and migration projects. This unique opportunity is offered on a remote-first basis, but with an open invitation to their headquarters any time.

Role Responsibilities:

The Data Architect will be pivotal in shaping the approach to designing and developing data solutions using cloud technologies such as AWS and Azure. This position involves:

- Leading the design and implementation of innovative cloud data platforms.

- Setting standards for detailed solutions documentation and data governance.

- Promoting Agile delivery methods across projects.

- Managing and mentoring senior technical staff, offering guidance and support.

- Overseeing data integration and migration projects to ensure seamless execution.

About You:

The ideal candidate for the Data Architect role will possess a blend of technical prowess and leadership skills. The desired qualifications and skills include:

- Extensive experience in designing cloud data platforms using Azure, AWS, or exceptional on-premise design expertise.

- At least 5 years in data engineering or business intelligenc...

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