Senior Systems/Data Architect (Azure, Synapse)

TXP
Warwickshire
5 days ago
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Senior Systems Architect

Duration: Min 6 months

Rate: £800 to £900 Per Day - Inside IR35 via Umbrella

Location: Warwickshire - Hybrid Working options available

An accomplished, Midlands based Interim Senior Systems/Data Architect is required to support our leading financial services client's Datacentre Exit program, the Data Centre of Excellence and Data Engineering team.

The successful candidate will need to have a strong Senior Systems/Data Architect background, with proven experience leading on the designs for Azure based Data platforms (Azure Synapse highly desirable).

Data centre experience is also required.

Deliverables -

Deliverable 1: Support data engineering with any solutions design, HLD's needed for the long term and strategic solution move to Synapse.

Deliverable 2: To provide IT assurance of SDP changes & DCoE initiatives, supplier produced proposals, technical reporting, remediation approaches and designs.

Deliverable 3: To produce designs and other architectural artefacts as required to support delivery of SDP / DCoE projects.

Deliverable 4: To provide tech advice and guidance to the various projects and DCoE to ensure that they remain fully engaged with the wider architectural community and comply with process and governance requirements

Deliverable 5: To provide technical advice, guidance and support to the data engineering team and Architecture as required.

Deliverable 6: Produce necessary KDD's and HLD's and Solution Visions to enable the delivery of BODS decommissioning and DCX / DCoE.

If your profile demonstrates strong and recent experience in the above areas - please submit your application ASAP to Jackie Dean at TXP for consideration.

TXP takes great pride in representing socially responsible clients who not only prioritise diversity and inclusion but also actively combat social inequality. Together, we have the power to make a profound impact on fostering a more equitable and inclusive society. By working with us, you become part of a movement dedicated to promoting a diverse and inclusive workforce

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