Data Science Data Science Data Architect

Reed.co.uk
London
18 hours ago
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Data & AI Architect - Hybrid (London) - Azure - Fabric - Modern Data Architectureup to £110,000 If you're looking for a senior role where you can influence how Data & AI is shaped and delivered within a fast-growing Microsoft partner, this is an opportunity that truly stands out. The organisation is investing heavily in modern cloud, analytics and AI and they're building a team where experienced voices can make a real difference.
With modern tools, varied client work and a people-focused approach, this is a place where a strong Data & AI leader can have a meaningful impact while helping scale a rapidly expanding data function.
Running gap-analysis sessions, contributing to the sales cycle and helping strengthen the organisation's data-led presales capability.
Microsoft Data & AI Ecosystem

The full modern Microsoft data stack: Fabric, Azure Data Factory, Synapse, Azure SQL, Azure Storage and Power BI.
Advanced AI technologies including machine learning, generative AI, cognitive services, and responsible AI frameworks.
A heavy focus on Power Platform and Dataverse, as all customer data interacts with these technologies.
Designing scalable enterprise architectures, not ad-hoc integrations.
Modern Data Architecture

Lakehouse, data mesh, ELT/ETL patterns, MDM and dimensional modelling.
Steering the "doers" in the team-architecting the solution, not building it yourself.
Mentoring and guiding a growing data team.
Helping establish a maturing Data & AI division set for significant expansion over the coming years.
Creating reusable accelerators and assets alongside the Product team.
Health & wellness benefits covering medical, dental and eye care, plus health cashback.
~ Car allowance inclusive of salary
~ Cycle to Work scheme.
~ 24-hour Employee Assistance Programme.
~ Gym and retail discounts.
~ Expected to attend London-based client sessions once per week.

Strong expertise across Azure data and AI services, including Fabric and ADF.
Demonstrable experience architecting complex, enterprise data and AI platforms.
Knowledge of Dynamics 365, DevOps pipelines and Agile delivery.
Experience with ML, generative AI and cognitive services.
Expertise in lakehouse, data mesh, ELT/ETL, MDM and modelling techniques.
Willingness to travel for client sessions (primarily London).
If you're passionate about leading modern Data & AI architecture, enjoy shaping presales strategy, and want to play a key role in scaling a fast-growing division, this is an opportunity you won't want to miss.

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