Engineering Manager, Data Engineering

JSS Search
London
3 days ago
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Data Architecture & Engineering Director Up to £95,000 + Benefits

London based - Hybrid Model



We’re looking for an experienced Data Architecture & Engineering Director to join a fast-growing digital consulting team, helping ambitious organisations unlock value through data, analytics, and cloud technologies.



You’ll play a pivotal role in leading data architecture and engineering engagements, working closely with clients to design and deliver scalable, cloud-based data solutions that support analytics, AI, and business insight. Alongside delivery, you’ll help build a strong pipeline of work and coach a growing team of data professionals.



This is a senior leadership role for someone who combines technical depth with commercial acumen, strategic thinking, and a collaborative leadership style.



Leading the design and delivery of modern, scalable data architectures and engineering solutions

Shaping and delivering cloud-based data platforms to support analytics, reporting, and AI use cases

Acting as a trusted advisor to senior client stakeholders, translating complex data concepts into clear business value

Building and maintaining a strong pipeline of Data, Analytics, and AI opportunities

Coaching, mentoring, and developing data engineers and architects within a collaborative team environment

Staying current with emerging data and cloud technologies and applying them pragmatically to client challenges



Significant experience in data architecture and engineering, including building modern data platforms

Strong experience with Microsoft Azure and related data and analytics services

Strong programming capability in Python and SQL

Experience leading teams and projects, with excellent coaching and mentoring skills

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