Data Architect (DV)

Anson McCade
Bristol
18 hours ago
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Data Architect (DV) £Up to £100,000 GBP Transport Allowance Onsite WORKING Location: London; Manchester; Bristol, Manchester, North West - United Kingdom Type: Permanent The Role - Data Architect (DV Cleared) Join a consultancy recognised as a UK Great Place to Work year after year - a distinction that reflects its commitment to inclusion, technical excellence, and delivering transformative outcomes across complex, high-impact programmes. Our client is a globally respected digital, data and technology consultancy, combining strategy, innovation, and advanced engineering to solve some of the most challenging business problems. With over 4,000 experts across sectors including health, government, defence, financial services, and transport, the client delivers end-to-end data and AI transformations at scale. As a Data Architect , you will define and drive the blueprint for complex data platforms, helping clients translate strategic business needs into scalable, resilient, and secure solutions. You will work across cloud and multi-platform architectures, ensuring data governance, security, observability, and cost efficiency are embedded into every design. The Data Architect role is based in a hybrid model, with a minimum of two days per week in the office or on client site, aligned to programme requirements. Key Responsibilities - Data Architect As a Data Architect , you will: Define end-to-end data architecture for complex programmes, including ingestion, orchestration, governance, security, cost-optimisation, and observability Architect and implement multi-cloud, data lake, and data warehouse platforms Design scalable data pipelines, integration workflows, and analytics solutions Apply ML/AI frameworks, semantic models, and BI/visualisation tools to solve client challenges Operate as a strategic and technical leader across client engagements, guiding engineering teams and shaping delivery Translate business requirements into technical solutions that are secure, resilient, and high-performing Collaborate with cross-disciplinary teams, mentoring junior colleagues and championing best practice Contribute to business growth through bid support, opportunity identification, and thought leadership Establish architectural vision and ensure adherence to delivery methodologies across projects The Data Architect will operate at the intersection of strategy, technology, and client delivery, ensuring that data solutions are both innovative and operationally robust. Key Requirements You must hold Active DV Clearance (UK Developed Vetting) Proven experience as a Data Architect leading complex data and AI transformations Hands-on experience designing scalable, multi-cloud data platforms Strong understanding of data architecture methodologies, governance, and security best practices Proficiency with cloud platforms (AWS, Azure, GCP) and data technologies such as Snowflake, Databricks, or equivalent Experience with programming/scripting, data integration, ETL pipelines, and orchestration Knowledge of ML/AI frameworks, BI/analytics platforms, and semantic data modelling Strong client-facing skills with the ability to translate business needs into technical solutions Leadership experience mentoring teams, promoting best practice, and driving delivery excellence Analytical thinking and problem-solving skills in complex, multi-stakeholder environments Even if you don't meet every requirement, applications are encouraged - the client hires across multiple levels within the Data Architect capability. You Will Gain Exposure With Large-scale, multi-cloud data and AI transformation programmes Diverse projects across public and private sector clients Cross-disciplinary collaboration with strategists, engineers, designers, and technologists Architecting resilient, secure, and scalable platforms using the latest tools and technologies Structured learning budgets, certifications, and continuous professional development A collaborative, inclusive, and supportive technical community A clearly defined technical career track for ambitious Data Architects Why Join? Join a consultancy consistently recognised as a top employer in the UK Work as a Data Architect shaping strategic data platforms and AI solutions Hybrid working model with flexibility aligned to client needs Access to private healthcare, generous pension, and performance bonus Share ownership opportunities Strong commitment to inclusion, equality, and diverse career progression Operate at the intersection of technical authority, client impact, and strategic leadership This Data Architect opportunity offers the chance to influence large-scale data and AI transformations while developing deep technical expertise within a consultancy that combines engineering rigour with purpose-led, high-impact work. Interested? Apply Now! Or reach out directly to Aaron O'Neill | LinkedIn Reference: AON/AMC/PGDataArchitect aaonc272c101-f45c-4783-b4a0-50ad222b87c0

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