Senior Data Architect

F
Reading
4 days ago
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Role Overview

We have an exciting opportunity for a Data Architect to join our growing Data & AI team. The successful applicant will work alongside our architects and consultants to deliver high-quality data solutions to help our customers become more successful in becoming a data-guided organisation.


The Data Architect is responsible for planning, designing and delivering elegant solutions using Microsoft Azure data services. The Data Architect engages in the full project lifecycle from presales through to operational handover and is accountable for the technical delivery of projects.


Responsibilities

  • Designing cloud-based data platforms and data solutions using a wide range of Azure Services including Azure Databricks, Azure SQL Database, Azure Data Lake/Blob Storage, Microsoft Fabric, Azure Synapse Analytics, Azure Cosmos DB, Azure Data Factory, Power BI and cloud-native integration technologies
  • Building conceptual, logical and physical data models optimised for analytical use cases
  • Contribute to definition of data architecture framework, standards and principles
  • Mapping data from source to target and establishing current & future state based on business requirements
  • Provide technical leadership and mentoring to team members
  • Responsible for the technical readiness, scalability, & quality assurance of final deliverables
  • Effectively translate and accurately communicate across technical and non-technical stakeholders as well as facilitate discussions within a multidisciplinary team
  • Prepare technical documentation to a high standard

About you

  • Extensive modern data platform expertise , including Data Warehouses, Data Lakes, Dimensional Modelling, and both streaming and batch processing approaches.
  • Strong grounding in data strategy and management, covering people/process/technology pillars, Data Governance, Data Quality, Master & Reference Data Management, Metadata Management, and Security & Compliance.
  • Deep experience with Data Warehouse methodologies and strong SQL capability, complemented by solid experience in Python/ PySpark .
  • Broad hands-on experience across Azure Data Services, including Azure Databricks, Azure SQL Database, Data Lake/Blob Storage, Microsoft Fabric, Synapse Analytics, Cosmos DB, Azure Data Factory, and Power BI.
  • Strong understanding of supporting technologies, including Azure infrastructure (Subscriptions, Resource Groups, VNets , Kubernetes, IAM), modern reporting platforms (dashboarding, advanced analytics, ML/AI), and Infrastructure-as-Code tools such as Terraform or Bicep, plus good knowledge of Azure DevOps Pipelines.
  • Excellent communication and stakeholder engagement, with the ability to simplify complex concepts and manage peer/senior stakeholders, including executive sponsors.

Knowledge and experience of the following would be advantageous

  • Architecture: Agentic AI, enterprise architecture frameworks, and Apache Spark.
  • Data & Platforms: Enterprise data integration, Microsoft BI stack, and AI/ML platforms on Azure/Databricks/Fabric.
  • Cloud & DevOps: AWS/GCP and CI/CD tools ( BitBucket , Jenkins).
  • Certifications: Azure Architect Expert and/or TOGAF.

What we look for in our people

  • Strong alignment with FSP values and ethos
  • Commitment to teamwork, quality and mutual success
  • Proactivity with an ability to operate with pace and energy
  • Strong communication and interpersonal skills
  • Dedication to excellence and quality

Who are FSP?

FSP is a leading consultancy specialising in Digital, Security and AI solutions. Our success is enabled by our unwavering commitment to excellence, our people centric culture alongside best-in-class operations, ensuring impactful and sustainable outcomes for our clients.


As a long standing and highly accredited Microsoft Partner, with extensive solution designations, we partner with clients across a range of commercial sectors, enabling digital transformation, innovation and robust cyber security.


We navigate the complexities of data sensitivity, confidentiality, governance and compliance. We blend strategic insight, depth of technical expertise , delivery and operational excellence to meet the specific requirements outlined.


We take a collaborative, one team approach with our clients to drive sustainable change, providing outstanding client experience and delivering exceptional results that are aligned with business priorities.


Our commitment to security and quality is reinforced by our ISO27001 and ISO9001 certifications (UKAS), as well as our CREST approved penetration testing and SOC capabilities. Additionally, we are an IASME Cyber Essentials Certification Body and Cyber Essentials Plus certified.


Find out more about our accolades here: https://fsp.co/about-fsp/


Why work for FSP?

At FSP, we are committed to providing:



  • A collaborative and supportive environment in which you can grow and develop your career
  • The tools and opportunity to do work you can be proud of
  • A chance to work alongside some of the best people in the industry, who always seek to share their knowledge and experience
  • Hybrid working – we empower you to make smart choices about when and where to work to achieve great results
  • Industry leading coaching and mentoring
  • Competitive salary and an excellent benefits package

Equal and Fair Opportunity

FSP is an equal opportunity employer and we welcome applications from all suitable candidates. We consider all applicants for employment regardless of age, disability, sexual orientation, gender identity, family or parental status, race, colour, nationality, ethnic or national origin, religion or belief.


Research suggests that applicants from underrepresented groups are less likely to apply for roles if they do not precisely meet requirements, or if they felt there were clear barriers as to who should apply. If you are excited about a potential role with us but are concerned that you may not be a perfect fit, please do apply, as you may be the ideal candidate for this role or for a different vacancy within FSP.


We endeavour to always provide fair opportunity for applicants to showcase themselves in the best way possible during any interviews or meetings. If you require any adjustments for a call or in-person meeting, please let us know.


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