Data Architect

Formula Recruitment
London
4 days ago
Applications closed

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Data Architect (Hybrid) - Contract London, England, United Kingdom (Basé à London)

Data Architect

Salary:£80-£90,000 plus generous bonus & benefits package

Location:London, Hybrid (weekly onsite days)

Position:Permanent


Are you ready to join a leading organisation dedicated to creating experiences for customers across the globe? With an established history and a commitment to creativity and cutting-edge technology, they are seeking an experiencedData Architectto come in and design, build and enhance data products.


As a Data Architect, you will work alongside teams such as Product, Data Engineering/Analytics and Business Stakeholders to design data solutions that enable the business to analyse and report more accurately and lead to improved decision making.


Key Responsibilities as a Data Architect:


  • Create and update an architectural vision and roadmap for data products.
  • Define the structure, flow and integration of data products within the business.
  • Work with Product Managers to translate business requirements into technical solutions.
  • Leverage cloud services to build scalable data products.
  • Ensure event-driven architectures and microservices patterns are followed.
  • Ensure all data products adhere to governance, compliance and security standards.
  • Work with Data engineering/analytics teams to ensure products meet user needs.
  • Monitor the performance of data products and implement improvements as desired.


Qualifications and Attributes of a Data Architect:


  • Experienced in designing and implementing data architecture within complex organisations.
  • Expertise in modern data architectures I.E data lakes and warehouses.
  • Hands on experience with Databricks and Cloud services (Azure, GCP OR AWS).
  • Experience in using cloud-native services for data engineering and analytics.
  • Experience with distributed systems, serverless data pipelines, and big data technologies (e.g., Spark, Kafka).
  • Ability to define and enforce data governance standards.
  • Experience in providing architectural guidance, mentorship and leading cross-functional discussions to align on architectural decisisions.


This is an exceptional opportunity for a Data Architect to design and implement products that enable a business to achieve its strategic ambitions.


Unfortunately, due to the high volume of applications, not all applicants will receive feedback.

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