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Data Architect- Senior Manager

PwC UK
Manchester
1 week ago
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Data Architect - Senior Manager

PwC UK, Manchester, England, United Kingdom

Overview

We are seeking a highly experienced and strategic Data Architect to lead and optimise our data architecture initiatives, focusing on enhancing our industry presence within the insurance sector. This role will require you to apply your extensive experience to design, implement, and govern scalable, high-performance data solutions that meet the needs of our clients.

Your expertise will foster collaboration between technical and business stakeholders, ensuring data strategies are aligned with the overall business objectives and industry best practices. You will play a crucial role in driving innovation and improving data‑driven decision‑making processes within the organisation and client implementations.

Key Responsibilities
  • Develop and execute comprehensive data strategies that align with business goals, focusing on the design and maintenance of scalable data architectures.
  • Implement industry‑leading data governance practices to ensure data quality, integrity, and security.
  • Design solution architectures for data lakes, warehouses, and mesh frameworks, promoting seamless data access and integration.
  • Utilise cutting‑edge technologies such as Databricks, Snowflake, Data Lake, Data Warehouse and Lakehouse to build effective data infrastructure.
  • Advocate for the adoption of data mesh principles, enhancing data accessibility and flexibility across the global organisation.
  • Leverage expertise in SQL and database management to optimise database performance and support scalable data operations.
  • Apply your knowledge of the insurance industry to drive data initiatives that enhance operational efficiency and regulatory compliance.
  • Expert knowledge of AWS or Azure technologies.
  • Work closely with clients to understand their data requirements and provide strategic insights and solutions tailored to the insurance domain.
  • Foster cross‑functional partnerships with departments such as sales, operations, finance, underwriting, and actuarial teams.
  • Translate complex data concepts into actionable insights, ensuring alignment between technical architectures and business objectives.
  • Stay current with emerging technologies and industry trends, driving continuous improvement of the data architecture.
  • Promote a culture of innovation, best practices, and a collaborative team environment.
Skills & Experience
  • Advanced experience as a Data Architect or a similar role with specialised experience in the insurance industry.
  • Proven track record of developing and implementing successful data strategies within large, complex organisations.
  • Strong background in SQL, data solutions, and solution architecture for data frameworks such as data lakes and warehouses.
  • Exceptional leadership, communication, and interpersonal skills.
  • Expertise in the wealth sector and experience with technologies such as Alaiddin or Guidewire is advantageous.
  • Bachelor’s or Master’s degree in Computer Science, Information Technology, or a related field.
  • Expert knowledge of AWS or Azure technologies.
Seniority Level

Mid‑Senior level

Employment Type

Full‑time

Job Function

Engineering and Information Technology

Industries

Accounting


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