Cloud Data Architect, Azure, PaaS, OO, ETL, Microsoft, Mainly Remote

Manchester Square
1 month ago
Applications closed

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Cloud Data Architect, Azure, PaaS, OO, ETL, Microsoft, Mainly Remote

Cloud Data Architect, Azure, PaaS, OO, ETL, Microsoft, Mainly Remote

AI Cloud Data Architect

AI Cloud Data Architect

AI Cloud Data Architect

AI Cloud Data Architect

Cloud Data Architect, Azure, PaaS, OO, ETL, Microsoft, Mainly Remote

Cloud Data Architect required to work for a fast growing business based in Central London. However, this will be practically remote – there will be some travel to the Central London offices, and as it is a global role, there will be some global travel from time to time. However, ALL travel and accommodation expenses will be paid.

We need an experienced Cloud Data Architect, who is well rounded, highly experienced and has good, solid Microsoft Stack skills. Read on for more details…

Key responsibilities:

  • Architecting and designing solutions in a cloud native data environment

  • Guide and coach the development teams and data engineers around architectural data topics

  • Adhere and contribute to internal Secure Development policies and play a proactive role in making sure application are secure by design

  • Adhere to company Change Management procedures

  • Adhere and contribute to the company architecture standards and guidelines

  • Communicating effectively with the Enterprise Architect, Product Manager, Senior manager Technology Services, Portfolio managers, Global IT and other key stakeholders

  • Support Level 3 investigations

  • Provide leadership to other team members working in an Agile environment

    Experience required:

  • Ideally a degree in Computer Science or similar (this is not essential)

  • Expert skill level with circa 3-4 years' experience with the following technologies:

    • Azure PaaS Data Services

    • Object Oriented Analysis and Design

    • CI/CD and source control

    • ETL techniques and principles

    • Data modelling

    • Master Data Management

    • Data Visualization

  • Experienced in designing and implementing data platform, reporting and analytics solutions in the Microsoft Azure ecosystem

  • Familiarity with Agile Project Management and methodologies desired

  • Able to exercise independent judgement and take action on it

  • Excellent analytical and creative problem-solving skills

  • Excellent listening, written, and oral communication skills

  • Strong relationship, interpersonal, and team skills

  • Highly self-motivated and directed

  • Experience working in a team-oriented, collaborative environment

    This is a great opportunity and salary is dependent upon experience. Apply now for more details

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