Enterprise Data Architect (Basé à London)

Jobleads
London
9 months ago
Applications closed

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Job Description

Infused Solutions is recruiting an Enterprise Data Architect for a rapidly growing consultancy. This leadership role, based in London, offers a hybrid working model for flexibility and collaboration.

Role Overview:Design and deliver innovative data & AI solutions globally for the organisation.

Key Responsibilities:

  • Design scalable, secure data architectures.
  • Develop data models, integration strategies, and governance frameworks.
  • Collaborate with teams to deliver robust data solutions.
  • Experience working in an organisation undergoing digital transformation.
  • Evaluate and recommend platforms, tools, and technologies.
  • Ensure compliance with data security, privacy, and governance standards.
  • Lead and mentor junior team members.
  • Stay updated on data architecture trends.

Key Skills and Experience:

  • Proven experience as an Enterprise Data Architect working at a global level.
  • Expertise in data modeling, warehousing, and ETL/ELT processes.
  • Knowledge of the latest data tools.
  • Proficiency with cloud platforms (AWS, Azure, Google Cloud).
  • Strong Business architecture experience.
  • Strong knowledge of data governance and compliance.
  • Excellent communication skills.
  • Experience leading and mentoring teams.

For immediate interview consideration, please contact Ahsan Iqbal.


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