Head of Systems Architecture

La Fosse
Greater London
2 months ago
Applications closed

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Direct message the job poster from La Fosse

Architecture & Strategy - Senior Consultant

Head of Systems Architecture - Primarily Remote

La Fosse have partnered with a rapidly scaling firm in the industrial/manufacturing sector to help them to recruit a Head of Systems Architecture, to lead on the technical design of both the industrial and corporate systems for a greenfield project.

The role involves shaping the architecture for IT and OT systems, leading the technical implementation, seamless integration for large-scale data analysis. The ideal candidate will have experience in systems architecture design, including ERP, MES, and Industrial Control Systems, and a strong focus on cybersecurity.

Key Responsibilities:

  1. Develop and integrate IT and OT systems across cloud and on-prem platforms.
  2. Enhance manufacturing automation and supply chain efficiency.
  3. Ensure cybersecurity compliance (ISO27001, IEC62443, NIST).
  4. Support machine learning-ready architecture for data analytics.
  5. Collaborate cross-functionally to drive innovation and strategy.

Skills & Experience:

  1. Proven experience in systems architecture, integration, and automation.
  2. Expertise in cloud platforms, ERP, and industrial control systems.
  3. Strong knowledge of cybersecurity frameworks and best practices.
  4. Ability to lead cross-functional teams and drive innovation.

Please note - The client is unable to offer sponsorship for this position, so please only apply if you have right to work in the UK without a visa.

Seniority level

Mid-Senior level

Employment type

Full-time

Job function

Information Technology

Industries

Industrial Machinery Manufacturing, Manufacturing, and Electric Power Generation

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