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Prudent Technologies and Consulting, Inc.

IoT Enterprise Architect

Hybrid

Coventry, United Kingdom

Freelance

04-04-2025

Job Specifications

Note: Candidate must be available to work onsite in Coventry, UK, three times a week.

Overview:
Client is seeking an experienced Enterprise Architect for their IoT Secure Edge solution. The successful candidate will be responsible for the design and development of Client’s future IoT Edge architecture, focusing on security and performance enhancements.

Key Responsibilities:
Lead the design and development of IoT Secure Edge solution.
Collaborate with cross-functional teams to align technical strategy with business goals.
Ensure the solution meets security, performance, and scalability requirements.

Qualifications:
Proven experience as an Enterprise Architect in IoT and security domains.
Strong expertise in secure edge computing and IoT solutions.
Ability to work independently and manage responsibilities in a contractor role.

About the Company

For over 26+ years Prudent Technologies & Consulting has been helping customers secure the technical and functional resources needed to deliver mission-critical IT & Business initiatives. What started as an IT Consulting company providing premium IT staffing services on a contract, contract-to-hire, and direct hire basis in the US, has grown to include full service IT Consulting specialty practices in three key technology verticals: Data Sciences, Cybersecurity, and Enterprise CRM. Prudent’s specialty practices are built on... Know more

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