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IoT Engineer

360 Technology
Greater London
8 months ago
Applications closed

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Position: IoT Engineer

Location: Eagle Cliff, England

Rate: Get the Best

Experience: 3-5 Years

Employment Type: Full-time

Notice Period: Immediate / 10 to 15 days

Job Description:

We are seeking a skilledIoT Engineerwith 3-5 years of experience innetworking,data center management, andIoTtechnologies. The ideal candidate will be responsible for designing, deploying, and maintainingInternet of Things (IoT)systems and infrastructure, ensuring smooth integration with existing IT systems and optimizing the performance of connected devices. This role requires a strong understanding of IoT frameworks, networking, and data center operations.

Key Responsibilities:

  • Design, develop, and maintainIoT solutionsthat integrate with existing IT infrastructure.
  • Install, configure, and troubleshootIoT devicesand networking systems, ensuring seamless connectivity.
  • Overseenetworkingtasks such as setting up and maintainingLAN/WANsystems for IoT devices.
  • Manage and optimizedata centerinfrastructure to support IoT applications and large-scale data processing.
  • Ensure secure communication between IoT devices and data centers, implementingsecurityprotocols for data integrity and device safety.
  • Collaborate with cross-functional teams to integrate IoT devices into broader operational and business processes.
  • Monitor and maintain IoT systems, including diagnosing and resolving technical issues to minimize downtime.
  • Ensure compliance withindustry standardsandbest practicesfor IoT implementation and data security.

Mandatory Skills:

  • Strong knowledge ofnetworkingprotocols and architecture (LAN, WAN, TCP/IP) relevant to IoT devices.
  • Hands-on experience withIoT platforms, device management, and connectivity solutions.
  • Proficiency in managing and maintainingdata centerinfrastructure supporting IoT applications.
  • Expertise inIoT communication protocols(e.g., MQTT, CoAP) and cloud integration.
  • Experience in deploying and managing IoT systems across multiple environments.
  • Solid understanding ofcybersecuritybest practices for IoT systems, ensuring data privacy and network protection.
  • Strongproblem-solvingskills with the ability to troubleshoot IoT and networking issues effectively.

Preferred Qualifications:

  • Experience withcloud computingplatforms (e.g., AWS, Azure) for IoT applications.
  • Familiarity withEdge Computingtechnologies for IoT deployment.
  • Certifications inNetworking,IoT, orData Centeroperations (e.g., CCNA, CompTIA Network+, IoT certifications).
  • Knowledge ofdata analyticsandmachine learningintegration for IoT data processing.
  • Prior experience in industries likemanufacturing,utilities, orsmart citieswhere IoT plays a key role.

If you’re interested, please share your CV at: []

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