IP KVM Engineer/Developer - Embedded Systems

Cambridge
1 month ago
Applications closed

Related Jobs

View all jobs

Security Install Engineer

Senior Infrastructure Engineer

Senior Software Developer - 5G Core

MSI Engineer

Electronics Engineer, 1st Class / 2.i Degree

Security Service Engineer - South West

IP KVM Engineer/Developer - Embedded Systems (£60,000 - £70,000 + Excellent Benefits)

Job Description

Excellent opportunity for an experienced IP KVM Engineer to join our Client's growing team. You will have a deep understanding of embedded systems development including design and implementation of IP-based KVM (Keyboard, Video, Mouse) functionality for embedded hardware platforms. You will work on developing low-level software for video capture, compression, streaming, and input redirection to enable remote system access and management.

This role is ideal for someone who is passionate about systems-level programming, embedded Linux, and network-enabled remote control solutions.

Key Responsibilities

Design and implement IP KVM features in embedded environments, including video capture, encoding, and remote user input redirection.
Develop and maintain firmware and drivers for video input devices, USB HID emulation, and network transport protocols.
Work with BMC (Baseboard Management Controller) platforms to integrate IP KVM functionality into server and edge devices.
Interface with Linux framebuffer, DRM, or other video subsystems to capture and stream screen output.
Ensure robust and secure communication over IP using encryption and authentication mechanisms.
Debug and profile low-level system issues, working closely with hardware and software teams.Required Qualifications

Bachelor's or Master's Degree in Electrical Engineering, Computer Science, or a related field.
3+ years of experience in embedded systems development, particularly in low-level C/C++ programming.
Solid understanding of USB HID device emulation, input redirection, and peripheral control.
Proficient in embedded Linux development and working with device trees, kernel modules, and video drivers.
Familiarity with networking protocols (TCP/IP, RTP, RTSP, TLS) in embedded environments

Get the latest insights and jobs direct. Sign up for our newsletter.

By subscribing you agree to our privacy policy and terms of service.

Industry Insights

Discover insightful articles, industry insights, expert tips, and curated resources.

Quantum-Enhanced AI at the Edge: The Future of Decentralised Intelligence

As the modern world pushes towards instant data processing and real-time analytics, edge computing has emerged as a compelling solution. Instead of funnelling every piece of data to centralised data centres or the cloud, edge computing brings computation closer to the data source—reducing latency, lowering bandwidth costs, and enabling on-the-spot decision-making. From IoT sensors in smart cities to autonomous vehicles and remote industrial sites, the edge has quickly become a linchpin of digital transformation. Simultaneously, Artificial Intelligence (AI) has shown explosive growth, driving breakthroughs in natural language processing, computer vision, and advanced analytics. Cloud-based AI solutions have served organisations well, but in scenarios demanding ultra-low latency or local autonomy, the cloud’s round-trip time becomes a bottleneck. Hence, edge AI—embedding AI models at or near the point of data collection—promises a new wave of hyper-responsive applications and decentralised intelligence. Yet, as we continue pushing the boundaries of data volume, complexity, and speed, even advanced edge solutions sometimes struggle with the exponential computational requirements of AI. This is where quantum computing enters the picture, potentially offering new methods to tackle intractable problems in optimisation, high-dimensional data analysis, and machine learning. While quantum hardware remains in its early stages, the prospect of integrating quantum algorithms into AI workflows at the edge is generating significant excitement. In this article, we’ll explore: The current state and challenges of edge computing. A concise overview of quantum computing and why it matters. The concept of quantum-enhanced AI—especially in distributed or decentralised environments. Potential real-world applications at the intersection of quantum, AI, and edge computing. Key job roles and skill sets emerging in this new frontier. Considerations around security, ethics, and hardware constraints as we move towards quantum solutions at the edge. If you’re a professional in edge computing, an AI enthusiast, or simply curious about what the future of decentralised tech might look like, read on. The fusion of quantum computing and AI at the network edge could redefine how we collect, process, and learn from data in real time.

Edge Computing Jobs at Newly Funded UK Start-ups: Q3 2025 Investment Tracker

Edge computing has emerged as a revolutionary paradigm for processing data closer to where it’s generated—think IoT devices, sensors in remote locations, autonomous vehicles, and more. By reducing latency and bandwidth usage, edge computing enables real-time insights and responsive applications. In the UK, a growing ecosystem of innovators is capitalising on edge technology, buoyed by increased venture capital, academic prowess, and government-backed programmes that stimulate tech development. In this Q3 2025 Investment Tracker, we’ll explore newly funded UK start-ups blazing a trail in edge computing. We’ll also highlight the wealth of job opportunities these investments create for software engineers, DevOps specialists, data scientists, and other tech professionals looking to carve out a career at the cutting edge—pun fully intended.

Portfolio Projects That Get You Hired for Edge Computing Jobs (With Real GitHub Examples)

Edge computing is transforming how data is collected, processed, and acted upon—often in real time and close to where data is generated. From Internet of Things (IoT) devices to 5G networks and industrial automation, edge computing unlocks new possibilities for low-latency analytics, intelligent decision-making, and resource optimisation. With the proliferation of edge devices and the need for distributed computing architectures, demand for skilled edge computing professionals continues to rise. If you want to stand out in this exciting field, you need more than a great CV: you need a well-curated portfolio demonstrating your hands-on capabilities. This guide will show you how to build that portfolio, including: Why a dedicated edge computing portfolio is crucial. How to choose projects aligned with your target edge roles. Real GitHub examples that illustrate best practices. Actionable project ideas for edge deployments and data processing. Tips on presenting your portfolio so recruiters and hiring managers see your value instantly. When you’re ready, don’t forget to upload your CV on EdgeComputingJobs.co.uk so potential employers can find your newly polished portfolio. Let’s dive in!