See all roles

Embedded AI System Engineer

Work from home Full-time role Hiring

Embedded AI Engineer – Virtualization & Edge Systems Position Summary The Embedded AI Engineer is responsible for designing, developing, and optimizing AI-enabled embedded platforms leveraging virtualization technologies such as the Xen Project hypervisor for secure, scalable, and real-time edge computing environments. This role focuses on integrating AI workloads with embedded operating systems, RTOS platforms, and virtualized infrastructure for automotive, robotics, industrial, telecom, and edge AI applications. The engineer will work across embedded Linux, hypervisors, hardware acceleration, AI frameworks, and real-time systems to deliver high-performance, safety-focused, and isolated compute environments for next-generation intelligent devices. Key Responsibilities ● Design and develop embedded AI platforms utilizing virtualization and hypervisor technologies including Xen-based architectures. ● Develop and optimize AI/ML workloads for embedded and edge computing environments. ● Integrate Linux, RTOS, and mixed-criticality workloads within virtualized embedded systems. ● Configure and optimize Xen Hypervisor environments for ARM, x86, and embedded SoC platforms. ● Support AI acceleration technologies including GPUs, NPUs, FPGAs, and hardware-assisted virtualization. ● Implement secure workload isolation, resource partitioning, and fault-tolerant embedded architectures. ● Develop low-level software components including drivers, BSPs, device tree configurations, and bootloader integrations. ● Collaborate with hardware, platform, networking, and AI software teams to enable scalable embedded AI deployments. ● Optimize system performance, boot time, memory allocation, interrupt latency, and real-time responsiveness. ● Support containerization, VM orchestration, and edge deployment automation for embedded systems. ● Participate in debugging, profiling, benchmarking, and performance tuning activities across embedded platforms. ● Contribute to open-source initiatives and virtualization-related engineering activities where applicable. Technical Areas of Focus ● Embedded Linux and RTOS integration ● Xen Hypervisor and virtualization technologies ● ARM Cortex-A/R architectures and embedded SoCs ● Real-time systems and deterministic performance optimization ● AI/ML inferencing at the edge ● GPU/NPU/FPGA acceleration ● Embedded networking and security isolation ● Functional safety and secure compute architectures ● Edge AI orchestration and containerized workloads ● Automotive, industrial, robotics, and telecom embedded platforms Scope & Complexity ● Works on moderately complex to highly complex embedded AI and virtualization projects. ● Designs solutions supporting mixed-criticality and multi-OS embedded environments. ● Requires strong collaboration across embedded software, hardware, infrastructure, and AI engineering teams. ● Participates in architecture reviews, performance optimization, and platform design decisions. ● Supports both proof-of-concept and production-grade embedded AI deployments. Requirements ● Bachelor’s or Master’s degree in Computer Engineering, Electrical Engineering, Computer Science, or related field. ● 3+ years of experience in embedded systems, Linux platform engineering, or virtualization technologies. ● Strong experience with C/C++, Python, and embedded software development. ● Familiarity with Xen Hypervisor, KVM, QEMU, or similar virtualization technologies preferred. ● Experience with ARM-based embedded platforms and Linux kernel concepts. ● Knowledge of AI/ML frameworks such as TensorFlow, PyTorch, ONNX, or TensorRT. ● Understanding of embedded networking, memory management, interrupt handling, and low-level system architecture. ● Experience with Yocto, Buildroot, Docker, Kubernetes at the edge, or embedded CI/CD workflows is a plus. ● Familiarity with real-time systems, functional safety, or automotive embedded environments preferred. ● Strong debugging, problem-solving, and performance optimization skills. Preferred Qualifications ● Experience with embedded AI inferencing optimization and edge deployment architectures. ● Exposure to automotive hypervisors, industrial automation, robotics, or telecom edge systems. ● Understanding of virtualization security, hardware partitioning, and trusted execution environments. ● Experience contributing to open-source embedded or virtualization projects. ● Familiarity with safety standards such as ISO 26262 or IEC 61508 is a plus. Apply To This Job

You might like

Territory Managers - Heart Failure (West Midlands and North UK)

Work from home Full-time role

Senior Business Analyst - SAP

Work from home Full-time role

INGÉNIEUR TECHNICO-COMMERCIAL (Zone Lorraine - Champagne - Bourgogne)

Work from home Full-time role

Cardiovascular Disease Specialist – Southern California District

Work from home Full-time role

Licensed Certified Social Worker - Internal Medicine Clinics

Work from home Full-time role

APTPUO - Fall 2026 - ENG1120 AJ00

Work from home Full-time role

Sr Construction Project Manager - FAA Experience Desired

Work from home Full-time role

Field Case Manager - Windsor, ON

Work from home Full-time role

Licensed Certified Social Worker - Internal Medicine Clinics

Work from home Full-time role

Outside Sales Representative - Scranton

Work from home Full-time role

Experienced Customer Service Representative – Remote Part-Time Opportunity for Teenagers

Work from home Full-time role

Mortgage Underwriter

Work from home Full-time role

Experienced Data Entry Operator/Specialist – Driving Efficiency and Accuracy in arenaflex's Data Management

Work from home Full-time role

Tech Lead, Web Core Product & Chrome Extension - Tacoma, WA, USA

Work from home Full-time role

Experienced Full Stack Data Entry Specialist – Customer Service and Product Development

Work from home Full-time role

Manager, Search & AI Visibility

Work from home Full-time role

Technical Project Manager - Infrastructure and Capacity

Work from home Full-time role

Experienced Customer Service Representative – Work from Home Opportunities with arenaflex

Work from home Full-time role

Bioinformatics Analyst | TELECOMMUTE |

Work from home Full-time role

Experienced Full Stack Customer Service Representative – Deliver Exceptional Experiences from Anywhere with arenaflex

Work from home Full-time role