Embedded Systems Lead (SW/HW) - Up to £85,000

Humand Talent
Woking
1 year ago
Applications closed

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How about each decision you make helpingshape the growthandtrajectoryof the business?


Do you want to work in afast pacedandinnovative environment?


How about working with the mostcutting-edge technologyandleading a teamof specialists?


So what about the client?

  • Sustainability built into their corporate strategy
  • Major Clients Globally
  • Cutting edge Technology
  • Global Presence


What’s in it for you, as the Embedded Engineering Lead (HW/SW):

  • Salary up to £85k mark (Flexible)
  • Profit Share Scheme
  • Work on a global scale


What will you be doing as a Embedded Engineering Lead?


  • Lead and Inspire a Talented Team:Oversee a diverse group of engineers, from embedded systems to firmware specialists, guiding them in designing top-tier hardware for advanced products.


  • Drive Product Roadmaps:Collaborate with senior management and product teams to shape project priorities, ensuring on-time and innovative product deliveries.


  • Hands-On Technical Contributions: Apply your expertise in embedded Linux, from boot chain development to managing Linux kernel drivers and distribution building.


  • Ensure System Reliability: Work with hardware and network technologies, from 4G/5G modems to Wi-Fi 6, driving performance and integration in challenging environments.


So, if you’re looking for anew challengeat a well established tech driven company, who are ready totake things to the next level,please don’t hesitate to apply!


Keywords: Systems Engineering, Software Engineering, Hardware Engineering, Embedded Systems, Firmware Development, System Integration, Network Protocols, Cyber-Physical Systems, Real-time Operating Systems (RTOS), Sensor Networks, Microcontroller/Microprocessor Systems, Cloud Computing, Edge Computing, Wireless Communication, Device Management, Requirements Engineering, Testing and Validation, Reliability Engineering, Scalability, Security Engineering, Data Analytics, Machine Learning, Agile Development, Prototyping, Simulation and Modeling, Power Management, Signal Processing.


Additional keywords: IoT Engineering, Embedded Software, Hardware Design, IoT Solutions, IoT Architect, IoT Developer, Firmware Engineer, Network Engineering, Cybersecurity, IoT Integration, IoT Prototyping, IoT Testing, IoT Deployment, IoT Infrastructure, IoT Applications, IoT Security, IoT Standards, IoT Compliance.

Humand Talent Solutions and their clients and associates do not discriminate on any of the following and any terminology that suggests that should be made aware to our business ASAP.


Categories include:

·gender

·race

·religion or belief

·disability

·age

·pregnancy and maternity

·marriage and civil partnership

·sexual orientation

·gender reassignment

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