Principal Firmware Engineer

Morson Talent Careers
Luton
1 year ago
Applications closed

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Role:Principal Firmware Engineer

Location:Luton

Duration:12-month contract

Pay rate:£65.00 PH PAYE or £87.70 PH Umbrella

Overview

As a Firmware engineer will work with the support of experts in their field, using world-class facilities to deliver Firmware for complex digital systems that meet challenging future customer requirements.

Responsibilities

  • Design tools such as Xilinx, TCL, Verilog, System Verilog and UVM
  • FPGA architectures such as Xilinx 7. Xilinx UltraScale; Intel (Altera) or Microsemi (Actel).
  • Fast interfaces such as PCIe, Ethernet, and JESD is also required.
  • Auto-generated code using model driven engineering using Matlab and Simulink tools
  • Derivation of detailed Firmware requirements and architecture from system requirements
  • A structured approach to firmware design (RTCA DO-254 or similar)
  • Cryptography and anti-tamper techniques
  • Artificial Intelligence including machine learning and genetic algorithms
  • Electronics test methods and equipment
  • Good verbal and written communication skills
  • Working in mixed discipline teams


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