FPGA Engineer

CV-Library
London
11 months ago
Applications closed
Posted
23 May 2025 (11 months ago)

FPGA Engineers - SC Clerarable

Firmware/FPGA Engineers - Luton - Bristol or Basildon

4 days on site hybrid

These are ongoing contract positions, 12 months initially (Inside of IR35).

Duties:

Designing, developing, and delivering firmware solutions.

Responsibilities will include:

Concept development for complex functions and systems.
FPGA design and analysis.
Production of material for design reviews.
Development of test planning, integration, and design verification.
Ensuring that all firmware designs follow the firmware processes.Skills needed:

Experience in design techniques using VHDL.
Experience in verification techniques using either VHDL or System Verilog / UVM.
Experience in specifying timing and area constraints for efficient FPGA place and route.
Ability to analyse system-level requirements and derive detailed firmware requirements.
Degree (BSc, BEng, MEng, MSc, PhD, EngD) in Electrical & Electronic Engineering or similar engineering/science course.People Source Consulting Ltd is acting as an Employment Business in relation to this vacancy. People Source specialise in technology recruitment across niche markets including Information Technology, Digital TV, Digital Marketing, Project and Programme Management, SAP, Digital and Consumer Electronics, Air Traffic Management, Management Consultancy, Business Intelligence, Manufacturing, Telecoms, Public Sector, Healthcare, Finance and Oil & Gas

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