Senior FPGA Engineer

Platform Recruitment
London
11 months ago
Applications closed

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Senior FPGA Engineer| £80-110k| Maidenhead |Remote


My client's innovative technologies have facilitated the deployment of high-speed internet and robust communication networks for remote and underserved areas, fostering digital inclusion and supporting the growth of smart cities and IoT applications.


Due to the launch of a cutting-edge, and innovative project, they are looking for a Senior FPGA Engineer to join their DSP department.


Main duties:

+ Full FPGA development cycle involvement, from design to testing

+ Cross functional collaboration with a multi-disciplinary team

+ Technical liaison, and maintenance and design specification of documentation


Skills and Experience Required:

+ Deep understanding of FPGA fundamentals, fabric, and clocking resources

+ Proficiency in Verilog/System Verilog

+ Experience with RTL-level design

+ Previous telecommunications experience

+ Knowledge of 4G or 5G standards

+ DSP algorithm design & implementation experience


Bonus:

+ Experience with scripting languages (e.g. Python, Shell, Perl)

+ Experience with high speed interfaces (PCIe, 10Ge, JESD)


What you’ll get:

+ Very competitive salary with a budget around £80-120k

+ Healthcare & pension scheme

+ 25 day’s holiday + bank holidays

+ Opportunity to work remotely with occasional office visits

+ A team of elite multi-disciplinary engineers with long-tenures at the company

+ Flat organisational structure, meaning your ideas get heard and there’s very little office politics

+ Chance to travel the world to sites & offices abroad


If you feel like you have the right skills and experience for this role, then please apply with a copy of your updated CV.


Keywords: electronic design, hardware design, firmware, FPGA, Verilog, SystemVerilog, telecommunications, DSP, digital signal processing, digital signal processors, MATLAB, Python, C, C++, Shell, Pearl, PCle, 10GE, JESD, 5G, 4G, wireless telecommunications, field programmable gamma array, clocking, senior, RTL design, RTL-level design, fabric, algorithm, networking, network, FPGA Engineer


Platform Recruitment: Platform recruitment covers a wide range of IT and Engineering positions including C++, Embedded, Electronics, Mechanical, DevOps, Cloud, Support, Project Management, Technical Sales and more.

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