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individually, make a real difference. The Role To provide FPGA and VHDL programming and technician support to the laser payload being developed under the ARIA Photonics Project in Surrey Space Centre. ARIA
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. Specific requirements of the candidate Applicants should have a strong background in cryptography, FPGA design, or embedded systems. Experience with hardware design (e.g., Verilog/VHDL), post-quantum
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implementation, particularly for cryptographic applications. Proficiency in Verilog or VHDL and experience with FPGA design tools such as Xilinx Vivado or Quartus Prime. Knowledge of quantum-safe cryptographic
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applications. 3- Reconfigurable AI-Embedded Systems – Develop adaptive FPGA/ASIC architectures that dynamically reconfigure based on AI workloads, optimising performance, energy efficiency, and functionality. AI
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(VHSIC) hardware description language (VHDL), and/or digital system design using field-programmable gate array (FPGA). You must have a first degree and a PhD in Electronic Engineering, Electrical
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the use of the VHDL and Verilog languages and experience with the use of FPGA HDL synthesis and implementation tools, in particular, with the AMD/Xilinx Vivado tool (knowledge of INTEL/Quartus is beneficial
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couples fast scintillators with silicon photomultipliers and a new ASIC design. The project will be split between Manchester, where simulation work will be performed using Geant4, whilst the experimental
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In-Memory Computing (IMC) ASIC prototype in nano-scale advanced CMOS technology based on spiking neural networks (SNNs) for both training and inference of of LLMs. You will also have the opportunity
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and designs specifically for approximate computing. By developing secure, resource-efficient approximate circuits and systems on FPGA, the research will focus on safeguarding neural network models and
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required. Candidates should possess skills in handling delicate samples. Experience of working in spectroscopy instrumentation is desirable, as well as experience in programming FPGA to implement PID