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or digital circuits -Experience integrating analog and digital (FPGA, microcontroller) circuits -Evidence of a strong desire to teach students the practical aspects of electrical and computer engineering
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platforms: VME, PLC, µTCA, FPGA. Knowledge of current government cyber security orders and best practices for industrial control systems cyber security. Special Requirements: Physical Requirements: Work
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. Experience with algorithm design, embedded DSP development, multithreaded programming, GPU development, SDR hardware platforms, FPGA development, and/or Linux-based designed tools is desired. Representative
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of biological brains. Spiking neural networks (SNNs) can offer increased processing speed and reduced power consumption, especially when implemented on dedicated hardware (neuromorphic chips or FPGAs). Standard
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Communications protocols OSI stack,UDP/TCP/IP Familiarity with wireless specifications such as cellular(4G/5G)/WiFi (802.11) FPGA development Microcontroller and Digital Signal Processor (DSP) development MATLAB
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/linux shell. Must include familiarity with a terminal-based text editor. One year or more of experience with firmware development with FPGAs. Experience working with bit-level operations on files(e.g
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-on experience in one or more of the following technology areas: hardware/software co-design, performance optimization with heterogeneous and alternative computing systems (CPU/GPU/NPU/etc.), FPGA design, high
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-power edge AI, microcontroller architectures, FPGA-based systems and VLSI, low-power and resource-constrained systems and analogue and mixed-signal systems. Publish high-quality outputs, pursue external
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. Strong communication skills in English. Proven experience in USRP, FPGA, NS-3, and NSF PAWR platforms. Preferred Qualifications Previous experience with DoD sponsored research projects. Relevant practical
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provide a performance or efficiency advantage, and determine scenarios where conventional AI accelerators (such as embedded GPUs or FPGA-based accelerators) remain more appropriate due to data