네트워크

전기전자

VLSI & System Lab.

 

Deep Neural Network Accelerator Design

  • In-memory-computing for data-centric neural network accelerator
  • Approximate computing techniques for low power consumption
  • Zero-aware hardware architecture (zero weight from pruning-training, zero input from ReLU-inference)
  • Various implementation techniques based on domain change
 

Digital Signal Processors

  • Efficient interface design of embedded memory for low power image processing (MPEG/H.264) applications
  • Memory based computation of cryptography processor and physical unclonable function (PUF)
 

Embedded Memory Design

  • Emerging memory (STT-MRAM, SOT-MRAM, Domain-Wall Memory) design
  • Memory (SRAM/eDRAM/CAM) customization in application-specific purpose
  • Memory yield estimation modeling

국가

대한민국

소속기관

숙명여자대학교 (학교)

연락처

책임자

최웅 woongchoi@sookmyung.ac.kr

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