Bigger, Faster and Better AI: Synopsys NPUs - SemiWiki
FPGA Conference 2021: Breaking the TOPS ceiling with sparse neural networks - Xilinx & Numenta
A 161.6 TOPS/W Mixed-mode Computing-in-Memory Processor for Energy-Efficient Mixed-Precision Deep Neural Networks (유회준교수 연구실) - KAIST 전기 및 전자공학부
As AI chips improve, is TOPS the best way to measure their power? | VentureBeat
Synopsys ARC NPX6 NPU Family for AI / Neural Processing
Essential AI Terms: Tips for Keeping Up with Industrial DX | CONTEC
AI Max Multi-Core | Cadence
FPGA Conference 2021: Breaking the TOPS ceiling with sparse neural networks - Xilinx & Numenta
A 0.32–128 TOPS, Scalable Multi-Chip-Module-Based Deep Neural Network Inference Accelerator With Ground-Referenced Signaling in 16 nm | Research
Measuring NPU Performance - Edge AI and Vision Alliance
A 17–95.6 TOPS/W Deep Learning Inference Accelerator with Per-Vector Scaled 4-bit Quantization for Transformers in 5nm | Research
VLSI 2018] A 4M Synapses integrated Analog ReRAM based 66.5 TOPS/W Neural- Network Processor with Cell Current Controlled Writing and Flexible Network Architecture
PDF] A 3.43TOPS/W 48.9pJ/pixel 50.1nJ/classification 512 analog neuron sparse coding neural network with on-chip learning and classification in 40nm CMOS | Semantic Scholar
Atomic, Molecular, and Optical Physics | Department of Physics | City University of Hong Kong
Looking Beyond TOPS/W: How To Really Compare NPU Performance
Rockchip RK3399Pro SoC Integrates a 2.4 TOPS Neural Network Processing Unit for Artificial Intelligence Applications - CNX Software
Rockchip's AI neural network processing unit hits up to 2.4 TOPs