Electronics, Free Full-Text

$ 6.00

5 (66) In stock

Modern massively-parallel Graphics Processing Units (GPUs) and Machine Learning (ML) frameworks enable neural network implementations of unprecedented performance and sophistication. However, state-of-the-art GPU hardware platforms are extremely power-hungry, while microprocessors cannot achieve the performance requirements. Biologically-inspired Spiking Neural Networks (SNN) have inherent characteristics that lead to lower power consumption. We thus present a bit-serial SNN-like hardware architecture. By using counters, comparators, and an indexing scheme, the design effectively implements the sum-of-products inherent in neurons. In addition, we experimented with various strength-reduction methods to lower neural network resource usage. The proposed Spiking Hybrid Network (SHiNe), validated on an FPGA, has been found to achieve reasonable performance with a low resource utilization, with some trade-off with respect to hardware throughput and signal representation.

PDF) Circuit Fundamentals and Basic Electronics

2022 Electronics Free Drop-Off Day and Paper Shredding - Leeds Alabama

Electronics, Free Full-Text, tua serie bot

F-Scan GO System In-Shoe Pressure Measurement Foot Function Gait

Electronic Shop Advertisement Poster Templates

Electronics, Free Full-Text, mod player action optimization

Electronics, Free Full-Text

Buy an Infiniium EXR-Series Oscilloscope, Get a Free Memory

Electronic Circuit Font by OWPictures · Creative Fabrica

How To Avoid Bucket Error in The OFS or IRIS API Response, PDF, Cyberspace

Electronics Terms and Vocabulary (Free Spanish Lessons for Kids)

Hosmart Full Duplex Wireless Intercom System Real-Time, Two -Way

Related products

CLB - Brawl Stars on X: New Cartoon Spike skin with Cosmetics

Spike do Like

Like a Dragon: Infinite Wealth Difficulty Spike and When to Expect It

Julia (Cowboy Bebop), Love Interest Wiki

CHASETHEMONEY – Like Spike Lyrics