Constructing Energy-efficient Mixed-precision Neural Networks through Principal Component Analysis for Edge Intelligence

4 Jun 2019Indranil ChakrabortyDeboleena RoyIsha GargAayush AnkitKaushik Roy

The `Internet of Things' has brought increased demand for AI-based edge computing in applications ranging from healthcare monitoring systems to autonomous vehicles. Quantization is a powerful tool to address the growing computational cost of such applications, and yields significant compression over full-precision networks... (read more)

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