Search Results for author: Ghasem Pasandi

Found 5 papers, 1 papers with code

Deep-PowerX: A Deep Learning-Based Framework for Low-Power Approximate Logic Synthesis

1 code implementation3 Jul 2020 Ghasem Pasandi, Mackenzie Peterson, Moises Herrera, Shahin Nazarian, Massoud Pedram

This paper aims at integrating three powerful techniques namely Deep Learning, Approximate Computing, and Low Power Design into a strategy to optimize logic at the synthesis level.

Approximate Logic Synthesis: A Reinforcement Learning-Based Technology Mapping Approach

no code implementations1 Feb 2019 Ghasem Pasandi, Shahin Nazarian, Massoud Pedram

Approximate Logic Synthesis (ALS) is the process of synthesizing and mapping a given Boolean network to a library of logic cells so that the magnitude/rate of error between outputs of the approximate and initial (exact) Boolean netlists is bounded from above by a predetermined total error threshold.

Hardware Architecture

NullaNet: Training Deep Neural Networks for Reduced-Memory-Access Inference

no code implementations23 Jul 2018 Mahdi Nazemi, Ghasem Pasandi, Massoud Pedram

Deep neural networks have been successfully deployed in a wide variety of applications including computer vision and speech recognition.

speech-recognition Speech Recognition

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