Search Results for author: Lizy K. John

Found 5 papers, 1 papers with code

HLSDataset: Open-Source Dataset for ML-Assisted FPGA Design using High Level Synthesis

1 code implementation17 Feb 2023 Zhigang Wei, Aman Arora, Ruihao Li, Lizy K. John

Machine Learning (ML) has been widely adopted in design exploration using high level synthesis (HLS) to give a better and faster performance, and resource and power estimation at very early stages for FPGA-based design.

Weightless Neural Networks for Efficient Edge Inference

no code implementations3 Mar 2022 Zachary Susskind, Aman Arora, Igor Dantas Dos Santos Miranda, Luis Armando Quintanilla Villon, Rafael Fontella Katopodis, Leandro Santiago de Araujo, Diego Leonel Cadette Dutra, Priscila Machado Vieira Lima, Felipe Maia Galvao Franca, Mauricio Breternitz Jr., Lizy K. John

We then demonstrate the viability of the BTHOWeN architecture by presenting an FPGA-based accelerator, and compare its latency and resource usage against similarly accurate quantized DNN accelerators, including Multi-Layer Perceptron (MLP) and convolutional models.

Edge-computing

Neuro-Symbolic AI: An Emerging Class of AI Workloads and their Characterization

no code implementations13 Sep 2021 Zachary Susskind, Bryce Arden, Lizy K. John, Patrick Stockton, Eugene B. John

We find that symbolic models have less potential parallelism than traditional neural models due to complex control flow and low-operational-intensity operations, such as scalar multiplication and tensor addition.

Virtual-Link: A Scalable Multi-Producer, Multi-Consumer Message Queue Architecture for Cross-Core Communication

no code implementations9 Dec 2020 Qinzhe Wu, Jonathan Beard, Ashen Ekanayake, Andreas Gerstlauer, Lizy K. John

Cross-core communication is increasingly a bottleneck as the number of processing elements increase per system-on-chip.

Hardware Architecture

Demystifying the MLPerf Benchmark Suite

no code implementations24 Aug 2019 Snehil Verma, Qinzhe Wu, Bagus Hanindhito, Gunjan Jha, Eugene B. John, Ramesh Radhakrishnan, Lizy K. John

We present a study on its characteristics and how the MLPerf benchmarks differ from some of the previous deep learning benchmarks like DAWNBench and DeepBench.

BIG-bench Machine Learning Scheduling

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