Dynamic Spike Bundling for Energy-Efficient Spiking Neural NetworksSarada KrithivasanSanchari Senet al.2019ISLPED 2019Conference paper
BiScaled-DNN: Quantizing long-tailed datastructures with two scale factors for deep neural networksShubham JainSwagath Venkataramaniet al.2019DAC 2019Conference paper
SparCE: Sparsity Aware General-Purpose Core Extensions to Accelerate Deep Neural NetworksSanchari SenShubham Jainet al.2019IEEE TCPaper
A Compiler for Deep Neural Network Accelerators to Generate Optimized Code for a Wide Range of Data Parameters from a Hand-crafted Computation KernelEri OgawaKazuaki Ishizakiet al.2019COOL CHIPS 2019Conference paper
Data Subsetting: A Data-Centric Approach to Approximate ComputingYounghoon KimSwagath Venkataramaniet al.2019DATE 2019Conference paper
A Scalable Multi-TeraOPS Core for AI Training and InferenceSunil ShuklaBruce Fleischeret al.2018IEEE SSC-LPaper
A Scalable Multi-TeraOPS Deep Learning Processor Core for AI Trainina and InferenceBruce FleischerSunil Shuklaet al.2018VLSI Circuits 2018Conference paper
DyHard-DNN: Even more DNN acceleration with dynamic hardware reconfigurationMateja PuticAlper Buyuktosunogluet al.2018DAC 2018Conference paper
Compensated-DNN: Energy efficient low-precision deep neural networks by compensating quantization errorsShubham JainSwagath Venkataramaniet al.2018DAC 2018Conference paper
Exploiting approximate computing for deep learning accelerationChia-Yu ChenJungwook Choiet al.2018DATE 2018Conference paper
24 May 2021US11016840Low-overhead Error Prediction And Preemption In Deep Neural Network Using Apriori Network Statistics
16 Nov 2020US10838868Programmable Data Delivery By Load And Store Agents On A Processing Chip Interfacing With On-chip Memory Components And Directing Data To External Memory Components
17 Feb 2020US10565285Processor And Memory Transparent Convolutional Lowering And Auto Zero Padding For Deep Neural Network Implementations