Video analytics pipelines have steadily shifted to edge deployments to reduce bandwidth overheads and privacy violations, but in doing so, face an ever-growing resource tension. Most notably, edge-box GPUs lack the memory needed to concurrently house the growing number of (increasingly complex) models for real-time inference. Unfortunately, existing solutions that rely on time/space sharing of GPU resources are insufficient as the required swapping delays result in unacceptable frame drops and accuracy violations. We present model merging, a new memory management technique that exploits architectural similarities between edge vision models by judiciously sharing their layers (including weights) to reduce workload memory costs and swapping d...
The increasing demand for edge computing is leading to a rise in energy consumption from edge device...
Today's high resolution, high frame rate cameras in autonomous vehicles generate a large volume of d...
A rising research challenge is running costly machine learning (ML) networks locally on resource-con...
While using machine learning to analyze video data is seeing explosive growth, modern vision models ...
Edge computing is being widely used for video analytics. To alleviate the inherent tension between a...
As deep learning technology paves its way, real-world applications that make use of it become popula...
Analytical models enable architects to carry out early-stage design space exploration several orders...
This paper presents a novel adaptive object movement and motion tracking (AdaMM) framework in a hier...
Deep neural networks (DNNs) are becoming the core components of many applications running on edge de...
The last few years have brought advances in computer vision at an amazing pace, grounded on new find...
International audienceLive video analytics have become a key technology to support surveillance, sec...
Part 4: Memory System DesignInternational audienceWith the demand for utilizing Adaptive Vision Algo...
Convolutional neural networks (CNNs) have demonstrated encouraging results in image classification t...
Powered by deep learning, video analytic applications process millions of camera feeds in real-time ...
With the development of artificial intelligence (AI) techniques and the increasing popularity of cam...
The increasing demand for edge computing is leading to a rise in energy consumption from edge device...
Today's high resolution, high frame rate cameras in autonomous vehicles generate a large volume of d...
A rising research challenge is running costly machine learning (ML) networks locally on resource-con...
While using machine learning to analyze video data is seeing explosive growth, modern vision models ...
Edge computing is being widely used for video analytics. To alleviate the inherent tension between a...
As deep learning technology paves its way, real-world applications that make use of it become popula...
Analytical models enable architects to carry out early-stage design space exploration several orders...
This paper presents a novel adaptive object movement and motion tracking (AdaMM) framework in a hier...
Deep neural networks (DNNs) are becoming the core components of many applications running on edge de...
The last few years have brought advances in computer vision at an amazing pace, grounded on new find...
International audienceLive video analytics have become a key technology to support surveillance, sec...
Part 4: Memory System DesignInternational audienceWith the demand for utilizing Adaptive Vision Algo...
Convolutional neural networks (CNNs) have demonstrated encouraging results in image classification t...
Powered by deep learning, video analytic applications process millions of camera feeds in real-time ...
With the development of artificial intelligence (AI) techniques and the increasing popularity of cam...
The increasing demand for edge computing is leading to a rise in energy consumption from edge device...
Today's high resolution, high frame rate cameras in autonomous vehicles generate a large volume of d...
A rising research challenge is running costly machine learning (ML) networks locally on resource-con...