A comprehensive benchmark of deep learning libraries on mobile devices
Deploying deep learning (DL) on mobile devices has been a notable trend in recent years.
To support fast inference of on-device DL, DL libraries play a critical role as algorithms and …
To support fast inference of on-device DL, DL libraries play a critical role as algorithms and …
A comprehensive deep learning library benchmark and optimal library selection
Deploying deep learning (DL) on mobile devices has been a notable trend in recent years.
To support fast inference of on-device DL, DL libraries play a critical role as algorithms and …
To support fast inference of on-device DL, DL libraries play a critical role as algorithms and …
Smart at what cost? characterising mobile deep neural networks in the wild
With smartphones' omnipresence in people's pockets, Machine Learning (ML) on mobile is
gaining traction as devices become more powerful. With applications ranging from visual …
gaining traction as devices become more powerful. With applications ranging from visual …
On-device federated learning with flower
Federated Learning (FL) allows edge devices to collaboratively learn a shared prediction
model while keeping their training data on the device, thereby decoupling the ability to do …
model while keeping their training data on the device, thereby decoupling the ability to do …
Multi-exit semantic segmentation networks
Semantic segmentation arises as the backbone of many vision systems, spanning from self-
driving cars and robot navigation to augmented reality and teleconferencing. Frequently …
driving cars and robot navigation to augmented reality and teleconferencing. Frequently …
Edgefm: Leveraging foundation model for open-set learning on the edge
Deep Learning (DL) models have been widely deployed on IoT devices with the help of
advancements in DL algorithms and chips. However, the limited resources of edge devices …
advancements in DL algorithms and chips. However, the limited resources of edge devices …
Re-thinking computation offload for efficient inference on IoT devices with duty-cycled radios
While a number of recent efforts have explored the use of" cloud offload" to enable deep
learning on IoT devices, these have not assumed the use of duty-cycled radios like BLE. We …
learning on IoT devices, these have not assumed the use of duty-cycled radios like BLE. We …
On the impact of deep neural network calibration on adaptive edge offloading for image classification
Edge devices can offload deep neural network (DNN) inference to the cloud to overcome
energy or processing constraints. Nevertheless, offloading adds communication delay …
energy or processing constraints. Nevertheless, offloading adds communication delay …
[HTML][HTML] Semi-HFL: semi-supervised federated learning for heterogeneous devices
Z Zhong, J Wang, W Bao, J Zhou, X Zhu… - Complex & Intelligent …, 2023 - Springer
In the vanilla federated learning (FL) framework, the central server distributes a globally
unified model to each client and uses labeled samples for training. However, in most cases …
unified model to each client and uses labeled samples for training. However, in most cases …
Federated learning for inference at anytime and anywhere
Federated learning has been predominantly concerned with collaborative training of deep
networks from scratch, and especially the many challenges that arise, such as …
networks from scratch, and especially the many challenges that arise, such as …