Video caching, analytics, and delivery at the wireless edge: A survey and future directions

B Jedari, G Premsankar, G Illahi… - … Surveys & Tutorials, 2020 - ieeexplore.ieee.org
Future wireless networks will provide high-bandwidth, low-latency, and ultra-reliable Internet
connectivity to meet the requirements of different applications, ranging from virtual reality to …

AI on the edge: a comprehensive review

W Su, L Li, F Liu, M He, X Liang - Artificial Intelligence Review, 2022 - Springer
With the advent of the Internet of Everything, the proliferation of data has put a huge burden
on data centers and network bandwidth. To ease the pressure on data centers, edge …

Elf: accelerate high-resolution mobile deep vision with content-aware parallel offloading

W Zhang, Z He, L Liu, Z Jia, Y Liu, M Gruteser… - Proceedings of the 27th …, 2021 - dl.acm.org
As mobile devices continuously generate streams of images and videos, a new class of
mobile deep vision applications are rapidly emerging, which usually involve running deep …

Ekya: Continuous learning of video analytics models on edge compute servers

R Bhardwaj, Z Xia, G Ananthanarayanan… - … USENIX Symposium on …, 2022 - usenix.org
Video analytics applications use edge compute servers for processing videos. Compressed
models that are deployed on the edge servers for inference suffer from data drift where the …

Tabi: An efficient multi-level inference system for large language models

Y Wang, K Chen, H Tan, K Guo - Proceedings of the Eighteenth …, 2023 - dl.acm.org
Today's trend of building ever larger language models (LLMs), while pushing the
performance of natural language processing, adds significant latency to the inference stage …

Band: coordinated multi-dnn inference on heterogeneous mobile processors

JS Jeong, J Lee, D Kim, C Jeon, C Jeong… - Proceedings of the 20th …, 2022 - dl.acm.org
The rapid development of deep learning algorithms, as well as innovative hardware
advancements, encourages multi-DNN workloads such as augmented reality applications …

Vabus: Edge-cloud real-time video analytics via background understanding and subtraction

H Wang, Q Li, H Sun, Z Chen, Y Hao… - IEEE Journal on …, 2022 - ieeexplore.ieee.org
Edge-cloud collaborative video analytics is transforming the way data is being handled,
processed, and transmitted from the ever-growing number of surveillance cameras around …

Edgeduet: Tiling small object detection for edge assisted autonomous mobile vision

Z Yang, X Wang, J Wu, Y Zhao, Q Ma… - IEEE/ACM …, 2022 - ieeexplore.ieee.org
Accurate, real-time object detection on resource-constrained devices enables autonomous
mobile vision applications such as traffic surveillance, situational awareness, and safety …

Enabling edge-cloud video analytics for robotics applications

Y Wang, W Wang, D Liu, X Jin, J Jiang… - IEEE Transactions on …, 2022 - ieeexplore.ieee.org
Emerging deep learning-based video analytics tasks demand computation-intensive neural
networks and powerful computing resources on the cloud to achieve high accuracy. Due to …

A survey on deep learning for challenged networks: Applications and trends

K Bochie, MS Gilbert, L Gantert, MSM Barbosa… - Journal of Network and …, 2021 - Elsevier
Computer networks are dealing with growing complexity, given the ever-increasing volume
of data produced by all sorts of network nodes. Performance improvements are a non-stop …