Search Keywords

Results Restricted To:

https://www.temple.edu

Total Results: 3,080

Joint Mobile Edge Caching and Pricing: A Mean-Field Game Approach

https://cis.temple.edu/~wu/research/publications/Publication_files/ICDE2024_Xu.pdf

Abstract—In this paper, we investigate the competitive content placement problem in Mobile Edge Caching (MEC) systems, where Edge Data Providers (EDPs) cache appropriate contents and trade them with requesters at a suitable price. Most of the existing works ignore the complicated strategic and economic interplay between content caching, pricing, and content sharing. Therefore, we propose a ...

Building Classification Models: ID3 and C4.5 - Temple University

https://cis.temple.edu/~ingargio/cis587/readings/id3-c45.html

Introduction ID3 and C4.5 are algorithms introduced by Quinlan for inducing Classification Models, also called Decision Trees, from data.

DiVE: Differential Video Encoding for Online Edge-assisted Video ...

https://cis.temple.edu/~jiewu/research/publications/Publication_files/DiVE.pdf

Abstract—Ensuring stable and high-quality real-time video an-alytics for computationally constrained mobile agents is essential. However, limited computing resources and network bandwidth present significant challenges in meeting the objective of low response time and high inference accuracy. In this paper, we present DiVE, an edge-assisted video analytics system that utilizes motion vectors ...

CENTAUR WARFIGHTING: THE FALSE CHOICE OF HUMANS VS. AUTOMATION - Sites

https://sites.temple.edu/ticlj/files/2017/02/30.1.Scharre-TICLJ.pdf

Paul Scharre* Much of the debate on autonomous weapons presumes a choice between human versus autonomous decision-making over targeting and engagement decisions. In fact, in many situations, human-machine teaming in engagement decisions will not only be possible but preferable. Hybrid human-machine cognitive architectures will be able to leverage the precision and reliability of automation ...

Computer and Information Science PhD - Temple University

https://www.temple.edu/academics/degree-programs/computer-information-science-phd-st-cis-phd

Prepare to undertake independent research leading to science and engineering advances in computer and information sciences.

Microsoft Word - IJNPA_submission2-final.doc

https://cis.temple.edu/~apal/npa.pdf

Abstract Recent advances in radio and embedded systems have enabled the proliferation of wireless sensor networks. Wireless sensor networks are tremendously being used in different environments to perform various monitoring tasks such as search, rescue, disaster relief, target tracking and a number of tasks in smart environments. In many such tasks, node localization is inherently one of the ...

Distributed System Design: An Overview* - Temple University

https://cis.temple.edu/~wu/teaching/Spring2018/distributed-computing-2018.pdf

1. In your opinion, what is the future of the computing and the field of distributed systems? 2. Use your own words to explain the differences between distributed systems, multiprocessors, and network systems. 3. Calculate (a) node degree, (b) diameter, (c) bisection width, and (d) the number of links for an nx n2-d mesh, an n x n2- d torus, and an n-dimensional hypercube.

Workshop on Information Systems and Economics (WISE) 2022 ... - Sites

https://sites.temple.edu/wise2022/files/2022/11/WISE-2022-Schedule-and-Program-11.24.22.pdf

December 14-16, 2022, Copenhagen Business School, Denmark Preliminary – Subject to Change

A MEANINGFUL FLOOR FOR - Sites

https://sites.temple.edu/ticlj/files/2017/02/30.1.Crootof-TICLJ.pdf

it is grounded in the idea that all weaponry should be subject to ―meaningful human control.‖ This ―intuitively appealing‖ principle is immensely popular,

Joint Optimization of DNN Partition and Scheduling for Mobile Cloud ...

https://cis.temple.edu/~jiewu/research/publications/Publication_files/ICPP_2021_Duan.pdf

ABSTRACT Reducing the inference time of Deep Neural Networks (DNNs) is critical when running time sensitive applications on mobile devices. Existing research has shown that partitioning a DNN and ofloading a part of its computation to cloud servers can reduce the inference time. The single DNN partition problem has been extensively in-vestigated recently. However, in real-world applications, a ...