394 research outputs found
Computing with viruses
In recent years, different computing models have emerged within the area of Unconven-tional Computation, and more specifically within Natural Computing, getting inspiration from mechanisms present in Nature. In this work, we incorporate concepts in virology and theoretical computer science to propose a novel computational model, called Virus Ma-chine. Inspired by the manner in which viruses transmit from one host to another, a virus machine is a computational paradigm represented as a heterogeneous network that con-sists of three subnetworks: virus transmission, instruction transfer, and instruction-channel control networks. Virus machines provide non-deterministic sequential devices. As num-ber computing devices, virus machines are proved to be computationally complete, that is, equivalent in power to Turing machines. Nevertheless, when some limitations are imposed with respect to the number of viruses present in the system, then a characterization for semi-linear sets is obtained
Deep Learning for Edge Computing Applications: A State-of-the-Art Survey
With the booming development of Internet-of-Things (IoT) and communication technologies such as 5G, our future world is envisioned as an interconnected entity where billions of devices will provide uninterrupted service to our daily lives and the industry. Meanwhile, these devices will generate massive amounts of valuable data at the network edge, calling for not only instant data processing but also intelligent data analysis in order to fully unleash the potential of the edge big data. Both the traditional cloud computing and on-device computing cannot sufficiently address this problem due to the high latency and the limited computation capacity, respectively. Fortunately, the emerging edge computing sheds a light on the issue by pushing the data processing from the remote network core to the local network edge, remarkably reducing the latency and improving the efficiency. Besides, the recent breakthroughs in deep learning have greatly facilitated the data processing capacity, enabling a thrilling development of novel applications, such as video surveillance and autonomous driving. The convergence of edge computing and deep learning is believed to bring new possibilities to both interdisciplinary researches and industrial applications. In this article, we provide a comprehensive survey of the latest efforts on the deep-learning-enabled edge computing applications and particularly offer insights on how to leverage the deep learning advances to facilitate edge applications from four domains, i.e., smart multimedia, smart transportation, smart city, and smart industry. We also highlight the key research challenges and promising research directions therein. We believe this survey will inspire more researches and contributions in this promising field
Delay-Doppler Reversal for OTFS System in Doubly-selective Fading Channels
The recent proposed orthogonal time frequency space (OTFS) modulation shows
signifcant advantages than conventional orthogonal frequency division
multiplexing (OFDM) for high mobility wireless communications. However, a
challenging problem is the development of effcient receivers for practical OTFS
systems with low complexity. In this paper, we propose a novel delay-Doppler
reversal (DDR) technology for OTFS system with desired performance and low
complexity. We present the DDR technology from a perspective of two-dimensional
cascaded channel model, analyze its computational complexity and also analyze
its performance gain compared to the direct processing (DP) receiver without
DDR. Simulation results demonstrate that our proposed DDR receiver outperforms
traditional receivers in doubly-selective fading channels
- …