2,158 research outputs found
RCD: Rapid Close to Deadline Scheduling for Datacenter Networks
Datacenter-based Cloud Computing services provide a flexible, scalable and
yet economical infrastructure to host online services such as multimedia
streaming, email and bulk storage. Many such services perform geo-replication
to provide necessary quality of service and reliability to users resulting in
frequent large inter- datacenter transfers. In order to meet tenant service
level agreements (SLAs), these transfers have to be completed prior to a
deadline. In addition, WAN resources are quite scarce and costly, meaning they
should be fully utilized. Several recently proposed schemes, such as B4,
TEMPUS, and SWAN have focused on improving the utilization of inter-datacenter
transfers through centralized scheduling, however, they fail to provide a
mechanism to guarantee that admitted requests meet their deadlines. Also, in a
recent study, authors propose Amoeba, a system that allows tenants to define
deadlines and guarantees that the specified deadlines are met, however, to
admit new traffic, the proposed system has to modify the allocation of already
admitted transfers. In this paper, we propose Rapid Close to Deadline
Scheduling (RCD), a close to deadline traffic allocation technique that is fast
and efficient. Through simulations, we show that RCD is up to 15 times faster
than Amoeba, provides high link utilization along with deadline guarantees, and
is able to make quick decisions on whether a new request can be fully satisfied
before its deadline.Comment: World Automation Congress (WAC), IEEE, 201
ASCNet-ECG: Deep Autoencoder based Attention aware Skip Connection network for ECG filtering
Currently, the telehealth monitoring field has gained huge attention due to
its noteworthy use in day-to-day life. This advancement has led to an increase
in the data collection of electrophysiological signals. Due to this
advancement, electrocardiogram (ECG) signal monitoring has become a leading
task in the medical field. ECG plays an important role in the medical field by
analysing cardiac physiology and abnormalities. However, these signals are
affected due to numerous varieties of noises, such as electrode motion,
baseline wander and white noise etc., which affects the diagnosis accuracy.
Therefore, filtering ECG signals became an important task. Currently, deep
learning schemes are widely employed in signal-filtering tasks due to their
efficient architecture of feature learning. This work presents a deep
learning-based scheme for ECG signal filtering, which is based on the deep
autoencoder module. According to this scheme, the data is processed through the
encoder and decoder layer to reconstruct by eliminating noises. The proposed
deep learning architecture uses a modified ReLU function to improve the
learning of attributes because standard ReLU cannot adapt to huge variations.
Further, a skip connection is also incorporated in the proposed architecture,
which retains the key feature of the encoder layer while mapping these features
to the decoder layer. Similarly, an attention model is also included, which
performs channel and spatial attention, which generates the robust map by using
channel and average pooling operations, resulting in improving the learning
performance. The proposed approach is tested on a publicly available MIT-BIH
dataset where different types of noise, such as electrode motion, baseline
water and motion artifacts, are added to the original signal at varied SNR
levels
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