15 research outputs found
Coordinate Channel-Aware Page Mapping Policy and Memory Scheduling for Reducing Memory Interference Among Multimedia Applications
"© 2017 IEEE. Personal use of this material is permitted. PermissĂon from IEEE must be obtained for all other uses, in any current or future media, including reprinting/republishing this material for advertisĂng or promotional purposes, creating new collective works, for resale or redistribution to servers or lists, or reuse of any copyrighted component of this work in other works."[EN] In a modern multicore system, memory is shared among more and more concurrently running multimedia applications. Therefore, memory contention and interference are more andmore serious, inducing system performance degradation significantly, the performance degradation of each thread differently, unfairness in resource sharing, and priority inversion, even starvation. In this paper, we propose an approach of coordinating channel-aware page mapping policy and memory scheduling (CCPS) to reduce intermultimedia application interference in a memory system. The idea is to map the data of different threads to different channels, together with memory scheduling. The key principles of the policies of page mapping and memory scheduling are: 1) the memory address space, the thread priority, and the load balance; and 2) prioritizing a low-memory request thread, a row-buffer hit access, and an older request. We evaluate the CCPS on a variety of mixed single-thread and multithread benchmarks and system configurations, and we compare them with four previously proposed state-of-the-art interference-reducing policies. Experimental results demonstrate that the CCPS improves the performance while reducing the energy consumption significantly; moreover, the CCPS incurs a much lower hardware overhead than the current existing policies.This work was supported in part by the Qing Lan Project; by the National Science Foundation of China under Grant 61003077, Grant 61100193, and Grant 61401147; and by the Zhejiang Provincial Natural Science Foundation under Grant LQ14F020011.Jia, G.; Han, G.; Li, A.; Lloret, J. (2017). Coordinate Channel-Aware Page Mapping Policy and Memory Scheduling for Reducing Memory Interference Among Multimedia Applications. IEEE Systems Journal. 11(4):2839-2851. https://doi.org/10.1109/JSYST.2015.2430522S2839285111
Coordinate Memory Deduplication and Partition for Improving Performance in Cloud Computing
[EN] Both limited main memory size and memory interference are considered as the major bottlenecks in virtualization environments. Memory deduplication, detecting pages with same content and being shared into one single copy, reduces memory requirements; memory partition, allocating unique colors for each virtual machine according to page color, reduces memory interference among virtual machines to improve performance. In this paper, we propose a coordinate memory deduplication and partition approach named CMDP to reduce memory requirement and interference simultaneously for improving performance in virtualization. Moreover, CMDP adopts a lightweight page behavior-based memory deduplication approach named BMD to reduce futile page comparison overhead meanwhile to detect page sharing opportunities efficiently. And a virtual machine based memory partition called VMMP is added into CMDP to reduce interference among virtual machines. According to page color, VMMP allocates unique page colors to applications, virtual machines and hypervisor. The experimental results show that CMDP can efficiently improve performance (by about 15.8 percent) meanwhile accommodate more virtual machines concurrently.This work was supported by "Qing Lan Project", "the National Natural Science Foundation of China under Grants 61572172, 61401147, and 61572164", " the Natural Science Foundation of Jiangsu Province of China, Nos. BK20131137 and BK20140248", "Zhejiang provincial Natural Science Foundation Nos. LQ14F020011 and LQ12F02003", by Instituto de Telecomunicacoes, Next Generation Networks and Applications Group (NetGNA), Covilha Delegation, Portugal and by National Funding from the FCT Fundacao para a Ciencia e a Tecnologia through the UID/EEA/500008/2013 Project. Guangjie Han is the corresponding author.Jia, G.; Han, G.; Rodrigues, JJPC.; Lloret, J.; Li, W. (2019). Coordinate Memory Deduplication and Partition for Improving Performance in Cloud Computing. IEEE Transactions on Cloud Computing. 7(2):357-368. https://doi.org/10.1109/TCC.2015.25117383573687
UWAT-GAN: Fundus Fluorescein Angiography Synthesis via Ultra-wide-angle Transformation Multi-scale GAN
Fundus photography is an essential examination for clinical and differential
diagnosis of fundus diseases. Recently, Ultra-Wide-angle Fundus (UWF)
techniques, UWF Fluorescein Angiography (UWF-FA) and UWF Scanning Laser
Ophthalmoscopy (UWF-SLO) have been gradually put into use. However, Fluorescein
Angiography (FA) and UWF-FA require injecting sodium fluorescein which may have
detrimental influences. To avoid negative impacts, cross-modality medical image
generation algorithms have been proposed. Nevertheless, current methods in
fundus imaging could not produce high-resolution images and are unable to
capture tiny vascular lesion areas. This paper proposes a novel conditional
generative adversarial network (UWAT-GAN) to synthesize UWF-FA from UWF-SLO.
Using multi-scale generators and a fusion module patch to better extract global
and local information, our model can generate high-resolution images. Moreover,
an attention transmit module is proposed to help the decoder learn effectively.
Besides, a supervised approach is used to train the network using multiple new
weighted losses on different scales of data. Experiments on an in-house UWF
image dataset demonstrate the superiority of the UWAT-GAN over the
state-of-the-art methods. The source code is available at:
https://github.com/Tinysqua/UWAT-GAN.Comment: 26th International Conference on Medical Image Computing and Computer
Assisted Interventio
TTMFN: Two-stream Transformer-based Multimodal Fusion Network for Survival Prediction
Survival prediction plays a crucial role in assisting clinicians with the
development of cancer treatment protocols. Recent evidence shows that
multimodal data can help in the diagnosis of cancer disease and improve
survival prediction. Currently, deep learning-based approaches have experienced
increasing success in survival prediction by integrating pathological images
and gene expression data. However, most existing approaches overlook the
intra-modality latent information and the complex inter-modality correlations.
Furthermore, existing modalities do not fully exploit the immense
representational capabilities of neural networks for feature aggregation and
disregard the importance of relationships between features. Therefore, it is
highly recommended to address these issues in order to enhance the prediction
performance by proposing a novel deep learning-based method. We propose a novel
framework named Two-stream Transformer-based Multimodal Fusion Network for
survival prediction (TTMFN), which integrates pathological images and gene
expression data. In TTMFN, we present a two-stream multimodal co-attention
transformer module to take full advantage of the complex relationships between
different modalities and the potential connections within the modalities.
Additionally, we develop a multi-head attention pooling approach to effectively
aggregate the feature representations of the two modalities. The experiment
results on four datasets from The Cancer Genome Atlas demonstrate that TTMFN
can achieve the best performance or competitive results compared to the
state-of-the-art methods in predicting the overall survival of patients
VTP: Volumetric Transformer for Multi-view Multi-person 3D Pose Estimation
This paper presents Volumetric Transformer Pose estimator (VTP), the first 3D
volumetric transformer framework for multi-view multi-person 3D human pose
estimation. VTP aggregates features from 2D keypoints in all camera views and
directly learns the spatial relationships in the 3D voxel space in an
end-to-end fashion. The aggregated 3D features are passed through 3D
convolutions before being flattened into sequential embeddings and fed into a
transformer. A residual structure is designed to further improve the
performance. In addition, the sparse Sinkhorn attention is empowered to reduce
the memory cost, which is a major bottleneck for volumetric representations,
while also achieving excellent performance. The output of the transformer is
again concatenated with 3D convolutional features by a residual design. The
proposed VTP framework integrates the high performance of the transformer with
volumetric representations, which can be used as a good alternative to the
convolutional backbones. Experiments on the Shelf, Campus and CMU Panoptic
benchmarks show promising results in terms of both Mean Per Joint Position
Error (MPJPE) and Percentage of Correctly estimated Parts (PCP). Our code will
be available
An Efficient Virtual Machine Consolidation Scheme for Multimedia Cloud Computing
Cloud computing has innovated the IT industry in recent years, as it can delivery subscription-based services to users in the pay-as-you-go model. Meanwhile, multimedia cloud computing is emerging based on cloud computing to provide a variety of media services on the Internet. However, with the growing popularity of multimedia cloud computing, its large energy consumption cannot only contribute to greenhouse gas emissions, but also result in the rising of cloud users’ costs. Therefore, the multimedia cloud providers should try to minimize its energy consumption as much as possible while satisfying the consumers’ resource requirements and guaranteeing quality of service (QoS). In this paper, we have proposed a remaining utilization-aware (RUA) algorithm for virtual machine (VM) placement, and a power-aware algorithm (PA) is proposed to find proper hosts to shut down for energy saving. These two algorithms have been combined and applied to cloud data centers for completing the process of VM consolidation. Simulation results have shown that there exists a trade-off between the cloud data center’s energy consumption and service-level agreement (SLA) violations. Besides, the RUA algorithm is able to deal with variable workload to prevent hosts from overloading after VM placement and to reduce the SLA violations dramatically
Static Memory Deduplication for Performance Optimization in Cloud Computing
In a cloud computing environment, the number of virtual machines (VMs) on a single physical server and the number of applications running on each VM are continuously growing. This has led to an enormous increase in the demand of memory capacity and subsequent increase in the energy consumption in the cloud. Lack of enough memory has become a major bottleneck for scalability and performance of virtualization interfaces in cloud computing. To address this problem, memory deduplication techniques which reduce memory demand through page sharing are being adopted. However, such techniques suffer from overheads in terms of number of online comparisons required for the memory deduplication. In this paper, we propose a static memory deduplication (SMD) technique which can reduce memory capacity requirement and provide performance optimization in cloud computing. The main innovation of SMD is that the process of page detection is performed offline, thus potentially reducing the performance cost, especially in terms of response time. In SMD, page comparisons are restricted to the code segment, which has the highest shared content. Our experimental results show that SMD efficiently reduces memory capacity requirement and improves performance. We demonstrate that, compared to other approaches, the cost in terms of the response time is negligible
An NB-IoT-based smart trash can system for improved health in smart cities
The intelligent treatment of urban garbage is an important component of creating a smart city and also solves several problems associated with urban garbage. Many traditional garbage cans are widely distributed, resulting in a waste of human and material resources, untimely government. Therefore, in this paper, we propose an intelligent system based on edge computing and the narrow-band Internet of things (NB-IoT) for monitoring smart trash cans (STCs). The deployed intelligent garbage cans are distributed throughout the city and are equipped with a variety of sensors, including a compression sensor, a location sensor, an infrared sensor, and an alarm sensor. The data sent from the smart bins are preprocessed through edge nodes for data classification and priority transmission, which reduces the required network transmission bandwidth and the computational tasks at the centralized data center. The NB-IoT is a narrow-band communication technology with low power consumption, wide coverage, low cost, and large capacity. The experimental results show that the proposed STC system shows good system performance, and allows for intelligent management of garbage in smart cities. - 2019 IEEE.The work is supported by the National Key Research and Development Program, No.YS2017YFGH001945 and the National Natural Science Foundation of China under Grant No.61602137, the National Natural Science Foundation of China-Guangdong Joint Fund under Grant No.U1801264 and supported by Six talent peaks project in Jiangsu Province, No.XYDXXJS-007 and the Zhejiang Provincial Natural Science Foundation under Grant LY19F020044.Scopu