1,721,025 research outputs found
Container-Based Orchestration in Cloud: State of the Art and Challenges
How to effectively manage increasingly complex enterprise computing environments is one of the hardest challenges that most organizations have to face in the era of cloud computing, big data and IoT. Advanced automation and orchestration systems are the most valuable solutions helping IT staff to handle large-scale cloud data centers. Containers are the new revolution in the cloud computing world, they are more lightweight than VMs, and can radically decrease both the start up time of instances and the processing and storage overhead with respect to traditional VMs. The aim of this paper is to provide a comprehensive description of cloud orchestration approaches with containers, analyzing current research efforts, existing solutions and presenting issues and challenges facing this topic
Simulation, modeling, and performance evaluation tools for cloud applications
As cloud computing adoption and deployment increase, the performance evaluation of the cloud environments is becoming very important. Cloud applications have different composition, configuration, and deployment requirements. Simulation and modeling techniques are suitable to quantify the performance of resource allocation policies and application scheduling algorithms in Cloud computing environments for different application and service models according to different work loads, energy performance and system size. In this paper, we give an overview of the existing distributed systems simulation and modeling tools in order to outline the main characteristics and peculiarities. We then present an outlook on new requirements to be addressed for performance evaluation of cloud applications through simulation and modeling
Performance analysis of WRF simulations in a public cloud and HPC environment
The Weather Research and Forecasting (WRF) Model is a numerical weather prediction system designed for both atmospheric research and operational forecasting needs. WRF requires a large amount of CPU power which increases drastically if WRF is used to model a big geographical area with a high resolution. To satisfy the computational demand WRF requires large number of computing resources through infrastructures such as clusters in grid or cloud. In this paper the performance analysis of different WRF simulations to the Amazon Web Services (AWS) cloud computing environment (single node and cluster) compared to that of a HCP cluster is presented
Data as a Service (DaaS) for sharing and processing of large data collections in the cloud
Data as a Service (DaaS) is among the latest kind of services being investigated in the Cloud computing community. The main aim of DaaS is to overcome limitations of state-of-the-art approaches in data technologies, according to which data is stored and accessed from repositories whose location is known and is relevant for sharing and processing. Besides limitations for the data sharing, current approaches also do not achieve to fully separate/decouple software services from data and thus impose limitations in inter-operability. In this paper we propose a DaaS approach for intelligent sharing and processing of large data collections with the aim of abstracting the data location (by making it relevant to the needs of sharing and accessing) and to fully decouple the data and its processing. The aim of our approach is to build a Cloud computing platform, offering DaaS to support large communities of users that need to share, access, and process the data for collectively building knowledge from data. We exemplify the approach from large data collections from health and biology domains. © 2013 IEEE
Single-poly floating-gate memory cell options for analog neural networks
In this paper, we explore the use of a 180 nm CMOS single-poly technology platform for realizing analog Deep Neural Network integrated circuits. The analysis focuses on analog vector–matrix multiplier architectures, one of the main building blocks of a neural network, implementing in-memory computation using Floating-Gate multi-level non-volatile memories. We present two memory options, suited either for current-mode or for time-domain vector–matrix multiplier implementations, with low–voltage charge-injection program and erase operations. The effects of a limited accuracy are also investigated through system-level simulations, by accounting for the temperature dependence of the stored weights and the corresponding impact on the network error rate
A Cloud Automation Platform for Flexibility in Applications and Resources Provisioning
Cloud technologies are still characterized by critical issues, which pose specific challenges for application developers and operators. In particular cloud application-level and infrastructure-level are completely decoupled both in the development and runtime phases leading in poor QoS cloud services. Main issues related to the optimize the use of the hardware resources are partially solve with virtualization technologies but innovative methodology in the automatic management of resources, applications provisioning and deployment are urgently needed. This paper presents ALM Automation Platform over CHEF framework in context of services virtualization for Public Administration where typically a large number of technologies heterogeneous resources, applications are deployed and managed
Exploiting Face Recognizability with Early Exit Vision Transformers
Face recognition with Deep Learning is generally approached as a problem of capacity. The field has seen progressively deeper, more complex models or larger, more highly variant datasets. However, the carbon footprint of machine learning (ML) is a concern. A real push is developing to reduce the energy consumption of ML as we strive for a more eco-friendly society. Lower energy consumption or compute budget is always desirable, if accuracy is not reduced below a usable level. We present an approach using the state of the art Vision Transformer and Early Exits for reducing compute budget without significantly affecting performance. We develop a system for face recognition and identification with a closed-set gallery and show that with a small reduction in performance, a reasonable reduction in FLOPs can be obtained using our method
Power comparison of cloud data center architectures
Power consumption is a primary concern for cloud computing data centers. Being the network one of the non-negligible contributors to energy consumption in data centers, several architectures have been designed with the goal of improving network performance and energy-efficiency. In this paper, we provide a comparison study of data center architectures, covering both classical two- and three-tier design and state-of-art ones as Jupiter, recently disclosed by Google. Specifically, we analyze the combined effect on the overall system performance of different power consumption profiles for the IT equipment and of different resource allocation policies. Our experiments, performed in small and large scale scenarios, unveil the ability of network-aware allocation policies in loading the the data center in a energy-proportional manner and the robustness of classical two- and three-tier design under network-oblivious allocation strategies
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