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The 10th IEEE International Conference on High Performance Computing and Communications Scientific Cloud Computing: Early Definition and Experience Lizhe Wang, Jie Tao, Marcel Kunze Institute for Scientific Computing, Research Center Karlsruhe Hermann-von-Helmholtz-Platz 1, 76344 Eggenstein-Leopoldshafen, Germany Alvaro Canales Castellanos, David Kramer, Wolfgang Karl Department of Computer Science, University Karlsruhe (TH) 76128 Karlsruhe, Germany Abstract Compute Cloud [16], IBM’s Blue Cloud [14], scientific Cloud projects such as Nimbus [17] and Stratus [26], OpenNEbula [19]. There are still no widely accepted definition for Cloud computing albeit Cloud computing practice has attracted much attention. Several reasons has lead into this situation: Cloud computing emerges as a new computing paradigm which aims to provide reliable, customized and QoS guaranteed computing dynamic environments for end-users. This paper reviews recent advances of Cloud computing, identifies the concepts and characters of scientific Clouds, and finally presents an example of scientific Cloud for data centers. • Cloud computing involves researchers and engineers from various backgrounds, e.g., Grid computing, software engineering, data storage. They work on Cloud computing from different viewpoints. • Technologies which enable the Cloud computing are still evolving and progressing, for example, Web 2.0 and SOA. 1. Introduction Cloud computing emerges as a hot topic from the late of 2007 due to its abilities of offering flexible dynamic IT infrastructures, QoS guaranteed computing environments and configurable software services. As reported in Google trends (Figure 1), Cloud computing (blue line), which is enabled by Virtualization technology (yellow line), has outpaced Grid computing [7] (red line). • Existing computing Clouds still lack large scale deployment and usage, which would finally justify the concept of Cloud computing. In this paper, we try to give an early definition of “Cloud computing” based on recent advances from academia and industry as well as our experience. This paper also introduces a proof-of-concept computing Cloud – Cumulus, which is deployed at our site. This paper is organized as follows. Section 2 introduces the current projects of Cloud computing. Section 3 defines the concept of Cloud computing. Cumulus project, our experience of Cloud computing, is presented in Section 4. Section 5 concludes the paper. 2. Recent advances of Cloud computing This section discusses several projects which are currently devoted to Cloud computing. Figure 1. Cloud computing in Google trends 2.1. Globus virtual workspace service and Nimbus Currently numerous projects from industry and academia have been proposed, for example, RESERVOIR project [23] - IBM and European Union joint research initiative for Cloud computing, Amazon Elastic 978-0-7695-3352-0/08 $25.00 © 2008 IEEE DOI 10.1109/HPCC.2008.38 A virtual workspace [10, 9] is the abstraction of an execution environment that can be made dynamically avail- 825 able to authorized clients by using well-defined protocols. The abstraction captures resource quota assigned to such execution environments during deployment (such as CPU or memory) as well as software configuration aspects of the environment (such as operating system installation or provided services). The workspace service allows a Globus Toolkit client to dynamically deploy and manage workspaces. The virtual workspace services consist of the following interfaces [10, 9]: • The Workspace Factory Service has one operation called “create”. Create has two required parameters: workspace metadata and a deployment request for that metadata. • Once created, a workspace is represented as a WSRF resource and can be inspected and managed through operations of the Workspace Service. Figure 2. OpenNebula architecture 2.3. Amazon Elastic Compute Cloud • The Group Service allows an authorized client to manage a group of workspaces as a whole. Amazon Elastic Compute Cloud (EC2) [16] is a Web service that provides resizable compute capacity in the cloud. It is designed to make Web-scale computing easier for developers. Amazon EC2’s simple Web service interface allows users to obtain and configure capacity with minimal friction. It provides users with complete control of computing resources and lets them use Amazon’s proven computing environment. Amazon EC2 reduces the time required to obtain and boot new server instances to minutes, allowing users to quickly scale capacity, both up and down, as computing requirements change. Amazon EC2 changes the economics of computing by allowing users to pay only for capacity that they actually use. With Amazon EC2 users can: • The Status Service offers the interface through which a client can query the usage data the service has collected about it. Based on Globus virtual workspace services, a cloudkit named Nimbus [17] has been developed to build scientific Clouds. With Nimbus client, users could: • browse virtual machine images inside the cloud, • submit their own virtual machine images to the clouds, • deploy virtual machines, and • query virtual machine status, and finally access the virtual machine. • create an Amazon Machine Image (AMI) containing the applications, libraries, data and associated configuration settings, or use Amazon’s pre-configured, templated images to get up and running immediately; 2.2. OpenNEbula OpenNEbula (former GridHypervisor) is a virtual infrastructure engine that enables the dynamic deployment and re-allocation of virtual machines in a pool of physical resources. OpenNEbula extends the benefits of virtualization platforms from a single physical resource to a pool of resources, decoupling the server not only from the physical infrastructure but also from the physical location [19]. OpenNEbula contains one frontend and multiple backends. The frontend provides users with access interfaces and management functions. The backends are installed on Xen servers, where Xen hypervisors are started and virtual machines could be backed. Communications between frontend and backends use SSH. OpenNEbula gives users a single access point to deploy virtual machines on a locally distributed infrastructure. • upload the AMI into Amazon Simple Storage Service (S3). Amazon EC2 provides tools that make storing the AMI simple. Amazon S3 provides a safe, reliable and fast repository to store user’s images; • use Amazon EC2 Web service to configure security and network access; • choose the type of instance users want to run; • start, shutdown, and monitor as many instances of user’s AMI as needed, using the web service APIs; • pay for the CPU time and bandwidth that user actually consume. 826 2.4. Discussion center/computer center - as a pay-as-you-go subscription service. The HaaS could be flexible, scalable and manageable to meet your needs [2]. We have studied the solutions for network configuration, data management, virtual machine infrastructure deployment inside the cloud. Nimbus & Globus virtual workspace provide three network configurations: • SaaS: Software as a Service Software or application is hosted as a service and provided to customers across the Internet. This mode eliminates the need to install and run the application on the customer’s local computer. SaaS therefore alleviates the customer’s burden of software maintenance, and reduce the expense of software purchases by ondemand pricing. • public mode picks a public IP address from a pool for virtual machine, • private mode picks a private IP address from a pool for virtual machine, and • DaaS: Data as a Service Data in various formats, from various sources, could be accessed via services to users on the network. Users could, for example, manipulate remote data just like operate on local disk; or access data in a semantic way on the Internet. • advisory mode gives a static IP address for virtual machine The solutions are sometimes however beyond of some user scenarios. For example, a data center might employ a central DHCP service, which allocates dynamic IP addresses for all virtual machines. Globus virtual workspace in addition requires to contact all the backends of the local infrastructure. Sometimes a computer center might employ a local virtualization management system, like VMware Infrastructure [29], to manage local hosting resources. It would pay off , in our viewpoint, that Globus virtual workspace talk with a local management system. The same scenario happens when Globus Toolkit works together with local resource scheduler like OpenPBS [20], or Condor [12]. OpenNEbula employs NIS (Network Information System) to manage a common user system and NFS (Network File System) for virtual machine image management. However it has been widely recognized that NIS has a major security flaw: it leaves users’ password file accessible by anyone in the entire network. To employ OpenNEbula in professional way, it is better to merge OpenNEbula with some modern infrastructure solutions, e.g., LDAP [11] and Oracle Cluster File System [21]. Based on the support of HaaS, SaaS, and DaaS, Cloud computing thereafter delivers Platform as a Service (PaaS) for users. Users thus can on-demand subscribe a computing platform with requirements of hardware configuration, software installation and data access demands. Figure 3 shows the relationship between above services. PaaS HaaS SaaS DaaS Figure 3. Cloud functionalities 3.2. Key features Cloud computing distinguishes itself from other computing paradigms, like Grid computing [7], Global computing [6], Internet Computing [13], in following aspects: 3. Cloud computing: definition, characterization and Enabling technologies • User-centric interfaces Cloud services could be accessed with user-centric interfaces, which means: 3.1. Functionalities Computing clouds render users with services to access hardware, software, and data resource; Furthermore, some configurable integrated platforms for users could be supported: – The Cloud interfaces do not force users to change their working habits, e.g., developing language, compiler, operating system, and so on. – The Cloud client which is required to be installed locally is lightweight, for example, Nimbus Cloudkit client size is around 15MB. – Cloud interfaces are location independent and can be accessed by some well established interfaces like Web service and Internet browser. • HaaS: Hardware as a Service Hardware as a Service was coined possibly at 2006. As the result of rapid advances in hardware virtualization, IT automation, and usage metering and pricing, users could buy IT hardware - or even an entire data 827 • On-demand service provision Computing Clouds provide resources and services for users on-demand. Users can customize required computing environments later on, for example, software installation, network configuration, as users normally own “root” privilege. information sharing, and, most notably, collaboration among users. These concepts have led to the development and evolution of Web-based communities and hosted services [4]. Mashup is a Web application that combines data from more than one source into a single integrated storage tool [3]. SmugMug [25] is an example of Mashup, which is a digital photo sharing website, allowing the upload of an unlimited number of photos for all account types, providing a published API which allows programmers to create new functionality, and supporting XML-based RSS and Atom feeds. • QoS guaranteed offer The computing environments provided by computing Clouds can guarantee QoS for users, e.g., hardware performance like CPU bandwidth and memory size. • Autonomous System The Computing Cloud is an autonomous system and managed transparently to users. Hardware, software and data inside clouds can be automatically reconfigured, orchestrated and consolidated to a single platform image, finally rendered to users. Globus Virtual Workspace Service 3.3. Enabling technologies A lot of enabling technologies contribute to the Cloud computing, here we identify several state-of-the-art techniques: OpenNEbula frontend Access point • Virtualization Virtualization technologies multiplex hardware and thus provide flexible and scalable platforms. Virtual machine techniques, such as VMware [29] and Xen [1], offer virtualized IT-infrastructures ondemand. Virtual network advances, such as VPN [5], support users with a customized network environment to access cloud resources. SSH VM • Serviceflow and workflow orchestration Computing clouds offer a complete set of service images on-demand, which could be composed by services inside the Cloud. Cloud should be able to automatically orchestrate services from different sources and of different types to form a serviceflow or workflow for users. VM VM VM VM VM Xen Hypervisor Xen Hypervisor Xen Hypervisor Host Host Host Oracle File System virtual network domain • Web service and SOA Cloud services are normally exposed as Web services, which follow industry standards, like WSDL [28], SOAP [24] and UDDI [18]. The services organization and orchestration inside clouds could be managed in a Service Oriented Architecture (SOA). A set of Cloud services furthermore can be included a SOA, make themselves available on various distributed platforms and can be accessed across networks. physical network domain Figure 4. Cumulus architecture • World-wide distributed storage system A Cloud storage model should foresee: – A network storage system, which is backed by distributed storage providers (e.g., data centers), offers storage capacity for users to lease. The data storage could be migrated, merged, and managed transparently to end users for whatever data formats. Examples are Google File System [8] and Amazon Elastic Storage [16]. • Web 2.0 and Mashup Web 2.0 describes the trend in the use of World Wide Web technology and web design to enhance creativity, 828 References – A distributed data system which provides data sources accessed in a semantic way. Users could locate data sources in a large distributed environment by the logical name instead of physical locations. Virtual Data System (VDS) [27] could be good reference. [1] P. Barham, B. Dragovic, K. Fraser, S. Hand, T. L. Harris, A. Ho, R. Neugebauer, I. Pratt, and A. Warfield. Xen and the art of virtualization. In Proceedings of the 19th ACM Symposium on Operating Systems Principles, pages 164–177, New York, U. S. A., Oct. 2003. 4. Cumulus: a scientific Cloud for data center [2] Here comes HaaS [URL]. http://www.roughtype.com/archives/2006/03/here comes haas.php access on June 2008. Cumulus is an on-going project of Cloud computing at our site. 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