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Intelligent workload management

Intelligent workload management (IWM) is a paradigm for IT systems management arising from the intersection of dynamic infrastructure, virtualization, identity management, and the discipline of software appliance development.[1] IWM enables the management and optimization of computing resources in a secure and compliant manner across physical, virtual and cloud environments to deliver business services for end customers.

The IWM paradigm builds on the traditional concept of workload management whereby processing resources are dynamically assigned to tasks, or "workloads," based on criteria such as business process priorities (for example, in balancing business intelligence queries against online transaction processing[2]), resource availability, security protocols, or event scheduling, but extends the concept into the structure of individual workloads themselves.

Definition of "workload" edit

In the context of IT systems and data center management, a "workload" can be broadly defined as "the total requests made by users and applications of a system."[3] However, it is also possible to break down the entire workload of a given system into sets of self-contained units. Such a self-contained unit constitutes a "workload" in the narrow sense: an integrated stack consisting of application, middleware, database, and operating system devoted to a specific computing task. Typically, a workload is "platform agnostic," meaning that it can run in physical, virtual or cloud computing environments. Finally, a collection of related workloads which allow end users to complete a specific set of business tasks can be defined as a "business service."[4]

Making workloads "intelligent" edit

A workload is considered "intelligent" when it a) understands its security protocols and processing requirements so it can self-determine whether it can deploy in the public cloud, the private cloud or only on physical machines; b) recognizes when it is at capacity and can find alternative computing capacity as required to optimize performance; c) carries identity and access controls as well as log management and compliance reporting capabilities with it as it moves across environments; and d) is fully integrated with the business service management layer, ensuring that end user computing requirements are not disrupted by distributed computing resources, and working with current and emergent IT management frameworks.

Intelligent workloads and security in the cloud edit

The deployment of individual workloads and workload-based business services in the "hybrid distributed data center,"[5] - including physical machines, data centers, private clouds, and the public cloud - raises a host of issues for the efficient management of provisioning, security, and compliance. By making workloads "intelligent" so that they can effectively manage themselves in terms of where they run, how they run, and who can access them, intelligent workload management addresses these issues in a way that is efficient, flexible, and scalable. The 1989 seminal work by D.F. Ferguson, Y. Yemini, and C. Nikolaou "Microeconomic Algorithms for Load Balancing in Distributed Computing Systems" developed a theory by which workloads could be made "intelligent" to manage themselves.[6] This theory has since been patented and was commercialized by the Boston-based company, VMTurbo, in 2009.

See also edit

References edit

  1. ^ Thomas Mendel (October 26, 2009). . Forrester. Archived from the original on December 25, 2009. Retrieved 2017-01-10. ...a particularly exciting new category, which we tentatively call process and workload automation, some vendors refer to it as intelligent workload management.
  2. ^ "Dynamic workload management for very large data warehouses: juggling feathers and bowling balls". VLDB Endowment. 2007. Retrieved 2008-11-12.
  3. ^ "What Is Your Definition of Database Workload?". Database Journal. January 8, 2009. Retrieved 2009-11-15.
  4. ^ "IT Services, Business Services, Services...what's next?". HP ITIL v3 Community Blog. March 3, 2008. Retrieved 2009-11-15.
  5. ^ . Sun Microsystmes. October 1, 2009. Archived from the original on October 4, 2009. Retrieved 2009-11-15.
  6. ^ Ferguson, D.F.; Yemini, Y.; Nikolaous, C. (1988). "Microeconomic algorithms for load balancing in distributed computer systems". Microeconomic Algorithms for Load Balancing in Distributed Computing Systems. Washington, D.C.: IEEE Computer Society Press. pp. 491–499. doi:10.1109/DCS.1988.12552. ISBN 0-8186-0865-X.

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Intelligent workload management IWM is a paradigm for IT systems management arising from the intersection of dynamic infrastructure virtualization identity management and the discipline of software appliance development 1 IWM enables the management and optimization of computing resources in a secure and compliant manner across physical virtual and cloud environments to deliver business services for end customers The IWM paradigm builds on the traditional concept of workload management whereby processing resources are dynamically assigned to tasks or workloads based on criteria such as business process priorities for example in balancing business intelligence queries against online transaction processing 2 resource availability security protocols or event scheduling but extends the concept into the structure of individual workloads themselves Contents 1 Definition of workload 2 Making workloads intelligent 3 Intelligent workloads and security in the cloud 4 See also 5 ReferencesDefinition of workload editIn the context of IT systems and data center management a workload can be broadly defined as the total requests made by users and applications of a system 3 However it is also possible to break down the entire workload of a given system into sets of self contained units Such a self contained unit constitutes a workload in the narrow sense an integrated stack consisting of application middleware database and operating system devoted to a specific computing task Typically a workload is platform agnostic meaning that it can run in physical virtual or cloud computing environments Finally a collection of related workloads which allow end users to complete a specific set of business tasks can be defined as a business service 4 Making workloads intelligent editA workload is considered intelligent when it a understands its security protocols and processing requirements so it can self determine whether it can deploy in the public cloud the private cloud or only on physical machines b recognizes when it is at capacity and can find alternative computing capacity as required to optimize performance c carries identity and access controls as well as log management and compliance reporting capabilities with it as it moves across environments and d is fully integrated with the business service management layer ensuring that end user computing requirements are not disrupted by distributed computing resources and working with current and emergent IT management frameworks Intelligent workloads and security in the cloud editThe deployment of individual workloads and workload based business services in the hybrid distributed data center 5 including physical machines data centers private clouds and the public cloud raises a host of issues for the efficient management of provisioning security and compliance By making workloads intelligent so that they can effectively manage themselves in terms of where they run how they run and who can access them intelligent workload management addresses these issues in a way that is efficient flexible and scalable The 1989 seminal work by D F Ferguson Y Yemini and C Nikolaou Microeconomic Algorithms for Load Balancing in Distributed Computing Systems developed a theory by which workloads could be made intelligent to manage themselves 6 This theory has since been patented and was commercialized by the Boston based company VMTurbo in 2009 See also editCloud computing Dynamic infrastructure Identity management Portable application Software appliance Virtual applianceReferences edit Thomas Mendel October 26 2009 IT Management Software Market Update Forrester Archived from the original on December 25 2009 Retrieved 2017 01 10 a particularly exciting new category which we tentatively call process and workload automation some vendors refer to it as intelligent workload management Dynamic workload management for very large data warehouses juggling feathers and bowling balls VLDB Endowment 2007 Retrieved 2008 11 12 What Is Your Definition of Database Workload Database Journal January 8 2009 Retrieved 2009 11 15 IT Services Business Services Services what s next HP ITIL v3 Community Blog March 3 2008 Retrieved 2009 11 15 The Hybrid Distributed Data Center er Cloud Sun Microsystmes October 1 2009 Archived from the original on October 4 2009 Retrieved 2009 11 15 Ferguson D F Yemini Y Nikolaous C 1988 Microeconomic algorithms for load balancing in distributed computer systems Microeconomic Algorithms for Load Balancing in Distributed Computing Systems Washington D C IEEE Computer Society Press pp 491 499 doi 10 1109 DCS 1988 12552 ISBN 0 8186 0865 X Retrieved from https en wikipedia org w index php title Intelligent workload management amp oldid 941488205, wikipedia, wiki, book, books, library,

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