Data center monitoring and management operation for provisioning a data center asset using unstructured data

Information

  • Patent Grant
  • 12001312
  • Patent Number
    12,001,312
  • Date Filed
    Wednesday, July 26, 2023
    a year ago
  • Date Issued
    Tuesday, June 4, 2024
    5 months ago
Abstract
A system, method, and computer-readable medium for performing a data center monitoring and management operation. The data center monitoring and management operation includes: receiving workload provisioning information associated with a data center asset, the workload provisioning information comprising a set of data elements; identifying an anomalous data element from the set of workload provisioning elements; remediating the anomalous data element to provide a remediated anomalous data element; and, provisioning a component of information technology infrastructure using the workload provisioning information and the remediated anomalous data element.
Description
BACKGROUND OF THE INVENTION
Field of the Invention

The present invention relates to information handling systems. More specifically, embodiments of the invention relate to performing a data center monitoring and management operation.


Description of the Related Art

As the value and use of information continues to increase, individuals and businesses seek additional ways to process and store information. One option available to users is information handling systems. An information handling system generally processes, compiles, stores, and/or communicates information or data for business, personal, or other purposes thereby allowing users to take advantage of the value of the information. Because technology and information handling needs and requirements vary between different users or applications, information handling systems may also vary regarding what information is handled, how the information is handled, how much information is processed, stored, or communicated, and how quickly and efficiently the information may be processed, stored, or communicated. The variations in information handling systems allow for information handling systems to be general or configured for a specific user or specific use such as financial transaction processing, airline reservations, enterprise data storage, or global communications. In addition, information handling systems may include a variety of hardware and software components that may be configured to process, store, and communicate information and may include one or more computer systems, data storage systems, and networking systems.


SUMMARY OF THE INVENTION

In one embodiment the invention relates to a method for performing a data center monitoring and management operation, comprising: receiving workload provisioning information associated with a data center asset, the workload provisioning information comprising a set of data elements; identifying an anomalous data element from the set of workload provisioning elements; remediating the anomalous data element to provide a remediated anomalous data element; and, provisioning a component of information technology infrastructure using the workload provisioning information and the remediated anomalous data element.


In another embodiment the invention relates to a system comprising: a processor; a data bus coupled to the processor; and, a non-transitory, computer-readable storage medium embodying computer program code, the non-transitory, computer-readable storage medium being coupled to the data bus, the computer program code interacting with a plurality of computer operations and comprising instructions executable by the processor and configured for: receiving workload provisioning information associated with a data center asset, the workload provisioning information comprising a set of data elements; identifying an anomalous data element from the set of workload provisioning elements; remediating the anomalous data element to provide a remediated anomalous data element; and, provisioning a component of information technology infrastructure using the workload provisioning information and the remediated anomalous data element.


In another embodiment the invention relates to a computer-readable storage medium embodying computer program code, the computer program code comprising computer executable instructions configured for: receiving workload provisioning information associated with a data center asset, the workload provisioning information comprising a set of data elements; identifying an anomalous data element from the set of workload provisioning elements; remediating the anomalous data element to provide a remediated anomalous data element; and, provisioning a component of information technology infrastructure using the workload provisioning information and the remediated anomalous data element.





BRIEF DESCRIPTION OF THE DRAWINGS

The present invention may be better understood, and its numerous objects, features and advantages made apparent to those skilled in the art by referencing the accompanying drawings. The use of the same reference number throughout the several figures designates a like or similar element.



FIG. 1 shows a general illustration of components of an information handling system as implemented in the system and method of the present invention;



FIG. 2 shows a block diagram of a data center monitoring and management environment;



FIG. 3 shows a functional block diagram of the performance of certain data center monitoring and management operations;



FIG. 4 shows a block diagram of a data center monitoring and management console;



FIG. 5 shows an adjacency matrix created from a weighted undirected graph; and



FIG. 6 is a simplified process diagram showing the performance of example unstructured data handling (UDH) operations.





DETAILED DESCRIPTION

A system, method, and computer-readable medium are disclosed for performing a data center monitoring and management operation, described in greater detail herein. Various aspects of the invention reflect an appreciation that it is common for a typical data center to monitor and manage tens, if not hundreds, of thousands of different assets, such as certain computing and networking devices, as described in greater detail herein. Certain aspects of the invention likewise reflect an appreciation that such data center assets, which may be distributed, are typically implemented to work in combination with one another for a particular purpose. Likewise, various aspects of the invention reflect an appreciation that such purposes generally involve the performance of a wide variety of tasks, operations, and processes to service certain workloads.


Various aspects of the invention reflect an appreciation that such tasks, operations, and processes may be performed in response to a request to provision one or more data center assets, or one or more associated resources, or a combination thereof, to service a particular workload. Likewise, various aspects of the invention reflect an appreciation that such a request may include certain workload provisioning information pertinent to servicing the workload. Furthermore, various aspects of the invention reflect an appreciation that such workload provisioning information may contain one or more anomalous data elements. If so, various aspects of the invention reflect an appreciation that one or more associated provisioning operations may fail or be moved to an on-hold state when the workload provisioning information contains anomalous data elements.


For purposes of this disclosure, an information handling system may include any instrumentality or aggregate of instrumentalities operable to compute, classify, process, transmit, receive, retrieve, originate, switch, store, display, manifest, detect, record, reproduce, handle, or utilize any form of information, intelligence, or data for business, scientific, control, or other purposes. For example, an information handling system may be a personal computer, a network storage device, or any other suitable device and may vary in size, shape, performance, functionality, and price. The information handling system may include random access memory (RAM), one or more processing resources such as a central processing unit (CPU) or hardware or software control logic, ROM, and/or other types of nonvolatile memory. Additional components of the information handling system may include one or more disk drives, one or more network ports for communicating with external devices as well as various input and output (I/O) devices, such as a keyboard, a mouse, and a video display. The information handling system may also include one or more buses operable to transmit communications between the various hardware components.



FIG. 1 is a generalized illustration of an information handling system 100 that can be used to implement the system and method of the present invention. The information handling system 100 includes a processor (e.g., central processor unit or “CPU”) 102, input/output (I/O) devices 104, such as a display, a keyboard, a mouse, a touchpad or touchscreen, and associated controllers, a hard drive or disk storage 106, and various other subsystems 108. In various embodiments, the information handling system 100 also includes network port 110 operable to connect to a network 140, which is likewise accessible by a service provider server 142. The information handling system 100 likewise includes system memory 112, which is interconnected to the foregoing via one or more buses 114. System memory 112 further comprises operating system (OS) 116 and in various embodiments may also comprise a data center monitoring and management console 118, or a connectivity management system (CMS) client 136. In one embodiment, the information handling system 100 is able to download the data center monitoring and management console 118, or the CMS client 136, or both, from the service provider server 142. In another embodiment, the functionality respectively provided by the data center monitoring and management console 118, or the CMS client 136, or both, may be provided as a service from the service provider server 142.


In certain embodiments, the data center monitoring and management console 118 may include a monitoring module 120, a management module 122, an analysis engine 124, a connectivity management system (CMS) 126, and an unstructured data handling (UDH) system 130, or a combination thereof. In certain embodiments, the CMS 126 may be implemented to include a CMS aggregator 128. In certain embodiments, the data center monitoring and management console 118 may be implemented to perform a data center monitoring and management operation. In certain embodiments, the information handling system 100 may be implemented to include either a CMS 126, or a CMS client 136, or both.


In certain embodiments, the data center monitoring and management operation may be performed during operation of an information handling system 100. In various embodiments, performance of the data center monitoring and management operation may result in the realization of improved monitoring and management of certain data center assets, as described in greater detail herein. In certain embodiments, the CMS 126 may be implemented in combination with the CMS client 136 to perform a connectivity management operation, described in greater detail herein. As an example, the CMS 126 may be implemented on one information handling system 100, while the CMS client 136 may be implemented on another, as likewise described in greater detail herein.



FIG. 2 is a simplified block diagram of a data center monitoring and management environment implemented in accordance with an embodiment of the invention. As used herein, a data center broadly refers to a building, a dedicated space within a building, or a group of buildings, used to house a collection of interrelated data center assets 244 implemented to work in combination with one another for a particular purpose. As likewise used herein, a data center asset 244 broadly refers to anything, tangible or intangible, that can be owned, controlled, or enabled to produce value as a result of its use within a data center. In certain embodiments, a data center asset 244 may include a product, or a service, or a combination of the two.


As used herein, a tangible data center asset 244 broadly refers to a data center asset 244 having a physical substance, such as a computing or network device. Examples of computing devices may include personal computers (PCs), laptop PCs, tablet computers, servers, mainframe computers, Redundant Arrays of Independent Disks (RAID) storage units, their associated internal and external components, and so forth. Likewise, examples of network devices may include routers, switches, hubs, repeaters, bridges, gateways, and so forth. Other examples of a tangible data center asset 244 may include certain data center personnel, such as a data center system administrator, operator, or technician, and so forth. Other examples of a tangible data center asset 244 may include certain maintenance, repair, and operations (MRO) items, such as replacement and upgrade parts for a particular data center asset 244. In certain embodiments, such MRO items may be in the form of consumables, such as air filters, fuses, fasteners, and so forth.


As likewise used herein, an intangible data center asset 244 broadly refers to a data center asset 244 that lacks physical substance. Examples of intangible data center assets 244 may include software applications, software services, firmware code, and other non-physical, computer-based assets. Other examples of intangible data center assets 244 may include digital assets, such as structured and unstructured data of all kinds, still images, video images, audio recordings of speech and other sounds, and so forth. Further examples of intangible data center assets 244 may include intellectual property, such as patents, trademarks, copyrights, trade names, franchises, goodwill, and knowledge resources, such as data center asset 244 documentation. Yet other examples of intangible data center assets 244 may include certain tasks, functions, operations, procedures, or processes performed by data center personnel. Those of skill in the art will recognize that many such examples of tangible and intangible data center assets 244 are possible. Accordingly, the foregoing is not intended to limit the spirit, scope or intent of the invention.


In certain embodiments, the value produced by a data center asset 244 may be tangible or intangible. As used herein, tangible value broadly refers to value that can be measured. Examples of tangible value may include return on investment (ROI), total cost of ownership (TCO), internal rate of return (IRR), increased performance, more efficient use of resources, improvement in sales, decreased customer support costs, and so forth. As likewise used herein, intangible value broadly refers to value that provides a benefit that may be difficult to measure. Examples of intangible value may include improvements in user experience, customer support, and market perception. Skilled practitioners of the art will recognize that many such examples of tangible and intangible value are possible. Accordingly, the foregoing is not intended to limit the spirit, scope or intent of the invention.


In certain embodiments, the data center monitoring and management environment 200 may include a data center monitoring and management console 118. In certain embodiments, the data center monitoring and management console 118 may be implemented to perform a data center monitoring and management operation. As used herein, a data center monitoring and management operation broadly refers to any task, function, operation, procedure, or process performed, directly or indirectly, within a data center monitoring and management environment 200 to procure, deploy, configure, implement, operate, monitor, manage, maintain, or remediate a data center asset 244.


In certain embodiments, a data center monitoring and management operation may include a data center monitoring task. As used herein, a data center monitoring task broadly refers to any function, operation, procedure, or process performed, directly or indirectly, within a data center monitoring and management environment 200 to monitor the operational status of a particular data center asset 244. In various embodiments, a particular data center asset 244 may be implemented to generate an alert if its operational status exceeds certain parameters. In these embodiments, the definition of such parameters, and the method by which they may be selected, is a matter of design choice.


For example, an internal cooling fan of a server may begin to fail, which in turn may cause the operational temperature of the server to exceed its rated level. In this example, the server may be implemented to generate an alert, which provides notification of the occurrence of a data center issue. As used herein, a data center issue broadly refers to an operational situation associated with a particular component of a data monitoring and management environment 200, which if not corrected, may result in negative consequences. In certain embodiments, a data center issue may be related to the occurrence, or predicted occurrence, of an anomaly within the data center monitoring and management environment 200. In certain embodiments, the anomaly may be related to unusual or unexpected behavior of one or more data center assets 244.


In certain embodiments, a data center monitoring and management operation may include a data center management task. As used herein, a data center management task broadly refers to any function, operation, procedure, or process performed, directly or indirectly, within a data center monitoring and management environment 200 to manage a particular data center asset 244. In certain embodiments, a data center management task may include a data center deployment operation, a data center remediation operation, a data center remediation documentation operation, a connectivity management operation, or a combination thereof.


As used herein, a data center deployment operation broadly refers to any function, task, procedure, or process performed, directly or indirectly, within a data center monitoring and management environment 200 to install a software file, such as a configuration file, a new software application, a version of an operating system, and so forth, on a data center asset 244. As likewise used herein, a data center remediation operation broadly refers to any function, task, procedure, or process performed, directly or indirectly, within a data center monitoring and management environment 200 to correct an operational situation associated with a component of a data monitoring and management environment 200, which if not corrected, may result in negative consequences. A data center remediation documentation operation, as likewise used herein, broadly refers to any function, task, procedure, or process performed, directly or indirectly, within a data center monitoring and management environment 200 to retrieve, generate, revise, update, or store remediation documentation that may be used in the performance of a data center remediation operation.


Likewise, as used herein, a connectivity management operation (also referred to as a data center connectivity management operation) broadly refers to any task, function, procedure, or process performed, directly or indirectly, to manage connectivity between a particular data center asset 244 and a particular data center monitoring and management console 118. In various embodiments, one or more connectivity management operation may be performed to ensure that data exchanged between a particular data center asset 244 and a particular data center monitoring and management console 118 during a communication session is secured. In certain of these embodiments, as described in greater detail herein, various cryptographic approaches familiar to skilled practitioners of the art may be used to secure a particular communication session.


In certain embodiments, the data center monitoring and management console 118 may be implemented to receive an alert corresponding to a particular data center issue. In various embodiments, the data center monitoring and management console 118 may be implemented to receive certain data associated with the operation of a particular data center asset 244. In certain embodiments, such operational data may be received through the use of telemetry approaches familiar to those of skill in the art. In various embodiments, the data center monitoring console 118 may be implemented to process certain operational data received from a particular data center asset to determine whether a data center issue has occurred, is occurring, or is anticipated to occur.


In certain embodiments, the data center monitoring and management console 118 may be implemented to include a monitoring module 120, a management monitor 122, an analysis engine 124, and a connectivity management system (CMS) 126, a unstructured data handling (UDH) system 130, or a combination thereof. In certain embodiments, the monitoring module 120 may be implemented to monitor the procurement, deployment, implementation, operation, management, maintenance, or remediation of a particular data center asset 244 at any point in its lifecycle. In certain embodiments, the management module 122 may be implemented to manage the procurement, deployment, implementation, operation, monitoring, maintenance, or remediation of a particular data center asset 244 at any point in its lifecycle.


In various embodiments, the monitoring module 120, the management module 122, the analysis engine 124, CMS 126, and the UDH system 130, may be implemented, individually or in combination with one another, to perform a data center asset monitoring and management operation, as likewise described in greater detail herein. In various embodiments, a CMS client 136 may be implemented on certain user devices 204, or certain data center assets 244, or a combination thereof. In various embodiments, the CMS 126 may be implemented in combination with a particular CMS client 136 to perform a connectivity management operation, as described in greater detail herein. In various embodiments, the CMS 126 may likewise be implemented in combination with the UDH system 130 to perform a data center monitoring and management operation, described in greater detail herein. In certain embodiments, a data center monitoring and management operation may be implemented to include one or more UDH operations, likewise described in greater detail herein.


In certain embodiments, the data center monitoring and management environment 200 may include a repository of data center monitoring and management data 220. In certain embodiments, the repository of data center monitoring and management data 220 may be local to the information handling system 100 executing the data center monitoring and management console 118 or may be located remotely. In various embodiments, the repository of data center monitoring and management data 220 may include certain information associated with data center asset data 220, data center asset configuration rules 224, data center infrastructure data 226, data center remediation data 228, and data center personnel data 230.


As used herein, a data center asset data 222 broadly refers to information associated with a particular data center asset 244, such as an information handling system 100, or an associated workload, that can be read, measured, and structured into a usable format. For example, data center asset data 222 associated with a particular server may include the number and type of processors it can support, their speed and architecture, minimum and maximum amounts of memory supported, various storage configurations, the number, type, and speed of input/output channels and ports, and so forth. In various embodiments, the data center asset data 222 may likewise include certain performance and configuration information associated with a particular workload, as described in greater detail herein. In various embodiments, the data center asset data 222 may include certain public or proprietary information related to data center asset 244 configurations associated with a particular workload.


In certain embodiments, the data center asset data 222 may include information associated with data center asset 244 types, quantities, locations, use types, optimization types, workloads, performance, support information, and cost factors, or a combination thereof, as described in greater detail herein. In certain embodiments, the data center asset data 222 may include information associated with data center asset 244 utilization patterns, likewise described in greater detail herein. In certain embodiments, the data center asset data 222 may include information associated with the allocation of certain data center asset resources, described in greater detail herein, to a particular workload.


As likewise used herein, a data center asset configuration rule 224 broadly refers to a rule used to configure a particular data center asset 244. In certain embodiments, one or more data center asset configuration rules 224 may be used to verify that a particular data center asset 244 configuration is the most optimal for an associated location, or workload, or to interact with other data center assets 244, or a combination thereof, as described in greater detail herein. In certain embodiments, the data center asset configuration rule 224 may be used in the performance of a data center asset configuration verification operation, a data center remediation operation, or a combination of the two. In certain embodiments, the data center asset configuration verification operation, or the data center remediation operation, or both, may be performed by an asset configuration system 250. In certain embodiments, the asset configuration system 250 may be used in combination with the data center monitoring and management console 118 to perform a data center asset configuration operation, or a data center remediation operation, or a combination of the two.


As used herein, data center infrastructure 226 data broadly refers to any data associated with a data center infrastructure component. As likewise used herein, a data center infrastructure component broadly refers to any component of a data center monitoring and management environment 200 that may be involved, directly or indirectly, in the procurement, deployment, implementation, configuration, operation, monitoring, management, maintenance, or remediation of a particular data center asset 244. In certain embodiments, data center infrastructure components may include physical structures, such as buildings, equipment racks and enclosures, network and electrical cabling, heating, cooling, and ventilation (HVAC) equipment and associated ductwork, electrical transformers and power conditioning systems, water pumps and piping systems, smoke and fire suppression systems, physical security systems and associated peripherals, and so forth. In various embodiments, data center infrastructure components may likewise include the provision of certain services, such as network connectivity, conditioned airflow, electrical power, and water, or a combination thereof.


Data center remediation data 228, as used herein, broadly refers to any data associated with the performance of a data center remediation operation, described in greater detail herein. In certain embodiments, the data center remediation data 228 may include information associated with the remediation of a particular data center issue, such as the date and time an alert was received indicating the occurrence of the data center issue. In certain embodiments, the data center remediation data 228 may likewise include the amount of elapsed time before a corresponding data center remediation operation was begun after receiving the alert, and the amount of elapsed time before it was completed. In various embodiments, the data center remediation data 228 may include information related to certain data center issues, the frequency of their occurrence, their respective causes, error codes associated with such data center issues, the respective location of each data center asset 244 associated with such data center issues, and so forth.


In various embodiments, the data center remediation data 228 may include information associated with data center asset 244 replacement parts, or upgrades, or certain third party services that may need to be procured in order to perform the data center remediation operation. Likewise, in certain embodiments, related data center remediation data 228 may include the amount of elapsed time before the replacement parts, or data center asset 244 upgrades, or third party services were received and implemented. In certain embodiments, the data center remediation data 228 may include information associated with data center personnel who may have performed a particular data center remediation operation. Likewise, in certain embodiments, related data center remediation data 228 may include the amount of time the data center personnel actually spent performing the operation, issues encountered in performing the operation, and the eventual outcome of the operation that was performed.


In certain embodiments, the data center remediation data 228 may include remediation documentation associated with performing a data center asset remediation operation associated with a particular data center asset 244. In various embodiments, such remediation documentation may include information associated with certain attributes, features, characteristics, functional capabilities, operational parameters, and so forth, of a particular data center asset 244. In certain embodiments, such remediation documentation may likewise include information, such as step-by-step procedures and associated instructions, video tutorials, diagnostic routines and tests, checklists, and so forth, associated with remediating a particular data center issue.


In certain embodiments, the data center remediation data 228 may include information associated with any related remediation dependencies, such as other data center remediation operations that may need to be performed beforehand. In certain embodiments, the data center remediation data 228 may include certain time restrictions when a data center remediation operation, such as rebooting a particular server, may be performed. In various embodiments, the data center remediation data 228 may likewise include certain autonomous remediation rules, described in greater detail herein. In various embodiments, certain of these autonomous remediation rules may be used in the performance of an autonomous remediation operation, described in greater detail herein. Those of skill in the art will recognize that many such examples of data center remediation data 228 are possible. Accordingly, the foregoing is not intended to limit the spirit, scope, or intent of the invention.


Data center personnel data 230, as used herein, broadly refers to any data associated with data center personnel who may be directly, or indirectly, involved in the procurement, deployment, configuration, implementation, operation, monitoring, management, maintenance, or remediation of a particular data center asset 244. In various embodiments, the data center personnel data 230 may include job title, work assignment, or responsibility information corresponding to certain data center personnel. In various embodiments, the data center personnel data 230 may include information related to the type, and number, of data center remediation operations currently being, or previously performed by certain data center personnel. In various embodiments, the data center personnel data 230 may include historical information, such as success metrics, associated with data center remediation operations performed by certain data center personnel, such as data center administrators, operators, and technicians. In these embodiments, the data center personnel data 230 may be updated as individual data center personnel complete each data center remediation task they are assigned, described in greater detail herein.


In various embodiments, the data center personnel data 230 may likewise include education, certification, and skill level information corresponding to certain data center personnel. Likewise, in various embodiments, the data center personnel data 230 may include security-related information, such as security clearances, user IDs, passwords, security-related biometrics, authorizations, and so forth, corresponding to certain data center personnel. Those of skill in the art will recognize that many such examples of data center personnel data 230 are possible. Accordingly, the foregoing is not intended to limit the spirit, scope, or intent of the invention.


In certain embodiments, various data center assets 244 within a data center monitoring and management environment 200 may have certain interdependencies. As an example, a data center monitoring and management environment 200 may have multiple servers interconnected by a storage area network (SAN) providing block-level access to various disk arrays and tape libraries. In this example, the servers, various physical and operational elements of the SAN, as well as the disk arrays and tape libraries, are interdependent upon one another.


In certain embodiments, each data center asset 244 in a data center monitoring and management environment 200 may be treated as a separate data center asset 244 and depreciated individually according to their respective attributes. As an example, a particular rack of servers in a data center monitoring and management environment 200 may be made up of a variety of individual servers, each of which may have a different depreciation schedule. To continue the example, certain of these data center assets 244 may be implemented in different combinations to produce an end result. To further illustrate the example, a particular server in the rack of servers may initially be implemented to query a database of customer records. As another example, the same server may be implemented at a later time to perform an analysis of sales associated with those same customer records.


In certain embodiments, each data center asset 244 in a data center monitoring and management environment 200 may have an associated maintenance schedule and service contract. For example, a data center monitoring and management environment 200 may include a wide variety of servers and storage arrays, which may respectively be manufactured by a variety of manufacturers. In this example, the frequency and nature of scheduled maintenance, as well as service contract terms and conditions, may be different for each server and storage array. In certain embodiments, the individual data center assets 244 in a data center monitoring and management environment 200 may be configured differently, according to their intended use. To continue the previous example, various servers may be configured with faster or additional processors for one intended workload, while other servers may be configured with additional memory for other intended workloads. Likewise, certain storage arrays may be configured as one RAID configuration, while others may be configured as a different RAID configuration.


In certain embodiments, the data center monitoring and management environment 200 may likewise be implemented to include an asset configuration system 250, a product configuration system 252, a product fabrication system 254, and a supply chain system 256, or a combination thereof. In various embodiments, the asset configuration system 250 may be implemented to perform certain data center asset 244 configuration operations. In certain embodiments, the data center asset 244 configuration operation may be performed to configure a particular data center asset 244 for a particular purpose. In certain embodiments, the data center monitoring and management console 118 may be implemented to interact with the asset configuration system 250 to perform a particular data center asset 244 configuration operation. In various embodiments, the asset configuration system 250 may be implemented to generate, manage, and provide, or some combination thereof, data center asset configuration rules 224. In certain of these embodiments, the data center asset configuration rules 224 may be used to configure a particular data center asset 244 for a particular purpose.


In certain embodiments, a user 202 may use a user device 204 to interact with the data center monitoring and management console 118. As used herein, a user device 204 refers to an information handling system such as a personal computer, a laptop computer, a tablet computer, a personal digital assistant (PDA), a smart phone, a mobile telephone, or other device that is capable of processing and communicating data. In certain embodiments, the communication of the data may take place in real-time or near-real-time. As used herein, real-time broadly refers to processing and providing information within a time interval brief enough to not be discernable by a user 202.


In certain embodiments, a user device 204 may be implemented with a camera 206, such as a video camera known to skilled practitioners of the art. In certain embodiments, the camera 206 may be integrated into the user device 204. In certain embodiments, the camera 206 may be implemented as a separate device configured to interoperate with the user device 204. As an example, a webcam familiar to those of skill in the art may be implemented to receive and communicate various image and audio signals to a user device 204 via a Universal Serial Bus (USB) interface. In certain embodiments, the user device 204 may be configured to present a data center monitoring and management console user interface (UI) 240. In certain embodiments, the data center monitoring and management console UI 240 may be implemented to present a graphical representation 242 of data center asset monitoring and management information, which is automatically generated in response to interaction with the data center monitoring and management console 118.


In certain embodiments, a data center monitoring and management application 238 may be implemented on a particular user device 204. In various embodiments, the data center monitoring and management application 238 may be implemented on a mobile user device 204, such as a laptop computer, a tablet computer, a smart phone, a dedicated-purpose mobile device, and so forth. In certain of these embodiments, the mobile user device 204 may be used at various locations within the data center monitoring and management environment 200 by the user 202 when performing a data center monitoring and management operation, described in greater detail herein.


In various embodiments, the data center monitoring and management application 238 may be implemented to facilitate a user 202, such as a data center administrator, operator, or technician, to perform a particular data center remediation operation. In various embodiments, such facilitation may include using the data center monitoring and management application 238 to receive a notification of a data center remediation task, described in greater detail herein, being assigned to the user. In certain embodiments, the data center monitoring and management console 118 may be implemented to generate the notification of the data center remediation task assignment, and assign it to the user, as likewise described in greater detail herein. In certain embodiments, the data center monitoring and management console 118 may be implemented to generate the data center remediation task, and once generated, provide it to the data center monitoring and management application 238 associated with the assigned user 202.


In certain embodiments, such facilitation may include using the data center monitoring and management application 238 to receive the data center remediation task from the data center monitoring and management console 118. In various embodiments, such facilitation may include using the data center monitoring and management application 238 to confirm that the user 202 is at the correct physical location of a particular data center asset 244 associated with a corresponding data center issue. In certain of these embodiments, the data center monitoring and management application 238 may be implemented to include certain Global Positioning System (GPS) capabilities, familiar to those of skill in the art, which may be used to determine the physical location of the user 202 in relation to the physical location of a particular data center asset 244.


In various embodiments, such facilitation may include using the data center monitoring and management application 238 to ensure the user 202 is aware of, or is provided the location of, or receives, or a combination thereof, certain remediation resources, described in greater detail herein, that may be needed to perform a particular data center remediation operation. In various embodiments, such facilitation may include using the data center monitoring and management application 238 to view certain remediation documentation, or augmented instructions, related to performing a particular data center remediation operation. In various embodiments, such facilitation may include using the data center monitoring and management application 238 to certify that a particular data center remediation operation has been performed successfully.


In certain embodiments the UI window 240 may be implemented as a UI window of the data center monitoring and management application 238. In various embodiments, the data center monitoring and management application 238 may be implemented to include, in part or in whole, certain functionalities associated with the data center monitoring and management console 118. In certain embodiments, the data center monitoring and management application 238 may be implemented to interact in combination with the data center monitoring and management console 118, and other components of the data center monitoring and management environment 200, to perform a data center monitoring and management operation.


In certain embodiments, the user device 204 may be used to exchange information between the user 202 and the data center monitoring and management console 118, the data center monitoring and management application 238, the asset configuration system 250, the product configuration system 252, the product fabrication system 254, and the supply chain system 256, or a combination thereof, through the use of a network 140. In various embodiments, the asset configuration system 250 may be implemented to configure a particular data center asset 244 to meet certain performance goals. In various embodiments, the asset configuration system 250 may be implemented to use certain data center monitoring and management data 220, certain data center asset configuration rules 226 it may generate or manage, or a combination thereof, to perform such configurations.


In various embodiments, the product configuration system 252 may be implemented to use certain data center monitoring and management data 220 to optimally configure a particular data center asset 244, such as a server, for an intended workload. In various embodiments, the data center monitoring and management data 220 used by the product configuration system 252 may have been generated as a result of certain data center monitoring and management operations, described in greater detail herein, being performed by the data center monitoring and management console 118. In various embodiments, the product configuration system 252 may be implemented to provide certain product configuration information to a product fabrication system 254. In various embodiments, the product fabrication system 254 may be implemented to provide certain product fabrication information to a product fabrication environment (not shown). In certain embodiments, the product fabrication information may be used by the product fabrication environment to fabricate a product, such as a server, to match a particular data center asset 244 configuration.


In various embodiments, the data center monitoring and management console UI 240 may be presented via a website (not shown). In certain embodiments, the website may be provided by one or more of the data center monitoring and management console 118, the asset configuration system 250, the product configuration system 252, the product fabrication system 254, or the supply chain system 256. In certain embodiments, the supply chain system 256 may be implemented to manage the provision, fulfillment, or deployment of a particular data center asset 244 produced in the product fabrication environment. For the purposes of this disclosure, a website may be defined as a collection of related web pages which are identified with a common domain name and is published on at least one web server. A website may be accessible via a public IP network or a private local network.


A web page is a document which is accessible via a browser which displays the web page via a display device of an information handling system. In various embodiments, the web page also includes the file which causes the document to be presented via the browser. In various embodiments, the web page may comprise a static web page, which is delivered exactly as stored and a dynamic web page, which is generated by a web application that is driven by software that enhances the web page via user input 208 to a web server.


In certain embodiments, the data center monitoring and management console 118 may be implemented to interact with the asset configuration system 250, the product configuration system 252, the product fabrication system 254, and the supply chain or fulfillment system 256, or a combination thereof, each of which in turn may be executing on a separate information handling system 100. In certain embodiments, the data center monitoring and management console 118 may be implemented to interact with the asset configuration system 250, the product configuration system 252, the product fabrication system 254, and the supply chain or fulfillment system 256, or a combination thereof, to perform a data center monitoring and management operation, as described in greater detail herein.



FIG. 3 shows a functional block diagram of the performance of certain data center monitoring and management operations implemented in accordance with an embodiment of the invention. In various embodiments, a data center monitoring and management environment 200, described in greater detail herein, may be implemented to include one or more data centers, such as data centers ‘1’ 346 through ‘n’ 348. As likewise described in greater detail herein, each of the data centers ‘1’ 346 through ‘n’ 348 may be implemented to include one or more data center assets 244, likewise described in greater detail herein.


In certain embodiments, a data center asset 244 may be implemented to process an associated workload 360. A workload 360, as used herein, broadly refers to a measure of information processing that can be performed by one or more data center assets 244, individually or in combination with one another, within a data center monitoring and management environment 200. In certain embodiments, a workload 360 may be implemented to be processed in a virtual machine (VM) environment, familiar to skilled practitioners of the art. In various embodiments, a workload 360 may be implemented to be processed as a containerized workload 360, likewise familiar to those of skill in the art.


In certain embodiments, as described in greater detail herein, the data center monitoring and management environment 200 may be implemented to include a data center monitoring and management console 118. In certain embodiments, the data center monitoring and management console 118 may be implemented to include a monitoring module 120, a management module 122, an analysis engine 124, and a connectivity management system (CMS) 126, and an unstructured data handling (UDH) system 130, or a combination thereof, as described in greater detail herein. In various embodiments, a CMS client 136, described in greater detail herein may be implemented on certain user devices ‘A’ 304 through ‘x’ 314, or certain data center assets 244, or within data centers ‘1’ 346 through ‘n’ 348, or a combination thereof. In certain embodiments, the CMS 126 may be implemented in combination with a particular CMS client 136 to perform a connectivity management operation, as likewise described in greater detail herein.


As described in greater detail herein, the data center monitoring and management console 118 may be implemented in certain embodiments to perform a data center monitoring and management operation. In certain embodiments, the data center monitoring and management console 118 may be implemented to provide a unified framework for the performance of a plurality of data center monitoring and management operations, by a plurality of users, within a common user interface (UI). In certain embodiments, the data center monitoring and management console 118, and other components of the data center monitoring environment 200, such as the asset configuration system 250, may be implemented to be used by a plurality of users, such as users ‘A’ 302 through ‘x’ 312 shown in FIG. 3. In various embodiments, certain data center personnel, such as users ‘A’ 302 through ‘x’ 312, may respectively interact with the data center monitoring and management console 118, and other components of the data center monitoring and management environment 200, through the use of an associated user device ‘A’ 304 through ‘x’ 314.


In certain embodiments, such interactions may be respectively presented to users ‘A’ 302 through ‘x’ 312 within a user interface (UI) window 306 through 316, corresponding to user devices ‘A’ 304 through ‘x’ 314. In certain embodiments the UI window 306 through 316 may be implemented in a window of a web browser, familiar to skilled practitioners of the art. In certain embodiments, a data center monitoring and management application (MMA) 310 through 320, described in greater detail herein, may be respectively implemented on user devices ‘A’ 304 through ‘x’ 314. In certain embodiments, the UI window 306 through 316 may be respectively implemented as a UI window of the data center MMA 310 through 320. In certain embodiments, the data center MMA 310 through 320 may be implemented to interact in combination with the data center monitoring and management console 118, and other components of the data center monitoring and management environment 200, to perform a data center monitoring and management operation. In various embodiments, performance of the data center monitoring and management operation may include the performance of one or more UDH operations, or one or more workload management operations, or a combination thereof, as described in greater detail herein.


In certain embodiments, the interactions with the data center monitoring and management console 118, and other components of the data center monitoring and management environment 200, may respectively be presented as a graphical representation 308 through 318 within UI windows 306 through 316. In various embodiments, such interactions may be presented to users ‘A’ 302 through ‘x’ 312 via a display device 324, such as a projector or large display screen. In certain of these embodiments, the interactions may be presented to users ‘A’ 302 through ‘x’ 312 as a graphical representation 348 within a UI window 336.


In certain embodiments, the display device 324 may be implemented in a command center 350, familiar to those of skill in the art, such as a command center 350 typically found in a data center or a network operations center (NOC). In various embodiments, one or more of the users ‘A’ 302 through ‘x’ 312 may be located within the command center 350. In certain of these embodiments, the display device 324 may be implemented to be generally viewable by one or more of the users ‘A’ 302 through ‘x’ 312.


In certain embodiments, the data center monitoring and management operation may be performed to identify the location 350 of a particular data center asset 244. In certain embodiments, the location 350 of a data center asset 244 may be physical, such as the physical address of its associated data center, a particular room in a building at the physical address, a particular location in an equipment rack in that room, and so forth. In certain embodiments, the location 350 of a data center asset 244 may be non-physical, such as a network address, a domain, a Uniform Resource Locator (URL), a file name in a directory, and so forth.


Certain embodiments of the invention reflect an appreciation that it is not uncommon for large organization to have one or more data centers, such as data centers ‘1’ 346 through ‘n’ 348. Certain embodiments of the invention reflect an appreciation that it is likewise not uncommon for such data centers to have multiple data center system administrators and data center technicians. Likewise, various embodiments of the invention reflect an appreciation that it is common for a data center system administrator to be responsible for planning, initiating, and overseeing the execution of certain data center monitoring and management operations. Certain embodiments of the invention reflect an appreciation that it is common for a data center system administrator, such as user ‘A’ 302, to assign a particular data center monitoring and management operation to a data center technician, such as user ‘x’ 312, as a task to be executed.


Certain embodiments of the invention reflect an appreciation that it is likewise common for a data center administrator, such as user ‘A’ 302, to assume responsibility for performing a particular data center monitoring and management operation. As an example, a data center administrator may receive a stream of data center alerts, each of which is respectively associated with one or more data center issues. To continue the example, several of the alerts may have an initial priority classification of “critical.” However, the administrator may notice that one such alert may be associated with a data center issue that is more critical, or time sensitive, than the others and should be remediated as quickly as possible. Accordingly, the data center administrator may elect to assume responsibility for remediating the data center issue, and as a result, proceed to performing an associated data center remediation operation at that time instead of assigning it to other data center personnel.


Certain embodiments of the invention reflect an appreciation that the number of data center assets 244 in a particular data center ‘1’ 346 through ‘n’ 348 may be quite large. Furthermore, it is not unusual for such data center assets 244 to be procured, deployed, configured, and implemented on a scheduled, or as needed, basis. It is likewise common for certain existing data center assets 244 to be replaced, upgraded, reconfigured, maintained, or remediated on a scheduled, or as-needed, basis. Likewise, certain embodiments of the invention reflect an appreciation that such replacements, upgrades, reconfigurations, maintenance, or remediation may be oriented towards hardware, firmware, software, connectivity, or a combination thereof.


For example, a data center system administrator may be responsible for the creation of data center asset 244 procurement, deployment, configuration, and implementation templates, firmware update bundles, operating system (OS) and software application stacks, and so forth. Likewise, a data center technician may be responsible for receiving a procured data center asset 244, transporting it to a particular data asset location 350 in a particular data center ‘1’ 346 through ‘n’ 348, and implementing it in that location 350. The same, or another, data center technician may then be responsible for configuring the data center asset 244, establishing network connectivity, applying configuration files, and so forth. To continue the example, the same, or another, data center administrator or technician may be responsible for remediating hardware issues, such as replacing a disc drive in a server or Redundant Array of Independent Disks (RAID) array, or software issues, such as updating a hardware driver or the version of a server's operating system. Accordingly, certain embodiments of the invention reflect an appreciation that a significant amount of coordination may be needed between data center system administrators and data center technicians to assure efficient and reliable operation of a data center.


In various embodiments, certain data center monitoring and management operations may include a data center remediation operation, described in greater detail herein. In certain embodiments, a data center remediation operation may be performed to remediate a particular data asset 244 issue at a particular data asset location 350 in a particular data center ‘1’ 346 through ‘n’ 348. In certain embodiments, the data center remediation operation may be performed to ensure that a particular data center asset location 350 in a particular data center ‘1’ 346 through ‘n’ 348 is available for the replacement or upgrade of an existing data center asset 244. As an example, a data center remediation operation may involve deployment of a replacement server that occupies more rack space than the server it will be replacing.


In various embodiments, the data center monitoring and management console 118, or the data center monitoring and management application 310 through 320, or a combination of the two, may be implemented in a failure tracking mode to capture certain data center asset 244 telemetry. In various embodiments, the data center asset 244 telemetry may include data associated with the occurrence of certain events, such as the failure, or anomalous performance, of a particular data center asset 244, or an associated workload 360, in whole, or in part. In certain embodiments, the data center asset 244 telemetry may be captured incrementally to provide a historical perspective of the occurrence, and evolution, of an associated data center issue.


In various embodiments, the data center monitoring and management console 118 may likewise be implemented to generate certain remediation operation notes. For example, the data center monitoring and management console 118 may enter certain data center asset 244 remediation instructions in the data center remediation operation notes. In various embodiments, the data center remediation operation notes may be implemented to contain information related to data center asset 244 replacement or upgrade parts, data center asset 244 files that may be needed, installation and configuration instructions related to such files, the physical location 350 of the data center asset 244, and so forth. In certain embodiments, a remediation task 344 may be generated by associating the previously-generated data center remediation operation notes with the remediation documentation, data center asset files, or other remediation resources 342 most pertinent to the data center issue, and the administrator, and any data center personnel selected or its remediation. As used herein, a data center remediation task 344 broadly refers to one or more data center remediation operations, described in greater detail herein, that can be assigned to one or more users ‘A’ 302 through ‘x’ 312.


Certain embodiments of the invention reflect an appreciation that a group of data center personnel, such as users ‘A’ 302 through ‘x’ 312, will likely possess different skills, certifications, levels of education, knowledge, experience, and so forth. As a result, remediation documentation that is suitable for certain data center personnel may not be suitable for others. For example, a relatively inexperienced data center administrator may be overwhelmed by a massive volume of detailed and somewhat arcane minutiae related to the configuration and administration of multiple virtual machines (VMs) on a large server. However, such remediation documentation may be exactly what a highly skilled and experienced data center administrator needs to remediate subtle server and VM configuration issues.


Conversely, the same highly skilled and experienced data center administrator may be hampered, or slowed down, by being provided remediation documentation that is too simplistic, generalized, or high-level for the data center issue they may be attempting to remediate. Likewise, an administrator who is moderately skilled in configuring VMs may benefit from having step-by-step instructions, and corresponding checklists, when remediating a VM-related data center issue. Accordingly, as used herein, pertinent remediation documentation broadly refers to remediation documentation applicable to a corresponding data center issue that is most suited to the skills, certifications, level of education, knowledge, experience, and so forth of the data center personnel assigned to its remediation.


In various embodiments, the data center monitoring and management console 118 may be implemented to generate a corresponding notification of the remediation task 344. In certain embodiments, the resulting notification of the remediation task 344 assignment may be provided to the one or more users ‘A’ 302 through ‘x’ 312 assigned to perform the remediation task 344. In certain embodiments, the notification of the remediation task 344 assignment may be respectively provided to the one or more users ‘A’ 302 through ‘x’ 312 within the UI 306 through 316 of their respective user devices ‘A’ 304 through ‘x’ 314. In certain embodiments, the notification of the remediation task 344 assignment, and the remediation task 344 itself, may be implemented such that they are only visible to the users ‘A’ 302 through ‘x’ 312 to which it is assigned.


In certain embodiments, the data center monitoring and management console 118 may be implemented to operate in a monitoring mode. As used herein, monitoring mode broadly refers to a mode of operation where certain monitoring information provided by the monitoring and management console 118 is available for use by one or more users ‘A’ 302 through ‘x’ 312. In certain embodiments, one or more of the users ‘A’ 302 through ‘x’ 312 may be command center 350 users. In certain embodiments, the data center monitoring and management console 118 may be implemented to operate in a management mode. As used herein, management mode broadly refers to a mode of operation where certain operational functionality of the data center monitoring and management console 118 is available for use by a user, such as users ‘A’ 302 through ‘x’ 312.



FIG. 4 shows a block diagram of a data center monitoring and management console implemented in accordance with an embodiment of the invention. In various embodiments, the data center monitoring and management console 118, described in greater detail herein, may be implemented to include a connectivity management system (CMS) 126, an unstructured data handling (UDH) system 130, a workload management system (WMS) 440, and one or more data center services 432, or a combination thereof. In various embodiments, the CMS 126 may be implemented individually, or in combination with a particular CMS client 136 to perform a connectivity management operation, likewise described in greater detail herein. In various embodiments, one or more connectivity management operations may be performed to initiate, and manage, secure, bi-directional, real-time connectivity between a data center monitoring and management console 118 and a particular data center asset 244, as described in greater detail herein.


In various embodiments, the UDH system 130 may be implemented to perform one or more UDH operations within a data center 402, described in greater detail herein, or a cloud computing environment (CCE) 450, or a combination of the two, used to service a particular workload 412 ‘1’-‘n’. As used herein, a UDH operation broadly refers to any function, operation, procedure, or process performed, directly or indirectly, within a data center monitoring and management environment to identify one or more anomalous data elements in a particular set of workload provisioning information, described in greater detail herein, used to provision one or more data center assets 244, or one or more associated resources, or a combination thereof, to service a particular workload 412 ‘1’-‘n’. In certain of these embodiments, an anomalous data element may be malformed, incorrect, missing, or otherwise anomalous.


Skilled practitioners of the art will be familiar with cloud computing, which is defined by the National Institute of Standards and Technology (NIST) as a model for enabling ubiquitous, convenient, on-demand network access to a shared pool of configurable computing resources (e.g., networks, servers, storage, applications, services, and so forth) that can be rapidly provisioned and released with minimal management effort or service provider interaction. In various embodiments, a data center monitoring and management operation may be implemented to include the performance of one or more data center asset provisioning operations.


As used herein, provisioning broadly refers to the process of making available, and configuring, one or more components of an information technology (IT) infrastructure for use, directly or indirectly, within a data center 402, or a CCE 450, or a combination of the two. As such, various embodiments of the invention reflect an appreciation that such provisioning may include the steps necessary to manage user and system access to various data center assets 244 and associated resources. Various embodiments of the invention likewise reflect an appreciation that such provisioning may include the performance of multiple tasks and involve multiple systems, data center assets 244, and associated resources, or a combination thereof. Accordingly, as used herein, a data center asset provisioning operation broadly refers to any function, operation, procedure, or process performed, directly or indirectly, within a data center monitoring and management environment to provision one or more data center assets 244, or one or more associated resources, or a combination thereof, to service a particular workload 412 ‘1’-‘n’.


Those of skill in the art will be aware that cloud computing, as typically implemented, has certain characteristics, such as on-demand self-service. As a result, a user can unilaterally and automatically provision certain computing capabilities, such as server time and network storage, without requiring human interaction with a CCE 450. Another characteristic of cloud computing is broad network 140 access, where certain cloud computing capabilities may be made available over a network 140 connection and accessed through standard mechanisms that promote use by heterogeneous thin or thick client platforms (e.g., mobile phones, tablets, laptops, and workstations).


Yet another characteristic of cloud computing is resource pooling, where cloud computing resources are pooled to serve multiple users in a multi-tenant model, with different physical and virtual resources dynamically assigned and reassigned according to individual demand. One aspect of resource pooling is a sense of location independence in that the user generally has no control over, or knowledge of, the exact location of the provided resources. Yet still another characteristic of cloud computing is elasticity, where cloud computing capabilities and functionalities can be elastically provisioned and released, in some cases automatically, to rapidly scale outward and inward according to demand.


As a result, the resources available for provisioning often appear to be unlimited, and furthermore, can be appropriated in any quantity, at any time. Another characteristic of cloud computing is the ability to automatically control and optimize resource utilization by leveraging a metering capability at some level of abstraction appropriate to the type of service (e.g., storage, processing, bandwidth, and active user accounts). Accordingly, resource usage can be monitored, controlled, and reported, providing transparency for both the provider and the user of a particular service.


Various embodiments of the invention reflect an appreciation that cloud computing may be implemented to support various service models. One such cloud service model is Software as a Service (SaaS), which allows a user to use certain software applications running in a CCE 450. As typically implemented, the applications are accessible from various client devices through either a thin client interface, such as a web browser (e.g., web-based email), or an Application Program Interface (API). As such, the user does not manage or control the underlying cloud computing infrastructure including network, servers, operating systems, storage, or even individual application capabilities.


Another cloud service model is Platform as a Service (PaaS), which allows a user to deploy custom-created, or acquired, software applications that have been created through the use of programming languages, libraries, services, and tools supported by the cloud computing infrastructure. In a PaaS model, the user does not manage or control the underlying cloud computing infrastructure, including network, servers, operating systems, or storage, but may have control over the deployed applications and associated configuration settings. Yet another cloud service model is Infrastructure as a Service (IaaS), which provides a user the ability to provision processing, storage, network connectivity, and other fundamental computing resources to implement and run one or more workloads 412 ‘1’-‘n’. As in other cloud service models, the user does not manage or control the underlying cloud computing infrastructure, but has control over operating systems, storage, and deployed applications; and possibly limited control of certain networking components (e.g., host firewalls).


In various embodiments, a CCE 450 may be implemented as a private, public, or hybrid CCE 450. As used herein, a private CCE 450 broadly refers to a cloud computing infrastructure provisioned for exclusive use by a single organization comprising multiple consumers (e.g., business units, departments, individual users, etc.). As such, it may be owned, managed, and operated by the organization, a third party, or some combination of the two, and it may exist on or off premises.


As likewise used herein, a community CCE 450 broadly refers to a cloud computing infrastructure provisioned for exclusive use by a specific community, or set, of users from organizations that have shared interests or objectives (e.g., their common mission, security requirements, policy, compliance considerations, etc.). Accordingly, it may be owned, managed, and operated by one or more of the organizations that are a member of the community, a third party, or some combination thereof, and it may exist on or off premises. Likewise, as used herein, a public CCE 450 broadly refers to a cloud computing infrastructure that is provisioned for open use by the general public. It may be owned, managed, and operated by a business, academic, government, or non-government organization, or some combination thereof, but it exists on the premises of the cloud computing provider, whoever they may be. Examples of such public CCEs 450 include Amazon Web Services (AWS®), Oracle® Cloud Platform, Microsoft Azure®, and others.


A hybrid CCE 450, as used herein, broadly refers to a CCE 450 that is a composition of two or more distinct CCEs 450 (e.g., private, community, or public) that remain unique and separate entities, but are bound together by standardized or proprietary technology that enables data and application portability (e.g., cloud bursting for load balancing between clouds). In various embodiments, a hybrid CCE 450 may be implemented by an organization that maintains one or more data centers 402, or one or more private CCEs 450 of its own, or a combination thereof, while likewise using one or more private, community, or public CCEs 450 provided by others. In various embodiments, certain multi cloud approaches may involve the use of two or more private, community, public, or hybrid CCEs 450, or a combination thereof. In various embodiments, one or more CCEs 450 may be implemented to include a data center monitoring and management environment.


In various embodiments, the operator of a data center 402, or a CCE 450, or a combination of the two, may receive a request to provision one or more data center assets 244, or one or more associated resources, or a combination thereof, to service a particular workloads 412 ‘1’-‘n’. In various embodiments, such a request may include certain workload provisioning information pertinent to servicing the workload 412. In certain of these embodiments, the workload provisioning information may include one or more configuration values, parameters, properties, rules, policies, and other associated information (e.g., file locations, Internet Protocol (IP) addresses, Uniform Resource Identifiers (URIs), and so forth), or a combination thereof. In various embodiments, the workload provisioning information may be used during the performance of one or more data center asset provisioning operations, described in greater detail herein.


In various embodiments, the workload provisioning information may be provided in the form of unstructured data. Skilled practitioners of the art will be familiar with unstructured data, which generally refers to information that is not arranged according to a predefined data model or schema, and therefore cannot be stored in a traditional relational database. In various embodiments, the workload provisioning information may be provided in Javascript Object Notation (JSON) format.


In various embodiments, the workload provisioning information may be provided via a property bag. Those of skill in the art will be likewise be familiar with the concept of a property bag, which as used herein broadly refers to a collection of workload provisioning information that may be used in the performance of one or more data center asset provisioning operations, or one or more data center monitoring and management operations, or a combination thereof. In various embodiments, the workload provisioning information may be provided in the form of a data contract. Skilled practitioners of the art will be familiar with a data contract, which defines the structure, format, and rules for exchanges of data between counterparties, such as a service and a data consumer, in a distributed data architecture.


However, various embodiments of the invention reflect an appreciation that data contracts are typically not compatible with a modern service architecture, described in greater detail herein. In various embodiments, this incompatibility may be mitigated by passing accumulated unstructured JSON data, or workload provisioning information contained in a property bag, across service boundaries as a string. As used herein, a service boundary broadly refers to a declarative description of functionality provided by a service. However, such a service boundary does not describe how such functionality may be accomplished.


Likewise, various embodiments of the invention reflect an appreciation that the unstructured data contained in a property bag not only becomes more complex over time, but also has more consumers, as additional provisioning requests are received. In various embodiments, this growing complexity may be mitigated by the implementation of a transformation service that utilizes Application Program Interface (API) approaches familiar to those of skill in the art to maintain consistency in the structure of the property bag while ensuring dependable consumption of the data it contains. In certain of these embodiments the transformation service may be implemented to resolve the data contained within the property bag according to the type of workload 412 being serviced and the services that are consumed when doing so.


Various embodiments of the invention reflect an appreciation that property bag data may be queued and asynchronously orchestrated across the services when a provisioning request is received. Accordingly, if one or more data elements in the workload provisioning information contained in the property bag is malformed, incorrect, missing, or otherwise anomalous, or a combination thereof, then one or more errors may be logged, but processing of the provisioning request may continue as it is asynchronous. Eventually, one or more errors may cause the processing to fail, which in turn may cause the provisioning request to move to an on-hold state.


Various embodiments of the invention reflect an appreciation that the root cause for a particular provisioning request to move to an on-hold state may be due to an increase in the number of possible failure points, which in turn may correspond to an increase in the number of data fields in the property bag. In various embodiments, detection of malformed, incorrect, missing, or otherwise anomalous workload provisioning information contained within a property bag may be modeled as a weighted undirected graph, as described in greater detail herein. In various embodiments, correlations may be made between workload provisioning information contained within a property bag and one or more consuming services to find patterns of malformed, incorrect, missing, or otherwise anomalous values. Accordingly, predictions may be made in various embodiments regarding which services or provisioning requests may be impacted when a change occurs in the transformation or consuming services. Likewise, predictions of potential failures and associated alerts may be generated and provided in various embodiments to service owners due to changes to services or workload provisioning information contained in a property bag.


In certain embodiments, the CMS 126, and the UDS system 130, may likewise be implemented in combination with one another to perform a particular connectivity management operation, or a particular UDH operation, or a combination of the two. In various embodiments, the data center monitoring and management console 118 may be implemented in a cloud environment familiar to skilled practitioners of the art. In various embodiments, the cloud environment may be distributed. In certain embodiments, such a distributed cloud environment may be implemented to include two or more data centers 402.


In certain embodiments, each data center 402 may be implemented to include one or more data center monitoring and management environments, described in greater detail herein. In various embodiments, each data center monitoring and management environment may be implemented to include one or more data center monitoring and management consoles 118. In certain of these embodiments, the two are more data center monitoring and management consoles 118 may be implemented to operate in combination with one another to perform one or more data center monitoring and management operations, or one or more UDH operations, or one or more workload management operations, or a combination thereof. In certain embodiments, a particular data center monitoring and management console 118 implemented in one data center monitoring and management environment may likewise be implemented to perform one or more data center monitoring and management operations, or one or more UDH operations, or one or more workload management operations, or a combination thereof, within another data center monitoring and management environment.


In various embodiments, the connectivity management system 126 may be implemented to include one or more CMS aggregators 128, one or more CMS services 422, and a service mesh proxy 434, or a combination thereof. In various embodiments, the CMS aggregator 128 may be implemented to interact with one or more of the CMS services 422, as described in greater detail herein. In various embodiments, the data center services 432 may likewise be implemented to interact with one or more of the CMS services 422, and the service mesh proxy 434, or a combination thereof. In certain embodiments, the CMS services 422 may be implemented to include a CMS discovery 424 service, a CMS authentication 426 service, a CMS inventory 428 service, and a CMS authorization 430 service, or a combination thereof.


In certain embodiments, a data center 402 may be implemented to include an associated data center firewall 416. In certain embodiments, the operator of the data center monitoring and management console 118 may offer its various functionalities and capabilities in the form of one or more or more cloud-based data center services 432, described in greater detail herein. In certain of these embodiments, the data center 402 may reside on the premises of a user of one or more data center services 432 provided by the operator of the data center monitoring and management console 118.


In various embodiments, one or more data center assets 244, described in greater detail herein, may be implemented within a particular data center 402. In certain embodiments, individual data center assets 244 may be implemented to include a workload management system (WMS) client 410, or a CMS client 136, or both. As used herein, a workload management system (WMS) 410, broadly refers to any software, firmware, or hardware, of a combination thereof, that may be implemented to perform one or more WMS operations. As likewise used herein, a WMS operation broadly refers to any function, operation, procedure, or process performed, directly or indirectly, to forecast, plan, distribute, schedule, configure, initiate, manage, or monitor, or a combination thereof, one or more workloads 412 ‘1’ through ‘n’ such that they may be serviced by one or more data center assets 244.


One example of a WMS 410 is a hypervisor. Skilled practitioners of the art will be familiar with a hypervisor, also known as a virtual machine monitor (VMM), or virtualizer, which broadly refers to a type of computer software, firmware, or hardware, or a combination thereof, that can be implemented to create and run a virtual machine (VM). Those of skill in the art will likewise be familiar with a VM, which is a virtualization, or emulation, of a computer system that can be implemented to provide the functionality of a physical computer, or a particular capability thereof. In certain embodiments, a VM may be implemented in certain embodiments to service one or more workloads 412.


Another example of a WMS 410 is a container orchestration system, such as the open source container orchestration system known as Kubernetes. Skilled practitioners of the art will be familiar with container orchestration systems, which broadly refer to a type of computer software, firmware, or hardware, or a combination thereof, that can be implemented to automate the operational effort involved in running containerized workloads and services on one or more data center assets 244. Those of skill in the art will likewise be familiar with a container, which is a unit of software that packages computer code, and its dependencies, such that an associated software application is able to run quickly and reliably across one or more computing environments. In certain embodiments, a container orchestration system may be implemented in certain embodiments to orchestrate one or more containers as one or more workloads 412. Skilled practitioners of the art will recognize that many such examples of a WMS 410 and an associated workload 412 ‘1’ through ‘n’ are possible. Accordingly, the foregoing is not intended to limit the spirit, scope, or intent of the invention.


In various embodiments, a CMS client 136 implemented on one data center asset 244 may likewise be implemented to enable one or more connectivity management operations, or one or more UDH operations, or a combination thereof, associated with one or more other data center assets 444 that are not respectively implemented with their own CMS client 136. In certain of these embodiments, the CMS client 136 may be implemented to assume the identity, and attributes, of a particular data center asset it is directly, or indirectly, associated with. In various embodiments, the CMS client 136 may be implemented to convey certain UDH operation information associated with a particular data center asset 244 that may be used to service a particular workload 412 ‘1’ through ‘n’, directly or indirectly, during a particular interval of time to the CMS aggregator 128.


In certain of these embodiments, the UDH operation information may be conveyed as data center asset telemetry information 414 via a secure tunnel connection 418, described in greater detail herein, through a network 140 to a particular CMS aggregator 128. In certain embodiments, a CMS aggregator 128 may be implemented to provide such data center asset telemetry information 414 to the UDH system 130, or the WMS 440, either directly, or through a service mesh proxy 434, likewise described in greater detail herein. In various embodiments, a CMS aggregator 128 may be implemented to provide certain data center asset telemetry information 414 to the UDH system 130, or the WMS 440, as one or more CMS services 422. In certain of these embodiments, one or more data center services 432 may be implemented to receive such data center asset telemetry information 414 from one or more CMS services 422 and then provide it to the UDH system 130, or the WMS 440.


In various embodiments, the CMS client 136 may be implemented with a proxy management module 406. In certain of these embodiments, the proxy management module 406 may be implemented to manage the CMS client's 136 connectivity to an external network 140 through an intermediary proxy server, or the data center firewall 416, or both. Those of skill in the art will be familiar with a proxy server, which as typically implemented, is a server application that acts as an intermediary between a client, such as a web browser, requesting a resource, such as a web page, from a provider of that resource, such as a web server.


In certain embodiments, the client of a proxy server may be a particular data center asset 244 requesting a resource, such as a particular data center service 432, from the data center monitoring and management console 118. Skilled practitioners of the art will likewise be aware that in typical proxy server implementations, a client may direct a request to a proxy server, which evaluates the request and performs the network transactions needed to forward the request to a designated resource provider. Accordingly, the proxy server functions as a relay between the client and a server, and as such acts as an intermediary.


Those of skill in the art will be aware that proxy servers also assist in preventing an attacker from invading a private network, such as one implemented within a data center 402 to provide network connectivity to, and between, certain data center assets 244. Skilled practitioners of the art will likewise be aware that server proxies are often implemented in combination with a firewall, such as the data center firewall 416. In such implementations, the proxy server, due to it acting as an intermediary, effectively hides an internal network from the Internet, while the firewall prevents unauthorized access by blocking certain ports and programs.


Accordingly, a data center firewall 416 may be configured to allow traffic emanating from a proxy server to pass through to an external network 140, while blocking all other traffic from an internal network. Conversely, a firewall may likewise be configured to allow network 140 traffic emanating from a trusted source to pass through to an internal network, while blocking traffic from unknown or untrusted external sources. As an example, the data center firewall 416 may be configured in various embodiments to allow traffic emanating from the CMS client 136 to pass, while the service provider firewall 420 may be configured to allow traffic emanating from the CMS aggregator 128 to pass. Likewise, the service provider firewall 420 may be configured in various embodiments to allow incoming traffic emanating from the CMS client 136 to be received, while the data center firewall 416 may be configured to allow incoming network traffic emanating from the CMS aggregator 128 to be received.


In various embodiments, a particular CMS aggregator 128 may be implemented in combination with a particular CMS client 136 to provide a split proxy that allows an associated data center asset 244 to securely communicate with a data center monitoring and management console 118. In various embodiments, the split proxy may be implemented in a client/server configuration. In certain of these embodiments, the CMS client 136 may be implemented as the client component of the client/server configuration and the CMS aggregator 128 may be implemented as the server component. In certain of these embodiments, one or more connectivity management operations may be respectively performed by the CMS aggregator 128 and the CMS client 136 to establish a secure tunnel connection 418 through a particular network 140, such as the Internet.


In various embodiments, the secure tunnel connection 418 may be initiated by the CMS client 136 first determining the address of the CMS aggregator 128 it intends to connect to. In these embodiments, the method by which the address of the CMS aggregator 128 is determined is a matter of design choice. Once the address of the CMS aggregator 128 is determined, the CMS client 136 uses it to establish a secure Hypertext Transport Protocol (HTTPS) connection with the CMS aggregator 128 itself.


In response, the CMS aggregator 128 sets its HTTPS Transport Layer Security (TLS) configuration to “request TLS certificate” from the CMS client 136, which triggers the CMS client 136 to provide its requested TLS certificate 408. In certain embodiments, the CMS authentication 426 service may be implemented to generate and provision the TLS certificate 408 for the CMS client 136. In certain embodiments, the CMS client 136 may be implemented to generate a self-signed TLS certificate if it has not yet been provisioned with one from the CMS authentication 426 service.


In various embodiments, the CMS client 136 may then provide an HTTP header with a previously-provisioned authorization token. In certain embodiments, the authorization token may have been generated and provisioned by the CMS authentication 426 service once the CMS client has been claimed. As used herein, a claimed CMS client 136 broadly refers to a particular CMS client 136 that has been bound to an account associated with a user, such as a customer, of one or more data center services 432 provided by the data center monitoring and management console 118.


In certain embodiments, a CMS client 136 may be implemented to maintain its claimed state by renewing its certificate 408 and being provided an associated claim token. In these embodiments, the frequency, or conditions under which, a CMS client's certificate 408 is renewed, or the method by which it is renewed, or both, is a matter of design choice. Likewise, in these same embodiments, the frequency, or conditions under which, an associated claim token is generated, or the method by which it is provided to a CMS client 136, or both, is a matter of design choice.


In various embodiments, the CMS client 136 may be implemented to have a stable, persistent, and unique identifier (ID) after it is claimed. In certain of these embodiments, the CMS client's 136 unique ID may be stored within the authorization token. In these embodiments, the method by the CMS client's 136 unique ID is determined, and the method by which it is stored within an associated authorization token, is a matter of design choice.


Once the CMS client 136 has been claimed, it may be implemented to convert the HTTPS connection to a Websocket connection, familiar to those of skill in the art. After the HTTP connection has been converted to a Websocket connection, tunnel packet processing is initiated and the CMS aggregator 128 may then perform a Representational State Transfer (REST) to request the CMS client 136 to validate its certificate 408. In certain embodiments, the validation of the CMS client's 136 certificate 408 is performed by the CMS authorization 430 service.


In various embodiments, the validation of the CMS client's 136 certificate 408 is performed to determine a trust level for the CMS client 136. In certain of these embodiments, if the CMS client's 136 certificate 408 is validated, then it is assigned a “trusted” classification. Likewise, if CMS client's 136 certificate 408 fails to be validated, then it is assigned an “untrusted” classification.


Accordingly, certain embodiments of the invention reflect an appreciation that “trusted” and “claimed,” as used herein as they relate to a CMS client 136 are orthogonal. More specifically, “trust” means that the channel of communication can be guaranteed. Likewise, “claimed” means the CMS client 136 can be authenticated and bound to a user, or customer, of one or more data center services 432 provided by the data center monitoring and management console 118.


In various embodiments, the resulting secure tunnel connection 418 may be implemented to provide a secure channel of communication through a data center firewall 416 associated with a particular data center 402 and a service provider firewall 420 associated with a particular data center monitoring and management console 118. In various embodiments, the CMS client 136, the secure tunnel connection 418, and the CMS aggregator 128 may be implemented to operate at the application level of the Open Systems Interconnection (OSI) model, familiar to those of skill in the art. Skilled practitioners of the art will likewise be aware that known approaches to network tunneling typically use the network layer of the OSI model. In certain embodiments, the CMS client 136 and the CMS aggregator 128 may be implemented to send logical events over the secure tunnel connection 418 to encapsulate and multiplex individual connection streams and associated metadata.


In various embodiments, the CMS discovery 424 service may be implemented to identify certain data center assets 244 to be registered and managed by the data center monitoring and management console 118. In various embodiments, the CMS discovery 424 service may be implemented to detect certain events published by a CMS aggregator 128. In certain embodiments, the CMS discovery 424 service may be implemented to maintain a database (not shown) of the respective attributes of all CMS aggregators 128 and CMS clients 136. In certain embodiments, the CMS discovery 424 service may be implemented to track the relationships between individual CMS clients 136 and the CMS aggregators 128 they may be connected to.


In various embodiments, the CMS discovery 424 service may be implemented to detect CMS client 136 connections and disconnections with a corresponding CMS aggregator 128. In certain of these embodiments, a record of such connections and disconnections is stored in a database (not shown) associated with the CMS inventory 428 service. In various embodiments, the CMS discovery 424 service may be implemented to detect CMS aggregator 128 start-up and shut-down events. In certain of these embodiments, a record of related Internet Protocol (IP) addresses and associated state information is stored in a database (not shown) associated with the CMS inventory 428 service.


In various embodiments, the CMS authentication 426 service may be implemented to include certain certificate authority (CA) capabilities. In various embodiments, the CMS authentication 426 service may be implemented to generate a certificate 408 for an associated CMS client 136. In various embodiments, the CMS authentication 426 service may be implemented to use a third party CA for the generation of a digital certificate for a particular data center asset 244. In certain embodiments, the CMS inventory 428 service may be implemented to maintain an inventory of each CMS aggregator 128 by an associated unique ID. In certain embodiments, the CMS inventory 428 service may likewise be implemented to maintain an inventory of each CMS client 136 by an associated globally unique identifier (GUID).


In various embodiments, the CMS authorization 430 service may be implemented to authenticate a particular data center asset 244 by requesting certain proof of possession information, and then processing it once it is received. In certain of these embodiments, the proof of possession information may include information associated with whether or not a particular CMS client 136 possesses the private keys corresponding to an associated certificate 408. In various embodiments, the CMS authorization 430 service may be implemented to authenticate a particular CMS client 136 associated with a corresponding data center asset 244. In certain of these embodiments, the CMS authorization 430 service may be implemented to perform the authentication by examining a certificate 408 associated with the CMS client 136 to ensure that it has been signed by the CMS authentication 426 service.


In various embodiments, the service mesh proxy 434 may be implemented to integrate knowledge pertaining to individual data center assets 244 into a service mesh such that certain data center services 432 have a uniform method of transparently accessing them. In various embodiments, the service mesh proxy 434 may be implemented with certain protocols corresponding to certain data center assets 244. In certain embodiments, the service mesh proxy 434 may be implemented to encapsulate and multiplex individual connection streams and metadata over the secure tunnel connection 418. In certain embodiments, these individual connection streams and metadata may be associated with one or more data center assets 244, one or more data center services 432, one or more CMS clients 136, and one or more CMS aggregators 128, or a combination thereof.



FIG. 5 shows an adjacency matrix created from a weighted undirected graph implemented in accordance with an embodiment of the invention. In various embodiments, a set of workload provisioning information, described in greater detail herein, may be modeled as a weighted undirected graph 502. Skilled practitioners of the art will be aware that a weighted graph generally refers to a graph where weights are assigned to each edge. Those of skill in the art will likewise be aware that weighted graphs are typically represented as being directed, where the edges are unidirectional to show path direction, or undirected, where edges are bi-directional. In various embodiments, as described in greater detail herein, the set of workload provisioning information may include one or more unstructured data elements. As likewise described in greater detail herein, the set of workload provisioning information may be contained in a property bag.


In various embodiments, as shown in FIG. 5, each data element within a particular set of workload provisioning information may be represented as an individual node 504 within a weighted undirected graph 502. In various embodiments, each weighted edge 506 may represent similarity between individual nodes or objects 504. In various embodiments, cosine similarity may be used to find similarity between individual nodes 504. Skilled practitioners of the art will be knowledgeable of cosine similarity, which in data analysis is a measure of similarity between two non-zero vectors defined in an inner product space.


More particularly, cosine similarity may be defined as the cosine of the angle between vectors. That is, it is the dot product of the vectors divided by the product of their lengths. Accordingly, cosine similarity does not depend upon the magnitudes of the vectors, but only upon their respective angles.


In various embodiments, one or more UDH operations may be performed to generate an adjacency matrix 510 from a weighted undirected graph 502. Those of skill in the art will likewise be knowledgeable of an adjacency matrix, also referred to as a connection matrix, which in graph theory and computer science is a square matrix with rows and columns labeled by graph vertices. In common usage, the elements of the adjacency matrix are labeled with a ‘1’ or ‘0’ to indicate whether or not pairs of vertices are adjacent. In various embodiments, the adjacency matrix 510 may be used in the performance of one or more UDH operations to provide an indication of the relatedness of individual data elements 504 within the weighted undirected graph 502.


In various embodiments, a Markov Chain Process may be used to transform the adjacency matrix into a transition probability matrix 512. Skilled practitioners of the art will be familiar with a Markov Chain Process, which is a stochastic model describing a sequence of possible events in which the probability of each event depends only on the state attained in the previous event. Those of skill in the art will likewise be familiar with a transition probability matrix 512, which is a square (‘n’בn’) matrix representing the transition probabilities of a stochastic system, such as a Markov Chain, where the size ‘n’ of the matrix is linked to the cardinality of the state space that describes the system being modeled. In various embodiments, the state transition probability matrix of a particular Markov Probability Chain may be implemented to give the probabilities of transitioning from one state to another within a particular unit of time. Accordingly, a Markov transition matrix may be implemented in various embodiments as a square matrix describing the probabilities of moving from one state to another within a dynamic system, such as a data center monitoring and management environment, described in greater detail herein.


In various embodiments, the transition probability matrix 512 may be used to determine the Eigenvector of the weighted undirected graph 502. Those of skill in the art will be familiar with Eigenvectors, which in linear algebra is a characteristic non-zero vector of a linear transformation that changes at most by a scalar factor when that linear transformation is applied to it. The corresponding Eigenvalue, often denoted by k, is the factor by which the Eigenvector is scaled. Geometrically, an Eigenvector, corresponding to a real non-zero Eigenvalue k, points in a direction in which it is stretched by the transformation, and the Eigenvalue λ, is the factor by which it is stretched. If the Eigenvalue λ, is negative, then the direction of its associated Eigenvector is reversed.


In various embodiments, the resulting Eigenvector may be implemented to represent the center of the weighted undirected graph 502. In various embodiments, as described in greater detail herein, malformed, incorrect, missing, or otherwise anomalous nodes 504 may be detected, based upon the relationship between the Eigenvector and individual nodes 504 by defining a threshold value. In these embodiments, as likewise described in greater detail herein, the definition of such a threshold value is a matter of design choice. In various embodiments, one or more UDH operations may be performed to remediate one or more malformed, incorrect, missing, or otherwise anomalous data elements detected within a particular set of workload provisioning information.



FIG. 6 is a simplified process diagram showing the performance of example unstructured data handling (UDH) operations implemented in accordance with an embodiment of the invention. In various embodiments, as described in greater detail herein, each data element within a particular set of workload provisioning information may be represented by an individual node, and labeled accordingly. As an example, each of the individual nodes 602 shown in FIG. 6 may correspond to a particular Internet Protocol (IP) address, as follows:

    • x1=“10.10.10.10”
    • x2=“10.11.12.13”
    • x3=“192.168.200.3”
    • . . .
    • x6=“21.14.67.178”


To continue the example, a Markov Chain Process (MCP) may be implemented in various embodiments, as described in greater detail herein, to generate a transition probability matrix 604 from the individual nodes 602. To further continue the example, cosine similarity may be used in various embodiments, as likewise described in greater detail herein, to calculate the weights 606 between a particular node 602 and every other node 602. In various embodiments, the resulting weights may be used to represent the distance between two nodes 602.


In certain of these embodiments, the distance between a particular node 608 and another may be represented by a relationship score 610. In these embodiments, the method by which the relationship score is calculated is a matter of design choice. In various embodiments, two nodes 608 may be determined to be connected if their associated relationship score 610 them is less than a predetermined threshold value 612. In these embodiments, the definition of the predetermined threshold value 612 is a matter of design choice.


In various embodiments, the weights 606 between individual nodes 602 may be used as transition probabilities. In various embodiments, changes to the weights 606 may be used to update a transition probability matrix 604. In various embodiments, a Markov Chain Process may be applied to the transition probability matrix 604 to detect a malformed, incorrect, missing, or otherwise anomalous node.


As will be appreciated by one skilled in the art, the present invention may be embodied as a method, system, or computer program product. Accordingly, embodiments of the invention may be implemented entirely in hardware, entirely in software (including firmware, resident software, micro-code, etc.) or in an embodiment combining software and hardware. These various embodiments may all generally be referred to herein as a “circuit,” “module,” or “system.” Furthermore, the present invention may take the form of a computer program product on a computer-usable storage medium having computer-usable program code embodied in the medium.


Any suitable computer usable or computer readable medium may be utilized. The computer-usable or computer-readable medium may be, for example, but not limited to, an electronic, magnetic, optical, electromagnetic, infrared, or semiconductor system, apparatus, or device. More specific examples (a non-exhaustive list) of the computer-readable medium would include the following: a portable computer diskette, a hard disk, a random access memory (RAM), a read-only memory (ROM), an erasable programmable read-only memory (EPROM or Flash memory), a portable compact disc read-only memory (CD-ROM), an optical storage device, or a magnetic storage device. In the context of this document, a computer-usable or computer-readable medium may be any medium that can contain, store, communicate, or transport the program for use by or in connection with the instruction execution system, apparatus, or device.


Computer program code for carrying out operations of the present invention may be written in an object oriented programming language such as Java, Smalltalk, C++ or the like. However, the computer program code for carrying out operations of the present invention may also be written in conventional procedural programming languages, such as the “C” programming language or similar programming languages. The program code may execute entirely on the user's computer, partly on the user's computer, as a stand-alone software package, partly on the user's computer and partly on a remote computer or entirely on the remote computer or server. In the latter scenario, the remote computer may be connected to the user's computer through a local area network (LAN) or a wide area network (WAN), or the connection may be made to an external computer (for example, through the Internet using an Internet Service Provider).


Embodiments of the invention are described with reference to flowchart illustrations and/or block diagrams of methods, apparatus (systems) and computer program products according to embodiments of the invention. It will be understood that each block of the flowchart illustrations and/or block diagrams, and combinations of blocks in the flowchart illustrations and/or block diagrams, can be implemented by computer program instructions. These computer program instructions may be provided to a processor of a general purpose computer, special purpose computer, or other programmable data processing apparatus to produce a machine, such that the instructions, which execute via the processor of the computer or other programmable data processing apparatus, create means for implementing the functions/acts specified in the flowchart and/or block diagram block or blocks.


These computer program instructions may also be stored in a computer-readable memory that can direct a computer or other programmable data processing apparatus to function in a particular manner, such that the instructions stored in the computer-readable memory produce an article of manufacture including instruction means which implement the function/act specified in the flowchart and/or block diagram block or blocks.


The computer program instructions may also be loaded onto a computer or other programmable data processing apparatus to cause a series of operational steps to be performed on the computer or other programmable apparatus to produce a computer implemented process such that the instructions which execute on the computer or other programmable apparatus provide steps for implementing the functions/acts specified in the flowchart and/or block diagram block or blocks.


The present invention is well adapted to attain the advantages mentioned as well as others inherent therein. While the present invention has been depicted, described, and is defined by reference to particular embodiments of the invention, such references do not imply a limitation on the invention, and no such limitation is to be inferred. The invention is capable of considerable modification, alteration, and equivalents in form and function, as will occur to those ordinarily skilled in the pertinent arts. The depicted and described embodiments are examples only, and are not exhaustive of the scope of the invention.


Consequently, the invention is intended to be limited only by the spirit and scope of the appended claims, giving full cognizance to equivalents in all respects.

Claims
  • 1. A computer-implementable method for performing a data center monitoring and management operation, comprising: receiving workload provisioning information associated with a data center asset, the workload provisioning information comprising a set of data elements;identifying an anomalous data element from the set of workload provisioning elements;remediating the anomalous data element to provide a remediated anomalous data element; and,provisioning a component of information technology infrastructure using the workload provisioning information and the remediated anomalous data element; and whereinthe workload provisioning information is contained within a property bag, the property back containing a collection of workload provisioning information for use in performance of a workload provisioning operation;elements contained within the property bag are modeled as a weighted graph;the weighted graph is used when identifying the anomalous data element;the weighted graph is processed to generate an associated adjacency matrix, the adjacency matrix providing an indication of relatedness of the elements contained within the property bag;the adjacency matrix is transformed into a transition probability matrix; andthe transition probability matrix is used to determine an Eigenvector of the weighted graph.
  • 2. The method of claim 1, wherein: the workload provisioning information comprises a data contract, the data contract defining a structure, format and rules for exchange of data between counterparties.
  • 3. The method of claim 1, wherein: the set of data elements within the workload provisioning information elements are represented as respective nodes within the weighted graph; andsimilarities between individual nodes of the weighted graph are represented as weighted edges.
  • 4. The method of claim 1, wherein: the Eigenvector of the weighted graph represents a center of the weighted graph.
  • 5. A system comprising: a processor;a data bus coupled to the processor; and,a non-transitory, computer-readable storage medium embodying computer program code, the non-transitory, computer-readable storage medium being coupled to the data bus, the computer program code interacting with a plurality of computer operations and comprising instructions executable by the processor and configured for: receiving workload provisioning information associated with a data center asset, the workload provisioning information comprising a set of data elements;identifying an anomalous data element from the set of workload provisioning elements;remediating the anomalous data element to provide a remediated anomalous data element; and,provisioning a component of information technology infrastructure using the workload provisioning information and the remediated anomalous data element; and whereinthe workload provisioning information is contained within a property bag, the property back containing a collection of workload provisioning information for use in performance of a workload provisioning operation;elements contained within the property bag are modeled as a weighted graph;the weighted graph is used when identifying the anomalous data element;the weighted graph is processed to generate an associated adjacency matrix, the adjacency matrix providing an indication of relatedness of the elements contained within the property bag;the adjacency matrix is transformed into a transition probability matrix; andthe transition probability matrix is used to determine an Eigenvector of the weighted graph.
  • 6. The system of claim 5, wherein: the workload provisioning information comprises a data contract, the data contract defining a structure, format and rules for exchange of data between counterparties.
  • 7. The system of claim 5, wherein: the set of data elements within the workload provisioning information elements are represented as respective nodes within the weighted graph; andsimilarities between individual nodes of the weighted graph are represented as weighted edges.
  • 8. The system of claim 5, wherein: the Eigenvector of the weighted graph represents a center of the weighted graph.
  • 9. A non-transitory, computer-readable storage medium embodying computer program code, the computer program code comprising computer executable instructions configured for: receiving workload provisioning information associated with a data center asset, the workload provisioning information comprising a set of data elements;identifying an anomalous data element from the set of workload provisioning elements;remediating the anomalous data element to provide a remediated anomalous data element; and,provisioning a component of information technology infrastructure using the workload provisioning information and the remediated anomalous data element; and whereinthe workload provisioning information is contained within a property bag, the property back containing a collection of workload provisioning information for use in performance of a workload provisioning operation;elements contained within the property bag are modeled as a weighted graph;the weighted graph is used when identifying the anomalous data element;the weighted graph is processed to generate an associated adjacency matrix, the adjacency matrix providing an indication of relatedness of the elements contained within the property bag;the adjacency matrix is transformed into a transition probability matrix; andthe transition probability matrix is used to determine an Eigenvector of the weighted graph.
  • 10. The non-transitory, computer-readable storage medium of claim 9, wherein: the computer executable instructions are deployable to a client system from a server system at a remote location.
  • 11. The non-transitory, computer-readable storage medium of claim 9, wherein: the computer executable instructions are provided by a service provider to a user on an on-demand basis.
  • 12. The non-transitory, computer-readable storage medium of claim 9, wherein: the workload provisioning information comprises a data contract, the data contract defining a structure, format and rules for exchange of data between counterparties.
  • 13. The non-transitory, computer-readable storage medium of claim 9, wherein: the set of data elements within the workload provisioning information elements are represented as respective nodes within the weighted graph; andsimilarities between individual nodes of the weighted graph are represented as weighted edges.
  • 14. The non-transitory, computer-readable storage medium of claim 9, wherein: the Eigenvector of the weighted graph represents a center of the weighted graph.
US Referenced Citations (5)
Number Name Date Kind
11792086 Singwi Oct 2023 B1
11853753 Chawda Dec 2023 B1
20180121248 Delaney May 2018 A1
20210081271 Doshi Mar 2021 A1
20220114251 Guim Bernat Apr 2022 A1