Distributed systems allow multiple clients in a network to access a pool of shared resources. For example, a distributed storage system allows a cluster of host computers to aggregate local disks (e.g., SSD, PCI-based flash storage, SATA, or SAS magnetic disks) located in or attached to each host computer to create a single and shared pool of storage. This pool of storage (sometimes referred to herein as a “datastore” or “store”) is accessible by all host computers in the cluster and may be presented as a single namespace of storage entities (such as a hierarchical file system namespace in the case of files, a flat namespace of unique identifiers in the case of objects, etc.). Storage clients in turn, such as virtual machines spawned on the host computers may use the datastore, for example, to store virtual disks that are accessed by the virtual machines during their operation. Because the shared local disks that make up the datastore may have different performance characteristics (e.g., capacity, input/output per second or IOPS capabilities, etc.), usage of such shared local disks to store virtual disks or portions thereof may be distributed among the virtual machines based on the needs of each given virtual machine.
This approach provides enterprises with cost-effective performance. For instance, distributed storage using pooled local disks is inexpensive, highly scalable, and relatively simple to manage. Because such distributed storage can use commodity disks in the cluster, enterprises do not need to invest in additional storage infrastructure. However, one issue that arises with this approach relates to contention between multiple clients accessing the shared storage resources. In particular, reduced overall performance and higher latency occur when multiple clients need to simultaneously access different data that is backed by the same local disk in a particular host computer at a combined IOPS (input/output per second) that exceeds the IOPS capacity of the local disk.
One embodiment of the present disclosure provides a method for providing resource usage feedback to a plurality of clients having access to a shared resource. The method generally includes monitoring a rate of usage of the shared resource by at least a portion of the clients, wherein each client has been reserved a minimum usage rate for the shared resource. Upon detecting that the rate of usage of the shared resource has exceeded a maximum rate supported by the shared resource, congestion metric is determined for at least a portion of the clients that are currently attempting to access the shared resource. The congestion metric for each client is based on the client's usage of the shared resource and is used by the clients to calculate a delay period prior attempting another access of the shared resource. The method generally includes transmitting each of the determined congestion metrics to a corresponding client.
Other embodiments include, without limitation, a computer-readable medium that includes instructions that enable a processing unit to implement one or more aspects of the disclosed methods as well as a computer system having a processor, memory, and modules configured to implement one or more aspects of the disclosed methods.
Embodiments disclosed herein provide techniques for measuring congestion at a shared resource (e.g., storage, etc.) and controlling the quality of service provided to consumers of the shared resource. In one embodiment, a host computer providing a shared resource (e.g., its local storage, etc.) to a cluster of host computers monitors the usage of the shared resource (e.g., IOPS, etc.) of clients (e.g., virtual machines running on any of the host computers in the cluster, etc.) accessing the resource. If there is contention between clients for the shared resource (e.g., if certain clients are unable to access the shared resource at a minimum rate that has been reserved to them as further described herein) because certain of such clients are exceeding their own reserved rates, the host computer issues a congestion metric to at least a portion of the clients trying to access the shared resource. The congestion metric may specify the extent of resource contention. Clients use the congestion metric to determine how long to delay subsequent requests (e.g., I/O operations, etc.) to access the shared resource. For example, in certain embodiments, clients may receive a non-zero congestion metric (e.g., clients that have exceeded their reserved rates) that may cause them to delay requests for a period of time based on the congestion metric, while other clients may receive a “zero” congestion metric (e.g., clients that have used resources within the rates reserved for them) may send requests immediately. The computer hosting the storage resources may calibrate the response to the congestion metric so that a given client has a total service time similar to what the client may have had if all requests had been delivered immediately.
For instance, the techniques described herein may be used to implement a distributed storage system where the host computer issues congestion metrics on I/O operation requests by clients that may be located on other host computers that are accessing the local storage of the host computer. One example of an applicable distributed storage system is a software-based “virtual storage area network” (VSAN) where host servers in a cluster each act as a node that contributes its commodity local storage resources (e.g., hard disk and/or solid state drives, etc.) to provide an aggregate “object” store. Each host server may include a storage management module (also referred to herein as a VSAN module) in order to automate storage management workflows (e.g., create objects in the object store, etc.) and provide access to objects in the object store (e.g., handle I/O operations to objects in the object store, etc.) based on predefined storage policies specified for objects in the object store. In a particular embodiment, the host servers further support the instantiation of virtual machines (VMs) which act as clients to the VSAN object store. In such an embodiment, the “objects” stored in the object store may include, for example, file system objects that may contain VM configuration files and virtual disk descriptor files, virtual disk objects that are accessed by the VMs during runtime and the like.
An administrator may initially configure a VM with specific storage requirements for its “virtual disk” depending its intended use (e.g., capacity, availability, IOPS, etc.), the administrator may define a storage profile or policy for each VM specifying such availability, capacity, IOPS and the like. As further described below, the VSAN module may then create a virtual disk for the VM backing it with physical storage resources of the object store based on the defined policy. For example, an administrator may specify a storage policy for a virtual disk for VM A that requires a minimum reservation of 400 read IOPS (but having no limit on the maximum amount of read IOPS it can consume), and accordingly, the VSAN module may create a virtual disk “object” backed by a local storage resource that can provide a maximum of 550 read IOPS. Further, the administrator may specify another storage policy for a virtual disk for VM B that requires a minimum reservation of 100 read IOPS (but, again, having no limit on the maximum amount of read IOPS it can consume). The VSAN module may also back the virtual disk for VM B with the same local storage resource (and therefore be left with 50 read IOPS remaining). If VM A exceeds its minimum reservation of 400 read IOPS and, for example, utilizes 500 read IOPS, VM B can continue performing I/O operations to its virtual disk at a rate of 50 read IOPS without experiencing contention for the local storage resource. However, if VM A continues to perform I/O on its virtual disk at 500 read IOPS, and VM B needs to use its minimally reserved amount of 100 read IOPS to access its own virtual disk, contention will occur.
In one embodiment, the VSAN module on each node (e.g., host server) monitors the rate at which the local storage resources on the node are being accessed by clients (such as, for example, other VSAN modules on other nodes that are acting on behalf of VMs running on such nodes). In one embodiment, the VSAN module residing in each node may broadcast the current resource usage status to other VSAN modules of other nodes in the cluster. When contention occurs at a local storage resource, for example, due to simultaneous access by multiple clients, the node calculates a congestion metric that is then issued to the clients attempting to access the local storage resource. The congestion metric may indicate a measure of how much contention is occurring, which may cause the clients (e.g., the VSAN modules acting on behalf of VMs that are performing I/O operations that reach the local storage resource) to delay or otherwise throttle back their I/O operation requests. In certain embodiments, the VSAN module in the node may also itself use the congestion metric to queue and delay incoming requests to the local storage resource.
Alternatively, the VSAN module of the host computer hosting the storage resources calculates the amount of congestion to the resources. Once determined, the VSAN module transmits the congestion metric to the client without calculating the resource usage of a particular client. Upon receiving the congestion metric from the host computer, the client calculates a delay period based on its own resource usage and whether it is exceeding allotted resources.
This approach allows for distributed provisioning and decentralized policy enforcement across multiple clients. By disaggregating a single large queue at a server (e.g., node housing the local storage resource) to a smaller queue at the server and separate queues at each client (where the overall average queuing delay per request is what would be seen using a single large queue), this approach reduces space needed for buffering at the server while still allowing differential priority scheduling among the requests of each client. Further, because only clients that exceed their reserved allocation for resources (and not the clients that are using resources as reserved for them) delay requests to the VSAN module, such an approach requires less complicated logic, resulting in improved performance of the distributed system.
Reference is now made in detail to several embodiments, examples of which are illustrated in the accompanying figures. Note, that wherever practicable, similar or like reference numbers may be used in the figures and may indicate similar or like functionality. The figures depict embodiments for purposes of illustration only. One having skill in the art will readily recognize from the following description that alternative embodiments of the structures and methods illustrated herein may be employed without departing from the principles described herein.
In the following, a VSAN module provides as a reference example of a system that monitors resources and controls the congestion of resources at multiple points. This reference example is included to provide an understanding of the embodiments described herein. However, it will be apparent to one of skill in the art that these embodiments are applicable in other contexts related to allocating distributed storage resources to clients, regardless of the type of computing environment. For example, the embodiments may be applicable to software defined computers, networks, and storage arrays. Further, the embodiments may also be applicable in other contexts relating to allocating other shared computing resources (e.g., processing, memory and network resources, etc.).
Similarly, numerous specific details are provided to provide a thorough understanding of the embodiments. One of skill in the art will recognize that the embodiments may be practiced without some of these specific details. In other instances, well known process operations and implementation details have not been described in detail to avoid unnecessary obscuring of novel aspects of the disclosure.
A virtualization management platform 105 is associated with cluster 110 of nodes 111. Virtualization management platform 105 enables an administrator to manage the configuration and spawning of VMs on the various nodes 111. As depicted in the embodiment of
In one embodiment, VSAN module 114 is implemented as a “VSAN” device driver within hypervisor 113. In such an embodiment, VSAN module 114 provides access to a conceptual “VSAN” 115 through which an administrator can create a number of top-level “device” or namespace objects that are backed by object store 116. In one common scenario, during creation of a device object, the administrator may specify a particular file system for the device object (such device objects hereinafter also thus referred to “file system objects”). For example, in one embodiment, each hypervisor 113 in each node 111 may, during a boot process, discover a /vsan/ root node for a conceptual global namespace that is exposed by VSAN module 114. By, for example, accessing APIs exposed by VSAN module 114, hypervisor 113 can then determine all the top-level file system objects (or other types of top-level device objects) currently residing in VSAN 115. When a VM (or other client) attempts to access one of the file system objects, hypervisor 113 may dynamically “auto-mount” the file system object at that time. A file system object (e.g., /vsan/fs_name1, etc.) that is accessible through VSAN 115 may, for example, be implemented to emulate the semantics of a particular file system such as VMware's distributed or clustered file system, VMFS, which is designed to provide concurrency control among simultaneously accessing VMs. Because VSAN 115 supports multiple file system objects, it is able provide storage resources through object store 116 without being confined by limitations of any particular clustered file system. For example, many clustered file systems (e.g., VMFS, etc.) can only scale to support a certain amount of nodes 111. By providing multiple top-level file system object support, VSAN 115 overcomes the scalability limitations of such clustered file systems.
As described in further detail in the context of
Descriptor file 210 includes a reference to composite object 200 that is separately stored in object store 116 and conceptually represents the virtual disk (and thus may also be sometimes referenced herein as a virtual disk object). Composite object 200 stores metadata describing a storage organization or configuration for the virtual disk (sometimes referred to herein as a virtual disk “blueprint”) that suits the storage requirements or service level agreements (SLAs) in a corresponding storage profile or policy (e.g., capacity, availability, IOPS, etc.) generated by an administrator when creating the virtual disk. For example, in the embodiment of
In one embodiment, if an administrator creates a storage profile or policy for a composite object such as virtual disk object 200, CLOM sub-module 325 applies a variety of heuristics and/or distributed algorithms to generate virtual disk blueprint 215 that describes a configuration in cluster 110 that meets or otherwise suits the storage policy (e.g., RAID configuration to achieve desired redundancy through mirroring and access performance through striping, which nodes' local storage should store certain portions/partitions/stripes of the virtual disk to achieve load balancing, etc.). For example, CLOM sub-module 325, in one embodiment, is responsible for generating blueprint 215 describing the RAID 1/RAID 0 configuration for virtual disk object 200 in
In addition to CLOM sub-module 325 and DOM sub-module 340, as further depicted in
As previously discussed, DOM sub-module 340, during the handling of I/O operations as well as during object creation, controls access to and handles operations on those component objects in object store 116 that are stored in the local storage of the particular node 111 in which DOM sub-module 340 runs as well as certain other composite objects for which its node 111 has been currently designated as the “coordinator” or “owner.” For example, when handling an I/O operation from a VM, due to the hierarchical nature of composite objects in certain embodiments, a DOM sub-module 340 that serves as the coordinator for the target composite object (e.g., the virtual disk object that is subject to the I/O operation) may need to further communicate across the network with a different DOM sub-module 340 in a second node 111 (or nodes) that serves as the coordinator for the particular component object (e.g., stripe, etc.) of the virtual disk object that is stored in the local storage of the second node 111 and which is the portion of the virtual disk that is subject to the I/O operation. If the VM issuing the I/O operation resides on a node 111 that is also different from the coordinator of the virtual disk object, the DOM sub-module 340 of the node running the VM would also have to communicate across the network with the DOM sub-module 340 of the coordinator. In certain embodiments, if the VM issuing the I/O operation resides on node that is different from the coordinator of the virtual disk object subject to the I/O operation, the two DOM sub-modules 340 of the two nodes may to communicate to change the role of the coordinator of the virtual disk object to the node running the VM (e.g., thereby reducing the amount of network communication needed to coordinate I/O operations between the node running the VM and the node serving as the coordinator for the virtual disk object).
DOM sub-modules 340 also similarly communicate amongst one another during object creation. For example, a virtual disk blueprint generated by CLOM module 325 during creation of a virtual disk may include information that designates which nodes 111 should serve as the coordinators for the virtual disk object as well as its corresponding component objects (stripes, etc.). Each of the DOM sub-modules 340 for such designated nodes is issued requests (e.g., by the DOM sub-module 340 designated as the coordinator for the virtual disk object or by the DOM sub-module 340 of the node generating the virtual disk blueprint, etc. depending on embodiments) to create their respective objects, allocate local storage to such objects (if needed), and advertise their objects to their corresponding CMMDS sub-module 335 in order to update the in-memory metadata database with metadata regarding the object. In order to perform such requests, DOM sub-module 340 interacts with a log structured object manager (LSOM) sub-module 350 that serves as the component in VSAN module 114 that actually drives communication with the local SSDs and magnetic disks of its node 111. In addition to allocating local storage for component objects (as well as to store other metadata such a policies and configurations for composite objects for which its node serves as coordinator, etc.), LSOM sub-module 350 additionally monitors the flow of I/O operations to the local storage of its node 111, for example, to report whether a storage resource is congested.
In certain situations, it should be recognized that multiple clients (e.g., other VSAN modules 114 acting on behalf of running VMs) may simultaneously send requests to perform I/O operations on a particular local storage resource located in a particular node at any given time. For example, the component objects (e.g., stripes, etc.) of different virtual disk objects corresponding to different VMs may be backed by the same local storage on the same node. Upon receiving an I/O operation, the VSAN module 114 of such a node may place the I/O operation into a storage resource queue for processing. To reduce the possibility of congestion or overflow in the I/O queue for the local storage resource caused, for example, by multiple clients accessing component objects, the VSAN module 114 (via its LSOM sub-module, as previously discussed) monitors usage of the local storage resource and may issue a congestion metric to the clients attempting to access the local storage. The congestion metric, discussed in greater detail below, provides a measure by which a client may calculate a delay prior to sending additional I/O requests to the local storage resource.
However, if the IOPS capacity of the local storage resource has been exceeded, then in step 620, the local LSOM sub-module 350 calculates a congestion metric for any client that is currently conducting I/O with the local storage resource and has exceeded the IOPS reservations specified in their storage policies. In one embodiment, LSOM sub-module 350 calculates the congestion metric using a time-weighted sum (e.g., by decaying previous values and adding recent congestion measurements). Furthermore, in certain embodiments, LSOM sub-module 350 also may calculate a different congestion metric for each client based on the client's usage of the local storage resource relative to the usage by other clients of the local storage resource. In one embodiment, if the client is accessing multiple local storage resources located in different nodes of cluster 110 (e.g., an I/O operation originating from the client is split into multiple I/O operations directed towards different component objects), VSAN module 114 may communicate with the VSAN modules 114 of the other nodes (through LSOM sub-modules 350) to combine its congestion metrics with possible congestion metrics generated from the other VSAN modules residing in the other nodes to produce an overall congestion metric for the client.
In step 625, the VSAN module 114 sends the congestion metric to the clients. Upon receipt, the clients, through DOM sub-module 340, use the congestion metric to determine how long to delay subsequent I/O operation requests based on the amount of resources the client is using and the amount of congestion described by the congestion metric. That is, rather than forcing a fixed period of delay on clients that are overusing resources (such an approach may lead to unwanted oscillations in usage), in certain embodiments, the congestion metric provides the client with information to calculate a randomized delay period from a distribution proportional to the metric. Because the service costs required for read and write operations differ, the wait period required by the congestion metric may depend on the type and size of the I/O operation. For example, a congestion metric may require a longer delay period for a write operation than a read operation because generally, write operations are more computationally expensive than read operations.
In one alternative embodiment, the VSAN module may issue a different congestion metric to every client accessing the local storage resource regardless of whether such client is exceeding its reserved allocations. While the congestion metrics transmitted to clients exceeding their reserved allocation may result in such clients delaying transmission of subsequent I/O operation requests, clients accessing the local storage resource within their reserved allocations may receive a congestion metric (e.g., a zero metric) that permits them to send I/O operation requests without delay. After the congestion has subsided, the VSAN module 114 may stop transmitting congestion metrics after each client request.
In an alternative embodiment, the host LSOM sub-module 350 calculates a local measure of congestion and sends the congestion metric to each client without tailoring the congestion metric to the resource usage of a particular client. Upon which clients delay requests if they are oversubscribing. It could then be up to the consuming client to respond to congestion if they're oversubscribing.
Although one or more embodiments have been described in some detail for clarity of understanding, it will be apparent that certain changes and modifications may be made within the scope of the claims. Accordingly, the described embodiments are to be considered as illustrative and not restrictive, and the scope of the claims is not to be limited to details given herein, but may be modified within the scope and equivalents of the claims. For example, although a number of foregoing described embodiments describe virtual machines as the clients that access the virtual disks provided by the VSAN module, it should be recognized that any clients, such as a cluster of non-virtualized host servers and/or non-virtualized applications running therein may similarly utilize the VSAN module in alternative embodiment. Similarly, alternative embodiments of the VSAN module may enable creation of high level storage objects other than virtual disks, such as, without limitation, REST objects, files, file systems, blob (binary large objects) and other objects. Similarly, while the congestion prevention techniques described in the foregoing embodiments related primarily to dealing with congestion at local storage resources, alternative embodiments may utilize similar techniques to reduce contention for memory, processing and/or networking resources that may arise, for example, if a single node operates as a coordinator for two different virtual disks currently being accessed by two different VMs. In such embodiments, DOM sub-module 340 may also monitor resource usage in CPU, memory, and networking to deal with contention for those resources in a manner similar to that of LSOM sub-module 350 in monitoring resource usage such as IOPS and capacity for the local storage resources (or alternatively, LSOM sub-module 350 may also be configured to monitor CPU, memory and/or networking usage). Similarly, while VSAN module 114 has been generally depicted as embedded in hypervisor 113, alternative embodiments may implement VSAN module separate from hypervisor 113, for example as a special virtual machine or virtual appliance, a separate application or any other “pluggable” module or driver that can be inserted into computing platform in order to provide and manage a distributed object store.
As described, embodiments described herein measure congestion and control quality of service to distributed resources. Advantageously, by issuing a congestion metric to clients while resources are contended and requiring all clients that are overusing resources to delay requests, these embodiments provide predictability in accessing distributed resources and delivers low latency to clients that use resources as provisioned. Further, delaying the requests at ingress to the resource application rather than at the resource queues requires less complicated queuing logic than previous solutions have required.
The various embodiments described herein may employ various computer-implemented operations involving data stored in computer systems. For example, these operations may require physical manipulation of physical quantities usually, though not necessarily, these quantities may take the form of electrical or magnetic signals where they, or representations of them, are capable of being stored, transferred, combined, compared, or otherwise manipulated. Further, such manipulations are often referred to in terms, such as producing, identifying, determining, or comparing. Any operations described herein that form part of one or more embodiments may be useful machine operations. In addition, one or more embodiments also relate to a device or an apparatus for performing these operations. The apparatus may be specially constructed for specific required purposes, or it may be a general purpose computer selectively activated or configured by a computer program stored in the computer. In particular, various general purpose machines may be used with computer programs written in accordance with the teachings herein, or it may be more convenient to construct a more specialized apparatus to perform the required operations.
The various embodiments described herein may be practiced with other computer system configurations including hand-held devices, microprocessor systems, microprocessor-based or programmable consumer electronics, minicomputers, mainframe computers, and the like.
One or more embodiments may be implemented as one or more computer programs or as one or more computer program modules embodied in one or more computer readable media. The term computer readable medium refers to any data storage device that can store data which can thereafter be input to a computer system computer readable media may be based on any existing or subsequently developed technology for embodying computer programs in a manner that enables them to be read by a computer. Examples of a computer readable medium include a hard drive, network attached storage (NAS), read-only memory, random-access memory (e.g., a flash memory device), a CD (Compact Discs), CD-ROM, a CD-R, or a CD-RW, a DVD (Digital Versatile Disc), a magnetic tape, and other optical and non-optical data storage devices. The computer readable medium can also be distributed over a network coupled computer system so that the computer readable code is stored and executed in a distributed fashion.
In addition, while described virtualization methods have generally assumed that virtual machines present interfaces consistent with a particular hardware system, the methods described may be used in conjunction with virtualizations that do not correspond directly to any particular hardware system. Virtualization systems in accordance with the various embodiments, implemented as hosted embodiments, non-hosted embodiments, or as embodiments that tend to blur distinctions between the two, are all envisioned. Furthermore, various virtualization operations may be wholly or partially implemented in hardware. For example, a hardware implementation may employ a look-up table for modification of storage access requests to secure non-disk data.
Many variations, modifications, additions, and improvements are possible, regardless the degree of virtualization. The virtualization software can therefore include components of a host, console, or guest operating system that performs virtualization functions. Plural instances may be provided for components, operations or structures described herein as a single instance. Finally, boundaries between various components, operations and data stores are somewhat arbitrary, and particular operations are illustrated in the context of specific illustrative configurations. Other allocations of functionality are envisioned and may fall within the scope of one or more embodiments. In general, structures and functionality presented as separate components in exemplary configurations may be implemented as a combined structure or component. Similarly, structures and functionality presented as a single component may be implemented as separate components. These and other variations, modifications, additions, and improvements may fall within the scope of the appended claims(s). In the claims, elements and/or steps do not imply any particular order of operation, unless explicitly stated in the claims
This application is a continuation of, and claims priority to, co-pending U.S. patent application Ser. No. 15/889,196, entitled “Distributed Policy-Based Provisioning and Enforcement for Quality of Service,” filed Feb. 5, 2018, which is a continuation of, and claims priority to, U.S. patent application Ser. No. 14/010,247, entitled “Distributed Policy-Based Provisioning and Enforcement for Quality of Service,” filed Aug. 26, 2013, granted as U.S. Pat. No. 9,887,924 B2 on Feb. 6, 2018, the contents of each of which are incorporated herein by reference. This application is related to the following commonly assigned applications: “Load Balancing of Resources” (application Ser. No. 14/010,275), published as U.S. Publication No. 2015/0058863 A1 on Feb. 26, 2015, “Scalable Distributed Storage Architecture” (application Ser. No. 14/010,293), granted as U.S. Pat. No. 9,811,531 B2 on Nov. 7, 2017, and “Virtual Disk Blueprints for a Virtualized Storage Area Network” (application Ser. No. 14/010,316), granted as U.S. Pat. No. 10,747,475 B2 on Aug. 18, 2020, each of which was filed on Aug. 26, 2013. Each related application is incorporated by reference herein in its entirety.
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