Reserved cache space in content delivery networks

Information

  • Patent Grant
  • 10257307
  • Patent Number
    10,257,307
  • Date Filed
    Friday, December 11, 2015
    8 years ago
  • Date Issued
    Tuesday, April 9, 2019
    5 years ago
Abstract
Systems and methods are described to reserve cache space of points of presence (“POPs”) within a content delivery network (“CDN”). A provider may submit a request to the CDN to reserve cache space on one or more POPs for data objects designated by that provider. Thereafter, the CDN may implement a provider-specific cache on the POPs of the CDN, which is distinct from a shared cache space on the POPs. The provider may further select a custom cache eviction policy for the provider-specific cache, which causes the POPs to manage data objects within the provider-specific cache according to the custom cache eviction policy, independently of a cache eviction policy applied to the shared cache.
Description
BACKGROUND

Generally described, computing devices utilize a communication network, or a series of communication networks, to exchange data. Companies and organizations operate computer networks that interconnect a number of computing devices to support operations or provide services to third parties. The computing systems can be located in a single geographic location or located in multiple, distinct geographic locations (e.g., interconnected via private or public communication networks). Specifically, data centers or data processing centers, herein generally referred to as “data centers,” may include a number of interconnected computing systems to provide computing resources to users of the data center. The data centers may be private data centers operated on behalf of an organization or public data centers operated on behalf, or for the benefit of, the general public.


Content providers (such as businesses, artists, media distribution services, etc.) can employ a series of interconnected data centers to deliver content in the form of data objects (e.g., representing web sites, web content, or other digital data) to users or clients. These interconnected data centers are sometimes referred to as “content delivery networks” (CDNs) or content delivery systems. Existing routing and addressing technologies can enable multiple data centers associated with a content delivery system to provide similar or identical data objects to client computing devices. In some instances, each data center providing a set of data objects may be referred to as a point-of-presence (“POP”). A content delivery system can maintain POPs over a wide area (or worldwide) to enable the system to efficiently service requests from clients in a variety of locations.


To utilize a CDN, a content provider generally designates one or more computing devices or data centers (e.g., external to the CDN) to maintain primary copies of data objects, which are sometimes referred to as “origin servers.” Each POP within the CDN can maintain all or a portion of the data objects provided by the origin server (e.g., within a data store of the CDN). When a client requests a data object from a POP, the POP can determine whether the requested data object is maintained at the POP. If so, the POP can provide the requested data object to the client directly. If not, the POP may first retrieve the data object from the origin server, and thereafter provide the data object to the client. This process of returning a data object not presently maintained at a POP is sometimes referred to as a “cache miss.” Cache misses are generally undesirable, in that they result in delays to fulfill client requests (e.g., due to the time required to retrieve content from the origin server) as well as increased load on the origin server itself.





BRIEF DESCRIPTION OF THE DRAWINGS


FIG. 1 is a block diagram depicting an illustrative logical network including end user computing devices, provider computing devices, and origin servers, as well as a content delivery network (“CDN”) including a CDN manager and multiple POPs;



FIG. 2 is a block diagram depicting an illustrative configuration of one embodiment of a server implementing functionalities of a POP of FIG. 1;



FIG. 3 is a block diagram depicting interactions between an end user computing device and a POP of FIG. 1 to retrieve content from the CDN;



FIGS. 4A and 4B are illustrative graphical depictions or visualizations of a shared cache implemented at a POP of FIG. 1, which maintains a listing of objects sorted according to recency of access, before and after cache eviction;



FIG. 5 is a block diagram depicting interactions between a provider computing device and a POP of FIG. 1 to reserve a portion of a data store at the POP for content associated with the provider;



FIGS. 6A and 6B are illustrative graphical depictions or visualizations of a cache structure that can be implemented at a POP of FIG. 1 to reserve a portion of a data store at the POP for content associated with the provider;



FIG. 7 is a block diagram depicting interactions between a provider computing device and a POP of FIG. 1 to create a provider-specific data case at the POP that utilizes a custom cache eviction policy; and



FIGS. 8A and 8B are illustrative graphical depictions or visualizations of a cache structure that can be implemented at a POP of FIG. 1 to create a provider-specific data case at the POP that utilizes a custom cache eviction policy.





DETAILED DESCRIPTION

Generally described, aspects of the present disclosure relate to implementing caches of data objects at points of presence (“POPs”) within a content delivery network (“CDN”), where at least a portion of the cache is reserved or designated to hold data objects associated with a specific provider or with a specific set of content. More specifically, embodiments of the present disclosure enable a provider to request that a certain volume of data objects (e.g., n gigabytes) associated with that provider are preferentially stored at a POP, such that the POP deletes or “evicts” non-preferred data objects prior to the preferentially stored data objects, or such that preferentially stored data objects are never deleted from the POP. Accordingly, embodiments of the present disclosure may be utilized to increase the likelihood that data objects of a given provider are retained at a POP, thereby reducing the number of cache misses for those data objects and increasing the performance of the CDN with respect to those data objects.


Illustratively, a POP may generally provide a shared data cache that is shared among multiple providers. The POP may implement a cache eviction policy for the shared data cache, which at least partly defines an algorithm by which data is removed or deleted from the shared data cache. For example, the POP may implement a “least recently used” (LRU) cache eviction policy, which causes the least recently used object within the shared data cache to be removed whenever the total size of objects within the data store exceeds a threshold amount (e.g., 90% of the total capacity of the data store). In such an instance, it is possible that highly popular data objects of a first provider frequently occupy all or a majority of the shared data cache, while less popular data objects of a second provider occupy little or none of the shared data cache. This situation will generally result in high performance for those popular objects of the first provider, but low performance for those less popular objects of the second provider (e.g., due to the time required to handle cache misses).


To remedy this situation, the present application enables a provider to request creation of a reserved cache space at a POP, designated to store data objects of that provider. Each POP may protect data objects placed within the reserved cache space, such that those data objects are retained indefinitely at the POP (unless removed from the reserved cache space), or are evicted only after non-protected data objects. For example, assume a first provider wishes to guarantee that 1 gigabyte (“GB”) of data objects of the first provider is constantly maintained at each POP of a CDN. The first provider may request 1 GB of reserved cache space on the CDN, such that a most-recently-accessed 1 GB of data objects of the first provider are maintained at each POP, regardless of the popularity of data objects of other providers at the POP. In this manner, the first provider can reduce the number of cache misses for data objects of the first provider, increasing delivery time of those data objects to end users, and reducing the number of interactions with the origin service of the first provider.


In one embodiment, a POP may implement reserved cache space for data objects of a provider by marking data objects stored within a shared cache as preferred. For example, when a provider requests 1 GB of reserved cache space, a POP may maintain a list of the most-recently accessed data objects of the provider, and designate the top 1 GB of those data objects as protected (e.g., by assigning a flag to the data objects stored in the shared data cache). As new requests for content of the provider are received and processed, the list of the most-recently accessed data objects of the provider can be updated, for example, such that flags are added to newly accessed data objects, and flags are removed from less recently used data objects that fall outside of the 1 GB data limit. During cache eviction processing on the shared data cache, the POP may skip over or ignore protected data objects, such that those data objects are not evicted from the shared data cache (which may cause more popular, unprotected data objects to be evicted instead). Thus, the top 1 GB most-frequently-accessed data objects of a provider can generally be expected to be available at the POP, regardless of their popularity relative to data objects of other providers.


In another embodiment, a POP may implement reserved cache space for data objects of a provider by creating a separate cache space for that provider. For example, when a provider requests 1 GB of reserved cache space, a POP may allocate a space of at least 1 GB to use as a cache for that provider. Thereafter, data objects of that provider may be cached into the provider-specific cache, rather than a shared data cache used for other providers. Thus, these data objects may be shielded from the cache eviction policies of the shared data cache. Moreover, because the POP maintains a separate provider-specific cache, the provider can be enabled to modify operation of that cache independently from operation of the shared data cache. For example, the provider may provide to the CDN a provider-specific cache eviction policy that at least partly defines an algorithm by which data objects of the provider-specific cache are removed. Illustratively, a provider may specify an algorithm that ranks data objects within the provider-specific cache based on a combination of recency of access and total size of the data objects (e.g., by dividing number of bytes of each data objects by milliseconds since the data object has been accessed at the CDN, and sorting the results). The provider may then specify that data objects be evicted based on that ranking, such that lower ranked data objects are evicted before higher ranked data objects. As a further illustration, the provider may specify that data objects be ranked based on frequency of access, rather than recency of access. For example, a provider may specify that the most frequently accessed data objects over the past n minutes should be retained, even if a different data object has been accessed more recently. A wide variety of other cache eviction policies are known within the art. Thus, by use of a provider-specific cache, individual providers may control the caching operation of the CDN to suit the typical access pattern for their content. In some embodiments, a CDN may include a combination of provider-specific caches and shared data caches.


As will be appreciated by one of skill in the art in light of the description above, the embodiments disclosed herein substantially increase the ability of computing systems, such as CDNs, to rapidly and effectively distribute content to client computing devices. Specifically, the embodiments disclosed herein enable content of individual providers to be preferentially cached at a CDN, such that highly popular data objects of other providers do not cause eviction of the preferentially cached data objects. Such preferential caching reduces the time needed to provide preferentially cached data objects to end users, while reducing the computing resources imposed on origin servers associated with preferentially cached data objects. Thus, the presently disclosed embodiments represent an improvement in the functioning of such CDN systems. Moreover, the presently disclosed embodiments address technical problems inherent within computing systems; specifically, the limited capacity of computing systems to store information, as well as the limited ability of such systems to process network-based requests. These technical problems are addressed by the various technical solutions described herein, including the implementation of reserved cache space at individual POPs of a CDN via designation of protected data objects in a shared data cache and implementation of provider-specific caches. Thus, the present application represents a substantial improvement on existing network systems and computing systems in general.


While the present disclosure generally refers to groupings of data objects based on a provider of those data objects, embodiments of the present disclosure may be utilized to reserve cache space for any set or collection of data objects. For example, embodiments of the present disclosure may enable a provider to reserve cache space within a CDN for a designated set of data objects, such as data objects associated with a single web site or domain name. As a further example, embodiments of the present disclosure may enable cache space on a CDN to be reserved for a defined collection of data objects associated with multiple providers. Accordingly, the present disclosure enables cache space on a CDN to be reserved for any collection of data objects. These collections of data objects may sometimes be referred to as a “distribution” of data objects.


The foregoing aspects and many of the attendant advantages of the present disclosure will become more readily appreciated as the same become better understood by reference to the following, when taken in conjunction with the accompanying drawings.



FIG. 1 is a block diagram depicting an illustrative logical network 100 including multiple end user computing devices 102, origin servers 106, and provider computing devices 108 in communication with a CDN 110 (including a plurality of POPs 112 and a CDN manager 116, each described in more detail below) via a network 104.


While the end user computing devices 102, origin servers 106, and provider computing devices 108 are shown as grouped within FIG. 1, the end user computing devices 102, origin servers 106, and provider computing devices 108 may be geographically distant, and independently owned or operated. For example, the end user computing devices 102 could represent a multitude of users in various global, continental, or regional locations accessing the CDN 110. Further, the origin servers 106 and provider computing devices 108 could represent a multitude of related or distinct parties that have associated with the CDN 110 to provide data objects, representing web sites, multimedia, or other digital, network-deliverable content, to the end user computing devices 102. Accordingly, the groupings of end user computing devices 102, origin servers 106, and provider computing devices 108 within FIG. 1 is intended to represent a logical, rather than physical, grouping. Similarly, each of the components of the CDN 110 may be located within geographically diverse areas. For example, the POPs 112 within the CDN 110 (described in more detail below) may be globally, continentally, or regionally disparate, in order to provide a wide geographical presence for the CDN 110.


Network 104 may be any wired network, wireless network, or combination thereof. In addition, the network 104 may be a personal area network, local area network, wide area network, cable network, satellite network, cellular telephone network, or combination thereof. In the example environment of FIG. 1, network 104 is a global area network (GAN), such as the Internet. Protocols and components for communicating via the other aforementioned types of communication networks are well known to those skilled in the art of computer communications and thus, need not be described in more detail herein. While each of the end user computing devices 102, origin servers 106, provider computing devices 108, and CDN 110 is depicted as having a single connection to the network 104, individual components of the end user computing devices 102, provider computing devices 108, origin servers 106, and CDN 110 may be connected to the network 104 at disparate points. Accordingly, communication times and capabilities may vary between the components of FIG. 1.


End user computing devices 102 may include any number of different computing devices capable of communicating with the CDN 110 to access data objects stored therein or provided by the origin servers 106. For example, individual end user computing devices 102 may correspond to a laptop or tablet computer, personal computer, wearable computer, server, personal digital assistant (PDA), hybrid PDA/mobile phone, mobile phone, electronic book reader, set-top box, camera, digital media player, and the like. Using end user computing devices 102, clients may interact with and access data objects on the CDN 110 originating from or otherwise associated with origin servers 106 associated with various content providers. For example, after requesting a data object, the end user computing devices 102 may be routed to a POP 112 configured to provide that data object on behalf of the origin server 106. Various mechanisms for routing of end user computing devices 102 to POPs 112 within a CDN 110 are known within the art, and thus will not be described in detail herein.


Similarly to the end user computing devices, provider computing devices may include any number of different computing devices capable of communicating with the CDN 110, including laptop or tablet computers, personal computers, wearable computers, servers, personal digital assistants (PDAs), hybrid PDA/mobile phones, mobile phones, electronic book readers, set-top boxes, cameras, digital media players, and the like. Each provider computing device 108 may be operated by or otherwise associated with an entity that has provided one or more data objects to the CDN 110 for subsequent transmission to end user computing devices 102. Such entities are generally referred to herein as “providers.”


Origin servers 106 may include any computing device owned or operated by a provider and configured to serve as a primary source for data objects of the provider. For example, origin servers 106 may include servers hosting web sites, streaming audio, video, or multimedia services, data analytics services, or other network-accessible services. The origin servers 106 may include primary versions of data objects, which may be retrieved by various POPs 112 of the CDN 110 for subsequent transmission to the end user computing devices 102.


To receive and handle requests for data objects from end user computing devices 102, the CDN 110 can include a plurality of POPs 112. Each POP 112 may include one or more edge servers 114 collectively configured to maintain all or a portion of the data objects associated with the various providers, as made available by the origin servers 106. As will be discussed in more detail below with respect to FIG. 2, each edge server 114 may include any number of processors, data stores, or networking components operating in conjunction to facilitate retrieval of content. Further, each POP 112 includes a data store 116 of data objects from a variety of providers. Because size of the data store 116 is generally limited, the POP 112 may implement various algorithms or procedures for determining what content should be maintained within the cache, which are sometimes known as “cache eviction policies.” Illustratively, each POP 112 may implement a “least recently used” (“LRU”) cache eviction policy, which maintains within the cache a set of data objects most recently requested by end user computing devices 102, and evicts less recently used content.


As discussed above, implementation of a shared cache eviction policy can disproportionately affect data objects of different providers. For example, a first provider utilize the CDN 110 to distribute a high amount of consistently accessed data objects, which are therefore likely to be held within the data store 116 as a recently accessed object. A second provider may utilize the CDN 110 to distribute infrequently accessed objects, which are therefore unlikely to be held in the data store 116. Requests for these uncached data objects result in “cache misses,” which are generally handled at a POP 112 by initiating a request for the content to a secondary content source (e.g., an origin server 106 associated with the data object). However, as noted above, such processing is often undesirable, as it increases the time (e.g., latency) required to provide the requested data object to the end user computing device 102, and may increase the computing resources needed at the origin server 106.


Because providers may wish to ensure that even infrequently accessed data objects are provided to end user computing devices 102 at a low latency, the CDN 110 may enable a provider to designate at least a portion of the data store 116 as reserved for data objects of that provider. As will be described below, one embodiment of this disclosure enables portions of the data store 116 to be reserved for a provider by protecting data objects of that provider that are stored within the data store 116, up to a size limit (e.g., n GB). Another embodiment of this disclosure enables portions of the data store 116 to be reserved for a provider by creating a logically separate cache within the data store 116 that stores only data objects of that provider, and which may be customized for the provider by implementing provider-specific cache eviction policies. In both such embodiments, the CDN may generally ensure that data objects of the provider are maintained at each POP 112 up to a threshold amount (e.g., n GB), regardless of the frequency at which other data objects are accessed at the POPs 112.


To facilitate reservation of portions of the data stores 116 by a provider, the CDN 110 can further include a CDN manager 118 device. As will be described in more detail below, the CDN manager 118 may obtain requests from provider computing devices 108 to reserve portions of data store 116 on the POPs 112, and interact with the POPs 112 to implement reservation of space within the data store 116 as well as any customizations to operation of the POPs 112 requested by the provider (e.g., implementation of a custom cache eviction policy).


The components of the CDN 110, including the POPs 112 and CDN manager 118 may communicate via a network, such as the network 104 or another private network (not shown in FIG. 1). Such a private network may include any combination of various network types described above operated on behalf of the CDN 110, alone or in conjunction with other services. The private network in some instances may be physically co-mingled with the network 104. For example, the private network may be formed by one or more leased lines on the network 104 that provide dedicated communications to the CDN 110.


It will be appreciated by those skilled in the art that the CDN 110 may have fewer or greater components than are illustrated in FIG. 1. For example, the CDN 110 may include or be in communication with a hosted service environment including one or more rapidly provisioned and released computing resources, such as computing, networking and/or storage devices. A hosted computing environment may also be referred to as a cloud computing environment. Such a cloud computing environment may provide the CDN 110 with access to additional computing resources, such as data storage devices, that may be utilized on-demand by the components of the CDN 110 to dynamically increase the computing resources available to the CDN 110. In one embodiment, components of the CDN 110 shown in FIG. 1 may be implemented wholly or in part by virtual machine instances implemented on physical computing devices within the cloud computing environment. Thus, the number of edge servers 114 or data stores 116, as well as the computing resources available to those edge servers 114 or data stores 116, may be modified during operation of the CDN 110 according to the needs and configuration of the CDN 110. Thus, the depiction of the CDN 110 in FIG. 1 should be taken as illustrative. Further, any one or more of the POPs 112 and CDN manager 118 may be embodied in a plurality of components, each executing an instance of the respective POPs 112 and CDN manager 118. A server or other computing component implementing any one of the respective POPs 112 and CDN manager 118 may include a network interface, memory, processing unit, and computer readable medium drive, all of which may communicate with each other by way of a communication bus. The network interface may provide connectivity over the network 104 and/or other networks or computer systems. The processing unit may communicate to and from memory containing program instructions that the processing unit executes in order to operate the respective POPs 112 and CDN manager 118. The memory may generally include RAM, ROM, other persistent and auxiliary memory, and/or any non-transitory computer-readable media.



FIG. 2 depicts one embodiment of an architecture of an edge server 114 described herein. The general architecture of server 114 depicted in FIG. 2 includes an arrangement of computer hardware and software components that may be used to implement aspects of the present disclosure. As illustrated, the server 114 includes a processing unit 204, a network interface 206, a computer readable medium drive 207, an input/output device interface 220, a display 202, and an input device 224, all of which may communicate with one another by way of a communication bus. The network interface 206 may provide connectivity to one or more networks or computing systems, such as the network 104 of FIG. 1. The processing unit 204 may thus receive information and instructions from other computing systems or services via a network. The processing unit 204 may also communicate to and from memory 210 and further provide output information for an optional display 202 via the input/output device interface 220. The input/output device interface 220 may also accept input from the optional input device 224, such as a keyboard, mouse, digital pen, etc. In some embodiments, the server 114 may include more (or fewer) components than those shown in FIG. 2. For example, some embodiments of the server 114 may omit the display 202 and input device 224, while providing input/output capabilities through one or more alternative communication channels (e.g., via the network interface 206). While shown as a single device, each POP 112 may include a set of distinct servers 114 collectively operating to implement the functionality described herein.


The memory 210 may include computer program instructions that the processing unit 204 executes in order to implement one or more embodiments of the present disclosure. The memory 210 generally includes RAM, ROM and/or persistent or non-transitory memory. The memory 210 may store an operating system 214 that provides computer program instructions for use by the processing unit 204 in the general administration and operation of the server 200. The memory 210 may further include computer program instructions and other information for implementing aspects of the present disclosure. For example, in one embodiment, the memory 210 includes user interface software 212 that generates user interfaces (and/or instructions therefor) for display upon a computing device, e.g., via a navigation interface such as a web browser installed on the computing device. In addition, memory 210 may include or communicate with one or more auxiliary data stores, such as the data store 116. The data store 116 may be any persistent or substantially persistent storage device (e.g., a hard disk drive, solid state disk drive, flash memory, etc.) utilized to store data objects of various providers or other information utilized by the server 114. In some instances, the data store 116 may include a collection of devices, which may vary according to the storage space required at the data store 116. For example, the data store 116 may be implemented as a logical storage device on a distributed storage system that provides a dynamic storage space (e.g., distributed across a number of physical storage devices) according to the requirements of the data store 116.


In addition to the user interface module 212, the memory 210 may include content delivery software 216 that may be executed by the processing unit 204. In one embodiment, the content delivery software 216 implements various aspects of the present disclosure, including processing requests for content cached at a POP 112 associated with the server 114 (e.g., by use of the data objects stored within the data store 116), retrieval of data objects from other content sources (e.g., origin servers 106) when such data objects are not stored within the data store 116, and maintenance or management of the data objects within the data store 116. As described in more detail below, such maintenance or management may include reserving a portion of the data store 116 for certain data objects, such as data objects of a specific provider, by protecting data objects placed within a shared cache of the data store 116, implementing a provider-specific cache within the data store 116, or both.


With reference to FIG. 3, an illustrative set of interactions are depicted for servicing client requests for data objects at an individual POP 112A within the CDN 110 of FIG. 1, utilizing a shared data cache (e.g., without reserving portions of the cache for data objects of individual providers). The interactions begin at (1), where an end user computing device 102A submits a request to a POP 112A for a data object (e.g., a data file associated with a URI, such as a particular image, web site, multimedia content, etc.). Initial routing of such requests to POPs 112 of a CDN 110 is known in the art, and thus will not be described in detail herein.


At (2), the POP 112A assigns an edge server 114A to inspect the one or more data stores 116 and determine whether the data object is cached at the POP 112A. In one embodiment, the POP 112A may assign an edge server 114A based on load balancing techniques, such as by selecting an edge server 114A with currently unused or underused capacity. In another embodiment, the POP 112A may assign an edge server 114A based on an expected access of the edge server 114A to the requested data object. For example, the POP 112A may assign individual edge servers 114A responsibility to various data objects based on a circular hashing algorithm, examples of which are known in the art. Accordingly, the POP 112A may generate a hash value for the requested data object (e.g., by processing an identifier of the data object according to a hash algorithm), and determine which edge server 114 has been assigned responsibility for the data object. Thereafter, the edge server 114A may inspect one or more of the data stores 116 to determine whether the data object is stored therein. In the instance that the data object is stored within the data stores 116, the POP 112A can retrieve and return the data object to the end user computing device 102A.


For the purposes of discussion, it will be assumed that the requested data object is not stored in the data stores 116, and thus would be retrieved from a distinct content source before being returned to the end user computing device 102A. Accordingly, at (3), an edge server 114A of the POP 112A transmits a request to an origin server 106A associated with the requested data object (e.g., as designated to the POP 112A by a provider of the data object). At (4), the origin server 106A returns the data object to the edge server 114. The edge server 114 then stores the data object within the data stores 116, such that subsequent requests for the data object can be serviced from the data stores 116 so long as the data object resides therein. In addition, at (6), the edge server 114 can update information regarding data objects placed within the data stores 116 to reflect the addition of the requested data object. Illustratively, the edge server 114 may update a list of the least recently used objects within the data stores 116 (an “LRU list”), which may later be used by the edge server 114 to evict data objects from the data stores 116. The requested data content is also returned to the end user computing device at (7).


In addition, at (8), the edge server 114 can inspect information regarding data objects within the data stores 116 to evict data objects as needed based on the configuration of the POP 112A. For example, the POP 112A may be configured to ensure that a threshold amount of space exists on one or more of the data stores 116, such that newly requested data objects can be placed therein. This threshold amount of space may be absolute (e.g., n GB) or relative (e.g., 10% of the total size of a data store 116). In the instance that the threshold amount of space is not available on a data store 116, an edge server 114 may implement a cache eviction policy that selects one or more data objects from the data store 116 for deletion. For the purposes of the present description, it will be assumed that data objects are generally evicted the data store 116 according to a least recently used eviction policy, such that a least recently used data object in the data store 116 is continuously deleted until the threshold amount of space becomes available in the data store 116. However, other cache eviction policies, such as eviction of the least frequently used data object or eviction of a random data object, may be utilized by the data store 116.


With reference to FIGS. 4A and 4B, graphical illustrations or visualizations of the data objects in a shared cache 400 (e.g., implemented by data store 116 of the POP 112A of FIG. 3) will be described. Specifically, FIG. 4A depicts various data objects within the shared cache 400 prior to eviction, while FIG. 4B depicts the various data objects within the shared cache 400 after eviction. The data objects shown in FIGS. 4A and 4B are illustratively representative of data objects provider by two providers: provider ‘A’ and provider ‘B.’ Accordingly, the data objects of FIGS. 4A and 4B are labeled according to their respective provider as well as a number indicating their order within FIGS. 4A and 4B. While these reference numbers are shown for simplicity within FIGS. 4A and 4B, data objects may be identified according to any identifier, such as a universally unique identifier (UUID), URI, etc.


In FIGS. 4A and 4B, the data objects stored within the shared cache 400 are represented in order of recency of access, for example by a doubly linked list, which identifies each data object, as well as a data object (if any) accessed more recently than the given data object and a data object accessed less recently that the given data object. For example, in FIG. 4A, data object ‘A1’ is depicted as the most recently accessed data object in the shared cache 400, followed by data objects ‘B1,’ ‘A2,’ etc. The use of a doubly linked list to represent the order of access of data objects may be beneficial, for example, because the order of data objects in the list may be modified by rearrangement of the pointers between data objects, without requiring a change to the location in the shared cache 400 at which each data object is stored. In addition or alternatively to a doubly linked list, data objects may be organized within the shared cache 400 according to any number of data structures, such as heaps, trees, arrays, hash tables, graphs, etc. Many varieties of data structures other data structures are known in the art, and may be utilized to organize or associate the data items within the shared cache 400 or the other caches described herein.


The shared cache 400 in FIGS. 4A and 4B is associated with a cache limit 402, visually depicted as a dashed line. This cache limit 402 represents the number of data objects that can be held within the shared cache 400 while still allowing the shared cache 400 to maintain a threshold amount of free space (e.g., n GB of free space, a certain percentage of free space, etc.). For ease of description, the cache limit 402 of FIGS. 4A and 4B is shown as limiting the cache to five data objects, each of which is assumed to be roughly equal in size. However, some embodiments of the present application may establish cache limit 402s that account for variation in size of given data elements, such that any number of data elements may be included within the shared cache 400 so long as the collective size of those data elements does not exceed a threshold limit.


In FIG. 4A, a number of data objects are shown as exceeding the cache limit 402, including data objects ‘B2,’ ‘A5,’ ‘B3,’ and ‘B4.’ Accordingly, a computing device (e.g., an edge server 114 of FIG. 1) may modify the shared cache 400 to evict one or more data objects, such that the cache limit 402 is not exceeded. Illustratively, the computing device may implement a “least recently used” cache eviction policy, which removes data in order of recency of access. As such, the computing device may designate the four least recently accessed data objects (data objects ‘B2,’ ‘A5,’ ‘B3,’ and ‘B4’) for eviction and subsequent deletion from the shared cache 400. The state of the shared cache 400 after this eviction is shown in FIG. 4B, where the four least recently accessed data objects have been evicted, such that cache limit 402 of the shared cache 400 is not exceeded.


As shown in FIGS. 4A and 4B, the cache eviction policy described above disproportionately favors the data objects of provider ‘A’ over those of provider ‘B,’ because those data objects have been more recently accessed in the shared cache 400. In the instance that this preferential treatment occurs frequently, provider ‘B’ may lose a substantial portion of the benefits of the CDN 110, as requests for data objects of provider ‘B’ often result in cache misses. To alleviate this issue, embodiments present disclosure enable a provider, such as provider ‘B,’ to request that a portion of the cache within each POP 112 of a CDN 110 be reserved for data objects of that provider.


One set of interactions for reserving portions of the cache within each POP 112 of a CDN 110 for data objects of a specific provider will be described with reference to FIG. 5. Specifically, the interactions of FIG. 5 enable reservation of cache space at a POP 112 for a provider by protecting data objects of that provider that are placed in a shared cache 400. Thus, data objects of the provider may be protected without requiring that those data objects be maintained separately from data objects of other providers.


As shown in FIG. 5, a provider computing device 108A may, at (1), transmit a request to the CDN manager 118 to establish a reserved cache space. This request may specify, for example, the amount of space to be reserved (e.g., n GB), as well as the specific POPs 112 that the reserved cache space should be implemented on. The CDN manager 118, in turn, instructs the various POPs 112 of the CDN 110 to establish the reserved cache space for the provider, at (2). In one embodiment, these instructions are transmitted to all POPs 112 of the CDN 110. In another embodiment, these instructions are transmitted to only select POPs 112, such as POPs 112 designated by the provider computing device 108A in the initial request.


At (3), the edge servers 114 of each receiving POP 112 identifies data objects that should be protected from eviction based on the requested reservation of space. Illustratively, where the POP 112 implements a LRU eviction policy, the edge servers 114 may locate a set of most recently accessed objects of the provider (e.g., as associated with the provider computing device 108A), up to the size of the requested reserved cache space. The edge servers 114 can then mark or otherwise designate those data objects within the located set as protected from eviction (e.g., by modifying a flag associated with the data object in the data stores 116), at (4). Thereafter, protected data objects may be ignored (or not preferred relative to unprotected data objects) for the purposes of eviction of data objects from the data stores 116. Thus, a reserved cache space may be established within the data stores 116 for data objects of the provider, without requiring those data objects to be segregated from other data objects handled by the POPs 112.


In one embodiment, identification of protected data objects and designation of those data objects as protected may occur independently of other operations of the POP 112, based on the instructions from the CDN manager 118 to establish a reserved cache space for the provider. In another embodiment, identification of protected data objects and designation of those data objects as protected may occur during other operations of the POP 112, such as fulfillment of client request for data objects of the provider. Illustratively, as new data objects of the provider are placed in to the cache caches 116 of the POP 112, these objects may be marked as protected by the edge servers 114 (e.g., as the most recently accessed objects of the provider). Similarly, a set of least recently used data objects of the provider that do not fall within the reserved space for the provider (e.g., n GB) may be marked as unprotected, and thus available for eviction in accordance with the normal operation of the POP 112.


One of ordinary skill in the art will appreciate that additional interactions may occur within the context of FIG. 5 that are not explicitly shown therein. For example, in one embodiment, the POP 112 may be configured to ensure that requests for reserved cache space do not reduce the generally available cache space at the POP 112. Accordingly, the POP 112 may interact with the data stores 116 to expand the amount of storage available to the POP 112 by the amount of reserved cache space requested. For example, where a provider requests that 5 GB of cache space at the POP 112 be reserved for data objects of that provider, the POP 112 may increase the size of its own data cache on the data stores 116 by 5 GB, to ensure that storage of data objects of other providers are not negatively affected by the reservation of space. In some instances, the data stores 116 may be implemented as a dynamic logical device hosted by one or more physical data stores. Accordingly, the POP 112 may also increase the size of the data stores 116 (e.g., by requesting that more physical data stores be provisioned and added as part of the dynamic logical device).


With reference to FIGS. 6A and 6B, graphical illustrations or visualizations of how a reserved cache space for a provider (provider ‘B’) may be established within a shared data cache (e.g., implemented by data store 116 of the POP 112A of FIG. 3) will be described. Specifically, FIG. 6A depicts various data objects within a shared cache 600 prior to eviction, as well as a logical list 604 of data objects associated with provider ‘B’ within that shared cache 600. FIG. 6B depicts various data objects within a shared cache 600 prior after eviction, as well as the logical list 604 of data objects associated with provider ‘B’ within that shared cache 600 after eviction.


As in FIGS. 4A and 4B, above, the data objects of FIGS. 6A and 6B are labeled according to their respective provider as well as a number indicating their order within FIGS. 6A and 6B. Further, as in FIGS. 4A and 4B, the data objects of FIGS. 6A and 6B stored within the shared cache 600 are represented in order of recency of access by a doubly linked list (e.g., generated by an edge server 114 of FIG. 1), which identifies each data object, as well as a data object (if any) accessed more recently than the given data object and a data object accessed less recently that the given data object.


In FIGS. 6A and 6B, a list 604 of data objects associated with provider B is also shown, illustrating a recency of access of the various data objects associated with the provider B. Illustratively, the list 604, like the list of objects in the shared cache 600, may represented as a doubly linked list (e.g., generated by an edge server 114 of FIG. 1), to facilitate easy addition, removal, and rearrangement of the various data objects within the list 604. While the data objects in the list 604 are shown as distinct from the objects in the shared cache 600, these data objects need not be duplicated in the underlying data storage used to implement the shared cache 600 and list 604. Instead, the shared cache 600, the list 604, or both, may be composed of links or pointers to data objects stored within an underlying memory storage device, such that only one copy of any given data object need be maintained in that device. Because data objects in both the shared cache 600 and the list 604 are intended to represent the same data object, those objects are shown in FIGS. 6A and 6B as connected via dashed lines.


As shown in FIGS. 6A and 6B, the data objects of provider B are associated with a protection limit 606, which limits the number of data objects of provider B that may be protected from eviction within the shared cache 600. This protection limit 606 is graphically shown in FIGS. 6A and 6B as occurring at a fixed point within the list 604 of data objects associated with provider B (e.g., after the first three objects within that linked list). However, in some embodiments, the protection limit 606 may additionally or alternatively be based on the attributes of the specific objects within the list. For example, the protection limit 606 may be set to occur after objects in the list 604 exceed a specified size (e.g., the size of reserved cache space implemented for provider B).


Because a number of data objects for provider B fall below the protection limit 606, including data objects B1-B3, these data objects can be marked (e.g., by an edge server 114) as protected within the shared cache 600. Thus, an edge server 114 or other computing device implementing the data structures depicted in FIGS. 6A and 6B may modify data objects B1-B3 to designate them as protected within the shared cache 600, such as by modifying a flag associated with data objects B1-B3. Thereafter, when a cache eviction policy is applied to the shared cache 600, those data objects designated as protected may be ignored, or may be evicted only after all non-protected data objects have been evicted.


Illustratively, assume that the edge server 114 or other computing device implementing the data structures depicted in FIGS. 6A and 6B implements an LRU eviction policy. As shown in FIG. 6A, the shared cache 600 includes multiple data objects over the eviction limit, and thus, this LRU eviction policy may be run on the shared cache 600. Accordingly, the edge server 114 may traverse the linked list of the shared cache 600 in reverse order to select the least recently used and unprotected data object for eviction. Initially, that object may be data object B4, the last item within the linked list. Because the shared cache 600 would still include more data objects than is allowed by the cache limit 602, the edge server 114 may a next least recently used and unprotected data object for eviction. While data object B3 would generally be the next least recently used data object in the general queue, the edge server 114 may ignore data object B3 for the purposes of eviction, because that data object has been designated as protected. Thus, the edge server may select data object A5 for eviction. This selection may continue until the size of the shared cache 600 no longer exceeds the cache limit 602.


A representation of the shared cache 600 of FIG. 6A after eviction is shown in FIG. 6B. Specifically, the visualization of the shared cache 600 in FIG. 6B depicts the state of the shared cache 600 after four objects (A3-A5 and B4) have been evicted according to the eviction policy described above. Similarly, the list 604 of data objects associated with provider B has been updated to reflect that data object B4 has been evicted from the shared cache 600. When the visualizations FIGS. 6A and 6B are compared to those of FIGS. 4A and 4B, it can be seen that implementation of reserved cache space within the shared cache 600 has a large effect on the data objects within that shared cache 600 after eviction. Both the shared cache 400 (of FIGS. 4A and 4B) and the shared cache 600 (of FIGS. 6A and 6B) begin with the same collection and arrangement of data objects, and are processed according to a LRU eviction policy. However, the shared cache 400, after eviction, includes predominately data objects of provider A. In contrast, the shared cache 600, after eviction, includes predominately data objects of provider B. Thus, reservation of portions of a shared cache 600, as depicted and described in FIGS. 5-6B, can greatly increase the likelihood that objects of a provider are maintained within a cache of a POP 112, thereby increasing performance for end user computing devices 102 seeking to access those data objects and reducing the computing resources required at an origin server of the provider.


While FIGS. 5-6B are described with respect to a single provider, the interactions and visualizations shown therein may be modified to enable reservation of cache space for any number of providers. Illustratively, the interactions of FIG. 5 may be repeated for each of a plurality of providers, such that a set of most recently used data objects that fall within the protection limit of each provider is marked as protected within the caches of various POPs 112. The POP 112 may maintain a list of data objects associated with each such provider, and continuously update those lists as data objects are accessed on the POP 112. Because each such list utilizes relatively little memory (e.g., as a series of pointers), each POP 112 may be capable of maintaining a large number of lists concurrently, and may potentially maintain such a list for each provider of data objects associated with the POP 112. Thus, the description provided above with respect to FIGS. 5-6B may be applied to maintain reserved cache space for any and potentially all providers of data objects associated with the POP 112.


One of skill in the art will appreciate that the results of eviction shown in FIG. 6B may be disadvantageous to providers that are not associated with reserved cache space. For example, reservation of space for provider B may result in eviction of a larger number of data objects of provider A than would otherwise occur under the eviction policy of the POP 112. In some embodiments, POPs 112 may be configured to reduce or eliminate this disadvantageous results by expanding a cache limit of the shared cache in an amount equal to or exceeding the amount of space reserved for data objects of various providers. Such expansion may include, for example, increasing the size of an underlying dynamic logical storage device on which the shared cache is implemented. For example, where a provider B requests that n GB of space be reserved within a shared cache of a POP 112, the POP 112 may also increase space available for that shared cache by n GB. This modification to the cache limit can be used to ensure that reservation of objects for a specific provider does not modify the eviction rate of other, non-reserved data objects. For example, with reference to FIGS. 6A and 6B, one of skill in the art will appreciate that if the cache limit 602 was increased by three objects (equal to the protection limit 606), data objects A3-A5 would be retained in the shared cache 600. Thus, the state of the shared cache 600 after eviction would be identical to the shared cache 400 after eviction with respect to the data objects of provider A.


In some embodiments, increasing a cache limit of a POP 112 may require that additional computing resources be allocated to an underlying data storage device (e.g., data stores 116 of FIG. 1). In such embodiments, the POP 112 may be configured to allocate such additional computing resources from a cloud computing environment or other on-demand resource allocation environment in communication with the POP 112.


With reference to FIG. 7, an additional or alternative set of interactions for implementing reservation of cache space at a POP 112 will be described. Specifically, the interactions of FIG. 7 may be implemented within a CDN 110 to generate a separate, provider-specific data cache for a provider within the data stores 116, such that data objects placed within the separate data cache are not subject to the eviction policies of a shared data cache. As in the embodiments described above with references to FIGS. 5-6B, the data objects of the provider may therefore be protected from eviction. However, by implementing a separate, provider-specific data cache for a provider within the data stores 116, additional options may be made available to the provider for managing that data cache. For example, the provider may be enabled to specify a cache eviction policy for the provider-specific data cache, such that data objects are evicted from the provider-specific data cache in a manner specified by the provider (as opposed to, e.g., the default cache eviction policy implemented at the POP 112).


The interactions of FIG. 7 begin at (1), where a provider computing device 108B submits a request to the CDN manager 118 of the CDN 110 to reserve cache space on POPs 112 of the CDN 110. Illustratively, the request may include an amount of reserved cache space requested (e.g., n GB), as well as one or more POPs 112 on which the reserved cache space should be maintained (e.g., all POPs 112, only provider-designated POPs 112, etc.). The request may further include a custom cache eviction policy to be implemented for the reserved cache space. In one embodiment, the custom cache eviction policy may be selected by the provider computing device 108B from a list of potential cache eviction policies provided by the CDN manager 118, each of which corresponds to a cache eviction algorithm maintained at the various POPs 112. In another embodiment, the custom cache eviction policy may be generated partly or entirely by a provider (e.g., using the provider computing device 108B). For example, the custom cache eviction policy may correspond to a mathematical algorithm specified by the provider computing device 108B, or a set of computer-executable code provided by the provider computing device 108B to the CDN manager 118 that, when executed by the POPs 112, enables selection of data objects for eviction from with a provider-specific data cache implemented on the POPs 112.


At (2), the CDN manager 118 transmits instructions corresponding to the received requests to relevant POPs 112 (e.g., all POPs 112, POPs 112 designated in the request, etc.). Specifically, the CDN manager 118 transmit instructions to the POPs 112 to establish a provider-specific cache within the data stores 116 of the POPs 112, subject to the custom eviction policy specified by the provider computing device 108B.


After receiving the instructions, one or more edge servers 114 of each POP 112, at (3), may each allocate space within the data store 116 in which to implement the provider-specific cache. In one embodiment, the space allocated for a provider-specific cache may be split among the various edge servers 114 of a POP 112, such that each edge server 114 has access to a portion of the space allocated for the provider-specific cache. In other embodiments, the space allocated for the provider-specific cache may be generally available to all edge servers 114. Illustratively, the allocated space may generally be at least as large as the space requested by the provider, but may also be increased to account for over-utilization of the provider-specific cache (e.g., prior to eviction of data objects from the provider-specific cache). In some embodiments, the space allocated for the provider-specific cache may be thin-provisioned (a technique known in the relevant fields), thus enabling underlying physical memory within the data stores 116 to be utilized by the provider-specific cache only when actually needed to store data objects. In some embodiments, the memory space within the data stores 116 used to implement the provider-specific cache may be deallocated from a shared cache of the POPs 112 and repurposed to implement the provider-specific cache. In other embodiments, the memory space used to implement the provider-specific cache may be separate from the memory space used to implement a shared cache, such that implementation of the provider-specific cache does not adversely affect operation of the shared cache (and may in fact positively affect operation of the shared cache, due to lowered need to store data objects of the provider who has requested a provider-specific cache). Where additional memory space is needed within the data stores 116, edge servers 114 may increase the computing resources available to the data stores 116 by use of cloud computing services or other on-demand computing resources services in communication or associated with the POP 112.


At (4), one or more edge servers 114 of each POP 112 can place data objects of the provider associated with provider computing device 108B into the provider-specific cache for that provider. In one embodiment, edge servers 114 may place data objects into the provider-specific cache by moving these data objects from a shared cache into the provider-specific cache (e.g., as an independent operation executed at the edge servers 114). In another embodiment, the edge servers 114 may place data objects into the provider-specific cache during normal operations of the edge servers 114 to retrieve and return those data objects to end user computing devices 102. For example, the edge servers 114 may place data objects into the provider-specific cache when a cache miss for those data objects occurs, and those data objects are retrieved from an origin server 108. Thus, placement of data objects into the provider-specific cache may not substantially impact normal operation of the POP 112.


At (5), an edge server 114 may detect that the provider-specific cache is over-utilized (e.g., storing a total size of data objects that is over the reserved space requested by the provider). Accordingly, the edge server 114 may modify the provider-specific cache according to the custom eviction policy specified by the provider computing device 108B. For example, the edge server 114 may execute computer-executable code corresponding to the custom eviction policy (e.g., as generated by the CDN 110 or received from the provider computing device 108B) against a listing of data objects within the provider-specific cache, in order to select one or more of those data objects for eviction. Because these data objects are maintained separately from data objects within a shared cache of each POP 112, these data objects are generally not subject to the eviction policies of that shared cache. Accordingly, a given provider may utilize the interactions of FIG. 7 to establish a reserved cache space at each POP 112, such that data objects of other providers do not cause the given provider's data objects to be evicted from the POP 112.


With reference to FIGS. 8A and 8B, graphical illustrations or visualizations will be described illustrating how a reserved cache space for a provider (provider ‘B’) may be established by implementing a provider-specific cache, distinct from a shared data cache (both of which may be implemented, e.g., within a data store 116 of the POPs 112 of FIG. 7). Specifically, FIG. 8A depicts various data objects within both a shared cache 800 and a provider-specific cache 804 prior to implementation of an eviction policy on the respective caches. FIG. 6B depicts various data objects within both the shared cache 800 and the provider-specific cache 804 after eviction.


As in the various figures above, the data objects of FIGS. 8A and 8B are labeled according to their respective provider as well as a number indicating their order within FIGS. 8A and 8B. Further, as in the figures above, the data objects of FIGS. 8A and 8B stored within the shared cache 600 are represented in order of recency of access by a doubly linked list (e.g., generated by an edge server 114 of FIG. 1), which identifies each data object, as well as a data object (if any) accessed more recently than the given data object and a data object accessed less recently that the given data object. Because the features of the shared cache 800 generally correspond to those of the shared cache 600, described with respect to FIGS. 6A and 6B, above, those features will not be described in detail with respect to FIGS. 8A and 8B.


Unlike the figures described above, FIGS. 8A and 8B also depict a provider-specific cache 804, which includes only data objects associated with provider B, for whom the provider-specific cache 804 was generated (e.g., at a POP 112). Illustratively, the data objects of the provider-specific cache 804 are maintained separately from the data objects in the shared cache 800, and are thus not depicted within the shared cache 800. Moreover, because the data objects within the provider-specific cache 804 are subject to a custom eviction policy, as specified by provider B, the arrangement of data objects within the provider-specific cache 804 does not necessarily follow the same structure as the arrangement of data objects within the shared cache 800, but may be ordered or ranked according to a provider-specific ranking (e.g., determined by the custom cache eviction policy selected by the provider). For example, rather than being ordered by recency of access, the data objects within the provider-specific cache 804 may be ordered (e.g., via a doubly linked list, hash, array, etc.) based on other rankings, such as based on a combination of recency of access and total size of the data objects (e.g., by dividing number of bytes of each data objects by milliseconds since the data object has been accessed at the CDN, and sorting the results). In some embodiments, the data objects within the provider-specific cache 804 may not be ordered or interconnected at all, such as where a random cache eviction policy is selected by provider B.


As shown in FIGS. 8A and 8B, the data objects within the provider-specific cache 804 are associated with a cache limit 806. Illustratively, the cache limit may be set based on the total desired size of data objects within the provider-specific cache 804 (e.g., n GB). As such, the cache limit 806 is specific to the provider-specific cache 804, and thus distinct from the cache limit 802 placed on the shared cache 800.


Because the total size of data objects within the provider-specific cache 804 exceeds the cache limit 806 for that provider-specific cache 804, an edge server 114 or other computing device implementing the data structures depicted in FIGS. 8A and 8B may apply a custom cache eviction policy to the provider-specific cache 804, as designated by provider B. Illustratively, the data objects within the provider-specific cache 804 may have previously ordered according to that custom cache eviction policy, based on any attributes of those data objects (e.g., recency of access, frequency of access, data size, a combination thereof, etc.). Accordingly, an edge server 114 may traverse the linked list of the provider-specific cache 804 in reverse order to repeatedly select a lowest ranked data object for eviction, until the total size of the provider-specific cache 804 no longer exceeds the cache limit 806. For example, as shown in FIG. 8B, an edge server 114 may select data objects B3 and B4 for eviction, subject to the custom cache eviction policy designated by provider B. Thus, a provider may be enabled select data objects for eviction from a provider-specific data cache according to a custom cache eviction policy. Moreover, by placing data objects into a provider-specific data cache, those data objects may be protected from a cache eviction policy of a shared data cache, thus enabling the data objects to be maintained at a POP 112 regardless of that shared cache eviction policy.


All of the methods and processes described above may be embodied in, and fully automated via, software code modules executed by one or more computers or processors. The code modules may be stored in any type of non-transitory computer-readable medium or other computer storage device. Some or all of the methods may alternatively be embodied in specialized computer hardware.


Conditional language such as, among others, “can,” “could,” “might” or “may,” unless specifically stated otherwise, are otherwise understood within the context as used in general to present that certain embodiments include, while other embodiments do not include, certain features, elements and/or steps. Thus, such conditional language is not generally intended to imply that features, elements and/or steps are in any way required for one or more embodiments or that one or more embodiments necessarily include logic for deciding, with or without user input or prompting, whether these features, elements and/or steps are included or are to be performed in any particular embodiment.


Disjunctive language such as the phrase “at least one of X, Y or Z,” unless specifically stated otherwise, is otherwise understood with the context as used in general to present that an item, term, etc., may be either X, Y or Z, or any combination thereof (e.g., X, Y and/or Z). Thus, such disjunctive language is not generally intended to, and should not, imply that certain embodiments require at least one of X, at least one of Y or at least one of Z to each be present.


Unless otherwise explicitly stated, articles such as ‘a’ or ‘an’ should generally be interpreted to include one or more described items. Accordingly, phrases such as “a device configured to” are intended to include one or more recited devices. Such one or more recited devices can also be collectively configured to carry out the stated recitations. For example, “a processor configured to carry out recitations A, B and C” can include a first processor configured to carry out recitation A working in conjunction with a second processor configured to carry out recitations B and C.


Any routine descriptions, elements or blocks in the flow diagrams described herein and/or depicted in the attached figures should be understood as potentially representing modules, segments, or portions of code which include one or more executable instructions for implementing specific logical functions or elements in the routine. Alternate implementations are included within the scope of the embodiments described herein in which elements or functions may be deleted, or executed out of order from that shown or discussed, including substantially synchronously or in reverse order, depending on the functionality involved as would be understood by those skilled in the art.


It should be emphasized that many variations and modifications may be made to the above-described embodiments, the elements of which are to be understood as being among other acceptable examples. All such modifications and variations are intended to be included herein within the scope of this disclosure and protected by the following claims.

Claims
  • 1. A content delivery system comprising: a non-transitory data store implementing a shared data cache for storing data objects from multiple providers, the shared data cache including a plurality of data objects previously accessed by end users of the content delivery system and information indicating a most recent access time for individual data objects of the plurality of data objects;a computing device comprising a processor and memory, the processor configured with specific computer-executable instructions that, when executed, cause the processor to: receive a request to create a reserved cache on the content delivery system for data objects associated with a first provider of a plurality of providers;implement a provider-specific cache, on the non-transitory data store, associated with a threshold size, wherein the provider-specific cache is separated from the shared data cache and is designated to store data objects associated with the first provider;migrate one or more data objects associated with the first provider from the shared data cache to the provider-specific cache;obtain, from a computing device of the first provider, provider-supplied code executable to implement a cache eviction policy by which data objects are selected for eviction from the provider-specific cache;determine that a collective size of data objects within the provider-specific cache exceeds the threshold size;select at least one data object for eviction from the provider-specific cache based at least in part on execution of the provider-supplied code; andremove the at least one data object from the provider-specific cache.
  • 2. The content delivery system of claim 1, wherein the specific computer-executable instructions, when executed, further cause the processor to: receive requests from at least two providers to create a reserved cache on the content delivery system;for individual providers of the at least two providers: implement a provider-specific cache on the non-transitory data store for the individual provider, wherein the provider-specific cache is designated to store data objects associated with the individual provider, and is separate from the shared data cache and other provider-specific caches implemented on the non-transitory data store;obtain, from a computing device of the individual provider, additional provider-supplied code executable to implement a cache eviction policy by which data objects are selected for eviction from the provider-specific cache implemented for the individual provider;determine that a collective size of data objects within the provider-specific cache implemented for the individual provider exceeds the specified data size;select at least one data object for eviction from the provider-specific cache implemented for the individual provider based at least in part on execution of the additional provider-supplied code; andremove the at least one data object from the provider-specific cache implemented for the individual provider.
  • 3. The content delivery system of claim 1, wherein the specific computer-executable instructions, when executed, further cause the processor to: receive a request for a first data object associated with the first provider;determine that the first data object is not stored within the provider-specific cache implemented for the first provider;retrieve the first data object from a content source; andplace the first data object within the provider-specific cache implemented for the first provider.
  • 4. The content delivery system of claim 1, wherein the information indicating a most recent access time for individual data objects of the plurality of data objects in the shared cache comprises the relative recency of access between the data objects.
  • 5. The content delivery system of claim 1, wherein the specific computer-executable instructions, when executed, further cause the processor to order the data objects within the provider-specific cache according to the cache eviction policy.
  • 6. The content delivery system of claim 1, wherein the cache eviction policy specifies an order of eviction of data objects within the provider-specific cache based on at least one of frequency of access, recency of access, and size of the data objects.
  • 7. A computer-implemented method comprising: implementing a shared data cache for storing data objects from multiple providers, the shared data cache identifying a plurality of data objects, stored within a non-transitory memory, that were previously accessed by end users;receiving a request to create a provider-specific cache for data objects associated with a first provider;generating the provider-specific cache on the non-transitory data store, wherein the provider-specific cache is at least partially different from the shared data cache and is designated to store data objects associated with the first provider;receiving, from a computing device of the first provider, provider-supplied code executable to implement a cache eviction policy by which data objects are selected for eviction from the provider-specific cache;determining that a collective size of data objects within the provider-specific cache exceeds a threshold size;selecting at least one data object for eviction from the provider-specific cache based at least in part on execution of the provider-supplied code; andremoving the at least one data object from the provider-specific cache.
  • 8. The computer-implemented method of claim 7 further comprising migrating one or more data objects from the shared data cache to the provider-specific cache.
  • 9. The computer-implemented method of claim 7, wherein the request is from the first provider and specifies a desired size of the provider-specific cache.
  • 10. The computer-implemented method of claim 7, wherein generating the provider-specific cache on the non-transitory data store comprising allocating a portion of the non-transitory data store with a size greater than a desired size specified by the first provider.
  • 11. The computer-implemented method of claim 7, wherein the non-transitory data store comprises a plurality of data storage devices collectively configured to implement the non-transitory data store.
  • 12. Non-transitory computer-readable media including instructions executable by a computing device to: implement a shared data cache for storing data objects from multiple providers, the shared data cache identifying a plurality of data objects, stored within a non-transitory memory, that were previously accessed by end users;obtain instructions to create a provider-specific cache for data objects associated with a first provider;generate the provider-specific cache, wherein the provider-specific cache is at least partially different from the shared data cache and is designated to store data objects associated with the first provider;obtain, from a computing device of the first provider, provider-supplied code executable to implement a cache eviction policy by which data objects are selected for eviction from the provider-specific cache;determine that a collective size of data objects within the provider-specific cache exceeds a threshold size;select at least one data object for eviction from the provider-specific cache based at least in part on execution of the provider-supplied code; andremove the at least one data object from the provider-specific cache.
  • 13. The non-transitory computer-readable media of claim 12, wherein the instructions are further executable by the computing device to cause migration of one or more data objects from the shared data cache to the provider-specific cache.
  • 14. The non-transitory computer-readable media of claim 12, wherein the shared data cache and the provider-specific cache are implemented on a common non-transitory data store.
  • 15. The non-transitory computer-readable media of claim 14, wherein the common non-transitory data store comprises a plurality of data storage devices collectively configured to implement the non-transitory data store.
  • 16. The non-transitory computer-readable media of claim 14, wherein the instructions are executable by the computing device to generate the provider-specific cache at least partly by allocating a portion of the non-transitory data store with a size greater than a specified desired size for the provider-specific cache.
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