Many organizations maintain heterogeneous systems of information technology infrastructure comprising assorted data formats originating from multiple sources. For example, an organization may use a data warehouse to manage structured data and a map-reduce engine to manage semi-structured or unstructured data. Data warehouses may provide tools to extract, transform, and load data (“ETL tools”). Some ETL tools permit a user to specify operations that process data from multiple sources or to perform other functions. Such a tool may include a graphical user interface (“GUI”) that displays a model of the entities and data sources involved in an ETL process.
As noted above, ETL tools allow users to specify a sequence of operations that process data from various sources or that perform other types of functions. These tools may also convert user specified operations into executable code. As infrastructure and data become more diverse, an entire sequence of operations may not be suitable for execution in just one environment. While some operations may work well in any execution environment, other operations may be more appropriate for a particular environment. For example, in one operation, a map reduce cluster on a cloud network may be better suited for analyzing log files and, in a second operation, standard query language (“SQL”) may be better suited for joining the results of the analyses with a data base table. In one example, map reduce may be defined as a programming model for processing very large data sets in parallel.
If a map reduce execution environment is more suitable for an operation in a process, the generated map reduce code may not account for the performance objectives of the process as a whole. While it is possible to generate efficient map reduce code, many aspects of map reduce execution are configurable via the map reduce execution environment. As such, operations that may benefit from a custom map reduce configuration may be bound to a default configuration. For example, if speed is a higher priority than fault tolerance, it may be beneficial to minimize the amount of data stored into back up storage while the map reduce operation executes. In another situation, speed may not be as critical as having a back up of intermediate output. In this instance, it may beneficial to increase the amount of data stored into back up storage.
In view of the foregoing, disclosed herein are a system, non-transitory computer readable medium, and method to adjust map reduce execution environments. In one example, It is determined whether some operations in a sequence of operations should be implemented in a map reduce execution environment. If it is determined that some operations in a sequence of operations should be implemented in a map reduce execution environment, the map reduce execution environment is adjusted to achieve a predefined performance objective.
The system, non-transitory computer readable medium, and method disclosed herein may configure the map reduce environment in view of the performance objectives of the sequence of operations, when some operations are selected for map reduce implementation. As such, rather than binding these map reduce operations to a default environment configuration, a configuration may be adjusted to be consistent with the performance objectives of the sequence. In one example, an execution environment may be defined as a context in which an operation is executed, such as an operating system, a database management system, a map reduce engine, or an operating system coupled with a hardware specification. The aspects, features and advantages of the present disclosure will be appreciated when considered with reference to the following description of examples and accompanying figures. The following description does not limit the application; rather, the scope of the disclosure is defined by the appended claims and equivalents.
The computer apparatus 100 may also contain a processor 110, which may be any number of well known processors, such as processors from Intel® Corporation. In another example, processor 110 may be an application specific integrated circuit (“ASIC”). Non-transitory computer readable medium (“CRM”) 112 may store instructions that may be retrieved and executed by processor 110. The instructions may include an interface module 114 and an optimizer module 116. In one example, non-transitory CRM 112 may be used by or in connection with any instruction execution system that can fetch or obtain the logic from non-transitory CRM 112 and execute the instructions contained therein.
Non-transitory CRM 112 may comprise any one of many physical media such as, for example, electronic, magnetic, optical, electromagnetic, or semiconductor media. More specific examples of suitable non-transitory computer-readable media include, but are not limited to, a portable magnetic computer diskette such as floppy diskettes or hard drives, a read-only memory (“ROM”), an erasable programmable read-only memory, a portable compact disc or other storage devices that may be coupled to computer apparatus 100 directly or indirectly. Alternatively, non-transitory CRM 112 may be a random access memory (“RAM”) device or may be divided into multiple memory segments organized as dual in-line memory modules (“DIMMs”). The non-transitory CRM 112 may also include any combination of one or more of the foregoing and/or other devices as well. While only one processor and one non-transitory CRM are shown in
The instructions residing in non-transitory CRM 112 may comprise any set of instructions to be executed directly (such as machine code) or indirectly (such as scripts) by processor 110. In this regard, the terms “instructions,” “scripts,” and “applications” may be used interchangeably herein. The computer executable instructions may be stored in any computer language or format, such as in object code or modules of source code. Furthermore, it is understood that the instructions may be implemented in the form of hardware, software, or a combination of hardware and software and that the examples herein are merely illustrative.
As will be described in more detail below, the instructions in interface module 114 may cause processor 110 to display a GUI that permits a user to specify a sequence of operations and to request conversion thereof into executable code. Optimizer module 116 may convert each operation into code executable in an execution environment. In one example, selection of the execution environment may be at least partially based on resources consumed by each operation when executed therein. In one example, optimizer module 116 may determine that the sequence is more efficient in an order different than that specified by the user. Selection of the execution environment may be further based on the resources consumed when the sequence of operations is coordinated across different execution environments. If optimizer module 116 determines that some operations should be implemented in a map reduce execution environment, it may adjust the map reduce execution environment such that a predefined performance objective of the sequence of operations is achieved. The predefined performance objective may be configurable by the user via interface module 114.
A user clicking on flow information tab 206 may cause meta-data associated with the specified operations to be shown in right panel 204. A click on flow information tab 206 may also cause other information to be shown, such as a graph representation of the sequence of operations. A user clicking on xLM tab 208 may cause customized extensible markup language (“XML”) code to be displayed in right panel 204. Such code may represent the sequence of operations specified in left panel 202. The “xLM” code may capture information regarding data structures used to implement the sequence of operations (e.g., nodes and edges of a graph or hierarchical tree of interlinked nodes). The “xLM” code may also capture design meta-data (e.g., functional and non-functional requirements or resource allocation). In another example, the “xLM” code may capture operational properties (e.g., operation type, data schema, operation statistics, parameters or expressions for implementing an operation type, or execution environment details). A user clicking on structured query language (“SQL”) tab 210 may cause the display of SQL code in right panel 204. Such SQL code may be used to implement some operations in left panel 202 as determined by optimizer module 116. A user clicking coordination tab 214 may cause the display of executable code in right panel 204 that coordinates each operation in the process displayed in left panel 202. Once the execution environments are selected, GUI 200 may show tabs that permit a user to view or edit the generated code executable therein.
Working examples of the system, method, and non-transitory computer-readable medium are shown in
As shown in block 302 of
Referring again to
In block 306, if it is determined that some operations in the sequence should be implemented in a map reduce execution environment, the map reduce execution environment may be adjusted such that a predefined performance objective of the sequence is achieved. In one example, an amount of data stored in a backup repository during execution of an operation may be adjusted. Such an adjustment may be made by balancing speed requirements and fault tolerance requirements in accordance with the performance objective. In other examples, different configuration adjustments may be made, including, but not limited to: a number of map or reduce tasks to execute in parallel; a number of reducers per task; block size of a file system used by map reduce; map reduce job scheduler; buffer size for sorting or merging; number of parallel copy operations; java heap size; and, amount of nodes to use in a cluster of computers carrying out the map reduce operation. It is understood that the foregoing is a non-exhaustive list of possible configurations and that each type of map reduce execution environment may have many different types of configurable environment variables. The variables may be configured as, for example, command line parameters, a configuration file, or the like.
The second level in the hierarchical tree of
Advantageously, the foregoing system, method, and non-transitory computer readable medium convert a process with different operations into code executable in different execution environments. If some of those operations are determined to be map reduce operations, the map reduce environment may be adjusted to ensure that the performance objective of the sequence is met. Instead of executing a map reduce operation using some default configuration, various configurations be used in view of the performance objectives. In this regard, the overall process may be optimized and end users of the resulting process may experience better performance.
Although the disclosure herein has been described with reference to particular examples, it is to be understood that these examples are merely illustrative of the principles of the disclosure. It is therefore to be understood that numerous modifications may be made to the examples and that other arrangements may be devised without departing from the spirit and scope of the disclosure as defined by the appended claims. Furthermore, while particular processes are shown in a specific order in the appended drawings, such processes are not limited to any particular order unless such order is expressly set forth herein; rather, processes may be performed in a different order or concurrently and steps may be added or omitted.
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