Method and apparatus for dynamic distributed computing over a network

Information

  • Patent Grant
  • 6446070
  • Patent Number
    6,446,070
  • Date Filed
    Thursday, February 26, 1998
    26 years ago
  • Date Issued
    Tuesday, September 3, 2002
    22 years ago
Abstract
A homogeneous execution environment operates within a heterogeneous client-server network. A client selects a server and transmits a procedure call with parameters. In response, the system dynamically and securely downloads code to a compute server; invokes a generic compute method; executes the code on the compute server; and returns the results to the calling client method, preserving the result on the compute server if requested. This technique is efficient in that it does not require multiple copies of code to be downloaded or compiled since server byte-codes can be executed on each of the different systems. The code can be compiled once and downloaded as needed to the various servers as byte-codes and then executed.
Description




BACKGROUND OF THE INVENTION




1. Field of the Invention




This invention generally relates to distributed computing systems and more particularly, to a method and apparatus for performing dynamic distributed computing over a network.




2. Description of the Related Art




In a distributed computing network, users can harness the processing capabilities of numerous computers coupled to the network. Tasks with many different independent calculations can be quickly processed in parallel by dividing the processing among different computers on the network. Further, specialized tasks can be computed more quickly by locating a computer on the network most suitable for processing the data. For example, a task executing on a client system which performs an intense floating point calculation may execute faster on a server system coupled to the network which has specialized floating point hardware suitable for the particular calculations.




Unfortunately, conventional techniques for distributed computing are not easily implemented in the typical heterogenous computing environments. Each computer on the network is typically heterogeneous containing different processor and operating system combinations, and require different object modules for execution. On the client side, different object modules requires that the user compiles different versions of the task for each different platform and loads the module onto the corresponding platform adding storage requirements to each client and also requiring porting and compiling the same tasks multiple times. Further, conventional techniques require that the code be distributed over the computers well before the code is executed. In the conventional systems, the extensive preparation required for performing distributed computing deterred many from exploiting this technology.




Distributed computing systems based on scripting languages are an improvement over some conventional distributed computing systems. Unfortunately, scripting based systems eliminate the need to recompile code, but are still very inefficient. A scripting based distributed system can execute the same instructions on multiple platforms because the language is interpreted by an interpreter located on each system. Consequently, most scripting languages are slow since they must translate high level scripting instructions into low level native instructions in real time. Moreover, scripting languages are hard to optimize and can waste storage space since they are not generally compressed.




Based on the above limitations found in conventional systems, it is desirable to improve distributed computing systems.




SUMMARY OF THE INVENTION




In one aspect of the present invention associated with a client computer, a method and apparatus for dynamic distributed computing is provided. Initially, the client selects a server from the network to process the task. This selection can be based on the availability of the server or the specialized processing capabilities of the server. Next, a client stub marshals the parameters and data into a task request. The client sends the task request to the server which invokes a generic compute method. The server automatically determines if the types associated with the task are available on the server and downloads the task types from the network as necessary. Information in the task types are used to extract parameters and data stored in the particular task request. The generic compute method is used to execute the task request on the selected server. After the server processes the task request, the client receives the results, or the computed task, back from the selected server.




In another aspect of the present invention associated with a server computer, a method and apparatus for dynamic distributed computing is provided. Initially, the server will automatically determine which task types are available on the server and will download task types from the network as necessary. These task types help the server unmarshal parameters and data from a task request and generate a local task. Next, the server invokes a generic compute method capable of processing all types of compute tasks or subtypes of a compute task. The generic compute method is used to execute the task request on the selected server. If a subsequent task will use the results, the server stores the results from the computed tasks in a local cache. Once the task has completed, the server returns the results, or the computed task, to the client.











BRIEF DESCRIPTION OF THE DRAWINGS




The accompanying drawings, which are incorporated in and constitute a part of this specification, illustrate an embodiment of the invention and, together with the description, serve to explain the advantages, and principles of the invention.




In the drawings:




FIG.


1


. illustrates a network suitable for use with methods and systems consistent with the present invention;





FIG. 2

is block diagram of a computer system suitable for use with methods and systems consistent with the present invention;





FIG. 3

is a block diagram representation of a client-server networking environment suitable for use with methods and systems consistent with the present invention;





FIG. 4

is a flow chart of the steps a client performs in accordance with methods and systems consistent with the present invention; and





FIG. 5

is a flow chart the steps performed by a server in accordance with methods and systems consistent with the present invention.











DETAILED DESCRIPTION OF THE INVENTION




Introduction




Reference will now be made in detail to an implementation of the present invention as illustrated in the accompanying drawings. Wherever possible, the same reference numbers will be used throughout the drawings and the following description to refer to the same or like parts.




Systems consistent with the present invention address shortcomings of the prior art and provide a dynamic distributed computing system used over a network of server computers. This dynamic distributed computing system is particularly useful in heterogenous computer networks having computers with different processors, different operating systems, and combinations thereof. Such a system allows a client application to select a server computer at runtime to execute a particular task. In method and systems consistent with the present invention, the task is an object having a particular type or class definition. The server can generally defer knowing the actual class definition until the parameters and data associated with the object task are received on the server. Consequently, the particular type is downloaded by the server if it is not available on the server. For example, if an object instance of an unknown class is transmitted to the server, the server downloads the unknown class. The server then uses this class to process the object. This late association of a class definition to an object increases the flexibility in processing complex tasks over a network of server computers. Further, the present design facilitates this flexibility with minimal additional overhead by utilizing features in existing remote procedure call subsystems such as the Remote Method Invocation (RMI) subsystem developed by Sun Microsystems, Inc. of Mountain View, Calif. For more information on Remote Method Invocation (RMI) see co-pending U.S. Patent Application, “System and Method For Facilitating Loading of “Stub” Information to Enable a Program Operating in One Address Space to Invoke Processing of a Remote Method or Procedure in Another Address Space” having Ser. No. 08/636,706, filed Apr. 23, 1996 by Ann M. Wollrath, James Waldo, and Roger Riggs, assigned to a common assignee and hereby incorporated by reference. Also, RMI is also described in further detail in the RMI specification on the JavaSoft WebPage at FTP://ftpjavasoft.com/docs/jdk1.2/rmi-spec-jdk1.2.ps, which is also hereby incorporated by reference.




Unlike conventional systems, a task in the dynamic distributed system consistent with the present invention can be written once and executed on any server computer in a network. This capability is particularly advantageous in a heterogeneous network because the task does not have to be ported to every platform before it is executed. Instead, a generic compute task designed in accordance with the present invention is loaded on each system. This generic compute task is capable of executing a wide variety of tasks specified by the client at runtime. For example, one can develop a type called “Compute” and a generic compute task which accepts the “Compute” type in an object-oriented language, such as Java. Java is described in many texts, including one that is entitled “The Java Language Specification” by James Gosling, Bill Joy, and Guy Steele, Addison-Wesley (1996), which is hereby incorporated by reference. The client creates a task having a subtype of the type “Compute” and passes an object corresponding to task to the generic compute task on the server. A remote procedure call mechanism downloads the object to the server and the generic compute task which executes the task.




In Java, the task transmitted by the client is actually an object including a series of bytecodes. These bytes codes can be executed immediately as long as the server implements a Java Virtual Machine (JVM). The JVM can be implemented directly in hardware or efficiently simulated in a software layer running on top of the native operating system. The Java language was designed to run on computing systems with characteristics that are specified by the Java Virtual Machine (JVM) Specification. The JVM specification is described in greater detail in Lindholm and Yellin,


The Java Virtual Machine Specification,


Addison-Wesley (1997), which is hereby incorporated by reference. This uniform JVM environment allows homogeneous execution of tasks even though the computer systems are heterogenous and have different processors, different operating systems, and combinations thereof. Combining a powerful remote procedure call subsystem with a generic compute task on the server, designed in accordance with the present invention, results in a powerful dynamic distributed computing environment.




A compute server using bytecodes can process a task much faster than systems using conventional text based scripting languages or other character based languages. Each bytecode is compact (8 bits) and is in a numeric format. Consequently, the server computer does not spend compute cycles parsing the characters and arguments at run time. Also, the bytecodes can be optimized on the client before transporting them to the server. The server optionally can convert the bytecodes to native instructions for execution directly on the hardware at run time using a processing mechanism such as a Just-in-Time (JIT) compiler. For more information on JIT compilers see


The Java Virtual Machine Specification.






A system designed in accordance with the present invention assumes that each client is capable of communicating to each server over a common networking protocol such as TCP/IP. Also, it is assumed that there is a remote procedure call (RPC) subsystem on the client and server which is capable of receiving remote requests from a client and executing them on the server. This RPC system also automatically downloads code and related information needed for performing the task at run time. RMI developed by Sun Microsystems, Inc. is a suitable RPC subsystem providing these features. One skilled in the art, however, will appreciate that other RPC subsystems, such as DCOM/COM from Microsoft, Inc., may be used in lieu of RMI.




Computer Network





FIG. 1

illustrates a network


100


in which one embodiment of the present invention can be implemented. Network


100


includes Local Area Network (LAN)


101


, backbone or Wide Area Network (WAN)


112


, and Local Area Network (LAN)


116


in its essential configuration. LAN


101


includes a series of work stations and server computers


102


,


104


,


106


, and


108


. LAN


116


includes a series of work stations and server computers


118


,


120


,


122


, and


124


. These computer systems


102


-


108


and


118


-


124


are coupled together to share information, transmit data, and also share computational capabilities. LAN


101


is coupled to the larger overall network using a network interconnect device


110


. The specific type of network interconnect device can be a router, a switch, or a hub depending on the particular network configuration. In general, network interconnect device


110


includes routers, switches, hubs or any other network interconnect device capable of coupling together a LAN


101


, a WAN


112


, and LAN


116


with user terminals into an integrated network. Network interconnect device


114


can also include routers, switches, hubs, or any other network interconnect device capable of coupling the computers on LAN


116


with user terminals into an integrated network. In general, a dynamic distributed computing system designed in accordance with the present invention is typically located on each computer system coupled to network


100


. Accordingly, each computer may operate as either a client or a server depending on the particular request being made and the services being provided. Typically, the client requests that a task is computed on a server computer and the server computer will process the task.




Computer System




Referring now to

FIG. 2

, the system architecture for a computer system


200


suitable for practicing methods and systems consistent with the present invention is illustrated. The exemplary computer system


200


is for descriptive purposes only. Although the description may refer to terms commonly used in describing particular computer systems, such as in IBM PS/2 personal computer, the description and concepts equally apply to other computer systems, such as network computers, workstation, and even mainframe computers having architectures dissimilar to FIG.


1


.




Furthermore, the implementation is described with reference to a computer system implementing the Java programming language and Java Virtual Machine specifications, although the invention is equally applicable to other computer systems having similar requirements. Specifically, the present invention may be implemented with both object-oriented and nonobject-oriented programming systems.




Computer system


200


includes a central processing unit (CPU)


105


, which may be implemented with a conventional microprocessor, a random access memory (RAM)


210


for temporary storage of information, and a read only memory (ROM)


215


for permanent storage of information. A memory controller


220


is provided for controlling RAM


210


.




A bus


230


interconnects the components of computer system


200


. A bus controller


225


is provided for controlling bus


230


. An interrupt controller


235


is used for receiving and processing various interrupt signals from the system components.




Mass storage may be provided by diskette


242


, CD ROM


247


, or hard drive


252


. Data and software may be exchanged with computer system


200


via removable media such as diskette


242


and CD ROM


247


. Diskette


242


is insertable into diskette drive


241


which is, in turn, connected to bus


230


by a controller


240


. Similarly, CD ROM


247


is insertable into CD ROM drive


246


which is, in turn, connected to bus


230


by controller


245


. Hard disk


252


is part of a fixed disk drive


251


which is connected to bus


230


by controller


250


.




User input to computer system


200


may be provided by a number of devices. For example, a keyboard


256


and mouse


257


are connected to bus


230


by controller


255


. It will be obvious to those reasonably skilled in the art that other input devices, such as a pen and/or tablet may be connected to bus


230


and an appropriate controller and software, as required. DMA controller


260


is provided for performing direct memory access to RAM


210


A visual display is generated by video controller


265


which controls video display


270


.




Computer system


200


also includes a communications adaptor


290


which allows the system to be interconnected to a local area network (LAN) or a wide area network (WAN), schematically illustrated by bus


291


and network


295


.




Operation of computer system


200


is generally controlled and coordinated by operating system software. The operating system controls allocation of system resources and performs tasks such as processing scheduling, memory management, networking, and services, among things.




Dynamic Distributed Computing




Dynamic distributed computing is generally a client server process. The client-server relationship is established for each call being made and generally the roles can change. Typically, the client is defined as the process making a call to request resources located or controlled by the server. In this context, the computer or processor executing the requesting process may also be referred to as a client. However, these roles may change depending on the context of information and particular processing which is taking place.





FIG. 3

is a block diagram representation of a client-server networking environment used to implement one embodiment of the present invention. This diagram includes those subsystems closely related to the present invention to emphasize one embodiment of the present invention. Additional subsystems, excluded in

FIG. 3

, may be necessary depending on the actual implementation.




Accordingly,

FIG. 3

includes a client


302


, a server


316


, and an object/method repository


314


which are all operatively coupled to a network


312


. Client


302


includes an application


304


which makes a remote compute call


306


to process a task on a remote server computer. A remote stub


310


, typically generated using a remote procedure call subsystem, as described in the RMI specification, is used to package parameters and data associated with the specific remote compute call


306


. The typical client can also includes a collection of local objects/methods


308


which may contain the type of task client


302


calls remote compute call


306


to execute. Alternatively, the tasks can be located in object method repository


314


and are accessed by compute method


320


as needed. Server


316


includes a remote skeleton


322


to unmarshal the parameters and data transmitted from the client. Remote skeleton


322


prepares information for use by compute method


320


. A local objects/methods


324


also includes tasks client


302


can ask the server


316


to process.




In operation, remote compute call


306


makes a call to a compute method


320


to process a particular task. A remote stub


310


marshals information on the calling method so that a compute method


320


on server


316


can execute the task. Remote stub


310


may also marshal basic parameters used as arguments by compute method


320


on server


302


. Remote skeleton


322


receives the task and unmarshals data and parameters received over the network and provides them to compute method


320


. If the task and related types are not available on server


316


, the skeleton downloads the types from client


302


, object/method repository


314


, or some other safe and reliable source of the missing types. The type information maps the location of data in the object and allows the remote skeleton to complete processing the object. RMI (not shown) is one remote procedure call (RPC) system capable of providing remote stub


310


and remote skeleton


322


. Once the object is processed by the skeleton, compute method


320


executes the task and returns the computed task or computed task results to client


302


.





FIG. 4

is a flow chart of the steps performed by a client when utilizing the dynamic distributed computing system and method consistent with the present invention. Initially, the client selects a suitable server from the network to process the task (step


402


). The selection criteria can be based upon the overall processing load distribution among the collection of server computers or the specialized computing capabilities of each server computer. For example, load balancing techniques may be used to automatically determine which computer has the least load at a given moment. Further, some computers having specialized hardware, such as graphic accelerators or math co-processors, may be selected by the client because the task has intense graphic calculations, such as rendering three dimensional wireframes, or must perform many floating point calculations.




Once the server is selected, the client invokes a remote compute method on the selected server (step


404


). An RPC system, such as RMI, facilitates invoking the remote compute method on a server computer. Typically, the client need only know that the remote compute method can be used as a conduit to process a particular task on a remote computer. For example, in Java the remote instruction “Server.runTask(new PI(


1000


))” executed on a client causes a remote method “runTask” to be invoked on a remote server “Server” of type “ComputeServer”. This step provides the task (in this case the task is a type task object instantiated by the “new PI(


1000


)) as a parameter to the generic compute method through the remote method “runTask”. The “runTask” method on the server implements a Compute remote interface. Optionally, this instruction can indicate to the server that results from the computed task should be stored in a result cache on the selected server. This enables subsequent tasks to share the results between iterations. For example, the results from calculating “PI” may be used later by another remote method to compute the volume of a sphere or perform another precise calculation using the value of “PI”.




A stub is used to marshal parameters and data into a task request. The task request is then provided to the selected server. Typically, the task request includes data and parameters for the task as well as a network location for the type or class if it is not present on the server. A skeleton on the server uses the type or class information to process the object and unmarshall data and parameters. In a system using Java and RMI, the task request is an object and the class location information is contained in a codebase URL (universal record locator) parameter. Further details on this are contained in the RMI Specification. The server can schedule the task for execution immediately or whenever the server finds a suitable time for executing the task. After the server performs the computation, the client receives the results from the computed task (step


408


).





FIG. 5

is a flow chart of the steps performed by the dynamic distributed computing system and methods consistent with the present invention. Initially, a skeleton on the server unmarshalls parameters and data from a task request and recreates the original task as transmitted (step


504


). Unmarshalling these parameters may include downloading several additional types. The skeleton determines if the types related to the task request are available on the server (step


506


). If the types associated with the task request are not available, the skeleton must download the tasks from one of the areas on the network (step


509


). For example, if a “PI( )” class is not on the server, the skeleton server will down load this type from the client. The type or class is used by the skeleton to map data in the object and marshall parameters and data.




Typically, the client will indicate in the request package where the particular type is located. The skeleton can download the requested type from a object/method repository and can cache the type for future server requests. Also, the requested type could also be located on the client. For example, in Java and RMI the class containing the particular type is located in the given codebase URL (universal record locator) transmitted by the client. Dynamic class loading features in RMI facilitate the automatic downloading of the class using the codebase. These types enable the skeleton to parse the task request and extract the appropriate data and parameters. The steps outlined above make the parameters and data readily available for further processing.




Once the appropriate types are available, the skeleton invokes the generic compute method (step


508


). The generic compute method on the server then executes the specific task requested by the client (step


510


). For example, assume the client calls “ComputeServer.runTask(new PI(


1000


))”. The skeleton will invoke the generic compute method “runTask” on the server. The “runTask” method calls the “run( )” method embedded in the task called by the client. Further, the “runTask” method implements the remote interface “Compute” which maintains the remote connection with the client. At the option of the client or a predetermined setting on the server, the skeleton stores results from the computed tasks in a cache if a subsequent task will use the results. As a final step on the server, the computed task or results are returned to the client by executing “return t.run( )” on the server (step


512


).




Exemplary Implementation




Consistent with the present invention, the following code sample is provided as one implementation. Although this example is provided in the object-oriented Java programming language other programming languages could also be used. For example, the server can include the following Java code:

















THE TASK






public interface Task extends Serializable {













//This interface allows a class (the “PI”







// class ) to implement the abstract







// run() class











{













Public Object run();











}






THE REMOTE INTERFACE:






import java.rmi.*;






public interface Compute extends Remote {













// The RMI/RPC Interface











public Object runTask(Task t) throws RemoteException;













//The abstract runIt method











}






THE COMPUTE SERVER IMPLEMENTATION






import java.rmi.*;






import java.rmi.server.*;






public class ComputeServer extends UnicastRemoteObject






implements Compute {













public ComputeServer ()throws RemoteExecption{}













//Implements the Compute interface







//abstract “runTask” method











// ... Code in this area is used for initializing the routine with RPC system













public Object runTask (Task t) throws RemoteException













// runTask implements the abstract











method













// defined in ComputerServer interface














return t.run();




//













}







The following exemplary Java code can be used on a client performing











dynamic distributed computing consistent with the present invention.













class PI {







private int precision;











PI (int howManyPlaces) { // sets precision of PI value to be calculated later













precision = howManyPlaces;







}












public Object run() {




// implement the abstract run method in the













// compute interface











double pi = computePIsomehow(precision); // calcualate pi






return new Double(pi);






}






public static void main (String[] args) {












ComputerServer server = getAComputerServer();




// Select a server from







// the network







// and store in remote







// compute call to RMI







// RPC abstract remote







// interface






Double pi = server.runTask(new PI(1000));




// implement abstract remote







// to execute a “pi” computation







// defined in “PI” class.






System.out.println(“PI seems to be ”+pi);




// return results in “pi” variable







// and print to standard out














While specific embodiments have been described herein for purposes of illustration, various modifications may be made without departing from the spirit and scope of the invention. Those skilled in the art understand that the present invention can be implemented in a wide variety of hardware and software platforms and is not limited to the traditional routers, switches, and intelligent hub devices discussed above. Accordingly, the invention is not limited to the above described embodiments, but instead is defined by the appended claims in light of their full scope of equivalents.



Claims
  • 1. A method performed on a computer system having a primary storage device, a secondary storage device, a display device, and an input/output mechanism which enables a client to dynamically distribute to a server computer in a collection of server computers a task developed in a programming language compatible with each of the server computers, the method comprising the steps of:selecting a server from a plurality of heterogenous servers to process a task based upon the overall processing load distribution among the collection of server computers and the specialized computing capabilities of each server computer; marshalling parameters and data into a task request which further comprises the substeps of, determining if code and data types related to the requested task are present on the selected server, and downloading the code and related data types onto the selected server when the code or data types are not present on the selected server; invoking a generic compute method associated with the selected server which executes the task and further comprises the substeps of, providing the task as a parameter to the generic compute method, and indicating to the server that results from a computed task should be stored in a result cache on the selected server for subsequent tasks to use; and receiving the computed task back from the selected server for further processing on the client.
  • 2. A method performed on a processor contained within a computer system having a primary storage device, a secondary storage device, a display device, and an input/output mechanism which enables a server associated with a collection of servers to dynamically receive and process a task from a client computer wherein the task is in an executable programming language compatible with each of the server computers, the method comprising the steps of:unmarshalling parameters and data from a task request into a task, which further comprises the substeps of, determining if the types related to the task are available on the server, and when the types related to the task are not available on the server, downloading the types onto the server from a location as indicated by the parameters provided by the client; to invoking a generic compute method, which is capable of processing all types of tasks, which executes the task and generates results; storing results from the executed tasks in a cache if a subsequent task will use the results; and returning the results from executed task to the client.
  • 3. A computer readable medium containing instructions for controlling a computer system to perform a method for enabling a client to dynamically distribute to a server in a collection of servers a task developed in a programming language compatible with each of the servers, the method comprising the steps of:selecting a server from a plurality of heterogeneous servers to process a task based upon an overall processing load distribution among the collection of servers and specialized computing capabilities of each server; marshalling parameters and data into a task request which further comprises: determining if code and data types related to the requested task are present on the selected server, and downloading the code and related data types onto the selected server when the code or data types are not present on the selected server; invoking a generic compute method associated with the selected server which executes the task and further comprises: providing the task as a parameter to the generic compute method, and indicating to the server that results from a computed task should be stored in a result cache on the selected server for subsequent tasks to use; and receiving the computed task back from the selected server for further processing on the client.
  • 4. A computer readable medium containing instructions for controlling a computer system to perform a method for enabling a server associated with a collection of servers to dynamically receive and process a task from a client computer wherein the task is in an executable programming language compatible with each of the servers, the method comprising the steps of:unmarshalling parameters and data from a task request into a task, which further comprises: determining if types related to the task are available on the server, and when the types related to the task are not available on the server, downloading the types onto the server from a location indicated by the parameters provided by the client; invoking a generic compute method, which is capable of processing all types of tasks, which executes the task and generates results; storing results from the executed tasks in a cache if a subsequent task will use the results; and returning the results from executed task to the client.
  • 5. The method of claim 1, wherein the enviromnent includes a remote procedure call subsystem.
  • 6. The method of claim 1, wherein the selected server has the lowest load characteristic compared with average load characteristic of the servers over a predetermined time period.
  • 7. The method of claim 1, wherein the specialized computing capabilities include a capability to render images.
  • 8. The method of claim 1, wherein the results comprise an object.
  • 9. The method of claim 2, wherein the task is developed using the Java programming language and environment.
  • 10. The computer readable medium of claim 3, wherein the environment includes a remote procedure call subsystem.
  • 11. The computer readable medium of claim 3, wherein selecting the server comprises selecting the server based on a lowest load characteristic compared to an average load characteristic of the servers over a predetermined period of time.
  • 12. The computer readable medium of claim 3, wherein the specialized computing capabilities include a capability to render images.
  • 13. The computer readable medium of claim 3, wherein the sending step further comprises:providing the task as a parameter to the generic compute method.
  • 14. The computer readable medium of claim 3, wherein the results comprise an object.
  • 15. The computer readable medium of claim 4, wherein the task is developed using a Java programming language and environment.
  • 16. The computer readable medium of claim 11, wherein the determining step and the downloading steps are performed by a remote procedure call (RPC) subsystem.
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