Memory Space Representation for Heterogeneous Network Process Migration
نویسندگان
چکیده
A major difficulty of heterogeneous process migration is how to collect advanced dynamic data-structures, transform them into machine independent form, and restor them appropriately in a different hardware and software environment. In this study we introduce a data model, the Memory Space Representation (MSR) model, to recognize complex data structures in program address spaces. Supporting mechanisms of the MSR model are also developed for collecting program data structures and restoring them in a heterogeneous environment. The MSR design has been implemented under a prototype heterogeneous process migration environment. Pointer-intensive programs with function and recursion calls are tested. Experimental results confirm that the newly proposed design is feasible and effective for heterogeneous network process migration.
منابع مشابه
Representation of Adsorption Data for the Case of Energetically Heterogeneous Solid Surfaces Using Artificial Neural Network
متن کامل
SNOW: Software Systems for Process Migration in High-Performance, Heterogeneous Distributed Environments
This paper reports our experiences on the Scalable Network Of Workstation (SNOW) project, which implements a novel methodology to support user-level process migration for traditional stack-based languages such as C and Fortran in heterogeneous distributed environments. Our methodology addresses the three outstanding problems of transferring execution state, memory state, and communication state...
متن کاملData Collection and Restoration for Heterogeneous Process Migration
This study presents a practical solution for data collection and restoration to migrate a process written in high level stack-based languages such as C and Fortran over a network of heterogeneous computers. We study a logical data model which recognizes complex data structures in process address space. Then, novel methods are developed to incorporate the model into a process and to collect and ...
متن کاملFast Reconstruction of SAR Images with Phase Error Using Sparse Representation
In the past years, a number of algorithms have been introduced for synthesis aperture radar (SAR) imaging. However, they all suffer from the same problem: The data size to process is considerably large. In recent years, compressive sensing and sparse representation of the signal in SAR has gained a significant research interest. This method offers the advantage of reducing the sampling rate, bu...
متن کاملVideos as Global Networks in the Practice of Migration (An Iranian Case Study)
Network society is an ever-changing robust system expanding new nods as long as they can communicate. Videos, as a source of information and communication, are one of the most strategic nods in this architecture. The present study is a scholarly attempt in investigating the effects of videos on facilitating the process of migration for the Iranian students. To this end, our case studies partici...
متن کامل