Biblio
In transient distributed cloud computing environment, software is vulnerable to attack, which leads to software functional completeness, so it is necessary to carry out functional testing. In order to solve the problem of high overhead and high complexity of unsupervised test methods, an intelligent evaluation method for transient analysis software function testing based on active depth learning algorithm is proposed. Firstly, the active deep learning mathematical model of transient analysis software function test is constructed by using association rule mining method, and the correlation dimension characteristics of software function failure are analyzed. Then the reliability of the software is measured by the spectral density distribution method of software functional completeness. The intelligent evaluation model of transient analysis software function testing is established in the transient distributed cloud computing environment, and the function testing and reliability intelligent evaluation are realized. Finally, the performance of the transient analysis software is verified by the simulation experiment. The results show that the accuracy of the software functional integrity positioning is high and the intelligent evaluation of the transient analysis software function testing has a good self-adaptability by using this method to carry out the function test of the transient analysis software. It ensures the safe and reliable operation of the software.
Embedded software is found everywhere from our highly visible mobile devices to the confines of our car in the form of smart sensors. Embedded software companies are under huge pressure to produce safe applications that limit risks, and testing is absolutely critical to alleviate concerns regarding safety and user privacy. This requires using large test suites throughout the development process, increasing time-to-market and ultimately hindering competitivity. Speeding up test execution is, therefore, of paramount importance for embedded software developers. This is traditionally achieved by running, in parallel, multiple tests on large-scale clusters of computers. However, this approach is costly in terms of infrastructure maintenance and energy consumed, and is at times inconvenient as developers have to wait for their tests to be scheduled on a shared resource. We propose to look at exploiting GPUs (Graphics Processing Units) for running embedded software testing. GPUs are readily available in most computers and offer tremendous amounts of parallelism, making them an ideal target for embedded software testing. In this paper, we demonstrate, for the first time, how test executions of embedded C programs can be automatically performed on a GPU, without involving the end user. We take a compiler-assisted approach which automatically compiles the C program into GPU kernels for parallel execution of the input tests. Using this technique, we achieve an average speedup of 16Ã when compared to CPU execution of input tests across nine programs from an industry standard embedded benchmark suite.