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Abstraction-based relation mining for functional test generation

机译:基于抽象的关系挖掘,用于功能测试的生成

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Functional test generation and design validation frequently use stochastic methods for vector generation. However, for circuits with narrow paths or random-resistant corner cases, purely random techniques can fail to produce adequate results. Deterministic techniques can aid this process; however, they add significant computational complexity. This paper presents a Register Transfer Level (RTL) abstraction technique to derive relationships between inputs and path activations. The abstractions are built off of various program slices. Using such a variety of abstracted RTL models, we attempt to find patterns in the reduced state and input with their resulting branch activations. These relationships are then applied to guide stimuli generation in the concrete model. Experimental results show that this method allows for fast convergence on hard-to-reach states and achieves a performance increase of up to 9× together with a reduction of test lengths compared to previous hybrid search techniques.
机译:功能测试的生成和设计验证经常使用随机方法进行矢量生成。但是,对于路径狭窄或抗随机拐角情况的电路,纯随机技术可能无法产生足够的结果。确定性技术可以帮助完成此过程。但是,它们增加了显着的计算复杂性。本文提出了一种寄存器传输级别(RTL)抽象技术,以推导输入与路径激活之间的关系。抽象是基于各种程序片段构建的。使用各种抽象的RTL模型,我们尝试找到处于缩减状态的模式,并输入其分支激活结果。然后将这些关系应用于指导具体模型中的刺激生成。实验结果表明,与以前的混合搜索技术相比,该方法可在难以到达的状态上实现快速收敛,并实现高达9倍的性能提升以及测试长度的减少。

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