For cloud service providers, fine-grained packet loss detection across data centers is crucial in improving their service level and increasing business income. However, the inability to obtain sufficient measurements makes it difficult owing to the fundamental limit that the wide-area network links responsible for communication are not under their management. Moreover, millisecond-level delay jitter and clock synchronization errors in the WAN disable many tools that perform well in data center networks on this issue. Therefore, there is an urgent need to develop a new tool or method. In this work, we propose SketchDecomp, a novel loss detection method, from a mathematical perspective that has never been considered before. Its key is to decompose sketches upstream and downstream into several sub-sketches and builds a low-rank matrix optimization model to solve them. Extensive experiments on the test bed demonstrate its superiority.
翻译:对于云服务供应商来说,对数据中心进行微粒包裹损失探测对于提高其服务水平和增加商业收入至关重要。然而,由于无法获得足够的测量,因此很难获得足够的测量数据,因为负责通信的广域网联系不在它们的管理之下。此外,广域网的一二级延迟急转和时钟同步错误使许多在数据中心网络中在这个问题上表现良好的工具无法发挥作用。因此,迫切需要开发新的工具或方法。在这项工作中,我们从以前从未考虑过的数学角度提出StrachDecomp,这是一种新的损失探测方法。关键在于将上游和下游的草图分解成几个小片,并建立一个低位的矩阵优化模型来解决这些问题。测试床上的广泛实验显示了其优越性。