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B2L: A hot data identification algorithm by fusing bloom filter and temporal locality for NAND flash based solid-state drives

机译:B2L:通过融合Bloom滤波器和基于NAND基于固态驱动器的闪存滤波器和时间位置的热数据识别算法

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摘要

Aiming at improving the firmware performance of NAND flash based solid-state drives, this paper proposes a hot data identification algorithm by fusing bloom filter and temporal locality, briefly as B2L, whose main contribution of B2L is to use cascade structure to make it have both advantages. Specifically. Firstly, the bloom filter is used to filter the real cold data, so that the probability of the remaining data being hot data becomes higher. Secondly, a temporal locality based two-level least recently used (T-LRU) lists is used to identify the true hot data. That is to say, the data hit in the hot list of T-LRU are identified as the true hot data. B2L can avoid the high false positive ratio problem of the bloom filter and effectively reduce the false positive ratio of T-LRU and the false negative ratio caused by false positives. Hence, B2L can improve the accuracy of hot data identification. The experimental result shows that in the case of using the direct address method as the baseline, compared with the state-of-the- art identification algorithms, B2L improves the accuracy of hot data identification by 60.4% on average.
机译:旨在改善NAND基于固态驱动器的固件性能,本文通过融合盛开的滤波器和时间位置来提出热数据识别算法,简要担任B2L,其主要贡献是使用级联结构来使其具有两者好处。具体来说。首先,绽放过滤器用于过滤真实的冷数据,从而剩余数据的热数据的概率变高。其次,基于时间的三级最近使用的(T-LRU)列表用于识别真正的热数据。也就是说,T-LRU的热门列表中的数据被识别为真正的热数据。 B2L可以避免绽放过滤器的高误呈效率问题,并有效地降低T-LRU的假阳性比率和由误报引起的假负比。因此,B2L可以提高热数据识别的准确性。实验结果表明,在使用直接地址方法作为基线的情况下,与最先进的识别算法相比,B2L平均提高了热数据识别的准确性60.4%。

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