[1] TU Xuezhen,TU Yaofeng,CHEN Xiaoqiang.An optimized Key-Value NoSQL system[J].Computer Engineering,2019,45(6):52-59.(in Chinese)屠雪真,屠要峰,陈小强.一种优化的Key-Value型NoSQL系统[J].计算机工程,2019,45(6):52-59. [2] GEORGE L.HBase:the definitive guide random access to your planet-size data[M].Sebastopol,Russia:O'Reilly Media,2011. [3] DECANDIA G,HASTORUN D,JAMPANI M,et al.Dynamo:amazon's highly available key-value store[J].ACM SIGOPS Operating Systems Review,2007,41(6):205-220. [4] CHANG F,DEAN J,GHEMAWAT S,et al.Bigtable:a distributed storage system for structured data[J].ACM Transactions on Computer Systems,2008,26(2):4-6. [5] WANG Li,ZHOU Minqi,ZHANG Zhenjie,et al.Elastic pipelining in an in-memory database cluster[C]//Proceedings of 2016 International Conference on Management of Data.New York,USA:ACM Press,2016:1279-1294. [6] YANG F,TSCHETTER E,LEAUTE X,et al.Druid:a real-time analytical data store[C]//Proceedings of 2014 International Conference on Management of Data.New York,USA:ACM Press,2014:157-168. [7] ANDERSEN M P,CULLER D E.BTRDB:optimizing storage system design for timeseries processing[C]//Proceedings of the 14th Conference on File and Storage Technologies.Santa Clara,USA:USENIX Association,2016:39-52. [8] AGUILERA M K,GOLAB W,SHAH M A.A practical scalable distributed B-tree[J].Proceedings of the VLDB Endowment,2008,1(1):598-609. [9] ONEIL P,CHENG E,GAWLICK D,et al.The log-structured merge-tree[J].Acta Informatica,1996,33(4):351-385. [10] SEARS R,RAMAKRISHNAN R.BLSM:a general purpose log structured merge-tree[C]//Proceedings of 2012 International Conference on Management of Data.New York,USA:ACM Press,2012:217-228. [11] TAN W,TATA S,TANG Y,et al.Diff-index:differentiated index in distributed log-structured data stores[C]//Proceedings of the 17th International Conference on Extending Database Technology.Berlin,Germany:Springer,2014:700-711. [12] LAKSHMAN A,MALIK P.Cassandra:a decentralized structured storage system[J].ACM SIGOPS Operating Systems Review,2010,44(2):35-40. [13] GOLAN G G,BORTNIKOV E,HILLEL E,et al.Scaling concurrent log-structured data stores[C]//Proceedings of the 10th European Conference on Computer Systems.New York,USA:ACM Press,2015:1-14. [14] KESARWANI M,KAUL A,SINGH G,et al.Collusion-resistant processing of SQL range predicates[J].Data Science and Engineering,2018,3(4):323-340. [15] MA L,VAN A D,HEFNY A,et al.Query-based workload forecasting for self-driving database management systems[C]//Proceedings of 2018 International Conference on Management of Data.New York,USA:ACM Press,2018:631-645. [16] ISLAM N S,LU X,WASIRURAHMAN M,et al.Triple-H:a hybrid approach to accelerate HDFS on HPC clusters with heterogeneous storage architecture[C]//Proceedings of 2015 IEEE International Symposium on Cluster,Cloud and Grid Computing.Washington D.C.,USA:IEEE Press,2015:101-110. [17] KRASKA T,BEUTEL A,CHI E H,et al.The case for learned index structures[C]//Proceedings of 2018 International Conference on Management of Data.New York,USA:ACM Press,2018:489-504. [18] WANG Li,CAI Ruichu,HE Jiong,et al.Waterwheel:realtime indexing and temporal range query processing over massive data streams[C]//Proceedings of the 34th IEEE International Conference on Data Engineering.Washington D.C.,USA:IEEE Press,2018:21-27. [19] MAZUMDAR P,WANG L,WINSLET M,et al.An index scheme for fast data stream to distributed append-only store[C]//Proceedings of the 19th International Workshop on Web and Databases.New York,USA:ACM Press,2016:31-36. [20] WEIL S A,BRANDT S A,MILLER E L,et al.Ceph:a scalable,high-performance distributed file system[C]//Proceedings of the 7th Symposium on Operating Systems Design and Implementation.Santa Clara,USA:USENIX Association,2006:307-320. [21] BECKMANN N,KRIEGEL H P,SCHNEIDER R,et al.The R*-tree:an efficient and robust access method for points and rectangles[C]//Proceedings of 1990 International Conference on Management of Data.New York,USA:ACM Press,1990:322-331. [22] MITZENMACHER M.Compressed bloom filters[J].IEEE Transactions on Networking,2002,10(5):604-612. [23] ZHAI Jinfeng,SUN Libo,LU Kai,et al.Research on flow sampling algorithm based on Counting Bloom Filter[J].Computer Engineering,2018,44(8):273-278.(in Chinese)翟金凤,孙立博,鲁凯,等.基于Counting Bloom Filter的流抽样算法研究[J].计算机工程,2018,44(8):273-278. [24] YUAN Jing,ZHENG Yu,XIE Xing,et al.Driving with knowledge from the physical world[C]//Proceedings of the 17th International Conference on Knowledge Discovery and Data Mining.New York,USA:ACM Press,2011:316-324. |