Abstract :
In a cloud computing context, the MapReduce algorithm comprises two massively parallel operations linked by a generic sorting and data-distribution process. Although this algorithm is the workhorse in most cloud computing strategies, it´s a special case of a more general dataflow. In place of the two cloud operations, the proposed method substitutes longer sequences and then lets the user direct outputs to any subsequent downstream operation. However, the method retains the job-supervisor infrastructure, which performs the necessary sorting, collating, and distributing of these outputs prior to initiating operations. To evaluate SQL database queries, particularly those with correlated subqueries, a computation identifies and aligns data elements from widely separated storage locations, suggesting cloud algorithms that exploit the supervisory sorting process to achieve the desired alignments. Exploring such algorithms reveals that a few customizable templates, assembled recursively as necessary, can handle a wide class of SQL data-mining queries.
Keywords :
SQL; Web services; data mining; parallel algorithms; query processing; relational databases; sorting; MapReduce algorithm; SQL database query; cloud computing environment; data mining; data-distribution process; job-supervisor infrastructure; parallel algorithm; supervisory sorting process; Automobiles; Cloud computing; Computer networks; Data mining; Databases; Maintenance; Multiprocessor interconnection networks; Parallel processing; Search engines; Surveillance; SQL cloud algorithms; cloud computing; database query evaluation; database structures; dataflow architectures; distributed computing;