On Predictive Modeling for Optimizing Transaction Execution in Parallel OLTP Systems
Proceedings of the VLDB Endowment (PVLDB), Vol. 5, No. 2, pp. 85-96 (2011) A new emerging class of parallel database management systems (DBMS) is designed to take advantage of the partitionable workloads of on-line transaction processing (OLTP) applications. Transactions in these systems are optimiz...
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Zusammenfassung: | Proceedings of the VLDB Endowment (PVLDB), Vol. 5, No. 2, pp.
85-96 (2011) A new emerging class of parallel database management systems (DBMS) is
designed to take advantage of the partitionable workloads of on-line
transaction processing (OLTP) applications. Transactions in these systems are
optimized to execute to completion on a single node in a shared-nothing cluster
without needing to coordinate with other nodes or use expensive concurrency
control measures. But some OLTP applications cannot be partitioned such that
all of their transactions execute within a single-partition in this manner.
These distributed transactions access data not stored within their local
partitions and subsequently require more heavy-weight concurrency control
protocols. Further difficulties arise when the transaction's execution
properties, such as the number of partitions it may need to access or whether
it will abort, are not known beforehand. The DBMS could mitigate these
performance issues if it is provided with additional information about
transactions. Thus, in this paper we present a Markov model-based approach for
automatically selecting which optimizations a DBMS could use, namely (1) more
efficient concurrency control schemes, (2) intelligent scheduling, (3) reduced
undo logging, and (4) speculative execution. To evaluate our techniques, we
implemented our models and integrated them into a parallel, main-memory OLTP
DBMS to show that we can improve the performance of applications with diverse
workloads. |
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DOI: | 10.48550/arxiv.1110.6647 |