Fig.2: Varying t he Space factor
0
50000000
100000000
150000000
200000000
250000000
300000000
350000000
400000000
450000000
500000000
100 200 300 400 500
No. of Nodes
Bushy tr ees
War p edged bushy
trees
Figure 2: Varying the Space factor.
The first figure shows that warp edged bushy trees
take lesser time than bushy trees. It shows that the
turnaround time for query evaluation is lesser for
warp optimization. The optimization approximately
halves the time needed for query evaluation at a
modest increase in the amount of space. The second
figure shows that warping occupies more space than
normal bushy tyrees But the space occupied by such
optimized trees are at modest level only.
Overall, the experiments show that while warp
edged bushy tress needs a small amount of
additional space, it can improve query performance
for bushy trees.
6 CONCLUSIONS
The paper emphasized the warp edging optimization
on normal bushy trees in multimedia databases. Any
query can be done easily using query trees. Result
shows that multimedia databases can be represented
using bushy trees. Warp edges are dynamically
generated on the bushy query trees and stored during
query evaluation to improve the efficiency of future
queries. The technology needed to such optimization
can be implemented as a layer on top of any
evaluation engine. Experiments shows that in the
evaluation the use of warp edges results in
substantial savings of times at a modest increase in
space. So the objects stored in image documents can
be retrieved based on some query very fastly when
we use warp edging in query trees.
REFERENCES
Haiyun He and Curtis Dyreson, Warp-Edge Optimization
in Xpath, Springer-Verlag 2002.
Golshani, F. and Dimitrova N. , A Language for Content-
Based Video Retrieval, Multimedia Tools and
Applications 6, 1998, pp. 289-312.
A. Silberschatz, M. Stonebraker, and J. Ulman. Database
research: Achievements and opportunities. Into the
21st century. SIGMOD Record, 25(1):52-63, March
1996.
M. T. Ozsu and P. Valduriez. Distributed and Parallel
Database Systems, pp. 1093-1111. CRC Press, 1997.
W. Hasan, D. Florescu, and P. Valduriez. Open issues in
parallel query optimization. SIGMOD Record, 25(3):
pp. 28-33, September 1996.
D. Taniar and Y. Jiang. A high performance object-
oriented distributed parallel database architecture. In
HPCN Conference 98, pp. 498-517. Springer Verlag,
April 1998.
K.-L. Tan and H.Lu. A Note on the Strategy Space of
Multiway Join Query Optimization Problem in
Parallel Systems. SIGMOD Record, 20(4):pp. 81-82,
December 1991.
M. Spiliopoulou, M. Hatzopoulos, and Y. Contronis.
Parallel Optimization of Large Join Queries with Set
Operators and Aggregates in a Parallel Environment
Supporting Pipeline. IEEE Transactions on
Knowledge and Data Engineering, 8(3): pp.429-445,
June 1996.
Leonindes Fegaras. A new heuristic for optimizing large
queries. In International Database and Expert Systems
Applications Conference, pp. 726-735, Vienna,
Austria, August 1998. Springer Verlag LNCS 1460.
M. Zait, D. Florescu, and P. Valduriez. Benchmarking the
DBS3 Parallel Query Optimizer. IEEE parallel and
distributed technology: systems and applications, 4(2):
pp. 26-40, 1996.
D. Schneider and D. J. DeWitt. Tradeoffs in processing
complex join queries via hashing in multi-processor
database machines. In Proceedings of the International
Conference on Very Large Databases, pp. 469-490,
Melbourne, Australia, August 1990.
Rosana Lanzelotte, Patrick Valduriez, and Mohamed Zait.
On the effectiveness of optimization search strategies
for parallel execution spaces. In Int. Conf. on very
Large Databases, pp. 493-504, Dublin, Ireland, 1993
.
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