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Thanks to volunteers! Amit Gupta Arvind Hulgeri Aditya Phatak Krishna Prasad Jinesh Vora Future Directions in Query Optimization Panel (the usual culprits): Soumen Chakrabarti, Anand Deshpande, Krithi Ramamritham, Sunita Sarawagi, Shridhar Shukla, S. Sudarshan (chair) Current Scenario Query optimization has come a long way in the last two decades Still an area of active research Driving forces: TPCD and friends -- bragging rights! Query optimizers are still very expensive Object relational DBS, Web, increasingly complex DSS queries, Data mining Future Directions - my view Cost of query optimization exponential algorithms, scale very poorly can we have good approximation algorithms with guaranteed bounds? Parallel and distributed databases Search space is extremely large in general How to partition data How to partition operations Future Directions (contd.) System optimization for workloads view and index maintenance query result caching Multi-query optimization Scheduling issues pipelining and MQO dealing with concurrent large queries Future Directions (contd.) Semistructed data Directories, XML, etc Distributed query processing and the web: Dealing with failed sites, unpredictable delays Alternative sources of data, site descriptions Querying the web WebSQL, WebOQL, .. (Mendelzon.., Shmueli.., Laks..) Future Directions (contd.) Sources with query capabilities eg. SAP on top of relational DB SQL wrappers on top of legacy sources Query optimization and data mining beyond relational algebra?