Database Reference
In-Depth Information
10. P. Bhatotia, A. Wieder, I. E. Akkus, R. Rodrigues, and U. A. Acar. Large-scale incre-
mental data processing with change propagation. In USENIX Workshop on Hot Topics
in Cloud Computing (HotCloud'11) .
11. P. Bhatotia, A. Wieder, R. Rodrigues, U. A. Acar, and R. Pasquini. Incoop: MapReduce
for incremental computations. In SoCC .
12. Y. Bu, B. Howe, M. Balazinska, and M. D. Ernst. HaLoop: Efficient iterative data pro-
cessing on large clusters. In 36th International Conference on Very Large Data Bases ,
Singapore, September 14-16, 2010.
13. S. Burckhardt, D. Leijen, C. Sadowski, J. Yi, and T. Ball. Two for the price of one:
A model for parallel and incremental computation. In ACM SIGPLAN Conference on
Object-Oriented Programming, Systems, Languages, and Applications , 2011.
14. S. Ceri and J. Widom. Deriving production rules for incremental view maintenance.
In  Proceedings of the 17th International Conference on Very Large Data Bases ,
pp. 577-589, 1991.
15. Y. Chen, J. Dunfield, and U. A. Acar. Type-directed automatic incrementalization. In
ACM SIGPLAN Conference on Programming Language Design and Implementation
(PLDI) , June 2012.
16. Y.-J. Chiang and R. Tamassia. Dynamic algorithms in computational geometry.
Proceedings of the IEEE , 80(9):1412-1434, 1992.
17. P. Costa, A. Donnelly, A. Rowstron, and G. O'Shea. Camdoop: Exploiting in-network
aggregation for Big Data applications. In NSDI , 2012.
18. J. Dean and S. Ghemawat. MapReduce: Simplified data processing on large clusters. In
Proceedings of the 6th Symposium on Operating Systems Design and Implementation
(OSDI'04) .
19. J. Dean and S. Ghemawat. MapReduce: Simplified data processing on large clusters.
Communications of the ACM , 51(1):107-113, 2008.
20. C. Demetrescu, I. Finocchi, and G. Italiano. Handbook on Data Structures and
Applications , Chapter 36: Dynamic Graphs. CRC, 2005.
21. C. Demetrescu, I. Finocchi, and G. Italiano. Handbook on Data Structures and
Applications , Chapter 35: Dynamic Trees. Dinesh Mehta and Sartaj Sahni (eds.), CRC
Press Series, in Computer and Information Science , 2005.
22. P. K. Gunda, L. Ravindranath, C. A. Thekkath, Y. Yu, and L. Zhuang. Nectar: Automatic
management of data and computation in data centers. In Proceedings of the 9th
Symposium on Operating Systems Design and Implementation (OSDI'10) .
23. M. Hammer, U. A. Acar, M. Rajagopalan, and A. Ghuloum. A proposal for parallel self-
adjusting computation. In DAMP ' 07: Proceedings of the First Workshop on Declarative
Aspects of Multicore Programming , 2007.
24. M. A. Hammer, U. A. Acar, and Y. Chen. CEAL: A C-based language for self-adjusting
computation. In Proceedings of the 2009 ACM SIGPLAN Conference on Programming
Language Design and Implementation , June 2009.
25. B. He, M. Yang, Z. Guo, R. Chen, B. Su, W. Lin, and L. Zhou. Comet: Batched stream
processing for data intensive distributed computing. In Proceedings of the 1st Symposium
on Cloud Computing (SoCC'10) .
26. V. Kumar, H. Andrade, B. Gedik, and K.-L. Wu. Deduce: At the intersection of mapre-
duce and stream processing. In EDBT , 2010.
27. R. Ley-Wild, U. A. Acar, and M. Fluet. A cost semantics for self-adjusting computa-
tion. In Proceedings of the 26th Annual ACM Symposium on Principles of Programming
Languages , 2009.
28. D. Logothetis, C. Olston, B. Reed, K. C. Webb, and K. Yocum. Stateful bulk processing
for incremental analytics. In 1st Symposium on Cloud Computing (SoCC'10) .
29. D. Logothetis, C. Trezzo, K. C. Webb, and K. Yocum. In-situ MapReduce for log pro-
cessing. In USENIX ATC , 2011.
Search WWH ::




Custom Search