Information Technology Reference
In-Depth Information
9. Emery, X., Lantuejoul, C.: Tbsim: A computer program for conditional simulation
of three-dimensional gaussian random fields via the turning bands method. Com-
puters & Geosciences 32(10), 1615-1628 (2006),
http://www.sciencedirect.com/science/article/pii/S0098300406000549
10. Gamma, E., Helm, R., Johnson, R., Vlissides, J.: Design Patterns: Elements of
Reusable Object-oriented Software. Addison-Wesley Longman Publishing Co., Inc.,
Boston (1995)
11. Hall, D.: Ansible Configuration Management. Packt Publishing (2013)
12. Hintjens, P.: ZeroMQ: Messaging for Many Applications. O'Reilly Media (2013)
13. Hintjens, P., Sustrik, M.: Zeromq: Multithreading magic (2010),
http://www.zeromq.org/whitepapers:multithreading-magic
14. Huang, T., Li, X., Zhang, T., Lu, D.T.: GPU-accelerated Direct Sampling method
for multiple-point statistical simulation. Computers & Geosciences 57, 13-23 (2013)
15. Huang, T., Lu, D.T., Li, X., Wang, L.: GPU-based SNESIM implementation for
multiple-point statistical simulation. Computers & Geosciences 54, 75-87 (2013)
16. Lith, A., Mattsson, J.: Investigating storage solutions for large data: A comparison
of well performing and scalable data storage solutions for real time extraction and
batch insertion of data (2010)
17. Lunacek, M., Braden, J., Hauser, T.: The scaling of many-task computing ap-
proaches in python on cluster supercomputers. In: 2013 IEEE International Con-
ference on Cluster Computing (CLUSTER), pp. 1-8 (2013)
18. Mariethoz, G.: A general parallelization strategy for random path based geostatis-
tical simulation methods. Computers & Geosciences 36(7), 953-958 (2010)
19. Nunes, R., Almeida, J.A.: Parallelization of sequential Gaussian, indicator and
direct simulation algorithms. Computers & Geosciences 36(8), 1042-1052 (2010)
20. Peredo, O., Ortiz, J.M.: Parallel implementation of simulated annealing to repro-
duce multiple-point statistics. Computers & Geosciences (2011)
21. Peredo, O., Ortiz, J.M.: Multiple-Point Geostatistical Simulation Based on Genetic
Algorithms Implemented in a Shared-Memory Supercomputer. In: Geostatistics
Oslo 2012, pp. 103-114. Springer, Netherlands (2012)
22. Peredo, O., Ortiz, J.M., Herrero, J.R., Samaniego, C.: Tuning and hybrid paral-
lelization of a genetic-based multi-point statistics simulation code. Parallel Com-
puting 40(5-6), 144-158 (2014)
23. Plugge, E., Hawkins, T., Membrey, P.: The Definitive Guide to MongoDB: The
NoSQL Database for Cloud and Desktop Computing, 1st edn. Apress, Berkely
(2010)
24. Gutierrez de Rave, E., Jimenez-Hornero, F.J., Ariza-Villaverde, A.B., Gomez-Lopez,
J.M.: Using general-purpose computing on graphics processing units (GPGPU) to
accelerate the ordinary kriging algorithm. Computers & Geosciences 64, 1-6 (2014)
25. Straubhaar, J., Renard, P., Mariethoz, G., Froidevaux, R., Besson, O.: An Im-
proved Parallel Multiple-point Algorithm Using a List Approach. Mathematical
Geosciences 43(3), 305-328 (2011)
26. Strauch, C., Sites, U., Kriha, W.: NoSQL databases. Lecture Notes (2011)
27. Tahmasebi, P., Sahimi, M., Mariethoz, G.G.: Accelerating geostatistical simula-
tions using graphics processing units (GPU). Computers & Geosciences 46(0),
51-59 (2012)
28. Wilkinson, B., Allen, M.: Parallel Programming: Techniques and Applications Us-
ing Networked Workstations and Parallel Computers, 2nd edn. Prentice-Hall, Inc.,
Upper Saddle River (2004)
 
Search WWH ::




Custom Search