An IDL-Based Parallel Model for Scientific Computations on Multi-core Computers (original) (raw)

References

  1. Cai, X., Langtangen, H.P., Moe, H.: On the performance of the python programming language for serial and parallel scientific computations. Sci. Program. 13, 31–56 (2005)
    Google Scholar
  2. Fillmore, D., Galloy, M., Messmer, P.: Parallel IDL and python for earth and space science data analysis. In: AGU Fall Meeting (2007)
    Google Scholar
  3. Commer, M., Kowalsky, M.B., Doetsch, J., Newman, G.A., Finsterle, S.: MPiTOUGH2: A parallel parameter estimation framework for hydrological and hydrogeophysical applications. Comput. Geosci. 65, 127–135 (2014)
    Article Google Scholar
  4. Paul, K., Mickelson, S., Dennis, J.M., Xu, H.: Light-weight parallel python tools for earth system modeling workflows. In: IEEE International Conference on Big Data (2015)
    Google Scholar
  5. Canty, M.J.: Image Analysis, Classification, and Change Detection in Remote Sensing: With Algorithms for ENVI/IDL and Python, 2 edn. CRC Press/Taylor & Francis (2010)
    Google Scholar
  6. Xiong, X., Wu, J.: IDL-based remote sensing image database design and implementation. In: The Second International Conference on Electric Information and Control Engineering, pp. 772–775. IEEE Computer Society (2012)
    Google Scholar
  7. Alekseeva, E., Mezmaz, M., Tuyttens, D., Melab, N.: Parallel multi-core hyper-heuristic grasp to solve permutation flow-shop problem. Concurr. Comput. Pract. Exp. 29(9), e3835 (2016)
    Article Google Scholar
  8. Jannach, D., Schmitz, T., Shchekotykhin, K.: Parallel model-based diagnosis on multi-core computers (2016)
    Google Scholar
  9. Laura, J., Rey, S.J.: Spatial data analytics on homogeneous multi-core parallel architectures (2016)
    Google Scholar
  10. Liu, B., Liao, S., Cheng, C., Wu, X.: A multi-core parallel genetic algorithm for the long-term optimal operation of large-scale hydropower systems. In: World Environmental and Water Resources Congress (2016)
    Google Scholar
  11. Liu, T., Xu, W., Yin, X., Zhao, X.: Multi-core parallel implementation of data filtering algorithm for multi-beam bathymetry data. In: Mechanical Engineering and Control Systems (2016)
    Google Scholar
  12. Wang, J., Wang, B., Xiaohua, L.I., Yang, X.: Multi-core parallel substring matching algorithm using BWT (2016)
    Google Scholar
  13. Wei, R., Murray, A.T.: A parallel algorithm for coverage optimization on multi-core architectures. Int. J. Geogr. Inf. Sci. 30, 432–450 (2016)
    Article Google Scholar
  14. Wasi-Ur-Rahman, M., Lu, X., Islam, N.S., Rajachandrasekar, R.: High-performance design of YARN MapReduce on modern HPC clusters with lustre and RDMA, pp. 291–300 (2015)
    Google Scholar
  15. Chen, L., Huo, X., Agrawal, G.: A pattern specification and optimizations framework for accelerating scientific computations on heterogeneous clusters. In: IEEE International Parallel & Distributed Processing Symposium, pp. 591–600 (2015)
    Google Scholar
  16. Liu, Z., Yang, J.: Remote sensing image parallel processing system. In: Proceedings of SPIE - The International Society for Optical Engineering, vol. 7497, p. 74970G (2009)
    Google Scholar
  17. Shasharina, S.G., Volberg, O., Stoltz, P., Veitzer, S.: GRIDL: high-performance and distributed interactive data language. In: 2005 IEEE Proceedings of the International Symposium on High Performance Distributed Computing, HPDC 2014, pp. 291–292 (2005)
    Google Scholar
  18. Xing-Qiang, L.U., An-Xi, Y.U., Liang, D.N.: Distributed parallel method for IDL. J. Syst. Simul. 18(SUPPL.2), 256–258 (2006)
    Google Scholar
  19. Bian, X., Zhang, D., Zhang, C., Wang, J.: Wind field retrieval from SAR images based on parallel computing technology in IDL. Comput. Eng. Appl. 50(18), 261–264 (2014)
    Google Scholar
  20. Nieter, C.: Improving between-shot fusion data analysis with parallel structures. Office of Scientific & Technical Information Technical reports (2005)
    Google Scholar
  21. Zeng, L., Wardlow, B.D., Wang, R., Shan, J., Tadesse, T., Hayes, M.J., Li, D.: A hybrid approach for detecting corn and soybean phenology with time-series MODIS data. Remote Sens. Environ. 181, 237–250 (2016)
    Article Google Scholar
  22. Kastner, G.: Dealing with stochastic volatility in time series using the R package stochvol. J. Stat. Softw. 69, 1–30 (2016)
    Article Google Scholar
  23. Sulla-Menashe, D., Friedl, M.A., Woodcock, C.E.: Sources of bias and variability in long-term landsat time series over canadian boreal forests. Remote Sens. Environ. 177, 206–219 (2016)
    Article Google Scholar
  24. Bethune, I., Bull, J.M., Dingle, N.J., Higham, N.J.: Performance analysis of asynchronous Jacobi’s method implemented in MPI, SHMEM and OpenMP. Int. J. High Perform. Comput. Appl. 28, 97–111 (2014)
    Article Google Scholar
  25. Coyote: Shared memory with IDL_IDLBridge, vol. 2017 (2016)
    Google Scholar

Download references