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Page References

Incoming links Outgoing links

Version management

Difference between version and

At line 4 changed 3 lines
KMR-1.0 is available since 2013-04-26.
KMR works on ordinary clusters as well as large-scale supercomputers.
KMR source code is available under the BSD license.
KMR-1.0 is available on the K computer since 2013-04-26.
KMR works on ordinary clusters as well.
At line 8 changed one line
__Latest release is KMR-1.9 (2018-08-27)__.
__Latest release is KMR-1.1 (2013-09-20). New!__.
At line 12 changed 2 lines
Its main targets are large-scale supercomputers with thousands of compute nodes.
KMR provides utilities other than map-reduce operations to address issues such as accessing very large file-systems, on platforms K and Fujitsu FX10.
Its main targets are large-scale supercomputers with thousands of compute nodes, such as K and Fujitsu FX10.
On these platforms, KMR provides utilities other than the map-reduce operations which address issues such as accessing very large file-systems.
At line 15 changed one line
KMR is designed to work in-memory and exploit large amount of memory available on supercomputers, whereas most map-reduce implementations are designed to work with external (disk-based) operations.
KMR is designed to work on-memory and exploits large amount of memory available on supercomputers, whereas most map-reduce implementations are designed to work with external (disk-based) operations.
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!!Project Site
* Project Overview and other Activities of the Team at RIKEN:
** [http://mt.aics.riken.jp]
At line 21 changed one line
* [Overview and API Document|https://riken-rccs.github.io/kmr/]
* Overview and API Document:
** [http://mt.aics.riken.jp/kmr/docs/kmr-1.1/html/index.html]
At line 28 added 3 lines
//* Overview and API Document (Newer, corrected, for the next release):
//** [https://mt.aics.riken.jp/kmr/docs/next/html/index.html]
//** Documentation in the distribution is late, and it is placed here for late breaking.
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* [Download]
* Source Code Download:
** [Download]
** KMR source is available with LGPL-2.1.
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!!Tutorials
!!Issue Reporting
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* [Tutorial] (in Japanese)
* KMR Issue Tracker:
** [http://mt.aics.riken.jp/jtrac/]
** Please make a new user by the login-page to report a new issue.
At line 32 removed 6 lines
!!Project Site
* KMR in GitHub [https://github.com/riken-rccs]
* Issue reporting [https://github.com/riken-rccs/kmr/issues]
* Other software from RIKEN R-CCS [https://riken-rccs.github.io]
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* __K MapReduce: A Scalable Tool for Data-Processing and Search/Ensemble Applications on Large-Scale Supercomputers__. Motohiko Matsuda, Naoya Maruyama, and Shinichiro Takizawa. IEEE Cluster Computing (CLUSTER) 2013. (C) Copyright IEEE. [ieeexplore.ieee.org|https://ieeexplore.ieee.org/document/6702663]\\
It describes an overview and optimizations used in KMR.
* [cluster2013.pdf]: __K MapReduce: A Scalable Tool for Data-Processing and Search/Ensemble Applications on Large-Scale Supercomputers__. Motohiko Matsuda, Naoya Maruyama, and Shinichiro Takizawa. IEEE Cluster 2013. (C) Copyright IEEE.\\
It describes an overview and optimisations used in KMR.
At line 43 changed 2 lines
* __Supporting Workflow Management of Scientific Applications by MapReduce Programming Model__. Shinichiro Takizawa, Motohiko Matsuda, and Naoya Maruyama. IPSJ HPCS 2014. (in Japanese) [hpcs2014.pdf]\\
It describes some scientific applications workflow implemented in MapReduce using KMR.
----
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* __Evaluation of Asynchronous MPI Communication in Map-Reduce System on the K Computer__. Motohiko Matsuda, Naoya Maruyama, and Shinichiro Takizawa. EuroMPI Workshop 2014. (C) Copyright ACM. [dl.acm.org|https://dl.acm.org/doi/10.1145/2642769.2642800]\\
It compares all-to-all collective communication versus asynchronous communication in shuffling communication, to qualify believed effectiveness of overlapping of communication and computation.
!!DISCLAIMER
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KMR comes with ABSOLUTELY NO WARRANTY.
This wiki also comes with ABSOLUTELY NO WARRANTY.
Contents are liable to change.
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KMR is a product of RIKEN R-CCS.
Part of the results is obtained by using K computer at RIKEN R-CCS.
KMR is a product of RIKEN AICS.
Part of the results is obtained by using the K computer at RIKEN AICS.
At line 57 removed 6 lines
!!DISCLAIMER
KMR comes with ABSOLUTELY NO WARRANTY.
This wiki also comes with ABSOLUTELY NO WARRANTY.
Contents are liable to change.