The following publications are possibly variants of this publication:
- Performance Evaluation of a Next-Generation SX-Aurora TSUBASA Vector SupercomputerKeichi Takahashi, Soya Fujimoto, Satoru Nagase, Yoko Isobe, Yoichi Shimomura, Ryusuke Egawa, Hiroyuki Takizawa. supercomputer 2023: 359-378 [doi]
- Optimizing Memory Layout of Hyperplane Ordering for Vector Supercomputer SX-Aurora TSUBASAOsamu Watanabe, Yuta Hougi, Kazuhiko Komatsu, Masayuki Sato 0001, Akihiro Musa, Hiroaki Kobayashi. sc 2019: 25-32 [doi]
- Performance Evaluation of Tsunami Inundation Simulation on SX-Aurora TSUBASAAkihiro Musa, Takashi Abe, Takumi Kishitani, Takuya Inoue, Masayuki Sato 0001, Kazuhiko Komatsu, Yoichi Murashima, Shunichi Koshimura, Hiroaki Kobayashi. iccs 2019: 363-376 [doi]
- I/O Performance of the SX-Aurora TSUBASAMitsuo Yokokawa, Ayano Nakai, Kazuhiko Komatsu, Yuta Watanabe, Yasuhisa Masaoka, Yoko Isobe, Hiroaki Kobayashi. ipps 2020: 27-35 [doi]
- The Brand-New Vector Supercomputer, SX-ACEShintaro Momose, Takashi Hagiwara, Yoko Isobe, Hiroshi Takahara. supercomputer 2014: 199-214 [doi]
- VGL: a high-performance graph processing framework for the NEC SX-Aurora TSUBASA vector architectureIlya V. Afanasyev, Vladimir V. Voevodin, Kazuhiko Komatsu, Hiroaki Kobayashi. tjs, 77(8):8694-8715, 2021. [doi]
- I/O Performance Evaluation of a Memory-Saving DNS Code on SX-Aurora TSUBASAMitsuo Yokokawa, Yuki Yamane, Kenta Yamaguchi, Takashi Soga, Taiki Matsumoto, Akihiro Musa, Kazuhiko Komatsu, Takashi Ishihara, Hiroaki Kobayashi. ipps 2023: 692-696 [doi]