Multi-Processor System-on-Chip 1. Liliana Andrade

Multi-Processor System-on-Chip 1 - Liliana Andrade


Скачать книгу
the NVIDIA volta GPU architecture via microbenchmarking. ArXiv, abs/1804.06826.

      Johnson, J. (2018). Rethinking floating point for deep learning. ArXiv, abs/1811. 01721.

      Kanduri, A., Rahmani, A.M., Liljeberg, P., Hemani, A., Jantsch, A., and Tenhunen, H. (2017). A Perspective on Dark Silicon. Springer International Publishing.

      Kästner, D., Pister, M., Gebhard, G., Schlickling, M., and Ferdinand, C. (2013). Confidence in timing. SAFECOMP 2013 - Workshop SASSUR (Next Generation of System Assurance Approaches for Safety-Critical Systems) of the 32nd International Conference on Computer Safety, Reliability and Security, Toulouse, France.

      Krishnamoorthi, R. (2018). Quantizing deep convolutional networks for efficient inference: A whitepaper. ArXiv abs/1806.08342.

      Lee, E.A., Reineke, J., and Zimmer, M. (2017). Abstract PRET Machines. IEEE Real-Time Systems Symposium, RTSS, Paris, France, December 5–8, 1–11.

      NVIDIA (2020). Programming Tensor Cores in CUDA 9 [Online]. Available: https://devblogs.nvidia.com/programming-tensor-cores-cuda-9/.

      Perret, Q., Maurère, P., Noulard, E., Pagetti, C., Sainrat, P., and Triquet, B. (2016). Temporal isolation of hard real-time applications on many-core processors. IEEE Real-Time and Embedded Technology and Applications Symposium. Vienna, Austria, April 11-14, 37–47.

      Resmerita, D., Farias, R.C., Dupont de Dinechin, B., and Fillatre, L. (2020). Benchmarking alternative floating-point formats for deep learning inference. Conférence francophone d’informatique en Parallélisme, Architecture et Système.

      Rihani, H., Moy, M., Maiza, C., Davis, R.I., and Altmeyer, S. (2016). Response time analysis of synchronous data flow programs on a many-core processor. Proceedings of the 24th International Conference on Real-Time Networks and Systems. Brest, France, 67–76.

      Rodriguez, A., Ziv, B., Fomenko, E., Meiri, E., and Shen, H. (2018). Lower numerical precision deep learning inference and training. Intel AI Developer Program, 1–19 [Online]. Available: https://software.intel.com/content/www/us/en/develop/articles/lower-numerical-precision-deep-learning-inference-and-training.html.

      Rovder, S., Cano, J., and O’Boyle, M. (2019). Optimising convolutional neural networks inference on low-powered GPUs. 12th International Workshop on Programmability and Architectures for Heterogeneous Multicores. Valencia, Spain.

      Saidi, S., Ernst, R., Uhrig, S., Theiling, H., and Dupont de Dinechin, B. (2015). The shift to multicores in real-time and safety-critical systems. International Conference on Hardware/Software Codesign and System Synthesis. Amsterdam, The Netherlands, October 4–9, 220–229.

      Wilhelm, R. and Reineke, J. (2012). Embedded systems: Many cores - Many problems. 7th IEEE International Symposium on Industrial Embedded Systems. Karlsruhe, Germany, June 20–22, 176–180.

      For a color version of all figures in this book, see www.iste.co.uk/andrade/multi1.zip.

      1 1. Numbers in each pair denote, respectively, the bit-width of the multiplicands and the accumulator.

      2 2. Motivated by saving the silicon area and not constrained by the architecture.

      3 3. http://portablecl.org/.

      4 4. Passing the OpenCL 1.2 conformance with PoCL is work in progress.

      5 5. https://www.ansys.com/products/embedded-software/ansys-scade-suite.

      Конец ознакомительного фрагмента.

      Текст предоставлен ООО «ЛитРес».

      Прочитайте эту книгу целиком, купив полную легальную версию на ЛитРес.

      Безопасно оплатить книгу можно банковской картой Visa, MasterCard, Maestro, со счета мобильного телефона, с платежного терминала, в салоне МТС или Связной, через PayPal, WebMoney, Яндекс.Деньги, QIWI Кошелек, бонусными картами или другим удобным Вам способом.

/9j/4AAQSkZJRgABAQEBLAEsAAD/7R1uUGhvdG9zaG9wIDMuMAA4QklNBAQAAAAAACUcAgAAAgAA HAJQAAxTYW1pIE1lbmFzY2UcAgUACExheW91dCAxADhCSU0EJQAAAAAAELX3qB9z4ksiHblsoQqR Gig4QklNBDoAAAAAAOUAAAAQAAAAAQAAAAAAC3ByaW50T3V0cHV0AAAABQAAAABQc3RTYm9vbAEA AAAASW50ZWVudW0AAAAASW50ZQAAAABDbHJtAAAAD3ByaW50U2l4dGVlbkJpdGJvb2wAAAAAC3By aW50ZXJOYW1lVEVYVAAAAAEAAAAAAA9wcmludFByb29mU2V0dXBPYmpjAAAADABQAHIAbwBvAGYA IABTAGUAdAB1AHAAAAAAAApwcm9vZlNldHVwAAAAAQAAAABCbHRuZW51bQAAAAxidWlsdGluUHJv b2YAAAAJcHJvb2ZDTVlLADhCSU0EOwAAAAACLQAAABAAAAABAAAAAAAScHJpbnRPdXRwdXRPcHRp b25zAAAAFwAAAABDcHRuYm9vbAAAAAAAQ2xicmJvb2wAAAAAAFJnc01ib29sAAAAAABDcm5DYm9v bAAAAAAAQ250Q2Jvb2wAAAAAAExibHNib29sAAAAAABOZ3R2Ym9vbAAAAAAARW1sRGJvb2wAAAAA AEludHJib29sAAAAAABCY2tnT2JqYwAAAAEAAAAAAABSR0JDAAAAAwAAAABSZCAgZG91YkBv4AAA AAAAAAAAAEdybiBkb3ViQG/gAAAAAAAAAAAAQmwgIGRvdWJAb+AAAAAAAAAAAABCcmRUVW50RiNS bHQAAAAAAAAAAAAAAABCbGQgVW50RiNSbHQAAAAAAAAAAAAAAABSc2x0VW50RiNQeGxAcsAAAAAA AAAAAAp2ZWN0b3JEYXRhYm9vbAEAAAAAUGdQc2VudW0AAAAAUGdQcwAAAABQZ1BDAAAAAExlZnRV bnRGI1JsdAAAAAAAAAAAAAAAAFRvcCBVbnRGI1JsdAAAAAAAAAAAAAAAAFNjbCBVbnRGI1ByY0BZ AAAAAAAAAAAAEGNyb3BXaGVuUHJpbnRpbmdib2

Скачать книгу