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