ماتریس خلوت (Persian Wikipedia)

Analysis of information sources in references of the Wikipedia article "ماتریس خلوت" in Persian language version.

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anl.gov

businesswire.com

  • "Cerebras Systems Unveils the Industry's First Trillion Transistor Chip". www.businesswire.com (به انگلیسی). 2019-08-19. Retrieved 2019-12-02. The WSE contains 400,000 AI-optimized compute cores. Called SLAC™ for Sparse Linear Algebra Cores, the compute cores are flexible, programmable, and optimized for the sparse linear algebra that underpins all neural network computation

doi.org

  • Yan, Di; Wu, Tao; Liu, Ying; Gao, Yang (2017). An efficient sparse-dense matrix multiplication on a multicore system. IEEE. doi:10.1109/icct.2017.8359956. ISBN 978-1-5090-3944-9. The computation kernel of DNN is large sparse-dense matrix multiplication. In the field of numerical analysis, a sparse matrix is a matrix populated primarily with zeros as elements of the table. By contrast, if the number of non-zero elements in a matrix is relatively large, then it is commonly considered a dense matrix. The fraction of zero elements (non-zero elements) in a matrix is called the sparsity (density). Operations using standard dense-matrix structures and algorithms are relatively slow and consume large amounts of memory when applied to large sparse matrices.
  • Yan, Di; Wu, Tao; Liu, Ying; Gao, Yang (2017). An efficient sparse-dense matrix multiplication on a multicore system. IEEE. doi:10.1109/icct.2017.8359956. ISBN 978-1-5090-3944-9. The computation kernel of DNN is large sparse-dense matrix multiplication. In the field of numerical analysis, a sparse matrix is a matrix populated primarily with zeros as elements of the table. By contrast, if the number of non-zero elements in a matrix is relatively large, then it is commonly considered a dense matrix. The fraction of zero elements (non-zero elements) in a matrix is called the sparsity (density). Operations using standard dense-matrix structures and algorithms are relatively slow and consume large amounts of memory when applied to large sparse matrices.