DelayedTensor
https://bioconductor.org/packages/DelayedTensorDelayedTensor operates Tensor arithmetic directly on DelayedArray object. DelayedTensor provides some generic function related to Tensor arithmetic/decompotision and dispatches it on the DelayedArray class. DelayedTensor also suppors Tensor contraction by einsum function, which is inspired by numpy einsum.
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- Bioconductor — DelayedTensor
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