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A Succinct Multivariate Lazy Multivariate Tower AD for Weil Algebra Computation

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 Added by Hiromi Ishii
 Publication date 2021
and research's language is English
 Authors Hiromi Ishii




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We propose a functional implementation of emph{Multivariate Tower Automatic Differentiation}. Our implementation is intended to be used in implementing $C^infty$-structure computation of an arbitrary Weil algebra, which we discussed in the previous work.



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