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Jean Utke

Researcher at Argonne National Laboratory

Publications -  56
Citations -  1755

Jean Utke is an academic researcher from Argonne National Laboratory. The author has contributed to research in topics: Automatic differentiation & Computer science. The author has an hindex of 15, co-authored 47 publications receiving 1676 citations. Previous affiliations of Jean Utke include University of Chicago & Dresden University of Technology.

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Journal ArticleDOI

Algorithm 755: ADOL-C: a package for the automatic differentiation of algorithms written in C/C++

TL;DR: The C++ package ADOL-C described here facilitates the evaluation of first and higher derivatives of vector functions that are defined by computer programs written in C or C++.
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OpenAD/F: A Modular Open-Source Tool for Automatic Differentiation of Fortran Codes

TL;DR: The Open/ADF tool allows the evaluation of derivatives of functions defined by a Fortran program, and supports various code reversal schemes with hierarchical checkpointing at the subroutine level for the generation of adjoint codes.
BookDOI

Advances in Automatic Differentiation

TL;DR: This collection covers advances in automatic differentiation theory and practice and discusses various applications, which provide insight into effective strategies for using automatic differentiation for inverse problems and design optimization.
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Evaluating higher derivative tensors by forward propagation of univariate Taylor series

TL;DR: With the approach presented, much simpler data access patterns and similar or lower computational counts can be achieved through propagating a family of univariate Taylor series of a suitable degree.
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Timescales and regions of the sensitivity of Atlantic meridional volume and heat transport: Toward observing system design

TL;DR: In this article, the authors presented a model for estimating the Circulation and Climate of the Ocean (COC) and the Atlantic MOC Observing System Studies Using Adjoint Models.