International audienceThe computation of gradients via the reverse mode of algorithmic differentiation is a valuable technique in modeling many science and engineering applications. This technique is particularly efficient when implemented as a source transformation, as it may use static data-flow analysis. However, some features of the major programming languages are detrimental to the efficiency of the transformed source code. This paper provides an overview of the most common problem scenarios and estimates the cost overhead incurred by using the respective language feature or employing certain common patterns. An understanding of these topics is crucial for the efficiency or even feasibility of adjoint computations, particularly for lar...
PhDSimulations are used in science and industry to predict the performance of technical systems. Ad...
This dissertation is concerned with the computation of arbitrary-order derivative projections (tange...
Adjoint algorithmic differentiation by operator and function overloading is based on the interpretat...
Le mode adjoint de la Différentiation Algorithmique (DA) est particulièrement intéressant pour le ca...
International audienceWe present Automatic Differentiation (AD),a technique to obtain derivatives of...
The accuracy of numerical models that describe complex physical or chemical processes depends on the...
ABSTRACT. Adjoint methods are the choice approach to obtain gradients of large simulation codes. Aut...
International audienceAlgorithmic Differentiation (AD) provides the analytic derivatives of function...
Adjoint Algorithms are a powerful way to obtain the gradients that are needed in Scientific Computin...
This dissertation is concerned with algorithmic differentiation (AD), which is a method for algorith...
The analysis and modification of numerical programs in the context of generating and optimizing adjo...
AbstractAlgorithmic differentiation (AD) is a mathematical concept which evolved over the last decad...
The adjoint mode of Algorithmic Differentiation (AD) is particularly attractive for computing gradie...
International audienceA computational fluid dynamics code relying on a high-order spatial discretiza...
International audienceThis paper presents our work toward correct and efficient automatic differenti...
PhDSimulations are used in science and industry to predict the performance of technical systems. Ad...
This dissertation is concerned with the computation of arbitrary-order derivative projections (tange...
Adjoint algorithmic differentiation by operator and function overloading is based on the interpretat...
Le mode adjoint de la Différentiation Algorithmique (DA) est particulièrement intéressant pour le ca...
International audienceWe present Automatic Differentiation (AD),a technique to obtain derivatives of...
The accuracy of numerical models that describe complex physical or chemical processes depends on the...
ABSTRACT. Adjoint methods are the choice approach to obtain gradients of large simulation codes. Aut...
International audienceAlgorithmic Differentiation (AD) provides the analytic derivatives of function...
Adjoint Algorithms are a powerful way to obtain the gradients that are needed in Scientific Computin...
This dissertation is concerned with algorithmic differentiation (AD), which is a method for algorith...
The analysis and modification of numerical programs in the context of generating and optimizing adjo...
AbstractAlgorithmic differentiation (AD) is a mathematical concept which evolved over the last decad...
The adjoint mode of Algorithmic Differentiation (AD) is particularly attractive for computing gradie...
International audienceA computational fluid dynamics code relying on a high-order spatial discretiza...
International audienceThis paper presents our work toward correct and efficient automatic differenti...
PhDSimulations are used in science and industry to predict the performance of technical systems. Ad...
This dissertation is concerned with the computation of arbitrary-order derivative projections (tange...
Adjoint algorithmic differentiation by operator and function overloading is based on the interpretat...