PhDSimulations are used in science and industry to predict the performance of technical systems. Adjoint derivatives of these simulations can reveal the sensitivity of the system performance to changes in design or operating conditions, and are increasingly used in shape optimisation and uncertainty quantification. Algorithmic differentiation (AD) by source-transformation is an efficient method to compute such derivatives. AD requires an analysis of the computation and its data flow to produce efficient adjoint code. One important step is the activity analysis that detects operations that need to be differentiated. An improved activity analysis is investigated in this thesis that simplifies build procedures for certain adjoint progr...
<p>Sensitivity analysis with the aim of design optimization is a growing area of interest in Computa...
This paper addresses the concerns of CFD code developers who are facing the task of creating a discr...
This paper presents a number of algorithm developments for adjoint methods using the 'discrete' appr...
International audienceA computational fluid dynamics code relying on a high-order spatial discretiza...
International audienceA computational fluid dynamics code is differentiated using algorithmic differ...
Adjoint Differentiation's (AD) ability to calculate Greeks efficiently and to machine precision whil...
This dissertation is concerned with algorithmic differentiation (AD), which is a method for algorith...
Le mode adjoint de la Différentiation Algorithmique (DA) est particulièrement intéressant pour le ca...
The adjoint mode of Algorithmic Differentiation (AD) is particularly attractive for computing gradie...
ABSTRACT. Adjoint methods are the choice approach to obtain gradients of large simulation codes. Aut...
We consider a GPU accelerated program using Monte Carlo simulation to price a basket call option on ...
Adjoint algorithmic differentiation by operator and function overloading is based on the interpretat...
International audienceWe illustrate the benefits of Algorithmic Differentiation (AD) for the develop...
<p>Adjoint based calculation of sensitivities pertaining to a Computational Fluid Dynamics (CFD) Sol...
We propose a method for selectively applying automatic differentiation (AD) by operator overloading ...
<p>Sensitivity analysis with the aim of design optimization is a growing area of interest in Computa...
This paper addresses the concerns of CFD code developers who are facing the task of creating a discr...
This paper presents a number of algorithm developments for adjoint methods using the 'discrete' appr...
International audienceA computational fluid dynamics code relying on a high-order spatial discretiza...
International audienceA computational fluid dynamics code is differentiated using algorithmic differ...
Adjoint Differentiation's (AD) ability to calculate Greeks efficiently and to machine precision whil...
This dissertation is concerned with algorithmic differentiation (AD), which is a method for algorith...
Le mode adjoint de la Différentiation Algorithmique (DA) est particulièrement intéressant pour le ca...
The adjoint mode of Algorithmic Differentiation (AD) is particularly attractive for computing gradie...
ABSTRACT. Adjoint methods are the choice approach to obtain gradients of large simulation codes. Aut...
We consider a GPU accelerated program using Monte Carlo simulation to price a basket call option on ...
Adjoint algorithmic differentiation by operator and function overloading is based on the interpretat...
International audienceWe illustrate the benefits of Algorithmic Differentiation (AD) for the develop...
<p>Adjoint based calculation of sensitivities pertaining to a Computational Fluid Dynamics (CFD) Sol...
We propose a method for selectively applying automatic differentiation (AD) by operator overloading ...
<p>Sensitivity analysis with the aim of design optimization is a growing area of interest in Computa...
This paper addresses the concerns of CFD code developers who are facing the task of creating a discr...
This paper presents a number of algorithm developments for adjoint methods using the 'discrete' appr...