Automatic differentiation (AD) has proven its interest in many fields of applied mathematics, but it is still not widely used. Furthermore, existing numerical methods have been developed under the hypotheses that computing program derivatives is not affordable for real size problems. Exact derivatives have therefore been avoided, or replaced by approximations computed by divided differences. The hypotheses is no longer true due to the maturity of AD added to the quick evolution of machine capacity. This encourages the development of new numerical methods that freely make use of program derivatives, and will require the definition and development of new AD strategies. AD tools must be extended to produce these new derivative programs, in suc...
Derivatives, mostly in the form of gradients and Hessians, are ubiquitous in machine learning. Autom...
Many of the current automatic differentiation (AD) tools have similar characteristics. Unfortunately...
Many physical processes are most naturally and easily modeled as mixed systems of differential and a...
Automatic differentiation (AD) has proven its interest in many fields of applied mathematics, but it...
In mathematics and computer algebra, automatic differentiation (AD) is a set of techniques to evalua...
Automatic differentiation (AD) tools can generate accurate and efficient derivative code for compute...
Full text of this paper is not available in the UHRAThis paper gives an introduction to a number of ...
Current implementations of automatic differentiation are far from automatic. We survey the difficult...
summary:Automatic differentiation is an effective method for evaluating derivatives of function, whi...
Derivatives, mostly in the form of gradients and Hessians, are ubiquitous in machine learning. Autom...
Automatic Differentiation (AD) is a tool that systematically implements the chain rule of differenti...
This paper discusses a new Automatic Differentiation (AD) system that correctly and automatically ac...
Often the most robust and efficient algorithms for the solution of large-scale problems involving no...
Many applications require the derivatives of functions defined by computer programs. Automatic diffe...
Many physical processes are most naturally and easily modeled as mixed systems of differential and a...
Derivatives, mostly in the form of gradients and Hessians, are ubiquitous in machine learning. Autom...
Many of the current automatic differentiation (AD) tools have similar characteristics. Unfortunately...
Many physical processes are most naturally and easily modeled as mixed systems of differential and a...
Automatic differentiation (AD) has proven its interest in many fields of applied mathematics, but it...
In mathematics and computer algebra, automatic differentiation (AD) is a set of techniques to evalua...
Automatic differentiation (AD) tools can generate accurate and efficient derivative code for compute...
Full text of this paper is not available in the UHRAThis paper gives an introduction to a number of ...
Current implementations of automatic differentiation are far from automatic. We survey the difficult...
summary:Automatic differentiation is an effective method for evaluating derivatives of function, whi...
Derivatives, mostly in the form of gradients and Hessians, are ubiquitous in machine learning. Autom...
Automatic Differentiation (AD) is a tool that systematically implements the chain rule of differenti...
This paper discusses a new Automatic Differentiation (AD) system that correctly and automatically ac...
Often the most robust and efficient algorithms for the solution of large-scale problems involving no...
Many applications require the derivatives of functions defined by computer programs. Automatic diffe...
Many physical processes are most naturally and easily modeled as mixed systems of differential and a...
Derivatives, mostly in the form of gradients and Hessians, are ubiquitous in machine learning. Autom...
Many of the current automatic differentiation (AD) tools have similar characteristics. Unfortunately...
Many physical processes are most naturally and easily modeled as mixed systems of differential and a...