. Automatic differentiation (AD) is a technique that augments computer codes with statements for the computation of derivatives. The computational workhorse of AD-generated codes for first-order derivatives is the linear combination of vectors. For many large-scale problems, the vectors involved in this operation are inherently sparse. If the underlying function is a partially separable one (e.g., if its Hessian is sparse), many of the intermediate gradient vectors computed by AD will also be sparse, even though the final gradient is likely to be dense. For large Jacobians computations, every intermediate derivative vector is usually at least as sparse as the least sparse row of the final Jacobian. In this paper, we show that dynamic exploi...
The authors discuss the role of automatic differentiation tools in optimization software. We emphasi...
The computation of a sparse Hessian matrix H using automatic differentiation (AD) can be made effici...
In this paper, we introduce automatic differentiation as a method for computing derivatives of large...
The background of this thesis is algorithmic differentiation (AD) of in practice very computationall...
The advent of robust automatic differentiation tools is an exciting and important development in sci...
The computation of large sparse Jacobian matrices is required in many important large-scale scientif...
The accurate and efficient computation of gradients for partially separable functions is central to ...
The accurate and ecient computation of gradients for partially separable functions is central to the...
Summary. Using a model from a chromatographic separation process in chemical engineer-ing, we demons...
AbstractWe review the extended Jacobian approach to automatic differentiation of a user-supplied fun...
80 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 1980.If the gradient of the functio...
Differentiation is one of the fundamental problems in numerical mathemetics. The solution of many op...
We consider a function g : ! n ! ! n for which the Jacobian is symmetric and sparse. Such functi...
The computation of sparse Jacobians is a common subproblem in iterative numerical algorithms. The sp...
Modern methods for numerical optimization calculate (or approximate) the matrix of second derivative...
The authors discuss the role of automatic differentiation tools in optimization software. We emphasi...
The computation of a sparse Hessian matrix H using automatic differentiation (AD) can be made effici...
In this paper, we introduce automatic differentiation as a method for computing derivatives of large...
The background of this thesis is algorithmic differentiation (AD) of in practice very computationall...
The advent of robust automatic differentiation tools is an exciting and important development in sci...
The computation of large sparse Jacobian matrices is required in many important large-scale scientif...
The accurate and efficient computation of gradients for partially separable functions is central to ...
The accurate and ecient computation of gradients for partially separable functions is central to the...
Summary. Using a model from a chromatographic separation process in chemical engineer-ing, we demons...
AbstractWe review the extended Jacobian approach to automatic differentiation of a user-supplied fun...
80 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 1980.If the gradient of the functio...
Differentiation is one of the fundamental problems in numerical mathemetics. The solution of many op...
We consider a function g : ! n ! ! n for which the Jacobian is symmetric and sparse. Such functi...
The computation of sparse Jacobians is a common subproblem in iterative numerical algorithms. The sp...
Modern methods for numerical optimization calculate (or approximate) the matrix of second derivative...
The authors discuss the role of automatic differentiation tools in optimization software. We emphasi...
The computation of a sparse Hessian matrix H using automatic differentiation (AD) can be made effici...
In this paper, we introduce automatic differentiation as a method for computing derivatives of large...