We present a modification to variational Monte Carlo's linear method optimization scheme that addresses a critical memory bottleneck while maintaining compatibility with both the traditional ground state variational principle and our recently introduced variational principle for excited states. For wave function ansatzes with tens of thousands of variables, our modification reduces the required memory per parallel process from tens of gigabytes to hundreds of megabytes, making the methodology a much better fit for modern supercomputer architectures in which data communication and per-process memory consumption are primary concerns. We verify the efficacy of the new optimization scheme in small molecule tests involving both the Hilbert space...
A new algorithm for the variational quantum Monte Carlo (VMC) is proposed. This algorithm takes the ...
We present a technique for optimizing hundreds of thousands of variational parameters in variational...
We extend our hybrid linear-method/accelerated-descent variational Monte Carlo optimization approach...
We present a modification to variational Monte Carlo's linear method optimization scheme that addres...
We present a modification to variational Monte Carlo's linear method optimization scheme that addres...
We show that for both single-Slater-Jastrow and Jastrow geminal power wave functions the formal cost...
An appropriate iterative scheme for the minimization of the energy, based on the variational Monte C...
An appropriate iterative scheme for the minimization of the energy, based on the variational Monte C...
After reviewing previously published techniques, a new algorithm is presented for optimising variabl...
The accurate description of molecular excited states is an active frontier in the development of ele...
We present a comparison between a number of recently introduced low-memory wave function optimizatio...
We present a comparison between a number of recently introduced low-memory wave function optimizatio...
The primary subject of this dissertation is the analysis and improvement of variational methods that...
The primary subject of this dissertation is the analysis and improvement of variational methods that...
The primary subject of this dissertation is the analysis and improvement of variational methods that...
A new algorithm for the variational quantum Monte Carlo (VMC) is proposed. This algorithm takes the ...
We present a technique for optimizing hundreds of thousands of variational parameters in variational...
We extend our hybrid linear-method/accelerated-descent variational Monte Carlo optimization approach...
We present a modification to variational Monte Carlo's linear method optimization scheme that addres...
We present a modification to variational Monte Carlo's linear method optimization scheme that addres...
We show that for both single-Slater-Jastrow and Jastrow geminal power wave functions the formal cost...
An appropriate iterative scheme for the minimization of the energy, based on the variational Monte C...
An appropriate iterative scheme for the minimization of the energy, based on the variational Monte C...
After reviewing previously published techniques, a new algorithm is presented for optimising variabl...
The accurate description of molecular excited states is an active frontier in the development of ele...
We present a comparison between a number of recently introduced low-memory wave function optimizatio...
We present a comparison between a number of recently introduced low-memory wave function optimizatio...
The primary subject of this dissertation is the analysis and improvement of variational methods that...
The primary subject of this dissertation is the analysis and improvement of variational methods that...
The primary subject of this dissertation is the analysis and improvement of variational methods that...
A new algorithm for the variational quantum Monte Carlo (VMC) is proposed. This algorithm takes the ...
We present a technique for optimizing hundreds of thousands of variational parameters in variational...
We extend our hybrid linear-method/accelerated-descent variational Monte Carlo optimization approach...