Memcomputing is a novel computing paradigm that employs time non-local dynamical systems to compute with and in memory. The digital version of these machines [digital memcomputing machines or (DMMs)] is scalable, and is particularly suited to solve combinatorial optimization problems. One of its possible realizations is by means of standard electronic circuits, with and without memory. Since these elements are non-quantum, they can be described by ordinary differential equations. Therefore, the circuit representation of DMMs can also be simulated efficiently on our traditional computers. We have indeed previously shown that these simulations only require time and memory resources that scale linearly with the problem size when applied to fin...
Abstract: Molecular dynamics simulation based on discrete event simulation (DMD) is emerging as an a...
In-memory computing (IMC) is attracting interest for accelerating data-intensive computing tasks, su...
We present a modification to variational Monte Carlo's linear method optimization scheme that addres...
This dissertation will review and compile several advancements in the development of digital memcomp...
Memcomputing is a novel non-Turing paradigm of computation that uses interacting memory cells (mempr...
Boolean satisfiability is a propositional logic problem of interest in multiple fields, e.g., physic...
This dissertation aims to address the dual goals of (1) proposing practical computing devices that m...
Optimization problems pervade essentially every scientific discipline and industry. A common form re...
Digital MemComputing machines (DMMs), which employ nonlinear dynamical systems with memory (time non...
Memcomputing is a novel computing paradigm that employs time non-locality (memory) to solve combinat...
Integer linear programming (ILP) encompasses a very important class of optimization problems that ar...
Like sentinels guarding a secret treasure, computationally difficult problems define the edge of wha...
Memcomputing is a novel non-Turing paradigm of computation that uses interacting memory cells (mempr...
Recent work on quantum annealing has emphasized the role of collective behavior in solving optimizat...
Abstract—We introduce the notion of universal memcomputing machines (UMMs): a class of brain-inspire...
Abstract: Molecular dynamics simulation based on discrete event simulation (DMD) is emerging as an a...
In-memory computing (IMC) is attracting interest for accelerating data-intensive computing tasks, su...
We present a modification to variational Monte Carlo's linear method optimization scheme that addres...
This dissertation will review and compile several advancements in the development of digital memcomp...
Memcomputing is a novel non-Turing paradigm of computation that uses interacting memory cells (mempr...
Boolean satisfiability is a propositional logic problem of interest in multiple fields, e.g., physic...
This dissertation aims to address the dual goals of (1) proposing practical computing devices that m...
Optimization problems pervade essentially every scientific discipline and industry. A common form re...
Digital MemComputing machines (DMMs), which employ nonlinear dynamical systems with memory (time non...
Memcomputing is a novel computing paradigm that employs time non-locality (memory) to solve combinat...
Integer linear programming (ILP) encompasses a very important class of optimization problems that ar...
Like sentinels guarding a secret treasure, computationally difficult problems define the edge of wha...
Memcomputing is a novel non-Turing paradigm of computation that uses interacting memory cells (mempr...
Recent work on quantum annealing has emphasized the role of collective behavior in solving optimizat...
Abstract—We introduce the notion of universal memcomputing machines (UMMs): a class of brain-inspire...
Abstract: Molecular dynamics simulation based on discrete event simulation (DMD) is emerging as an a...
In-memory computing (IMC) is attracting interest for accelerating data-intensive computing tasks, su...
We present a modification to variational Monte Carlo's linear method optimization scheme that addres...