Optimization plays an essential role in industrial design, but is not limited to minimization of a simple function, such as cost or strength. These tools are also used in conceptual phases, to better understand what is possible. To support this exploration we focus on Quality Diversity (QD) algorithms, which produce sets of varied, high performing solutions. These techniques often require the evaluation of millions of solutions -- making them impractical in design cases. In this thesis we propose methods to radically improve the data-efficiency of QD with machine learning, enabling its application to design. In our first contribution, we develop a method of modeling the performance of evolved neural networks used for control and design. The...
This paper introduces a user-driven evolutionary algorithm based on Quality Diversity (QD) search. D...
Quality-Diversity (QD) algorithms are powerful exploration algorithms that allow robots to discover ...
In recent years, we have seen tremendous benefits from pre-training neural networks to learn represe...
Optimization plays an essential role in industrial design, but is not limited to minimization of a s...
Optimization plays an essential role in industrial design, but is not limited to minimization of a s...
While evolutionary computation and evolutionary robotics take inspiration from nature, they have lon...
In contrast to the conventional role of evolution in evolutionary computation (EC) as an optimizatio...
The representation, or encoding, utilized in evolutionary algorithms has a substantial effect on the...
Quality-Diversity optimisation algorithms enable the evolutionof collections of both high-performing...
Recently there has been a growing movement of researchers that believes innovation and novelty creat...
Quality-Diversity algorithms, such as MAP-Elites, are a branch of Evolutionary Computation generatin...
Traditional optimization algorithms search for a single global optimum that maximizes (or minimizes)...
Quality-Diversity (QD) optimisation is a new family of learning algorithms that aims at generating c...
Traditional optimization algorithms search for a single global optimum that maximizes (or minimizes)...
Generative design refers to computational design methods that can automatically conduct design explo...
This paper introduces a user-driven evolutionary algorithm based on Quality Diversity (QD) search. D...
Quality-Diversity (QD) algorithms are powerful exploration algorithms that allow robots to discover ...
In recent years, we have seen tremendous benefits from pre-training neural networks to learn represe...
Optimization plays an essential role in industrial design, but is not limited to minimization of a s...
Optimization plays an essential role in industrial design, but is not limited to minimization of a s...
While evolutionary computation and evolutionary robotics take inspiration from nature, they have lon...
In contrast to the conventional role of evolution in evolutionary computation (EC) as an optimizatio...
The representation, or encoding, utilized in evolutionary algorithms has a substantial effect on the...
Quality-Diversity optimisation algorithms enable the evolutionof collections of both high-performing...
Recently there has been a growing movement of researchers that believes innovation and novelty creat...
Quality-Diversity algorithms, such as MAP-Elites, are a branch of Evolutionary Computation generatin...
Traditional optimization algorithms search for a single global optimum that maximizes (or minimizes)...
Quality-Diversity (QD) optimisation is a new family of learning algorithms that aims at generating c...
Traditional optimization algorithms search for a single global optimum that maximizes (or minimizes)...
Generative design refers to computational design methods that can automatically conduct design explo...
This paper introduces a user-driven evolutionary algorithm based on Quality Diversity (QD) search. D...
Quality-Diversity (QD) algorithms are powerful exploration algorithms that allow robots to discover ...
In recent years, we have seen tremendous benefits from pre-training neural networks to learn represe...