<p>Cutting edge research problems require the use of complicated and computationally expensive computer models. I will present a practical overview of the design and analysis of computer experiments in high energy nuclear and astro phsyics. The aim of these experiments is to infer credible ranges for certain fundamental parameters of the underlying physical processes through the analysis of model output and experimental data.</p><p>To be truly useful computer models must be calibrated against experimental data. Gaining an understanding of the response of expensive models across the full range of inputs can be a slow and painful process. Gaussian Process emulators can be an efficient and informative surrogate for expensive computer models an...
We explore how the big-three computing paradigms---symmetric multiprocessor, graphical processing un...
Analytical techniques have been used for many years for fitting Gaussian peaks in nuclear spectrosco...
Motivated by the high computational costs of classical simulations, machine-learned generative model...
We introduce statistical techniques required to handle complex computer models with potential applic...
International audienceComplex computer codes are often too time expensive to be directly used to per...
Gaussian processes (GPs) can be used for statistical regression, i.e. to predict new data given a se...
Scientific investigations are often expensive and the ability to quickly perform analysis of data on...
In recent years, there has been an explosion in the use of machine learning, with applications acros...
Computer simulation of real world phenomena is now ubiquitous in science, because experimentation in...
In this thesis we present a methodology for validating Gaussian process models: Gaussian process emu...
Computer experiments have been widely used in practice as important supplements to traditional labor...
<p>Our interest is the risk assessment of rare natural hazards, such as</p><p>large volcanic pyrocla...
Abstract High Energy Physics Experiments (HEP experiments in the following) have been at least in th...
This thesis consists of three chapters on the statistical adjustment, calibration, and uncertainty q...
This is the author accepted manuscript. The final version is available from the Institute of Mathema...
We explore how the big-three computing paradigms---symmetric multiprocessor, graphical processing un...
Analytical techniques have been used for many years for fitting Gaussian peaks in nuclear spectrosco...
Motivated by the high computational costs of classical simulations, machine-learned generative model...
We introduce statistical techniques required to handle complex computer models with potential applic...
International audienceComplex computer codes are often too time expensive to be directly used to per...
Gaussian processes (GPs) can be used for statistical regression, i.e. to predict new data given a se...
Scientific investigations are often expensive and the ability to quickly perform analysis of data on...
In recent years, there has been an explosion in the use of machine learning, with applications acros...
Computer simulation of real world phenomena is now ubiquitous in science, because experimentation in...
In this thesis we present a methodology for validating Gaussian process models: Gaussian process emu...
Computer experiments have been widely used in practice as important supplements to traditional labor...
<p>Our interest is the risk assessment of rare natural hazards, such as</p><p>large volcanic pyrocla...
Abstract High Energy Physics Experiments (HEP experiments in the following) have been at least in th...
This thesis consists of three chapters on the statistical adjustment, calibration, and uncertainty q...
This is the author accepted manuscript. The final version is available from the Institute of Mathema...
We explore how the big-three computing paradigms---symmetric multiprocessor, graphical processing un...
Analytical techniques have been used for many years for fitting Gaussian peaks in nuclear spectrosco...
Motivated by the high computational costs of classical simulations, machine-learned generative model...