Design space exploration of a processor system, prior to its hardware implementation, usually involves cycle-accurate simulations. The simulations provide a good measure of performance but require long periods of time even when a small set of design variations are assessed. An alternative is to use empirically-developed models which are much faster than actual simulations. In this paper, we have proposed an NN model for processor performance (IPC) prediction. The model uses a larger set of input parameters (especially the software parameters) than the prior models. For dimension reduction, we found PCA to be a more useful technique than correlation and graphical analysis. For the purpose of training the NNs, we used the data from a large nu...
Current practice in benchmarking commercial computer systems is to run a number of industry-standard...
Contains fulltext : 18657.pdf (publisher's version ) (Open Access)In this thesis, ...
textThis dissertation presents three modeling methodologies. The first methodology constructs power ...
The cycle-accurate simulation is a method for design space study of a processor system before it goe...
We propose a set of methods to classify vendors based on estimated CPU performance and predict CPU p...
. A performance prediction method is presented for indicating the performance range of MIMD parallel...
Designing and optimizing high performance microprocessors is an increasingly difficult task due to t...
Designing and optimizing high performance micropro-cessors is an increasingly difcult task due to th...
Accurately modeling and predicting performance for large-scale applications becomes increasingly dif...
Abstract. We present an estimation methodology, accurately predicting the execution time for a given...
This research shows that using an Artificial Neural Network as the hardware branch predictor of a su...
Machine Learning involves analysing large sets of training data to make predictions and decisions to...
The resurgence of machine learning since the late 1990s has been enabled by significant advances in ...
CPUs and dedicated accelerators (namely GPUs and FPGAs) continue to grow increasingly large and comp...
Abstract—As modern processors are becoming increasingly complex, fast and accurate performance predi...
Current practice in benchmarking commercial computer systems is to run a number of industry-standard...
Contains fulltext : 18657.pdf (publisher's version ) (Open Access)In this thesis, ...
textThis dissertation presents three modeling methodologies. The first methodology constructs power ...
The cycle-accurate simulation is a method for design space study of a processor system before it goe...
We propose a set of methods to classify vendors based on estimated CPU performance and predict CPU p...
. A performance prediction method is presented for indicating the performance range of MIMD parallel...
Designing and optimizing high performance microprocessors is an increasingly difficult task due to t...
Designing and optimizing high performance micropro-cessors is an increasingly difcult task due to th...
Accurately modeling and predicting performance for large-scale applications becomes increasingly dif...
Abstract. We present an estimation methodology, accurately predicting the execution time for a given...
This research shows that using an Artificial Neural Network as the hardware branch predictor of a su...
Machine Learning involves analysing large sets of training data to make predictions and decisions to...
The resurgence of machine learning since the late 1990s has been enabled by significant advances in ...
CPUs and dedicated accelerators (namely GPUs and FPGAs) continue to grow increasingly large and comp...
Abstract—As modern processors are becoming increasingly complex, fast and accurate performance predi...
Current practice in benchmarking commercial computer systems is to run a number of industry-standard...
Contains fulltext : 18657.pdf (publisher's version ) (Open Access)In this thesis, ...
textThis dissertation presents three modeling methodologies. The first methodology constructs power ...