Indiana University-Purdue University Indianapolis (IUPUI)Performance models are useful as mathematical models to reason about the behavior of different computer systems while running various applications. In this thesis, we aim to provide two distinct performance models: one for distributed-memory high performance computing systems with network communication, and one for deep neural networks. Our main goal for the first model is insight and simplicity, while for the second we aim for accuracy in prediction. The first model is generalized for networked multi-core computer systems, while the second is specific to deep neural networks on a shared-memory system
2020 Spring.Includes bibliographical references.Deep neural networks are computational and memory in...
Performance modelling for scalable deep learning is very important to quantify the efficiency of la...
Two artificial neural network models are compared. They are the Hopfield Neural Network Model and th...
Deep Neural Network (DNN) frameworks use distributed training to enable faster time to convergence a...
Deep Neural Networks (DNN), specifically Convolutional Neural Networks (CNNs) are often associated w...
The rapid growth of data and ever increasing model complexity of deep neural networks (DNNs) have en...
The purpose of this thesis was to create and simulate a model of an existing Campus network with a v...
The efficiency of a multi-core architecture is directly related to the mechanisms that map the thre...
In recent years, machine learning (ML) and, more noticeably, deep learning (DL), have be- come incre...
High Performance Computing (HPC) has always been a key foundation for scientific simulation and disc...
En este estudio analizo el proceso de entrenamiento de una red neural convolucional desde la perspec...
The thesis tries to investigate on how a machine learning tool can be used to achieve performance pr...
peer reviewedWith renewed global interest for Artificial Intelligence (AI) methods, the past decade ...
Predicting the performance and energy consumption of computing hardware is critical for many modern ...
Consistently growing architectural complexity and machine scales make creating accurate performance ...
2020 Spring.Includes bibliographical references.Deep neural networks are computational and memory in...
Performance modelling for scalable deep learning is very important to quantify the efficiency of la...
Two artificial neural network models are compared. They are the Hopfield Neural Network Model and th...
Deep Neural Network (DNN) frameworks use distributed training to enable faster time to convergence a...
Deep Neural Networks (DNN), specifically Convolutional Neural Networks (CNNs) are often associated w...
The rapid growth of data and ever increasing model complexity of deep neural networks (DNNs) have en...
The purpose of this thesis was to create and simulate a model of an existing Campus network with a v...
The efficiency of a multi-core architecture is directly related to the mechanisms that map the thre...
In recent years, machine learning (ML) and, more noticeably, deep learning (DL), have be- come incre...
High Performance Computing (HPC) has always been a key foundation for scientific simulation and disc...
En este estudio analizo el proceso de entrenamiento de una red neural convolucional desde la perspec...
The thesis tries to investigate on how a machine learning tool can be used to achieve performance pr...
peer reviewedWith renewed global interest for Artificial Intelligence (AI) methods, the past decade ...
Predicting the performance and energy consumption of computing hardware is critical for many modern ...
Consistently growing architectural complexity and machine scales make creating accurate performance ...
2020 Spring.Includes bibliographical references.Deep neural networks are computational and memory in...
Performance modelling for scalable deep learning is very important to quantify the efficiency of la...
Two artificial neural network models are compared. They are the Hopfield Neural Network Model and th...