How can we interpret predictions of a workload classification model? A workload is a sequence of operations executed in DRAM, where each operation contains a command and an address. Classifying a given sequence into a correct workload type is important for verifying the quality of DRAM. Although a previous model achieves a reasonable accuracy on workload classification, it is challenging to interpret the prediction results since it is a black box model. A promising direction is to exploit interpretation models which compute the amount of attribution each feature gives to the prediction. However, none of the existing interpretable models are tailored for workload classification. The main challenges to be addressed are to 1) provide interpret...
The present study aims to add to the literature on driver workload prediction using machine learning...
In cloud computing, good resource management can benefit both cloud users as well as cloud providers...
This project aims to provide a framework for workload traces analysis and characterization. By perfo...
How can we interpret predictions of a workload classification model? A workload is a sequence of ope...
Abstract—Traditional workload labels such as “archival ” and “HPC ” are poorly understood and incons...
This thesis presents a comprehensive study built upon the requirements of a global data-intensive sy...
Given a number of known reference workloads, and an unknown workload, this paper deals with the prob...
Reliable performance evaluations require the use of representative workloads. This is no easy task s...
4siIn this paper, we describe AppxDL, an algorithm for approximate classification of workloads of ru...
The type of the workload on a database management system (DBMS) is a key consideration in tuning its...
BMC Software, Inc. Performance modeling has long been considered a difficult science requiring exper...
A semi-supervised classifier is used in this paper is to investigate a model for forecasting unpredi...
The main factor in measuring server performance isthe accuracy of detection mechanisms. Sever is nee...
We describe our experience graphically visualizing data access behavior, with a specific emphasis on...
In cloud computing, good resource management can benefit both cloud users as well as cloud providers...
The present study aims to add to the literature on driver workload prediction using machine learning...
In cloud computing, good resource management can benefit both cloud users as well as cloud providers...
This project aims to provide a framework for workload traces analysis and characterization. By perfo...
How can we interpret predictions of a workload classification model? A workload is a sequence of ope...
Abstract—Traditional workload labels such as “archival ” and “HPC ” are poorly understood and incons...
This thesis presents a comprehensive study built upon the requirements of a global data-intensive sy...
Given a number of known reference workloads, and an unknown workload, this paper deals with the prob...
Reliable performance evaluations require the use of representative workloads. This is no easy task s...
4siIn this paper, we describe AppxDL, an algorithm for approximate classification of workloads of ru...
The type of the workload on a database management system (DBMS) is a key consideration in tuning its...
BMC Software, Inc. Performance modeling has long been considered a difficult science requiring exper...
A semi-supervised classifier is used in this paper is to investigate a model for forecasting unpredi...
The main factor in measuring server performance isthe accuracy of detection mechanisms. Sever is nee...
We describe our experience graphically visualizing data access behavior, with a specific emphasis on...
In cloud computing, good resource management can benefit both cloud users as well as cloud providers...
The present study aims to add to the literature on driver workload prediction using machine learning...
In cloud computing, good resource management can benefit both cloud users as well as cloud providers...
This project aims to provide a framework for workload traces analysis and characterization. By perfo...