With the increasing complexity and scope of software systems, their dependability is crucial. The analysis of log data recorded during system execution can enable engineers to automatically predict failures at run time. Several Machine Learning (ML) techniques, including traditional ML and Deep Learning (DL), have been proposed to automate such tasks. However, current empirical studies are limited in terms of covering all main DL types -- Recurrent Neural Network (RNN), Convolutional Neural network (CNN), and transformer -- as well as examining them on a wide range of diverse datasets. In this paper, we aim to address these issues by systematically investigating the combination of log data embedding strategies and DL types for fa...
The use of aircraft operation logs to develop a data-driven model to predict probable failures that ...
System failures are expected to be frequent in the exascale era such as current Petascale systems. T...
Cloud failure is one of the critical issues since it can cost millions of dollars to cloud service p...
To improve software reliability, software defect prediction is used to find software bugs and priori...
We focus on machine failure prediction in industry 4.0.Indeed, it is used for classification problem...
The complexity of software has grown considerably in recent years, making it nearly impossible to d...
In this paper, we present the Framework for building Failure Prediction Models ((FPM)-P-2), a Machin...
Context: Automated software defect prediction (SDP) methods are increasingly applied, often with the...
Developing successful software with no defects is one of the main goals of software projects. In ord...
There are three ways to deal with component failure: reactive maintenance, preventive maintenance, a...
Industry 4.0 is characterized by the availability of sensors to operate the so-called intelligent fa...
The proliferation of sensing technologies such as sensors has resulted in vast amounts of time-serie...
YesFailure is an increasingly important issue in high performance computing and cloud systems. As la...
Manually diagnosing recurrent faults in software systems can be an inefficient use of time for engin...
Deep learning requires a large data set. When working with smaller data sets we need an automated ap...
The use of aircraft operation logs to develop a data-driven model to predict probable failures that ...
System failures are expected to be frequent in the exascale era such as current Petascale systems. T...
Cloud failure is one of the critical issues since it can cost millions of dollars to cloud service p...
To improve software reliability, software defect prediction is used to find software bugs and priori...
We focus on machine failure prediction in industry 4.0.Indeed, it is used for classification problem...
The complexity of software has grown considerably in recent years, making it nearly impossible to d...
In this paper, we present the Framework for building Failure Prediction Models ((FPM)-P-2), a Machin...
Context: Automated software defect prediction (SDP) methods are increasingly applied, often with the...
Developing successful software with no defects is one of the main goals of software projects. In ord...
There are three ways to deal with component failure: reactive maintenance, preventive maintenance, a...
Industry 4.0 is characterized by the availability of sensors to operate the so-called intelligent fa...
The proliferation of sensing technologies such as sensors has resulted in vast amounts of time-serie...
YesFailure is an increasingly important issue in high performance computing and cloud systems. As la...
Manually diagnosing recurrent faults in software systems can be an inefficient use of time for engin...
Deep learning requires a large data set. When working with smaller data sets we need an automated ap...
The use of aircraft operation logs to develop a data-driven model to predict probable failures that ...
System failures are expected to be frequent in the exascale era such as current Petascale systems. T...
Cloud failure is one of the critical issues since it can cost millions of dollars to cloud service p...