In this paper, we present the Framework for building Failure Prediction Models ((FPM)-P-2), a Machine Learning-based Framework to build models for predicting the Remaining Time to Failure (RTTF) of applications in the presence of software anomalies. (FPM)-P-2 uses measurements of a number of system features in order to create a knowledge base, which is then used to build prediction models. (FPM)-P-2 is application-independent, i.e. it solely exploits measurements of system-level features. Thus, it can be used in differentiated contexts, without the need for any manual modification or intervention to the running applications. To generate optimized models, (FPM)-P-2 can perform a feature selection to identify, among all the measured system fe...
Abstract The availability of software systems can be increased by preventive measures which are trig...
Abstract The availability of software systems can be increased by preventive measures which are trig...
Machine learning-based predictive modeling is to develop machine learning-based or data-driven model...
In this paper, we present the Framework for building Failure Prediction Models ((FPM)-P-2), a Machin...
The growing complexity of software systems is resulting in an increasing number of software faults. ...
Abstract. Unplanned system outages have a negative impact on company rev-enues and image. While the ...
YesFailure is an increasingly important issue in high performance computing and cloud systems. As la...
ith the revolution of the internet, new applications have emerged in our daily life. People are depe...
Quick recuperation stays one of the key difficulties to architects and administrators of vast organi...
We focus on machine failure prediction in industry 4.0.Indeed, it is used for classification problem...
Context: Software fault prediction has been an important research topic in the software engineering ...
Software failures are a tangible and imminent problem in enterprise software systems. Failures are u...
The complexity of software has grown considerably in recent years, making it nearly impossible to d...
As society becomes more dependent upon computer systems to perform increasingly critical tasks, ensu...
Traditionally, performance has been the most important metrics when evaluating a system. However, in...
Abstract The availability of software systems can be increased by preventive measures which are trig...
Abstract The availability of software systems can be increased by preventive measures which are trig...
Machine learning-based predictive modeling is to develop machine learning-based or data-driven model...
In this paper, we present the Framework for building Failure Prediction Models ((FPM)-P-2), a Machin...
The growing complexity of software systems is resulting in an increasing number of software faults. ...
Abstract. Unplanned system outages have a negative impact on company rev-enues and image. While the ...
YesFailure is an increasingly important issue in high performance computing and cloud systems. As la...
ith the revolution of the internet, new applications have emerged in our daily life. People are depe...
Quick recuperation stays one of the key difficulties to architects and administrators of vast organi...
We focus on machine failure prediction in industry 4.0.Indeed, it is used for classification problem...
Context: Software fault prediction has been an important research topic in the software engineering ...
Software failures are a tangible and imminent problem in enterprise software systems. Failures are u...
The complexity of software has grown considerably in recent years, making it nearly impossible to d...
As society becomes more dependent upon computer systems to perform increasingly critical tasks, ensu...
Traditionally, performance has been the most important metrics when evaluating a system. However, in...
Abstract The availability of software systems can be increased by preventive measures which are trig...
Abstract The availability of software systems can be increased by preventive measures which are trig...
Machine learning-based predictive modeling is to develop machine learning-based or data-driven model...