As the amount of data stored from industrial processes increases with the demands of Industry 4.0, there is an increasing interest in finding uses for the stored data. However, before the data can be used its quality must be determined and appropriate regions extracted. Initially, such testing was done manually using graphs or basic rules, such as the value of a variable. With large data sets, such an approach will not work, since the amount of data to tested and the number of potential rules is too large. Therefore, there is a need for automated segmentation of the data set into different components. Such an approach has recently been proposed and tested using various types of industrial data. Although the industrial results are promising,...
The ability to evaluate the validity of data is essential to any investigation, and manual ‘‘eyes on...
The combination of data and technology is having a high impact on the way we live. The world is get...
Large and over the years grown databases are a persistent concern in the field of data quality. Data...
As the amount of data stored from industrial processes increases with the demands of Industry 4.0, t...
MEng (Computer and Electronic Engineering), North-West University, Potchefstroom CampusThe digital u...
Sometimes it is difficult, or even impossible, to acquire real data from sensors and machines that m...
The application of Industrial Data Science in context of connected Smart Products requires modeling ...
Industrial enterprises rely on prediction of market behavior, monitoring of performance measures, ev...
Achieving high level of data quality is considered one of the most important assets for any small, m...
Beyond the hype of Big Data, something within business intelligence projects is indeed changing. Thi...
Data is the most important asset of any IT organization. The most successful companies of the world ...
The ability to evaluate the validity of data is essential to any investigation, and manual "eyes on"...
The chief purpose of this study is to characterize various big data quality models and to validate e...
In the Big Data Era, data is one of the most important core elements for any governmental, instituti...
Large and over the years grown databases are a persistent concern in the field of data quality. Data...
The ability to evaluate the validity of data is essential to any investigation, and manual ‘‘eyes on...
The combination of data and technology is having a high impact on the way we live. The world is get...
Large and over the years grown databases are a persistent concern in the field of data quality. Data...
As the amount of data stored from industrial processes increases with the demands of Industry 4.0, t...
MEng (Computer and Electronic Engineering), North-West University, Potchefstroom CampusThe digital u...
Sometimes it is difficult, or even impossible, to acquire real data from sensors and machines that m...
The application of Industrial Data Science in context of connected Smart Products requires modeling ...
Industrial enterprises rely on prediction of market behavior, monitoring of performance measures, ev...
Achieving high level of data quality is considered one of the most important assets for any small, m...
Beyond the hype of Big Data, something within business intelligence projects is indeed changing. Thi...
Data is the most important asset of any IT organization. The most successful companies of the world ...
The ability to evaluate the validity of data is essential to any investigation, and manual "eyes on"...
The chief purpose of this study is to characterize various big data quality models and to validate e...
In the Big Data Era, data is one of the most important core elements for any governmental, instituti...
Large and over the years grown databases are a persistent concern in the field of data quality. Data...
The ability to evaluate the validity of data is essential to any investigation, and manual ‘‘eyes on...
The combination of data and technology is having a high impact on the way we live. The world is get...
Large and over the years grown databases are a persistent concern in the field of data quality. Data...