Background: Data errors are a common challenge in machine learning (ML) projects and generally cause significant performance degradation in ML-enabled software systems. To ensure early detection of erroneous data and avoid training ML models using bad data, research and industrial practice suggest incorporating a data validation process and tool in ML system development process. Aim: The study investigates the adoption of a data validation process and tool in industrial ML projects. The data validation process demands significant engineering resources for tool development and maintenance. Thus, it is important to identify the best practices for their adoption especially by development teams that are in the early phases of deploying ML-enabl...
Context: A Machine Learning based System (MLS) is a software system including one or more components...
Machine learning (ML) teams often work on a project just to realize the performance of the model is ...
Machine learning (ML) teams often work on a project just to realize the performance of the model is ...
In this data-driven age, many Machine learning (ML) or predictive analytics related software applica...
textMachine learning methods have been employed in data mining to discover useful, valid, and benefi...
textMachine learning methods have been employed in data mining to discover useful, valid, and benefi...
The impact of the Artificial Intelligence revolution is undoubtedly substantial in our society, life...
This data set contains the results of an extensive, systematic literature review on the use of machi...
Developing machine learning (ML) models can be seen as a process similar to the one established for ...
This data set contains the results of an extensive, systematic literature review on the use of machi...
The massive adoption of Machine Learning (ML) has deeply changed the internal structure, the design ...
Today, machine learning (ML) is widely used in industry to provide the core functionality of product...
Innovations are coming together and are changing business landscapes, markets, and societies. Data-d...
Innovations are coming together and are changing business landscapes, markets, and societies. Data-d...
Machine learning (ML) teams often work on a project just to realize the performance of the model is ...
Context: A Machine Learning based System (MLS) is a software system including one or more components...
Machine learning (ML) teams often work on a project just to realize the performance of the model is ...
Machine learning (ML) teams often work on a project just to realize the performance of the model is ...
In this data-driven age, many Machine learning (ML) or predictive analytics related software applica...
textMachine learning methods have been employed in data mining to discover useful, valid, and benefi...
textMachine learning methods have been employed in data mining to discover useful, valid, and benefi...
The impact of the Artificial Intelligence revolution is undoubtedly substantial in our society, life...
This data set contains the results of an extensive, systematic literature review on the use of machi...
Developing machine learning (ML) models can be seen as a process similar to the one established for ...
This data set contains the results of an extensive, systematic literature review on the use of machi...
The massive adoption of Machine Learning (ML) has deeply changed the internal structure, the design ...
Today, machine learning (ML) is widely used in industry to provide the core functionality of product...
Innovations are coming together and are changing business landscapes, markets, and societies. Data-d...
Innovations are coming together and are changing business landscapes, markets, and societies. Data-d...
Machine learning (ML) teams often work on a project just to realize the performance of the model is ...
Context: A Machine Learning based System (MLS) is a software system including one or more components...
Machine learning (ML) teams often work on a project just to realize the performance of the model is ...
Machine learning (ML) teams often work on a project just to realize the performance of the model is ...