The massive adoption of Machine Learning (ML) has deeply changed the internal structure, the design and the operation of software systems. ML has shifted the focus from code to data, especially in application areas where it is easier to collect samples that embody correct solutions to individual instances of a problem, than to design and code a deterministic algorithm solving it for all instances. There is an increasing awareness of the need to verify key non-functional properties of ML-based software applications like fairness and privacy. However, the traditional approach trying to verify these properties by code inspection is pointless, since ML models\u2019 behavior mostly depends on the data and parameters used to train them. Classic s...
Machine learning models have many applications, being used for example in pattern analysis, image cl...
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...
In this data-driven age, many Machine learning (ML) or predictive analytics related software applica...
A rapidly expanding universe of technology-focused startups is trying to change and improve the way ...
A rapidly expanding universe of technology-focused startups is trying to change and improve the way ...
A rapidly expanding universe of technology-focused startups is trying to change and improve the way ...
Some machine learning applications are intended to learn properties of data sets where the correct a...
Context: A Machine Learning based System (MLS) is a software system including one or more components...
A Machine Learning based System (MLS) is a software system including one or more components that lea...
Some machine learning applications are intended to learn properties of data sets where the correct a...
Uncertainty about the inner workings of machine learning (ML) models holds back the application of M...
Machine learning models have many applications, being used for example in pattern analysis, image cl...
Background: Data errors are a common challenge in machine learning (ML) projects and generally cause...
Machine learning (ML) systems typically involve complex decision making mechanisms while lack clear ...
Machine learning models have many applications, being used for example in pattern analysis, image cl...
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...
In this data-driven age, many Machine learning (ML) or predictive analytics related software applica...
A rapidly expanding universe of technology-focused startups is trying to change and improve the way ...
A rapidly expanding universe of technology-focused startups is trying to change and improve the way ...
A rapidly expanding universe of technology-focused startups is trying to change and improve the way ...
Some machine learning applications are intended to learn properties of data sets where the correct a...
Context: A Machine Learning based System (MLS) is a software system including one or more components...
A Machine Learning based System (MLS) is a software system including one or more components that lea...
Some machine learning applications are intended to learn properties of data sets where the correct a...
Uncertainty about the inner workings of machine learning (ML) models holds back the application of M...
Machine learning models have many applications, being used for example in pattern analysis, image cl...
Background: Data errors are a common challenge in machine learning (ML) projects and generally cause...
Machine learning (ML) systems typically involve complex decision making mechanisms while lack clear ...
Machine learning models have many applications, being used for example in pattern analysis, image cl...
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...