In the last couple of years we have witnessed an enormous increase of machine learning (ML) applications. More and more program functions are no longer written in code, but learnt from a huge amount of data samples using an ML algorithm. However, what is often overlooked is the complexity of managing the resulting ML models as well as bringing these into a real production system. In software engineering, we have spent decades on developing tools and methodologies to create, manage and assemble complex software modules. We present an overview of current techniques to manage complex software, and how this applies to ML models
Unique developmental and operational characteristics of machine learning (ML) components as well as ...
The increasing reliance on applications with machine learning (ML) components calls for mature engin...
The past two years I have conducted an extensive literature and tool review to answer the question: ...
Machine Learning (ML) is the discipline that studies methods for automatically inferring models from...
Artificial intelligence enabled systems have been an inevitable part of everyday life. However, effi...
More program functions are no longer written in code but learned from a huge number of data samples ...
A first challenge in teaching machine learning to software engineering and computer science students...
[[abstract]]Machine learning deals with the issue of how to build programs that improve their perfor...
Artificial intelligence enabled systems have been an inevitable part of everyday life. However, effi...
[[abstract]]Machine learning is the study of building computer programs that improve their performan...
Deploying machine learning (ML) models to production with the same level of rigor and automation as ...
Developing machine learning (ML) models can be seen as a process similar to the one established for ...
This chapter discusses how to build production-ready machine learning systems. There are several cha...
Machine learning has become a key driver for technological advancement in the last decade on the bac...
The purpose of the software manufacturing industry is to produce high-quality applications that meet...
Unique developmental and operational characteristics of machine learning (ML) components as well as ...
The increasing reliance on applications with machine learning (ML) components calls for mature engin...
The past two years I have conducted an extensive literature and tool review to answer the question: ...
Machine Learning (ML) is the discipline that studies methods for automatically inferring models from...
Artificial intelligence enabled systems have been an inevitable part of everyday life. However, effi...
More program functions are no longer written in code but learned from a huge number of data samples ...
A first challenge in teaching machine learning to software engineering and computer science students...
[[abstract]]Machine learning deals with the issue of how to build programs that improve their perfor...
Artificial intelligence enabled systems have been an inevitable part of everyday life. However, effi...
[[abstract]]Machine learning is the study of building computer programs that improve their performan...
Deploying machine learning (ML) models to production with the same level of rigor and automation as ...
Developing machine learning (ML) models can be seen as a process similar to the one established for ...
This chapter discusses how to build production-ready machine learning systems. There are several cha...
Machine learning has become a key driver for technological advancement in the last decade on the bac...
The purpose of the software manufacturing industry is to produce high-quality applications that meet...
Unique developmental and operational characteristics of machine learning (ML) components as well as ...
The increasing reliance on applications with machine learning (ML) components calls for mature engin...
The past two years I have conducted an extensive literature and tool review to answer the question: ...