Background. Since the rise of Machine Learning, the automation of software development has been a desired feature. MLOps is targeted to have the same impact on software development as DevOps had in the last decade. Objectives. The goal of the research is threefold: (RQ1) to analyze which MLOps tools and platforms can be used in the Cognitive Cloud Continuum, (RQ2) to investigate which combination of such tools and platforms is more beneficial, and (RQ3) to define how to distribute MLOps to nodes across the Cognitive Cloud Continuum. Methods. The work can be divided into three main blocks: analysis, proposal and identification, and application. The first part builds the foundations of the work, the second proposes a vision on the evolution o...
MLModelCI provides multimedia researchers and developers with a one-stop platform for efficient mac...
The use of machine learning (ML) as a key technology in artificial intelligence (AI) is becoming mor...
This chapter discusses how to build production-ready machine learning systems. There are several cha...
In the last decade, the development of software based on artificial intelligence has increased expon...
Nowadays, machine learning projects have become more and more relevant to various real-world use cas...
ABSTRACTQuite recently, considerable attention has been paid to developingartificial intelligence an...
The adoption of continuous software engineering practices such as DevOps (Development and Operations...
MLOps is a very recent approach aimed at reducing the time to get a Machine Learning model in produc...
The EXPLAIN project (EXPLanatory interactive Artificial intelligence for INdustry) aims at enabling ...
Over the past few decades, the substantial growth in enterprise-data availability and the advancemen...
MLOps have become an increasingly important topic in the deployment of machine learning in productio...
This paper presents a general overview of how machine learning solutions may be implemented using mo...
The thesis was carried out at a company that works with large financial institutions that have start...
Cognition is a domain of thinking creatures, isn't it? Based on that computers cannot learn anything...
Deploying machine learning (ML) models to production with the same level of rigor and automation as ...
MLModelCI provides multimedia researchers and developers with a one-stop platform for efficient mac...
The use of machine learning (ML) as a key technology in artificial intelligence (AI) is becoming mor...
This chapter discusses how to build production-ready machine learning systems. There are several cha...
In the last decade, the development of software based on artificial intelligence has increased expon...
Nowadays, machine learning projects have become more and more relevant to various real-world use cas...
ABSTRACTQuite recently, considerable attention has been paid to developingartificial intelligence an...
The adoption of continuous software engineering practices such as DevOps (Development and Operations...
MLOps is a very recent approach aimed at reducing the time to get a Machine Learning model in produc...
The EXPLAIN project (EXPLanatory interactive Artificial intelligence for INdustry) aims at enabling ...
Over the past few decades, the substantial growth in enterprise-data availability and the advancemen...
MLOps have become an increasingly important topic in the deployment of machine learning in productio...
This paper presents a general overview of how machine learning solutions may be implemented using mo...
The thesis was carried out at a company that works with large financial institutions that have start...
Cognition is a domain of thinking creatures, isn't it? Based on that computers cannot learn anything...
Deploying machine learning (ML) models to production with the same level of rigor and automation as ...
MLModelCI provides multimedia researchers and developers with a one-stop platform for efficient mac...
The use of machine learning (ML) as a key technology in artificial intelligence (AI) is becoming mor...
This chapter discusses how to build production-ready machine learning systems. There are several cha...