Nowadays, machine learning projects have become more and more relevant to various real-world use cases. The success of complex Neural Network models depends upon many factors, as the requirement for structured and machine learning-centric project development management arises. Due to the multitude of tools available for different operational phases, responsibilities and requirements become more and more unclear. In this work, Machine Learning Operations (MLOps) technologies and tools for every part of the overall project pipeline, as well as involved roles, are examined and clearly defined. With the focus on the inter-connectivity of specific tools and comparison by well-selected requirements of MLOps, model performance, input data, and sys...
Background. Since the rise of Machine Learning, the automation of software development has been a de...
In the last decade, the development of software based on artificial intelligence has increased expon...
Deploying machine learning (ML) models to production with the same level of rigor and automation as ...
Nowadays, machine learning projects have become more and more relevant to various real-world use cas...
Over the past few decades, the substantial growth in enterprise-data availability and the advancemen...
The adoption of continuous software engineering practices such as DevOps (Development and Operations...
The EXPLAIN project (EXPLanatory interactive Artificial intelligence for INdustry) aims at enabling ...
With the evolution of algorithms and solutions in the artificial intelligence field, new and modern ...
This chapter discusses how to build production-ready machine learning systems. There are several cha...
MLOps is a very recent approach aimed at reducing the time to get a Machine Learning model in produc...
MLOps have become an increasingly important topic in the deployment of machine learning in productio...
Developing machine learning (ML) models can be seen as a process similar to the one established for ...
The maturing capabilities of Artificial Intelligence (AI) and Machine Learning (ML) have resulted in...
ABSTRACTQuite recently, considerable attention has been paid to developingartificial intelligence an...
In many machine learning projects, the lack of an effective monitoring system is a worrying issue. T...
Background. Since the rise of Machine Learning, the automation of software development has been a de...
In the last decade, the development of software based on artificial intelligence has increased expon...
Deploying machine learning (ML) models to production with the same level of rigor and automation as ...
Nowadays, machine learning projects have become more and more relevant to various real-world use cas...
Over the past few decades, the substantial growth in enterprise-data availability and the advancemen...
The adoption of continuous software engineering practices such as DevOps (Development and Operations...
The EXPLAIN project (EXPLanatory interactive Artificial intelligence for INdustry) aims at enabling ...
With the evolution of algorithms and solutions in the artificial intelligence field, new and modern ...
This chapter discusses how to build production-ready machine learning systems. There are several cha...
MLOps is a very recent approach aimed at reducing the time to get a Machine Learning model in produc...
MLOps have become an increasingly important topic in the deployment of machine learning in productio...
Developing machine learning (ML) models can be seen as a process similar to the one established for ...
The maturing capabilities of Artificial Intelligence (AI) and Machine Learning (ML) have resulted in...
ABSTRACTQuite recently, considerable attention has been paid to developingartificial intelligence an...
In many machine learning projects, the lack of an effective monitoring system is a worrying issue. T...
Background. Since the rise of Machine Learning, the automation of software development has been a de...
In the last decade, the development of software based on artificial intelligence has increased expon...
Deploying machine learning (ML) models to production with the same level of rigor and automation as ...