The adoption of continuous software engineering practices such as DevOps (Development and Operations) in business operations has contributed to significantly shorter software development and deployment cycles. Recently, the term MLOps (Machine Learning Operations) has gained increasing interest as a practice that brings together data scientists and operations teams. However, the adoption of MLOps in practice is still in its infancy and there are few common guidelines on how to effectively integrate it into existing software development practices. In this paper, we conduct a systematic literature review and a grey literature review to derive a framework that identifies the activities involved in the adoption of MLOps and the stages in which ...
Context: With the advent of Machine Learning (ML) and especially Deep Learning (DL) technology, comp...
With the fast transition in technology, creative organizations are fuelling the customer experience ...
Deploying machine learning (ML) models to production with the same level of rigor and automation as ...
Over the past few decades, the substantial growth in enterprise-data availability and the advancemen...
This chapter discusses how to build production-ready machine learning systems. There are several cha...
Nowadays, machine learning projects have become more and more relevant to various real-world use cas...
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 ...
MLOps have become an increasingly important topic in the deployment of machine learning in productio...
Organizations increasingly use machine learning (ML) to transform their operations. The technical co...
MLOps is a very recent approach aimed at reducing the time to get a Machine Learning model in produc...
In the last decade, the development of software based on artificial intelligence has increased expon...
Machine Learning (ML) has grown in popularity in the software industry due to its ability to solve c...
ABSTRACTQuite recently, considerable attention has been paid to developingartificial intelligence an...
Background. Since the rise of Machine Learning, the automation of software development has been a de...
Context: With the advent of Machine Learning (ML) and especially Deep Learning (DL) technology, comp...
With the fast transition in technology, creative organizations are fuelling the customer experience ...
Deploying machine learning (ML) models to production with the same level of rigor and automation as ...
Over the past few decades, the substantial growth in enterprise-data availability and the advancemen...
This chapter discusses how to build production-ready machine learning systems. There are several cha...
Nowadays, machine learning projects have become more and more relevant to various real-world use cas...
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 ...
MLOps have become an increasingly important topic in the deployment of machine learning in productio...
Organizations increasingly use machine learning (ML) to transform their operations. The technical co...
MLOps is a very recent approach aimed at reducing the time to get a Machine Learning model in produc...
In the last decade, the development of software based on artificial intelligence has increased expon...
Machine Learning (ML) has grown in popularity in the software industry due to its ability to solve c...
ABSTRACTQuite recently, considerable attention has been paid to developingartificial intelligence an...
Background. Since the rise of Machine Learning, the automation of software development has been a de...
Context: With the advent of Machine Learning (ML) and especially Deep Learning (DL) technology, comp...
With the fast transition in technology, creative organizations are fuelling the customer experience ...
Deploying machine learning (ML) models to production with the same level of rigor and automation as ...