In a world with an ever-increasing amount of data processed, providing tools for highquality and fast data processing is imperative. Database Management Systems (DBMSs) are complex adaptive systems supplying reliable and fast data analysis and storage capabilities. To boost the usability of DBMSs even further, a core research area of databases is performance optimization, especially for query processing. With the successful application of Artificial Intelligence (AI) and Machine Learning (ML) in other research areas, the question arises in the database community if ML can also be beneficial for better data processing in DBMSs. This question has spawned various works successfully replacing DBMS components with ML models. However, these globa...
Cardinality estimation is a fundamental task in database query processing and optimization. Unfortun...
Machine learning algorithms are used to train the machine to learn on its own and improve from exper...
An approach is presented to learning high dimensional functions in the case where the learning algor...
International audienceWith the emergence of machine learning (ML) techniques in database research, M...
In recent years, we have seen increased interest in applying machine learning to system problems. Fo...
Query optimization is crucial for any data management system to achieve good performance. Recent adv...
While databases are the backbone of many software systems, database components such as query optimiz...
In this paper, we propose a new approach for apply-ing data mining techniques, and more particularly...
The typical approach for learned DBMS components is to capture the behavior by running a representat...
We propose in this paper a new approach for applying data mining al-gorithms, and more particularly ...
Data management tasks and techniques can be observed in a variety of real world scenarios, including...
In this talk, I will make the case for a first-principles approach to machine learning over relation...
Local learning employs locality adjusting mechanisms to give local function estimation for each quer...
We consider the problem of computing machine learning models over multi-relational databases. The ma...
In many areas of daily life (e.g. in e-commerce or social networks), massive amounts of data are col...
Cardinality estimation is a fundamental task in database query processing and optimization. Unfortun...
Machine learning algorithms are used to train the machine to learn on its own and improve from exper...
An approach is presented to learning high dimensional functions in the case where the learning algor...
International audienceWith the emergence of machine learning (ML) techniques in database research, M...
In recent years, we have seen increased interest in applying machine learning to system problems. Fo...
Query optimization is crucial for any data management system to achieve good performance. Recent adv...
While databases are the backbone of many software systems, database components such as query optimiz...
In this paper, we propose a new approach for apply-ing data mining techniques, and more particularly...
The typical approach for learned DBMS components is to capture the behavior by running a representat...
We propose in this paper a new approach for applying data mining al-gorithms, and more particularly ...
Data management tasks and techniques can be observed in a variety of real world scenarios, including...
In this talk, I will make the case for a first-principles approach to machine learning over relation...
Local learning employs locality adjusting mechanisms to give local function estimation for each quer...
We consider the problem of computing machine learning models over multi-relational databases. The ma...
In many areas of daily life (e.g. in e-commerce or social networks), massive amounts of data are col...
Cardinality estimation is a fundamental task in database query processing and optimization. Unfortun...
Machine learning algorithms are used to train the machine to learn on its own and improve from exper...
An approach is presented to learning high dimensional functions in the case where the learning algor...