A recent trend in algorithm design consists of augmenting classic data structures with machine learning models, which are better suited to reveal and exploit patterns and trends in the input data so to achieve outstanding practical improvements in space occupancy and time efficiency. This is especially known in the context of indexing data structures where, despite few attempts in evaluating their asymptotic efficiency, theoretical results are yet missing in showing that learned indexes are provably better than classic indexes, such as B+ -trees and their variants. In this paper, we present the first mathematically-grounded answer to this open problem. We obtain this result by discovering and exploiting a link between the original problem a...
We present the first learned index that supports predecessor, range queries and updates within prova...
With the aim of obtaining time/space improvements in classic Data Structures, an emerging trend is t...
ABSTRACT: Efficient learning and categorization in the face of myriad categories and instances is an...
A recent trend in algorithm design consists of augmenting classic data structures with machine learn...
A recent trend in algorithm design consists of augmenting classic data structures with machine learn...
A recent trend in algorithm design consists of augmenting classic data structures with machine learn...
© 2020, VLDB Endowment. All rights reserved. Recent advancements in learned index structures propose...
Index structures such as B-trees and bloom filters are the well-established petrol engines of databa...
© 2020 Association for Computing Machinery. Recent work on "learned indexes" has changed the way we ...
© 2018 Association for Computing Machinery. Indexes are models: a B-Tree-Index can be seen as a mode...
Machine-learning techniques, properly combined with data structures, have resulted in Learned Static...
Learned indexes, which use machine learning models to replace traditional index structures, have sho...
The new area of Learned Data Structures consists of mixing Machine Learning techniques with those sp...
Recently, numerous promising results have shown that updatable learned indexes can perform better th...
Machine Learning Techniques, properly combined with Data Structures, have resulted in Learned Static...
We present the first learned index that supports predecessor, range queries and updates within prova...
With the aim of obtaining time/space improvements in classic Data Structures, an emerging trend is t...
ABSTRACT: Efficient learning and categorization in the face of myriad categories and instances is an...
A recent trend in algorithm design consists of augmenting classic data structures with machine learn...
A recent trend in algorithm design consists of augmenting classic data structures with machine learn...
A recent trend in algorithm design consists of augmenting classic data structures with machine learn...
© 2020, VLDB Endowment. All rights reserved. Recent advancements in learned index structures propose...
Index structures such as B-trees and bloom filters are the well-established petrol engines of databa...
© 2020 Association for Computing Machinery. Recent work on "learned indexes" has changed the way we ...
© 2018 Association for Computing Machinery. Indexes are models: a B-Tree-Index can be seen as a mode...
Machine-learning techniques, properly combined with data structures, have resulted in Learned Static...
Learned indexes, which use machine learning models to replace traditional index structures, have sho...
The new area of Learned Data Structures consists of mixing Machine Learning techniques with those sp...
Recently, numerous promising results have shown that updatable learned indexes can perform better th...
Machine Learning Techniques, properly combined with Data Structures, have resulted in Learned Static...
We present the first learned index that supports predecessor, range queries and updates within prova...
With the aim of obtaining time/space improvements in classic Data Structures, an emerging trend is t...
ABSTRACT: Efficient learning and categorization in the face of myriad categories and instances is an...