© 2020 ACM. Recent research has shown that learned models can outperform state-of-the-art index structures in size and lookup performance. While this is a very promising result, existing learned structures are often cumbersome to implement and are slow to build. In fact, most approaches that we are aware of require multiple training passes over the data. We introduce RadixSpline (RS), a learned index that can be built in a single pass over the data and is competitive with state-of-the-art learned index models, like RMI, in size and lookup performance. We evaluate RS using the SOSD benchmark and show that it achieves competitive results on all datasets, despite the fact that it only has two parameters
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...
Single Index Models (SIMs) are simple yet flexible semi-parametric models for machine learning, wher...
© 2020 ACM. Recent research has shown that learned models can outperform state-of-the-art index stru...
Within the field of machine learning for systems, learning-based methods have brought new perspectiv...
© 2020, VLDB Endowment. All rights reserved. Recent advancements in learned index structures propose...
Machine Learning Techniques, properly combined with Data Structures, have resulted in Learned Static...
© 2020 Association for Computing Machinery. Recent work on "learned indexes" has changed the way we ...
Recently, numerous promising results have shown that updatable learned indexes can perform better th...
We present the first learned index that supports predecessor, range queries and updates within prova...
A recent trend in algorithm design consists of augmenting classic data structures with machine learn...
© 2021 Shi HaozhanSpatial indexes such as R-Tree are widely used for managing spatial objects data e...
© 2018 Association for Computing Machinery. Indexes are models: a B-Tree-Index can be seen as a mode...
ABSTRACT: Efficient learning and categorization in the face of myriad categories and instances is an...
Learned indexes have been proposed to replace classic index structures like B-Tree with machine lear...
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...
Single Index Models (SIMs) are simple yet flexible semi-parametric models for machine learning, wher...
© 2020 ACM. Recent research has shown that learned models can outperform state-of-the-art index stru...
Within the field of machine learning for systems, learning-based methods have brought new perspectiv...
© 2020, VLDB Endowment. All rights reserved. Recent advancements in learned index structures propose...
Machine Learning Techniques, properly combined with Data Structures, have resulted in Learned Static...
© 2020 Association for Computing Machinery. Recent work on "learned indexes" has changed the way we ...
Recently, numerous promising results have shown that updatable learned indexes can perform better th...
We present the first learned index that supports predecessor, range queries and updates within prova...
A recent trend in algorithm design consists of augmenting classic data structures with machine learn...
© 2021 Shi HaozhanSpatial indexes such as R-Tree are widely used for managing spatial objects data e...
© 2018 Association for Computing Machinery. Indexes are models: a B-Tree-Index can be seen as a mode...
ABSTRACT: Efficient learning and categorization in the face of myriad categories and instances is an...
Learned indexes have been proposed to replace classic index structures like B-Tree with machine lear...
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...
Single Index Models (SIMs) are simple yet flexible semi-parametric models for machine learning, wher...