We present the first learned index that supports predecessor, range queries and updates within provably efficient time and space bounds in the worst case. In the (static) context of just predecessor and range queries these bounds turn out to be optimal. We call this learned index the Piecewise Geometric Model index (PGM-index). Its flexible design allows us to introduce three variants which are novel in the context of learned data structures. The first variant of the PGM-index is able to adapt itself to the distribution of the query operations, thus resulting in the first known distribution-aware learned index to date. The second variant exploits the repetitiveness possibly present at the level of the learned models that compose th...
In this paper we address the problem of building a compressed self-index that, given a distribution ...
Database cracking is a method to create partial indices as a side-effect of processing queries. Crac...
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...
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 ...
We design compressed persistent indices that store a bit vector of size n and support a sequence of ...
© 2020, VLDB Endowment. All rights reserved. Recent advancements in learned index structures propose...
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...
Interactive exploration of large volumes of data is increasingly common, as data scientists attempt ...
The explosion of big data poses a serious problem to the efficient retrieval and management of infor...
Workload-aware physical data access structures are crucial to achieve short response time with (expl...
Exploratory data analysis is the primary technique used by data scientists to extract knowledge from...
In this paper we address the problem of building a compressed self-index that, given a distribution ...
Database cracking is a method to create partial indices as a side-effect of processing queries. Crac...
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...
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 ...
We design compressed persistent indices that store a bit vector of size n and support a sequence of ...
© 2020, VLDB Endowment. All rights reserved. Recent advancements in learned index structures propose...
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...
Interactive exploration of large volumes of data is increasingly common, as data scientists attempt ...
The explosion of big data poses a serious problem to the efficient retrieval and management of infor...
Workload-aware physical data access structures are crucial to achieve short response time with (expl...
Exploratory data analysis is the primary technique used by data scientists to extract knowledge from...
In this paper we address the problem of building a compressed self-index that, given a distribution ...
Database cracking is a method to create partial indices as a side-effect of processing queries. Crac...
Recently, numerous promising results have shown that updatable learned indexes can perform better th...