The new area of Learned Data Structures consists of mixing Machine Learning techniques with those specific to Data Structures, with the purpose to achieve time/space gains in the performance of those latter. The perceived paradigm shift in computer architectures, that would favor the employment of graphics/tensor units over traditional central processing units, is one of the driving forces behind this new area. The advent of the corresponding branch-free programming paradigm would then favor the adoption of Neural Networks as the fundamental units of Classic Data Structures. This is the case of Learned Bloom Filters. The equally important field of Learned Indexes does not appear to make use of Neural Networks at all. In this paper, we offer...
Artificial Neural Networks (ANN) are currently exploited in many scientific domains. They had shown...
This paper examines the history and current state of machine learning. It examines neural networks, ...
Artificial Neural Networks (ANN) are currently exploited in many scientific domains. They had shown ...
With the aim of obtaining time/space improvements in classic Data Structures, an emerging trend is t...
Index structures such as B-trees and bloom filters are the well-established petrol engines of databa...
In this paper we present a modified neural network architecture and an algorithm that enables neural...
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...
One of the mathematical cornerstones of modern data ana- lytics is machine learning whereby we autom...
As information retrieval researchers, we not only develop algorithmic solutions to hard problems, bu...
With the growing emphasis on autonomy, intelligence and an increased amount of information required ...
Abstract: “Data Rich and Information Poor ” is the tagline on which the field Data Mining is based o...
In recent years, in the era of Big Data, studying new methods to improve the performance of well-kno...
This thesis was submitted for the degree of Doctor of Philosophy and awarded by Brunel University.Th...
Artificial Neural Networks (ANN) are currently exploited in many scientific domains. They had shown...
This paper examines the history and current state of machine learning. It examines neural networks, ...
Artificial Neural Networks (ANN) are currently exploited in many scientific domains. They had shown ...
With the aim of obtaining time/space improvements in classic Data Structures, an emerging trend is t...
Index structures such as B-trees and bloom filters are the well-established petrol engines of databa...
In this paper we present a modified neural network architecture and an algorithm that enables neural...
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...
One of the mathematical cornerstones of modern data ana- lytics is machine learning whereby we autom...
As information retrieval researchers, we not only develop algorithmic solutions to hard problems, bu...
With the growing emphasis on autonomy, intelligence and an increased amount of information required ...
Abstract: “Data Rich and Information Poor ” is the tagline on which the field Data Mining is based o...
In recent years, in the era of Big Data, studying new methods to improve the performance of well-kno...
This thesis was submitted for the degree of Doctor of Philosophy and awarded by Brunel University.Th...
Artificial Neural Networks (ANN) are currently exploited in many scientific domains. They had shown...
This paper examines the history and current state of machine learning. It examines neural networks, ...
Artificial Neural Networks (ANN) are currently exploited in many scientific domains. They had shown ...