In this paper, we introduce XPySom, a new opensource Python implementation of the well-known Self-Organizing Maps (SOM) technique. It is designed to achieve high performance on a single node, exploiting widely available Python libraries for vector processing on multi-core CPUs and GP-GPUs. We present results from an extensive experimental evaluation of XPySom in comparison to widely used open-source SOM implementations, showing that it outperforms the other available alternatives. Indeed, our experimentation carried out using the Extended MNIST open data set shows a speed-up of about 7x and 100x when compared to the best open-source multi-core implementations we could find with multi-core and GP-GPU acceleration, respectively, achieving the...
Cluster Computing is based on the concept that an application can be divided into smaller subtasks w...
One of the fastest growing and the most demanding areas of computer science is Machine Learning (ML)...
International audienceThis paper presents CSOM, a Cellular Self-Organising Map which performs weight...
In this paper, we introduce XPySom, a new open-source Python implementation of the well-known Self-O...
somoclu is a massively parallel tool for training self-organizing maps on large data sets written in...
This dissertation presents the culmination of research performed over six years into developing a pa...
The capability for understanding data passes through the ability of producing an effective and fast ...
This paper presents a highly parallel implementation of a\ud new type of Self-Organising Map (SOM) u...
The Self-Organizing Map (SOM) is a vector quantization method which places the prototype vectors on ...
Here we introduce VSOM, an efficient implementation of stochastic training for self-organizing maps....
In this paper we introduce a MapReduce-based implementation of self-organizing maps that performs co...
This paper presents a highly parallel implementation of a new type of Self-Organising Map (SOM) usin...
In this paper, we propose an enhanced parallel Self organizing Map (SOM) framework based on heteroge...
This paper proposes an efficient self-organizing map algorithm based on reference point and filters....
AbstractThe self-organizing map (SOM) methodology does vector quantization and clustering on the dat...
Cluster Computing is based on the concept that an application can be divided into smaller subtasks w...
One of the fastest growing and the most demanding areas of computer science is Machine Learning (ML)...
International audienceThis paper presents CSOM, a Cellular Self-Organising Map which performs weight...
In this paper, we introduce XPySom, a new open-source Python implementation of the well-known Self-O...
somoclu is a massively parallel tool for training self-organizing maps on large data sets written in...
This dissertation presents the culmination of research performed over six years into developing a pa...
The capability for understanding data passes through the ability of producing an effective and fast ...
This paper presents a highly parallel implementation of a\ud new type of Self-Organising Map (SOM) u...
The Self-Organizing Map (SOM) is a vector quantization method which places the prototype vectors on ...
Here we introduce VSOM, an efficient implementation of stochastic training for self-organizing maps....
In this paper we introduce a MapReduce-based implementation of self-organizing maps that performs co...
This paper presents a highly parallel implementation of a new type of Self-Organising Map (SOM) usin...
In this paper, we propose an enhanced parallel Self organizing Map (SOM) framework based on heteroge...
This paper proposes an efficient self-organizing map algorithm based on reference point and filters....
AbstractThe self-organizing map (SOM) methodology does vector quantization and clustering on the dat...
Cluster Computing is based on the concept that an application can be divided into smaller subtasks w...
One of the fastest growing and the most demanding areas of computer science is Machine Learning (ML)...
International audienceThis paper presents CSOM, a Cellular Self-Organising Map which performs weight...