In order to cope with the exponential growth in available data, the efficiency of data analysis and machine learning libraries have recently received increased attention. Although corresponding array-based numerical kernels have been significantly improved, most are limited by the resources available on a single computational node. Consequently, kernels must exploit distributed resources, e.g., distributed memory architectures. To this end, we introduce HeAT, an array-based numerical programming framework for large-scale parallel processing with an easy-to-use NumPy-like API. HeAT utilizes PyTorch as a node-local eager execution engine and distributes the workload via MPI on arbitrarily large high-performance computing systems. It provides ...
This release includes many important updates (see below). We particularly would like to thank our en...
140 pagesTensor algebra lives at the heart of big data applications. Where classical machine learnin...
Computational intensive applications such as pattern recognition, and natural language processing, a...
To cope with the rapid growth in available data, the efficiency of data analysis and machine learnin...
To cope with the rapid growth in available data, the efficiency of data analysis and machine learnin...
To cope with the rapid growth in available data, theefficiency of data analysis and machine learning...
Born out of a large-scale collaboration in applied sciences, Heat [1, 2] is an open-source Python li...
This work introduces the Helmholtz Analytics Toolkit (HeAT), a scientific big data analytics library...
When it comes to enhancing exploitation of massive data, machine learning and AI methods are very mu...
We present the Helmholtz Analytics Toolkit (HeAT), a scientific big data analytics library for HPC s...
We present the Helmholtz Analytics Toolkit (HeAT), a scientific big data analytics library for HPC s...
HeAT is a distributed tensor framework for high performance data analytics. The goal of HeAT is to f...
We present HeAT, a scientific big data librarysupporting transparent computation on HPC systems. HeA...
When it comes to enhancing exploitation of massive data, machine learning methods are at the forefro...
The HeAT v0.4.0 release is now available. We are striving to be as NumPy-API-compatible as possible ...
This release includes many important updates (see below). We particularly would like to thank our en...
140 pagesTensor algebra lives at the heart of big data applications. Where classical machine learnin...
Computational intensive applications such as pattern recognition, and natural language processing, a...
To cope with the rapid growth in available data, the efficiency of data analysis and machine learnin...
To cope with the rapid growth in available data, the efficiency of data analysis and machine learnin...
To cope with the rapid growth in available data, theefficiency of data analysis and machine learning...
Born out of a large-scale collaboration in applied sciences, Heat [1, 2] is an open-source Python li...
This work introduces the Helmholtz Analytics Toolkit (HeAT), a scientific big data analytics library...
When it comes to enhancing exploitation of massive data, machine learning and AI methods are very mu...
We present the Helmholtz Analytics Toolkit (HeAT), a scientific big data analytics library for HPC s...
We present the Helmholtz Analytics Toolkit (HeAT), a scientific big data analytics library for HPC s...
HeAT is a distributed tensor framework for high performance data analytics. The goal of HeAT is to f...
We present HeAT, a scientific big data librarysupporting transparent computation on HPC systems. HeA...
When it comes to enhancing exploitation of massive data, machine learning methods are at the forefro...
The HeAT v0.4.0 release is now available. We are striving to be as NumPy-API-compatible as possible ...
This release includes many important updates (see below). We particularly would like to thank our en...
140 pagesTensor algebra lives at the heart of big data applications. Where classical machine learnin...
Computational intensive applications such as pattern recognition, and natural language processing, a...