Born out of a large-scale collaboration in applied sciences, Heat [1, 2] is an open-source Python library for high-performance data analytics, machine learning, and deep learning. It provides highly optimized algorithms and data structures for tensor computations using CPUs, GPUs and distributed cluster systems. Plus, with Heat, writing scalable scientific and data science applications is as straightforward as using NumPy. With as diverse a user base as, e.g., the Earth System Modeling, neuroscience, and aerospace research communities, Heat offers not only generalized solutions for data-intensive science, but also a platform for ever-expanding cross-discipline collaborations and knowledge transfer. We look forward to many interactions and ...
The HeAT v0.4.0 release is now available. We are striving to be as NumPy-API-compatible as possible ...
The rapidly-developing intersection of machine learning (ML) with high-energy physics (HEP) presents...
The use of computational algorithms, implemented on a computer, to extract information from data has...
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...
HeAT is a distributed tensor framework for high performance data analytics. The goal of HeAT is to f...
To cope with the rapid growth in available data, theefficiency of data analysis and machine learning...
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...
We present the Helmholtz Analytics Toolkit (HeAT), a scientific big data analytics library for HPC s...
This talk presents the Helmholtz Analytics Toolkit (HeAT), a HPC data analytics library for scientif...
This work introduces the Helmholtz Analytics Toolkit (HeAT), a scientific big data analytics library...
This repository contains data, code, and related artefacts supporting the following publication: "H...
Release Notes Heat v1.0 comes with some major updates: new module nn for data-parallel neural netwo...
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 ...
The rapidly-developing intersection of machine learning (ML) with high-energy physics (HEP) presents...
The use of computational algorithms, implemented on a computer, to extract information from data has...
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...
HeAT is a distributed tensor framework for high performance data analytics. The goal of HeAT is to f...
To cope with the rapid growth in available data, theefficiency of data analysis and machine learning...
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...
We present the Helmholtz Analytics Toolkit (HeAT), a scientific big data analytics library for HPC s...
This talk presents the Helmholtz Analytics Toolkit (HeAT), a HPC data analytics library for scientif...
This work introduces the Helmholtz Analytics Toolkit (HeAT), a scientific big data analytics library...
This repository contains data, code, and related artefacts supporting the following publication: "H...
Release Notes Heat v1.0 comes with some major updates: new module nn for data-parallel neural netwo...
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 ...
The rapidly-developing intersection of machine learning (ML) with high-energy physics (HEP) presents...
The use of computational algorithms, implemented on a computer, to extract information from data has...