PUNCHLunches

Massive parallelism for the Numpy/PyTorch ecosystem with Heat

by Claudia Comito (Forschungszentrum Jülich, Jülich Supercomputing Centre)

Europe/Berlin
Description

 

When it comes to enhancing exploitation of massive data, machine learning and AI methods are very much at the forefront of our awareness. Much less so is the need for, and complexity of, applying these techniques efficiently across memory-distributed data volumes.

Heat 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. Heat's Numpy-like API makes writing scalable, GPU-accelerated applications straightforward - at the same time, parallelism implemented under the hood via MPI provides a significant improvement in efficiency and performance with respect to, e.g., Dask.

Born out of a large-scale collaboration in applied sciences, Heat also acts a platform for collaboration and knowledge transfer within data-intensive science. In this presentation, I will show you the inner workings of the library, tell you about our collaborations with the astrophysics and space science community, and hopefully gain from you some insight into how to best support data-intensive research going forward.

 

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Connection details:
ZOOM Meeting “PUNCHLunch seminar”:

https://desy.zoom.us/j/91916654877
Webinar ID: 919 1665 4877, passcode: 481572