Back to Table of contents

Primeur weekly 2018-09-03

Focus

Automation helps CERN manage Big Data with easy-to-install SAFE data centre modules ...

Exascale supercomputing

Deep learning to predict fusion disruptions picked for first US exascale system ...

Quantum computing

Qrypt licenses ORNL's quantum random number generator to fortify encryption methods ...

Focus on Europe

Partnership between University of Amsterdam IAS and TNO to get a grip on complexity ...

The I4MS Initiative launches the first Disruptor Awards Contest for the best experiments featuring digital transformation ...

Middleware

Data In Science Technologies deploys Bright Cluster Manager at HudsonAlpha to improve cluster efficiency and scalability ...

SDSC awarded a three-year NSF grant for data reproducibility research ...

Altair introduces a disruptive new licensing model for the solidThinking software suite ...

Hardware

DDN finalizing acquisition of Tintri, expert in enterprise virtualization ...

New Texas supercomputer to push the frontiers of science ...

Penguin Computing expanding capabilities with new production facility, customer demonstration lab, and briefing centre in Fremont headquarters ...

GlobalFoundries reshapes technology portfolio to intensify focus on growing demand for differentiated offerings ...

Texas Advanced Computing Center selects Mellanox HDR 200G InfiniBand to accelerate new large-scale supercomputer ...

Mellanox announces availability of 200G LinkX copper and optical cables and transceiver for Ethernet and HDR InfiniBand ...

Pittsburgh Supercomputing Center's Bridges supercomputer extended by National Science Foundation ...

Applications

Attacking aftershocks ...

RENCI to lead two $1 million grants to support data-intensive scientific research ...

National Science Foundation awards $4.9 million to protect U.S. scientific workflow ...

Manufacturing programme calls for proposals focused on challenges in steel and aluminum ...

University of Wisconsin-Madison and Argonne partner to further advanced manufacturing technologies and entrepreneurship ...

Study in which BSC participated suggests 2005 record of tropical cyclones in the Atlantic close to maximum possible ...

Russian scientists have increased the Internet speed up to one and a half times ...

Preparing for chemical attacks with improved computer models ...

2018 APAC HPC-AI Student Competition sharpens weather forecast accuracy and image recognition to deliver improved real-life results ...

OneClick.ai joins NVIDIA Inception programme ...

The Cloud

OpenStack bare metal Clouds, fast forward upgrades and hardware accelerators take centre stage in latest release, Rocky ...

Deep learning to predict fusion disruptions picked for first US exascale system


Deep learning leader William Tang. Credit: Elle Starkman/PPPL Office of Communications.
27 Aug 2018 Plainsboro - To capture and control the process of fusion that powers the sun and stars in facilities on Earth called tokamaks, scientists must confront disruptions that can halt the reactions and damage the doughnut-shaped devices. Now an artificial intelligence system under development at the U.S. Department of Energy's (DOE) Princeton Plasma Physics Laboratory (PPPL) and Princeton University to predict and tame such disruptions has been selected as an Aurora Early Science project by the Argonne Leadership Computing Facility, a DOE Office of Science User Facility.

The project, titled "Accelerated Deep Learning Discovery in Fusion Energy Science" is one of 10 Early Science Projects on data science and machine learning for the Aurora supercomputer, which is set to become the first U.S. exascale system upon its expected arrival at Argonne in 2021. The system will be capable of performing a quintillion (1018) calculations per second - 50-to-100 times faster than the most powerful supercomputers today.

Fusion combines light elements in the form of plasma - the hot, charged state of matter composed of free electrons and atomic nuclei - in reactions that generate massive amounts of energy. Scientists aim to replicate the process for a virtually inexhaustible supply of power to generate electricity.

The goal of the PPPL/Princeton University project is to develop a method that can be experimentally validated for predicting and controlling disruptions in burning plasma fusion systems such as ITER - the international tokamak under construction in France to demonstrate the practicality of fusion energy. "Burning plasma" refers to self-sustaining fusion reactions that will be essential for producing continuous fusion energy.

Heading the project will be William Tang, a principal research physicist at PPPL and a lecturer with the rank and title of professor in the Department of Astrophysical Sciences at Princeton University. "Our research will utilize capabilities to accelerate progress that can only come from the deep learning form of artificial intelligence", William Tang stated.

Deep learning, unlike other types of computational approaches, can be trained to solve with accuracy and speed highly complex problems that require realistic image resolution. Associated software consists of multiple layers of interconnected neural networks that are analogous to simple neurons in a brain. Each node in a network identifies a basic aspect of data that is fed into the system and passes the results along to other nodes that identify increasingly complex aspects of the data. The process continues until the desired output is achieved in a timely way.

The PPPL/Princeton deep-learning software is called the "Fusion Recurrent Neural Network (FRNN)", composed of convolutional and recurrent neural nets that allow a user to train a computer to detect items or events of interest. The software seeks to speedily predict when disruptions will break out in large-scale tokamak plasmas, and to do so in time for effective control methods to be deployed.

The project has greatly benefited from access to the huge disruption-relevant data base of the Joint European Torus (JET) in the United Kingdom, the largest and most powerful tokamak in the world today. The FRNN software has advanced from smaller computer clusters to supercomputing systems that can deal with such vast amounts of complex disruption-relevant data. Running the data aims to identify key pre-disruption conditions, guided by insights from first principles-based theoretical simulations, to enable the "supervised machine learning" capability of deep learning to produce accurate predictions with sufficient warning time.

The project has gained from access to Tiger, a high-performance Princeton University cluster equipped with advanced image-resolution GPUs that have enabled the deep learning software to advance to the Titan supercomputer at Oak Ridge National Laboratory and to powerful international systems such as the Tsubame-III supercomputer in Tokyo, Japan. The overall goal is to achieve the challenging requirements for ITER, which will need predictions to be 95 percent accurate with less than 5 percent false alarms at least 30 milliseconds or longer before disruptions occur.

The team will continue to build on advances that are currently supported by the DOE while preparing the FRNN software for Aurora exascale computing. The researchers will also move forward with related developments on the SUMMIT supercomputer at Oak Ridge.

Members of the team include Julian Kates-Harbeck, a graduate student at Harvard University and a DOE Office of Science Computational Science Graduate Fellow (CSGF) who is the chief architect of the FRNN. Researchers include Alexey Svyatkovskiy, a Big-Data, machine learning expert who will continue to collaborate after moving from Princeton University to Microsoft; Eliot Feibush, a Big Data analyst and computational scientist at PPPL and Princeton, and Kyle Felker, a CSGF member who will soon graduate from Princeton University and rejoin the FRNN team as a post-doctoral research fellow at Argonne National Laboratory.

Source: DOE/Princeton Plasma Physics Laboratory - PPPL

Back to Table of contents

Primeur weekly 2018-09-03

Focus

Automation helps CERN manage Big Data with easy-to-install SAFE data centre modules ...

Exascale supercomputing

Deep learning to predict fusion disruptions picked for first US exascale system ...

Quantum computing

Qrypt licenses ORNL's quantum random number generator to fortify encryption methods ...

Focus on Europe

Partnership between University of Amsterdam IAS and TNO to get a grip on complexity ...

The I4MS Initiative launches the first Disruptor Awards Contest for the best experiments featuring digital transformation ...

Middleware

Data In Science Technologies deploys Bright Cluster Manager at HudsonAlpha to improve cluster efficiency and scalability ...

SDSC awarded a three-year NSF grant for data reproducibility research ...

Altair introduces a disruptive new licensing model for the solidThinking software suite ...

Hardware

DDN finalizing acquisition of Tintri, expert in enterprise virtualization ...

New Texas supercomputer to push the frontiers of science ...

Penguin Computing expanding capabilities with new production facility, customer demonstration lab, and briefing centre in Fremont headquarters ...

GlobalFoundries reshapes technology portfolio to intensify focus on growing demand for differentiated offerings ...

Texas Advanced Computing Center selects Mellanox HDR 200G InfiniBand to accelerate new large-scale supercomputer ...

Mellanox announces availability of 200G LinkX copper and optical cables and transceiver for Ethernet and HDR InfiniBand ...

Pittsburgh Supercomputing Center's Bridges supercomputer extended by National Science Foundation ...

Applications

Attacking aftershocks ...

RENCI to lead two $1 million grants to support data-intensive scientific research ...

National Science Foundation awards $4.9 million to protect U.S. scientific workflow ...

Manufacturing programme calls for proposals focused on challenges in steel and aluminum ...

University of Wisconsin-Madison and Argonne partner to further advanced manufacturing technologies and entrepreneurship ...

Study in which BSC participated suggests 2005 record of tropical cyclones in the Atlantic close to maximum possible ...

Russian scientists have increased the Internet speed up to one and a half times ...

Preparing for chemical attacks with improved computer models ...

2018 APAC HPC-AI Student Competition sharpens weather forecast accuracy and image recognition to deliver improved real-life results ...

OneClick.ai joins NVIDIA Inception programme ...

The Cloud

OpenStack bare metal Clouds, fast forward upgrades and hardware accelerators take centre stage in latest release, Rocky ...