Загрузка страницы

Vasily Bulatov - What are we going to do with data generated in exascale simulations? - IPAM at UCLA

Recorded 31 March 2023. Vasily V. Bulatov of Lawrence Livermore National Lab presents "A growing challenge: what are we going to do with data generated in exascale simulations?" at IPAM's Increasing the Length, Time, and Accuracy of Materials Modeling Using Exascale Computing workshop.
Abstract: Looking back at the development of multi-scale simulation methods over the last 30 years, one observes that, at least in a narrow sub-domain of simulation sciences focused on materials under extreme conditions, smart multi-scale methods we have worked on so enthusiastically over the years are yet to prove truly enabling. Moreover, where previously existed a wide scale gap between fully atomistic and meso-scale simulations, the same gap has been steadily narrowing or has closed in a number of simulation contexts owing to the ever growing computational capabilities. Where already feasible, direct MD simulations of materials are superseding multi-scale simulations, a trend likely to continue into the next “exascale decade”. This brings new opportunities and new challenges. As an opportunity, MD and mesoscale simulations performed on the same length- and time-scales and under identical conditions expose behaviors and mechanisms present in a fully resolved atomistic simulation yet missing or incorrectly accounted for in a counterpart mesoscale simulation, a practice we refer to as cross-scale (X-scale) comparison and matching. At the same time, atomistic simulations generate enormous amounts of trajectory data, e.g. a few googles of data in just one simulation day on Sierra pre-exascale supercomputer. Recording and storing such data streams far exceeds present state-of-the art I/O and disk capacities resulting in an irrevocable loss of nearly all of the potentially informative trajectory data. And when indeed recorded, even a tiny subset of the trajectory data can be overwhelmingly large for post-processing. Can we – humans and/or machines – meaningfully learn from exascale data streams?
Learn more online at: http://www.ipam.ucla.edu/programs/workshops/workshop-i-increasing-the-length-time-and-accuracy-of-materials-modeling-using-exascale-computing/

Видео Vasily Bulatov - What are we going to do with data generated in exascale simulations? - IPAM at UCLA канала Institute for Pure & Applied Mathematics (IPAM)
Показать
Комментарии отсутствуют
Введите заголовок:

Введите адрес ссылки:

Введите адрес видео с YouTube:

Зарегистрируйтесь или войдите с
Информация о видео
31 марта 2023 г. 22:35:19
00:43:50
Другие видео канала
Osbert Bastani - Interpretable Machine Learning via Program Synthesis - IPAM at UCLAOsbert Bastani - Interpretable Machine Learning via Program Synthesis - IPAM at UCLAJaafar El-Awady - dislocation in high thermomechanical condition in Additive Manufacturing of AlloysJaafar El-Awady - dislocation in high thermomechanical condition in Additive Manufacturing of AlloysVikram Gavini - Fast, Accurate and Large-scale Ab-initio Calculations for Materials ModelingVikram Gavini - Fast, Accurate and Large-scale Ab-initio Calculations for Materials ModelingBistra Dilkina - Machine Learning for MIP Solving - IPAM at UCLABistra Dilkina - Machine Learning for MIP Solving - IPAM at UCLAAmit Acharya - Slow time-scale behavior of fast microscopic dynamics - IPAM at UCLAAmit Acharya - Slow time-scale behavior of fast microscopic dynamics - IPAM at UCLAEran Rabani - Stochastic Density Functional Theory - IPAM at UCLAEran Rabani - Stochastic Density Functional Theory - IPAM at UCLAXavier Bresson - Learning to Untangle Genome Assembly Graphs - IPAM at UCLAXavier Bresson - Learning to Untangle Genome Assembly Graphs - IPAM at UCLALiming Xiong - Prediction of Microstructure Evolution in Plastically Deformed Heterogeneous AlloysLiming Xiong - Prediction of Microstructure Evolution in Plastically Deformed Heterogeneous AlloysJonathan Katz - Introduction to Cryptography Part 2 of 3 - IPAM at UCLAJonathan Katz - Introduction to Cryptography Part 2 of 3 - IPAM at UCLAReinhold Schneider - Multi-Reference Coupled Cluster for Computation of Excited States & TensorsReinhold Schneider - Multi-Reference Coupled Cluster for Computation of Excited States & TensorsSteve White - Model reduction using localized bases and DMRG - IPAM at UCLASteve White - Model reduction using localized bases and DMRG - IPAM at UCLAJack Gilbert: "Microbiome of the Built Environment"Jack Gilbert: "Microbiome of the Built Environment"John Harrison - Formalization and Automated Reasoning: A Personal and Historical PerspectiveJohn Harrison - Formalization and Automated Reasoning: A Personal and Historical PerspectiveGarnet Chan - Lattice models and ab initio descriptions of correlated materials - IPAM at UCLAGarnet Chan - Lattice models and ab initio descriptions of correlated materials - IPAM at UCLAJan Hermann - Neural-network wave functions for quantum chemistry - IPAM at UCLAJan Hermann - Neural-network wave functions for quantum chemistry - IPAM at UCLAAmartya Banerjee - Electronic Structure Calculations of Chiral Matter - IPAM at UCLAAmartya Banerjee - Electronic Structure Calculations of Chiral Matter - IPAM at UCLACombinatorics & Community - Igor Pak of UCLA MathematicsCombinatorics & Community - Igor Pak of UCLA MathematicsRose Yu - Incorporating Symmetry for Learning Spatiotemporal Dynamics - IPAM at UCLARose Yu - Incorporating Symmetry for Learning Spatiotemporal Dynamics - IPAM at UCLAYongsoo Yang - Neural network-assisted atomic electron tomography - IPAM at UCLAYongsoo Yang - Neural network-assisted atomic electron tomography - IPAM at UCLAMargaret Murnane - Attosecond Quantum Technologies for Advanced Materials Metrologies - IPAM at UCLAMargaret Murnane - Attosecond Quantum Technologies for Advanced Materials Metrologies - IPAM at UCLAAlbert Fannjiang - From Tomographic Phase Retrieval to Projection Tomography - IPAM at UCLAAlbert Fannjiang - From Tomographic Phase Retrieval to Projection Tomography - IPAM at UCLA
Яндекс.Метрика