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Focused Forecasts: Attention maps for large-scale model understanding in the AtmoRep project

<!--HTML-->The interpretability of machine learning models remains a critical yet elusive aspect of contemporary computational science. In this presentation, I specifically explore the interpretability of machine learning algorithms by applying self-attention maps to the AtmoRep large-scale we...

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Autor principal: Hidary, David
Lenguaje:eng
Publicado: 2023
Materias:
Acceso en línea:http://cds.cern.ch/record/2867767
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author Hidary, David
author_facet Hidary, David
author_sort Hidary, David
collection CERN
description <!--HTML-->The interpretability of machine learning models remains a critical yet elusive aspect of contemporary computational science. In this presentation, I specifically explore the interpretability of machine learning algorithms by applying self-attention maps to the AtmoRep large-scale weather prediction model. By leveraging self-attention mechanisms, I present a method to analyze the internal structure and dependencies within the model's layers. This technique enables me to interpret the intricate relationships between meteorological variables and the resultant predictions. The application of self-attention maps presents an essential step towards a more transparent and scientifically rigorous approach to interpreting large-scale weather modeling, offering potential implications for advancements in climate science and meteorological forecasting. Relevant buzzwords: AI, ML, HPC, Cloud Computing, Transformer, All You Need, Digital Twin, Computer Vision, Big Data Irrelevant buzzwords: Blockchain, IOT, VR, AR, Quantum Computing, QML, FCC, Exascale, NLP, Beyond the Standard Model
id cern-2867767
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2023
record_format invenio
spelling cern-28677672023-08-17T19:45:03Zhttp://cds.cern.ch/record/2867767engHidary, DavidFocused Forecasts: Attention maps for large-scale model understanding in the AtmoRep projectCERN openlab Summer Student Lightning Talks (1/2)CERN openlab Summer Student Programme 2023<!--HTML-->The interpretability of machine learning models remains a critical yet elusive aspect of contemporary computational science. In this presentation, I specifically explore the interpretability of machine learning algorithms by applying self-attention maps to the AtmoRep large-scale weather prediction model. By leveraging self-attention mechanisms, I present a method to analyze the internal structure and dependencies within the model's layers. This technique enables me to interpret the intricate relationships between meteorological variables and the resultant predictions. The application of self-attention maps presents an essential step towards a more transparent and scientifically rigorous approach to interpreting large-scale weather modeling, offering potential implications for advancements in climate science and meteorological forecasting. Relevant buzzwords: AI, ML, HPC, Cloud Computing, Transformer, All You Need, Digital Twin, Computer Vision, Big Data Irrelevant buzzwords: Blockchain, IOT, VR, AR, Quantum Computing, QML, FCC, Exascale, NLP, Beyond the Standard Modeloai:cds.cern.ch:28677672023
spellingShingle CERN openlab Summer Student Programme 2023
Hidary, David
Focused Forecasts: Attention maps for large-scale model understanding in the AtmoRep project
title Focused Forecasts: Attention maps for large-scale model understanding in the AtmoRep project
title_full Focused Forecasts: Attention maps for large-scale model understanding in the AtmoRep project
title_fullStr Focused Forecasts: Attention maps for large-scale model understanding in the AtmoRep project
title_full_unstemmed Focused Forecasts: Attention maps for large-scale model understanding in the AtmoRep project
title_short Focused Forecasts: Attention maps for large-scale model understanding in the AtmoRep project
title_sort focused forecasts: attention maps for large-scale model understanding in the atmorep project
topic CERN openlab Summer Student Programme 2023
url http://cds.cern.ch/record/2867767
work_keys_str_mv AT hidarydavid focusedforecastsattentionmapsforlargescalemodelunderstandingintheatmorepproject
AT hidarydavid cernopenlabsummerstudentlightningtalks12