Difference between revisions of "Machine Learning in Geospace"
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+ | |||
+ | = GEM 2022 = | ||
+ | |||
+ | == Workshop Overview == | ||
+ | |||
+ | === What === | ||
+ | |||
+ | We are back for a third year organizing the Machine Learning in Geospace session at the GEM 2022 Workshop. This year, we have three sessions. One will be filled with invited and submitted talks, one will focus on tools and applications, and another will focus on connections to industry. | ||
+ | |||
+ | === Registration === | ||
+ | |||
+ | Register for the in-person workshop at [https://gemworkshop.org/pages/Registration.php GEM website]. Register for the virtual component through the [https://vgem.org/schedule#monday VGEM website] | ||
+ | |||
+ | === When === | ||
+ | |||
+ | The workshop begins on June 20 and ends on July 24. | ||
+ | |||
+ | {| class="wikitable" | ||
+ | |+ style="caption-side:bottom; text-align:left | Table 1: Workhop schedule. For more details see the [https://gemworkshop.org/pages/gem2022/gem2022schedule.php Workshop webpage] and [https://gem.epss.ucla.edu/mediawiki/index.php/Machine_Learning_in_Geospace#Agenda our agenda below]. | ||
+ | ! Event !! Date || Day || Time (Hawaii) | ||
+ | |- | ||
+ | | Student Day || June 19 || Sunday || 8:00 AM - 3:30 PM | ||
+ | |- | ||
+ | | GEM Workshop || June 20 - 24 || Monday - Friday || 8:00 AM - 5:00 PM + Posters & Events | ||
+ | |- | ||
+ | | ML Session I || June 23 || Thursday || 10:30 AM - 12:00 PM | ||
+ | |- | ||
+ | | ML Session II || June 23 || Thursday || 1:30 PM - 3:00 PM | ||
+ | |- | ||
+ | | ML Session III || June 24 || Friday || 1:30 PM - 3:00 PM | ||
+ | |} | ||
+ | |||
+ | === Who === | ||
+ | |||
+ | {| class="wikitable" | ||
+ | |+ style="caption-side:bottom; text-align:left | Table 2: Session organizers. *Student Organizers | ||
+ | ! Name !! !! Email | ||
+ | |- | ||
+ | | Matthew Argall || || [mailto:matthew.argall@unh.edu matthew.argall@unh.edu] | ||
+ | |- | ||
+ | | Jacob Bortnik || || [mailto:jbortnik@gmail.com jbortnik@gmail.com] | ||
+ | |- | ||
+ | | Wendy Carande || || [mailto:Wendy.Carande@lasp.colorado.edu Wendy.Carande@lasp.colorado.edu] | ||
+ | |- | ||
+ | | Doğa Ozturk || || [mailto:dsozturk@alaska.edu dsozturk@alaska.edu] | ||
+ | |- | ||
+ | | Josh Rigler || || [mailto:erigler@usgs.gov erigler@usgs.gov] | ||
+ | |- | ||
+ | | Jason Shuster || || [mailto:jason.r.shuster@nasa.gov jason.r.shuster@nasa.gov] | ||
+ | |- | ||
+ | | Brian Swiger* || || [mailto:swigerbr@umich.edu swigerbr@umich.edu] | ||
+ | |- | ||
+ | | Alexandra Wold* || || [mailto:Alexandra.Wold@colorado.edu Alexandra.Wold@colorado.edu] | ||
+ | |} | ||
+ | |||
+ | == Agenda == | ||
+ | |||
+ | === Session 1: Submitted Talks === | ||
+ | |||
+ | Submitted talks focus on applications of machine learning to research in geospace by the community. Talks will focus on the machine learning methodology in an educational sense. | ||
+ | |||
+ | {| class="wikitable" | ||
+ | |+ style="caption-side:bottom; text-align:left | Table 3: Speakers and presentation titles. | ||
+ | ! Duration || Name || Title | ||
+ | |- | ||
+ | | 6+3 min || Boris Kramer || Learning low-dimensional dynamical systems operators for advection-dominated solar wind models | ||
+ | |- | ||
+ | | 6+3 min || Xiangning Chu || Relativistic electron model in the outer radiation belt using a neural network approach | ||
+ | |- | ||
+ | | 6+3 min || Heidi Nykyri || Applications of Information Theory to Unravel the origin of the Energetic Electron Microinjections | ||
+ | |- | ||
+ | | 6+3 min || Matthew Blandin || Feature Importance: How a computer assesses our variables | ||
+ | |- | ||
+ | | 6+3 min || Anthony Sciola (Slava Merkin) || Ring Current Plasma Pressure Reconstructed from Data-mined Magnetometer Measurements Embedded Within a Global MHD Model | ||
+ | |- | ||
+ | | 6+3 min || Connor O'Brien || Neural Network Models of the Near-Earth Solar Wind and Magnetosheath | ||
+ | |- | ||
+ | | 6+3 min || Andy Edmond || Unsupervised Clustering of Magnetospheric Dayside Data | ||
+ | |- | ||
+ | | 6+3 min || Xin Cao || The Response of Equivalent Ionospheric Currents to the External Drivers via Machine Learning | ||
+ | |- | ||
+ | | 6+3 min || Donglai Ma || Modeling the dynamic variability of sub-relativistic outer radiation belt electron fluxes using machine learning. | ||
+ | |- | ||
+ | | 6+3 min || Jinxing Li || Modeling Ring Current Proton Fluxes Using Machine Learning and Van Allen Probe Measurements | ||
+ | |- | ||
+ | | || || Open Discussion | ||
+ | |} | ||
+ | |||
+ | === Session 2: Tutorials and Talks === | ||
+ | |||
+ | Tutorials will walk through topics on machine learning methods as applied to research. When possible, Jupyter Notebooks based on the tutorial will be made available to attendees for adaptation to their own research goals. | ||
+ | |||
+ | {| class="wikitable" | ||
+ | |+ style="caption-side:bottom; text-align:left | Table 3: Speakers and presentation titles. | ||
+ | ! Duration || Name || Title | ||
+ | |- | ||
+ | | 15 min || Wendy Carande || Tutorial: Data science competitions and machine learning pitfalls | ||
+ | |- | ||
+ | | 25 min || Ben Winjum || Tutorial: Docker & Datashader | ||
+ | |- | ||
+ | | 15 min || Vishal Upendran || Tutorial: Spherical Harmonics | ||
+ | |- | ||
+ | | 6+3 min || Adam Kellerman || A machine-learning model of electron phase-space density in Earth's radiation belts | ||
+ | |- | ||
+ | | 6+3 min || Izzak Boucher || Global model of the electric potential using regularized linear regression and neural networks | ||
+ | |- | ||
+ | | 6+3 min || Andong Hu || Multi-Hour-Ahead Magnetic Field Perturbations Prediction Using UQ-boost ML Methods and SuperMag data | ||
+ | |- | ||
+ | | 6+3 min || Hadeem Farooki (Hyomin Kim) || A machine learning approach to understanding the physical properties associated with magnetic flux ropes in the solar wind at 1 AU | ||
+ | |- | ||
+ | | || || Open Discussion | ||
+ | |} | ||
+ | |||
+ | === Session 3: Industry Panel & Social Mixer === | ||
+ | |||
+ | The Industry Panel discussions brings together several people who have made the jump from academia to industry. Discussion topics include tailoring resumes, the interview process, turning your ideas into a business, and general life in industry vs. academia. | ||
+ | |||
+ | |||
+ | {| class="wikitable" | ||
+ | |+ style="caption-side:bottom; text-align:left | Table 3: Speakers and presentation titles. | ||
+ | ! Duration || Panelist || Affiliation | ||
+ | |- | ||
+ | | 45 min || [https://gem.epss.ucla.edu/mediawiki/index.php/Machine_Learning_in_Geospace#Kyle_Bahr Kyle Bahr] || Emergent Analytics | ||
+ | |- | ||
+ | | || [https://gem.epss.ucla.edu/mediawiki/index.php/Machine_Learning_in_Geospace#Matt_Gilson Matt Gilson] || Google, Argo | ||
+ | |- | ||
+ | | || Megan Cartwright || Netflix | ||
+ | |- | ||
+ | | 45 min || || Community Mixer | ||
+ | |} | ||
+ | |||
+ | ==== Bios ==== | ||
+ | |||
+ | ===== Kyle Bahr ===== | ||
+ | |||
+ | Kyle Bahr is the owner and principal of Emergent Analytics, a management consulting company that specializes in bringing machine learning and other advanced analytics techniques to sustainable development problems. After completing his PhD. in Mining and Earth Systems Engineering at the Colorado School of Mines, he accepted a post-doctoral fellowship at the Missouri University of Science and Technology. Before founding Emergent Analytics, Kyle was an Assistant Professor for four years at Tohoku University in Sendai, Japan, where his research focused on resource development, especially in the area of the social license for geothermal energy. Kyle still conducts academic research and teaching through his associations with the University of Eastern Finland and the Colorado School of Mines. Kyle has worked on consulting projects on 6 continents. He has expertise in computer modelling, data science, and the application of machine learning methods to resource development challenges. | ||
+ | |||
+ | ===== Matt Gilson ===== | ||
+ | |||
+ | Matt Gilson got his Ph.D from the University of New Hampshire in 2011. In 2013, he transitioned into industry working on internal tools at Google. At 2015, he joined an early-stage startup that was focused on building sales tools. As part of the early stages of product development, he spent a little time familiarizing himself with machine learning techniques. Ultimately, that startup did not succeed and he took a job working for Argo AI in 2017 where he has been since. He's currently a Staff Software Architect responsible for large portions of the data pipelines and processes that produce the maps for the autonomous vehicles. The maps are used for everything from large-scale point-to-point navigation to centimeter precision localization and everything in between. | ||
= VGEM 2021 = | = VGEM 2021 = | ||
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=== What === | === What === | ||
− | We are back for a second year organizing the Machine Learning in Geospace session at the VGEM 2021 Workshop. This year, we have two sessions. One will be filled with invited and submitted talks and the other will focus on organizing a Kaggle Competition within the community to address a large, inter-disciplinary science problem using machine learning and data science techniques. | + | We are back for a second year organizing the Machine Learning in Geospace session at the VGEM 2021 Workshop. This year, we have two sessions. One will be filled with invited and submitted talks and the other will focus on organizing a Kaggle Competition within the community to address a large, inter-disciplinary science problem using machine learning and data science techniques. See our [https://docs.google.com/spreadsheets/d/13Kwn0ljt6id86m8ozTxDBIUbqG3PH0NXgU8Gax-um1c/edit?usp=sharing Schedule Overview here] and [https://gem.epss.ucla.edu/mediawiki/index.php?title=Machine_Learning_in_Geospace&action=submit#Agenda our detailed schedule below]. |
=== Registration === | === Registration === | ||
Line 18: | Line 158: | ||
{| class="wikitable" | {| class="wikitable" | ||
− | |+ style="caption-side:bottom; text-align:left | Table 1: Workhop schedule. For more details see the [https://gemworkshop.org/pages/gem2021/gem2021schedule.php Workshop webpage] and [https://gem.epss.ucla.edu/mediawiki/index.php | + | |+ style="caption-side:bottom; text-align:left | Table 1: Workhop schedule. For more details see the [https://gemworkshop.org/pages/gem2021/gem2021schedule.php Workshop webpage] and [https://gem.epss.ucla.edu/mediawiki/index.php/Machine_Learning_in_Geospace#Agenda our agenda below]. |
! Event !! Date || Day || Time (Eastern) | ! Event !! Date || Day || Time (Eastern) | ||
|- | |- | ||
Line 57: | Line 197: | ||
! Duration || Name || Title | ! Duration || Name || Title | ||
|- | |- | ||
− | | 10 min || Matthew Argall | + | | 10 min || Matthew Argall || Session overview, decadal planning |
|- | |- | ||
− | | 10 min || Breakout Rooms | + | | 10 min || Breakout Rooms || Ice Breaker |
|- | |- | ||
− | | 10 min || Ayris Narock | + | | 10 min || Ayris Narock || Ethical AI |
|- | |- | ||
− | | | + | | 6 min || Matthew Blandin || Prediction of Geomagnetic Field Disturbances across Alaska using Machine Learned LSTM Neural Networks |
|- | |- | ||
− | | | + | | 6 min || Sheng Huang || Recurrent neural network implementation of modelling global plasmaspheric density |
+ | |- | ||
+ | | 6 min || Michael Coughlan || Using OMNI and SuperMag data to determine the risk of db/dt threshold exceedance with Long-Short Term Memory and Convolutional Neural Networks. | ||
+ | |- | ||
+ | | 6 min || Chris Bard || Reconstructing MHD with Neural Networks | ||
+ | |- | ||
+ | | 6 min || Anthony Saikin || NARX Neural Network Derivations of the Outer Boundary Radiation Belt Electron Flux | ||
+ | |- | ||
+ | | 6 min || Eric Donovan || Applying ML to the THEMIS-ASI data set | ||
+ | |- | ||
+ | | 30 min || Open Discussion | ||
|} | |} | ||
Line 78: | Line 228: | ||
| 15 min || Addison Howard || How to Design a Successful Kaggle Competition | | 15 min || Addison Howard || How to Design a Successful Kaggle Competition | ||
|- | |- | ||
− | | 5 min || Manoj Nair | + | | 5 min || Manoj Nair || NOAA's DataDriven [https://www.drivendata.org/competitions/73/noaa-magnetic-forecasting/ MagNet Chellenge] |
|- | |- | ||
− | | 5 min || Barbara Thompson | + | | 5 min || Barbara Thompson || AI-Ready Datasets |
|- | |- | ||
− | | 5 min || Raphael Attie | + | | 5 min || Raphael Attie || Data classification tools |
|- | |- | ||
− | | 5 min || Wendy Carande | + | | 5 min || Wendy Carande || Getting Started with ML: Common Problems |
|- | |- | ||
− | | | + | | 20 min || Breakout Rooms || Designing the competition.<br>* What problems can be addressed with an ML Competition?<br>* What missions or datasets would be useful?<br>* What resources are required to prepare for a successful competition?<br>* What evaluation criteria will lead to a fair and meaningful winner?<br>* Get the discussion started early by contributing to our [https://jamboard.google.com/d/1SHbGU6FyxdiOaXhY_r8BnUbEMh4UMu_DI1fTL6MR1GU/edit?usp=sharing Jam Board] |
|- | |- | ||
− | | | + | | 15 min || Andrés Muñoz-Jaramillo<br>Enrico Camporeale<br>Shasha Zou || "What & How" A recap of the breakout sessions |
+ | |- | ||
+ | | 20 min || Speakers & Panelists || Open Discussion on Kaggle Competition | ||
|} | |} | ||
==== Open Discussion ==== | ==== Open Discussion ==== | ||
+ | == Heliophysics Decadal Survey White Papers == | ||
+ | |||
+ | Members of the Heliophysics Community are coordinating and organizing white papers on Machine Learning and Data Science for the Heliophysics Decadal Survey in order to increase their visibility and impact. Anyone interested in leading, contributing to, or supporting a white paper, please reach out to Matthew Argall [mailto:matthew.argall@unh.edu matthew.argall@unh.edu] for more details. | ||
= VGEM 2020 = | = VGEM 2020 = |
Latest revision as of 18:01, 21 June 2022
_
Contents
_
GEM 2022
Workshop Overview
What
We are back for a third year organizing the Machine Learning in Geospace session at the GEM 2022 Workshop. This year, we have three sessions. One will be filled with invited and submitted talks, one will focus on tools and applications, and another will focus on connections to industry.
Registration
Register for the in-person workshop at GEM website. Register for the virtual component through the VGEM website
When
The workshop begins on June 20 and ends on July 24.
Event | Date | Day | Time (Hawaii) |
---|---|---|---|
Student Day | June 19 | Sunday | 8:00 AM - 3:30 PM |
GEM Workshop | June 20 - 24 | Monday - Friday | 8:00 AM - 5:00 PM + Posters & Events |
ML Session I | June 23 | Thursday | 10:30 AM - 12:00 PM |
ML Session II | June 23 | Thursday | 1:30 PM - 3:00 PM |
ML Session III | June 24 | Friday | 1:30 PM - 3:00 PM |
Who
Name | ||
---|---|---|
Matthew Argall | matthew.argall@unh.edu | |
Jacob Bortnik | jbortnik@gmail.com | |
Wendy Carande | Wendy.Carande@lasp.colorado.edu | |
Doğa Ozturk | dsozturk@alaska.edu | |
Josh Rigler | erigler@usgs.gov | |
Jason Shuster | jason.r.shuster@nasa.gov | |
Brian Swiger* | swigerbr@umich.edu | |
Alexandra Wold* | Alexandra.Wold@colorado.edu |
Agenda
Session 1: Submitted Talks
Submitted talks focus on applications of machine learning to research in geospace by the community. Talks will focus on the machine learning methodology in an educational sense.
Duration | Name | Title |
---|---|---|
6+3 min | Boris Kramer | Learning low-dimensional dynamical systems operators for advection-dominated solar wind models |
6+3 min | Xiangning Chu | Relativistic electron model in the outer radiation belt using a neural network approach |
6+3 min | Heidi Nykyri | Applications of Information Theory to Unravel the origin of the Energetic Electron Microinjections |
6+3 min | Matthew Blandin | Feature Importance: How a computer assesses our variables |
6+3 min | Anthony Sciola (Slava Merkin) | Ring Current Plasma Pressure Reconstructed from Data-mined Magnetometer Measurements Embedded Within a Global MHD Model |
6+3 min | Connor O'Brien | Neural Network Models of the Near-Earth Solar Wind and Magnetosheath |
6+3 min | Andy Edmond | Unsupervised Clustering of Magnetospheric Dayside Data |
6+3 min | Xin Cao | The Response of Equivalent Ionospheric Currents to the External Drivers via Machine Learning |
6+3 min | Donglai Ma | Modeling the dynamic variability of sub-relativistic outer radiation belt electron fluxes using machine learning. |
6+3 min | Jinxing Li | Modeling Ring Current Proton Fluxes Using Machine Learning and Van Allen Probe Measurements |
Open Discussion |
Session 2: Tutorials and Talks
Tutorials will walk through topics on machine learning methods as applied to research. When possible, Jupyter Notebooks based on the tutorial will be made available to attendees for adaptation to their own research goals.
Duration | Name | Title |
---|---|---|
15 min | Wendy Carande | Tutorial: Data science competitions and machine learning pitfalls |
25 min | Ben Winjum | Tutorial: Docker & Datashader |
15 min | Vishal Upendran | Tutorial: Spherical Harmonics |
6+3 min | Adam Kellerman | A machine-learning model of electron phase-space density in Earth's radiation belts |
6+3 min | Izzak Boucher | Global model of the electric potential using regularized linear regression and neural networks |
6+3 min | Andong Hu | Multi-Hour-Ahead Magnetic Field Perturbations Prediction Using UQ-boost ML Methods and SuperMag data |
6+3 min | Hadeem Farooki (Hyomin Kim) | A machine learning approach to understanding the physical properties associated with magnetic flux ropes in the solar wind at 1 AU |
Open Discussion |
Session 3: Industry Panel & Social Mixer
The Industry Panel discussions brings together several people who have made the jump from academia to industry. Discussion topics include tailoring resumes, the interview process, turning your ideas into a business, and general life in industry vs. academia.
Duration | Panelist | Affiliation |
---|---|---|
45 min | Kyle Bahr | Emergent Analytics |
Matt Gilson | Google, Argo | |
Megan Cartwright | Netflix | |
45 min | Community Mixer |
Bios
Kyle Bahr
Kyle Bahr is the owner and principal of Emergent Analytics, a management consulting company that specializes in bringing machine learning and other advanced analytics techniques to sustainable development problems. After completing his PhD. in Mining and Earth Systems Engineering at the Colorado School of Mines, he accepted a post-doctoral fellowship at the Missouri University of Science and Technology. Before founding Emergent Analytics, Kyle was an Assistant Professor for four years at Tohoku University in Sendai, Japan, where his research focused on resource development, especially in the area of the social license for geothermal energy. Kyle still conducts academic research and teaching through his associations with the University of Eastern Finland and the Colorado School of Mines. Kyle has worked on consulting projects on 6 continents. He has expertise in computer modelling, data science, and the application of machine learning methods to resource development challenges.
Matt Gilson
Matt Gilson got his Ph.D from the University of New Hampshire in 2011. In 2013, he transitioned into industry working on internal tools at Google. At 2015, he joined an early-stage startup that was focused on building sales tools. As part of the early stages of product development, he spent a little time familiarizing himself with machine learning techniques. Ultimately, that startup did not succeed and he took a job working for Argo AI in 2017 where he has been since. He's currently a Staff Software Architect responsible for large portions of the data pipelines and processes that produce the maps for the autonomous vehicles. The maps are used for everything from large-scale point-to-point navigation to centimeter precision localization and everything in between.
VGEM 2021
Workshop Overview
What
We are back for a second year organizing the Machine Learning in Geospace session at the VGEM 2021 Workshop. This year, we have two sessions. One will be filled with invited and submitted talks and the other will focus on organizing a Kaggle Competition within the community to address a large, inter-disciplinary science problem using machine learning and data science techniques. See our Schedule Overview here and our detailed schedule below.
Registration
Register for the Workshop by filling out this form. There is no fee for students. Others can pay the $25 registration fee here.
When
The workshop begins on July 25 and ends on July 30.
Event | Date | Day | Time (Eastern) |
---|---|---|---|
Student Day | July 25 | Sunday | 1:00 - 5:00 PM |
VGEM Workshop | July 26 - 30 | Monday - Friday | 11:00 AM - 4:30 PM + Posters |
ML Session I | July 28 | Wednesday | 3:00 - 4:00 PM |
ML Session II | July 30 | Friday | 1:00 - 2:30 PM |
Who
Name | ||
---|---|---|
Matthew Argall | matthew.argall@unh.edu | |
Jacob Bortnik | jbortnik@gmail.com | |
Josh Rigler | erigler@usgs.gov | |
Jason Shuster | jason.r.shuster@nasa.gov | |
Doğa Ozturk | dsozturk@alaska.edu | |
Wendy Carande | Wendy.Carande@lasp.colorado.edu |
Agenda
Session I: Submitted Talks
Duration | Name | Title |
---|---|---|
10 min | Matthew Argall | Session overview, decadal planning |
10 min | Breakout Rooms | Ice Breaker |
10 min | Ayris Narock | Ethical AI |
6 min | Matthew Blandin | Prediction of Geomagnetic Field Disturbances across Alaska using Machine Learned LSTM Neural Networks |
6 min | Sheng Huang | Recurrent neural network implementation of modelling global plasmaspheric density |
6 min | Michael Coughlan | Using OMNI and SuperMag data to determine the risk of db/dt threshold exceedance with Long-Short Term Memory and Convolutional Neural Networks. |
6 min | Chris Bard | Reconstructing MHD with Neural Networks |
6 min | Anthony Saikin | NARX Neural Network Derivations of the Outer Boundary Radiation Belt Electron Flux |
6 min | Eric Donovan | Applying ML to the THEMIS-ASI data set |
30 min | Open Discussion |
Session II: Kaggle Competition
Duration | Name | Title |
---|---|---|
5 min | Matthew Argall | Session overview |
15 min | Addison Howard | How to Design a Successful Kaggle Competition |
5 min | Manoj Nair | NOAA's DataDriven MagNet Chellenge |
5 min | Barbara Thompson | AI-Ready Datasets |
5 min | Raphael Attie | Data classification tools |
5 min | Wendy Carande | Getting Started with ML: Common Problems |
20 min | Breakout Rooms | Designing the competition. * What problems can be addressed with an ML Competition? * What missions or datasets would be useful? * What resources are required to prepare for a successful competition? * What evaluation criteria will lead to a fair and meaningful winner? * Get the discussion started early by contributing to our Jam Board |
15 min | Andrés Muñoz-Jaramillo Enrico Camporeale Shasha Zou |
"What & How" A recap of the breakout sessions |
20 min | Speakers & Panelists | Open Discussion on Kaggle Competition |
Open Discussion
Heliophysics Decadal Survey White Papers
Members of the Heliophysics Community are coordinating and organizing white papers on Machine Learning and Data Science for the Heliophysics Decadal Survey in order to increase their visibility and impact. Anyone interested in leading, contributing to, or supporting a white paper, please reach out to Matthew Argall matthew.argall@unh.edu for more details.
VGEM 2020
Workshop Overview
Student Day | Monday, July 20th, 2020 is Student Day |
GEM Workshop | Tuesday - Thursday, July 21st - 23rd |
Participants will need to register for free here, which is accessible through the general meeting website. Our session agenda is posted below.
Machine Learning Session
When
Thursday, July 23, 3:00 - 4:30pm Eastern
Session Conveners
Name | ||
---|---|---|
Matthew Argall | matthew.argall@unh.edu | |
Jacob Bortnik | jbortnik@gmail.com | |
Josh Rigler | erigler@usgs.gov | |
Jason Shuster | jason.r.shuster@nasa.gov |
Preface
We have worked with the GEM Student Representatives to incorporate a machine learning tutorial into their Student Day. Abby Azari will give a "getting started with machine learning" tutorial.
Session Overview and Theme
Beyond the mechanics of getting started, to fully take advantage of the power of machine learning, one needs to know what is possible. This is our session's theme -- to provide an overview of what is possible. This theme encompasses five focus areas:
- Recent developments in machine learning that enable innovative scientific research
- Aspects of machine learning or data science that are under-utilized in the field
- Systems/chains of machine learning models and/or the integration of machine learning into numerical simulations
- Possibilities and opportunities that exist outside of a purely academic career path enabled by machine learning
- Bridging the SHINE, GEM, and CEDAR communities to facilitate multi-discipline collaborations
The hope is that recent developments in ML will inspire new avenues of research and career opportunities.
Presentations and Panel Discussion
Speakers and panelists are encouraged to address any of the focus areas 1-4 and to include elements that enable focus area 5.
ML Exploratory Committee
This session is chaired by members of a SHINE/GEM/CEDAR Machine Learning Exploratory Committee. The committee is composed of members of the SHINE, GEM, and CEDAR communities. Its goal is to pursue topics in Heliophysics Machine Learning that can best be addressed through a cross-disciplinary initiative. Anyone interested can contact us for more information.
Agenda
Session
Duration | Topic | Speaker |
---|---|---|
5 min | Opening remarks | Matthew Argall |
15 min | Introduction to ML: "What is Possible?" | Jacob Bortnik (See Table 3) |
7 min 3 min |
Application(s): ML in GEM with relevance to SHINE/CEDAR | Enrico Camporeale |
7 min 3 min |
Application of Machine Learning to GNSS-Related Remote Sensing Tasks | Leo Liu |
7 min 3 min |
Predicting Solar Eruptions: What has ML done for us? | Sophie Murray |
40 min | Open Panel Discussion | See Table 2 |
Panel Discussion
Field | Panelist | Early Career | Theme |
---|---|---|---|
SHINE | Wendy Carande | Y | Pairing science problems with ML tools |
SHINE | Barbara Thompson | NASA, Policy | |
GEM | Simon Wing | Information Theory | |
GEM | Xiangning Chu | Y | Global Reconstruction |
CEDAR | Bharat Kunduri | Y | Insight Industry to academia |
CEDAR | TBD | - | - |
Planetary | Abby Azari | Y | Student tutorial Physics Informed ML Interpretable ML |
Industry | Nick Bunch | Y | Academia to industry |
Distributed Tutorial
Speaker | Topic |
---|---|
Ryan McGranaghan | Community-wide inventory of assets and resources |
Marcus Hughes | Exploration, visualization and handling of large observational and modeling data volumes |
Hazel Bain | Understanding the potential enhancement of space weather prediction capabilities for operations and research |
Barbara Thompson | Creation of AI-ready data sets and quality standards |
Jacob Bortnik | Different approaches to implementing “Physics-informed learning” and “gray box models” |
Josh Rigler | Compression, acceleration and emulation of models and data processing |
Matthew Argall | Providing paths to publication, validation, and open-code practices |