[Esip-machinelearning] Tomorrow 11AM: AI for All People: How to make AI useful for Earth science applications?

Michael Mahoney mike.mahoney.218 at gmail.com
Thu Jul 21 13:25:07 EDT 2022


Hi all,

Just a reminder that our ESIP July Meeting session, *AI for All People: How
to make AI useful for Earth science applications? *will begin at 11 AM (ET)
tomorrow in Ballroom 2 (and on Zoom). https://sched.co/12etz
<https://sched.co/12etz>

*About the session:*

Earth science applications of artificial intelligence and machine learning
(AI/ML) have seen a flurry of interest in recent years, as models become
more effective at predicting patterns and processes across multiple scales.
However, despite this recent focus there still exist a number of common
challenges in the development, deployment, and assessment of AI/ML projects
which can hinder their usefulness in various domains. In order to fully
realize the potential of AI/ML as a practical tool for approaching Earth
science problems, practitioners will need to better understand and address
these common challenges in a standard, cross-domain way.

This session, organized as part of the ESIP Machine Learning cluster’s
ongoing Practical AI initiative, will bring together AI/ML practitioners
and users to talk about the generation, use, and understanding of AI/ML
systems in the Earth sciences. Talks will focus on practical, successful,
and useful applied AI/ML systems, and the approaches taken to overcome the
common challenges inherent in producing AI/ML solutions. The session will
additionally inform the ongoing Machine Learning cluster white paper,
Practical AI for Geospatial Data-driven Applied Sciences, by highlighting
the commonalities between successful practical AI initiatives and the
“gaps” still to be solved in years to come.

We hope to see you there!

Michael Mahoney
781-812-8842 | mike.mahoney.218 at gmail.com
Website <http://mm218.dev/> | LinkedIn <http://mm218.dev/linkedin> | GitHub
<http://mm218.dev/github>
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