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1
Intro
2
Welcome
3
Introduction
4
Language Translation
5
Dynamic Memory
6
Model Data Machine Learning
7
Matt Hunter Introduction
8
Google Earth Engine
9
Machine Learning
10
Training in Earth Engine
11
Lessons Learned
12
Example Workflows
13
Digital Elevation Model
14
Optical Spectrum
15
Typical Problems
16
Pattern Learning
17
Pattern Matching
18
Downscaling Digital Elevation Models
19
Dancing of Climate Models
20
Climate Model
21
Results
Description:
Explore the intersection of data analytics, machine learning, and climate science in this 2-hour 27-minute conference session from AGU. Delve into the challenges and opportunities presented by the increasing volume of Earth observations and climate model outputs. Discover how tools from mathematics, statistics, and computer science are being adapted to advance physical understanding, improve Earth system modeling, and increase predictive ability for weather, climate, and Earth surface processes. Learn about identifying causal sources of predictability, quantifying climate variability, improving micro-scale parameterizations in climate models, and deciphering landscape responses to change. Gain insights from discussions between ocean and atmospheric scientists, hydrologists, geomorphologists, and data scientists on leveraging big data and machine learning for climate and Earth system modeling advancements. Topics covered include language translation, dynamic memory, model data machine learning, Google Earth Engine applications, pattern learning and matching, downscaling digital elevation models, and climate model analysis. Read more

Data Analytics and Machine Learning Innovation for Climate and Earth Surface Processes

AGU
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