Aim: understand which gases form completel new particles in the atmosphere
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Challenge 1: molecular level modelling works, but wo require calculations longer than the age of the univers
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Challenge 2: difficulties and biases in detectio relevant chemical species and molecular clust
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VILMA VIRTUAL LABORATORY: AI FOR SCIENCE
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CAN WE TRUST OUR PREDICTIONS? DETECTING CONCEPT DRIFT
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HOW TO BUILD AND EXPLORE MODELS? XIPLOT
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CRASH INTRO TO EXPLAINABLE AI (XAI): GLOBAL VS LOCAL EXPLANATIONS
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MOTIVATION: LOCAL EXPLANATIONS
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MOTIVATION: DIMENSIONALITY REDUCTI - AS A TOOL FOR SCIENCE
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HOW DO THE MACHINE-LEARNING MODELS W SLISEMAP FOR EXPLAINABLE AI (XAI)
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SLISEMAP: RANDOM FOREST PREDICTIN FUEL CONSUMPTION OF CARS
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SLISEMAP: THE EFFECT OF RADIUS
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SLISEMAP: MULTIPLE EXPLANATIONS
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SLISEMAP: SUBSAMPLING
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SLISEMAP: USAGE
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SLISEMAP: SUMMARY
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SLISEMAP: PROBLEM DEFINITION
Description:
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Explore explainable and robust AI applications in atmospheric science through this 39-minute conference talk by Kai Puolamäki, Associate Professor at the University of Helsinki. Gain insights into the Virtual Laboratory for Molecular Level Atmospheric Transformations (VILMA) Centre of Excellence and understand the importance of explainable AI and uncertainty quantification in atmospheric research. Discover SLISEMAP, a supervised manifold visualization method for explainable AI that provides local explanations for data items and creates two-dimensional global visualizations of black box models. Learn about challenges in molecular-level modeling, concept drift detection, and the exploration of AI models in scientific contexts. Delve into the motivations behind local explanations and dimensionality reduction as tools for scientific discovery. Examine practical applications of SLISEMAP, including predicting fuel consumption in cars, and understand its usage, problem definition, and potential impact on atmospheric science research.
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Explainable and Robust AI for VILMA Virtual Laboratory