Human-Centered AI through Scalable Visual Data Analytics  is coming at
04/10/2019 - 10:00am

KEC 1007
Wed, 04/10/2019 - 10:00am

Minsuk Kahng
Ph.D. Candidate, Computer Science, Georgia Institute of Technology

Abstract:
While artificial intelligence (AI) has led to major breakthroughs in many
domains, understanding machine learning models remains a fundamental
challenge. They are often used as "black boxes," which could be detrimental.
How can we help people understand complex machine learning models, so that
they can learn them more easily and use them more effectively?

In this talk, I present my research that makes AI more accessible and
interpretable, through a novel human-centered approach, by creating novel
data visualization tools that are scalable, interactive, and easy to learn
and to use. I present my work in two interrelated topics. (1) Visualization
for Industry-scale Models: I present how to scale up interactive
visualization tools for industry-scale deep learning models that use large
datasets. I describe how the ActiVis system helps Facebook data scientists
interpret deep neural network models by visually exploring activation flows.
ActiVis is patent-pending, and has been deployed on Facebook’s ML platform.
(2) Interactive Understanding of Complex Models: I show how visualization
helps novices interactively learn complex concepts of deep learning models. I
describe how I developed GAN Lab, a visual education system for Generative
Adversarial Networks (GANs), one of the most popular, but hard-to-understand
models. GAN Lab has been open-sourced in collaboration with Google Brain and
used by over 30,000 people from 140 countries. I conclude with my vision to
make AI more human-centered, to promote actionability for AI, stimulate a
stronger ethical AI workforce, and foster healthy impacts of AI on broader
society.

Bio:

Read more:
http://eecs.oregonstate.edu/colloquium/human-centered-ai-through-scalabl... 
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[1] 
http://eecs.oregonstate.edu/colloquium/human-centered-ai-through-scalable-visual-data-analytics
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