Our Hangouts series this year will explore causal inference, machine learning, and generative AI for scientific discovery across fields. Students are welcome to attend tutorials as best fit their time and interests, bur please RSVP using this form so we can get the right amount of pizza for everyone!
Location
All tutorials will take place in the RDDSX space just outside the Collaborative Classroom in Van Pelt-Dietrich Library.
Note: To access the Van Pelt-Dietrich Library Center from Walnut Street, enter the gate at Van Pelt Walk. Walk straight ahead, then turn right to enter through the Rosengarten Undergraduate Study Center on the ground floor. The Van Pelt main entrance (by the button on the map below) will be open!
Live Stream
The Tuesday sessions live stream links can be found here.
The Thursday sessions live stream links can be found here.
Recordings
Recordings of the sessions will be made available here.
Schedule
Hangouts will run twice a week from noon to 1pm on Tuesdays and Thursdays, June 11th through June 25th. A pizza lunch will be provided.
Date | Speaker | Title + Description |
---|---|---|
Tuesday 6/11 noon – 1pm |
Lyle Ungar + Louis Hickman |
Assessing Interpersonal Judgments using Explainable AI
We use deep learning models to predict ratings of the warmth, competence, and morality of people introducing themselves in short videos. By showing which multimodal features drive these predictions, we provide insight into first impression formation. Explaining such models and their predictions is important both for training workers and for evaluating computer-based assessments of candidates. |
Thursday 6/13 noon – 1pm |
Carlos Schmidt-Padilla | Introduction to Causal Inference for Data Science
This tutorial will explain how causal inference can help reveal cause-and-effect relationships between variables or events, and explore its applications in technology, health sciences, and the social sciences. Slides here. |
Tuesday 6/18 noon – 1pm |
Emerson Arehart | Time series forecasting with models and data
Science often involves forecasting future behavior based on past observations, but this can be very challenging when you have limited observations of a system. We will discuss methods for augmenting limited datasets with theoretical models to improve forecasting success. Slides here. Seeking paid undergrad RA! Contact Emerson for details. |
Thursday 6/20 noon – 1pm |
Sam Dillavou + Kieran Murphy |
Introduction to machine learning
What is machine learning, how is it used, what does it do well, and where does it go wrong? |
Tuesday 6/25 noon – 1pm |
Russell Richie | Simulation as a tool for the (cognitive) modeler
How/when should the (cognitive) modeler use simulation? Special attention will be paid to parameter/model recovery simulations. Slides and a Google colab notebook. |