Upcoming Events

Upcoming Events

Machine Learning in Physics
Wed, Sep 27, 2023, 4:30 pm

A new seminar hosted jointly between Physics and ORFE focusing on interdisciplinary work at the intersection of physics and machine learning.

What? A seminar series highlighting research on both physics-inspired approaches to understanding ML and the use of ML for physics applications

Location
Jadwin Hall A10
Speakers
Logical reasoning and Transformers
Mon, Oct 2, 2023, 4:30 pm

Abstract: Transformers have become the dominant neural network architecture in deep learning, in particular with the GPT language models. While they dominate in language and vision tasks, their performance is less convincing in so-called “reasoning” tasks. 

In this talk, we introduce the “generalization on the…

Location
214 Fine Hall
Speaker
Machine Learning in Physics
Wed, Oct 4, 2023, 4:30 pm

A new seminar hosted jointly between Physics and ORFE focusing on interdisciplinary work at the intersection of physics and machine learning.

What? A seminar series highlighting research on both physics-inspired approaches to understanding ML and the use of ML for physics applications

Location
Jadwin Hall A10
Speakers
Princeton Symposium on Biological & Artificial Intelligence
Thu, Oct 19, 2023

The Symposium will bring together neuroscientists and computer scientists at Princeton who work on problems cutting across the boundaries of biological and artificial intelligence systems.

Thursday, October 19, 2023 4PM-8PM             

Friday,…

Location
Princeton Neuroscience Institute
Machine Learning in Physics
Wed, Nov 1, 2023, 4:30 pm

A new seminar hosted jointly between Physics and ORFE focusing on interdisciplinary work at the intersection of physics and machine learning.

What? A seminar series highlighting research on both physics-inspired approaches to understanding ML and the use of ML for physics applications

Location
Jadwin Hall A10
Speakers
Machine Learning in Physics
Wed, Nov 15, 2023, 4:30 pm

A new seminar hosted jointly between Physics and ORFE focusing on interdisciplinary work at the intersection of physics and machine learning.

What? A seminar series highlighting research on both physics-inspired approaches to understanding ML and the use of ML for physics applications

Location
Jadwin Hall A10
Speakers
Machine Learning in Physics
Wed, Nov 29, 2023, 4:30 pm

A new seminar hosted jointly between Physics and ORFE focusing on interdisciplinary work at the intersection of physics and machine learning.

What? A seminar series highlighting research on both physics-inspired approaches to understanding ML and the use of ML for physics applications

Location
Jadwin Hall A10
Speakers

Events Archive

Data Science for the Humanities and Social Sciences

Are you curious about how machine learning can be used to study fragments of medieval Egyptian letters? Or how quantitative methods can help trace the monetization of misinformation on the web? Intrigued by AI but don’t know what it is? Not sure how to work with your complex collection of texts, images, and other media? Want to learn coding but don’t know where to start? 

Robustness for Models and Algorithms in Machine Learning

Risk-averse optimization plays a major role in the design of safety for machine learning applications. In this talk, we will present a set of tools to enhance the robustness of models and algorithms to potentially harmful data shifts.

Lunch from 12:15 p.m., RSVP to [email protected]

Location
26 Prospect Ave. Classroom 103
Speaker
Robust and Risk-Averse Accelerated Gradient Methods

In the context of first-order algorithms subject to random gradient noise, we study the trade-offs between the convergence rate (which quantifies how fast the initial conditions are forgotten) and the "risk" of suboptimality, i.e., deviations from the expected suboptimality.

Lunch from 12:15 p.m., RSVP to [email protected]

Location
26 Prospect Ave. Classroom 103
Sparse Estimation: Closing the Gap Between L0 and L1 Models

Sparse statistical estimators are increasingly prevalent due to their ease of interpretability and superior out-of-sample performance. However, sparse estimation problems with an L0 constraint, restricting the support of the estimators, are challenging (typically NP-hard, but not always) non-convex optimization problems.

Location
101 Sherrerd Hall
Large Language Models: Will they keep getting bigger? And, how will we use them if they do?

The trend of building ever larger language models has dominated much research in NLP over the last few years. In this talk, I will discuss our recent efforts to (at least partially) answer two key questions in this area: Will we be able to keep scaling? And, how will we actually use the models, if we do?

Location
Friend Center Convocation Room
Caught up in Neural Nets? When (and How) to use Classical Machine Learning in Your Research

In this workshop, participants will learn the basics of various classical machine learning techniques and discuss which types of problems each technique is best suited to address.

Explainable AI for Climate Science: Detection, Prediction and Discovery

Earth’s climate is chaotic and noisy. Finding usable signals amidst all of the noise can be challenging. Here, I will demonstrate how explainable artificial intelligence (XAI) techniques can sift through vast amounts of climate data and push the bounds of scientific discovery. Examples include extracting robust indicator patterns of climate…

Location
Guyot 220
Machine Learning advancements for design of water and energy policies in a changing climate and society

In this talk, we provide an overview of recent advances in data-driven modeling and control of human-water-energy systems and showcase how Machine Learning techniques can help (i) infer natural and anthropogenic drivers of observed hydroclimatic patterns and improve their predictability in space and time, (ii) understand and conceptualize the mutual influences between human behaviors and water-energy systems; and (iii) design strategic planning and management policies optimizing multiple and conflicting objectives with different dynamics and informed by heterogeneous information. 

Location
A71 Louis A. Simpson International Building
Speaker
Learning Space-Group Invariant Functions

The plane and space groups are groups that specify how to tile two- or three-dimensional Euclidean space with a shape: They enumerate all possible ways in which a shape can be isometrically replicated across the space. I will describe how to explicitly compute approximate eigenfunctions of the Laplace-Beltrami operator on the orbifold defined by any such group.

Location
214 Fine Hall
Speaker
Using Transportability Estimators to Understand Reasons For Differences In Intervention Effects Across Sites

Multi-site studies are common, and intervention effect estimates frequently differ across sites. We discuss reasons why effect estimates may differ across sites and relate these to transportability. In scenarios where transport is possible, we develop transport estimators to better understand why intervention effects differ across sites/population.

Location
300 Wallace Hall
Speaker