Skip to content

uva-responsibleai/fall-24

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Responsible AI blog - Fall-24

This repository is intedned to contain a collection of notes and paper summaries for each class of the Reponsible AI course tought at UVA in the Fall-24. The course is organized around six topics:

  • Fairness
  • Safety
  • Privacy
  • Evaluation
  • Unlearning
  • Misuse of AI and Governance

Each topic is associated with the corresponding folder in this repository.

Students should should write the report on the papers and topics reviewed in their class by modifying the associated ".md" file.

Syllabus

This is a tentative calendar and it is subject to change.

Date Topic Subtopic Blog
Feb 5 Fairness Intro and bias sources Group 1
Feb 7 Fairness Statistical measures Group 2
Feb 12 Fairness Tradeoffs Group 3
Feb 14 Fairness LLMs: Toxicy and Bias Group 4
Feb 19 Fairness LLMs: Fairness Group 5
Feb 21 Fairness Policy aspects Group 6
Feb 26 No class (AAAI)
Feb 28 Safety Distribution shift Group 1
Mar 6 Spring break
Mar 11 Spring break
Mar 11 Safety Poisoning Group 2
Mar 13 Safety Adversarial Robustness Group 3
Mar 18 Safety Adversarial Robustness Group 4
Mar 20 Safety LLMs: Prompt injection Group 5
Mar 25 Safety LLMs: Jailbreaking Group 6
Mar 27 Privacy Differential Privacy 1 Group 1
Apr 1 Privacy Differential Privacy 2 Group 2
Apr 3 Privacy Auditing and Membership inference Group 3
Apr 8 Privacy Privacy and Fairness Group 4
Apr 10 Privacy LLMs: Private issues in LLMs Group 5
Apr 15 Privacy LLMs: Privacy in LLMs Group 6
Apr 17 Evaluation Model cards Group 1
Apr 22 Evaluation LLMs: evaluation Group 2
Apr 24 Unlearning Unlearning Group 3
Apr 29 Unlearning LLMs: Targeted unlearning Group 4

Expectations:

  • Each group will reivew all paper from the provided list, and they may propose additional ones for approval.
  • Summaries should be written in Markdown format (supporting images and formulas) and committed to the course's GitHub repository.
  • The summary should include the following sections: Introduction and Motivations, Methods, Key Findings, and Critical Analysis.
  • The Critical Analysis section should evaluate the strengths, weaknesses, potential biases, and ethical considerations of the paper.
  • Summaries must be submitted four days prior to the presentation for review and potential feedback.

Assessment Criteria:

  • Clarity and coherence of the written summary.
  • Depth of critical analysis and understanding of the paper's content.
  • Proper use of formatting and adherence to submission guidelines.
  • Timeliness of submission.

About

No description, website, or topics provided.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published