2021 Fall
COMPSCI 198 101 - GRP 101
Directed Group Studies for Advanced Undergraduates
Algorithmic Fairness and the Genome (1 hour version)
Nilah Ioannidis
Aug 25, 2021 - Dec 10, 2021
We
03:00 pm - 03:59 pm
Internet/Online
Class #:33440
Units: 1
Instruction Mode:
Pending Review
Offered through
Electrical Engineering and Computer Sciences
Current Enrollment
Total Open Seats:
11
Enrolled: 34
Waitlisted: 0
Capacity: 45
Waitlist Max: 20
No Reserved Seats
Hours & Workload
2 to 8 hours of outside work hours per week, and 1 to 4 hours of directed group study per week.
Other classes by Nilah Ioannidis
Course Catalog Description
Group study of selected topics in Computer Sciences, usually relating to new developments.
Class Description
AI is eating the world. Unfortunately, these machine learning models have drawn unfortunate attention in recent years for being “biased” (e.g ttps://fairmlbook.org/)
and automating discrimination. Within genomics, a field replete with complicated ML, these biases lead to dramatically different health outcomes for persons of different socioeconomic status or ancestry. Neither AI nor genomics can be fully “de-biased” in a single semester, but we hope to provide a concise yet detailed overview of existing problems and known frameworks to detect and prevent bias through the emerging field of algorithmic fairness.
This student-led discussion group (with multiple anticipated guest speakers!) is designed to equip the next generation of researchers with the awareness and structural competencies to address bias, and is divided into two consecutive parts.
Part 1: Algorithmic Fairness in AI (approx. weeks 1-6, 8)
Part 2: Fairness and Model Portability in Genomics (approx. weeks 7, 9-15)
At the end of the
course, we hope participants will be able to answer the following in their own terms:
1) What is fairness in machine learning, and what are common causes of unfairness?
2) How can cultural biases impact datasets and modeling assumptions? What kind of
approaches can account for this situation?
Class Notes
CS-focused enrollees may consider the 1-hour enrollment option, while Genomics or Computational Biology enrollees should opt for the complete 2-hour option.
1 hour option: attendance expected roughly ½ of discussions -- CS-focused enrollees can choose which courses or guest lectures be.. show more
1 hour option: attendance expected roughly ½ of discussions -- CS-focused enrollees can choose which courses or guest lectures be.. show more
CS-focused enrollees may consider the 1-hour enrollment option, while Genomics or Computational Biology enrollees should opt for the complete 2-hour option.
1 hour option: attendance expected roughly ½ of discussions -- CS-focused enrollees can choose which courses or guest lectures best match their interests, and will be asked to complete readings to match. This section may be ideal for CS students/researchers primarily interested in fairness rather than in genomic fairness, or for those with limited schedules. show less
1 hour option: attendance expected roughly ½ of discussions -- CS-focused enrollees can choose which courses or guest lectures best match their interests, and will be asked to complete readings to match. This section may be ideal for CS students/researchers primarily interested in fairness rather than in genomic fairness, or for those with limited schedules. show less
Rules & Requirements
Repeat Rules
Reserved Seats
Current Enrollment
No Reserved Seats
Textbooks & Materials
See class syllabus or https://calstudentstore.berkeley.edu/textbooks for the most current information.
Guide to Open, Free, & Affordable Course Materials
Associated Sections
None