Dear All,
You are cordially invited to the Critical Computing seminar tomorrow.
Please find the details below.
Best Regards,
Ishtiaque
==
Syed Ishtiaque Ahmed
Assistant Professor
Department of Computer Science
The University of Toronto
Bahen Centre for Information Technology, Room 5262
Saint George Street, Toronto, ON M5S 2E4, Canada
Ph: +1 647 220 3482
web: https://www.ishtiaque.net/
My Availability: Google Calendar Link
<https://calendar.google.com/calendar/embed?src=ishtiaque.uoft%40gmail.com&c…>
==
---------- Forwarded message ---------
From: Priyank Chandra <priyank.chandra(a)utoronto.ca>
Date: Tue, Nov 16, 2021 at 11:15 AM
Subject: Critical Computing Seminar (Nov 17): "The Myopia of Model Centrism"
To: ISCHOOL-FAC-REG-L(a)LISTSERV.UTORONTO.CA <
ISCHOOL-FAC-REG-L(a)listserv.utoronto.ca>
Cc: Ishtiaque Ahmed <ishtiaque(a)cs.toronto.edu>, Robert Soden <
robert.soden(a)utoronto.ca>, Shion Guha <shion.guha(a)utoronto.ca>, Mohammad
Rashidujjaman Rifat <rifat(a)cs.toronto.edu>, Christoph Becker <
christoph.becker(a)utoronto.ca>, Adrian Petterson <
a.petterson(a)mail.utoronto.ca>
Dear All,
We are happy to announce that we are restarting our Critical Computing
seminar series. This a monthly online seminar where each month we invite
scholars to discuss topics in critical computing on the third Wednesday of
each month. The objective of the seminar is to create a broader
understanding of computing from different ethical, social, and cultural
perspectives. You will find more information about this seminar series and
upcoming speakers by following this link:
https://www.dgp.toronto.edu/critical-computing-seminar/index.html
This month (November), Nithya Sambasivan from Google Research will give a
talk on “The Myopia of Model Centricism” on *Wednesday, Nov 17, 11am to
12:15pm EST*.
We invite you all to join the seminar. Please check the following link for
more details about the seminar and how to register for the seminar:
https://www.dgp.toronto.edu/critical-computing-seminar/Nithya%20Sambasivan.…
A flyer is also attached to this email, and I have appended the seminar
details at the bottom of this email. Please feel free to forward this
invitation to anyone interested (within and outside UofT).
We look forward to seeing you all at the seminar.
Best Regards,
Priyank Chandra (On behalf of the Organizers)
Assistant Professor
Faculty of Information
University of Toronto
*Seminar Details: *
*Nithya Sambasivan*, Research Scientist, Google Research
*Time: November 17, 11 AM to 12:15 PM EST*
*Registration link:* here <https://forms.gle/jdrnf7wYW55pd9Ro9>
*Brief Bio:* Nithya Sambasivan is a Research Scientist at PAIR, Google
Research and leads the human-computer interaction (HCI) group at the India
lab. Her current research focuses on designing responsible AI systems by
focusing on the humans of the AI/ML pipeline, specifically in the non-West.
Her research is seminal to Google's products and strategy for emerging
markets, while also winning numerous best paper awards and nominations at
top-tier computing conferences. Nithya has a PhD. in Information and
Computer Sciences from UC Irvine.
*About the talk:* AI models seek to intervene in increasingly higher stakes
domains, such as cancer detection and microloan allocation. What is the
view of the world that guides AI development in high risk areas, and how
does this view regard the complexity of the real world? In this talk, I
will present results from my multi-year inquiry into how fundamentals of AI
systems---data, expertise, and fairness---are viewed in AI development. I
pay particular attention to developer practices in AI systems intended for
low-resource communities, especially in the Global South, where people are
enrolled as labourers or untapped DAUs. Despite the inordinate role played
by these fundamentals on model outcomes, data work is under-valued; domain
experts are reduced to data-entry operators; and fairness and
accountability assumptions do not scale past the West. Instead, model
development is glamourised, and model performance is viewed as the
indicator of success. The overt emphasis on models, at the cost of ignoring
these fundamentals, leads to brittle and reductive interventions that
ultimately displace functional and complex real-world systems in
low-resource contexts. I put forth practical implications for AI research
and practice to shift away from model centrism to enabling human
ecosystems; in effect, building safer and more robust systems for all.
*Relevant papers:*
- Sambasivan, N., Kapania, S., Highfill, H., Akrong, D., Paritosh, P.,
Aroyo, L. "Everyone wants to do the model work, not the data work": Data
Cascades in High-stakes AI CHI 2021.
https://dl.acm.org/doi/10.1145/3411764.3445518
- Sambasivan, N., Arnesen, E., Hutchinson, B., Doshi, T., Prabhakaran,
V. Re-imagining Algorithmic Fairness in India and Beyond. FaccT 2021.
https://dl.acm.org/doi/10.1145/3442188.3445896
*Site:* https://nithyasambasivan.com/
FYI
---------- Forwarded message ---------
From: Syed Ishtiaque Ahmed <ishtiaque(a)csebuet.org>
Date: Thu, Nov 11, 2021, 1:09 AM
Subject: Fwd: Internship at Microsoft Research Montreal (FATE group)
To: Ishtiaque Ahmed <ishtiaque(a)cs.toronto.edu>
---------- Forwarded message ---------
From: Vera Liao <liaoqz08(a)gmail.com>
Date: Wed, Nov 10, 2021, 12:46 PM
Subject: Internship at Microsoft Research Montreal (FATE group)
To: <CHI-JOBS(a)listserv.acm.org>
The FATE (Fairness, Accountability, Transparency, and Ethics in AI) group
at Microsoft Research Montreal is looking for multiple interns for 12-week
internships in 2022. We are interested in candidates working in the broad
FATE areas, particularly on responsible language technologies, transparency
and explainability in AI, phenomena related to the impacts of complex
sociotechnical systems, or ML topics with an impact on fairness, such as
model reusability, compositionally, or efficient optimization.
Applicants should be currently enrolled in a relevant Ph.D. program or JD
(Juris Doctorate) program (areas of interest include machine learning,
human-computer interaction, computational social science, information
retrieval, natural language processing, science and technology studies, or
other related fields).
Please find more information and apply here:
https://careers.microsoft.com/us/en/job/1188654/Research-Intern-FATE-Fairne…
Microsoft is an equal opportunity employer.
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