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Events

Colloquium Talk with Michael Kearns: The Ethical Algorithm

Michael KearnsDr. Michael Kearns, of UPENN and co-author of The Ethical Algorithm: The Science of Socially Aware Algorithm Design, will give a virtual colloquium talk on Friday, March 12 from 12:30 – 1:30 PM.  Dr. Kearns is known for his work in the fields of machine learning, algorithmic game theory, and computational social science.

See below for more information about Dr. Kearns and the links for the event.

Abstract: Many recent mainstream media articles and popular books have raised alarms over antisocial algorithmic behavior, especially regarding machine learning and artificial intelligence. The concerns include leaks of sensitive personal data by predictive models, algorithmic discrimination as a side effect of machine learning, and inscrutable decisions made by complex models. While standard and legitimate responses to these phenomena include calls for stronger and better laws and regulations, researchers in machine learning, statistics, and related areas are also working on designing better-behaved algorithms. An explosion of recent research in areas such as differential privacy, algorithmic fairness, and algorithmic game theory is forging a new science of socially aware algorithm design. Kearns will survey these developments and attempt to place them in a broader societal context. This talk is based on the book The Ethical Algorithm, co-authored with Aaron Roth (Oxford University Press).

Speaker Bio: Michael Kearns is a professor in the Computer and Information Science Department and the National Center Chair at the University of Pennsylvania. He also has secondary appointments in the departments of Economics, Statistics, and Operations, Information and Decisions (OID) in the Wharton School. He is the Founding Director of the Warren Center for Network and Data Sciences, founded and directed the Networked and Social Systems Engineering (NETS) Program at Penn. He is also a faculty affiliate in the Applied Math and Computational Science graduate program of the university. Outside of Penn, he is affiliated with the Santa Fe Institute as an external faculty member and, since June 2020, he started a role at Amazon as part of their Scholars Program, focusing on algorithmic fairness, privacy, machine learning, and related topics within Amazon Web Services (AWS). He has extensive research experience in quantitative and algorithmic trading on wall street, working with several large financial institutes, including Lehman Brothers, BOA, SAC Capital, and Morgan Stanley. He is also a member of the Scientific Advisory Board of the Alan Turing Institute and of the Market Surveillance Advisory Group of FINRA. He is an elected Fellow of the American Academy of Arts and Sciences (AAAS), the Association for Computing Machinery (ACM), the Association for the Advancement of Artificial Intelligence (AAAI), and the Society for the Advancement of Economic Theory.

Zoom Meeting (ID: 977 8863 9845 / Password: 277574)
https://tcnj.zoom.us/j/97788639845?pwd=eTd1cVhUamlVN2ZQWUZiazQ5RVFLdz09
YouTube Live Stream
https://youtu.be/suuHqXOfJn4

Spring 2021 Internship Information Sessions

Spring 2021

 

REMINDER:  All CS Majors are required to attend one internship information session before they can apply for internship (CSC 399) for credit.

Be sure to check Dr. Papamichail’s website and come prepared with any additional questions you might have.

Wednesday, March 3  (6:00 – 6:45 PM)
Tuesday, March 16  (7:00 – 7:45 PM)

Zoom session link: https://tcnj.zoom.us/j/98358115019?pwd=eFFqVzB3Smw3TzlWN3E4V1BtMkI0Zz09

Hold the Date!: Michael Kearns to Give Colloquium Talk

Michael Kearns talk

 

Hold the date!   Dr. Michael Kearns, of UPENN and co-author of The Ethical Algorithm: The Science of Socially Aware Algorithm Design, will give a virtual colloquium talk on Friday, March 12 from 12:30 – 1:30 PM.  Dr. Kearns is know for his work in the fields of machine learning, algorithmic game theory, and computational social science.  A full biography and abstract will be available in the coming weeks.

Celebration of Computing: December 2, 2020

This year’s Celebration of Computing presentations will be live streamed on YouTube.

Streaming links have been shared with students via mailing lists.
Please contact cs@tcnj.edu if you have any questions about the schedule.

Student Presentations:  10:30 AM – 12:00 PM

Students who are taking CSC 099 and CSC 199 were assigned a poster to review.  Please use the Qualtrics Survey link provided by your instructor to submit your response. Please note that you must identify yourself in the survey (in the appropriate survey field) in order for your review to be counted toward your course requirements.

Computer Science Colloquium, October 30

On Friday, October 30,  the Computer Science Department will host its second colloquium of the Fall 2020 semester. Dr. Uddipan Das of the Computer Science Department at TCNJ will give a technical talk entitled “Quality-aware Data Management in Smart Grid Communication Networks.  An abstract of his talk can be found below.

Please join CS faculty and students via Zoom from 12:30 – 1:30 PM for this talk.

Zoom Meeting: (ID: 936 1764 8901 / Password: 783429)
https://tcnj.zoom.us/j/92912867463?pwd=cHZVaHkwQmF4UTRoOWkzTG1vc0xkQT09
You must sign in with your TCNJ credentials. Waiting room will be enabled.

Abstract:
The inclusion of various intelligent electronic devices such as smart meters for Advanced Metering Infrastructure (AMI) in Smart Grids is expected to result in intermittent or frequent communications network congestion if additional network infrastructure investments are not made. One approach to deal with such a data volume challenge in smart grids without additional investments to increase network capacity is to aggregate data streams within the underlying communication network whenever network congestion happens. However, this needs to be done carefully so as not to significantly impact the smart grid applications that need the data. In this talk, I will present my research on data management in capacity-constrained communication networks of AMI in Smart Grids considering the requirements of Quality-of-Service (QoS). I will discuss my research contributions in this area to deal with the challenge of managing data traffic while keeping a balance between data granularity and network latencies.

Bio:
Uddipan Das is currently working as an Assistant Professor in the Department of Computer Science at The College of New Jersey. He graduated with a Ph.D. degree in Electrical Engineering and Computer Science from Wichita State University in 2020. Previously, he earned his M.E. degree in Software Engineering from Jadavpur University and B.Tech degree in Computer Science and Engineering from West Bengal University of Technology. His primary research interest centers around the design and development of data-driven algorithms and systems in smart cities; specifically, data management in smart electric power grid communication networks and smart environments for navigation and wayfinding for people with disabilities. He has published peer-reviewed research publications in the top-tier journal and conference venues, and he serves as a reviewer for the IEEE Systems Journal, IEEE ICDCS, IEEE NAPS, and IEEE IGSC, etc. He is a member of IEEE, IEEE Computer Society, and IEEE Power & Energy Society.

AT&T Workshop for CS Juniors & Seniors

AT&T Workshop

Join a panel of TCNJ alumni and representatives from AT&T for the “My Identity: Personal Narrative Workshop” for CS juniors and seniors.  The workshop focus on building interviewing skills for all students, and discussion of internship opportunities for juniors and full-time positions for seniors.

Students must RSVP for the event.  Email cs@tcnj.edu or see Dr. Pulimood’s email from September 25 for more information about the event and the link to RSVP.

Computer Science Colloquium: October 2

On Friday, October 2,  the Computer Science Department will host its first colloquium of the Fall 2020 semester. Niluthpol Chowdhury Mithun of SRI International will give a technical talk entitled “Learning Multimodal Retrieval Models with Limited Labeled Data.  An abstract of his talk can be found below.

Please join CS faculty and students via Zoom from 12:30 – 1:30 PM for this talk.

Zoom Meeting: (ID: 929 1286 7463 / Password: 020525)
https://tcnj.zoom.us/j/92912867463?pwd=cHZVaHkwQmF4UTRoOWkzTG1vc0xkQT09
You must sign in with your TCNJ credentials. Waiting room will be enabled.

Abstract:
In recent years, tremendous success has been achieved in many computer vision and multimedia tasks using deep neural network models trained on large hand-labeled datasets. In many applications, this may be impractical or infeasible, either because of the non-availability of large datasets or the amount of time and resource needed for such labeling. In this respect, an increasingly important problem is in the light of data-hungry deep neural network models is how to learn useful models with limited labeled data. Developing robust models with a limited degree of supervision could be extremely useful for multi-modal retrieval and analysis tasks as collecting training data for these tasks is extremely labor-intensive and prone to significant errors. In this talk, I will go over several multi-modal retrieval tasks (i.e., video-text retrieval, RGB-LiDAR Localization, and text-based video moment retrieval) focusing on developing efficient solutions leveraging available incidental signals or weak labels.

Bio:
Niluthpol Chowdhury Mithun is currently an Advanced Computer Scientist at the Center for Vision Technologies, SRI International in Princeton, NJ, USA. He graduated with a Ph.D. degree in 2019 from Video Computing Group at the University of California, Riverside (UCR). Before joining UCR, he was a Sr. Software Engineer at Samsung R&D Institute Bangladesh. Previously, he received his Bachelors and Masters degree from Bangladesh University of Engineering and Technology. His current research is focused on solving fundamental problems in Computer Vision, and Machine Learning with more focus on representation learning with multiple modalities (e.g., vision, language, LiDAR), learning under limited/weak supervision and multi-modal embedding. He has successfully applied these methods to several real-world problems such as image-text retrieval, video moment localization, video summarization, object detection, visual localization. His work has been published at several high-quality venues such as CVPR, MM, TIP, T-ITS etc. He has won the ACM International Conference on Multimedia retrieval 2018 best paper award and the SRI CVT SharkTank 2019. He serves as a program-committee member/reviewer for venues such as CVPR, ICCV, ECCV, AAAI, MM, ICIP, T-PAMI, T-MM, T-CSVT, T-ITS, PR, PRL

Celebration of Student Achievement: May 6, 2020

This year’s Celebration of Student Achievement events will be live streamed on YouTube.

Streaming links have been shared with students via mailing lists.
Please contact cs@tcnj.edu if you have any questions about the schedule.

Presentation Sessions 12:00 – 2:20 PM
Department Awards Ceremony 2:30 – 3:15 PM
UPE Induction Ceremony 3:30 – 4:15 PM

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