Computing and Data Science PhD Student Seminar Series

The Boston University PhD program is home to a wide range of students, all studying various facets of data science. To help give students a friendly opportunity to practice and develop their research skills, we are launching the Computing and Data Science PhD Student Seminar Series. This series is focused on allowing doctoral students to present their research within a supportive and collaborative environment. Each seminar offers students a chance to share their findings, practice presentation skills, and receive constructive feedback from peers and faculty in a friendly, non-judgmental setting. This format not only helps students refine their work but also fosters essential communication skills that are crucial for their academic and professional careers.

Beyond the academic benefits, the seminar series is a community-building endeavor that seeks to strengthen connections among CDS students. By creating a space for students to share their work with the public, students from various backgrounds can learn from each other's experiences and methodologies.

The seminar series, organized by students Freddy Reiber, Lingyi Xu, and Yan (Stella) Si, meets weekly throughout the year on Fridays from noon to 1 PM, with lunch during the talk. Students interested in giving a talk should reach out to the organizers through email.

You can also view more details at the link here.


 

CDS PhD Student Lightning Talk Competition

April 24, 2026, 12-1 PM - CDS 1646

Abstract: Come listen to the cutting-edge ideas CDS PhD students are working on, and vote for your favorite talks! PhD students will each deliver a 2-minute lightning talk (plus 1 minute of Q&A) on their research interests, in-progress work, or new project ideas. You, the audience, anonymously pick the winners across three categories: Most Interesting Subject Matter, Most Entertaining Speaker, and Most Out There / Avant-Garde. The event is open to all students, faculty, and staff.


Stop the Nonconsensual Use of Nude Images in Research (Published at NeurIPS 2025 - Oral)

May 1, 2026, 12-1 PM - CDS 1635

Abstract: In order to train, test, and evaluate nudity detection models, machine learning researchers typically rely on nude images scraped from the Internet. Our research finds that this content is collected and, in some cases, subsequently distributed by researchers without consent, leading to potential misuse and exacerbating harm against the subjects depicted. We argue that the distribution of nonconsensually collected nude images by researchers perpetuates image-based sexual abuse and that the machine learning community should stop the nonconsensual use of nude images in research. To characterize the scope and nature of this problem, we conducted a systematic review of papers published in computing venues that collect and use nude images. Our results paint a grim reality: norms around the usage of nude images are sparse, leading to a litany of problematic practices like distributing and publishing nude images with uncensored faces, and intentionally collecting and sharing abusive content. We conclude with a call-to-action for publishing venues and a vision for research in nudity detection that balances user agency with concrete research objectives. You can check out the paper here: openreview.net/pdf?id=Ev5xwr3vWh

Bio: Princessa Cintaqia is a PhD student at Boston University's Faculty of Computing and Data Sciences working with Allison McDonald. Previously, she earned her bachelor's from the University of Indonesia in her beautiful home country of Indonesia. She is interested in socially aware computer security, especially in the context of sexual privacy and human-centered cryptography.

Past Talks