- About
- Events
- Calendar
- Graduation Information
- Cornell Learning Machines Seminar
- Student Colloquium
- BOOM
- Spring 2025 Colloquium
- Conway-Walker Lecture Series
- Salton 2024 Lecture Series
- Seminars / Lectures
- Big Red Hacks
- Cornell University / Cornell Tech - High School Programming Workshop and Contest 2025
- Game Design Initiative
- CSMore: The Rising Sophomore Summer Program in Computer Science
- Explore CS Research
- ACSU Research Night
- Cornell Junior Theorists' Workshop 2024
- People
- Courses
- Research
- Undergraduate
- M Eng
- MS
- PhD
- Admissions
- Current Students
- Computer Science Graduate Office Hours
- Advising Guide for Research Students
- Business Card Policy
- Cornell Tech
- Curricular Practical Training
- A & B Exam Scheduling Guidelines
- Fellowship Opportunities
- Field of Computer Science Ph.D. Student Handbook
- Graduate TA Handbook
- Field A Exam Summary Form
- Graduate School Forms
- Instructor / TA Application
- Ph.D. Requirements
- Ph.D. Student Financial Support
- Special Committee Selection
- Travel Funding Opportunities
- Travel Reimbursement Guide
- The Outside Minor Requirement
- Robotics Ph. D. prgram
- Diversity and Inclusion
- Graduation Information
- CS Graduate Minor
- Outreach Opportunities
- Parental Accommodation Policy
- Special Masters
- Student Spotlights
- Contact PhD Office
Re-thinking Recommendation Systems in the Era of Conversational Interfaces
Abstract: Recommender systems have used machine-learning techniques extensively to improve the quality of many web properties. Many of these changes have occurred in the context of the existing user experience that is GUI-centric. Recent developments in natural language processing are enabling a new user experience that uses voice as an integral component. I will make the case that a voice-based recommender experience will be very different from the current recommender experience and will outline a research agenda around this coming change.
Bio: Tushar Chandra is a Distinguished Engineer at Google, working in the intersection of machine learning and natural language processing. He was one of the creators of Sibyl, a large scale machine learning system that was widely used within Google. Prior to his work on Machine Learning, Tushar worked on large scale distributed systems such as Google's Bigtable and a fault-tolerant distributed consensus system that is widely used inside Google. Tushar received his Ph.D. in Computer Science from Cornell University in 1993 with Prof. Sam Toueg, then he worked at IBM Research, and was the lead architect at Tivoli software until he joined Google in 2004. He was a joint winner of the 2010 Edsger W. Dijkstra Prize in Distributed Computing, which was based on his work at Cornell.