David Ross

David Ross Email and Phone Number

Engineering Manager at Google DeepMind @ Google DeepMind
David Ross's Location
San Jose, California, United States, United States
David Ross's Contact Details

David Ross personal email

n/a
About David Ross

I lead the Visual Information and Dynamics team, a computer vision research group at Google AI. Our goal is to discover new ways to understand video, with an emphasis on objects, motion, and actions. The team's work includes the Tensorflow Object Detection API, as well as models that help power personal video understanding in Google Photos and Cloud Video Intelligence. We publish research at top academic conferences including CVPR, and organize the AVA Challenge, to advance state-of-the-art spatiotemporal action recognition in video.Previously I led the YouTube Mix team that built the personalized algorithmic radio feature at the heart of YouTube Music.I obtained my Ph.D. in Machine Learning and Computer vision from the University of Toronto, Canada.

David Ross's Current Company Details
Google DeepMind

Google Deepmind

View
Engineering Manager at Google DeepMind
David Ross Work Experience Details
  • Google Deepmind
    Research Manager
    Google Deepmind May 2024 - Present
    London, London, Gb
  • Google
    Software Engineering Manager Iii/L7
    Google Nov 2016 - Present
    Mountain View, Ca, Us
    Lead the 10-person Visual Dynamics video understanding research team, which focuses on activity recognition, object detection, and tracking.Released the AVA Actions Dataset, to advance research into human activity recognition in video. (blogpost, website), Organized and ran the AVA Challenges at CVPR 2018–2020.Launched human action recognition for videos in the Google Photos assistant. (blog post)Developed Object Tracking algorithm launched in Google Cloud Video Intelligence API.
  • Google
    Staff Software Engineer
    Google 2012 - Nov 2016
    Mountain View, Ca, Us
    Led the 5-person team that designed, built, and operated the YouTube Mix personalized music recommendation service. Mix is the core feature of the YouTube Music mobile app, and powers music recommendation on Google Home and youtube.com
  • Google
    Senior Software Engineer
    Google Mar 2008 - 2012
    Mountain View, Ca, Us
    Developed Melody Match music fingerprinting and detection system, which added the ability to recognize cover songs and live performances to YouTube Content ID.Designed & built the celebrity face recognizer for the Google Goggles mobile image recognition app
  • University Of Toronto
    Ph. D. Student
    University Of Toronto Jan 2004 - Aug 2008
    Toronto, Ontario, Ca
    Thesis: Learning Probabilistic Models for Visual Motion.machine learning; applications to computer vision, tracking, 3d reconstruction
  • Honda Research Institute
    Intern
    Honda Research Institute 2003 - 2003
    Developed real-time face recognition system for ASIMO, Honda’s humanoid robot.

David Ross Education Details

  • University Of Toronto
    University Of Toronto
    Machine Learning & Computer Visio
  • University Of Toronto
    University Of Toronto
    Machine Learning

Frequently Asked Questions about David Ross

What company does David Ross work for?

David Ross works for Google Deepmind

What is David Ross's role at the current company?

David Ross's current role is Engineering Manager at Google DeepMind.

What is David Ross's email address?

David Ross's email address is dr****@****nto.edu

What schools did David Ross attend?

David Ross attended University Of Toronto, University Of Toronto.

Free Chrome Extension

Find emails, phones & company data instantly

Find verified emails from LinkedIn profiles
Get direct phone numbers & mobile contacts
Access company data & employee information
Works directly on LinkedIn - no copy/paste needed
Get Chrome Extension - Free

Aero Online

Your AI prospecting assistant

Download 750 million emails and 100 million phone numbers

Access emails and phone numbers of over 750 million business users. Instantly download verified profiles using 20+ filters, including location, job title, company, function, and industry.