ML@GT Fall Seminar: Aleksandra Faust, Google Brain Robotics

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Event Details
  • Date/Time:
    • Wednesday October 23, 2019
      12:15 pm - 1:15 pm
  • Location: EBB CHOA
  • Phone:
  • URL:
  • Email:
  • Fee(s):
    N/A
  • Extras:
Contact

Allie McFadden

Communications Officer

allie.mcfadden@cc.gatech.edu

Summaries

Summary Sentence: The Machine Learning Center at Georgia Tech invites you to a seminar by Aleksandra Faust, a staff research scientist from Google Brain Robotics.

Full Summary: No summary paragraph submitted.

Media
  • Aleksandra Faust Aleksandra Faust
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The Machine Learning Center at Georgia Tech invites you to a seminar by Aleksandra Faust, a staff research scientist at Google Brain Robotics.


TITLE

Deep Learning Motion and Task Planning

ABSTRACT

To complete a task a planning agent must be able to control the robot, understand the abilities and limitations of the control policy, prioritize and select attainable subgoals, and come up with a safe and a feasible plan in a timely manner. In this talk, I will discuss our current progress and the role of the deep learning in each planning phase to learn plans and motions that generalize to unseen real-world environments. First, evolutionary algorithms automate reward design in reinforcement learning and result in end-to-end policies that avoid moving obstacles and transfer from simulation to reality. Those policies incorporate, not only robot space occupancy, but also uncertainties coming from sensors and dynamics for wide classes of robots: differential drive robots with kinodynamic constraints: car, legged robot, etc. with both 1D and 2D depth sensors. Second, deep neural networks learn to estimate the difficulty of the motion to aid the selection of task subgoals, and even to identify important and feasible milestones that the agent needs to reach in order to complete the task. Third, we discuss how curriculum learning and quantization techniques aimed at enabling deep learning to run in real world.

BIO

Aleksandra Faust is a Staff Research Scientist at Google Brain Robotics, specializing in robot motion planning and reinforcement learning. Previously, Aleksandra led machine learning efforts for self-driving car planning and controls in Waymo, and was a researcher in Sandia National Laboratories. She earned a Ph.D. in Computer Science at the University of New Mexico (with distinction), and a Master's in Computer Science from the University of Illinois at Urbana-Champaign. Her research interests include machine learning for safe, scalable, and socially-aware motion planning, decision-making, and robot behavior. Aleksandra won the Tom L. Popejoy Award for the best doctoral dissertation at the University of New Mexico in Engineering, Mathematics, and Sciences in the period of 2011-2014, and was named Distinguished Alumna by the University of New Mexico School of Engineering. Her work has been featured in the New York Times, PC Magazine, ZdNet, and ​was awarded Best Paper in Service Robotics at ICRA 2018 and Best Paper in Reinforcement Learning for Real Life (RL4RL) at ICML.

Additional Information

In Campus Calendar
No
Groups

College of Computing, GVU Center, ML@GT, School of Interactive Computing

Invited Audience
Faculty/Staff, Postdoc, Public, Graduate students, Undergraduate students
Categories
Seminar/Lecture/Colloquium
Keywords
No keywords were submitted.
Status
  • Created By: ablinder6
  • Workflow Status: Published
  • Created On: Aug 6, 2019 - 9:00am
  • Last Updated: Oct 3, 2019 - 9:49am