Unlocking Generalization for Robotics via Modularity and Scale - Robotics Institute Carnegie Mellon University
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PhD Thesis Proposal

July

12
Fri
Murtaza Dalal PhD Student Robotics Institute,
Carnegie Mellon University
Friday, July 12
2:00 pm to 3:30 pm
GHC 4405
Unlocking Generalization for Robotics via Modularity and Scale

Abstract:
How can we build generalist robot systems? Looking at fields such as vision
and language, the common theme has been large scale end-to-end learning with
massive, curated datasets. In robotics, on the other hand, scale alone may not
be enough due to the significant multimodality of robotics tasks, lack of easily
accessible data and the safety and reliability challenges of deploying on physical
hardware. Meanwhile, some of the most successfully deployed robotic systems today
are inherently modular and can leverage the independent generalization capabilities
of each module to perform well. Inspired by these qualities, this thesis seeks to
tackle the task of building generalist robot agents by integrating these components
into one: combining modularity with large scale learning for general purpose robot
control.

We begin by exploring these two aspects independently. The first question we
consider is: how can we build modularity and hierarchy into learning systems?
Our key insight is that rather than having the agent learn hierarchy and low-level
control end-to-end, we can explicitly enforce modularity via planning to enable
significantly more efficient and capable robot learners. Next, we come to the role
of scale in building generalist robot systems. To effectively scale, neural networks
require vast amounts of diverse data, expressive architectures to fit the data and
a source of supervision to generate the data. To that end, we leverage a powerful
supervision source: classical planning algorithms, which can generalize broadly, but
are expensive to run and require access to perfect, privileged information to perform
well in practice. We use these planning algorithms to supervise large-scale policy
learning in simulation to produce generalist agents.

Finally, in the proposed work, we consider how to unify modularity with large-
scale policy learning to build autonomous real-world robot systems capable of
performing zero-shot long-horizon manipulation. We plan to do so by tightly in-
tegrating key ingredients of modular high and mid-level planning, learned local
control, procedural scene generation and large-scale policy learning for sim2real
transfer.

Thesis Committee Members:
Ruslan Salakhutdinov, Chair
Deepak Pathak
David Held
Shuran Song, Stanford
Ankur Handa, NVIDIA

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