Difference between revisions of "Deep Reinforcement Learning (DRL)"

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== IMPALA (Importance Weighted Actor-Learner Architecture) ==
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[http://www.youtube.com/results?search_query=Impala+AGI+machine+artificial+intelligence+deep+learning+simple YouTube search...]
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[http://www.google.com/search?q=Impala+AGIb+deep+machine+learning+ML ...Google search]
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* [http://www.extremetech.com/extreme/275768-artificial-general-intelligence-is-here-and-impala-is-its-nameDeepMind Artificial General Intelligence Is Here, and Impala Is Its Name | Aaron Krumins]
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* [http://deepmind.com/blog/open-sourcing-deepmind-lab/ DeepMind Lab]
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* [http://deepmind.com/research/publications/impala-scalable-distributed-deep-rl-importance-weighted-actor-learner-architectures/ IMPALA: Scalable Distributed Deep-RL with Importance Weighted Actor-Learner Architectures]
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* [http://deepmind.com/blog/impala-scalable-distributed-deeprl-dmlab-30/  Importance Weighted Actor-Learner Architectures: Scalable Distributed DeepRL in DMLab-30]
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uses resources more efficiently in single-machine training but also scales to thousands of machines without sacrificing data efficiency or resource utilisation. We achieve stable learning at high throughput by combining decoupled acting and learning with a novel off-policy correction method called V-trace. IMPALA is able to achieve better performance than previous agents with less data, and crucially exhibits positive transfer between tasks as a result of its multi-task approach.
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http://ai2-s2-public.s3.amazonaws.com/figures/2017-08-08/cbddc41e5b07ad8e3f7982e232bafba84c8419cc/5-Figure3-1.png
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http://storage.googleapis.com/deepmind-live-cms/images/Impala-Figures-180206-r01-03%2520%25281%2529.width-1500.png

Revision as of 16:40, 1 September 2019

Youtube search... ...Google search

OTHER: Policy Gradient Methods

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375px-Reinforcement_learning_diagram.svg.png 1*BEby_oK1mU8Wq0HABOqeVQ.png

Goal-oriented algorithms, which learn how to attain a complex objective (goal) or maximize along a particular dimension over many steps; for example, maximize the points won in a game over many moves. Reinforcement learning solves the difficult problem of correlating immediate actions with the delayed returns they produce. Like humans, reinforcement learning algorithms sometimes have to wait a while to see the fruit of their decisions. They operate in a delayed return environment, where it can be difficult to understand which action leads to which outcome over many time steps.

IMPALA (Importance Weighted Actor-Learner Architecture)

YouTube search... ...Google search

uses resources more efficiently in single-machine training but also scales to thousands of machines without sacrificing data efficiency or resource utilisation. We achieve stable learning at high throughput by combining decoupled acting and learning with a novel off-policy correction method called V-trace. IMPALA is able to achieve better performance than previous agents with less data, and crucially exhibits positive transfer between tasks as a result of its multi-task approach.

5-Figure3-1.png



Impala-Figures-180206-r01-03%2520%25281%2529.width-1500.png