“‘OA5’ Tag”,2019-12-17 ():
![]()
Bibliography for tag
reinforcement-learning/model-free/oa5, most recent first: 16 annotations & 14 links (parent).
- See Also
- Links
- “Towards Playing Full MOBA Games With Deep Reinforcement Learning”, et al 2020
- “Mastering Complex Control in MOBA Games With Deep Reinforcement Learning”, et al 2019
- “Dota 2 With Large Scale Deep Reinforcement Learning”, et al 2019
- “OpenAI Five: 2016–32019”, OpenAI 2019
- “Solving Rubik’s Cube With a Robot Hand”, OpenAI et al 2019
- “Solving Rubik’s Cube With a Robot Hand [Blog]”, OpenAI 2019
- “An Empirical Model of Large-Batch Training”, et al 2018
- “How AI Training Scales”, et al 2018
- “Emergent Complexity via Multi-Agent Competition”, et al 2017
- “Proximal Policy Optimization Algorithms”, et al 2017
- “Net2Net: Accelerating Learning via Knowledge Transfer”, et al 2015
- “Dota 2 With Large Scale Deep Reinforcement Learning § Pg11”, 2024 (page 11 org openai)
- “OpenAI’s Long Pursuit of Dota 2 Mastery”, Synced2024
- “Solving Rubik’s Cube With a Robot Hand: Perturbations”
- “NVIDIA NTECH 2018—Ilya Sutskever Keynote Talk”
- “If You Want to Solve a Hard Problem in Reinforcement Learning, You Just Scale. It’s Just Gonna Work Just like Supervised Learning. It’s the Same, the Same Story Exactly. It Was Kind of Hard to Believe That Supervised Learning Can Do All Those Things, but It’s Not Just Vision, It’s Everything and the Same Thing Seems to Hold for Reinforcement Learning Provided You Have a Lot of Experience.”
- Wikipedia
- Miscellaneous
- Bibliography