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MuJoCo Continuous Control Tasks
The dataset used in the paper is a collection of data from the MuJoCo continuous control tasks. -
MuJoCo environments
The dataset used in the paper is not explicitly described, but it is mentioned that the authors used MuJoCo environments from the OpenAI gym. -
Inverted Pendulum
The dataset used in the paper is an Inverted Pendulum dataset, which is a standard benchmark system in control and reinforcement learning. -
DeepMind Control Suite and PyBullet Environments
The dataset used in this paper is the DeepMind Control Suite and PyBullet Environments. -
Cartpole system
The dataset used in this paper is a Cartpole system, where the objective is to prevent the pole from falling over by pushing the cart to the left or to the right. -
Mountain Car
The dataset used in the paper is a reinforcement learning dataset, specifically a Markov Decision Process (MDP) with a finite set of states and actions. -
Lunar Lander
The dataset used in this paper is a collection of data points from a lunar lander, which is used to test the proposed APG algorithm for task switching. -
CartPole, Pendulum, and LunarLander
The dataset used in the paper is a set of environments for reinforcement learning, including CartPole, Pendulum, and LunarLander. -
DeepMind Control Suite
The DeepMind Control Suite is a collection of 20 robotic manipulation tasks, each with 5 different environments and 5 different robot parameters. The tasks are designed to test...