![Hands-On Reinforcement Learning with Python](https://wfqqreader-1252317822.image.myqcloud.com/cover/745/36699745/b_36699745.jpg)
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Agent environment interface
Agents are the software agents that perform actions, At, at a time, t, to move from one state, St, to another state St+1. Based on actions, agents receive a numerical reward, R, from the environment. Ultimately, RL is all about finding the optimal actions that will increase the numerical reward:
![](https://epubservercos.yuewen.com/492352/19470392101558306/epubprivate/OEBPS/Images/Chapter_346.jpg?sign=1738928086-8d6c1lODHpvO1BHEGl5i24JTgnX8kp3R-0-c160befb7e010dd62954c10c3d8f0c23)
Let us understand the concept of RL with a maze game:
![](https://epubservercos.yuewen.com/492352/19470392101558306/epubprivate/OEBPS/Images/Chapter_255.jpg?sign=1738928086-dKkbJy4pvT8Y8njCZyS8EZvYKytxFBkx-0-67075b601f18d3e52fa545015d9bc2f3)
The objective of a maze is to reach the destination without getting stuck on the obstacles. Here's the workflow:
- The agent is the one who travels through the maze, which is our software program/ RL algorithm
- The environment is the maze
- The state is the position in a maze that the agent currently resides in
- An agent performs an action by moving from one state to another
- An agent receives a positive reward when its action doesn't get stuck on any obstacle and receives a negative reward when its action gets stuck on obstacles so it cannot reach the destination
- The goal is to clear the maze and reach the destination