Reinforcement learning
110K
Volume
+488%
Growth
exploding
About the Topic
Reinforcement learning (RL) is a type of machine learning where an agent learns to make decisions by performing actions in an environment to maximize cumulative rewards. It involves key concepts such as agents, environments, states, actions, rewards, policies, value functions, and algorithms like Q-Learning, which help the agent improve its decision-making over time. RL is particularly beneficial for applications requiring adaptive decision-making, such as robotics, game playing, and autonomous systems.
Reinforcement learning was discovered on December 9th 2019 and it currently has a search volume of 110K with a growth of +488%.
Key Indicators
Growth
- Exploding
- Regular
- Peaked
Speed
- Exponential
- Constant
- Stationary
Seasonality
- High
- Medium
- Low
Volatility
- High
- Average
- Low
Members Only
Try Exploding Topics Pro
Get Free, Unlimited Access for 7 Days.
Save this topic and build your own trend dashboard.
Available with Exploding Topics Pro, try it now.
1.1M+ trends in our growing database.