Reinforcement learning is a machine learning technique in which an agent learns to make decisions in an interactive environment through the feedback it receives from its action. The agent's goal is to maximise a long-term numerical reward, which is given to it for making the correct decisions in the environment.
Reinforcement learning is based on the concept of trial and error, where the agent learns through continuous interaction with the environment, adjusting its actions according to the rewards and penalties it receives. The agent explores different actions in the environment, observes the results and learns to select the actions that maximise long-term reward.
Reinforcement learning is commonly used in robotics, gaming and process automation applications, where an autonomous agent must learn to make real-time decisions to achieve specific goals.
Big data analytics is the process of analyzing large and complex data sources to uncover trends, patterns, customer behaviors, and other data sources [...]
Read More »Today we are going to talk about the generation of qualified leads for the acquisition of new customers through AI. At Gamco, we develop software based on [...]
Read More »Nowadays digital transformation is key in any type of business. The 40% of Spanish companies will not exist in its current form in the next few [...]
Read More »Fraud detection software is an important tool for protecting companies and individuals from fraudulent activity and minimizing the risk of fraud.
Read More »