Reactive machines are artificial intelligence models that continuously interact with their environment, without maintaining an internal representation of it. These models rely on rules and heuristics to make real-time decisions and adjust to changing environmental conditions. Reactive machines are particularly useful in real-time applications, such as robot control systems and autonomous navigation systems, as they can make fast and accurate decisions without the need to process large amounts of data or maintain long-term memory. However, reactive machines are limited in their ability to learn from experience and adapt to new and unfamiliar situations. They are therefore used in combination with other machine learning approaches, such as reinforcement learning and supervised learning, to improve their adaptive and decision-making capabilities.
We often wonder what examples of AI we can find in our environment, and the fact is that artificial intelligence is a concept that in English has [...]
Read More »The first thing you need to know is the limits of AI and after mastering the basic concepts you will be able to build a large commercial software with intelligent [...]
Read More »After the revolutions led by coal, electricity, and then electronics, society is now witnessing a fourth revolution in the energy sector.
Read More »The term Business Intelligence (or BI) defines the use of information technologies to identify, discover, and analyze business data, such as business [...]
Read More »