The evolution of intelligent systems refers to the process of continuous improvement and adaptation of intelligent systems over time, as they face new challenges and accumulate more experience and knowledge.
In artificial intelligence and machine learning, intelligent systems evolve through the constant feedback they receive through interaction with the real world and feedback from users. This allows systems to adapt to different environments and situations, and improve their performance and accuracy in performing specific tasks.
The evolution of intelligent systems also involves the improvement of the algorithms and models used in the systems, as well as the incorporation of new techniques and technologies that enable faster and more accurate processing of large volumes of data.
In short, intelligent systems evolution is the process of continuous improvement and adaptation of intelligent systems as they face new challenges and as more experience and knowledge is accumulated. It is a fundamental part of the development of artificial intelligence and machine learning, as it enables the creation of more efficient and accurate systems to perform specific tasks.
Today we are going to explain the differences between a traditional CRM (Customer Relationship Management) and an intelligent CRM by applying technology that [...]
Read More »The content of this article synthesizes part of the chapter "Concept and brief history of Artificial Intelligence" of the thesis Generation of Artificial [...]
Read More »An article published in April 2021 by Óscar Jiménez El Confidencial, was titled "34,000 M prize for banks for applying well i [...]
Read More »If you've ever wondered how Spotify recommends songs you like or how Siri and Alexa can understand what you say to them... the answer is that you can [...]
Read More »