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Inicio 4 June 2026 09:32

Fin 4 June 2026

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Machine Learning: Artificial Intelligence Decision Making with Minimax

Descubre el potencial de los ordenadores en la toma de decisiones y en los juegos con nuestro curso de Aprendizaje Automático: Toma de Decisiones de Inteligencia Artificial con Minimax, ofrecido por Codecademy. Este programa inmersivo se adentra en el núcleo del Aprendizaje Automático, enfocándose particularmente en el uso estratégico del Algoritmo.
via Codecademy

67 Cursos


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Resumen

Unlock the potential of computers in decision-making and gaming with our Machine Learning:

Artificial Intelligence Decision Making with Minimax course, offered by Codecademy. This immersive program delves into the core of Machine Learning, focusing particularly on the strategic use of the Minimax Algorithm that forms the backbone of AI in games and decision-making processes.

Participants will gain a solid understanding of how to integrate perceptions into neural networks, enhancing their capability to make calculated decisions akin to human reasoning.

The course content is meticulously designed to cover essential topics such as:

  • The fundamentals and workings of neural networks.
  • Step-by-step guidance on building your own neural network from scratch.
  • Practical experience in programming computers to play games using Minimax, showcasing the power of artificial intelligence in a fun and engaging way.

Suitable for a broad range of learners, from beginners to those looking to deepen their understanding of Machine Learning, this course falls under multiple categories including Artificial Intelligence Courses, Machine Learning Courses, Neural Networks Courses, and Game Development Courses, ensuring a comprehensive learning experience that bridges multiple facets of AI and Machine Learning.


Impartido por

Michelle McSweeney


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