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Inicio 4 June 2026 01:26

Fin 4 June 2026

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Modelos Gráficos Probabilísticos: Una Introducción Compacta

Domina los modelos gráficos probabilísticos para el diagnóstico médico y la predicción de riesgos con redes bayesianas, algoritmos de inferencia e implementación en Python utilizando pgmpy.
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2865 Cursos


2 hours 40 minutes

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Paid Course

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Resumen

Probabilistic graphical models are widely used in medical diagnosis, fault detection, and risk prediction systems where calibrated probabilistic reasoning is critical for decision support. This Short Course was created to help Machine Learning and Artificial Intelligence professionals accomplish building robust inference systems that handle uncertainty with mathematical rigor.

By completing this course, you'll master the foundational representations and algorithms that power recommendation engines, diagnostic systems, and causal inference applications across industries. By the end of this course, you will be able to:

Apply conditional independence principles to construct Bayesian and Markov network representations for a given real-world problem statement, Analyze variable-elimination and belief-propagation outputs to compute marginal probabilities and identify computational bottlenecks in small networks, and Evaluate the trade-offs between exact and sampling-based inference methods to recommend an approach suitable for a network's size and sparsity.

This course is unique because it combines theoretical foundations with hands-on Python implementation using pgmpy and pomegranate, providing both mathematical understanding and practical coding experience. To be successful in this project, you should have a background in probability theory, basic graph theory, and Python programming.

Programa

  • Módulo 1: Representaciones de Redes Bayesianas y de Markov - Fundamentos
  • Aplicar principios de independencia condicional para construir representaciones de redes bayesianas y de Markov para enunciados de problemas del mundo real.
  • Módulo 2: Algoritmos de Inferencia y Análisis Computacional - Aplicación
  • Analizar los outputs de eliminación de variables y propagación de creencias para calcular probabilidades marginales e identificar cuellos de botella computacionales en redes pequeñas.
  • Módulo 3: Evaluación de Métodos Exactos vs de Muestreo - Maestría
  • Evaluar las compensaciones entre métodos de inferencia exactos y basados en muestreo para recomendar un enfoque adecuado según el tamaño y la dispersión de la red.

Impartido por

Hurix Digital


Materias

Computer Science