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Inicio 4 June 2026 22:40

Fin 4 June 2026

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Iniciar Arquitecturas Avanzadas de Modelos de Redes Neuronales

Domina arquitecturas de redes neuronales avanzadas con implementaciones prácticas en Keras/PyTorch, técnicas de regularización y evaluación sistemática para aplicaciones del mundo real.
Coursera via Coursera

Coursera

2868 Cursos


2 hours 16 minutes

Actualización opcional disponible

Not Specified

Avanza a tu propio ritmo

Paid Course

Actualización opcional disponible

Resumen

Neural networks power the intelligent systems transforming industries today—from autonomous vehicles to personalized recommendations. This Short Course was created to help data analysts accomplish the critical transition from traditional machine learning to deep learning architectures.

By completing this course, you'll be able to design, implement, and optimize neural networks that meet real-world performance standards while preventing overfitting through systematic evaluation. By the end of this course, you will be able to:

Build feed-forward neural networks using Keras/PyTorch with documented architecture decisions Evaluate model performance through learning-curve analysis and validation metrics Implement regularization techniques to achieve specified generalization targets This course is unique because it combines theoretical foundations with hands-on implementation, emphasizing both performance achievement and systematic documentation practices essential for production environments.

To be successful in this project, you should have a background in Python programming, basic machine learning concepts, and familiarity with data preprocessing techniques.

Programa

  • Módulo 1: Implementación de Red de Propagación Directa - Fundamentos
  • Construir una red neuronal de propagación directa utilizando Keras/PyTorch, alcanzar una pérdida de validación especificada y documentar las decisiones de arquitectura.
  • Módulo 2: Evaluación de Sobreajuste y Regularización - Aplicación Principal
  • Evaluar el sobreajuste mediante el análisis de curvas de aprendizaje e implementar regularización (dropout/L2) para cumplir con los objetivos de generalización.

Impartido por

Hurix Digital


Materias

Artificial Intelligence