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README.md

sitc

Exercises for Intelligent Systems Course at Universidad Politécnica de Madrid, Telecommunication Engineering School. This material is used in the subjects

  • CDAW (Ciencia de datos y aprendizaje en automático en la web de datos) - Master Universitario de Ingeniería de Telecomunicación (MUIT)
  • ABID (Analítica de Big Data) - Master Universitario en Ingeniera de Redes y Servicios Telemáticos)

For following this course:

Topics

  • Python: a quick introduction to Python
  • ML-1: introduction to machine learning with scikit-learn
  • ML-2: introduction to machine learning with pandas and scikit-learn
  • ML-21: preprocessing and visualizatoin
  • ML-3: introduction to machine learning. Neural Computing
  • ML-4: introduction to Evolutionary Computing
  • ML-5: introduction to Reinforcement Learning
  • NLP: introduction to NLP
  • LOD: Linked Open Data, exercises and example code
  • SNA: Social Network Analysis