Machine-learning-dell - Repositório com as atividades desenvolvidas no curso de Machine Learning

Overview

📚 Descrição

Neste curso da Dell aprofundamos nossos conhecimentos em Machine Learning.

🖥️ Aulas (Em curso)

  • 1.1 - Python aplicado a Data Science
  • 1.2 - Introdução a Machine Learning
  • 1.3 - Pré-processamento de Dados
  • 2.1 - Introdução a Regressão
  • 2.2 - Introdução a Classificação
  • 2.3 - KNN (K-Nearest Neighbors)
  • 2.4 - Decision Trees
  • 2.5 - Regressão Logística
  • 3.1 - Introdução a Clusterização
  • 3.2 - K- Means
  • 4.1 - Overfitting e Underfitting
  • 4.2 - Tradeoff Viés/Variância
  • 5.1 - Introdução às Redes Neurais Artificiais
  • 5.2 - Introdução ao Tensor Flow
  • 5.3 - Introdução ao Processamento da Linguagem Natural
  • 6.1 - SVM (Support Vector Machines)
  • 6.2 - Avaliação de Modelos de Classificação e Regressão
  • 6.3 - Random Forest e Gradient Boosted Decision Trees
  • 6.4 - PCA (Principal Component Analysis)

 

Owner
Claudia dos Anjos
Always learning!
Claudia dos Anjos
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