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The present notebook provides data analysis on several datasets using different machine learning (ML) techniques including supervised ML, unsupervised ML, and recommender system

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Farhad-Davaripour/Machine_learning_with_python

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Hands-on Practice Learning Lab for Data Science

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Overview


This repository includes several hands on labs provided as a part of Machine Learning with Python course, offered by coursera.org.

The present notebook provides data analysis on several datasets using different machine learning (ML) techniques including:

  • Supervised ML
    • regression models
    • classification methods
      • K nearest neighbor
      • decision tree
      • logistic regression
      • support vector machine (SVM)
  • Unsupervised ML
    • clustering
      • partition-based method (k-mean)
      • hierarchical method (Agglomerative clustering)
      • density-based method (DSSCAN method)
  • Recommender system
    • content based
    • collaborative based

✓ Link to the notebook: Link

About The Author

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  • Farhad Davaripour is a finite element specialist/data science enthusiast with near 3 years of experience working in research and development roles. He has a knack for problem-solving and passion for data science (He is certified with IBM Data Science Professional Certificate).
  • Connect with Farhad on LinkedIn.

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The present notebook provides data analysis on several datasets using different machine learning (ML) techniques including supervised ML, unsupervised ML, and recommender system

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