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This repository contains my learning path of python for data-science essential training(part-2). Here, I have included chapter-wise topics and my practice problems. Also, feel free to checkout for better understanding.

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data-science machine-learning linear-regression logistic-regression k-means-clustering explanatory-data-analysis neural-networks bayesian-methods ensemble-model

python-data-science-essentials-2's Introduction

Python - Data Science Essentials (Part 2)

Date - 27th October, 2020 - 06th November, 2020

This repository contains my learning path of Python for Data Science (Part 2).

Here, I haven't included the files of Chapter 1 and 2, since there was no practical implementation works needed and was more of an introduction. However, I am listing out the chapters.

Chapter 1 - Introduction to Data Science

  • Defining data science
  • Why use Python for data science?
  • Where does AI fit in?

Chapter 2 - Introduction to Machine Learning

  • Machine learning 101
  • Grouping Machine learing algorithms

Chapter 3 - Regression Models

  • Linear regression
  • Multiple linear regression
  • Logistic regression : Concepts
  • Logistic regression : Data preparation
  • Logistic regression : Treat missing values
  • Logistic regression : Re-encode variables
  • Logistic regression : Validating dataset
  • Logistic regression : Model deployment
  • Logistic regression : Model evaluation
  • Logistic regression : Test prediction

Chapter 4 - Clustering Models

  • K-means method
  • Hierarchical methods
  • DBSCAN for outlier detection

Chapter 5 - Dimension Reduction Methods

  • Explanatory factor analysis
  • Principal componenet analysis (PCA)

Chapter 6 - Other Popular Machine Learning Methods

  • Association rules models with Apriori
  • Neural networks with a perceptron
  • Instance-based learning with KNN
  • Decision tree models with CART
  • Bayesian models with Naive Bayes
  • Ensemble models with random forests

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