• Home
  • Statistics▾
    • Data Types
    • Missing Values
    • Outliers
    • Confusion Matrix
    • Pre-processing
    • Exploratory Data Analysis
    • Bias-Variance Tradeoff
    • Train-Test split
  • Python▾
    • Importing data
    • Heatmap
  • Supervised▾
    • Decision Trees
    • Naive Bayes
    • Support Vector Machines
    • Logistic Regression
    • Ensemble Models
    • Random Forest
  • Unsupervised▾
    • Principal Component Analysis
  • Time Series▾
    • Importing Time Series data
    • Basic conceptss
    • Time Series Components
    • Exponential Smoothing Techniques
    • Time series Cross-validation & Forecasting Accuracy
    • ARIMA/SARIMA with Python
  • Deep Learning▾
    • Deep Learning Basics
    • Building a Deep Learning Model
  • Privacy Policy
  • About Me

Data Science Simplified

Learning the Machine Learning, in a Human-friendly Way

Download free ebook 'Machine Learning Techniques with examples'

Hi,

You can download my ebook (186 pages) for free from this link. No emails asked, no sign-ins, nothing. Just free.

Happy learning. I wish you all the best.



at October 18, 2019
Email ThisBlogThis!Share to XShare to FacebookShare to Pinterest
Labels: free ebook
Newer Post Older Post Home
View mobile version

Popular Posts

  • Confusion Matrix, Accuracy, Precision, Recall, F score Explained with Intuitive Visual Examples
  • Feature Selection: Filter method, Wrapper method and Embedded method
  • ARIMA/SARIMA with Python: Understand with Real-life Example, Illustrations and Step-by-step Descriptions
  • Train-Test split and Cross-validation: Visual Illustrations & Examples
  • Demystifying Principal Component Analysis (PCA): A Beginner's Guide with Intuitive Examples & Illustrations
  • Components of Time Series: A Beginner's Visual Guide
  • The Chi-Square Test Explained with Examples: A Beginner's Guide
  • Logistic Regression: A Beginner's Visual Guide
  • Time series Cross-validation and Forecasting Accuracy: Understand with Illustrations & Examples
  • Support Vector Machines (SVM) Explained with Visual Illustrations

Total Pageviews

Blog Archive

  • ►  2023 (9)
    • ►  March (9)
  • ►  2021 (1)
    • ►  September (1)
  • ►  2020 (2)
    • ►  November (1)
    • ►  July (1)
  • ▼  2019 (14)
    • ▼  October (7)
      • Feature Selection using sklearn
      • Feature Engineering for Machine Learning
      • Feature Selection: Filter method, Wrapper method a...
      • Naïve Bayes classification model for Natural Langu...
      • Download free ebook 'Machine Learning Techniques w...
      • Natural Language Processing made simple: Word Clou...
      • Hierarchical and K-means cluster analysis with exa...
    • ►  September (1)
    • ►  January (6)
  • ►  2018 (18)
    • ►  December (4)
    • ►  November (14)

Labels

Statistics (22) Supervised Learning (5) timeseries (5) Python (3) Deep Learning (2) NLP (2) Natural Language Processing (2) Unsupervised Learning (2) Sentiment Analysis and Topic Modelling (1) Word Cloud (1) free ebook (1)

Go to Home Page

  • Home