This course contains the course contents of Hands-on Virtual Workshop on Python and R for Data Science and Machine Learning, Batch-7.
Course Outline
Introduction:Â An introduction to machine learning, supervised and unsupervised learning, the future of machine learning, and how to download secondary data from the Internet.
Python for Data Science & Machine LearningÂ
Environment Setup for Python: 1. Google Colab setup, 2. Google Colab interface overview, 3. Jupyter Notebook setup, 4. Jupyter Notebook interface overview.
Python Basics for Data Science & Machine Learning:Â 1. lists and tuples, 2. Flow control statements, 3. Functions.
Data Preprocessing in Python: 1. Importing dataset, 2. Data cleaning, 3. Uses of Pandas, Numpy, Matplotlib, and Scikit-learn libraries, 4. Encoding categorical data, 5. Splitting dataset, 6. Feature scaling.
Data Visualization Using Python: 1. Scatter plot, 2. Boxplot, 3. Histogram, 4. Line plot.
Building Some Useful Machine Learning Models Using Python: 1. Simple linear regression, 2. Multiple linear regression, 3. Logistic regression, 4. K-means clustering, 5. Principal component analysis.
R for Data Science & Machine LearningÂ
Environment Setup for R: 1. R Setup, 2. RStudio Setup, 3. RStudio interface overview.
Data Preprocessing in R: 1. Importing dataset, 2. Encoding categorical data, 3. Splitting dataset, 4. Feature scaling
Data Visualization Using R: 1. Scatter plot, 2. Boxplot, 3. Histogram, 4. Line plot.
Building Useful Machine Learning Models Using R: 1. Simple linear regression, 2. Multiple linear regression, 3. Decision tree regression, 4. Random Forest regression, 5. Naive Bayes, 6. Decision tree classification, 7. Random Forest classification, 8. Natural language processing, 9. Principal component analysis, 10. XGBoost
Course Features
- Lectures 68
- Quizzes 9
- Duration Lifetime access
- Skill level All levels
- Language Bangla
- Students 164
- Certificate Yes
- Assessments Yes
- 3 Sections
- 68 Lessons
- Lifetime
- Introduction1
- Python Section38
- 2.1Day-1 đ Environment Setup70 Minutes
- 2.2Day-2 đ Lists in Python (Part-1)90 Minutes
- 2.3Day-3 đ Lists in Python (Part-2)90 Minutes
- 2.4Day-4 đ Flow Control in Python (Part-1)44 Minutes
- 2.5Day-5 đ Flow Control in Python (Part-2)90 Minutes
- 2.6Day-6 đ Flow Control in Python (Part-3)90 Minutes
- 2.7Day-7 đ A Short Program: Guess the Number88 Minutes
- 2.8Day-8 đ Functions in Python80 Minutes
- 2.9PDSML Quiz-1 đ Python Basics10 Minutes22 Questions
- 2.10Day-9 đ Data Preprocessing in Python (Part-1)85 Minutes
- 2.11Day-10 đ Data Preprocessing in Python (Part-2)96 Minutes
- 2.12Day-11 đ Data Preprocessing in Python (Part-3)90 Minutes
- 2.13Day-12 đ Data Preprocessing in Python (Part-4)80 Minutes
- 2.14PDSML Quiz-2 đ Data Preprocessing in Python10 Minutes10 Questions
- 2.15Day-13 đ Simple Linear Regression in Python (Part-1)60 Minutes
- 2.16Day-14 đ Simple Linear Regression in Python (Part-2)90 Minutes
- 2.17Day-15 đ Simple Linear Regression in Python (Part-3)85 Minutes
- 2.18Day-16 đ Multiple Linear Regression in Python (Part-1)83 Minutes
- 2.19Day-17 đ Multiple Linear Regression in Python (Part-2)52 Minutes
- 2.20Day-18 đ Multiple Linear Regression in Python (Part-3)94 Minutes
- 2.21Day-19 đ Multiple Linear Regression in Python (Part-4)78 Minutes
- 2.22Day-20 đ Multiple Linear Regression in Python (Part-5)60 Minutes
- 2.23Day-21 đ Logistic Regression in Python (Part-1)64 Minutes
- 2.24Day-22 đ Logistic Regression in Python (Part-2)73 Minutes
- 2.25PDSML Quiz-3 đ Supervised Learnings in Python5 Minutes10 Questions
- 2.26Day-23 đ K-Means Clustering in Python (Part-1)57 Minutes
- 2.27Day-24 đ K-Means Clustering in Python (Part-2)79 Minutes
- 2.28Day-25 đ K-Means Clustering in Python (Part-3)90 Minutes
- 2.29Day-26 đ Principal Component Analysis â PCA (Part-1)82 Minutes
- 2.30Day-27 đ Principal Component Analysis â PCA (Part-2)81 Minutes
- 2.31Day-28 đ Principal Component Analysis â PCA (Part-3)90 Minutes
- 2.32PDSML Quiz-4 đ Unsupervised Learnings in Python5 Minutes10 Questions
- 2.33Day-29 đ Boxplot in Python Using Matplotlib76 Minutes
- 2.34Day-30 đ Histogram and Bar Plot in Python Using Matplotlib77 Minutes
- 2.35Day-31 đ Line Plot in Python Using Matplotlib75 Minutes
- 2.36Day-32 đ Styling Plots for Publication with Matplotlib (Part-1)60 Minutes
- 2.37Day-33 đ Styling Plots for Publication with Matplotlib (Part-2)84 Minutes
- 2.38PDSML Quiz-5 đ Data Visualization in Python5 Minutes10 Questions
- R Section38
- 3.1Day-1 đ Environment Setup85 Minutes
- 3.2Day-2 đ Data Preprocessing in R (Part-1)87 Minutes
- 3.3Day-3 đ Data Preprocessing in R (Part-2)102 Minutes
- 3.4Day-4 đ Data Preprocessing in R (Part-3)91 Minutes
- 3.5RDSML Quiz-1 đ Data Preprocessing in R8 Minutes8 Questions
- 3.6Day-5 đ Simple Linear Regression in R (Part-1)90 Minutes
- 3.7Day-6 đ Simple Linear Regression in R (Part-2)90 Minutes
- 3.8Day-7 đ Simple Linear Regression in R (Part-3)60 Minutes
- 3.9Day-8 đ Multiple Linear Regression in R (Part-1)64 Minutes
- 3.10Day-9 đ Multiple Linear Regression in R (Part-2)72 Minutes
- 3.11Day-10 đ Multiple Linear Regression in R (Part-3)77 Minutes
- 3.12Day-11 đ Decision Tree Regression in R (Part-1)77 Minutes
- 3.13Day-12 đ Decision Tree Regression in R (Part-2)90 Minutes
- 3.14Day-13 đ Decision Tree Regression in R (Part-3)88 Minutes
- 3.15Day-14 đ Decision Tree Regression in R (Part-4)88 Minutes
- 3.16Random Forest Regression in R34 Minutes
- 3.17RDSML Quiz-2 đ Regressions in R5 Minutes10 Questions
- 3.18Day-15 đ Decision Tree Classification in R90 Minutes
- 3.19Day-16 đ Random Forest Classification in R71 Minutes
- 3.20Day-17 đ Classification for Polytomous Dependent Variable in R78 Minutes
- 3.21Day-18 đ Naive Bayes in R (Part-1)52 Minutes
- 3.22Day-19 đ Naive Bayes in R (Part-2)83 Minutes
- 3.23RDSML Quiz-3 đ Classifications in R5 Minutes10 Questions
- 3.24Day-20 đ Natural Language Processing (NLP) in R (Part-1)75 Minutes
- 3.25Day-21 đ Natural Language Processing (NLP) in R (Part-2)69 Minutes
- 3.26Day-22 đ Natural Language Processing (NLP) in R (Part-3)82 Minutes
- 3.27Day-23 đ Natural Language Processing (NLP) in R (Part-4)90 Minutes
- 3.28Day-24 đ Principal Component Analysis â PCA (Part-1)46 Minutes
- 3.29Day-25 đ Principal Component Analysis (PCA) in R (Part-2)46 Minutes
- 3.30Day-26 đ Principal Component Analysis (PCA) in R (Part-3)51 Minutes
- 3.31Day-27 đ Principal Component Analysis (PCA) in R (Part-4)57 Minutes
- 3.32Day-28 đ Principal Component Analysis (PCA) in R (Part-5)50 Minutes
- 3.33Day-29 đ K-Fold Cross Validation Implementation in R93 Minutes
- 3.34Day-30 đ XGBoost in R (Part-1)75 Minutes
- 3.35Day-31 đ XGBoost in R (Part-2)60 Minutes
- 3.36Day-32 đ Boxplot and Histogram in R83 Minutes
- 3.37Day-33 đ Line Plot and Styling Plots for Publications in R88 Minutes
- 3.38RDSML Quiz-4 đ The final Quiz10 Minutes10 Questions





