Overview
In this course, participants will learn all the concepts of Python and ML along with Supervised and unsupervised learning, understand how Statistical Modeling relates to Machine Learning, and learn to build algorithms with practical hands-on exercises.
Objectives
At the end of Machine Learning with Python training course, participants will
Prerequisites
- Elementary programming knowledge
- Familiarity with statistics
Course Outline
- Statistical analysis concepts
- Descriptive statistics
- Introduction to probability and Bayes theorem
- Probability distributions
- Hypothesis testing & scores
- Python Overview
- Pandas for Pre-Processing and Exploratory Data Analysis
- Numpy for Statistical Analysis
- Matplotlib & Seaborn for Data Visualization
- Scikit Learn
- Machine Learning Modelling Flow
- How to treat Data in ML
- Types of Machine Learning
- Performance Measures
- Bias-Variance Trade-Off
- Overfitting & Underfitting
- Maxima and Minima
- Cost Function
- Learning Rate
- Optimization Techniques
- Linear Regression
- Case Study
- Logistic Regression
- Case Study
- K-NN Classification
- Case Study
- Naive Bayesian classifiers
- Case Study
- SVM – Support Vector Machines
- Case Study
- Clustering approaches
- K Means clustering
- Hierarchical clustering
- Case Study
- Decision Trees
- Case Study
- Introduction to Ensemble Learning
- Different Ensemble Learning Techniques
- Bagging
- Boosting
- Random Forests
- Case Study
- PCA (Principal Component Analysis) and Its Applications
- Case Study
- Introduction to Recommendation Systems
- Types of Recommendation Techniques
- Collaborative Filtering
- Content based Filtering
- Hybrid RS
- Performance measurement
- Case Study