Have you ever wondered how to apply machine learning to business problems? This workshop is specially designed to help learn the concepts, tools and techniques involved. You will go through real-life case studies and experience how this is done in the industry.
The focus of this workshop will be on the machine learning pipeline data cleaning, feature engineering, model building and evaluation. You will also learn how to structure a business problem as an ML problem, and then go on to build, select and evaluate the model.
The workshop is divided into following major modules:
Prerequisites Applied ML
STRUCTURE OF THE WORKSHOP
This is an 8-hour workshop and includes the following modules:
- Module 0: Introduction
- What is Machine Learning
- Types of ML: Supervised, Unsupervised, Reinforcement
- Types of ML problems: Regression, Classification
- Module 1: Linear Models
- Linear Regression
- Logistic Regression
- Module 2: Model Evaluation
- Training and Validation Model
- Evaluation Metrics – Accuracy, RMSE, ROC, AUC, Confusion Matrix, Precision, Recall, F1 Score
- Overfitting and Bias-Variance trade-off
- Regularization (L1/L2)
- K-fold Cross Validation
- Module 3: Tree-based Models
- Decision Trees
- Bagging and Boosting
- Random Forest
- Gradient Boosting Machines
- Feature Importance
- Module 4: Model Selection
- Model Pipelines
- Feature Engineering
- Ensemble Models (Advanced)
- Unbalanced Classes (Advanced)
INSTRUCTORS
Amit Kapoor teaches the craft of telling visual stories with data. He conducts workshops and trainings on Data Science in Python and R, as well as on Data Visualisation topics.His background is in strategy consulting having worked with AT Kearney in India, then with Booz & Company in Europe and more recently for startups in Bangalore. He did his B.Tech in Mechanical Engineering from IIT, Delhi and PGDM (MBA) from IIM, Ahmedabad.
Make sure you don’t miss this workshop on applied machine learning.