Advanced Predictive Modeling Techniques Training Course.
Introduction
Predictive modeling is at the core of data-driven decision-making, enabling businesses to forecast trends, detect anomalies, and optimize operations. This Advanced Predictive Modeling Techniques Training Course equips participants with cutting-edge methodologies, including advanced regression, ensemble learning, deep learning models, and probabilistic forecasting.
Using Python, Scikit-Learn, TensorFlow, and cloud-based ML frameworks, participants will develop and optimize predictive models applicable to finance, healthcare, marketing, supply chain, and cybersecurity.
Objectives
By the end of this course, participants will:
- Master advanced regression, classification, and time-series forecasting techniques.
- Implement ensemble methods, boosting techniques, and deep learning models.
- Optimize predictive models using hyperparameter tuning and feature engineering.
- Leverage probabilistic models and Bayesian methods for uncertainty estimation.
- Deploy models in real-world production environments.
- Utilize AutoML and cloud-based machine learning services.
- Apply predictive modeling techniques to real-world business challenges.
Who Should Attend?
- Data Scientists & Machine Learning Engineers
- Business Analysts & Decision Scientists
- Financial Analysts & Risk Management Professionals
- Healthcare & Marketing Analytics Specialists
- Software Engineers & AI Enthusiasts
- Anyone looking to enhance predictive modeling expertise
Course Outline (5 Days)
Day 1: Fundamentals of Predictive Modeling & Feature Engineering
Morning Session
Overview of Predictive Modeling
- Supervised vs. Unsupervised Learning
- Business Applications in finance, healthcare, marketing, and cybersecurity
- Data pipeline for predictive modeling
Feature Engineering & Selection
- Handling missing values, outliers, and skewed data
- Dimensionality reduction: PCA, LDA, t-SNE
- Hands-on: Feature engineering on real-world datasets
Afternoon Session
Advanced Feature Selection Techniques
- Recursive Feature Elimination (RFE)
- Mutual information & SHAP values for feature importance
- Hands-on: Building robust features for predictive models
Hands-on Exercise
- Data preprocessing and feature engineering for customer churn prediction
Day 2: Advanced Regression & Classification Models
Morning Session
Advanced Regression Techniques
- Generalized Linear Models (GLM), Lasso & Ridge Regression
- Polynomial Regression & Splines
- Hands-on: Predicting housing prices using advanced regression
Handling Imbalanced Datasets
- Oversampling, undersampling, and SMOTE
- Cost-sensitive learning & anomaly detection
- Hands-on: Improving fraud detection using resampling techniques
Afternoon Session
Advanced Classification Models
- Support Vector Machines (SVM) with Kernel Tricks
- Neural Networks for structured data
- Hands-on: Building a classification model for credit risk analysis
Hands-on Exercise
- Training and tuning classification models for healthcare diagnostics
Day 3: Ensemble Learning & Boosting Techniques
Morning Session
Introduction to Ensemble Learning
- Bagging, Boosting, and Stacking
- Random Forest & Extra Trees
- Hands-on: Improving model accuracy with ensemble techniques
Gradient Boosting & XGBoost
- How boosting improves weak learners
- Fine-tuning XGBoost with hyperparameter optimization
- Hands-on: Boosting techniques for stock price prediction
Afternoon Session
Advanced Boosting Models
- LightGBM & CatBoost for high-dimensional datasets
- Hands-on: Fine-tuning boosting algorithms for NLP applications
Hands-on Exercise
- Applying stacking techniques to customer segmentation
Day 4: Time-Series Forecasting & Probabilistic Models
Morning Session
Time-Series Forecasting Fundamentals
- Moving Averages, Exponential Smoothing
- ARIMA, SARIMA, and Prophet models
- Hands-on: Forecasting demand using Prophet
Feature Engineering for Time-Series Data
- Rolling windows, seasonal decomposition
- Fourier transformations for periodicity detection
- Hands-on: Building time-series features for sales forecasting
Afternoon Session
Deep Learning for Time-Series Forecasting
- LSTMs, GRUs, and Transformers for time-series
- Sequence-to-sequence models for predictive analytics
- Hands-on: Building an LSTM-based time-series prediction model
Hands-on Exercise
- Forecasting energy consumption using deep learning models
Day 5: Model Deployment & Real-World Applications
Morning Session
Probabilistic & Bayesian Predictive Models
- Bayesian Regression & Uncertainty Estimation
- Gaussian Processes for predictive analytics
- Hands-on: Building Bayesian models for risk forecasting
AutoML & Cloud-Based Predictive Modeling
- Google AutoML, AWS SageMaker, and Azure ML
- Scaling predictive models in cloud environments
- Hands-on: Deploying a predictive model using Google AutoML
Afternoon Session
Capstone Project & Final Presentations
- Choose from:
- Customer Churn Prediction for a Telecom Company
- Stock Market Price Prediction using Ensemble Learning
- Real-Time Fraud Detection using Machine Learning
- Participants present their models & receive expert feedback
- Choose from:
Certification & Networking Session
Post-Course Benefits
- Hands-on experience with real-world predictive modeling projects
- Expertise in advanced regression, ensemble methods, and deep learning
- Ability to deploy predictive models in production environments
- Portfolio-ready projects for career growth
- Access to exclusive resources (datasets, notebooks, and cheat sheets)