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Professional Certification Program
A 3-day, hands-on program to turn real-time Canadian grid (IESO/AESO) and weather data into reliable short- and mid-term demand forecasts using ML and deep learning. You’ll engineer features, train and compare models (RandomForest/XGBoost/LightGBM/LSTM/Transformers), evaluate with MAE/RMSE/MAPE, and deliver a 24-hour forecasting model plus an interactive “actual vs predicted” dashboard. Includes live instruction, recordings, materials, and a certificate.
Equip participants to turn real-time Canadian grid data (IESO/AESO) into reliable short- to medium-term energy demand forecasts using modern ML/DL, and to deploy insights via practical dashboards and APIs.
Access and curate real-time IESO/AESO and weather streams; engineer time-series features.
Build, tune, and evaluate ML baselines (RandomForest, XGBoost, LightGBM) for demand prediction.
Apply deep learning (LSTM/GRU/Transformers) for multi-step forecasting (1h/24h/7d).
Diagnose models with MAE/RMSE/MAPE and residual/feature-importance analyses.
Detect peaks and anomalies to support grid operations and market decisions.
Compare ML vs DL trade-offs and select production-ready approaches.
Deliver a working 24-hour forecast model, an interactive “actual vs predicted” dashboard, and an integration plan for API deployment.
Energy analysts, data scientists, and ML engineers working with time-series data
Grid/market engineers in utilities, ISO/RTOs, and smart-grid companies
Energy trading desks, quant researchers, and analytics teams
Senior undergraduates, postgraduates, and early-career professionals in data/energy domains
Prerequisites: basic Python and introductory stats/ML (time-series familiarity helpful, not required)
10/13/2025
IST 4:30 PM
11/13/2025 – 11/15/2025
IST 5:30 PM
A working 24-hour-ahead demand forecasting model built on IESO/AESO + weather data
An interactive dashboard visualizing actual vs. predicted load, residuals, and peak flags
Comparative report showing ML vs. DL performance (MAE/RMSE/MAPE, directional accuracy)
Reproducible data pipeline: API ingestion, preprocessing, feature engineering, and validation
Skills in training and tuning RF/XGBoost/LightGBM and LSTM/Transformers for multi-step horizons
Methods for peak-demand prediction, anomaly detection, and uncertainty communication
A lightweight deployment plan (API endpoints, monitoring/drift checks, retraining cadence)
All notebooks, code templates, and study materials.
₹1999 | $60
₹2999 | $70
₹3999 | $80
₹5999 | $100
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PhD in Computational Mechanics from MIT with 15+ years of experience in Industrial AI. Former Lead Data Scientist at Tesla and current advisor to Fortune 500 manufacturing firms.
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