Aim
AI for IoT teaches how to build AI solutions using sensor data from IoT devices. Learn data collection, time-series analytics, anomaly detection, predictive maintenance, edge AI basics, and deployment workflows.
Program Objectives
- IoT Basics: sensors, devices, gateways, cloud pipelines.
- Sensor Data: sampling, noise, missing data, calibration.
- Time-Series ML: features, forecasting, seasonality.
- Anomaly Detection: faults, spikes, drifts, alerts.
- Predictive Maintenance: failure signals, remaining useful life (intro).
- Edge AI: latency, power, model size, on-device inference (intro).
- Deployment: streaming, dashboards, monitoring.
- Capstone: build an IoT AI pipeline.
Program Structure
Module 1: IoT + AI Overview
- IoT architecture: device → gateway → cloud → app.
- Where AI fits: prediction, monitoring, optimization.
- IoT KPIs: uptime, latency, energy, accuracy, false alarms.
- Common issues: sensor noise, drift, missing values.
Module 2: Sensor Data Handling
- Data formats: timestamps, streams, batches.
- Cleaning: resampling, smoothing, outlier handling.
- Feature basics: rolling stats, lags, trends.
- Labeling events and building datasets.
Module 3: Time-Series Forecasting (IoT)
- Forecasting use cases: energy, temperature, demand, load.
- Train/validation splits for time-series; leakage prevention.
- Baseline models vs ML models (overview).
- Evaluation: MAE/RMSE and error analysis.
Module 4: Anomaly Detection & Alerts
- Rule-based baselines and thresholds.
- Unsupervised methods: clustering and isolation forest (intro).
- Change detection: drift and slow failures (intro).
- Alert tuning: precision vs recall; alert fatigue.
Module 5: Predictive Maintenance (Intro Workflow)
- Failure modes and signals: vibration, temperature, current, pressure.
- Classification for fault detection; early warning signals.
- Remaining Useful Life (RUL) concept and KPIs.
- Maintenance dashboards and decision rules.
Module 6: Edge AI Basics
- Why edge: latency, privacy, bandwidth, offline.
- Model choices: small classifiers and lightweight CNNs (overview).
- Compression concepts: quantization and pruning (intro).
- Edge constraints: memory, compute, power.
Module 7: Deployment & Monitoring
- Streaming pipelines: ingestion, storage, processing (overview).
- Serving models: batch vs real-time inference.
- Monitoring: drift, sensor calibration changes, performance.
- Security basics: device identity, auth, and data integrity (overview).
Module 8: End-to-End System Design
- Designing an IoT AI solution: data flow, model, alerts, UI.
- Testing: offline replay and scenario checks.
- Documentation: runbooks and failure handling.
- Cost and reliability trade-offs.
Final Project
- Pick a scenario: smart home, factory sensors, HVAC, agriculture, logistics.
- Deliverables: cleaned time-series + model + alerts + dashboard/report.
- Optional: edge deployment plan with model size targets.
Participant Eligibility
- Students and professionals in IoT, embedded systems, data science, engineering
- Basic Python recommended
- Anyone building sensor analytics and predictive systems
Program Outcomes
- Work with IoT time-series data and build ML features.
- Create forecasting and anomaly detection pipelines.
- Design predictive maintenance workflows.
- Plan deployment for cloud and edge environments.
Program Deliverables
- e-LMS Access: lessons, labs, datasets.
- IoT AI Toolkit: feature templates, alert checklist, project template.
- Capstone Support: feedback and review.
- Assessment: certification after capstone submission.
- e-Certification and e-Marksheet: digital credentials on completion.
Future Career Prospects
- IoT Data Analyst (Entry-level)
- IoT + AI Engineer (Entry-level)
- Predictive Maintenance Analyst
- Edge AI Associate
Job Opportunities
- Manufacturing: smart factory monitoring and maintenance analytics.
- Smart Buildings: HVAC optimization and sensor-based efficiency.
- Energy/Utilities: load forecasting and grid monitoring.
- Agritech: sensor analytics for irrigation and crop health.









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