AI for IoT Course

INR ₹2,499.00 INR ₹24,999.00Price range: INR ₹2,499.00 through INR ₹24,999.00

The AI for IoT: Intelligent Integration of AI with the Internet of Things program offers a specialized 10-week program designed to integrate Artificial Intelligence with the Internet of Things. Aimed at students and early career professionals in tech-related fields, the program features comprehensive lectures, practical labs, and real-world case studies in sectors like healthcare and urban planning. Participants will learn to design, deploy, and optimize AI-driven IoT solutions, gaining hands-on experience and a certificate of completion that attests to their expertise in this cutting-edge area.

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.
Variation

E-Lms, Video + E-LMS, Live Lectures + Video + E-Lms

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What You’ll Gain

  • Full access to e-LMS
  • Publication opportunity
  • Self-assessment & final exam
  • e-Certificate

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Feedbacks

In Silico Molecular Modeling and Docking in Drug Development

All correct. Thank you very much for your suggestions and help during the course.


María Martínez Ranz : 06/05/2024 at 2:05 am

He was well-organized and good presenter


Rim Abdul kader Mousa : 04/20/2025 at 3:46 pm

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The deep knowledge and experience in the field of biosensors was extremely valuable. The More explanations were clear and understandable, which made it very easy to understand complex topics.
The examples of practical applications of biosensors in various industries were especially valuable. It helped to see how theory is translated into practice.
I am very pleased to have participated in this training and I believe that the knowledge I have gained will have real application in my work.

Małgorzata Sypniewska : 06/14/2024 at 3:54 pm

Carbon Nanotubes and Micro Needles : Novel Approach for Drug Delivery Systems

Mentor is highly knowledgeable well equipped with all skills and very good information


LAXMI K : 11/19/2024 at 1:08 pm

Prediction of Protein Structure Using AlphaFold: An Artificial Intelligence (AI) Program

overall it was a good learning experience


Purushotham R V : 07/09/2024 at 8:33 pm

In Silico Molecular Modeling and Docking in Drug Development

very interesting.


Roberta Listro : 02/16/2024 at 5:30 pm

We would like to have a copy of the presentations/lectures slides.


Khaled Alotaibi : 04/09/2025 at 2:35 am

Large Language Models (LLMs) and Generative AI

The mentor was supportive, clear in their guidance, and encouraged active participation throughout More the process.
António Ricardo de Bastos Teixeira : 07/03/2025 at 10:04 pm