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AI for Internet of Things (IoT) Course

Original price was: USD $120.00.Current price is: USD $59.00.

The program explores the application of AI in IoT systems, covering AI-driven data analytics, predictive maintenance, smart devices, and automation. Participants will learn how AI can process vast amounts of sensor data, making IoT systems more efficient, scalable, and intelligent.

Feature
Details
Format
Online (e-LMS)
Level
Intermediate
Domain
IoT, Real-Time Data & AI
Core Focus
Streaming data, real-time AI, automation
Frameworks Covered
Apache Kafka, Apache Flink
Tools Covered
TensorFlow, PyTorch, Grafana, Docker, Kubernetes
Hands-On Component
End-to-end real-time AI pipeline
Final Deliverable
AI-powered IoT streaming application
Target Audience
IoT engineers, AI learners, data professionals

About the Course
IoT systems rely on real-time data processing to monitor environments, detect anomalies, predict failures, and automate decisions.
Traditional batch processing cannot keep up with high-frequency data streams, low-latency requirements, and distributed device networks.
“More precisely, the course focuses on designing scalable, distributed, and intelligent IoT ecosystems.”
This course explores how AI integrates with streaming data architectures to enable:
  • Predictive maintenance
  • Real-time analytics
  • Intelligent automation
  • Smart device coordination
Participants learn to build complete pipelines—from data ingestion to AI-powered decision-making.

Why This Topic Matters
Modern industries require:

  • Real-time monitoring systems
  • Predictive analytics for operations
  • Automated decision-making
  • Scalable distributed architectures
AI for IoT enables early detection of equipment failures, optimized energy consumption, enhanced security monitoring, improved healthcare diagnostics, and smart traffic or city management.
However, deploying AI in IoT introduces challenges such as data streaming complexity, low-latency processing needs, edge deployment constraints, and security or privacy concerns.
Professionals who can integrate AI with IoT infrastructures are increasingly sought after in smart tech industries.

What Participants Will Learn
• Understand streaming data concepts and architectures
• Build real-time data pipelines using Kafka and Flink
• Integrate AI models into streaming systems
• Deploy AI for real-time inference
• Develop dashboards for real-time analytics
• Implement distributed processing for IoT workloads
• Deploy AI models using Docker and Kubernetes
• Explore edge AI for low-latency decision-making
• Design end-to-end intelligent IoT solutions

Course Structure / Table of Contents
Module 1 — Introduction to Streaming Data
  • Real-time data concepts
  • Challenges in stream processing
  • Overview of Kafka and Flink
Module 2 — Data Ingestion and Streaming Frameworks
  • Kafka producers and consumers
  • Stream management and configuration
  • Building real-time ingestion pipelines
Module 3 — Data Processing with Apache Flink
  • Stream processing fundamentals
  • Event-time and processing-time concepts
  • Real-time data transformation and aggregation
Module 4 — Integrating AI with Streaming Data
  • Machine learning for streaming environments
  • Real-time inference with TensorFlow & PyTorch
  • AI-powered decision systems
Module 5 — Real-Time Analytics and Dashboarding
  • Building monitoring dashboards
  • Data visualization techniques
  • Tools: Grafana, Kibana
Module 6 — Deploying AI in Real-Time Pipelines
  • Containerizing AI models with Docker
  • Orchestrating pipelines with Kubernetes
  • Model lifecycle management
Module 7 — Stream Processing in Distributed Environments
  • Distributed architectures for IoT
  • Cloud platforms: AWS, Azure, GCP
  • Performance optimization and latency management
Module 8 — Advanced Topics in Streaming AI
  • Complex event processing (CEP)
  • Real-time anomaly detection
  • Edge AI for IoT devices
  • Role of 5G in IoT intelligence
Module 9 — Final Applied Project
  • Design an end-to-end AI IoT solution
  • Build data ingestion and processing pipeline
  • Integrate AI model for real-time prediction
  • Deploy and visualize results
  • Evaluate performance and scalability

Tools, Techniques, or Platforms Covered
Apache Kafka
Apache Flink
TensorFlow
PyTorch
Docker
Kubernetes
Grafana
Kibana
Distributed system design

Real-World Applications
This course supports work in smart city infrastructure, healthcare IoT monitoring, industrial IoT and predictive maintenance, smart agriculture systems, financial fraud detection systems, and connected vehicle or transportation systems.
In operations, it enables real-time decision-making.
In research, it advances intelligent automation and smart device coordination.

Who Should Attend
This course is ideal for:

  • IoT Engineers and Embedded System Professionals
  • Data Scientists working with real-time data
  • AI Engineers interested in smart systems
  • Cloud and Distributed System Developers
  • Students in AI, IoT, or Computer Science
  • Career switchers entering smart technology fields

It is particularly suited for professionals working on connected systems and real-time analytics.

Prerequisites: Recommended basic understanding of IoT concepts and familiarity with data processing fundamentals. Introductory knowledge of machine learning is helpful but not mandatory. No prior experience with streaming frameworks is required.

Why This Course Stands Out
Many IoT courses focus only on hardware. Many AI courses overlook real-time systems.
This course integrates:

  • Streaming data architectures
  • AI model deployment
  • Distributed system design
  • Real-time analytics dashboards
  • Edge computing strategies
The final project requires participants to build a complete AI-powered IoT system—reflecting real industry implementation.

Frequently Asked Questions
What is AI for IoT?
It involves applying machine learning and analytics to IoT data to enable smarter decision-making and automation.
Does this course cover Kafka and Flink?
Yes. Both frameworks are core components of the course.
Will real-time dashboards be included?
Yes. Participants will build dashboards using Grafana and similar tools.
Is edge AI covered?
Yes. The course introduces edge deployment for low-latency AI applications.
Do I need prior IoT experience?
Basic familiarity helps, but the course covers foundational concepts.
What is the final project about?
Participants design and deploy a complete real-time AI IoT system with streaming data and predictive insights.
Category

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

Certificate Image

What You’ll Gain

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

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Feedbacks

Green Synthesis of Nanoparticles and their Biomedical Applications

Good


YANALA AKHIL REDDY : 06/07/2024 at 12:59 pm

Very nice interaction, but need to clear all the doubts in all the sessions and each session should More be equally valuable for all as the 2nd day session was most informative while 1st day and 3rd day were more or less like casual.
Shuvam Sar : 10/12/2024 at 5:49 pm

In general, it seems to me that the professor knows his subject very well and knows how to explain More it well.
CARLOS OSCAR RODRIGUEZ LEAL : 01/20/2025 at 8:07 am

Sometimes there was no pause between steps and it was easy to get lost. When teaching how to use More tools one must repeat each step more than once making sure everyone follows.
Celia Garcia Palma : 10/12/2024 at 1:05 pm

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

Contents were excellent


Surya Narain Lal : 03/11/2025 at 6:09 pm

Green Catalysts 2024: Innovating Sustainable Solutions from Biomass to Biofuels

Take less time of contends not necessary for the workshop


Facundo Joaquin Marquez Rocha : 08/12/2024 at 6:46 pm

Predicting 3D Structures of Proteins and Nucleic Acids

Thank you sir


Kavish Singh Tanwar : 05/20/2025 at 4:03 pm