Cognixia
Cognixia Logo

Internet of Things (IoT) Training Old 

  • Offered byCognixia

Internet of Things (IoT) Training Old
 at 
Cognixia 
Overview

Mode of learning

Online

Difficulty level

Intermediate

Credential

Certificate

Internet of Things (IoT) Training Old
 at 
Cognixia 
Highlights

  • Lifetime Learning Management System (LMS) access, Free IOT Kit
  • A technical team dedicated to resolving your queries anytime, anywhere
Details Icon

Internet of Things (IoT) Training Old
 at 
Cognixia 
Course details

Who should do this course?
  • IT professionals
  • Electrical engineer
  • Electronics engineer
  • Solution architects
  • Software Developers
  • Maintenance Engineer
  • Service Engineer
  • Embedded engineers
  • Embedded developers
  • RF Engineer
  • Solution Architect Engineer
  • Automation Engineer
  • Telecom Engineers
  • System Engineer
What are the course deliverables?
  • LIVE INSTRUCTOR-LED ONLINE TRAINING
  • 24/7 SUPPORT
  • LIFETIME LMS ACCESS
  • PRICE MATCH GUARANTEE
  • CERTIFICATE OF EXCELLENCE ON SUCCESSFUL COMPLETION OF TRAINING
More about this course
  • The Internet of Things (IoT) is ushering in a new era in science and technology, which will forever change our personal as well as professional lives, our consumer habits, and the way we do business. With the fast-changing world, these latest inventions and innovations will become the norm by 2020, and we estimate more than 50 billion devices will be connected via the Internet. In order to create early adopters, we have introduced a one-of-kind course on ‘Internet of Things,’ the next big thing in the IT industry.

Internet of Things (IoT) Training Old
 at 
Cognixia 
Curriculum

Introduction to Internet of Things

Concept and definitions

Understanding IT and OT convergence: Evolution of IIoT & Industry 4.0

IoT Adoption

Business opportunities: Product + Service model

Use cases

Concept of Data, Information, Knowledge and Wisdom

Knowledge discovery process

DIKW pyramid and relevance with IoT

Microcontrollers: cost, performance, and power consumption

Industrial networks, M2M networks

Sensor Data Mining and Analytics

Transducer: Sensor and Actuator

Data acquisition, storage and analytics

Signals and systems

Real-time analytics

Edge analytics

Wireless Sensor Area Networks (WSAN): Evolution of M2M and IoT Networks and Technologies

Sensor nodes

WSN/M2M communication technologies

Topologies

Applications

Design and Development of IoT Systems

IoT reference architectures

IoT design considerations

Networks, communication technologies and protocols

Smart asset management: Connectivity, Visibility, Analytics, Alerts

Cloud Computing and Platforms

Public, Private and Hybrid cloud platforms and deployment strategy

Industrial Gateways

IaaS, SaaS, PaaS models

Cloud components and services

Example platforms: ThingSpeak, Pubnub, AWS IoT

IoT Security

Standards and best practices

Common vulnerabilities

Attack surfaces

Hardware and Software solutions

Open source initiatives

Analytics

Descriptive, Diagnostic, Predictive, and Prescriptive

Analytics using Python advance packages: NumPy, SciPy, Matplotlib, Pandas and Sci-kit learn

CASE STUDIES AND ROADMAP

Cold chain monitoring

Asset tracking using RFID and GPRS/GPS

Hands-on/Practical Exercises

Programming microcontrollers (Arduino, NodeMCU)

Building HTTP and MQTT based M2M networks

Interfacing Analog and Digital sensors with microcontroller to learn real-time data acquisition, storage and analysis on IoT endpoints and edges

Interfacing SD card with microcontroller for data logging on IoT end devices using SPI protocol

Interfacing Real-time clock module with microcontrollers for time and date stamping using I2C protocol

Python exercises to check quality of acquired data

Developing microcontroller based applications to understand event based real time processing and in-memory computations

Setting up Raspberry Pi as Gateway to aggregate data from thin clients

Python programming on Raspberry Pi to analyze collected data

GPIO programming using Python and remote monitoring /control

Pushing collected data to cloud platforms

Designing sensor nodes to collect multiple parameters (Temperature, Humidity, etc.)

Uploading data on local gateway as cache

Uploading data on cloud platforms

Monitoring and controlling devices using android user apps and Bluetooth interfaces

Building wireless sensor networks using WiFi

Sensor data uploading on cloud using GSM/GPRS

Device to device communication using LoRa modules

Remote controlling machines using cloud based apps

Remote controlling machines using device based apps through cloud as an intermediate node

Interfacing Raspberry Pi with AWS IoT Gateway service to exchange messages

Interfacing Raspberry Pi with PUBNUB cloud to understand publish/subscribe architecture and MQTT protocol

Data cleaning, sub-setting, and visualization

Set of Python exercises to demonstrate descriptive and predictive analytics

Case study

Hardware Kit

Development Boards

Electronic Components

Communication Modules

Other courses offered by Cognixia

18 K
36 hours
Intermediate
23.01 K
40 hours
Intermediate
23.01 K
2 days
Intermediate
13 K
36 hours
Intermediate
View Other 16 CoursesRight Arrow Icon
qna

Internet of Things (IoT) Training Old
 at 
Cognixia 

Student Forum

chatAnything you would want to ask experts?
Write here...