IoT Data Analytics using Python
Publisher:
| Author:
| Language:
| Format:
Publisher:
Author:
Language:
Format:
₹799 ₹719
Save: 10%
In stock
Ships within:
In stock
ISBN:
Page Extent:
Python is a popular programming language for data analytics, and it is also well-suited for IoT Data Analytics. By leveraging Python’s versatility and its rich ecosystem of libraries and tools, Data Analytics for IoT can unlock valuable insights, enable predictive capabilities, and optimize decision-making in various IoT applications and domains.
The book begins with a foundation in IoT fundamentals, its role in digital transformation, and why Python is the preferred language for IoT Data Analytics. It then covers essential data analytics concepts, how to establish an IoT Data Analytics environment, and how to design and manage real-time IoT data flows. Next, the book discusses how to implement Descriptive Analytics with Pandas, Time Series Forecasting with Python libraries, and Monitoring, Preventive Maintenance, Optimization, Text Mining, and Automation strategies. It also introduces Edge Computing and Analytics, discusses Continuous and Adaptive Learning concepts, and explores data flow and use cases for Edge Analytics. Finally, the book concludes with a chapter on IoT Data Analytics for self-driving cars, using the CRISP-DM framework for data collection, modeling, and deployment.
By the end of the book, you will be equipped with the skills and knowledge needed to extract valuable insights from IoT data and build real-world applications.
Python is a popular programming language for data analytics, and it is also well-suited for IoT Data Analytics. By leveraging Python’s versatility and its rich ecosystem of libraries and tools, Data Analytics for IoT can unlock valuable insights, enable predictive capabilities, and optimize decision-making in various IoT applications and domains.
The book begins with a foundation in IoT fundamentals, its role in digital transformation, and why Python is the preferred language for IoT Data Analytics. It then covers essential data analytics concepts, how to establish an IoT Data Analytics environment, and how to design and manage real-time IoT data flows. Next, the book discusses how to implement Descriptive Analytics with Pandas, Time Series Forecasting with Python libraries, and Monitoring, Preventive Maintenance, Optimization, Text Mining, and Automation strategies. It also introduces Edge Computing and Analytics, discusses Continuous and Adaptive Learning concepts, and explores data flow and use cases for Edge Analytics. Finally, the book concludes with a chapter on IoT Data Analytics for self-driving cars, using the CRISP-DM framework for data collection, modeling, and deployment.
By the end of the book, you will be equipped with the skills and knowledge needed to extract valuable insights from IoT data and build real-world applications.
About Author
Reviews
There are no reviews yet.
Related products
RELATED PRODUCTS
Head First Java: A Brain-Friendly Guide, Third Edition
Save: 5%
Mastering Bitcoin: Programming the Open Blockchain, Second Edition
Save: 25%
Digital Communication Fundamentals And Applications (2nd Ed)
Save: 60%
Distributed Operating Systems Concept And Design (2004)
Save: 60%
Software Engineering A Practitioner’s Approach (7th Ed)
Save: 60%
Reviews
There are no reviews yet.