You cannot edit this Postr after publishing. Are you sure you want to Publish?
Experience reading like never before
Read in your favourite format - print, digital or both. The choice is yours.
Track the shipping status of your print orders.
Discuss with other readersSign in to continue reading.

"It was a wonderful experience interacting with you and appreciate the way you have planned and executed the whole publication process within the agreed timelines.”
Subrat SaurabhAuthor of Kuch Woh PalIn today's data-driven world, the ability to analyze and interpret complex information is not just the purview of IT professionals—it's a vital skill for engineers as well. "Data Analysis Theoretical Concepts for Non-IT Engineers" bridges the gap between theory and practice, offering a comprehensive guide tailored for engineers who want to harness the power of data analysis but may not have a background in IT.
Written by a team of seasoned academics and professionals, this book demystifies the jargon and breaks down the barriers, enabling engineers to understand and apply data analysis techniques in their specific fields. Whether you're an industrial, mechanical, or design engineer, this book provides you with the tools you need to make data-driven decisions that can improve efficiency, reduce costs, and drive innovation.
Inside, you'll discover:
An introduction to the modern data ecosystem and how it impacts engineering.
A deep dive into data structures, file formats, and data sources relevant to engineers.
Practical insights into data repositories and big data processing.
Hands-on techniques for data gathering and wrangling.
A comprehensive overview of statistical analysis and visualization in data mining.
Don't get left behind in the data revolution. Equip yourself with the knowledge and skills to become a more effective, data-savvy engineer. Pick up your copy of "Data Analysis Theoretical Concepts for Non-IT Engineers" today and step into the future of engineering.
It looks like you’ve already submitted a review for this book.
Write your review for this book (optional)
Review Deleted
Your review has been deleted and won’t appear on the book anymore.
Dr. Ritesh R. Bhat, Dr. C. Raghavendra Kamath, Dr. Nithesh Naik
Dr. Ritesh Ramakrishna Bhat
Dr. Ritesh Ramakrishna Bhat is an Assistant Professor in the Department of Mechanical and Industrial Engineering at Manipal Institute of Technology. With a strong focus on industrial engineering and data-driven methodologies, Dr. Bhat has published extensively in these areas. His work aims to make data analysis accessible to students and professionals from non-IT backgrounds. He holds a Ph.D. in Mechanical Engineering and has been a recipient of several academic awards.
Dr. C. Raghavendra Kamath
Dr. C. Raghavendra Kamath serves as an Additional Professor in the Department of Mechanical and Industrial Engineering at Manipal Institute of Technology. Specializing in industrial engineering, he has a keen interest in the application of machine learning algorithms in optimizing manufacturing and production processes. Dr. Kamath is a sought-after speaker at industry conferences and has contributed to multiple research publications.
Mr. Nithesh Naik
Mr. Nithesh Naik is an Assistant Professor in the Department of Mechanical and Industrial Engineering at Manipal Institute of Technology. He specializes in design engineering and has a diverse research portfolio that extends into the medical and dental fields. Recognizing the importance of data analysis across disciplines, Mr. Naik has published several articles in top-tier journals, integrating machine learning techniques for data analysis.
India
Malaysia
Singapore
UAE
The items in your Cart will be deleted, click ok to proceed.