Torrent details for "Laplante P. What Every Engineer Should Know About Data-Driven Analytics 2023 [andryold1]"    Log in to bookmark

Torrent details
Cover
Download
Torrent rating (0 rated)
Controls:
Category:
Language:
English English
Total Size:
26.44 MB
Info Hash:
c2287ff8efbf8b0f7c15ee5e4f1185307b15d183
Added By:
Added:  
16-02-2023 21:15
Views:
156
Health:
Seeds:
2
Leechers:
0
Completed:
112




Description
Externally indexed torrent
If you are the original uploader, contact staff to have it moved to your account
Textbook in PDF format

What Every Engineer Should Know About Data-Driven Analytics provides a comprehensive introduction to the theoretical concepts and approaches of Machine Learning that are used in predictive data analytics. By introducing the theory and by providing practical applications, this text can be understood by every engineering discipline. It offers a detailed and focused treatment of the important Machine Learning (ML) approaches and concepts that can be exploited to build models to enable decision making in different domains.
A brief introduction to the basics of R and Python programming is provided here, which will be very helpful for the readers to navigate through the other chapters in this book. Now let’s look at some basics of the Python programming. Readers are recommended to execute the provided scripts here in the Python terminal or Jupyter Notebook. In the Chapter 1, the objective is merely to provide an exposure to programming in R and Python so that the readers can become familiar with the syntax used in R and Python scripts. In the latter chapters, R and Python scripts will be used interchangeably to illustrate the concepts discussed.
Several essential packages in R and Python that will be very helpful for performing data wrangling (structuring and cleaning data) and for performing analytics are listed below. In the latter chapters several of these listed packages will be used to demonstrate their potential for data wrangling and analytics.
1. Data Collection and Cleaning
2. Mathematical Background for Predictive Analytics
3. Introduction to Statistics, Probability, and Information Theory for Analytics. 4. Introduction to Machine Learning
5. Unsupervised Learning
6. Supervised Learning
7. Natural Language Processing for Analyzing Unstructured Data
8. Predictive Analytics Using Deep Neural Networks
9. Convolutional Neural Networks (CNN) for Predictive Analytics
10. Recurrent Neural Networks (RNNs) for Predictive Analytics
11. Recommender Systems for Predictive Analytics
12. Architecting Big Data Analytical Pipeline

  User comments    Sort newest first

No comments have been posted yet.



Post anonymous comment
  • Comments need intelligible text (not only emojis or meaningless drivel).
  • No upload requests, visit the forum or message the uploader for this.
  • Use common sense and try to stay on topic.

  • :) :( :D :P :-) B) 8o :? 8) ;) :-* :-( :| O:-D Party Pirates Yuk Facepalm :-@ :o) Pacman Shit Alien eyes Ass Warn Help Bad Love Joystick Boom Eggplant Floppy TV Ghost Note Msg


    CAPTCHA Image 

    Anonymous comments have a moderation delay and show up after 15 minutes