Python Data Science with the TCLab

Category: Tutorial


Posted on 2022-01-31, by 0nelovee.

Description

7cfe3a1d-8a43-43ce-af65-b3adb684c026.png
Python Data Science with the TCLab
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English + srt | Duration: 14 lectures (4h 23m) | Size: 1.71 GB


Data science introduction for scientists and engineers
What you'll learn
Visualize data to understand relationships and assess data quality
Understand the differences between classification, regression, and clustering and when each can be applied
Detect overfitting and implement strategies to improve prediction
Understand engineering and business objectives to plan applications
Implement data science techniques successfully to complete a project
Requirements
Beginner Python experience is needed.
Consider the freely available course found on GitHub: APMonitor/begin_python to gain foundational experience with variables, loops, functions, lists, and other Python introductory topics.
Description
These modules are intended to help you develop data science and machine learning skills in Python. The 12 modules have video tutorials for each exercise with solutions for each exercise. One of the unique things about these modules is that you work on basic elements and then test your knowledge with real data exercises with a heat transfer design project. You will see your Python code have a real impact by designing the materials for a new product.
One of the best ways to start or review a programming language is to work on a project. These exercises are designed to teach data science Python programming skills. Data science applications are found across almost all industries where raw data is transformed into actionable information that drives scientific discovery, business innovations, and development. This project is to determine the thermal conductivity of several materials. Thermal conductivity is how well a material conducts or insulates against heat transfer. The specific heat transfer project shows how to apply data science to solve an important problems with methods that are applicable to many different applications.
Objective: Collect and analyze data from the TCLab to determine the thermal conductivity of three materials (metal, plastic, and cardboard) that are placed between two temperature sensors. Create a digital twin that predicts heat transfer and temperature.
To make the problem more applicable to a real situation, suppose that you are designing a next-generation cell phone. The battery and processor on the cell phone generate a lot of heat. You want to make sure that the material between them will prevent over-heating of the battery by the processor. This study will help you answer questions about material properties for predicting the temperature of the battery and processor.
Topics
There are 12 lessons to help you with the objective of learning data science in Python. The first thing that you will need is to install Python to open and run the IPython notebook files in Jupyter. There are additional instructions on how to install Python and manage modules. Any Python distribution or Integrated Development Environment (IDE) can be used (IDLE, Spyder, PyCharm, and others) but Jupyter notebook or VSCode is required to open and run the IPython notebook (.ipynb) files. All of the IPython notebook (.ipynb) files can be downloaded. Don't forget to unzip the folder (extract the archive) and copy it to a convenient location before starting.
Overview
Data Import and Export
Data Analysis
Visualize Data
Prepare (Cleanse, Scale, Divide) Data
Regression
Features
Classification
Interpolation
Solve Equations
Differential Equations
Time Series
They give the skills needed to work on the final project. In the final project, metal coins, plastic, and cardboard are inserted in between the two heaters so that there is a conduction path for heat between the two sensors. The temperature difference and temperature levels are affected by the ability of the material to conduct heat from heater 1 and temperature sensor T1 to the other temperature sensor T2.
You may not always know how to solve the problems initially or how to construct the algorithms. You may not know the function that you need or the name of the property associated with an object. This is by design. You are to search out the information that you might need using help resources, online resources, textbooks, etc.
You will be assessed not only on the ability of the program to give the correct output, but also on good programming practices such as ease of use, code readability and simplicity, modular programming, and adequate, useful comments. Just remember that comments, indentation, and modular programming can really help you and others when reviewing your code.
Temperature Control Lab
The projects are a review of all course material with real data from temperature sensors in the Temperature Control Lab (TCLab). The temperatures are adjusted with heaters that are adjusted with the TCLab. If you do not have a TCLab module, use the digital twin simulator by replacing TCLab() with TCLabModel().
Who this course is for
Beginner Python developers interested in Data Science
Aspiring and experienced scientists and engineers
Students and professionals who want to adopt Data Science in practice
Homepage


https://uploadgig.com/file/download/b2127DfD1fd92343/Python_Data_Science.part2.rar
https://uploadgig.com/file/download/b4631b2124DE117b/Python_Data_Science.part1.rar

https://rapidgator.net/file/24d44884d232b6842cb96e80bd27811d/Python_Data_Science.part2.rar.html
https://rapidgator.net/file/dbae8e9bcc3c60b9ba5ca92fa3363be3/Python_Data_Science.part1.rar.html

https://nitro.download/view/E9F6C90A9CFF8F5/Python_Data_Science.part2.rar
https://nitro.download/view/21246620A2A808F/Python_Data_Science.part1.rar


Sponsored High Speed Downloads
7048 dl's @ 3082 KB/s
Download Now [Full Version]
7129 dl's @ 3816 KB/s
Download Link 1 - Fast Download
5100 dl's @ 3040 KB/s
Download Mirror - Direct Download



Search More...
Python Data Science with the TCLab

Search free ebooks in ebookee.com!


Links
Download this book

No active download links here?
Please check the description for download links if any or do a search to find alternative books.


Related Books

  1. Ebooks list page : 51197
  2. 2022-02-19John Hedengren - Python Data Science with the TCLab
  3. 2022-01-26John Hedengren - Python Data Science with the TCLab
  4. 2022-01-10Python Data Science with Pandas Master 12 Advanced Projects
  5. 2021-12-24Udemy; Python Projects Python & Data Science with Python Projects [Dec 2021]
  6. 2021-12-07Udemy - Python Projects Python & Data Science with Python Projects
  7. 2021-12-04Python Projects Python & Data Science with Python Projects By Oak Academy
  8. 2021-08-11Hands-On Data Science with the Command Line - Removed
  9. 2020-11-28Hands On Data Science with the Command Line: Automate everyday data science tasks using command line tools
  10. 2020-10-12Python Data Science With Pandas Master 12 Advanced Projects
  11. 2020-08-27Python Data Science with Pandas: Master 12 Advanced Projects
  12. 2019-03-25Hands-On Data Science with the Command Line
  13. 2019-03-21Hands-On Data Science with the Command Line
  14. 2022-01-12The Complete Pandas Bootcamp 2020 Data Science with Python
  15. 2022-01-10Cleaning Data for Effective Data Science Doing the other 80% of the work with Python, R, and command-line tools
  16. 2022-01-01Cleaning Data for Effective Data Science: Doing the other 80% of the work with Python, R, and command-line tools
  17. 2021-09-24Udemy - The Complete Pandas Bootcamp Data Science with Python by Tyler Aaron
  18. 2021-09-23The Complete Pandas Bootcamp Data Science with Python by Tyler Aaron
  19. 2021-08-31Data science with Python The Ultimate Step-by-Step Guide for Beginners to Learn Python for Data Science
  20. 2020-11-24Python Data Science: The Ultimate and Complete Guide for Beginners to Master Data Science with Python Step By Step

Comments

No comments for "Python Data Science with the TCLab".


    Add Your Comments
    1. Download links and password may be in the description section, read description carefully!
    2. Do a search to find mirrors if no download links or dead links.
    Back to Top