Warning! Do NOT Download Without a VPN!
Your IP Address is . Location is Planet Earth
Your Internet Provider and Government can track your download activities! Hide your IP ADDRESS with a VPN!
We strongly recommend using a VPN service to anonymize your torrent downloads. It's FREE!
START YOUR FREE TRIAL NOW!
|
[FreeCoursesOnline.Me] [Packt] Exploratory Data Analysis With Pandas And Python 3.X [FCO] |
---|
Torrent Details |
---|
![[FreeCoursesOnline.Me] [Packt] Exploratory Data Analysis with Pandas and Python 3.x [FCO]](https://l.t0r.site/cover/8938575.jpg)
- NAME
- [FreeCoursesOnline.Me] [Packt] Exploratory Data Analysis with Pandas and Python 3.x [FCO].torrent
- CATEGORY
- Other
- INFOHASH
- 7215ce82d357390e035af4b7b83e64ce0df61a7c
- SIZE
- 1.3 GB in 34 files
- ADDED
- Uploaded on 12-06-2019 by our crawler pet called "Spidey".
- SWARM
- 0 seeders & 0 peers
- RATING
- No votes yet.
Please login to vote for this torrent.
Description |
---|
By : Mohammed Kashif
Released : 29 Apr 2019 (New Release!)
Torrent Contains : 39 Files, 9 Folders
Course Source : https://www.packtpub.com/application-development/exploratory-data-analysis-pandas-and-python-3x-video
Analyze and visualize your data and make it speak for itself
Video Details
ISBN 9781789959116
Course Length 5 hours 4 minutes
Table of Contents
• Getting Set Up
• Graphical Interfaces, Event-Driven Programs, and Reactive Programming
• Networking, Microservices, and Asynchronous Programming
• Fighting Back Against Bugs, Using Type Annotation, and Unit Testing
• Parallel Concurrency
• Decorators and Non-Type Annotations
• Descriptors and Context Managers
• Distributing Your Software
Learn
• Improve your understanding of descriptive statistics and apply them over a dataset.
• Learn how to deal with missing data and outliers to resolve data inconsistencies.
• Explore various visualization techniques for bivariate and multivariate analysis.
• Enhance your programming skills and master data exploration and visualization in Python.
• Learn multidimensional analysis and reduction techniques.
• Master advanced visualization techniques (such as heatmaps) for better analysis and rapidly broaden your understanding
About
How do you take your data analysis skills beyond Excel to the next level? By learning just enough Python to get stuff done. This hands-on course shows non-programmers how to process information that’s initially too messy or difficult to access. Through various step-by-step exercises, you’ll learn how to acquire, clean, analyze, and present data efficiently.
This course will take you from Python basics to explore many different types of data. Throughout the course, you will be working with real-world datasets to retrieve insights from data. You'll be exposed to different kinds of data structure and data-related problems. You'll learn how to prepare data for analysis, perform simple statistical analyses, create meaningful data visualizations, predict future trends from data, and more!
All the code files and related files are placed on the GitHub at this link https://github.com/PacktPublishing/Exploratory-Data-Analysis-with-Pandas-and-Python-3.x
Style and Approach
This is a hands-on course, with each section taking you one step nearer to exploring datasets. Each section is accompanied by visualizations and theory describing the relevant process and finally a case study, where we apply what we have learned in that section to a real-world dataset.
Features:
• Build a solid foundation in data analytics and apply them to real-world datasets
• Each section explores one key measure for exploring any dataset and includes a case study to reinforce the topics you have learned.
• Master the various Data exploration and visualization packages in Python and apply your knowledge to any real-world dataset.
Author
Mohammed Kashif
Mohammed Kashif works as a Data Scientist at Nineleaps, India, dealing mostly with graph data analysis. Prior to this, he was working as a Python developer at Qualcomm. He completed his Master's degree in computer science from IIIT Delhi, with specialization in data engineering. His areas of interest include recommender systems, NLP, and graph analytics. In his spare time, he likes to solve questions on StackOverflow and help debug other people out of their misery. He is also an experienced teaching assistant with a demonstrated history of working in the higher-education industry.
For More Udemy Free Courses >>> https://ftuforum.com/
For more Lynda and other Courses >>> https://www.freecoursesonline.me/
Our Forum for discussion >>> https://discuss.ftuforum.com/![]()
Discussion |
---|
Comments 0
There are no comments yet.
Post Your Comment
To post your comment to this torrent, please login to our site.
Files in this torrent |
---|
FILENAME | SIZE | |
---|---|---|
![]() | 0. Websites you may like/How you can help Team-FTU.txt | 237 B |
![]() | 1.Descriptive Statistics/01.The Course Overview.mp4 | 43.8 MB |
![]() | 1.Descriptive Statistics/02.Basic Statistical Measures.mp4 | 77 MB |
![]() | 1.Descriptive Statistics/03.Variance and Standard Deviation.mp4 | 8.1 MB |
![]() | 1.Descriptive Statistics/04.Visualizing Statistical Measures.mp4 | 25.6 MB |
![]() | 1.Descriptive Statistics/05.Calculating Percentiles.mp4 | 9.4 MB |
![]() | 1.Descriptive Statistics/06.Quartiles and Box Plots.mp4 | 15.3 MB |
![]() | 2.Dealing with Missing Data/07.Finding Missing Values.mp4 | 35.8 MB |
![]() | 2.Dealing with Missing Data/08.Dealing with Missing Values.mp4 | 11.3 MB |
![]() | 2.Dealing with Missing Data/09.Hands-on with Dealing with Missing Values.mp4 | 54.9 MB |
![]() | 2.Dealing with Missing Data/10.Case Study - Missing Data in Titanic Dataset.mp4 | 49.8 MB |
![]() | 3. Dealing with Outliers_/11.What are Outliers.mp4 | 9 MB |
![]() | 3. Dealing with Outliers_/12.Using Z-scores to Find Outliers.mp4 | 17 MB |
![]() | 3. Dealing with Outliers_/13.Modified Z-scores.mp4 | 17.5 MB |
![]() | 3. Dealing with Outliers_/14.Using IQR to Detect Outliers.mp4 | 24.6 MB |
![]() | 4.Univariate Analysis_/15.Types of Variables.mp4 | 77.6 MB |
![]() | 4.Univariate Analysis_/16.Introduction to Univariate Analysis.mp4 | 18.6 MB |
![]() | 4.Univariate Analysis_/17.Skewness and Kurtosis.mp4 | 7.5 MB |
![]() | 4.Univariate Analysis_/18.Univariate Analysis over Olympics Dataset.mp4 | 50.9 MB |
![]() | 5. Bivariate Analysis_/19.Introduction to Bivariate Analysis.mp4 | 4 MB |
![]() | 5. Bivariate Analysis_/20.Correlation Coefficient.mp4 | 8.2 MB |
![]() | 5. Bivariate Analysis_/21.Scatter Plots and Heatmaps.mp4 | 49.7 MB |
![]() | 5. Bivariate Analysis_/22.Bivariate Analysis - Titanic Dataset.mp4 | 32.1 MB |
![]() | 5. Bivariate Analysis_/23.Bivariate Analysis - Video Game Sales.mp4 | 91.2 MB |
![]() | 6. Multivariate Analysis_/24.Introduction to Multivariate Analysis.mp4 | 5.2 MB |
![]() | 6. Multivariate Analysis_/25.Multivariate Analysis over Titanic Dataset.mp4 | 38.4 MB |
![]() | 6. Multivariate Analysis_/26.Multivariate Analysis over Pokemon Dataset.mp4 | 80.6 MB |
![]() | 6. Multivariate Analysis_/27.Simpson’s Paradox.mp4 | 8.1 MB |
![]() | 6. Multivariate Analysis_/28.Correlation Is Not Causation.mp4 | 22.2 MB |
![]() | 7. Bringing It All Together_/29.Wine Data Analysis - Initial Setup.mp4 | 71 MB |
![]() | 7. Bringing It All Together_/30.Red Wine Analysis.mp4 | 116.1 MB |
![]() | 7. Bringing It All Together_/31.White Wine Analysis.mp4 | 113.6 MB |
![]() | 7. Bringing It All Together_/32.White Wine versus Red Wine - Analysis.mp4 | 92.9 MB |
![]() | Exercise Files/code_37350.zip | 2.1 MB |
Alternative Torrents for 'FreeCoursesOnline.Me Packt Exploratory Data Analysis with Pandas and Python FCO'. |
---|
There are no alternative torrents found.