|  

Pandas Python Programming Language Library From Scratch A-Z



Size :1.98 GB
Peers : Seeders : 0      Leechers : 0
Added : 1 year ago » by tutsnode » in Tutorials
Language : English
Last Updated :6 months ago
Info_Hash :C2713BDC1AA1218CF6094BE47D62B08B89EB5818

Torrent File Contents

Pandas Python Programming Language Library From Scratch A-Z
  [TutsNode.net] - 1. Python Installations (Anaconda Navigator, Jupyter Notebook, Jupyter Lab)/1. Installing Anaconda Distribution for Windows.mp4
  -  122.6 MB

  TutsNode.net.txt
  -  63 Bytes

  [TGx]Downloaded from torrentgalaxy.buzz .txt
  -  585 Bytes

  [TutsNode.net] - 12. Extra/1. Pandas Python Programming Language Library From Scratch A-Z™.html
  -  266 Bytes

  [TutsNode.net] - 2. Pandas Library Introduction/3. quiz.html
  -  212 Bytes

  [TutsNode.net] - 3. Series Structures in the Pandas Library/8. quiz.html
  -  212 Bytes

  [TutsNode.net] - 2. Pandas Library Introduction/2. Pandas Project Files Link.html
  -  180 Bytes

  [TutsNode.net] - 4. DataFrame Structures in Pandas Library/5. quiz.html
  -  212 Bytes

  [TutsNode.net] - 5. Element Selection Operations in DataFrame Structures/7. quiz.html
  -  212 Bytes

  [TutsNode.net] - 6. Structural Operations on Pandas DataFrame/7. quiz.html
  -  212 Bytes

  [TutsNode.net] - 7. Multi-Indexed DataFrame Structures/4. quiz.html
  -  212 Bytes

  [TutsNode.net] - 8. Structural Concatenation Operations in Pandas DataFrame/7. quiz.html
  -  212 Bytes

  [TutsNode.net] - 9. Functions That Can Be Applied on a DataFrame/10. quiz.html
  -  212 Bytes

  [TutsNode.net] - 10. Pivot Tables in Pandas Library/3. quiz.html
  -  212 Bytes

  [TutsNode.net] - 11. File Operations in Pandas Library/6. quiz.html
  -  212 Bytes

  .pad/0
  -  409.42 KB

  [TutsNode.net] - 1. Python Installations (Anaconda Navigator, Jupyter Notebook, Jupyter Lab)/3. Installing Anaconda Distribution for Linux.mp4
  -  119.83 MB

  .pad/1
  -  171.09 KB

  [TutsNode.net] - 9. Functions That Can Be Applied on a DataFrame/3. Aggregation Functions in Pandas DataFrames.mp4
  -  83.65 MB

  .pad/2
  -  358.6 KB

  [TutsNode.net] - 9. Functions That Can Be Applied on a DataFrame/5. Coordinated Use of Grouping and Aggregation Functions in Pandas Dataframes.mp4
  -  80.9 MB

  .pad/3
  -  100.35 KB

  [TutsNode.net] - 6. Structural Operations on Pandas DataFrame/3. Null Values in Pandas Dataframes.mp4
  -  62.37 MB

  .pad/4
  -  130.72 KB

  [TutsNode.net] - 11. File Operations in Pandas Library/2. Data Entry with Csv and Txt Files.mp4
  -  59.33 MB

  .pad/5
  -  173.37 KB

  [TutsNode.net] - 8. Structural Concatenation Operations in Pandas DataFrame/1. Concatenating Pandas Dataframes Concat Function.mp4
  -  58.05 MB

  .pad/6
  -  463.31 KB

  [TutsNode.net] - 1. Python Installations (Anaconda Navigator, Jupyter Notebook, Jupyter Lab)/2. Installing Anaconda Distribution for MacOs.mp4
  -  57.92 MB

  .pad/7
  -  82.55 KB

  [TutsNode.net] - 8. Structural Concatenation Operations in Pandas DataFrame/4. Merge Pandas Dataframes Merge() Function Lesson 3.mp4
  -  53.81 MB

  .pad/8
  -  190.33 KB

  [TutsNode.net] - 8. Structural Concatenation Operations in Pandas DataFrame/6. Joining Pandas Dataframes Join() Function.mp4
  -  51.85 MB

  .pad/9
  -  149.19 KB

  [TutsNode.net] - 8. Structural Concatenation Operations in Pandas DataFrame/2. Merge Pandas Dataframes Merge() Function Lesson 1.mp4
  -  51.31 MB

  .pad/10
  -  192.64 KB

  [TutsNode.net] - 10. Pivot Tables in Pandas Library/2. Pivot Tables in Pandas Library.mp4
  -  49.95 MB

  .pad/11
  -  46.31 KB

  [TutsNode.net] - 6. Structural Operations on Pandas DataFrame/5. Filling Null Values Fillna() Function.mp4
  -  47.9 MB

  .pad/12
  -  106.52 KB

  [TutsNode.net] - 3. Series Structures in the Pandas Library/6. Most Applied Methods on Pandas Series.mp4
  -  44.07 MB

  .pad/13
  -  437 KB

  [TutsNode.net] - 9. Functions That Can Be Applied on a DataFrame/8. Advanced Aggregation Functions Transform() Function.mp4
  -  43.73 MB

  .pad/14
  -  277.42 KB

  [TutsNode.net] - 9. Functions That Can Be Applied on a DataFrame/4. Examining the Data Set 2.mp4
  -  42.56 MB

  .pad/15
  -  452.73 KB

  [TutsNode.net] - 5. Element Selection Operations in DataFrame Structures/6. Element Selection with Conditional Operations in.mp4
  -  42.54 MB

  .pad/16
  -  467.15 KB

  [TutsNode.net] - 7. Multi-Indexed DataFrame Structures/1. Multi-Index and Index Hierarchy in Pandas DataFrames.mp4
  -  39.51 MB

  .pad/17
  -  497.4 KB

  [TutsNode.net] - 9. Functions That Can Be Applied on a DataFrame/2. Examining the Data Set 1.mp4
  -  39.21 MB

  .pad/18
  -  293.96 KB

  [TutsNode.net] - 9. Functions That Can Be Applied on a DataFrame/9. Advanced Aggregation Functions Apply() Function.mp4
  -  38.32 MB

  .pad/19
  -  187.45 KB

  [TutsNode.net] - 8. Structural Concatenation Operations in Pandas DataFrame/5. Merge Pandas Dataframes Merge() Function Lesson 4.mp4
  -  37.45 MB

  .pad/20
  -  46.89 KB

  [TutsNode.net] - 6. Structural Operations on Pandas DataFrame/6. Setting Index in Pandas DataFrames.mp4
  -  36.41 MB

  .pad/21
  -  92.16 KB

  [TutsNode.net] - 3. Series Structures in the Pandas Library/1. Creating a Pandas Series with a List.mp4
  -  36.27 MB

  .pad/22
  -  232.63 KB

  [TutsNode.net] - 10. Pivot Tables in Pandas Library/1. Examining the Data Set 3.mp4
  -  35.6 MB

  .pad/23
  -  405.08 KB

  [TutsNode.net] - 5. Element Selection Operations in DataFrame Structures/3. Top Level Element Selection in Pandas DataFramesLesson 1.mp4
  -  35.49 MB

  .pad/24
  -  13.54 KB

  [TutsNode.net] - 9. Functions That Can Be Applied on a DataFrame/1. Loading a Dataset from the Seaborn Library.mp4
  -  35 MB

  .pad/25
  -  4.12 KB

  [TutsNode.net] - 11. File Operations in Pandas Library/4. Outputting as an CSV Extension.mp4
  -  32.77 MB

  .pad/26
  -  234.53 KB

  [TutsNode.net] - 2. Pandas Library Introduction/1. Introduction to Pandas Library.mp4
  -  32.3 MB

  .pad/27
  -  208.97 KB

  [TutsNode.net] - 11. File Operations in Pandas Library/1. Accessing and Making Files Available.mp4
  -  32.27 MB

  .pad/28
  -  232.81 KB

  [TutsNode.net] - 6. Structural Operations on Pandas DataFrame/4. Dropping Null Values Dropna() Function.mp4
  -  31.76 MB

  .pad/29
  -  248.28 KB

  [TutsNode.net] - 6. Structural Operations on Pandas DataFrame/1. Adding Columns to Pandas Data Frames.mp4
  -  31.05 MB

  .pad/30
  -  457.56 KB

  [TutsNode.net] - 5. Element Selection Operations in DataFrame Structures/2. Element Selection Operations in Pandas DataFrames Lesson 2.mp4
  -  29.36 MB

  .pad/31
  -  140.62 KB

  [TutsNode.net] - 5. Element Selection Operations in DataFrame Structures/4. Top Level Element Selection in Pandas DataFramesLesson 2.mp4
  -  29.01 MB

  .pad/32
  -  504.16 KB

  [TutsNode.net] - 7. Multi-Indexed DataFrame Structures/3. Selecting Elements Using the xs() Function in Multi-Indexed DataFrames.mp4
  -  28.23 MB

  .pad/33
  -  279.52 KB

  [TutsNode.net] - 5. Element Selection Operations in DataFrame Structures/1. Element Selection Operations in Pandas DataFrames Lesson 1.mp4
  -  27.45 MB

  .pad/34
  -  53.43 KB

  [TutsNode.net] - 8. Structural Concatenation Operations in Pandas DataFrame/3. Merge Pandas Dataframes Merge() Function Lesson 2.mp4
  -  27.44 MB

  .pad/35
  -  63.06 KB

  [TutsNode.net] - 9. Functions That Can Be Applied on a DataFrame/6. Advanced Aggregation Functions Aggregate() Function.mp4
  -  26.95 MB

  .pad/36
  -  55.11 KB

  [TutsNode.net] - 3. Series Structures in the Pandas Library/7. Indexing and Slicing Pandas Series.mp4
  -  26.9 MB

  .pad/37
  -  99.82 KB

  [TutsNode.net] - 4. DataFrame Structures in Pandas Library/4. Examining the Properties of Pandas DataFrames.mp4
  -  23.87 MB

  .pad/38
  -  129.45 KB

  [TutsNode.net] - 9. Functions That Can Be Applied on a DataFrame/7. Advanced Aggregation Functions Filter() Function.mp4
  -  22.98 MB

  .pad/39
  -  17.22 KB

  [TutsNode.net] - 7. Multi-Indexed DataFrame Structures/2. Element Selection in Multi-Indexed DataFrames.mp4
  -  22.37 MB

  .pad/40
  -  135.48 KB

  [TutsNode.net] - 4. DataFrame Structures in Pandas Library/1. Creating Pandas DataFrame with List.mp4
  -  21.15 MB

  .pad/41
  -  362.2 KB

  [TutsNode.net] - 5. Element Selection Operations in DataFrame Structures/5. Top Level Element Selection in Pandas DataFramesLesson 3.mp4
  -  20.53 MB

  .pad/42
  -  482.47 KB

  [TutsNode.net] - 11. File Operations in Pandas Library/3. Data Entry with Excel Files.mp4
  -  19.84 MB

  .pad/43
  -  166.81 KB

  [TutsNode.net] - 11. File Operations in Pandas Library/5. Outputting as an Excel File.mp4
  -  18.14 MB

  .pad/44
  -  370.81 KB

  [TutsNode.net] - 3. Series Structures in the Pandas Library/4. Object Types in Series.mp4
  -  17.96 MB

  .pad/45
  -  44.49 KB

  [TutsNode.net] - 3. Series Structures in the Pandas Library/5. Examining the Primary Features of the Pandas Seri.mp4
  -  17.43 MB

  .pad/46
  -  71.8 KB

  [TutsNode.net] - 3. Series Structures in the Pandas Library/2. Creating a Pandas Series with a Dictionary.mp4
  -  16.85 MB

  .pad/47
  -  155.01 KB

  [TutsNode.net] - 4. DataFrame Structures in Pandas Library/3. Creating Pandas DataFrame with Dictionary.mp4
  -  14.74 MB

  .pad/48
  -  270.91 KB

  [TutsNode.net] - 6. Structural Operations on Pandas DataFrame/2. Removing Rows and Columns from Pandas Data frames.mp4
  -  14.41 MB

  .pad/49
  -  87.88 KB

  [TutsNode.net] - 4. DataFrame Structures in Pandas Library/2. Creating Pandas DataFrame with NumPy Array.mp4
  -  11.22 MB

  .pad/50
  -  287.01 KB

  [TutsNode.net] - 3. Series Structures in the Pandas Library/3. Creating Pandas Series with NumPy Array.mp4
  -  11.02 MB



Torrent Description

Description:

Description

Hello there,

Welcome to the “Pandas Python Programming Language Library From Scratch A-Z™” Course

Pandas mainly used for Python Data Analysis. Learn Pandas for Data Science, Machine Learning, Deep Learning using Python

Pandas is an open source Python package that is most widely used for data science/data analysis and machine learning tasks. Pandas is built on top of another package named Numpy, which provides support for multi-dimensional arrays.

Pandas is mainly used for data analysis and associated manipulation of tabular data in DataFrames. Pandas allows importing data from various file formats such as comma-separated values, JSON, Parquet, SQL database tables or queries, and Microsoft Excel. data analysis, pandas, python data analysis, python, data visualization, pandas python, python pandas, python for data analysis, python data

Pandas is a fast, powerful, flexible and easy to use open source data analysis and manipulation tool, built on top of the Python programming language.

Pandas Pyhon aims to be the fundamental high-level building block for doing practical, real world data analysis in Python. Additionally, it has the broader goal of becoming the most powerful and flexible open source data analysis / manipulation tool available in any language.

Python is a general-purpose, object-oriented, high-level programming language. Whether you work in artificial intelligence or finance or are pursuing a career in web development or data science, Python is one of the most important skills you can learn.

Numpy is a library for the Python programming language, adding support for large, multi-dimensional arrays and matrices, along with a large collection of high-level mathematical functions to operate on these arrays. Moreover, Numpy forms the foundation of the Machine Learning stack.

With this training, where we will try to understand the logic of the PANDAS Library, which is required for data science, which is seen as one of the most popular professions of the 21st century, we will work on many real-life applications.

The course content is created with real-life scenarios and aims to move those who start from scratch forward within the scope of the PANDAS Library.

PANDAS Library is one of the most used libraries in data science.

Yes, do you know that data science needs will create 11.5 million job opportunities by 2026?

Well, the average salary for data science careers is $100,000. Did you know that? Data Science Careers Shape the Future.

It isn’t easy to imagine our life without data science and Machine learning. Word prediction systems, Email filtering, and virtual personal assistants like Amazon’s Alexa and iPhone’s Siri are technologies that work based on machine learning algorithms and mathematical models.

Data science and Machine learning-only word prediction system or smartphone does not benefit from the voice recognition feature. Machine learning and data science are constantly applied to new industries and problems. Millions of businesses and government departments rely on big data to be successful and better serve their customers. So, data science careers are in high demand.

If you want to learn one of the most employer-requested skills?

Do you want to use the pandas’ library in machine learning and deep learning by using the Python programming language?

If you’re going to improve yourself on the road to data science and want to take the first step.

In any case, you are in the right place!

“Pandas Python Programming Language Library From Scratch A-Z™” course for you.

In the course, you will grasp the topics with real-life examples. With this course, you will learn the Pandas library step by step.

You will open the door to the world of Data Science, and you will be able to go deeper for the future.

This Pandas course is for everyone!

No problem if you have no previous experience! This course is expertly designed to teach (as a refresher) everyone from beginners to professionals.

During the course, you will learn the following topics:

   Installing Anaconda Distribution for Windows
   Installing Anaconda Distribution for MacOs
   Installing Anaconda Distribution for Linux
   Introduction to Pandas Library
   Creating a Pandas Series with a List
   Creating a Pandas Series with a Dictionary
   Creating Pandas Series with NumPy Array
   Object Types in Series
   Examining the Primary Features of the Pandas Series
   Most Applied Methods on Pandas Series
   Indexing and Slicing Pandas Series
   Creating Pandas DataFrame with List
   Creating Pandas DataFrame with NumPy Array
   Creating Pandas DataFrame with Dictionary
   Examining the Properties of Pandas DataFrames
   Element Selection Operations in Pandas DataFrames
   Top Level Element Selection in Pandas DataFrames: Structure of loc and iloc
   Element Selection with Conditional Operations in Pandas Data Frames
   Adding Columns to Pandas Data Frames
   Removing Rows and Columns from Pandas Data frames
   Null Values ​​in Pandas Dataframes
   Dropping Null Values: Dropna() Function
   Filling Null Values: Fillna() Function
   Setting Index in Pandas DataFrames
   Multi-Index and Index Hierarchy in Pandas DataFrames
   Element Selection in Multi-Indexed DataFrames
   Selecting Elements Using the xs() Function in Multi-Indexed DataFrames
   Concatenating Pandas Dataframes: Concat() Function
   Merge Pandas Dataframes: Merge() Function
   Joining Pandas Dataframes: Join() Function
   Loading a Dataset from the Seaborn Library
   Aggregation Functions in Pandas DataFrames
   Coordinated Use of Grouping and Aggregation Functions in Pandas Dataframes
   Advanced Aggregation Functions: Aggregate() Function
   Advanced Aggregation Functions: Filter() Function
   Advanced Aggregation Functions: Transform() Function
   Advanced Aggregation Functions: Apply() Function
   Pivot Tables in Pandas Library
   Data Entry with Csv and Txt Files
   Data Entry with Excel Files
   Outputting as an CSV Extension
   Outputting as an Excel File

With my up-to-date Course, you will have the chance to keep yourself up to date and equip yourself with Pandas skills. I am also happy to say that I will always be available to support your learning and answer your questions.

What is a Pandas in Python?

Pandas is an open source Python package that is most widely used for data science/data analysis and machine learning tasks. It is built on top of another package named Numpy, which provides support for multi-dimensional arrays.

What is Panda used for?

Pandas is mainly used for data analysis and associated manipulation of tabular data in DataFrames. Pandas allows importing data from various file formats such as comma-separated values, JSON, Parquet, SQL database tables or queries, and Microsoft Excel.

What is difference between NumPy and pandas?

NumPy library provides objects for multi-dimensional arrays, whereas Pandas is capable of offering an in-memory 2d table object called DataFrame. NumPy consumes less memory as compared to Pandas. Indexing of the Series objects is quite slow as compared to NumPy arrays.

Why do we need pandas in Python?

Pandas is built on top of two core Python libraries—matplotlib for data visualization and NumPy for mathematical operations. Pandas acts as a wrapper over these libraries, allowing you to access many of matplotlib’s and NumPy’s methods with less code.

Is pandas easy to learn?

Pandas is one of the first Python packages you should learn because it’s easy to use, open source, and will allow you to work with large quantities of data. It allows fast and efficient data manipulation, data aggregation and pivoting, flexible time series functionality, and more.

Why do you want to take this Course?

Our answer is simple: The quality of teaching.

Whether you work in machine learning or finance, Whether you’re pursuing a career in web development or data science, Python and data science are among the essential skills you can learn.

Python’s simple syntax is particularly suitable for desktop, web, and business applications.

The Python instructors at OAK Academy are experts in everything from software development to data analysis and are known for their practical, intimate instruction for students of all levels.

Our trainers offer training quality as described above in every field, such as the Python programming language.

London-based OAK Academy is an online training company. OAK Academy provides IT, Software, Design, and development training in English, Portuguese, Spanish, Turkish, and many languages ​​on the Udemy platform, with over 1000 hours of video training courses.

OAK Academy not only increases the number of training series by publishing new courses but also updates its students about all the innovations of the previously published courses.

When you sign up, you will feel the expertise of OAK Academy’s experienced developers. Our instructors answer questions sent by students to our instructors within 48 hours at the latest.

Quality of Video and Audio Production

All our videos are created/produced in high-quality video and audio to provide you with the best learning experience.

In this course, you will have the following:

• Lifetime Access to the Course

• Quick and Answer in the Q&A Easy Support

• Udemy Certificate of Completion Available for Download

• We offer full support by answering any questions.

• “For Data Science Using Python Programming Language: Pandas Library | AZ™” course. Come now! See you at the Course!

• We offer full support by answering any questions.

Now dive into my “Pandas Python Programming Language Library From Scratch A-Z™” Course

Pandas mainly used for Python Data Analysis. Learn Pandas for Data Science, Machine Learning, Deep Learning using Python

See you at the Course!
Who this course is for:

   Those who want to learn the Pandas Library, which is necessary for data science
   Those who want to improve themselves in the field of Python Programming Language and Data science
   Those who aim for a career in data science

Requirements

   Basic Knowledge of Python Programming Language
   Basic Knowledge of Numpy Library
   Basic Knowledge of Mathematics
   Watch the course videos completely and in order.
   Internet Connection
   Any device where you can watch the lesson, such as a mobile phone, computer or tablet.
   Determination and patience for learning Pandas Python Programming Language Library.

Last Updated 10/2022