Python for Data Science: Learn Data Science From Scratch
Python for Data Science: Learn Data Science From Scratch, available at $69.99, has an average rating of 4.55, with 136 lectures, 7 quizzes, based on 91 reviews, and has 434 subscribers.
You will learn about Fundamentals of Pandas Library (Data science, Python data science, data science project, python project) Learn Fundamentals of Python for effectively using Data Science Installation of Anaconda and how to use for Python, Pandas, Numpy Using Jupyter notebook Numpy arrays Series and Features in Python for Data science, numpy and pandas Combining Dataframes, Data Munging and how to deal with Missing Data How to use Matplotlib library and start to journey in Data Visualization Also, why you should learn Python and Pandas Library (numpy, pandas, python numpy pandas) Learn Data Science with Python, Numpy and pandas OAK offers highly-rated data science courses that will help you learn how to visualize and respond to new data, as well as develop innovative new technologies Whether you’re interested in machine learning, data mining, or data analysis, Udemy has a course for you. Data science is everywhere. Better data science practices are allowing corporations to cut unnecessary costs, automate computing, and analyze markets. Data science is the key to getting ahead in a competitive global climate. Data science uses algorithms to understand raw data. The main difference between data science and traditional data analysis is its focus on prediction. Data Scientists use machine learning to discover hidden patterns in large amounts of raw data to shed light on real problems. Python is the most popular programming language for data science. It is a universal language that has a lot of libraries available. Data science requires lifelong learning, so you will never really finish learning. It is possible to learn data science on your own, as long as you stay focused and motivated. Luckily, there are a lot of online courses and boot camps available Some people believe that it is possible to become a data scientist without knowing how to code, but others disagree. A data scientist requires many skills. They need a strong understanding of statistical analysis and mathematics, which are essential pillars of data science. The demand for data scientists is growing. We do not just have data scientists; we have data engineers, data administrators, and analytics managers. This course is ideal for individuals who are Anyone who wants to learn data science, or Anyone who plans a career in data scientist, or Software developer whom want to learn python data science, or Anyone eager to learn Data Science python with no coding background or Anyone eager to learn Python with no coding background or Anyone who wants to learn Pandas or Anyone who wants to learn Numpy or Anyone who wants to learn Matplotlib or Anyone who wants to work on real data science project or Anyone who wants to learn data visualization projects. or people who want to learn python projects, data science projects It is particularly useful for Anyone who wants to learn data science, or Anyone who plans a career in data scientist, or Software developer whom want to learn python data science, or Anyone eager to learn Data Science python with no coding background or Anyone eager to learn Python with no coding background or Anyone who wants to learn Pandas or Anyone who wants to learn Numpy or Anyone who wants to learn Matplotlib or Anyone who wants to work on real data science project or Anyone who wants to learn data visualization projects. or people who want to learn python projects, data science projects.
Enroll now: Python for Data Science: Learn Data Science From Scratch
Summary
Title: Python for Data Science: Learn Data Science From Scratch
Price: $69.99
Average Rating: 4.55
Number of Lectures: 136
Number of Quizzes: 7
Number of Published Lectures: 136
Number of Published Quizzes: 7
Number of Curriculum Items: 143
Number of Published Curriculum Objects: 143
Original Price: $199.99
Quality Status: approved
Status: Live
What You Will Learn
- Fundamentals of Pandas Library (Data science, Python data science, data science project, python project)
- Learn Fundamentals of Python for effectively using Data Science
- Installation of Anaconda and how to use for Python, Pandas, Numpy
- Using Jupyter notebook
- Numpy arrays
- Series and Features in Python for Data science, numpy and pandas
- Combining Dataframes, Data Munging and how to deal with Missing Data
- How to use Matplotlib library and start to journey in Data Visualization
- Also, why you should learn Python and Pandas Library (numpy, pandas, python numpy pandas)
- Learn Data Science with Python, Numpy and pandas
- OAK offers highly-rated data science courses that will help you learn how to visualize and respond to new data, as well as develop innovative new technologies
- Whether you’re interested in machine learning, data mining, or data analysis, Udemy has a course for you.
- Data science is everywhere. Better data science practices are allowing corporations to cut unnecessary costs, automate computing, and analyze markets.
- Data science is the key to getting ahead in a competitive global climate.
- Data science uses algorithms to understand raw data. The main difference between data science and traditional data analysis is its focus on prediction.
- Data Scientists use machine learning to discover hidden patterns in large amounts of raw data to shed light on real problems.
- Python is the most popular programming language for data science. It is a universal language that has a lot of libraries available.
- Data science requires lifelong learning, so you will never really finish learning.
- It is possible to learn data science on your own, as long as you stay focused and motivated. Luckily, there are a lot of online courses and boot camps available
- Some people believe that it is possible to become a data scientist without knowing how to code, but others disagree.
- A data scientist requires many skills. They need a strong understanding of statistical analysis and mathematics, which are essential pillars of data science.
- The demand for data scientists is growing. We do not just have data scientists; we have data engineers, data administrators, and analytics managers.
Who Should Attend
- Anyone who wants to learn data science,
- Anyone who plans a career in data scientist,
- Software developer whom want to learn python data science,
- Anyone eager to learn Data Science python with no coding background
- Anyone eager to learn Python with no coding background
- Anyone who wants to learn Pandas
- Anyone who wants to learn Numpy
- Anyone who wants to learn Matplotlib
- Anyone who wants to work on real data science project
- Anyone who wants to learn data visualization projects.
- people who want to learn python projects, data science projects
Target Audiences
- Anyone who wants to learn data science,
- Anyone who plans a career in data scientist,
- Software developer whom want to learn python data science,
- Anyone eager to learn Data Science python with no coding background
- Anyone eager to learn Python with no coding background
- Anyone who wants to learn Pandas
- Anyone who wants to learn Numpy
- Anyone who wants to learn Matplotlib
- Anyone who wants to work on real data science project
- Anyone who wants to learn data visualization projects.
- people who want to learn python projects, data science projects
Hello there,
Welcome to my “Python for Data Science: Learn Data Science From Scratch” course.
Data science, data science Project, data science projects, data science from scratch, data science using python, python for data science, python data science, Numpy, pandas, matplotlib
Data Science with Python, NumPy, Pandas, Matplotlib, Data Visualization Learn with Data Science project & Python project
OAK Academy offers highly-rated data science courses that will help you learn how to visualize and respond to new data, as well as develop innovative new technologies. Whether you’re interested in machine learning, data mining, or data analysis, Udemy has a course for you. data literacy, python, data science python, pandas Project, python data science projects, data, data science with Project, pandas projects, pandas, data science with python, NumPy
Data science is everywhere. Better data science practices are allowing corporations to cut unnecessary costs, automate computing, and analyze markets. Essentially, data science is the key to getting ahead in a competitive global climate.
Python instructors at OAK Academy specialize in everything from software development to data analysis and are known for their effective, friendly instruction for students of all levels.
Whether you work in machine learning or finance or are pursuing a career in web development or data science, Python is one of the most important skills you can learn. Python’s simple syntax is especially suited for desktop, web, and business applications. Python’s design philosophy emphasizes readability and usability. Python was developed upon the premise that there should be only one way (and preferably one obvious way) to do things, a philosophy that has resulted in a strict level of code standardization. The core programming language is quite small and the standard library is also large. In fact, Python’s large library is one of its greatest benefits, providing a variety of different tools for programmers suited for many different tasks.
Ready for a Data Science career?
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Are you curious about Data Science and looking to start your self-learning journey into the world of data with Python?
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Are you an experienced developer looking for a landing in Data Science!
In both cases, you are at the right place!
Welcome to Python for Data Science: Learn Data Science From Scratch course
Python is the most popular programming language for the data science process in recent years and also do not forget that data scientist has been ranked the number one job on several job search sites! With Python skills, you will encounter many businesses that use Python and its libraries for data science. Almost all companies working on machine learning and data science use Python’s Pandas library. Thanks to the large libraries provided, The number of companies and enterprises using Python is increasing day by day. The world we are in is experiencing the age of informatics. Python and its Pandas library will be the right choice for you to take part in this world and create your own opportunities,
In this course, we will open the door of the Data Science world and will move deeper. You will learn the fundamentals of Python and its beautiful libraries such as Numpy, Pandas, and Matplotlib step by step.
Throughout the course, we will teach you how to use Python to analyze data, create beautiful visualizations, and use powerful machine learning algorithms and we will also do a variety of exercises to reinforce what we have learned in this Python for Data Science course.
In this course you will learn;
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How to use Anaconda and Jupyter notebook,
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Fundamentals of Python such as
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Datatypes in Python,
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Lots of datatype operators, methods, and how to use them,
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Conditional concept, if statements
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The logic of Loops and control statements
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Functions and how to use them
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How to use modules and create your own modules
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Data science and Data literacy concepts
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Fundamentals of Numpy for Data manipulation such as
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Numpy arrays and their features
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How to do indexing and slicing on Arrays
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Lots of stuff about Pandas for data manipulation such as
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Pandas series and their features
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Dataframes and their features
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Hierarchical indexing concept and theory
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Groupby operations
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The logic of Data Munging
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How to deal effectively with missing data effectively
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Combining the Data Frames
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How to work with Dataset files
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And also you will learn fundamentals thing about Matplotlib library such as
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Pyplot, Pylab and Matplotlib concepts
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What Figure, Subplot and Axes are
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How to do figure and plot customization
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Data science project
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Python Projects
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Pandas projects
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Python data science Projects
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Data literacy
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Full stack data science
And we will do many exercises. Finally, we will also have 4 different final projects covering all of these subjects.
Why would you want to take this course?
We have prepared this course in the simplest way for beginners and have prepared many different exercises to help them understand better.
No prior knowledge is needed!
In this course, you need no previous knowledge about Python, Pandas or Data Science.
This course will take you from a beginner to a more experienced level.
If you are new to data science or have no idea about what data science does no problem, you will learn anything you need to start data science.
If you are a software developer or familiar with other programming languages and you want to start a new world, you are also in the right place. You will learn step by step with hands-on examples.
What is data science?
We have more data than ever before. But data alone cannot tell us much about the world around us. We need to interpret the information and discover hidden patterns. This is where data sciencecomes in. Data science pythonuses algorithms to understand raw data. The main difference between data science and traditional data analysis is its focus on prediction. Python data science seeks to find patterns in data and use those patterns to predict future data. It draws on machine learning to process large amounts of data, discover patterns, and predict trends. Data science using python includes preparing, analyzing, and processing data. It draws from many scientific fields, and as a python for data science, it progresses by creating new algorithms to analyze data and validate current methods.
What does a data scientist do?
Data Scientists use machine learning to discover hidden patterns in large amounts of raw data to shed light on real problems. This requires several steps. First, they must identify a suitable problem. Next, they determine what data are needed to solve such a situation and figure out how to get the data. Once they obtain the data, they need to clean the data. The data may not be formatted correctly, it might have additional unnecessary data, it might be missing entries, or some data might be incorrect. Data Scientists must, therefore, make sure the data is clean before they analyze the data. To analyze the data, they use machine learning techniques to build models. Once they create a model, they test, refine, and finally put it into production.
What are the most popular coding languagws for data science?
Python for data scienceis the most popular programming language for data science. It is a universal language that has a lot of libraries available. It is also a good beginner language. R is also popular; however, it is more complex and designed for statistical analysis. It might be a good choice if you want to specialize in statistical analysis. You will want to know either Python or R and SQL. SQL is a query language designed for relational databases. Data scientists deal with large amounts of data, and they store a lot of that data in relational databases. Those are the three most-used programming languages. Other languages such as Java, C++, JavaScript, and Scala are also used, albeit less so. If you already have a background in those languages, you can explore the tools available in those languages. However, if you already know another programming language, you will likely be able to pick up.
How long does it take to become a data scientist?
This answer, of course, varies. The more time you devote to learning new skills, the faster you will learn. It will also depend on your starting place. If you already have a strong base in mathematics and statistics, you will have less to learn. If you have no background in statistics or advanced mathematics, you can still become a data scientist; it will just take a bit longer. Data science requires lifelong learning, so you will never really finish learning. A better question might be, “How can I gauge whether I know enough to become a data scientist?” Challenge yourself to complete data science projects using open data. The more you practice, the more you will learn, and the more confident you will become. Once you have several projects that you can point to as good examples of your skillset as a data scientist, you are ready to enter the field.
How can ı learn data science on my own?
It is possible to learn data science projects on your own, as long as you stay focused and motivated. Luckily, there are a lot of online courses and boot camps available. Start by determining what interests you about data science. If you gravitate to visualizations, begin learning about them. Starting with something that excites you will motivate you to take that first step. If you are not sure where you want to start, try starting with learning Python. It is an excellent introduction to programming languages and will be useful as a data scientist. Begin by working through tutorials or Udemy courses on the topic of your choice. Once you have developed a base in the skills that interest you, it can help to talk with someone in the field. Find out what skills employers are looking for and continue to learn those skills. When learning on your own, setting practical learning goals can keep you motivated.
Does data science require coding?
The jury is still out on this one. Some people believe that it is possible to become a data scientist without knowing how to code, but others disagree. A lot of algorithms have been developed and optimized in the field. You could argue that it is more important to understand how to use the algorithms than how to code them yourself. As the field grows, more platforms are available that automate much of the process. However, as it stands now, employers are primarily looking for people who can code, and you need basic programming skills. The data scientistrole is continuing to evolve, so that might not be true in the future. The best advice would be to find the path that fits your skillset.
What skills should a data scientist know?
A data scientist requires many skills. They need a strong understanding of statistical analysis and mathematics, which are essential pillars of data science. A good understanding of these concepts will help you understand the basic premises of data science. Familiarity with machine learning is also important. Machine learning is a valuable tool to find patterns in large data sets. To manage large data sets, data scientists must be familiar with databases. Structured query language (SQL) is a must-have skill for data scientists. However, nonrelational databases (NoSQL) are growing in popularity, so a greater understanding of database structures is beneficial. The dominant programming language in Data Science is Python — although R is also popular. A basis in at least one of these languages is a good starting point. Finally, to communicate findings.
Is data science a good career?
The demand for data scientists is growing. We do not just have data scientists; we have data engineers, data administrators, and analytics managers. The jobs also generally pay well. This might make you wonder if it would be a promising career for you. A better understanding of the type of work a data scientist does can help you understand if it might be the path for you. First and foremost, you must think analytically. Data science from scratch is about gaining a more in-depth understanding of info through data. Do you fact-check information and enjoy diving into the statistics? Although the actual work may be quite technical, the findings still need to be communicated. Can you explain complex findings to someone who does not have a technical background? Many data scientists work in cross-functional teams and must share their results with people with very different backgrounds.
What is python?
Machine learning pythonis 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 bootcampis one of the most important skills you can learn. Python’s simple syntax is especially suited for desktop, web, and business applications. Python’s design philosophy emphasizes readability and usability. Python was developed on the premise that there should be only one way (and preferably, one obvious way) to do things, a philosophy that resulted in a strict level of code standardization. The core programming language is quite small and the standard library is also large. In fact, Python’s large library is one of its greatest benefits, providing different tools for programmers suited for a variety of tasks.
Python vs. R: What is the Difference?
Python and R are two of today’s most popular programming tools. When deciding between Python and R in data science , you need to think about your specific needs. On one hand, Python is relatively easy for beginners to learn, is applicable across many disciplines, has a strict syntax that will help you become a better coder, and is fast to process large datasets. On the other hand, R has over 10,000 packages for data manipulation, is capable of easily making publication-quality graphics, boasts superior capability for statistical modeling, and is more widely used in academia, healthcare, and finance.
What does it mean that Python is object-oriented?
Python is a multi-paradigm language, which means that it supports many data analysis programming approaches. Along with procedural and functional programming styles, Python also supports the object-oriented style of programming. In object-oriented programming, a developer completes a programming project by creating Python objects in code that represent objects in the actual world. These objects can contain both the data and functionality of the real-world object. To generate an object in Python you need a class. You can think of a class as a template. You create the template once, and then use the template to create as many objects as you need. Python classes have attributes to represent data and methods that add functionality. A class representing a car may have attributes like color, speed, and seats and methods like driving, steering, and stopping.
What are the limitations of Python?
Python is a widely used, general-purpose programming language, but it has some limitations. Because Python in machine learning is an interpreted, dynamically typed language, it is slow compared to a compiled, statically typed language like C. Therefore, Python is useful when speed is not that important. Python’s dynamic type system also makes it use more memory than some other programming languages, so it is not suited to memory-intensive applications. The Python virtual engine that runs Python code runs single-threaded, making concurrency another limitation of the programming language. Though Python is popular for some types of game development, its higher memory and CPU usage limits its usage for high-quality 3D game development. That being said, computer hardware is getting better and better, and the speed and memory limitations of Python are getting less and less relevant.
How is Python used?
Python is a general programming language used widely across many industries and platforms. One common use of Python is scripting, which means automating tasks in the background. Many of the scripts that ship with Linux operating systems are Python scripts. Python is also a popular language for machine learning, data analytics, data visualization, and data science because its simple syntax makes it easy to quickly build real applications. You can use Python to create desktop applications. Many developers use it to write Linux desktop applications, and it is also an excellent choice for web and game development. Python web frameworks like Flask and Django are a popular choice for developing web applications. Recently, Python is also being used as a language for mobile development via the Kivy third-party library.
What jobs use Python?
Python is a popular language that is used across many industries and in many programming disciplines. DevOps engineers use Python to script website and server deployments. Web developers use Python to build web applications, usually with one of Python’s popular web frameworks like Flask or Django. Data scientists and data analysts use Python to build machine learning models, generate data visualizations, and analyze big data. Financial advisors and quants (quantitative analysts) use Python to predict the market and manage money. Data journalists use Python to sort through information and create stories. Machine learning engineers use Python to develop neural networks and artificial intelligent systems.
How do I learn Python on my own?
Python has a simple syntax that makes it an excellent programming language for a beginner to learn. To learn Python on your own, you first must become familiar with the syntax. But you only need to know a little bit about Python syntax to get started writing real code; you will pick up the rest as you go. Depending on the purpose of using it, you can then find a good Python tutorial, book, or course that will teach you the programming language by building a complete application that fits your goals. If you want to develop games, then learn Python game development. If you’re going to build web applications, you can find many courses that can teach you that, too. Udemy’s online courses are a great place to start if you want to learn Python on your own.
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Fast & Friendly Support in the Q&A section
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Course Curriculum
Chapter 1: Data Science: Python is Easy To Learn, Data science Project
Lecture 1: Be Smart and Use Data But How: Answer is Data Science with Python
Lecture 2: FAQ regarding Data Science with Numpy, Pandas
Lecture 3: FAQ regarding Python with Numpy, Pandas
Lecture 4: Project Files and Course Documents for Python Data Science, Numpy, Pandas Course
Chapter 2: Data Science: Setting Up Python for Mac and Windows
Lecture 1: Python: Installing Anaconda for Windows
Lecture 2: Python: Installing Anaconda for Mac
Lecture 3: Ptyhon: Let's Meet Jupyter Notebook for Windows
Lecture 4: Python: Basics of Jupyter Notebook for Mac
Chapter 3: Fundamentals of Python
Lecture 1: Data Types in Python
Lecture 2: Operators in Python
Lecture 3: Conditionals in Python
Lecture 4: Loops in Python
Lecture 5: Lists, Tuples, Dictionaries and Sets in Python
Lecture 6: Data Type Operators and Methods in Python
Lecture 7: Modules in Python
Lecture 8: Functions in Python
Lecture 9: Exercise Analyse in Python
Lecture 10: Exercise Solution in Python
Chapter 4: Python For Data Science: Data Science
Lecture 1: What Is Data Science?
Lecture 2: Data Literacy
Chapter 5: Using Numpy for Data Manipulation
Lecture 1: Introduction to NumPy Library
Lecture 2: Notebook Project Files Link regarding NumPy Python Programming Language Library
Lecture 3: The Power of NumPy
Lecture 4: 6 Article Advice And Links about Numpy, Numpy Pyhon
Lecture 5: Creating NumPy Array with The Array() Function
Lecture 6: Creating NumPy Array with Zeros() Function
Lecture 7: Creating NumPy Array with Ones() Function
Lecture 8: Creating NumPy Array with Full() Function
Lecture 9: Creating NumPy Array with Arange() Function
Lecture 10: Creating NumPy Array with Eye() Function
Lecture 11: Creating NumPy Array with Linspace() Function
Lecture 12: Creating NumPy Array with Random() Function
Lecture 13: Properties of NumPy Array
Lecture 14: Reshaping a NumPy Array: Reshape() Function
Lecture 15: Identifying the Largest Element of a Numpy Array
Lecture 16: Detecting Least Element of Numpy Array: Min(), Ar
Lecture 17: Concatenating Numpy Arrays: Concatenate() Functio
Lecture 18: Splitting One-Dimensional Numpy Arrays: The Split
Lecture 19: Splitting Two-Dimensional Numpy Arrays: Split(),
Lecture 20: Sorting Numpy Arrays: Sort() Function
Lecture 21: Indexing Numpy Arrays
Lecture 22: Slicing One-Dimensional Numpy Arrays
Lecture 23: Slicing Two-Dimensional Numpy Arrays
Lecture 24: Assigning Value to One-Dimensional Arrays
Lecture 25: Assigning Value to Two-Dimensional Array
Lecture 26: Fancy Indexing of One-Dimensional Arrrays
Lecture 27: Fancy Indexing of Two-Dimensional Arrrays
Lecture 28: Combining Fancy Index with Normal Indexing
Lecture 29: Combining Fancy Index with Normal Slicing
Lecture 30: Operations with Comparison Operators
Lecture 31: Arithmetic Operations in Numpy
Lecture 32: Statistical Operations in Numpy
Lecture 33: Solving Second-Degree Equations with NumPy
Chapter 6: (Optional) Recap, Exercises, and Bonus İnfo from the Numpy Library
Lecture 1: What is Numpy?
Lecture 2: Array and Features in Numpy
Lecture 3: Array Operators in Numpy
Lecture 4: Indexing and Slicing in Numpy
Lecture 5: Numpy Exercises
Chapter 7: Pandas: Using Pandas for Data Manipulation
Lecture 1: Introduction to Pandas Library
Lecture 2: Pandas Project Files Link
Lecture 3: Creating a Pandas Series with a List
Lecture 4: Creating a Pandas Series with a Dictionary
Lecture 5: Creating Pandas Series with NumPy Array
Lecture 6: Object Types in Series
Lecture 7: Examining the Primary Features of the Pandas Series
Lecture 8: Most Applied Methods on Pandas Series
Lecture 9: Indexing and Slicing Pandas Series
Lecture 10: Creating Pandas DataFrame with List
Lecture 11: Creating Pandas DataFrame with NumPy Array
Lecture 12: Creating Pandas DataFrame with Dictionary
Lecture 13: Examining the Properties of Pandas DataFrames
Lecture 14: Element Selection Operations in Pandas DataFrames: Lesson 1
Lecture 15: Element Selection Operations in Pandas DataFrames: Lesson 2
Lecture 16: Top Level Element Selection in Pandas DataFrames: Lesson 1
Lecture 17: Top Level Element Selection in Pandas DataFrames: Lesson 2
Lecture 18: Top Level Element Selection in Pandas DataFrames: Lesson 3
Lecture 19: Element Selection with Conditional Operations in Pandas Data Frames
Lecture 20: Adding Columns to Pandas Data Frames
Lecture 21: Removing Rows and Columns from Pandas Data frames
Lecture 22: Null Values in Pandas Dataframes
Lecture 23: Dropping Null Values: Dropna() Function
Lecture 24: Filling Null Values: Fillna() Function
Lecture 25: Setting Index in Pandas DataFrames
Lecture 26: Multi-Index and Index Hierarchy in Pandas DataFrames
Lecture 27: Element Selection in Multi-Indexed DataFrames
Lecture 28: Selecting Elements Using the xs() Function in Multi-Indexed DataFrames
Lecture 29: Concatenating Pandas Dataframes: Concat () Function
Lecture 30: Merge Pandas Dataframes: Merge() Function: Lesson 1
Lecture 31: Merge Pandas Dataframes: Merge() Function: Lesson 2
Instructors
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Oak Academy
Web & Mobile Development, IOS, Android, Ethical Hacking, IT -
OAK Academy Team
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