Python for Data Science: Numpy and Pandas Libraries for Data
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Data science is all about understanding data, analyzing it, and presenting it in a way that is easy to understand. With Python, data analysis and visualization become easy, and with the Numpy and Pandas libraries, you can manipulate data to achieve any desired action. In this course, you will learn how to use Python to analyze data, manipulate data, and visualize data with Numpy and Pandas libraries.
In this comprehensive course, we’ll cover everything from Python programming basics to advanced topics in data analysis and visualization. You’ll learn how to install Python, use Python IDEs like IDLE and Anaconda, and master Python data types, operators, functions, modules, and file handling. With Numpy and Pandas libraries, you’ll be able to manipulate data and visualize data to make it more understandable.
With step-by-step examples, quizzes, and real-world projects, you’ll be able to master Python programming and become a data science expert.
What you will learn in this course?
– Understand the basics of Python programming, including installation and IDEs.
– Master Python data types, operators, functions, modules, and file handling.
– Learn how to use Numpy and Pandas libraries to manipulate data and visualize data.
– Explore advanced topics in data analysis and visualization with Python.
– Practice with quizzes and real-world projects to become a data science expert.
Python is a powerful, elegant, and easy-to-learn programming language that is widely used in data science. With our comprehensive curriculum and hands-on exercises, you’ll gain the knowledge and skills you need to become a Python Programming expert.
Join us today and start your journey to mastering Python for Data Science with Numpy and Pandas Libraries!
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5Variables, Operators and Data Types in PythonVideo lesson
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6String Functions in PythonVideo lesson
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7Control Flow VS LoopsVideo lesson
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8Data Structures in PythonVideo lesson
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9Error Handling in PythonVideo lesson
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10Functions in PythonVideo lesson
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11Files and Modules in PythonVideo lesson
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12Creating Simple Class.Video lesson
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13Overviewing Constructor.Video lesson
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14Learning How to creating Dunder Methods?Video lesson
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15Learning about Inheritance.Video lesson
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16Knowing What is the Encapsulation?Video lesson
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17Learning also about Multiple InheritanceVideo lesson
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18Knowing What is the Overriding?Video lesson
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19Learning about Decorators.Video lesson
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20Learning How to use Build-in Decorators?Video lesson
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281. Numpy IntroVideo lesson
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292. Numpy.shape & Numpy.sizeVideo lesson
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303. Creating Numpy nd arrays using Numpy functionsVideo lesson
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314. Numpy.unique( ) & Array slicingVideo lesson
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325. Numpy Calculations and Operators.Video lesson
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336. Numpy AggregationsVideo lesson
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347. Numpy Reshape and TransposingVideo lesson
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358. Numpy ComparingVideo lesson
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369. Numpy Images processingVideo lesson
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37Installing Jupyter Lab & PandasVideo lesson
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38SQL PostgreSQL Down and installVideo lesson
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39Database CreationVideo lesson
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40Database RestoreVideo lesson
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41Using Python Pandas Package to load PostgreSQL the Data Output fileVideo lesson
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42Fetchmany and FetchallVideo lesson
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43Querying Using Python PanadasVideo lesson
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44Pandas methods and functionsVideo lesson
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45Visualizing DataVideo lesson
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46Pandas Data AnalysisVideo lesson
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47Sampling ErrorVideo lesson
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