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    Python Foundations For Data Science: From Zero To Data Analy

    Posted By: ELK1nG
    Python Foundations For Data Science: From Zero To Data Analy

    Python Foundations For Data Science: From Zero To Data Analy
    Published 8/2024
    MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
    Language: English | Size: 7.48 GB | Duration: 21h 10m

    Master Python for Data Manipulation, Visualization, and Introductory Machine Learning

    What you'll learn

    Foundational Python Programming: Acquire a strong grasp of Python basics, including data types, control structures, functions, and object-oriented programming.

    Data Analysis and Manipulation: Master the use of Python libraries like NumPy and pandas to clean, manipulate, and analyze datasets.

    Advanced Data Visualization: Learn to create visualizations using Matplotlib and Plotly to effectively communicate data-driven insights and trends.

    Gain hands-on experience with PyTorch to build and evaluate machine learning models, including classification and regression tasks.

    Develop robust and reliable code using error handling techniques and performing unit testing with pytest, ensuring your data analysis scripts run smoothly

    As a bonus, explore Python fundamentals while having fun with turtle graphics, making the course accessible for both parents and children learning together

    Requirements

    A Computer with Internet Access: You’ll need a computer with a reliable internet connection to install the necessary software and access the course materials.

    Motivation to Learn: This course is beginner-friendly, requiring no prior programming or data science experience. All you need is a willingness to learn and a desire to dive into Python for data science.

    No prior experience is needed—just bring your curiosity and enthusiasm to learn Python and data science!

    Description

    Welcome to "Python Foundations for Data Science"!This course is your gateway to mastering Python for data analysis, whether you’re just getting started or looking to expand your skills. We begin with the basics, ensuring you build a solid foundation, then gradually move into data science applications.I'd like to stress that we do not assume a programming background and no background in Python is required.What You'll Learn:Python Foundations: Grasp the essentials of Python, including data types, strings, slicing, f-strings, and more, laying a solid base for data manipulation.Control and Conditional Statements: Master decision-making in Python using if-else statements and logical operators.Loops: Automate repetitive tasks with for and while loops, enhancing your coding efficiency.Capstone Project - Turtle Graphics: Apply your foundational knowledge in a fun, creative project using Python’s turtle graphics.Functions: Build reusable code with functions, understanding arguments, return values, and scope.Lists: Manage and manipulate collections of data with Python lists, including list comprehension.Equality vs. Identity: Dive deep into how Python handles data with topics like shallow vs. deep copy, and understanding type vs. isinstance.Error-Handling: Write robust code by mastering exception handling and error management.Recursive Programming: Solve complex problems elegantly with recursion and understand how it contrasts with iteration.Searching and Sorting Algorithms: Learn fundamental algorithms to optimize data processing.Advanced Data Structures: Explore data structures beyond lists, such as dictionaries, sets, and tuples, crucial for efficient data management.Object-Oriented Programming: Build scalable and maintainable code with classes, inheritance, polymorphism, and more, including an in-depth look at dunder methods.Unit Testing with pytest: Ensure your code’s reliability with automated tests using pytest, a critical skill for any developer.Files and Modules: Handle file input/output and organize your code effectively with modules.NumPy: Dive into numerical computing with NumPy, the backbone of data science in Python.Pandas: Master data manipulation and analysis with pandas, a must-know tool for data science.Matplotlib - Graphing and Statistics: Visualize data and perform statistical analysis using Matplotlib.Matplotlib - Image Processing: Explore basic image processing techniques using Matplotlib.PyTorch Fundamentals: Get started with deep learning using PyTorch, understanding tensors and neural networks.Why Enroll?Expert Guidance: Benefit from step-by-step tutorials and clear explanations.Responsive Support: Get prompt, helpful feedback from the instructor, with questions quickly addressed in the course Q&A.Flexible Learning: Study at your own pace with lifetime access to regularly updated course materials.Positive Learning Environment: Join a supportive and encouraging space where students and instructors collaboratively discuss and solve problems.Who This Course is For: Python Beginners: Ideal for those new to programming who want to start their Python journey with a focus on data science.Data Analysis Newcomers: Perfect for individuals with little to no experience in data analysis who want to build a strong foundation in Python.Aspiring Data Scientists: Designed for those looking to transition into data science, equipping you with essential skills and knowledge.Professionals Enhancing Their Skills: Suitable for professionals across various industries aiming to leverage Python for data-driven decision-making.Students and Academics: Valuable for students and researchers who need to analyze data for academic projects, research, or studies.Enroll now and start your journey to mastering Python for data science and data analysis!

    Overview

    Section 1: Introduction

    Lecture 1 Introduction

    Section 2: Foundations

    Lecture 2 Introduction to Python Basics

    Lecture 3 First steps in Python and the Python Programing Language Structure

    Lecture 4 Python Program Structure - Input and Output

    Lecture 5 Indentation and Code Blocks

    Lecture 6 Using the Python Interpreter

    Lecture 7 More Details on the Print function

    Lecture 8 Basic Data Types in Python

    Lecture 9 Numerical Operations

    Lecture 10 Assignment and Incremental Assignment

    Lecture 11 Multiple Assignments

    Lecture 12 Variable Names, Snake Case, Camel Case

    Lecture 13 Keywords and our first Import Statement

    Lecture 14 Escape Sequences

    Lecture 15 Data Type Conversions

    Lecture 16 Substrings and Slicing

    Lecture 17 Multiline Strings and Docstrings

    Lecture 18 Installing and Introducing PyCharm

    Section 3: Control Flow and Conditional Statements

    Lecture 19 Introduction to Control Flow and Conditionals

    Lecture 20 If Statement and Logical Operators

    Lecture 21 Complex Conditions

    Lecture 22 Nested If Statements

    Section 4: Loops

    Lecture 23 For Loops using Range

    Lecture 24 General For Loops using Range

    Lecture 25 Looping over Lists and Tuples

    Lecture 26 Prime Numbers and Breaking out of Loops

    Lecture 27 Looping over a List of Strings using Split

    Lecture 28 While Loops

    Lecture 29 The While Loop and Validating Input

    Lecture 30 Factorial using the While Loop. Example of an Infinite While Loop

    Lecture 31 Factorial using the While Loop and Incremental Assignment

    Lecture 32 Nested Loops

    Section 5: Capstone Project using Turtle Graphics

    Lecture 33 Introducing Turtle Graphics

    Lecture 34 Avoiding Magic Numbers

    Lecture 35 Generalizing Example and using Parameters

    Lecture 36 Completing Turtle Graphics Background

    Lecture 37 Turtle Graphics Capstone Project

    Section 6: Functions

    Lecture 38 Introduction to Functions

    Lecture 39 Simple Functions

    Lecture 40 More Examples of Functions

    Lecture 41 Functions with Default Parameters

    Lecture 42 Breaking down Problems using Functions

    Lecture 43 Function Scope, Local and Global Variables

    Lecture 44 Accessing a global variable from within a function

    Lecture 45 Call by Order vs Call by Name/Keyword Arguments

    Lecture 46 Variable Number of Arguments in a Function call

    Lecture 47 Sum Example with Type-Checking

    Lecture 48 String Methods

    Lecture 49 Type Annotations and Functions

    Lecture 50 Type Annotations with Lists

    Section 7: Lists

    Lecture 51 Introduction to Lists

    Lecture 52 List Methods

    Lecture 53 Nested Lists

    Lecture 54 List Slicing

    Lecture 55 List Comprehensions

    Lecture 56 List Comprehensions and Filtering

    Lecture 57 For Loop Appending vs List Comprehension

    Section 8: Equality vs Identity

    Lecture 58 Aliasing

    Lecture 59 Beware of the 'is' Operator

    Lecture 60 Shallow Copy

    Lecture 61 Deep Copy

    Lecture 62 type vs isinstance

    Lecture 63 Comparison and Inequalities

    Lecture 64 Inequalities and Sorting

    Lecture 65 Reverse Sorting

    Lecture 66 General Sorting by a Key Function

    Section 9: Exception and Error Handling

    Lecture 67 Syntax vs Run-Time Errors

    Lecture 68 TypeError in Average Function

    Lecture 69 Catch all Errors

    Lecture 70 Catch Multiple Exceptions

    Lecture 71 Handling Exceptions Separately

    Lecture 72 Using else and finally

    Lecture 73 Safe Division Example

    Lecture 74 Raising a Built-in Exception

    Lecture 75 Example of Raising an Exception

    Lecture 76 Raising a Custom Exception

    Section 10: Recursive Programming

    Lecture 77 Factorial Recursive vs Non-Recursive Implementation

    Lecture 78 Implementing the Exponential Function using Recursion

    Lecture 79 Simple Recursive Fibonacci.

    Lecture 80 Counting number of calls in Simple Recursive Fibonacci

    Lecture 81 Assignment Expressions and Efficient Fibonacci

    Lecture 82 Comparing the Run-Time of Fibonacci Implementations

    Section 11: Searching and Sorting Algorithms

    Lecture 83 Linear Search Boolean

    Lecture 84 Linear Search Return Index

    Lecture 85 Searching a Sorted List - Birds-eye View of Binary Search

    Lecture 86 Searching a Sorted List - Implementing Binary Search

    Lecture 87 Worst-Case Run-time Complexity Linear vs Binary Search

    Lecture 88 MaxSort

    Lecture 89 BubbleSort

    Lecture 90 QuickSort

    Section 12: Data Structures beyond Lists

    Lecture 91 Introducing Dictionaries

    Lecture 92 Safely accessing Dictionaries using the get Method

    Lecture 93 Real-World Example using Nested Data Structures and the get Method

    Lecture 94 Dictionary Methods

    Lecture 95 Introducing Tuples

    Lecture 96 More on Tuples

    Lecture 97 Tuple Methods index and count

    Lecture 98 Introducing Sets

    Lecture 99 Set Methods

    Section 13: Object-Oriented Programming

    Lecture 100 Classes, Instance Attributes, Class Attributes and Methods

    Lecture 101 Encapsulation

    Lecture 102 Inheritance

    Lecture 103 Polymorphism

    Lecture 104 Constructors and Destructors

    Lecture 105 The hasattr Function

    Lecture 106 The __str__ and __repr__ Methods

    Lecture 107 Class Methods vs Static Methods vs Instance Methods

    Lecture 108 Complex Numbers and Class, Static and Instance Methods

    Lecture 109 Custom Equality and Comparison Operators for Classes in Python

    Lecture 110 Dunder (Magic) Methods

    Lecture 111 CODING EXERCISE: Fraction Class and Magic Methods

    Lecture 112 CODING SOLUTION Part 1 - Fractional Addition and Subtraction

    Lecture 113 CODING SOLUTION Part 2 - Subtraction Alternative, __str__, __repr__

    Section 14: Unit Testing with pytest

    Lecture 114 Introduction to Unit Testing with pytest

    Lecture 115 Creating our First Tests using pytest

    Lecture 116 Using pytest.mark.parametrize for Efficient Test Cases

    Lecture 117 SOLUTION to pytest.mark.parametrize Exercise

    Lecture 118 Folder Structure

    Section 15: File-handling and Modules

    Lecture 119 Getting Started - Reading Text Files

    Lecture 120 The Methods read, readline, readlines

    Lecture 121 CODING EXERCISE - Remove Comments

    Lecture 122 CODING SOLUTION - Remove Comments

    Lecture 123 Writing to Text Files

    Lecture 124 Writing to files using F-Strings

    Lecture 125 Writing to files using Print

    Lecture 126 Leveraging the `with` Statement for Safe and Efficient Code

    Lecture 127 File Access Mode

    Lecture 128 File Exceptions

    Lecture 129 File Methods

    Lecture 130 Importing Modules and Custom Modules

    Lecture 131 Importing Modules and Custom Modules continued

    Section 16: NumPy

    Lecture 132 Numpy Arrays, Shape and Reshape

    Lecture 133 Numpy Arrays of Zeros, Ones and the Identity Matrix

    Lecture 134 Empty and Random

    Lecture 135 Indexing and Slicing in Numpy

    Lecture 136 Arithmetic and Numpy

    Lecture 137 Rough Idea of Linear Algebra and its Applications

    Lecture 138 (ADVANCED) Concepts from Linear Algebra in Numpy

    Lecture 139 Solving Linear Systems

    Lecture 140 Logic: Element-wise Comparison

    Lecture 141 Logic: Comparison with Scalars

    Lecture 142 Logic: Filtering and Where

    Section 17: Pandas

    Lecture 143 Getting Started with Pandas: Titanic Dataset Analysis

    Lecture 144 Filtering

    Lecture 145 Filtering and the isin operator

    Lecture 146 Filter rows using notna

    Lecture 147 Examples of Filters and Logic

    Lecture 148 Solutions to the Filtering Exercises from the Previous Lecture

    Lecture 149 Filtering Columns

    Lecture 150 Applying concat to Two Series

    Section 18: Matplotlib, Graphing and Statistics

    Lecture 151 Simple Bar Plot

    Lecture 152 Bar Plot- Calories per Day

    Lecture 153 Box Plot

    Lecture 154 Real-World Scenario: Customer Satisfaction Analysis - Box Plot

    Lecture 155 A Simple Scatter Plot

    Lecture 156 Scatter Plot - Example - Average Daily Temperatures and Ice Cream Sales

    Lecture 157 Comparing Groups with Scatter Plots

    Lecture 158 Graphing a Function with Scatter Plot

    Lecture 159 Graphing Lines

    Lecture 160 Text Annotations

    Lecture 161 Linear Regression

    Lecture 162 Histograms

    Lecture 163 Subplots

    Lecture 164 Multiple Subplots with Different Colors and Titles

    Lecture 165 Enchancing Titles using Latex

    Lecture 166 Image Subplots

    Lecture 167 Pie Chart

    Lecture 168 Stack Plot

    Lecture 169 Bar Chart

    Lecture 170 3D Plot using a Mesh Grid

    Section 19: Matplotlib and Image Processing

    Lecture 171 Loading an RGB Image

    Lecture 172 Extracting RGB Channels

    Lecture 173 Converting an RGB Image to Gray-Scale

    Lecture 174 Exploring Color Maps

    Lecture 175 Creating n by n RGB images

    Lecture 176 Image Manipulation - Thresholding

    Lecture 177 Image Manipulation - Compression

    Lecture 178 Image Manipulation - Squeeze Image

    Lecture 179 Image Manipulation - Inverting Images

    Lecture 180 Image Manipulation - Image Tiling

    Section 20: Pytorch Fundamentals

    Lecture 181 Google Colab and tqdm

    Lecture 182 Getting Help

    Lecture 183 Getting More Help

    Lecture 184 Introducing Pytorch and Tensors 1

    Lecture 185 Introducing Pytorch and Tensors 2

    Lecture 186 Using the GPU

    Lecture 187 Operators and More Operations

    Lecture 188 Indexing and Masking

    Lecture 189 Masking Continued

    Lecture 190 Cloning Tensors

    Lecture 191 Broadcasting - First Steps

    Lecture 192 Broadcasting Continued

    Lecture 193 More Broadcasting Examples

    Python Beginners: Ideal for those new to programming who want to start their Python journey with a focus on data science.,Data Analysis Newcomers: Perfect for individuals with little to no experience in data analysis who want to build a strong foundation in Python.,Aspiring Data Scientists: Designed for those looking to transition into data science, equipping you with essential skills and knowledge.,Professionals Enhancing Their Skills: Suitable for professionals across various industries aiming to leverage Python for data-driven decision-making.,Students and Academics: Valuable for students and researchers who need to analyze data for academic projects, research, or studies.