Python Learning
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Python learning resources

Beginner to advanced Python guides, cheatsheets, books and projects.

For data science, backend and automation.
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Learn Python (Interactive)

A completely free interactive tutorial site to learn Python basics and beyond at your own pace with in-browser exercises. It's great for beginners wanting hands-on practice without any cost.

🎬 Free Interactive Text Course
⏰ Duration: Self-paced (variable)
πŸƒβ€β™‚οΈ Self Paced
πŸ‘¨β€πŸ« Created by: learnpython.org
πŸ”— Course Link

#Python #Programming #Beginners
βž–βž–βž–βž–βž–βž–βž–βž–βž–βž–βž–βž–βž–βž–
πŸ‘‰ Join @python_bds for more πŸ‘ˆ
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🐍 5 Advanced Python Resources for Mastery

1️⃣ Python Tutor
It lets you visualize your Python code execution step-by-step, helping you truly understand how loops, functions, and variables work behind the scenes.
πŸ”— http://pythontutor.com/

2️⃣ PySnooper
It automatically logs every line of code executed and variable change within any Python function, making debugging significantly faster and more intuitive.
πŸ”— https://github.com/cool-RR/PySnooper

3️⃣ Hypermodern Python Project
It provides a structured guide to setting up professional, maintainable Python projects with best practices for tooling, testing, and architecture.
πŸ”— https://cjolowicz.github.io/posts/hypermodern-python-01-setup/

4️⃣ Python Bytecode Explorer
It translates your Python code into low-level bytecode, allowing you to see the direct instructions the Python interpreter executes for deeper performance insights.
πŸ”— https://www.codewithjason.com/python-bytecode-explorer/

5️⃣ Rich Library
It enables you to create beautiful, feature-rich command-line interfaces with colors, tables, progress bars, and markdown rendering directly in your terminal.
πŸ”— https://rich.readthedocs.io/en/stable/

Save this list! πŸš€
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Python Lists Explained
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🐍 Truthy vs Falsy in Python (Hidden Behavior)

In Python, not everything is just True or False 🀯
Some values behave like True… even when they’re not.


1️⃣ Falsy Values ❌

These are treated as False:

print(bool(0))
print(bool(""))
print(bool([]))


Output: False False False

πŸ‘‰ Empty or zero-like values β†’ False


2️⃣ Truthy Values βœ…

Everything else is considered True:

print(bool(1))
print(bool("Hello"))
print(bool([1, 2]))


Output: True True True

πŸ‘‰ Non-empty values β†’ True


3️⃣ Why This Matters ⚑️

name = ""

if name:
print("Has value")
else:
print("Empty")


Output: Empty

πŸ‘‰ No need to write if name != ""


4️⃣ Common Mistake 🚫

if list == []:   # ❌


πŸ‘‰ Better way:

if not list:     # βœ…



πŸ’‘ Key Idea

Python doesn’t just check True/False
It checks if something is empty or not 🧠
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File Handling in Python
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🐍 Python Decorators 🎁

Have you ever wanted to add extra functionality to a function like logging, timing, or permission checks without actually changing the code inside that function? That is exactly what Decorators do. They allow you to "wrap" another function to extend its behavior.

πŸ‘‰ Decorators are a key part of writing clean, reusable, and "DRY" (Don't Repeat Yourself) Python code.

1. Analogy: The Phone Case
Think of your function as a Smartphone. It has core features like calling and texting. A Decorator is like a Phone Case.
The case doesn't change how the phone's internal circuits work, but it adds new "superpowers" like a kickstand, extra battery life, or water protection.

You can put the same case on different phones!

2. How it Works: Functions are Objects
In Python, functions are "first-class objects." This means you can:
- Assign a function to a variable.
- Pass a function as an argument to another function.
- Return a function from another function.

A decorator is simply a function that takes another function, adds some logic, and returns a new, "wrapped" version of it.

3. The @ Syntax
Instead of writing say_hello = my_decorator(say_hello), Python gives us a beautiful shortcut: the @ symbol. Placing @decorator_name above a function automatically wraps it.


🐍 Practical Code Example: A Simple Timer

Let's create a decorator that measures how long a function takes to run.
import time

# 1. Define the decorator
def timer_decorator(func):
def wrapper(*args, **kwargs): # The 'wrapper' adds the new behavior
start_time = time.time()

result = func(*args, **kwargs) # Execute the original function

end_time = time.time()
print(f"⏱️ {func.__name__} took {end_time - start_time:.4f} seconds.")
return result
return wrapper

# 2. Use the decorator
@timer_decorator
def heavy_computation():
print("Computing...")
time.sleep(1.5) # Simulate a long task
print("Done!")

# 3. Call the function
heavy_computation()


4. Why Use Decorators?

- Code Reusability: Write the logic once (like logging) and apply it to 50 different functions.
- Separation of Concerns: Keep your main logic clean. The "extra" stuff (security, timing) stays in the decorator.
- DRY Principle: Prevents you from copy-pasting the same setup/teardown code into every function.


🎯 Today's Goal (What you should do)

βœ”οΈ Understand that decorators "wrap" functions to add functionality
βœ”οΈ Master the @ syntax for applying decorators
βœ”οΈ Learn how to pass arguments to wrapped functions using *args and *kwargs
βœ”οΈ Identify common use cases: Logging, Timing, and Authentication
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Python-Pandas Operations For Working with Data
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β–ŽCommon Python Terms

1. Variable: A symbolic name that is a reference or pointer to an object. When you create a variable, you allocate some memory for its value.

2. Data Type: A classification that specifies which type of value a variable can hold and what operations can be performed on it (e.g., int, float, str, bool, list, dict).

3. Function: A block of organized, reusable code that is used to perform a single, related action. Functions provide better modularity for your application and a high degree of code reusing.

4. Method: A function that is associated with an object or a class. It operates on the data (attributes) of that object.

5. Class: A blueprint for creating objects. It defines a set of attributes (data) and methods (functions) that characterize any object created from it.

6. Object: An instance of a class. It is a collection of data (attributes) and functions (methods) that operate on that data.

7. Module: A file containing Python definitions and statements. The file name is the module name with the suffix .py appended. Modules allow you to logically organize your Python code.

8. Package: A Python module can be grouped into a package. A package is a directory of Python modules containing an __init__.py file (which can be empty). Packages allow for a hierarchical structuring of the module namespace.

9. Interpreter: The program that reads and executes Python code. Python code is not compiled to machine code directly; it is compiled to bytecode, which is then interpreted.

10. Syntax: The set of rules that defines the combinations of symbols that are considered to be correctly structured programs in a particular language.

11. Indentation: Python uses whitespace (spaces or tabs) to define code blocks (e.g., inside loops, functions, or conditional statements) rather than braces like in many other languages.

12. List: An ordered, mutable (changeable) collection of items. Items can be of different data types.

13. Tuple: An ordered, immutable (unchangeable) collection of items. Like lists, tuples can contain items of different data types.

14. Dictionary: An unordered collection of key-value pairs. Keys must be unique and immutable (e.g., strings, numbers, tuples), while values can be of any data type.

15. String: An immutable sequence of characters, used to represent text data.

16. Loop: A control flow statement that allows code to be executed repeatedly. Common loops are for and while.

17. Conditional Statement: Statements that perform different computations or actions depending on whether a programmer-specified boolean condition evaluates to true or false. Common are if, elif, else.

18. Exception Handling: A mechanism to handle runtime errors or unexpected events gracefully, preventing the program from crashing. Uses try, except, finally blocks.

19. Library/Framework: A collection of pre-written code (functions, classes) that developers can use to perform common tasks without writing the code from scratch. Examples: NumPy, Pandas, Django, Flask.

20. IDE (Integrated Development Environment): A software application that provides comprehensive facilities to computer programmers for software development. It typically includes a code editor, debugger, and build automation tools. Examples: VS Code, PyCharm.
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🐍 5 Python Mistakes Beginners Make (And Don’t Realize)

If you’re learning Python…
you’ve probably done these already πŸ‘‡

1️⃣ Using = Instead of == ❌

if x = 5:   # ❌ Error


πŸ‘‰ = is assignment
πŸ‘‰ == is comparison


2️⃣ Not Understanding Mutable Objects πŸ”—

a = [1, 2]
b = a

b.append(3)
print(a)


Output: [1, 2, 3]

πŸ‘‰ Both changed 😳
πŸ‘‰ Because they point to SAME object


3️⃣ Forgetting Indentation ⚠️

if True:
print("Hello") # ❌


πŸ‘‰ Python depends on indentation
πŸ‘‰ One mistake β†’ code breaks


4️⃣ Using is Instead of == 🀯

a = 1000
b = 1000

print(a is b)


πŸ‘‰ Might return False
πŸ‘‰ Because is checks memory, not value


5️⃣ Modifying List While Looping πŸ”₯

nums = [1, 2, 3]

for x in nums:
nums.remove(x)


πŸ‘‰ Leads to unexpected bugs
πŸ‘‰ Loop skips elements


πŸ’‘ Key Idea

Most bugs in Python
come from misunderstanding how it works internally πŸš€
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β–ŽTop 5 Resources for Every Aspiring Python Developer


β–Ž1. Automate the Boring Stuff with Python

β€’ Type: Book/Online Course
β€’ Author: Al Sweigart
β€’ This resource is perfect for beginners who want to learn Python through practical projects. The book covers automation tasks like web scraping, working with spreadsheets, and more. The online course is available for free on platforms like Udemy.

β€’ Link: Automate the Boring Stuff


β–Ž2. Python for Everybody

β€’ Type: Online Course
β€’ Instructor: Dr. Charles Severance
β€’ This course is designed for beginners and covers the basics of programming using Python. It's structured to help learners understand data handling, web scraping, and database management.

β€’ Link: Python for Everybody


β–Ž3. Real Python

β€’ Type: Online Tutorials/Articles
β€’ Real Python offers a wealth of tutorials, articles, and video courses on various Python topics. It caters to all skill levels and includes practical examples and projects to reinforce learning.

β€’ Link: Real Python


β–Ž4. Python Crash Course

β€’ Type: Book
β€’ Author: Eric Matthes
β€’ This hands-on guide is ideal for beginners and intermediate learners. It covers the fundamentals of Python programming and includes projects such as building web applications and data visualizations.

β€’ Link: Python Crash Course


β–Ž5. The Hitchhiker's Guide to Python

β€’ Type: Book/Online Resource
β€’ Authors: Kenneth Reitz and Tanya Schlusser
β€’ This comprehensive guide offers best practices for writing Python code. It covers everything from installation to advanced topics, making it a valuable resource for both new and experienced developers.

β€’ Link: The Hitchhiker's Guide to Python
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🏎 Python Performance: Vectorization vs. Loops in Pandas 🐼

In standard Python, we are taught to use for loops to process data. However, in Data Science, loops are the enemy of speed. If you use a loop to process a million rows in a Pandas DataFrame, your code will be 100x to 1000x slower than it needs to be.

πŸ‘‰ To be a pro Data Analyst, you must stop "looping" and start "vectorizing."


🐒 The Slow Way: Iterating with Loops
Python is an interpreted language, meaning every time a loop runs a calculation on a row, there is massive "overhead." The computer has to check the data type, find the memory address, and perform the math over and over again.

πŸš€ The Fast Way: Vectorization
Pandas (and NumPy) use Vectorization, which performs operations on entire arrays (columns) at once. This pushes the heavy lifting down to highly optimized C and Fortran code under the hood.


πŸ’» The "Speed Race" Code

Let's say we have 1 million rows of prices and we want to apply a 10% tax.

import pandas as pd
import numpy as np
import time

# Create a DataFrame with 1 million rows
df = pd.DataFrame({'price': np.random.randint(1, 100, size=1_000_000)})

# ❌ THE SLOW WAY: Manual Loop (Don't do this!)
start = time.time()
taxes = []
for p in df['price']:
taxes.append(p * 0.1)
df['tax_loop'] = taxes
print(f"Loop time: {time.time() - start:.4f} seconds")

# βœ… THE FAST WAY: Vectorization (The Pandas Way)
start = time.time()
df['tax_vec'] = df['price'] * 0.1
print(f"Vectorized time: {time.time() - start:.4f} seconds")


The result? The loop might take ~0.1 seconds, while the vectorized version takes ~0.001 seconds. On massive datasets, this is the difference between a task taking 10 minutes or 2 seconds.


πŸ›  When can't you vectorize?
If you have extremely complex logic (like an if/else that depends on three different external APIs), you might use .apply(). While .apply() is slightly better than a manual for loop, it is still significantly slower than true vectorization. Always try math-based column operations first.

πŸ‘‰ Write your code for the column, not for the row!
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