es
Feedback
Python Learning

Python Learning

Ir al canal en Telegram

Python learning resources Beginner to advanced Python guides, cheatsheets, books and projects. For data science, backend and automation. Join 👉 https://rebrand.ly/bigdatachannels DMCA: @disclosure_bds Contact: @mldatascientist

Mostrar más
5 849
Suscriptores
Sin datos24 horas
+57 días
Sin datos30 días
Archivo de publicaciones
Python vs R for Data Analysis: When to use which
Python vs R for Data Analysis: When to use which

Put your answers in the comment below!🔽
Put your answers in the comment below!🔽

Image Caption Generator Multimodal AI: CNN-RNN combo generates descriptive captions for images (e.g., "dog chasing ball"). Showcases encoder-decoder architectures. 🔗 Repo Link: https://github.com/yunjey/show-attend-and-tell #PythonProjects  #ImageCaptionGenerators

Python For Data Science Cheatsheet: Part 2
Python For Data Science Cheatsheet: Part 2

Python For Data Science Cheatsheet: Part 1
Python For Data Science Cheatsheet: Part 1

Python Roadmap For AI/ML
Python Roadmap For AI/ML

Put your answers in the comment below
Put your answers in the comment below

Decorators in Python
Decorators in Python

Concise reference compiled from Stack Overflow Q&A covering syntax, OOP, modules, error handling, and advanced topics like decorators.

Put your answers in the comment below🔽
Put your answers in the comment below🔽

Important Python Function and their Purpose
Important Python Function and their Purpose

What is Walrus Operator (:=) in Python?
What is Walrus Operator (:=) in Python?

FREE Courses On Python Asyncio Advanced asyncio: Solving Real-World Production Problems 🆓 Free Video Course ⏰ Duration: 41 Min 🏃‍♂️ Self paced 📊 Difficulty: Advanced 👨‍🏫 Created by: PyVideo 🔗 Course Link Async IO Basics 🆓 Free Online Course ⏰ Duration: ~22 minutes 🏃‍♂️ Self paced 📊 Difficulty: Beginner 👨‍🏫 Created by: Very Academy 🔗 Course Link Asyncio in Python - Full Tutorial 🆓 Free Video Course ⏰ Duration: 25 Min 🏃‍♂️ Self paced 📊 Difficulty: Beginner 👨‍🏫 Created by: Tech with Tim 🔗 Course Link Asyncio Basics - Asynchronous programming with coroutines 🆓 Step-by-step text + video ⏰ Duration: 25 Min 🏃‍♂️ Self paced 📊 Difficulty: Beginner - Intermediate 👨‍🏫Created by: Python Programming Tutorials 🔗 Course Link Reading Materials 📖 Python's Ayncio 📖 Asyncio Tutorial for Beginners 📖 Python Asyncio: The Complete Guide 📖 Official Asyncio Docs 📖 Asyncio Learning Path #python  #asyncio ➖➖➖➖➖➖➖➖➖➖ 👉Join @bigdataspecialist for more👈

Put your answers in the comment below🔽
Put your answers in the comment below🔽

Python Data Structures: Quick Visual Guide 🐍 🔹 Lists: Ordered, mutable, created with [ ] → Access/modify via index: myList[
Python Data Structures: Quick Visual Guide 🐍 🔹 Lists: Ordered, mutable, created with [ ] → Access/modify via index: myList[0], myList[-1] → Methods: .append(), .sort(), .pop() → Mixed types allowed → Loop: for item in myList: 🔹 Tuples: Immutable, ordered → (1, 2, 3) 🔹 Sets: Unordered, unique elements 🔹 Dictionaries: Key-value pairs, fast lookups 🔹 Arrays: Mainly for numeric data (array/NumPy) 🔑 Key Points: ✅ Indexing: 0 to len-1 (forward), -1 backward ✅ Assignment myList[i] = x modifies in place ✅ Lists are the most versatile & commonly used This is the perfect cheat sheet for beginners and for quick revision!

any() and all() function in Python
any() and all() function in Python

🔥 Python vs SQL: Who Cleans Data Better? 🧹
🔥 Python vs SQL: Who Cleans Data Better? 🧹

Decorators Are Not Magic. They’re Callbacks in Disguise You’ve used @lru_cache to speed up a slow function, and it worked... until your app started eating RAM because the cache never forgot anything. from functools import lru_cache @lru_cache def fib(n): return fib(n-1) + fib(n-2) # ← Cache grows forever! 👉Here’s what’s really happening: A decorator is just a function that wraps another function. When you write @lru_cache, Python replaces your fib with a new version that remembers every answer it’s ever given. Cool😄 until n goes from 1 to 100,000. ✅ Fix it like a pro: from functools import lru_cache @lru_cache(maxsize=128) # Only keep last 128 results def fib(n): if n > 1000: return manual_calc(n) # Skip cache for huge inputs return fib(n-1) + fib(n-2) Now the cache stays small, predictable, and safe. 📌Bonus: Write your own @timerdecorator in 5 lines. no more time.time() spam.

What's your Python Career goal?
Anonymous voting

👨‍🏫 The Zero to Mastery Python Cheat Sheet is a clean, colorful cheatsheet packed with practical code snippets for everyday tasks like loops, functions, and list comprehension. 🤩 It’s visually organized with clear sections and real examples, which makes it a favorite for beginners and intermediates who want to code faster and smarter.