Learn Python Coding
38.7K subscribers
1.06K photos
37 videos
24 files
855 links
Learn Python through simple, practical examples and real coding ideas. Clear explanations, useful snippets, and hands-on learning for anyone starting or improving their programming skills.

Admin: @HusseinSheikho || @Hussein_Sheikho
Download Telegram
🐍 10 Free Courses to Learn Python

πŸ‘©πŸ»β€πŸ’» These top-notch resources can take your #Python skills several levels higher. The best part is that they are all completely free!


1⃣ Comprehensive Python Course for Beginners

πŸ“ƒA complete video course that teaches Python from basic to advanced with clear and organized explanations.


2⃣ Intensive Python Training

πŸ“ƒA 4-hour intensive course, fast, focused, and to the point.


3⃣ Comprehensive Python Course

πŸ“ƒTraining with lots of real examples and exercises.


4⃣ Introduction to Python

πŸ“ƒLearn the fundamentals with a focus on logic, clean coding, and solving real problems.


5⃣ Automate Daily Tasks with Python

πŸ“ƒLearn how to automate your daily project tasks with Python.


6⃣ Learn Python with Interactive Practice

πŸ“ƒInteractive lessons with real data and practical exercises.


7⃣ Scientific Computing with Python

πŸ“ƒProject-based, for those who want to work with data and scientific analysis.


8⃣ Step-by-Step Python Training

πŸ“ƒStep-by-step and short training for beginners with interactive exercises.


9⃣ Google's Python Class

πŸ“ƒA course by Google engineers with real exercises and professional tips.


1⃣ Introduction to Programming with Python

πŸ“ƒUniversity-level content for conceptual learning and problem-solving with exercises and projects.

🌐 #DataScience #DataScience

βœ… https://t.me/CodeProgrammer βœ…
Please open Telegram to view this post
VIEW IN TELEGRAM
❀3
✨ Topic: Advanced Python Tutorials ✨

πŸ“– Explore advanced Python tutorials to master the Python programming language. Dive deeper into Python and enhance your coding skills. These tutorials will equip you with the advanced skills necessary for professional Python development.

🏷️ #96_resources
✨ Topic: Intermediate Python Tutorials ✨

πŸ“– Dig into our intermediate-level tutorials teaching new Python concepts. Expand your Python knowledge after covering the basics. These tutorials will prepare you for more complex Python projects and challenges.

🏷️ #696_resources
❀1
✨ Using Python Optional Arguments When Defining Functions ✨

πŸ“– Use Python optional arguments to handle variable inputs. Learn to build flexible function and avoid common errors when setting defaults.

🏷️ #basics #python
Django Tip:

Before deployment, run python manage.py check --deploy to catch critical configuration errors, such as missing ALLOWED_HOSTS. This command helps ensure the app is securely configured for production.

In our example, the system checked the project and found several issues:

πŸ”Έ(security.W004) SECURE_HSTS_SECONDS is not set.
If your site runs only over HTTPS, you should enable HSTS so browsers always use a secure connection. But configure this carefully, as incorrect use can cause serious problems.

πŸ”Έ(security.W008) SECURE_SSL_REDIRECT is not set to True.
If all traffic should go through HTTPS, set SECURE_SSL_REDIRECT = True or configure a redirect via a load balancer/proxy.

πŸ”Έ(security.W009) SECRET_KEY is shorter than 50 characters, contains fewer than 5 unique characters, or starts with 'django-insecure-'.
This means the key was generated by Django by default. Create a new random long key, otherwise some built-in security mechanisms can be bypassed.

πŸ”Έ(security.W012) SESSION_COOKIE_SECURE is not set to True.
Without this setting, session cookies can be intercepted over regular HTTP traffic.

πŸ”Έ(security.W016) 'django.middleware.csrf.CsrfViewMiddleware' is in MIDDLEWARE, but CSRF_COOKIE_SECURE is not enabled.
Set CSRF_COOKIE_SECURE = True to protect the CSRF token from leaks over unencrypted connections.

πŸ”Έ(security.W018) DEBUG must not be True in production.
Turn off debugging before deployment.

πŸ”Έ(security.W020) ALLOWED_HOSTS must not be empty.
Add domains to the list from which the app is allowed to be accessed.


πŸ‘‰  @DataScience4
Please open Telegram to view this post
VIEW IN TELEGRAM
❀1
✨ self-attention | AI Coding Glossary ✨

πŸ“– A mechanism that compares each token to all others and mixes their information using similarity-based weights.

🏷️ #Python
Forwarded from Machine Learning
In Python, building AI-powered Telegram bots unlocks massive potential for image generation, processing, and automationβ€”master this to create viral tools and ace full-stack interviews! πŸ€–

# Basic Bot Setup - The foundation (PTB v20+ Async)
from telegram.ext import Application, CommandHandler, MessageHandler, filters

async def start(update, context):
await update.message.reply_text(
"✨ AI Image Bot Active!\n"
"/generate - Create images from text\n"
"/enhance - Improve photo quality\n"
"/help - Full command list"
)

app = Application.builder().token("YOUR_BOT_TOKEN").build()
app.add_handler(CommandHandler("start", start))
app.run_polling()


# Image Generation - DALL-E Integration (OpenAI)
import openai
from telegram.ext import ContextTypes

openai.api_key = os.getenv("OPENAI_API_KEY")

async def generate(update: Update, context: ContextTypes.DEFAULT_TYPE):
if not context.args:
await update.message.reply_text("❌ Usage: /generate cute robot astronaut")
return

prompt = " ".join(context.args)
try:
response = openai.Image.create(
prompt=prompt,
n=1,
size="1024x1024"
)
await update.message.reply_photo(
photo=response['data'][0]['url'],
caption=f"🎨 Generated: *{prompt}*",
parse_mode="Markdown"
)
except Exception as e:
await update.message.reply_text(f"πŸ”₯ Error: {str(e)}")

app.add_handler(CommandHandler("generate", generate))


Learn more: https://hackmd.io/@husseinsheikho/building-AI-powered-Telegram-bots

#Python #TelegramBot #AI #ImageGeneration #StableDiffusion #OpenAI #MachineLearning #CodingInterview #FullStack #Chatbots #DeepLearning #ComputerVision #Programming #TechJobs #DeveloperTips #CareerGrowth #CloudComputing #Docker #APIs #Python3 #Productivity #TechTips


https://t.me/DataScienceM 🦾
Please open Telegram to view this post
VIEW IN TELEGRAM
❀1
✨ fine-tuning | AI Coding Glossary ✨

πŸ“– The process of adapting a pre-trained model to a new task or domain.

🏷️ #Python
✨ Cohort-Based Live Python Courses ✨

πŸ“– Learn Python live with Real Python's expert instructors. Join a small, interactive cohort to master Python fundamentals, deepen your skills, and build real projects with hands-on guidance and community support.

🏷️ #Python
πŸ’‘ Python: Converting Numbers to Human-Readable Words

Transforming numerical values into their word equivalents is crucial for various applications like financial reports, check writing, educational software, or enhancing accessibility. While complex to implement from scratch for all cases, Python's num2words library provides a robust and easy solution. Install it with pip install num2words.

from num2words import num2words

# Example 1: Basic integer
number1 = 123
words1 = num2words(number1)
print(f"'{number1}' in words: {words1}")

# Example 2: Larger integer
number2 = 543210
words2 = num2words(number2, lang='en') # Explicitly set language
print(f"'{number2}' in words: {words2}")

# Example 3: Decimal number
number3 = 100.75
words3 = num2words(number3)
print(f"'{number3}' in words: {words3}")

# Example 4: Negative number
number4 = -45
words4 = num2words(number4)
print(f"'{number4}' in words: {words4}")

# Example 5: Number for an ordinal form
number5 = 3
words5 = num2words(number5, to='ordinal')
print(f"Ordinal '{number5}' in words: {words5}")


Code explanation: This script uses the num2words library to convert various integers, decimals, and negative numbers into their English word representations. It also demonstrates how to generate ordinal forms (third instead of three) and explicitly set the output language.

#Python #TextProcessing #NumberToWords #num2words #DataManipulation

━━━━━━━━━━━━━━━
By: @DataScience4 ✨
πŸ’‘ Python Lists Cheatsheet: Essential Operations

This lesson provides a quick reference for common Python list operations. Lists are ordered, mutable collections of items, and mastering their use is fundamental for Python programming. This cheatsheet covers creation, access, modification, and utility methods.

# 1. List Creation
my_list = [1, "hello", 3.14, True]
empty_list = []
numbers = list(range(5)) # [0, 1, 2, 3, 4]

# 2. Accessing Elements (Indexing & Slicing)
first_element = my_list[0] # 1
last_element = my_list[-1] # True
sub_list = my_list[1:3] # ["hello", 3.14]
copy_all = my_list[:] # [1, "hello", 3.14, True]

# 3. Modifying Elements
my_list[1] = "world" # my_list is now [1, "world", 3.14, True]

# 4. Adding Elements
my_list.append(False) # [1, "world", 3.14, True, False]
my_list.insert(1, "new item") # [1, "new item", "world", 3.14, True, False]
another_list = [5, 6]
my_list.extend(another_list) # [1, "new item", "world", 3.14, True, False, 5, 6]

# 5. Removing Elements
removed_value = my_list.pop() # Removes and returns last item (6)
removed_at_index = my_list.pop(1) # Removes and returns "new item"
my_list.remove("world") # Removes the first occurrence of "world"
del my_list[0] # Deletes item at index 0 (1)
my_list.clear() # Removes all items, list becomes []

# Re-create for other examples
numbers = [3, 1, 4, 1, 5, 9, 2]

# 6. List Information
list_length = len(numbers) # 7
count_ones = numbers.count(1) # 2
index_of_five = numbers.index(5) # 4 (first occurrence)
is_present = 9 in numbers # True
is_not_present = 10 not in numbers # True

# 7. Sorting
numbers_sorted_asc = sorted(numbers) # Returns new list: [1, 1, 2, 3, 4, 5, 9]
numbers.sort(reverse=True) # Sorts in-place: [9, 5, 4, 3, 2, 1, 1]

# 8. Reversing
numbers.reverse() # Reverses in-place: [1, 1, 2, 3, 4, 5, 9]

# 9. Iteration
for item in numbers:
# print(item)
pass # Placeholder for loop body

# 10. List Comprehensions (Concise creation/transformation)
squares = [x**2 for x in range(5)] # [0, 1, 4, 9, 16]
even_numbers = [x for x in numbers if x % 2 == 0] # [2, 4]


Code explanation: This script demonstrates fundamental list operations in Python. It covers creating lists, accessing elements using indexing and slicing, modifying existing elements, adding new items with append(), insert(), and extend(), and removing items using pop(), remove(), del, and clear(). It also shows how to get list information like length (len()), item counts (count()), and indices (index()), check for item existence (in), sort (sort(), sorted()), reverse (reverse()), and iterate through lists. Finally, it illustrates list comprehensions for concise list generation and filtering.

#Python #Lists #DataStructures #Programming #Cheatsheet

━━━━━━━━━━━━━━━
By: @DataScience4 ✨
Please open Telegram to view this post
VIEW IN TELEGRAM
❀2
✨ activation function | AI Coding Glossary ✨

πŸ“– A nonlinear mapping applied to neuron inputs that enables neural networks to learn complex relationships.

🏷️ #Python
πŸ”₯1
✨ recurrent neural network (RNN) | AI Coding Glossary ✨

πŸ“– A neural network that processes sequences by applying the same computation at each step.

🏷️ #Python
πŸ”₯1
This channels is for Programmers, Coders, Software Engineers.

0️⃣ Python
1️⃣ Data Science
2️⃣ Machine Learning
3️⃣ Data Visualization
4️⃣ Artificial Intelligence
5️⃣ Data Analysis
6️⃣ Statistics
7️⃣ Deep Learning
8️⃣ programming Languages

βœ… https://t.me/addlist/8_rRW2scgfRhOTc0

βœ… https://t.me/Codeprogrammer
Please open Telegram to view this post
VIEW IN TELEGRAM
✨ prompt injection | AI Coding Glossary ✨

πŸ“– An attack where adversarial text is crafted to steer a model or model-integrated app into ignoring its original instructions and performing unintended actions.

🏷️ #Python
✨ retrieval-augmented generation (RAG) | AI Coding Glossary ✨

πŸ“– A technique that improves a model’s outputs by retrieving relevant external documents at query time and feeding them into the model.

🏷️ #Python
✨ Logging in Python ✨

πŸ“– If you use Python's print() function to get information about the flow of your programs, logging is the natural next step. Create your first logs and curate them to grow with your projects.

🏷️ #intermediate #best-practices #tools
Forwarded from Kaggle Data Hub
Is Your Crypto Transfer Secure?

Score Your Transfer analyzes wallet activity, flags risky transactions in real time, and generates downloadable compliance reportsβ€”no technical skills needed. Protect funds & stay compliant.



Sponsored By WaybienAds
πŸ’‘ Python Tips Part 1

A collection of essential Python tricks to make your code more efficient, readable, and "Pythonic." This part covers list comprehensions, f-strings, tuple unpacking, and using enumerate.

# Create a list of squares from 0 to 9
squares = [x**2 for x in range(10)]

print(squares)
# Output: [0, 1, 4, 9, 16, 25, 36, 49, 64, 81]

β€’ List Comprehensions: A concise and often faster way to create lists. The syntax is [expression for item in iterable].

name = "Alex"
score = 95.5

# Using an f-string for easy formatting
message = f"Congratulations {name}, you scored {score:.1f}!"

print(message)
# Output: Congratulations Alex, you scored 95.5!

β€’ F-Strings: The modern, readable way to format strings. Simply prefix the string with f and place variables or expressions directly inside curly braces {}.

numbers = (1, 2, 3, 4, 5)

# Unpack the first, last, and middle elements
first, *middle, last = numbers

print(f"First: {first}") # 1
print(f"Middle: {middle}") # [2, 3, 4]
print(f"Last: {last}") # 5

β€’ Extended Unpacking: Use the asterisk * operator to capture multiple items from an iterable into a list during assignment. It's perfect for separating the "head" and "tail" from the rest.

items = ['keyboard', 'mouse', 'monitor']

for index, item in enumerate(items):
print(f"Item #{index}: {item}")

# Output:
# Item #0: keyboard
# Item #1: mouse
# Item #2: monitor

β€’ Using enumerate: The Pythonic way to get both the index and the value of an item when looping. It's much cleaner than using range(len(items)).

#Python #Programming #CodeTips #PythonTricks

━━━━━━━━━━━━━━━
By: @DataScience4 ✨
❀3
πŸ’‘ Python Tips Part 2

More essential Python tricks to improve your code. This part covers dictionary comprehensions, the zip function, ternary operators, and using underscores for unused variables.

# Create a dictionary of numbers and their squares
squared_dict = {x: x**2 for x in range(1, 6)}

print(squared_dict)
# Output: {1: 1, 2: 4, 3: 9, 4: 16, 5: 25}

β€’ Dictionary Comprehensions: A concise way to create dictionaries, similar to list comprehensions. The syntax is {key_expr: value_expr for item in iterable}.

students = ["Alice", "Bob", "Charlie"]
scores = [88, 92, 79]

for student, score in zip(students, scores):
print(f"{student}: {score}")

# Output:
# Alice: 88
# Bob: 92
# Charlie: 79

β€’ Using zip: The zip function combines multiple iterables (like lists or tuples) into a single iterator of tuples. It's perfect for looping over related lists in parallel.

age = 20

# Assign a value based on a condition in one line
status = "Adult" if age >= 18 else "Minor"

print(status)
# Output: Adult

β€’ Ternary Operator: A shorthand for a simple if-else statement, useful for conditional assignments. The syntax is value_if_true if condition else value_if_false.

# Looping 3 times without needing the loop variable
for _ in range(3):
print("Hello, Python!")

# Unpacking, but only needing the last value
_, _, last_item = (10, 20, 30)
print(last_item) # 30

β€’ Using Underscore _: By convention, the underscore _ is used as a variable name when you need a placeholder but don't intend to use its value. This signals to other developers that the variable is intentionally ignored.

#Python #Programming #CodeTips #PythonTricks

━━━━━━━━━━━━━━━
By: @DataScience4 ✨
❀1