Learn Python Coding
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
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Channel Learn Python Coding (@pythonre) in the English language segment is an active participant. Currently, the community unites 39 165 subscribers, ranking 3 501 in the Technologies & Applications category and 10 515 in the India region.
π Audience metrics and dynamics
Since its creation on Π½Π΅Π²ΡΠ΄ΠΎΠΌΠΎ, the project has demonstrated rapid growth, gathering an audience of 39 165 subscribers.
According to the latest data from 09 June, 2026, the channel demonstrates stable activity. Although there has been a change in the number of participants by 443 over the last 30 days and by 15 over the last 24 hours, overall reach remains high.
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- Engagement rate (ER): The average audience engagement rate is 2.52%. Within the first 24 hours after publication, content typically collects 0.96% reactions from the total number of subscribers.
- Post reach: On average, each post receives 988 views. Within the first day, a publication typically gains 374 views.
- Reactions and interaction: The audience actively supports content: the average number of reactions per post is 4.
- Thematic interests: Content is focused on key topics such as math, harvard, oxford, supervision, waybienad.
π Description and content policy
The author describes the resource as a platform for expressing subjective opinions:
βLearn 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_Sheikhoβ
Thanks to the high frequency of updates (latest data received on 10 June, 2026), the channel maintains relevance and a high level of publication reach. Analytics show that the audience actively interacts with content, making it an important point of influence in the Technologies & Applications category.
enumerate, and flexible function arguments.
# Create a list of squares for even numbers from 0 to 9
squares = [x**2 for x in range(10) if x % 2 == 0]
print(squares)
# Output:
# [0, 4, 16, 36, 64]
β’ List Comprehension: A concise, one-line syntax for creating lists.
β’ The structure is [expression for item in iterable if condition].
β’ The if condition part is optional and acts as a filter.
student_scores = {'Alice': 95, 'Bob': 87}
# Safely get a score, providing a default value if the key is missing
charlie_score = student_scores.get('Charlie', 'Not Found')
alice_score = student_scores.get('Alice', 'Not Found')
print(f"Alice: {alice_score}")
print(f"Charlie: {charlie_score}")
# Output:
# Alice: 95
# Charlie: Not Found
β’ Dictionary .get() Method: Safely access a dictionary key without causing a KeyError.
β’ The first argument is the key to look up.
β’ The optional second argument is the default value to return if the key does not exist.
colors = ['red', 'green', 'blue']
for index, value in enumerate(colors):
print(f"Index: {index}, Value: {value}")
# Output:
# Index: 0, Value: red
# Index: 1, Value: green
# Index: 2, Value: blue
β’ Using enumerate: The Pythonic way to loop over an iterable when you need both the index and the value.
β’ It returns a tuple (index, value) for each item in the sequence.
def process_data(*args, **kwargs):
print(f"Positional args (tuple): {args}")
print(f"Keyword args (dict): {kwargs}")
process_data(1, 'hello', 3.14, user='admin', status='active')
# Output:
# Positional args (tuple): (1, 'hello', 3.14)
# Keyword args (dict): {'user': 'admin', 'status': 'active'}
β’ *args: Collects all extra positional arguments into a tuple.
β’ **kwargs: Collects all extra keyword arguments into a dictionary.
β’ This pattern allows a function to accept a variable number of arguments.
#Python #PythonExam #Programming #CodeCheatsheet #LearnPython
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By: @DataScience4 β¨pip install paramiko), specify the connection details, and use an SFTP session to send the file.
Make sure the user has write permissions to the target directory on the server. Subscribe for more tips every day!
import paramiko
Connection settings
hostname = "your-server.com"
port = 22
username = "your_username"
password = "your_password" # or use a key instead of a password
Local and remote paths
local_file = "local_file.txt"
remote_file = "/remote/path/local_file.txt"
Create SSH client
ssh = paramiko.SSHClient()
ssh.set_missing_host_key_policy(paramiko.AutoAddPolicy())
try:
ssh.connect(hostname, port=port, username=username, password=password)
# Open SFTP session and upload the file
sftp = ssh.open_sftp()
sftp.put(local_file, remote_file)
sftp.close()
print("File uploaded successfully!")
except Exception as e:
print(f"Error: {e}")
finally:
()True & False: A Mini-Guide
This guide covers Python's boolean values, True and False. We'll explore how they result from comparisons, are used with logical operators, and how other data types can be evaluated as "truthy" or "falsy".
x = 10
y = 5
print(x > y)
print(x == 10)
print(y != 5)
# Output:
# True
# True
# False
β’ Comparison Operators: Operators like >, ==, and != evaluate expressions and always return a boolean value: True or False.
is_sunny = True
is_warm = False
print(is_sunny and is_warm)
print(is_sunny or is_warm)
print(not is_warm)
# Output:
# False
# True
# True
β’ Logical and: Returns True only if both operands are true.
β’ Logical or: Returns True if at least one operand is true.
β’ Logical not: Inverts the boolean value (True becomes False, and vice-versa).
# "Falsy" values evaluate to False
print(bool(0))
print(bool(""))
print(bool([]))
print(bool(None))
# "Truthy" values evaluate to True
print(bool(42))
print(bool("hello"))
# Output:
# False
# False
# False
# False
# True
# True
β’ Truthiness: In a boolean context (like an if statement), many values are considered True ("truthy").
β’ Falsiness: Only a few specific values are False ("falsy"): 0, None, and any empty collection (e.g., "", [], {}).
# Booleans can be treated as integers
sum_result = True + True + False
print(sum_result)
product = True * 15
print(product)
# Output:
# 2
# 15
β’ Internally, True is equivalent to the integer 1 and False is equivalent to 0.
β’ This allows you to use them in mathematical calculations, a common feature in coding challenges.
#Python #Boolean #Programming #TrueFalse #CodingTips
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By: @DataScience4 β¨collections module like Counter and defaultdict.
x = 10
# Check if x is between 5 and 15 in a clean way
if 5 < x < 15:
print("x is in range.")
# Output: x is in range.
β’ Chaining Comparisons: Python allows you to chain comparison operators for more readable and concise range checks. This is equivalent to (5 < x) and (x < 15).
numbers = [1, 2, 2, 3, 4, 4, 4, 5]
# Use a set to quickly get unique elements
unique_numbers = list(set(numbers))
print(unique_numbers)
# Output: [1, 2, 3, 4, 5]
β’ Sets for Uniqueness: Sets are unordered collections of unique elements. Converting a list to a set and back is the fastest and most Pythonic way to remove duplicates.
from collections import Counter
words = ['apple', 'banana', 'apple', 'orange', 'banana', 'apple']
word_counts = Counter(words)
print(word_counts)
# Output: Counter({'apple': 3, 'banana': 2, 'orange': 1})
print(word_counts.most_common(1))
# Output: [('apple', 3)]
β’ collections.Counter: A specialized dictionary subclass for counting hashable objects. It simplifies frequency counting tasks and provides useful methods like .most_common().
from collections import defaultdict
data = [('fruit', 'apple'), ('fruit', 'banana'), ('veg', 'carrot')]
grouped_data = defaultdict(list)
for category, item in data:
grouped_data[category].append(item)
print(grouped_data)
# Output: defaultdict(<class 'list'>, {'fruit': ['apple', 'banana'], 'veg': ['carrot']})
β’ collections.defaultdict: A dictionary that provides a default value for a non-existent key, avoiding KeyError. It's perfect for grouping items into lists or dictionaries without extra checks.
#Python #Programming #CodeTips #DataStructures
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By: @DataScience4 β¨.get(), flexible function arguments with *args and **kwargs, and context managers using the with statement.
user_data = {"name": "Alice", "age": 30}
# Safely get a key that exists
name = user_data.get("name")
# Safely get a key that doesn't exist by providing a default
city = user_data.get("city", "Not Specified")
print(f"Name: {name}, City: {city}")
# Output: Name: Alice, City: Not Specified
β’ Dictionary .get() Method: Access dictionary keys safely. .get(key, default) returns the value for a key if it exists, otherwise it returns the default value (which is None if not specified) without raising a KeyError.
def dynamic_function(*args, **kwargs):
print("Positional args (tuple):", args)
print("Keyword args (dict):", kwargs)
dynamic_function(1, 'go', True, user="admin", status="active")
# Output:
# Positional args (tuple): (1, 'go', True)
# Keyword args (dict): {'user': 'admin', 'status': 'active'}
β’ *args and **kwargs: Use these in function definitions to accept a variable number of arguments. *args collects positional arguments into a tuple, and **kwargs collects keyword arguments into a dictionary.
# The 'with' statement ensures the file is closed automatically
try:
with open("notes.txt", "w") as f:
f.write("Context managers are great!")
# No need to call f.close()
print("File written and closed.")
except Exception as e:
print(f"An error occurred: {e}")
β’ The with Statement: The with statement creates a context manager, which is the standard way to handle resources like files or network connections. It guarantees that cleanup code is executed, even if errors occur inside the block.
#Python #Programming #CodeTips #PythonTricks
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By: @DataScience4 β¨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
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By: @DataScience4 β¨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
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By: @DataScience4 β¨# 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
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By: @DataScience4 β¨
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