Learn Python Coding
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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.

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There's a floating-point number in Python and you need to output it as a percentage - use the % format in the f-string

x = .023
print(f'{x:.2%}')  # 2.30%

x = .02375
print(f'{x:.2%}')  # 2.38% -- rounded off!

x = 1.02375
print(f'{x:.2%}')  # 102.38%


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Python Basics Arrays & Loops 🐍

Essential you need to start strong 💪

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Python: simple things that improve code

If you write like this:

if type(x) == str:
    print("This is a string")

it might work, but it breaks on subclasses of str.

It's better to use isinstance(). It takes into account inheritance and is more consistent with polymorphism.

if isinstance(x, str):
    print("This is a string")

This variant will work for str and its subclasses.

Conclusion: type(x) == str is only suitable for simple cases, but it's fragile. isinstance(x, str) is a more stable and correct option almost always.

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Why can't you use mutable default values in constructors?

If you set a list or dictionary as the default value, the object is created once and then reused by all instances.
class User:
    def __init__(self, tags=[]):
        self.tags = tags

This results in a change in one instance affecting the others:
u1 = User(); u2 = User()
u1.tags.append("x"); print(u2.tags)

default_factory creates a new object each time the constructor is called, eliminating shared state:
field(default_factory=list)

Thus, each instance receives an independent data structure:
User().tags is User().tags

🔥 Using default_factory is an important practice when working with mutable types and prevents hard-to-detect state errors.

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😎 The Algorithms Python — a huge collection of algorithms in Python! 🐍

The repository contains a large number of algorithms and data structures: sorting, graphs, trees, search, dynamic programming, cryptography, and much more. Everything is implemented in pure Python with clear code and a convenient structure. It's perfect for studying algorithms through real examples.

I'll leave a link: GitHub
https://github.com/TheAlgorithms/Python

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Exploring pathlib for Working with Paths!
Many projects still use os.path for path operations: join, dirname, exists, and more. It works, but the code quickly becomes cluttered with string manipulations and harder to read — especially when there are many paths being actively combined.

Since Python 3.4, there's pathlib — an object-oriented API for working with files and directories.

Importing the module is simple:

from pathlib import Path


You can create a path like any regular object:

path = Path("data/users.json")


When working with Path and the / operator, the correct separators for the current OS are used automatically. This keeps the code portable between Linux, macOS, and Windows without extra checks.

If you need an absolute path, use resolve():

print(path.resolve())


Very often when working with files, you need to check if a path exists:

if path.exists():
    print("File found")


Pathlib also lets you quickly determine the type of file system object:

path.is_file()
path.is_dir()


The Path object has convenient properties for getting path parts. This eliminates manual string parsing and working with split().

print(path.name)    # users.json
print(path.stem)    # users
print(path.suffix)  # .json
print(path.parent)  # data


For joining paths, the / operator is used, which looks noticeably cleaner and is easier to read compared to os.path.join:

base = Path("logs")
file_path = base / "2026" / "app.log"


Creating directories is also compact and convenient:

Path("backup/archive").mkdir(parents=True, exist_ok=True)


Here: parents=True creates nested directories; exist_ok=True doesn't raise an error if the folder already exists.

For reading and writing text files, there are built-in methods that cover most everyday tasks:

config = Path("config.txt")

config.write_text("debug=true", encoding="utf-8")

content = config.read_text(encoding="utf-8")
print(content)


For binary data, read_bytes() and write_bytes() methods are available.

You can iterate through directory contents using iterdir():

for file in Path("logs").iterdir():
    print(file)


If you need to search for files by pattern, use glob():

for py_file in Path(".").glob("*.py"):
    print(py_file)


And for recursive directory traversal, there's rglob():

for file in Path(".").rglob("*.json"):
    print(file)


Practical example — finding logs older than a certain date. This is a more real-world task:

from pathlib import Path
from datetime import datetime

logs = Path("logs")
limit_date = datetime(2026, 1, 1)

for file in logs.glob("*.log"):
    modified = datetime.fromtimestamp(file.stat().st_mtime)

    if modified < limit_date:
        print(file.name, modified)


The stat() method lets you get file metadata: size, modification time, permissions, and other system data.

Deleting files and directories is also built directly into the Path API:

path.unlink()  # file
path.rmdir()   # empty directory


It's important to note that pathlib doesn't fully replace shutil or os. For example, for copying files, recursive directory deletion, or complex permission operations, additional modules are usually used.



🔥 pathlib makes working with the file system noticeably cleaner: less string operations, better readability, and more predictable code when working with paths and files.



#Python #Pathlib #Programming #Coding #Developer #SoftwareEngineering #TechTips #LearnPython #PythonTips #FileSystem

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Interview question

What tools are used for error monitoring in Python services?

Answer: Most often, Sentry, centralized logging, and metrics are used. Sentry collects stack traces, context, and shows the frequency of errors.

It's also important to set up alerts - a sharp increase in exceptions usually signals problems after a release or a service degradation.

tags: #interview

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20 ADVANCED Python MCQ.pdf
4.4 MB
𝗣𝗿𝗲𝗶𝗺𝗶𝗮𝗹 𝗣𝘆𝘁𝗵𝗼𝗻 𝗨𝗹𝘁𝗶𝗺𝗮𝘁𝗲 𝗚𝘂𝗶𝗱𝗲! 🚀🐍

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- print()
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- int()
- float()
- str()
- bool()
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- list()
- tuple()
- set()
- dict()
- frozenset()
- bytes()
- bytearray()
- memoryview()

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- type()
- id()
- isinstance()
- issubclass()

𝗙𝗶𝗹𝗲 𝗛𝗮𝗻𝗱𝗹𝗶𝗻𝗴 𝗙𝘂𝗻𝗰𝘁𝗶𝗼𝗻𝘀 📂📝
- open()
- close()
- read()
- write()
- seek()
- tell()

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- ord()
- chr()
- ascii()
- repr()

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#PythonGuide #PythonFunctions #CodingLife #LearnPython #DevCommunity #PyTips

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If you work with Python, remember a simple rule: do not modify a list while iterating over it. 🐍🛑 This can lead to unexpected results because the iterator does not track structural changes.

Here is an example that looks logical but works incorrectly: 🤔

items = [1, 2, 2, 3, 4]
for item in items:
    if item == 2:
        items.remove(item)
print(items)
# Output: [1, 2, 3, 4]


It seems that all 2s should disappear, but one remains. Why?

After removing an element, the list shifts, but the loop moves on — as a result, some values are simply skipped. 🔄🚫

How to do it correctly — iterate over a copy:

for item in items[:]:
    if item == 2:
          items.remove(item)
print(items)
# Output: [1, 3, 4]


Even better — use list comprehension: 🚀

items = [x for x in items if x != 2]

Conclusion: 🏁 do not modify a collection during iteration. This can lead to skipped elements, duplication, or even errors during execution. 🛠️🚧

#Python #Coding #Programming #Debugging #TechTips #PythonTips
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Many applications require mapping strings to integers. In Python, this usually looks like:

d = {"apple": 100, "banana": 200, "cherry": 300}


If there are 1 million keys, this can consume a lot of memory — more than 100 bytes per key.
Our elephant has published a new library that uses about 9 bytes per key. Yes, only 9 bytes. Usage looks like this:

from fastconstmap import ConstMap

d = {"apple": 100, "banana": 200, "cherry": 300}
m = ConstMap(d)

m["apple"]                  # -> 100
m.get_many(["banana", "cherry"])  # -> [200, 300]


It can be significantly faster (for example, up to 2 times in some cases) than the standard dictionary. It can also be serialized and deserialized to disk or network for convenient reuse.

https://pypi.org/project/fastconstmap/

github: https://github.com/lemire/fastconstmap

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The Python library itertools contains many useful functions. 🐍

One of them is compress(), which returns an iterator over the elements from data, for which the corresponding element in selectors is equal to True. 🔍💻

Here's an example: 📝👇

#Python #Programming #Itertools #Coding #Tech #DataScience
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