👍3
🔧 Python Interview Question – Configuration Management Across Modules
Question:
You're working on a Python project with several modules, and you need to make some global configurations accessible across all modules. How would you achieve this?
Options:
a) Use global variables
b) Use the configparser module
c) Use function arguments
d) Use environment variables ✅
---
✅ Correct Answer: d) Use environment variables
---
💡 Explanation:
When dealing with multiple modules in a project, environment variables are the best way to store and share global configurations like API keys, file paths, and credentials.
They are:
- Secure 🔐
- Easily accessible from any module 🧩
- Ideal for CI/CD and production environments ⚙️
- Supported natively in Python via
Example:
Pair it with
---
❌ Why not the others?
- Global variables: Messy and hard to manage in large codebases.
- configparser: Good for reading config files (`.ini`) but not inherently global or secure.
- Function arguments: Not scalable — you'd have to manually pass config through every function.
---
🧠 Tip: Always externalize configs to keep your code clean, secure, and flexible!
#Python #InterviewTips #PythonTips #CodingBestPractices #EnvironmentVariables #SoftwareEngineering
🔍By: https://t.iss.one/DataScienceQ
Question:
You're working on a Python project with several modules, and you need to make some global configurations accessible across all modules. How would you achieve this?
Options:
a) Use global variables
b) Use the configparser module
c) Use function arguments
d) Use environment variables ✅
---
✅ Correct Answer: d) Use environment variables
---
💡 Explanation:
When dealing with multiple modules in a project, environment variables are the best way to store and share global configurations like API keys, file paths, and credentials.
They are:
- Secure 🔐
- Easily accessible from any module 🧩
- Ideal for CI/CD and production environments ⚙️
- Supported natively in Python via
os.environ
Example:
import os
api_key = os.environ.get("API_KEY")
Pair it with
.env
files and libraries like python-dotenv
for even smoother management.---
❌ Why not the others?
- Global variables: Messy and hard to manage in large codebases.
- configparser: Good for reading config files (`.ini`) but not inherently global or secure.
- Function arguments: Not scalable — you'd have to manually pass config through every function.
---
🧠 Tip: Always externalize configs to keep your code clean, secure, and flexible!
#Python #InterviewTips #PythonTips #CodingBestPractices #EnvironmentVariables #SoftwareEngineering
🔍By: https://t.iss.one/DataScienceQ
Telegram
Python Data Science Jobs & Interviews
Your go-to hub for Python and Data Science—featuring questions, answers, quizzes, and interview tips to sharpen your skills and boost your career in the data-driven world.
Admin: @Hussein_Sheikho
Admin: @Hussein_Sheikho
👍4
This media is not supported in your browser
VIEW IN TELEGRAM
Forwarded from Python | Machine Learning | Coding | R
🔥1
🟩 What’s the question?
You’ve created a Python module (a
but you don’t want all of them to be available when someone imports the module using
For example:
Now, if someone writes:
🔻 All three functions will be imported — but you want to hide
✅ So what’s the solution?
You define a list named
Now if someone uses:
They’ll get only
🟡 In sall
Everything not listed stays out — though it’s still accessible manually if someone knows the name.
If this was confusing or you want a real example with output, just ask, my friend 💡❤️
#Python #PythonTips #CodeClean #ImportMagic
🔍By: https://t.iss.one/DataScienceQ
You’ve created a Python module (a
.py
file) with several functions, but you don’t want all of them to be available when someone imports the module using
from mymodule import *
.For example:
# mymodule.py
def func1():
pass
def func2():
pass
def secret_func():
pass
Now, if someone writes:
from mymodule import *
🔻 All three functions will be imported — but you want to hide
secret_func
.✅ So what’s the solution?
You define a list named
__all__
that only contains the names of the functions you want to expose:__all__ = ['func1', 'func2']
Now if someone uses:
from mymodule import *
They’ll get only
func1
and func2
. The secret_func
stays hidden 🔒🟡 In sall
__all__
list controls what gets imported when someone uses import *
. Everything not listed stays out — though it’s still accessible manually if someone knows the name.
If this was confusing or you want a real example with output, just ask, my friend 💡❤️
#Python #PythonTips #CodeClean #ImportMagic
🔍By: https://t.iss.one/DataScienceQ
👍5❤1🥰1
This media is not supported in your browser
VIEW IN TELEGRAM
🐍 Python Tip of the Day: Decorators — Enhance Function Behavior ✨
🧠 What is a Decorator in Python?
A decorator lets you wrap extra logic before or after a function runs, without modifying its original code.
🔥 A Simple Example
Imagine you have a basic greeting function:
You want to log a message before and after it runs, but you don’t want to touch
Now “decorate” your function:
When you call it:
Output:
💡 Quick Tip:
The @
s
🚀 Why Use Decorators?
- 🔄 Reuse common “before/after” logic
- 🔒 Keep your original functions clean
- 🔧 Easily add logging, authentication, timing, and more
#PythonTips #Decorators #AdvancedPython #CleanCode #CodingMagic
🔍By: https://t.iss.one/DataScienceQ
🧠 What is a Decorator in Python?
A decorator lets you wrap extra logic before or after a function runs, without modifying its original code.
🔥 A Simple Example
Imagine you have a basic greeting function:
def say_hello():
print("Hello!")
You want to log a message before and after it runs, but you don’t want to touch
say_hello()
itself. Here’s where a decorator comes in:def my_decorator(func):
def wrapper():
print("Calling the function...")
func()
print("Function has been called.")
return wrapper
Now “decorate” your function:
@my_decorator
def say_hello():
print("Hello!")
When you call it:
say_hello()
Output:
Calling the function...
Hello!
Function has been called.
💡 Quick Tip:
The @
my_decorator
syntax is just syntactic sugar for:s
ay_hello = my_decorator(say_hello)
🚀 Why Use Decorators?
- 🔄 Reuse common “before/after” logic
- 🔒 Keep your original functions clean
- 🔧 Easily add logging, authentication, timing, and more
#PythonTips #Decorators #AdvancedPython #CleanCode #CodingMagic
🔍By: https://t.iss.one/DataScienceQ
👍5🔥2
This media is not supported in your browser
VIEW IN TELEGRAM
🧠 What is a Generator in Python?
A generator is a special type of iterator that produces values lazily—one at a time, and only when needed—without storing them all in memory.
---
❓ How do you create a generator?
✅ Correct answer:
Option 1: Use the
🔥 Simple example:
When you call this function:
Each time you call
---
⛔ Why are the other options incorrect?
- Option 2 (class with
It works, but it’s more complex. Using
- Options 3 & 4 (
Loops are not generators themselves. They just iterate over iterables.
---
💡 Pro Tip:
Generators are perfect when working with large or infinite datasets. They’re memory-efficient, fast, and clean to write.
---
📌 #Python #Generator #yield #AdvancedPython #PythonTips #Coding
🔍By: https://t.iss.one/DataScienceQ
A generator is a special type of iterator that produces values lazily—one at a time, and only when needed—without storing them all in memory.
---
❓ How do you create a generator?
✅ Correct answer:
Option 1: Use the
yield
keyword inside a function.🔥 Simple example:
def countdown(n):
while n > 0:
yield n
n -= 1
When you call this function:
gen = countdown(3)
print(next(gen)) # 3
print(next(gen)) # 2
print(next(gen)) # 1
Each time you call
next()
, the function resumes from where it left off, runs until it hits yield
, returns a value, and pauses again.---
⛔ Why are the other options incorrect?
- Option 2 (class with
__iter__
and __next__
): It works, but it’s more complex. Using
yield
is simpler and more Pythonic.- Options 3 & 4 (
for
or while
loops): Loops are not generators themselves. They just iterate over iterables.
---
💡 Pro Tip:
Generators are perfect when working with large or infinite datasets. They’re memory-efficient, fast, and clean to write.
---
📌 #Python #Generator #yield #AdvancedPython #PythonTips #Coding
🔍By: https://t.iss.one/DataScienceQ
👍6❤2🔥2❤🔥1
🥰1
🎯 Python Quick Quiz – OOP Edition
💡 _What is the primary use of the
🔘 Option 1: Initializing class attributes ✅
🔘 Option 2: Defining class methods
🔘 Option 3: Inheriting from a superclass
🔘 Option 4: Handling exceptions
🧠 Correct Answer:
📌 The init method is a special method used to initialize the object’s attributes when a class is instantiated. It's like a constructor in other programming language
#PythonTips #OOP #PythonQuiz #CodingCommunity
🎨https://t.iss.one/DataScienceQ
💡 _What is the primary use of the
__init__
method in a Python class?_🔘 Option 1: Initializing class attributes ✅
🔘 Option 2: Defining class methods
🔘 Option 3: Inheriting from a superclass
🔘 Option 4: Handling exceptions
🧠 Correct Answer:
Option 1
📌 The init method is a special method used to initialize the object’s attributes when a class is instantiated. It's like a constructor in other programming language
s.
class Person:
def __init__(self, name, age):
self.name = name
self.age = age
john = Person("John", 25)
print(john.name) # Output: John
#PythonTips #OOP #PythonQuiz #CodingCommunity
🎨https://t.iss.one/DataScienceQ
Telegram
Python Data Science Jobs & Interviews
Your go-to hub for Python and Data Science—featuring questions, answers, quizzes, and interview tips to sharpen your skills and boost your career in the data-driven world.
Admin: @Hussein_Sheikho
Admin: @Hussein_Sheikho
🔥4❤2
This media is not supported in your browser
VIEW IN TELEGRAM