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Python Interview Questions and Answers

Last Updated : 04 Mar, 2025
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Python is the most used language in top companies such as Intel, IBM, NASA, Pixar, Netflix, Facebook, JP Morgan Chase, Spotify and many more because of its robust performance and powerful libraries. To get into these companies and organizations as a Python developer, we need to master some important Python Interview Questions to crack their Python Online Assessment Round and Python Interview Round. We have prepared a list of the Top 50 Python Interview Questions along with their answers to ace interviews.

Python Interview Questions for Freshers

1. Is Python a compiled language or an interpreted language?

Python can be considered both compiled and interpreted, but in different stages of its execution process.

  1. Compilation: When you write Python code and run it, the Python interpreter first compiles your source code (.py files) into an intermediate form called bytecode (.pyc files). This bytecode is a lower-level representation of your code, but it is still not directly machine code. It’s something that the Python Virtual Machine (PVM) can understand and execute.
  2. Interpretation: After Python code is compiled into bytecode, it is executed by the Python Virtual Machine (PVM), which is an interpreter. The PVM reads the bytecode and executes it line-by-line at runtime, which is why Python is considered an interpreted language in practice.

Some implementations, like PyPy, use Just-In-Time (JIT) compilation, where Python code is compiled into machine code at runtime for faster execution, blurring the lines between interpretation and compilation.

2. What is a dynamically typed language?

Typed languages are the languages in which we define the type of data type and it will be known by the machine at the compile-time or at runtime. Typed languages can be classified into two categories:

  • Statically typed languages: In this type of language, the data type of a variable is known at the compile time which means the programmer has to specify the data type of a variable at the time of its declaration. 
  • Dynamically typed languages: These are the languages that do not require any pre-defined data type for any variable as it is interpreted at runtime by the machine itself. In these languages, interpreters assign the data type to a variable at runtime depending on its value.

Yes, indentation is required in Python. A Python interpreter can be informed that a group of statements belongs to a specific block of code by using Python indentation. Indentations make the code easy to read for developers in all programming languages but in Python, it is very important to indent the code in a specific order.

Indentation-in-python

Python Indentation

4. What are Built-in data types in Python?

The following are the standard or built-in data types in Python:

  • Numeric: The numeric data type in Python represents the data that has a numeric value. A numeric value can be an integer, a floating number, a Boolean, or even a complex number.
  • Sequence Type: The sequence Data Type in Python is the ordered collection of similar or different data types. There are several sequence types in Python:
  • Mapping Types: In Python, hashable data can be mapped to random objects using a mapping object. There is currently only one common mapping type, the dictionary and mapping objects are mutable.
  • Set Types: In Python, a Set is an unordered collection of data types that is iterable, mutable and has no duplicate elements. The order of elements in a set is undefined though it may consist of various elements.

5. What is the difference between a Mutable datatype and an Immutable data type?

  • Mutable data types can be edited i.e., they can change at runtime. Eg – List, Dictionary, etc.
  • Immutable data types can not be edited i.e., they can not change at runtime. Eg – String, Tuple, etc.

6. What is a Variable Scope in Python?

The location where we can find a variable and also access it if required is called the scope of a variable.

  • Python Local variable: Local variables are those that are initialized within a function and are unique to that function. It cannot be accessed outside of the function.
  • Python Global variables: Global variables are the ones that are defined and declared outside any function and are not specified to any function.
  • Module-level scope: It refers to the global objects of the current module accessible in the program.
  • Outermost scope: It refers to any built-in names that the program can call. The name referenced is located last among the objects in this scope.

7. How do you floor a number in Python?

To floor a number in Python, you can use the math.floor() function, which returns the largest integer less than or equal to the given number.

  • floor() method in Python returns the floor of x i.e., the largest integer not greater than x. 
  • Also, The method ceil(x) in Python returns a ceiling value of x i.e., the smallest integer greater than or equal to x.
import math

n = 3.7
F_num = math.floor(n)

print(F_num) 

Output
3

8. What is the difference between / and // in Python?

/ represents precise division (result is a floating point number) whereas // represents floor division (result is an integer). For Example:

5//2 = 2

5/2 = 2.5

9. Difference between for loop and while loop in Python

The “for” Loop is generally used to iterate through the elements of various collection types such as List, Tuple, Set and Dictionary. Developers use a “for” loop where they have both the conditions start and the end. Whereas, the “while” loop is the actual looping feature that is used in any other programming language. Programmers use a Python while loop where they just have the end conditions.

10. Can we Pass a function as an argument in Python?

Yes, Several arguments can be passed to a function, including objects, variables (of the same or distinct data types) and functions. Functions can be passed as parameters to other functions because they are objects. Higher-order functions are functions that can take other functions as arguments.

11. What is a pass in Python?

Pass statement in Python is a null operation or a placeholder. It is used when a statement is syntactically required but we don’t want to execute any code. It does nothing but allows us to maintain the structure of our program.

Example Use of Pass Keyword in a Function:

Pass keyword in a function is used when we define a function but don’t want to implement its logic immediately. It allows the function to be syntactically valid, even though it doesn’t perform any actions yet.

def fun():
    pass  # Placeholder, no functionality yet

# Call the function
fun()

12. What is a break, continue and pass in Python? 

  • break statement is used to terminate the loop or statement in which it is present. After that, the control will pass to the statements that are present after the break statement, if available.
  • Continue is also a loop control statement just like the break statement. continue statement is opposite to that of the break statement, instead of terminating the loop, it forces to execute the next iteration of the loop.
  • Pass means performing no operation or in other words, it is a placeholder in the compound statement, where there should be a blank left and nothing has to be written there.

13. How are arguments passed by value or by reference in Python?

Python’s argument-passing model is neither “Pass by Value” nor “Pass by Reference” but it is “Pass by Object Reference”. 

Depending on the type of object you pass in the function, the function behaves differently. Immutable objects show “pass by value” whereas mutable objects show “pass by reference”.

You can check the difference between pass-by-value and pass-by-reference in the example below:

def call_by_value(x):
    x = x * 2
    print("in function value updated to", x)
    return

def call_by_reference(list):
    list.append("D")
    print("in function list updated to", list)
    return

my_list = ["E"]
num = 6
print("number before=", num)
call_by_value(num)
print("after function num value=", num)
print("list before",my_list)
call_by_reference(my_list)
print("after function list is ",my_list)

Output
number before= 6
in function value updated to 12
after function num value= 6
list before ['E']
in function list updated to ['E', 'D']
after function list is  ['E', 'D']

14. What is a lambda function?

A lambda function is an anonymous function. This function can have any number of parameters but, can have just one statement.

In the example, we defined a lambda function(upper) to convert a string to its upper case using upper().

s1 = 'GeeksforGeeks'

s2 = lambda func: func.upper()
print(s2(s1))

Output
GEEKSFORGEEKS

15. How is a dictionary different from a list?

A list is an ordered collection of items accessed by their index, while a dictionary is an unordered collection of key-value pairs accessed using unique keys. Lists are ideal for sequential data, whereas dictionaries are better for associative data. For example, a list can store [10, 20, 30], whereas a dictionary can store {“a”: 10, “b”: 20, “c”: 30}.

16. What is List Comprehension? Give an Example.

List comprehension is a way to create lists using a concise syntax. It allows us to generate a new list by applying an expression to each item in an existing iterable (such as a list or range). This helps us to write cleaner, more readable code compared to traditional looping techniques.

For example, if we have a list of integers and want to create a new list containing the square of each element, we can easily achieve this using list comprehension.

a = [2,3,4,5]
res = [val ** 2 for val in a]
print(res)

Output
[4, 9, 16, 25]

17. What are *args and **kwargs?

*args: The special syntax *args in function definitions is used to pass a variable number of arguments to a function. Python program to illustrate *args for a variable number of arguments:

def myFun(*argv):
    for arg in argv:
        print(arg)

myFun('Hello', 'Welcome', 'to', 'GeeksforGeeks')

Output
Hello
Welcome
to
GeeksforGeeks

**kwargs: The special syntax **kwargs in function definitions is used to pass a variable length argument list. We use the name kwargs with the double star **.

def fun(**kwargs):
    for k, val in kwargs.items():
        print("%s == %s" % (k, val))


# Driver code
fun(s1='Geeks', s2='for', s3='Geeks')

Output
s1 == Geeks
s2 == for
s3 == Geeks

18. What is the difference between a Set and Dictionary?

Python Set is an unordered collection data type that is iterable, mutable and has no duplicate elements. Python’s set class represents the mathematical notion of a set.

Syntax: Defined using curly braces {} or the set() function.

my_set = {1, 2, 3}

Dictionary in Python is an ordered (since Py 3.7) [unordered (Py 3.6 & prior)] collection of data values, used to store data values like a map, which, unlike other Data Types that hold only a single value as an element, Dictionary holds key:value pair. Key-value is provided in the dictionary to make it more optimized.

Syntax: Defined using curly braces {} with key-value pairs.

my_dict = {“a”: 1, “b”: 2, “c”: 3}

19. How can you concatenate two lists in Python?

We can concatenate two lists in Python using the +operator or the extend() method.

1. Using the + operator:

This creates a new list by joining two lists together.

list1 = [1, 2, 3]
list2 = [4, 5, 6]
result = list1 + list2
print(result) 

Output
[1, 2, 3, 4, 5, 6]

2. Using the extend() method:

This adds all the elements of the second list to the first list in-place.

list1 = [1, 2, 3]
list2 = [4, 5, 6]
list1.extend(list2)
print(list1) 

Output
[1, 2, 3, 4, 5, 6]

20. What is docstring in Python?

Python documentation strings (or docstrings) provide a convenient way of associating documentation with Python modules, functions, classes and methods.

  • Declaring Docstrings: The docstrings are declared using ”’triple single quotes”’ or “””triple double quotes””” just below the class, method, or function declaration. All functions should have a docstring.
  • Accessing Docstrings: The docstrings can be accessed using the __doc__ method of the object or using the help function.

21. How is Exceptional handling done in Python?

There are 3 main keywords i.e. try, except and finally which are used to catch exceptions and handle the recovering mechanism accordingly. Try is the block of a code that is monitored for errors. Except block gets executed when an error occurs.

The beauty of the final block is to execute the code after trying for an error. This block gets executed irrespective of whether an error occurred or not. Finally, block is used to do the required cleanup activities of objects/variables.

Example: Trying to divide a number by zero will cause an exception.

n = 10
try:
    res = n / 0  # This will raise a ZeroDivisionError
    
except ZeroDivisionError:
    print("Can't be divided by zero!")

Output
Can't be divided by zero!

Explanation: In this example, dividing number by 0 raises a ZeroDivisionError. The try block contains the code that might cause an exception and the except block handles the exception, printing an error message instead of stopping the program.

22. What is the difference between Python Arrays and Lists?

Arrays (when talking about the array module in Python) are specifically used to store a collection of numeric elements that are all of the same type. This makes them more efficient for storing large amounts of data and performing numerical computations where the type consistency is maintained.

Syntax: Need to import the array module to use arrays.

Example:

from array import array
arr = array('i', [1, 2, 3, 4])  # Array of integers

Lists are more flexible than arrays in that they can hold elements of different types (integers, strings, objects, etc.). They come built-in with Python and do not require importing any additional modules.

Lists support a variety of operations that can modify the list.

Example:

lst = [1, 'hello', 3.14, [1, 2, 3]]

read more about Difference between List and Array in Python

23. What are Modules and Packages in Python?

A module is a single file that contains Python code (functions, variables, classes) which can be reused in other programs. You can think of it as a code library. For example: math is a built-in module that provides math functions like sqrt(), pi, etc.

import math
print(math.sqrt(16))  

package is a collection of related modules stored in a directory. It helps in organizing and grouping modules together for easier management. For example: The numpy package contains multiple modules for numerical operations.

To create a package, the directory must contain a special file named __init__.py.

Intermediate Python Interview Questions

24. What is the difference between xrange and range functions?

range() and xrange() are two functions that could be used to iterate a certain number of times in for loops in Python. 

  • In Python 3, there is no xrange, but the range function behaves like xrange.
  • In Python 2
    • range() – This returns a range object, which is an immutable sequence type that generates the numbers on demand. 
    • xrange() – This function returns the generator object that can be used to display numbers only by looping. The only particular range is displayed on demand and hence called lazy evaluation.

25. What is Dictionary Comprehension? Give an Example

Dictionary Comprehension is a syntax construction to ease the creation of a dictionary based on the existing iterable.

# Python code to demonstrate dictionary 
# comprehension

# Lists to represent keys and values
keys = ['a','b','c','d','e']
values = [1,2,3,4,5]  

# but this line shows dict comprehension here  
myDict = { k:v for (k,v) in zip(keys, values)}  

# We can use below too
# myDict = dict(zip(keys, values))  

print (myDict)

Output
{'a': 1, 'b': 2, 'c': 3, 'd': 4, 'e': 5}

26. Is Tuple Comprehension possible in Python? If yes, how and if not why?

Tuple comprehensions are not directly supported, Python’s existing features like generator expressions and the tuple() function provide flexible alternatives for creating tuples from iterable data.

(i for i in (1, 2, 3))

Tuple comprehension is not possible in Python because it will end up in a generator, not a tuple comprehension.

27. Differentiate between List and Tuple?

Let’s analyze the differences between List and Tuple:

List

  • Lists are Mutable datatype.
  • Lists consume more memory
  • The list is better for performing operations, such as insertion and deletion.
  • The implication of iterations is Time-consuming

Tuple

  • Tuples are Immutable datatype.
  • Tuple consumes less memory as compared to the list
  • A Tuple data type is appropriate for accessing the elements
  • The implication of iterations is comparatively Faster

28. What is the difference between a shallow copy and a deep copy?

Below is the tabular Difference between the Shallow Copy and Deep Copy:

Shallow CopyDeep Copy
Shallow Copy stores the references of objects to the original memory address.   Deep copy stores copies of the object’s value.
Shallow Copy reflects changes made to the new/copied object in the original object.Deep copy doesn’t reflect changes made to the new/copied object in the original object.
Shallow Copy stores the copy of the original object and points the references to the objects.Deep copy stores the copy of the original object and recursively copies the objects as well.
A shallow copy is faster.Deep copy is comparatively slower.

29. Which sorting technique is used by sort() and sorted() functions of python?

Python uses the Tim Sort algorithm for sorting. It’s a stable sorting whose worst case is O(N log N). It’s a hybrid sorting algorithm, derived from merge sort and insertion sort, designed to perform well on many kinds of real-world data.

30. What are Decorators?

Decorators are a powerful and flexible way to modify or extend the behavior of functions or methods, without changing their actual code. A decorator is essentially a function that takes another function as an argument and returns a new function with enhanced functionality.

Decorators are often used in scenarios such as logging, authentication and memorization, allowing us to add additional functionality to existing functions or methods in a clean, reusable way.

31. How do you debug a Python program?

1. Using pdb (Python Debugger):

pdb is a built-in module that allows you to set breakpoints and step through the code line by line. You can start the debugger by adding import pdb; pdb.set_trace() in your code where you want to begin debugging.

import pdb
x = 5
pdb.set_trace()  # Debugger starts here
print(x)

Output

> /home/repl/02c07243-5df9-4fb0-a2cd-54fe6d597c80/main.py(4)<module>() 
-> print(x) 
(Pdb) 

2. Using logging Module:

For more advanced debugging, the logging module provides a flexible way to log messages with different severity levels (INFO, DEBUG, WARNING, ERROR, CRITICAL).

import logging
logging.basicConfig(level=logging.DEBUG)
logging.debug("This is a debug message")

Output

DEBUG:root:This is a debug message

32. What are Iterators in Python?

In Python, iterators are used to iterate a group of elements, containers like a list. Iterators are collections of items and they can be a list, tuples, or a dictionary. Python iterator implements __itr__ and the next() method to iterate the stored elements. We generally use loops to iterate over the collections (list, tuple) in Python.

33. What are Generators in Python?

In Python, the generator is a way that specifies how to implement iterators. It is a normal function except that it yields expression in the function. It does not implement __itr__ and __next__ method and reduces other overheads as well.

If a function contains at least a yield statement, it becomes a generator. The yield keyword pauses the current execution by saving its states and then resumes from the same when required.

34. Does Python supports multiple Inheritance?

When a class is derived from more than one base class it is called multiple Inheritance. The derived class inherits all the features of the base case.

multipleinh

Multiple Inheritance

Python does support multiple inheritances, unlike Java.

35. What is Polymorphism in Python?

Polymorphism means the ability to take multiple forms. Polymorphism allows different classes to be treated as if they are instances of the same class through a common interface. This means that a method in a parent class can be overridden by a method with the same name in a child class, but the child class can provide its own specific implementation. This allows the same method to operate differently depending on the object that invokes it. Polymorphism is about overriding, not overloading; it enables methods to operate on objects of different classes, which can have their own attributes and methods, providing flexibility and reusability in the code.

36. Define encapsulation in Python?

Encapsulation is the process of hiding the internal state of an object and requiring all interactions to be performed through an object’s methods. This approach:

  • Provides better control over data.
  • Prevents accidental modification of data.
  • Promotes modular programming.

Python achieves encapsulation through publicprotected and private attributes.

Encapsulation-in-Python

Encapsulation in Python

37. How do you do data abstraction in Python?

Data Abstraction is providing only the required details and hides the implementation from the world. The focus is on exposing only the essential features and hiding the complex implementation behind an interface. It can be achieved in Python by using interfaces and abstract classes.

38. How is memory management done in Python?

Python uses its private heap space to manage the memory. Basically, all the objects and data structures are stored in the private heap space. Even the programmer can not access this private space as the interpreter takes care of this space. Python also has an inbuilt garbage collector, which recycles all the unused memory and frees the memory and makes it available to the heap space.

39. How to delete a file using Python?

We can delete a file using Python by following approaches:

  1. Python Delete File using os. remove
  2. Delete file in Python using the send2trash module
  3. Python Delete File using os.rmdir

40. What is slicing in Python?

Python Slicing is a string operation for extracting a part of the string, or some part of a list. With this operator, one can specify where to start the slicing, where to end and specify the step. List slicing returns a new list from the existing list.

Syntax:

substring = s[start : end : step]

41. What is a namespace in Python?

A namespace in Python refers to a container where names (variables, functions, objects) are mapped to objects. In simple terms, a namespace is a space where names are defined and stored and it helps avoid naming conflicts by ensuring that names are unique within a given scope.

types_namespace-1

Types of namespaces

Types of Namespaces:

  1. Built-in Namespace: Contains all the built-in functions and exceptions, like print(), int(), etc. These are available in every Python program.
  2. Global Namespace: Contains names from all the objects, functions and variables in the program at the top level.
  3. Local Namespace: Refers to names inside a function or method. Each function call creates a new local namespace.
Python-Interview-Questions

Python Interview

Advanced Python Interview Questions & Answers 

42. What is PIP?

PIP is an acronym for Python Installer Package which provides a seamless interface to install various Python modules. It is a command-line tool that can search for packages over the internet and install them without any user interaction.

43. What is a zip function?

Python zip() function returns a zip object, which maps a similar index of multiple containers. It takes an iterable, converts it into an iterator and aggregates the elements based on iterables passed. It returns an iterator of tuples.

Syntax:
zip(*iterables) 

44. What are Pickling and Unpickling?

  • Pickling: The pickle module converts any Python object into a byte stream (not a string representation). This byte stream can then be stored in a file, sent over a network, or saved for later use. The function used for pickling is pickle.dump().
  • Unpickling: The process of retrieving the original Python object from the byte stream (saved during pickling) is called unpickling. The function used for unpickling is pickle.load().

45. What is the difference between @classmethod, @staticmethod and instance methods in Python?

1. Instance Method operates on an instance of the class and has access to instance attributes and takes self as the first parameter. Example:

def method(self):

2. Class Method directly operates on the class itself and not on instance, it takes cls as the first parameter and defined with @classmethod.

Example: @classmethod def method(cls):

3. Static Method does not operate on an instance or the class and takes no self or cls as an argument and is defined with @staticmethod.

Example: @staticmethod def method(): align it and dont bolod anything and not bullet points

46. What is __init__() in Python and how does self play a role in it?

__init__() method in Python is equivalent to constructors in OOP terminology. It is a reserved method in Python classes and is called automatically whenever a new object is instantiated. This method is used to initialize the object’s attributes with values. While __init__() initializes the object, it does not allocate memory. Memory allocation for a new object is handled by the __new__() method, which is called before __init__(). The self parameter in __init__() refers to the instance of the class being created as it allows access to the instance’s attributes and methods. self must be explicitly declared as the first parameter in all instance methods, including __init__().

class MyClass:
    def __init__(self, value):
        self.value = value  # Initialize object attribute

    def display(self):
        print(f"Value: {self.value}")

obj = MyClass(10)
obj.display() 

Output
Value: 10

47. Write a code to display the current time?

import time

currenttime= time.localtime(time.time())
print ("Current time is", currenttime)

48. What are Access Specifiers in Python?

Python uses the ‘_’ symbol to determine the access control for a specific data member or a member function of a class. A Class in Python has three types of Python access modifiers:

  • Public Access Modifier: The members of a class that are declared public are easily accessible from any part of the program. All data members and member functions of a class are public by default. 
  • Protected Access Modifier: The members of a class that are declared protected are only accessible to a class derived from it. All data members of a class are declared protected by adding a single underscore ‘_’ symbol before the data members of that class. 
  • Private Access Modifier: The members of a class that are declared private are accessible within the class only, the private access modifier is the most secure access modifier. Data members of a class are declared private by adding a double underscore ‘__’ symbol before the data member of that class. 

49. What are unit tests in Python?

Unit Testing is the first level of software testing where the smallest testable parts of the software are tested. This is used to validate that each unit of the software performs as designed. The unit test framework is Python’s xUnit style framework. The White Box Testing method is used for Unit testing.

50. Python Global Interpreter Lock (GIL)?

Python Global Interpreter Lock (GIL) is a type of process lock that is used by Python whenever it deals with processes. Generally, Python only uses only one thread to execute the set of written statements. The performance of the single-threaded process and the multi-threaded process will be the same in Python and this is because of GIL in Python. We can not achieve multithreading in Python because we have a global interpreter lock that restricts the threads and works as a single thread.

51. What are Function Annotations in Python?

Function Annotation is a feature that allows you to add metadata to function parameters and return values. This way you can specify the input type of the function parameters and the return type of the value the function returns.

Function annotations are arbitrary Python expressions that are associated with various parts of functions. These expressions are evaluated at compile time and have no life in Python’s runtime environment. Python does not attach any meaning to these annotations. They take life when interpreted by third-party libraries, for example, mypy.

52. What are Exception Groups in Python?

The latest feature of Python 3.11, Exception Groups. The ExceptionGroup can be handled using a new except* syntax. The * symbol indicates that multiple exceptions can be handled by each except* clause.

ExceptionGroup is a collection/group of different kinds of Exception. Without creating Multiple Exceptions we can group together different Exceptions which we can later fetch one by one whenever necessary, the order in which the Exceptions are stored in the Exception Group doesn’t matter while calling them.

try:
raise ExceptionGroup('Example ExceptionGroup', (
TypeError('Example TypeError'),
ValueError('Example ValueError'),
KeyError('Example KeyError'),
AttributeError('Example AttributeError')
))
except* TypeError:
...
except* ValueError as e:
...
except* (KeyError, AttributeError) as e:
...

53. What is Python Switch Statement?

From version 3.10 upward, Python has implemented a switch case feature called “structural pattern matching”. You can implement this feature with the match and case keywords. Note that the underscore symbol is what you use to define a default case for the switch statement in Python.

Note: Before Python 3.10 Python doesn’t support match Statements.

match term:
   case pattern-1:
   action-1
   case pattern-2:
   action-2
   case pattern-3:
   action-3
   case _:
   action-default

54. What is Walrus Operator?

Walrus Operator allows you to assign a value to a variable within an expression. This can be useful when you need to use a value multiple times in a loop, but don’t want to repeat the calculation.

Walrus Operator is represented by the `:=` syntax and can be used in a variety of contexts including while loops and if statements.

Note: Python versions before 3.8 doesn’t support Walrus Operator.

numbers = [1, 2, 3, 4, 5]

while (n := len(numbers)) > 0:
    print(numbers.pop())

Output
5
4
3
2
1


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