The with statement solves resource management problems by automatically releasing resources. It ensures that resources such as files, network connections or locks can be properly closed even if an exception occurs after use, and avoids memory leaks or file locks that may result from manual call to close(). 1. No need to close manually when processing files with, and it can still be closed safely when an error occurs; 2. It can be used for any object that supports context management, such as thread locks, to ensure that the lock is released after the block is over; 3. It supports custom context managers, implemented through classes or contextlib modules; 4. It should be used when processing resources that need to be explicitly cleaned, making the code more concise, safe and easy to maintain.
The with
statement in Python is used to wrap the execution of a block of code with setup and cleanup actions. It's most commonly used when working with resources like files, network connections, or locks—where you want to make sure the resource is properly released after use, even if an error occurs.

What Problem Does with
Solve?
Before with
, developers had to manually manage resources, especially file handling. For example:
file = open('example.txt', 'r') content = file.read() file.close()
If something went wrong between open()
and close()
, the file might not get closed properly, which could lead to issues like memory leaks or locked files.

The with
statement ensures that resources are cleanly released as soon as they're no longer needed—even if an exception happens.
How to Use with
for File Handling
This is probably the most common use case.

with open('example.txt', 'r') as file: content = file.read()
- The file is automatically closed once the block exits.
- You don't need to call
.close()
manually. - If any error happens inside the block, the file still gets closed properly.
You can also read line by line:
with open('example.txt', 'r') as file: for line in file: print(line.strip())
Note: The variable (
file
in this case) is only accessible inside thewith
block.
Using with
Other Resources
File handling isn't the only use. Any object that supports context management (ie, has __enter__
and __exit__
methods) can be used with
.
Example: Working with Threads and Locks
from threading import Lock lock = Lock() with lock: # do something that needs to be thread-safe print("Lock is held")
This ensures the lock is released right after the block finishes, making your code cleaner and safer.
Example: Custom Context Managers
You can create your own using a class or the contextlib
module.
Using a class:
class MyContext: def __enter__(self): print("Setup") Return self def __exit__(self, exc_type, exc_val, exc_tb): print("Cleanup") with MyContext() as mc: print("Inside context")
Or with contextlib
for simpler functions:
from contextlib import contextmanager @contextmanager def simple_context(): print("Enter") yield print("Exit") with simple_context(): print("Doing work")
When Should You Use with
?
Use it whenever you're dealing with:
- Files or I/O operations
- Network sockets
- Database connections
- Thread or process locks
- Any resource that needs explicit cleanup
It makes your code:
- Cleaner (no manual
close()
calls) - Safer (cleanup always runs)
- Easier to read and maintain
Not every object in Python supports with
, but many built-in and third-party libraries do. If you're writing reusable code that manages resources, consider implementing a context manager—it'll make life easier for anyone using your code later.
Basically that's it.
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