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Table of Contents
1. Use psutil to quickly view overall memory usage
2. Use tracemalloc to analyze the source of memory allocation
3. Use memory_profiler to view memory changes per line
4. Precautions and tips
Home Backend Development Python Tutorial How to check memory usage of a Python script

How to check memory usage of a Python script

Jul 31, 2025 am 10:03 AM

To view the memory usage of Python scripts, the following four methods can be used: 1. Use psutil to quickly view the overall memory footprint, suitable for inserting checkpoints to observe trends; 2. Use tracemalloc to analyze the source of memory allocation and locate specific code problems; 3. Use memory_profiler to view memory changes line by line, suitable for performance optimization; 4. Pay attention to tips such as regular monitoring, environmental differences and comparison testing.

How to check memory usage of a Python script

Want to know how to check the memory usage of Python scripts? In fact, the method is not complicated, the key is to choose the right tool and opportunity.

How to check memory usage of a Python script

1. Use psutil to quickly view overall memory usage

If you just want to roughly understand how much memory is used in the current Python process, you can use psutil as a third-party library. It is simple and easy to use and is suitable for quick troubleshooting.

Installation method:

How to check memory usage of a Python script
 pip install psutil

Example of usage:

 import psutil

def print_memory_usage():
    process = psutil.Process()
    print(f"Memory usage: {process.memory_info().rss / (1024 ** 2):.2f} MB")

print_memory_usage()
  • rss indicates the actual physical memory size (units are bytes)
  • The output results are more intuitive in MB units
  • This method is suitable for inserting multiple checkpoints during script operation and observing memory changes trends

2. Use tracemalloc to analyze the source of memory allocation

If you suspect a memory leak or want to see which code allocates a lot of memory, tracemalloc is a good tool in the standard library.

How to check memory usage of a Python script

How to enable:

 import tracemalloc

tracemalloc.start()
# ... run some code ...
snapshot = tracemalloc.take_snapshot()
top_stats = snapshot.statistics('lineno')

for stat in top_stats:
    print(stat)

The output will display the total amount of memory allocation on each file and line number, which is convenient for positioning "memory-eating big users".

  • It is recommended to turn on only where it needs to be analyzed to avoid affecting performance
  • You can use filter_traces to filter the system library calls and focus on your own code.

3. Use memory_profiler to view memory changes per line

If you need to look at memory usage line by line like a time analyzer, you can try memory_profiler .

Install:

 pip install memory_profiler

Add a decorator when using:

 from memory_profiler import profile

@profile
def my_func():
    a = [1] * (10**6)
    b = [2] * (2 * 10**7)
    del b
    Return a

my_func()

Run the command:

 python -m memory_profiler your_script.py

The output results will tell you the memory changes before and after each line is executed, which is especially suitable for performance optimization.


4. Precautions and tips

  • If it is a long-term service, it is recommended to print memory usage regularly to observe whether there is a continuous growth trend.
  • The memory values reported by different operating systems may vary slightly. There is not much difference between Mac and Linux, but Windows is sometimes not accurate.
  • When comparing different methods or versions, it is best to test in the same environment to avoid interference factors.

Basically these methods have their own uses. Just choose the right tool according to your needs, and don't need to use it all every time.

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