Table of Contents
✅ What is memoryview?
? Basic example: Use memoryview to operate bytes
? Efficient slicing: Avoid memory copying
? Modify data: update the original object through memoryview
? Used in conjunction with array module
⚠️ Notes
✅ Summary: The advantages of memoryview
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python memoryview example

Jul 29, 2025 am 02:32 AM

memoryview is a built-in type in Python for directly accessing memory data of objects that support buffering protocols, avoiding replication and improving performance. 1. Create memoryview, such as mv = memoryview(bytearray(b'Hello World')), you can slice access such as mv[:5].tobytes() to get b'Hello' and do not copy data; 2. You can modify the original object, such as mv[0] = ord('h') to make the original bytearray become b'hello World'; 3. Efficiently process large arrays, such as memoryview(bytearray(10_000_000))[1000:2000] Only create views without copying 1000 bytes; 4. Support array modules, such as memoryview(array.array('i', [10, 20, 30]))) can be passed mv[0] = 99 Modify the original array to [99, 20, 30, 40, 50]; 5. Note that memoryview is only suitable for objects that support buffering protocol. The slice is still memoryview. It needs to be converted with tobytes() or tolist(), and the view is invalid after the original object is released. Memoryview is a practical tool in network transmission, file operations and high performance computing, which significantly saves memory and improves efficiency when processing large chunks of binary data.

python memoryview example

memoryview is a very practical but often overlooked built-in type in Python. It allows you to directly access the memory data of objects that support buffering protocols (such as bytes , bytearray , array.array , etc.) without copying. This can significantly improve performance when processing large amounts of binary data.

python memoryview example

Below is a clear and practical memoryview example to help you understand its basic usage and advantages.


✅ What is memoryview?

memoryview returns an object pointing to the memory area of the original object. You can read or modify the data through it (if the original object is mutable) without creating a copy.

python memoryview example

? Basic example: Use memoryview to operate bytes

 # Create a bytearray (mutable byte sequence)
data = bytearray(b'Hello World')
print("Raw Data:", data) # bytearray(b'Hello World')

# Create memoryview
mv = memoryview(data)

# View the first part (slice) - data will not be copied ("first 5 bytes:", mv[:5].tobytes()) # b'Hello'

# Modify data (because bytearray is variable)
mv[0] = ord('h') # Change 'H' to 'h'
print("Modified data:", data) # bytearray(b'hello World')

✅ Note: mv[:5].tobytes() is to convert part of the memoryview to bytes, but the slice itself does not copy the underlying data.


? Efficient slicing: Avoid memory copying

Suppose you have a large array and frequent slices will consume a lot of memory:

python memoryview example
 large_data = bytearray(10_000_000) # 10 million bytes large_data[:10] = b'abcdefghij'

# Use memoryview to slice, do not copy mv_large = memoryview(large_data)
chunk = mv_large[1000:2000] # Just a view, not copying 1000 bytes print("Slice length:", len(chunk)) # 1000
print("First bytes:", chunk[:5].tobytes()) # b'\x00\x00\x00\x00\x00\x00'

⚡ This is more efficient than large_data[1000:2000] , because the latter creates a new copy bytearray .


? Modify data: update the original object through memoryview

 data = bytearray(b'Python')
mv = memoryview(data)

# Modify the middle part mv[1:4] = b'YYY'
print(data) # bytearray(b'PYYYon')

✅ Note: To modify a certain segment of the memoryview, the data length of the assigned value must match.


? Used in conjunction with array module

 import array

# Create an integer array number = array.array('i', [10, 20, 30, 40, 50])
mv = memoryview(numbers)

# View original memory (in bytes)
print("Byte length:", len(mv)) # 20 (5 ints, 4 bytes each)
print("Format:", mv.format) # i
print("Element size:", mv.itemsize) # 4

# Modify mv[0] through memoryview = 99 # Modify the first integer print("Modify:", numbers.tolist()) # [99, 20, 30, 40, 50]

⚠️ Notes

  • memoryview can only be used for objects that support buffering protocols (such as bytes , bytearray , array , numpy.ndarray , etc.).
  • If the original object is released or modified, memoryview may fail or raise an error.
  • The slice of memoryview is still memoryview , which can be converted with .tobytes() or .tolist() .

✅ Summary: The advantages of memoryview

  • Avoid unnecessary data copying and save memory.
  • Improve the operation efficiency of large binary data.
  • Supports in-situ modification (for mutable objects).

Basically that's it. memoryview is a worthwhile tool when dealing with network data, images, file I/O or high-performance computing.

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