What is the difference between flatten and ravel functions in numpy?

``````import numpy as np
y = np.array(((1,2,3),(4,5,6),(7,8,9)))
OUTPUT:
print(y.flatten())
[1   2   3   4   5   6   7   8   9]
print(y.ravel())
[1   2   3   4   5   6   7   8   9]
``````

Both function return the same list. Then what is the need of two different functions performing same job.

• Ravel usually returns a view into the existing array (sometimes it returns a copy). Flatten returns a new array.
– Alex
Commented Mar 8, 2015 at 18:55
• Possible duplicate of What is the difference between flatten and ravel in numpy? Commented Aug 22, 2016 at 2:32
• Here is a practical demonstration of subtle difference. Commented Jan 22, 2019 at 17:12
• So can someone give an example when it is better to flatten an array and when to ravel it ? Commented Mar 28, 2020 at 19:00
• Thank you for asking this, I had the same question. Commented Oct 12, 2020 at 8:31

The current API is that:

• `flatten` always returns a copy.
• `ravel` returns a contiguous view of the original array whenever possible. This isn't visible in the printed output, but if you modify the array returned by ravel, it may modify the entries in the original array. If you modify the entries in an array returned from flatten this will never happen. ravel will often be faster since no memory is copied, but you have to be more careful about modifying the array it returns.
• `reshape((-1,))` gets a view whenever the strides of the array allow it even if that means you don't always get a contiguous array.
• Any idea why NumPy developers didn't stick to one function with some parameter copy=[True,False]? Commented Nov 17, 2015 at 17:49
• Backcompat guarantees sometimes cause odd things like this to happen. For example: the numpy developers recently (in 1.10) added a previously implicit guarantee that ravel would return a contiguous array (a property that is very important when writing C extensions), so now the API is `a.flatten()` to get a copy for sure, `a.ravel()` to avoid most copies but still guarantee that the array returned is contiguous, and `a.reshape((-1,))` to really get a view whenever the strides of the array allow it even if that means you don't always get a contiguous array.
– IanH
Commented Nov 17, 2015 at 20:59
• @Hossein IanH explained it: `ravel`guarantees a contiguous array, and so it is not guaranteed that it returns a view; `reshape` always returns a view, and so it is not guaranteed that it returns a contiguous array.
– iled
Commented Feb 10, 2017 at 19:49
• @Hossein That would be a whole new question. Very briefly, it is much faster to read and write to a contiguous memory space. There are several questions and answers on that here on SO (nice example here), feel free to open a new one if you have any further questions.
– iled
Commented Feb 10, 2017 at 20:40
• Why is it called `ravel`? What is the idea behind the name? Commented Jan 26, 2019 at 6:49

As explained here a key difference is that:

• `flatten` is a method of an ndarray object and hence can only be called for true numpy arrays.

• `ravel` is a library-level function and hence can be called on any object that can successfully be parsed.

For example `ravel` will work on a list of ndarrays, while `flatten` is not available for that type of object.

@IanH also points out important differences with memory handling in his answer.

• thx for that info about the ravel() working on lists of `ndarray`'s Commented Oct 28, 2018 at 2:39
• Not only lists of arrays but also lists of lists :) Commented Jun 18, 2020 at 9:51

Here is the correct namespace for the functions:

Both functions return flattened 1D arrays pointing to the new memory structures.

``````import numpy
a = numpy.array([[1,2],[3,4]])

r = numpy.ravel(a)
f = numpy.ndarray.flatten(a)

print(id(a))
print(id(r))
print(id(f))

print(r)
print(f)

print("\nbase r:", r.base)
print("\nbase f:", f.base)

---returns---
140541099429760
140541099471056
140541099473216

[1 2 3 4]
[1 2 3 4]

base r: [[1 2]
[3 4]]

base f: None
``````

In the upper example:

• the memory locations of the results are different,
• the results look the same
• flatten would return a copy
• ravel would return a view.

How we check if something is a copy? Using the `.base` attribute of the `ndarray`. If it's a view, the base will be the original array; if it is a copy, the base will be `None`.

Check if `a2` is copy of `a1`

``````import numpy
a1 = numpy.array([[1,2],[3,4]])
a2 = a1.copy()
id(a2.base), id(a1.base)
``````

Out:

``````(140735713795296, 140735713795296)
``````
• `id(a1.base)` should be the same as `id(a2.base)` Commented Jan 29, 2021 at 12:55
• a1.base and a2.base are both None, which is why the id of the base can/will be the same. But id(a1) and id(a2) are different due to copying. The bases will be different if a2 is a slice of a1 , in which case "a1.base is None" but "a2.base is a1" Commented Nov 25, 2022 at 15:16