# Converting NumPy array into Python List structure?

How do I convert a NumPy array to a Python List (for example `[[1,2,3],[4,5,6]]` ), and do it reasonably fast?

## 5 Answers

``````import numpy as np
>>> np.array([[1,2,3],[4,5,6]]).tolist()
[[1, 2, 3], [4, 5, 6]]
``````

Note that this converts the values from whatever numpy type they may have (e.g. np.int32 or np.float32) to the "nearest compatible Python type" (in a list). If you want to preserve the numpy data types, you could call list() on your array instead, and you'll end up with a list of numpy scalars. (Thanks to Mr_and_Mrs_D for pointing that out in a comment.)

• If your list is float32 `tolist` will convert it to `floats`s - that's not desired probably. Using `list(myarray)` doesn't suffer from this - why should we prefer `tolist` ? – Mr_and_Mrs_D Jul 3 '17 at 20:46
• @Mr_and_Mrs_D are you suggesting that, despite having floats in your array, you'd like to have the resulting list be integers? That's sort of a whole different question... and of course you'd have to specify that despite being float32 values, they're all going to be integral. Anyway, if you had that situation, I guess doing `myarray.astype(np.int32).tolist()` would be an option, and explicit about what you're trying to accomplish. (And lastly, `list(array_of_type_float32)` doesn't give integers here when I tried it... so I don't know what you're asking.) – Peter Hansen Jul 4 '17 at 0:41
• I never mentioned integers - try `float32_array = np.array([0.51764709], np.float32); print(float32_array.tolist()); print(list(float32_array))` – Mr_and_Mrs_D Jul 4 '17 at 7:54
• Okay, so the one converts to [float] and the other uses the numpy scalar float32 type still, as [np.float32]. Fine. Good to know, but I guess whether it's desirable or not depends on each specific case. For what it's worth, I suspect that generally when someone (like the OP) asks for conversion to a list, they implicitly mean a list of regular Python data types, in this case either floats or integers, and not a list of numpy scalar types. Thanks for pointing this out: I've edited the answer to include a note about that. – Peter Hansen Jul 4 '17 at 15:21
• Along those lines: `np.array([[0, 'one'], ['two', 3]]).tolist() -> [['0', 'one'], ['two', '3']]` – keithpjolley Mar 20 '19 at 19:58

The numpy .tolist method produces nested lists if the numpy array shape is 2D.

if flat lists are desired, the method below works.

``````import numpy as np
from itertools import chain

a = [1,2,3,4,5,6,7,8,9]
print type(a), len(a), a
npa = np.asarray(a)
print type(npa), npa.shape, "\n", npa
npa = npa.reshape((3, 3))
print type(npa), npa.shape, "\n", npa
a = list(chain.from_iterable(npa))
print type(a), len(a), a`
``````
• to get a flat list, there is also `a.flatten().tolist()` (or `list(a.flatten())` cf discussion above) – ClementWalter Oct 26 '20 at 15:52

c = np.array([[1,2,3],[4,5,6]])

``````list(c.flatten())
``````

`tolist()` works fine even if encountered a nested array, say a pandas `DataFrame`;

``````my_list = [0,1,2,3,4,5,4,3,2,1,0]
my_dt = pd.DataFrame(my_list)
new_list = [i for i in my_dt.values.tolist()]

print(type(my_list),type(my_dt),type(new_list))
``````

Another option

``````c.ravel()
# or
c.ravel().tolist()
``````

also works.