I'm going through some old code trying to understand what it does, and I came across this odd statement:

*x ,= p

p is a list in this context. I've been trying to figure out what this statement does. As far as I can tell, it just sets x to the value of p. For example:

p = [1,2]
*x ,= p    

Just gives

[1, 2]

So is this any different than x = p? Any idea what this syntax is doing?

  • 2
    It's different because instead of assigning an alias, it copies the list.
    – zondo
    Commented Apr 3, 2017 at 17:42
  • See python.org/dev/peps/pep-3132 Commented Apr 3, 2017 at 17:43
  • 4
    Omitting the comma gives an error message to which this might be an interesting reference: "SyntaxError: starred assignment target must be in a list or tuple".
    – Josh Lee
    Commented Apr 3, 2017 at 17:50

4 Answers 4


*x ,= p is basically an obfuscated version of x = list(p) using extended iterable unpacking. The comma after x is required to make the assignment target a tuple (it could also be a list though).

*x, = p is different from x = p because the former creates a copy of p (i.e. a new list) while the latter creates a reference to the original list. To illustrate:

>>> p = [1, 2]
>>> *x, = p 
>>> x == p
>>> x is p
>>> x = p
>>> x == p
>>> x is p
  • 16
    Also worth noting that the comma actually belongs to the *x, as the starred assignment must be in a list or tuple. So the more explicit way to write that statement is (*x,) = p
    – glibdud
    Commented Apr 3, 2017 at 17:45
  • 3
    Important to note, this works when p is any iterable. Commented Apr 3, 2017 at 17:54
  • 1
    Might be worth adding something like x[0] = 3; p #=> [1, 2] to the first half and x[0] = 3; p #=> [3, 2] to the second, to illustrate why is and == are different
    – anon
    Commented Apr 3, 2017 at 23:31

It's a feature that was introduced in Python 3.0 (PEP 3132). In Python 2, you could do something like this:

>>> p = [1, 2, 3]
>>> q, r, s = p
>>> q
>>> r
>>> s

Python 3 extended this so that one variable could hold multiple values:

>>> p = [1, 2, 3]
>>> q, *r = p
>>> q
>>> r
[2, 3]

This, therefore, is what is being used here. Instead of two variables to hold three values, however, it is just one variable that takes each value in the list. This is different from x = p because x = p just means that x is another name for p. In this case, however, it is a new list that just happens to have the same values in it. (You may be interested in "Least Astonishment" and the Mutable Default Argument)

Two other common ways of producing this effect are:

>>> x = list(p)


>>> x = p[:]

Since Python 3.3, the list object actually has a method intended for copying:

x = p.copy()

The slice is actually a very similar concept. As nneonneo pointed out, however, that works only with objects such as lists and tuples that support slices. The method you mention, however, works with any iterable: dictionaries, sets, generators, etc.

  • Note, though, that your second bit of code, x = p[:] requires that p be slice-able. This excludes things like generators.
    – nneonneo
    Commented Apr 3, 2017 at 17:53
  • 1
    Wait, 3.0!? I thought it was way more recent, 3.5 or 3.6 or something. Commented Apr 3, 2017 at 19:25
  • 2
    @user2357112: In What's New In Python 3.0, you will find this bullet point: PEP 3132 was accepted. In addition, the PEP itself says the Python version is 3.0. I'm pretty sure that must be the case, then.
    – zondo
    Commented Apr 3, 2017 at 19:28
  • @zondo In Python3, the slicing method of copying has a new more readable counterpart that you might include instead since this question only applies to Python3. (Though only Python 3.3 and up have it.)
    – River
    Commented Apr 5, 2017 at 1:12
  • 1
    @River: Ah, yes. I had forgotten about that one. I kept the slice because it is useful for more than just lists and is still a commonly-seen tactic, but I added the .copy method.
    – zondo
    Commented Apr 5, 2017 at 1:18

You should always throw these to dis and see what it throws back at you; you'll see how *x, = p is actually different from x = p:

dis('*x, = p')
  1           0 LOAD_NAME                0 (p)
              2 UNPACK_EX                0
              4 STORE_NAME               1 (x)

While, the simple assignment statement:

dis('x = p')
  1           0 LOAD_NAME                0 (p)
              2 STORE_NAME               1 (x)

(Stripping off unrelated None returns)

As you can see UNPACK_EX is the different op-code between these; it's documented as:

Implements assignment with a starred target: Unpacks an iterable in TOS (top of stack) into individual values, where the total number of values can be smaller than the number of items in the iterable: one of the new values will be a list of all leftover items.

Which is why, as Eugene noted, you get a new object that's referred to by the name x and not a reference to an already existing object (as is the case with x = p).

*x, does seem very odd (the extra comma there and all) but it is required here. The left hand side must either be a tuple or a list and, due to the quirkiness of creating a single element tuple in Python, you need to use a trailing ,:

i = 1, # one element tuple

If you like confusing people, you can always use the list version of this:

[*x] = p

which does exactly the same thing but doesn't have that extra comma hanging around there.


You can clearly understand it from below example

L = [1, 2, 3, 4]
while L:
    temp, *L = L             
    print(temp, L)

what it does is, the front variable will get the first item every time and the remaining list will be given to L.

The output will look shown below.

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

Also look at below example

x, *y, z = "python"

In this both x,z will get each one letter from the string meaning first letter is assigned to x and the last letter will be assigned to z and the remaining string will be assigned to variable y.

p ['y', 't', 'h', 'o'] n

One more example,

a, b, *c = [0,1,2,3]

0 1 [2,3]

Boundary case: If there is nothing remaining for star variable then it will get an empty list.



1 []

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