This does what you want, and will work in nearly all cases:

```
>>> all(x in ['b', 'a', 'foo', 'bar'] for x in ['a', 'b'])
True
```

The expression `'a','b' in ['b', 'a', 'foo', 'bar']`

doesn't work as expected because Python interprets it as a tuple:

```
>>> 'a', 'b'
('a', 'b')
>>> 'a', 5 + 2
('a', 7)
>>> 'a', 'x' in 'xerxes'
('a', True)
```

### Other Options

There are other ways to execute this test, but they won't work for as many different kinds of inputs. As Kabie points out, you can solve this problem using sets...

```
>>> set(['a', 'b']).issubset(set(['a', 'b', 'foo', 'bar']))
True
>>> {'a', 'b'} <= {'a', 'b', 'foo', 'bar'}
True
```

...sometimes:

```
>>> {'a', ['b']} <= {'a', ['b'], 'foo', 'bar'}
Traceback (most recent call last):
File "<stdin>", line 1, in <module>
TypeError: unhashable type: 'list'
```

Sets can only be created with hashable elements. But the generator expression `all(x in container for x in items)`

can handle almost any container type. The only requirement is that `container`

be re-iterable (i.e. not a generator). `items`

can be any iterable at all.

```
>>> container = [['b'], 'a', 'foo', 'bar']
>>> items = (i for i in ('a', ['b']))
>>> all(x in [['b'], 'a', 'foo', 'bar'] for x in items)
True
```

### Speed Tests

In many cases, the subset test will be faster than `all`

, but the difference isn't shocking -- except when the question is irrelevant because sets aren't an option. Converting lists to sets just for the purpose of a test like this won't always be worth the trouble. And converting generators to sets can sometimes be incredibly wasteful, slowing programs down by many orders of magnitude.

Here are a few benchmarks for illustration. The biggest difference comes when both `container`

and `items`

are relatively small. In that case, the subset approach is about an order of magnitude faster:

```
>>> smallset = set(range(10))
>>> smallsubset = set(range(5))
>>> %timeit smallset >= smallsubset
110 ns ± 0.702 ns per loop (mean ± std. dev. of 7 runs, 10000000 loops each)
>>> %timeit all(x in smallset for x in smallsubset)
951 ns ± 11.5 ns per loop (mean ± std. dev. of 7 runs, 1000000 loops each)
```

This looks like a big difference. But as long as `container`

is a set, `all`

is still perfectly usable at vastly larger scales:

```
>>> bigset = set(range(100000))
>>> bigsubset = set(range(50000))
>>> %timeit bigset >= bigsubset
1.14 ms ± 13.9 µs per loop (mean ± std. dev. of 7 runs, 1000 loops each)
>>> %timeit all(x in bigset for x in bigsubset)
5.96 ms ± 37 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)
```

Using subset testing is still faster, but only by about 5x at this scale. The speed boost is due to Python's fast `c`

-backed implementation of `set`

, but the fundamental algorithm is the same in both cases.

If your `items`

are already stored in a list for other reasons, then you'll have to convert them to a set before using the subset test approach. Then the speedup drops to about 2.5x:

```
>>> %timeit bigset >= set(bigsubseq)
2.1 ms ± 49.2 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)
```

And if your `container`

is a sequence, and needs to be converted first, then the speedup is even smaller:

```
>>> %timeit set(bigseq) >= set(bigsubseq)
4.36 ms ± 31.4 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)
```

The only time we get disastrously slow results is when we leave `container`

as a sequence:

```
>>> %timeit all(x in bigseq for x in bigsubseq)
184 ms ± 994 µs per loop (mean ± std. dev. of 7 runs, 10 loops each)
```

And of course, we'll only do that if we must. If all the items in `bigseq`

are hashable, then we'll do this instead:

```
>>> %timeit bigset = set(bigseq); all(x in bigset for x in bigsubseq)
7.24 ms ± 78 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)
```

That's just 1.66x faster than the alternative (`set(bigseq) >= set(bigsubseq)`

, timed above at 4.36).

So subset testing is generally faster, but not by an incredible margin. On the other hand, let's look at when `all`

is faster. What if `items`

is ten-million values long, and is likely to have values that aren't in `container`

?

```
>>> %timeit hugeiter = (x * 10 for bss in [bigsubseq] * 2000 for x in bss); set(bigset) >= set(hugeiter)
13.1 s ± 167 ms per loop (mean ± std. dev. of 7 runs, 1 loop each)
>>> %timeit hugeiter = (x * 10 for bss in [bigsubseq] * 2000 for x in bss); all(x in bigset for x in hugeiter)
2.33 ms ± 65.2 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)
```

Converting the generator into a set turns out to be incredibly wasteful in this case. The `set`

constructor has to consume the entire generator. But the short-circuiting behavior of `all`

ensures that only a small portion of the generator needs to be consumed, so it's faster than a subset test by *four orders of magnitude*.

This is an extreme example, admittedly. But as it shows, you can't assume that one approach or the other will be faster in all cases.

### The Upshot

Most of the time, converting `container`

to a set is worth it, at least if all its elements are hashable. That's because `in`

for sets is O(1), while `in`

for sequences is O(n).

On the other hand, using subset testing is probably only worth it sometimes. Definitely do it if your test items are already stored in a set. Otherwise, `all`

is only a little slower, and doesn't require any additional storage. It can also be used with large generators of items, and sometimes provides a massive speedup in that case.

`set`

solution is the best one. And the most readable one IMO. – dAnjou Jan 15 '14 at 11:07