I am trying to write an algorithm that would **pick N distinct items from an sequence at random, without knowing the size of the sequence in advance, and where it is expensive to iterate over the sequence more than once**. For example, the elements of the sequence might be the lines of a huge file.

I have found a solution when N=1 (that is, "pick exactly one element at random from a huge sequence"):

```
import random
items = range(1, 10) # Imagine this is a huge sequence of unknown length
count = 1
selected = None
for item in items:
if random.random() * count < 1:
selected = item
count += 1
```

But how can I achieve the same thing for other values of N (say, N=3)?

`random.sample(your_collection, N)`

."without knowing the size of the sequence in advance"but then your code example shows you using an upper-bound`range(1, 10)`

. Is this really an XY question for asking "How to determine/estimate upper-bound of iterator length (without iterating)?". For example, if it was a text file, we simply get(/estimate) the file size, then divide by an estimated average/max/min line length (in characters). (and for Unicode, estimate character length in bytes)As of 3.6/PEP 424, objects can now optionally have aCan I speedup an iterable class when I know it's length in advance?. And also, it's generally not necessary to call your entire file into memory to estimate its line-length/record-length/whatever. So, what type of data are you handling, and how do we efficiently estimate (upper-bound) for its length?`__length_hint__()`