12:13 AM
@flawr It's the operations with them that are scary :-)
Yeah, I'm still in the "resisting" phase with Git...
If you want scary, here's scary:
```In [295]: import numpy as np
...:
...: arr = np.zeros((3, 3))
...: np.einsum('ii->i', arr)[:] = 42
...: arr
Out[295]:
array([[42.,  0.,  0.],
[ 0., 42.,  0.],
[ 0.,  0., 42.]])```
I learned that a few days ago
Yeah, Einstein summation was more or less what I was thinking of
In einsum `'ii -> i'` is the same as `diag()`, except the former returns a writeable view whereas the latter does not
@LuisMendo I'd expect that you don't see them that often, partly because they are not particularly fast
`einsum` looks a lot like code golfing then
It does. Einstein convention itself was code golf.
12:17 AM
Yeah, common subindices imply sum. Or something like that
It's originally more specific: a covariant and a contravariant index together imply a sum. Because those are the kinds that contract in general relativity.
so basically `M_{ab} x^a y^b`
BRB googling covariant and contravariant
for the record this is what you'd do without einsum:
```In [301]: arr = np.zeros((3, 3))
...: d = np.diag(arr)
...: d.flags['WRITEABLE'] = True
...: d[:] = 42
...: arr
Out[301]:
array([[42.,  0.,  0.],
[ 0., 42.,  0.],
[ 0.,  0., 42.]])```
@LuisMendo oh, no, don't do that, it's past 1 AM! :D
:-D
so what I'd actually do is `arr[range(n), range(n)] = 42`
12:20 AM
which is confusing for a long-time user of Matlab, where that would imply filling the full array
Well, yeah, but that's fundamental numpy. Pretty much the first thing you find when you dip in a toe.
I know, I know :-)
Ugh. Matlab doc is really the best
So... bed time. Good night!
Same. Night.

8 hours later…
7:58 AM
@LuisMendo @AndrasDeak einops.rocks
I know I linked it before but if you love `einsum` you'll love this stuff!
basically it also lets you do things like `c h w -> (c h) w` (Let's say we have an image with `c` channels, we can concatenate all the channels into the height dimension to get a B/W image the channels.)
and much more
@flawr meh
@flawr I can do that with reshape
@AndrasDeak the point is that you can do all these operations in one go, let's say you want to do a matrix multiplication afterwards, you could do that in one einops operation
ok that was a bad example
but I think the point is that as soon as you do a transformation that has to rearrange data and doesn't just modify the strides, you have an advantage with using stuff like this
cause you don't have to execut multiple calls from python
9:01 AM
@flawr I get it. I just don't like the kind of self-hype einops does.
9:15 AM
ok I understand, but I do really like the gif:)
9:35 AM
@AnderBiguri I am good thank you! It's been a while :)
10:04 AM
@flawr scary :-D
10:20 AM
@flawr lies

5 hours later…
3:18 PM
@Adriaan 1 Hz = 2π rad/s. So, I think this question is okay!
3:40 PM
True

7 hours later…
10:36 PM
I think I'm completely overthinking this
Let's say we have some numpy array with `a.shape = (100, 3)`, as well as some indices e.g. `ind = [3, 14, 15, 92]` Now I'd like to partition `a` by extracting the rows indicated by the `ind` and all the other rows. So `x = a[ind, :]` and `y = a[???, :]`. Is there a neat way to do this?
I was thinking of making a mask for logical indexing, or alternatively do something like `yind = list(set(range(a.shape[0]))-set(ind)); y = a[yind, :]`
Now that Andras is not here: Matlab's `a(~ismember(1:end, ind), :)` is way better
10:58 PM
>:|
`np.isin(np.arange(a.shape[0]), ind)`
so what Luis said, but I think `isin` is preferred these days
and you'll need the mask itself to negate it of course
@LuisMendo @AndrasDeak thanks for the suggestions!
yeah I went with a mask for now
@LuisMendo note that you could do `a[~np.isin(range(a.shape[0]), ind), :]` which is barely worse. `1:end` working like that is still crazy :P
@AndrasDeak `isin`'s name at least sounds more reasonable than `in1d`
Yeah, `end` working like that in indices is kinda unexpected. But very expressive, I love it
@flawr oooh I've got it
got what?
11:12 PM
```In [318]: ind = [3, 14, 15]
...: complement = np.setdiff1d(range(20), ind)

In [319]: complement
Out[319]: array([ 0,  1,  2,  4,  5,  6,  7,  8,  9, 10, 11, 12, 13, 16, 17, 18, 19])```
Luis' in1d remark made it click
@AndrasDeak that's what I wrote in more words:)
I do love the `< >= - +` etc for sets:)
D: wait they didn't define `+` for sets???? D:
@LuisMendo I just wondered why you suddenly started using `:)` instead of `:-)` for smileys
@AndrasDeak ok fair. but too bad it's not the same operator as for lsits
I think + and - should go together, whereas for sets & and | go together
it's not just sets though, by the way
```In [323]: {1: 2, 3: 4}.keys() | {5: 6}
Out[323]: {1, 3, 5}```
oh you can even `|` dicts directly
11:19 PM
yup
@AndrasDeak but OR-ing a dict-keys object with a dict tastes a little bit weird
@flawr yeah, the assumption is that dict keys are set-like, and that iterating a dict iterates over keys
so it sort of makes sense, but it does look weird
and it's probably rarely useful
too bad, symmetric differences don't work for dicts:)
would have been fun
not even & works for dicts
hm
11:22 PM
but you can use a `collections.Counter` which is a multiset if you squint a bit
```>>> Counter({2: 3, 4: 6}) - Counter({4: 2})
Counter({2: 3, 4: 4})```