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02:39
I have this python script working on macbook but not on the raspberry pi. The error give n was:
Traceback (most recent call last):
  File "Indentify.py", line 22, in <module>
    signatures = interpreter.get_signature_list()
AttributeError: 'Interpreter' object has no attribute 'get_signature_list'
Code snippet:
interpreter = tf.lite.Interpreter(model_path=TF_MODEL_FILE_PATH)

signatures = interpreter.get_signature_list()
pip3 freeze gives: tflite-runtime==2.10.0
Anyone might know what the problem is?
 
5 hours later…
07:20
@TelKitty without knowing the code, one guess would be that the raspberry pi use py2
rPi uses python3
08:01
@TelKitty Do you have only a single Python installation?
Using the pip aliases can give false positives. Prefer to use python -m pip where python is the interpreter you are actually using.
08:16
Hey, Anyone know how to turn this piece of xpath to a working selenium xpath? //*[@id="invoices-list-view"]/div[2]/div/div[1]/div/div/div/input
Already fixed it by going for a other kind of xpath: //div[@class='container overview-page-container']//input
 
5 hours later…
13:08
@MisterMiyagi 'python3 -m pip freeze' gives me the same result: tflite-runtime==2.10.0
And you're also executing the script with that same python3?
Oh my, just gave The Ask Wizard a try and... no wonder we get so many crappy debug questions on SO.
Every question is a debugging question, apparently.
Looks like I do have a few installation of tensorflow floating around, mainly because none of them worked properly on rPi.
But still, they are still tensorflow 2.
13:24
Well, evidently you need something newer than tensorflow 2(.2)
The same code worked on Macbook, with tensorflow 2.1
The source code disagrees
It's been added in 2.5 as far as I can tell
Did you check that you were inspecting the right Python version on your Macbook? ;)
This is on my Macbook, the same script works on my Macbook.
Yes, well, 2.10 is newer than 2.2
13:43
So what do I do? Should I uninstall tensorflow. How do I get python3 to use tflite_runtime 2.10.0 instead?
NVM, I think I might got what the problem was ...
Thx.
Spotted on a website where approximately 50 pixels are chopped off on the left side: width: calc(1300px)
14:06
@MisterMiyagi And of course the Ask Wizard uses the notorious Stacks Editor, so it mangles code blocks meta.stackoverflow.com/q/421118/4014959 and image links meta.stackoverflow.com/q/421545/4014959 (deleted).
good thing I never tried it then
I think they should take notes on how github make their "template" for making issues. It's basically what Ask Wizard is, but with more confetti
On an unrelated note... why is the asyncio API requiring programs to be so verbose?
try:
    await asyncio.wait_for(event.wait(), 0.5)
    break
except asyncio.exceptions.TimeoutError:
    pass
I noticed that too. I tried asyncio a while ago when I asked about websockets, but went and put that back in the back burner.
It's not even because it's verbose, to me it just feels unintuitive. Maybe it'll come to pass when I actually do need it for something
14:27
How would you make that less verbose?
I was hoping for something like this:
if await event.wait(0.5):
    break
Ah, a builtin timeout. Would make sense I guess
The entire try-wait_for-except machinery just feels like bloat. At least for such simple cases.
@Aran-Fey facepalm Maybe they originally tried to dynamically adapt to the actual window width, but they couldn't get a satisfactory result. But they left the calc() call in there just in case they want to try again later.
14:59
morning cabbages, folks!
Anonymous
15:20
If I have a method that should retreive a list of files from a directory, would you use property or a normal method?

def get_files(self) -> list[Path]:
    pass

@property
def files(self) -> list[Path]:
    pass
Anonymous
I don't really know at all times when to use properties vs get_whatever()
I would use a method for that.
It pretty much boils down to "do you want to use it as self.files or self.files()?" I'm lazy, so I prefer properties when no parameters are required. That said, you could pretty easily extend functionality with a method (add glob-style filters, etc)
The output can change at any time and it may take a nontrivial amount of time, so having the appearance of an attribute can be misleading.
@MisterMiyagi oh 100% this!
Anonymous
15:24
@MisterMiyagi Yeah, that's true, a good mindset! :)
Anonymous
A property should refer to something that probably is not that dynamic.
Anonymous
@inspectorG4dget And yeah, properties removes the extendability, which is kind of bad in this case.
Anonymous
What about this case?

@property
def valid_platforms(self) -> list[Type[Platform]]:
    return [Win64, Linux]


def get_valid_platforms(self) -> list[Type[Platform]]:
    return [Win64, Linux]
Anonymous
The return value is kind of constant, so a property is perhaps nice here?
Anonymous
"get_valid_platforms" looks a bit nicer though.
15:31
I vote for a property that returns a set :P
Anonymous
Yeah, a set should definitely be used here, good catch
Anonymous
:D
@Warcaith I assume the valid platforms are fixed. So there's no need for the valid platforms set to be an instance attribute: it can be a class attribute.
Might want to use an immutable type for that, then.
Anonymous
:55548878 Oh, it does actually look like this in the parent class.

@property
@abstractmethod
def valid_platforms(self) -> set[Type[Platform]]:
    pass
Anonymous
15:42
@PM2Ring I could however have a class attribute in the subclass and just return that in the property.
Anonymous
@PM2Ring I don't see any benefit from that however, or is there any?
Anonymous
@MisterMiyagi Is there an immutable set?
@MisterMiyagi Yes, a frozenset.
Anonymous
Ooooh, why didn't I know that, lol.
Anonymous
15:44
Cool
Anonymous
@inspectorG4dget ?
@Warcaith It saves a little RAM. If you have a lot of instances, the savings can be substantial. OTOH, the lookup time is slightly slower.
Anonymous
@PM2Ring That's true. So, like, a private class attribute that the valid_platforms property refers to and returns, right?
Probably just a public class attribute? Does it really have to be an instance attribute?
@Warcaith It was spam. Now it is dead.
Anonymous
15:49
How would a person deriving from the parent class know that he/she should override "valid_platforms"?
Anonymous
@property
@abstractmethod
def valid_platforms(self) -> set[Type[Platform]]:
    pass

^
Anonymous
And if the parent classes uses "valid_platforms" in the constructor, how would it use a subclass "valid_platforms" if it's not a property/method, but instead a public class attribute?
@Warcaith Well, documentation. But yeah, making it an abstract property isn't unreasonable
@Warcaith self.valid_platforms, as usual
Or type(self).valid_platforms, if you're feeling wordy
Anonymous
:55548958 Wouldn't this always use the Parent's "valid_platforms" when running "super().__init__()"?

class Parent:
    valid_platforms: frozenset[Type[Platform]] = frozenset([Win32, Win64, Linux])

    def __init__(self):
        print("Hello, I would like to use valid_platforms!")
        use(self.valid_platforms)

class Child:
    valid_platforms: frozenset[Type[Platform]] = frozenset([Win64, Linux])

    def __init__(self):
        super().__init__()
Anonymous
@Aran-Fey That would perhaps work
15:59
If the child class overrides something, then you get the value from the child class
Anonymous
@Aran-Fey I see. Gaaaah, now I don't know if I should do it like the code above here or use an @property + @abstractmethod. :'(
Anonymous
Haha!
I'd say that's one of those "flip a coin and get on with your life" decisions
Anonymous
Haha right.. if it was that easy..
Anonymous
:')
Anonymous
16:05
What about this? ;)

@property
@cached_property
def valid_platforms(self) -> frozenset[Type[Platform]]:
    return frozenset([Win64, Linux])
Anonymous
I wouldn't need the class attribute then.
Anonymous
Well, okay, the class attribute removes some unnecessary memory allocation still.
Anonymous
As all instances will cache their own frozenset with this code above.
Anonymous
Okay, one more question @Aran-Fey
Anonymous
Would you make the attribute uppercase, as it acts like a constant?
Anonymous
16:10
class Parent:
    VALID_PLATFORMS: frozenset[Type[Platform]] = frozenset([Win32, Win64, Linux])
Anonymous
Or is it even a constant, if I override it in derived classes?
Anonymous
(I know that constants is something does really does not exists in Python, but w/e)
If different child classes have different values, I'd probably not consider it a constant
Not super sure about that one, but keeping it lowercase seems like the safer option
@inspectorG4dget FWIW, that spammer posted the same thing on SuperUser 15 minutes later. They're now on Smokey's blacklist: chat.stackexchange.com/transcript/message/62399422#62399422
@PM2Ring oh wow!
Anonymous
16:26
@Aran-Fey Yeah, exactly. It should really be constant in the class scope, but could change between subclasses.
17:16
@Aran-Fey am I reading this right that it's tough luck on pythoff? No inspect.signature there...
Huh, I didn't know that. But yeah, looks like you're right
I'm loosing it with this one. Someone still willing to help that one out ?
0
Q: AttributeError: customTkinter attributes not recognised despite installation

Dominic CulyerI have downloaded and installed customtkinter, however when I attempt to import and use the customtkinter attributes, I get an error message saying they are not recognised. I have created the following code to test a new module I downloaded (customtkinter). import customtkinter app = customtkint...

Hold on: no inspect.signature, no problem.
I wonder what python 2 IDEs use :)
There is getargspec, which is similar in function, but there's no magic __signature__ dunder you can assign to
Although, if you're feeling adventurous, you can try swapping out the function's code object :D
@Aran-Fey yyyeah, I think I'll pass, thanks :D
Although the code I'm fixing originally generated a lambda in a string and evalled it so...
Nobody ever follows me past the warning signs. Sigh.
17:38
@AndrasDeak--СлаваУкраїні oh! many thanks. I'll make a more deliberate effort to remember this for next time
No worries
Ugh, inspect.get*argspec has None for no defaults instead of empty tuple :/
18:12
Welp, and functools.wraps() doesn't copy the signature in pythoff.
@AndrasDeak--СлаваУкраїні I'm curious, what's pythoff? I looked it up but didn't find anything relevant
Ooh, nvm, it's the name for py2?
py2.8, yeah
at least I think it is, since the only really relevant link I found was this: news.ycombinator.com/item?id=13144713
What do you guys think when making a calculator for multi step linear equations, making an ast tree parser and generator to calculate, or just iterating over the equation and grabbing things and adding / subtracting them
yep, was right I guess, sorry for the unnecessary ping there Andras :) : chat.stackoverflow.com/transcript/message/52153902#52153902
18:28
:o thanks, this one is better yeah. It also highlight the joke, since I didn't get it until now. on -> off
18:38
I always accepted it without thinking about it, but Warcaith's question made me think about attribute access, and I realized it's actually weird that __slots__ lead to faster attribute access. Since slots are descriptors, python has to loop through the MRO until it finds the slot. How is that ever faster than a simple lookup in the object's __dict__?
I guess technically the __dict__ is also stored in a slot, but I'm sure that's special-cased and optimized
18:53
I thought the main point was less memory
Instantiation is slightly faster with slots in this case. This makes sense, as we’re denying __dict__ creation for new instances of the given object. Dictionaries generally have more overhead than tuples or lists from medium.com/@stephenjayakar/…
don't know if it's the only reason, but would make sense if so
The bytecode generated for classes with slots and without is the same. This means that the differences in lookup are under how the opcode LOAD_ATTR is executed from the same link. There also some caching it does? In PyMember_GetOne, it uses the descriptor offset to jump directly where the pointer to the object is stored in memory. This will improve cache coherency slightly, as the pointers to objects are stored in 8 byte chunks right next to each other
ah, I should have posted this one instead, my bad: stackoverflow.com/a/28059785/12349101 much more details.
ah yes, signature tl;dr Aaron post :P
19:09
Shame he doesn't explain why it's faster
So do we know for a fact it's faster?
Kinda. I timeited it, and it's a bit chaotic, but most of the time it is slightly faster
> if you have __slots__, the descriptor is cached
There's one piece of the puzzle
19:31
Time is an illusion, and speed is space over time, so speed is an illusion^-1
19:45
@Aran-Fey I did though, although only linked to it and the partial explanation (since I didn't want to spam).
@Aran-Fey also mentioned it :P
That's only a partial explanation though
the main reason that I also stated above for why it's faster is literally because it doesn't explicitly create dict, which has a noticeable overhead
That only matters for instantiation though. I'm asking about attribute access
^ That
oh, attribute access. Yeah you're right, didn't say anything about that
19:50
I assume the access speed improvement is due to the cache coherency.
that's what I partially mentioned earlier, but don't know if it's the only reason either
it's so verbose that I don't actually understand anything :D
@PM2Ring But that only comes into play when python calls the slot descriptor's __get__ method, right? I don't understand how it can find the slot descriptor faster than it can find an instance attribute
Maybe we should look at the bytecode. Or at least the dis.dis output.
Not much to see there
>>> dis.dis('a.b')
  1           0 LOAD_NAME                0 (a)
              2 LOAD_ATTR                1 (b)
              4 RETURN_VALUE
this is just as verbose, but more understandable I feel like: tenthousandmeters.com/blog/… it kind of complete the other github link above
20:04
@Aran-Fey aren't you timing that too?
The execution of the slot's __get__? I am. But all the work python has to do before that point should already be slower than looking up an instance attribute in the __dict__
I think I got it, but I could be wrong still. from stackoverflow.com/a/57055803/12349101
I can't paste the relevant part because it's too long, but I think it's the first four bullet points.
Actually, I guess it makes sense if the calling of the __get__ method is optimized away. It's probably not quite true that "the descriptor is cached"; python doesn't need the full-blown descriptor for anything, it just needs the offset of the memory address
yep, and that's why it's faster. the first four bullet point on the stack answer above also says it, and the tenthousandmeters's blog: It first tries to call the tp_getattro slot of the object's type. If this slot is not implemented, it tries to call the tp_getattr slot. If tp_getattr is not implemented either, it raises AttributeError.
I think if it's a dict, it ends up going through all those checks before looking it up. Might be the "overhead"
@NordineLotfi That doesn't explain anything for me, I'm afraid. "The object then looks through its own MRO for any descriptor objects that match the attribute name." <- If that's true, that should be super slow
I think you're getting tripped up by dual meaning of the word "slot" - tp_getattro is a "slot" in the C sense of the word, which is not at all the same thing as a "slot" in the python world
20:18
The compiler produces the LOAD_ATTR, STORE_ATTR and DELETE_ATTR opcodes to get, set, and delete attributes. To executes these opcodes, the VM calls the tp_getattro and tp_setattro slots of the object's type. yeah, you're right...
what about this one? stackoverflow.com/a/25101824/12349101 The comments of this also gives more details (surprisingly) on the implementation: github.com/python/cpython/blob/main/Objects/dictobject.c
I guess it doesn't directly/explain verbatim how it's faster for the attribute access, but it does explain why using slots result in less memory used vs dict. smaller footprint -> faster?
20:35
How does a smaller memory footprint make it faster?
Aaaahhh, I forgot about data descriptors. Finding the attribute in the instance __dict__ isn't all python has to do, it has to look for a class attribute as well
@NordineLotfi Ok. Martijn's answer makes sense. From his points 2&3: The object then looks through its own MRO for any descriptor objects that match the attribute name [...] If there are no data descriptors, looks at the instance __dict__ for the attribute name as a key.
class Demo:
    @property
    def foo(self):
        return 'class'

obj = Demo()
vars(obj)['foo'] = 'instance'
print(obj.foo)  # class
So if it has a __dict__ it's slower because it checks for descriptors before it looks in the __dict__
yeah. I think because when it's using a dict, it use the very last "check" so to speak, so it end up being slower vs when it's using slots, so it find the attribute faster.
yeah, there also the size (minimum and growth over time) which is smaller than with a dict, see the comment on the last github link of the cpython repo
(I got kevin'd by PM 2Ring I guess)
20:40
Sure. The main reason to use __slots__ is when you're making lots of instances & you want to save RAM.
yep. That's also why some people mentioned "testing it right". If you don't throw enough at it, you can't really see enough difference in speed between the two
@AndrasDeak--СлаваУкраїні I mean, usually if it's smaller, the time it take to do lookup/read on it should be faster, especially on larger workload, whereas if it's bigger (like with dict) it might take slightly more time, or at least that's how I understand it.
I'm probably seeing/understanding it wrong but that's how I see it, I think
on a related note: I think PyPy implement dict in such a way that it has next to no speed difference with slots. Don't know how it does it, but that's for another time maybe

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