ok I give up on pyobex ... it does not even distinguish between an accepted and a declined file transfer. Looking for other options : any suggestions ?
Is there any linter or code quality tool for Python that will check my code for places where I don't handle an exception? For example if I have get_foo() and it can raise an exception. So when I do foo = get_foo(foo_id) outside of a try block it will tell me.
@roganjosh What you are describing isn't particularly different from the PVM (Python Virtual Machine) sharing an object with another PVM. That's a fancy wording for the standard "multiprocessing".
It can be done by having either a shared object server, with the VM's just offering a thin proxy that does IPC API calls behind the scenes.
Or basically as PM2Ring mentioned, it can be done via shared object memory where both VMs access the same memory and interpret the raw data as objects.
@crypticツ I don't know any, and I doubt it would do what you want it to do. Pretty much everything can trigger an exception pretty much anywhere. No program even remotely comes close to immediately handling all possible exceptions.
You might want to read up on checked exceptions if you want to stick to the plan, though.
Interesting idea for sure. I think there'll still be quite a bit of overhead though. It helps you optimized the loop-through-the-MRO part, but everything else (check if it's a descriptor, get its __get__ method, call it) is still there
Actually, I feel bad for answering that. Literally the first step of debugging should've been print(list), and then the question would've been "why does this set contain threefour?" instead of "why does this set have a length of 4?"
No, because it does it with instance=None. Best case scenario is that the descriptor returns itself. Somewhere-in-the-middle scenario is that it returns a bound classmethod. Worst case scenario is that it's user-written code that goes KABOOM.
Yeah I just realized, the correct behavior would be to bypass binding for the __get__
In other words, your descriptor_get = field.__get__ is not correct
On one hand, I'm not sure if it's really a big deal. On the other hand, it's ironic to do it incorrectly in a function whose sole purpose is to do it correctly.
Descriptor TL;DR: A descriptor is essentially a property. It can have a getter, setter, and deleter function. (It doesn't have to have all 3, just one is enough)
If a descriptor exists in a class, and you access it as an attribute, then python will automatically invoke the corresponding method of the descriptor. Example:
@AndrasDeak Sort of, kind of, not really. A property always has all 3 of those methods; so you can't use a property to create a descriptor with only a __set__ method, for example
property can also be instantited. You're not required to use it as a decorator.
class C(object):
def getx(self): return self._x
def setx(self, value): self._x = value
def delx(self): del self._x
x = property(getx, setx, delx, "I'm the 'x' property.")
And there's actually a distinction between descriptors with only a __get__ method and other descriptors (data descriptor vs non-data descriptor, but I can never remember which is which)
def __set_name__(self, owner, name):
self._name = name
this also tells me that there are descriptor things that properties can't do
and the glossary says "Any object which defines the methods __get__(), __set__(), or __delete__()". Quite clear.
> Understanding descriptors is a key to a deep understanding of Python because they are the basis for many features including functions, methods, properties, class methods, static methods, and reference to super classes.
after years of being annoyed with them, and not having syntax highlighting with --classic, I ended up looking into customising my prompt. Now it's classic >>> style with highlighting.
In case you need it, I just added this to the corresponding block in ~/.ipython/profile_default/ipython_config.py:
c.TerminalInteractiveShell.prompts_class = 'IPython.terminal.prompts.ClassicPrompts' # same as ipython --classic, but won't affect syntax highlight etc.
> Python methods (including those decorated with @staticmethod and @classmethod) are implemented as non-data descriptors. Accordingly, instances can redefine and override methods. This allows individual instances to acquire behaviors that differ from other instances of the same class.
The property() function is implemented as a data descriptor. Accordingly, instances cannot override the behavior of a property.
OK, that's starting to make sense vis-a-vis yesterday's discussion about monkeypatching instance methods
Hmmm, is the whole "self is implicit first argument" related to methods being descriptors? And if I want to replicate that with an instance attribute binding instance.meth = new_method then I have to create a descriptor myself?
So is it true that you can only get the instance to be passed as the first argument when a function (method) is properly defined inside the class body?
So evidently object.__getattribute__ is indeed incorrect because it invokes descriptors, which I don't want. For classes I can get the dict with type.__dict__['__dict__'].__get__(cls), but how do I do it for instances?
I would've thought that there has to be a __dict__ descriptor somewhere in the MRO, but I can't find one in object or in my class
Well, I can find one in my class, but that's the one I don't want to call
>>> type.__dict__['__dict__'].__get__(Foo())
Traceback (most recent call last):
File "<stdin>", line 1, in <module>
TypeError: descriptor '__dict__' for 'type' objects doesn't apply to a 'Foo' object
There actually is a __dict__ descriptor in a custom class:
@Aran-Fey Yes, it's important to remember the interpreter will, of necessity or through lack of foresight, occasionally use access techniques unavailable to the Python programmer.
FWIW, that's basically why I have a skeleton for a Cython version of asyncstdlib. Implementing a proper aiter is much simpler with C access, for example.
If you need a clueless outsider's take: yes, that's what it looks like
assuming getattr_static is supposed to look up instance dicts
> Note: this function may not be able to retrieve all attributes that getattr can fetch (like dynamically created attributes) and may find attributes that getattr can’t (like descriptors that raise AttributeError). It can also return descriptors objects instead of instance members.
I have time series data of patients where each row represent a hourly record of patient. There are multiple rows/records of each patient. I am trying to make age categories using this code. df_n['AgeCatg'] = pd.cut(df_n['Age'], np.arange(9, 90, 10), labels=[f'{x}-{x + 10}' for x in np.arange(10, 89, 10)]) But the problem is it deal each row as an individual patient. There are 40k patients and 150k rows. I want age categories be made as per patient ID (P_ID). Is it possible?
Just wondering, do CPython objects have a real dict__dict__ anymore? I remember some talk that hinted at keys being shared between instances.
@Aran-Fey True. PyPy objects usually act as if there are hidden __slots__ – in fact adding __slots__ doesn't change their memory layout. I think it's one of the "standard" PyPy dict strategies, though.
Just make sure to add the part about WARRANTY OF ANY KIND, EXPRESS OR IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY, FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT and you'll be fine
Can someone take a look at this answer? What's the rule on copying code from another site, but linking to that site? I guess it's okay, but I'm not sure...
It cannot be plagiarized if they link the source. It is specifically "Plagiarism is presenting someone else's work or ideas as your own" which they clearly can't do if they link to it
I don't think it's particularly egregious in this case, especially when they hint that they modified it to the specific use-case (I haven't cross-reffed to see what changes they actually made). I can imagine plenty of questions I've had where they'd be answered directly by the docs but I wouldn't have found it because I didn't know the term I was trying to search for. Leaving it be seems the easiest option, as you picked :)
Contractors in London can get ~approx that wage, but that's a push. It certainly wouldn't be anything close to an average in the UK. Even with Silicon Valley aside, that's one hell of an average pay figure
To the point that I'd wanna call bull. I don't know how you could get those figures
I mean if they want to make a point that the latter is so much cheaper, they could use "as much as" for the first figure and "as low as" for the second figure while being technically correct
Yeah, agreed. It's a sensationalist figure that doesn't really help with their narrative
In any case, it's interesting to consider wages in a per-minute fashion (which I hadn't done before, and it's definitely different than looking at wages in a per-hour basis). If you imaged some poor soul stood next to you feeding those coins in every minute to keep you running
You could, based just on contracted hours, though? That's all I'm doing. Back-of-envelope division to get a rough figure. We have to report our ours on a per-customer-project basis each week and I never know what to put because... well, am I working now? Probably; I still have all my servers running and crunching numbers, and it's way past my working hours
It would be inaccurate, but I'd argue that it isn't meaningless when you think about what your time is theoretically worth per minute
I spent the weekend fighting this stupid lunch break issue all over again. I can't decide whether that was work, or pride being blended in with what I'd just do for my own curiosity in the first place. I'm talking about a nominal cost-per-minute, not what you actually do
It only counts as developer time if you're pressing a key on your keyboard. If you're just sitting there thinking, you're an office decoration
So if you take your day's wages and divide it by the 45 minutes or so where your fingers are actually exerting force on keys, then that's your true developer-minute
I don't trust the sphinx documentation enough to even bother going through the change log. For a documentation tool, it's surprisingly poorly documented.
Honestly? Not a bad move. They have plenty of work and cleaning up to do. The thing's a mess, although that mostly applies to the under-the-hood stuff.
...which, apparently, hasn't gone through quite as many changes as the frontend. I have written a bunch of "plugins" that monkeypatch various sphinx internals, and only one of those broke. Was like a 5 minute fix.
Yeah, sphinx themes have changed tons. I'm not even that involved with it, but I do know that over at Salt we ran into quite a few issues trying to upgrade
Alas, I have no good bad jokes from today. We typically open a Friday meet with a bad joke, but they're not reportable in any way. They just... unfortunately exist