Question for all of you: why is the SEO for Python doc so messed-up wrt versions: preferring 2.x over 3.x, and 3.1 over latest 3.x? When I google for "python collections.Counter", the #1 hit is 2.x, and for "python 3 collections.Counter", #1 is 3.1, followed by #2 being 3.x. Who should I contact about this?
@AaronHall I can't sort it out that's why I asked here. I doubt the answer has to do with page title, it's probably among other things due the number of backlinks, which in turn depends on #1 SEO it, so it's a vicious circle. By now 2.x documentation should be well below 3.x, and how on earth is 3.1 still top...
I have a dictionary` stores characters of a string as key and their frequency as value. I want to create a heap according to the frequency of the character. How can I do it with heapq?
@AaronHall Interesting. The individual pages may have roughly the same text for each individual object, but their outlinks to other stuff from the same version certainly don't...
@smci Google's SEO docs say nothing about "documentation" or "versions" in that sort of context...
user10984358
05:19
I seem to have got into the habit of having names like “x_file_obj”, “y_match_obj”, “z_path_obj” in my code. x, y and z are what that gives it a meaningful name. Is this behavior of mine bad and not recommended? Should I just use x,y and z as names and type annotate? I always found it an extra step.
@TheNamesAlc to give a contrasting opinion, I frequently do the same if it's some object that I'm going to use throughout a long function of data processing e.g. if I need to run a query at the start to build some baseline mappings
user10984358
08:23
Most of the time I just name “type_obj” if it’s a temporary variable like a file handler or regex match object. Maybe I’m just used to having names this way cuz I don’t use a fancy IDE that shows me associated methods/attributes when you do ctrl+space. I tend to do the way roganjosh does. Thanks for the suggestions both of you.
Contrasting with the other opinion you got, that is. I often read the appended _dict as a quick clue that it's something I defined maybe 15 lines earlier whereas users is something more throw-away, if that makes sense. That's obviously not a rule but it makes it "more global/official" to my mental parser
@TheNamesAlc Seems like hungarian notation to me. Personally, I feel it's redundant, distracting and hard to maintain.
IMO the name should express the meaning, e.g. arguments, and be relatively generic. If you refactor the concrete implementation of a variable, e.g. List[str] to Tuple[str], the name of the variable should not need change.
If you feel the type of a variable is important, annotate it. This will also give proper tooling support.
user10984358
09:22
Didnt know there was such a notation! Might as well get into he habit of annotation then
My primary recommendation would be do use a fancy IDE. Python's strength is its ecosystem, you are shooting yourself in the foot if you don't use the tooling available.
`Possible CUDA driver libraries are found but error occurred during load: /lib/modules/5.3.0-28-generic/updates/dkms/nvidia.ko: only ET_DYN and ET_EXEC can be loaded`
Stuff like this edit makes me grumpy. It was only after rolling back that I realised that it was the OP that approved the edit but is this at all a reliable indicicator? As far as I'm concerned, the edit should not have been suggested (in regards to the missing ] in the first place). If the OP accepts that edit, should the assumption be that they genuinely made that very mistake in transcription?
Or, are they just going along with something they think other people want to see
Totally agree; I can definitely see myself accepting that edit if I was in their position. I'm still thinking my rollback was correct (the OP went on to re-implement it themselves)
Just a shame that this seems like a really-solid instance of where community moderation is genuinely unwelcoming; the OP (in hindsight) did what they thought was right in accepting, only for someone else to come and just tell them they were wrong on accepting a fix on what they did wrong the first time :/
I haven't touched on the OP themself, just why I rolled back. I don't know how how to make it coherent for the OP in this particular situation, only to say why the editor was incorrect
Hopefully not. It's easier for me to drop the conundrum from my mind given the fact that the question itself is cv-pls material from multiple angles anyway
@JonClements We went to watch A Foreigner's Journey last night. I'm not sure whether you listened much to either band (but you definitely have an American slant on taste! :P ). They were very good. Nobody told me it was a tribute act; I thought it was a joint tour, so I was constantly wondering "why the yam are they playing in Holmfirth?" until we'd set off
@ParitoshSingh Thanks for the dupe suggestion. Now we can start a debate on whether they accepted it because you've made a power play :P (joking)
I've been reading through Open Sourcing a Python Project the Right Way and got a bit overwhelmed. It feels like a decent 50% would have to be cargo-culted in if I were to try work one of my projects into opensource, or I could never actually build the product
Since we have a few people leading open libraries, I'm curious whether you could (sensibly) cargo cult this general framework and expect others to take over in particular parts if you manage to create something useful
@AndrasDeak Sure, I guesstimate badger will have a lot to say. But there's a crap load more to that than just setuptools in there :)
"Tools and Concepts" is a big list! I don't know whether it's realistic to try start putting something together with all of those capabilities in place, but you could certainly design the project to make them possible if there's a chance you could snag people that can help
Which makes me think it's only got more complicated since due to new automated tools, rather than things being outdated (a lot of the files e.g. tox are still in big libraries)
well, you don't need to include all the available tooling. CIs are all the hype, but simple/static packages don't really need them and thus avoid >50% of the really overwhelming stuff
the rest, I'd say, got easier
after working just short of a year with poetry, I'd still recommend it. that one alone already handles nearly all the publishing work I have to do
seems to be a good guide though, just a little outdated with a few concepts/decisions
if you now get wim to chime in, you might even get a qualified opinion which parts are good
That's great; thank you. I have, for many years, believed that I can rebuild jsprit in numpy and build a GUI on the front on it with Flask. OpenDoorLogistics did it, but it packages the Java solver in. That, in itself, is a ridiculous amount of work
But I did it for machine scheduling with no precedent in my current job. I just have no idea about how to build a decent generic API - all my code was targeted to a specific problem. That's weighed in on my debate about learning a Java-like language to try think about interfaces more. If I'm gonna do that, I might as well open-source it too
But I've just hit a dead end where I can't learn any more about decent software design now when I just keep working on my own. I can't ask questions anywhere like SO and I wouldn't even recognise issues in my own code on its overall structure.
But functionally I've almost matched the speed of the jsprit solver in another real-life domain, in Python and with more constraints, so it's maybe worth a pop
If nothing else but for people to crap all over the API and make me think about problems outside of a particular problem :)
@roganjosh django has no chance, we will mainly look at flask (most experience already) and aiohttp (most promising given the problem), and also some basic exploration of popular others like cherrypy and falcon, to see if they are surpisingly amazing
so, flask, aiohttp, and fastapi got tested in the end. I was very happy with fastapi and wrote the first version of the service with it. We ended up switching to flask because some analysis showed that 1) the io blocking tasks that i expected did not matter enough to make a server with async necessary, 2) the team I would be working with only had experience with flask (minor point, but not irrelevant), 3) the same people felt nervous about fastapi not having a 1.0 release yet,
4) we have to use a a message protocol for which flask had a plugin and fastapi did not
so in the end we went with the better supported / more stable server, because we didn't strictly need any of the fancy new stuff the the more modern frameworks had to offer
.. but if it was up to me, I'd still go with fastapi and just write the missing plugin myself
I have a funeral to go to tomorrow so I need bed and probably won't reply tomorrow, but I'm really grateful for you sharing that and I'll go through the steps the day after