I'm trying to find which module is faster to do parallel work? Does someone think this (https://pastebin.com/up06xPNR) is a good way to check which parallel module is faster in python?: The test is between multithreading, multiprocessing.Process+Queue, multiprocessing.Process+Manager.Queue, multiprocessing.Process+Pipe, multiprocessing.Pool map, multiprocessing.Pool map asyinc
@EnderLook if you want people to try your code, you need to make sure it will run. Paste the code you posted a link to in an interpreter and try to run it.
@AaronHall I would prefer to look for the faster implementation because my code will do some stressful work that takes time. Anyway, my family has just call me to have dinner so I must go, bye!
I'd appreciate any feedback for my first numpy answer: https://stackoverflow.com/questions/51940264/propagate-calculation-result/51940321#51940321. Is my assessment accurate? Am I missing anything from my very noobish point of view?
I feel like he wanted to explore some efficient methodologies but in several of the approaches he introduces unnecessary overhead.
anyway... On to more important topics: I'm trying to set up an asynch/await process for running many (200 ish) queries to a remote database. I'm referencing this link medium.freecodecamp.org/…. Anyone know of a clearer reference for me to be reading.
@piRSquared The OP's original premise or his benchmarks answer? Anyway even though the OP's premise was mistaken, the question is useful and the huge variation in performances is eye-opening.
hi, a problem. I'd want to generate a "request id" that would be as short as possible (sorry no guid) and as uniqueishis as possible. Problem: several computers and it could be unique among all, but clashes could be allowed; however, it should be forever unique on the single machine.
@AnttiHaapala I think I have a viable solution. How short is short? Why no GUID? Do you mean that each machine needs to be able to generate an ID that's definitely unique on that machine but which might possibly collide with an ID generated on another machine?
@AnttiHaapala Ok. You can use what's known as format-preserving encryption. Basically, it gives you a way to index into a larger shuffled sequence without holding the sequence in memory. So each time you need a new ID you just increment a counter, use that as your index into the shuffled sequence.
True, but that shouldn't be a problem. Even changing a single bit of the seed in my code makes a big difference in the outcome. Seeds to random.seed can be very long integers, strings, or bytes, and Mersenne Twister can use lots of bits in its seed. For my code, I recommend at least 128 bits of entropy in your seeds.
BTW, that code is most efficient if the sequence length is a power of 4. If you can guarantee that, then it's possible to optimize the code a little.
Another option, if you could use 128 bit IDs is to simply run a salt + counter through AES. But that's not much good if 128 bits is too big.
Hmm, my Spline.reticulate() code assumes that Spline.payload is always a string, but I've got one here whose payload is a list of Splines. Am I going to have to solve some graph problems today?
("But Kevin, I thought all of your work problems were actually thinly-disguised C#. How could you possibly have an attribute that's two different types?" This just happens to be the 0.01% of the codebase that's actually in Python.)
@AndrasDeak I mean... I could. The payload is only used for diagnostic purposes. (for now)
Ok, in this case I can reveal the actual business logic. By "Spline" I mean email.message.Message. The code that calls get_payload assumed that the return value is always a string, but it didn't account for multipart emails, where the return value is a list of Messages.
To avoid XY problem potential, I'm modifying a function that trains a TensorFlow model. On the completion of each training loop I want to provide the ability for a callback function to be called to report progress. In this situation I'm thinking that I want that callback to be keyword arg only
The function looks like this:
def train(self, early_stopping_steps: int = 10, min_epochs: int = 30, max_valid_ler: float = 1.0, max_train_ler: float = 0.3, max_epochs: int = 100, restore_model_path: Optional[str]=None) -> None
I don't want to have any ability for confusion with the optional parameter
But I'm wondering if that's a situation that would make more sense to just be keyword only?
@coldspeed and apparently coffee purists donèt want milk and sugar, but it gets added in and those teas yeah sure...but people also put milk in it too.
... that moment when I'm super excited about finding the function in pyramid docs that would do all I need and more, but realize folks from whom we derive the project have a too old version requirement.
@idjaw :) yes indeed! I mean, I think there's a solid call for it. In 1.8 they added the add_view_exception, arround the lack of which we do all manner of dorsal acrobatics to have a sane, testable api.
If your argument sides with improving testing, stability and automation for better feedback and bug resolution...you should be able to have a winning argument here.
@piRSquared It is a little disheartening when that happens. The OP may not appreciate your explanation, but hopefully the future readers will. Sometimes I look at the OP's profile before I answer, to see what their past acceptance rate is like, and to gauge if they just want some code to cargo-cult, or whether they look like they actually want to learn.