@AnttiHaapala Hmmm. What Aran-Fey said. :) I'm still not clear what the OP wants to do in more general cases, so I didn't post my answer. I didn't bother using itertools, because I wanted to keep it simple, since the OP is a newbie who's still struggling with simple for loops. For that matter, using next is probably a little too advanced.
repeats = len(data_2) // len(data_1)
letters = iter(data_2)
for s1 in data_1:
for k in range(repeats):
s2 = next(letters)
print(s1, s2)
> In 1998 Sussman and Steele remarked that the minimalism of Scheme was not a conscious design goal, but rather the unintended outcome of the design process. "We were actually trying to build something complicated and discovered, serendipitously, that we had accidentally designed something that met all our goals but was much simpler than we had intended....we realized that the lambda calculus—a small, simple formalism—could serve as the core of a powerful and expressive programming language."
@AndrasDeak Yes, Scheme is a lisp. I played around with gimp's script-fu a little bit, but I've never enjoyed writing in lisp dialects, with all those parentheses. FWIW, the Amiga introduced a Scheme variant for standardized installer scripts. I appreciated the concept, but hated working with the language. It was just too easy to create chaos with a misplaced parenthesis.
Last week I spent 3 days implementing memoized properties with dependencies (i.e. the memo is cleared if the value of another property changes); this week I'm on a quest to implement a pipeline that processes files but only ever writes the files to disk if it's absolutely necessary. After 3 days of working on this I now have a permanent headache and no end is in sight. I'm tempted to give up and just create a temporary file for each step in the pipeline
Why is writing bad code always so much easier than writing good code?
yes , when I create two dataframe they have all the same column etc..., the content are different
and surprise, when I make >>> pd.DataFrame(["A"]) 0 0 A >>> pd.DataFrame(["B"]) 0 0 B >>> a = pd.DataFrame(["A"]) >>> b = pd.DataFrame(["B"]) >>> a+ b 0 0 AB
so the string inside each cells are concatenated, its also possible to have like a list ? also set ? like that if have have the same value like : df1 and df2 have some cells some are different other are identical like
>>> {df1, df2}
Traceback (most recent call last):
File "<stdin>", line 1, in <module>
File "C:\Programming\Python 3.6\lib\site-packages\pandas\core\generic.py", line 1045, in __hash__
' hashed'.format(self.__class__.__name__))
TypeError: 'DataFrame' objects are mutable, thus they cannot be hashed
And it amuses me that the error message has "thus" in it. Very high class, pandas
@AndrasDeak my goal is too fused two dataframe, all the cells (mean row - column intersection) will be fused together, its work with string because my upper example shoow concatenated string
I just try : df1 + ',' + df2 and it show concatenated string with the comma between, so maybe after I can make some operation in each cell with apply ?
(df1+df2).applymap(set) gives you a df of sets, but it probably only does what you want when all the elements in the original data frames are strings of length one
I'm surprised I haven't been able to find an equivalent to multi-iterator map() even after five minutes of googling
so yes the string will be not always equal to 1 so apply to a function after the concatenation with a distinguishable text separator like comma, hyphen , ore any symbol, it will be better if after apply to a custom function, that split the string, convert to a set and return the value ?
the fact I work in familly tree data, assuming two poeple have make a tree for the same guy , but the informations given can differ a bit, each familly tree are in a DataFrame.
If I want to merge the data , I can Have a long dataframe with lot of column, but if I have like 100 Tree for the same guy (because lot of cousins lol) , il will be a huge dataframe, so,
My goal is to have all of it in one, keeping the diffrent data if the string are different
Skimming the pandas documentation, I get the strong vibe that Series objects (and by extension, DataFrames) should ideally contain only scalar values
Numbers: good. Lists and sets: bad. Strings: tap dancing on thin ice
> The best way to think about the pandas data structures is as flexible containers for lower dimensional data. For example, DataFrame is a container for Series, and Series is a container for scalars.
Pandas is only fun if you can use the super optimized code paths that blaze through a million elements with half a millisecond worth of C. If you're passing a string concatenating lambda to applymap, you're probably not getting that
ammmh I see, so , my data are stored in dataframe, (they're from a HTML table converted to Dataframe, from an requested URL by requests) maybe I can do some operation in the data and after use panda with these fast method
@Kevin: you're basically right. Strings are treated as scalars in this context because they have to be, but lists cause problems. There are supported methods which can generate them like .str.split(), but basically everything's better if you use expand=True which just makes more series rather than cramming a list into an element.
Contributed a bit to an open-source project yesterday. If by "contribute" I mean "infiltrated the dev chat room, said 'hey, the spline reticulator is giving me widgets, not sprockets, could the problem be in ThingFactoryMakerBean?', and the core dev saying 'yeah probably, most likely you need to add a conditional at ThingFactoryMakerBean:preInitializeReticulator:2342, you wanna make a pull request?'"
Followed by two hours of him guiding me through the build process for the project, so I could make a change that would have taken him fifteen seconds to do directly.
Message from core dev: "your PR correctly returns widgets or sprockets depending on the appropriate scenario, but then you unconditionally galvanize() the result. Sprockets are already pre-galvanized, so this is pointless for them". Oops.
The documentation seems to almost go out of its way to not give a name to the thing returned by __enter__
The PEP admits to this ambiguity:
> The code in the body of the with statement and the variable name (or names) after the as keyword don't really have special terms at this point in time. The general terms "statement body" and "target list" can be used, prefixing with "with" or "with statement" if the terms would otherwise be unclear.
so "target list" if multiple names are bound by the with statement. I guess just "target" if only one name is bound?
Hmm, not sure if people would understand that. Maybe I should just rephrase my docstring to something along the lines of "the context manager yields a Bar object"
Yeah, the term is formally defined in the PEP a paragraph or two above the bit I quoted
> This PEP proposes that the protocol consisting of the __enter__() and __exit__() methods be known as the "context management protocol", and that objects that implement that protocol be known as "context managers".
I have a piece of code which runs other pieces of code through something like the following: cmd = cmd.split()
proc = subprocess.Popen(cmd,stdout=subprocess.PIPE, stderr=subprocess.PIPE,universal_newlines=True), now what I'm looking to do is properly capture instances where the code that is being called encounters either an error or a sys.exit line and raise an exception or something but I'm not sure how to go about this, does anyone have any suggestions?
@cd123 Well, you could check the returncode attribute of your Popen object after it terminates. Most well-behaved programs return a nonzero value if an error occurred.
@cd123 I'm pretty sure it does. But in general, you should try to avoid using subprocess to call one Python script from another one. It's better to use import, in which case you can easily catch exceptions thrown by the imported script with a simple try-except
To rephrase, you can tell what number was in sys.exit's first argument by inspecting the returncode attribute, but you can't tell if the program terminated because of sys.exit or for some other reason
@Kevin Whilst having the differentiation between sys.exit and any other error would be useful if it's not possible unless I use import or something then I can live with that. If the returncode attribute can act as a test for program termination then I can use that for now until I further my understanding.
Keep in mind that sys.exit(0) means that the program ended successfully, so even if you come up with some way to detect exit() calls, it may not make sense to consider an exit call an error in all cases
Even though it's technically terminating the program by raising an uncaught SystemExit exception. Not all exceptions are errors :-)
@cd123 sys.exit is not an error. What you're looking for is the returncode; 0 means a successful exit and everything else means the process terminated because of an error
Mm hmm, it's not productive to mentally categorize possible termination events as "program ended successfully | sys.exit was called | an exception was thrown" because those aren't mutually exclusive. The only categorization representative of reality is "program returned 0, signaling a success | program did not return 0, signaling an error"
All that said, perhaps you could distinguish between "error because exit() returned a nonzero value" and "error because an exception was raised and not caught" by inspecting the contents of stderr, since exit() doesn't print a stack trace... I don't think it's a good idea, however. A program could easily fool any stack trace detection algorithm by printing a string that looks like a stack trace, then exiting with sys.exit
@Kevin So to handle this kind of stuff better in the future what is the general approach, using a combination of try and except with importing or something else?
The documentation is inconsistent in its usage of the term "value" in a way that implies that "value" can mean both "an object" or "the non-id, non-type part of an object". For example, Expression Statements says "procedures return the value None". This implies that the None object can also be considered a value.
Perhaps context is important here. If you're working with Python code, you can say that an object is a value. If you're working with the C infrastructure that makes up Python, you should think of PyObject instances as objects, and all of its fields (except ob_refcnt and *ob_type) as the value of that object
index, columns, values = zip(*((x, y, z) for (x, y), z in d.items()))
i, r = pd.factorize(index)
j, c = pd.factorize(columns)
n, m = r.size, c.size
b = np.zeros((n, m), np.int64)
b[i, j] = values
pd.DataFrame(b, r, c)
In the spirit of high-level languages, the vast majority of the time you shouldn't give a dang about how an object's data is actually represented in memory, so you ought to pretend the second definition doesn't even exist
Maybe 1 and True have the same value at the CPython level, but you don't care, all you need to know is that 1 == True and 1 is not True
3 of them follow a policy of "not during work hours... Ok, maybe on Friday afternoons" which is tacitly endorsed by their superiors, and 1 has a policy of "here, fill up your trunk, you will need it on your journey"
Only the latter friend is in a position to actually share, so it's not the cornucopia that you might imagine
I dunno, 1K+? Large enough that you don't even recognize anybody. And NumberFirm is more a number company than a tech company, even though we have many techs.
@Kevin: well, not every technology is computer technology. ;-)
i am using python ConfigParser to read a config and using its set function to update values for keys. This works fine but it removes comments in the cfg file which are important and should not be removed
My test scripts are designed to run in our test environment (makes sense, you don't want an untested process potentially breaking your production database). The test database is supposed to be kept in sync with the production database, though, as otherwise what good are the tests? One particular table we needed only works in production, though, and so the default for library use -- such as when the code is imported in non-test mode points at the production database.
So literally it all came down to a U being picked up from the environment when it should have been P.
If the database had been refreshed like it's supposed to be, none of this would have happened.
Hello! can anyone help me with logging or Journal type of functions in Python? I have created a function and that output goes directly into the sql query that i have created in the script with the help of a placeholder there. But what if the sql returns a blank query? how can i create an exception for such kind of error and also log in to my journal file or somethin
My interpretation is that 010101010101 satisfies the requirements given, because no digit appears three times in a row; yet none of the existing answers (at the time of my comment spree) would ever generate such a value
Also any answer using random seems to ignore the "rainbow table" tag, which implies that OP wants all elements of the set, possibly in lexicographic order
Oh well, I threw my hat into the ill-defined ring. Not for the possibility of points, but for the faint glimmer of a possibility of the other answerers thinking "I may have read this question incorrectly"
print(re.search(r'[0-9]', '$100')) # '0' in '$100' or '1' in '$100' or '2' in '$100' or ....
print(re.search(r'[0-9]+', '$100')) # Meaning... permutation1(say '0') of digits(0 to 9) in '$100' or permu2(say '200') of digits(0 to 9) in '$100' or ....
I ended up never submitting my thesis but IIRC I managed to boil the steps down in a way I didn't find clear in the books I was reading. I'll take a look at what I wrote when I get home and share with you if I think I did a decent job
Ok, change of topic: I suspect there's an easier way to write this code that returns a context manager that opens a file, but I can't see it.
... # a bunch of code
@contextlib.contextmanager
def _open_file(path, mode):
with path.open(mode) as fileobj:
yield fileobj
return _open_file(pathlib.Path(file_), mode)
I've got brain fog today, but I suspect that my_function may be used as if it were a context manager, as long as it returns a file object.
If so, you could just do return path.open(mode), no decorator required, no yield required
I just tried writing a function def f(): return open("test.py"), and after executing with f() as file: pass, when I inspect the file object, it's closed. So that means it must have called __exit__ properly... Right?
I'd be inclined to run my idea through some tests to ensure that it behaves properly in the case of exceptions and such. But it's food coma O' clock on a Friday, so I am unable to help write those tests.
Maybe there's some utility in having a context manager that exists only to ensure you don't re-enter a block while that same block is executing higher in the call stack. When you absolutely positively want to not recurse.
Why such a feature would exist in pathlib, I haven't a clue
Plenty of questions have crossed the front page that would have benefitted from being provably not recursive. Although 99% of them were written by people who have never heard of context managers.
By the time they're good enough to use it, they're good enough to not need it
How can I tell python I want to use the same variable twice in a string, the below generates an error unless I repeat the variable twice after the modulo because python is expecting two different variables
print('The variable assigned to bucket was %s, and assigned like so "%s"' %bucket)
don't use percent formatting, but I don't think you can
you can use {0} twice in a format string
>>> bucket = '42'
>>> print('The variable assigned to bucket was {0}, and assigned like so "{0}"'.format(bucket))
The variable assigned to bucket was 42, and assigned like so "42"
percent formatting is ancient; format strings or f-strings are way newer
Some users ask "How do I turn "[1,2,3]" into [1,2,3]? I tried s.replace('"', ''), but it didn't work". If regular old strings are misunderstood, then there's no helping them
"How do I parse the contents of a string into its corresponding literal?" is fine. "how do I get rid of the quote marks on this thing?" is not so fine.
The SQL questions are usually something else. It's interesting how people read the material and think that string formatting will be easier, only to contort their code into something that is either completely broken or illegible and vulnerable. It's like they actively defy documentation.
A completely subjective view, but this affects SQL way more than python, and python is a growing starter-language. In newbie Python questions, I can kinda catch their train of thought. SQL, it's active defiance.
OP asked "what is the fastest..." and by that metric I'm almost certainly going to lose, but I guess I can hold out hope he'll reply to the other guy "built-in modules only, please :3"
Users that don't tag their question with a specific version should be prepared to break into the BDFL's personal treasury in order to access the only copy of the nightly build that supports the feature I'm telling them to use
A Google search leading to a question answered by Divakar is a roller coaster of emotions. I know it answers my question if only I can work out what the hell is happening and then how to adapt it to my problem.
print('The variable assigned to bucket was %s, and assigned like so "%s"' %(bucket, bucket))
when we use something like the above, are we passing a tuple to python, is (bucket, bucket) a tuple ; or is this acting more like a method when we pass two variables into a method like, print(a,b) for example
While we're here, have a comparison of the various string formatting approaches
>>> print('The variable assigned to bucket was %s, and assigned like so "%s"' %(bucket, bucket))
The variable assigned to bucket was 23, and assigned like so "23"
>>> print('The variable assigned to bucket was {0}, and assigned like so "{0}"'.format(bucket))
The variable assigned to bucket was 23, and assigned like so "23"
>>> print(f'The variable assigned to bucket was {bucket}, and assigned like so "{bucket}"')
The variable assigned to bucket was 23, and assigned like so "23"
that makes sense and useful to be able to know how to test it in the language, i just discovered also if you omit the index's from { } , when using the format method, with more than one variable you get an error "tuple index out of range". But if you are only using a single variable, and using it once in a string with the format method, you can omit the index like so print("Hello {}".format(name))
ah i see, great, i guess if you have more than perhaps 2, it makes sense to include the indices just for readability if you need to cross reference a variable from the tuple to the string while reading the code
that's useful to know, also of course i just realised .format(x,y) ; (x,y) isn't a tuple is it, it's passing two variables into a method ; unlike the modulo string syntax
I think it's just part of humanity. You'll get consensus on important issues and it's easy enough to unite people under a banner. Eventually, the important issues dry up and you get down to matter-of-taste issues and things are no-longer fun or interesting after that point.
yes I guess when a group of experts have differing opinions on the right course of action, and the numbers are fairly equal on both sides, either action is likely to be just fine.