@AndrasDeak Yeah, I was wondering about what sanitize does. Does it just escape special chars like quotes, or is it smart enough to also delete suspicious-looking strings?
@AndrasDeak True. I'm hoping (for their sake) that it does make their code safe, and isn't just the equivalent of painting flowers & smiley faces on the bullets you shoot yourself in the foot with.
It's easy to re-print after every new md5 hash, or after every tenth md5 hash, or whatever. But then the frequency is dependent on your processor speed.
collections is the most important Python module because the fastest way to get points on stack overflow is to post "have you tried collections.Counter?" before anyone else and blow away all the readers that had no idea there's a built-in histogram type.
Couldn't work out why my md5 was taking ~10 minutes. Note to self: if you rely on while len(password) < 8, actually append each character as you find it.
My code for part two was taking forever until I noticed the problem on the line if index < 8 and found_digits[index] is not None: found_digits[index] = value
@MohammadYusufGhazi Note that when a Python object dies its memory gets returned to Python's memory allocator, it doesn't get released back to the OS. The Python allocator does return memory to the OS when it decides it's appropriate, though. If you want to know the gory details, take a look at Memory Management
Ah, I see. Even though the object is collected, the space it took up might remain in Python's private heap for later use.
My intuition is that this usually isn't the case when it comes to objects that are large enough that you care about freeing their memory as soon as possible
@mertyildiran Is it particularly urgent that you reclaim the RAM from a single employee record? In Python, we generally just let the interpreter's memory manager do its thing behind the scenes and don't worry about stuff like that unless we're working with really large data structures. If an object has no references it will get cleaned up. Adding code to explicitly force the freeing of RAM just adds clutter and may slow down your code without actually speeding up the memory reclamation process.
@Kevin Correct. del emp1 just unbinds the name emp1 from the object and hence decrements that object's reference count by 1. And if the reference count is zero, the object's memory will get recycled when the memory manager gets around to it.
MetaProblem: I can never find function declarations in the Python source when I need them. simply grepping for the function name turns up hundreds of function calls, which is a real needle-in-a-haystack problem.
@WayneWerner Yeah. There's no guarantee that an object's __del__ method will get called when an object goes out of scope, although it will get called before the interpreter itself exits. But by then the usual execution environment may be "dismantled", so don't expect stuff like exception handling to work.
@MarcusS I assume Kevin is talking about the C source.
I was kind of hoping for a, I don't know, function body with helpfully commented sections like //decide whether now is an appropriate time to free memory back to OS, or just keep it in our private heap for later
Oops, that's only how it's defined for some versions.
/* there is no object memory interface in 1.5.2 */
#define PyObject_Malloc PyMem_Malloc
#define PyObject_Realloc PyMem_Realloc
#define PyObject_Free PyMem_Free
I'm not really interested in how garbage collection worked in 1.5.2.
You know what I'd really like? An unzipping application with a context menu command like "extract here iff the top level directory of the zip contains exactly one folder and nothing else; extract to [foldername] otherwise"
@mertyildiran Ah, ok. Still, you probably don't need to explicitly delete them or call garbage collection functions. Just make sure that nothing holds a reference to those objects and they'll get cleaned up.
A lot of the stuff on that Memory Management page I linked earlier is mostly of interest to people writing Python extensions in C, so unless you're doing that you can safely skim over a lot of that stuff. :) But there's some important info down towards the end under Customize PyObject Arena Allocator.
Essentially, Python manages memory using 256 KB chunks called arenas. So it does all its mallocs and frees in terms of those arenas.
@Kevin You could write that in Python... The zipfile module isn't fantastic, but it's certainly good enough for an application like that.
FWIW, I use zipfile to unzip & rezip .epub files so I can perform minor modifications on their contents. I've got a dumb e-reader that ignores \n inside HTML <p> paragraphs. So I need to add a space to the end of each line of a paragraph if I don't want the word at the end of the line to get joined to the word at the start of the next one. :)
I don't like my functions to have side-effects if I can help it, and file handles pretty much exist to be mutated, so I avoid passing them around when possible.
Yeah I can definitely see it from the side-effects angle, but at the same time if you pass it a file handle then you can restrict the function to read-only
but then again if you pass it the path then you can have the "with open(...) as f" within that function instead of cluttering up main()
My preferred approach is, whatever context I get the filename, I do whatever I need to the file in that same context.
So rather than filename = input("Enter filename:"); frob(filename) or filename = input("Enter filename:"); with file as open(filename): frob(file), I'd do filename = input("Enter filename:"); with file as open(filename): data = file.read(); frob(data)
@khajvah I was thinking of unit testing, it's easy to pass a StringIO "file" and then "read" it in the function but harder if passing a file path. Is it even possible to have a "path" to a StringIO object?
I guess you could create something in /tmp and then read from there but I'm not 100% sure that's portable
> Incidentally, if you've just been greeted with the word "cbg" or "cabbage" then you may want to have a look here...
/* All the rest is arena management. We just freed
* a pool, and there are 4 cases for arena mgmt:
* 1. If all the pools are free, return the arena to
* the system free().
I had this recursive loop that had to do this...not sure how to describe it..."cross-cutting" (?) variable tracking. It ran for 2-3 days and ended up taking 8GB of memory. I added GC's to the loop and deleted whenever possible and still had a huge memory footprint
to be fair it had about 4GB of actual data but the internal fragmentation is real
I notice that there's a fallback in _PyObject_Alloc that skips arenas entirely and runs a raw malloc if the requested memory size exceeds a certain threshold.
Perhaps if you're creating one single truly monolithic object, then that branch will execute? Then I'd expect it to get deallocated instantly as it's garbage collected.
But "truly monolithic" is not a well-defined term. Is a tuple containing a million ints a monolith, or is it a composite of one million reasonably sized objects?