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12:15 AM
Meanwhile, I still can't work out how round works. Does C just use padding or something? The datatype doesn't change but how does it know how to truncate the remaining digits?
import numpy as np

a = np.array([1.1111])
b = np.round(a, 2)
print(a, a.dtype)
print(b, b.dtype)
12:46 AM
Well that was surprisingly boring to figure out. It literally just truncates digits and leaves it to __str__ for the display. As soon as you multiply it by a decimal with more digits, it expands out
@roganjosh Ok, thanks
@roganjosh hmm
@roganjosh wow
@roganjosh yes
I don't remember how C round works, but I think it works the same way
So the part that I need to see in the Polars doc wrt subject we're talking is that? docs.pola.rs/user-guide/lazy/execution/…
scan_ methods, yes
scan_x for reading and sink_x for writing
Here is the more general doc about it: docs.pola.rs/user-guide/lazy/using
Ok, thanks
Here too, reading from file: docs.pola.rs/user-guide/lazy/using/…
I found it difficult to understand from the documentation, it's not that simple, how do I use this function using scan parquet?
(X - np.min(X)) / (np.max(X) - np.min(X))
1:08 AM
Well for a start you don't use numpy
hmm, it's like Pandas
So it's like working with a dataframe
Something like this:
import pandas as pd
import polars as pl

data = pd.DataFrame({"a": [1, 2, 3], "b": [5, 6, 7]})

result = (
        min_a = pl.col('a').min(),
        max_a = pl.col('a').max()
       result = (pl.col("a") - pl.col("min_a"))
        / (pl.col("max_a") - pl.col("min_a"))
I can't guarantee that gives the results you want, but that's the syntax moving over from pandas
1:40 AM
thanks, I wish Polars documentation was more intuitive
Improve it :) It was a COVID hobby project for Richie
Some random guy I have never met. He was just bored and wanted to learn Rust
I imagine that the items that use the most memory in this normalization function are using max and min
I think parquet stores min/max values at time of writing as metadata
1:45 AM
You can probably skip creating the columns for min and max as I did there, but I was demoing the syntax
yeah, true
so... where is the lazy code? Just using scan?
Yes, scan_ is intrinsically lazy as I said
Isn't there a part that needs to activate streaming?
@roganjosh ah
.collect() is when it gets evaluated properly
1:49 AM
@roganjosh as if it were a SQL commit?
Very similar, yes
Not an actual commit. Most of SQL is querying data out of a database
I see
But you have a query planner that tries to figure out the most efficient way to get the data for you. This is why I suggested reading about "predicate pushdown"
1:51 AM
I was surprised how a simple normalization function using NumPy uses so much memory
I also imagine that NumPy will one day process in lazy mode, it would be magnificent
I don't suppose that will ever happen or whether you would even want that
I mean about having a lazy option that one could activate
I feel like this convo might go on for longer than others in the room would like to be privy to. Lazy evaluation is not a silver bullet to fix all problems. You cannot lazily evaluate everything
I understand, that's why I said this lazy option would be optional
Like the GIL in Python :p
"As we’ve announced before , the Steering Council has decided to accept PEP 703 (Making the Global Interpreter Lock Optional in CPython) . We want to make it clear why, and under what expectations we’re doing so."

Python 3.13 pre-release already available, it contains "An experimental free-threaded build mode, which disables the Global Interpreter Lock, allowing threads to run more concurrently.".

5 hours later…
7:16 AM
@roganjosh I endorse this message. Efficient data formats such as parquet are game changers, not just for your own time but also compute resource usage.
@imbAF If you go to View in Windows Explorer, there's a checkbox called "File name extensions". I heavily advice to have it turned on.
1 hour later…
8:43 AM
@MisterMiyagi with a language as simple as Python already, it's one of those rare moments where I really feel I'm getting a "free lunch" using a single method to read and write the format :)
1 hour later…
9:44 AM
anyone here who works with hudi?

I'm having trouble upserting to a table when the new records I'm writing has a new date for ingress time when the table is partitioned by Ymd of the ingress date
these are my hudi_options

hudi_options = {
'hoodie.database.name': DESTINATION_DB_NAME,
'hoodie.table.name': table_name.lower(),

'hoodie.datasource.hive_sync.database': DESTINATION_DB_NAME,
'hoodie.datasource.hive_sync.table': table_name.lower(),
# 'hoodie.datasource.hive_sync.create_managed_table': 'true',
'hoodie.datasource.hive_sync.enable': 'true',
'hoodie.datasource.hive_sync.mode': 'hms',
'hoodie.datasource.hive_sync.support_timestamp': 'true',
'hoodie.datasource.hive_sync.partition_fields': ",".join( COMMON_PARTITION_COLUMN if type( COMMON_PARTITION_COLUMN ) == list else [ COMM
4 hours later…
2:17 PM
... if ever there was a need to show how horrendous this data lakehouse idea has become...
2:48 PM
Wait, have they arrived at crossbreeding data lakes and data warehouses now? D:
shakes fist, Planet of the Apes style
googles Those manicas!
@MisterMiyagi you don't have a data lakehouse? It pains me to see such poverty
(please do everything you can to stop this being a thing we all have to adopt)
I have a lake that is deep enough for the average sales agent. ;)
Unless they pay for dinner, of course. There's always room for dinner.
I don't know whether I'm brave enough to place a bet that I can beat Hive here in processing speed
I will place 5 quatloos on it. I have a plane journey in a couple of days so it'll keep me occupied, but that's no help to @pythonian29033 in the meantime :( I don't think there's anyone in the room that uses that library
3:15 PM
Just met two cute rats outside our complex. That's a first...
Rats are my favourite pets. Even above dogs
Pets, yes. Wild? Well...
I kinda cared about the wild ones too. I guess it changes your perspective when you have one as a pet
@AndrasDeak--СлаваУкраїні The other rats weren't cute?
Or 5. I've had a lot of rats :P
3:22 PM
Wait, didn't you have a cat as well?
12 cats I think
Huh, didn't those would like rooming in with each other.
3 snakes, 3 tarantulas, 2 scorpions, 2 iguana.... the list goes on
But rats are my favourite
I still have one cat now - Monty. I got him 3 weeks after starting programming. So his name is Monty from Monty Python. He is my only remaining pet now, but I left him at my mum's house because she's in the countryside and I'm back in the city
@MisterMiyagi yeah, too many scars, not enough ears, stuff like that. I'm picky.
@roganjosh I only had the one.
But the kind that live in the sewers are not to be messed with. Especially in the daylight...
These were fearful enough, fortunately...
Badgers are the things I had to look out for when I was in Derbyshire
3:34 PM
@AndrasDeak--СлаваУкраїні Yeah, I can relate.
People from Australia are probably wondering just why we worry about cute critters. :/
Rats are easy. Badgers not so. My mum told me "just break a twig and the snapping sound will make it think you broke your leg". Errr, no, I'll keep hold of that twig to bash it when it tries to kill me, thanks.
I'm not quite following how "make it think you are easy prey" is a survival strategy. D:
@MisterMiyagi my mum is famous for her defeatism
"Better to die than to be badger'ed"
I mean, it's not hard to handle a potentially aggressive sewer rat, the hard part is avoiding physical contact if it is aggressive.
3:37 PM
She fell in a canal that is just about 5 ft deep. She had two goes to get out and then said "well I guess this is where I die"
Pitchtorches would solve both your problems, just saying
Granted, rabies or some other nasty infection is a less spectacular experience than being torn apart by a badger.
4:38 PM
@roganjosh do you consider that working with Parquet file is better because of the reading efficiency only? Because I did a small test when saving a NumPy array in .npy and .parquet, the .npy file became smaller.
Then go with that
I think I gave you more than enough info for you to research it yourself?
I just had doubts about the efficiency of the parquet mentioned about you, I wanted to know in what sense you qualified it
Code that I tested:
import numpy as np
import pandas as pd

array_size = 1000000
a = np.random.uniform(0, 255, array_size).astype(np.float64)
np.save('testing.npy', a)
data = pd.DataFrame(a, columns=['a'])
"I wanted to know in what sense you qualified it" test it for yourself
Is there any problem with me commenting on what you said?
My job is data processing. I've done it for years. But you don't have to take my word for it; you can test it in your ecosystem
4:46 PM
About it:
17 hours ago, by roganjosh
The reason I'm pushing parquet is just how impressed I am with it. It has very high compression and the metadata it stores allows for really efficient filtering by columns (which might not apply here it's they're just arrays). With the file format, you can filter and process data extremely efficiently (look into things like "predicate pushdown" for polars). Sometimes you might need to be specific in the layout of the file for this
chat.stackoverflow.com/transcript/message/57376361#57376361: import sys is missing in the code snippet
It wasn't, but ok
@roganjosh ?
There is no reason to import sys there, so you are incorrect
Why should you need to import it?
4:49 PM
There's no need?
Sorry, I'm gonna lose patience on this one really quickly. You're going in circles
@roganjosh The last two lines do: print(sys.getsizeof(a))
@roganjosh No, I'm not going in circles
But I never tried to print the size of the array
You can't tell me that I'm missing an import for a thing I never even tried to do
@Marco FWIW most people will notice and just add the import. However, I have noticed some people don't.
4:51 PM
I was already thinking that sys was built into python and didn't need to be imported, but I just tested it and it is necessary
@roganjosh Please press the link. Marco didn't point to your code.
it's about this:
9 mins ago, by Marco
import numpy as np
import pandas as pd

array_size = 1000000
a = np.random.uniform(0, 255, array_size).astype(np.float64)
np.save('testing.npy', a)
data = pd.DataFrame(a, columns=['a'])
@Peilonrayz have fun; I'm done
oh God
@Peilonrayz Yes, I think it's important to leave the code complete
@Marco Understandable :)
4:55 PM
I didn't edit it because I didn't have more time to do it
Conclusion: .npy file size is smaller than .parquet file size.
So I'm wondering if there are cases in which this so-called high compression of data in the parquet file occurs in certain situations
@Marco FWIW you're not comparing the difference between .npy file and testing.parquet. You're comparing the size of a NumPy array and a pandas DataFrame containing the NumPy array. You'd have look at the size of testing.npy and testing.parquet not a and data.
ok, fair
4:59 PM
But I compared it too
@Marco you probably won't believe me when I tell you that you're not at a stage where you have to worry about file sizes
Complete code:
import numpy as np
import pandas as pd
import sys
import os

array_size = 1000000
a = np.random.uniform(0, 255, array_size).astype(np.float64)
np.save("testing.npy", a)
data = pd.DataFrame(a, columns=["a"])
@AndrasDeak--СлаваУкраїні ?
@AndrasDeak--СлаваУкраїні I don't understand, out of nowhere resorting to old topics?
@Marco it's not out of nowhere
5:04 PM
Why not?
@AndrasDeak--СлаваУкраїні I'm not sure I understand what you're trying to convey. Currently nothing has been confusing, sure sys.getsizeof vs os.path.getsize is a mistake.
@Marco Peilonrayz is a mod on another site. They might wonder why we're less than forthcoming with your confused inquiries.
@Peilonrayz the big picture.
Ok, I think I understand.
@Peilonrayz Can you explain me please?
Yesterday he was implementing half precision by way of chatgpt
5:05 PM
@AndrasDeak--СлаваУкраїні I was just seeing what chatgpt had to offer
Are you kidding me?
@Peilonrayz yes, it was, sorry
The thing is, initially I checked the sizes visually.
Then I made a mistake when using sys.getsizeof(). Only that. Then I used the correct function.
@AndrasDeak--СлаваУкраїні I wasn't implementing anything, I just wanted to see what chatgpt had to offer, and it wasn't about half precision, something that already exists in numpy, but about 8-bit float.
What's important here is: the parquet file became reasonably larger than the numpy file, and I don't know why they started to lengthen the subject, including with old subjects.
Hey, I've had a fair share of ~5 years of programming in C, had some experience in (tech corporate) professional software product design in it. The team I was in conveniently used the Google C++ styleguide. For me, it was quite easy to follow + clang tidy helped.

I switched industry and now I'm working in Python. Writing code for kind of a package, that'd be released (a tool for graph analysis). But I cannot seem to figure out how to design the python files in the project. I mean not the algorithms, but for example, what comments do I put in a function, how to structure it, how to structur
@Marco the problem is we don't know your actual use case and I suspect you don't either, yet. You're trying to make an assesment about data file formats in a very apples-and-oranges way and I find it hard to tell where to start explaining how "that's not how it works". Since this is your manieth such case, I'm just not going to try.
@Marco sorry, quarter (im)precision
@AndrasDeak--СлаваУкраїні I just did a simple test in response to what rogajosh said about parquet file being efficient at compressing data. I don't have to relate it to my specific case.
@AndrasDeak--СлаваУкраїні no problem
anyway, I'm off for supper
feel free
5:15 PM
@me9hanics I'm not entirely sure what you mean, but as far as documentation (i.e. the format of docstrings) is concerned, there are at least 3 commonly used formats. (sphinx, google, and numpy)
Aside from PEP8 we can't really agree on any standards here in python land :/
@AndrasDeak--СлаваУкраїні The only useful thing about the history you showed is that it reminded me that there is numpy savez that compresses the file.
But the detail is that it seems that it doesn't work for a single array.
@Marco Compressing random numbers is hard. Additionally looking at the forms of compression parquet supports stated on Wikipedia makes me believe you aren't going to see any compression by parquet. Real data typically isn't random, which is one way the IRS checks tax records.
@Peilonrayz I didn't know there was a difference in compressing an array with random numbers compared to one that doesn't have random numbers.
What is IRS?
The Internal Revenue Service (IRS) is the revenue service for the United States federal government, which is responsible for collecting U.S. federal taxes and administering the Internal Revenue Code, the main body of the federal statutory tax law. It is an agency of the Department of the Treasury and led by the Commissioner of Internal Revenue, who is appointed to a five-year term by the President of the United States. The duties of the IRS include providing tax assistance to taxpayers; pursuing and resolving instances of erroneous or fraudulent tax filings; and overseeing various benefits programs...
Thank you for the information about the non-existence of data compression when saving to a .parquet file.
@Peilonrayz hmm
5:22 PM
@Marco No, never said non-existence. The file type supports compression.
" Additionally looking at the forms of compression parquet supports stated on Wikipedia makes me believe you aren't going to see any compression by parquet."
Yes. Never said non-existence. The compression is unlikely to be applied to your test data.
Ok, your sentence was confuse to me, sorry, but it seems that what you said is that in the case of the array I created there is no compression.
Sorry for the confusion.
No problem
Well, I think the matter is now closed, I was quite upset about what the issue ended up becoming.
Nothing to do with you, @Peilonrayz.
On the contrary, I thank you for the education and attention you gave me.
5:31 PM
No problem.
Will look into these, thank you. I guess that works on documentation side; not totally sure about Python development "conventions" though.
The way I write Python code isn't probably very professional, in some cases I don't use **kwargs where it'd make sense, in some cases I saw software library documentation where I thought it'd be more appropriate to use **kwargs (instead of the function having a long list of arguments in the line of its definition, if that makes sense). I almost always neglect to use classes because I just "find it more natural to solve problems without them", which is of
Oh, yikes. That's just software architecture, isn't it? I'm pretty sure the whole world struggles with that
Well, maybe that's too bleak. Coming from C, there's probably plenty of stuff you can learn to write more "pythonic" code. But like in all languages, 10 different programmers will give you 12 different opinions about the "correct" way to write code
I don't have any books/videos/tutorials/people to recommend, but there are a few python features you should learn: List comprehensions, generator functions (with yield), context managers, and probably a bunch more that I'm forgetting right now
5:52 PM
@me9hanics Python has two main style guides; PEP 8 and Google's. Docstrings (the """ comments you talked about) have PEP 257 where sphinx/google/numpy are formats built on-topic of docstrings to add more data in a well structured manner. However not reading and just using black is probably the easiest.
And all the above ^ doesn't explain the function vs classes and **kwargs stuff
6:42 PM
@Peilonrayz Okay, thank you. Sounds like that's more like intuition / comes with experience
@Peilonrayz *I mean, this
6:55 PM
@me9hanics I agree
1 hour later…
7:56 PM
I have a code on a scheduling problem on python and I am trying to fix a bug that occurs when I change on of the parameters. Can anyone help?
8:23 PM
Maybe, but only if you tell us what the bug is and you share the relevant code
8:38 PM
@me9hanics just my two cents for some of the technical concerns: 1. I only use **kwargs when wrapping other functions (or when calling functions), because a long list of arguments is preferable to having to figure out behaviour from the function body. It also helps users who use an IDE to get hints. Especially if you're a library author. Might also want to add some type hinting for the same consideration, but that's a divisive topic in Python and a huge pain in the butt if you do it right...
2. classes are overrated and overused, see the classic Stop Using Classes talk. Of course you shouldn't stop using classes, but only use them when you need to. When you need state, mostly, or inheritance to combine functionality.
3. every open-source project I've come across uses numpydoc style for docstrings (and I prefer it :P), for what it's worth (but I tend to come across numerical projects)
1 hour later…
9:48 PM
@AndrasDeak--СлаваУкраїні and with kwargs the documentation going stale is a huge issue, and default values become pinky-swears
10:41 PM
duplicate (basic variable shadowing problem) stackoverflow.com/questions/34339218 (I can't hammer this because I apparently cast and retracted a different close vote at the time, 8 years ago, before answering)
@KarlKnechtel Just post here with what duplicate I can close this and I hammer it.
11:11 PM
@AndrasDeak--СлаваУкраїні Wow, didn't know classes are so not well-received - remembering when my teacher in my bachelors always pushed me to use classes a lot (kind of to make us learn to use them)
11:32 PM
@AndrejKesely I typically use stackoverflow.com/questions/6039605, but I'm not sure it's best. I previously asked on Meta to contrast it with some alternatives, here: meta.stackoverflow.com/questions/423668 but nobody actually posted an answer on Meta. Arguably one might use something different when the thing being shadowed is not a builtin, e.g. stackoverflow.com/questions/20125172
@AndrasDeak--СлаваУкраїні FWIW: in the language I'm designing, the "class" concept is unified with closures. (And so are modules)
@KarlKnechtel Closed.

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