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https://issues.apache.org/jira/browse/ARROW-18400?page=com.atlassian.jira.plugin.system.issuetabpanels:comment-tabpanel&focusedCommentId=17639622#comment-17639622
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Adam Reeve edited comment on ARROW-18400 at 11/27/22 9:23 AM:
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Hi [~alenka], I tested switching to use_legacy_dataset=True with PyArrow 10.0.1 
and the memory usage is mostly equivalent to version 7.0.0 up until 1,024,000 
rows. But then memory usage only increases linearly beyond this so performs 
much better than 7.0.0. Reading the 2,048,000 row file uses 10,522 MB and 
reading the 4,096,000 row file uses 20,925 MB rather than being killed for 
using too much memory.


was (Author: JIRAUSER280203):
Hi [~alenka], I tested switching to use_legacy_dataset=True with PyArrow 10.0.1 
and the memory usage is mostly equivalent to version 7.0.0 up until 1,024,000 
rows. But then memory usage only increases linearly beyond this so performs 
much better. Reading the 2,048,000 row file uses 10,522 MB and reading the 
4,096,000 row file uses 20,925 MB rather than being killed for using too much 
memory.

> [Python] Quadratic memory usage of Table.to_pandas with nested data
> -------------------------------------------------------------------
>
>                 Key: ARROW-18400
>                 URL: https://issues.apache.org/jira/browse/ARROW-18400
>             Project: Apache Arrow
>          Issue Type: Bug
>          Components: Python
>    Affects Versions: 10.0.1
>         Environment: Python 3.10.8 on Fedora Linux 36. AMD Ryzen 9 5900 X 
> with 64 GB RAM
>            Reporter: Adam Reeve
>            Assignee: Alenka Frim
>            Priority: Critical
>             Fix For: 11.0.0
>
>
> Reading nested Parquet data and then converting it to a Pandas DataFrame 
> shows quadratic memory usage and will eventually run out of memory for 
> reasonably small files. I had initially thought this was a regression since 
> 7.0.0, but it looks like 7.0.0 has similar quadratic memory usage that kicks 
> in at higher row counts.
> Example code to generate nested Parquet data:
> {code:python}
> import numpy as np
> import random
> import string
> import pandas as pd
> _characters = string.ascii_uppercase + string.digits + string.punctuation
> def make_random_string(N=10):
>     return ''.join(random.choice(_characters) for _ in range(N))
> nrows = 1_024_000
> filename = 'nested.parquet'
> arr_len = 10
> nested_col = []
> for i in range(nrows):
>     nested_col.append(np.array(
>             [{
>                 'a': None if i % 1000 == 0 else np.random.choice(10000, 
> size=3).astype(np.int64),
>                 'b': None if i % 100 == 0 else random.choice(range(100)),
>                 'c': None if i % 10 == 0 else make_random_string(5)
>             } for i in range(arr_len)]
>         ))
> df = pd.DataFrame({'c1': nested_col})
> df.to_parquet(filename)
> {code}
> And then read into a DataFrame with:
> {code:python}
> import pyarrow.parquet as pq
> table = pq.read_table(filename)
> df = table.to_pandas()
> {code}
> Only reading to an Arrow table isn't a problem, it's the to_pandas method 
> that exhibits the large memory usage. I haven't tested generating nested 
> Arrow data in memory without writing Parquet from Pandas but I assume the 
> problem probably isn't Parquet specific.
> Memory usage I see when reading different sized files on a machine with 64 GB 
> RAM:
> ||Num rows||Memory used with 10.0.1 (MB)||Memory used with 7.0.0 (MB)||
> |32,000|362|361|
> |64,000|531|531|
> |128,000|1,152|1,101|
> |256,000|2,888|1,402|
> |512,000|10,301|3,508|
> |1,024,000|38,697|5,313|
> |2,048,000|OOM|20,061|
> |4,096,000| |OOM|
> With Arrow 10.0.1, memory usage approximately quadruples when row count 
> doubles above 256k rows. With Arrow 7.0.0 memory usage is more linear but 
> then quadruples from 1024k to 2048k rows.
> PyArrow 8.0.0 shows similar memory usage to 10.0.1 so it looks like something 
> changed between 7.0.0 and 8.0.0.



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