Editing CommunityData:Hyak Datasets

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We maintain an archive of Reddit submissions and comments going back to Reddit's early history that is up-do-date with January 2019 (for comments) and August 2019 (for submissions). We have copies of dumps collected and published by [https://Pushshift.io pushshift] and tabular datasets derived from them.  Compared to obtaining data from the Reddit (or pushshift) APIs, working with these archival datasets will be faster and less work for you.  The tabular datasets in particular are quite fast thanks to the parquet file format making it possible to pull subsets of the data (e.g. complete history of a subreddit) in as little as 15 minutes.  In contrast it takes about a day to extract and parse the dumps on a mox node.  
We maintain an archive of Reddit submissions and comments going back to Reddit's early history that is up-do-date with January 2019 (for comments) and August 2019 (for submissions). We have copies of dumps collected and published by [https://Pushshift.io pushshift] and tabular datasets derived from them.  Compared to obtaining data from the Reddit (or pushshift) APIs, working with these archival datasets will be faster and less work for you.  The tabular datasets in particular are quite fast thanks to the parquet file format making it possible to pull subsets of the data (e.g. complete history of a subreddit) in as little as 15 minutes.  In contrast it takes about a day to extract and parse the dumps on a mox node.  


Code for this project is located in the [https://code.communitydata.science/cdsc_reddit.git cdsc_reddit] git repository. See [[CommunityData:git]] for help getting started with our git setup.
Code for this project is located in the (currently private) cdsc_reddit [[CommunityData:git|git repository]] on code.communitydata.science.  


For computational efficiency it is best to parse the dumps as little as possible. So if it is possible for you to work with the tabular datasets, please do so. The tabular datasets currently have the variables that most projects will want to use, but there are many other metadata variables including ones related to moderation, media, Reddit gold and more. If you want a variable from the pushshift json that isn't in parquet tables, don't fret! It will not be too much work to add it.  Reach out to [[User:Groceryheist|Nate]].
For computational efficiency it is best to parse the dumps as little as possible. So if it is possible for you to work with the tabular datasets, please do so. The tabular datasets currently have the variables that most projects will want to use, but there are many other metadata variables including ones related to moderation, media, Reddit gold and more. If you want a variable from the pushshift json that isn't in parquet tables, don't fret! It will not be too much work to add it.  Reach out to [[User:Groceryheist|Nate]].
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The recommended way to pull data from parquet on Hyak is to use [https://arrow.apache.org/docs/python/ pyarrow],  which makes it relatively easy to filter the data and load it into Pandas.  The main alternative is [[CommunityData:Hyak_Spark| Spark]], which is a more complex and less efficient system, but can read and write parquet and is useful for working with data that is too large to fit in memory.
The recommended way to pull data from parquet on Hyak is to use [https://arrow.apache.org/docs/python/ pyarrow],  which makes it relatively easy to filter the data and load it into Pandas.  The main alternative is [[CommunityData:Hyak_Spark| Spark]], which is a more complex and less efficient system, but can read and write parquet and is useful for working with data that is too large to fit in memory.
Arrow bindings for R are available, but as of Arrow 0.17.1 it's complicated to install them. [[#Install Arrow for R]]


This example loads all comments to the Seattle subreddit. You should try it out!
This example loads all comments to the Seattle subreddit. You should try it out!
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# A pyarrow dataset abstracts reading, writing, or filtering a parquet file. It does not read dataa into memory.  
# A pyarrow dataset abstracts reading, writing, or filtering a parquet file. It does not read dataa into memory.  
 
#dataset = ds.dataset(pathlib.Path('/gscratch/comdata/output/reddit_submissions_by_subreddit.parquet/'), format='parquet', partitioning='hive')
dataset = ds.dataset('/gscratch/comdata/output/reddit_submissions_by_subreddit.parquet/', format='parquet')
dataset = ds.dataset('/gscratch/comdata/output/reddit_submissions_by_subreddit.parquet/', format='parquet', partitioning='hive')


# let's get all the comments to two subreddits:
# let's get all the comments to two subreddits:
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# Since data from just these 2 subreddits fits in memory we can just turn our table into a pandas dataframe.
# Since data from just these 2 subreddits fits in memory we can just turn our table into a pandas dataframe.
df = table.to_pandas()
df = table.to_pandas()
# We should save this smaller dataset so we don't have to wait 15 min to pull from parquet next time.
df.to_csv("mydataset.csv")


</syntaxhighlight>
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# since it's partitioned and sorted by author, we get one group for each author  
# since it's partitioned and sorted by author, we get one group for each author  
any([ v != 1 for k,v in count_dict.items()])
any([ v != 1 for k,v in count_dict.items()])
</syntaxhighlight>
=== Install Arrow for R ===
If you want to use Arrow in R and your R on Hyak doesn't already have Arrow installed, follow these steps. On computers not running CentOS you'll probably be fine just running <code>install.packages("arrow")</code>.  These instructions are derived from this debugging session on the [https://issues.apache.org/jira/browse/ARROW-9303 Arrow bug tracker].
First you need to load a modern cmake and set some environment variables.
<syntaxhighlight lang='bash'>
module load cmake/3.11.2
export ARROW_WITH_LZ4=ON; export ARROW_WITH_ZSTD=ON; export ARROW_WITH_BZ2=ON; export ARROW_WITH_GZIP=ON; export ARROW_WITH_LZ4_FRAME=ON; export ARROW_WITH_SNAPPY=ON; export ARROW_WITH_LZO=ON; ARROW_WITH_BROTLI=ON;
export LIBARROW_MINIMAL=FALSE
</syntaxhighlight>
Now, start R and '''download''' (not install!) the <code>arrow</code> package.
<syntaxhighlight lang='R'>
download.packages("arrow",destdir='.')
</syntaxhighlight>
Now, you need to unpack <code>arrow_0.17.1.tar.gz</code> and edit <code>arrow/inst/build_arrow_static.sh</code>.
<syntaxhighlight lang='bash'>
tar xvzf arrow_0.17.1.tar.gz
nano arrow/inst/build_arrow_static.sh
</syntaxhighlight>
In <code>build_arrow_static.sh</code>, modify the value of <code>DARROW_DEPENDENCY_SOURCE</code> and set it to <code>BUNDLED</code>.
<syntaxhighlight lang='bash'>
# build_arrow_static.sh
...
-DARROW_DEPENDENCY_SOURCE=BUNDLED
...
</syntaxhighlight>
Finally, go back into R and finish installing arrow.
<syntaxhighlight lang='R'>
install.packages("arrow",repos=NULL)
</syntaxhighlight>
</syntaxhighlight>


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