move dataset + similarity docs from wiki into repo READMEs
The wiki page CommunityData:CDSC Reddit had a detailed Hyak walkthrough (Steps 1-7) for refreshing the parquet datasets and a long TF-IDF methods section, both of which duplicated or risked drifting from the actual code. Move both into the repo so they stay in sync with the scripts they describe: - datasets/README.md: expand with the wiki's "Building Parquet Datasets" prose and the Step 1-7 Hyak walkthrough (ported verbatim where possible, adapted to the new script names and dropping obsolete notes about pull_pushshift_*.sh / check_*_shas.py). - similarities/README.md (new): port the wiki's Subreddit Similarity section — TF-IDF math, PMI phrase detection, cosine similarity — with MediaWiki math converted to markdown LaTeX and script references updated to current paths. The wiki page has been trimmed to a landing page that points at these README files in gitea. Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
This commit is contained in:
@@ -5,20 +5,47 @@ This directory holds the pipeline that turns compressed Reddit dump files
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sorted, repartitioned parquet datasets that the rest of the project
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consumes.
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The pipeline has two stages:
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## Pipeline overview
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| Stage | What it does |
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The raw dumps are huge compressed json files with a lot of metadata that
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we may not need. They aren't indexed so it's expensive to pull data from
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just a handful of subreddits. It also turns out that it's a pain to read
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these compressed files straight into spark. Extracting useful variables
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from the dumps and building parquet datasets makes them easier to work
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with. This happens in two steps:
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1. Extracting json into (temporary, unpartitioned) parquet files using
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pyarrow.
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2. Repartitioning and sorting the data using pyspark.
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Breaking this down into two steps is useful because it allows us to
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decompress and parse the dumps in the backfill queue and then sort them
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in spark. Partitioning the data makes it possible to efficiently read
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data for specific subreddits or authors. Sorting it means that you can
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efficiently compute aggregations at the subreddit or user level. More
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documentation on using these files is available on the [CDSC wiki][hyak-datasets].
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The final datasets are in `/gscratch/comdata/output`:
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- `reddit_comments_by_author.parquet` has comments partitioned and sorted
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by username (lowercase).
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- `reddit_comments_by_subreddit.parquet` has comments partitioned and
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sorted by subreddit name (lowercase).
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- `reddit_submissions_by_author.parquet` has submissions partitioned and
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sorted by username (lowercase).
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- `reddit_submissions_by_subreddit.parquet` has submissions partitioned
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and sorted by subreddit name (lowercase).
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[hyak-datasets]: https://wiki.communitydata.science/CommunityData:Hyak_Datasets#Reading_Reddit_parquet_datasets
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## Scripts
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| Script | Role |
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|---|---|
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| Part 1 | Reads one compressed dump and writes one parquet file. Per-file, parallelizable. Runs without Spark. |
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| Part 2 | Reads the directory of per-file parquets in Spark, sorts and repartitions by subreddit, then by author, and writes the final `reddit_*_by_*.parquet` datasets. Always re-sorts the full corpus. |
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Each stage has a thin entry-point script per dump type:
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| Script | Notes |
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|---|---|
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| `comments_part1.py`, `submissions_part1.py` | Per-file parse. `parse_dump <file>` and `gen_task_list` subcommands via fire. |
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| `comments_part2.py`, `submissions_part2.py` | Spark sort. Launched via `start_spark_and_run.sh`. |
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| `dumps_helper.py` | Shared module: schemas, simdjson parser, generic parse loop, parse_dump / gen_task_list / sort_and_write workers. The only per-type code is the two field-handler dicts and the configuration dicts at the top. |
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| `comments_part1.py`, `submissions_part1.py` | Part 1 entry points. Each parses one compressed dump into one parquet file. `parse_dump <file>` and `gen_task_list` subcommands via fire. |
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| `comments_part2.py`, `submissions_part2.py` | Part 2 entry points. Each is a Spark job that reads the directory of per-source parquets and writes the final `*_by_subreddit.parquet` and `*_by_author.parquet` datasets. Launched via `start_spark_and_run.sh`. |
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| `dumps_helper.py` | Shared module. Schemas, the simdjson parser, a generic parse loop with per-field handler dispatch, and the `parse_dump` / `gen_task_list` / `sort_and_write` workers that the entry-point scripts wrap. Adding a new dump type or a new field is a one-place edit. |
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| `helper.py` | Lower-level helpers for opening compressed dump files (`.zst`, `.xz`, `.bz2`, `.gz`). |
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## The two workflows
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@@ -47,10 +74,10 @@ need a rearchitecture if the cost became a problem.
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## Running steps individually
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Both `.sh` runners are written so that every meaningful step is a separate,
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self-contained command. If something fails partway through, or you want
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to inspect intermediate state, you can copy any single line out of the
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runner and execute it standalone. For example:
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Both `.sh` runners are written so that every meaningful step is a
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separate, self-contained command. If something fails partway through, or
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you want to inspect intermediate state, you can copy any single line out
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of the runner and execute it standalone. For example:
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```sh
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# parse one specific file (skipping the rest of the workflow)
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@@ -68,10 +95,214 @@ The Spark Part 2 step is launched via `start_spark_and_run.sh` (a
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Hyak-provided wrapper not included in this repo); see the wiki for the
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launch convention.
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## Detailed walkthrough: refreshing the data on Hyak
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This walkthrough describes the process we went through updating Reddit
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data from the PushShift cutoff up to the end of 2024. Adapting it for
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newer data should just involve using different academic torrent files
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that start from 2025 onwards. For a single-month update, the
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`add_new_month.sh` workflow above is much shorter; this walkthrough is
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for the bulk-refresh case.
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### Prerequisites
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- [Set up Hyak with CDSC lab][hyak-setup] (make sure to update config
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and `.bashrc`)
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- [Go through the Hyak Getting Started tutorial][hyak-syllabus]
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Reddit dumps info (handled by `u/Watchful1` and `u/RaiderBDev`):
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- [Watchful1's reddit explanation][watchful1-explainer] (separated by
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subreddit), the [dataset not divided by subreddits][watchful1-bulk],
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and the [GitHub repo with scripts for analyzing data][watchful1-repo]
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- [RaiderBDev monthly dumps][raiderbdev-monthly] and
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[RaiderBDev's ArcticShift API][arctic-shift]
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- The [2005-06 to 2024-12 academic torrent][academic-torrent] used for
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the 2005-2024 refresh
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CDSC and Hyak docs:
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- [Hyak docs — how to work with modules][hyak-modules]
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- [CDSC — how to download Python or R packages][cdsc-pkgs]
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- [CDSC — Hyak datasets information][hyak-datasets]
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- [CDSC — Hyak Spark information][hyak-spark]
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[hyak-setup]: https://wiki.communitydata.science/CommunityData:Hyak#General_Introduction_to_Hyak
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[hyak-syllabus]: https://hyak.uw.edu/docs/hyak101/basics/syllabus/
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[watchful1-explainer]: https://www.reddit.com/r/pushshift/comments/1itme1k/separate_dump_files_for_the_top_40k_subreddits/
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[watchful1-bulk]: https://www.reddit.com/r/pushshift/comments/1i4mlqu/dump_files_from_200506_to_202412/
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[watchful1-repo]: https://github.com/Watchful1/PushshiftDumps/tree/master
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[raiderbdev-monthly]: https://www.reddit.com/r/pushshift/comments/1ithjd3/subreddits_metadata_rules_and_wikis_202501/
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[arctic-shift]: https://github.com/ArthurHeitmann/arctic_shift
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[academic-torrent]: https://academictorrents.com/details/1614740ac8c94505e4ecb9d88be8bed7b6afddd4
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[hyak-modules]: https://hyak.uw.edu/docs/tools/modules
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[cdsc-pkgs]: https://wiki.communitydata.science/CommunityData:Hyak_software_installation#Python_packages
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[hyak-spark]: https://wiki.communitydata.science/CommunityData:Hyak_Spark
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### Step 1: data download on Nada and Hyak
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We downloaded the [2005-2024 academic torrent][academic-torrent] and put
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it on Nada (~2 days of downloading). We copied the raw data over to
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Hyak's scrubbed directory in a new directory,
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`/gscratch/scrubbed/comdata/reddit_download_2005-2024/reddit`, with raw
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data sorted into `/comments` or `/submissions`. The `/submissions`
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directory shows `RS_20*.zst` files and the `/comments` shows `RC_20*.zst`
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files. (There are no earlier zip files, such as `.bz2` or `.xz`, to deal
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with.)
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### Step 2: clone the repo on Hyak
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On Hyak, clone this repo (or `scp` the contents of `datasets/`) into the
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working directory next to the raw data, e.g.
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`/gscratch/scrubbed/comdata/reddit_download_2005-2024/`. The relevant
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code lives entirely in `datasets/`:
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- `dumps_helper.py` — shared parsing and Spark logic
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- `helper.py` — file-open helpers
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- `comments_part1.py`, `submissions_part1.py` — Part 1 entry points
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- `comments_part2.py`, `submissions_part2.py` — Part 2 entry points
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- `build_from_scratch.sh`, `add_new_month.sh` — the two runner scripts
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The Spark wrapper scripts (`start_spark_and_run.sh`,
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`start_spark_cluster.sh`, `start_spark_worker.sh`) are not in this repo;
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they are part of the CDSC Hyak environment and should already be on
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PATH.
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### Step 3: smoke-test Part 1 on a single file
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Check out `any_machine`. We'll test submissions Part 1 with just one
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file:
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```sh
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python3 submissions_part1.py parse_dump RS_2005-06.zst
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```
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To verify, go to your output directory and examine the start of the
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file:
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```sh
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python3 -c "import pandas as pd; df = pd.read_parquet('reddit_submissions.parquet'); print(df.head())"
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```
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You should see columns like `id`, `author`, `subreddit`, and `title`
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printed out. Repeat the process with `comments_part1.py`; you should see
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columns like `id`, `subreddit`, `link_id`, and `parent_id` printed out.
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**Note**: you may have to install relevant libraries before successfully
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running the file:
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```sh
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pip install --user pyarrow simdjson zstandard fire
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```
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### Step 4: Part 1 — converting `.zst` to `.parquet` files
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Now we'll convert all of our `.zst` compressed Reddit data to `.parquet`
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files. First, to generate our task list, we'll run
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```sh
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python3 submissions_part1.py gen_task_list
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```
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There should be a script, `parse_submissions_task_list`, in the working
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directory. Check the script (`less parse_submissions_task_list`); it
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should have many lines that look like our earlier test command,
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`python3 submissions_part1.py parse_dump RS_2005-06.zst`, but for all of
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our `.zst` files. Do the same process with comments to generate
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`parse_comments_task_list`.
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From a login node, run `tmux` to keep our job running and then
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`any_machine` to check out a node to do computational work. We'll run
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our tasks (from the task list) in parallel to optimize. Start with
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submissions:
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```sh
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parallel --joblog submissions_joblog.txt --results submissions/logs < parse_submissions_task_list
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```
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The `--joblog` flag creates a text file where you can see which tasks
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completed successfully, and the `--results` flag creates a directory
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where each task has its own stderr output to see the specific error
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(this is best practice for debugging).
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Now we'll monitor the job. Create a new window in tmux (`CTRL+b c`).
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We'll ssh into our computational node (`ssh n1234` — you can get the
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node name by running `ourjobs`) and run `htop`
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([more details on htop][htop-explainer]). You should see that the
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machine's CPUs are getting close to 100% usage. If all looks good,
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create a new window and repeat the process for comments.
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[htop-explainer]: https://codeahoy.com/2017/01/20/hhtop-explained-visually/
|
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|
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Once the job has successfully completed, you'll see that your CPUs are
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closer to 0% usage in `htop` and your `submissions_joblog.txt` file
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should show an `exitval` of 0 for all commands. Kill your node by
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running `scancel 12345678` (the job ID can be found from `ourjobs`).
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### Step 5: verify the per-source parquet files
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We'll want to verify our `.parquet` files at this point. We compared the
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new files' number of columns and rows to the old data: from the
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`/gscratch/scrubbed/comdata/reddit_download_2005-2024/output/temp/reddit_comments.parquet`
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directory, run
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|
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```sh
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diff <(../../../report_parquet_filesizes.py *.parquet) <(../../../report_parquet_filesizes.py /gscratch/comdata/output/temp/reddit_comments.parquet/*.parquet)
|
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```
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|
||||
and confirm there are no differences (same process with submissions).
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This may or may not be relevant if we continue using the same academic
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torrent to update data and have nothing to compare to, but you can still
|
||||
check that the new data's number of columns and rows are fairly
|
||||
continuous with the most recent data we already have.
|
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|
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### Step 6: Part 2 — sorting the `.parquet` files by author and subreddit via Spark
|
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|
||||
If the `.parquet` files reasonably appear to be complete, we can now
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sort them by author and subreddit. The most efficient way to do so is by
|
||||
using one node on `cpu-g2` with 128 CPUs and 994G memory. This one node
|
||||
splits into up to six slices (four in our current case) so the tasks
|
||||
will still be parallelized (`hyakalloc` or [this Hyak blog][hyak-blog]
|
||||
are good resources for further information). Run `tmux` on a login
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||||
node, then grab the whole node for up to a week with:
|
||||
|
||||
```sh
|
||||
salloc -p cpu-g2 -A comdata --nodes=1 --time=168:00:00 -c 128 --mem=994G
|
||||
```
|
||||
|
||||
[hyak-blog]: https://hyak.uw.edu/blog/g1-vs-g2/
|
||||
|
||||
Once Slurm drops you onto the compute node, run
|
||||
|
||||
```sh
|
||||
./start_spark_and_run.sh submissions_part2.py
|
||||
```
|
||||
|
||||
Monitor via `htop` (as described in Step 4); the CPUs may not always
|
||||
show high usage but you should see that memory is being used. Repeat
|
||||
for the comments. Successful jobs will result in
|
||||
`/gscratch/comdata/output` having four new directories:
|
||||
`reddit_submissions_by_author.parquet`,
|
||||
`reddit_submissions_by_subreddit.parquet`,
|
||||
`reddit_comments_by_author.parquet`, and
|
||||
`reddit_comments_by_subreddit.parquet`. Each should contain many
|
||||
`snappy.parquet` files (e.g.
|
||||
`part-00799-c8ec5f61-5158-43c7-ae2a-189169e9a86b-c000.snappy.parquet`)
|
||||
and `_SUCCESS`.
|
||||
|
||||
### Step 7: data verification
|
||||
|
||||
Verify and make sure the new data is reasonably complete before deleting
|
||||
any of the old data. Do a simple time series to see how many posts there
|
||||
are per day and make sure things don't fall off. It is also useful to
|
||||
have lab members test out anything they're working on again with the
|
||||
new parquet files.
|
||||
|
||||
## See also
|
||||
|
||||
The CDSC wiki page
|
||||
[CommunityData:CDSC_Reddit](https://wiki.communitydata.science/CommunityData:CDSC_Reddit)
|
||||
documents the surrounding workflow — where the raw dump files come from
|
||||
(currently ArcticShift via academic torrents), how to stage them on
|
||||
Hyak, and how to run Spark jobs on the cluster.
|
||||
is the landing page for this project on the wiki and provides
|
||||
cross-links to related CDSC and Hyak documentation. The walkthrough
|
||||
above used to live there; it now lives here so that doc and code stay
|
||||
in sync.
|
||||
|
||||
175
similarities/README.md
Normal file
175
similarities/README.md
Normal file
@@ -0,0 +1,175 @@
|
||||
# Subreddit similarity
|
||||
|
||||
This directory holds the code that computes pairwise similarities between
|
||||
subreddits — both term-based (from TF-IDF over comment text) and
|
||||
author-based (from overlapping commenter sets). Similarity matrices
|
||||
produced here feed downstream clustering (`../clustering/`) and density
|
||||
analysis (`../density/`).
|
||||
|
||||
## Datasets
|
||||
|
||||
Subreddit similarity datasets based on comment terms and comment authors
|
||||
are available on Hyak in `/gscratch/comdata/output/reddit_similarity`.
|
||||
The overall approach to subreddit similarity seems to work reasonably
|
||||
well and the code is stabilizing. If you want help using these
|
||||
similarities in a project, just reach out to
|
||||
[Nate](https://wiki.communitydata.science/People#Nathan_TeBlunthuis_.28University_of_Texas_at_Austin.29).
|
||||
|
||||
By default, the scripts here take a `TopN` parameter which selects the
|
||||
subreddits to include in the similarity dataset according to how many
|
||||
total comments they have. You can alternatively pass a value to the
|
||||
`included_subreddits` parameter for a file with the names of the
|
||||
subreddits you would like to include on each line.
|
||||
|
||||
## Scripts
|
||||
|
||||
| Script | What it does |
|
||||
|---|---|
|
||||
| `tfidf.py` | Builds TF-IDF vectors for subreddits. Fire CLI subcommands for `authors`, `terms`, `authors_weekly`, `terms_weekly`. |
|
||||
| `cosine_similarities.py` | Computes cosine similarities between subreddit TF-IDF vectors. Fire CLI subcommands `author`, `term`, `author-tf`. |
|
||||
| `weekly_cosine_similarities.py` | Same idea but operating on the weekly TF-IDF vectors. |
|
||||
| `wang_similarity.py` | A variant similarity computation based on user overlaps in the style of Wang et al. |
|
||||
| `top_subreddits_by_comments.py` | Produces the `subreddits_by_num_comments.csv` ranking used to pick the top-N subreddits for the similarity matrices. |
|
||||
| `similarities_helper.py` | Shared helpers for building TF-IDF datasets, reindexing, and selecting the top-N subreddits. |
|
||||
| `Makefile` | Wires everything together with the canonical Hyak output paths. |
|
||||
|
||||
## Methods
|
||||
|
||||
[TF-IDF](https://en.wikipedia.org/wiki/Tf%E2%80%93idf) is a common and
|
||||
simple information-retrieval technique that we can use to quantify the
|
||||
topic of a subreddit. The goal of TF-IDF is to build a vector for each
|
||||
subreddit that scores every term (or phrase) according to how
|
||||
characteristic it is of the overall lexicon used in that subreddit. For
|
||||
example, the most characteristic terms in the subreddit `/r/christianity`
|
||||
in the current version of the TF-IDF model are:
|
||||
|
||||
| Term | tf_idf |
|
||||
|:------------:|:------:|
|
||||
| christians | 0.581 |
|
||||
| christianity | 0.569 |
|
||||
| kjv | 0.568 |
|
||||
| bible | 0.557 |
|
||||
| scripture | 0.55 |
|
||||
|
||||
TF-IDF stands for "term frequency — inverse document frequency" because
|
||||
it is the product of two terms "term frequency" and "inverse document
|
||||
frequency." Term frequency quantifies the amount that a term appears in
|
||||
a subreddit (document). Inverse document frequency quantifies how much
|
||||
that term appears in other subreddits (documents). As you can see on
|
||||
the Wikipedia page, there are many possible ways of constructing and
|
||||
combining these terms.
|
||||
|
||||
I chose to normalize term frequency by the maximum (raw) term frequency
|
||||
for each subreddit:
|
||||
|
||||
$$\mathrm{tf}_{t,d} = \frac{f_{t,d}}{\max_{t' \in d}{f_{t',d}}}$$
|
||||
|
||||
I use the log inverse document frequency:
|
||||
|
||||
$$\mathrm{idf}_{t} = \log\frac{N}{|\{d \in D : t \in d\}|}$$
|
||||
|
||||
I then combine them using some smoothing to get:
|
||||
|
||||
$$\mathrm{tfidf}_{t,d} = (0.5 + 0.5 \cdot \mathrm{tf}_{t,d}) \cdot \mathrm{idf}_{t}$$
|
||||
|
||||
(Other normalization strategies are worth trying — see the note in
|
||||
`TODO`.)
|
||||
|
||||
### Building TF-IDF vectors
|
||||
|
||||
The process for building TF-IDF vectors has four steps:
|
||||
|
||||
1. Extracting terms using `../ngrams/tf_comments.py`
|
||||
2. Detecting common phrases using `../ngrams/top_comment_phrases.py`
|
||||
3. Extracting terms and common phrases using
|
||||
`../ngrams/tf_comments.py --mwe-pass='second'`
|
||||
4. Building IDF and TF-IDF scores in `tfidf.py`
|
||||
|
||||
#### Running `tf_comments.py` on the backfill queue
|
||||
|
||||
The main reason that I did it in four steps instead of one is to take
|
||||
advantage of the backfill queue for running `tf_comments.py`. This step
|
||||
requires reading all of the text in every comment and converting it to
|
||||
a bag of words at the subreddit level. This is a lot of computation
|
||||
that is easily parallelizable. The script `../ngrams/run_tf_jobs.sh`
|
||||
partially automates running steps 1 (or 3) on the backfill queue.
|
||||
|
||||
#### Phrase detection using pointwise mutual information
|
||||
|
||||
TF-IDF is simple, but only uses single words (unigrams). Sequences of
|
||||
multiple words can be important to account for how words have different
|
||||
meanings in different contexts or how sequences of words refer to
|
||||
distinct things like names. Dealing with context or longer sequences of
|
||||
words is a common challenge in natural language processing since the
|
||||
number of possible n-grams grows like crazy as n gets bigger. Phrase
|
||||
detection helps this problem by limiting the set of n-grams to those
|
||||
most informative.
|
||||
|
||||
But how do we detect phrases? I implemented [pointwise mutual
|
||||
information](https://en.wikipedia.org/wiki/Pointwise_mutual_information),
|
||||
which is a pretty simple way but seems to work pretty well.
|
||||
|
||||
PMI is a quantity derived from information theory. The intuition is
|
||||
that if two words occur together quite frequently compared to how often
|
||||
they appear separately then the cooccurrance is likely to be
|
||||
informative.
|
||||
|
||||
$$\operatorname{pmi}(x;y) \equiv \log\frac{p(x,y)}{p(x)\,p(y)} = \log\frac{p(x|y)}{p(x)} = \log\frac{p(y|x)}{p(y)}$$
|
||||
|
||||
In `../ngrams/tf_comments.py` if `--mwe-pass=first` then a 10% sample
|
||||
of 1-4-grams (sequences of terms up to length 4) will be written to a
|
||||
file to be consumed by `../ngrams/top_comment_phrases.py`.
|
||||
`top_comment_phrases.py` computes the PMI for these possible phrases
|
||||
and writes those that occur at least 3500 times in the sample of
|
||||
n-grams and have a PMI of at least 3 (about 65000 expressions).
|
||||
|
||||
`tf_comments.py --mwe-pass=second` then uses the detected phrases and
|
||||
adds them to the term frequency data.
|
||||
|
||||
## Cosine similarity
|
||||
|
||||
Once the TF-IDF vectors are built, making a similarity score between
|
||||
two subreddits is straightforward using cosine similarity.
|
||||
|
||||
$$\text{similarity} = \cos(\theta) = \frac{\mathbf{A} \cdot \mathbf{B}}{\|\mathbf{A}\|\,\|\mathbf{B}\|} = \frac{\sum_{i=1}^{n}{A_i\,B_i}}{\sqrt{\sum_{i=1}^{n}{A_i^2}}\,\sqrt{\sum_{i=1}^{n}{B_i^2}}}$$
|
||||
|
||||
Intuitively, we represent two subreddits as lines in a high-dimensional
|
||||
space (TF-IDF vectors). In linear algebra, the dot product ($\cdot$)
|
||||
between two vectors takes their weighted sum (e.g. linear regression is
|
||||
a dot product of a vector of covariates and a vector of weights). The
|
||||
vectors might have different lengths — if one subreddit has more words
|
||||
in comments than the other — so in cosine similarity the dot product
|
||||
is normalized by the magnitude (length) of the vectors. It turns out
|
||||
that this is equivalent to taking the cosine of the two vectors. So
|
||||
cosine similarity in essence quantifies the angle between the two lines
|
||||
in high-dimensional space. If the cosine similarity between two
|
||||
subreddits is greater then their TF-IDF vectors are more correlated.
|
||||
|
||||
Cosine similarity with TF-IDF is popular (indeed it has been applied to
|
||||
Reddit in research several times before) because it quantifies the
|
||||
correlation between the most characteristic terms for two communities.
|
||||
|
||||
Compared to other approaches to similarity like those using word
|
||||
embeddings or topic models it may struggle to handle polysemy, synonymy,
|
||||
or correlations between different terms. Using phrase detection helps
|
||||
with this a little bit. The advantages of this approach are simplicity
|
||||
and scalability. I'm thinking about using [latent semantic
|
||||
analysis](https://en.wikipedia.org/wiki/Latent_semantic_analysis) as an
|
||||
intermediate step to improve upon similarities based on raw TF-IDFs.
|
||||
|
||||
Even still, computing similarities between a large number of subreddits
|
||||
is computationally expensive and requires $n(n-1)/2$ dot-product
|
||||
evaluations. This can be sped up by passing
|
||||
`similarity-threshold=X` where $X>0$ into `cosine_similarities.py`. I
|
||||
used a cosine similarity function that's built into the spark matrix
|
||||
library which supports the `DIMSUM` algorithm for approximating
|
||||
matrix-matrix products. This algorithm is commonly used in industry
|
||||
(i.e. at Twitter, Google) for large-scale similarity scoring.
|
||||
|
||||
## See also
|
||||
|
||||
The CDSC wiki page
|
||||
[CommunityData:CDSC_Reddit](https://wiki.communitydata.science/CommunityData:CDSC_Reddit)
|
||||
is the landing page for this project on the wiki. The methods writeup
|
||||
above used to live there; it now lives here so that doc and code stay
|
||||
in sync.
|
||||
Reference in New Issue
Block a user