wordfreq/wordfreq_builder/rules.ninja
Robyn Speer 7d1719cfb4 builder: Use an optional cutoff when merging counts
This allows the Reddit-merging step to not use such a ludicrous amount
of memory.


Former-commit-id: 973caca253
2015-12-15 14:44:34 -05:00

105 lines
4.2 KiB
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# This defines the rules on how to build parts of the wordfreq lists, using the
# Ninja build system:
#
# http://martine.github.io/ninja/manual.html
#
# Ninja is available in the 'ninja-build' Ubuntu package. It's like make with
# better parallelism and the ability for build steps to produce multiple
# outputs. The tradeoff is that its rule syntax isn't full of magic for
# expanding wildcards and finding dependencies, so in general you have to
# write the dependencies using a script.
#
# This file will become the header of the larger build.ninja file, which also
# contains the programatically-defined dependency graph.
# Variables
JQ = lib/jq-linux64
# How to build the build.ninja file itself. (Use the Makefile to get it the
# first time.)
rule build_deps
command = python -m wordfreq_builder.cli.build_deps $in > $out
# Splits the single file $in into $slices parts, whose names will be
# $prefix plus a two-digit numeric suffix.
rule split
command = mkdir -p $$(dirname $prefix) && split -d -n r/$slices $in $prefix
# wiki2text is a tool I wrote using Nim 0.11, which extracts plain text from
# Wikipedia dumps obtained from dumps.wikimedia.org. The code is at
# https://github.com/rspeer/wiki2text.
rule wiki2text
command = bunzip2 -c $in | wiki2text > $out
# To tokenize Japanese, we run it through Mecab and take the first column.
rule tokenize_japanese
command = mecab -b 1048576 < $in | cut -f 1 | grep -v "EOS" > $out
# Process Chinese by converting all Traditional Chinese characters to
# Simplified equivalents -- not because that's a good way to get readable
# text, but because that's how we're going to look them up.
rule simplify_chinese
command = python -m wordfreq_builder.cli.simplify_chinese < $in > $out
# Tokenizing text from Twitter requires us to language-detect and tokenize
# in the same step.
rule tokenize_twitter
command = mkdir -p $$(dirname $prefix) && python -m wordfreq_builder.cli.tokenize_twitter $in $prefix
# To convert the Leeds corpus, look for space-separated lines that start with
# an integer and a decimal. The integer is the rank, which we discard. The
# decimal is the frequency, and the remaining text is the term. Use sed -n
# with /p to output only lines where the match was successful.
#
# Grep out the term "EOS", an indication that Leeds used MeCab and didn't
# strip out the EOS lines.
rule convert_leeds
command = sed -rn 's/([0-9]+) ([0-9.]+) (.*)/\3,\2/p' < $in | grep -v 'EOS,' > $out
# To convert the OpenSubtitles frequency data, simply replace spaces with
# commas.
rule convert_opensubtitles
command = tr ' ' ',' < $in > $out
# To convert SUBTLEX, we take the 1st and Nth columns, strip the header,
# run it through ftfy, convert tabs to commas and spurious CSV formatting to
# spaces, and remove lines with unfixable half-mojibake.
rule convert_subtlex
command = cut -f $textcol,$freqcol $in | tail -n +$startrow | ftfy | tr ' ",' ', ' | grep -v 'â,' > $out
rule convert_jieba
command = cut -d ' ' -f 1,2 $in | grep -v '[,"]' | tr ' ' ',' > $out
rule counts_to_jieba
command = python -m wordfreq_builder.cli.counts_to_jieba $in $out
# Convert and clean up the Google Books Syntactic N-grams data. Concatenate all
# the input files, keep only the single words and their counts, and only keep
# lines with counts of 100 or more.
#
# (These will still be repeated as the word appears in different grammatical
# roles, information that the source data provides that we're discarding. The
# source data was already filtered to only show words in roles with at least
# two-digit counts of occurences.)
rule convert_google_syntactic_ngrams
command = zcat $in | cut -f 1,3 | grep -v '[,"]' | sed -rn 's/(.*)\s(...+)/\1,\2/p' > $out
rule count
command = python -m wordfreq_builder.cli.count_tokens $in $out
rule merge
command = python -m wordfreq_builder.cli.merge_freqs -o $out -c $cutoff -l $lang $in
rule merge_counts
command = python -m wordfreq_builder.cli.merge_counts -o $out -c $cutoff $in
rule freqs2cB
command = python -m wordfreq_builder.cli.freqs_to_cB $in $out
rule cat
command = cat $in > $out
rule extract_reddit
command = bunzip2 -c $in | $JQ -r '.body' | fgrep -v '[deleted]' | sed 's/&gt;/>/g' | sed 's/&lt;/</g' | sed 's/&amp;/\&/g' | gzip -c > $out