instant-segment/README.md

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# Instant Segment: fast English word segmentation in Rust
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Instant Segment is a fast Apache-2.0 library for English word segmentation. It
is based on the Python [wordsegment][python] project written by Grant Jenks,
which is in turn based on code from Peter Norvig's chapter [Natural Language
Corpus Data][chapter] from the book [Beautiful Data][book] (Segaran and
Hammerbacher, 2009).
The data files in this repository are derived from the [Google Web Trillion Word
Corpus][corpus], as described by Thorsten Brants and Alex Franz, and
[distributed][distributed] by the Linguistic Data Consortium. Note that this
data **"may only be used for linguistic education and research"**, so for any
other usage you should acquire a different data set.
For the microbenchmark included in this repository, Instant Segment is ~17x
faster than the Python implementation. Further optimizations are planned -- see
the [issues][issues]. The API has been carefully constructed so that multiple
segmentations can share the underlying state to allow parallel usage.
## How it works
Instant Segment works by segmenting a string into words by selecting the splits
with the highest probability given a corpus of words and their occurrences.
For instance, provided that `choose` and `spain` occur more frequently than
`chooses` and `pain`, and that the pair `choose spain` occurs more frequently
than `chooses pain`, Instant Segment can help identify the domain
`choosespain.com` as `ChooseSpain.com` which more likely matches user intent.
We use this technique at
[Instant Domain Search](https://instantdomainsearch.com/search/sale?q=choosespain)
to help our users find relevant domains.
## Using the library
### Python **(>= 3.9)**
```sh
pip install instant-segment
```
### Rust
```toml
[dependencies]
instant-segment = "0.8.1"
```
### Examples
The following examples expect `unigrams` and `bigrams` to exist. See the
[examples](./examples) to see how to construct these objects.
```python
import instant_segment
segmenter = instant_segment.Segmenter(unigrams, bigrams)
search = instant_segment.Search()
segmenter.segment("instantdomainsearch", search)
print([word for word in search])
--> ['instant', 'domain', 'search']
```
```rust
use instant_segment::{Search, Segmenter}; use std::collections::HashMap;
let segmenter = Segmenter::from_maps(unigrams, bigrams);
let mut search = Search::default();
let words = segmenter
.segment("instantdomainsearch", &mut search)
.unwrap();
println!("{:?}", words.collect::<Vec<&str>>())
--> ["instant", "domain", "search"]
```
Check out the tests for more thorough examples:
[Rust](./instant-segment/src/test_cases.rs),
[Python](./instant-segment-py/test/test.py)
## Testing
To run the tests run the following:
```
cargo t -p instant-segment --all-features
```
You can also test the Python bindings with:
```
make test-python
```
[python]: https://github.com/grantjenks/python-wordsegment
[chapter]: http://norvig.com/ngrams/
[book]: http://oreilly.com/catalog/9780596157111/
[corpus]:
http://googleresearch.blogspot.com/2006/08/all-our-n-gram-are-belong-to-you.html
[distributed]: https://catalog.ldc.upenn.edu/LDC2006T13
[issues]: https://github.com/InstantDomainSearch/instant-segment/issues