Python bindings for Tantivy the full-text search engine library written in Rust.
The bindings can be installed using from pypi using pip:
pip install tantivy
If no binary wheel is present for your operating system the bindings will be build from source, this means that Rust needs to be installed before building can succeed.
Note that the bindings are using PyO3, which only supports python3.
Setting up a development environment can be done in a virtual environment using
nox
or using local packages using the provided Makefile
.
For the nox
setup install the virtual environment and build the bindings using:
python3 -m pip install nox
nox
For the Makefile
based setup run:
make
Running the tests is done using:
make test
The Python bindings have a similar API to Tantivy. To create a index first a schema needs to be built. After that documents can be added to the index and a reader can be created to search the index.
import tantivy
# Declaring our schema.
schema_builder = tantivy.SchemaBuilder()
schema_builder.add_text_field("title", stored=True)
schema_builder.add_text_field("body", stored=True)
schema_builder.add_integer_field("doc_id",stored=True)
schema = schema_builder.build()
# Creating our index (in memory)
index = tantivy.Index(schema)
To have a persistent index, use the path parameter to store the index on the disk, e.g:
index = tantivy.Index(schema, path=os.getcwd() + '/index')
By default, tantivy offers the following tokenizers which can be used in tantivy-py:
-
default
default
is the tokenizer that will be used if you do not assign a specific tokenizer to your text field. It will chop your text on punctuation and whitespaces, removes tokens that are longer than 40 chars, and lowercase your text. -
raw
Does not actual tokenizer your text. It keeps it entirely unprocessed. It can be useful to index uuids, or urls for instance. -
en_stem
In addition to what default
does, the en_stem
tokenizer also
apply stemming to your tokens. Stemming consists in trimming words to
remove their inflection. This tokenizer is slower than the default one,
but is recommended to improve recall.
to use the above tokenizers, simply provide them as a parameter to add_text_field
. e.g.
schema_builder.add_text_field("body", stored=True, tokenizer_name='en_stem')
writer = index.writer()
writer.add_document(tantivy.Document(
doc_id=1,
title=["The Old Man and the Sea"],
body=["""He was an old man who fished alone in a skiff in the Gulf Stream and he had gone eighty-four days now without taking a fish."""],
))
# ... and committing
writer.commit()
First you need to get a searcher for the index
# Reload the index to ensure it points to the last commit.
index.reload()
searcher = index.searcher()
Then you need to get a valid query object by parsing your query on the index.
query = index.parse_query("fish days", ["title", "body"])
(best_score, best_doc_address) = searcher.search(query, 3).hits[0]
best_doc = searcher.doc(best_doc_address)
assert best_doc["title"] == ["The Old Man and the Sea"]
print(best_doc)
tantivy-py supports the query language used in tantivy. Some basic query Formats.
- AND and OR conjunctions.
query = index.parse_query('(Old AND Man) OR Stream', ["title", "body"])
(best_score, best_doc_address) = searcher.search(query, 3).hits[0]
best_doc = searcher.doc(best_doc_address)
- +(includes) and -(excludes) operators.
query = index.parse_query('+Old +Man chef -fished', ["title", "body"])
(best_score, best_doc_address) = searcher.search(query, 3).hits[0]
best_doc = searcher.doc(best_doc_address)
Note: in a query like above, a word with no +/- acts like an OR.
- phrase search.
query = index.parse_query('"eighty-four days"', ["title", "body"])
(best_score, best_doc_address) = searcher.search(query, 3).hits[0]
best_doc = searcher.doc(best_doc_address)
- integer search
query = index.parse_query('"eighty-four days"', ["doc_id"])
(best_score, best_doc_address) = searcher.search(query, 3).hits[0]
best_doc = searcher.doc(best_doc_address)
Note: for integer search, the integer field should be indexed.
For more possible query formats and possible query options, see Tantivy Query Parser Docs.