8.1 KiB
Writing custom sanitizer and token analysis modules for the ICU tokenizer
The ICU tokenizer provides a highly customizable method to pre-process and normalize the name information of the input data before it is added to the search index. It comes with a selection of sanitizers and token analyzers which you can use to adapt your installation to your needs. If the provided modules are not enough, you can also provide your own implementations. This section describes the API of sanitizers and token analysis.
!!! warning This API is currently in early alpha status. While this API is meant to be a public API on which other sanitizers and token analyzers may be implemented, it is not guaranteed to be stable at the moment.
Using non-standard sanitizers and token analyzers
Sanitizer names (in the step
property) and token analysis names (in the
analyzer
) may refer to externally supplied modules. There are two ways
to include external modules: through a library or from the project directory.
To include a module from a library, use the absolute import path as name and make sure the library can be found in your PYTHONPATH.
To use a custom module without creating a library, you can put the module
somewhere in your project directory and then use the relative path to the
file. Include the whole name of the file including the .py
ending.
Custom sanitizer modules
A sanitizer module must export a single factory function create
with the
following signature:
def create(config: SanitizerConfig) -> Callable[[ProcessInfo], None]
The function receives the custom configuration for the sanitizer and must
return a callable (function or class) that transforms the name and address
terms of a place. When a place is processed, then a ProcessInfo
object
is created from the information that was queried from the database. This
object is sequentially handed to each configured sanitizer, so that each
sanitizer receives the result of processing from the previous sanitizer.
After the last sanitizer is finished, the resulting name and address lists
are forwarded to the token analysis module.
Sanitizer functions are instantiated once and then called for each place that is imported or updated. They don't need to be thread-safe. If multi-threading is used, each thread creates their own instance of the function.
Sanitizer configuration
::: nominatim.tokenizer.sanitizers.config.SanitizerConfig options: heading_level: 6
The main filter function of the sanitizer
The filter function receives a single object of type ProcessInfo
which has with three members:
place: PlaceInfo
: read-only information about the place being processed. See PlaceInfo below.names: List[PlaceName]
: The current list of names for the place.address: List[PlaceName]
: The current list of address names for the place.
While the place
member is provided for information only, the names
and
address
lists are meant to be manipulated by the sanitizer. It may add and
remove entries, change information within a single entry (for example by
adding extra attributes) or completely replace the list with a different one.
PlaceInfo - information about the place
::: nominatim.data.place_info.PlaceInfo options: heading_level: 6
PlaceName - extended naming information
::: nominatim.data.place_name.PlaceName options: heading_level: 6
Example: Filter for US street prefixes
The following sanitizer removes the directional prefixes from street names in the US:
import re
def _filter_function(obj):
if obj.place.country_code == 'us' \
and obj.place.rank_address >= 26 and obj.place.rank_address <= 27:
for name in obj.names:
name.name = re.sub(r'^(north|south|west|east) ',
'',
name.name,
flags=re.IGNORECASE)
def create(config):
return _filter_function
This is the most simple form of a sanitizer module. If defines a single
filter function and implements the required create()
function by returning
the filter.
The filter function first checks if the object is interesting for the
sanitizer. Namely it checks if the place is in the US (through country_code
)
and it the place is a street (a rank_address
of 26 or 27). If the
conditions are met, then it goes through all available names and
removes any leading directional prefix using a simple regular expression.
Save the source code in a file in your project directory, for example as
us_streets.py
. Then you can use the sanitizer in your icu_tokenizer.yaml
:
...
sanitizers:
- step: us_streets.py
...
!!! warning
This example is just a simplified show case on how to create a sanitizer.
It is not really read for real-world use: while the sanitizer would
correctly transform West 5th Street
into 5th Street
. it would also
shorten a simple North Street
to Street
.
For more sanitizer examples, have a look at the sanitizers provided by Nominatim.
They can be found in the directory
nominatim/tokenizer/sanitizers
.
Custom token analysis module
::: nominatim.tokenizer.token_analysis.base.AnalysisModule options: heading_level: 6
::: nominatim.tokenizer.token_analysis.base.Analyzer options: heading_level: 6
Example: Creating acronym variants for long names
The following example of a token analysis module creates acronyms from very long names and adds them as a variant:
class AcronymMaker:
""" This class is the actual analyzer.
"""
def __init__(self, norm, trans):
self.norm = norm
self.trans = trans
def get_canonical_id(self, name):
# In simple cases, the normalized name can be used as a canonical id.
return self.norm.transliterate(name.name).strip()
def compute_variants(self, name):
# The transliterated form of the name always makes up a variant.
variants = [self.trans.transliterate(name)]
# Only create acronyms from very long words.
if len(name) > 20:
# Take the first letter from each word to form the acronym.
acronym = ''.join(w[0] for w in name.split())
# If that leds to an acronym with at least three letters,
# add the resulting acronym as a variant.
if len(acronym) > 2:
# Never forget to transliterate the variants before returning them.
variants.append(self.trans.transliterate(acronym))
return variants
# The following two functions are the module interface.
def configure(rules, normalizer, transliterator):
# There is no configuration to parse and no data to set up.
# Just return an empty configuration.
return None
def create(normalizer, transliterator, config):
# Return a new instance of our token analysis class above.
return AcronymMaker(normalizer, transliterator)
Given the name Trans-Siberian Railway
, the code above would return the full
name Trans-Siberian Railway
and the acronym TSR
as variant, so that
searching would work for both.
Sanitizers vs. Token analysis - what to use for variants?
It is not always clear when to implement variations in the sanitizer and when to write a token analysis module. Just take the acronym example above: it would also have been possible to write a sanitizer which adds the acronym as an additional name to the name list. The result would have been similar. So which should be used when?
The most important thing to keep in mind is that variants created by the token analysis are only saved in the word lookup table. They do not need extra space in the search index. If there are many spelling variations, this can mean quite a significant amount of space is saved.
When creating additional names with a sanitizer, these names are completely independent. In particular, they can be fed into different token analysis modules. This gives a much greater flexibility but at the price that the additional names increase the size of the search index.