https://github.com/annotation/text-fabric
Tip revision: 70e2b58cbb0d7763d4e0652d177494890629ee95 authored by Dirk Roorda on 25 May 2023, 15:52:38 UTC
automation of the release process of a TF dataset
automation of the release process of a TF dataset
Tip revision: 70e2b58
fabric.py
"""
# Fabric
The main class that works the core API is `tf.fabric.Fabric`.
It is responsible for feature data loading and saving.
!!! note "Tutorial"
The tutorials for specific annotated corpora (see `tf.about.corpora`)
put the Text-Fabric API on show for vastly different corpora.
!!! note "Generic API versus apps"
This is the API of Text-Fabric in general.
Text-Fabric has no baked in knowledge of particular corpora.
However, Text-Fabric comes with several *apps* that make working
with specific `tf.about.corpora` easier.
Such an app may be as simple as a *config.yaml* file, even an empty one.
The extra functions of those apps
are available through the advanced API: `A`, see `tf.app`.
Fabric has built-in volume support: it can load volumes of a work and it can
collect volumes into a new work.
Fabric is an extension of `tf.core.fabric` where volume support is added.
"""
import types
from .parameters import OTYPE
from .core.helpers import itemize
from .core.fabric import FabricCore
from .core.files import (
LOCATIONS,
LOCAL,
normpath,
unexpanduser as ux,
setDir,
expandDir,
dirExists,
)
from .core.timestamp import Timestamp, SILENT_D, silentConvert
from .volumes import extract, collect, getVolumes
from .convert.mql import exportMQL
class Fabric(FabricCore):
"""Initialize the core API for a corpus.
!!! note "Implementation"
Fabric is implemented as a subclass of `tf.core.fabric.FabricCore`
See `tf.core.fabric.FabricCore for most of the functionality.
Here we document the volume support only.
Parameters
----------
collection: string, optional None
If the collection exists, it will be loaded instead of the whole corpus.
If the collection does not exist an error will be generated.
volume: string, optional None
If the volume exists, it will be loaded instead of the whole corpus.
If the volume does not exist an error will be generated.
When determining whether the volume exists, only the first members of `locations`
and `modules` will be used.
There the volumes reside under a directory `_local`.
You may want to add `_local` to your `.gitignore`, so that volumes generated
in a backend directory will not be pushed.
!!! caution "Volumes and collections"
It is an error to load a volume as a collection and vice-versa
You get a warning if you pass both a volume and a collection.
The collection takes precedence, and the volume is ignored in that case.
"""
def __init__(
self,
locations=None,
modules=None,
silent=SILENT_D,
volume=None,
collection=None,
**kwargs,
):
if modules is None:
module = [""]
elif type(modules) is str:
module = [normpath(x.strip()) for x in itemize(modules, "\n")]
else:
module = [normpath(str(x)) for x in modules]
module = module[0] if module else ""
module = module.strip("/")
if locations is None:
location = LOCATIONS if LOCATIONS else [""]
elif type(locations) is str:
location = [normpath(x.strip()) for x in itemize(locations, "\n")]
else:
location = [normpath(str(x)) for x in locations]
location = location[0] if location else ""
location = location.rstrip("/")
setDir(self)
location = expandDir(self, location)
sep = "/" if location and module else ""
location = f"{location}{sep}{module}"
sep = "/" if location else ""
volumeBase = f"{location}{sep}{LOCAL}"
collectionBase = f"{location}{sep}{LOCAL}"
TM = Timestamp(silent=silent)
if collection:
collectionLoc = f"{collectionBase}/{collection}"
self.collectionLoc = collectionLoc
locations = collectionLoc
modules = [""]
if not dirExists(locations):
TM = Timestamp(silent=silent)
TM.error(f"Collection {collection} not found under {ux(collectionLoc)}")
elif volume:
volumeLoc = f"{volumeBase}/{volume}"
self.volumeLoc = volumeLoc
locations = volumeLoc
modules = [""]
if not dirExists(locations):
TM.error(f"Volume {volume} not found under {ux(volumeLoc)}")
if collection and volume:
TM.warning(
f"Both collection={collection} and volume={volume} specified.", tm=False
)
TM.warning("Ignoring the volume", tm=False)
super().__init__(locations=locations, modules=modules, silent=silent, **kwargs)
self.volumeBase = volumeBase
self.collectionBase = collectionBase
self.collection = collection
self.volume = None if collection else volume
self.exportMQL = types.MethodType(exportMQL, self)
def _makeApi(self):
api = super()._makeApi()
if self.collection:
self.collectionInfo = self.features[OTYPE].metaData.get("collection", None)
if self.collectionInfo is None:
self.error("This is not a collection!")
self.good = False
return None
elif self.volume:
self.volumeInfo = self.features[OTYPE].metaData.get("volume", None)
if self.volumeInfo is None:
self.error("This is not a volume!")
self.good = False
return None
return api
def getVolumes(self):
"""Lists available volumes within the dataset.
See `tf.volumes.extract.getVolumes`.
"""
volumeBase = self.volumeBase
return getVolumes(volumeBase)
def extract(
self, volumes=True, byTitle=True, silent=SILENT_D, overwrite=None, show=False
):
"""Extract volumes from the currently loaded work.
This function is only provided if the dataset is a work,
i.e. it is loaded as a whole.
When a single volume of a work is loaded, there is no `extract` method.
See `tf.volumes.extract` and note that parameters
`workLocation`, `volumesLocation`, `api`
will be supplied automatically.
"""
silent = silentConvert(silent)
volume = self.volume
volumeBase = self.volumeBase
api = self.api
if volume:
self.error("Cannot extract volumes from a single volume of a work")
return
return extract(
None,
volumeBase,
volumes=volumes,
byTitle=byTitle,
silent=silent,
api=api,
overwrite=overwrite,
checkOnly=False,
show=show,
)
def collect(
self,
volumes,
collection,
volumeType=None,
volumeFeature=None,
mergeTypes=None,
featureMeta=None,
silent=SILENT_D,
overwrite=None,
):
"""Creates a work out of a number of volumes.
Parameters
----------
volumes: tuple
Just the names of the volumes that you want to collect.
collection: string
The name of the new collection
See `tf.volumes.collect` for the other parameters and note that parameter
`workLocation` will be supplied automatically from `collection`.
"""
volumeBase = self.volumeBase
return collect(
tuple(f"{volumeBase}/{name}" for name in volumes),
f"{volumeBase}/{collection}",
volumeType=volumeType,
volumeFeature=volumeFeature,
mergeTypes=mergeTypes,
featureMeta=featureMeta,
silent=silent,
overwrite=overwrite,
)