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dkpro-cassis

UIMA CAS processing library in Python

  • 0.9.1
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dkpro-cassis

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DKPro cassis (pronunciation: [ka.sis]) provides a pure-Python implementation of the Common Analysis System (CAS) as defined by the UIMA <https://uima.apache.org>_ framework. The CAS is a data structure representing an object to be enriched with annotations (the co-called Subject of Analysis, short SofA).

This library enables the creation and manipulation of annotated documents (CAS objects) and their associated type systems as well as loading and saving them in the CAS XMI XML representation <https://uima.apache.org/d/uimaj-current/references.html#ugr.ref.xmi>_ or the CAS JSON representation <https://github.com/apache/uima-uimaj-io-jsoncas#readme>_ in Python programs. This can ease in particular the integration of Python-based Natural Language Processing (e.g. spacy <https://spacy.io>_ or NLTK <https://www.nltk.org>) and Machine Learning librarys (e.g. scikit-learn <https://scikit-learn.org/stable/> or Keras <https://keras.io>_) in UIMA-based text analysis workflows.

An example of cassis in action is the spacy recommender for INCEpTION <https://github.com/inception-project/external-recommender-spacy>, which wraps the spacy NLP library as a web service which can be used in conjunction with the INCEpTION <https://inception-project.github.io> text annotation platform to automatically generate annotation suggestions.

Features

Currently supported features are:

  • Text SofAs
  • Deserializing/serializing UIMA CAS from/to XMI
  • Deserializing/serializing UIMA CAS from/to JSON
  • Deserializing/serializing type systems from/to XML
  • Selecting annotations, selecting covered annotations, adding annotations
  • Type inheritance
  • Multiple SofA support
  • Type system can be changed after loading
  • Primitive and reference features and arrays of primitives and references

Some features are still under development, e.g.

  • Proper type checking
  • XML/XMI schema validation

Installation

To install the package with :code:pip, just run

pip install dkpro-cassis

Usage

Example CAS XMI and types system files can be found under :code:tests\test_files.

Reading a CAS file


**From XMI:** A CAS can be deserialized from the UIMA CAS XMI (XML 1.0) format either
by reading from a file or string using :code:`load_cas_from_xmi`.

.. code:: python

    from cassis import *

    with open('typesystem.xml', 'rb') as f:
        typesystem = load_typesystem(f)
        
    with open('cas.xmi', 'rb') as f:
       cas = load_cas_from_xmi(f, typesystem=typesystem)

**From JSON:** The UIMA JSON CAS format is also supported and can be loaded using :code:`load_cas_from_json`.
Most UIMA JSON CAS files come with an embedded typesystem, so it is not necessary to specify one.

.. code:: python

    from cassis import *

    with open('cas.json', 'rb') as f:
       cas = load_cas_from_json(f)

Writing a CAS file

To XMI: A CAS can be serialized to XMI either by writing to a file or be returned as a string using :code:cas.to_xmi().

.. code:: python

from cassis import *

# Returned as a string
xmi = cas.to_xmi()

# Written to file
cas.to_xmi("my_cas.xmi")

To JSON: A CAS can also be written to JSON using :code:cas.to_json().

.. code:: python

from cassis import *

# Returned as a string
xmi = cas.to_json()

# Written to file
cas.to_json("my_cas.json")

Creating a CAS


A CAS (Common Analysis System) object typically represents a (text) document. When using cassis,
you will likely most often reading existing CAS files, modify them and then
writing them out again. But you can also create CAS objects from scratch,
e.g. if you want to convert some data into a CAS object in order to create a pre-annotated text.
If you do not have a pre-defined typesystem to work with, you will have to define one.

.. code:: python

    typesystem = TypeSystem()

    cas = Cas(
        sofa_string = "Joe waited for the train . The train was late .",
        document_language = "en",
        typesystem = typesystem)

    print(cas.sofa_string)
    print(cas.sofa_mime)
    print(cas.document_language)

Adding annotations

Note: type names used below are examples only. The actual CAS files you will be dealing with will use other names! You can get a list of the types using :code:cas.typesystem.get_types().

Given a type system with a type :code:cassis.Token that has an :code:id and :code:pos feature, annotations can be added in the following:

.. code:: python

from cassis import *

with open('typesystem.xml', 'rb') as f:
    typesystem = load_typesystem(f)
    
with open('cas.xmi', 'rb') as f:
    cas = load_cas_from_xmi(f, typesystem=typesystem)
   
Token = typesystem.get_type('cassis.Token')

tokens = [
    Token(begin=0, end=3, id='0', pos='NNP'),
    Token(begin=4, end=10, id='1', pos='VBD'),
    Token(begin=11, end=14, id='2', pos='IN'),
    Token(begin=15, end=18, id='3', pos='DT'),
    Token(begin=19, end=24, id='4', pos='NN'),
    Token(begin=25, end=26, id='5', pos='.'),
]

for token in tokens:
    cas.add(token)

Selecting annotations


.. code:: python

    from cassis import *

    with open('typesystem.xml', 'rb') as f:
        typesystem = load_typesystem(f)
        
    with open('cas.xmi', 'rb') as f:
        cas = load_cas_from_xmi(f, typesystem=typesystem)

    for sentence in cas.select('cassis.Sentence'):
        for token in cas.select_covered('cassis.Token', sentence):
            print(token.get_covered_text())
            
            # Annotation values can be accessed as properties
            print('Token: begin={0}, end={1}, id={2}, pos={3}'.format(token.begin, token.end, token.id, token.pos)) 

Getting and setting (nested) features

If you want to access a variable but only have its name as a string or have nested feature structures, e.g. a feature structure with feature :code:a that has a feature :code:b that has a feature :code:c, some of which can be :code:None, then you can use the following:

.. code:: python

fs.get("var_name") # Or
fs["var_name"]

Or in the nested case,

.. code:: python

fs.get("a.b.c")
fs["a.b.c"]

If :code:a or :code:b or :code:c are :code:None, then this returns instead of throwing an error.

Another example would be a StringList containing :code:["Foo", "Bar", "Baz"]:

.. code:: python

assert lst.get("head") == "foo"
assert lst.get("tail.head") == "bar"
assert lst.get("tail.tail.head") == "baz"
assert lst.get("tail.tail.tail.head") == None
assert lst.get("tail.tail.tail.tail.head") == None

The same goes for setting:

.. code:: python

# Functional
lst.set("head", "new_foo")
lst.set("tail.head", "new_bar")
lst.set("tail.tail.head", "new_baz")

assert lst.get("head") == "new_foo"
assert lst.get("tail.head") == "new_bar"
assert lst.get("tail.tail.head") == "new_baz"

# Bracket access
lst["head"] = "newer_foo"
lst["tail.head"] = "newer_bar"
lst["tail.tail.head"] = "newer_baz"

assert lst["head"] == "newer_foo"
assert lst["tail.head"] == "newer_bar"
assert lst["tail.tail.head"] == "newer_baz"

Creating types and adding features


.. code:: python

    from cassis import *

    typesystem = TypeSystem()

    parent_type = typesystem.create_type(name='example.ParentType')
    typesystem.create_feature(domainType=parent_type, name='parentFeature', rangeType=TYPE_NAME_STRING)

    child_type = typesystem.create_type(name='example.ChildType', supertypeName=parent_type.name)
    typesystem.create_feature(domainType=child_type, name='childFeature', rangeType=TYPE_NAME_INTEGER)

    annotation = child_type(parentFeature='parent', childFeature='child')

When adding new features, these changes are propagated. For example,
adding a feature to a parent type makes it available to a child type.
Therefore, the type system does not need to be frozen for consistency.
The type system can be changed even after loading, it is not frozen
like in UIMAj.

Sofa support
~~~~~~~~~~~~

A Sofa represents some form of an unstructured artifact that is processed in a UIMA pipeline. It contains for instance
the document text. Currently, new Sofas can be created. This is automatically done when creating a new view. Basic
properties of the Sofa can be read and written:

.. code:: python

    cas = Cas(
        sofa_string = "Joe waited for the train . The train was late .",
        document_language = "en")

    print(cas.sofa_string)
    print(cas.sofa_mime)
    print(cas.document_language)

Array support
~~~~~~~~~~~~~

Array feature values are not simply Python arrays, but they are wrapped in a feature structure of
a UIMA array type such as :code:`uima.cas.FSArray`.

.. code:: python

    from cassis import *
    from cassis.typesystem import TYPE_NAME_FS_ARRAY, TYPE_NAME_ANNOTATION

    typesystem = TypeSystem()

    ArrayHolder = typesystem.create_type(name='example.ArrayHolder')
    typesystem.create_feature(domainType=ArrayHolder, name='array', rangeType=TYPE_NAME_FS_ARRAY)

    cas = Cas(typesystem=typesystem)

    Annotation = cas.typesystem.get_type(TYPE_NAME_ANNOTATION)
    FSArray = cas.typesystem.get_type(TYPE_NAME_FS_ARRAY)

    ann = Annotation(begin=0, end=1)
    cas.add(ann1)
    holder = ArrayHolder(array=FSArray(elements=[ann, ann, ann]))
    cas.add(holder)

Managing views
~~~~~~~~~~~~~~

A view into a CAS contains a subset of feature structures and annotations. One view corresponds to exactly one Sofa. It
can also be used to query and alter information about the Sofa, e.g. the document text. Annotations added to one view
are not visible in another view.  A view Views can be created and changed. A view has the same methods and attributes
as a :code:`Cas` .

.. code:: python

    from cassis import *

    with open('typesystem.xml', 'rb') as f:
        typesystem = load_typesystem(f)
    Token = typesystem.get_type('cassis.Token')

    # This creates automatically the view `_InitialView`
    cas = Cas()
    cas.sofa_string = "I like cheese ."

    cas.add_all([
        Token(begin=0, end=1),
        Token(begin=2, end=6),
        Token(begin=7, end=13),
        Token(begin=14, end=15)
    ])

    print([x.get_covered_text() for x in cas.select_all()])

    # Create a new view and work on it.
    view = cas.create_view('testView')
    view.sofa_string = "I like blackcurrant ."

    view.add_all([
        Token(begin=0, end=1),
        Token(begin=2, end=6),
        Token(begin=7, end=19),
        Token(begin=20, end=21)
    ])

    print([x.get_covered_text() for x in view.select_all()])

Merging type systems
~~~~~~~~~~~~~~~~~~~~

Sometimes, it is desirable to merge two type systems. With **cassis**, this can be
achieved via the :code:`merge_typesystems` function. The detailed rules of merging can be found
`here <https://uima.apache.org/d/uimaj-2.10.4/references.html#ugr.ref.cas.typemerging>`_.

.. code:: python

    from cassis import *

    with open('typesystem.xml', 'rb') as f:
        typesystem = load_typesystem(f)

    ts = merge_typesystems([typesystem, load_dkpro_core_typesystem()])

Type checking
~~~~~~~~~~~~~

When adding annotations, no type checking is performed for simplicity reasons.
In order to check types, call the :code:`cas.typecheck()` method. Currently, it only
checks whether elements in `uima.cas.FSArray` are
adhere to the specified :code:`elementType`.

DKPro Core Integration
----------------------

A CAS using the DKPro Core Type System can be created via

.. code:: python

    from cassis import *

    cas = Cas(typesystem=load_dkpro_core_typesystem())

    for t in cas.typesystem.get_types():
        print(t)

Miscellaneous
-------------

If feature names clash with Python magic variables

If your type system defines a type called :code:self or :code:type, then it will be made available as a member variable :code:self_ or :code:type_ on the respective type:

.. code:: python

from cassis import *
from cassis.typesystem import *

typesystem = TypeSystem()

ExampleType = typesystem.create_type(name='example.Type')
typesystem.create_feature(domainType=ExampleType, name='self', rangeType=TYPE_NAME_STRING)
typesystem.create_feature(domainType=ExampleType, name='type', rangeType=TYPE_NAME_STRING)

annotation = ExampleType(self_="Test string1", type_="Test string2")

print(annotation.self_)
print(annotation.type_)

Leniency


If the type for a feature structure is not found in the typesystem, it will raise an exception by default.
If you want to ignore these kind of errors, you can pass :code:`lenient=True` to the :code:`Cas` constructor or
to :code:`load_cas_from_xmi`.

Large XMI files

If you try to parse large XMI files and get an error message like :code:XMLSyntaxError: internal error: Huge input lookup, then you can disable this security check by passing :code:trusted=True to your calls to :code:load_cas_from_xmi.

Citing & Authors

If you find this repository helpful, feel free to cite

.. code:: bibtex

@software{klie2020_cassis,
  author       = {Jan-Christoph Klie and
                  Richard Eckart de Castilho},
  title        = {DKPro Cassis - Reading and Writing UIMA CAS Files in Python},
  publisher    = {Zenodo},
  doi          = {10.5281/zenodo.3994108},
  url          = {https://github.com/dkpro/dkpro-cassis}
}

Development

The required dependencies are managed by pip. A virtual environment containing all needed packages for development and production can be created and activated by

::

virtualenv venv --python=python3 --no-site-packages
source venv/bin/activate
pip install -e ".[test, dev, doc]"

The tests can be run in the current environment by invoking

::

make test

or in a clean environment via

::

tox

Release

  • Make sure all issues for the milestone are completed, otherwise move them to the next
  • Checkout the main branch
  • Bump the version in cassis/__version__.py to a stable one, e.g. __version__ = "0.6.0", commit and push, wait until the build completed. An example commit message would be No issue. Release 0.6.0
  • Create a tag for that version via e.g. git tag v0.6.0 and push the tags via git push --tags. Pushing a tag triggers the release to pypi
  • Bump the version in cassis/__version__.py to the next development version, e.g. 0.7.0-dev, commit and push that. An example commit message would be No issue. Bump version after release
  • Once the build has completed and pypi accepted the new version, go to the Github release and write the changelog based on the issues in the respective milestone
  • Create a new milestone for the next version

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