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|
%global _empty_manifest_terminate_build 0
Name: python-obonet
Version: 1.0.0
Release: 1
Summary: Parse OBO formatted ontologies into networkx
License: BSD-2-Clause-Patent
URL: https://github.com/dhimmel/obonet
Source0: https://mirrors.nju.edu.cn/pypi/web/packages/44/c5/70a58eb06679bd07178acacd8e4cccfaf060f73e36eba3fe184315229643/obonet-1.0.0.tar.gz
BuildArch: noarch
Requires: python3-networkx
Requires: python3-pre-commit
Requires: python3-pytest
%description
# obonet: load OBO-formatted ontologies into networkx
[](https://github.com/dhimmel/obonet/actions)
[](https://github.com/dhimmel/obonet/blob/main/LICENSE)
[](https://github.com/psf/black)
[](https://pypi.org/project/obonet/)
Read OBO-formatted ontologies in Python.
`obonet` is
+ user friendly
+ succinct
+ pythonic
+ modern
+ simple and tested
+ lightweight
+ [`networkx`](https://networkx.readthedocs.io/en/stable/overview.html) leveraging
This Python package loads OBO serialized ontologies into networks.
The function `obonet.read_obo()` takes an `.obo` file and returns a [`networkx.MultiDiGraph`](https://networkx.github.io/documentation/stable/reference/classes/multigraph.html) representation of the ontology.
The parser was designed for the OBO specification version [1.2](https://owlcollab.github.io/oboformat/doc/GO.format.obo-1_2.html) & [1.4](https://owlcollab.github.io/oboformat/doc/GO.format.obo-1_4.html).
## Usage
See [`pyproject.toml`](pyproject.toml) for the minimum Python version required and the dependencies.
OBO files can be read from a path, URL, or open file handle.
Compression is inferred from the path's extension.
See example usage below:
```python
import networkx
import obonet
# Read the taxrank ontology
url = 'https://github.com/dhimmel/obonet/raw/main/tests/data/taxrank.obo'
graph = obonet.read_obo(url)
# Or read the xz-compressed taxrank ontology
url = 'https://github.com/dhimmel/obonet/raw/main/tests/data/taxrank.obo.xz'
graph = obonet.read_obo(url)
# Number of nodes
len(graph)
# Number of edges
graph.number_of_edges()
# Check if the ontology is a DAG
networkx.is_directed_acyclic_graph(graph)
# Mapping from term ID to name
id_to_name = {id_: data.get('name') for id_, data in graph.nodes(data=True)}
id_to_name['TAXRANK:0000006'] # TAXRANK:0000006 is species
# Find all superterms of species. Note that networkx.descendants gets
# superterms, while networkx.ancestors returns subterms.
networkx.descendants(graph, 'TAXRANK:0000006')
```
For a more detailed tutorial, see the [**Gene Ontology example notebook**](https://github.com/dhimmel/obonet/blob/main/examples/go-obonet.ipynb).
## Comparison
This package specializes in reading OBO files into a `newtorkx.MultiDiGraph`.
A more general ontology-to-NetworkX reader is available in the Python [nxontology package](https://github.com/related-sciences/nxontology) via the `nxontology.imports.pronto_to_multidigraph` function.
This function takes a `pronto.Ontology` object,
which can be loaded from an OBO file, OBO Graphs JSON file, or Ontology Web Language 2 RDF/XML file (OWL).
Using `pronto_to_multidigraph` allows creating a MultiDiGraph similar to the created by `obonet`,
with some differences in the amount of metadata retained.
The primary focus of the `nxontology` package is to provide an `NXOntology` class for representing ontologies based around a `networkx.DiGraph`.
NXOntology provides optimized implementations for computing node similarity and other intrinsic ontology metrics.
There are two important differences between a DiGraph for NXOntology and the MultiDiGraph produced by obonet:
1. NXOntology is based on a DiGraph that does not allow multiple edges between the same two nodes.
Multiple edges between the same two nodes must therefore be collapsed.
By default, it only considers _is a_ / `rdfs:subClassOf` relationships,
but using `pronto_to_multidigraph` to create the NXOntology allows for retaining additional relationship types, like _part of_ in the case of the Gene Ontology.
2. NXOntology reverses the direction of relationships so edges go from superterm to subterm.
Traditionally in ontologies, the _is a_ relationships go from subterm to superterm,
but this is confusing.
NXOntology reverses edges so functions such as _ancestors_ refer to more general concepts and _descendants_ refer to more specific concepts.
The `nxontology.imports.multidigraph_to_digraph` function converts from a MultiDiGraph, like the one produced by obonet, to a DiGraph by filtering to the desired relationship types, reversing edges, and collapsing parallel edges.
## Installation
The recommended approach is to install the latest release from [PyPI](https://pypi.org/project/obonet/) using:
```sh
pip install obonet
```
However, if you'd like to install the most recent version from GitHub, use:
```sh
pip install git+https://github.com/dhimmel/obonet.git#egg=obonet
```
## Contributing
[](https://github.com/dhimmel/obonet/issues)
We welcome feature suggestions and community contributions.
Currently, only reading OBO files is supported.
## Develop
Some development commands:
```bash
# create virtual environment
python3 -m venv ./env
# activate virtual environment
source env/bin/activate
# editable installation for development
pip install --editable ".[dev]"
# install pre-commit hooks
pre-commit install
# run all pre-commit checks
pre-commit run --all
# run tests
pytest
# generate changelog for release notes
git fetch --tags origin main
OLD_TAG=$(git describe --tags --abbrev=0)
git log --oneline --decorate=no --reverse $OLD_TAG..HEAD
```
Maintainers can make a new release at <https://github.com/dhimmel/obonet/releases/new>.
%package -n python3-obonet
Summary: Parse OBO formatted ontologies into networkx
Provides: python-obonet
BuildRequires: python3-devel
BuildRequires: python3-setuptools
BuildRequires: python3-pip
%description -n python3-obonet
# obonet: load OBO-formatted ontologies into networkx
[](https://github.com/dhimmel/obonet/actions)
[](https://github.com/dhimmel/obonet/blob/main/LICENSE)
[](https://github.com/psf/black)
[](https://pypi.org/project/obonet/)
Read OBO-formatted ontologies in Python.
`obonet` is
+ user friendly
+ succinct
+ pythonic
+ modern
+ simple and tested
+ lightweight
+ [`networkx`](https://networkx.readthedocs.io/en/stable/overview.html) leveraging
This Python package loads OBO serialized ontologies into networks.
The function `obonet.read_obo()` takes an `.obo` file and returns a [`networkx.MultiDiGraph`](https://networkx.github.io/documentation/stable/reference/classes/multigraph.html) representation of the ontology.
The parser was designed for the OBO specification version [1.2](https://owlcollab.github.io/oboformat/doc/GO.format.obo-1_2.html) & [1.4](https://owlcollab.github.io/oboformat/doc/GO.format.obo-1_4.html).
## Usage
See [`pyproject.toml`](pyproject.toml) for the minimum Python version required and the dependencies.
OBO files can be read from a path, URL, or open file handle.
Compression is inferred from the path's extension.
See example usage below:
```python
import networkx
import obonet
# Read the taxrank ontology
url = 'https://github.com/dhimmel/obonet/raw/main/tests/data/taxrank.obo'
graph = obonet.read_obo(url)
# Or read the xz-compressed taxrank ontology
url = 'https://github.com/dhimmel/obonet/raw/main/tests/data/taxrank.obo.xz'
graph = obonet.read_obo(url)
# Number of nodes
len(graph)
# Number of edges
graph.number_of_edges()
# Check if the ontology is a DAG
networkx.is_directed_acyclic_graph(graph)
# Mapping from term ID to name
id_to_name = {id_: data.get('name') for id_, data in graph.nodes(data=True)}
id_to_name['TAXRANK:0000006'] # TAXRANK:0000006 is species
# Find all superterms of species. Note that networkx.descendants gets
# superterms, while networkx.ancestors returns subterms.
networkx.descendants(graph, 'TAXRANK:0000006')
```
For a more detailed tutorial, see the [**Gene Ontology example notebook**](https://github.com/dhimmel/obonet/blob/main/examples/go-obonet.ipynb).
## Comparison
This package specializes in reading OBO files into a `newtorkx.MultiDiGraph`.
A more general ontology-to-NetworkX reader is available in the Python [nxontology package](https://github.com/related-sciences/nxontology) via the `nxontology.imports.pronto_to_multidigraph` function.
This function takes a `pronto.Ontology` object,
which can be loaded from an OBO file, OBO Graphs JSON file, or Ontology Web Language 2 RDF/XML file (OWL).
Using `pronto_to_multidigraph` allows creating a MultiDiGraph similar to the created by `obonet`,
with some differences in the amount of metadata retained.
The primary focus of the `nxontology` package is to provide an `NXOntology` class for representing ontologies based around a `networkx.DiGraph`.
NXOntology provides optimized implementations for computing node similarity and other intrinsic ontology metrics.
There are two important differences between a DiGraph for NXOntology and the MultiDiGraph produced by obonet:
1. NXOntology is based on a DiGraph that does not allow multiple edges between the same two nodes.
Multiple edges between the same two nodes must therefore be collapsed.
By default, it only considers _is a_ / `rdfs:subClassOf` relationships,
but using `pronto_to_multidigraph` to create the NXOntology allows for retaining additional relationship types, like _part of_ in the case of the Gene Ontology.
2. NXOntology reverses the direction of relationships so edges go from superterm to subterm.
Traditionally in ontologies, the _is a_ relationships go from subterm to superterm,
but this is confusing.
NXOntology reverses edges so functions such as _ancestors_ refer to more general concepts and _descendants_ refer to more specific concepts.
The `nxontology.imports.multidigraph_to_digraph` function converts from a MultiDiGraph, like the one produced by obonet, to a DiGraph by filtering to the desired relationship types, reversing edges, and collapsing parallel edges.
## Installation
The recommended approach is to install the latest release from [PyPI](https://pypi.org/project/obonet/) using:
```sh
pip install obonet
```
However, if you'd like to install the most recent version from GitHub, use:
```sh
pip install git+https://github.com/dhimmel/obonet.git#egg=obonet
```
## Contributing
[](https://github.com/dhimmel/obonet/issues)
We welcome feature suggestions and community contributions.
Currently, only reading OBO files is supported.
## Develop
Some development commands:
```bash
# create virtual environment
python3 -m venv ./env
# activate virtual environment
source env/bin/activate
# editable installation for development
pip install --editable ".[dev]"
# install pre-commit hooks
pre-commit install
# run all pre-commit checks
pre-commit run --all
# run tests
pytest
# generate changelog for release notes
git fetch --tags origin main
OLD_TAG=$(git describe --tags --abbrev=0)
git log --oneline --decorate=no --reverse $OLD_TAG..HEAD
```
Maintainers can make a new release at <https://github.com/dhimmel/obonet/releases/new>.
%package help
Summary: Development documents and examples for obonet
Provides: python3-obonet-doc
%description help
# obonet: load OBO-formatted ontologies into networkx
[](https://github.com/dhimmel/obonet/actions)
[](https://github.com/dhimmel/obonet/blob/main/LICENSE)
[](https://github.com/psf/black)
[](https://pypi.org/project/obonet/)
Read OBO-formatted ontologies in Python.
`obonet` is
+ user friendly
+ succinct
+ pythonic
+ modern
+ simple and tested
+ lightweight
+ [`networkx`](https://networkx.readthedocs.io/en/stable/overview.html) leveraging
This Python package loads OBO serialized ontologies into networks.
The function `obonet.read_obo()` takes an `.obo` file and returns a [`networkx.MultiDiGraph`](https://networkx.github.io/documentation/stable/reference/classes/multigraph.html) representation of the ontology.
The parser was designed for the OBO specification version [1.2](https://owlcollab.github.io/oboformat/doc/GO.format.obo-1_2.html) & [1.4](https://owlcollab.github.io/oboformat/doc/GO.format.obo-1_4.html).
## Usage
See [`pyproject.toml`](pyproject.toml) for the minimum Python version required and the dependencies.
OBO files can be read from a path, URL, or open file handle.
Compression is inferred from the path's extension.
See example usage below:
```python
import networkx
import obonet
# Read the taxrank ontology
url = 'https://github.com/dhimmel/obonet/raw/main/tests/data/taxrank.obo'
graph = obonet.read_obo(url)
# Or read the xz-compressed taxrank ontology
url = 'https://github.com/dhimmel/obonet/raw/main/tests/data/taxrank.obo.xz'
graph = obonet.read_obo(url)
# Number of nodes
len(graph)
# Number of edges
graph.number_of_edges()
# Check if the ontology is a DAG
networkx.is_directed_acyclic_graph(graph)
# Mapping from term ID to name
id_to_name = {id_: data.get('name') for id_, data in graph.nodes(data=True)}
id_to_name['TAXRANK:0000006'] # TAXRANK:0000006 is species
# Find all superterms of species. Note that networkx.descendants gets
# superterms, while networkx.ancestors returns subterms.
networkx.descendants(graph, 'TAXRANK:0000006')
```
For a more detailed tutorial, see the [**Gene Ontology example notebook**](https://github.com/dhimmel/obonet/blob/main/examples/go-obonet.ipynb).
## Comparison
This package specializes in reading OBO files into a `newtorkx.MultiDiGraph`.
A more general ontology-to-NetworkX reader is available in the Python [nxontology package](https://github.com/related-sciences/nxontology) via the `nxontology.imports.pronto_to_multidigraph` function.
This function takes a `pronto.Ontology` object,
which can be loaded from an OBO file, OBO Graphs JSON file, or Ontology Web Language 2 RDF/XML file (OWL).
Using `pronto_to_multidigraph` allows creating a MultiDiGraph similar to the created by `obonet`,
with some differences in the amount of metadata retained.
The primary focus of the `nxontology` package is to provide an `NXOntology` class for representing ontologies based around a `networkx.DiGraph`.
NXOntology provides optimized implementations for computing node similarity and other intrinsic ontology metrics.
There are two important differences between a DiGraph for NXOntology and the MultiDiGraph produced by obonet:
1. NXOntology is based on a DiGraph that does not allow multiple edges between the same two nodes.
Multiple edges between the same two nodes must therefore be collapsed.
By default, it only considers _is a_ / `rdfs:subClassOf` relationships,
but using `pronto_to_multidigraph` to create the NXOntology allows for retaining additional relationship types, like _part of_ in the case of the Gene Ontology.
2. NXOntology reverses the direction of relationships so edges go from superterm to subterm.
Traditionally in ontologies, the _is a_ relationships go from subterm to superterm,
but this is confusing.
NXOntology reverses edges so functions such as _ancestors_ refer to more general concepts and _descendants_ refer to more specific concepts.
The `nxontology.imports.multidigraph_to_digraph` function converts from a MultiDiGraph, like the one produced by obonet, to a DiGraph by filtering to the desired relationship types, reversing edges, and collapsing parallel edges.
## Installation
The recommended approach is to install the latest release from [PyPI](https://pypi.org/project/obonet/) using:
```sh
pip install obonet
```
However, if you'd like to install the most recent version from GitHub, use:
```sh
pip install git+https://github.com/dhimmel/obonet.git#egg=obonet
```
## Contributing
[](https://github.com/dhimmel/obonet/issues)
We welcome feature suggestions and community contributions.
Currently, only reading OBO files is supported.
## Develop
Some development commands:
```bash
# create virtual environment
python3 -m venv ./env
# activate virtual environment
source env/bin/activate
# editable installation for development
pip install --editable ".[dev]"
# install pre-commit hooks
pre-commit install
# run all pre-commit checks
pre-commit run --all
# run tests
pytest
# generate changelog for release notes
git fetch --tags origin main
OLD_TAG=$(git describe --tags --abbrev=0)
git log --oneline --decorate=no --reverse $OLD_TAG..HEAD
```
Maintainers can make a new release at <https://github.com/dhimmel/obonet/releases/new>.
%prep
%autosetup -n obonet-1.0.0
%build
%py3_build
%install
%py3_install
install -d -m755 %{buildroot}/%{_pkgdocdir}
if [ -d doc ]; then cp -arf doc %{buildroot}/%{_pkgdocdir}; fi
if [ -d docs ]; then cp -arf docs %{buildroot}/%{_pkgdocdir}; fi
if [ -d example ]; then cp -arf example %{buildroot}/%{_pkgdocdir}; fi
if [ -d examples ]; then cp -arf examples %{buildroot}/%{_pkgdocdir}; fi
pushd %{buildroot}
if [ -d usr/lib ]; then
find usr/lib -type f -printf "/%h/%f\n" >> filelist.lst
fi
if [ -d usr/lib64 ]; then
find usr/lib64 -type f -printf "/%h/%f\n" >> filelist.lst
fi
if [ -d usr/bin ]; then
find usr/bin -type f -printf "/%h/%f\n" >> filelist.lst
fi
if [ -d usr/sbin ]; then
find usr/sbin -type f -printf "/%h/%f\n" >> filelist.lst
fi
touch doclist.lst
if [ -d usr/share/man ]; then
find usr/share/man -type f -printf "/%h/%f.gz\n" >> doclist.lst
fi
popd
mv %{buildroot}/filelist.lst .
mv %{buildroot}/doclist.lst .
%files -n python3-obonet -f filelist.lst
%dir %{python3_sitelib}/*
%files help -f doclist.lst
%{_docdir}/*
%changelog
* Wed Apr 12 2023 Python_Bot <Python_Bot@openeuler.org> - 1.0.0-1
- Package Spec generated
|