OntoWeaver is a tool for transforming iterable data (like tables) in Semantic Knowledge Graphs (SKG) databases.
OntoWeaver allows writing a simple declarative mapping to express how columns from a table should be converted as typed nodes, edges or properties in an SKG.
SKG databases allows for an easy integration of very heterogeneous data, and OntoWeaver brings a reproducible approach to building them.
With OntoWeaver, you can very easily implement a script that will allow you to automatically reconfigure a new SKG from the input data, each time you need it.
OntoWeaver has been tested on large scale biomedical use cases (think: millions of nodes), and we can guarantee that it is simple to operate by anyone having a basic knowledge of programming.
OntoWeaver provides a simple layer of abstraction on top of BioCypher, which remains responsible for doing the ontology alignment, supporting several graph database backends, and allowing reproducible & configurable builds.
With a pure Biocypher approach, you would have to write a whole adapter by hand, with OntoWeaver, you just have to express a mapping in YAML, looking like:
row: # The meaning of an entry in the input table.
map:
column: <column name in your CSV>
to_subject: <ontology node type to use for representing a row>
transformers: # How to map cells to nodes and edges.
- map: # Map a column to a node.
column: <column name>
to_object: <ontology node type to use for representing a column>
via_relation: <edge type for linking subject and object nodes>
- map: # Map a column to a property.
column: <another name>
to_property: <property name>
for_object: <type holding the property>
metadata: # Optional properties added to every node and edge.
- source: "My OntoWeaver adapter"
- version: "v1.2.3"OntoWeaver can read anything that Pandas can load, which means a lot of tabular formats. It can also parse graphs from OWL files.
To configure your SKG, you need input data, a mapping (see above), but also a BioCyhper configuration: a schema.yaml and a ibiocypher_config.yaml.
In most cases, you will just need to call the ontoweave command to build-up
the SKG you prepared:
ontoweave my_data.csv:my_mapping.yaml --import-script-runIf you're using OntoWeaver from its Git repository, you will have to indicate the path to the command:
./bin/ontoweave data_A.csv:map_A.yaml data_B.tsv:map_B.yamlThe ontoweave command is very configurable, see ontoweave --help for more
details.
Detailed documentation with tutorials and a more detailed installation guide is available on the OntoWeaver website.
The project is written in Python and is tested with the UV environment manager. You can install the necessary dependencies in a virtual environment like this:
git clone https://github.com/oncodash/ontoweaver.git
cd ontoweaver
uv build
UV will create a virtual environment according to your configuration (either centrally or in the project folder).
You can then run any script by calling it directly (.e.g. ./bin/ontoweave)
and it should just work. If you want to call scripts from anywhere in your
system, you will have to add the …/ontoweaver/bin/ directory to your PATH:
# Put this in your ~/.bashrc or ~/.zshrc
export PATH="$PATH:$HOME/<your path>/ontoweaver/bin/"Theoretically, OntoWeaver can export a knowledge graph in any of the formats supported by BioCypher (Neo4j, ArangoDB, CSV, RDF, PostgreSQL, SQLite, NetworkX, … see BioCypher's documentation).
Tests are located in the tests/ subdirectory and may be a good starting point
to see OntoWeaver in practice. You may start with tests/test_simplest.py which
shows the simplest example of mapping tabular data through BioCypher.
To run tests, use pytest:
uv run pytest
In case of any questions or improvements feel free to open an issue or a pull request!