memgraph / gqlalchemy

GQLAlchemy is a library developed with the purpose of assisting in writing and running queries on Memgraph. GQLAlchemy supports high-level connection to Memgraph as well as modular query builder.
https://pypi.org/project/gqlalchemy/
Apache License 2.0
226 stars 32 forks source link
graph-database graphs memgraph neo4j neo4j-client networkx object-graph-mapper ogm python query-builder schema-validation

GQLAlchemy

Code style: black

GQLAlchemy is a fully open-source Python library and Object Graph Mapper (OGM) - a link between graph database objects and Python objects.

An Object Graph Mapper or OGM provides a developer-friendly workflow that allows for writing object-oriented notation to communicate with graph databases. Instead of writing Cypher queries, you will be able to write object-oriented code, which the OGM will automatically translate into Cypher queries.

Installation

Prerequisites

[!WARNING]
Python 3.11 users: On Windows, GQLAlchemy is not yet compatible with this Python version. Linux users can install GQLAlchemy without the DGL extra (due to its dependencies not supporting Python 3.11 yet). If this is currently a blocker for you, please let us know by opening an issue.

Install GQLAlchemy

After you’ve installed the prerequisites, run the following command to install GQLAlchemy:

pip install gqlalchemy

With the above command, you get the default GQLAlchemy installation which doesn’t include import/export support for certain formats (see below). To get additional import/export capabilities, use one of the following install options:

pip install gqlalchemy[arrow] # Support for the CSV, Parquet, ORC and IPC/Feather/Arrow formats
pip install gqlalchemy[dgl] # DGL support (also includes torch)
pip install gqlalchemy[docker] # Docker support

pip install gqlalchemy[all] # All of the above

If you intend to use GQLAlchemy with PyTorch Geometric support, that library must be installed manually:

pip install gqlalchemy[torch_pyg] # prerequisite
pip install torch-scatter torch-sparse torch-cluster torch-spline-conv torch-geometric -f https://data.pyg.org/whl/torch-1.13.0+cpu.html"

If you are using the zsh terminal, surround gqlalchemy[$extras] with quotes:

pip install 'gqlalchemy[arrow]'

If you are using Conda for Python environment management, you can install GQLAlchemy through pip.

Build & Test

The project uses Poetry to build the library. Clone or download the GQLAlchemy source code locally and run the following command to build it from source with Poetry:

poetry install --all-extras

The poetry install --all-extras command installs GQLAlchemy with all extras (optional dependencies). Alternatively, you can use the -E option to define what extras to install:

poetry install # No extras

poetry install -E arrow # Support for the CSV, Parquet, ORC and IPC/Feather/Arrow formats
poetry install -E dgl # DGL support (also includes torch)
poetry install -E docker # Docker support

To run the tests, make sure you have an active Memgraph instance, and execute one of the following commands:

poetry run pytest . -k "not slow" # If all extras installed

poetry run pytest . -k "not slow and not extras" # Otherwise

If you’ve installed only certain extras, it’s also possible to run their associated tests:

poetry run pytest . -k "arrow"
poetry run pytest . -k "dgl"
poetry run pytest . -k "docker"

Development (how to build)

poetry run flake8 .
poetry run black .
poetry run pytest . -k "not slow and not extras"

Documentation

The GQLAlchemy documentation is available on GitHub.

The reference guide can be generated from the code by executing:

pip3 install pydoc-markdown
pydoc-markdown

Other parts of the documentation are written and located at docs directory. To test the documentation locally execute:

pip3 install mkdocs
pip3 install mkdocs-material
pip3 install pymdown-extensions
mkdocs serve

License

Copyright (c) 2016-2023 Memgraph Ltd.

Licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with the License. You may obtain a copy of the License at

 http://www.apache.org/licenses/LICENSE-2.0

Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the specific language governing permissions and limitations under the License.