python-arango8.1.2
python-arango8.1.2
Published
Python Driver for ArangoDB
pip install python-arango
Package Downloads
Authors
Project URLs
Requires Python
>=3.8
Dependencies
- urllib3
>=1.26.0
- requests
- requests-toolbelt
- PyJWT
- setuptools
>=42
- importlib-metadata
>=4.7.1
- packaging
>=23.1
- black
>=22.3.0; extra == "dev"
- flake8
>=4.0.1; extra == "dev"
- isort
>=5.10.1; extra == "dev"
- mypy
>=0.942; extra == "dev"
- mock
; extra == "dev"
- pre-commit
>=2.17.0; extra == "dev"
- pytest
>=7.1.1; extra == "dev"
- pytest-cov
>=3.0.0; extra == "dev"
- sphinx
; extra == "dev"
- sphinx-rtd-theme
; extra == "dev"
- types-requests
; extra == "dev"
- types-setuptools
; extra == "dev"
Python-Arango
Python driver for ArangoDB, a scalable multi-model database natively supporting documents, graphs and search.
Requirements
- ArangoDB version 3.11+
- Python version 3.8+
Installation
pip install python-arango --upgrade
Getting Started
Here is a simple usage example:
from arango import ArangoClient
# Initialize the client for ArangoDB.
client = ArangoClient(hosts="http://localhost:8529")
# Connect to "_system" database as root user.
sys_db = client.db("_system", username="root", password="passwd")
# Create a new database named "test".
sys_db.create_database("test")
# Connect to "test" database as root user.
db = client.db("test", username="root", password="passwd")
# Create a new collection named "students".
students = db.create_collection("students")
# Add a persistent index to the collection.
students.add_index({'type': 'persistent', 'fields': ['name'], 'unique': True})
# Insert new documents into the collection.
students.insert({"name": "jane", "age": 39})
students.insert({"name": "josh", "age": 18})
students.insert({"name": "judy", "age": 21})
# Execute an AQL query and iterate through the result cursor.
cursor = db.aql.execute("FOR doc IN students RETURN doc")
student_names = [document["name"] for document in cursor]
Another example with graphs:
from arango import ArangoClient
# Initialize the client for ArangoDB.
client = ArangoClient(hosts="http://localhost:8529")
# Connect to "test" database as root user.
db = client.db("test", username="root", password="passwd")
# Create a new graph named "school".
graph = db.create_graph("school")
# Create a new EnterpriseGraph [Enterprise Edition]
eegraph = db.create_graph(
name="school",
smart=True)
# Create vertex collections for the graph.
students = graph.create_vertex_collection("students")
lectures = graph.create_vertex_collection("lectures")
# Create an edge definition (relation) for the graph.
edges = graph.create_edge_definition(
edge_collection="register",
from_vertex_collections=["students"],
to_vertex_collections=["lectures"]
)
# Insert vertex documents into "students" (from) vertex collection.
students.insert({"_key": "01", "full_name": "Anna Smith"})
students.insert({"_key": "02", "full_name": "Jake Clark"})
students.insert({"_key": "03", "full_name": "Lisa Jones"})
# Insert vertex documents into "lectures" (to) vertex collection.
lectures.insert({"_key": "MAT101", "title": "Calculus"})
lectures.insert({"_key": "STA101", "title": "Statistics"})
lectures.insert({"_key": "CSC101", "title": "Algorithms"})
# Insert edge documents into "register" edge collection.
edges.insert({"_from": "students/01", "_to": "lectures/MAT101"})
edges.insert({"_from": "students/01", "_to": "lectures/STA101"})
edges.insert({"_from": "students/01", "_to": "lectures/CSC101"})
edges.insert({"_from": "students/02", "_to": "lectures/MAT101"})
edges.insert({"_from": "students/02", "_to": "lectures/STA101"})
edges.insert({"_from": "students/03", "_to": "lectures/CSC101"})
# Traverse the graph in outbound direction, breath-first.
query = """
FOR v, e, p IN 1..3 OUTBOUND 'students/01' GRAPH 'school'
OPTIONS { bfs: true, uniqueVertices: 'global' }
RETURN {vertex: v, edge: e, path: p}
"""
cursor = db.aql.execute(query)
Please see the documentation for more details.