ArangoDB v3.9 reached End of Life (EOL) and is no longer supported.
This documentation is outdated. Please see the most recent version at docs.arangodb.com
cuGraph Adapter
The ArangoDB-cuGraph Adapter exports graphs from ArangoDB into RAPIDS cuGraph, a library of collective GPU-accelerated graph algorithms, and vice-versa
While offering a similar API and set of graph algorithms to NetworkX, RAPIDS cuGraph library is GPU-based. Especially for large graphs, this results in a significant performance improvement of cuGraph compared to NetworkX. Please note that storing node attributes is currently not supported by cuGraph. In order to run cuGraph, an Nvidia-CUDA-enabled GPU is required.
Resources
The ArangoDB-cuGraph Adapter repository is available on Github. Check it out!
Installation
To install the latest release of the ArangoDB-cuGraph Adapter, run the following command:
conda install -c arangodb adbcug-adapter
Quickstart
The following examples show how to get started with ArangoDB-cuGraph Adapter. Check also the interactive tutorial.
import cudf
import cugraph
from arango import ArangoClient # Python-Arango driver
from adbcug_adapter import ADBCUG_Adapter
# Let's assume that the ArangoDB "fraud detection" dataset is imported to this endpoint
db = ArangoClient(hosts="http://localhost:8529").db("_system", username="root", password="")
adbcug_adapter = ADBCUG_Adapter(db)
# Use Case 1.1: ArangoDB to cuGraph via Graph name
cug_fraud_graph = adbcug_adapter.arangodb_graph_to_cugraph("fraud-detection")
# Use Case 1.2: ArangoDB to cuGraph via Collection names
cug_fraud_graph_2 = adbcug_adapter.arangodb_collections_to_cugraph(
"fraud-detection",
{"account", "bank", "branch", "Class", "customer"}, # Vertex collections
{"accountHolder", "Relationship", "transaction"}, # Edge collections
)
# Use Case 2: cuGraph to ArangoDB:
## 1) Create a sample cuGraph
cug_divisibility_graph = cugraph.MultiGraph(directed=True)
cug_divisibility_graph.from_cudf_edgelist(
cudf.DataFrame(
[
(f"numbers/{j}", f"numbers/{i}", j / i)
for i in range(1, 101)
for j in range(1, 101)
if j % i == 0
],
columns=["src", "dst", "weight"],
),
source="src",
destination="dst",
edge_attr="weight",
renumber=False,
)
## 2) Create ArangoDB Edge Definitions
edge_definitions = [
{
"edge_collection": "is_divisible_by",
"from_vertex_collections": ["numbers"],
"to_vertex_collections": ["numbers"],
}
]
## 3) Convert cuGraph to ArangoDB
adb_graph = adbcug_adapter.cugraph_to_arangodb("DivisibilityGraph", cug_graph, edge_definitions)