Release Date: 5 January 2023
GDS 2.3.0-alpha04 is compatible with Neo4j 5 & 4.4 versions (≥ 4.4.9) & 4.3 versions (≥ 4.3.15) Database.
For GDS compatibility with previous releases, please use GDS Compatibility Table.
Breaking changes
- Leiden was promoted to the beta tier. It is now called via the 'gds.beta.leiden' command instead of the
gds.alpha.leiden
command. - K-means was promoted to the beta tier. It is now called via the
gds.beta.kmeans
command instead of thegds.alpha.kmeans
command. - Minimum weighted spanning tree algorithm was promoted to the beta tier. It is now called via the
gds.beta.spanningTree
command instead ofgds.alpha.spanningTree
- The procedures
gds.alpha.spanningTree.minimum
andgds.alpha.spanningTree.maximum
have been removed. You can get the same behaviour by specifying the new parameterobjective
ingds.beta.spanningTree
. - The
weightWriteProperty
has been removed as a configuration parameter. To supply the Relationship Type and Property for the produced relationship, use:mutateRelationshipType
mutateProperty
gds.alpha.spanningTree.kmin
andgds.alpha.spanningTree.kmax
have been removed as the K-Spanning Tree algorithm has been moved in its own spacegds.alpha.kSpanningTree
- The parameter
startNodeId
in all Spanning Tree algorithms has been replaced withsourceNode
.
- The procedures
- Arrow: when projecting graphs,
null
will be translated toNaN
for floating point values. This enables users of either the GDS Python Client or PyArrow to loadNaN
properties stored in Pandas DataFrames - Cypher Aggregations will become the primary surface for creating projections with Cypher. Offering a more intuitive and expressive interface than Cypher Projections that can also be used in Fabric or Composite Database setups.
- The algorithm
gds.alpha.influenceMaximization.greedy
has been removed. It's replacement is the already existinggds.beta.influenceMaximization.celf
algorithm which has the same configuration parameters and offers better performance.
New features
Minimum Directed Steiner Tree
- Added heuristic for minimum directed Steiner Tree under the
gds.beta.steinerTree
domain.- Added
stats
mode withgds.beta.steinerTree.stats
- Added
stream
mode withgds.beta.steinerTree.stream
- Added
mutate
mode withgds.beta.steinerTree.mutate
- Added
write
mode withgds.beta.steinerTree.write
- Now available in progress tracking –
gds.list.progress()
- Added
Leiden
- New parameter
consecutiveIds
that assigns consecutive ids for the discovered communities. - New parameter
seedProperty
to seed initial communities for nodes. - New parameter
tolerance
to enable convergence criteria based on difference in modularity from one iteration to another. - Now available in progress tracking –
gds.list.progress()
- Added memory estimation mode:
gds.beta.leiden.mutate.estimate
gds.beta.leiden.stats.estimate
gds.beta.leiden.stream.estimate
gds.beta.leiden.write.estimate
Logistic Regression & MLP
- New configuration parameters
classWeights
andfocusWeight
for training methods, supported by procedures:gds.beta.pipeline.nodeClassification.addLogisticRegression
gds.beta.pipeline.nodeClassification.addMLP
gds.beta.pipeline.linkPrediction.addLogisticRegression
gds.beta.pipeline.linkPrediction.addMLP
HashGNN
- New algorithm
gds.alpha.hashgnn.{mutate,stream}
to create HashGNN node embeddings - New procedures
gds.alpha.hashgnn.{mutate,stream}.estimate
to estimate the memory required to run HashGNN
Link Prediction
- Added new optional configuration parameter
negativeRelationshipType
togds.beta.pipeline.linkPrediction.configureSplit
Spanning Tree
- New modes supported:
gds.beta.spanningTree.(stats, stream, mutate)
- New yield output for
gds.beta.spanningTree
that outputs the sum of weights in the discovered spanning tree. - New yield output for
gds.beta.spanningTree
that outputs the number of relationships written or added for write and mutate mode respectively. - Added memory estimation mode :
gds.beta.spanningTree.stream.estimate
gds.beta.spanningTree.mutate.estimate
gds.beta.spanningTree.stats.estimate
gds.beta.spanningTree.write.estimate
Write Labels
- Added
gds.alpha.graph.nodeLabel.write
to allow for Node Labels to be written back from projections to a Neo4j Database
Graph Projections
- Arrow now supports specifying undirected relationship types using the
undirected_relationship_types
configuration argument - Cypher Aggregations (
gds.alpha.graph.project
) now support specifying undirected relationship types using theundirectedRelationshipTypes
configuration option - New procedure to turn directed relationships into undirected relationships:
gds.beta.graph.relationships.toUndirect
Administration
- Added the
jobId
andusername
to theongoingGdsProcedures
return field ofgds.alpha.systemMonitor
. - Added username as a new return field to
gds.beta.listProgress
. - Added a new return field to
gds.graph.list
calledschemaWithOrientation
which also includes the orientation. - Administrators can now see all running tasks from all users with
gds.beta.listProgress
Bug fixes
- Minimum Weighted Spanning Tree: Graphs with parallel edges could make the discovered tree have wrong weights on relationships
- Cypher Aggregations: When using
gds.alpha.graph.project
:- The projected graph would list relationship types with zero relationships
- AIOOB exceptions could surface due to sizing errors
- Arrow:
CREATE_DATABASE
action would throw a NPE if missing id fields in Arrow record.. A more descriptive exception is provided
Improvements
Arrow
- graph import now fully supports external node ids in the 64 Bit space.
- graph import now supports 16, 32 or 64 Bit node identifiers.
Leiden
- Better parallelization and improved overall performance improvements
Other Improvements
- Speed improvements for Dijkstra, Astar, Yens, CELF, weighted Betweenness Centrality, and the Spanning Tree algorithms. The improvements will see a slight increase in the memory consumption of these algorithms.
- Improved error message for invalid node labels and relationship types
Other changes
- Histograms returned such as
degreeDistribution
ingds.graph.list
can have slightly different values for specific percentiles due to changes in floating point operations. - Progress tracking in the Spanning Tree algorithm has been reworked. Progress reporting may differ from earlier versions.
- Mark the yielded field
schema
as deprecated ingds.graph.list
andgds.graph.drop
. In the next major release, theschema
field will use the semantics ofschemaWithOrientation
- In
gds.alpha.model.store
, the positional argument failIfUnsupportedType is renamed to failIfUnsupported. Both will be supported until it is promoted to the beta tier. - Progress tracking for Betweenness Centrality has been reworked. Progress reporting may differ from earlier versions.
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