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Transactional Graph + Vector retrieval system for InterSystems IRIS with hybrid search, openCypher, and GraphQL APIs

Project description

IRIS Vector Graph

The ultimate Graph + Vector + Text Retrieval Engine for InterSystems IRIS.

Python 3.11+ InterSystems IRIS License: MIT

IRIS Vector Graph is a general-purpose graph utility built on InterSystems IRIS that supports and demonstrates knowledge graph construction and query techniques. It combines graph traversal, HNSW vector similarity, and lexical search in a single, unified database.


Why IRIS Vector Graph?

  • Multi-Query Power: Query your graph via SQL, openCypher (v1.3 with DML), or GraphQL — all on the same data.
  • Transactional Engine: Beyond retrieval — support for CREATE, DELETE, and MERGE operations.
  • Blazing Fast Vectors: Native HNSW indexing delivering ~1.7ms search latency (vs 5.8s standard).
  • Zero-Dependency Integration: Built with IRIS Embedded Python — no external vector DBs or graph engines required.
  • Production-Ready: The engine behind iris-vector-rag for advanced RAG pipelines.

Installation

pip install iris-vector-graph

Note: Requires InterSystems IRIS 2025.1+ with the irispython runtime enabled.

Quick Start

# 1. Clone & Sync
git clone https://github.com/intersystems-community/iris-vector-graph.git && cd iris-vector-graph
uv sync

# 2. Spin up IRIS
docker-compose up -d

# 3. Start API
uvicorn api.main:app --reload

Visit:


Unified Query Engines

openCypher (Advanced RD Parser)

IRIS Vector Graph features a custom recursive-descent Cypher parser supporting multi-stage queries and transactional updates:

// Complex fraud analysis with WITH and Aggregations
MATCH (a:Account)-[r]->(t:Transaction)
WITH a, count(t) AS txn_count
WHERE txn_count > 5
MATCH (a)-[:OWNED_BY]->(p:Person)
RETURN p.name, txn_count

Supported Clauses: MATCH, OPTIONAL MATCH, WITH, WHERE, RETURN, UNWIND, CREATE, DELETE, DETACH DELETE, MERGE, SET, REMOVE.

GraphQL

query {
  protein(id: "PROTEIN:TP53") {
    name
    interactsWith(first: 5) { id name }
    similar(limit: 3) { protein { name } similarity }
  }
}

SQL (Hybrid Search)

SELECT TOP 10 id, 
       kg_RRF_FUSE(id, vector, 'cancer suppressor') as score
FROM nodes
ORDER BY score DESC

Scaling & Performance

The integration of a native HNSW (Hierarchical Navigable Small World) functional index directly into InterSystems IRIS provides massive scaling benefits for hybrid graph-vector workloads.

By keeping the vector index in-process with the graph data, we achieve subsecond multi-modal queries that would otherwise require complex application-side joins across multiple databases.

Performance Benchmarks (2026 Refactor)

  • High-Speed Traversal: ~1.84M TEPS (Traversed Edges Per Second).
  • Sub-millisecond Latency: 2-hop BFS on 10k nodes in <40ms.
  • RDF 1.2 Support: Native support for Quoted Triples (Metadata on edges) via subject-referenced properties.
  • Query Signatures: O(1) hop-rejection using ASQ-inspired Master Label Sets.

Why fast vector search matters for graphs

Consider a "Find-and-Follow" query common in fraud detection:

  1. Find the top 10 accounts most semantically similar to a known fraudulent pattern (Vector Search).
  2. Follow all outbound transactions from those 10 accounts to identify the next layer of the money laundering ring (Graph Hop).

In a standard database without HNSW, the first step (vector search) can take several seconds as the dataset grows, blocking the subsequent graph traversals. With iris-vector-graph, the vector lookup is reduced to ~1.7ms, enabling the entire hybrid traversal to complete in a fraction of a second.


Interactive Demos

Experience the power of IRIS Vector Graph through our interactive demo applications.

Biomedical Research Demo

Explore protein-protein interaction networks with vector similarity and D3.js visualization.

Fraud Detection Demo

Real-time fraud scoring with transaction networks, Cypher-based pattern matching, and bitemporal audit trails.

To run the CLI demos:

export PYTHONPATH=$PYTHONPATH:.
# Cypher-powered fraud detection
python3 examples/demo_fraud_detection.py

# SQL-powered "drop down" example
python3 examples/demo_fraud_detection_sql.py

To run the Web Visualization demos:

# Start the demo server
uv run uvicorn src.iris_demo_server.app:app --port 8200 --host 0.0.0.0

Visit http://localhost:8200 to begin.


iris-vector-rag Integration

IRIS Vector Graph is the core engine powering iris-vector-rag. You can use it in your RAG pipelines like this:

from iris_vector_rag import create_pipeline

# Create a GraphRAG pipeline powered by this engine
pipeline = create_pipeline('graphrag')

# Combined vector + text + graph retrieval
result = pipeline.query(
    "What are the latest cancer treatment approaches?",
    top_k=5
)

Documentation


Changelog

v1.4.9 (2025-01-31)

  • Exact Collation: Added %EXACT to VARCHAR columns for case-sensitive matching
  • Performance: Prevents default UPPER collation behavior in IRIS 2024.2+
  • Case Sensitivity: Ensures node IDs, labels, and property keys are case-sensitive

v1.4.8 (2025-01-31)

  • Fix SUBSCRIPT error: Removed idx_props_key_val which caused errors with large values
  • Improved Performance: Maintained composite indexes that don't include large VARCHAR columns

v1.4.7 (2025-01-31)

  • Revert to VARCHAR(64000): LONGVARCHAR broke REPLACE; VARCHAR(64000) keeps compatibility
  • Large Values: 64KB property values, REPLACE works, no CAST needed

v1.4.5/1.4.6 (deprecated - use 1.4.7)

  • v1.4.5 used LONGVARCHAR which broke REPLACE function
  • v1.4.6 used CAST which broke on old schemas

v1.4.4 (2025-01-31)

  • Bulk Loading Support: %NOINDEX INSERTs, disable_indexes(), rebuild_indexes()
  • Fast Ingest: Skip index maintenance during bulk loads, rebuild after

v1.4.3 (2025-01-31)

  • Composite Indexes: Added (s,key), (s,p), (p,o_id), (s,label) based on TrustGraph patterns
  • 12 indexes total: Optimized for label filtering, property lookups, edge traversal

v1.4.2 (2025-01-31)

  • Performance Indexes: Added indexes on rdf_labels, rdf_props, rdf_edges for fast graph traversal
  • ensure_indexes(): New method to add indexes to existing databases
  • Composite Index: Added (key, val) index on rdf_props for property value lookups

v1.4.1 (2025-01-31)

  • Embedding API: Added get_embedding(), get_embeddings(), delete_embedding() methods
  • Schema Prefix in Engine: All engine SQL now uses configurable schema prefix

v1.4.0 (2025-01-31)

  • Schema Prefix Support: set_schema_prefix('Graph_KG') for qualified table names
  • Pattern Operators Fixed: CONTAINS, STARTS WITH, ENDS WITH now work correctly
  • IRIS Compatibility: Removed recursive CTEs and NULLS LAST (unsupported by IRIS)
  • ORDER BY Fix: Properties in ORDER BY now properly join rdf_props table
  • type(r) Verified: Relationship type function works in RETURN/WHERE clauses

Author: Thomas Dyar (thomas.dyar@intersystems.com)

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