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Major new package implementing a distributed hypergraph database with: ## Core Components (crates/ruvector-graph/) - Cypher-compatible query parser with lexer, AST, optimizer - Query execution engine with SIMD optimization and parallel execution - ACID transaction support with MVCC isolation levels - Distributed consensus and federation layer - Vector-graph hybrid queries for AI/RAG workloads - Performance optimizations (100x faster than Neo4j target) ## Bindings - WASM bindings (crates/ruvector-graph-wasm/) - NAPI-RS Node.js bindings (crates/ruvector-graph-node/) - NPM packages for both targets ## CLI Integration - 8 new graph commands: create, query, shell, import, export, info, benchmark, serve ## CI/CD - Updated build-native.yml for graph packages - New graph-ci.yml for testing and benchmarks - New graph-release.yml for automated publishing ## Data Generation - OpenRouter/Kimi K2 integration (packages/graph-data-generator/) - Agentic-synth benchmark suite integration ## Tests & Benchmarks - 11 test files covering all components - Criterion benchmarks for performance validation - Neo4j compatibility test suite ## Architecture Highlights - CSR graph layout for cache-friendly access - SIMD-vectorized query operators - Roaring bitmaps for label indexes - Bloom filters for fast negative lookups - Adaptive radix tree for property indexes Note: This is a comprehensive implementation created by 15 parallel agents. Some integration fixes may be needed to resolve cross-module dependencies. Co-authored-by: Claude AI Swarm <swarm@claude.ai>
14 lines
390 B
Text
14 lines
390 B
Text
# OpenRouter API Configuration
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OPENROUTER_API_KEY=your_openrouter_api_key_here
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# Model Configuration (optional)
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# Default: moonshot/kimi-k2-instruct
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# OPENROUTER_MODEL=moonshot/kimi-k2-instruct
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# Rate Limiting (optional)
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# OPENROUTER_RATE_LIMIT_REQUESTS=10
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# OPENROUTER_RATE_LIMIT_INTERVAL=1000
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# Embedding Configuration (optional)
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# EMBEDDING_DIMENSIONS=1536
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# EMBEDDING_BATCH_SIZE=100
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