



Manifold-Consistent Graph Indexing for billion-scale disk-resident vector search. Leverages Local Intrinsic Dimensionality to achieve 5.8x throughput improvement over DiskANN on high-dimensional datasets.
MCGI (Manifold-Consistent Graph Indexing) is a geometry-aware and disk-resident indexing method that leverages Local Intrinsic Dimensionality (LID) to dynamically adapt search strategies to the data's intrinsic geometry. Published in January 2026.
Graph-based Approximate Nearest Neighbor (ANN) search often suffers from performance degradation in high-dimensional spaces due to the "Euclidean-Geodesic mismatch," where greedy routing diverges from the underlying data manifold.
Unlike standard algorithms that treat dimensions uniformly, MCGI modulates its beam search budget based on in situ geometric analysis, eliminating dependency on static hyperparameters.
Theoretical analysis confirms that MCGI enables improved approximation guarantees by preserving manifold-consistent topological connectivity.
MCGI addresses the critical challenge of maintaining search quality in high-dimensional spaces while operating efficiently from disk storage, making it suitable for billion-scale vector search applications.
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