DiskANN: Fast Accurate Billion-point Nearest Neighbor Search on a Single Node
- Suhas Jayaram Subramanya ,
- Devvrit ,
- Rohan Kadekodi ,
- Ravishankar Krishnaswamy ,
- Harsha Simhadri
NeurIPS 2019 |
Current state-of-the-art approximate nearest neighbor search (ANNS) algorithms generate indices that must be stored in main memory for fast high-recall search. This makes them expensive and limits the size of the dataset. We present a new graph-based indexing and search system called DiskANN that can index, store, and search a billion point database on a single workstation with just 64GB RAM and an inexpensive solid-state drive (SSD). Contrary to current wisdom, we demonstrate that the SSD-based indices built by DiskANN can meet all three desiderata for large-scale ANNS: high-recall, low query latency and high density (points indexed per node). On the billion point SIFT1B bigann dataset, DiskANN serves > 5000 queries a second with < 3ms mean latency and 95%+ 1-recall@1 on a 16 core machine, where state-of-the-art billion-point ANNS algorithms with similar memory footprint like FAISS [18] and IVFOADC+G+P [8] plateau at around 50% 1-recall@1. Alternately, in the high recall regime, DiskANN can index and serve 5 − 10x more points per node compared to state-of-the-art graphbased methods such as HNSW [21] and NSG [13]. Finally, as part of our overall DiskANN system, we introduce Vamana, a new graph-based ANNS index that is more versatile than the existing graph indices even for in-memory indices.
论文与出版物下载
DiskANN
31 8 月, 2020
This release contains the code for the DiskANN algorithm that enables scalable and efficient ANNS indices. DiskANN uses primarily uses an SSD-based index to scale to an order of magnitude more points compared to in-memory indices, while retaining high QPS and low latency. The graph that DiskANN builds can also be used for searching in-memory and comapres favorably to other in-memory algorithms.