# abstracts_embeddings - Sharded DiskANN Indices Pre-built DiskANN indices sharded for distributed vector search. ## Dataset Info - **Source**: [colonelwatch/abstracts-embeddings](https://huggingface.co/datasets/colonelwatch/abstracts-embeddings) - **Vectors**: 10,000,000 - **Dimensions**: 1024 (float32) - **Queries**: 10,000 ## DiskANN Parameters - **R** (graph degree): 64 - **L** (build beam width): 100 - **Distance**: L2 ## Shard Configurations - **shard_10**: 10 shards x 1,000,000 vectors - **shard_3**: 3 shards x 3,333,333 vectors - **shard_5**: 5 shards x 2,000,000 vectors - **shard_7**: 7 shards x 1,428,571 vectors ## File Structure ``` fbin/ base.fbin # Base vectors (10,000,000 x 1024 x float32) queries.fbin # Query vectors (10K x 1024 x float32) diskann/ shard_N/ # N-shard configuration *_disk.index # DiskANN disk index *_disk.index_512_none.indices # MinIO graph indices *_disk.index_base_none.vectors # MinIO vector data *_base.shardX.fbin # Shard base data ``` ## Usage ### Download with huggingface_hub ```python from huggingface_hub import hf_hub_download # Download a specific shard configuration index = hf_hub_download( repo_id="makneeeee/abstracts_embeddings", filename="diskann/shard_3/abstracts_embeddings_64_100_256.shard0_disk.index", repo_type="dataset" ) ``` ### Download with git-lfs ```bash git lfs install git clone https://huggingface.co/datasets/makneeeee/abstracts_embeddings ``` ## License Same as source dataset.