Upload 12 files
Browse files- content/my_index/0.codes.pt +3 -0
- content/my_index/0.metadata.json +6 -0
- content/my_index/0.residuals.pt +3 -0
- content/my_index/avg_residual.pt +3 -0
- content/my_index/buckets.pt +3 -0
- content/my_index/centroids.pt +3 -0
- content/my_index/collection.json +0 -0
- content/my_index/doclens.0.json +1 -0
- content/my_index/ivf.pid.pt +3 -0
- content/my_index/metadata.json +70 -0
- content/my_index/pid_docid_map.json +0 -0
- content/my_index/plan.json +64 -0
content/my_index/0.codes.pt
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version https://git-lfs.github.com/spec/v1
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content/my_index/0.metadata.json
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"embedding_offset": 0
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}
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content/my_index/0.residuals.pt
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version https://git-lfs.github.com/spec/v1
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size 82680496
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content/my_index/avg_residual.pt
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content/my_index/buckets.pt
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version https://git-lfs.github.com/spec/v1
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size 2904
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content/my_index/centroids.pt
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version https://git-lfs.github.com/spec/v1
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content/my_index/collection.json
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content/my_index/doclens.0.json
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content/my_index/ivf.pid.pt
ADDED
@@ -0,0 +1,3 @@
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version https://git-lfs.github.com/spec/v1
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oid sha256:7a5f3d8a075c4b963e8b4f052d8078ca59677ea0708fbc8b42457684a119099c
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size 1677208
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content/my_index/metadata.json
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{
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"config":{
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3 |
+
"query_token_id":"[unused0]",
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"doc_token_id":"[unused1]",
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"query_token":"[Q]",
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"doc_token":"[D]",
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"ncells":null,
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"load_index_with_mmap":false,
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"index_path":null,
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"index_bsize":32,
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"nbits":8,
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"kmeans_niters":20,
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"resume":false,
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"similarity":"cosine",
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"bsize":64,
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"accumsteps":1,
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"lr":0.00001,
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"maxsteps":400000,
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"save_every":null,
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"warmup":20000,
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"warmup_bert":null,
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"relu":false,
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"nway":64,
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"use_ib_negatives":true,
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"reranker":false,
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"distillation_alpha":1.0,
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"ignore_scores":false,
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"model_name":null,
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