ANN
Approximate Nearest Neighbor (ANN) index configuration for storing vector embeddings.
backend
backend: faiss|hnsw|annoy|numpy|torch|pgvector|sqlite|custom
Sets the ANN backend. Defaults to faiss
. Additional backends are available via the ann extras package. Set custom backends via setting this parameter to the fully resolvable class string.
Backend-specific settings are set with a corresponding configuration object having the same name as the backend (i.e. annoy, faiss, or hnsw). These are optional and set to defaults if omitted.
faiss
faiss:
components: comma separated list of components - defaults to "IDMap,Flat" for small
indices and "IVFx,Flat" for larger indexes where
x = min(4 * sqrt(embeddings count), embeddings count / 39)
automatically calculates number of IVF cells when omitted (supports "IVF,Flat")
nprobe: search probe setting (int) - defaults to x/16 (as defined above)
for larger indexes
nflip: same as nprobe - only used with binary hash indexes
quantize: store vectors with x-bit precision vs 32-bit (boolean|int)
true sets 8-bit precision, false disables, int sets specified
precision
mmap: load as on-disk index (boolean) - trade query response time for a
smaller RAM footprint, defaults to false
sample: percent of data to use for model training (0.0 - 1.0)
reduces indexing time for larger (>1M+ row) indexes, defaults to 1.0
Faiss supports both floating point and binary indexes. Floating point indexes are the default. Binary indexes are used when indexing scalar-quantized datasets.
See the following Faiss documentation links for more information.
hnsw
hnsw:
efconstruction: ef_construction param for init_index (int) - defaults to 200
m: M param for init_index (int) - defaults to 16
randomseed: random-seed param for init_index (int) - defaults to 100
efsearch: ef search param (int) - defaults to None and not set
See Hnswlib documentation for more information on these parameters.
annoy
annoy:
ntrees: number of trees (int) - defaults to 10
searchk: search_k search setting (int) - defaults to -1
See Annoy documentation for more information on these parameters. Note that annoy indexes can not be modified after creation, upserts/deletes and other modifications are not supported.
numpy
The NumPy backend is a k-nearest neighbors backend. It’s designed for simplicity and works well with smaller datasets.
The torch
backend supports the same options. The only difference is that the vectors can be search using GPUs.
pgvector
pgvector:
url: database url connection string, alternatively can be set via
ANN_URL environment variable
table: database table to store vectors - defaults to `vectors`
efconstruction: ef_construction param (int) - defaults to 200
m: M param for init_index (int) - defaults to 16
The pgvector backend stores embeddings in a Postgres database. See the pgvector documentation for more information on these parameters. See the SQLAlchemy documentation for more information on how to construct url connection strings.
sqlite
sqlite:
quantize: store vectors with x-bit precision vs 32-bit (boolean|int)
true sets 8-bit precision, false disables, int sets specified
precision
table: database table to store vectors - defaults to `vectors`
The SQLite backend stores embeddings in a SQLite database using sqlite-vec. This backend supports 1-bit and 8-bit quantization at the storage level.
See this note on how to run this ANN on MacOS.