| 123456789101112131415161718192021222324252627282930313233343536373839404142434445464748495051525354555657585960616263646566676869707172737475767778798081828384858687888990919293949596979899100101102103104105106107108109110111112113114115116117118119120121122123124125126127128129130131132133134135136137138139140141142143144145146147148149150151152153154155156157158159160161162163164165166167168169170171172173174175176177178179180181182183184185186187188189190191192193194195196197198199200201202203204205206207208209210211212213214215216217218219220221222223224225226227228229230231232233234235236237238239240241242243244245246247248249250251252253254255256257258259260261262263264265266267268269270271272273274275276277278279280281282283284285286287288289290291292293294295296297298299300301302303304305306307308309310311312313314315316317318319320321322323324325326327328329330331332333334335336337338339340341342343344345346347348349350351352353354355356357358359360361362363364365366367368369370371372373374375376377378379380381382383384385386387388389390391392393394395396397398399400401402403404405406407408409410411412413414415416417418419420421422423424425426427428429430431432433434435436437438439440441442443444445446447448449450451452453454455456457458459460461462463464465466467468469470471472473474475476477478479480481482483484485486487488489490491492493494495496497498499500501502503504505506507508509510511512513514515516517518519520521522523524525526527528529530531532533534535536537538539540 |
- from typing import Any, Iterable, Mapping, Optional, Sequence, Union
- from qdrant_client.conversions import common_types as types
- from qdrant_client.http import models
- class QdrantBase:
- def __init__(self, **kwargs: Any):
- pass
- def search_batch(
- self,
- collection_name: str,
- requests: Sequence[types.SearchRequest],
- **kwargs: Any,
- ) -> list[list[types.ScoredPoint]]:
- raise NotImplementedError()
- def search(
- self,
- collection_name: str,
- query_vector: Union[
- types.NumpyArray,
- Sequence[float],
- tuple[str, list[float]],
- types.NamedVector,
- types.NamedSparseVector,
- ],
- query_filter: Optional[models.Filter] = None,
- search_params: Optional[models.SearchParams] = None,
- limit: int = 10,
- offset: Optional[int] = None,
- with_payload: Union[bool, Sequence[str], models.PayloadSelector] = True,
- with_vectors: Union[bool, Sequence[str]] = False,
- score_threshold: Optional[float] = None,
- **kwargs: Any,
- ) -> list[types.ScoredPoint]:
- raise NotImplementedError()
- def search_groups(
- self,
- collection_name: str,
- query_vector: Union[
- types.NumpyArray,
- Sequence[float],
- tuple[str, list[float]],
- types.NamedVector,
- types.NamedSparseVector,
- ],
- group_by: str,
- query_filter: Optional[models.Filter] = None,
- search_params: Optional[models.SearchParams] = None,
- limit: int = 10,
- group_size: int = 1,
- with_payload: Union[bool, Sequence[str], models.PayloadSelector] = True,
- with_vectors: Union[bool, Sequence[str]] = False,
- score_threshold: Optional[float] = None,
- with_lookup: Optional[types.WithLookupInterface] = None,
- **kwargs: Any,
- ) -> types.GroupsResult:
- raise NotImplementedError()
- def search_matrix_offsets(
- self,
- collection_name: str,
- query_filter: Optional[types.Filter] = None,
- limit: int = 3,
- sample: int = 10,
- using: Optional[str] = None,
- **kwargs: Any,
- ) -> types.SearchMatrixOffsetsResponse:
- raise NotImplementedError()
- def search_matrix_pairs(
- self,
- collection_name: str,
- query_filter: Optional[types.Filter] = None,
- limit: int = 3,
- sample: int = 10,
- using: Optional[str] = None,
- **kwargs: Any,
- ) -> types.SearchMatrixPairsResponse:
- raise NotImplementedError()
- def query_batch_points(
- self,
- collection_name: str,
- requests: Sequence[types.QueryRequest],
- **kwargs: Any,
- ) -> list[types.QueryResponse]:
- raise NotImplementedError()
- def query_points(
- self,
- collection_name: str,
- query: Union[
- types.PointId,
- list[float],
- list[list[float]],
- types.SparseVector,
- types.Query,
- types.NumpyArray,
- types.Document,
- types.Image,
- types.InferenceObject,
- None,
- ] = None,
- using: Optional[str] = None,
- prefetch: Union[types.Prefetch, list[types.Prefetch], None] = None,
- query_filter: Optional[types.Filter] = None,
- search_params: Optional[types.SearchParams] = None,
- limit: int = 10,
- offset: Optional[int] = None,
- with_payload: Union[bool, Sequence[str], types.PayloadSelector] = True,
- with_vectors: Union[bool, Sequence[str]] = False,
- score_threshold: Optional[float] = None,
- lookup_from: Optional[types.LookupLocation] = None,
- **kwargs: Any,
- ) -> types.QueryResponse:
- raise NotImplementedError()
- def query_points_groups(
- self,
- collection_name: str,
- group_by: str,
- query: Union[
- types.PointId,
- list[float],
- list[list[float]],
- types.SparseVector,
- types.Query,
- types.NumpyArray,
- types.Document,
- types.Image,
- types.InferenceObject,
- None,
- ] = None,
- using: Optional[str] = None,
- prefetch: Union[types.Prefetch, list[types.Prefetch], None] = None,
- query_filter: Optional[types.Filter] = None,
- search_params: Optional[types.SearchParams] = None,
- limit: int = 10,
- group_size: int = 3,
- with_payload: Union[bool, Sequence[str], types.PayloadSelector] = True,
- with_vectors: Union[bool, Sequence[str]] = False,
- score_threshold: Optional[float] = None,
- with_lookup: Optional[types.WithLookupInterface] = None,
- lookup_from: Optional[types.LookupLocation] = None,
- **kwargs: Any,
- ) -> types.GroupsResult:
- raise NotImplementedError()
- def recommend_batch(
- self,
- collection_name: str,
- requests: Sequence[types.RecommendRequest],
- **kwargs: Any,
- ) -> list[list[types.ScoredPoint]]:
- raise NotImplementedError()
- def recommend(
- self,
- collection_name: str,
- positive: Optional[Sequence[types.RecommendExample]] = None,
- negative: Optional[Sequence[types.RecommendExample]] = None,
- query_filter: Optional[types.Filter] = None,
- search_params: Optional[types.SearchParams] = None,
- limit: int = 10,
- offset: int = 0,
- with_payload: Union[bool, list[str], types.PayloadSelector] = True,
- with_vectors: Union[bool, list[str]] = False,
- score_threshold: Optional[float] = None,
- using: Optional[str] = None,
- lookup_from: Optional[types.LookupLocation] = None,
- strategy: Optional[types.RecommendStrategy] = None,
- **kwargs: Any,
- ) -> list[types.ScoredPoint]:
- raise NotImplementedError()
- def recommend_groups(
- self,
- collection_name: str,
- group_by: str,
- positive: Optional[Sequence[types.RecommendExample]] = None,
- negative: Optional[Sequence[types.RecommendExample]] = None,
- query_filter: Optional[models.Filter] = None,
- search_params: Optional[models.SearchParams] = None,
- limit: int = 10,
- group_size: int = 1,
- score_threshold: Optional[float] = None,
- with_payload: Union[bool, Sequence[str], models.PayloadSelector] = True,
- with_vectors: Union[bool, Sequence[str]] = False,
- using: Optional[str] = None,
- lookup_from: Optional[models.LookupLocation] = None,
- with_lookup: Optional[types.WithLookupInterface] = None,
- strategy: Optional[types.RecommendStrategy] = None,
- **kwargs: Any,
- ) -> types.GroupsResult:
- raise NotImplementedError()
- def discover(
- self,
- collection_name: str,
- target: Optional[types.TargetVector] = None,
- context: Optional[Sequence[types.ContextExamplePair]] = None,
- query_filter: Optional[types.Filter] = None,
- search_params: Optional[types.SearchParams] = None,
- limit: int = 10,
- offset: int = 0,
- with_payload: Union[bool, list[str], types.PayloadSelector] = True,
- with_vectors: Union[bool, list[str]] = False,
- using: Optional[str] = None,
- lookup_from: Optional[types.LookupLocation] = None,
- consistency: Optional[types.ReadConsistency] = None,
- **kwargs: Any,
- ) -> list[types.ScoredPoint]:
- raise NotImplementedError()
- def discover_batch(
- self,
- collection_name: str,
- requests: Sequence[types.DiscoverRequest],
- **kwargs: Any,
- ) -> list[list[types.ScoredPoint]]:
- raise NotImplementedError()
- def scroll(
- self,
- collection_name: str,
- scroll_filter: Optional[types.Filter] = None,
- limit: int = 10,
- order_by: Optional[types.OrderBy] = None,
- offset: Optional[types.PointId] = None,
- with_payload: Union[bool, Sequence[str], types.PayloadSelector] = True,
- with_vectors: Union[bool, Sequence[str]] = False,
- **kwargs: Any,
- ) -> tuple[list[types.Record], Optional[types.PointId]]:
- raise NotImplementedError()
- def count(
- self,
- collection_name: str,
- count_filter: Optional[types.Filter] = None,
- exact: bool = True,
- **kwargs: Any,
- ) -> types.CountResult:
- raise NotImplementedError()
- def facet(
- self,
- collection_name: str,
- key: str,
- facet_filter: Optional[types.Filter] = None,
- limit: int = 10,
- exact: bool = False,
- **kwargs: Any,
- ) -> types.FacetResponse:
- raise NotImplementedError()
- def upsert(
- self,
- collection_name: str,
- points: types.Points,
- **kwargs: Any,
- ) -> types.UpdateResult:
- raise NotImplementedError()
- def update_vectors(
- self,
- collection_name: str,
- points: Sequence[types.PointVectors],
- **kwargs: Any,
- ) -> types.UpdateResult:
- raise NotImplementedError()
- def delete_vectors(
- self,
- collection_name: str,
- vectors: Sequence[str],
- points: types.PointsSelector,
- **kwargs: Any,
- ) -> types.UpdateResult:
- raise NotImplementedError()
- def retrieve(
- self,
- collection_name: str,
- ids: Sequence[types.PointId],
- with_payload: Union[bool, Sequence[str], types.PayloadSelector] = True,
- with_vectors: Union[bool, Sequence[str]] = False,
- **kwargs: Any,
- ) -> list[types.Record]:
- raise NotImplementedError()
- def delete(
- self,
- collection_name: str,
- points_selector: types.PointsSelector,
- **kwargs: Any,
- ) -> types.UpdateResult:
- raise NotImplementedError()
- def set_payload(
- self,
- collection_name: str,
- payload: types.Payload,
- points: types.PointsSelector,
- key: Optional[str] = None,
- **kwargs: Any,
- ) -> types.UpdateResult:
- raise NotImplementedError()
- def overwrite_payload(
- self,
- collection_name: str,
- payload: types.Payload,
- points: types.PointsSelector,
- **kwargs: Any,
- ) -> types.UpdateResult:
- raise NotImplementedError()
- def delete_payload(
- self,
- collection_name: str,
- keys: Sequence[str],
- points: types.PointsSelector,
- **kwargs: Any,
- ) -> types.UpdateResult:
- raise NotImplementedError()
- def clear_payload(
- self,
- collection_name: str,
- points_selector: types.PointsSelector,
- **kwargs: Any,
- ) -> types.UpdateResult:
- raise NotImplementedError()
- def batch_update_points(
- self,
- collection_name: str,
- update_operations: Sequence[types.UpdateOperation],
- **kwargs: Any,
- ) -> list[types.UpdateResult]:
- raise NotImplementedError()
- def update_collection_aliases(
- self,
- change_aliases_operations: Sequence[types.AliasOperations],
- **kwargs: Any,
- ) -> bool:
- raise NotImplementedError()
- def get_collection_aliases(
- self, collection_name: str, **kwargs: Any
- ) -> types.CollectionsAliasesResponse:
- raise NotImplementedError()
- def get_aliases(self, **kwargs: Any) -> types.CollectionsAliasesResponse:
- raise NotImplementedError()
- def get_collections(self, **kwargs: Any) -> types.CollectionsResponse:
- raise NotImplementedError()
- def get_collection(self, collection_name: str, **kwargs: Any) -> types.CollectionInfo:
- raise NotImplementedError()
- def collection_exists(self, collection_name: str, **kwargs: Any) -> bool:
- raise NotImplementedError()
- def update_collection(
- self,
- collection_name: str,
- **kwargs: Any,
- ) -> bool:
- raise NotImplementedError()
- def delete_collection(self, collection_name: str, **kwargs: Any) -> bool:
- raise NotImplementedError()
- def create_collection(
- self,
- collection_name: str,
- vectors_config: Union[types.VectorParams, Mapping[str, types.VectorParams]],
- **kwargs: Any,
- ) -> bool:
- raise NotImplementedError()
- def recreate_collection(
- self,
- collection_name: str,
- vectors_config: Union[types.VectorParams, Mapping[str, types.VectorParams]],
- **kwargs: Any,
- ) -> bool:
- raise NotImplementedError()
- def upload_records(
- self,
- collection_name: str,
- records: Iterable[types.Record],
- **kwargs: Any,
- ) -> None:
- raise NotImplementedError()
- def upload_points(
- self,
- collection_name: str,
- points: Iterable[types.PointStruct],
- **kwargs: Any,
- ) -> None:
- raise NotImplementedError()
- def upload_collection(
- self,
- collection_name: str,
- vectors: Union[
- dict[str, types.NumpyArray], types.NumpyArray, Iterable[types.VectorStruct]
- ],
- payload: Optional[Iterable[dict[Any, Any]]] = None,
- ids: Optional[Iterable[types.PointId]] = None,
- **kwargs: Any,
- ) -> None:
- raise NotImplementedError()
- def create_payload_index(
- self,
- collection_name: str,
- field_name: str,
- field_schema: Optional[types.PayloadSchemaType] = None,
- field_type: Optional[types.PayloadSchemaType] = None,
- **kwargs: Any,
- ) -> types.UpdateResult:
- raise NotImplementedError()
- def delete_payload_index(
- self,
- collection_name: str,
- field_name: str,
- **kwargs: Any,
- ) -> types.UpdateResult:
- raise NotImplementedError()
- def list_snapshots(
- self, collection_name: str, **kwargs: Any
- ) -> list[types.SnapshotDescription]:
- raise NotImplementedError()
- def create_snapshot(
- self, collection_name: str, **kwargs: Any
- ) -> Optional[types.SnapshotDescription]:
- raise NotImplementedError()
- def delete_snapshot(
- self, collection_name: str, snapshot_name: str, **kwargs: Any
- ) -> Optional[bool]:
- raise NotImplementedError()
- def list_full_snapshots(self, **kwargs: Any) -> list[types.SnapshotDescription]:
- raise NotImplementedError()
- def create_full_snapshot(self, **kwargs: Any) -> Optional[types.SnapshotDescription]:
- raise NotImplementedError()
- def delete_full_snapshot(self, snapshot_name: str, **kwargs: Any) -> Optional[bool]:
- raise NotImplementedError()
- def recover_snapshot(
- self,
- collection_name: str,
- location: str,
- **kwargs: Any,
- ) -> Optional[bool]:
- raise NotImplementedError()
- def list_shard_snapshots(
- self, collection_name: str, shard_id: int, **kwargs: Any
- ) -> list[types.SnapshotDescription]:
- raise NotImplementedError()
- def create_shard_snapshot(
- self, collection_name: str, shard_id: int, **kwargs: Any
- ) -> Optional[types.SnapshotDescription]:
- raise NotImplementedError()
- def delete_shard_snapshot(
- self, collection_name: str, shard_id: int, snapshot_name: str, **kwargs: Any
- ) -> Optional[bool]:
- raise NotImplementedError()
- def recover_shard_snapshot(
- self,
- collection_name: str,
- shard_id: int,
- location: str,
- **kwargs: Any,
- ) -> Optional[bool]:
- raise NotImplementedError()
- def lock_storage(self, reason: str, **kwargs: Any) -> types.LocksOption:
- raise NotImplementedError()
- def unlock_storage(self, **kwargs: Any) -> types.LocksOption:
- raise NotImplementedError()
- def get_locks(self, **kwargs: Any) -> types.LocksOption:
- raise NotImplementedError()
- def close(self, **kwargs: Any) -> None:
- pass
- def migrate(
- self,
- dest_client: "QdrantBase",
- collection_names: Optional[list[str]] = None,
- batch_size: int = 100,
- recreate_on_collision: bool = False,
- ) -> None:
- raise NotImplementedError()
- def create_shard_key(
- self,
- collection_name: str,
- shard_key: types.ShardKey,
- shards_number: Optional[int] = None,
- replication_factor: Optional[int] = None,
- placement: Optional[list[int]] = None,
- **kwargs: Any,
- ) -> bool:
- raise NotImplementedError()
- def delete_shard_key(
- self,
- collection_name: str,
- shard_key: types.ShardKey,
- **kwargs: Any,
- ) -> bool:
- raise NotImplementedError()
- def info(self) -> types.VersionInfo:
- raise NotImplementedError()
|