Source code for langchain_community.cache

"""
.. warning::
  Beta Feature!

**Cache** provides an optional caching layer for LLMs.

Cache is useful for two reasons:

- It can save you money by reducing the number of API calls you make to the LLM
  provider if you're often requesting the same completion multiple times.
- It can speed up your application by reducing the number of API calls you make
  to the LLM provider.

Cache directly competes with Memory. See documentation for Pros and Cons.

**Class hierarchy:**

.. code-block::

    BaseCache --> <name>Cache  # Examples: InMemoryCache, RedisCache, GPTCache
"""
from __future__ import annotations

import hashlib
import inspect
import json
import logging
import uuid
import warnings
from datetime import timedelta
from functools import lru_cache
from typing import (
    TYPE_CHECKING,
    Any,
    Callable,
    Dict,
    List,
    Optional,
    Tuple,
    Type,
    Union,
    cast,
)

from sqlalchemy import Column, Integer, String, create_engine, select
from sqlalchemy.engine import Row
from sqlalchemy.engine.base import Engine
from sqlalchemy.orm import Session

try:
    from sqlalchemy.orm import declarative_base
except ImportError:
    from sqlalchemy.ext.declarative import declarative_base

from langchain_core.caches import RETURN_VAL_TYPE, BaseCache
from langchain_core.embeddings import Embeddings
from langchain_core.language_models.llms import LLM, get_prompts
from langchain_core.load.dump import dumps
from langchain_core.load.load import loads
from langchain_core.outputs import ChatGeneration, Generation
from langchain_core.utils import get_from_env

from langchain_community.vectorstores.redis import Redis as RedisVectorstore

logger = logging.getLogger(__file__)

if TYPE_CHECKING:
    import momento
    from cassandra.cluster import Session as CassandraSession


def _hash(_input: str) -> str:
    """Use a deterministic hashing approach."""
    return hashlib.md5(_input.encode()).hexdigest()


def _dump_generations_to_json(generations: RETURN_VAL_TYPE) -> str:
    """Dump generations to json.

    Args:
        generations (RETURN_VAL_TYPE): A list of language model generations.

    Returns:
        str: Json representing a list of generations.

    Warning: would not work well with arbitrary subclasses of `Generation`
    """
    return json.dumps([generation.dict() for generation in generations])


def _load_generations_from_json(generations_json: str) -> RETURN_VAL_TYPE:
    """Load generations from json.

    Args:
        generations_json (str): A string of json representing a list of generations.

    Raises:
        ValueError: Could not decode json string to list of generations.

    Returns:
        RETURN_VAL_TYPE: A list of generations.

    Warning: would not work well with arbitrary subclasses of `Generation`
    """
    try:
        results = json.loads(generations_json)
        return [Generation(**generation_dict) for generation_dict in results]
    except json.JSONDecodeError:
        raise ValueError(
            f"Could not decode json to list of generations: {generations_json}"
        )


def _dumps_generations(generations: RETURN_VAL_TYPE) -> str:
    """
    Serialization for generic RETURN_VAL_TYPE, i.e. sequence of `Generation`

    Args:
        generations (RETURN_VAL_TYPE): A list of language model generations.

    Returns:
        str: a single string representing a list of generations.

    This function (+ its counterpart `_loads_generations`) rely on
    the dumps/loads pair with Reviver, so are able to deal
    with all subclasses of Generation.

    Each item in the list can be `dumps`ed to a string,
    then we make the whole list of strings into a json-dumped.
    """
    return json.dumps([dumps(_item) for _item in generations])


def _loads_generations(generations_str: str) -> Union[RETURN_VAL_TYPE, None]:
    """
    Deserialization of a string into a generic RETURN_VAL_TYPE
    (i.e. a sequence of `Generation`).

    See `_dumps_generations`, the inverse of this function.

    Args:
        generations_str (str): A string representing a list of generations.

    Compatible with the legacy cache-blob format
    Does not raise exceptions for malformed entries, just logs a warning
    and returns none: the caller should be prepared for such a cache miss.

    Returns:
        RETURN_VAL_TYPE: A list of generations.
    """
    try:
        generations = [loads(_item_str) for _item_str in json.loads(generations_str)]
        return generations
    except (json.JSONDecodeError, TypeError):
        # deferring the (soft) handling to after the legacy-format attempt
        pass

    try:
        gen_dicts = json.loads(generations_str)
        # not relying on `_load_generations_from_json` (which could disappear):
        generations = [Generation(**generation_dict) for generation_dict in gen_dicts]
        logger.warning(
            f"Legacy 'Generation' cached blob encountered: '{generations_str}'"
        )
        return generations
    except (json.JSONDecodeError, TypeError):
        logger.warning(
            f"Malformed/unparsable cached blob encountered: '{generations_str}'"
        )
        return None


[docs]class InMemoryCache(BaseCache): """Cache that stores things in memory."""
[docs] def __init__(self) -> None: """Initialize with empty cache.""" self._cache: Dict[Tuple[str, str], RETURN_VAL_TYPE] = {}
[docs] def lookup(self, prompt: str, llm_string: str) -> Optional[RETURN_VAL_TYPE]: """Look up based on prompt and llm_string.""" return self._cache.get((prompt, llm_string), None)
[docs] def update(self, prompt: str, llm_string: str, return_val: RETURN_VAL_TYPE) -> None: """Update cache based on prompt and llm_string.""" self._cache[(prompt, llm_string)] = return_val
[docs] def clear(self, **kwargs: Any) -> None: """Clear cache.""" self._cache = {}
Base = declarative_base()
[docs]class FullLLMCache(Base): # type: ignore """SQLite table for full LLM Cache (all generations).""" __tablename__ = "full_llm_cache" prompt = Column(String, primary_key=True) llm = Column(String, primary_key=True) idx = Column(Integer, primary_key=True) response = Column(String)
[docs]class SQLAlchemyCache(BaseCache): """Cache that uses SQAlchemy as a backend."""
[docs] def __init__(self, engine: Engine, cache_schema: Type[FullLLMCache] = FullLLMCache): """Initialize by creating all tables.""" self.engine = engine self.cache_schema = cache_schema self.cache_schema.metadata.create_all(self.engine)
[docs] def lookup(self, prompt: str, llm_string: str) -> Optional[RETURN_VAL_TYPE]: """Look up based on prompt and llm_string.""" stmt = ( select(self.cache_schema.response) .where(self.cache_schema.prompt == prompt) # type: ignore .where(self.cache_schema.llm == llm_string) .order_by(self.cache_schema.idx) ) with Session(self.engine) as session: rows = session.execute(stmt).fetchall() if rows: try: return [loads(row[0]) for row in rows] except Exception: logger.warning( "Retrieving a cache value that could not be deserialized " "properly. This is likely due to the cache being in an " "older format. Please recreate your cache to avoid this " "error." ) # In a previous life we stored the raw text directly # in the table, so assume it's in that format. return [Generation(text=row[0]) for row in rows] return None
[docs] def update(self, prompt: str, llm_string: str, return_val: RETURN_VAL_TYPE) -> None: """Update based on prompt and llm_string.""" items = [ self.cache_schema(prompt=prompt, llm=llm_string, response=dumps(gen), idx=i) for i, gen in enumerate(return_val) ] with Session(self.engine) as session, session.begin(): for item in items: session.merge(item)
[docs] def clear(self, **kwargs: Any) -> None: """Clear cache.""" with Session(self.engine) as session: session.query(self.cache_schema).delete() session.commit()
[docs]class SQLiteCache(SQLAlchemyCache): """Cache that uses SQLite as a backend."""
[docs] def __init__(self, database_path: str = ".langchain.db"): """Initialize by creating the engine and all tables.""" engine = create_engine(f"sqlite:///{database_path}") super().__init__(engine)
[docs]class UpstashRedisCache(BaseCache): """Cache that uses Upstash Redis as a backend."""
[docs] def __init__(self, redis_: Any, *, ttl: Optional[int] = None): """ Initialize an instance of UpstashRedisCache. This method initializes an object with Upstash Redis caching capabilities. It takes a `redis_` parameter, which should be an instance of an Upstash Redis client class, allowing the object to interact with Upstash Redis server for caching purposes. Parameters: redis_: An instance of Upstash Redis client class (e.g., Redis) used for caching. This allows the object to communicate with Redis server for caching operations on. ttl (int, optional): Time-to-live (TTL) for cached items in seconds. If provided, it sets the time duration for how long cached items will remain valid. If not provided, cached items will not have an automatic expiration. """ try: from upstash_redis import Redis except ImportError: raise ValueError( "Could not import upstash_redis python package. " "Please install it with `pip install upstash_redis`." ) if not isinstance(redis_, Redis): raise ValueError("Please pass in Upstash Redis object.") self.redis = redis_ self.ttl = ttl
def _key(self, prompt: str, llm_string: str) -> str: """Compute key from prompt and llm_string""" return _hash(prompt + llm_string)
[docs] def lookup(self, prompt: str, llm_string: str) -> Optional[RETURN_VAL_TYPE]: """Look up based on prompt and llm_string.""" generations = [] # Read from a HASH results = self.redis.hgetall(self._key(prompt, llm_string)) if results: for _, text in results.items(): generations.append(Generation(text=text)) return generations if generations else None
[docs] def update(self, prompt: str, llm_string: str, return_val: RETURN_VAL_TYPE) -> None: """Update cache based on prompt and llm_string.""" for gen in return_val: if not isinstance(gen, Generation): raise ValueError( "UpstashRedisCache supports caching of normal LLM generations, " f"got {type(gen)}" ) if isinstance(gen, ChatGeneration): warnings.warn( "NOTE: Generation has not been cached. UpstashRedisCache does not" " support caching ChatModel outputs." ) return # Write to a HASH key = self._key(prompt, llm_string) mapping = { str(idx): generation.text for idx, generation in enumerate(return_val) } self.redis.hset(key=key, values=mapping) if self.ttl is not None: self.redis.expire(key, self.ttl)
[docs] def clear(self, **kwargs: Any) -> None: """ Clear cache. If `asynchronous` is True, flush asynchronously. This flushes the *whole* db. """ asynchronous = kwargs.get("asynchronous", False) if asynchronous: asynchronous = "ASYNC" else: asynchronous = "SYNC" self.redis.flushdb(flush_type=asynchronous)
[docs]class RedisCache(BaseCache): """Cache that uses Redis as a backend."""
[docs] def __init__(self, redis_: Any, *, ttl: Optional[int] = None): """ Initialize an instance of RedisCache. This method initializes an object with Redis caching capabilities. It takes a `redis_` parameter, which should be an instance of a Redis client class, allowing the object to interact with a Redis server for caching purposes. Parameters: redis_ (Any): An instance of a Redis client class (e.g., redis.Redis) used for caching. This allows the object to communicate with a Redis server for caching operations. ttl (int, optional): Time-to-live (TTL) for cached items in seconds. If provided, it sets the time duration for how long cached items will remain valid. If not provided, cached items will not have an automatic expiration. """ try: from redis import Redis except ImportError: raise ValueError( "Could not import redis python package. " "Please install it with `pip install redis`." ) if not isinstance(redis_, Redis): raise ValueError("Please pass in Redis object.") self.redis = redis_ self.ttl = ttl
def _key(self, prompt: str, llm_string: str) -> str: """Compute key from prompt and llm_string""" return _hash(prompt + llm_string)
[docs] def lookup(self, prompt: str, llm_string: str) -> Optional[RETURN_VAL_TYPE]: """Look up based on prompt and llm_string.""" generations = [] # Read from a Redis HASH results = self.redis.hgetall(self._key(prompt, llm_string)) if results: for _, text in results.items(): try: generations.append(loads(text)) except Exception: logger.warning( "Retrieving a cache value that could not be deserialized " "properly. This is likely due to the cache being in an " "older format. Please recreate your cache to avoid this " "error." ) # In a previous life we stored the raw text directly # in the table, so assume it's in that format. generations.append(Generation(text=text)) return generations if generations else None
[docs] def update(self, prompt: str, llm_string: str, return_val: RETURN_VAL_TYPE) -> None: """Update cache based on prompt and llm_string.""" for gen in return_val: if not isinstance(gen, Generation): raise ValueError( "RedisCache only supports caching of normal LLM generations, " f"got {type(gen)}" ) # Write to a Redis HASH key = self._key(prompt, llm_string) with self.redis.pipeline() as pipe: pipe.hset( key, mapping={ str(idx): dumps(generation) for idx, generation in enumerate(return_val) }, ) if self.ttl is not None: pipe.expire(key, self.ttl) pipe.execute()
[docs] def clear(self, **kwargs: Any) -> None: """Clear cache. If `asynchronous` is True, flush asynchronously.""" asynchronous = kwargs.get("asynchronous", False) self.redis.flushdb(asynchronous=asynchronous, **kwargs)
[docs]class RedisSemanticCache(BaseCache): """Cache that uses Redis as a vector-store backend.""" # TODO - implement a TTL policy in Redis DEFAULT_SCHEMA = { "content_key": "prompt", "text": [ {"name": "prompt"}, ], "extra": [{"name": "return_val"}, {"name": "llm_string"}], }
[docs] def __init__( self, redis_url: str, embedding: Embeddings, score_threshold: float = 0.2 ): """Initialize by passing in the `init` GPTCache func Args: redis_url (str): URL to connect to Redis. embedding (Embedding): Embedding provider for semantic encoding and search. score_threshold (float, 0.2): Example: .. code-block:: python from langchain_community.globals import set_llm_cache from langchain_community.cache import RedisSemanticCache from langchain_community.embeddings import OpenAIEmbeddings set_llm_cache(RedisSemanticCache( redis_url="redis://localhost:6379", embedding=OpenAIEmbeddings() )) """ self._cache_dict: Dict[str, RedisVectorstore] = {} self.redis_url = redis_url self.embedding = embedding self.score_threshold = score_threshold
def _index_name(self, llm_string: str) -> str: hashed_index = _hash(llm_string) return f"cache:{hashed_index}" def _get_llm_cache(self, llm_string: str) -> RedisVectorstore: index_name = self._index_name(llm_string) # return vectorstore client for the specific llm string if index_name in self._cache_dict: return self._cache_dict[index_name] # create new vectorstore client for the specific llm string try: self._cache_dict[index_name] = RedisVectorstore.from_existing_index( embedding=self.embedding, index_name=index_name, redis_url=self.redis_url, schema=cast(Dict, self.DEFAULT_SCHEMA), ) except ValueError: redis = RedisVectorstore( embedding=self.embedding, index_name=index_name, redis_url=self.redis_url, index_schema=cast(Dict, self.DEFAULT_SCHEMA), ) _embedding = self.embedding.embed_query(text="test") redis._create_index_if_not_exist(dim=len(_embedding)) self._cache_dict[index_name] = redis return self._cache_dict[index_name]
[docs] def clear(self, **kwargs: Any) -> None: """Clear semantic cache for a given llm_string.""" index_name = self._index_name(kwargs["llm_string"]) if index_name in self._cache_dict: self._cache_dict[index_name].drop_index( index_name=index_name, delete_documents=True, redis_url=self.redis_url ) del self._cache_dict[index_name]
[docs] def lookup(self, prompt: str, llm_string: str) -> Optional[RETURN_VAL_TYPE]: """Look up based on prompt and llm_string.""" llm_cache = self._get_llm_cache(llm_string) generations: List = [] # Read from a Hash results = llm_cache.similarity_search( query=prompt, k=1, distance_threshold=self.score_threshold, ) if results: for document in results: try: generations.extend(loads(document.metadata["return_val"])) except Exception: logger.warning( "Retrieving a cache value that could not be deserialized " "properly. This is likely due to the cache being in an " "older format. Please recreate your cache to avoid this " "error." ) # In a previous life we stored the raw text directly # in the table, so assume it's in that format. generations.extend( _load_generations_from_json(document.metadata["return_val"]) ) return generations if generations else None
[docs] def update(self, prompt: str, llm_string: str, return_val: RETURN_VAL_TYPE) -> None: """Update cache based on prompt and llm_string.""" for gen in return_val: if not isinstance(gen, Generation): raise ValueError( "RedisSemanticCache only supports caching of " f"normal LLM generations, got {type(gen)}" ) llm_cache = self._get_llm_cache(llm_string) metadata = { "llm_string": llm_string, "prompt": prompt, "return_val": dumps([g for g in return_val]), } llm_cache.add_texts(texts=[prompt], metadatas=[metadata])
[docs]class GPTCache(BaseCache): """Cache that uses GPTCache as a backend."""
[docs] def __init__( self, init_func: Union[ Callable[[Any, str], None], Callable[[Any], None], None ] = None, ): """Initialize by passing in init function (default: `None`). Args: init_func (Optional[Callable[[Any], None]]): init `GPTCache` function (default: `None`) Example: .. code-block:: python # Initialize GPTCache with a custom init function import gptcache from gptcache.processor.pre import get_prompt from gptcache.manager.factory import get_data_manager from langchain_community.globals import set_llm_cache # Avoid multiple caches using the same file, causing different llm model caches to affect each other def init_gptcache(cache_obj: gptcache.Cache, llm str): cache_obj.init( pre_embedding_func=get_prompt, data_manager=manager_factory( manager="map", data_dir=f"map_cache_{llm}" ), ) set_llm_cache(GPTCache(init_gptcache)) """ try: import gptcache # noqa: F401 except ImportError: raise ImportError( "Could not import gptcache python package. " "Please install it with `pip install gptcache`." ) self.init_gptcache_func: Union[ Callable[[Any, str], None], Callable[[Any], None], None ] = init_func self.gptcache_dict: Dict[str, Any] = {}
def _new_gptcache(self, llm_string: str) -> Any: """New gptcache object""" from gptcache import Cache from gptcache.manager.factory import get_data_manager from gptcache.processor.pre import get_prompt _gptcache = Cache() if self.init_gptcache_func is not None: sig = inspect.signature(self.init_gptcache_func) if len(sig.parameters) == 2: self.init_gptcache_func(_gptcache, llm_string) # type: ignore[call-arg] else: self.init_gptcache_func(_gptcache) # type: ignore[call-arg] else: _gptcache.init( pre_embedding_func=get_prompt, data_manager=get_data_manager(data_path=llm_string), ) self.gptcache_dict[llm_string] = _gptcache return _gptcache def _get_gptcache(self, llm_string: str) -> Any: """Get a cache object. When the corresponding llm model cache does not exist, it will be created.""" _gptcache = self.gptcache_dict.get(llm_string, None) if not _gptcache: _gptcache = self._new_gptcache(llm_string) return _gptcache
[docs] def lookup(self, prompt: str, llm_string: str) -> Optional[RETURN_VAL_TYPE]: """Look up the cache data. First, retrieve the corresponding cache object using the `llm_string` parameter, and then retrieve the data from the cache based on the `prompt`. """ from gptcache.adapter.api import get _gptcache = self._get_gptcache(llm_string) res = get(prompt, cache_obj=_gptcache) if res: return [ Generation(**generation_dict) for generation_dict in json.loads(res) ] return None
[docs] def update(self, prompt: str, llm_string: str, return_val: RETURN_VAL_TYPE) -> None: """Update cache. First, retrieve the corresponding cache object using the `llm_string` parameter, and then store the `prompt` and `return_val` in the cache object. """ for gen in return_val: if not isinstance(gen, Generation): raise ValueError( "GPTCache only supports caching of normal LLM generations, " f"got {type(gen)}" ) from gptcache.adapter.api import put _gptcache = self._get_gptcache(llm_string) handled_data = json.dumps([generation.dict() for generation in return_val]) put(prompt, handled_data, cache_obj=_gptcache) return None
[docs] def clear(self, **kwargs: Any) -> None: """Clear cache.""" from gptcache import Cache for gptcache_instance in self.gptcache_dict.values(): gptcache_instance = cast(Cache, gptcache_instance) gptcache_instance.flush() self.gptcache_dict.clear()
def _ensure_cache_exists(cache_client: momento.CacheClient, cache_name: str) -> None: """Create cache if it doesn't exist. Raises: SdkException: Momento service or network error Exception: Unexpected response """ from momento.responses import CreateCache create_cache_response = cache_client.create_cache(cache_name) if isinstance(create_cache_response, CreateCache.Success) or isinstance( create_cache_response, CreateCache.CacheAlreadyExists ): return None elif isinstance(create_cache_response, CreateCache.Error): raise create_cache_response.inner_exception else: raise Exception(f"Unexpected response cache creation: {create_cache_response}") def _validate_ttl(ttl: Optional[timedelta]) -> None: if ttl is not None and ttl <= timedelta(seconds=0): raise ValueError(f"ttl must be positive but was {ttl}.")
[docs]class MomentoCache(BaseCache): """Cache that uses Momento as a backend. See https://gomomento.com/"""
[docs] def __init__( self, cache_client: momento.CacheClient, cache_name: str, *, ttl: Optional[timedelta] = None, ensure_cache_exists: bool = True, ): """Instantiate a prompt cache using Momento as a backend. Note: to instantiate the cache client passed to MomentoCache, you must have a Momento account. See https://gomomento.com/. Args: cache_client (CacheClient): The Momento cache client. cache_name (str): The name of the cache to use to store the data. ttl (Optional[timedelta], optional): The time to live for the cache items. Defaults to None, ie use the client default TTL. ensure_cache_exists (bool, optional): Create the cache if it doesn't exist. Defaults to True. Raises: ImportError: Momento python package is not installed. TypeError: cache_client is not of type momento.CacheClientObject ValueError: ttl is non-null and non-negative """ try: from momento import CacheClient except ImportError: raise ImportError( "Could not import momento python package. " "Please install it with `pip install momento`." ) if not isinstance(cache_client, CacheClient): raise TypeError("cache_client must be a momento.CacheClient object.") _validate_ttl(ttl) if ensure_cache_exists: _ensure_cache_exists(cache_client, cache_name) self.cache_client = cache_client self.cache_name = cache_name self.ttl = ttl
[docs] @classmethod def from_client_params( cls, cache_name: str, ttl: timedelta, *, configuration: Optional[momento.config.Configuration] = None, api_key: Optional[str] = None, auth_token: Optional[str] = None, # for backwards compatibility **kwargs: Any, ) -> MomentoCache: """Construct cache from CacheClient parameters.""" try: from momento import CacheClient, Configurations, CredentialProvider except ImportError: raise ImportError( "Could not import momento python package. " "Please install it with `pip install momento`." ) if configuration is None: configuration = Configurations.Laptop.v1() # Try checking `MOMENTO_AUTH_TOKEN` first for backwards compatibility try: api_key = auth_token or get_from_env("auth_token", "MOMENTO_AUTH_TOKEN") except ValueError: api_key = api_key or get_from_env("api_key", "MOMENTO_API_KEY") credentials = CredentialProvider.from_string(api_key) cache_client = CacheClient(configuration, credentials, default_ttl=ttl) return cls(cache_client, cache_name, ttl=ttl, **kwargs)
def __key(self, prompt: str, llm_string: str) -> str: """Compute cache key from prompt and associated model and settings. Args: prompt (str): The prompt run through the language model. llm_string (str): The language model version and settings. Returns: str: The cache key. """ return _hash(prompt + llm_string)
[docs] def lookup(self, prompt: str, llm_string: str) -> Optional[RETURN_VAL_TYPE]: """Lookup llm generations in cache by prompt and associated model and settings. Args: prompt (str): The prompt run through the language model. llm_string (str): The language model version and settings. Raises: SdkException: Momento service or network error Returns: Optional[RETURN_VAL_TYPE]: A list of language model generations. """ from momento.responses import CacheGet generations: RETURN_VAL_TYPE = [] get_response = self.cache_client.get( self.cache_name, self.__key(prompt, llm_string) ) if isinstance(get_response, CacheGet.Hit): value = get_response.value_string generations = _load_generations_from_json(value) elif isinstance(get_response, CacheGet.Miss): pass elif isinstance(get_response, CacheGet.Error): raise get_response.inner_exception return generations if generations else None
[docs] def update(self, prompt: str, llm_string: str, return_val: RETURN_VAL_TYPE) -> None: """Store llm generations in cache. Args: prompt (str): The prompt run through the language model. llm_string (str): The language model string. return_val (RETURN_VAL_TYPE): A list of language model generations. Raises: SdkException: Momento service or network error Exception: Unexpected response """ for gen in return_val: if not isinstance(gen, Generation): raise ValueError( "Momento only supports caching of normal LLM generations, " f"got {type(gen)}" ) key = self.__key(prompt, llm_string) value = _dump_generations_to_json(return_val) set_response = self.cache_client.set(self.cache_name, key, value, self.ttl) from momento.responses import CacheSet if isinstance(set_response, CacheSet.Success): pass elif isinstance(set_response, CacheSet.Error): raise set_response.inner_exception else: raise Exception(f"Unexpected response: {set_response}")
[docs] def clear(self, **kwargs: Any) -> None: """Clear the cache. Raises: SdkException: Momento service or network error """ from momento.responses import CacheFlush flush_response = self.cache_client.flush_cache(self.cache_name) if isinstance(flush_response, CacheFlush.Success): pass elif isinstance(flush_response, CacheFlush.Error): raise flush_response.inner_exception
CASSANDRA_CACHE_DEFAULT_TABLE_NAME = "langchain_llm_cache" CASSANDRA_CACHE_DEFAULT_TTL_SECONDS = None
[docs]class CassandraCache(BaseCache): """ Cache that uses Cassandra / Astra DB as a backend. It uses a single Cassandra table. The lookup keys (which get to form the primary key) are: - prompt, a string - llm_string, a deterministic str representation of the model parameters. (needed to prevent collisions same-prompt-different-model collisions) """
[docs] def __init__( self, session: Optional[CassandraSession] = None, keyspace: Optional[str] = None, table_name: str = CASSANDRA_CACHE_DEFAULT_TABLE_NAME, ttl_seconds: Optional[int] = CASSANDRA_CACHE_DEFAULT_TTL_SECONDS, skip_provisioning: bool = False, ): """ Initialize with a ready session and a keyspace name. Args: session (cassandra.cluster.Session): an open Cassandra session keyspace (str): the keyspace to use for storing the cache table_name (str): name of the Cassandra table to use as cache ttl_seconds (optional int): time-to-live for cache entries (default: None, i.e. forever) """ try: from cassio.table import ElasticCassandraTable except (ImportError, ModuleNotFoundError): raise ValueError( "Could not import cassio python package. " "Please install it with `pip install cassio`." ) self.session = session self.keyspace = keyspace self.table_name = table_name self.ttl_seconds = ttl_seconds self.kv_cache = ElasticCassandraTable( session=self.session, keyspace=self.keyspace, table=self.table_name, keys=["llm_string", "prompt"], primary_key_type=["TEXT", "TEXT"], ttl_seconds=self.ttl_seconds, skip_provisioning=skip_provisioning, )
[docs] def lookup(self, prompt: str, llm_string: str) -> Optional[RETURN_VAL_TYPE]: """Look up based on prompt and llm_string.""" item = self.kv_cache.get( llm_string=_hash(llm_string), prompt=_hash(prompt), ) if item is not None: generations = _loads_generations(item["body_blob"]) # this protects against malformed cached items: if generations is not None: return generations else: return None else: return None
[docs] def update(self, prompt: str, llm_string: str, return_val: RETURN_VAL_TYPE) -> None: """Update cache based on prompt and llm_string.""" blob = _dumps_generations(return_val) self.kv_cache.put( llm_string=_hash(llm_string), prompt=_hash(prompt), body_blob=blob, )
[docs] def delete_through_llm( self, prompt: str, llm: LLM, stop: Optional[List[str]] = None ) -> None: """ A wrapper around `delete` with the LLM being passed. In case the llm(prompt) calls have a `stop` param, you should pass it here """ llm_string = get_prompts( {**llm.dict(), **{"stop": stop}}, [], )[1] return self.delete(prompt, llm_string=llm_string)
[docs] def delete(self, prompt: str, llm_string: str) -> None: """Evict from cache if there's an entry.""" return self.kv_cache.delete( llm_string=_hash(llm_string), prompt=_hash(prompt), )
[docs] def clear(self, **kwargs: Any) -> None: """Clear cache. This is for all LLMs at once.""" self.kv_cache.clear()
CASSANDRA_SEMANTIC_CACHE_DEFAULT_DISTANCE_METRIC = "dot" CASSANDRA_SEMANTIC_CACHE_DEFAULT_SCORE_THRESHOLD = 0.85 CASSANDRA_SEMANTIC_CACHE_DEFAULT_TABLE_NAME = "langchain_llm_semantic_cache" CASSANDRA_SEMANTIC_CACHE_DEFAULT_TTL_SECONDS = None CASSANDRA_SEMANTIC_CACHE_EMBEDDING_CACHE_SIZE = 16
[docs]class CassandraSemanticCache(BaseCache): """ Cache that uses Cassandra as a vector-store backend for semantic (i.e. similarity-based) lookup. It uses a single (vector) Cassandra table and stores, in principle, cached values from several LLMs, so the LLM's llm_string is part of the rows' primary keys. The similarity is based on one of several distance metrics (default: "dot"). If choosing another metric, the default threshold is to be re-tuned accordingly. """
[docs] def __init__( self, session: Optional[CassandraSession], keyspace: Optional[str], embedding: Embeddings, table_name: str = CASSANDRA_SEMANTIC_CACHE_DEFAULT_TABLE_NAME, distance_metric: str = CASSANDRA_SEMANTIC_CACHE_DEFAULT_DISTANCE_METRIC, score_threshold: float = CASSANDRA_SEMANTIC_CACHE_DEFAULT_SCORE_THRESHOLD, ttl_seconds: Optional[int] = CASSANDRA_SEMANTIC_CACHE_DEFAULT_TTL_SECONDS, skip_provisioning: bool = False, ): """ Initialize the cache with all relevant parameters. Args: session (cassandra.cluster.Session): an open Cassandra session keyspace (str): the keyspace to use for storing the cache embedding (Embedding): Embedding provider for semantic encoding and search. table_name (str): name of the Cassandra (vector) table to use as cache distance_metric (str, 'dot'): which measure to adopt for similarity searches score_threshold (optional float): numeric value to use as cutoff for the similarity searches ttl_seconds (optional int): time-to-live for cache entries (default: None, i.e. forever) The default score threshold is tuned to the default metric. Tune it carefully yourself if switching to another distance metric. """ try: from cassio.table import MetadataVectorCassandraTable except (ImportError, ModuleNotFoundError): raise ValueError( "Could not import cassio python package. " "Please install it with `pip install cassio`." ) self.session = session self.keyspace = keyspace self.embedding = embedding self.table_name = table_name self.distance_metric = distance_metric self.score_threshold = score_threshold self.ttl_seconds = ttl_seconds # The contract for this class has separate lookup and update: # in order to spare some embedding calculations we cache them between # the two calls. # Note: each instance of this class has its own `_get_embedding` with # its own lru. @lru_cache(maxsize=CASSANDRA_SEMANTIC_CACHE_EMBEDDING_CACHE_SIZE) def _cache_embedding(text: str) -> List[float]: return self.embedding.embed_query(text=text) self._get_embedding = _cache_embedding self.embedding_dimension = self._get_embedding_dimension() self.table = MetadataVectorCassandraTable( session=self.session, keyspace=self.keyspace, table=self.table_name, primary_key_type=["TEXT"], vector_dimension=self.embedding_dimension, ttl_seconds=self.ttl_seconds, metadata_indexing=("allow", {"_llm_string_hash"}), skip_provisioning=skip_provisioning, )
def _get_embedding_dimension(self) -> int: return len(self._get_embedding(text="This is a sample sentence."))
[docs] def update(self, prompt: str, llm_string: str, return_val: RETURN_VAL_TYPE) -> None: """Update cache based on prompt and llm_string.""" embedding_vector = self._get_embedding(text=prompt) llm_string_hash = _hash(llm_string) body = _dumps_generations(return_val) metadata = { "_prompt": prompt, "_llm_string_hash": llm_string_hash, } row_id = f"{_hash(prompt)}-{llm_string_hash}" # self.table.put( body_blob=body, vector=embedding_vector, row_id=row_id, metadata=metadata, )
[docs] def lookup(self, prompt: str, llm_string: str) -> Optional[RETURN_VAL_TYPE]: """Look up based on prompt and llm_string.""" hit_with_id = self.lookup_with_id(prompt, llm_string) if hit_with_id is not None: return hit_with_id[1] else: return None
[docs] def lookup_with_id( self, prompt: str, llm_string: str ) -> Optional[Tuple[str, RETURN_VAL_TYPE]]: """ Look up based on prompt and llm_string. If there are hits, return (document_id, cached_entry) """ prompt_embedding: List[float] = self._get_embedding(text=prompt) hits = list( self.table.metric_ann_search( vector=prompt_embedding, metadata={"_llm_string_hash": _hash(llm_string)}, n=1, metric=self.distance_metric, metric_threshold=self.score_threshold, ) ) if hits: hit = hits[0] generations = _loads_generations(hit["body_blob"]) if generations is not None: # this protects against malformed cached items: return ( hit["row_id"], generations, ) else: return None else: return None
[docs] def lookup_with_id_through_llm( self, prompt: str, llm: LLM, stop: Optional[List[str]] = None ) -> Optional[Tuple[str, RETURN_VAL_TYPE]]: llm_string = get_prompts( {**llm.dict(), **{"stop": stop}}, [], )[1] return self.lookup_with_id(prompt, llm_string=llm_string)
[docs] def delete_by_document_id(self, document_id: str) -> None: """ Given this is a "similarity search" cache, an invalidation pattern that makes sense is first a lookup to get an ID, and then deleting with that ID. This is for the second step. """ self.table.delete(row_id=document_id)
[docs] def clear(self, **kwargs: Any) -> None: """Clear the *whole* semantic cache.""" self.table.clear()
[docs]class FullMd5LLMCache(Base): # type: ignore """SQLite table for full LLM Cache (all generations).""" __tablename__ = "full_md5_llm_cache" id = Column(String, primary_key=True) prompt_md5 = Column(String, index=True) llm = Column(String, index=True) idx = Column(Integer, index=True) prompt = Column(String) response = Column(String)
[docs]class SQLAlchemyMd5Cache(BaseCache): """Cache that uses SQAlchemy as a backend."""
[docs] def __init__( self, engine: Engine, cache_schema: Type[FullMd5LLMCache] = FullMd5LLMCache ): """Initialize by creating all tables.""" self.engine = engine self.cache_schema = cache_schema self.cache_schema.metadata.create_all(self.engine)
[docs] def lookup(self, prompt: str, llm_string: str) -> Optional[RETURN_VAL_TYPE]: """Look up based on prompt and llm_string.""" rows = self._search_rows(prompt, llm_string) if rows: return [loads(row[0]) for row in rows] return None
[docs] def update(self, prompt: str, llm_string: str, return_val: RETURN_VAL_TYPE) -> None: """Update based on prompt and llm_string.""" self._delete_previous(prompt, llm_string) prompt_md5 = self.get_md5(prompt) items = [ self.cache_schema( id=str(uuid.uuid1()), prompt=prompt, prompt_md5=prompt_md5, llm=llm_string, response=dumps(gen), idx=i, ) for i, gen in enumerate(return_val) ] with Session(self.engine) as session, session.begin(): for item in items: session.merge(item)
def _delete_previous(self, prompt: str, llm_string: str) -> None: stmt = ( select(self.cache_schema.response) .where(self.cache_schema.prompt_md5 == self.get_md5(prompt)) # type: ignore .where(self.cache_schema.llm == llm_string) .where(self.cache_schema.prompt == prompt) .order_by(self.cache_schema.idx) ) with Session(self.engine) as session, session.begin(): rows = session.execute(stmt).fetchall() for item in rows: session.delete(item) def _search_rows(self, prompt: str, llm_string: str) -> List[Row]: prompt_pd5 = self.get_md5(prompt) stmt = ( select(self.cache_schema.response) .where(self.cache_schema.prompt_md5 == prompt_pd5) # type: ignore .where(self.cache_schema.llm == llm_string) .where(self.cache_schema.prompt == prompt) .order_by(self.cache_schema.idx) ) with Session(self.engine) as session: return session.execute(stmt).fetchall()
[docs] def clear(self, **kwargs: Any) -> None: """Clear cache.""" with Session(self.engine) as session: session.execute(self.cache_schema.delete())
[docs] @staticmethod def get_md5(input_string: str) -> str: return hashlib.md5(input_string.encode()).hexdigest()
ASTRA_DB_CACHE_DEFAULT_COLLECTION_NAME = "langchain_astradb_cache"
[docs]class AstraDBCache(BaseCache): """ Cache that uses Astra DB as a backend. It uses a single collection as a kv store The lookup keys, combined in the _id of the documents, are: - prompt, a string - llm_string, a deterministic str representation of the model parameters. (needed to prevent same-prompt-different-model collisions) """
[docs] def __init__( self, *, collection_name: str = ASTRA_DB_CACHE_DEFAULT_COLLECTION_NAME, token: Optional[str] = None, api_endpoint: Optional[str] = None, astra_db_client: Optional[Any] = None, # 'astrapy.db.AstraDB' if passed namespace: Optional[str] = None, ): """ Create an AstraDB cache using a collection for storage. Args (only keyword-arguments accepted): collection_name (str): name of the Astra DB collection to create/use. token (Optional[str]): API token for Astra DB usage. api_endpoint (Optional[str]): full URL to the API endpoint, such as "https://<DB-ID>-us-east1.apps.astra.datastax.com". astra_db_client (Optional[Any]): *alternative to token+api_endpoint*, you can pass an already-created 'astrapy.db.AstraDB' instance. namespace (Optional[str]): namespace (aka keyspace) where the collection is created. Defaults to the database's "default namespace". """ try: from astrapy.db import ( AstraDB as LibAstraDB, ) except (ImportError, ModuleNotFoundError): raise ImportError( "Could not import a recent astrapy python package. " "Please install it with `pip install --upgrade astrapy`." ) # Conflicting-arg checks: if astra_db_client is not None: if token is not None or api_endpoint is not None: raise ValueError( "You cannot pass 'astra_db_client' to AstraDB if passing " "'token' and 'api_endpoint'." ) self.collection_name = collection_name self.token = token self.api_endpoint = api_endpoint self.namespace = namespace if astra_db_client is not None: self.astra_db = astra_db_client else: self.astra_db = LibAstraDB( token=self.token, api_endpoint=self.api_endpoint, namespace=self.namespace, ) self.collection = self.astra_db.create_collection( collection_name=self.collection_name, )
@staticmethod def _make_id(prompt: str, llm_string: str) -> str: return f"{_hash(prompt)}#{_hash(llm_string)}"
[docs] def lookup(self, prompt: str, llm_string: str) -> Optional[RETURN_VAL_TYPE]: """Look up based on prompt and llm_string.""" doc_id = self._make_id(prompt, llm_string) item = self.collection.find_one( filter={ "_id": doc_id, }, projection={ "body_blob": 1, }, )["data"]["document"] if item is not None: generations = _loads_generations(item["body_blob"]) # this protects against malformed cached items: if generations is not None: return generations else: return None else: return None
[docs] def update(self, prompt: str, llm_string: str, return_val: RETURN_VAL_TYPE) -> None: """Update cache based on prompt and llm_string.""" doc_id = self._make_id(prompt, llm_string) blob = _dumps_generations(return_val) self.collection.upsert( { "_id": doc_id, "body_blob": blob, }, )
[docs] def delete_through_llm( self, prompt: str, llm: LLM, stop: Optional[List[str]] = None ) -> None: """ A wrapper around `delete` with the LLM being passed. In case the llm(prompt) calls have a `stop` param, you should pass it here """ llm_string = get_prompts( {**llm.dict(), **{"stop": stop}}, [], )[1] return self.delete(prompt, llm_string=llm_string)
[docs] def delete(self, prompt: str, llm_string: str) -> None: """Evict from cache if there's an entry.""" doc_id = self._make_id(prompt, llm_string) return self.collection.delete_one(doc_id)
[docs] def clear(self, **kwargs: Any) -> None: """Clear cache. This is for all LLMs at once.""" self.astra_db.truncate_collection(self.collection_name)
ASTRA_DB_SEMANTIC_CACHE_DEFAULT_THRESHOLD = 0.85 ASTRA_DB_CACHE_DEFAULT_COLLECTION_NAME = "langchain_astradb_semantic_cache" ASTRA_DB_SEMANTIC_CACHE_EMBEDDING_CACHE_SIZE = 16
[docs]class AstraDBSemanticCache(BaseCache): """ Cache that uses Astra DB as a vector-store backend for semantic (i.e. similarity-based) lookup. It uses a single (vector) collection and can store cached values from several LLMs, so the LLM's 'llm_string' is stored in the document metadata. You can choose the preferred similarity (or use the API default) -- remember the threshold might require metric-dependend tuning. """
[docs] def __init__( self, *, collection_name: str = ASTRA_DB_CACHE_DEFAULT_COLLECTION_NAME, token: Optional[str] = None, api_endpoint: Optional[str] = None, astra_db_client: Optional[Any] = None, # 'astrapy.db.AstraDB' if passed namespace: Optional[str] = None, embedding: Embeddings, metric: Optional[str] = None, similarity_threshold: float = ASTRA_DB_SEMANTIC_CACHE_DEFAULT_THRESHOLD, ): """ Initialize the cache with all relevant parameters. Args: collection_name (str): name of the Astra DB collection to create/use. token (Optional[str]): API token for Astra DB usage. api_endpoint (Optional[str]): full URL to the API endpoint, such as "https://<DB-ID>-us-east1.apps.astra.datastax.com". astra_db_client (Optional[Any]): *alternative to token+api_endpoint*, you can pass an already-created 'astrapy.db.AstraDB' instance. namespace (Optional[str]): namespace (aka keyspace) where the collection is created. Defaults to the database's "default namespace". embedding (Embedding): Embedding provider for semantic encoding and search. metric: the function to use for evaluating similarity of text embeddings. Defaults to 'cosine' (alternatives: 'euclidean', 'dot_product') similarity_threshold (float, optional): the minimum similarity for accepting a (semantic-search) match. The default score threshold is tuned to the default metric. Tune it carefully yourself if switching to another distance metric. """ try: from astrapy.db import ( AstraDB as LibAstraDB, ) except (ImportError, ModuleNotFoundError): raise ImportError( "Could not import a recent astrapy python package. " "Please install it with `pip install --upgrade astrapy`." ) # Conflicting-arg checks: if astra_db_client is not None: if token is not None or api_endpoint is not None: raise ValueError( "You cannot pass 'astra_db_client' to AstraDB if passing " "'token' and 'api_endpoint'." ) self.embedding = embedding self.metric = metric self.similarity_threshold = similarity_threshold # The contract for this class has separate lookup and update: # in order to spare some embedding calculations we cache them between # the two calls. # Note: each instance of this class has its own `_get_embedding` with # its own lru. @lru_cache(maxsize=ASTRA_DB_SEMANTIC_CACHE_EMBEDDING_CACHE_SIZE) def _cache_embedding(text: str) -> List[float]: return self.embedding.embed_query(text=text) self._get_embedding = _cache_embedding self.embedding_dimension = self._get_embedding_dimension() self.collection_name = collection_name self.token = token self.api_endpoint = api_endpoint self.namespace = namespace if astra_db_client is not None: self.astra_db = astra_db_client else: self.astra_db = LibAstraDB( token=self.token, api_endpoint=self.api_endpoint, namespace=self.namespace, ) self.collection = self.astra_db.create_collection( collection_name=self.collection_name, dimension=self.embedding_dimension, metric=self.metric, )
def _get_embedding_dimension(self) -> int: return len(self._get_embedding(text="This is a sample sentence.")) @staticmethod def _make_id(prompt: str, llm_string: str) -> str: return f"{_hash(prompt)}#{_hash(llm_string)}"
[docs] def update(self, prompt: str, llm_string: str, return_val: RETURN_VAL_TYPE) -> None: """Update cache based on prompt and llm_string.""" doc_id = self._make_id(prompt, llm_string) llm_string_hash = _hash(llm_string) embedding_vector = self._get_embedding(text=prompt) body = _dumps_generations(return_val) # self.collection.upsert( { "_id": doc_id, "body_blob": body, "llm_string_hash": llm_string_hash, "$vector": embedding_vector, } )
[docs] def lookup(self, prompt: str, llm_string: str) -> Optional[RETURN_VAL_TYPE]: """Look up based on prompt and llm_string.""" hit_with_id = self.lookup_with_id(prompt, llm_string) if hit_with_id is not None: return hit_with_id[1] else: return None
[docs] def lookup_with_id( self, prompt: str, llm_string: str ) -> Optional[Tuple[str, RETURN_VAL_TYPE]]: """ Look up based on prompt and llm_string. If there are hits, return (document_id, cached_entry) for the top hit """ prompt_embedding: List[float] = self._get_embedding(text=prompt) llm_string_hash = _hash(llm_string) hit = self.collection.vector_find_one( vector=prompt_embedding, filter={ "llm_string_hash": llm_string_hash, }, fields=["body_blob", "_id"], include_similarity=True, ) if hit is None or hit["$similarity"] < self.similarity_threshold: return None else: generations = _loads_generations(hit["body_blob"]) if generations is not None: # this protects against malformed cached items: return (hit["_id"], generations) else: return None
[docs] def lookup_with_id_through_llm( self, prompt: str, llm: LLM, stop: Optional[List[str]] = None ) -> Optional[Tuple[str, RETURN_VAL_TYPE]]: llm_string = get_prompts( {**llm.dict(), **{"stop": stop}}, [], )[1] return self.lookup_with_id(prompt, llm_string=llm_string)
[docs] def delete_by_document_id(self, document_id: str) -> None: """ Given this is a "similarity search" cache, an invalidation pattern that makes sense is first a lookup to get an ID, and then deleting with that ID. This is for the second step. """ self.collection.delete_one(document_id)
[docs] def clear(self, **kwargs: Any) -> None: """Clear the *whole* semantic cache.""" self.astra_db.truncate_collection(self.collection_name)