Caching
LangChain provides an optional caching layer for LLMs. This is useful for two reasons:
It can save you money by reducing the number of API calls you make to the LLM provider, if youβre 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.
from langchain.globals import set_llm_cache
from langchain_openai import OpenAI
# To make the caching really obvious, lets use a slower model.
llm = OpenAI(model_name="gpt-3.5-turbo-instruct", n=2, best_of=2)
API Reference:
%%time
from langchain.cache import InMemoryCache
set_llm_cache(InMemoryCache())
# The first time, it is not yet in cache, so it should take longer
llm.predict("Tell me a joke")
API Reference:
CPU times: user 13.7 ms, sys: 6.54 ms, total: 20.2 ms
Wall time: 330 ms
"\n\nWhy couldn't the bicycle stand up by itself? Because it was two-tired!"
%%time
# The second time it is, so it goes faster
llm.predict("Tell me a joke")
CPU times: user 436 Β΅s, sys: 921 Β΅s, total: 1.36 ms
Wall time: 1.36 ms
"\n\nWhy couldn't the bicycle stand up by itself? Because it was two-tired!"
SQLite Cacheβ
!rm .langchain.db
# We can do the same thing with a SQLite cache
from langchain.cache import SQLiteCache
set_llm_cache(SQLiteCache(database_path=".langchain.db"))
API Reference:
%%time
# The first time, it is not yet in cache, so it should take longer
llm.predict("Tell me a joke")
CPU times: user 29.3 ms, sys: 17.3 ms, total: 46.7 ms
Wall time: 364 ms
'\n\nWhy did the tomato turn red?\n\nBecause it saw the salad dressing!'
%%time
# The second time it is, so it goes faster
llm.predict("Tell me a joke")
CPU times: user 4.58 ms, sys: 2.23 ms, total: 6.8 ms
Wall time: 4.68 ms
'\n\nWhy did the tomato turn red?\n\nBecause it saw the salad dressing!'