Defining a Custom Query Engine#
You can (and should) define your custom query engines in order to plug into your downstream LlamaIndex workflows, whether you’re building RAG, agents, or other applications.
We provide a CustomQueryEngine
that makes it easy to define your own queries.
Setup#
We first load some sample data and index it.
If you’re opening this Notebook on colab, you will probably need to install LlamaIndex 🦙.
!pip install llama-index
from llama_index import (
VectorStoreIndex,
SimpleDirectoryReader,
)
Download Data
!mkdir -p 'data/paul_graham/'
!wget 'https://raw.githubusercontent.com/run-llama/llama_index/main/docs/examples/data/paul_graham/paul_graham_essay.txt' -O 'data/paul_graham/paul_graham_essay.txt'
# load documents
documents = SimpleDirectoryReader("./data//paul_graham/").load_data()
index = VectorStoreIndex.from_documents(documents)
retriever = index.as_retriever()
Building a Custom Query Engine#
We build a custom query engine that simulates a RAG pipeline. First perform retrieval, and then synthesis.
To define a CustomQueryEngine
, you just have to define some initialization parameters as attributes and implement the custom_query
function.
By default, the custom_query
can return a Response
object (which the response synthesizer returns), but it can also just return a string. These are options 1 and 2 respectively.
from llama_index.query_engine import CustomQueryEngine
from llama_index.retrievers import BaseRetriever
from llama_index.response_synthesizers import (
get_response_synthesizer,
BaseSynthesizer,
)
Option 1 (RAGQueryEngine
)#
class RAGQueryEngine(CustomQueryEngine):
"""RAG Query Engine."""
retriever: BaseRetriever
response_synthesizer: BaseSynthesizer
def custom_query(self, query_str: str):
nodes = self.retriever.retrieve(query_str)
response_obj = self.response_synthesizer.synthesize(query_str, nodes)
return response_obj
Option 2 (RAGStringQueryEngine
)#
# Option 2: return a string (we use a raw LLM call for illustration)
from llama_index.llms import OpenAI
from llama_index.prompts import PromptTemplate
qa_prompt = PromptTemplate(
"Context information is below.\n"
"---------------------\n"
"{context_str}\n"
"---------------------\n"
"Given the context information and not prior knowledge, "
"answer the query.\n"
"Query: {query_str}\n"
"Answer: "
)
class RAGStringQueryEngine(CustomQueryEngine):
"""RAG String Query Engine."""
retriever: BaseRetriever
response_synthesizer: BaseSynthesizer
llm: OpenAI
qa_prompt: PromptTemplate
def custom_query(self, query_str: str):
nodes = self.retriever.retrieve(query_str)
context_str = "\n\n".join([n.node.get_content() for n in nodes])
response = self.llm.complete(
qa_prompt.format(context_str=context_str, query_str=query_str)
)
return str(response)
Trying it out#
We now try it out on our sample data.
Trying Option 1 (RAGQueryEngine
)#
synthesizer = get_response_synthesizer(response_mode="compact")
query_engine = RAGQueryEngine(
retriever=retriever, response_synthesizer=synthesizer
)
response = query_engine.query("What did the author do growing up?")
print(str(response))
The author worked on writing and programming outside of school before college. They wrote short stories and tried writing programs on an IBM 1401 computer using an early version of Fortran. They also mentioned getting a microcomputer, building it themselves, and writing simple games and programs on it.
print(response.source_nodes[0].get_content())
Trying Option 2 (RAGStringQueryEngine
)#
llm = OpenAI(model="gpt-3.5-turbo")
query_engine = RAGStringQueryEngine(
retriever=retriever,
response_synthesizer=synthesizer,
llm=llm,
qa_prompt=qa_prompt,
)
response = query_engine.query("What did the author do growing up?")
print(str(response))
The author worked on writing and programming before college. They wrote short stories and started programming on the IBM 1401 computer in 9th grade. They later got a microcomputer and continued programming, writing simple games and a word processor.