Add Citation pipeline (#78)

* add rerankers in retrieving pipeline

* update example MVP pipeline

* add citation pipeline and function call interface

* change return type of QA and AgentPipeline to Document
This commit is contained in:
Tuan Anh Nguyen Dang (Tadashi_Cin)
2023-11-16 11:24:35 +07:00
committed by GitHub
parent f8b8d86d4e
commit cc1e75b3c6
9 changed files with 223 additions and 19 deletions

View File

@@ -0,0 +1,110 @@
from typing import Iterator, List, Union
from langchain.schema.messages import HumanMessage, SystemMessage
from pydantic import BaseModel, Field
from kotaemon.base import BaseComponent
from ..llms.chats.base import ChatLLM
from ..llms.completions.base import LLM
BaseLLM = Union[ChatLLM, LLM]
class FactWithEvidence(BaseModel):
"""Class representing a single statement.
Each fact has a body and a list of sources.
If there are multiple facts make sure to break them apart
such that each one only uses a set of sources that are relevant to it.
"""
fact: str = Field(..., description="Body of the sentence, as part of a response")
substring_quote: List[str] = Field(
...,
description=(
"Each source should be a direct quote from the context, "
"as a substring of the original content"
),
)
def _get_span(self, quote: str, context: str, errs: int = 100) -> Iterator[str]:
import regex
minor = quote
major = context
errs_ = 0
s = regex.search(f"({minor}){{e<={errs_}}}", major)
while s is None and errs_ <= errs:
errs_ += 1
s = regex.search(f"({minor}){{e<={errs_}}}", major)
if s is not None:
yield from s.spans()
def get_spans(self, context: str) -> Iterator[str]:
for quote in self.substring_quote:
yield from self._get_span(quote, context)
class QuestionAnswer(BaseModel):
"""A question and its answer as a list of facts each one should have a source.
each sentence contains a body and a list of sources."""
question: str = Field(..., description="Question that was asked")
answer: List[FactWithEvidence] = Field(
...,
description=(
"Body of the answer, each fact should be "
"its separate object with a body and a list of sources"
),
)
class CitationPipeline(BaseComponent):
"""Citation pipeline to extract cited evidences from source
(based on input question)"""
llm: BaseLLM
def run(
self,
context: str,
question: str,
) -> QuestionAnswer:
schema = QuestionAnswer.schema()
function = {
"name": schema["title"],
"description": schema["description"],
"parameters": schema,
}
llm_kwargs = {
"functions": [function],
"function_call": {"name": function["name"]},
}
messages = [
SystemMessage(
content=(
"You are a world class algorithm to answer "
"questions with correct and exact citations."
)
),
HumanMessage(content="Answer question using the following context"),
HumanMessage(content=context),
HumanMessage(content=f"Question: {question}"),
HumanMessage(
content=(
"Tips: Make sure to cite your sources, "
"and use the exact words from the context."
)
),
]
llm_output = self.llm(messages, **llm_kwargs)
function_output = llm_output.messages[0].additional_kwargs["function_call"][
"arguments"
]
output = QuestionAnswer.parse_raw(function_output)
return output