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langchain/libs/partners/ai21/langchain_ai21/contextual_answers.py

109 lines
3.0 KiB
Python

from typing import (
Any,
List,
Optional,
Tuple,
Type,
TypedDict,
Union,
)
from langchain_core.documents import Document
from langchain_core.runnables import RunnableConfig, RunnableSerializable, ensure_config
from langchain_ai21.ai21_base import AI21Base
ANSWER_NOT_IN_CONTEXT_RESPONSE = "Answer not in context"
ContextType = Union[str, List[Union[Document, str]]]
class ContextualAnswerInput(TypedDict):
context: ContextType
question: str
class AI21ContextualAnswers(RunnableSerializable[ContextualAnswerInput, str], AI21Base):
class Config:
"""Configuration for this pydantic object."""
arbitrary_types_allowed = True
@property
def InputType(self) -> Type[ContextualAnswerInput]:
"""Get the input type for this runnable."""
return ContextualAnswerInput
@property
def OutputType(self) -> Type[str]:
"""Get the input type for this runnable."""
return str
def invoke(
self,
input: ContextualAnswerInput,
config: Optional[RunnableConfig] = None,
response_if_no_answer_found: str = ANSWER_NOT_IN_CONTEXT_RESPONSE,
**kwargs: Any,
) -> str:
config = ensure_config(config)
return self._call_with_config(
func=lambda inner_input: self._call_contextual_answers(
inner_input, response_if_no_answer_found
),
input=input,
config=config,
run_type="llm",
)
def _call_contextual_answers(
self,
input: ContextualAnswerInput,
response_if_no_answer_found: str,
) -> str:
context, question = self._convert_input(input)
response = self.client.answer.create(context=context, question=question)
if response.answer is None:
return response_if_no_answer_found
return response.answer
def _convert_input(self, input: ContextualAnswerInput) -> Tuple[str, str]:
context, question = self._extract_context_and_question(input)
context = self._parse_context(context)
return context, question
def _extract_context_and_question(
self,
input: ContextualAnswerInput,
) -> Tuple[ContextType, str]:
context = input.get("context")
question = input.get("question")
if not context or not question:
raise ValueError(
f"Input must contain a 'context' and 'question' fields. Got {input}"
)
if not isinstance(context, list) and not isinstance(context, str):
raise ValueError(
f"Expected input to be a list of strings or Documents."
f" Received {type(input)}"
)
return context, question
def _parse_context(self, context: ContextType) -> str:
if isinstance(context, str):
return context
docs = [
item.page_content if isinstance(item, Document) else item
for item in context
]
return "\n".join(docs)