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import re
from typing import TypedDict
from langgraph.graph import StateGraph, END
from langchain_groq import ChatGroq
from langchain_core.messages import HumanMessage, AIMessage
from config import GROQ_API_KEY, GROQ_MODEL, MAX_RETRIES
llm = ChatGroq(
model=GROQ_MODEL,
temperature=0,
api_key=GROQ_API_KEY,
)
SAFE_FALLBACK_ANSWER = "I don't have enough information in the provided documents."
LOW_CONFIDENCE_PREFIX = (
"I could not fully validate a confident answer after all retries. "
"Best attempt"
)
def _parse_validation_score(raw_score: str, default: int) -> int:
match = re.search(r"\d+", raw_score)
if not match:
return default
return max(0, min(100, int(match.group(0))))
class RAGState(TypedDict):
question: str
context_chunks: list
answer: str
validation_result: str
validation_score: int
fail_reason: str
retry_count: int
chat_history: list
best_answer: str
best_validation_score: int
best_fail_reason: str
def generate_node(state: RAGState) -> dict:
context_text = "\n\n---\n\n".join(
f"[Source: {r['source']}]\n{r['chunk']}"
for r in state["context_chunks"]
)
history_lines = []
for msg in state.get("chat_history", [])[-6:]:
role = "User" if isinstance(msg, HumanMessage) else "Assistant"
history_lines.append(f"{role}: {msg.content}")
history_text = "\n".join(history_lines) or "None"
correction = ""
if state.get("retry_count", 0) > 0:
correction = (
f"\n\nIMPORTANT CORRECTION REQUIRED: Your previous answer was "
f"rejected because: {state.get('fail_reason', 'unverifiable claims')} "
f"(validation score: {state.get('validation_score', 0)}/100). "
f"Re-answer using ONLY the context provided."
)
prompt = (
"You are an AI assistant that answers questions AND generates content based on provided documents.\n"
"Answer ONLY using information from the CONTEXT below.\n"
"If the answer cannot be found, say exactly: "
'"I don\'t have enough information in the provided documents."\n'
"Do NOT invent facts or use outside knowledge."
+ correction
+ f"\n\nPREVIOUS CONVERSATION:\n{history_text}"
+ f"\n\nCONTEXT:\n{context_text}"
+ f"\n\nQUESTION: {state['question']}\n\nAnswer:"
)
response = llm.invoke([HumanMessage(content=prompt)])
return {"answer": response.content}
def validate_node(state: RAGState) -> dict:
context_text = "\n\n".join(r["chunk"] for r in state["context_chunks"])
prompt = (
"You are a strict hallucination checker for a RAG system.\n\n"
"Given the CONTEXT and the ANSWER below, check:\n"
"1. Is every factual claim directly supported by the context?\n"
"2. Does the answer address the question?\n"
"3. Are there any invented facts not in the context?\n\n"
"Also assign a validation score from 0 to 100, where 100 means every claim is fully grounded.\n\n"
f"Context:\n{context_text}\n\n"
f"Question: {state['question']}\n"
f"Answer: {state['answer']}\n\n"
"Respond in EXACTLY this format:\n"
"VERDICT: PASS\n"
"SCORE: <0-100>\n"
"REASON: <one sentence>\n\n"
"or\n\n"
"VERDICT: FAIL\n"
"SCORE: <0-100>\n"
"REASON: <one sentence explaining what is wrong>"
)
result = llm.invoke([HumanMessage(content=prompt)])
text = result.content.strip()
verdict = "PASS" if "VERDICT: PASS" in text.upper() else "FAIL"
reason = ""
score = 100 if verdict == "PASS" else 0
for line in text.splitlines():
if line.upper().startswith("REASON:"):
reason = line.split(":", 1)[1].strip()
elif line.upper().startswith("SCORE:"):
raw_score = line.split(":", 1)[1].strip()
score = _parse_validation_score(raw_score, score)
best_score = state.get("best_validation_score", -1)
best_updates = {}
if score > best_score:
best_updates = {
"best_answer": state["answer"],
"best_validation_score": score,
"best_fail_reason": reason,
}
return {
"validation_result": verdict,
"validation_score": score,
"fail_reason": reason,
**best_updates,
}
def increment_retry_node(state: RAGState) -> dict:
return {"retry_count": state.get("retry_count", 0) + 1}
def route_after_validation(state: RAGState) -> str:
if (
state["validation_result"] == "FAIL"
and state.get("retry_count", 0) < MAX_RETRIES
):
return "retry"
return "done"
def _build_graph():
g = StateGraph(RAGState)
g.add_node("generate", generate_node)
g.add_node("validate", validate_node)
g.add_node("increment_retry", increment_retry_node)
g.set_entry_point("generate")
g.add_edge("generate", "validate")
g.add_conditional_edges(
"validate",
route_after_validation,
{"retry": "increment_retry", "done": END},
)
g.add_edge("increment_retry", "generate")
return g.compile()
_rag_graph = _build_graph()
def run_rag_agent(
question: str,
context_chunks: list,
chat_history: list = [],
) -> tuple:
init_state: RAGState = {
"question": question,
"context_chunks": context_chunks,
"answer": "",
"validation_result": "",
"validation_score": 0,
"fail_reason": "",
"retry_count": 0,
"chat_history": chat_history,
"best_answer": "",
"best_validation_score": -1,
"best_fail_reason": "",
}
final = _rag_graph.invoke(init_state)
if final.get("validation_result") == "FAIL":
best_answer = final.get("best_answer") or final.get("answer") or SAFE_FALLBACK_ANSWER
best_score = final.get("best_validation_score", final.get("validation_score", 0))
best_reason = final.get("best_fail_reason") or final.get("fail_reason", "Validation failed")
answer = (
f"{LOW_CONFIDENCE_PREFIX} (validation score: {best_score}/100). "
f"Reason: {best_reason}\n\n{best_answer}"
)
return answer, final.get("retry_count", 0), "FAIL"
return final["answer"], final["retry_count"], final["validation_result"]