Chatbot2 / pipeline.py
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# pipeline.py
import os
import getpass
import pandas as pd
from typing import Optional, Dict, Any
from langchain.docstore.document import Document
from langchain.embeddings import HuggingFaceEmbeddings
from langchain.vectorstores import FAISS
from langchain.chains import RetrievalQA
from smolagents import CodeAgent, DuckDuckGoSearchTool, ManagedAgent, LiteLLMModel
import litellm
# For classification/refusal/tailor/cleaner logic
from classification_chain import get_classification_chain
from refusal_chain import get_refusal_chain
from tailor_chain import get_tailor_chain
from cleaner_chain import get_cleaner_chain
from langchain.llms.base import LLM
###############################################################################
# 1) Environment Setup
###############################################################################
if not os.environ.get("GEMINI_API_KEY"):
os.environ["GEMINI_API_KEY"] = getpass.getpass("Enter your Gemini API Key: ")
if not os.environ.get("GROQ_API_KEY"):
os.environ["GROQ_API_KEY"] = getpass.getpass("Enter your GROQ API Key: ")
###############################################################################
# 2) VectorStore Building/Loading
###############################################################################
def build_or_load_vectorstore(csv_path: str, store_dir: str) -> FAISS:
if os.path.exists(store_dir):
print(f"DEBUG: Found existing FAISS store at '{store_dir}'. Loading...")
embeddings = HuggingFaceEmbeddings(model_name="sentence-transformers/multi-qa-mpnet-base-dot-v1")
vectorstore = FAISS.load_local(store_dir, embeddings)
return vectorstore
else:
print(f"DEBUG: Building new store from CSV: {csv_path}")
df = pd.read_csv(csv_path)
df = df.loc[:, ~df.columns.str.contains('^Unnamed')]
df.columns = df.columns.str.strip()
if "Answer" in df.columns:
df.rename(columns={"Answer": "Answers"}, inplace=True)
if "Question" not in df.columns and "Question " in df.columns:
df.rename(columns={"Question ": "Question"}, inplace=True)
if "Question" not in df.columns or "Answers" not in df.columns:
raise ValueError("CSV must have 'Question' and 'Answers' columns.")
docs = []
for _, row in df.iterrows():
q = str(row["Question"])
ans = str(row["Answers"])
doc = Document(page_content=ans, metadata={"question": q})
docs.append(doc)
embeddings = HuggingFaceEmbeddings(model_name="sentence-transformers/multi-qa-mpnet-base-dot-v1")
vectorstore = FAISS.from_documents(docs, embedding=embeddings)
vectorstore.save_local(store_dir)
return vectorstore
###############################################################################
# 3) Build RAG chain for Gemini
###############################################################################
def build_rag_chain(llm_model: LiteLLMModel, vectorstore: FAISS) -> RetrievalQA:
class GeminiLangChainLLM(LLM):
def _call(self, prompt: str, stop: Optional[list] = None, **kwargs) -> str:
messages = [{"role": "user", "content": prompt}]
return llm_model(messages, stop_sequences=stop)
@property
def _llm_type(self) -> str:
return "custom_gemini"
retriever = vectorstore.as_retriever(search_type="similarity", search_kwargs={"k": 3})
gemini_as_llm = GeminiLangChainLLM()
rag_chain = RetrievalQA.from_chain_type(
llm=gemini_as_llm,
chain_type="stuff",
retriever=retriever,
return_source_documents=True
)
return rag_chain
###############################################################################
# 4) Init Sub-Chains
###############################################################################
classification_chain = get_classification_chain()
refusal_chain = get_refusal_chain()
tailor_chain = get_tailor_chain()
cleaner_chain = get_cleaner_chain()
###############################################################################
# 5) Build VectorStores & RAG
###############################################################################
wellness_csv = "AIChatbot.csv"
brand_csv = "BrandAI.csv"
wellness_store_dir = "faiss_wellness_store"
brand_store_dir = "faiss_brand_store"
gemini_llm = LiteLLMModel(model_id="gemini/gemini-pro", api_key=os.environ.get("GEMINI_API_KEY"))
wellness_vectorstore = build_or_load_vectorstore(wellness_csv, wellness_store_dir)
brand_vectorstore = build_or_load_vectorstore(brand_csv, brand_store_dir)
wellness_rag_chain = build_rag_chain(gemini_llm, wellness_vectorstore)
brand_rag_chain = build_rag_chain(gemini_llm, brand_vectorstore)
search_tool = DuckDuckGoSearchTool()
web_agent = CodeAgent(tools=[search_tool], model=gemini_llm)
managed_web_agent = ManagedAgent(agent=web_agent, name="web_search", description="Runs web search for you.")
manager_agent = CodeAgent(tools=[], model=gemini_llm, managed_agents=[managed_web_agent])
def do_web_search(query: str) -> str:
print("DEBUG: Attempting web search for more info...")
search_query = f"Give me relevant info: {query}"
response = manager_agent.run(search_query)
return response
###############################################################################
# 6) Orchestrator: run_with_chain_context
###############################################################################
def run_with_chain_context(inputs: Dict[str, Any]) -> Dict[str, str]:
"""
This function is called by the RunnableWithMessageHistory in my_memory_logic.py
inputs: { "input": <user_query>, "chat_history": <list of messages> }
Returns: { "answer": <final response> }
"""
user_query = inputs["input"] # The user's new question
# You can optionally use inputs.get("chat_history") if needed
chat_history = inputs.get("chat_history", [])
print("DEBUG: Starting run_with_chain_context...")
print(f"User query: {user_query}")
# 1) Classification
class_result = classification_chain.invoke({"query": user_query})
classification = class_result.get("text", "").strip()
print("DEBUG: Classification =>", classification)
# 2) If OutOfScope => refusal => tailor => return
if classification == "OutOfScope":
refusal_text = refusal_chain.run({})
final_refusal = tailor_chain.run({"response": refusal_text})
return {"answer": final_refusal.strip()}
# 3) If Wellness => wellness RAG => if insufficient => web => unify => tailor
if classification == "Wellness":
# pass chat_history if your chain can use it
rag_result = wellness_rag_chain.invoke({"input": user_query, "chat_history": chat_history})
csv_answer = rag_result["result"].strip()
if not csv_answer:
web_answer = do_web_search(user_query)
else:
lower_ans = csv_answer.lower()
if any(phrase in lower_ans for phrase in ["i do not know", "not sure", "no context", "cannot answer"]):
web_answer = do_web_search(user_query)
else:
web_answer = ""
final_merged = cleaner_chain.merge(kb=csv_answer, web=web_answer)
final_answer = tailor_chain.run({"response": final_merged}).strip()
return {"answer": final_answer}
# 4) If Brand => brand RAG => tailor => return
if classification == "Brand":
rag_result = brand_rag_chain.invoke({"input": user_query, "chat_history": chat_history})
csv_answer = rag_result["result"].strip()
final_merged = cleaner_chain.merge(kb=csv_answer, web="")
final_answer = tailor_chain.run({"response": final_merged}).strip()
return {"answer": final_answer}
# 5) fallback => refusal
refusal_text = refusal_chain.run({})
final_refusal = tailor_chain.run({"response": refusal_text}).strip()
return {"answer": final_refusal}