ChatBotAgenticRAG_dup / pipeline.py
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import os
import getpass
import spacy # Import spaCy for NER functionality
import pandas as pd
from typing import Optional
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 subprocess # Import subprocess to run shell commands
from langchain.llms.base import LLM # Import LLM
# Import the functions from respective chain files
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
# Mistral Client Setup
from mistralai import Mistral # Import the Mistral client
from pydantic_ai import Agent # Import Pydantic AI's Agent
# Initialize Mistral API client
mistral_api_key = os.environ.get("MISTRAL_API_KEY") # Ensure your Mistral API key is set
client = Mistral(api_key=mistral_api_key)
# Initialize Pydantic AI Agent (for text validation)
pydantic_agent = Agent('mistral:mistral-large-latest', result_type=str)
# Load spaCy model for NER and download the spaCy model if not already installed
def install_spacy_model():
try:
spacy.load("en_core_web_sm")
print("spaCy model 'en_core_web_sm' is already installed.")
except OSError:
print("Downloading spaCy model 'en_core_web_sm'...")
subprocess.run(["python", "-m", "spacy", "download", "en_core_web_sm"], check=True)
print("spaCy model 'en_core_web_sm' downloaded successfully.")
# Call the function to install the spaCy model if needed
install_spacy_model()
# Load the spaCy model globally
nlp = spacy.load("en_core_web_sm")
# Function to moderate text using Mistral moderation API
def moderate_text(query: str) -> str:
"""
Classifies the query as harmful or not using Mistral Moderation via Mistral API.
Returns "OutOfScope" if harmful, otherwise returns the original query.
"""
# Validate the text type using Pydantic AI's Agent
try:
# Use Pydantic AI agent to ensure correct text type
pydantic_agent.run_sync(query)
except Exception as e:
print(f"Error validating text with Pydantic AI: {e}")
return "Invalid text format."
# Use the moderation API to evaluate if the query is harmful
response = client.classifiers.moderate_chat(
model="mistral-moderation-latest",
inputs=[
{"role": "user", "content": query},
],
)
# Extracting category scores from response
categories = response['results'][0]['categories']
# Check if harmful content is flagged in moderation categories
if categories.get("violence_and_threats", False) or \
categories.get("hate_and_discrimination", False) or \
categories.get("dangerous_and_criminal_content", False) or \
categories.get("selfharm", False):
return "OutOfScope"
return query
# 3) build_or_load_vectorstore (no changes)
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
# 4) Build RAG chain for Gemini (no changes)
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
# 5) Initialize all the separate chains
classification_chain = get_classification_chain()
refusal_chain = get_refusal_chain() # Refusal chain will now use dynamic topic
tailor_chain = get_tailor_chain()
cleaner_chain = get_cleaner_chain()
# 6) Build our vectorstores + RAG chains
wellness_csv = "AIChatbot.csv"
brand_csv = "BrandAI.csv"
wellness_store_dir = "faiss_wellness_store"
brand_store_dir = "faiss_brand_store"
wellness_vectorstore = build_or_load_vectorstore(wellness_csv, wellness_store_dir)
brand_vectorstore = build_or_load_vectorstore(brand_csv, brand_store_dir)
gemini_llm = LiteLLMModel(model_id="gemini/gemini-pro", api_key=os.environ.get("GEMINI_API_KEY"))
wellness_rag_chain = build_rag_chain(gemini_llm, wellness_vectorstore)
brand_rag_chain = build_rag_chain(gemini_llm, brand_vectorstore)
# 7) Tools / Agents for web search (no changes)
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
# 8) Orchestrator: run_with_chain
def run_with_chain(query: str) -> str:
print("DEBUG: Starting run_with_chain...")
# 1) Moderate the query for harmful content
moderated_query = moderate_text(query)
if moderated_query == "OutOfScope":
return "Sorry, this query contains harmful or inappropriate content."
# 2) Classify the query
class_result = classification_chain.invoke({"query": moderated_query})
classification = class_result.get("text", "").strip()
print("DEBUG: Classification =>", classification)
# If OutOfScope => refusal => tailor => return
if classification == "OutOfScope":
# Extract the main topic for the refusal message
topic = extract_main_topic(moderated_query)
print("DEBUG: Extracted Topic =>", topic)
# Pass the extracted topic to the refusal chain
refusal_text = refusal_chain.run({"topic": topic})
final_refusal = tailor_chain.run({"response": refusal_text})
return final_refusal.strip()
# If Wellness => wellness RAG => if insufficient => web => unify => tailor
if classification == "Wellness":
rag_result = wellness_rag_chain({"query": moderated_query})
csv_answer = rag_result["result"].strip()
if not csv_answer:
web_answer = do_web_search(moderated_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(moderated_query)
else:
web_answer = ""
final_merged = cleaner_chain.merge(kb=csv_answer, web=web_answer)
final_answer = tailor_chain.run({"response": final_merged})
return final_answer.strip()
# If Brand => brand RAG => tailor => return
if classification == "Brand":
rag_result = brand_rag_chain({"query": moderated_query})
csv_answer = rag_result["result"].strip()
final_merged = cleaner_chain.merge(kb=csv_answer, web="")
final_answer = tailor_chain.run({"response": final_merged})
return final_answer.strip()
# fallback
refusal_text = refusal_chain.run({"topic": "this topic"})
final_refusal = tailor_chain.run({"response": refusal_text})
return final_refusal.strip()