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# src/llm_integrator/llm.py | |
from langchain_openai import ChatOpenAI # cite: query_pipeline.py | |
from langchain_core.messages import HumanMessage, BaseMessage, AIMessage, SystemMessage # Often used with Chat models | |
from langchain_core.prompts import ChatPromptTemplate, MessagesPlaceholder # For structured prompts | |
from config.settings import LLM_API_KEY, LLM_API_BASE, LLM_MODEL, LLM_MODEL_2 # cite: query_pipeline.py | |
import logging | |
from typing import List | |
from langchain.schema import Document # To handle retrieved documents | |
logger = logging.getLogger(__name__) | |
class LLMIntegrator: | |
""" | |
Manages interactions with the Large Language Model. | |
""" | |
def __init__(self): | |
# Initialize the ChatOpenAI model | |
# --- Financial Ministry Adaptation --- | |
# Implement robust error handling and retry logic for API calls. | |
# Consider rate limiting and backoff strategies. | |
# Ensure sensitive data from retrieved documents is handled securely when passed to the LLM API. | |
# Validate the LLM's response for potential biases or inaccuracies related to legal text. | |
# ------------------------------------ | |
if not LLM_API_KEY: | |
logger.critical("LLM_API_KEY is not set.") | |
# Depending on requirements, you might want to raise an error or exit | |
# raise ValueError("LLM_API_KEY is not set.") | |
try: | |
self.llm = ChatOpenAI( # cite: query_pipeline.py | |
api_key=LLM_API_KEY, # cite: query_pipeline.py | |
base_url=LLM_API_BASE, # cite: query_pipeline.py | |
model=LLM_MODEL, # cite: query_pipeline.py | |
temperature=0.3 # Keep temperature low for factual, less creative responses in legal context | |
# Add other parameters as needed (e.g., max_tokens) | |
) | |
# Add a separate LLM instance for title generation with higher temperature | |
self.llm_title = ChatOpenAI( | |
api_key=LLM_API_KEY, | |
base_url=LLM_API_BASE, | |
model=LLM_MODEL_2, | |
temperature=0.7 # More creative for titles | |
) | |
logger.info(f"Initialized LLM: {LLM_MODEL} at {LLM_API_BASE}") | |
except Exception as e: | |
logger.critical(f"Failed to initialize LLM: {e}") | |
raise e | |
def generate_response(self, query: str, context: List[Document], chat_history: List[BaseMessage] = []) -> str: | |
""" | |
Generates a response from the LLM based on the query and retrieved context. | |
Args: | |
query: The user's query string. | |
context: A list of Langchain Document objects representing the retrieved context. | |
Returns: | |
The generated answer string. | |
""" | |
prompt = ChatPromptTemplate.from_messages([ | |
("system", """You are Insight AI, a helpful and engaging AI assistant. You are friendly, approachable, and eager to help, with a warm and conversational style. You enjoy making users feel comfortable and understood. | |
Instructions: | |
- If the user greets you (e.g., "hi", "hello", "hey"), respond with a brief, friendly greeting and offer to help. Feel free to use light humor or warmth, but do NOT mention documents, sources, or files in your greeting. | |
- If the user asks who you are, introduce yourself playfully and with personality (e.g., "I'm Insight AI, your friendly digital sidekick—always ready with a fact or a fun comment!"). | |
- If the user asks for your opinion, preferences, or feelings, respond playfully and with personality (e.g., "If I had a favorite topic, it might be quantum physics—it's mind-bending!"), but never say you are just an AI or lack thoughts. | |
- Never say you lack feelings, opinions, or are "just an AI". Always answer with warmth and creativity. | |
- For all other queries, answer ONLY using the provided documents below. | |
- If the answer is not found in the documents, reply professionally that no relevant information was found, without listing available documents or sources. | |
- Attribute every fact to its exact source using <source path="..."/>. | |
- Never invent, speculate, or use information not present in the documents. | |
- Combine information from multiple sources only if all are cited. | |
- Do not summarize or generalize beyond the provided content. | |
- Keep responses clear, concise, and under 100 words. | |
- Do not cite any sources if those sources are not used in the answer. | |
- Use the exact wording from the documents, but ensure clarity and coherence in your response. | |
- Structure your answer as a numbered list of key points. | |
- Do not greet, introduce yourself, or list available documents in information answers. | |
Examples: | |
User: hi | |
Assistant: Hey there! How can I help you today? | |
User: What is the capital of France? | |
Assistant: 1. The capital of France is Paris <source path="docs/geography.txt"/> | |
User: What's your favorite topic? | |
Assistant: If I had to pick, I'd say quantum physics—it's mind-bending! | |
User: What documents do you have? | |
Assistant: Sorry, I couldn't find relevant information for your query. | |
User: help | |
Assistant: Hi! What can I do for you? | |
Documents: | |
{context} | |
"""), | |
MessagesPlaceholder("chat_history"), | |
("human", "{input}") | |
]) | |
logger.debug("Validating message types:") | |
for msg in chat_history: | |
if not isinstance(msg, (HumanMessage, AIMessage, SystemMessage)): | |
logger.error(f"Invalid message type: {type(msg).__name__}") | |
raise ValueError(f"Unexpected message type: {type(msg).__name__}") | |
# Format the context for the prompt | |
context_text = "\n---\n".join([f"Source: {doc.metadata.get('source', 'N/A')}\nContent: {doc.page_content}" for doc in context]) | |
formatted_prompt = prompt.format_messages(context=context_text, chat_history=chat_history, input=query) | |
try: | |
response = self.llm.invoke(formatted_prompt) | |
content = response.content | |
# ---- NEW: ensure full think-tag wrapping ---- | |
if '</think>' in content and '<think>' not in content: | |
content = '<think>' + content | |
# ------------------------------------------------ | |
logger.debug(f"LLM response: {content}") | |
return content | |
except Exception as e: | |
logger.error(f"Failed to generate LLM response: {e}") | |
# raize error | |
raise e | |
def generate_chat_title(self, query: str) -> str: | |
""" | |
Generates a concise title for a chat based on the query. | |
Removes any <think>...</think> tags from the response. | |
""" | |
prompt = ChatPromptTemplate.from_messages([ | |
SystemMessage( | |
content=""" | |
You’re our **Title Maestro**—crafting short, snappy chat titles (3–5 words). | |
Be specific, unique, and avoid punctuation. | |
**When in doubt** | |
- Vague query → infer intent (e.g., “General Inquiry” for “hi”) | |
- Don’t say “No clear topic.” | |
**Examples** | |
- Query: “GST for online sellers” → Title: `E-commerce GST Rates` | |
- Query: “hi” → Title: `User Assistance` | |
Now: “{query}” | |
""" | |
) | |
]) | |
try: | |
resp = self.llm_title.invoke(prompt.format_messages(query=query)) | |
logger.debug("Successfully generated chat title.") | |
# Remove <think>...</think> tags if present | |
import re | |
content = resp.content | |
content = re.sub(r"<think>.*?</think>", "", content, flags=re.DOTALL) | |
return content.strip('"').strip() | |
except Exception as e: | |
logger.error(f"Failed to generate chat title: {e}") | |
return "New Chat" | |