from typing import Dict from langchain.prompts import ChatPromptTemplate from langchain_core.output_parsers import StrOutputParser import sys import os sys.path.append(os.path.join(os.path.dirname(__file__), '..', 'models')) sys.path.append(os.path.join(os.path.dirname(__file__), '..', 'config')) from models import llm, retriever from agent_state import AgentState from config import config def expand_query(state: AgentState) -> AgentState: """Expands the user query to improve retrieval of nutrition disorder-related information.""" print("---------Expanding Query---------") system_message = '''You are an AI specializing in improving search queries to retrieve the most relevant nutrition disorder-related information. Your task is to **refine** and **expand** the given query so that better search results are obtained, while **keeping the original intent** unchanged. Guidelines: - Add **specific details** where needed. Example: If a user asks about "anorexia," specify aspects like symptoms, causes, or treatment options. - Include **related terms** to improve retrieval (e.g., "bulimia" → "bulimia nervosa vs binge eating disorder"). - If the user provides an unclear query, suggest necessary clarifications. - **DO NOT** answer the question. Your job is only to enhance the query. Examples: 1. User Query: "Tell me about eating disorders." Expanded Query: "Provide details on eating disorders, including types (e.g., anorexia nervosa, bulimia nervosa), symptoms, causes, and treatment options." 2. User Query: "What is anorexia?" Expanded Query: "Explain anorexia nervosa, including its symptoms, causes, risk factors, and treatment options." 3. User Query: "How to treat bulimia?" Expanded Query: "Describe treatment options for bulimia nervosa, including psychotherapy, medications, and lifestyle changes." 4. User Query: "What are the effects of malnutrition?" Expanded Query: "Explain the effects of malnutrition on physical and mental health, including specific nutrient deficiencies and their consequences." Now, expand the following query:''' expand_prompt = ChatPromptTemplate.from_messages([ ("system", system_message), ("user", "Expand this query: {query} using the feedback: {query_feedback}") ]) chain = expand_prompt | llm | StrOutputParser() expanded_query = chain.invoke({"query": state['query'], "query_feedback": state["query_feedback"]}) print("expanded_query", expanded_query) state["expanded_query"] = expanded_query return state def retrieve_context(state: AgentState) -> AgentState: """Retrieves context from the vector store using the expanded or original query.""" print("---------retrieve_context---------") query = state['expanded_query'] docs = retriever.invoke(query) print("Retrieved documents:", docs) context = [ { "content": doc.page_content, "metadata": doc.metadata } for doc in docs ] state['context'] = context print("Extracted context with metadata:", context) return state def craft_response(state: AgentState) -> AgentState: """Generates a response using the retrieved context, focusing on nutrition disorders.""" system_message = '''You are a professional AI nutrition disorder specialist generating responses based on retrieved documents. Your task is to use the given **context** to generate a highly accurate, informative, and user-friendly response. Guidelines: - **Be direct and concise** while ensuring completeness. - **DO NOT include information that is not present in the context.** - If multiple sources exist, synthesize them into a coherent response. - If the context does not fully answer the query, state what additional information is needed. - Use bullet points when explaining complex concepts. Example: User Query: "What are the symptoms of anorexia nervosa?" Context: 1. Anorexia nervosa is characterized by extreme weight loss and fear of gaining weight. 2. Common symptoms include restricted eating, distorted body image, and excessive exercise. Response: "Anorexia nervosa is an eating disorder characterized by extreme weight loss and an intense fear of gaining weight. Common symptoms include: - Restricted eating - Distorted body image - Excessive exercise If you or someone you know is experiencing these symptoms, it is important to seek professional help."''' response_prompt = ChatPromptTemplate.from_messages([ ("system", system_message), ("user", "Query: {query}\nContext: {context}\n\nResponse:") ]) chain = response_prompt | llm | StrOutputParser() state['response'] = chain.invoke({ "query": state['query'], "context": "\n".join([doc["content"] for doc in state['context']]) }) return state def score_groundedness(state: AgentState) -> AgentState: """Checks whether the response is grounded in the retrieved context.""" print("---------check_groundedness---------") system_message = '''You are an AI tasked with evaluating whether a response is grounded in the provided context and includes proper citations. Guidelines: 1. **Groundedness Check**: - Verify that the response accurately reflects the information in the context. - Flag any unsupported claims or deviations from the context. 2. **Citation Check**: - Ensure that the response includes citations to the source material (e.g., "According to [Source], ..."). - If citations are missing, suggest adding them. 3. **Scoring**: - Assign a groundedness score between 0 and 1, where 1 means fully grounded and properly cited. Examples: 1. Response: "Anorexia nervosa is caused by genetic factors (Source 1)." Context: "Anorexia nervosa is influenced by genetic, environmental, and psychological factors (Source 1)." Evaluation: "The response is grounded and properly cited. Groundedness score: 1.0." 2. Response: "Bulimia nervosa can be cured with diet alone." Context: "Treatment for bulimia nervosa involves psychotherapy and medications (Source 2)." Evaluation: "The response is ungrounded and lacks citations. Groundedness score: 0.2." 3. Response: "Anorexia nervosa has a high mortality rate." Context: "Anorexia nervosa has one of the highest mortality rates among psychiatric disorders (Source 3)." Evaluation: "The response is grounded but lacks a citation. Groundedness score: 0.7." ****Return only a float score (e.g., 0.9). Do not provide explanations.**** Now, evaluate the following response:''' groundedness_prompt = ChatPromptTemplate.from_messages([ ("system", system_message), ("user", "Context: {context}\nResponse: {response}\n\nGroundedness score:") ]) chain = groundedness_prompt | llm | StrOutputParser() groundedness_score = float(chain.invoke({ "context": "\n".join([doc["content"] for doc in state['context']]), "response": state['response'] })) print("groundedness_score: ", groundedness_score) state['groundedness_loop_count'] += 1 print("#########Groundedness Incremented###########") state['groundedness_score'] = groundedness_score return state def check_precision(state: AgentState) -> AgentState: """Checks whether the response precisely addresses the user's query.""" print("---------check_precision---------") system_message = '''You are an AI evaluator assessing the **precision** of the response. Your task is to **score** how well the response addresses the user's original nutrition disorder-related query. Scoring Criteria: - 1.0 → The response is fully precise, directly answering the question. - 0.7 → The response is mostly correct but contains some generalization. - 0.5 → The response is somewhat relevant but lacks key details. - 0.3 → The response is vague or only partially correct. - 0.0 → The response is incorrect or misleading. Examples: 1. Query: "What are the symptoms of anorexia nervosa?" Response: "The symptoms of anorexia nervosa include extreme weight loss, fear of gaining weight, and a distorted body image." Precision Score: 1.0 2. Query: "How is bulimia nervosa treated?" Response: "Bulimia nervosa is treated with therapy and medications." Precision Score: 0.7 3. Query: "What causes binge eating disorder?" Response: "Binge eating disorder is caused by a combination of genetic, psychological, and environmental factors." Precision Score: 0.5 4. Query: "What are the effects of malnutrition?" Response: "Malnutrition can lead to health problems." Precision Score: 0.3 5. Query: "What is the mortality rate of anorexia nervosa?" Response: "Anorexia nervosa is a type of eating disorder." Precision Score: 0.0 *****Return only a float score (e.g., 0.9). Do not provide explanations.***** Now, evaluate the following query and response:''' precision_prompt = ChatPromptTemplate.from_messages([ ("system", system_message), ("user", "Query: {query}\nResponse: {response}\n\nPrecision score:") ]) chain = precision_prompt | llm | StrOutputParser() precision_score = float(chain.invoke({ "query": state['query'], "response": state['response'] })) state['precision_score'] = precision_score print("precision_score:", precision_score) state['precision_loop_count'] += 1 print("#########Precision Incremented###########") return state def refine_response(state: AgentState) -> AgentState: """Suggests improvements for the generated response.""" print("---------refine_response---------") system_message = '''You are an AI response refinement assistant. Your task is to suggest **improvements** for the given response. ### Guidelines: - Identify **gaps in the explanation** (missing key details). - Highlight **unclear or vague parts** that need elaboration. - Suggest **additional details** that should be included for better accuracy. - Ensure the refined response is **precise** and **grounded** in the retrieved context. ### Examples: 1. Query: "What are the symptoms of anorexia nervosa?" Response: "The symptoms include weight loss and fear of gaining weight." Suggestions: "The response is missing key details about behavioral and emotional symptoms. Add details like 'distorted body image' and 'restrictive eating patterns.'" 2. Query: "How is bulimia nervosa treated?" Response: "Bulimia nervosa is treated with therapy." Suggestions: "The response is too vague. Specify the types of therapy (e.g., cognitive-behavioral therapy) and mention other treatments like nutritional counseling and medications." 3. Query: "What causes binge eating disorder?" Response: "Binge eating disorder is caused by psychological factors." Suggestions: "The response is incomplete. Add details about genetic and environmental factors, and explain how they contribute to the disorder." Now, suggest improvements for the following response:''' refine_response_prompt = ChatPromptTemplate.from_messages([ ("system", system_message), ("user", "Query: {query}\nResponse: {response}\n\n" "What improvements can be made to enhance accuracy and completeness?") ]) chain = refine_response_prompt | llm | StrOutputParser() feedback = f"Previous Response: {state['response']}\nSuggestions: {chain.invoke({'query': state['query'], 'response': state['response']})}" print("feedback: ", feedback) print(f"State: {state}") state['feedback'] = feedback return state def refine_query(state: AgentState) -> AgentState: """Suggests improvements for the expanded query.""" print("---------refine_query---------") system_message = '''You are an AI query refinement assistant. Your task is to suggest **improvements** for the expanded query. ### Guidelines: - Add **specific keywords** to improve document retrieval. - Identify **missing details** that should be included. - Suggest **ways to narrow the scope** for better precision. ### Examples: 1. Original Query: "Tell me about eating disorders." Expanded Query: "Provide details on eating disorders, including types, symptoms, causes, and treatment options." Suggestions: "Add specific types of eating disorders like 'anorexia nervosa' and 'bulimia nervosa' to improve retrieval." 2. Original Query: "What is anorexia?" Expanded Query: "Explain anorexia nervosa, including its symptoms and causes." Suggestions: "Include details about treatment options and risk factors to make the query more comprehensive." 3. Original Query: "How to treat bulimia?" Expanded Query: "Describe treatment options for bulimia nervosa." Suggestions: "Specify types of treatments like 'cognitive-behavioral therapy' and 'medications' for better precision." Now, suggest improvements for the following expanded query:''' refine_query_prompt = ChatPromptTemplate.from_messages([ ("system", system_message), ("user", "Original Query: {query}\nExpanded Query: {expanded_query}\n\n" "What improvements can be made for a better search?") ]) chain = refine_query_prompt | llm | StrOutputParser() query_feedback = f"Previous Expanded Query: {state['expanded_query']}\nSuggestions: {chain.invoke({'query': state['query'], 'expanded_query': state['expanded_query']})}" print("query_feedback: ", query_feedback) print(f"Groundedness loop count: {state['groundedness_loop_count']}") state['query_feedback'] = query_feedback return state def max_iterations_reached(state: AgentState) -> AgentState: """Handles the case when the maximum number of iterations is reached.""" print("---------max_iterations_reached---------") response = "I'm unable to refine the response further. Please provide more context or clarify your question." state['response'] = response return state