diff --git a/ai_agent_tutorials/ai_recruitment_agent_team/README.md b/ai_agent_tutorials/ai_recruitment_agent_team/README.md index 684988b..55c48dd 100644 --- a/ai_agent_tutorials/ai_recruitment_agent_team/README.md +++ b/ai_agent_tutorials/ai_recruitment_agent_team/README.md @@ -35,8 +35,8 @@ A Streamlit application that simulates a full-service recruitment team using mul 1. **Setup Environment** ```bash # Clone the repository - git clone https://github.com/Shubhamsaboo/awesome-llm-apps.git - cd ai_agent_tutorials/ai_recruitment_agent_team + git clone https://github.com/Shubhamsaboo/awesome-llm-apps.git + cd ai_agent_tutorials/ai_recruitment_agent_team # Install dependencies pip install -r requirements.txt diff --git a/ai_agent_tutorials/multimodal_design_agent_team/requirements.txt b/ai_agent_tutorials/multimodal_design_agent_team/requirements.txt index 13a4054..6ec9d03 100644 --- a/ai_agent_tutorials/multimodal_design_agent_team/requirements.txt +++ b/ai_agent_tutorials/multimodal_design_agent_team/requirements.txt @@ -1,5 +1,5 @@ google-generativeai==0.8.3 -streamlit==1.30.0 +streamlit==1.41.1 phidata==2.7.2 Pillow==11.0.0 duckduckgo-search==6.3.7 diff --git a/rag_tutorials/rag_database_routing/README.md b/rag_tutorials/rag_database_routing/README.md new file mode 100644 index 0000000..279f8a6 --- /dev/null +++ b/rag_tutorials/rag_database_routing/README.md @@ -0,0 +1,56 @@ +# RAG Agent with Database Routing + +This project showcases the RAG with database routing capabilities - which is a very efficient way to retrieve information from a large set of documents. The application allows users to: + +1. Upload documents to three different databases: + - Product Information + - Customer Support & FAQ + - Financial Information + +2. Query information using natural language, with automatic routing to the most relevant database. + +## Features + +- **Document Upload**: Users can upload multiple PDF documents related to a particular company. These documents are processed and stored in one of the three databases: Product Information, Customer Support & FAQ, or Financial Information. + +- **Natural Language Querying**: Users can ask questions in natural language. The system automatically routes the query to the most relevant database using a phidata agent as the router. + +- **RAG Orchestration**: Utilizes Langchain for orchestrating the retrieval augmented generation process, ensuring that the most relevant information is retrieved and presented to the user. + +- **Fallback Mechanism**: If no relevant documents are found in the databases, a LangGraph agent with a DuckDuckGo search tool is used to perform web research and provide an answer. + +- **User Interface**: Built with Streamlit, providing an intuitive and interactive user experience. + +## How to Run? + +1. **Clone the Repository**: + ```bash + git clone https://github.com/Shubhamsaboo/awesome-llm-apps.git + cd rag_tutorials/rag_database_routing + ``` + +2. **Install Dependencies**: + ```bash + pip install -r requirements.txt + ``` + +3. **Run the Application**: + ```bash + streamlit run rag_database_routing.py + ``` + +4. **Configure API Key**: Obtain an OpenAI API key and set it in the application. This is required for initializing the language models used in the application. + +5. **Upload Documents**: Use the document upload section to add PDF documents to the desired database. + +6. **Ask Questions**: Enter your questions in the query section. The application will route your question to the appropriate database and provide an answer. + +## Technologies Used + +- **Langchain**: For RAG orchestration, ensuring efficient retrieval and generation of information. +- **Phidata Agent**: Used as the router agent to determine the most relevant database for a given query. +- **LangGraph Agent**: Acts as a fallback mechanism, utilizing DuckDuckGo for web research when necessary. +- **Streamlit**: Provides a user-friendly interface for document upload and querying. +- **ChromaDB**: Used for managing the databases, storing and retrieving document embeddings efficiently. + +This application is designed to streamline the process of retrieving information from large sets of documents, making it easier for users to find the answers they need quickly and efficiently. diff --git a/rag_tutorials/rag_database_routing/rag_database_routing.py b/rag_tutorials/rag_database_routing/rag_database_routing.py new file mode 100644 index 0000000..4fb23d2 --- /dev/null +++ b/rag_tutorials/rag_database_routing/rag_database_routing.py @@ -0,0 +1,388 @@ +import os +from typing import List, Dict, Any, Literal, Optional +from dataclasses import dataclass +import streamlit as st +from langchain_core.documents import Document +from langchain.text_splitter import RecursiveCharacterTextSplitter +from langchain_community.document_loaders import PyPDFLoader +from langchain_community.vectorstores import Qdrant +from langchain_openai import OpenAIEmbeddings +from langchain_openai import ChatOpenAI +import tempfile +from phi.agent import Agent +from phi.model.openai import OpenAIChat +from langchain.schema import HumanMessage +from langchain.chains.combine_documents import create_stuff_documents_chain +from langchain.chains import create_retrieval_chain +from langchain import hub +from langgraph.prebuilt import create_react_agent +from langchain_community.tools import DuckDuckGoSearchRun +from langchain_core.language_models import BaseLanguageModel +from langchain.prompts import ChatPromptTemplate +from qdrant_client import QdrantClient +from qdrant_client.models import Distance, VectorParams + +def init_session_state(): + """Initialize session state variables""" + if 'openai_api_key' not in st.session_state: + st.session_state.openai_api_key = "" + if 'qdrant_url' not in st.session_state: + st.session_state.qdrant_url = "" + if 'qdrant_api_key' not in st.session_state: + st.session_state.qdrant_api_key = "" + if 'embeddings' not in st.session_state: + st.session_state.embeddings = None + if 'llm' not in st.session_state: + st.session_state.llm = None + if 'databases' not in st.session_state: + st.session_state.databases = {} + +init_session_state() + +DatabaseType = Literal["products", "support", "finance"] +PERSIST_DIRECTORY = "db_storage" + +@dataclass +class CollectionConfig: + name: str + description: str + collection_name: str # This will be used as Qdrant collection name + +# Collection configurations +COLLECTIONS: Dict[DatabaseType, CollectionConfig] = { + "products": CollectionConfig( + name="Product Information", + description="Product details, specifications, and features", + collection_name="products_collection" + ), + "support": CollectionConfig( + name="Customer Support & FAQ", + description="Customer support information, frequently asked questions, and guides", + collection_name="support_collection" + ), + "finance": CollectionConfig( + name="Financial Information", + description="Financial data, revenue, costs, and liabilities", + collection_name="finance_collection" + ) +} + +def initialize_models(): + """Initialize OpenAI models and Qdrant client""" + if (st.session_state.openai_api_key and + st.session_state.qdrant_url and + st.session_state.qdrant_api_key): + + os.environ["OPENAI_API_KEY"] = st.session_state.openai_api_key + st.session_state.embeddings = OpenAIEmbeddings(model="text-embedding-3-small") + st.session_state.llm = ChatOpenAI(temperature=0) + + try: + # Initialize Qdrant client with session state credentials + client = QdrantClient( + url=st.session_state.qdrant_url, + api_key=st.session_state.qdrant_api_key + ) + + # Test connection + client.get_collections() + vector_size = 1536 + st.session_state.databases = {} + for db_type, config in COLLECTIONS.items(): + try: + client.get_collection(config.collection_name) + except Exception: + # Create collection if it doesn't exist + client.create_collection( + collection_name=config.collection_name, + vectors_config=VectorParams(size=vector_size, distance=Distance.COSINE) + ) + + st.session_state.databases[db_type] = Qdrant( + client=client, + collection_name=config.collection_name, + embeddings=st.session_state.embeddings + ) + + return True + except Exception as e: + st.error(f"Failed to connect to Qdrant: {str(e)}") + return False + return False + +def process_document(file) -> List[Document]: + """Process uploaded PDF document""" + try: + with tempfile.NamedTemporaryFile(delete=False, suffix='.pdf') as tmp_file: + tmp_file.write(file.getvalue()) + tmp_path = tmp_file.name + + loader = PyPDFLoader(tmp_path) + documents = loader.load() + + # Clean up temporary file + os.unlink(tmp_path) + + text_splitter = RecursiveCharacterTextSplitter( + chunk_size=1000, + chunk_overlap=200 + ) + texts = text_splitter.split_documents(documents) + + return texts + except Exception as e: + st.error(f"Error processing document: {e}") + return [] + +def create_routing_agent() -> Agent: + """Creates a routing agent using phidata framework""" + return Agent( + model=OpenAIChat( + id="gpt-4o", + api_key=st.session_state.openai_api_key + ), + tools=[], + description="""You are a query routing expert. Your only job is to analyze questions and determine which database they should be routed to. + You must respond with exactly one of these three options: 'products', 'support', or 'finance'. The user's question is: {question}""", + instructions=[ + "Follow these rules strictly:", + "1. For questions about products, features, specifications, or item details, or product manuals → return 'products'", + "2. For questions about help, guidance, troubleshooting, or customer service, FAQ, or guides → return 'support'", + "3. For questions about costs, revenue, pricing, or financial data, or financial reports and investments → return 'finance'", + "4. Return ONLY the database name, no other text or explanation", + "5. If you're not confident about the routing, return an empty response" + ], + markdown=False, + show_tool_calls=False + ) + +def route_query(question: str) -> Optional[DatabaseType]: + """Route query by searching all databases and comparing relevance scores. + Returns None if no suitable database is found.""" + try: + best_score = -1 + best_db_type = None + all_scores = {} # Store all scores for debugging + + # Search each database and compare relevance scores + for db_type, db in st.session_state.databases.items(): + results = db.similarity_search_with_score( + question, + k=3 + ) + + if results: + avg_score = sum(score for _, score in results) / len(results) + all_scores[db_type] = avg_score + + if avg_score > best_score: + best_score = avg_score + best_db_type = db_type + + confidence_threshold = 0.5 + if best_score >= confidence_threshold and best_db_type: + st.success(f"Using vector similarity routing: {best_db_type} (confidence: {best_score:.3f})") + return best_db_type + + st.warning(f"Low confidence scores (below {confidence_threshold}), falling back to LLM routing") + + # Fallback to LLM routing + routing_agent = create_routing_agent() + response = routing_agent.run(question) + + db_type = (response.content + .strip() + .lower() + .translate(str.maketrans('', '', '`\'"'))) + + if db_type in COLLECTIONS: + st.success(f"Using LLM routing decision: {db_type}") + return db_type + + st.warning("No suitable database found, will use web search fallback") + return None + + except Exception as e: + st.error(f"Routing error: {str(e)}") + return None + +def create_fallback_agent(chat_model: BaseLanguageModel): + """Create a LangGraph agent for web research.""" + + def web_research(query: str) -> str: + """Web search with result formatting.""" + try: + search = DuckDuckGoSearchRun(num_results=5) + results = search.run(query) + return results + except Exception as e: + return f"Search failed: {str(e)}. Providing answer based on general knowledge." + + tools = [web_research] + + agent = create_react_agent(model=chat_model, + tools=tools, + debug=False) + + return agent + +def query_database(db: Qdrant, question: str) -> tuple[str, list]: + """Query the database and return answer and relevant documents""" + try: + retriever = db.as_retriever( + search_type="similarity", + search_kwargs={"k": 4} + ) + + relevant_docs = retriever.get_relevant_documents(question) + + if relevant_docs: + # Use simpler chain creation with hub prompt + retrieval_qa_prompt = ChatPromptTemplate.from_messages([ + ("system", """You are a helpful AI assistant that answers questions based on provided context. + Always be direct and concise in your responses. + If the context doesn't contain enough information to fully answer the question, acknowledge this limitation. + Base your answers strictly on the provided context and avoid making assumptions."""), + ("human", "Here is the context:\n{context}"), + ("human", "Question: {input}"), + ("assistant", "I'll help answer your question based on the context provided."), + ("human", "Please provide your answer:"), + ]) + combine_docs_chain = create_stuff_documents_chain(st.session_state.llm, retrieval_qa_prompt) + retrieval_chain = create_retrieval_chain(retriever, combine_docs_chain) + + response = retrieval_chain.invoke({"input": question}) + return response['answer'], relevant_docs + + raise ValueError("No relevant documents found in database") + + except Exception as e: + st.error(f"Error: {str(e)}") + return "I encountered an error. Please try rephrasing your question.", [] + +def _handle_web_fallback(question: str) -> tuple[str, list]: + st.info("No relevant documents found. Searching web...") + fallback_agent = create_fallback_agent(st.session_state.llm) + + with st.spinner('Researching...'): + agent_input = { + "messages": [ + HumanMessage(content=f"Research and provide a detailed answer for: '{question}'") + ], + "is_last_step": False + } + + try: + response = fallback_agent.invoke(agent_input, config={"recursion_limit": 100}) + if isinstance(response, dict) and "messages" in response: + answer = response["messages"][-1].content + return f"Web Search Result:\n{answer}", [] + + except Exception: + # Fallback to general LLM response + fallback_response = st.session_state.llm.invoke(question).content + return f"Web search unavailable. General response: {fallback_response}", [] + +def main(): + """Main application function.""" + st.set_page_config(page_title="RAG Agent with Database Routing", page_icon="📚") + st.title("📚 RAG Agent with Database Routing") + + # Sidebar for API keys and configuration + with st.sidebar: + st.header("Configuration") + + # OpenAI API Key + api_key = st.text_input( + "Enter OpenAI API Key:", + type="password", + value=st.session_state.openai_api_key, + key="api_key_input" + ) + + # Qdrant Configuration + qdrant_url = st.text_input( + "Enter Qdrant URL:", + value=st.session_state.qdrant_url, + help="Example: https://your-cluster.qdrant.tech" + ) + + qdrant_api_key = st.text_input( + "Enter Qdrant API Key:", + type="password", + value=st.session_state.qdrant_api_key + ) + + # Update session state + if api_key: + st.session_state.openai_api_key = api_key + if qdrant_url: + st.session_state.qdrant_url = qdrant_url + if qdrant_api_key: + st.session_state.qdrant_api_key = qdrant_api_key + + # Initialize models if all credentials are provided + if (st.session_state.openai_api_key and + st.session_state.qdrant_url and + st.session_state.qdrant_api_key): + if initialize_models(): + st.success("Connected to OpenAI and Qdrant successfully!") + else: + st.error("Failed to initialize. Please check your credentials.") + else: + st.warning("Please enter all required credentials to continue") + st.stop() + + st.markdown("---") + + st.header("Document Upload") + st.info("Upload documents to populate the databases. Each tab corresponds to a different database.") + tabs = st.tabs([collection_config.name for collection_config in COLLECTIONS.values()]) + + for (collection_type, collection_config), tab in zip(COLLECTIONS.items(), tabs): + with tab: + st.write(collection_config.description) + uploaded_files = st.file_uploader( + f"Upload PDF documents to {collection_config.name}", + type="pdf", + key=f"upload_{collection_type}", + accept_multiple_files=True + ) + + if uploaded_files: + with st.spinner('Processing documents...'): + all_texts = [] + for uploaded_file in uploaded_files: + texts = process_document(uploaded_file) + all_texts.extend(texts) + + if all_texts: + db = st.session_state.databases[collection_type] + db.add_documents(all_texts) + st.success("Documents processed and added to the database!") + + # Query section + st.header("Ask Questions") + st.info("Enter your question below to find answers from the relevant database.") + question = st.text_input("Enter your question:") + + if question: + with st.spinner('Finding answer...'): + # Route the question + collection_type = route_query(question) + + if collection_type is None: + # Use web search fallback directly + answer, relevant_docs = _handle_web_fallback(question) + st.write("### Answer (from web search)") + st.write(answer) + else: + # Display routing information and query the database + st.info(f"Routing question to: {COLLECTIONS[collection_type].name}") + db = st.session_state.databases[collection_type] + answer, relevant_docs = query_database(db, question) + st.write("### Answer") + st.write(answer) + +if __name__ == "__main__": + main() diff --git a/rag_tutorials/rag_database_routing/requirements.txt b/rag_tutorials/rag_database_routing/requirements.txt new file mode 100644 index 0000000..0c69e77 --- /dev/null +++ b/rag_tutorials/rag_database_routing/requirements.txt @@ -0,0 +1,11 @@ +langchain==0.3.12 +langchain-community==0.3.12 +langchain-core==0.3.28 +qdrant-client==1.12.1 +streamlit>=1.29.0 +pypdf>=4.0.0 +sentence-transformers>=2.2.2 +phidata==2.7.3 +langchain-openai==0.2.14 +langgraph==0.2.53 +duckduckgo-search==6.4.1 \ No newline at end of file