import streamlit as st from haystack import Pipeline from haystack.document_stores import FAISSDocumentStore from haystack.nodes import Shaper, PromptNode, PromptTemplate, PromptModel, EmbeddingRetriever from haystack.nodes.retriever.web import WebRetriever @st.cache_resource(show_spinner=False) def get_plain_pipeline(): prompt_open_ai = PromptModel(model_name_or_path="text-davinci-003", api_key=st.secrets["OPENAI_API_KEY"]) # Now let make one PromptNode use the default model and the other one the OpenAI model: plain_llm_template = PromptTemplate(name="plain_llm", prompt_text="Answer the following question: $query") node_openai = PromptNode(prompt_open_ai, default_prompt_template=plain_llm_template, max_length=300) pipeline = Pipeline() pipeline.add_node(component=node_openai, name="prompt_node", inputs=["Query"]) return pipeline @st.cache_resource(show_spinner=False) def get_retrieval_augmented_pipeline(): ds = FAISSDocumentStore(faiss_index_path="data/my_faiss_index.faiss", faiss_config_path="data/my_faiss_index.json") retriever = EmbeddingRetriever( document_store=ds, embedding_model="sentence-transformers/multi-qa-mpnet-base-dot-v1", model_format="sentence_transformers", top_k=2 ) shaper = Shaper(func="join_documents", inputs={"documents": "documents"}, outputs=["documents"]) default_template = PromptTemplate( name="question-answering", prompt_text="Given the context please answer the question. Context: $documents; Question: " "$query; Answer:", ) # Let's initiate the PromptNode node = PromptNode("text-davinci-003", default_prompt_template=default_template, api_key=st.secrets["OPENAI_API_KEY"], max_length=500) # Let's create a pipeline with Shaper and PromptNode pipeline = Pipeline() pipeline.add_node(component=retriever, name='retriever', inputs=['Query']) pipeline.add_node(component=shaper, name="shaper", inputs=["retriever"]) pipeline.add_node(component=node, name="prompt_node", inputs=["shaper"]) return pipeline @st.cache_resource(show_spinner=False) def get_web_retrieval_augmented_pipeline(): search_key = st.secrets["WEBRET_API_KEY"] web_retriever = WebRetriever(api_key=search_key, search_engine_provider="SerperDev") shaper = Shaper(func="join_documents", inputs={"documents": "documents"}, outputs=["documents"]) default_template = PromptTemplate( name="question-answering", prompt_text="Given the context please answer the question. Context: $documents; Question: " "$query; Answer:", ) # Let's initiate the PromptNode node = PromptNode("text-davinci-003", default_prompt_template=default_template, api_key=st.secrets["OPENAI_API_KEY"], max_length=500) # Let's create a pipeline with Shaper and PromptNode pipeline = Pipeline() pipeline.add_node(component=web_retriever, name='retriever', inputs=['Query']) pipeline.add_node(component=shaper, name="shaper", inputs=["retriever"]) pipeline.add_node(component=node, name="prompt_node", inputs=["shaper"]) return pipeline