from llama_index.core.retrievers import VectorIndexRetriever from llama_index.core import QueryBundle import gradio as gr import pandas as pd from llama_index.core.postprocessor import LLMRerank from IPython.display import display, HTML from llama_index.core.vector_stores import ( MetadataFilter, MetadataFilters, FilterOperator, FilterOperator ) from llama_index.core.tools import RetrieverTool from llama_index.core.retrievers import RouterRetriever from llama_index.core.selectors import PydanticSingleSelector from llama_index.core import ( VectorStoreIndex, SimpleKeywordTableIndex, SimpleDirectoryReader, ) from llama_index.core import SummaryIndex, Settings from llama_index.core.schema import IndexNode from llama_index.core.tools import QueryEngineTool, ToolMetadata from llama_index.llms.openai import OpenAI from llama_index.core.callbacks import CallbackManager from llama_index.core import Document import os from llama_index.embeddings.openai import OpenAIEmbedding import nest_asyncio import pandas as pd import hashlib import tiktoken nest_asyncio.apply() openai_key = os.getenv('openai_key_secret') os.environ["OPENAI_API_KEY"] = openai_key llm=OpenAI(temperature=0, model="gpt-4o") Settings.llm = llm Settings.embed_model = OpenAIEmbedding(model="text-embedding-ada-002") ds=pd.read_excel("data_metropole 2.xlsx") # df est la DATAFRAME qui contient le fichier source df=ds.drop(columns=['Theme ID', 'SousTheme ID', 'Signataire Matricule', 'Suppleant Matricule', 'Date Nomination', 'Date Commite Technique', 'Numero', 'Libelle', 'Date Creation', 'Date Debut']) #la DATAFRAME (filter_signataire) est celle qui contient les colonne relative au signataire #la DATAFRAME (filter) est celle qui contient les colonne relative au département filter_signataire = df[['Signataire', 'Fonction']] filter_signataire = filter_signataire.drop_duplicates() filter = df[['Collectivite', 'Direction DGA', 'Liste Service Text']] filter = filter.drop_duplicates() # pre traitement est cleaning des dataframe df = df.dropna(subset=['Item Text']) df_sorted = df.sort_values(by=['Collectivite', 'Direction DGA', 'Liste Service Text', 'Item Text','Theme Title','SousTheme Title','Item Text']) #traietement des dataframe df.loc[:, 'content'] = df.apply(lambda x: f''' / Theme : {x['Theme Title'] or ''} / Sous-Theme : {x['SousTheme Title'] or ''} / Item : {x['Item Text'] or ''} / Signataire : {x['Signataire'] or ''} / Suppleant : {x['Suppleant'] or ''} / Les services : {x['Liste Service Text'] or ''} ''', axis=1) ############# df = df.fillna(value='') filter = filter.fillna(value='') filter_signataire = filter_signataire.fillna(value='') ############# df.loc[:, 'description'] = df.apply(lambda x: f'''Collectivite : {x['Collectivite'] or ''} Direction : {x['Direction DGA'] or ''} Liste des Service : {x['Liste Service Text'] or ''} ''', axis=1) filter.loc[:, 'description'] = filter.apply(lambda x: f'''Collectivite : {x['Collectivite'] or ''} Direction : {x['Direction DGA'] or ''} Liste des Service : {x['Liste Service Text'] or ''} ''', axis=1) filter_signataire.loc[:, 'description'] = filter_signataire.apply(lambda x: f'''Signataire : {x['Signataire'] or ''} Fonction : {x['Fonction'] or ''} ''', axis=1) def hachage(row): return hashlib.sha1(row.encode("utf-8")).hexdigest() # le hashage df['hash'] = df.apply(lambda x: hachage(f'''Collectivite : {x['Collectivite'] or ''} Direction : {x['Direction DGA'] or ''} Liste des Service : {x['Liste Service Text'] or ''} '''), axis=1) filter['hash'] = filter.apply(lambda x: hachage(f'''Collectivite : {x['Collectivite'] or ''} Direction : {x['Direction DGA'] or ''} Liste des Service : {x['Liste Service Text'] or ''} '''), axis=1) #################################################" filter_signataire['hash'] = filter_signataire.apply(lambda x: hachage(f'''Signataire : {x['Signataire'] or ''} '''), axis=1) #construction des DOCUMENTS pour la vectorisation description_docs = [Document(text=row['description'],metadata={"id_documents": row['hash']}) for index, row in filter.iterrows()] content_docs = [Document(text=row['content'],metadata={"id_documents": row['hash']}) for index, row in df.iterrows()] signataire_docs = [Document(text=row['Signataire'],metadata={"id_signataire": row['hash']}) for index, row in filter_signataire.iterrows()] content_signataire = [Document(text=row['content'],metadata={"id_signataire": row['hash']}) for index, row in df.iterrows()] index = VectorStoreIndex.from_documents( description_docs, show_progress = True ) index_all = VectorStoreIndex.from_documents( content_docs, show_progress = True ) index_signataire = VectorStoreIndex.from_documents( signataire_docs, show_progress = True ) index_all_signataire = VectorStoreIndex.from_documents( content_signataire, show_progress = True ) def get_retrieved_nodes( query_str, vector_top_k=10, reranker_top_n=3, with_reranker=False,index=index): query_bundle = QueryBundle(query_str) # configure retriever retriever = VectorIndexRetriever( index=index, similarity_top_k=vector_top_k, ) retrieved_nodes = retriever.retrieve(query_bundle) if with_reranker: # configure reranker reranker = LLMRerank( choice_batch_size=5, top_n=reranker_top_n, ) retrieved_nodes = reranker.postprocess_nodes( retrieved_nodes, query_bundle ) return retrieved_nodes def get_all_text(new_nodes): texts = [] for i, node in enumerate(new_nodes, 1): texts.append(f"\nDocument {i} : {node.get_text()}") return ' '.join(texts) def further_retrieve(query): # Retrieve new nodes based on the query new_nodes = get_retrieved_nodes( query, index=index, vector_top_k=10, reranker_top_n=5, with_reranker=False, ) new_nodes_signataire = get_retrieved_nodes( query, index=index_all_signataire, vector_top_k=10, reranker_top_n=5, with_reranker=False, ) filters = MetadataFilters( filters=[ MetadataFilter(key="id_documents", value=[node.metadata['id_documents'] for node in new_nodes], operator=FilterOperator.IN) ], ) filters_s = MetadataFilters( filters=[ MetadataFilter(key="id_signataire", value=[node.metadata['id_signataire'] for node in new_nodes_signataire], operator=FilterOperator.IN) ], ) # Create a retriever with the specified filters retriever_description = index_all.as_retriever(filters=filters, similarity_top_k=15) retriever_signataire= index_all_signataire.as_retriever(filters=filters_s,similarity_top_k=4) # initialize tools description_tool = RetrieverTool.from_defaults( retriever=retriever_description, description="Useful for retrieving specific context from direction, liste service and collectivite", ) signataire_tool = RetrieverTool.from_defaults( retriever=retriever_signataire, description="Useful for retrieving specific context from signataire and fonction", ) # define retriever retriever = RouterRetriever( selector=PydanticSingleSelector.from_defaults(llm=llm), retriever_tools=[ description_tool, signataire_tool, ], ) try : query_bundle = QueryBundle(query) # Retrieve nodes based on the original query and filters retrieved_nodes = retriever.retrieve(query_bundle) reranker = LLMRerank( choice_batch_size=5, # Process 5 nodes at a time top_n=7 # Return the top 7 reranked nodes ) # Post-process the retrieved nodes by reranking them reranked_nodes = reranker.postprocess_nodes(retrieved_nodes, query_bundle) return get_all_text(reranked_nodes) except : print("No rerank") return get_all_text(retriever.retrieve(query)) def prompt_objectif(user_input): from openai import OpenAI client = OpenAI(api_key=openai_key) documents = further_retrieve(user_input) print("ù"*100) print(documents) print("ù"*100) try: # Tokenize the text using tiktoken encoder = tiktoken.get_encoding("cl100k_base") tokens = encoder.encode(user_input) encoded_text = encoder.decode(tokens) # Make the API call to the language model response = client.chat.completions.create( model="gpt-4o", messages=[ {"role": "system", "content": f"""Tu es un assistant utile. L'utilisateur posera une question et tu devras trouver la réponse dans les documents suivants.Focalise sur les service et la direction du signataire que l'utilisateur cherche. Tu ne dois pas poser de question en retour.Tu ne sois mentionner le numéro des documents. Tu t'exprimes dans la même langue que l'utilisateur., DOCUMENTS : {documents}"""}, {"role": "user", "content": user_input}, ] ) # Extract and return the generated response resultat = response.choices[0].message.content return resultat except Exception as e: print(f"Failed to generate questions: {e}") return None # Create the Gradio interface iface = gr.Interface( fn=prompt_objectif, inputs="text", outputs="text", title="Chatbot Interaction", description="Enter your message to interact with the chatbot." ) # Launch the interface iface.launch(share=True, debug = True)