"""gradio app for Chat Interface for DataStax Langflow calls""" from typing import Optional, Sequence, Tuple from uuid import uuid4 import os from requests.exceptions import ConnectTimeout, ReadTimeout from retry import retry import requests import gradio as gr from dotenv import load_dotenv load_dotenv() BASE_API_URL = "https://api.langflow.astra.datastax.com" LANGFLOW_ID = "e99b525a-84dd-4cf2-bac6-8e5ebc6a7d17" FLOW_ID = "fa9291fe-1ddd-4503-b438-f090dd76994d" DATASTAX_TOKEN = os.getenv('DATASTAX_TOKEN') ENDPOINT = 'beauty_advisor' TWEAKS = { "Memory-fCuCs": { "n_messages": 100, "order": "Ascending", "sender": "Machine and User", "sender_name": "", "template": "{sender_name}: {text}" }, "ChatInput-PN5E4": {}, "Prompt-vGvVG": {}, "GoogleGenerativeAIModel-6n0Ft": {}, "ChatOutput-HjfF1": {} } @retry((ConnectTimeout, ReadTimeout), tries=3, delay=2) def call_ai( message: str, history: Sequence[Tuple[str, str]], local_storage: str, endpoint: str = ENDPOINT, output_type: str = "chat", input_type: str = "chat", tweaks: Optional[dict] = None, application_token: Optional[str] = DATASTAX_TOKEN ) -> dict: """ Run a flow with a given message and optional tweaks. :param message: The message to send to the flow :param endpoint: The ID or the endpoint name of the flow :param tweaks: Optional tweaks to customize the flow :return: The JSON response from the flow """ del history api_url = f"{BASE_API_URL}/lf/{LANGFLOW_ID}/api/v1/run/{endpoint}" payload = { 'session_id': local_storage[0], "input_value": message, "output_type": output_type, "input_type": input_type, } headers = None if tweaks: payload["tweaks"] = tweaks if application_token: headers = { "Authorization": "Bearer " + application_token, "Content-Type": "application/json" } response = requests.post( api_url, json=payload, headers=headers, timeout=120, ) print(response, response.content) response = response.json() resp_message = '' try: for resp in response['outputs']: for _resp in resp['outputs']: for message in _resp['messages']: resp_message = message['message'] except KeyError as e: print(e) print(response) return resp_message def generate_session_id(): """Generate a unique session ID.""" return str(uuid4()) with gr.Blocks() as demo: with gr.Column(): gr.Image( "./aem_logo.jpeg", width=300, label="AEM", show_download_button=False, show_fullscreen_button=False, show_label=False, interactive=False, show_share_button=False, ) # session = gr.State(["", ], time_to_live=24 * 60*60) session = gr.BrowserState(None, storage_key="session_id") show_session = gr.Textbox( visible=False, interactive=False, label="Session ID", ) with gr.Accordion( 'Chat With Agent', ) as chat: chat_interface = gr.ChatInterface( call_ai, type='messages', title="AI Beauty Partner", additional_inputs=[session], autofocus=True, fill_height=True, ) def initialize_session(existing_id): """ Runs ONCE per browser session on page load. Checks if an ID already exists in BrowserState (local storage). If not, generates a new one. Returns the ID to populate the BrowserState and other components. """ if existing_id: print(f"Found existing ID in BrowserState: {existing_id}") return existing_id, existing_id else: new_id = generate_session_id() print(f"No existing ID found, returning NEW ID: {new_id}") return new_id, new_id demo.load( # pylint: disable=no-member initialize_session, [session], outputs=[session, show_session], ) demo.launch(share=False, debug=True,)