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| from openai import OpenAI | |
| import gradio as gr | |
| import json | |
| from bot_actions import functions_dictionary | |
| import os | |
| CSS =""" | |
| .contain { display: flex; flex-direction: column; } | |
| .svelte-vt1mxs div:first-child { flex-grow: 1; overflow: auto;} | |
| #chatbot { flex-grow: 1; overflow: auto;} | |
| footer {display: none !important;} | |
| .app.svelte-182fdeq.svelte-182fdeq { | |
| max-width: 100vw !important; | |
| } | |
| #main_container { | |
| height: 95vh; | |
| } | |
| #markup_container { | |
| height: 100%; | |
| overflow:auto; | |
| } | |
| """ | |
| openAIToken = os.environ['openAIToken'] | |
| assistantId = os.environ['assistantId'] | |
| initial_message = os.environ['initialMessage'] | |
| client = OpenAI(api_key=openAIToken) | |
| def handle_requires_action(data): | |
| actions_results = [] | |
| for tool in data.required_action.submit_tool_outputs.tool_calls: | |
| function_name = tool.function.name | |
| function_args = json.loads(tool.function.arguments) | |
| print(function_name) | |
| print(function_args) | |
| try: | |
| result = functions_dictionary[tool.function.name](**function_args) | |
| print("Function result:", result) | |
| actions_results.append({"tool_output" : {"tool_call_id": tool.id, "output": result["message"]}}) | |
| except Exception as e: | |
| print(e) | |
| # Submit all tool_outputs at the same time | |
| return actions_results | |
| def create_thread_openai(sessionStorage): | |
| streaming_thread = client.beta.threads.create() | |
| sessionStorage["threadId"] = streaming_thread.id | |
| return sessionStorage | |
| def add_message_to_openai(text, threadId): | |
| print("User message: ", text) | |
| return client.beta.threads.messages.create( | |
| thread_id=threadId, | |
| role="user", | |
| content=text | |
| ) | |
| def process_text_chunk(text, storage): | |
| print(text, end="", flush=True) | |
| local_message = None | |
| accumulative_string = storage["accumulative_string"] + text | |
| local_message = accumulative_string | |
| return local_message, storage | |
| def handle_events(threadId, chat_history, storage): | |
| storage.update({ | |
| "accumulative_string" : "", | |
| "markup_string": "", | |
| }) | |
| try: | |
| with client.beta.threads.runs.stream( | |
| thread_id=threadId, | |
| assistant_id=assistantId | |
| ) as stream: | |
| for event in stream: | |
| if event.event == "thread.message.delta" and event.data.delta.content: | |
| text = event.data.delta.content[0].text.value | |
| local_message, storage = process_text_chunk(text, storage) | |
| if local_message is not None: | |
| chat_history[-1][1] += local_message | |
| yield [chat_history, storage] | |
| if event.event == 'thread.run.requires_action': | |
| result = handle_requires_action(event.data) | |
| tool_outputs = [x["tool_output"] for x in result] | |
| with client.beta.threads.runs.submit_tool_outputs_stream( | |
| thread_id=stream.current_run.thread_id, | |
| run_id=event.data.id, | |
| tool_outputs=tool_outputs, | |
| ) as action_stream: | |
| for text in action_stream.text_deltas: | |
| local_message, storage = process_text_chunk(text, storage) | |
| if local_message is not None: | |
| chat_history[-1][1] += local_message | |
| yield [chat_history, storage] | |
| action_stream.close() | |
| stream.until_done() | |
| print("") | |
| return [chat_history, storage] | |
| except Exception as e: | |
| print(e) | |
| chat_history[-1][1] = "Error occured during processing your message. Please try again" | |
| yield [chat_history, storage] | |
| def check_moderation_flag(message): | |
| moderation_response = client.moderations.create(input=message, model="omni-moderation-latest") | |
| print("Moderation respones: ", moderation_response) | |
| flagged = moderation_response.results[0].flagged | |
| return flagged | |
| def process_user_input(text, thread_id, chat_history, storage): | |
| print("User input: ", text) | |
| is_flagged = check_moderation_flag(text) | |
| print("Check is flagged:", is_flagged) | |
| if is_flagged: | |
| chat_history[-1][1] = "Your request contains some inappropriate information. We cannot proceed with it." | |
| yield [chat_history, storage] | |
| else: | |
| add_message_to_openai(text, thread_id) | |
| for response in handle_events(thread_id, chat_history, storage): | |
| yield response | |
| def initiate_chatting(chat_history, storage): | |
| threadId = storage["threadId"] | |
| chat_history = [[None, ""]] | |
| for response in process_user_input(initial_message, threadId, chat_history, storage): | |
| yield response | |
| def respond_on_user_msg(chat_history, storage): | |
| message = chat_history[-1][0] | |
| threadId = storage["threadId"] | |
| print("Responding for threadId: ", threadId) | |
| chat_history[-1][1] = "" | |
| for response in process_user_input(message, threadId, chat_history, storage): | |
| yield response | |
| def create_chat_tab(): | |
| msg = gr.Textbox(label="Answer") | |
| storage = gr.State({"accumulative_string": ""}) | |
| chatbot = gr.Chatbot(label="Board of Advisors Assistant", line_breaks=False, height=300, show_label=False, show_share_button=False, elem_id="chatbot") | |
| def user(user_message, history): | |
| return "", history + [[user_message, None]] | |
| def disable_msg(): | |
| message_box = gr.Textbox(value=None, interactive=False) | |
| return message_box | |
| def enable_msg(): | |
| message_box = gr.Textbox(value=None, interactive=True) | |
| return message_box | |
| add_user_message_flow = [user, [msg,chatbot], [msg,chatbot]] | |
| chat_response_flow = [respond_on_user_msg, [chatbot, storage], [chatbot, storage]] | |
| disable_msg_flow = [disable_msg, None, msg] | |
| enable_msg_flow = [enable_msg, None, msg] | |
| with gr.Blocks(css=CSS, fill_height=True) as chat_view: | |
| storage.render() | |
| with gr.Row(elem_id="main_container"): | |
| with gr.Column(scale=4): | |
| chatbot.render() | |
| examples = gr.Examples(examples=[ | |
| "I need someone that can help me with real estate in Texas", | |
| "I'm looking for help with payment system for my business", | |
| "I need help to develop my leadership skills"], | |
| inputs=msg, | |
| ) | |
| msg.render() | |
| print(gr.Request) | |
| msg.submit(*add_user_message_flow | |
| ).then(*disable_msg_flow | |
| ).then(*chat_response_flow | |
| ).then(*enable_msg_flow) | |
| examples.load_input_event.then(*add_user_message_flow | |
| ).then(*disable_msg_flow | |
| ).then(*chat_response_flow | |
| ).then(*enable_msg_flow) | |
| chat_view.load(*disable_msg_flow | |
| ).then(create_thread_openai, inputs=storage, outputs=storage | |
| ).then(initiate_chatting, inputs=[chatbot, storage], outputs=[chatbot, storage] | |
| ).then(*enable_msg_flow) | |
| return chat_view | |
| if __name__ == "__main__": | |
| chat_view = create_chat_tab() | |
| chat_view.launch() |