import os from gradio.themes import ThemeClass as Theme import numpy as np import argparse import gradio as gr from typing import Any, Iterator from typing import Iterator, List, Optional, Tuple import filelock import glob import json import time from gradio.routes import Request from gradio.utils import SyncToAsyncIterator, async_iteration from gradio.helpers import special_args import anyio from typing import AsyncGenerator, Callable, Literal, Union, cast, Generator from gradio_client.documentation import document, set_documentation_group from gradio.components import Button, Component from gradio.events import Dependency, EventListenerMethod from typing import List, Optional, Union, Dict, Tuple from tqdm.auto import tqdm from huggingface_hub import snapshot_download from gradio.components.base import Component from .base_demo import register_demo, get_demo_class, BaseDemo from .chat_interface import ( SYSTEM_PROMPT, MODEL_NAME, MAX_TOKENS, TEMPERATURE, CHAT_EXAMPLES, gradio_history_to_openai_conversations, gradio_history_to_conversation_prompt, DATETIME_FORMAT, get_datetime_string, chat_response_stream_multiturn_engine, ChatInterfaceDemo, format_conversation, CustomizedChatInterface, ) from gradio.events import Events import inspect from typing import AsyncGenerator, Callable, Literal, Union, cast import anyio from gradio_client import utils as client_utils from gradio_client.documentation import document from gradio.blocks import Blocks from gradio.components import ( Button, Chatbot, Component, Markdown, State, Textbox, get_component_instance, ) from gradio.events import Dependency, on from gradio.helpers import create_examples as Examples # noqa: N812 from gradio.helpers import special_args from gradio.layouts import Accordion, Group, Row from gradio.routes import Request from gradio.themes import ThemeClass as Theme from gradio.utils import SyncToAsyncIterator, async_iteration from ..globals import MODEL_ENGINE from ..configs import ( USE_PANEL, IMAGE_TOKEN, IMAGE_TOKEN_INTERACTIVE, CHATBOT_HEIGHT, ) CSS = """ .message-fit { min-width: 20em; width: fit-content !important; } .message.svelte-1lcyrx4.svelte-1lcyrx4.svelte-1lcyrx4 { padding-top: 1em; padding-bottom: 1em; } """ DOC_TEMPLATE = """### {content} ### """ DOC_INSTRUCTION = """Answer the following query exclusively based on the information provided in the document above. \ If the information is not found, please say so instead of making up facts! Remember to answer the question in the same language as the user query! """ def undo_history(history): if len(history) == 0: return history if history[-1][-1] is not None: if history[-1][0] is not None: history[-1][-1] = None else: history = history[:-1] else: history = history[:-1] return history def undo_history_until_last_assistant_turn(history): history = undo_history(history) while len(history) > 0 and history[-1][-1] is None: history = undo_history(history) return history, history class MultiModalChatInterface(CustomizedChatInterface): def __init__( self, fn: Callable, *, chatbot: Chatbot | None = None, textbox: Textbox | None = None, additional_inputs: str | Component | list[str | Component] | None = None, additional_inputs_accordion_name: str | None = None, additional_inputs_accordion: str | Accordion | None = None, add_multimodal_fn: Callable | None = None, render_additional_inputs_fn: Callable | None = None, examples: list[str] | None = None, cache_examples: bool | None = None, title: str | None = None, description: str | None = None, theme: Theme | str | None = None, css: str | None = None, js: str | None = None, head: str | None = None, analytics_enabled: bool | None = None, submit_btn: str | None | Button = "Submit", stop_btn: str | None | Button = "Stop", retry_btn: str | None | Button = "🔄 Retry", undo_btn: str | None | Button = "↩ī¸ Undo", clear_btn: str | None | Button = "🗑ī¸ Clear", autofocus: bool = True, concurrency_limit: int | None | Literal["default"] = "default", fill_height: bool = True, ): """ Parameters: fn: The function to wrap the chat interface around. Should accept two parameters: a string input message and list of two-element lists of the form [[user_message, bot_message], ...] representing the chat history, and return a string response. See the Chatbot documentation for more information on the chat history format. chatbot: An instance of the gr.Chatbot component to use for the chat interface, if you would like to customize the chatbot properties. If not provided, a default gr.Chatbot component will be created. textbox: An instance of the gr.Textbox component to use for the chat interface, if you would like to customize the textbox properties. If not provided, a default gr.Textbox component will be created. additional_inputs: An instance or list of instances of gradio components (or their string shortcuts) to use as additional inputs to the chatbot. If components are not already rendered in a surrounding Blocks, then the components will be displayed under the chatbot, in an accordion. additional_inputs_accordion_name: Deprecated. Will be removed in a future version of Gradio. Use the `additional_inputs_accordion` parameter instead. additional_inputs_accordion: If a string is provided, this is the label of the `gr.Accordion` to use to contain additional inputs. A `gr.Accordion` object can be provided as well to configure other properties of the container holding the additional inputs. Defaults to a `gr.Accordion(label="Additional Inputs", open=False)`. This parameter is only used if `additional_inputs` is provided. examples: Sample inputs for the function; if provided, appear below the chatbot and can be clicked to populate the chatbot input. cache_examples: If True, caches examples in the server for fast runtime in examples. The default option in HuggingFace Spaces is True. The default option elsewhere is False. title: a title for the interface; if provided, appears above chatbot in large font. Also used as the tab title when opened in a browser window. description: a description for the interface; if provided, appears above the chatbot and beneath the title in regular font. Accepts Markdown and HTML content. theme: Theme to use, loaded from gradio.themes. css: Custom css as a string or path to a css file. This css will be included in the demo webpage. js: Custom js or path to js file to run when demo is first loaded. This javascript will be included in the demo webpage. head: Custom html to insert into the head of the demo webpage. This can be used to add custom meta tags, scripts, stylesheets, etc. to the page. analytics_enabled: Whether to allow basic telemetry. If None, will use GRADIO_ANALYTICS_ENABLED environment variable if defined, or default to True. submit_btn: Text to display on the submit button. If None, no button will be displayed. If a Button object, that button will be used. stop_btn: Text to display on the stop button, which replaces the submit_btn when the submit_btn or retry_btn is clicked and response is streaming. Clicking on the stop_btn will halt the chatbot response. If set to None, stop button functionality does not appear in the chatbot. If a Button object, that button will be used as the stop button. retry_btn: Text to display on the retry button. If None, no button will be displayed. If a Button object, that button will be used. undo_btn: Text to display on the delete last button. If None, no button will be displayed. If a Button object, that button will be used. clear_btn: Text to display on the clear button. If None, no button will be displayed. If a Button object, that button will be used. autofocus: If True, autofocuses to the textbox when the page loads. concurrency_limit: If set, this is the maximum number of chatbot submissions that can be running simultaneously. Can be set to None to mean no limit (any number of chatbot submissions can be running simultaneously). Set to "default" to use the default concurrency limit (defined by the `default_concurrency_limit` parameter in `.queue()`, which is 1 by default). fill_height: If True, the chat interface will expand to the height of window. """ try: super(gr.ChatInterface, self).__init__( analytics_enabled=analytics_enabled, mode="chat_interface", css=css, title=title or "Gradio", theme=theme, js=js, head=head, fill_height=fill_height, ) except Exception as e: # Handle old gradio versions without fill_height super(gr.ChatInterface, self).__init__( analytics_enabled=analytics_enabled, mode="chat_interface", css=css, title=title or "Gradio", theme=theme, js=js, head=head, # fill_height=fill_height, ) self.concurrency_limit = concurrency_limit self.fn = fn self.add_multimodal_fn = add_multimodal_fn self.render_additional_inputs_fn = render_additional_inputs_fn self.multimodal_inputs = [] self.is_async = inspect.iscoroutinefunction( self.fn ) or inspect.isasyncgenfunction(self.fn) self.is_generator = inspect.isgeneratorfunction( self.fn ) or inspect.isasyncgenfunction(self.fn) self.examples = examples if self.space_id and cache_examples is None: self.cache_examples = True else: self.cache_examples = cache_examples or False self.buttons: list[Button | None] = [] if additional_inputs: if not isinstance(additional_inputs, list): additional_inputs = [additional_inputs] self.additional_inputs = [ get_component_instance(i) for i in additional_inputs # type: ignore ] else: self.additional_inputs = [] if additional_inputs_accordion_name is not None: print( "The `additional_inputs_accordion_name` parameter is deprecated and will be removed in a future version of Gradio. Use the `additional_inputs_accordion` parameter instead." ) self.additional_inputs_accordion_params = { "label": additional_inputs_accordion_name } if additional_inputs_accordion is None: self.additional_inputs_accordion_params = { "label": "Additional Inputs", "open": False, } elif isinstance(additional_inputs_accordion, str): self.additional_inputs_accordion_params = { "label": additional_inputs_accordion } elif isinstance(additional_inputs_accordion, Accordion): self.additional_inputs_accordion_params = ( additional_inputs_accordion.recover_kwargs( additional_inputs_accordion.get_config() ) ) else: raise ValueError( f"The `additional_inputs_accordion` parameter must be a string or gr.Accordion, not {type(additional_inputs_accordion)}" ) with self: if title: Markdown( f"

{self.title}

" ) if description: Markdown(description) if chatbot: self.chatbot = chatbot.render() else: self.chatbot = Chatbot( label="Chatbot", scale=1, height=200 if fill_height else None ) with Row(): for btn in [retry_btn, undo_btn, clear_btn]: if btn is not None: if isinstance(btn, Button): btn.render() elif isinstance(btn, str): btn = Button(btn, variant="secondary", size="sm") else: raise ValueError( f"All the _btn parameters must be a gr.Button, string, or None, not {type(btn)}" ) self.buttons.append(btn) # type: ignore with Group(): with Row(): if textbox: textbox.container = False textbox.show_label = False textbox_ = textbox.render() assert isinstance(textbox_, Textbox) self.textbox = textbox_ else: self.textbox = Textbox( container=False, show_label=False, label="Message", placeholder="Type a message...", scale=7, autofocus=autofocus, ) if submit_btn is not None: if isinstance(submit_btn, Button): submit_btn.render() elif isinstance(submit_btn, str): submit_btn = Button( submit_btn, variant="primary", scale=2, min_width=150, ) else: raise ValueError( f"The submit_btn parameter must be a gr.Button, string, or None, not {type(submit_btn)}" ) if stop_btn is not None: if isinstance(stop_btn, Button): stop_btn.visible = False stop_btn.render() elif isinstance(stop_btn, str): stop_btn = Button( stop_btn, variant="stop", visible=False, scale=2, min_width=150, ) else: raise ValueError( f"The stop_btn parameter must be a gr.Button, string, or None, not {type(stop_btn)}" ) self.num_tokens = Textbox( container=False, show_label=False, label="num_tokens", placeholder="0 tokens", scale=1, interactive=False, # autofocus=autofocus, min_width=10 ) self.buttons.extend([submit_btn, stop_btn]) # type: ignore self.fake_api_btn = Button("Fake API", visible=False) self.fake_response_textbox = Textbox(label="Response", visible=False) ( self.retry_btn, self.undo_btn, self.clear_btn, self.submit_btn, self.stop_btn, ) = self.buttons any_unrendered_inputs = any( not inp.is_rendered for inp in self.additional_inputs ) if self.add_multimodal_fn is not None: with Row(): self.multimodal_inputs = self.add_multimodal_fn() if self.additional_inputs and any_unrendered_inputs: with Accordion(**self.additional_inputs_accordion_params): # type: ignore if self.render_additional_inputs_fn is not None: self.render_additional_inputs_fn() else: for input_component in self.additional_inputs: if not input_component.is_rendered: input_component.render() else: if self.additional_inputs and any_unrendered_inputs: with Accordion(**self.additional_inputs_accordion_params): # type: ignore if self.render_additional_inputs_fn is not None: self.render_additional_inputs_fn() else: for input_component in self.additional_inputs: if not input_component.is_rendered: input_component.render() if examples: if self.is_generator: examples_fn = self._examples_stream_fn else: # examples_fn = self._examples_fn raise NotImplementedError(f'Not streaming not impl') self.examples_handler = Examples( examples=examples, inputs=[self.textbox] + self.multimodal_inputs + self.additional_inputs, outputs=self.chatbot, fn=examples_fn, ) # The example caching must happen after the input components have rendered if cache_examples: client_utils.synchronize_async(self.examples_handler.cache) self.saved_input = State() self.chatbot_state = ( State(self.chatbot.value) if self.chatbot.value else State([]) ) self._setup_events() self._setup_api() def _clear_and_save_textbox(self, message: str, *multimodal_inputs) -> tuple[str, str]: saved_input = [message] + list(multimodal_inputs) outputs = [''] + [None] * len(multimodal_inputs) return outputs + [saved_input] def _add_inputs_to_history(self, history: List[List[Union[str, None]]], *args): message = args[0] multimodal_inputs = args[1:1 + len(self.multimodal_inputs)] if len(args) > 1 else None if multimodal_inputs is not None: is_file_exists = [(x is not None and os.path.exists(x)) for x in multimodal_inputs] if any(is_file_exists): file_exists = [f for f, ise in zip(multimodal_inputs, is_file_exists) if ise] if len(file_exists) > 1: raise gr.Error(f"Cannot have more than 1 multimodal input at a time.") fname = file_exists[0] history.append([(fname,), None]) if message is not None and message.strip() != "": history.append([message, None]) return history def _display_input( self, saved_input: List[str], history: List[List[Union[str, None]]] ) -> Tuple[List[List[Union[str, None]]], List[List[list[Union[str, None]]]]]: # message = saved_input[0] # multimodal_inputs = saved_input[1:] if len(saved_input) > 1 else None # # ! If things wrong, return original history and give warning # if multimodal_inputs is not None: # is_file_exists = [(x is not None and os.path.exists(x)) for x in multimodal_inputs] # if any(is_file_exists): # file_exists = [f for f, ise in zip(multimodal_inputs, is_file_exists) if ise] # if len(file_exists) > 1: # raise gr.Error(f"Cannot have more than 1 multimodal input at a time.") # fname = file_exists[0] # history.append([(fname,), None]) # if message is not None and message.strip() != "": # history.append([message, None]) history = self._add_inputs_to_history(history, *saved_input) return history, history def _delete_prev_fn( self, history: list[list[str | None]] ) -> tuple[list[list[str | None]], str, list[list[str | None]]]: try: message, _ = history.pop() except IndexError: message = "" saved_input = [message or ""] + [None] * len(self.multimodal_inputs) return history, saved_input, history def _setup_events(self) -> None: from gradio.components import State has_on = False try: from gradio.events import Dependency, EventListenerMethod, on has_on = True except ImportError as ie: has_on = False submit_fn = self._stream_fn if self.is_generator else self._submit_fn if not self.is_generator: raise NotImplementedError(f'should use generator') if has_on: # new version submit_triggers = ( [self.textbox.submit, self.submit_btn.click] if self.submit_btn else [self.textbox.submit] ) submit_event = ( on( submit_triggers, self._clear_and_save_textbox, [self.textbox] + self.multimodal_inputs, [self.textbox] + self.multimodal_inputs + [self.saved_input], api_name=False, queue=False, ) .then( self._display_input, [self.saved_input, self.chatbot_state], [self.chatbot, self.chatbot_state], api_name=False, queue=False, ) .success( submit_fn, [self.chatbot_state] + self.additional_inputs, [self.chatbot, self.chatbot_state, self.num_tokens], api_name=False, ) ) self._setup_stop_events(submit_triggers, submit_event) else: raise ValueError(f'Better install new gradio version than 3.44.0') if self.retry_btn: retry_event = ( self.retry_btn.click( self._delete_prev_fn, [self.chatbot_state], [self.chatbot, self.saved_input, self.chatbot_state], api_name=False, queue=False, ) .then( self._display_input, [self.saved_input, self.chatbot_state], [self.chatbot, self.chatbot_state], api_name=False, queue=False, ) .success( submit_fn, [self.chatbot_state] + self.additional_inputs, [self.chatbot, self.chatbot_state, self.num_tokens], api_name=False, ) ) self._setup_stop_events([self.retry_btn.click], retry_event) if self.undo_btn: self.undo_btn.click( # self._delete_prev_fn, # [self.chatbot_state], # [self.chatbot, self.saved_input, self.chatbot_state], undo_history_until_last_assistant_turn, [self.chatbot_state], [self.chatbot, self.chatbot_state], api_name=False, queue=False, ) # .then( # lambda x: x, # [self.saved_input], # [self.textbox], # api_name=False, # queue=False, # ) async def _stream_fn( self, # message: str, history_with_input, request: Request, *args, ) -> AsyncGenerator: history = history_with_input[:-1] message = history_with_input[-1][0] inputs, _, _ = special_args( self.fn, inputs=[history_with_input, *args], request=request ) if self.is_async: generator = self.fn(*inputs) else: generator = await anyio.to_thread.run_sync( self.fn, *inputs, limiter=self.limiter ) generator = SyncToAsyncIterator(generator, self.limiter) # ! In case of error, yield the previous history & undo any generation before raising error try: first_response_pack = await async_iteration(generator) if isinstance(first_response_pack, (tuple, list)): first_response, num_tokens = first_response_pack else: first_response, num_tokens = first_response_pack, -1 update = history + [[message, first_response]] yield update, update, f"{num_tokens} toks" except StopIteration: update = history + [[message, None]] yield update, update, "NaN toks" except Exception as e: yield history, history, "NaN toks" raise e try: async for response_pack in generator: if isinstance(response_pack, (tuple, list)): response, num_tokens = response_pack else: response, num_tokens = response_pack, "NaN toks" update = history + [[message, response]] yield update, update, f"{num_tokens} toks" except Exception as e: yield history, history, "NaN toks" raise e async def _examples_stream_fn( self, # message: str, *args, ) -> AsyncGenerator: history = [] input_len = 1 + len(self.multimodal_inputs) saved_input = args[:input_len] message = saved_input[0] additional_inputs = [] if len(args) <= input_len else args[input_len:] history = self._add_inputs_to_history(history, *saved_input) inputs, _, _ = special_args(self.fn, inputs=[history, *additional_inputs], request=None) if self.is_async: generator = self.fn(*inputs) else: generator = await anyio.to_thread.run_sync( self.fn, *inputs, limiter=self.limiter ) generator = SyncToAsyncIterator(generator, self.limiter) # async for response in generator: # yield [[message, response]] try: async for response_pack in generator: if isinstance(response_pack, (tuple, list)): response, num_tokens = response_pack else: response, num_tokens = response_pack, "NaN toks" update = history + [[message, response]] yield update, update, f"{num_tokens} toks" except Exception as e: yield history, history, "NaN toks" raise e async def _examples_fn(self, message: str, *args) -> list[list[str | None]]: raise NotImplementedError inputs, _, _ = special_args(self.fn, inputs=[message, [], *args], request=None) if self.is_async: response = await self.fn(*inputs) else: response = await anyio.to_thread.run_sync( self.fn, *inputs, limiter=self.limiter ) return [[message, response]] def gradio_history_to_openai_conversations(message=None, history=None, system_prompt=None): conversations = [] system_prompt = system_prompt or SYSTEM_PROMPT if history is not None and len(history) > 0: for i, (prompt, res) in enumerate(history): if prompt is not None: conversations.append({"role": "user", "content": prompt.strip()}) if res is not None: conversations.append({"role": "assistant", "content": res.strip()}) if message is not None: if len(message.strip()) == 0: raise gr.Error("The message cannot be empty!") conversations.append({"role": "user", "content": message.strip()}) if conversations[0]['role'] != 'system': conversations = [{"role": "system", "content": system_prompt}] + conversations return conversations def gradio_history_to_conversation_prompt(message=None, history=None, system_prompt=None): global MODEL_ENGINE full_prompt = MODEL_ENGINE.apply_chat_template( gradio_history_to_openai_conversations( message, history=history, system_prompt=system_prompt), add_generation_prompt=True ) return full_prompt def gradio_history_to_vision_conversations_paths( history, system_prompt=None, image_token=None ): image_token = image_token or IMAGE_TOKEN conversations = [] image_paths = [] for i, his in enumerate(history): prompt, response = his last_turn = conversations[-1] if len(conversations) > 0 else None if prompt is not None: if isinstance(prompt, tuple): image_path = prompt[0] if last_turn is not None and last_turn['role'] == 'user': last_turn['content'] += f" {image_token}" else: # last_turn None or last_turn['role'] == 'assistant' conversations.append({ "role": "user", "content": f"{image_token}" }) image_paths.append(image_path) else: assert prompt is not None and isinstance(prompt, str) if last_turn is not None and last_turn['role'] == 'user': last_turn['content'] += f"\n{prompt}" else: conversations.append({ "role": "user", "content": prompt, }) if response is not None: assert isinstance(response, str) conversations.append({ "role": "assistant", "content": response, }) if conversations[0]['role'] != 'system': system_prompt = system_prompt or SYSTEM_PROMPT conversations = [{"role": "system", "content": system_prompt}] + conversations return conversations, image_paths def gradio_history_to_vision_conversation_prompt_paths( history, system_prompt=None, image_token=None ): """ Aggregate gradio history into openai conversations history = [ ["Hello", "Response"], [(file,), None], ] ---> [ {"role": "user", "content": ...} ] """ global MODEL_ENGINE conversations, image_paths = gradio_history_to_vision_conversations_paths( history, system_prompt, image_token ) # print(f'convo: {json.dumps(conversations, indent=4, ensure_ascii=False)}\n{image_paths=}') full_prompt = MODEL_ENGINE.apply_chat_template( conversations, add_generation_prompt=True ) return full_prompt, image_paths, conversations def is_doc(file_path): is_doc_allowed = file_path.endswith((".pdf", ".docx", ".txt")) return is_doc_allowed def read_doc(file_path): from langchain_community.document_loaders import PyPDFLoader, Docx2txtLoader, TextLoader if file_path.endswith('.pdf'): loader = PyPDFLoader(file_path) elif file_path.endswith('.docx'): loader = Docx2txtLoader(file_path) elif file_path.endswith('.txt'): loader = TextLoader(file_path) texts = loader.load() text = "\n\n".join([t.page_content for t in texts]) return text def doc_file_to_instruct_content(file_path, doc_instruction=None): doc_instruction = doc_instruction or DOC_INSTRUCTION content = doc_instruction.strip() + "\n" + DOC_TEMPLATE.format(content=read_doc(file_path)) return content def gradio_history_to_doc_conversation_prompt( history, system_prompt=None, doc_instruction=None, ): """ Aggregate gradio history into openai conversations history = [ ["Hello", "Response"], [(file,), None], ] ---> [ {"role": "user", "content": ...} ] """ global MODEL_ENGINE # image_token = image_token or IMAGE_TOKEN doc_instruction = doc_instruction or DOC_INSTRUCTION conversations = [] image_paths = [] for i, his in enumerate(history): prompt, response = his last_turn = conversations[-1] if len(conversations) > 0 else None if prompt is not None: if isinstance(prompt, tuple): file_path = prompt[0] if not is_doc(file_path): raise gr.Error(f'file not doc {file_path}') content = doc_file_to_instruct_content(file_path, doc_instruction) if last_turn is not None and last_turn['role'] == 'user': last_turn['content'] += f"{content}" else: # last_turn None or last_turn['role'] == 'assistant' conversations.append({ "role": "user", "content": f"{content}" }) else: assert prompt is not None and isinstance(prompt, str) if last_turn is not None and last_turn['role'] == 'user': last_turn['content'] += f"\n{prompt}" else: conversations.append({ "role": "user", "content": prompt, }) if response is not None: assert isinstance(response, str) conversations.append({ "role": "assistant", "content": response, }) if conversations[0]['role'] != 'system': system_prompt = system_prompt or SYSTEM_PROMPT conversations = [{"role": "system", "content": system_prompt}] + conversations full_prompt = MODEL_ENGINE.apply_chat_template( conversations, add_generation_prompt=True ) return full_prompt, conversations def gradio_history_to_vision_doc_conversation_prompt_paths( history, system_prompt=None, image_token=None, doc_instruction=None, ): """ Aggregate gradio history into openai conversations history = [ ["Hello", "Response"], [(file,), None], ] ---> [ {"role": "user", "content": ...} ] """ global MODEL_ENGINE image_token = image_token or IMAGE_TOKEN doc_instruction = doc_instruction or DOC_INSTRUCTION conversations = [] image_paths = [] for i, his in enumerate(history): prompt, response = his last_turn = conversations[-1] if len(conversations) > 0 else None if prompt is not None: if isinstance(prompt, tuple): file_path = prompt[0] if is_doc(file_path): content = doc_file_to_instruct_content(file_path, doc_instruction) if last_turn is not None and last_turn['role'] == 'user': last_turn['content'] += f"{content}" else: # last_turn None or last_turn['role'] == 'assistant' conversations.append({ "role": "user", "content": f"{content}" }) else: if last_turn is not None and last_turn['role'] == 'user': last_turn['content'] += f" {image_token}" else: # last_turn None or last_turn['role'] == 'assistant' conversations.append({ "role": "user", "content": f"{image_token}" }) image_paths.append(file_path) else: assert prompt is not None and isinstance(prompt, str) if last_turn is not None and last_turn['role'] == 'user': last_turn['content'] += f"\n{prompt}" else: conversations.append({ "role": "user", "content": prompt, }) if response is not None: assert isinstance(response, str) conversations.append({ "role": "assistant", "content": response, }) if conversations[0]['role'] != 'system': system_prompt = system_prompt or SYSTEM_PROMPT conversations = [{"role": "system", "content": system_prompt}] + conversations full_prompt = MODEL_ENGINE.apply_chat_template( conversations, add_generation_prompt=True ) return full_prompt, image_paths, conversations def vision_chat_response_stream_multiturn_engine( history: List[Tuple[str, str]], temperature: float, max_tokens: int, system_prompt: Optional[str] = SYSTEM_PROMPT, image_token: Optional[str] = IMAGE_TOKEN, ): global MODEL_ENGINE temperature = float(temperature) # ! remove frequency_penalty # frequency_penalty = float(frequency_penalty) max_tokens = int(max_tokens) # ! skip safety if DATETIME_FORMAT in system_prompt: # ! This sometime works sometimes dont system_prompt = system_prompt.format(cur_datetime=get_datetime_string()) # ! history now can have multimodal full_prompt, image_paths, conversations = gradio_history_to_vision_conversation_prompt_paths( history=history, system_prompt=system_prompt, image_token=image_token ) if hasattr(MODEL_ENGINE, "get_multimodal_tokens"): num_tokens = MODEL_ENGINE.get_multimodal_tokens(full_prompt, image_paths=image_paths) else: num_tokens = len(MODEL_ENGINE.tokenizer.encode(full_prompt)) if num_tokens >= MODEL_ENGINE.max_position_embeddings - 128: raise gr.Error(f"Conversation or prompt is too long ({num_tokens} toks), please clear the chatbox or try shorter input.") print(f'{image_paths=}') print(full_prompt) outputs = None response = None num_tokens = -1 for j, outputs in enumerate(MODEL_ENGINE.generate_yield_string( prompt=full_prompt, temperature=temperature, max_tokens=max_tokens, image_paths=image_paths, )): if isinstance(outputs, tuple): response, num_tokens = outputs else: response, num_tokens = outputs, -1 yield response, num_tokens print(format_conversation(history + [[None, response]])) if response is not None: yield response, num_tokens def doc_chat_response_stream_multiturn_engine( history: List[Tuple[str, str]], temperature: float, max_tokens: int, system_prompt: Optional[str] = SYSTEM_PROMPT, doc_instruction: Optional[str] = DOC_INSTRUCTION, ): global MODEL_ENGINE temperature = float(temperature) # ! remove frequency_penalty # frequency_penalty = float(frequency_penalty) max_tokens = int(max_tokens) # ! skip safety if DATETIME_FORMAT in system_prompt: # ! This sometime works sometimes dont system_prompt = system_prompt.format(cur_datetime=get_datetime_string()) # ! history now can have multimodal full_prompt, conversations = gradio_history_to_doc_conversation_prompt( history=history, system_prompt=system_prompt, doc_instruction=doc_instruction ) # ! length checked num_tokens = len(MODEL_ENGINE.tokenizer.encode(full_prompt)) if num_tokens >= MODEL_ENGINE.max_position_embeddings - 128: raise gr.Error(f"Conversation or prompt is too long ({num_tokens} toks), please clear the chatbox or try shorter input.") print(full_prompt) outputs = None response = None num_tokens = -1 for j, outputs in enumerate(MODEL_ENGINE.generate_yield_string( prompt=full_prompt, temperature=temperature, max_tokens=max_tokens, # image_paths=image_paths, )): if isinstance(outputs, tuple): response, num_tokens = outputs else: response, num_tokens = outputs, -1 yield response, num_tokens print(format_conversation(history + [[None, response]])) if response is not None: yield response, num_tokens def vision_doc_chat_response_stream_multiturn_engine( history: List[Tuple[str, str]], temperature: float, max_tokens: int, system_prompt: Optional[str] = SYSTEM_PROMPT, image_token: Optional[str] = IMAGE_TOKEN, doc_instruction: Optional[str] = DOC_INSTRUCTION, ): global MODEL_ENGINE temperature = float(temperature) # ! remove frequency_penalty # frequency_penalty = float(frequency_penalty) max_tokens = int(max_tokens) # ! skip safety if DATETIME_FORMAT in system_prompt: # ! This sometime works sometimes dont system_prompt = system_prompt.format(cur_datetime=get_datetime_string()) # ! history now can have multimodal full_prompt, image_paths, conversations = gradio_history_to_vision_doc_conversation_prompt_paths( history=history, system_prompt=system_prompt, image_token=image_token, doc_instruction=doc_instruction ) # ! length check if hasattr(MODEL_ENGINE, "get_multimodal_tokens"): num_tokens = MODEL_ENGINE.get_multimodal_tokens(full_prompt, image_paths=image_paths) else: num_tokens = len(MODEL_ENGINE.tokenizer.encode(full_prompt)) if num_tokens >= MODEL_ENGINE.max_position_embeddings - 128: raise gr.Error(f"Conversation or prompt is too long ({num_tokens} toks), please clear the chatbox or try shorter input.") print(full_prompt) print(f'{image_paths=}') outputs = None response = None num_tokens = -1 for j, outputs in enumerate(MODEL_ENGINE.generate_yield_string( prompt=full_prompt, temperature=temperature, max_tokens=max_tokens, image_paths=image_paths, )): if isinstance(outputs, tuple): response, num_tokens = outputs else: response, num_tokens = outputs, -1 yield response, num_tokens print(format_conversation(history + [[None, response]])) if response is not None: yield response, num_tokens @register_demo class VisionChatInterfaceDemo(ChatInterfaceDemo): """ Accept vision image """ @property def tab_name(self): return "Vision Chat" @property def examples(self): return [ ["What's strange about this image?", "assets/dog_monalisa.jpeg",], ["Explain why the sky is blue.", None,], ] def create_demo( self, title: str | None = None, description: str | None = None, **kwargs ) -> gr.Blocks: system_prompt = kwargs.get("system_prompt", SYSTEM_PROMPT) max_tokens = kwargs.get("max_tokens", MAX_TOKENS) temperature = kwargs.get("temperature", TEMPERATURE) model_name = kwargs.get("model_name", MODEL_NAME) description = description or """Upload an image to ask question about it.""" def add_multimodal_fn() -> List[Component]: image_input = gr.Image(label="Input Image", type="filepath", ) return [image_input] additional_inputs = [ gr.Number(value=temperature, label='Temperature', min_width=20), gr.Number(value=max_tokens, label='Max-tokens', min_width=20), gr.Textbox(value=system_prompt, label='System prompt', lines=1), gr.Textbox(value=IMAGE_TOKEN, label='Visual token', lines=1, interactive=IMAGE_TOKEN_INTERACTIVE, min_width=20), ] def render_additional_inputs_fn(): with Row(): additional_inputs[0].render() additional_inputs[1].render() additional_inputs[3].render() additional_inputs[2].render() demo_chat = MultiModalChatInterface( vision_chat_response_stream_multiturn_engine, chatbot=gr.Chatbot( label=model_name, bubble_full_width=False, latex_delimiters=[ { "left": "$", "right": "$", "display": False}, { "left": "$$", "right": "$$", "display": True}, ], show_copy_button=True, layout="panel" if USE_PANEL else "bubble", height=CHATBOT_HEIGHT, ), # textbox=gr.Textbox(placeholder='Type message', lines=4, max_lines=128, min_width=200), textbox=gr.Textbox(placeholder='Type message', lines=1, max_lines=128, min_width=200, scale=8), submit_btn=gr.Button(value='Submit', variant="primary", scale=0), # ! consider preventing the stop button # stop_btn=None, add_multimodal_fn=add_multimodal_fn, title=title, description=description, additional_inputs=additional_inputs, render_additional_inputs_fn=render_additional_inputs_fn, additional_inputs_accordion=gr.Accordion("Additional Inputs", open=True), examples=self.examples, cache_examples=False, css=CSS, ) return demo_chat def add_document_upload(): file_input = gr.File(label='Upload pdf, docx, txt', file_count='single', file_types=['pdf', 'docx', 'txt']) # with Group(): # file_input = gr.Textbox(value=None, label='Document path', lines=1, interactive=False) # upload_button = gr.UploadButton("Click to Upload document", file_types=['pdf', 'docx', 'txt'], file_count="single") # upload_button.upload(lambda x: x.name, upload_button, file_input) return file_input @register_demo class DocChatInterfaceDemo(ChatInterfaceDemo): """ Accept document (full length no RAG) """ @property def tab_name(self): return "Doc Chat" @property def examples(self): return [ ["Summarize the document", "assets/attention_short.pdf",], ["Explain why the sky is blue.", None,], ] def create_demo( self, title: str | None = None, description: str | None = None, **kwargs ) -> gr.Blocks: system_prompt = kwargs.get("system_prompt", SYSTEM_PROMPT) max_tokens = kwargs.get("max_tokens", MAX_TOKENS) temperature = kwargs.get("temperature", TEMPERATURE) model_name = kwargs.get("model_name", MODEL_NAME) # frequence_penalty = FREQUENCE_PENALTY # presence_penalty = PRESENCE_PENALTY description = description or """Upload a short document to ask question about it.""" def add_multimodal_fn() -> List[Component]: file_input = add_document_upload() # image_input = gr.Image(label="Input Image", type="filepath", ) return [file_input] additional_inputs = [ gr.Number(value=temperature, label='Temperature', min_width=20), gr.Number(value=max_tokens, label='Max-tokens', min_width=20), gr.Textbox(value=system_prompt, label='System prompt', lines=1), gr.Textbox(value=DOC_INSTRUCTION, label='Doc instruction', lines=1), ] def render_additional_inputs_fn(): with Row(): additional_inputs[0].render() additional_inputs[1].render() additional_inputs[2].render() additional_inputs[3].render() demo_chat = MultiModalChatInterface( doc_chat_response_stream_multiturn_engine, chatbot=gr.Chatbot( label=model_name, bubble_full_width=False, latex_delimiters=[ { "left": "$", "right": "$", "display": False}, { "left": "$$", "right": "$$", "display": True}, ], show_copy_button=True, layout="panel" if USE_PANEL else "bubble", height=CHATBOT_HEIGHT, ), textbox=gr.Textbox(placeholder='Type message', lines=1, max_lines=128, min_width=200, scale=8), submit_btn=gr.Button(value='Submit', variant="primary", scale=0), # ! consider preventing the stop button add_multimodal_fn=add_multimodal_fn, title=title, description=description, additional_inputs=additional_inputs, render_additional_inputs_fn=render_additional_inputs_fn, additional_inputs_accordion=gr.Accordion("Additional Inputs", open=True), examples=self.examples, cache_examples=False, css=CSS, ) return demo_chat @register_demo class VisionDocChatInterfaceDemo(ChatInterfaceDemo): """ Accept either vision image or document (full length no RAG) """ @property def tab_name(self): return "Vision Doc Chat" @property def examples(self): return [ ["What's strange about this image?", None, "assets/dog_monalisa.jpeg",], ["Summarize the document", "assets/attention_short.pdf", None,], ["Explain why the sky is blue.", None, None], ] def create_demo( self, title: str | None = None, description: str | None = None, **kwargs ) -> gr.Blocks: system_prompt = kwargs.get("system_prompt", SYSTEM_PROMPT) max_tokens = kwargs.get("max_tokens", MAX_TOKENS) temperature = kwargs.get("temperature", TEMPERATURE) model_name = kwargs.get("model_name", MODEL_NAME) # frequence_penalty = FREQUENCE_PENALTY # presence_penalty = PRESENCE_PENALTY description = description or """Upload either an image or short document to ask question about it.""" def add_multimodal_fn() -> List[Component]: file_input = add_document_upload() image_input = gr.Image(label="Input Image", type="filepath", ) return [file_input, image_input] additional_inputs = [ gr.Number(value=temperature, label='Temperature', min_width=20), gr.Number(value=max_tokens, label='Max-tokens', min_width=20), gr.Textbox(value=system_prompt, label='System prompt', lines=1), gr.Textbox(value=IMAGE_TOKEN, label='Visual token', lines=1, interactive=IMAGE_TOKEN_INTERACTIVE, min_width=2), gr.Textbox(value=DOC_INSTRUCTION, label='Doc instruction', lines=1), ] def render_additional_inputs_fn(): with Row(): additional_inputs[0].render() additional_inputs[1].render() additional_inputs[3].render() additional_inputs[2].render() additional_inputs[4].render() demo_chat = MultiModalChatInterface( vision_doc_chat_response_stream_multiturn_engine, chatbot=gr.Chatbot( label=MODEL_NAME, bubble_full_width=False, latex_delimiters=[ { "left": "$", "right": "$", "display": False}, { "left": "$$", "right": "$$", "display": True}, ], show_copy_button=True, layout="panel" if USE_PANEL else "bubble", height=CHATBOT_HEIGHT, ), textbox=gr.Textbox(placeholder='Type message', lines=1, max_lines=128, min_width=200, scale=8), submit_btn=gr.Button(value='Submit', variant="primary", scale=0), add_multimodal_fn=add_multimodal_fn, title=title, description=description, additional_inputs=additional_inputs, render_additional_inputs_fn=render_additional_inputs_fn, additional_inputs_accordion=gr.Accordion("Additional Inputs", open=True), examples=self.examples, cache_examples=False, css=CSS, ) return demo_chat