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import json |
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import os |
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from typing import TYPE_CHECKING, Any, Dict, Generator, List, Optional, Sequence, Tuple |
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from ..chat import ChatModel |
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from ..data import Role |
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from ..extras.constants import PEFT_METHODS |
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from ..extras.misc import torch_gc |
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from ..extras.packages import is_gradio_available |
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from .common import QUANTIZATION_BITS, get_save_dir |
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from .locales import ALERTS |
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if TYPE_CHECKING: |
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from ..chat import BaseEngine |
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from .manager import Manager |
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if is_gradio_available(): |
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import gradio as gr |
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class WebChatModel(ChatModel): |
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def __init__(self, manager: "Manager", demo_mode: bool = False, lazy_init: bool = True) -> None: |
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self.manager = manager |
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self.demo_mode = demo_mode |
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self.engine: Optional["BaseEngine"] = None |
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if not lazy_init: |
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super().__init__() |
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if demo_mode and os.environ.get("DEMO_MODEL") and os.environ.get("DEMO_TEMPLATE"): |
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model_name_or_path = os.environ.get("DEMO_MODEL") |
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template = os.environ.get("DEMO_TEMPLATE") |
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infer_backend = os.environ.get("DEMO_BACKEND", "huggingface") |
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super().__init__( |
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dict(model_name_or_path=model_name_or_path, template=template, infer_backend=infer_backend) |
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) |
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@property |
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def loaded(self) -> bool: |
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return self.engine is not None |
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def load_model(self, data) -> Generator[str, None, None]: |
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get = lambda elem_id: data[self.manager.get_elem_by_id(elem_id)] |
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lang, model_name, model_path = get("top.lang"), get("top.model_name"), get("top.model_path") |
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finetuning_type, checkpoint_path = get("top.finetuning_type"), get("top.checkpoint_path") |
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error = "" |
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if self.loaded: |
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error = ALERTS["err_exists"][lang] |
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elif not model_name: |
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error = ALERTS["err_no_model"][lang] |
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elif not model_path: |
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error = ALERTS["err_no_path"][lang] |
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elif self.demo_mode: |
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error = ALERTS["err_demo"][lang] |
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if error: |
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gr.Warning(error) |
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yield error |
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return |
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if get("top.quantization_bit") in QUANTIZATION_BITS: |
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quantization_bit = int(get("top.quantization_bit")) |
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else: |
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quantization_bit = None |
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yield ALERTS["info_loading"][lang] |
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args = dict( |
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model_name_or_path=model_path, |
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finetuning_type=finetuning_type, |
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quantization_bit=quantization_bit, |
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quantization_method=get("top.quantization_method"), |
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template=get("top.template"), |
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flash_attn="fa2" if get("top.booster") == "flashattn2" else "auto", |
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use_unsloth=(get("top.booster") == "unsloth"), |
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rope_scaling=get("top.rope_scaling") if get("top.rope_scaling") in ["linear", "dynamic"] else None, |
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infer_backend=get("infer.infer_backend"), |
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infer_dtype=get("infer.infer_dtype"), |
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) |
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if checkpoint_path: |
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if finetuning_type in PEFT_METHODS: |
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args["adapter_name_or_path"] = ",".join( |
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[get_save_dir(model_name, finetuning_type, adapter) for adapter in checkpoint_path] |
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) |
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else: |
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args["model_name_or_path"] = get_save_dir(model_name, finetuning_type, checkpoint_path) |
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super().__init__(args) |
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yield ALERTS["info_loaded"][lang] |
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def unload_model(self, data) -> Generator[str, None, None]: |
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lang = data[self.manager.get_elem_by_id("top.lang")] |
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if self.demo_mode: |
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gr.Warning(ALERTS["err_demo"][lang]) |
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yield ALERTS["err_demo"][lang] |
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return |
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yield ALERTS["info_unloading"][lang] |
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self.engine = None |
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torch_gc() |
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yield ALERTS["info_unloaded"][lang] |
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def append( |
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self, |
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chatbot: List[List[Optional[str]]], |
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messages: Sequence[Dict[str, str]], |
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role: str, |
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query: str, |
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) -> Tuple[List[List[Optional[str]]], List[Dict[str, str]], str]: |
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return chatbot + [[query, None]], messages + [{"role": role, "content": query}], "" |
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def stream( |
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self, |
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chatbot: List[List[Optional[str]]], |
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messages: Sequence[Dict[str, str]], |
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system: str, |
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tools: str, |
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image: Optional[Any], |
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video: Optional[Any], |
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max_new_tokens: int, |
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top_p: float, |
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temperature: float, |
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) -> Generator[Tuple[List[List[Optional[str]]], List[Dict[str, str]]], None, None]: |
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chatbot[-1][1] = "" |
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response = "" |
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for new_text in self.stream_chat( |
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messages, system, tools, image, video, max_new_tokens=max_new_tokens, top_p=top_p, temperature=temperature |
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): |
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response += new_text |
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if tools: |
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result = self.engine.template.extract_tool(response) |
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else: |
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result = response |
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if isinstance(result, list): |
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tool_calls = [{"name": tool[0], "arguments": json.loads(tool[1])} for tool in result] |
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tool_calls = json.dumps(tool_calls, indent=4, ensure_ascii=False) |
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output_messages = messages + [{"role": Role.FUNCTION.value, "content": tool_calls}] |
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bot_text = "```json\n" + tool_calls + "\n```" |
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else: |
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output_messages = messages + [{"role": Role.ASSISTANT.value, "content": result}] |
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bot_text = result |
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chatbot[-1][1] = bot_text |
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yield chatbot, output_messages |
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