# from pathlib import Path # from typing import List, Optional, Tuple # import spaces # import gradio as gr # import numpy as np # import torch # from sudachipy import dictionary # from sudachipy import tokenizer as sudachi_tokenizer # from transformers import AutoModelForCausalLM, PreTrainedTokenizer, T5Tokenizer # model_dir = Path(__file__).parents[0] / "model" # device = torch.device("cuda:0") if torch.cuda.is_available() else torch.device("cpu") # tokenizer = T5Tokenizer.from_pretrained(model_dir) # tokenizer.do_lower_case = True # trained_model = AutoModelForCausalLM.from_pretrained(model_dir) # trained_model.to(device) # # baseline model # baseline_model = AutoModelForCausalLM.from_pretrained("rinna/japanese-gpt2-medium") # baseline_model.to(device) # sudachi_tokenizer_obj = dictionary.Dictionary().create() # mode = sudachi_tokenizer.Tokenizer.SplitMode.C # def sudachi_tokenize(input_text: str) -> List[str]: # morphemes = sudachi_tokenizer_obj.tokenize(input_text, mode) # return [morpheme.surface() for morpheme in morphemes] # def calc_offsets(tokens: List[str]) -> List[int]: # offsets = [0] # for token in tokens: # offsets.append(offsets[-1] + len(token)) # return offsets # def distribute_surprisals_to_characters( # tokens2surprisal: List[Tuple[str, float]] # ) -> List[Tuple[str, float]]: # tokens2surprisal_by_character: List[Tuple[str, float]] = [] # for token, surprisal in tokens2surprisal: # token_len = len(token) # for character in token: # tokens2surprisal_by_character.append((character, surprisal / token_len)) # return tokens2surprisal_by_character # def calculate_surprisals_by_character( # input_text: str, model: AutoModelForCausalLM, tokenizer: PreTrainedTokenizer # ) -> Tuple[float, List[Tuple[str, float]]]: # input_tokens = [ # token.replace("▁", "") # for token in tokenizer.tokenize(input_text) # if token != "▁" # ] # input_ids = tokenizer.encode( # "" + input_text, add_special_tokens=False, return_tensors="pt" # ).to(device) # logits = model(input_ids)["logits"].squeeze(0) # surprisals = [] # for i in range(logits.shape[0] - 1): # if input_ids[0][i + 1] == 9: # continue # logit = logits[i] # prob = torch.softmax(logit, dim=0) # neg_logprob = -torch.log(prob) # surprisals.append(neg_logprob[input_ids[0][i + 1]].item()) # mean_surprisal = np.mean(surprisals) # tokens2surprisal: List[Tuple[str, float]] = [] # for token, surprisal in zip(input_tokens, surprisals): # tokens2surprisal.append((token, surprisal)) # char2surprisal = distribute_surprisals_to_characters(tokens2surprisal) # return mean_surprisal, char2surprisal # def aggregate_surprisals_by_offset( # char2surprisal: List[Tuple[str, float]], offsets: List[int] # ) -> List[Tuple[str, float]]: # tokens2surprisal = [] # for i in range(len(offsets) - 1): # start = offsets[i] # end = offsets[i + 1] # surprisal = sum([surprisal for _, surprisal in char2surprisal[start:end]]) # token = "".join([char for char, _ in char2surprisal[start:end]]) # tokens2surprisal.append((token, surprisal)) # return tokens2surprisal # def highlight_token(token: str, score: float): # if score > 0: # html_color = "#%02X%02X%02X" % ( # 255, # int(255 * (1 - score)), # int(255 * (1 - score)), # ) # else: # html_color = "#%02X%02X%02X" % ( # int(255 * (1 + score)), # 255, # int(255 * (1 + score)), # ) # return '{}'.format( # html_color, token # ) # def create_highlighted_text( # label: str, # tokens2scores: List[Tuple[str, float]], # mean_surprisal: Optional[float] = None, # ): # if mean_surprisal is None: # highlighted_text = "

" + label + "

" # else: # highlighted_text = ( # "

" + label + f"(サプライザル平均値: {mean_surprisal:.3f})

" # ) # for token, score in tokens2scores: # highlighted_text += highlight_token(token, score) # return highlighted_text # def normalize_surprisals( # tokens2surprisal: List[Tuple[str, float]], log_scale: bool = False # ) -> List[Tuple[str, float]]: # if log_scale: # surprisals = [np.log(surprisal) for _, surprisal in tokens2surprisal] # else: # surprisals = [surprisal for _, surprisal in tokens2surprisal] # min_surprisal = np.min(surprisals) # max_surprisal = np.max(surprisals) # surprisals = [ # (surprisal - min_surprisal) / (max_surprisal - min_surprisal) # for surprisal in surprisals # ] # assert min(surprisals) >= 0 # assert max(surprisals) <= 1 # return [ # (token, surprisal) # for (token, _), surprisal in zip(tokens2surprisal, surprisals) # ] # def calculate_surprisal_diff( # tokens2surprisal: List[Tuple[str, float]], # baseline_tokens2surprisal: List[Tuple[str, float]], # scale: float = 100.0, # ): # diff_tokens2surprisal = [ # (token, (surprisal - baseline_surprisal) * 100) # for (token, surprisal), (_, baseline_surprisal) in zip( # tokens2surprisal, baseline_tokens2surprisal # ) # ] # return diff_tokens2surprisal # @spaces.GPU # def main(input_text: str) -> Tuple[str, str, str]: # mean_surprisal, char2surprisal = calculate_surprisals_by_character( # input_text, trained_model, tokenizer # ) # offsets = calc_offsets(sudachi_tokenize(input_text)) # tokens2surprisal = aggregate_surprisals_by_offset(char2surprisal, offsets) # tokens2surprisal = normalize_surprisals(tokens2surprisal) # highlighted_text = create_highlighted_text( # "学習後モデル", tokens2surprisal, mean_surprisal # ) # ( # baseline_mean_surprisal, # baseline_char2surprisal, # ) = calculate_surprisals_by_character(input_text, baseline_model, tokenizer) # baseline_tokens2surprisal = aggregate_surprisals_by_offset( # baseline_char2surprisal, offsets # ) # baseline_tokens2surprisal = normalize_surprisals(baseline_tokens2surprisal) # baseline_highlighted_text = create_highlighted_text( # "学習前モデル", baseline_tokens2surprisal, baseline_mean_surprisal # ) # diff_tokens2surprisal = calculate_surprisal_diff( # tokens2surprisal, baseline_tokens2surprisal, 100.0 # ) # diff_highlighted_text = create_highlighted_text( # "学習前後の差分", diff_tokens2surprisal, None # ) # return ( # baseline_highlighted_text, # highlighted_text, # diff_highlighted_text, # ) # if __name__ == "__main__": # demo = gr.Interface( # fn=main, # title="文章の読みやすさを自動評価するAI", # description="文章を入力すると、読みづらい表現は赤く、読みやすい表現は青くハイライトされて出力されます。", # # show_label=True, # inputs=gr.Textbox( # lines=5, # label="文章", # placeholder="ここに文章を入力してください。", # ), # outputs=[ # gr.HTML(label="学習前モデル", show_label=True), # gr.HTML(label="学習後モデル", show_label=True), # gr.HTML(label="学習前後の差分", show_label=True), # ], # examples=[ # "太郎が二郎を殴った。", # "太郎が二郎に殴った。", # "サイエンスインパクトラボは、国立研究開発法人科学技術振興機構(JST)の「科学と社会」推進部が行う共創プログラムです。「先端の研究開発を行う研究者」と「社会課題解決に取り組むプレイヤー」が約3ヶ月に渡って共創活動を行います。", # "近年、ニューラル言語モデルが自然言語の統語知識をどれほど有しているかを、容認性判断課題を通して検証する研究が行われてきている。しかし、このような言語モデルの統語的評価を行うためのデータセットは、主に英語を中心とした欧米の諸言語を対象に構築されてきた。本研究では、既存のデータセットの問題点を克服しつつ、このようなデータセットが構築されてこなかった日本語を対象とした初めてのデータセットである JCoLA (JapaneseCorpus of Linguistic Acceptability) を構築した上で、それを用いた言語モデルの統語的評価を行った。", # ], # ) # demo.launch() import os import pickle as pkl from pathlib import Path from threading import Thread from typing import List, Optional, Tuple, Iterator import spaces import gradio as gr import numpy as np import torch from transformers import AutoModelForCausalLM, AutoTokenizer, TextIteratorStreamer MAX_MAX_NEW_TOKENS = 2048 DEFAULT_MAX_NEW_TOKENS = 1024 MAX_INPUT_TOKEN_LENGTH = int(os.getenv("MAX_INPUT_TOKEN_LENGTH", "4096")) DESCRIPTION = """\ # Llama-2 7B Chat with Streamable Semantic Uncertainty Probe This Space demonstrates the Llama-2-7b-chat model with an added semantic uncertainty probe. The highlighted text shows the model's uncertainty in real-time, with more intense yellow indicating higher uncertainty. """ if torch.cuda.is_available(): model_id = "meta-llama/Llama-2-7b-chat-hf" # TODO load the full model? model = AutoModelForCausalLM.from_pretrained(model_id, device_map="auto", load_in_8bit=True) tokenizer = AutoTokenizer.from_pretrained(model_id) tokenizer.use_default_system_prompt = False # load the probe data # TODO load accuracy and SE probe and compare in different tabs with open("./model/20240625-131035_demo.pkl", "rb") as f: probe_data = pkl.load(f) # take the NQ open one probe_data = probe_data[-2] probe = probe_data['t_bmodel'] layer_range = probe_data['sep_layer_range'] acc_probe = probe_data['t_amodel'] acc_layer_range = probe_data['ap_layer_range'] @spaces.GPU def generate( message: str, chat_history: List[Tuple[str, str]], system_prompt: str, max_new_tokens: int = DEFAULT_MAX_NEW_TOKENS, temperature: float = 0.6, top_p: float = 0.9, top_k: int = 50, repetition_penalty: float = 1.2, ) -> Iterator[str]: conversation = [] if system_prompt: conversation.append({"role": "system", "content": system_prompt}) for user, assistant in chat_history: conversation.extend([{"role": "user", "content": user}, {"role": "assistant", "content": assistant}]) conversation.append({"role": "user", "content": message}) input_ids = tokenizer.apply_chat_template(conversation, return_tensors="pt") if input_ids.shape[1] > MAX_INPUT_TOKEN_LENGTH: input_ids = input_ids[:, -MAX_INPUT_TOKEN_LENGTH:] gr.Warning(f"Trimmed input from conversation as it was longer than {MAX_INPUT_TOKEN_LENGTH} tokens.") input_ids = input_ids.to(model.device) streamer = TextIteratorStreamer(tokenizer, timeout=10.0, skip_prompt=True, skip_special_tokens=True) generation_kwargs = dict( input_ids=input_ids, max_new_tokens=max_new_tokens, do_sample=True, top_p=top_p, top_k=top_k, temperature=temperature, repetition_penalty=repetition_penalty, streamer=streamer, output_hidden_states=True, return_dict_in_generate=True, ) # Generate without threading with torch.no_grad(): outputs = model.generate(**generation_kwargs) print(outputs.sequences.shape, input_ids.shape) generated_tokens = outputs.sequences[0, input_ids.shape[1]:] print("Generated tokens:", generated_tokens, generated_tokens.shape) generated_text = tokenizer.decode(generated_tokens, skip_special_tokens=True) print("Generated text:", generated_text) # hidden states hidden = outputs.hidden_states # list of tensors, one for each token, then (batch size, sequence length, hidden size) print(len(hidden)) print(len(hidden[1])) # layers print(hidden[1][0].shape) # (sequence length, hidden size) # stack token embeddings # TODO do this loop on the fly instead of waiting for the whole generation highlighted_text = "" for i in range(1, len(hidden)): token_embeddings = torch.stack([generated_token[0, 0, :].cpu() for generated_token in hidden[i]]) # (num_layers, hidden_size) # print(token_embeddings.shape) # probe the model # print(token_embeddings.numpy()[layer_range].shape) concat_layers = token_embeddings.numpy()[layer_range[0]:layer_range[1]].reshape(-1) # (num_layers * hidden_size) # print(concat_layers.shape) # or prob? probe_pred = probe.predict_log_proba(concat_layers.reshape(1, -1))[0][1] # prob of high SE # print(probe_pred.shape, probe_pred) # decode one token at a time output_id = outputs.sequences[0, input_ids.shape[1]+i] print(output_id, output_word, probe_pred) output_word = tokenizer.decode(output_id) new_highlighted_text = highlight_text(output_word, probe_pred) highlighted_text += new_highlighted_text yield highlighted_text def highlight_text(text: str, uncertainty_score: float) -> str: if uncertainty_score > 0: html_color = "#%02X%02X%02X" % ( 255, int(255 * (1 - uncertainty_score)), int(255 * (1 - uncertainty_score)), ) else: html_color = "#%02X%02X%02X" % ( int(255 * (1 + uncertainty_score)), 255, int(255 * (1 + uncertainty_score)), ) return '{}'.format( html_color, text ) chat_interface = gr.ChatInterface( fn=generate, additional_inputs=[ gr.Textbox(label="System prompt", lines=6), gr.Slider( label="Max new tokens", minimum=1, maximum=MAX_MAX_NEW_TOKENS, step=1, value=DEFAULT_MAX_NEW_TOKENS, ), gr.Slider( label="Temperature", minimum=0.1, maximum=4.0, step=0.1, value=0.6, ), gr.Slider( label="Top-p (nucleus sampling)", minimum=0.05, maximum=1.0, step=0.05, value=0.9, ), gr.Slider( label="Top-k", minimum=1, maximum=1000, step=1, value=50, ), gr.Slider( label="Repetition penalty", minimum=1.0, maximum=2.0, step=0.05, value=1.2, ), ], stop_btn=None, examples=[ ["What is the capital of France?"], ["Explain the theory of relativity in simple terms."], ["Write a short poem about artificial intelligence."] ], title="Llama-2 7B Chat with Streamable Semantic Uncertainty Probe", description=DESCRIPTION, ) if __name__ == "__main__": chat_interface.launch()