from model import TransClassifier from transformers import AutoTokenizer from data_process import extract_json_data, Formatter, load_data_from_dict import torch import json from typing import Dict, List, Optional import os import warnings warnings.filterwarnings("ignore") valid_keys = [ "Core_Fear_Source", "Pain_Threshold", "Time_Window_Pressure", "Helplessness_Index", "Social_Shame", "Payer_Decision_Maker", "Hidden_Wealth_Proof", "Price_Sensitivity", "Sunk_Cost", "Compensatory_Spending", "Trust_Deficit", "Secret_Resistance", "Family_Sabotage", "Low_Self_Efficacy", "Attribution_Barrier", "Emotional_Trigger", "Ultimatum_Event", "Expectation_Bonus", "Competitor_Mindset", "Cognitive_Stage", "Last_Interaction", "Referral_Potential" ] ch_valid_keys = [ "核心恐惧源", "疼痛阈值", "时间窗口压力", "无助指数", "社会羞耻感", "付款决策者", "隐藏财富证明", "价格敏感度", "沉没成本", "补偿性消费", "信任赤字", "秘密抵触情绪", "家庭破坏", "低自我效能感", "归因障碍", "情绪触发点", "最后通牒事件", "期望加成", "竞争者心态", "认知阶段", "最后互动时间", "推荐潜力" ] all_keys = valid_keys + ["session_id", "label"] en2ch = {en:ch for en, ch in zip(valid_keys, ch_valid_keys)} d1_keys = valid_keys[:5] d2_keys = valid_keys[5:10] d3_keys = valid_keys[10:15] d4_keys = valid_keys[15:19] d5_keys = valid_keys[19:22] class InferenceEngine: def __init__(self, backbone_dir: str, ckpt_path: str = "best_ckpt.pth", device: str = "cuda"): self.backbone_dir = backbone_dir self.ckpt_path = ckpt_path self.device = device # 加载 tokenizer self.tokenizer = AutoTokenizer.from_pretrained(backbone_dir) print(f"Tokenizer loaded from {backbone_dir}") # 加载模型 self.model = TransClassifier(backbone_dir, 2, device) self.model.to(device) if self.ckpt_path: self.model.load_state_dict(torch.load(ckpt_path, map_location=device)) print(f"Model loaded from {ckpt_path}") else: print("Warning: No checkpoint path provided. Using untrained model.") self.model.eval() print("Inference engine initialized successfully.") self.formatter = Formatter(en2ch) def inference_batch(self, json_list: List[str]) -> dict: """ 批量推理函数,输入为 JSON 字符串列表,输出为包含转换概率的字典列表。为防止OOM,列表最大长度为8。 请注意Json文件中的词条数必须大于等于5. """ assert len(json_list) <= 8, "单次输入json文件数量不可超过8。" id2feature = extract_json_data(json_files=json_list, threshold=5) message_list = [] for id, feature in id2feature.items(): messages = self.formatter.get_llm_prompt(feature) message_list.append(messages) inputs = self.tokenizer.apply_chat_template(message_list, tokenize=False, add_generation_prompt=True, enable_thinking=False) model_inputs = self.tokenizer( inputs, padding=True, truncation=True, max_length=2048, return_tensors="pt" ).to(self.device) with torch.inference_mode(): with torch.amp.autocast(device_type=self.device, dtype=torch.bfloat16): outputs = self.model(model_inputs) preds = torch.argmax(outputs, dim=1).cpu().numpy().tolist() outputs_float = outputs.float() probs = torch.softmax(outputs_float, dim=1) # probs: [B, 2] probs = probs.cpu().numpy().tolist() probs = [p[1] for p in probs] return {"labels": preds, "probs": probs} def inference_sample(self, json_path: str) -> dict: """ 单样本推理函数,输入为 JSON 字符串路径,输出为包含转换概率的字典。 请注意Json文件中的词条数必须大于等于10. """ return self.inference_batch([json_path]) # def inference( # self, # featurs : dict[str ,dict] # ): # # assert len(featurs) <= 10, "单次输入json文件数量不可超过8。" def inference_batch_json_data(self, json_data: List[dict]) -> dict: """ 批量推理函数,输入为 JSON 数据,输出为包含转换概率的字典列表。为防止OOM,列表最大长度为8。 请注意Json文件中的词条数必须大于等于5. 但此处不进行过滤,请注意稍后对输出进行过滤。 """ assert len(json_data) <= 8, "单次输入json数据数量不可超过8。" pseudo_id2feature = load_data_from_dict(json_data) message_list = [] for id, feature in pseudo_id2feature.items(): messages = self.formatter.get_llm_prompt(feature) message_list.append(messages) inputs = self.tokenizer.apply_chat_template(message_list, tokenize=False, add_generation_prompt=True, enable_thinking=False) model_inputs = self.tokenizer( inputs, padding=True, truncation=True, max_length=2048, return_tensors="pt" ).to(self.device) with torch.inference_mode(): with torch.amp.autocast(device_type=self.device, dtype=torch.bfloat16): outputs = self.model(model_inputs) preds = torch.argmax(outputs, dim=1).cpu().numpy().tolist() outputs_float = outputs.float() probs = torch.softmax(outputs_float, dim=1) # probs: [B, 2] probs = probs.cpu().numpy().tolist() probs = [p[1] for p in probs] return {"labels": preds, "probs": probs} if __name__ == "__main__": backbone_dir = "Qwen3-1.7B" ckpt_path = "best_ckpt.pth" device = "cuda" engine = InferenceEngine(backbone_dir, ckpt_path, device) import glob deal_files = glob.glob(os.path.join("filtered_deal", "*.json")) test_deal_files = deal_files[:4] not_deal_files = glob.glob(os.path.join("filtered_not_deal", "*.json")) test_not_deal_files = not_deal_files[:4] test_files = test_deal_files + test_not_deal_files test_dict = [] for test_file in test_files: with open(test_file, "r", encoding="utf-8") as f: json_data = json.load(f) test_dict.append(json_data) results = engine.inference_batch_json_data(test_dict) print(results)