208 lines
7.8 KiB
Python
208 lines
7.8 KiB
Python
import sys
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import os
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import time
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import json
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import pandas as pd
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import seaborn as sns
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import matplotlib.pyplot as plt
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from tqdm import tqdm
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# 路径 Hack: 确保能导入 backend
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current_dir = os.path.dirname(os.path.abspath(__file__))
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project_root = os.path.abspath(os.path.join(current_dir, '../../'))
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if project_root not in sys.path:
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sys.path.insert(0, project_root)
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# 直接导入服务类 (Direct Call)
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from backend.services.data_service import data_service
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from backend.services.llm_service import llm_service
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# ================= 配置区 =================
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TEST_TASK_ID = 19 # 请修改为真实的 Task ID
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DATASET_PATH = os.path.join(current_dir, 'dataset.json')
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OUTPUT_IMG = os.path.join(current_dir, 'benchmark_report.png')
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# ========================================
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class RAGEvaluator:
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"""评测工具类:负责计算召回率和调用LLM打分"""
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def __init__(self):
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self.llm = llm_service
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def calculate_recall(self, retrieved_docs, keywords):
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"""计算关键词召回率"""
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if not keywords: return 1.0 # 无关键词要求的题目默认为满分
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full_text = " ".join([d['content'] for d in retrieved_docs]).lower()
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hit_count = sum(1 for k in keywords if k.lower() in full_text)
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return hit_count / len(keywords)
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def judge_answer(self, query, answer, ground_truth):
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"""调用 LLM 给生成结果打分 (1-5)"""
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prompt = f"""
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作为 RAG 评测员,请对【系统回答】打分 (1-5)。
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用户问题: {query}
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标准答案: {ground_truth}
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系统回答: {answer}
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标准:
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5: 含义完全一致,无幻觉。
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3: 包含核心信息,但有遗漏。
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1: 错误或严重幻觉。
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只返回数字 (1, 2, 3, 4, 5)。
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"""
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try:
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# 这里调用你在 llm_service 中新增的 chat 方法
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res = self.llm.chat(prompt)
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# 简单的清洗逻辑,提取数字
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score = int(''.join(filter(str.isdigit, res)))
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return min(max(score, 1), 5) # 限制在 1-5
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except:
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return 1 # 失败保底 1 分
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class Visualizer:
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"""绘图工具类"""
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def plot_dashboard(self, df):
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# 设置风格
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sns.set_theme(style="whitegrid")
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# 解决中文显示问题 (如果环境支持 SimHei 则用中文,否则用英文)
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plt.rcParams['font.sans-serif'] = ['SimHei', 'Arial', 'DejaVu Sans']
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plt.rcParams['axes.unicode_minus'] = False
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fig = plt.figure(figsize=(18, 10))
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gs = fig.add_gridspec(2, 2)
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# Chart 1: 总体指标对比 (Bar Chart)
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ax1 = fig.add_subplot(gs[0, 0])
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# 将数据变形为长格式以便绘图
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df_summary = df.groupby('config')[['score', 'recall']].mean().reset_index()
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df_melt = df_summary.melt(id_vars='config', var_name='Metric', value_name='Value')
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# 将 Recall 归一化到 0-5 方便同图显示,或者分开轴。这里简单处理:Recall * 5
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df_melt.loc[df_melt['Metric'] == 'recall', 'Value'] *= 5
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sns.barplot(data=df_melt, x='config', y='Value', hue='Metric', ax=ax1, palette="viridis")
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ax1.set_title('Overall Performance (Score & Recall)', fontsize=14, fontweight='bold')
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ax1.set_ylabel('Score (1-5) / Recall (x5)')
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ax1.set_ylim(0, 5.5)
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for container in ax1.containers:
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ax1.bar_label(container, fmt='%.1f')
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# Chart 2: 延迟 vs 质量 (Scatter Plot)
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ax2 = fig.add_subplot(gs[0, 1])
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df_latency = df.groupby('config')[['score', 'latency']].mean().reset_index()
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sns.scatterplot(data=df_latency, x='latency', y='score', hue='config', s=200, ax=ax2, palette="deep")
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# 添加标签
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for i in range(df_latency.shape[0]):
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ax2.text(
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df_latency.latency[i]+0.05,
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df_latency.score[i],
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df_latency.config[i],
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fontsize=10
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)
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ax2.set_title('Trade-off: Latency vs Quality', fontsize=14, fontweight='bold')
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ax2.set_xlabel('Avg Latency (seconds)')
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ax2.set_ylabel('Avg Quality Score (1-5)')
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# Chart 3: 类别热力图 (Heatmap) - 你的 Weakest Category 可视化
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ax3 = fig.add_subplot(gs[1, :]) # 占用下方整行
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pivot_data = df.pivot_table(index='config', columns='type', values='score', aggfunc='mean')
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sns.heatmap(pivot_data, annot=True, cmap="RdYlGn", center=3, fmt=".1f", ax=ax3, linewidths=.5)
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ax3.set_title('Category Breakdown (Find the Weakest Link)', fontsize=14, fontweight='bold')
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ax3.set_xlabel('')
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ax3.set_ylabel('')
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plt.tight_layout()
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plt.savefig(OUTPUT_IMG)
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print(f"\n📊 报表已生成: {OUTPUT_IMG}")
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def main():
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# 1. 加载数据
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if not os.path.exists(DATASET_PATH):
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print("Dataset not found!")
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return
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with open(DATASET_PATH, 'r', encoding='utf-8') as f:
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dataset = json.load(f)
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# 2. 定义实验配置 (Direct Call)
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configs = [
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{
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"name": "1. BM25 (Keyword)",
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"retriever": lambda q: data_service.search(q, [0.0]*1536, task_id=TEST_TASK_ID, vector_weight=0.0, candidates_num=5)['results'],
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"rerank": False
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},
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{
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"name": "2. Vector Only",
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"retriever": lambda q: data_service.search(q, llm_service.get_embedding(q), task_id=TEST_TASK_ID, vector_weight=1.0, candidates_num=5)['results'],
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"rerank": False
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},
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{
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"name": "3. Hybrid (Base)",
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"retriever": lambda q: data_service.search(q, llm_service.get_embedding(q), task_id=TEST_TASK_ID, vector_weight=0.7, candidates_num=5)['results'],
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"rerank": False
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},
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{
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"name": "4. Hybrid + Rerank",
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"retriever": lambda q: data_service.search(q, llm_service.get_embedding(q), task_id=TEST_TASK_ID, vector_weight=0.7, candidates_num=30)['results'], # 召回 Top 30
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"rerank": True
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}
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]
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evaluator = RAGEvaluator()
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all_results = []
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print("🚀 开始自动化评测 (Visualization Mode)...")
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# 3. 循环执行 (双重循环:配置 -> 数据)
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# 使用 tqdm 显示总进度
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total_steps = len(configs) * len(dataset)
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pbar = tqdm(total=total_steps, desc="Running Experiments")
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for cfg in configs:
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for item in dataset:
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pbar.set_description(f"Testing {cfg['name']}")
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start_time = time.time()
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# A. 检索
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docs = cfg['retriever'](item['query'])
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# B. Rerank (如果在配置里开启)
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if cfg['rerank']:
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docs = llm_service.rerank(item['query'], docs, top_n=5)
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# C. 生成
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context = "\n".join([d['content'] for d in docs]) if docs else ""
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if not context:
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answer = "未找到相关信息"
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else:
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prompt = f"Context:\n{context}\n\nQuestion: {item['query']}"
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answer = llm_service.chat(prompt) # 调用生成接口
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latency = time.time() - start_time
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# D. 评测指标
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recall = evaluator.calculate_recall(docs, item.get('keywords', []))
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score = evaluator.judge_answer(item['query'], answer, item['ground_truth'])
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# E. 收集数据
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all_results.append({
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"config": cfg['name'],
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"id": item['id'],
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"type": item['type'], # 类别字段
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"recall": recall,
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"score": score,
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"latency": latency
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})
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pbar.update(1)
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pbar.close()
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# 4. 数据处理与绘图
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df = pd.DataFrame(all_results)
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viz = Visualizer()
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viz.plot_dashboard(df)
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if __name__ == "__main__":
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main() |