直接上代码+注释
有意尝试可交流
效果正在验证中。
1.短文本处理(<500tokens)
from sentence_transformers import sentencetransformer model = sentencetransformer('all-minilm-l6-v2') # 384维小型模型 def process_short(text): """直接全文本编码""" return model.encode(text, convert_to_tensor=true) # 示例 short_text = "自然语言处理的基础概念" # 长度约15 tokens vector = process_short(short_text)
2. 中长文本处理 (500-2000 tokens)
from langchain_text_splitters import recursivecharactertextsplitter def process_medium(text): """重叠分块策略""" splitter = recursivecharactertextsplitter( chunk_size=500, chunk_overlap=50, separators=["\n\n", "\n", "。", "!", "?"] ) chunks = splitter.split_text(text) return [model.encode(chunk) for chunk in chunks] # 示例 medium_text = "机器学习发展历史...(约1500字)" # 约1800 tokens chunk_vectors = process_medium(medium_text)
3. 长文本处理 (2000-20000 tokens)
import spacy def process_long(text): """语义分块+摘要增强""" # 加载语义分割模型 nlp = spacy.load("zh_core_web_sm") doc = nlp(text) # 按段落分割 chunks = [sent.text for sent in doc.sents] # 生成章节摘要 summary_model = sentencetransformer('uer/sbert-base-chinese-nli') summaries = [summary_model.encode(chunk[:200]) for chunk in chunks] return chunks, summaries # 示例 long_text = "人工智能技术白皮书...(约2万字)" # 约20000 tokens text_chunks, summary_vecs = process_long(long_text)
4. 超长文本处理 (20000-200000 tokens)
import faiss import numpy as np class hierarchicalindex: def __init__(self): # 两级索引结构 self.summary_index = faiss.indexflatl2(384) self.chunk_index = faiss.indexivfpq( faiss.indexflatl2(384), 384, 100, 16, 8 ) self.metadata = [] def add_document(self, text): # 生成段落级摘要 chunks, summaries = process_long(text) # 构建索引 summary_vecs = np.array(summaries).astype('float32') chunk_vecs = np.array([model.encode(c) for c in chunks]).astype('float32') self.summary_index.add(summary_vecs) self.chunk_index.add(chunk_vecs) self.metadata.extend(chunks) def search(self, query, k=5): # 先检索摘要层 query_vec = model.encode(query).astype('float32') _, sum_indices = self.summary_index.search(np.array([query_vec]), 10) # 精搜相关块 target_chunks = [self.chunk_index.reconstruct(i) for i in sum_indices] target_chunks = np.array(target_chunks).astype('float32') _, chunk_indices = self.chunk_index.search(target_chunks, k) return [self.metadata[i] for i in chunk_indices] # 使用示例 hindex = hierarchicalindex() hindex.add_document("某领域技术文档...(约15万字)") # 约200000 tokens results = hindex.search("深度学习在医疗影像的应用")
5. 海量文本处理 (>200000 tokens)
import dask.dataframe as dd from dask.distributed import client def process_extreme(file_path): """分布式处理方案""" client = client(n_workers=4) # 启动dask集群 # 分块读取 df = dd.read_parquet(file_path, chunksize=100000) # 并行编码 df['vector'] = df['text'].map_partitions( lambda s: s.apply(model.encode), meta=('vector', object) ) # 构建分布式索引 df.to_parquet("encoded_data.parquet", engine="pyarrow") # 示例(处理100万条文本) process_extreme("massive_data.parquet")
性能优化对照表=
文本长度 | 处理策略 | 索引类型 | 响应时间 | 内存消耗 |
---|---|---|---|---|
<500 | 直接编码 | flatindex | <10ms | 1mb |
2000 | 重叠分块 | ivf+pq | 50-100ms | 50mb |
20000 | 语义分块+摘要索引 | 二级索引 | 200-500ms | 300mb |
200000 | 层次化索引 | ivfopq+productquant | 1-2s | 2gb |
>200000 | 分布式处理 | 分片索引 | 10s+ | 集群资源 |
关键处理技术
- 滑动窗口:通过
chunk_overlap
保留上下文连续性 - 语义分块:使用spacy进行句子边界检测
- 层次化索引:摘要层加速粗筛,块层保证精度
- 量化压缩:pq算法减少内存占用(精度损失
以上就是python针对不同文本长度的处理方案总结与对比的详细内容,更多关于python文本处理的资料请关注代码网其它相关文章!
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