
本文将详细介绍如何使用 Python 和 Pandas 库来清洗和对齐字段不一致的 CSV 数据。正如摘要中所述,我们将采用一种分而治之的策略,先将数据按照字段数量进行分组,再分别处理。
首先,我们需要准备好需要处理的 CSV 数据。假设我们的数据存储在一个字符串变量 data 中,其内容如下:
data = """ 30,1204,PO,71100,147130,I09,B10,OC,350,20105402 31,1221,PO,70400,147170,I09,B10,OC,500,20105402 32,1223,SI,70384,147122,I09,B10,OC,500,PN,3,BO,OI,20105402 33,1224,SI,70392,147032,I09,B10,OC,500,PN,1,BO,OI,20105402 34,1227,PO,70400,146430,I09,B10,PF,500,20105402 35,1241,PO,71100,146420,I09,B10,PF,500,20105402 36,1249,PO,71100,146000,I09,B10,SN,500,20105402 37,1305,PO,70400,146000,I09,B10,OC,500,20105402 38,1307,SI,70379,146041,I09,B10,OC,500,21,BH,1,BO,195,40,SW,20105402 39,1312,SD,70372,146062,I09,B10,OC,500,20105402 40,1332,SI,70334,146309,I09,B10,OC,500,PN,4,BO,OI,20105402 41,1332,SI,70334,146309,I09,B10,OC,500,PN,5,BO,OI,20105403 42,1333,SI,70333,146324,I09,B10,OC,500,PN,2,BO,OI,20105403 43,1334,SI,70328,146348,I09,B10,OC,500,PN,1,BO,OI,20105403 44,1335,SI,70326,146356,I09,B10,OC,500,PN,1,BO,OI,20105403 45,1336,SI,70310,146424,I09,B10,OC,500,PN,1,BO,OI,20105403 46,1338,SI,70302,146457,I10,B10,OC,500,PN,1,BO,OI,20105403 47,1338,SI,70301,146464,I10,B10,OC,500,PN,1,BO,OI,20105403 48,1340,SI,70295,146503,I10,B10,OC,500,PN,8,BO,OI,20105403 49,1405,LD,2,70119,148280,I10,B10,OC,0000,20105403 01,1024,LA,1R,70120,148280,B10,OC,0000,21105501 02,1039,PO,70340,149400,I10,B10,OC,500,21105501 03,1045,SI,70378,149025,I10,B07,PF,300,PN,17,BO,OI,21105501 """
接下来,我们将数据按行分割,并根据每行包含的字段数量进行分组。
from io import StringIO
import pandas as pd
data = """
30,1204,PO,71100,147130,I09,B10,OC,350,20105402
31,1221,PO,70400,147170,I09,B10,OC,500,20105402
32,1223,SI,70384,147122,I09,B10,OC,500,PN,3,BO,OI,20105402
33,1224,SI,70392,147032,I09,B10,OC,500,PN,1,BO,OI,20105402
34,1227,PO,70400,146430,I09,B10,PF,500,20105402
35,1241,PO,71100,146420,I09,B10,PF,500,20105402
36,1249,PO,71100,146000,I09,B10,SN,500,20105402
37,1305,PO,70400,146000,I09,B10,OC,500,20105402
38,1307,SI,70379,146041,I09,B10,OC,500,21,BH,1,BO,195,40,SW,20105402
39,1312,SD,70372,146062,I09,B10,OC,500,20105402
40,1332,SI,70334,146309,I09,B10,OC,500,PN,4,BO,OI,20105402
41,1332,SI,70334,146309,I09,B10,OC,500,PN,5,BO,OI,20105403
42,1333,SI,70333,146324,I09,B10,OC,500,PN,2,BO,OI,20105403
43,1334,SI,70328,146348,I09,B10,OC,500,PN,1,BO,OI,20105403
44,1335,SI,70326,146356,I09,B10,OC,500,PN,1,BO,OI,20105403
45,1336,SI,70310,146424,I09,B10,OC,500,PN,1,BO,OI,20105403
46,1338,SI,70302,146457,I10,B10,OC,500,PN,1,BO,OI,20105403
47,1338,SI,70301,146464,I10,B10,OC,500,PN,1,BO,OI,20105403
48,1340,SI,70295,146503,I10,B10,OC,500,PN,8,BO,OI,20105403
49,1405,LD,2,70119,148280,I10,B10,OC,0000,20105403
01,1024,LA,1R,70120,148280,B10,OC,0000,21105501
02,1039,PO,70340,149400,I10,B10,OC,500,21105501
03,1045,SI,70378,149025,I10,B07,PF,300,PN,17,BO,OI,21105501
"""
all_data = {}
for line in map(str.strip, data.splitlines()):
if line == "":
continue
line = line.split(",")
all_data.setdefault(len(line), []).append(line)
# 输出分组后的数据,便于观察
for num_fields, grouped_data in all_data.items():
print(f"Rows with {num_fields} fields:")
df = pd.DataFrame(grouped_data)
print(df)
print("-" * 80)这段代码首先定义了一个字典 all_data,用于存储分组后的数据。然后,它遍历数据的每一行,使用 , 分割字段,并将分割后的字段列表添加到 all_data 中对应字段数量的键值下。setdefault 方法确保如果某个字段数量的键不存在,则创建一个新的空列表。
立即学习“Python免费学习笔记(深入)”;
完成分组后,可以针对每个分组的数据进行清洗和对齐。具体的清洗和对齐方法取决于数据的具体含义和需求。以下是一些常见的清洗和对齐策略:
示例:缺失值填充
假设我们希望将所有分组的数据都填充到最大字段数量,可以使用以下代码:
max_fields = max(all_data.keys())
for num_fields, grouped_data in all_data.items():
df = pd.DataFrame(grouped_data)
# 填充缺失列,使其列数等于最大列数
for i in range(max_fields):
if i not in df.columns:
df[i] = None # 或者填充其他默认值,如 ''
all_data[num_fields] = df
# 打印处理后的数据
for num_fields, df in all_data.items():
print(f"Rows with {num_fields} fields (after padding):")
print(df)
print("-" * 80)此示例代码首先找到最大字段数量 max_fields,然后遍历每个分组的数据,如果某个分组的数据的列数小于 max_fields,则添加缺失列,并填充 None 值。
通过本文档的介绍,您应该能够使用 Python 和 Pandas 库来清洗和对齐字段不一致的 CSV 数据。记住,数据清洗是一个复杂的过程,需要根据实际情况进行调整和优化。希望本文档能够帮助您更好地处理不规范的 CSV 数据,为后续的数据分析工作奠定基础。
以上就是使用 Python 对不一致的 CSV 数据进行清洗和对齐的详细内容,更多请关注php中文网其它相关文章!
每个人都需要一台速度更快、更稳定的 PC。随着时间的推移,垃圾文件、旧注册表数据和不必要的后台进程会占用资源并降低性能。幸运的是,许多工具可以让 Windows 保持平稳运行。
Copyright 2014-2025 https://www.php.cn/ All Rights Reserved | php.cn | 湘ICP备2023035733号