Detailed explanation of real IP request Pandas for Python data analysis

高洛峰
Release: 2017-03-24 17:08:55
Original
1510 people have browsed it

Preface

pandas is a data analysis package built based on Numpy that contains more advanced data structures and tools. Similar to Numpy, whose core is ndarray, pandas also revolves around the two core data structures of Series and DataFrame. Series and DataFrame correspond to one-dimensional sequence and two-dimensional table structure respectively. The conventional import method of pandas is as follows:

from pandas import Series,DataFrame
import pandas as pd
Copy after login


1.1. Pandas analysis steps

1. Load log data

2. Load area_ip data

3. Count the number of real_ip requests. Similar to the following SQL:

SELECT inet_aton(l.real_ip),
  count(*),
  a.addr
FROM log AS l
INNER JOIN area_ip AS a
  ON a.start_ip_num <= inet_aton(l.real_ip)
  AND a.end_ip_num >= inet_aton(l.real_ip)
GROUP BY real_ip
ORDER BY count(*)
LIMIT 0, 100;
Copy after login


1.2. Code

cat pd_ng_log_stat.py
#!/usr/bin/env python
#-*- coding: utf-8 -*-
  
from ng_line_parser import NgLineParser
  
import pandas as pd
import socket
import struct
  
class PDNgLogStat(object):
  
  def __init__(self):
    self.ng_line_parser = NgLineParser()
  
  def _log_line_iter(self, pathes):
    """解析文件中的每一行并生成一个迭代器"""
    for path in pathes:
      with open(path, 'r') as f:
        for index, line in enumerate(f):
          self.ng_line_parser.parse(line)
          yield self.ng_line_parser.to_dict()
  
  def _ip2num(self, ip):
    """用于IP转化为数字"""
    ip_num = -1
    try:
      # 将IP转化成INT/LONG 数字
      ip_num = socket.ntohl(struct.unpack("I",socket.inet_aton(str(ip)))[0])
    except:
      pass
    finally:
      return ip_num
  
  def _get_addr_by_ip(self, ip):
    """通过给的IP获得地址"""
    ip_num = self._ip2num(ip)
  
    try:
      addr_df = self.ip_addr_df[(self.ip_addr_df.ip_start_num <= ip_num) &
                   (ip_num <= self.ip_addr_df.ip_end_num)]
      addr = addr_df.at[addr_df.index.tolist()[0], 'addr']
      return addr
    except:
      return None
            
  def load_data(self, path):
    """通过给的文件路径加载数据生成 DataFrame"""
    self.df = pd.DataFrame(self._log_line_iter(path))
  
  
  def uv_real_ip(self, top = 100):
    """统计cdn ip量"""
    group_by_cols = ['real_ip'] # 需要分组的列,只计算和显示该列
      
    # 直接统计次数
    url_req_grp = self.df[group_by_cols].groupby(
                   self.df['real_ip'])
    return url_req_grp.agg(['count'])['real_ip'].nlargest(top, 'count')
      
  def uv_real_ip_addr(self, top = 100):
    """统计real ip 地址量"""
    cnt_df = self.uv_real_ip(top)
  
    # 添加 ip 地址 列
    cnt_df.insert(len(cnt_df.columns),
           'addr',
           cnt_df.index.map(self._get_addr_by_ip))
    return cnt_df
      
  def load_ip_addr(self, path):
    """加载IP"""
    cols = ['id', 'ip_start_num', 'ip_end_num',
        'ip_start', 'ip_end', 'addr', 'operator']
    self.ip_addr_df = pd.read_csv(path, sep='\t', names=cols, index_col='id')
    return self.ip_addr_df
  
def main():
  file_pathes = ['www.ttmark.com.access.log']
  
  pd_ng_log_stat = PDNgLogStat()
  pd_ng_log_stat.load_data(file_pathes)
  
  # 加载 ip 地址
  area_ip_path = 'area_ip.csv'
  pd_ng_log_stat.load_ip_addr(area_ip_path)
  
  # 统计 用户真实 IP 访问量 和 地址
  print pd_ng_log_stat.uv_real_ip_addr()
  
if __name__ == '__main__':
  main()
Copy after login


Running statistics and output results

python pd_ng_log_stat.py
  
         count  addr
real_ip           
60.191.123.80  101013 浙江省杭州市
-        32691  None
218.30.118.79  22523   北京市
......
136.243.152.18   889   德国
157.55.39.219   889   美国
66.249.65.170   888   美国
  
[100 rows x 2 columns]
Copy after login

Summary

The above is the entire content of this article. I hope that the content of this article will bring some help to everyone's study or work. If you have any questions, please You can leave messages to communicate.

For more detailed explanations of real IP request Pandas for Python data analysis, please pay attention to the PHP Chinese website!

Related articles:

How to read CSV files and write them to MySQL using Pandas in Python

Read cdn logs through the pandas library in Python Detailed analysis

Tutorial on using Python’s pandas framework to manipulate data in Excel files

Related labels:
source:php.cn
Statement of this Website
The content of this article is voluntarily contributed by netizens, and the copyright belongs to the original author. This site does not assume corresponding legal responsibility. If you find any content suspected of plagiarism or infringement, please contact admin@php.cn
Popular Tutorials
More>
Latest Downloads
More>
Web Effects
Website Source Code
Website Materials
Front End Template
About us Disclaimer Sitemap
php.cn:Public welfare online PHP training,Help PHP learners grow quickly!