Python爬取房产数据,在地图上展现!

小伙伴,我又来了,这次我们写的是用python爬虫爬取乌鲁木齐的房产数据并展示在地图上,地图工具我用的是 BDP个人版-免费在线数据分析软件,数据可视化软件 ,这个可以导入csv或者excel数据。

  • 首先还是分析思路,爬取网站数据,获取小区名称,地址,价格,经纬度,保存在excel里。再把excel数据上传到BDP网站,生成地图报表

本次我使用的是scrapy框架,可能有点大材小用了,主要是刚学完用这个练练手,再写代码前我还是建议大家先分析网站,分析好数据,再去动手写代码,因为好的分析可以事半功倍,乌鲁木齐楼盘,2017乌鲁木齐新楼盘,乌鲁木齐楼盘信息 - 乌鲁木齐吉屋网 这个网站的数据比较全,每一页获取房产的LIST信息,并且翻页,点进去是详情页,获取房产的详细信息(包含名称,地址,房价,经纬度),再用pipelines保存item到excel里,最后在bdp生成地图报表,废话不多说上代码:

JiwuspiderSpider.py

# -*- coding: utf-8 -*- 
from scrapy import Spider,Request 
import re 
from jiwu.items import JiwuItem 
 
 
class JiwuspiderSpider(Spider): 
    name = "jiwuspider" 
    allowed_domains = ["wlmq.jiwu.com"] 
    start_urls = ['http://wlmq.jiwu.com/loupan'] 
 
    def parse(self, response): 
        """ 
        解析每一页房屋的list 
        :param response:  
        :return:  
        """ 
        for url in response.xpath('//a[@class="index_scale"]/@href').extract(): 
            yield Request(url,self.parse_html)  # 取list集合中的url  调用详情解析方法 
 
        # 如果下一页属性还存在,则把下一页的url获取出来 
        nextpage = response.xpath('//a[@class="tg-rownum-next index-icon"]/@href').extract_first() 
        #判断是否为空 
        if nextpage: 
            yield Request(nextpage,self.parse)  #回调自己继续解析 
 
 
 
    def parse_html(self,response): 
        """ 
        解析每一个房产信息的详情页面,生成item 
        :param response:  
        :return:  
        """ 
        pattern = re.compile('<script type="text/javascript">.*?lng = \'(.*?)\';.*?lat = \'(.*?)\';.*?bname = \'(.*?)\';.*?' 
                             'address = \'(.*?)\';.*?price = \'(.*?)\';',re.S) 
        item = JiwuItem() 
        results = re.findall(pattern,response.text) 
        for result in results: 
            item['name'] = result[2] 
            item['address'] = result[3] 
            # 对价格判断只取数字,如果为空就设置为0 
            pricestr =result[4] 
            pattern2 = re.compile('(\d+)') 
            s = re.findall(pattern2,pricestr) 
            if len(s) == 0: 
                item['price'] = 0 
            else:item['price'] = s[0] 
            item['lng'] = result[0] 
            item['lat'] = result[1] 
        yield item 

item.py

# -*- coding: utf-8 -*- 
 
# Define here the models for your scraped items 
# 
# See documentation in: 
# http://doc.scrapy.org/en/latest/topics/items.html 
 
import scrapy 
 
 
class JiwuItem(scrapy.Item): 
    # define the fields for your item here like: 
    name = scrapy.Field() 
    price =scrapy.Field() 
    address =scrapy.Field() 
    lng = scrapy.Field() 
    lat = scrapy.Field() 
 
    pass 

pipelines.py 注意此处是吧mongodb的保存方法注释了,可以自选选择保存方式

# -*- coding: utf-8 -*- 
 
# Define your item pipelines here 
# 
# Don't forget to add your pipeline to the ITEM_PIPELINES setting 
# See: http://doc.scrapy.org/en/latest/topics/item-pipeline.html 
import pymongo 
from scrapy.conf import settings 
from openpyxl import workbook 
 
class JiwuPipeline(object): 
    wb = workbook.Workbook() 
    ws = wb.active 
    ws.append(['小区名称', '地址', '价格', '经度', '纬度']) 
    def __init__(self): 
        # 获取数据库连接信息 
        host = settings['MONGODB_URL'] 
        port = settings['MONGODB_PORT'] 
        dbname = settings['MONGODB_DBNAME'] 
        client = pymongo.MongoClient(host=host, port=port) 
 
        # 定义数据库 
        db = client[dbname] 
        self.table = db[settings['MONGODB_TABLE']] 
 
    def process_item(self, item, spider): 
        jiwu = dict(item) 
        #self.table.insert(jiwu) 
        line = [item['name'], item['address'], str(item['price']), item['lng'], item['lat']] 
        self.ws.append(line) 
        self.wb.save('jiwu.xlsx') 
 
        return item 

最后报表的数据

mongodb数据库

 

posted @ 2019-01-11 16:45  独爱米粒  阅读(3692)  评论(0编辑  收藏  举报