处理数据批量生成sql插入语句
最近在做一个天气预报模块,首先需要将客户端公网ip转换成所在城市,然后将所在城市名转换成对应的城市代码,在网上找到了城市代码,但是需要处理一下,看了看,有三百多城市及对应的城市代码,想存到数据库。就想着做一个数据处理自动生成sql语句的工具,提高效率。
1 直辖市
2 "北京","上海","天津","重庆"
3 "101010100","101020100","101030100","101040100"
4
5 特别行政区
6 "香港","澳门"
7 "101320101","101330101"
8
9 黑龙江
10 "哈尔滨","齐齐哈尔","牡丹江","大庆","伊春","双鸭山","鹤岗","鸡西","佳木斯","七台河","黑河","绥化","大兴安岭"
11 "101050101","101050201","101050301","101050901","101050801","101051301","101051201","101051101","101050401","101051002","101050601","101050501","101050701"
12
13 吉林
14 "长春","延吉","吉林","白山","白城","四平","松原","辽源","大安","通化"
15 "101060101","101060301","101060201","101060901","101060601","101060401","101060801","101060701","101060603","101060501"
16
17 辽宁
18 "沈阳","大连","葫芦岛","盘锦","本溪","抚顺","铁岭","辽阳","营口","阜新","朝阳","锦州","丹东","鞍山"
19 "101070101","101070201","101071401","101071301","101070501","101070401","101071101","101071001","101070801","101070901","101071201","101070701","101070601","101070301"
20
21 内蒙古
22 "呼和浩特","呼伦贝尔","锡林浩特","包头","赤峰","海拉尔","乌海","鄂尔多斯","通辽"
23 "101080101","101081000","101080901","101080201","101080601","101081001","101080301","101080701","101080501"
24
25 河北
26 "石家庄","唐山","张家口","廊坊","邢台","邯郸","沧州","衡水","承德","保定","秦皇岛"
27 "101090101","101090501","101090301","101090601","101090901","101091001","101090701","101090801","101090402","101090201","101091101"
28
29 河南
30 "郑州","开封","洛阳","平顶山","焦作","鹤壁","新乡","安阳","濮阳","许昌","漯河","三门峡","南阳","商丘","信阳","周口","驻马店"
31 "101180101","101180801","101180901","101180501","101181101","101181201","101180301","101180201","101181301","101180401","101181501","101181701","101180701","101181001","101180601","101181401","101181601"
32
33 山东
34 "济南","青岛","淄博","威海","曲阜","临沂","烟台","枣庄","聊城","济宁","菏泽","泰安","日照","东营","德州","滨州","莱芜","潍坊"
35 "101120101","101120201","101120301","101121301","101120710","101120901","101120501","101121401","101121701","101120701","101121001","101120801","101121501","101121201","101120401","101121101","101121601","101120601"
36
37 山西
38 "太原","阳泉","晋城","晋中","临汾","运城","长治","朔州","忻州","大同","吕梁"
39 "101100101","101100301","101100601","101100401","101100701","101100801","101100501","101100901","101101001","101100201","101101101"
40
41 江苏
42 "南京","苏州","昆山","南通","太仓","吴县","徐州","宜兴","镇江","淮安","常熟","盐城","泰州","无锡","连云港","扬州","常州","宿迁"
43 "101190101","101190401","101190404","101190501","101190408","101190406","101190801","101190203","101190301","101190901","101190402","101190701","101191201","101190201","101191001","101190601","101191101","101191301"
44
45 安徽
46 "合肥","巢湖","蚌埠","安庆","六安","滁州","马鞍山","阜阳","宣城","铜陵","淮北","芜湖","毫州","宿州","淮南","池州"
47 "101220101","101221601","101220201","101220601","101221501","101221101","101220501","101220801","101221401","101221301","101221201","101220301","101220901","101220701","101220401","101221701"
48
49 陕西
50 "西安","韩城","安康","汉中","宝鸡","咸阳","榆林","渭南","商洛","铜川","延安"
51 "101110101","101110510","101110701","101110801","101110901","101110200","101110401","101110501","101110601","101111001","101110300"
52
53 宁夏
54 "银川","固原","中卫","石嘴山","吴忠"
55 "101170101","101170401","101170501","101170201","101170301"
56
57 甘肃
58 "兰州","白银","庆阳","酒泉","天水","武威","张掖","甘南","临夏","平凉","定西","金昌"
59 "101160101","101161301","101160401","101160801","101160901","101160501","101160701","101050204","101161101","101160301","101160201","101160601"
60
61 青海
62 "西宁","海北","海西","黄南","果洛","玉树","海东","海南"
63 "101150101","101150801","101150701","101150301","101150501","101150601","101150201","101150401"
64
65 湖北
66 "武汉","宜昌","黄冈","恩施","荆州","神农架","十堰","咸宁","襄阳","孝感","随州","黄石","荆门","鄂州"
67 "101200101","101200901","101200501","101201001","101200801","101201201","101201101","101200701","101200201","101200401","101201301","101200601","101201401","101200301"
68
69 湖南
70 "长沙","邵阳","常德","郴州","吉首","株洲","娄底","湘潭","益阳","永州","岳阳","衡阳","怀化","韶山","张家界"
71 "101250101","101250901","101250601","101250501","101251501","101250301","101250801","101250201","101250701","101251401","101251001","101250401","101251201","101250202","101251101"
72
73 浙江
74 "杭州","湖州","金华","宁波","丽水","绍兴","衢州","嘉兴","台州","舟山","温州"
75 "101210101","101210201","101210901","101210401","101210801","101210501","101211001","101210301","101210601","101211101","101210701"
76
77 江西
78 "南昌","萍乡","九江","上饶","抚州","吉安","鹰潭","宜春","新余","景德镇","赣州"
79 "101240101","101240901","101240201","101240301","101240401","101240601","101241101","101240501","101241001","101240801","101240701"
80
81 福建
82 "福州","厦门","龙岩","南平","宁德","莆田","泉州","三明","漳州"
83 "101230101","101230201","101230701","101230901","101230301","101230401","101230501","101230801","101230601"
84
85 贵州
86 "贵阳","安顺","赤水","遵义","铜仁","六盘水","毕节","凯里","都匀"
87 "101260101","101260301","101260208","101260201","101260601","101260801","101260701","101260501","101260401"
88
89 四川
90 "成都","泸州","内江","凉山","阿坝","巴中","广元","乐山","绵阳","德阳","攀枝花","雅安","宜宾","自贡","甘孜州","达州","资阳","广安","遂宁","眉山","南充"
91 "101270101","101271001","101271201","101271601","101271901","101270901","101272101","101271401","101270401","101272001","101270201","101271701","101271101","101270301","101271801","101270601","101271301","101270801","101270701","101271501","101270501"
92
93 广东
94 "广州","深圳","潮州","韶关","湛江","惠州","清远","东莞","江门","茂名","肇庆","汕尾","河源","揭阳","梅州","中山","德庆","阳江","云浮","珠海","汕头","佛山"
95 "101280101","101280601","101281501","101280201","101281001","101280301","101281301","101281601","101281101","101282001","101280901","101282101","101281201","101281901","101280401","101281701","101280905","101281801","101281401","101280701","101280501","101280800"
96
97 广西
98 "南宁","桂林","阳朔","柳州","梧州","玉林","桂平","贺州","钦州","贵港","防城港","百色","北海","河池","来宾","崇左"
99 "101300101","101300501","101300510","101300301","101300601","101300901","101300802","101300701","101301101","101300801","101301401","101301001","101301301","101301201","101300401","101300201"
100
101 云南
102 "昆明","保山","楚雄","德宏","红河","临沧","怒江","曲靖","思茅","文山","玉溪","昭通","丽江","大理"
103 "101290101","101290501","101290801","101291501","101290301","101291101","101291201","101290401","101290901","101290601","101290701","101291001","101291401","101290201"
104
105 海南
106 "海口","三亚","儋州","琼山","通什","文昌"
107 "101310101","101310201","101310205","101310102","101310222","101310212"
108
109 新疆
110 "乌鲁木齐","阿勒泰","阿克苏","昌吉","哈密","和田","喀什","克拉玛依","石河子","塔城","库尔勒","吐鲁番","伊宁"
111 "101130101","101131401","101130801","101130401","101131201","101131301","101130901","101130201","101130301","101131101","101130601","101130501","101131001"
112
113 西藏
114 "拉萨","阿里","昌都","那曲","日喀则","山南","林芝"
115 "101140101","101140701","101140501","101140601","101140201","101140301","101140401"
116
117 台湾
118 "台北","高雄"
119 "101340102","101340201"
城市代码
一看上去很乱的,而且对应关系是每个省城市一行,代码一行,分别用引号引起,用逗号分隔,每行间都没有符号分隔,省名没有用引号。首先是想着把省名去掉,因为每个城市名都是不相同的。想着每两行两行的去处理,但是也要费不少功夫,还容易出错。就想个索性一次性的全处理的算法。
ps:界面很简单,上面是输入数据,中间是转换,下面是输出数据。
后台主要代码:
[csharp] view plain copy
private void button1_Click(object sender, EventArgs e)
{
string data = textBox1.Text.Replace("\r", "").Replace("\n", "").Replace("\t", "").Replace(" ", "").Replace(" ", "").Replace(" ", "");
MatchCollection matchsdata = matches(data, "\"[\\s\\S]*?\"");
string[,] temps = new string[matchsdata.Count / 2, 2];
int count0 = 0;
int count1 = 0;
string input = string.Empty;
foreach (Match m in matchsdata)
{
string tempdata = m.Value.Replace("\"", "");
try
{
int tryp = int.Parse(tempdata);
temps[count1, 1] = tempdata;
count1++;
}
catch (Exception ex)
{
temps[count0, 0] = tempdata;
count0++;
}
}
for (int i = 0; i < (matchsdata.Count / 2); i++)
{
input += "insert into tbl_CityCode(c_city,c_code) values('" + temps[i, 0] + "','" + temps[i, 1] + "')\r\n";
}
textBox2.Text = input;
}
public static MatchCollection matches(string str, string exp)
{
return Regex.Matches(str, exp, RegexOptions.IgnoreCase);
}
首先是将输入的数据处理,去除换行符,空格什么的。然后你应该是会得到一行数据,然后通过正则表达式匹配出所有带引号的数据,你会发现需要的数据全部都是用引号引起来的,但是怎样区分城市名和城市代码呢,它们是混在一起的。不用担心,你发现了吗?城市名是字符串,城市代码是一串数字,我们只要将匹配出的数据数组遍历,每一行数据都去转换成int类型,这样城市名的行就会报错,在catch中捕捉,这一行就是城市名,没错的就是城市代码,把数据一次存到一个二维数组,对应的列中就行了。这样就会获得了相对应的城市名和城市代码。生成的sql语句要对应相应的数据库表。
表结构:
转换完了将生成的sql语句放到查询器中执行就ok了。共处理了349个城市。
最后不放心自己的算法,随机抽查了几条数据,没有错误。
<script type="text/javascript"><!-- google_ad_client = "ca-pub-1944176156128447"; /* cnblogs 首页横幅 */ google_ad_slot = "5419468456"; google_ad_width = 728; google_ad_height = 90; //--></script><script type="text/javascript" src="http://pagead2.googlesyndication.com/pagead/show_ads.js"></script>
数据分析咨询请扫描二维码
数据分析师的工作内容涉及多个方面,主要包括数据的收集、整理、分析和可视化,以支持商业决策和问题解决。以下是数据分析师的一 ...
2024-11-21数据分析师必须掌握的技能可以从多个方面进行归纳和总结。以下是数据分析师需要具备的主要技能: 统计学基础:数据分析师需要 ...
2024-11-21数据分析入门的难易程度因人而异,总体来看,入门并不算特别困难,但需要一定的学习和实践积累。 入门难度:数据分析入门相对 ...
2024-11-21数据分析是一项通过收集、整理和解释数据来发现有用信息的过程,它在现代社会中具有广泛的应用和重要性。数据分析能够帮助人们更 ...
2024-11-21数据分析行业正在迅速发展,随着技术的不断进步和数据量的爆炸式增长,企业对数据分析人才的需求也与日俱增。本文将探讨数据分析 ...
2024-11-21数据分析的常用方法包括多种技术,每种方法都有其特定的应用场景和优势。以下是几种常见的数据分析方法: 对比分析法:通过比 ...
2024-11-21企业数字化转型是指企业利用数字技术对其业务进行改造和升级,以实现提高效率、降低成本、创新业务模式等目标的过程。这一过程不 ...
2024-11-21数据分析作为一个备受追捧的职业领域,吸引着越来越多的女性加入其中。对于女生而言,在选择成为一名数据分析师时,行业选择至关 ...
2024-11-21大数据技术专业主要学习计算机科学、数学、统计学和信息技术等领域的基础理论和技能,旨在培养具备大数据处理、分析和应用能力的 ...
2024-11-21《Python数据分析极简入门》 第2节 3 Pandas数据查看 这里我们创建一个DataFrame命名为df: importnumpyasnpi ...
2024-11-21越老越吃香的行业主要集中在需要长时间经验积累和专业知识的领域。这些行业通常知识更新换代较慢,因此随着年龄的增长,从业者能 ...
2024-11-20数据导入 使用pandas库的read_csv()函数读取CSV文件或使用read_excel()函数读取Excel文件。 支持处理不同格式数据,可指定分隔 ...
2024-11-20大数据与会计专业是一门结合了大数据分析技术和会计财务理论知识的新型复合型学科,旨在培养能够适应现代会计业务新特征的高层次 ...
2024-11-20要成为一名数据分析师,需要掌握一系列硬技能和软技能。以下是成为数据分析师所需的关键技能: 统计学基础 理解基本的统计概念 ...
2024-11-20是的,Python可以用于数据分析。Python在数据分析领域非常流行,因为它拥有丰富的库和工具,能够高效地处理从数据清洗到可视化的 ...
2024-11-20在这个数据驱动的时代,数据分析师的角色变得愈发不可或缺。他们承担着帮助企业从数据中提取有价值信息的责任,而这些信息可以大 ...
2024-11-20数据分析作为现代信息时代的支柱之一,已经成为各行业不可或缺的工具。无论是在商业、科研还是日常决策中,数据分析都扮演着至关 ...
2024-11-20数字化转型已成为当今商业世界的热点话题。它不仅代表着技术的提升,还涉及企业业务流程、组织结构和文化的深层次变革。理解数字 ...
2024-11-20在现代社会的快速变迁中,选择一个具有长期增长潜力的行业显得至关重要。了解未来发展前景好的行业不仅能帮助我们进行职业选择, ...
2024-11-20统计学专业的就业方向和前景非常广泛且充满机遇。随着大数据、人工智能等技术的快速发展,统计学的重要性进一步凸显,相关人才的 ...
2024-11-20