一、项目要求
- 本文讨论的日志处理方法中的日志,仅指Web日志。事实上并没有精确的定义,可能包含但不限于各种前端Webserver——apache、lighttpd、nginx、tomcat等产生的用户訪问日志,以及各种Web应用程序自己输出的日志。
二、需求分析: KPI指标设计
PV(PageView): 页面訪问量统计
IP: 页面独立IP的訪问量统计
Time: 用户每小时PV的统计
Source: 用户来源域名的统计
Browser: 用户的訪问设备统计
以下我着重分析浏览器统计
三、分析过程
1、 日志的一条nginx记录内容
222.68.172.190 - - [18/Sep/2013:06:49:57 +0000] "GET /images/my.jpg HTTP/1.1" 200 19939
"http://www.angularjs.cn/A00n"
"Mozilla/5.0 (Windows NT 6.1) AppleWebKit/537.36 (KHTML, like Gecko) Chrome/29.0.1547.66 Safari/537.36"
2、对上面的日志记录进行分析
remote_addr : 记录client的ip地址, 222.68.172.190
remote_user : 记录clientusername称, –
time_local: 记录訪问时间与时区, [18/Sep/2013:06:49:57 +0000]
request: 记录请求的url与http协议, “GET /images/my.jpg HTTP/1.1″
status: 记录请求状态,成功是200, 200
body_bytes_sent: 记录发送给client文件主体内容大小, 19939
http_referer: 用来记录从那个页面链接訪问过来的, “http://www.angularjs.cn/A00n”
http_user_agent: 记录客户浏览器的相关信息, “Mozilla/5.0 (Windows NT 6.1) AppleWebKit/537.36 (KHTML, like Gecko) Chrome/29.0.1547.66 Safari/537.36″
3、java语言分析上面一条日志记录(使用空格切分)
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String line =
"222.68.172.190 - - [18/Sep/2013:06:49:57 +0000] \"GET /images/my.jpg HTTP/1.1\" 200 19939 \"http://www.angularjs.cn/A00n\" \"Mozilla/5.0 (Windows NT 6.1) AppleWebKit/537.36 (KHTML, like Gecko) Chrome/29.0.1547.66 Safari/537.36\"" ;
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String[] elementList = line.split( " " );
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for ( int
i= 0 ;i<elementList.length;i++){
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System.out.println(i+ " : " +elementList[i]);
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測试结果:
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: "http://www.angularjs.cn/A00n"
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4、实体Kpi类的代码:
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private
String remote_addr; // 记录client的ip地址
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private
String remote_user; // 记录clientusername称,忽略属性"-"
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private
String time_local; // 记录訪问时间与时区
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private
String request; // 记录请求的url与http协议
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private
String status; // 记录请求状态;成功是200
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private
String body_bytes_sent; // 记录发送给client文件主体内容大小
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private
String http_referer; // 用来记录从那个页面链接訪问过来的
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private
String http_user_agent; // 记录客户浏览器的相关信息
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private
String method; //请求方法 get post
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private
String http_version;
//http版本号
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public
String getMethod() {
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public
void
setMethod(String method) {
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public
String getHttp_version() {
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public
void
setHttp_version(String http_version) {
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this .http_version = http_version;
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public
String getRemote_addr() {
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public
void
setRemote_addr(String remote_addr) {
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this .remote_addr = remote_addr;
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public
String getRemote_user() {
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public
void
setRemote_user(String remote_user) {
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this .remote_user = remote_user;
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public
String getTime_local() {
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public
void
setTime_local(String time_local) {
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this .time_local = time_local;
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public
String getRequest() {
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public
void
setRequest(String request) {
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public
String getStatus() {
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public
void
setStatus(String status) {
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public
String getBody_bytes_sent() {
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public
void
setBody_bytes_sent(String body_bytes_sent) {
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this .body_bytes_sent = body_bytes_sent;
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public
String getHttp_referer() {
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public
void
setHttp_referer(String http_referer) {
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this .http_referer = http_referer;
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public
String getHttp_user_agent() {
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public
void
setHttp_user_agent(String http_user_agent) {
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this .http_user_agent = http_user_agent;
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public
String toString() {
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return
"Kpi [remote_addr="
+ remote_addr + ", remote_user="
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+ remote_user +
", time_local="
+ time_local + ", request="
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+ request +
", status="
+ status + ", body_bytes_sent="
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+ body_bytes_sent +
", http_referer="
+ http_referer
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+
", http_user_agent="
+ http_user_agent + ", method="
+ method
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+
", http_version="
+ http_version + "]" ;
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5、kpi的工具类
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public
static
Kpi transformLineKpi(String line){
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String[] elementList = line.split( " " );
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kpi.setRemote_addr(elementList[ 0 ]);
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kpi.setRemote_user(elementList[ 1 ]);
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kpi.setTime_local(elementList[ 3 ].substring( 1 ));
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kpi.setMethod(elementList[ 5 ].substring( 1 ));
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kpi.setRequest(elementList[ 6 ]);
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kpi.setHttp_version(elementList[ 7 ]);
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kpi.setStatus(elementList[ 8 ]);
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kpi.setBody_bytes_sent(elementList[ 9 ]);
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kpi.setHttp_referer(elementList[ 10 ]);
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kpi.setHttp_user_agent(elementList[ 11 ] +
" " + elementList[ 12 ]);
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6、算法模型: 并行算法
Browser: 用户的訪问设备统计
– Map: {key:$http_user_agent,value:1}
– Reduce: {key:$http_user_agent,value:求和(sum)}
7、map-reduce分析代码
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import
java.io.IOException;
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import
java.util.Iterator;
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import
org.apache.hadoop.fs.Path;
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import
org.apache.hadoop.io.IntWritable;
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import
org.apache.hadoop.io.Text;
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import
org.apache.hadoop.mapred.FileInputFormat;
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import
org.apache.hadoop.mapred.FileOutputFormat;
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import
org.apache.hadoop.mapred.JobClient;
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import
org.apache.hadoop.mapred.JobConf;
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import
org.apache.hadoop.mapred.MapReduceBase;
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import
org.apache.hadoop.mapred.Mapper;
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import
org.apache.hadoop.mapred.OutputCollector;
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import
org.apache.hadoop.mapred.Reducer;
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import
org.apache.hadoop.mapred.Reporter;
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import
org.apache.hadoop.mapred.TextInputFormat;
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import
org.apache.hadoop.mapred.TextOutputFormat;
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import
org.hmahout.kpi.entity.Kpi;
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import
org.hmahout.kpi.util.KpiUtil;
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import
cz.mallat.uasparser.UASparser;
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import
cz.mallat.uasparser.UserAgentInfo;
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public
class
KpiBrowserSimpleV {
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public
static
class KpiBrowserSimpleMapper
extends
MapReduceBase
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implements
Mapper<Object, Text, Text, IntWritable> {
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public
void
map(Object key, Text value,
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OutputCollector<Text, IntWritable> out, Reporter reporter)
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Kpi kpi = KpiUtil.transformLineKpi(value.toString());
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if (kpi!= null
&& kpi.getHttP_user_agent_info()!= null ){
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parser.parseBrowserOnly(kpi.getHttP_user_agent_info());
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if ( "unknown" .equals(info.getUaName())){
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out.collect( new
Text(info.getUaName()),
new IntWritable( 1 ));
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out.collect( new
Text(info.getUaFamily()),
new IntWritable( 1 ));
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public
static
class KpiBrowserSimpleReducer
extends
MapReduceBase implements
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Reducer<Text, IntWritable, Text, IntWritable>{
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public
void
reduce(Text key, Iterator<IntWritable> value,
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OutputCollector<Text, IntWritable> out, Reporter reporter)
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IntWritable sum =
new IntWritable( 0 );
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sum.set(sum.get()+value.next().get());
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public
static
void main(String[] args)
throws IOException {
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String input =
"hdfs://127.0.0.1:9000/user/tianbx/log_kpi/input" ;
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String output = "hdfs://127.0.0.1:9000/user/tianbx/log_kpi/browerSimpleV" ;
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JobConf conf =
new JobConf(KpiBrowserSimpleV. class );
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conf.setJobName( "KpiBrowserSimpleV" );
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String url =
"classpath:" ;
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conf.addResource(url+ "/hadoop/core-site.xml" );
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conf.addResource(url+ "/hadoop/hdfs-site.xml" );
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conf.addResource(url+ "/hadoop/mapred-site.xml" );
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conf.setMapOutputKeyClass(Text. class );
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conf.setMapOutputValueClass(IntWritable. class );
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conf.setOutputKeyClass(Text. class );
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conf.setOutputValueClass(IntWritable. class );
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conf.setMapperClass(KpiBrowserSimpleMapper. class );
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conf.setCombinerClass(KpiBrowserSimpleReducer. class );
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conf.setReducerClass(KpiBrowserSimpleReducer. class );
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conf.setInputFormat(TextInputFormat. class );
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conf.setOutputFormat(TextOutputFormat. class );
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FileInputFormat.setInputPaths(conf,
new Path(input));
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FileOutputFormat.setOutputPath(conf,
new Path(output));
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8、输出文件log_kpi/browerSimpleV内容
AOL Explorer 1
Android Webkit 123
Chrome 4867
CoolNovo 23
Firefox 1700
Google App Engine 5
IE 1521
Jakarta Commons-HttpClient 3
Maxthon 27
Mobile Safari 273
Mozilla 130
Openwave Mobile Browser 2
Opera 2
Pale Moon 1
Python-urllib 4
Safari 246
Sogou Explorer 157
unknown 4685
8 R制作图片
data<-read.table(file="borwer.txt",header=FALSE,sep=",")
names(data)<-c("borwer","num")
qplot(borwer,num,data=data,geom="bar")
解决这个问题
1、排除爬虫和程序点击,对抗作弊
解决的方法:页面做个检測鼠标是否动。
2、浏览量 怎么排除图片
3、浏览量排除假点击?
4、哪一个搜索引擎訪问的?
5、点击哪一个keyword訪问的?
6、从哪一个地方訪问的?
7、使用哪一个浏览器訪问的?