zoukankan      html  css  js  c++  java
  • 性能测试工具 nGrinder 项目剖析及二次开发

    0.背景

    组内需要一款轻量级的性能测试工具,之前考虑过LR(太笨重,单实例,当然它的地位是不容置疑的),阿里云的PTS(https://pts.aliyun.com/lite/index.htm, 仅支持阿里云内网和公网机器),Gatling(http://gatling.io/#/)没有TPS数据等等,不太适合我们。

    nGrinderr是NAVER(韩国最大互联网公司NHN旗下搜索引擎网站)开源的性能测试工具,直接部署成web服务,支持多用户使用,可扩展性好,可自定义plugin(http://www.cubrid.org/wiki_ngrinder/entry/how-to-develop-plugin),wiki文档较丰富(http://www.cubrid.org/wiki_ngrinder/entry/ngrinder-devzone),数据及图形化展示满足需求;但是展示的统计数据较简单,二次开发整合数据:TPS标准差,TPS波动率,最小/大RT,RT 25/50/75/80/85/90/95/99百分位数字段,并将这些数据展示在详细测试报告页中。

    1.项目剖析

    1-1. nGrinder架构

    nGrinder是一款在一系列机器上执行Groovy或JPython测试脚本的应用,内部引擎是基于Grinder。
    架构图:

    层级图:

    默认的NGRINDER_HOME为/root/.ngrinder, 大多是配置文件和数据文件。

    目录/root/.ngrinder/perftest/0_999下,以每个test_id为名的文件夹对应的存储了执行性能测试时的采样数据:

    *.data文件就是执行性能测试时对应的各种性能采样数据,性能测试详细报告页就是根据这些data文件,进行图形化展示(ajax)。

    nGrinder包含2大组件:
    1)Controller
    为性能测试提供web interface
    协同测试进程
    收集和显示测试数据
    新建和修改脚本

    2)Agent
    agent mode: 运行进程和线程,压测目标服务
    monitor mode: 监控目标系统性能(cpu/memory), 可以自定义收集的数据(比如 jvm数据)

    http://www.cubrid.org/wiki_ngrinder/entry/general-architecture

    1-2. 技术栈

    1)Controller 层
    FreeMarker: 基于Java的模板引擎
    Spring Security
    Spring Mvc:Spring MVC provides rich functionality for building robust web applications.
    GSon
    SVNKit Dav

    2)Service 层
    Grinder
    Spring
    EhCache: Ehcache has excellent Spring integration.

    3)Data层
    Spring Data
    Hibernate:Hibernate is a powerful technology for persisting data,and it is Spring Data back-end within nGrinder.
    H2: (nGrinder默认使用该DB)
    Cubrid:(nGrinder同一家公司的DB)
    Liquidase: Liquibase is an open source that automates database schema updates.
    SVNKit

    http://www.cubrid.org/wiki_ngrinder/entry/technology-stack

    2.源码实现

    需求:在详细测试报告页中展示TPS标准差,TPS波动率,最小/大RT,RT 25/50/75/80/85/90/95/99百分位数这些数据。

    修改Controller层,增加数据处理业务逻辑(计算TPS标准差,TPS波动率,最小/大RT,RT 25/50/75/80/85/90/95/99百分位数)

    在获取采样数据
    ngrinder-core/src/main/java/net/grinder/SingleConsole.java中新增处理业务逻辑,核心修改代码片段:

        // tps list
        List<Double> tps = new CopyOnWriteArrayList<Double>();
        // rt list
        List<Double> meanTestTime = new CopyOnWriteArrayList<Double>();
    
        /**
         * 
         * 每次请求调用一次 Build up statistics for current sampling.
         *
         * @param accumulatedStatistics
         *            intervalStatistics
         * @param intervalStatistics
         *            accumulatedStatistics
         */
        protected void updateStatistics(StatisticsSet intervalStatistics,
                StatisticsSet accumulatedStatistics) {
            Map<String, Object> result = newHashMap();
            result.put("testTime", getCurrentRunningTime() / 1000);
            List<Map<String, Object>> cumulativeStatistics = new ArrayList<Map<String, Object>>();
            List<Map<String, Object>> lastSampleStatistics = new ArrayList<Map<String, Object>>();
    
            for (Test test : accumulatedStatisticMapPerTest.keySet()) {
                Map<String, Object> accumulatedStatisticMap = newHashMap();
                Map<String, Object> intervalStatisticsMap = newHashMap();
                StatisticsSet accumulatedSet = this.accumulatedStatisticMapPerTest
                        .get(test);
                StatisticsSet intervalSet = this.intervalStatisticMapPerTest
                        .get(test);
    
                accumulatedStatisticMap.put("testNumber", test.getNumber());
                accumulatedStatisticMap.put("testDescription",
                        test.getDescription());
                intervalStatisticsMap.put("testNumber", test.getNumber());
                intervalStatisticsMap.put("testDescription", test.getDescription());
                // When only 1 test is running, it's better to use the parametrized
                // snapshot.
                for (Entry<String, StatisticExpression> each : getExpressionEntrySet()) {
                    if (INTERESTING_STATISTICS.contains(each.getKey())) {
                        accumulatedStatisticMap.put(
                                each.getKey(),
                                getRealDoubleValue(each.getValue().getDoubleValue(
                                        accumulatedSet)));
                        intervalStatisticsMap.put(
                                each.getKey(),
                                getRealDoubleValue(each.getValue().getDoubleValue(
                                        intervalSet)));
                    }
                }
                cumulativeStatistics.add(accumulatedStatisticMap);
                lastSampleStatistics.add(intervalStatisticsMap);
            }
    
            Map<String, Object> totalStatistics = newHashMap();
    
            for (Entry<String, StatisticExpression> each : getExpressionEntrySet()) {
                if (INTERESTING_STATISTICS.contains(each.getKey())) {
                    totalStatistics.put(each.getKey(), getRealDoubleValue(each
                            .getValue().getDoubleValue(accumulatedStatistics)));
                }
            }
    
            LOGGER.debug("hugang start get plug data");
    
            // 获取tps, rt集合
            for (Entry<String, StatisticExpression> each : getExpressionEntrySet()) {
                if ("TPS".equals(each.getKey())) {
                    tps.add((Double) getRealDoubleValue(each.getValue()
                            .getDoubleValue(intervalStatistics)));
                } else if ("Mean_Test_Time_(ms)".equals(each.getKey())) {
                    meanTestTime.add((Double) getRealDoubleValue(each.getValue()
                            .getDoubleValue(intervalStatistics)));
                }
            }
    
    
            result.put("totalStatistics", totalStatistics);
            result.put("cumulativeStatistics", cumulativeStatistics);
            result.put("lastSampleStatistics", lastSampleStatistics);
            result.put("tpsChartData", getTpsValues());
            result.put("peakTpsForGraph", this.peakTpsForGraph);
            synchronized (this) {
                result.put(GrinderConstants.P_PROCESS, this.runningProcess);
                result.put(GrinderConstants.P_THREAD, this.runningThread);
                result.put("success", !isAllTestFinished());
            }
            // Finally overwrite.. current one.
            this.statisticData = result;
        }
    
        /**
         * 从updateStatistics()累加数据, list :rt 和 tps, 为成员变量
         * 
         * 再处理集合,放到statisticData中
         * 
         * @author hugang
         */
        public void getPlusResult(){
    
            LOGGER.debug("hugang getPlusResult() tpslist {}  rtlist is {}",
                    tps.toString(), meanTestTime.toString());
    
            int i = 0;
            int j = 0;
            // list转成数组, 标准库使用数组作为参数
            double[] tpsArray = new double[tps.size()];
            for (double tpsNum : tps) {
                tpsArray[i++] = tpsNum;
            }
    
            // list转成数组
            double[] meanTestTimeArray = new double[meanTestTime.size()];
            for (double meanTime : meanTestTime) {
                meanTestTimeArray[j++] = meanTime;
            }
    
            // tps 标准差
            double tpsStd = new StandardDeviation().evaluate(tpsArray);
            // tps 平均值
            double tpsMean = new Mean().evaluate(tpsArray, 0, tpsArray.length);
            // tps 波动率= tps 标准差 / tps 平均值
            double tpsVix = 0;
            if(0 != tpsMean){
                tpsVix = tpsStd / tpsMean;
            }
    
            // meanTestTime 百分位数
            Percentile percentile = new Percentile();
            // 先排序
            Arrays.sort(meanTestTimeArray);
            // meanTestTime最小值
            double minMeanTime = meanTestTimeArray[0];
            double twentyFiveMeanTime = percentile.evaluate(meanTestTimeArray, 25);
            double fiftyMeanTime = percentile.evaluate(meanTestTimeArray, 50);
            double serventyFiveMeanTime = percentile
                    .evaluate(meanTestTimeArray, 75);
            double eightyMeanTime = percentile.evaluate(meanTestTimeArray, 80);
            double eightyFiveMeanTime = percentile.evaluate(meanTestTimeArray, 85);
            double ninetyMeanTime = percentile.evaluate(meanTestTimeArray, 90);
            double ninetyFiveMeanTime = percentile.evaluate(meanTestTimeArray, 95);
            double ninetyNineMeanTime = percentile.evaluate(meanTestTimeArray, 99);
    
            int length = meanTestTimeArray.length;
            // meanTestTime最高值
            double maxMeanTime = meanTestTimeArray[length - 1];
            // meanTestTime平均值
            // double TimeMean = new Mean().evaluate(meanTestTimeArray, 0,
            // meanTestTimeArray.length);
    
            LOGGER.debug(
                    "hugang plug Statistics MinMeanTime {}  MaxMeanTime is {}",
                    minMeanTime, maxMeanTime);
            // 附加信息 hugang
            // tps 标准差, tps 波动率, 最小/最大RT, RT百分位数
            Map<String, Object> plusStatistics = newHashMap();
            plusStatistics.put("tpsStd", tpsStd);
    //      plusStatistics.put("tpsMean", tpsMean);
            plusStatistics.put("tpsVix", tpsVix);
            plusStatistics.put("minMeanTime", minMeanTime);
            plusStatistics.put("twentyFiveMeanTime", twentyFiveMeanTime);
            plusStatistics.put("fiftyMeanTime", fiftyMeanTime);
            plusStatistics.put("serventyFiveMeanTime", serventyFiveMeanTime);
            plusStatistics.put("eightyMeanTime", eightyMeanTime);
            plusStatistics.put("eightyFiveMeanTime", eightyFiveMeanTime);
            plusStatistics.put("ninetyMeanTime", ninetyMeanTime);
            plusStatistics.put("ninetyFiveMeanTime", ninetyFiveMeanTime);
            plusStatistics.put("ninetyNineMeanTime", ninetyNineMeanTime);
            plusStatistics.put("maxMeanTime", maxMeanTime);
    
    
            LOGGER.debug("SingleConsole plug Statistics map plusStatistics {}", plusStatistics);
    
    
            this.statisticData.put("plusStatistics", plusStatistics);
        }
    
    
    
        /**
         * 
         * 停止采样数据
         * Stop sampling.
         */
        public void unregisterSampling() {
            this.currentNotFinishedProcessCount = 0;
            if (sampleModel != null) {
                this.sampleModel.reset();
                this.sampleModel.stop();
            }
            LOGGER.info("Sampling is stopped");
            informTestSamplingEnd();
    
            // 结束采样后,处理数据
            // hugang
            getPlusResult();
        }
    

    Map statisticData为不同数据集集合。

    Service层从SingleConsole类中获取数据集statisticData:
    ngrinder-controller/src/main/java/org/ngrinder/perftest/server/PerfTestService.java 中Map<String, Object> result = consoleManager.getConsoleUsingPort(perfTest.getPort()).getStatisticsData();

    /**
         * Update the given {@link PerfTest} properties after test finished.
         *
         * @param perfTest perfTest
         * 
         * getConsoleUsingPort()获取数据
         *
         * 
         * hugang
         */
        public void updatePerfTestAfterTestFinish(PerfTest perfTest) {
            checkNotNull(perfTest);
            Map<String, Object> result = consoleManager.getConsoleUsingPort(perfTest.getPort()).getStatisticsData();
            @SuppressWarnings("unchecked")
            Map<String, Object> totalStatistics = MapUtils.getMap(result, "totalStatistics", MapUtils.EMPTY_MAP);
            // 获取附加数据
            Map<String, Object> plusStatistics = MapUtils.getMap(result, "plusStatistics", MapUtils.EMPTY_MAP);
    
            LOGGER.info("Total Statistics for test {}  is {}", perfTest.getId(), totalStatistics);
            LOGGER.info("plug Statistics for test {}  is {}", perfTest.getId(), plusStatistics);
    
            perfTest.setTps(parseDoubleWithSafety(totalStatistics, "TPS", 0D));
            perfTest.setMeanTestTime(parseDoubleWithSafety(totalStatistics, "Mean_Test_Time_(ms)", 0D));
            perfTest.setPeakTps(parseDoubleWithSafety(totalStatistics, "Peak_TPS", 0D));
            perfTest.setTests(MapUtils.getDouble(totalStatistics, "Tests", 0D).longValue());
            perfTest.setErrors(MapUtils.getDouble(totalStatistics, "Errors", 0D).longValue());
    
    
            // 附加信息写到model, 持久化
            perfTest.setTpsStd(parseDoubleWithSafety(plusStatistics, "tpsStd", 0D));
            perfTest.setTpsVix(parseDoubleWithSafety(plusStatistics, "tpsVix", 0D));
            perfTest.setMinRT(parseDoubleWithSafety(plusStatistics, "minMeanTime", 0D));
            perfTest.setTwentyFiveMeanTime(parseDoubleWithSafety(plusStatistics, "twentyFiveMeanTime", 0D));
            perfTest.setFiftyMeanTime(parseDoubleWithSafety(plusStatistics, "fiftyMeanTime", 0D));
            perfTest.setServentyFiveMeanTime(parseDoubleWithSafety(plusStatistics, "serventyFiveMeanTime", 0D));
            perfTest.setEightyMeanTime(parseDoubleWithSafety(plusStatistics, "eightyMeanTime", 0D));
            perfTest.setEightyFiveMeanTime(parseDoubleWithSafety(plusStatistics, "eightyFiveMeanTime", 0D));
            perfTest.setNinetyMeanTime(parseDoubleWithSafety(plusStatistics, "ninetyMeanTime", 0D));
            perfTest.setNinetyFiveMeanTime(parseDoubleWithSafety(plusStatistics, "ninetyFiveMeanTime", 0D));
            perfTest.setNinetyNineMeanTime(parseDoubleWithSafety(plusStatistics, "ninetyNineMeanTime", 0D));
            perfTest.setMaxRT(parseDoubleWithSafety(plusStatistics, "maxMeanTime", 0D));
    
    
        }
    

    修改Model层,在javabean中增加TPS标准差,TPS波动率,最小/大RT,RT 25/50/75/80/85/90/95/99百分位数, JPA持久化(H2 DB新增TPS标准差,TPS波动率,最小/大RT,RT 25/50/75/80/85/90/95/99百分位数字段)

    model文件为:ngrinder-core/src/main/java/org/ngrinder/model/PerfTest.java

    /**
     * 新增字段,TPS标准差,TPS波动率,最小/大RT,RT 25/50/75/80/85/90/95/99百分位数
     * hugang
     */
    @Expose
    @Column(name = "tpsStd")
    private Double tpsStd;
    
    @Expose
    @Column(name = "tpsVix")
    private Double tpsVix;
    
    
    @Expose
    @Column(name = "minRT")
    private Double minRT;
    
    @Expose
    @Column(name = "twentyFiveMeanTime")
    private Double twentyFiveMeanTime;
    
    @Expose
    @Column(name = "fiftyMeanTime")
    private Double fiftyMeanTime;
    
    @Expose
    @Column(name = "serventyFiveMeanTime")
    private Double serventyFiveMeanTime;
    
    @Expose
    @Column(name = "eightyMeanTime")
    private Double eightyMeanTime;
    
    @Expose
    @Column(name = "eightyFiveMeanTime")
    private Double eightyFiveMeanTime;
    
    @Expose
    @Column(name = "ninetyMeanTime")
    private Double ninetyMeanTime;
    
    @Expose
    @Column(name = "ninetyFiveMeanTime")
    private Double ninetyFiveMeanTime;
    
    @Expose
    @Column(name = "ninetyNineMeanTime")
    private Double ninetyNineMeanTime;
    
    @Expose
    @Column(name = "maxRT")
    private Double maxRT;
    

    对应的set(), get()

    还需修改db change文件(因为系统DB默认使用H2, 只需修改H2对应的xml),ngrinder-controller/src/main/resources/ngrinder_datachange_logfile/db.changelog_schema_H2.xml

    create table PERF_TEST (
                id bigint generated by default as identity unique,
                created_date timestamp,
                last_modified_date timestamp,
                agent_count integer,
                description varchar(2048),
                distribution_path varchar(255),
                duration bigint,
                errors integer,
                finish_time timestamp,
                ignore_sample_count integer,
                init_processes integer,
                init_sleep_time integer,
                last_progress_message varchar(2048),
                mean_test_time double,
                peak_tps double,
                errorRate double,
                tpsStd double,
                tpsVix double,
                minRT double,
                twentyFiveMeanTime double,
                fiftyMeanTime double,
                serventyFiveMeanTime double,
                eightyMeanTime double,
                eightyFiveMeanTime double,
                ninetyMeanTime double,
                ninetyFiveMeanTime double,
                ninetyNineMeanTime double,
                maxRT double,
    

    系统重启加载时,Liquidase会自动更新DB。

    修改View层,在详细报告对应的freemarker模板新增TPS标准差,TPS波动率,最小/大RT,RT 25/50/75/80/85/90/95/99百分位数字段,前端新增展示这些数据

    ngrinder-controller/src/main/webapp/WEB-INF/ftl/perftest/detail_report.ftl

    
    
    <#-- hugang -->
    <#-- 新增 错误率,TPS标准差,TPS波动率,最小RT, 最大RT, RT 25/50/75/80/85/90/95/99百分位数 -->
    <tr>
        <th><@spring.message "perfTest.report.errorRate"/></th>
        <td>${(test.errors /(test.tests + test.errors))!""}</td>
    </tr>
    <tr>
        <th><@spring.message "perfTest.report.tpsStd"/></th>
        <td>${test.tpsStd!""}</td>
    </tr>
    <tr>
        <th><@spring.message "perfTest.report.tpsVix"/></th>
        <td>${test.tpsVix!""}</td>
    </tr>
        <tr>
        <th><@spring.message "perfTest.report.minRT"/></th>
        <td>${test.minRT!""}&nbsp;&nbsp; <code>ms</code></td>
    </tr>
        <tr>
        <th><@spring.message "perfTest.report.TwentyFiveMeanTime"/></th>
        <td>${test.twentyFiveMeanTime!""}&nbsp;&nbsp; <code>ms</code></td>
    </tr>
        <tr>
        <th><@spring.message "perfTest.report.FiftyMeanTime"/></th>
        <td>${test.fiftyMeanTime!""}&nbsp;&nbsp; <code>ms</code></td>
    </tr>
        <tr>
        <th><@spring.message "perfTest.report.ServentyFiveMeanTime"/></th>
        <td>${test.serventyFiveMeanTime!""}&nbsp;&nbsp; <code>ms</code></td>
    </tr>
        <tr>
        <th><@spring.message "perfTest.report.EightyMeanTime"/></th>
        <td>${test.eightyMeanTime!""}&nbsp;&nbsp; <code>ms</code></td>
    </tr>
    </tr>
        <tr>
        <th><@spring.message "perfTest.report.EightyFiveMeanTime"/></th>
        <td>${test.eightyFiveMeanTime!""}&nbsp;&nbsp; <code>ms</code></td>
    </tr>
    </tr>
        <tr>
        <th><@spring.message "perfTest.report.NinetyMeanTime"/></th>
        <td>${test.ninetyMeanTime!""}&nbsp;&nbsp; <code>ms</code></td>
    </tr>
    </tr>
        <tr>
        <th><@spring.message "perfTest.report.NinetyFiveMeanTime"/></th>
        <td>${test.ninetyFiveMeanTime!""}&nbsp;&nbsp; <code>ms</code></td>
    </tr>
    </tr>
        <tr>
        <th><@spring.message "perfTest.report.NinetyNineMeanTime"/></th>
        <td>${test.ninetyNineMeanTime!""}&nbsp;&nbsp; <code>ms</code></td>
    </tr>
        </tr>
        <tr>
        <th><@spring.message "perfTest.report.maxRT"/></th>
        <td>${test.maxRT!""}&nbsp;&nbsp; <code>ms</code></td>
    </tr>
    

    还有个坑,就是从github拉下的代码,源码中pom.xml依赖的jar包不完整,直接打不了包,项目有的依赖的jar 公有maven仓库已经没有了,需要自己从网上找jar包,安装到本地仓库,我归整了下:

    http://download.csdn.net/detail/neven7/9443895

    直接在ngrinder根路径下执行打包命令:

    mvn -Dmaven.test.skip=true clean package
    部署生成的war即可。

    3.结果展示

    在详细报告页新增如下数据结果:

  • 相关阅读:
    2407: C语言习题 整数转换成字符串
    2484: 字母图形
    1658: Easier Done Than Said?
    Easier Done Than Said?(应用到的知识)
    1653: Champion of the Swordsmanship
    1614: 五位以内的对称素数
    1612: 最小公倍数
    $ vs $()
    数学
    计算机科学与技术课程
  • 原文地址:https://www.cnblogs.com/xidianzxm/p/11606784.html
Copyright © 2011-2022 走看看