<span id="mktg5"></span>

<i id="mktg5"><meter id="mktg5"></meter></i>

        <label id="mktg5"><meter id="mktg5"></meter></label>
        最新文章專題視頻專題問答1問答10問答100問答1000問答2000關鍵字專題1關鍵字專題50關鍵字專題500關鍵字專題1500TAG最新視頻文章推薦1 推薦3 推薦5 推薦7 推薦9 推薦11 推薦13 推薦15 推薦17 推薦19 推薦21 推薦23 推薦25 推薦27 推薦29 推薦31 推薦33 推薦35 推薦37視頻文章20視頻文章30視頻文章40視頻文章50視頻文章60 視頻文章70視頻文章80視頻文章90視頻文章100視頻文章120視頻文章140 視頻2關鍵字專題關鍵字專題tag2tag3文章專題文章專題2文章索引1文章索引2文章索引3文章索引4文章索引5123456789101112131415文章專題3
        問答文章1 問答文章501 問答文章1001 問答文章1501 問答文章2001 問答文章2501 問答文章3001 問答文章3501 問答文章4001 問答文章4501 問答文章5001 問答文章5501 問答文章6001 問答文章6501 問答文章7001 問答文章7501 問答文章8001 問答文章8501 問答文章9001 問答文章9501
        當前位置: 首頁 - 科技 - 知識百科 - 正文

        SurvivingSuccessatMatchbook:UsingMMSToTrack

        來源:懂視網 責編:小采 時間:2020-11-09 13:18:39
        文檔

        SurvivingSuccessatMatchbook:UsingMMSToTrack

        SurvivingSuccessatMatchbook:UsingMMSToTrack:This is a guest post from Jared Wyatt, CTO of Matchbook, an app for remembering the places you love and want to try. I joined Matchbook as CTO in January with the goal of breathing new life into an iOS app that had a small, but very devote
        推薦度:
        導讀SurvivingSuccessatMatchbook:UsingMMSToTrack:This is a guest post from Jared Wyatt, CTO of Matchbook, an app for remembering the places you love and want to try. I joined Matchbook as CTO in January with the goal of breathing new life into an iOS app that had a small, but very devote

        This is a guest post from Jared Wyatt, CTO of Matchbook, an app for remembering the places you love and want to try. I joined Matchbook as CTO in January with the goal of breathing new life into an iOS app that had a small, but very devote

        This is a guest post from Jared Wyatt, CTO of Matchbook, an app for remembering the places you love and want to try.

        I joined Matchbook as CTO in January with the goal of breathing new life into an iOS app that had a small, but very devoted following. For various reasons, we decided to start fresh and rebuild everything from the ground up—this included completely revamping the app itself and totally redesigning our API and backend infrastructure. The old system was using MySQL as a datastore, but MongoDB seemed like a better fit for our needs because of its excellent geospatial support and the flexibility offered by its document-oriented data model.

        We submitted Matchbook 2.0 to the App Store at the end of June and within a few days received an email from Apple requesting design assets because they wanted to feature our app. So, of course we were all, like, “OMG OMG OMG.”

        An Influx of Users

        We had originally planned for a quiet roll-out of version 2.0 because it was a completely new codebase and had not really been tested under load. However, our cautious reasoning was replaced by grandiose visions of fame and glory when Apple offered to feature us.

        Matchbook 2.0 launched in the App Store on July 3rd. ?It was listed on the App Store home page under “New & Noteworthy” with top billing in the “Food & Drink” category. Within a week, we had onboarded tens of thousands of new users. Sweeet! It was high-fives all around until it suddenly wasn’t.

        As our user base exploded, our application performance monitoring tool (New Relic) indicated massive amounts of time spent in the database during spikes of heavy user activity. Many, many milliseconds were being squandered somewhere in the ether while our API server was chatting with our MongoDB server. Support tickets and tweets started coming in about how much we sucked. We started freaking out (just a little) and began to rue the day we let Apple promote our app.

        Monitoring to the Rescue

        Prior to the launch, in addition to setting up New Relic to monitor our application, we set up MMS to monitor MongoDB. New Relic showed us that the performance issue was related to the database, but didn’t provide us with the detail necessary to determine what was causing the slowdown. So, I went to MMS. The first thing that caught my eye was the cursors chart. There were some freakish spikes in concurrently open cursors for the amount of activity on the database. So I says to myself, I says, “Jared, that seems sketchy, but why is it happening?”

        I poked around in MMS a bit and noticed the profile data log—it was empty. At the risk of sounding like a n00b, I didn’t know what MongoDB profiling was, but it seemed like something I should look into. The MongoDB profile documentation indicates that level 1 profiles slow operations. Wait—did someone say slow operations? That’s me! I have slow operations! So, I hopped over to our database and said { profile: 1, slowms: 200 }.

        Suddenly, query profiles started showing up in MMS and the universe began to make sense. We discovered that our ODM was running a lot of searches on indexed fields (which is good) using regular expressions instead of strings (which is bad for speediness). Upon further investigation, we found that this was happening because we had used the ODM to assign certain case-insensitive validations to some of the data models in our code. We made the appropriate changes and saw our performance issues immediately disappear. Our users were happy again.

        image

        Post Mortem

        Although it caused big problems, this turned out to be a simple error with a simple fix. If not for MMS, the discovery could have been very time-intensive and stressful. It simply did not occur to us that our case-insensitive validations would cause the ODM to build queries with regular expressions and thus result in mad-crazy performance issues. Thanks to MMS, we got a clear picture of what went wrong, and it led us to implement a more efficient solution that gives us the case-insensitive validations we need without running regex searches in MongoDB.

        It’s widely accepted that enterprise level systems need good monitoring tools because of their size and complexity, but the same need is often overlooked in tech startups. In today’s ecosystem where everyone is standing on the shoulders of dozens of 3rd-party libraries/frameworks/whatever to build a simple app, it’s often difficult to deduce where things might be going wrong. More than ever, the small, lean tech startups need tools that give us good insight so we can optimize performance and solve problems without expending too many of the precious few resources that we have.

        Takeaways

      1. Set up monitoring. Visibility into your operations and interpreting the data correctly is your lifeline. Set up some custom dashboards in MMS for at-a-glance views of key metrics.
      2. Load test. Then load test some more and watch the data. You will see strange and wonderful things that you never thought possible when you watch how your application and database operations perform under load. Try to discover and fix some of these things before you launch. Load testing can also inform you about what specific metrics you should pay close attention to for your particular application.
      3. Set up performance alerts. Once you have a pretty good idea of which metrics you need to pay attention to, create alerts for when these data points approach unacceptable levels.
      4. Set up basic alerts for your server configuration, e.g. a replication lag alert for your replica set.
      5. Strike a ninja-like offensive pose when you launch. You never know what will happen and must be ready with cat-like reflexes.
      6. Learn more about Matchbook at matchbook.co. We’re currently hiring designers and developers, so feel free to drop us a line at jobs@matchbook.co for more info.

        聲明:本網頁內容旨在傳播知識,若有侵權等問題請及時與本網聯系,我們將在第一時間刪除處理。TEL:177 7030 7066 E-MAIL:11247931@qq.com

        文檔

        SurvivingSuccessatMatchbook:UsingMMSToTrack

        SurvivingSuccessatMatchbook:UsingMMSToTrack:This is a guest post from Jared Wyatt, CTO of Matchbook, an app for remembering the places you love and want to try. I joined Matchbook as CTO in January with the goal of breathing new life into an iOS app that had a small, but very devote
        推薦度:
        標簽: to us success
        • 熱門焦點

        最新推薦

        猜你喜歡

        熱門推薦

        專題
        Top
        主站蜘蛛池模板: 亚洲福利一区二区| 亚洲精品无码国产| 亚洲一卡二卡三卡四卡无卡麻豆| 久久成人免费大片| 亚洲AV无码一区二区乱孑伦AS| 好久久免费视频高清| 亚洲成av人影院| 性xxxx视频免费播放直播| 亚洲短视频男人的影院| 99精品在线免费观看| 亚洲综合图片小说区热久久| 91久久精品国产免费直播| 国产成人精品日本亚洲18图| 在线中文高清资源免费观看| 国产精品手机在线亚洲| 亚洲M码 欧洲S码SSS222| 一级毛片免费在线观看网站| 亚洲无av在线中文字幕| 永久看日本大片免费35分钟| 日韩亚洲国产高清免费视频| 亚洲国产一成久久精品国产成人综合| 国产黄在线观看免费观看不卡| 久久亚洲精品成人综合| 成人免费视频网站www| 亚洲熟妇成人精品一区| 国产亚洲精品高清在线| 91香蕉在线观看免费高清| 色天使亚洲综合在线观看| 国产91精品一区二区麻豆亚洲 | 久久久精品视频免费观看| 亚洲AV第一页国产精品| 拨牐拨牐x8免费| j8又粗又长又硬又爽免费视频| 亚洲天堂视频在线观看| 好爽又高潮了毛片免费下载| ww在线观视频免费观看w| 亚洲日本国产乱码va在线观看| 免费大学生国产在线观看p| 日本在线看片免费| 亚洲精品亚洲人成在线| 亚洲第一AV网站|