视频1 视频21 视频41 视频61 视频文章1 视频文章21 视频文章41 视频文章61 推荐1 推荐3 推荐5 推荐7 推荐9 推荐11 推荐13 推荐15 推荐17 推荐19 推荐21 推荐23 推荐25 推荐27 推荐29 推荐31 推荐33 推荐35 推荐37 推荐39 推荐41 推荐43 推荐45 推荐47 推荐49 关键词1 关键词101 关键词201 关键词301 关键词401 关键词501 关键词601 关键词701 关键词801 关键词901 关键词1001 关键词1101 关键词1201 关键词1301 关键词1401 关键词1501 关键词1601 关键词1701 关键词1801 关键词1901 视频扩展1 视频扩展6 视频扩展11 视频扩展16 文章1 文章201 文章401 文章601 文章801 文章1001 资讯1 资讯501 资讯1001 资讯1501 标签1 标签501 标签1001 关键词1 关键词501 关键词1001 关键词1501 专题2001
Scaling100GBofData
2020-11-09 13:18:37 责编:小采
文档


Surpassing 100GB of data in your application requires you to have in-depth knowledge of how to operate and run MongoDB. MongoHQ recommends going through the 100GB Scaling Checklist as you grow. Watch the webinar recording on the subject fo

Surpassing 100GB of data in your application requires you to have in-depth knowledge of how to operate and run MongoDB. MongoHQ recommends going through the 100GB Scaling Checklist as you grow. Watch the webinar recording on the subject for the full overview:

  1. Identify your data behavior: Figure out how your data patterns and how they are working within your application. You will need to link your data to how your application accesses this data. Consider the simple queries and the more complex queries you will need to look up, like multi-range queries.
  2. Refactor your schema to simplify queries
  3. Remove data that does not fit MongoDB: remove “unrefactorable” data
  4. Separate hot and cold data
  5. Don’t lean on mongodump’: this disrupts RAM and causes performance issues. Consider other Backup options instead, like MMS Backup
  6. Check your gauges: Monitor, monitor, monitor. Even if you aren’t having performance problems, set this up now so you can keep a history of your
  7. Avoid queries causing page faults: MongoHQ has run benchmarks against this to prove this. A system running in memory that was running at 7,000 operations per second was cut down by 50% to 3,500 operations per second when adding 1% table scans churning on a disk.
  8. Track and monitor slow queries: use Dex, MongoProfessor, Mongo-QP or MongoHQ’s Slow Query Tracker.
  9. Buying time with hardware: Don’t get addicted to buying hardware. Before making a purchase, always consider optimization and investigate separating and pairing data.

Watch the full recording with tips from MongoHQ’s Chris Winslet here.

Partner Webinar: The Scaling Checklist for MongoDB - 100GB and beyond from MongoDB

下载本文
显示全文
专题