搜索
首页数据库mysql教程IaaS Provider iland chooses Cassandra over MongoDB

iland chose Apache Cassandra over MongoDB because Cassandra provides constant time writes no matter how big the data set grows and for its distributed nature as well as its massive scalability, reliability, performance, availability, consi

iland
 

“iland chose Apache Cassandra over MongoDB because Cassandra provides constant time writes no matter how big the data set grows and for its distributed nature as well as its “massive” scalability, reliability, performance, availability, consistency and simplicity.”
 

-Julien Anguenot, ?Director of Software Engineering at iland

Julien Anguenot

Julien Anguenot ?Director of Software Engineering at iland

Follow @anguenot

iland
iland internet solutions, founded in 1995, is a pure IaaS player providing enterprise cloud infrastructure and services with several datacenters in North America, Europe and Asia.

iland platform with Cassandra

Cassandra is the sole database leveraged by the land platform, distributed across iland’s datacenters, which is the foundation of the customer-facing ECS2 iland portal.

The platform stores time series: real-time (20 seconds samples coming from vSphere) and historical rollups (1m, 1h, 1d, 1w and 1month) for dozens of virtual machine’s performance counters, corresponding resource pools and networks.

Also, Cassandra stores usage corresponding real-time and historical billing information as well as infrastructure configuration, user information etc. The platform also provides predictive analytics that help companies monitor performance, achieve consistency and anticipate growth requirements.

The iland portal is essentially an easy to use and understand front end (web and mobile) for the iland platform solutions – it covers a wealth of functionality including offering visibility into resource consumption, billing, performance, the impact of change and other key areas. It also provides usage and billing based alerts as well as cloud management features.

Evaluating MongoDB and Cassandra

iland chose Apache Cassandra over MongoDB because Cassandra provides constant time writes no matter how big the data set grows and for its distributed nature as well as its “massive” scalability, reliability, performance, availability, consistency and simplicity.

Constant-time writes no matter how big the data is a must for our real-time performance counters collection since the amount of virtual machines to collect from will increase to ten of thousands along with workers concurrently performing operations at the application level.

Multi-datacenter deployment

We use a Cassandra 2.0.x cluster distributed across 5 datacenters (Los Angeles, CA – Reston, VA – London, UK – Manchester, UK – Singapore)

iland uses the 20x Debian deb packages hosted by the Apache foundation on Ubuntu 12.04 LTS.

We use CQL3 over thrift at the moment, using Astyanax, but we are planning to switch to the DataStax CQL Java driver when Astyanax 2.0 will be released.

Each datacenter has at least one rack of 3 nodes and all data is replicated across all nodes in the cluster.

To date: total cluster nodes is 18 and and we are getting close to 1TB of data (application has been deployed empty in September 2013 with the iland ECS2 brand new offering with no legacy data to migrate over to Cassandra)

?

(RF = replication factor)

?

RF = 3, W – LOCAL_QUORUM (2 nodes), R – LOCAL_QUORUM (2 nodes)

?

This configuration allows for a single node to fail while still serving both READS and WRITES. This setup comes at a cost of having a larger data footprint in terms of storage size. This allows us to use Cassandra’s tunable consistency to our advantage and ensure that all reads are consistent, yet keeping our availability as high as possible when running on 3 nodes.

?

Cassandra nodes are running off Ubuntu powered virtual machines (in vSphere). Each node has 16GB of RAM and 8 vCPUs

?

Getting started

My advice would be to start w/ a single-node instance to avoid clustering related concerns initially and use CQL3 (vs thrift) from the start.

?

Documentation is great, issue tracker and mailing list are great source of information, upgrade and maintenance of Cassandra are painless and drivers such as the DataStax CQL drivers for Python or Java as well as Netflix’s Astyanax have been working just great for us.

声明
本文内容由网友自发贡献,版权归原作者所有,本站不承担相应法律责任。如您发现有涉嫌抄袭侵权的内容,请联系admin@php.cn
说明InnoDB重做日志和撤消日志的作用。说明InnoDB重做日志和撤消日志的作用。Apr 15, 2025 am 12:16 AM

InnoDB使用redologs和undologs确保数据一致性和可靠性。1.redologs记录数据页修改,确保崩溃恢复和事务持久性。2.undologs记录数据原始值,支持事务回滚和MVCC。

在解释输出(类型,键,行,额外)中要查找的关键指标是什么?在解释输出(类型,键,行,额外)中要查找的关键指标是什么?Apr 15, 2025 am 12:15 AM

EXPLAIN命令的关键指标包括type、key、rows和Extra。1)type反映查询的访问类型,值越高效率越高,如const优于ALL。2)key显示使用的索引,NULL表示无索引。3)rows预估扫描行数,影响查询性能。4)Extra提供额外信息,如Usingfilesort提示需要优化。

在解释中使用临时状态以及如何避免它是什么?在解释中使用临时状态以及如何避免它是什么?Apr 15, 2025 am 12:14 AM

Usingtemporary在MySQL查询中表示需要创建临时表,常见于使用DISTINCT、GROUPBY或非索引列的ORDERBY。可以通过优化索引和重写查询避免其出现,提升查询性能。具体来说,Usingtemporary出现在EXPLAIN输出中时,意味着MySQL需要创建临时表来处理查询。这通常发生在以下情况:1)使用DISTINCT或GROUPBY时进行去重或分组;2)ORDERBY包含非索引列时进行排序;3)使用复杂的子查询或联接操作。优化方法包括:1)为ORDERBY和GROUPB

描述不同的SQL交易隔离级别(读取未读取,读取,可重复的读取,可序列化)及其在MySQL/InnoDB中的含义。描述不同的SQL交易隔离级别(读取未读取,读取,可重复的读取,可序列化)及其在MySQL/InnoDB中的含义。Apr 15, 2025 am 12:11 AM

MySQL/InnoDB支持四种事务隔离级别:ReadUncommitted、ReadCommitted、RepeatableRead和Serializable。1.ReadUncommitted允许读取未提交数据,可能导致脏读。2.ReadCommitted避免脏读,但可能发生不可重复读。3.RepeatableRead是默认级别,避免脏读和不可重复读,但可能发生幻读。4.Serializable避免所有并发问题,但降低并发性。选择合适的隔离级别需平衡数据一致性和性能需求。

MySQL与其他数据库:比较选项MySQL与其他数据库:比较选项Apr 15, 2025 am 12:08 AM

MySQL适合Web应用和内容管理系统,因其开源、高性能和易用性而受欢迎。1)与PostgreSQL相比,MySQL在简单查询和高并发读操作上表现更好。2)相较Oracle,MySQL因开源和低成本更受中小企业青睐。3)对比MicrosoftSQLServer,MySQL更适合跨平台应用。4)与MongoDB不同,MySQL更适用于结构化数据和事务处理。

MySQL索引基数如何影响查询性能?MySQL索引基数如何影响查询性能?Apr 14, 2025 am 12:18 AM

MySQL索引基数对查询性能有显着影响:1.高基数索引能更有效地缩小数据范围,提高查询效率;2.低基数索引可能导致全表扫描,降低查询性能;3.在联合索引中,应将高基数列放在前面以优化查询。

MySQL:新用户的资源和教程MySQL:新用户的资源和教程Apr 14, 2025 am 12:16 AM

MySQL学习路径包括基础知识、核心概念、使用示例和优化技巧。1)了解表、行、列、SQL查询等基础概念。2)学习MySQL的定义、工作原理和优势。3)掌握基本CRUD操作和高级用法,如索引和存储过程。4)熟悉常见错误调试和性能优化建议,如合理使用索引和优化查询。通过这些步骤,你将全面掌握MySQL的使用和优化。

现实世界Mysql:示例和用例现实世界Mysql:示例和用例Apr 14, 2025 am 12:15 AM

MySQL在现实世界的应用包括基础数据库设计和复杂查询优化。1)基本用法:用于存储和管理用户数据,如插入、查询、更新和删除用户信息。2)高级用法:处理复杂业务逻辑,如电子商务平台的订单和库存管理。3)性能优化:通过合理使用索引、分区表和查询缓存来提升性能。

See all articles

热AI工具

Undresser.AI Undress

Undresser.AI Undress

人工智能驱动的应用程序,用于创建逼真的裸体照片

AI Clothes Remover

AI Clothes Remover

用于从照片中去除衣服的在线人工智能工具。

Undress AI Tool

Undress AI Tool

免费脱衣服图片

Clothoff.io

Clothoff.io

AI脱衣机

AI Hentai Generator

AI Hentai Generator

免费生成ai无尽的。

热门文章

R.E.P.O.能量晶体解释及其做什么(黄色晶体)
4 周前By尊渡假赌尊渡假赌尊渡假赌
R.E.P.O.最佳图形设置
4 周前By尊渡假赌尊渡假赌尊渡假赌
R.E.P.O.如果您听不到任何人,如何修复音频
4 周前By尊渡假赌尊渡假赌尊渡假赌
WWE 2K25:如何解锁Myrise中的所有内容
1 个月前By尊渡假赌尊渡假赌尊渡假赌

热工具

SublimeText3 Linux新版

SublimeText3 Linux新版

SublimeText3 Linux最新版

适用于 Eclipse 的 SAP NetWeaver 服务器适配器

适用于 Eclipse 的 SAP NetWeaver 服务器适配器

将Eclipse与SAP NetWeaver应用服务器集成。

VSCode Windows 64位 下载

VSCode Windows 64位 下载

微软推出的免费、功能强大的一款IDE编辑器

Dreamweaver Mac版

Dreamweaver Mac版

视觉化网页开发工具

Atom编辑器mac版下载

Atom编辑器mac版下载

最流行的的开源编辑器