[Edit Notes: Three year old startup Freshdesk built out of Chennai, is now clocking 70 million app views per week. The company is growing fast. In this post, its operations head Kiran talks about how they scaled the technology backend.]
Every startup’s fondest dream is to somehow grow exponentially but still stay nimble and super efficient. However that’s easier said than done. The 32GB RAM that is more than capable of handling the load today is going to look like a joke a week later. And with the financial freedom of a startup, you can only take one step at a time.
At Freshdesk, our customer base grew by 400 percent in the last year. And the number of requests boomed from 2 million to 65 million.
These are really cool numbers for a 3-year-old startup but from an engineering perspective, it’s closer to nightmare than dream come true. We scaled left right and center (but mostly upwards) in a really short amount of time, using a whole bunch of vertical techniques. Sure, we eventually had to shard our databases just to keep up, but some of these techniques helped us stay afloat, for quite a while.
Moore’s way
We tried to scale in the most straightforward way there is, by increasing the RAM, CPU and I/O. We travelled from Medium Instance Amazon EC2 First Generation to High Memory Quadruple Extra Large. It effectively increased our RAM from 3.75 GB to 64 GB. Then we figured that the amount of RAM we add and the CPU cycles do not correlate with the workload we get out of the instance. So we stayed put at 64GB.
The Read/write split
Since Freshdesk is a heavy read application (4:1; end user portals, APIs and loads of third party integrations tend to do that to you), we used MYSQL replication and distributed the reads between master and slave to accommodate them. Initially, we had different slaves getting selected for different queries using a round robin algorithm, but that quickly proved ineffective as we had no control over which query hit which DB. We worked around this by marking dedicated roles for each slave. For example, we used a slave for background processing jobs and another for report generation and so on (Seamless Database Pool, a Rails plugin, should do the job but if you’re an Engineyard user, I’d suggest you check out this cookbook).
As expected, the R/W split increased the number of I/Os we performed on our DBs but it didn’t do much good for the number of writes per second.
MySQL Partitioning
MySQL 5 has a built-in partitioning capability so all you have to do is, just choose the partition key and the number of partitions and the table will be partitioned, for you, automatically. However, if you’re thinking about going for MySQL partitioning, here are a couple of things you should keep in mind:
1. You need to choose the partition key carefully or alter the current schema to follow the MySQL partition rules.
2. The number of partitions you start with will affect the I/O operations on the disk directly.
3. If you use a hash-based algorithm with hash-based keys, you cannot control who goes where. This means you’ll be in trouble if two or more noisy customers fall within the same partition.
4. You need to make sure that every query contains the MySQL partition key. A query without the partition key ends up scanning all the partitions. Performance takes a dive as expected.
Post-partitioning, our read performance increased dramatically but, as expected, our number of writes didn’t increase much.
Caching
Some objects like support agent details change only 3-4 times in their lifetime. So, we started caching ActiveRecord objects and as well as html partials (bits and pieces of HTML) using Memcached. We chose Memcached because it scales well with multiple clusters. The Memcached client you use actually makes a lot of difference in the response time so we ended up going with dalli.
Distributed functions
Another way we try to keep the response time low is by using different storage engines for different purposes. For example, we use Amazon RedShift for analytics and data mining and Redis, to store state information and background jobs for Resque. But because Redis can’t scale or fallback, we don’t use it for atomic operations.
Scaling vertically can only get you so far. Even as we tried various techniques, we knew it was only a matter of time before we scaled horizontally. And the rate at which we were growing didn’t give us much time to ponder over whether it was a good decision or not. So before our app response times could sky rocket and the status quo changed, we sharded our databases. But that story’s for another day.
Further reading
About MySQL partitioning
Scaling of Basecamp
Mr.Moore gets to punt on Sharding
[About the Author:Kiran is the Director of Operations atFreshdesk. He calls himself the guy you should be mad at when the application is down. Reproduced with permission fromFreshdesk blog.]

在數據庫優化中,應根據查詢需求選擇索引策略:1.當查詢涉及多個列且條件順序固定時,使用複合索引;2.當查詢涉及多個列但條件順序不固定時,使用多個單列索引。複合索引適用於優化多列查詢,單列索引則適合單列查詢。

要優化MySQL慢查詢,需使用slowquerylog和performance_schema:1.啟用slowquerylog並設置閾值,記錄慢查詢;2.利用performance_schema分析查詢執行細節,找出性能瓶頸並優化。

MySQL和SQL是開發者必備技能。 1.MySQL是開源的關係型數據庫管理系統,SQL是用於管理和操作數據庫的標準語言。 2.MySQL通過高效的數據存儲和檢索功能支持多種存儲引擎,SQL通過簡單語句完成複雜數據操作。 3.使用示例包括基本查詢和高級查詢,如按條件過濾和排序。 4.常見錯誤包括語法錯誤和性能問題,可通過檢查SQL語句和使用EXPLAIN命令優化。 5.性能優化技巧包括使用索引、避免全表掃描、優化JOIN操作和提升代碼可讀性。

MySQL異步主從復制通過binlog實現數據同步,提升讀性能和高可用性。 1)主服務器記錄變更到binlog;2)從服務器通過I/O線程讀取binlog;3)從服務器的SQL線程應用binlog同步數據。

MySQL是一個開源的關係型數據庫管理系統。 1)創建數據庫和表:使用CREATEDATABASE和CREATETABLE命令。 2)基本操作:INSERT、UPDATE、DELETE和SELECT。 3)高級操作:JOIN、子查詢和事務處理。 4)調試技巧:檢查語法、數據類型和權限。 5)優化建議:使用索引、避免SELECT*和使用事務。

MySQL的安裝和基本操作包括:1.下載並安裝MySQL,設置根用戶密碼;2.使用SQL命令創建數據庫和表,如CREATEDATABASE和CREATETABLE;3.執行CRUD操作,使用INSERT,SELECT,UPDATE,DELETE命令;4.創建索引和存儲過程以優化性能和實現複雜邏輯。通過這些步驟,你可以從零開始構建和管理MySQL數據庫。

InnoDBBufferPool通過將數據和索引頁加載到內存中來提升MySQL數據庫的性能。 1)數據頁加載到BufferPool中,減少磁盤I/O。 2)臟頁被標記並定期刷新到磁盤。 3)LRU算法管理數據頁淘汰。 4)預讀機制提前加載可能需要的數據頁。

MySQL適合初學者使用,因為它安裝簡單、功能強大且易於管理數據。 1.安裝和配置簡單,適用於多種操作系統。 2.支持基本操作如創建數據庫和表、插入、查詢、更新和刪除數據。 3.提供高級功能如JOIN操作和子查詢。 4.可以通過索引、查詢優化和分錶分區來提升性能。 5.支持備份、恢復和安全措施,確保數據的安全和一致性。


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