Upgrade to Pro
— share decks privately, control downloads, hide ads and more …
Speaker Deck
Features
Speaker Deck
PRO
Sign in
Sign up for free
Search
Search
Evolution of a Real-Time Web Analytics Platform
Search
Geoff Wagstaff
October 18, 2013
Technology
380
1
Share
Evolution of a Real-Time Web Analytics Platform
Talk about data stores in use at GoSquared at the AllYourBase conference.
Geoff Wagstaff
October 18, 2013
More Decks by Geoff Wagstaff
See All by Geoff Wagstaff
GoSquared Presentation at AWS for Startups
thedeveloper
1
680
Other Decks in Technology
See All in Technology
JSTQB Expert Levelシラバス「テストマネジメント」日本語版のご紹介
ymty
0
130
出版記念イベントin大阪「書籍紹介&私がよく使うMCPサーバー3選と社内で安全に活用する方法」
kintotechdev
0
150
Goビルドを理解し、 CI/CDの高速化に挑む
satoshin
0
130
15年メンテしてきたdotfilesから開発トレンドを振り返る 2011 - 2026
giginet
PRO
2
280
Cortex Codeでデータの仕事を全部Agenticにやりきろう!
gappy50
0
300
サイボウズ 開発本部採用ピッチ / Cybozu Engineer Recruit
cybozuinsideout
PRO
10
77k
仕様通り動くの先へ。Claude Codeで「使える」を検証する
gotalab555
8
2.5k
スケーリングを封じられたEC2を救いたい
senseofunity129
0
140
組織的なAI活用を阻む 最大のハードルは コンテキストデザインだった
ixbox
1
710
スクラムを支える内部品質の話
iij_pr
0
270
今年60歳のおっさんCBになる
kentapapa
1
170
I ran an automated simulation of fake news spread using OpenClaw.
zzzzico
1
940
Featured
See All Featured
Stewardship and Sustainability of Urban and Community Forests
pwiseman
0
170
"I'm Feeling Lucky" - Building Great Search Experiences for Today's Users (#IAC19)
danielanewman
231
23k
A Soul's Torment
seathinner
5
2.6k
A Tale of Four Properties
chriscoyier
163
24k
Odyssey Design
rkendrick25
PRO
2
560
Imperfection Machines: The Place of Print at Facebook
scottboms
270
14k
How to build an LLM SEO readiness audit: a practical framework
nmsamuel
1
700
コードの90%をAIが書く世界で何が待っているのか / What awaits us in a world where 90% of the code is written by AI
rkaga
61
43k
How to Talk to Developers About Accessibility
jct
2
170
The Director’s Chair: Orchestrating AI for Truly Effective Learning
tmiket
1
140
Groundhog Day: Seeking Process in Gaming for Health
codingconduct
0
140
Save Time (by Creating Custom Rails Generators)
garrettdimon
PRO
32
2.7k
Transcript
The Evolution of a Real-Time Analytics Platform Geoff Wagstaff @TheDeveloper
The Now dashboard
The Trends dashboard
Building Real-Time Analytics Behind the “Now” dashboard
Back in 2009 1 server LAMP stack Conventional hosting
LiveStats v1
None
Meltdown!
Problem? First taste of scale WRITES
Reads are easy to scale Primary Writes Replica 1 Replica
2 Replica 3 Reads Reads Reads
Writes? Not so much. Primary MANY WRITES! Replica 1 Replica
2 Replica 3 Reads Reads Reads :(
Scale Horizontally
Node Node Node Requests Requests Requests NginX -> PHP-FPM <-->
Memcache
Problems
Stupidly high data transfer: several TB per day DB ->
app -> DB round trips High latency on DB ops Race conditions
Redis to the rescue! “Advanced in-memory key-value store”
Rich Data types
Rich Data types Keys Hashes Lists Sets Sorted Sets GET
SET HGET HSET HMSET LPUSH LPOP BLPOP SADD SREM SRANGE ZADD ZREM ZRANGE ZINTERSTORE
Distributed locks Service Service Service Fast counters Fan-out Pub/Sub broadcast
Message queues redis-1 redis-2 Solved concurrency problems
ACID
A C I D tomic onsistent solated urable MySQL MongoDB
Other ACID DBs:
Fast
Fast Redis 2.6.16 on 2.4GHz i7 MBP
Single-process, one per core Run on m1.medium - 1 core,
3.5GB memory Redis cluster is coming! Now on Elasticache Redis deployment
Behind the “Trends” dashboard Building Historical Analytics
Trends v1
Sharded MySQL from outset Aging Unreliable Trends v1
The Trends dashboard
MongoDB vs Cassandra
MongoDB Document store: no schema, flexible Compelling replication & sharding
features Fast in-place field updates similar to Redis
Attempt #1: Store & aggregate Document for each list item,
timestamp and site Aggregation framework: match, group, sort Collection per list type Flexible Made app simpler Huge number of documents Slow aggregate queries: ~1s+ ✔ ✔ X X
Attempt #2 Document per list, timestamp and site Collection per
list type Faster lookups (no aggregation) Fewer documents Smaller _id Document size limit Unordered High data transfer ✔ ✔ ✔ X X X
MongoStat
Downsides High random I/O Document size & relocation Fragmentation Database
lock
K.O. MongoDB
Cassandra Distributed hash ring: masterless Linear scalability Built for scale
+ write throughput
CQL
CQL SELECT sql AS cql FROM mysql WHERE query_language =
“good” Not as scary as Column Families + Thrift SQL Schemas + Querying
CQL CREATE TABLE d_aggregate_day ( sid int, ts int, s
text, v counter PRIMARY KEY (sid, ts, s)) partition key cluster key Distributed counters!
B ASE
B A S E asically vailable oft-state ventually consistent
Eventual consistency isn’t a problem More efficient with the disk
Low maintenance Cheap
Redis + Cassandra = win Redis as a speed layer
+ aggregator for lists Cassandra as timeseries counter storage Collector Redis Cassandra Periodic flushes to Cassandra
Exploit DBs strengths Build an indestructible service Use the best
tools for the job
Thanks! Geoff Wagstaff @TheDeveloper engineering.gosquared.com