Enviar búsqueda
Cargar
Scaling Instagram
•
318 recomendaciones
•
189,473 vistas
I
iammutex
Seguir
Instagram 扩展性实践
Leer menos
Leer más
Tecnología
Denunciar
Compartir
Denunciar
Compartir
1 de 185
Descargar ahora
Descargar para leer sin conexión
Recomendados
[215] Druid로 쉽고 빠르게 데이터 분석하기
[215] Druid로 쉽고 빠르게 데이터 분석하기
NAVER D2
서버 아키텍처 이해를 위한 프로세스와 쓰레드
서버 아키텍처 이해를 위한 프로세스와 쓰레드
KwangSeob Jeong
Amazon S3 Best Practice and Tuning for Hadoop/Spark in the Cloud
Amazon S3 Best Practice and Tuning for Hadoop/Spark in the Cloud
Noritaka Sekiyama
Introduction to MongoDB
Introduction to MongoDB
Mike Dirolf
Introduction to MongoDB
Introduction to MongoDB
Ravi Teja
Scalable Web Architectures: Common Patterns and Approaches - Web 2.0 Expo NYC
Scalable Web Architectures: Common Patterns and Approaches - Web 2.0 Expo NYC
Cal Henderson
[124]네이버에서 사용되는 여러가지 Data Platform, 그리고 MongoDB
[124]네이버에서 사용되는 여러가지 Data Platform, 그리고 MongoDB
NAVER D2
Introduction to Apache ZooKeeper
Introduction to Apache ZooKeeper
Saurav Haloi
Recomendados
[215] Druid로 쉽고 빠르게 데이터 분석하기
[215] Druid로 쉽고 빠르게 데이터 분석하기
NAVER D2
서버 아키텍처 이해를 위한 프로세스와 쓰레드
서버 아키텍처 이해를 위한 프로세스와 쓰레드
KwangSeob Jeong
Amazon S3 Best Practice and Tuning for Hadoop/Spark in the Cloud
Amazon S3 Best Practice and Tuning for Hadoop/Spark in the Cloud
Noritaka Sekiyama
Introduction to MongoDB
Introduction to MongoDB
Mike Dirolf
Introduction to MongoDB
Introduction to MongoDB
Ravi Teja
Scalable Web Architectures: Common Patterns and Approaches - Web 2.0 Expo NYC
Scalable Web Architectures: Common Patterns and Approaches - Web 2.0 Expo NYC
Cal Henderson
[124]네이버에서 사용되는 여러가지 Data Platform, 그리고 MongoDB
[124]네이버에서 사용되는 여러가지 Data Platform, 그리고 MongoDB
NAVER D2
Introduction to Apache ZooKeeper
Introduction to Apache ZooKeeper
Saurav Haloi
Introduction to Redis
Introduction to Redis
Dvir Volk
Optimizing Performance in Rust for Low-Latency Database Drivers
Optimizing Performance in Rust for Low-Latency Database Drivers
ScyllaDB
[261] 실시간 추천엔진 머신한대에 구겨넣기
[261] 실시간 추천엔진 머신한대에 구겨넣기
NAVER D2
Streaming SQL for Data Engineers: The Next Big Thing?
Streaming SQL for Data Engineers: The Next Big Thing?
Yaroslav Tkachenko
Apache Kafka Architecture & Fundamentals Explained
Apache Kafka Architecture & Fundamentals Explained
confluent
Redis
Redis
DaeMyung Kang
Scalability, Availability & Stability Patterns
Scalability, Availability & Stability Patterns
Jonas Bonér
How to build massive service for advance
How to build massive service for advance
DaeMyung Kang
Developing with the Go client for Apache Kafka
Developing with the Go client for Apache Kafka
Joe Stein
Presto Summit 2018 - 09 - Netflix Iceberg
Presto Summit 2018 - 09 - Netflix Iceberg
kbajda
Why Task Queues - ComoRichWeb
Why Task Queues - ComoRichWeb
Bryan Helmig
ORC File & Vectorization - Improving Hive Data Storage and Query Performance
ORC File & Vectorization - Improving Hive Data Storage and Query Performance
DataWorks Summit
Introduction to Python Celery
Introduction to Python Celery
Mahendra M
Scaling Twitter
Scaling Twitter
Blaine
[215]네이버콘텐츠통계서비스소개 김기영
[215]네이버콘텐츠통계서비스소개 김기영
NAVER D2
RESTFul API Design and Documentation - an Introduction
RESTFul API Design and Documentation - an Introduction
Miredot
RocksDB Performance and Reliability Practices
RocksDB Performance and Reliability Practices
Yoshinori Matsunobu
How to build a streaming Lakehouse with Flink, Kafka, and Hudi
How to build a streaming Lakehouse with Flink, Kafka, and Hudi
Flink Forward
Spark 의 핵심은 무엇인가? RDD! (RDD paper review)
Spark 의 핵심은 무엇인가? RDD! (RDD paper review)
Yongho Ha
The C10k Problem
The C10k Problem
Subhadra Sundar Chakraborty
Data Infrastructure at LinkedIn
Data Infrastructure at LinkedIn
Amy W. Tang
11 Stats You Didn’t Know About Employee Recognition
11 Stats You Didn’t Know About Employee Recognition
Officevibe
Más contenido relacionado
La actualidad más candente
Introduction to Redis
Introduction to Redis
Dvir Volk
Optimizing Performance in Rust for Low-Latency Database Drivers
Optimizing Performance in Rust for Low-Latency Database Drivers
ScyllaDB
[261] 실시간 추천엔진 머신한대에 구겨넣기
[261] 실시간 추천엔진 머신한대에 구겨넣기
NAVER D2
Streaming SQL for Data Engineers: The Next Big Thing?
Streaming SQL for Data Engineers: The Next Big Thing?
Yaroslav Tkachenko
Apache Kafka Architecture & Fundamentals Explained
Apache Kafka Architecture & Fundamentals Explained
confluent
Redis
Redis
DaeMyung Kang
Scalability, Availability & Stability Patterns
Scalability, Availability & Stability Patterns
Jonas Bonér
How to build massive service for advance
How to build massive service for advance
DaeMyung Kang
Developing with the Go client for Apache Kafka
Developing with the Go client for Apache Kafka
Joe Stein
Presto Summit 2018 - 09 - Netflix Iceberg
Presto Summit 2018 - 09 - Netflix Iceberg
kbajda
Why Task Queues - ComoRichWeb
Why Task Queues - ComoRichWeb
Bryan Helmig
ORC File & Vectorization - Improving Hive Data Storage and Query Performance
ORC File & Vectorization - Improving Hive Data Storage and Query Performance
DataWorks Summit
Introduction to Python Celery
Introduction to Python Celery
Mahendra M
Scaling Twitter
Scaling Twitter
Blaine
[215]네이버콘텐츠통계서비스소개 김기영
[215]네이버콘텐츠통계서비스소개 김기영
NAVER D2
RESTFul API Design and Documentation - an Introduction
RESTFul API Design and Documentation - an Introduction
Miredot
RocksDB Performance and Reliability Practices
RocksDB Performance and Reliability Practices
Yoshinori Matsunobu
How to build a streaming Lakehouse with Flink, Kafka, and Hudi
How to build a streaming Lakehouse with Flink, Kafka, and Hudi
Flink Forward
Spark 의 핵심은 무엇인가? RDD! (RDD paper review)
Spark 의 핵심은 무엇인가? RDD! (RDD paper review)
Yongho Ha
The C10k Problem
The C10k Problem
Subhadra Sundar Chakraborty
La actualidad más candente
(20)
Introduction to Redis
Introduction to Redis
Optimizing Performance in Rust for Low-Latency Database Drivers
Optimizing Performance in Rust for Low-Latency Database Drivers
[261] 실시간 추천엔진 머신한대에 구겨넣기
[261] 실시간 추천엔진 머신한대에 구겨넣기
Streaming SQL for Data Engineers: The Next Big Thing?
Streaming SQL for Data Engineers: The Next Big Thing?
Apache Kafka Architecture & Fundamentals Explained
Apache Kafka Architecture & Fundamentals Explained
Redis
Redis
Scalability, Availability & Stability Patterns
Scalability, Availability & Stability Patterns
How to build massive service for advance
How to build massive service for advance
Developing with the Go client for Apache Kafka
Developing with the Go client for Apache Kafka
Presto Summit 2018 - 09 - Netflix Iceberg
Presto Summit 2018 - 09 - Netflix Iceberg
Why Task Queues - ComoRichWeb
Why Task Queues - ComoRichWeb
ORC File & Vectorization - Improving Hive Data Storage and Query Performance
ORC File & Vectorization - Improving Hive Data Storage and Query Performance
Introduction to Python Celery
Introduction to Python Celery
Scaling Twitter
Scaling Twitter
[215]네이버콘텐츠통계서비스소개 김기영
[215]네이버콘텐츠통계서비스소개 김기영
RESTFul API Design and Documentation - an Introduction
RESTFul API Design and Documentation - an Introduction
RocksDB Performance and Reliability Practices
RocksDB Performance and Reliability Practices
How to build a streaming Lakehouse with Flink, Kafka, and Hudi
How to build a streaming Lakehouse with Flink, Kafka, and Hudi
Spark 의 핵심은 무엇인가? RDD! (RDD paper review)
Spark 의 핵심은 무엇인가? RDD! (RDD paper review)
The C10k Problem
The C10k Problem
Destacado
Data Infrastructure at LinkedIn
Data Infrastructure at LinkedIn
Amy W. Tang
11 Stats You Didn’t Know About Employee Recognition
11 Stats You Didn’t Know About Employee Recognition
Officevibe
Dropbox startup lessons learned 2011
Dropbox startup lessons learned 2011
Eric Ries
Dropbox Startup Lessons Learned
Dropbox Startup Lessons Learned
gueste94e4c
Startup Ideas and Validation
Startup Ideas and Validation
Yevgeniy Brikman
The Little Book of IDEO: Values
The Little Book of IDEO: Values
Tim Brown
Destacado
(6)
Data Infrastructure at LinkedIn
Data Infrastructure at LinkedIn
11 Stats You Didn’t Know About Employee Recognition
11 Stats You Didn’t Know About Employee Recognition
Dropbox startup lessons learned 2011
Dropbox startup lessons learned 2011
Dropbox Startup Lessons Learned
Dropbox Startup Lessons Learned
Startup Ideas and Validation
Startup Ideas and Validation
The Little Book of IDEO: Values
The Little Book of IDEO: Values
Similar a Scaling Instagram
89025069 mike-krieger-instagram-at-the-airbnb-tech-talk-on-scaling-instagram
89025069 mike-krieger-instagram-at-the-airbnb-tech-talk-on-scaling-instagram
Mohit Jain
How a Small Team Scales Instagram
How a Small Team Scales Instagram
C4Media
Mike Krieger - A Brief, Rapid History of Scaling Instagram (with a tiny team)
Mike Krieger - A Brief, Rapid History of Scaling Instagram (with a tiny team)
Jean-Luc David
OrientDB for real & Web App development
OrientDB for real & Web App development
Luca Garulli
Intro to Spark development
Intro to Spark development
Spark Summit
What is Distributed Computing, Why we use Apache Spark
What is Distributed Computing, Why we use Apache Spark
Andy Petrella
Критика "библиотечного" подхода в разработке под Android. UA Mobile 2016.
Критика "библиотечного" подхода в разработке под Android. UA Mobile 2016.
UA Mobile
Introduction to Spark Training
Introduction to Spark Training
Spark Summit
Architecture by Accident
Architecture by Accident
Gleicon Moraes
How Apache Spark fits in the Big Data landscape
How Apache Spark fits in the Big Data landscape
Paco Nathan
Mobile Library Development - stuck between a pod and a jar file - Zan Markan ...
Mobile Library Development - stuck between a pod and a jar file - Zan Markan ...
Codemotion
Resilience: the key requirement of a [big] [data] architecture - StampedeCon...
Resilience: the key requirement of a [big] [data] architecture - StampedeCon...
StampedeCon
Highlights and Challenges from Running Spark on Mesos in Production by Morri ...
Highlights and Challenges from Running Spark on Mesos in Production by Morri ...
Spark Summit
What's new with Apache Spark?
What's new with Apache Spark?
Paco Nathan
SQL to NoSQL: Top 6 Questions
SQL to NoSQL: Top 6 Questions
Mike Broberg
The Future of Computing is Distributed
The Future of Computing is Distributed
Alluxio, Inc.
Scaling PHP apps
Scaling PHP apps
Matteo Moretti
Tiny Batches, in the wine: Shiny New Bits in Spark Streaming
Tiny Batches, in the wine: Shiny New Bits in Spark Streaming
Paco Nathan
Get more than a cache back! The Microsoft Azure Redis Cache (NDC Oslo)
Get more than a cache back! The Microsoft Azure Redis Cache (NDC Oslo)
Maarten Balliauw
How Apache Spark fits into the Big Data landscape
How Apache Spark fits into the Big Data landscape
Paco Nathan
Similar a Scaling Instagram
(20)
89025069 mike-krieger-instagram-at-the-airbnb-tech-talk-on-scaling-instagram
89025069 mike-krieger-instagram-at-the-airbnb-tech-talk-on-scaling-instagram
How a Small Team Scales Instagram
How a Small Team Scales Instagram
Mike Krieger - A Brief, Rapid History of Scaling Instagram (with a tiny team)
Mike Krieger - A Brief, Rapid History of Scaling Instagram (with a tiny team)
OrientDB for real & Web App development
OrientDB for real & Web App development
Intro to Spark development
Intro to Spark development
What is Distributed Computing, Why we use Apache Spark
What is Distributed Computing, Why we use Apache Spark
Критика "библиотечного" подхода в разработке под Android. UA Mobile 2016.
Критика "библиотечного" подхода в разработке под Android. UA Mobile 2016.
Introduction to Spark Training
Introduction to Spark Training
Architecture by Accident
Architecture by Accident
How Apache Spark fits in the Big Data landscape
How Apache Spark fits in the Big Data landscape
Mobile Library Development - stuck between a pod and a jar file - Zan Markan ...
Mobile Library Development - stuck between a pod and a jar file - Zan Markan ...
Resilience: the key requirement of a [big] [data] architecture - StampedeCon...
Resilience: the key requirement of a [big] [data] architecture - StampedeCon...
Highlights and Challenges from Running Spark on Mesos in Production by Morri ...
Highlights and Challenges from Running Spark on Mesos in Production by Morri ...
What's new with Apache Spark?
What's new with Apache Spark?
SQL to NoSQL: Top 6 Questions
SQL to NoSQL: Top 6 Questions
The Future of Computing is Distributed
The Future of Computing is Distributed
Scaling PHP apps
Scaling PHP apps
Tiny Batches, in the wine: Shiny New Bits in Spark Streaming
Tiny Batches, in the wine: Shiny New Bits in Spark Streaming
Get more than a cache back! The Microsoft Azure Redis Cache (NDC Oslo)
Get more than a cache back! The Microsoft Azure Redis Cache (NDC Oslo)
How Apache Spark fits into the Big Data landscape
How Apache Spark fits into the Big Data landscape
Más de iammutex
Redis深入浅出
Redis深入浅出
iammutex
深入了解Redis
深入了解Redis
iammutex
NoSQL误用和常见陷阱分析
NoSQL误用和常见陷阱分析
iammutex
MongoDB 在盛大大数据量下的应用
MongoDB 在盛大大数据量下的应用
iammutex
8 minute MongoDB tutorial slide
8 minute MongoDB tutorial slide
iammutex
skip list
skip list
iammutex
Thoughts on Transaction and Consistency Models
Thoughts on Transaction and Consistency Models
iammutex
Rethink db&tokudb调研测试报告
Rethink db&tokudb调研测试报告
iammutex
redis 适用场景与实现
redis 适用场景与实现
iammutex
Introduction to couchdb
Introduction to couchdb
iammutex
What every data programmer needs to know about disks
What every data programmer needs to know about disks
iammutex
Ooredis
Ooredis
iammutex
Ooredis
Ooredis
iammutex
redis运维之道
redis运维之道
iammutex
Realtime hadoopsigmod2011
Realtime hadoopsigmod2011
iammutex
[译]No sql生态系统
[译]No sql生态系统
iammutex
Couchdb + Membase = Couchbase
Couchdb + Membase = Couchbase
iammutex
Redis cluster
Redis cluster
iammutex
Redis cluster
Redis cluster
iammutex
Hadoop introduction berlin buzzwords 2011
Hadoop introduction berlin buzzwords 2011
iammutex
Más de iammutex
(20)
Redis深入浅出
Redis深入浅出
深入了解Redis
深入了解Redis
NoSQL误用和常见陷阱分析
NoSQL误用和常见陷阱分析
MongoDB 在盛大大数据量下的应用
MongoDB 在盛大大数据量下的应用
8 minute MongoDB tutorial slide
8 minute MongoDB tutorial slide
skip list
skip list
Thoughts on Transaction and Consistency Models
Thoughts on Transaction and Consistency Models
Rethink db&tokudb调研测试报告
Rethink db&tokudb调研测试报告
redis 适用场景与实现
redis 适用场景与实现
Introduction to couchdb
Introduction to couchdb
What every data programmer needs to know about disks
What every data programmer needs to know about disks
Ooredis
Ooredis
Ooredis
Ooredis
redis运维之道
redis运维之道
Realtime hadoopsigmod2011
Realtime hadoopsigmod2011
[译]No sql生态系统
[译]No sql生态系统
Couchdb + Membase = Couchbase
Couchdb + Membase = Couchbase
Redis cluster
Redis cluster
Redis cluster
Redis cluster
Hadoop introduction berlin buzzwords 2011
Hadoop introduction berlin buzzwords 2011
Último
Factors to Consider When Choosing Accounts Payable Services Providers.pptx
Factors to Consider When Choosing Accounts Payable Services Providers.pptx
Katpro Technologies
Presentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreter
naman860154
08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men
Delhi Call girls
Driving Behavioral Change for Information Management through Data-Driven Gree...
Driving Behavioral Change for Information Management through Data-Driven Gree...
Enterprise Knowledge
Exploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone Processors
debabhi2
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
Safe Software
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
Earley Information Science
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...
Igalia
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
The Digital Insurer
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
ThousandEyes
Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt Robison
Anna Loughnan Colquhoun
Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024
The Digital Insurer
🐬 The future of MySQL is Postgres 🐘
🐬 The future of MySQL is Postgres 🐘
RTylerCroy
The Codex of Business Writing Software for Real-World Solutions 2.pptx
The Codex of Business Writing Software for Real-World Solutions 2.pptx
Malak Abu Hammad
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
Neo4j
Artificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and Myths
Joaquim Jorge
[2024]Digital Global Overview Report 2024 Meltwater.pdf
[2024]Digital Global Overview Report 2024 Meltwater.pdf
hans926745
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
HampshireHUG
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
Delhi Call girls
Histor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slide
vu2urc
Último
(20)
Factors to Consider When Choosing Accounts Payable Services Providers.pptx
Factors to Consider When Choosing Accounts Payable Services Providers.pptx
Presentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreter
08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men
Driving Behavioral Change for Information Management through Data-Driven Gree...
Driving Behavioral Change for Information Management through Data-Driven Gree...
Exploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone Processors
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt Robison
Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024
🐬 The future of MySQL is Postgres 🐘
🐬 The future of MySQL is Postgres 🐘
The Codex of Business Writing Software for Real-World Solutions 2.pptx
The Codex of Business Writing Software for Real-World Solutions 2.pptx
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
Artificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and Myths
[2024]Digital Global Overview Report 2024 Meltwater.pdf
[2024]Digital Global Overview Report 2024 Meltwater.pdf
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
Histor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slide
Scaling Instagram
1.
Scaling Instagram
AirBnB Tech Talk 2012 Mike Krieger Instagram
2.
me -
Co-founder, Instagram - Previously: UX & Front-end @ Meebo - Stanford HCI BS/MS - @mikeyk on everything
3.
4.
5.
6.
communicating and sharing in
the real world
7.
30+ million users
in less than 2 years
8.
the story of
how we scaled it
9.
a brief tangent
10.
the beginning
11.
Text
12.
2 product guys
13.
no real back-end
experience
14.
analytics & python
@ meebo
15.
CouchDB
16.
CrimeDesk SF
17.
18.
let’s get hacking
19.
good components in
place early on
20.
...but were hosted
on a single machine somewhere in LA
21.
22.
less powerful than
my MacBook Pro
23.
okay, we launched.
now what?
24.
25k signups in
the first day
25.
everything is on
fire!
26.
best & worst
day of our lives so far
27.
load was through
the roof
28.
first culprit?
29.
30.
favicon.ico
31.
404-ing on Django, causing
tons of errors
32.
lesson #1: don’t
forget your favicon
33.
real lesson #1:
most of your initial scaling problems won’t be glamorous
34.
favicon
35.
ulimit -n
36.
memcached -t 4
37.
prefork/postfork
38.
friday rolls around
39.
not slowing down
40.
let’s move to
EC2.
41.
42.
43.
scaling = replacing
all components of a car while driving it at 100mph
44.
since...
45.
“"canonical [architecture] of an
early stage startup in this era." (HighScalability.com)
46.
Nginx & Redis & Postgres
& Django.
47.
Nginx & HAProxy
& Redis & Memcached & Postgres & Gearman & Django.
48.
24h Ops
49.
50.
51.
our philosophy
52.
1 simplicity
53.
2 optimize for minimal
operational burden
54.
3 instrument everything
55.
walkthrough: 1 scaling the
database 2 choosing technology 3 staying nimble 4 scaling for android
56.
1 scaling the
db
57.
early days
58.
django ORM, postgresql
59.
why pg? postgis.
60.
moved db to
its own machine
61.
but photos kept
growing and growing...
62.
...and only 68GB
of RAM on biggest machine in EC2
63.
so what now?
64.
vertical partitioning
65.
django db routers
make it pretty easy
66.
def db_for_read(self, model):
if app_label == 'photos': return 'photodb'
67.
...once you untangle
all your foreign key relationships
68.
a few months
later...
69.
photosdb > 60GB
70.
what now?
71.
horizontal partitioning!
72.
aka: sharding
73.
“surely we’ll have
hired someone experienced before we actually need to shard”
74.
you don’t get
to choose when scaling challenges come up
75.
evaluated solutions
76.
at the time,
none were up to task of being our primary DB
77.
did in Postgres
itself
78.
what’s painful about
sharding?
79.
1 data retrieval
80.
hard to know
what your primary access patterns will be w/out any usage
81.
in most cases,
user ID
82.
2 what happens
if one of your shards gets too big?
83.
in range-based schemes
(like MongoDB), you split
84.
A-H: shard0 I-Z: shard1
85.
A-D:
shard0 E-H: shard2 I-P: shard1 Q-Z: shard2
86.
downsides (especially on
EC2): disk IO
87.
instead, we pre-split
88.
many many many (thousands)
of logical shards
89.
that map to
fewer physical ones
90.
// 8 logical
shards on 2 machines user_id % 8 = logical shard logical shards -> physical shard map { 0: A, 1: A, 2: A, 3: A, 4: B, 5: B, 6: B, 7: B }
91.
// 8 logical
shards on 2 4 machines user_id % 8 = logical shard logical shards -> physical shard map { 0: A, 1: A, 2: C, 3: C, 4: B, 5: B, 6: D, 7: D }
92.
little known but
awesome PG feature: schemas
93.
not “columns” schema
94.
- database:
- schema: - table: - columns
95.
machineA: shard0
photos_by_user shard1 photos_by_user shard2 photos_by_user shard3 photos_by_user
96.
machineA:
machineA’: shard0 shard0 photos_by_user photos_by_user shard1 shard1 photos_by_user photos_by_user shard2 shard2 photos_by_user photos_by_user shard3 shard3 photos_by_user photos_by_user
97.
machineA:
machineC: shard0 shard0 photos_by_user photos_by_user shard1 shard1 photos_by_user photos_by_user shard2 shard2 photos_by_user photos_by_user shard3 shard3 photos_by_user photos_by_user
98.
can do this
as long as you have more logical shards than physical ones
99.
lesson: take tech/tools you
know and try first to adapt them into a simple solution
100.
2 which tools
where?
101.
where to cache
/ otherwise denormalize data
102.
we <3 redis
103.
what happens when
a user posts a photo?
104.
1 user uploads
photo with (optional) caption and location
105.
2 synchronous write
to the media database for that user
106.
3 queues!
107.
3a if geotagged,
async worker POSTs to Solr
108.
3b follower delivery
109.
can’t have every
user who loads her timeline look up all their followers and then their photos
110.
instead, everyone gets
their own list in Redis
111.
media ID is
pushed onto a list for every person who’s following this user
112.
Redis is awesome
for this; rapid insert, rapid subsets
113.
when time to
render a feed, we take small # of IDs, go look up info in memcached
114.
Redis is great
for...
115.
data structures that
are relatively bounded
116.
(don’t tie yourself
to a solution where your in- memory DB is your main data store)
117.
caching complex objects where
you want to more than GET
118.
ex: counting, sub-
ranges, testing membership
119.
especially when Taylor Swift
posts live from the CMAs
120.
follow graph
121.
v1: simple DB
table (source_id, target_id, status)
122.
who do I
follow? who follows me? do I follow X? does X follow me?
123.
DB was busy,
so we started storing parallel version in Redis
124.
follow_all(300 item list)
125.
inconsistency
126.
extra logic
127.
so much extra
logic
128.
exposing your support
team to the idea of cache invalidation
129.
130.
redesign took a
page from twitter’s book
131.
PG can handle
tens of thousands of requests, very light memcached caching
132.
two takeaways
133.
1 have a
versatile complement to your core data storage (like Redis)
134.
2 try not
to have two tools trying to do the same job
135.
3 staying nimble
136.
2010: 2 engineers
137.
2011: 3 engineers
138.
2012: 5 engineers
139.
scarcity -> focus
140.
engineer solutions that
you’re not constantly returning to because they broke
141.
1 extensive unit-tests
and functional tests
142.
2 keep it
DRY
143.
3 loose coupling
using notifications / signals
144.
4 do most
of our work in Python, drop to C when necessary
145.
5 frequent code
reviews, pull requests to keep things in the ‘shared brain’
146.
6 extensive monitoring
147.
munin
148.
statsd
149.
150.
“how is the
system right now?”
151.
“how does this
compare to historical trends?”
152.
scaling for android
153.
1 million new
users in 12 hours
154.
great tools that
enable easy read scalability
155.
redis: slaveof <host>
<port>
156.
our Redis framework assumes
0+ readslaves
157.
tight iteration loops
158.
statsd & pgfouine
159.
know where you
can shed load if needed
160.
(e.g. shorter feeds)
161.
if you’re tempted
to reinvent the wheel...
162.
don’t.
163.
“our app servers sometimes
kernel panic under load”
164.
...
165.
“what if we
write a monitoring daemon...”
166.
wait! this is
exactly what HAProxy is great at
167.
surround yourself with
awesome advisors
168.
culture of openness around
engineering
169.
give back; e.g.
node2dm
170.
focus on making
what you have better
171.
“fast, beautiful photo
sharing”
172.
“can we make
all of our requests 50% the time?”
173.
staying nimble =
remind yourself of what’s important
174.
your users around
the world don’t care that you wrote your own DB
175.
wrapping up
176.
unprecedented times
177.
2 backend engineers can
scale a system to 30+ million users
178.
key word =
simplicity
179.
cleanest solution with
the fewest moving parts as possible
180.
don’t over-optimize or expect
to know ahead of time how site will scale
181.
don’t think “someone else
will join & take care of this”
182.
will happen sooner
than you think; surround yourself with great advisors
183.
when adding software
to stack: only if you have to, optimizing for operational simplicity
184.
few, if any,
unsolvable scaling challenges for a social startup
185.
have fun
Descargar ahora