The Hard Problems of Continuous Deployment
Timothy Fitz (.com)
“Continuous deployment involves deploying early and often, so as to
avoid the pitfalls of "deployment hell". The practice aims to reduce timely rework and thus
reduce cost and development time.”
“Our highest priority is to satisfythe customer through earlyand continuous delivery of
valuable software.”- Principles behind the Agile Manifesto (2001)
The Hard Problems(The ones I’m going to cover)
• Data
• Mobile
• Scale
Data makes CD harder
• Updating data is slow
• Moving data is slow
• Schemas live outside code deploy process
• Rollbacks are often hard or impossible
Schema rev. N, N+1 compatible
• Add the column in production• Push the code that writes to that column• Optionally, run a data migration to populate
the existing rows with data• Push the code that reads from that column.
Apply only cheap changes
• Only apply changes that are cheap enough to not affect live traffic
• More complex changes split into tiny steps:
– Create new table
– Write to both
– Cut over eventually
– Drop old table
Apply change to standby
• Run two DB instances
• Apply change to standby
• Failover if successfully applied
• Might run 3rd db instance for availability
Blue/Green Deploy
• Run two copies of entire cluster
• All databases are replicated
• Lets you test, update and rollback both code and schema in one step
Schemaless NoSQL
• “Schemaless” really means schema is in your source code
– Which is great! We can CD schema changes
Schemaless-style SQL
• Benefits of existing SQL databases while still being pseudoschemaless
• (thing_id, key, value) table
• (guid, blob) table
Recap
• Apply only cheap changes
• Apply changes to standby
• Blue/Green Deploy
• Schemaless NoSQL
• Schemaless-style SQL
Mobile
• Users must opt-in to every update
• iOS submissions take a week to be approved
• Luckily, lots of tools aimed at the space
Remember the basics
• CI server / automated tests are critical
• Can’t fallback on production alarms / rollback
• Hosted options: http://cisimple.com
Data-drive everything
• Build your views / content from data files
• Ping server for updates
• Hosted: http://appgrok.com/
– Lets you deploy txt, png and xib dynamically!
99% HTML
• Entire app is a single UIWebView
• Glue native code to allow access to APIs
• Clutch.io is awesome (and FOSS now)
– Live reloading for local dev
– Streamlined deploys
– https://github.com/clutchio
Hybrid HTML/Native
• Core app is native
• Sections can be replaced by HTML
– i.e. Facebook stream entries fallback to HTML
• Infrequently used sections are 100% HTML
Recap
• Remember the basics
• Data-drive everything
• 99% HTML
• Hybrid HTML/Native
Scalability
• Maintaining availability, performance and happiness
• As a function of # of people
• As a function of # of tests
Availability
• The build must always be green
• Set a “green SLA”
– 99% green
– Never red for > 15m
• Measure, track and report on these numbers
Performance
• Measure (intent to) commit to time of deploy
– Goal: < 5 minutes
• Measure local development test loop
– Goal: < 2s
Happiness
• CI/CD System is a product
• Software Engineers are the customer
• Keep your customer happy!
Testing Pyramid
How do you make tests fast?
• Tests can exercise large amounts of code without being slow
• Minimize system calls (no I/O, no disk)
• Minimize test data size
• Make sure all systems are cheap to instantiate/teardown
• No external state makes tests more reliable
Run Tests in Parallel
• Multiprocess
• Multimachine
• Multi-VM
• Instant multi-VM: http://circleci.com
Hardware Scale
• CI Cluster will get huge
– Function of cumulative engineering man-months
– Rule of thumb: 10% of your cluster size
• You will need a CI/CD DevOps person
– CI cluster monitoring / alerting
– Configuration Management critical
Scale testing infrastructure recap
• Write the right kind of tests
• Make those tests as fast as possible
• Run those tests in parallel
People / Roles
• Sheriff
– Designated reverter / problem troubleshooter
– Common pattern (IMVU, Chromium, Firefox)
• CD “Product Owner”
– Held accountable for SLA / Performance
– Manage infrastructure backlog
Single trunk
• Do this until it doesn’t work for you
• Gets painful in the 16 – 32 developer range
• Faster commit->deploy reduces the pain
– But effort becomes prohibitive
“Try” pipeline
• Conceptually, a second tree that “doesn’t matter” but still gets tested for feedback
• Buildbot implements a patch-pushing version
• Takes a significant amount of pressure off of trunk builds
CI Server takes active role
• Server automatically reverts red commits
• Server merges green commits to trunk
Feature branches
• All incremental development happens on branches, branches land when feature is “ready”
• If “feature” is kept small, can be 2-3 per engineer per week on average
• Less continuous, but scales much better
– Feature branches tested before merge
Merge tree
• Tree per team / feature
• Trees merged into trunk daily (if green)
• Scale up via tree of trees (of trees…)
• Again, less continuous
Federation
• Each team gets their own deploy pipeline
• Requires SOA / component architecture
• Each team can set their own CD pace
• “Enterprise Ready”
Recap
• Single trunk + Try pipeline / Autorevert
• Feature Branches
• Merge Tree
• Federation
Questions?
Timothy Fitz (.com)