Upload
kyle-hailey
View
389
Download
2
Tags:
Embed Size (px)
Citation preview
Are you too busy to Innovate?
Inertia
A new way : Welcome Agile & DevOps!
Waterfall, Agile, Devops
• Waterfall
• Agile
• Agile with Continuous Deploy
Continuous Deploy requires DevOps
Design Code test Deploy
Design Code test Code test DeployCode test Code test
Design
What is DevOps = tools + culture
• Culture :
– Bridging silos between Dev & Ops
– Empathy avoid blame
– Collaboration
• Tools :
– Automation VMs, Puppet, Jenkins
– Self-service
– Measurement
4
Note: DevOps > Tools + Culture
DevOps Goal= optimizing flow from Dev to Ops to Pro
5
Don’t copy steps. Copy the goal
Goal = company’s bottom line
GoalAgile & CI Achieved !
Missed !
Agile & CI vs Waterfall
bugs
time
GoalAgile & CI Achieved !
Missed !
Bugs
profit
time
GoalAgile & CI Achieved !
Missed !
Profit
GoalAgile & CI Achieved !
Missed !
CostPer Deployment time
Cost per Deployment
DevOps and Data : Impossible?
Waterfall
Agile & DevOps
DevOps Goal= optimizing flow from Dev to Ops to Pro
Big Software Release
Small Continuous Releases
The Goal : Theory of Constraints
Improvementnot made at the constraintis an illusion
factory floor optimization
Factory floor
Factory floor
constraint
Not a relay race
Tune before constraint
constraint
Tuning here
Stock piling
Tune after constraint
constraint
Tuning here
Starvation
Factory floor : straight forward
constraint
Goal: find constraint optimize it
Theory of Constraints work for IT ?
• Goals Clarify • Metrics Define • Constraints Identify • Priorities Set • Iterations Fast
• CI• Cloud • Agile • Kanban• Kata
“IT is the factory floor of this century”
The Phoenix Project
What is the constraint
in IT ?
What are the top 5 constraints in IT?
1. Dev environments setup2. QA setup3. Code Architecture4. Development5. Product management
- Gene Kim
“One of the most powerful things that organizations can do is to enable development and testing to get environment they need when they need it“
Data is the constraint
60% Projects Over Schedule
85% delayed waiting for data
Data is the Constraint
CIO Magazine Survey:
only getting worse
Gartner: Data Doomsday, by 2017 1/3rd IT in crisis
• Data Constraint• Solution• Use Cases
In this presentation :
• Data Constraint• Solution• Use Cases
Typical Architecture
Production
Instance
File system
Database
Typical Architecture
Production
Instance
Backup
File system
Database
File system
Database
Typical Architecture
Production
Instance
Reporting Backup
File system
Database
Instance
File system
Database
File system
Database
Typical Architecture
Production
Instance
File system
Database
Instance
File system
Database
File system
Database
File system
Database
InstanceInstance
Instance
File system
Database
File system
Database
Dev, QA, UAT Reporting Backup
Triple Tax
Typical Architecture
Production
Instance
File system
Database
Instance
File system
Database
File system
Database
File system
Database
InstanceInstance
Instance
File system
Database
File system
Database
– Storage & Systems– Personnel – Time
moving data is hard
–Servers–Storage–Network–Data center floor space, power, cooling
copies take up space
Never enough environments
Your Project
Available Resources
• People 1000s hours per year just for DBAs – DBAs– SYS Admin– Storage Admin– Backup Admin – Network Admin
• $100s Millions for data center modernizations
Copies require People & Time
Data floods infrastructure
92% of the cost of business,
in financial services business , is “data”
www.wsta.org/resources/industry-articles
Most companies average5% IT spending , ½ on “data”
http://uclue.com/?xq=1133
companies unaware
companies unaware
Developer or AnalystBoss, Storage Admin, DBA
Metrics
– Time – Old Data – Storage
Other – Analysts – Audits
companies unaware
1. Bottlenecks2. Waiting for environments3. Waiting to check in code4. Production Bugs5. Expensive Slow QA
What Problems does Data Constraint Cause
Development : waiting
Development : bottlenecks
Frustration Waiting
Development : Bugs
Old Unrepresentative Data
Development : subsets
False NegativesFalse PositivesBugs in Production
Production Wall
42
Development : silos
QA : Long Build times
BugX
010203040506070
1 2 3 4 5 6 7
Delay in Fixing the bug
Cost ToCorrect
Software Engineering Economics – Barry Boehm (1981)
• Need lots of copies
• Each copy is like
DevOps : Impossible with databaes?
Design
• Data Constraint
• Solution• Use Cases
In this presentation :
Development UATQA
99% of blocks are identical
Solution
Development QA UAT
Thin Clone
• EMC – 16 snapshots on Symmetrix– Write performance impact– No snapshots of snapshots
• Netapp– 255 snapshots
• ZFS– Compression– Unlimited snapshots– Snapshots of Snapshots
• DxFS– “”– Storage agnostic– Shared cache in memory
Technology Core : file system snapshots
Also check out new SSD storage such as:Pure Storage, EMC XtremIO
Fuel not equal car
Challenges
1. Technical2. Bureaucracy
Bureaucracy
Developer Asks for DB Get Access
Manager approves
DBA Request system
Setup DB
System Admin
Requeststorage
Setupmachine
Storage Admin
Allocate storage (take snapshot)
Why are hand offs so expensive?
1hour1 day
9 days
Bureaucracy
Technical Challenge
Database Luns
Production FilerTarget A
Target B
Target C
snapshotclones
InstanceInstance
InstanceInstance
InstanceInstance
InstanceInstance
Instance
Source
Database LUNs
snapshot
clonesProduction Filer
Development Filer
Technical Challenge
Instance
Target A
Target B
Target C
InstanceInstance
InstanceInstance
InstanceInstance
Instance
Technical Challenge
Copy
Time Flow
Purge
Production
File System Instance
DevelopmentStorage
Clone (snapshot)
Compress
Share Cache
Provision
Mount, recover, rename
Self Service, Roles & Security
Instance
21 3
Technical ChallengeProduction DevelopmentStorage
21 3
– ZFS
– EMC + SRDF
– Netapp + SMO
– Oracle EM 12c + data guard + Netapp /ZFS
– Actifio - hardware
– Delphix - software
2 1
2 13 1 2
How to get a Data Virtualization?
Sourcesync
Deployautomation
Storagesnapshots
21 3
2
31 2
31 2
Goal : virtualize, govern, deliver
59
• Masking: Masking• Security: Chain of custody• Self Service: Logins• Developer: Versioning , branching• Audit: Live Archive
Snap Shots
Thin Cloning
Data Virtualization
Data Supply Chain31 2
2
32
Intel hardware
DB2DataFile SystemsBinaries
Install Delphix on x86 hardware
Allocate Any Storage to Delphix
Allocate StorageAny type
Pure Storage + DelphixBetter Performance for 1/10 the cost
One time backup of source database
Database
Production
File systemFile system
InstanceInstanceInstance
DxFS (Delphix) Compress Data
Database
Production
Data is compressed typically 1/3 size
File system
InstanceInstanceInstance
Incremental forever change collection
Database
Production
File system
Changes
• Collected incrementally forever• Old data purged
File system
Production
InstanceInstanceInstance
Time Flow
Snapshot 1 – full backup once only at link time
Jonathan Lewis © 2013 Virtual DB
65 / 30
a b c d e f g h i
We start with a full backup - analogous to a level 0 rman backup. Includes
the archived redo log files needed for recovery. Run in archivelog mode.
Snapshot 2 (from SCN)
Jonathan Lewis © 2013
b' c'
a b c d e f g h i
The "backup from SCN" is analogous to a level 1
incremental backup (which includes the relevant
archived redo logs). Sensible to enable BCT.
Delphix executes standard rman scripts
Apply Snapshot 2
Jonathan Lewis © 2013
a b c d e f g h ib' c'
The Delphix appliance unpacks the rman backup and "overwrites" the
initial backup with the changed blocks - but DxFS makes new copies of
the blocks
Drop Snapshot 1
Jonathan Lewis © 2013
b' c'a d e f g h i
The call to rman leaves us with a new level 0 backup, waiting for recovery.
But we can pick the snapshot root block. We have EVERY level 0 backup
Creating a vDB
Jonathan Lewis © 2013
b' c'a d e f g h i
The first step in creating a vDB is to take a snapshot of the filesystem as at
the backup you want (then roll it forward)
My vDB(filesystem)
Your vDB(filesystem)
b' c'a d e f g h i
Creating a vDB
Jonathan Lewis © 2013
b' c'a d e f g h i
The first step in creating a vDB is to take a snapshot of the filesystem as at
the backup you want (then roll it forward)
My vDB(filesystem)
Your vDB(filesystem)
i’b' c'a d e f g h ib' c'a d e f g h i
Database Virtualization
Three Physical CopiesThree Virtual Copies
Data Virtualization Appliance
Before Virtual Data
Production Dev, QA, UAT
Instance
Reporting Backup
File system
Database
Instance
File system
Database
File system
Database
File system
Database
InstanceInstance
Instance
File system
Database
File system
Database
“triple data
tax”
With Virtual DataProduction
Instance
Database
Dev & QA
Instance
Database
Reporting
Instance
Database
Backup
Instance Instance Instance
Database
InstanceInstance
Database
InstanceInstance
File system
Database
Data Virtualization Appliance
• Problem in the Industry• Solution• Use Cases
1. Development and QA 2. Production Support3. Business
Use Cases
1. Development and QA2. Production Support3. Business
Use Cases
Development: Virtual Data
• Unlimited • Full size • Self Service
Development
Virtual Data: Easy
Instance
Instance
Instance
Instance
Source
DVA
Development Virtual Data: Parallelize
gif by Steve Karam
Development Virtual Data: Full size
Development Virtual Data: Self Service
QA : Virtual Data• Fast • Parallel• Rollback• A/B testing
Dev
QA
Instance
Prod
DVA
• Low Resource
• Find bugs Fast
QA Virtual Data : Fast
Production Time Flow
QA with Virtual Data: Rewind
Instance
QA
Prod
Production Time Flow
QA with Virtual Data: A/B
Instance
Instance
Instance
Index 1
Index 2
Production Time Flow
Data Version Control
12/3/2014 87
Dev
QA
2.1
Dev
QA
2.2
2.1 2.2
Instance
Prod
DVA Production Time Flow
1. Development and QA2. Production Support3. Business
Use Cases
• Backups• Recovery• Forensics• Migration• Consolidation
Recovery
9TB database 1TB change day 30 day backups storage requirements
90
0
10
20
30
40
50
60
70
wee
k 1
wee
k 2
wee
k 3
wee
k 4
original
Oracle
Delphix
Recovery
Instance
Instance
Recover VDB
Drop
Source
DVA Production Time Flow
Forensics
Instance
Development
DVA
Source
Production Time Flow
Development (the new production)
Instance
Development
DVA
Source
Development
Prod & VDB Time Flow
X
Migration
Consolidation
1. Development and QA2. Production Support3. Business Intelligence
Use Cases
Business Intelligence
• ETL• Temporal• Confidence Testing• Federated Databases• Audits
Business Intelligence: ETL and DW Refreshes
Instance
Prod
Instance
DW & BI
• Collect only Changes• Refresh in minutes
Instance
Prod
BI and DW
ETL24x7
DVA
Virtual Data: Fast Refreshes
Production Time Flow
Temporal Data
Confidence testing
Modernization: Federated
Instance
Instance
Source1
Source2
DVAProduction Time Flow 1
Production Time Flow 2
Modernization: Federated
“I looked like a hero”Tony Young, CIO Informatica
Modernization: Federated
Production Time Flow
Audit
12/3/2014 105
Instance
Prod
DVA
Live Archive
1. Development & QA2. Production Support3. Business
Use Case Summary
How expensive is the Data Constraint?
DVA at Fortune 500 :
Dev throughput increase by 2x
Faster
• Financial Close• BI refreshes• Surgical recovery• Projects
How expensive is the Data Constraint?
• Projects “12 months to 6 months.”– New York Life
• Insurance product “about 50 days ... to about 23 days”– Presbyterian Health
• “Can't imagine working without it”– State of California
Virtual Data Quotes
• Problem: Data is the constraint • Solution: Virtualize Data• Results:
• Half the time for projects• Higher quality• Increase revenue
Summary
Thank you!
• Kyle Hailey| Oracle ACE and Technical Evangelist, Delphix– [email protected]
– kylehailey.com
– slideshare.net/khailey