SlideShare una empresa de Scribd logo
1 de 57
Abhishek Sinha
Big Data Analytics
Business Development Manager
Overview
• The Big Data Challenge
• Big Data tools and what can we do with them ?
• Packetloop – Big Data Security Analytics
• Intel technology on big data.
An engineer’s definition
When your data sets become so large that you have to start
innovating how to collect, store, organize, analyze and
share it
Generation
Collection & storage
Analytics & computation
Collaboration & sharing
Generation
Collection & storage
Analytics & computation
Collaboration & sharing
Lower cost,
higher throughput
Generation
Collection & storage
Analytics & computation
Collaboration & sharing
Lower cost,
higher throughput
Highly
constrained
Generated data
Available for analysis
Data volume
Gartner: User Survey Analysis: Key Trends Shaping the Future of Data Center Infrastructure Through 2011
IDC: Worldwide Business Analytics Software 2012–2016 Forecast and 2011 Vendor Shares
Amazon Web Services helps remove
constraints
Remove constraints = More experimentation
More experimentation = More innovation
More Innovation = Competitive edge
Elastic MapReduce and Redshift
Big Data tools
EMR is Hadoop in the Cloud
What is Amazon Redshift ?
Amazon Redshift is a fast and powerful, fully managed,
petabyte-scale data warehouse service in the AWS
cloud
Easy to provision and scale
No upfront costs, pay as you go
High performance at a low price
Open and flexible with support for popular BI tools
Elastic MapReduce and Redshift
Big Data tools
How does EMR work ?
EMR
EMR Cluster
S3
Put the data
into S3
Choose: Hadoop distribution, # of
nodes, types of nodes, custom
configs, Hive/Pig/etc.
Get the output from
S3
Launch the cluster using the
EMR console, CLI, SDK, or
APIs
You can also store
everything in HDFS
What can you run on EMR…
S3
EMR
EMR Cluster
EMR
EMR Cluster
Resize Nodes
S3
You can easily add and
remove nodes
Resize Nodes with Spot Instances
Cost without Spot
10 node cluster running for 14 hours
Cost = 1.2 * 10 * 14 = $168
Resize Nodes with Spot Instances
Cost without Spot Add 10 nodes on spot
10 node cluster running for 14 hours
Cost = 1.2 * 10 * 14 = $168
20 node cluster running for 7 hours
Cost = 1.2 * 10 * 7 = $84
= 0.6 * 10 * 7 = $42
Resize Nodes with Spot Instances
Cost without Spot Add 10 nodes on spot
10 node cluster running for 14 hours
Cost = 1.2 * 10 * 14 = $168
20 node cluster running for 7 hours
Cost = 1.2 * 10 * 7 = $84
= 0.6 * 10 * 7 = $42
= Total $126
25% reduction in price
50% reduction in time
Ad-Hoc Clusters – What are they ?
EMR Cluster
S3
When processing is complete, you
can terminate the cluster (and stop
paying)
1
Ad-Hoc Clusters – When to use
EMR Cluster
S3
Not using HDFS
Not using the cluster 24/7
Transient jobs
1
EMR
EMR Cluster
“Alive” Clusters – What are they ?
S3
If you run your jobs 24 x 7 , you
can also run a persistent cluster
and use RI models to save costs
2
EMR
EMR Cluster
“Alive” Clusters – When ?
S3
Frequently running jobs
Dependencies on map-reduce-map
outputs
2
S3 instead of HDFS
S3
EMR
EMR Cluster
• S3 provides 99.99999999999% of
durability
• Elastic
• Version control against failure
• Run multiple clusters with a single
source of truth
• Quick recovery from failure
• Continuously resize clusters
3
S3 and HDFS
S3
EMR
EMR Cluster
Load data from S3 using S3DistCP
Benefits of HDFS
Master copy of the data in S3
Get all the benefits of S3
HDFS
S3distCP
4
Elastic MapReduce and Redshift
Big Data tools
Reporting Data-warehouse
RDBMS
Redshift
OLTP
ERP
Reporting
and BI
1
Live Archive for (Structured) Big Data
DynamoDB
Redshift
OLTP
Web Apps Reporting
and BI
2
Cloud ETL for Big Data
Redshift
Reporting
and BI
Elastic MapReduce
S3
3
Streaming Hive Pig DynamoDB Redshift
Unstructured
Data
✓ ✓
Structured Data ✓ ✓ ✓ ✓
Language
Support
Any* HQL Pig Latin Client SQL
SQL ✓SQL-Like ✓
Volume Unlimited Unlimited Unlimited Relatively
Low
1.6 PB
Latency Medium Medium Medium Ultra Low Low
Collection & storage
Analytics & computation
Collaboration & sharing
Remove
Constraints
Generation
Scott Crane
Packetloop – Big Data Security Analytics
CEO & Co-founder
Disclaimer and Urban Myth
Customers must make the decision to upload data to Packetloop.
We do not transparently intercept customer traffic, nor is it possible within
AWS to do this.
AWS does not give us access to any other AWS customer traffic.
What is Packetloop?
• Big Data Security Analytics
• Uses complete data set from the network flow via packet capture
• 100% delivered in the Cloud
• Instantly available, always up to date
• Powerful visualizations
• Intuitive to use
• Reduces security analysis to minutes
AWS Sydney Summit 2013 - Big Data Analytics
What business problems are we solving?
• Security related information is growing exponentially
• The current generation of technology is struggling to deliver the intelligence
organizations needs, and these technologies create friction due to:
– Solution complexity
– Amount of integration and customization required
– Lack of context and fidelity
• Threats are becoming more complex, including blended attacks and long
running attacks (spanning months and potentially terabytes of flow data)
• Analysts have less time and are forced to be more reactive
Who are we targeting?
• Any organization that definitively wants to know exactly what is happening on
their networks using information that can be determined in real-time and the
information that can be added over time.
• Customers that are currently not receiving what was promised by SIEM
solutions in terms of analytics, size and scale, fidelity and drill-down capabilities.
• Organizations that are already leveraging Cloud providers such as Amazon
AWS.
• Security consultants, Analysts, Penetration Testers who want to take packet
captures and quickly analyze them by uploading to the cloud.
What business challenges did we face?
• Fastest processing possible
• Infinite scale and storage
• Global presence
• Always be available and up to date
• Commodity affordability
• Small team of people
• Limited capital
• Based only in Sydney
• Current databases don’t scale the
way we needed.
The Vision The Reality
Why choose AWS?
• Brand – number 1 in Cloud market
• Presence - everywhere we need to be
• Availability options – allows us to build in the resilience we need
• Flexibility and elasticity – only use what we need and when we need it, whilst
supporting limitless horizontal growth
• Feature sets - always expanding, allows us to constantly refine our offering
• Support – AWS supports our business growth
• Cost – low to start with, always improving, easy to understand and predict
What do we use?
PgSQLCASS CASSLOOP IPS
WEB WEB
Subnet A/24
Subnet B/24
ZONE: US-WEST-2a ZONE: US-WEST-2b
NAT to Elastic IP's NAT to Elastic IP's
www.packetloop.com?
Loop Network
PgSQLCASS CASSLOOP IPS
WEB WEB
Subnet C/24
Subnet D/24
Loop Network
VPC
ROUTER
Cassandra Replicates between availability zones
Postgres is Active/Active between availability zones
Elastic Load Balancer
EMR-1 EMR-N EMR-1 EMR-N
What do we use?
• Elastic MapReduce (EMR) – Hadoop to process jobs to extract security
analytics
• Cassandra – Patented insertion method for storing security metrics data
• PgSQL – user databases, customer settings
• IPS – 2 open source and 2 commercial to obtain indicators and warnings
• S3 – Packet capture storage, both long term and temporary
• VPC – handles replication and active/active traffic between Availability Zones
• Elastic Load Balancer – allows us to scale out Web instances as needed
• Cloudflare (not shown) – cache and acceleration
What has AWS allowed us to achieve?
• Global presence and big company performance
• To be the first truly Cloud centric Security Analytics tool
• Deliver a revolutionary security analytics tool to any user/analyst on the Internet
as a commodity service (charged per GB/per month)
• To dynamically change development and architecture direction without worrying
about any capital investment we may have already made, and while maintaining
a full production instance
• Determine exactly what we spend and 100% link it to customer demand
• To remain a self funded startup
What’s next?
• Shift from batch processing and post hoc analysis to real time processing
• Addition of On Premise appliances, Virtual Machines and AMIs to perform local
capture, preprocessing and transmission of security metrics to Cloud
• Additional modules for analyzing Sessions, Protocols and Files
• Move to Probabilistic Threat Analysis using machine learning
Do your own Big Data Security Analytics…..
• Packetpig is an open source version of our Network Security Analytics toolset
available at github.com/packetloop/packetpig
• Optimised in October 2012 to use AWS Elastic Map Reduce - how to configure
blog.packetloop.com/2012/10/packetpig-on-amazon-elastic-map-
reduce.html
• Configurable scripts to specify what size AWS instances are used for Hadoop,
and how many instances are to be spawned to run the mappers and reducers
Thank you
www.packetloop.com
blog.packetloop.com
scott@packetloop.com
Corey Loehr
corey.loehr@intel.com
Executive, Digital
Economy Enablement
Intel Australia and New
Zealand
Analysis of Data Can Transform
Society
Create new
business
models and
improve
organizationa
l processes.
Enhance
scientific
understanding
, drive
innovation,
and
accelerate
Increase
public safety
and improve
energy
efficiency
with smart
grids.
Democratizing Analytics gets
Value out of Big Data
Unlock
Value in
Silicon
Support Open
Platforms
Deliver
Software
Value
Intel at the Intersection
of Big Data
Enabling
exascale
computing on
massive data
sets
Helping
enterprises
build open
interoperab
le clouds
Contributin
g code and
fostering
ecosystem
HPC Clou
d
Open
Source
Intel at the Heart of the Cloud
Server
Storage
Network
Scale-Out Platform
Optimizations for Big Data
Cost-effective
performance
•Intel® Advanced Vector
Extension Technology
•Intel® Turbo Boost
Technology 2.0
•Intel® Advanced
Encryption Standard New
Instructions Technology
52
Intel® Advanced Vector
Extensions Technology
• Newest in a
long line of
processor
instruction
innovations
• Increases
floating point
operations per
clock up to
2X1
performance1 : Performance comparison using Linpack benchmark. See backup for configuration details.
For more legal information on performance forecasts go to http://www.intel.com/performance
Software and workloads used in performance tests may have been optimized for performance only on Intel microprocessors. Performance tests, such as SYSmark and MobileMark, are
measured using specific computer systems, components, software, operations and functions. Any change to any of those factors may cause the results to vary. You should consult other
information and performance tests to assist you in fully evaluating your contemplated purchases, including the performance of that product when combined with other products.
Intel® Turbo Boost Technology
2.0
More
Performance
Higher turbo
speeds maximize
performance for
single and
multi-threaded
applications
Intel® Advanced
Encryption
Standard New
Instructions• Processor
assistance for
performing AES
encryption
7 new instructions
• Makes enabled
encryption software
faster and stronger
Power of the Platform built
by Intel
Richer
user
experiences
4HR
S
50%
Reduction
10MI
N
80%
Reduction 50%
Reduct
ion
40%
Reduct
ion
TeraSo
rt for
1TB
sort
Intel
®
Xeon®
Proce
ssor
E5
2600
Solid-
State
Drive
10G
Ethernet Intel®
Apache
Hadoop
Previ
ous
Intel
®
Xeon®
Proce
ssor
Cloud
Intelligent
Systems
Clients
Virtuous Cycle of Data-Driven Experience
Big Data Analytics

Más contenido relacionado

La actualidad más candente

Using RightScale CMP with Cloud Provider Tools
Using RightScale CMP with Cloud Provider ToolsUsing RightScale CMP with Cloud Provider Tools
Using RightScale CMP with Cloud Provider ToolsRightScale
 
7 Common Questions About a Cloud Management Platform
7 Common Questions About a Cloud Management Platform7 Common Questions About a Cloud Management Platform
7 Common Questions About a Cloud Management PlatformRightScale
 
AWS Cloud Cost Optimization
AWS Cloud Cost OptimizationAWS Cloud Cost Optimization
AWS Cloud Cost OptimizationYogesh Sharma
 
(BDT311) MegaRun: Behind the 156,000 Core HPC Run on AWS and Experience of On...
(BDT311) MegaRun: Behind the 156,000 Core HPC Run on AWS and Experience of On...(BDT311) MegaRun: Behind the 156,000 Core HPC Run on AWS and Experience of On...
(BDT311) MegaRun: Behind the 156,000 Core HPC Run on AWS and Experience of On...Amazon Web Services
 
Best Practices for Cloud Managed Services Providers: The Path to CMP Success
Best Practices for Cloud Managed Services Providers: The Path to CMP SuccessBest Practices for Cloud Managed Services Providers: The Path to CMP Success
Best Practices for Cloud Managed Services Providers: The Path to CMP SuccessRightScale
 
Webinar: Eventual Consistency != Hopeful Consistency
Webinar: Eventual Consistency != Hopeful ConsistencyWebinar: Eventual Consistency != Hopeful Consistency
Webinar: Eventual Consistency != Hopeful ConsistencyDataStax
 
How Cost Optimization can help me reduce my Cloud bill by upto 75%
How Cost Optimization can help me reduce my Cloud bill by upto 75% How Cost Optimization can help me reduce my Cloud bill by upto 75%
How Cost Optimization can help me reduce my Cloud bill by upto 75% Centilytics
 
Transform IT Operations and Management
Transform IT Operations and ManagementTransform IT Operations and Management
Transform IT Operations and ManagementAmazon Web Services
 
AWS Cloud for HPC and Big Data
AWS Cloud for HPC and Big DataAWS Cloud for HPC and Big Data
AWS Cloud for HPC and Big Datainside-BigData.com
 
Should You Move Between AWS, Azure, or Google Clouds? Considerations, Pros an...
Should You Move Between AWS, Azure, or Google Clouds? Considerations, Pros an...Should You Move Between AWS, Azure, or Google Clouds? Considerations, Pros an...
Should You Move Between AWS, Azure, or Google Clouds? Considerations, Pros an...RightScale
 
Customer Use Case Featuring Hightail
Customer Use Case Featuring HightailCustomer Use Case Featuring Hightail
Customer Use Case Featuring HightailAmazon Web Services
 
Cloud Migration and Portability (with and without Containers)
Cloud Migration and Portability (with and without Containers)Cloud Migration and Portability (with and without Containers)
Cloud Migration and Portability (with and without Containers)RightScale
 
Monitorama - Please, no more Minutes, Milliseconds, Monoliths or Monitoring T...
Monitorama - Please, no more Minutes, Milliseconds, Monoliths or Monitoring T...Monitorama - Please, no more Minutes, Milliseconds, Monoliths or Monitoring T...
Monitorama - Please, no more Minutes, Milliseconds, Monoliths or Monitoring T...Adrian Cockcroft
 
AWS Cost optimization at scale
AWS Cost optimization at scaleAWS Cost optimization at scale
AWS Cost optimization at scaleBrett Pollak
 
12 Ways to Manage Cloud Costs and Optimize Cloud Spend
12 Ways to Manage Cloud Costs and Optimize Cloud Spend12 Ways to Manage Cloud Costs and Optimize Cloud Spend
12 Ways to Manage Cloud Costs and Optimize Cloud SpendRightScale
 
ProtectWise Revolutionizes Enterprise Network Security in the Cloud with Data...
ProtectWise Revolutionizes Enterprise Network Security in the Cloud with Data...ProtectWise Revolutionizes Enterprise Network Security in the Cloud with Data...
ProtectWise Revolutionizes Enterprise Network Security in the Cloud with Data...DataStax Academy
 
Tagging Best Practices for Cloud Governance
Tagging Best Practices for Cloud GovernanceTagging Best Practices for Cloud Governance
Tagging Best Practices for Cloud GovernanceRightScale
 
Webinar Nebula&Scalr : Increasing Business Agility with Real-time Processing ...
Webinar Nebula&Scalr : Increasing Business Agility with Real-time Processing ...Webinar Nebula&Scalr : Increasing Business Agility with Real-time Processing ...
Webinar Nebula&Scalr : Increasing Business Agility with Real-time Processing ...ScalrCMP
 

La actualidad más candente (20)

Using RightScale CMP with Cloud Provider Tools
Using RightScale CMP with Cloud Provider ToolsUsing RightScale CMP with Cloud Provider Tools
Using RightScale CMP with Cloud Provider Tools
 
7 Common Questions About a Cloud Management Platform
7 Common Questions About a Cloud Management Platform7 Common Questions About a Cloud Management Platform
7 Common Questions About a Cloud Management Platform
 
AWS Cloud Cost Optimization
AWS Cloud Cost OptimizationAWS Cloud Cost Optimization
AWS Cloud Cost Optimization
 
(BDT311) MegaRun: Behind the 156,000 Core HPC Run on AWS and Experience of On...
(BDT311) MegaRun: Behind the 156,000 Core HPC Run on AWS and Experience of On...(BDT311) MegaRun: Behind the 156,000 Core HPC Run on AWS and Experience of On...
(BDT311) MegaRun: Behind the 156,000 Core HPC Run on AWS and Experience of On...
 
Best Practices for Cloud Managed Services Providers: The Path to CMP Success
Best Practices for Cloud Managed Services Providers: The Path to CMP SuccessBest Practices for Cloud Managed Services Providers: The Path to CMP Success
Best Practices for Cloud Managed Services Providers: The Path to CMP Success
 
Webinar: Eventual Consistency != Hopeful Consistency
Webinar: Eventual Consistency != Hopeful ConsistencyWebinar: Eventual Consistency != Hopeful Consistency
Webinar: Eventual Consistency != Hopeful Consistency
 
The Cloud Changing the Game
The Cloud Changing the GameThe Cloud Changing the Game
The Cloud Changing the Game
 
How Cost Optimization can help me reduce my Cloud bill by upto 75%
How Cost Optimization can help me reduce my Cloud bill by upto 75% How Cost Optimization can help me reduce my Cloud bill by upto 75%
How Cost Optimization can help me reduce my Cloud bill by upto 75%
 
Transform IT Operations and Management
Transform IT Operations and ManagementTransform IT Operations and Management
Transform IT Operations and Management
 
AWS Cloud for HPC and Big Data
AWS Cloud for HPC and Big DataAWS Cloud for HPC and Big Data
AWS Cloud for HPC and Big Data
 
Should You Move Between AWS, Azure, or Google Clouds? Considerations, Pros an...
Should You Move Between AWS, Azure, or Google Clouds? Considerations, Pros an...Should You Move Between AWS, Azure, or Google Clouds? Considerations, Pros an...
Should You Move Between AWS, Azure, or Google Clouds? Considerations, Pros an...
 
Customer Use Case Featuring Hightail
Customer Use Case Featuring HightailCustomer Use Case Featuring Hightail
Customer Use Case Featuring Hightail
 
Cloud Migration and Portability (with and without Containers)
Cloud Migration and Portability (with and without Containers)Cloud Migration and Portability (with and without Containers)
Cloud Migration and Portability (with and without Containers)
 
Monitorama - Please, no more Minutes, Milliseconds, Monoliths or Monitoring T...
Monitorama - Please, no more Minutes, Milliseconds, Monoliths or Monitoring T...Monitorama - Please, no more Minutes, Milliseconds, Monoliths or Monitoring T...
Monitorama - Please, no more Minutes, Milliseconds, Monoliths or Monitoring T...
 
Planning for the Cloud
Planning for the CloudPlanning for the Cloud
Planning for the Cloud
 
AWS Cost optimization at scale
AWS Cost optimization at scaleAWS Cost optimization at scale
AWS Cost optimization at scale
 
12 Ways to Manage Cloud Costs and Optimize Cloud Spend
12 Ways to Manage Cloud Costs and Optimize Cloud Spend12 Ways to Manage Cloud Costs and Optimize Cloud Spend
12 Ways to Manage Cloud Costs and Optimize Cloud Spend
 
ProtectWise Revolutionizes Enterprise Network Security in the Cloud with Data...
ProtectWise Revolutionizes Enterprise Network Security in the Cloud with Data...ProtectWise Revolutionizes Enterprise Network Security in the Cloud with Data...
ProtectWise Revolutionizes Enterprise Network Security in the Cloud with Data...
 
Tagging Best Practices for Cloud Governance
Tagging Best Practices for Cloud GovernanceTagging Best Practices for Cloud Governance
Tagging Best Practices for Cloud Governance
 
Webinar Nebula&Scalr : Increasing Business Agility with Real-time Processing ...
Webinar Nebula&Scalr : Increasing Business Agility with Real-time Processing ...Webinar Nebula&Scalr : Increasing Business Agility with Real-time Processing ...
Webinar Nebula&Scalr : Increasing Business Agility with Real-time Processing ...
 

Destacado

Richard Rapoport - McGill University Division of Social & Transcultural Psych...
Richard Rapoport - McGill University Division of Social & Transcultural Psych...Richard Rapoport - McGill University Division of Social & Transcultural Psych...
Richard Rapoport - McGill University Division of Social & Transcultural Psych...Richard Rapoport
 
Mindbody tools for resolving trauma
Mindbody tools for resolving traumaMindbody tools for resolving trauma
Mindbody tools for resolving traumaPatricia Worby
 
TREATING ADULT PTSD – Exposure Therapy and Holistic Presentation
TREATING ADULT PTSD – Exposure Therapy and Holistic PresentationTREATING ADULT PTSD – Exposure Therapy and Holistic Presentation
TREATING ADULT PTSD – Exposure Therapy and Holistic PresentationKatherine French-Ewing (LION)
 
Auditory Bilateral Stimulation For Healing and Personal Growth
Auditory Bilateral Stimulation For Healing and Personal GrowthAuditory Bilateral Stimulation For Healing and Personal Growth
Auditory Bilateral Stimulation For Healing and Personal GrowthAlternating Sounds, LLC
 
Emdr Presentation
Emdr PresentationEmdr Presentation
Emdr PresentationJayFellers
 
Présentation Conférence EMDR à la Médiathèque de Nilvange par le professeur C...
Présentation Conférence EMDR à la Médiathèque de Nilvange par le professeur C...Présentation Conférence EMDR à la Médiathèque de Nilvange par le professeur C...
Présentation Conférence EMDR à la Médiathèque de Nilvange par le professeur C...Médiathèque de Nilvange
 

Destacado (7)

Richard Rapoport - McGill University Division of Social & Transcultural Psych...
Richard Rapoport - McGill University Division of Social & Transcultural Psych...Richard Rapoport - McGill University Division of Social & Transcultural Psych...
Richard Rapoport - McGill University Division of Social & Transcultural Psych...
 
RICHARD-POWER POINT
RICHARD-POWER POINTRICHARD-POWER POINT
RICHARD-POWER POINT
 
Mindbody tools for resolving trauma
Mindbody tools for resolving traumaMindbody tools for resolving trauma
Mindbody tools for resolving trauma
 
TREATING ADULT PTSD – Exposure Therapy and Holistic Presentation
TREATING ADULT PTSD – Exposure Therapy and Holistic PresentationTREATING ADULT PTSD – Exposure Therapy and Holistic Presentation
TREATING ADULT PTSD – Exposure Therapy and Holistic Presentation
 
Auditory Bilateral Stimulation For Healing and Personal Growth
Auditory Bilateral Stimulation For Healing and Personal GrowthAuditory Bilateral Stimulation For Healing and Personal Growth
Auditory Bilateral Stimulation For Healing and Personal Growth
 
Emdr Presentation
Emdr PresentationEmdr Presentation
Emdr Presentation
 
Présentation Conférence EMDR à la Médiathèque de Nilvange par le professeur C...
Présentation Conférence EMDR à la Médiathèque de Nilvange par le professeur C...Présentation Conférence EMDR à la Médiathèque de Nilvange par le professeur C...
Présentation Conférence EMDR à la Médiathèque de Nilvange par le professeur C...
 

Similar a AWS Sydney Summit 2013 - Big Data Analytics

Lean Enterprise, Microservices and Big Data
Lean Enterprise, Microservices and Big DataLean Enterprise, Microservices and Big Data
Lean Enterprise, Microservices and Big DataStylight
 
SpringPeople - Introduction to Cloud Computing
SpringPeople - Introduction to Cloud ComputingSpringPeople - Introduction to Cloud Computing
SpringPeople - Introduction to Cloud ComputingSpringPeople
 
Data & Analytics - Session 1 - Big Data Analytics
Data & Analytics - Session 1 -  Big Data AnalyticsData & Analytics - Session 1 -  Big Data Analytics
Data & Analytics - Session 1 - Big Data AnalyticsAmazon Web Services
 
Tapping the cloud for real time data analytics
 Tapping the cloud for real time data analytics Tapping the cloud for real time data analytics
Tapping the cloud for real time data analyticsAmazon Web Services
 
Estimating the Total Costs of Your Cloud Analytics Platform
Estimating the Total Costs of Your Cloud Analytics PlatformEstimating the Total Costs of Your Cloud Analytics Platform
Estimating the Total Costs of Your Cloud Analytics PlatformDATAVERSITY
 
OneAPI Series 2 Webinar - 9th, Dec-20
OneAPI Series 2 Webinar - 9th, Dec-20OneAPI Series 2 Webinar - 9th, Dec-20
OneAPI Series 2 Webinar - 9th, Dec-20Tyrone Systems
 
TECHunplugged Austin 2016
TECHunplugged Austin 2016TECHunplugged Austin 2016
TECHunplugged Austin 2016Chris Evans
 
Leapfrog into Serverless - a Deloitte-Amtrak Case Study | Serverless Confere...
Leapfrog into Serverless - a Deloitte-Amtrak Case Study | Serverless Confere...Leapfrog into Serverless - a Deloitte-Amtrak Case Study | Serverless Confere...
Leapfrog into Serverless - a Deloitte-Amtrak Case Study | Serverless Confere...Gary Arora
 
Building a Global Multi-Tenant Monitoring Platform
Building a Global Multi-Tenant Monitoring PlatformBuilding a Global Multi-Tenant Monitoring Platform
Building a Global Multi-Tenant Monitoring PlatformAmazon Web Services
 
AWS Summit 2013 | Auckland - Big Data Analytics
AWS Summit 2013 | Auckland - Big Data AnalyticsAWS Summit 2013 | Auckland - Big Data Analytics
AWS Summit 2013 | Auckland - Big Data AnalyticsAmazon Web Services
 
Declare Victory with Big Data
Declare Victory with Big DataDeclare Victory with Big Data
Declare Victory with Big DataJ On The Beach
 
Financial impact of Cloud Computing
Financial impact of Cloud ComputingFinancial impact of Cloud Computing
Financial impact of Cloud Computingkrisbliesner
 
B2 - Integrating on-premises workloads with AWS
B2 - Integrating on-premises workloads with AWSB2 - Integrating on-premises workloads with AWS
B2 - Integrating on-premises workloads with AWSAmazon Web Services
 
Intro to AWS: EC2 & Compute Services
Intro to AWS: EC2 & Compute ServicesIntro to AWS: EC2 & Compute Services
Intro to AWS: EC2 & Compute ServicesAmazon Web Services
 
Azure + DataStax Enterprise Powers Office 365 Per User Store
Azure + DataStax Enterprise Powers Office 365 Per User StoreAzure + DataStax Enterprise Powers Office 365 Per User Store
Azure + DataStax Enterprise Powers Office 365 Per User StoreDataStax Academy
 
Best of re:Invent 2016 meetup presentation
Best of re:Invent 2016 meetup presentationBest of re:Invent 2016 meetup presentation
Best of re:Invent 2016 meetup presentationLahav Savir
 
AWS Summit Berlin 2013 - Big Data Analytics
AWS Summit Berlin 2013 - Big Data AnalyticsAWS Summit Berlin 2013 - Big Data Analytics
AWS Summit Berlin 2013 - Big Data AnalyticsAWS Germany
 
Yow Conference Dec 2013 Netflix Workshop Slides with Notes
Yow Conference Dec 2013 Netflix Workshop Slides with NotesYow Conference Dec 2013 Netflix Workshop Slides with Notes
Yow Conference Dec 2013 Netflix Workshop Slides with NotesAdrian Cockcroft
 

Similar a AWS Sydney Summit 2013 - Big Data Analytics (20)

Lean Enterprise, Microservices and Big Data
Lean Enterprise, Microservices and Big DataLean Enterprise, Microservices and Big Data
Lean Enterprise, Microservices and Big Data
 
SpringPeople - Introduction to Cloud Computing
SpringPeople - Introduction to Cloud ComputingSpringPeople - Introduction to Cloud Computing
SpringPeople - Introduction to Cloud Computing
 
Data & Analytics - Session 1 - Big Data Analytics
Data & Analytics - Session 1 -  Big Data AnalyticsData & Analytics - Session 1 -  Big Data Analytics
Data & Analytics - Session 1 - Big Data Analytics
 
Tapping the cloud for real time data analytics
 Tapping the cloud for real time data analytics Tapping the cloud for real time data analytics
Tapping the cloud for real time data analytics
 
Estimating the Total Costs of Your Cloud Analytics Platform
Estimating the Total Costs of Your Cloud Analytics PlatformEstimating the Total Costs of Your Cloud Analytics Platform
Estimating the Total Costs of Your Cloud Analytics Platform
 
Ml ops on AWS
Ml ops on AWSMl ops on AWS
Ml ops on AWS
 
OneAPI Series 2 Webinar - 9th, Dec-20
OneAPI Series 2 Webinar - 9th, Dec-20OneAPI Series 2 Webinar - 9th, Dec-20
OneAPI Series 2 Webinar - 9th, Dec-20
 
TECHunplugged Austin 2016
TECHunplugged Austin 2016TECHunplugged Austin 2016
TECHunplugged Austin 2016
 
Leapfrog into Serverless - a Deloitte-Amtrak Case Study | Serverless Confere...
Leapfrog into Serverless - a Deloitte-Amtrak Case Study | Serverless Confere...Leapfrog into Serverless - a Deloitte-Amtrak Case Study | Serverless Confere...
Leapfrog into Serverless - a Deloitte-Amtrak Case Study | Serverless Confere...
 
AWS Big Data Solution Days
AWS Big Data Solution DaysAWS Big Data Solution Days
AWS Big Data Solution Days
 
Building a Global Multi-Tenant Monitoring Platform
Building a Global Multi-Tenant Monitoring PlatformBuilding a Global Multi-Tenant Monitoring Platform
Building a Global Multi-Tenant Monitoring Platform
 
AWS Summit 2013 | Auckland - Big Data Analytics
AWS Summit 2013 | Auckland - Big Data AnalyticsAWS Summit 2013 | Auckland - Big Data Analytics
AWS Summit 2013 | Auckland - Big Data Analytics
 
Declare Victory with Big Data
Declare Victory with Big DataDeclare Victory with Big Data
Declare Victory with Big Data
 
Financial impact of Cloud Computing
Financial impact of Cloud ComputingFinancial impact of Cloud Computing
Financial impact of Cloud Computing
 
B2 - Integrating on-premises workloads with AWS
B2 - Integrating on-premises workloads with AWSB2 - Integrating on-premises workloads with AWS
B2 - Integrating on-premises workloads with AWS
 
Intro to AWS: EC2 & Compute Services
Intro to AWS: EC2 & Compute ServicesIntro to AWS: EC2 & Compute Services
Intro to AWS: EC2 & Compute Services
 
Azure + DataStax Enterprise Powers Office 365 Per User Store
Azure + DataStax Enterprise Powers Office 365 Per User StoreAzure + DataStax Enterprise Powers Office 365 Per User Store
Azure + DataStax Enterprise Powers Office 365 Per User Store
 
Best of re:Invent 2016 meetup presentation
Best of re:Invent 2016 meetup presentationBest of re:Invent 2016 meetup presentation
Best of re:Invent 2016 meetup presentation
 
AWS Summit Berlin 2013 - Big Data Analytics
AWS Summit Berlin 2013 - Big Data AnalyticsAWS Summit Berlin 2013 - Big Data Analytics
AWS Summit Berlin 2013 - Big Data Analytics
 
Yow Conference Dec 2013 Netflix Workshop Slides with Notes
Yow Conference Dec 2013 Netflix Workshop Slides with NotesYow Conference Dec 2013 Netflix Workshop Slides with Notes
Yow Conference Dec 2013 Netflix Workshop Slides with Notes
 

Más de Amazon Web Services

Come costruire servizi di Forecasting sfruttando algoritmi di ML e deep learn...
Come costruire servizi di Forecasting sfruttando algoritmi di ML e deep learn...Come costruire servizi di Forecasting sfruttando algoritmi di ML e deep learn...
Come costruire servizi di Forecasting sfruttando algoritmi di ML e deep learn...Amazon Web Services
 
Big Data per le Startup: come creare applicazioni Big Data in modalità Server...
Big Data per le Startup: come creare applicazioni Big Data in modalità Server...Big Data per le Startup: come creare applicazioni Big Data in modalità Server...
Big Data per le Startup: come creare applicazioni Big Data in modalità Server...Amazon Web Services
 
Esegui pod serverless con Amazon EKS e AWS Fargate
Esegui pod serverless con Amazon EKS e AWS FargateEsegui pod serverless con Amazon EKS e AWS Fargate
Esegui pod serverless con Amazon EKS e AWS FargateAmazon Web Services
 
Costruire Applicazioni Moderne con AWS
Costruire Applicazioni Moderne con AWSCostruire Applicazioni Moderne con AWS
Costruire Applicazioni Moderne con AWSAmazon Web Services
 
Come spendere fino al 90% in meno con i container e le istanze spot
Come spendere fino al 90% in meno con i container e le istanze spot Come spendere fino al 90% in meno con i container e le istanze spot
Come spendere fino al 90% in meno con i container e le istanze spot Amazon Web Services
 
Rendi unica l’offerta della tua startup sul mercato con i servizi Machine Lea...
Rendi unica l’offerta della tua startup sul mercato con i servizi Machine Lea...Rendi unica l’offerta della tua startup sul mercato con i servizi Machine Lea...
Rendi unica l’offerta della tua startup sul mercato con i servizi Machine Lea...Amazon Web Services
 
OpsWorks Configuration Management: automatizza la gestione e i deployment del...
OpsWorks Configuration Management: automatizza la gestione e i deployment del...OpsWorks Configuration Management: automatizza la gestione e i deployment del...
OpsWorks Configuration Management: automatizza la gestione e i deployment del...Amazon Web Services
 
Microsoft Active Directory su AWS per supportare i tuoi Windows Workloads
Microsoft Active Directory su AWS per supportare i tuoi Windows WorkloadsMicrosoft Active Directory su AWS per supportare i tuoi Windows Workloads
Microsoft Active Directory su AWS per supportare i tuoi Windows WorkloadsAmazon Web Services
 
Database Oracle e VMware Cloud on AWS i miti da sfatare
Database Oracle e VMware Cloud on AWS i miti da sfatareDatabase Oracle e VMware Cloud on AWS i miti da sfatare
Database Oracle e VMware Cloud on AWS i miti da sfatareAmazon Web Services
 
Crea la tua prima serverless ledger-based app con QLDB e NodeJS
Crea la tua prima serverless ledger-based app con QLDB e NodeJSCrea la tua prima serverless ledger-based app con QLDB e NodeJS
Crea la tua prima serverless ledger-based app con QLDB e NodeJSAmazon Web Services
 
API moderne real-time per applicazioni mobili e web
API moderne real-time per applicazioni mobili e webAPI moderne real-time per applicazioni mobili e web
API moderne real-time per applicazioni mobili e webAmazon Web Services
 
Database Oracle e VMware Cloud™ on AWS: i miti da sfatare
Database Oracle e VMware Cloud™ on AWS: i miti da sfatareDatabase Oracle e VMware Cloud™ on AWS: i miti da sfatare
Database Oracle e VMware Cloud™ on AWS: i miti da sfatareAmazon Web Services
 
Tools for building your MVP on AWS
Tools for building your MVP on AWSTools for building your MVP on AWS
Tools for building your MVP on AWSAmazon Web Services
 
How to Build a Winning Pitch Deck
How to Build a Winning Pitch DeckHow to Build a Winning Pitch Deck
How to Build a Winning Pitch DeckAmazon Web Services
 
Building a web application without servers
Building a web application without serversBuilding a web application without servers
Building a web application without serversAmazon Web Services
 
AWS_HK_StartupDay_Building Interactive websites while automating for efficien...
AWS_HK_StartupDay_Building Interactive websites while automating for efficien...AWS_HK_StartupDay_Building Interactive websites while automating for efficien...
AWS_HK_StartupDay_Building Interactive websites while automating for efficien...Amazon Web Services
 
Introduzione a Amazon Elastic Container Service
Introduzione a Amazon Elastic Container ServiceIntroduzione a Amazon Elastic Container Service
Introduzione a Amazon Elastic Container ServiceAmazon Web Services
 

Más de Amazon Web Services (20)

Come costruire servizi di Forecasting sfruttando algoritmi di ML e deep learn...
Come costruire servizi di Forecasting sfruttando algoritmi di ML e deep learn...Come costruire servizi di Forecasting sfruttando algoritmi di ML e deep learn...
Come costruire servizi di Forecasting sfruttando algoritmi di ML e deep learn...
 
Big Data per le Startup: come creare applicazioni Big Data in modalità Server...
Big Data per le Startup: come creare applicazioni Big Data in modalità Server...Big Data per le Startup: come creare applicazioni Big Data in modalità Server...
Big Data per le Startup: come creare applicazioni Big Data in modalità Server...
 
Esegui pod serverless con Amazon EKS e AWS Fargate
Esegui pod serverless con Amazon EKS e AWS FargateEsegui pod serverless con Amazon EKS e AWS Fargate
Esegui pod serverless con Amazon EKS e AWS Fargate
 
Costruire Applicazioni Moderne con AWS
Costruire Applicazioni Moderne con AWSCostruire Applicazioni Moderne con AWS
Costruire Applicazioni Moderne con AWS
 
Come spendere fino al 90% in meno con i container e le istanze spot
Come spendere fino al 90% in meno con i container e le istanze spot Come spendere fino al 90% in meno con i container e le istanze spot
Come spendere fino al 90% in meno con i container e le istanze spot
 
Open banking as a service
Open banking as a serviceOpen banking as a service
Open banking as a service
 
Rendi unica l’offerta della tua startup sul mercato con i servizi Machine Lea...
Rendi unica l’offerta della tua startup sul mercato con i servizi Machine Lea...Rendi unica l’offerta della tua startup sul mercato con i servizi Machine Lea...
Rendi unica l’offerta della tua startup sul mercato con i servizi Machine Lea...
 
OpsWorks Configuration Management: automatizza la gestione e i deployment del...
OpsWorks Configuration Management: automatizza la gestione e i deployment del...OpsWorks Configuration Management: automatizza la gestione e i deployment del...
OpsWorks Configuration Management: automatizza la gestione e i deployment del...
 
Microsoft Active Directory su AWS per supportare i tuoi Windows Workloads
Microsoft Active Directory su AWS per supportare i tuoi Windows WorkloadsMicrosoft Active Directory su AWS per supportare i tuoi Windows Workloads
Microsoft Active Directory su AWS per supportare i tuoi Windows Workloads
 
Computer Vision con AWS
Computer Vision con AWSComputer Vision con AWS
Computer Vision con AWS
 
Database Oracle e VMware Cloud on AWS i miti da sfatare
Database Oracle e VMware Cloud on AWS i miti da sfatareDatabase Oracle e VMware Cloud on AWS i miti da sfatare
Database Oracle e VMware Cloud on AWS i miti da sfatare
 
Crea la tua prima serverless ledger-based app con QLDB e NodeJS
Crea la tua prima serverless ledger-based app con QLDB e NodeJSCrea la tua prima serverless ledger-based app con QLDB e NodeJS
Crea la tua prima serverless ledger-based app con QLDB e NodeJS
 
API moderne real-time per applicazioni mobili e web
API moderne real-time per applicazioni mobili e webAPI moderne real-time per applicazioni mobili e web
API moderne real-time per applicazioni mobili e web
 
Database Oracle e VMware Cloud™ on AWS: i miti da sfatare
Database Oracle e VMware Cloud™ on AWS: i miti da sfatareDatabase Oracle e VMware Cloud™ on AWS: i miti da sfatare
Database Oracle e VMware Cloud™ on AWS: i miti da sfatare
 
Tools for building your MVP on AWS
Tools for building your MVP on AWSTools for building your MVP on AWS
Tools for building your MVP on AWS
 
How to Build a Winning Pitch Deck
How to Build a Winning Pitch DeckHow to Build a Winning Pitch Deck
How to Build a Winning Pitch Deck
 
Building a web application without servers
Building a web application without serversBuilding a web application without servers
Building a web application without servers
 
Fundraising Essentials
Fundraising EssentialsFundraising Essentials
Fundraising Essentials
 
AWS_HK_StartupDay_Building Interactive websites while automating for efficien...
AWS_HK_StartupDay_Building Interactive websites while automating for efficien...AWS_HK_StartupDay_Building Interactive websites while automating for efficien...
AWS_HK_StartupDay_Building Interactive websites while automating for efficien...
 
Introduzione a Amazon Elastic Container Service
Introduzione a Amazon Elastic Container ServiceIntroduzione a Amazon Elastic Container Service
Introduzione a Amazon Elastic Container Service
 

Último

Salesforce Miami User Group Event - 1st Quarter 2024
Salesforce Miami User Group Event - 1st Quarter 2024Salesforce Miami User Group Event - 1st Quarter 2024
Salesforce Miami User Group Event - 1st Quarter 2024SkyPlanner
 
Crea il tuo assistente AI con lo Stregatto (open source python framework)
Crea il tuo assistente AI con lo Stregatto (open source python framework)Crea il tuo assistente AI con lo Stregatto (open source python framework)
Crea il tuo assistente AI con lo Stregatto (open source python framework)Commit University
 
Artificial Intelligence & SEO Trends for 2024
Artificial Intelligence & SEO Trends for 2024Artificial Intelligence & SEO Trends for 2024
Artificial Intelligence & SEO Trends for 2024D Cloud Solutions
 
How Accurate are Carbon Emissions Projections?
How Accurate are Carbon Emissions Projections?How Accurate are Carbon Emissions Projections?
How Accurate are Carbon Emissions Projections?IES VE
 
UiPath Solutions Management Preview - Northern CA Chapter - March 22.pdf
UiPath Solutions Management Preview - Northern CA Chapter - March 22.pdfUiPath Solutions Management Preview - Northern CA Chapter - March 22.pdf
UiPath Solutions Management Preview - Northern CA Chapter - March 22.pdfDianaGray10
 
Igniting Next Level Productivity with AI-Infused Data Integration Workflows
Igniting Next Level Productivity with AI-Infused Data Integration WorkflowsIgniting Next Level Productivity with AI-Infused Data Integration Workflows
Igniting Next Level Productivity with AI-Infused Data Integration WorkflowsSafe Software
 
Comparing Sidecar-less Service Mesh from Cilium and Istio
Comparing Sidecar-less Service Mesh from Cilium and IstioComparing Sidecar-less Service Mesh from Cilium and Istio
Comparing Sidecar-less Service Mesh from Cilium and IstioChristian Posta
 
Building Your Own AI Instance (TBLC AI )
Building Your Own AI Instance (TBLC AI )Building Your Own AI Instance (TBLC AI )
Building Your Own AI Instance (TBLC AI )Brian Pichman
 
AI You Can Trust - Ensuring Success with Data Integrity Webinar
AI You Can Trust - Ensuring Success with Data Integrity WebinarAI You Can Trust - Ensuring Success with Data Integrity Webinar
AI You Can Trust - Ensuring Success with Data Integrity WebinarPrecisely
 
UiPath Community: AI for UiPath Automation Developers
UiPath Community: AI for UiPath Automation DevelopersUiPath Community: AI for UiPath Automation Developers
UiPath Community: AI for UiPath Automation DevelopersUiPathCommunity
 
Meet the new FSP 3000 M-Flex800™
Meet the new FSP 3000 M-Flex800™Meet the new FSP 3000 M-Flex800™
Meet the new FSP 3000 M-Flex800™Adtran
 
UWB Technology for Enhanced Indoor and Outdoor Positioning in Physiological M...
UWB Technology for Enhanced Indoor and Outdoor Positioning in Physiological M...UWB Technology for Enhanced Indoor and Outdoor Positioning in Physiological M...
UWB Technology for Enhanced Indoor and Outdoor Positioning in Physiological M...UbiTrack UK
 
Computer 10: Lesson 10 - Online Crimes and Hazards
Computer 10: Lesson 10 - Online Crimes and HazardsComputer 10: Lesson 10 - Online Crimes and Hazards
Computer 10: Lesson 10 - Online Crimes and HazardsSeth Reyes
 
Secure your environment with UiPath and CyberArk technologies - Session 1
Secure your environment with UiPath and CyberArk technologies - Session 1Secure your environment with UiPath and CyberArk technologies - Session 1
Secure your environment with UiPath and CyberArk technologies - Session 1DianaGray10
 
COMPUTER 10 Lesson 8 - Building a Website
COMPUTER 10 Lesson 8 - Building a WebsiteCOMPUTER 10 Lesson 8 - Building a Website
COMPUTER 10 Lesson 8 - Building a Websitedgelyza
 
COMPUTER 10: Lesson 7 - File Storage and Online Collaboration
COMPUTER 10: Lesson 7 - File Storage and Online CollaborationCOMPUTER 10: Lesson 7 - File Storage and Online Collaboration
COMPUTER 10: Lesson 7 - File Storage and Online Collaborationbruanjhuli
 
20230202 - Introduction to tis-py
20230202 - Introduction to tis-py20230202 - Introduction to tis-py
20230202 - Introduction to tis-pyJamie (Taka) Wang
 
NIST Cybersecurity Framework (CSF) 2.0 Workshop
NIST Cybersecurity Framework (CSF) 2.0 WorkshopNIST Cybersecurity Framework (CSF) 2.0 Workshop
NIST Cybersecurity Framework (CSF) 2.0 WorkshopBachir Benyammi
 
Videogame localization & technology_ how to enhance the power of translation.pdf
Videogame localization & technology_ how to enhance the power of translation.pdfVideogame localization & technology_ how to enhance the power of translation.pdf
Videogame localization & technology_ how to enhance the power of translation.pdfinfogdgmi
 

Último (20)

Salesforce Miami User Group Event - 1st Quarter 2024
Salesforce Miami User Group Event - 1st Quarter 2024Salesforce Miami User Group Event - 1st Quarter 2024
Salesforce Miami User Group Event - 1st Quarter 2024
 
Crea il tuo assistente AI con lo Stregatto (open source python framework)
Crea il tuo assistente AI con lo Stregatto (open source python framework)Crea il tuo assistente AI con lo Stregatto (open source python framework)
Crea il tuo assistente AI con lo Stregatto (open source python framework)
 
Artificial Intelligence & SEO Trends for 2024
Artificial Intelligence & SEO Trends for 2024Artificial Intelligence & SEO Trends for 2024
Artificial Intelligence & SEO Trends for 2024
 
How Accurate are Carbon Emissions Projections?
How Accurate are Carbon Emissions Projections?How Accurate are Carbon Emissions Projections?
How Accurate are Carbon Emissions Projections?
 
UiPath Solutions Management Preview - Northern CA Chapter - March 22.pdf
UiPath Solutions Management Preview - Northern CA Chapter - March 22.pdfUiPath Solutions Management Preview - Northern CA Chapter - March 22.pdf
UiPath Solutions Management Preview - Northern CA Chapter - March 22.pdf
 
Igniting Next Level Productivity with AI-Infused Data Integration Workflows
Igniting Next Level Productivity with AI-Infused Data Integration WorkflowsIgniting Next Level Productivity with AI-Infused Data Integration Workflows
Igniting Next Level Productivity with AI-Infused Data Integration Workflows
 
Comparing Sidecar-less Service Mesh from Cilium and Istio
Comparing Sidecar-less Service Mesh from Cilium and IstioComparing Sidecar-less Service Mesh from Cilium and Istio
Comparing Sidecar-less Service Mesh from Cilium and Istio
 
Building Your Own AI Instance (TBLC AI )
Building Your Own AI Instance (TBLC AI )Building Your Own AI Instance (TBLC AI )
Building Your Own AI Instance (TBLC AI )
 
AI You Can Trust - Ensuring Success with Data Integrity Webinar
AI You Can Trust - Ensuring Success with Data Integrity WebinarAI You Can Trust - Ensuring Success with Data Integrity Webinar
AI You Can Trust - Ensuring Success with Data Integrity Webinar
 
UiPath Community: AI for UiPath Automation Developers
UiPath Community: AI for UiPath Automation DevelopersUiPath Community: AI for UiPath Automation Developers
UiPath Community: AI for UiPath Automation Developers
 
Meet the new FSP 3000 M-Flex800™
Meet the new FSP 3000 M-Flex800™Meet the new FSP 3000 M-Flex800™
Meet the new FSP 3000 M-Flex800™
 
UWB Technology for Enhanced Indoor and Outdoor Positioning in Physiological M...
UWB Technology for Enhanced Indoor and Outdoor Positioning in Physiological M...UWB Technology for Enhanced Indoor and Outdoor Positioning in Physiological M...
UWB Technology for Enhanced Indoor and Outdoor Positioning in Physiological M...
 
Computer 10: Lesson 10 - Online Crimes and Hazards
Computer 10: Lesson 10 - Online Crimes and HazardsComputer 10: Lesson 10 - Online Crimes and Hazards
Computer 10: Lesson 10 - Online Crimes and Hazards
 
Secure your environment with UiPath and CyberArk technologies - Session 1
Secure your environment with UiPath and CyberArk technologies - Session 1Secure your environment with UiPath and CyberArk technologies - Session 1
Secure your environment with UiPath and CyberArk technologies - Session 1
 
201610817 - edge part1
201610817 - edge part1201610817 - edge part1
201610817 - edge part1
 
COMPUTER 10 Lesson 8 - Building a Website
COMPUTER 10 Lesson 8 - Building a WebsiteCOMPUTER 10 Lesson 8 - Building a Website
COMPUTER 10 Lesson 8 - Building a Website
 
COMPUTER 10: Lesson 7 - File Storage and Online Collaboration
COMPUTER 10: Lesson 7 - File Storage and Online CollaborationCOMPUTER 10: Lesson 7 - File Storage and Online Collaboration
COMPUTER 10: Lesson 7 - File Storage and Online Collaboration
 
20230202 - Introduction to tis-py
20230202 - Introduction to tis-py20230202 - Introduction to tis-py
20230202 - Introduction to tis-py
 
NIST Cybersecurity Framework (CSF) 2.0 Workshop
NIST Cybersecurity Framework (CSF) 2.0 WorkshopNIST Cybersecurity Framework (CSF) 2.0 Workshop
NIST Cybersecurity Framework (CSF) 2.0 Workshop
 
Videogame localization & technology_ how to enhance the power of translation.pdf
Videogame localization & technology_ how to enhance the power of translation.pdfVideogame localization & technology_ how to enhance the power of translation.pdf
Videogame localization & technology_ how to enhance the power of translation.pdf
 

AWS Sydney Summit 2013 - Big Data Analytics

  • 1. Abhishek Sinha Big Data Analytics Business Development Manager
  • 2. Overview • The Big Data Challenge • Big Data tools and what can we do with them ? • Packetloop – Big Data Security Analytics • Intel technology on big data.
  • 3. An engineer’s definition When your data sets become so large that you have to start innovating how to collect, store, organize, analyze and share it
  • 4. Generation Collection & storage Analytics & computation Collaboration & sharing
  • 5. Generation Collection & storage Analytics & computation Collaboration & sharing Lower cost, higher throughput
  • 6. Generation Collection & storage Analytics & computation Collaboration & sharing Lower cost, higher throughput Highly constrained
  • 7. Generated data Available for analysis Data volume Gartner: User Survey Analysis: Key Trends Shaping the Future of Data Center Infrastructure Through 2011 IDC: Worldwide Business Analytics Software 2012–2016 Forecast and 2011 Vendor Shares
  • 8. Amazon Web Services helps remove constraints
  • 9. Remove constraints = More experimentation More experimentation = More innovation More Innovation = Competitive edge
  • 10. Elastic MapReduce and Redshift Big Data tools
  • 11. EMR is Hadoop in the Cloud
  • 12. What is Amazon Redshift ? Amazon Redshift is a fast and powerful, fully managed, petabyte-scale data warehouse service in the AWS cloud Easy to provision and scale No upfront costs, pay as you go High performance at a low price Open and flexible with support for popular BI tools
  • 13. Elastic MapReduce and Redshift Big Data tools
  • 14. How does EMR work ? EMR EMR Cluster S3 Put the data into S3 Choose: Hadoop distribution, # of nodes, types of nodes, custom configs, Hive/Pig/etc. Get the output from S3 Launch the cluster using the EMR console, CLI, SDK, or APIs You can also store everything in HDFS
  • 15. What can you run on EMR… S3 EMR EMR Cluster
  • 16. EMR EMR Cluster Resize Nodes S3 You can easily add and remove nodes
  • 17. Resize Nodes with Spot Instances Cost without Spot 10 node cluster running for 14 hours Cost = 1.2 * 10 * 14 = $168
  • 18. Resize Nodes with Spot Instances Cost without Spot Add 10 nodes on spot 10 node cluster running for 14 hours Cost = 1.2 * 10 * 14 = $168 20 node cluster running for 7 hours Cost = 1.2 * 10 * 7 = $84 = 0.6 * 10 * 7 = $42
  • 19. Resize Nodes with Spot Instances Cost without Spot Add 10 nodes on spot 10 node cluster running for 14 hours Cost = 1.2 * 10 * 14 = $168 20 node cluster running for 7 hours Cost = 1.2 * 10 * 7 = $84 = 0.6 * 10 * 7 = $42 = Total $126 25% reduction in price 50% reduction in time
  • 20. Ad-Hoc Clusters – What are they ? EMR Cluster S3 When processing is complete, you can terminate the cluster (and stop paying) 1
  • 21. Ad-Hoc Clusters – When to use EMR Cluster S3 Not using HDFS Not using the cluster 24/7 Transient jobs 1
  • 22. EMR EMR Cluster “Alive” Clusters – What are they ? S3 If you run your jobs 24 x 7 , you can also run a persistent cluster and use RI models to save costs 2
  • 23. EMR EMR Cluster “Alive” Clusters – When ? S3 Frequently running jobs Dependencies on map-reduce-map outputs 2
  • 24. S3 instead of HDFS S3 EMR EMR Cluster • S3 provides 99.99999999999% of durability • Elastic • Version control against failure • Run multiple clusters with a single source of truth • Quick recovery from failure • Continuously resize clusters 3
  • 25. S3 and HDFS S3 EMR EMR Cluster Load data from S3 using S3DistCP Benefits of HDFS Master copy of the data in S3 Get all the benefits of S3 HDFS S3distCP 4
  • 26. Elastic MapReduce and Redshift Big Data tools
  • 28. Live Archive for (Structured) Big Data DynamoDB Redshift OLTP Web Apps Reporting and BI 2
  • 29. Cloud ETL for Big Data Redshift Reporting and BI Elastic MapReduce S3 3
  • 30. Streaming Hive Pig DynamoDB Redshift Unstructured Data ✓ ✓ Structured Data ✓ ✓ ✓ ✓ Language Support Any* HQL Pig Latin Client SQL SQL ✓SQL-Like ✓ Volume Unlimited Unlimited Unlimited Relatively Low 1.6 PB Latency Medium Medium Medium Ultra Low Low
  • 31. Collection & storage Analytics & computation Collaboration & sharing Remove Constraints Generation
  • 32. Scott Crane Packetloop – Big Data Security Analytics CEO & Co-founder
  • 33. Disclaimer and Urban Myth Customers must make the decision to upload data to Packetloop. We do not transparently intercept customer traffic, nor is it possible within AWS to do this. AWS does not give us access to any other AWS customer traffic.
  • 34. What is Packetloop? • Big Data Security Analytics • Uses complete data set from the network flow via packet capture • 100% delivered in the Cloud • Instantly available, always up to date • Powerful visualizations • Intuitive to use • Reduces security analysis to minutes
  • 36. What business problems are we solving? • Security related information is growing exponentially • The current generation of technology is struggling to deliver the intelligence organizations needs, and these technologies create friction due to: – Solution complexity – Amount of integration and customization required – Lack of context and fidelity • Threats are becoming more complex, including blended attacks and long running attacks (spanning months and potentially terabytes of flow data) • Analysts have less time and are forced to be more reactive
  • 37. Who are we targeting? • Any organization that definitively wants to know exactly what is happening on their networks using information that can be determined in real-time and the information that can be added over time. • Customers that are currently not receiving what was promised by SIEM solutions in terms of analytics, size and scale, fidelity and drill-down capabilities. • Organizations that are already leveraging Cloud providers such as Amazon AWS. • Security consultants, Analysts, Penetration Testers who want to take packet captures and quickly analyze them by uploading to the cloud.
  • 38. What business challenges did we face? • Fastest processing possible • Infinite scale and storage • Global presence • Always be available and up to date • Commodity affordability • Small team of people • Limited capital • Based only in Sydney • Current databases don’t scale the way we needed. The Vision The Reality
  • 39. Why choose AWS? • Brand – number 1 in Cloud market • Presence - everywhere we need to be • Availability options – allows us to build in the resilience we need • Flexibility and elasticity – only use what we need and when we need it, whilst supporting limitless horizontal growth • Feature sets - always expanding, allows us to constantly refine our offering • Support – AWS supports our business growth • Cost – low to start with, always improving, easy to understand and predict
  • 40. What do we use? PgSQLCASS CASSLOOP IPS WEB WEB Subnet A/24 Subnet B/24 ZONE: US-WEST-2a ZONE: US-WEST-2b NAT to Elastic IP's NAT to Elastic IP's www.packetloop.com? Loop Network PgSQLCASS CASSLOOP IPS WEB WEB Subnet C/24 Subnet D/24 Loop Network VPC ROUTER Cassandra Replicates between availability zones Postgres is Active/Active between availability zones Elastic Load Balancer EMR-1 EMR-N EMR-1 EMR-N
  • 41. What do we use? • Elastic MapReduce (EMR) – Hadoop to process jobs to extract security analytics • Cassandra – Patented insertion method for storing security metrics data • PgSQL – user databases, customer settings • IPS – 2 open source and 2 commercial to obtain indicators and warnings • S3 – Packet capture storage, both long term and temporary • VPC – handles replication and active/active traffic between Availability Zones • Elastic Load Balancer – allows us to scale out Web instances as needed • Cloudflare (not shown) – cache and acceleration
  • 42. What has AWS allowed us to achieve? • Global presence and big company performance • To be the first truly Cloud centric Security Analytics tool • Deliver a revolutionary security analytics tool to any user/analyst on the Internet as a commodity service (charged per GB/per month) • To dynamically change development and architecture direction without worrying about any capital investment we may have already made, and while maintaining a full production instance • Determine exactly what we spend and 100% link it to customer demand • To remain a self funded startup
  • 43. What’s next? • Shift from batch processing and post hoc analysis to real time processing • Addition of On Premise appliances, Virtual Machines and AMIs to perform local capture, preprocessing and transmission of security metrics to Cloud • Additional modules for analyzing Sessions, Protocols and Files • Move to Probabilistic Threat Analysis using machine learning
  • 44. Do your own Big Data Security Analytics….. • Packetpig is an open source version of our Network Security Analytics toolset available at github.com/packetloop/packetpig • Optimised in October 2012 to use AWS Elastic Map Reduce - how to configure blog.packetloop.com/2012/10/packetpig-on-amazon-elastic-map- reduce.html • Configurable scripts to specify what size AWS instances are used for Hadoop, and how many instances are to be spawned to run the mappers and reducers
  • 46. Corey Loehr corey.loehr@intel.com Executive, Digital Economy Enablement Intel Australia and New Zealand
  • 47. Analysis of Data Can Transform Society Create new business models and improve organizationa l processes. Enhance scientific understanding , drive innovation, and accelerate Increase public safety and improve energy efficiency with smart grids.
  • 48. Democratizing Analytics gets Value out of Big Data Unlock Value in Silicon Support Open Platforms Deliver Software Value
  • 49. Intel at the Intersection of Big Data Enabling exascale computing on massive data sets Helping enterprises build open interoperab le clouds Contributin g code and fostering ecosystem HPC Clou d Open Source
  • 50. Intel at the Heart of the Cloud Server Storage Network
  • 51. Scale-Out Platform Optimizations for Big Data Cost-effective performance •Intel® Advanced Vector Extension Technology •Intel® Turbo Boost Technology 2.0 •Intel® Advanced Encryption Standard New Instructions Technology
  • 52. 52 Intel® Advanced Vector Extensions Technology • Newest in a long line of processor instruction innovations • Increases floating point operations per clock up to 2X1 performance1 : Performance comparison using Linpack benchmark. See backup for configuration details. For more legal information on performance forecasts go to http://www.intel.com/performance Software and workloads used in performance tests may have been optimized for performance only on Intel microprocessors. Performance tests, such as SYSmark and MobileMark, are measured using specific computer systems, components, software, operations and functions. Any change to any of those factors may cause the results to vary. You should consult other information and performance tests to assist you in fully evaluating your contemplated purchases, including the performance of that product when combined with other products.
  • 53. Intel® Turbo Boost Technology 2.0 More Performance Higher turbo speeds maximize performance for single and multi-threaded applications
  • 54. Intel® Advanced Encryption Standard New Instructions• Processor assistance for performing AES encryption 7 new instructions • Makes enabled encryption software faster and stronger
  • 55. Power of the Platform built by Intel Richer user experiences 4HR S 50% Reduction 10MI N 80% Reduction 50% Reduct ion 40% Reduct ion TeraSo rt for 1TB sort Intel ® Xeon® Proce ssor E5 2600 Solid- State Drive 10G Ethernet Intel® Apache Hadoop Previ ous Intel ® Xeon® Proce ssor

Notas del editor

  1. The key messages that we want to deliver with this slide are 1. Elastic MapReduce is a hosted hadoop service. We use the most stable version of apache hadoop and provide a hosted service, and build integration point withs other services on the AWS eco-system such as S3, Cloudwatch, Dynamodb etc. We make other improvements to Hadoop so that it becomes easier to scale and manage on AWS2. We will keep iterating on the different versions of hadoop as they become stable. When you use the console you launch the latest version of hadoop, but you also have the choice or launching an older version of hadoop via the CLI or the SDK. 3. So what all you can do with EMR ?You can build applications on Amazon EMR, just like you would with HadoopIn order to develop custom Hadoop applications, you used to need access to a lot of hardware to test your Hadoop programs. Amazon EMR makes it easy to spin up a set of Amazon EC2 instances as virtual servers to run your Hadoop cluster. You can also test various server configurations without having to purchase or reconfigure hardware. When you're done developing and testing your application, you can terminate your cluster, only paying for the computational time you used.Amazon EMR provides three types of clusters (also called job flows) that you can launch to run custom map-reduce applications, depending on the type of program you're developing and which libraries you intend to use.
  2. EMR supports multiple instance types including the latest HS1 instance types EMR now supports High Storage Instances (hs1.8xlarge) in US East. These new instances offer 48 TB of storage across 24 hard disk drives, 35 EC2 Compute Units (ECUs) of compute capacity, 117 GB of RAM, 10 Gbps networking, and 2.4+ GB per second of sequential I/O performance. High Storage Instances are ideally suited for Hadoop and they significantly reduce the cost of processing very large data sets on EMR. We look forward to adding support for High Storage Instances in additional regions early next year.
  3. 10 x 10 = 100 nodes running for 1 hour
  4. And the concept of adding nodes works well with hadoop – especially on the cloud since 10 nodes running for 10 hours costs the same as 100 nodes running for 1 hour.
  5. 10 x 10 = 100 nodes running for 1 hour
  6. 10 x 10 = 100 nodes running for 1 hour
  7. 10 x 10 = 100 nodes running for 1 hour
  8. 10 x 10 = 100 nodes running for 1 hour
  9. Speaker Notes:Often the question about Big Data is, “What can it do for me?” And that’s a very important question because without the value proposition, Big Data would just be an exercise. But I’m here to tell you Big Data services, provided by AWS and supported by Intel, are a Game Changer.For example: Yes, Big Data offers insights into how we conduct business. But it also enables scientific discovery, opens up the possibility to treat and cure diseases, and enhances our communities with intelligent power grids and highways. These are just a handful of ideas. The frontier of Big Data is so much more. The technology provided means no limits to how you use the information. People are innovating new uses for Big Data every day.
  10. Speaker notes:Intel’s vision of Big Data is more than just the possibility for streamlined business. We see entire cities and communities connected, using the data we generate in every aspect – business and personal – to inform us and enable us to make better decisions about our lives. And all of this is made possible by the innovations developed in partnership between Intel and Amazon Web Services. A Big Data infrastructure, vast enough to handle the data we produce, and cost effective enough for us to use. Big Data really is about the, a future of challenges and great opportunities AWS and Intel are ready and eager to tackle.
  11. Speaker notes:As you can see, Intel is at the intersection of enabling Big Data:- Exascale-level High Performance Computing and cloud environments based on Intel® Xeon® processors. - Plus, Intel is encouraging the growth of the open source ecosystem to foster innovation among developers, and keep cloud services, like AWS, affordable for all.
  12. Speaker Notes:And to be at that intersection, to allow the proverbial traffic of Big Data goes smoothly, we’ve built the technological backbone for Big Data. The challenges to scale and the capabilities we’ve built into the Intel® Xeon® processor are needed across the entire data center – servers, storage devices and network solutions. It should be noted, Intel is #1 in Servers, Storage and Networks. - These industry-standard, modular building blocks allow efficient and cost-effective scaling of compute, storage and network systems to match user needs.- Traditionally storage devices used lower performance, proprietary ASICs, but today the demand for performance has increased to tackle challenges like data de-duplication and improved archiving. This in addition to distributed files systems for cloud based storage and a desire for improved analytics drives a need for more processing power… and vendors are increasingly turning to Intel® Xeon® processors. Plus, the improvements that Intel offers in our latest processors can benefit every aspect of what your infrastructure does. And these building blocks are what makes amazing software like Hadoop work.
  13. Speaker Notes:Key points:Intel® Xeon® Processor E5 Family provides:Cost-effective performanceIntel® Advanced Vector Extension TechnologyIntel® Turbo Boost Technology 2.0 Intel® Advanced Encryption Standard New Instructions Technology Significant performance gains delivered by featuressuch as new Intel® Advanced Vector Extensions and improved Intel® Turbo Boost Technology 2.0 providing performance when you need it. Dramatically reduce compute time with Intel® Advanced Vector Extensions Accelerate floating point calculation for scientific simulations & financial analyticsPerformance when you need it with Intel® Turbo Boost Technology 2.0 Up to 80% performance boost vs. prior gen To improve flexibility and operational efficiency significant improvements in I/O with new Intel® Integrated I/O which reduces latency ~30% will adding more lanes and higher bandwidth with support for PCI Express 3.0Cost-effective performance for standardizing scale out nodes for Hadoop Intel® AES-NI to accelerate security encryption workloads Optimized core to memory footprint ratios Top Memory Channels and frequency for nothing shared scalingStory:To meet the growing demands of IT such as readiness for cloud computing, the growth in users and the ability to tackle the most complex technical problems, Intel has focused on increasing the capabilities of the processor that lies at the heart of a next generation data center. The Intel® Xeon® processor E5-2600 product family is the next generation Xeon® processor that replaces Platforms based on the Intel® Xeon® processor 5600 & 5500 series. Continuing to build on the success of the Intel® Xeon® 5600, the E5-2600 product family has increased core count and cache size in addition to supporting more efficient instructions with Intel® Advance Vector Extensions, to deliver up to an average of 80% more performance across a range of workloads. These processors will offer better than ever performance no matter what your constraint is – floor space, power or budget – and on workloads that range from the most complicated scientific exploration to simple, yet crucial, web serving and infrastructure applications. In addition to the raw performance gains, we’ve invested in improved I/O with Intel Integrated I/O which reduces latency ~30% will adding more lanes and higher bandwidth with support for PCIe 3.0. This helps to reduce network and storage bottlenecks to unleash the performance capabilities of the latest Xeon processor. The Intel® Xeon® processor E5-2600 product family – versatile processers at the heart of today’s data center.
  14. Key points: Intel® Advanced Vector Extensions Technology is a collection of CPU instructions that increase floating point performance by doubling the length of the FP registers to 256-bits and reducing the number of operations required to execute large FP tasks Applications include: Science/Engineering, Data Mining, Visual Processing, HPCStory:Another avenue that Intel has taken advantage to add more flexible performance is to add in instructions that make the processor do more work every clock cycle. Intel® Advanced Vector Extensions can offer up to double the floating point operations per clock cycle by doubling the length of registers. Where this is used is when you need to address very complex problems or deal with large-number calculations, integral to many technical, financial and scientific computing problems. Workloads that can see improvements from AVX range from manufacturing optimizations, to the analysis of competing options to content creation and engineering simulations. Intel® AVX is the newest in a long line of instruction innovations going back to the mid 90’s with MMX and SSE1 which are all now standard software practices. Intel AVX is supported by Intel and 3rd party compilers that take advantage of the latest instructions to optimize code to significantly reduce compute time enabling faster time to results. With the Xeon processor E5-2600 family you can be confident that you’ll benefit from those optimizations as new applications are introduced and updates to existing software packages are released.Legal Info:(AVX Performance) Source: Performance comparison using Linpack benchmark. Baseline score of 159.4 based on Intel internal measurements as of 5 December 2011 using a Supermicro* X8DTN+ system with two Intel® Xeon® processor X5690, Turbo Enabled, EIST Enabled, Hyper-Threading Enabled, 48 GB RAM, Red Hat* Enterprise Linux Server 6.1. New score of 347.7 based on Intel internal measurements as of 5 December 2011 using an Intel® Rose City platform with two Intel® Xeon® processor E5-2690, Turbo Enabled or Disabled, EIST Enabled, Hyper-Threading Enabled, 64 GB RAM, Red Hat* Enterprise Linux Server 6.1. Intel does not control or audit the design or implementation of third party benchmark data or Web sites referenced in this document. Intel encourages all of its customers to visit the referenced Web sites or others where similar performance benchmark data are reported and confirm whether the referenced benchmark data are accurate and reflect performance of systems available for purchase.
  15. Key points:Get more computing power when you need it with performance that adapts to spikes in your workload. with Intel® Turbo Boost Technology 2.0New Intel® Turbo Boost Technology 2.0 delivers up to 2x more performance upside than previous generation turbo technology.Story:Beyond simply making the processor more capable with more cores, cache, & memory we’ve also focused on making the processor more adaptive and intelligent. Starting with the Intel® Xeon® processor 5500 series (formerly codenamed Nehalem-EP) we introduced a feature called Intel Turbo Boost Technology which allowed the processor to increase frequency at the OS’ request to handle workload spikes as well as shift power across the processor so if you had one core working hard and one core idle the processor could “turbo up” by redirecting power from the idle core to the active one. With the Xeon processor E5-2600 product family we are able to refine this technology to enable even higher turbo speeds – for example the top Xeon processor 5690 with only 1 core active could turbo up ~266 MHz while the top Xeon processor E5-2690 can frequency 900 MHz specifically. This greater ability to turbo up is due to improved power and thermal management data across the platform – the processor keeps track of how hard it’s been running and will modulate how far it will push itself in a turbo situation to provide the maximum frequency while meeting Intel’s stringent reliability standards. In addition we’ve improved the turbo algorithm to assess if the core speed is the limiter or if the processor is waiting for data from memory or I/O before it commits power to the burst of speed. The goal of turbo is to get workload spikes dealt with as quickly as possible to get back to a lower power state which reduces average power draw and cost of operation.Legal Info:Source: Performance comparison using SPECint*_rate_base2006 benchmark with turbo enabled and disabled. Estimated scores of 393 (turbo enabled) and 376 (turbo disabled) based on Intel internal estimates as of 6 March 2012 using a Supermicro* X8DTN+ system with two Intel® Xeon® processor X5690, Turbo Enabled (or Disabled), EIST Enabled, Hyper-Threading Enabled, 48 GB RAM, Intel® Compiler 12.0, Red Hat* Enterprise Linux Server 6.1 for x86_6. Estimated scores of 659 (turbo enabled) and 594 (turbo disabled) based on Intel internal estimates using an Intel® Rose City platform with two Intel® Xeon® processor E5-2680, Turbo Enabled (or Disabled), EIST Enabled, Hyper-Threading Enabled, 64 GB RAM, Intel® Compiler 12.1, Red Hat* Enterprise Linux Server 6.1 for x86_6.
  16. Intel AES-NI: What is it?Key Point: Data Encryption shows 10xspeedup1 in AES encryptionIntel AES-NI is a set of new instructions for enhancing the performance for cryptography using the widely-accepted Advanced Encryption Standard (AES) algorithm.There are 7 new instructions in the processor that target some of the more complex and compute-expensive encryption, decryption, key expansion and multiplication steps (and there are multiple steps in every instance of working with encrypted data) that increase the performance and efficiency of these operations. But note that the instructions do not implement the entire AES algorithm in silicon—only the most processor intensive elements have been targeted. This provides more flexibility and balance between HW performance and SW extensibility. Another benefit of the new instructions is that actually helps protect the data better as well. The use of the more efficient steps enabled in AES-NI makes the use of “side channel” snooping attacks. These attacks use SW agents to analyze how a system processes data and searches for cache and memory access patterns to try to gather patterns or other system data to help deduce elements of the cryptographic processing—and therefore make it easier to “crack”. AES-NI helps hide critical elements such as table lookups, making it harder to determine what elements of crypto processing are happening.Taking down the performance tax frees IT managers to use encryption more broadly without sacrificing performance.
  17. Speaker Notes:So let’s see rubber meet road and look at how the technology enables high performance computing. Right here you’re seeing the Intel-based ecosystem at work. - Start with a 4 hour process time to sort 1 Terabyte of data. - Upgrade the processor to the latest Intel® Xeon® processor to cut compute time in half.- Add an SSD to reduce by another 80%.- Upgrade to 10 Gigabit Ethernet for additional reductions.The end result is a fraction of the original compute time: 10 minutes to sort 1 Terabyte of data. These datacenter innovations streamline the process and make affordable Big Data analytics possible.As this testing shows, as important as the processor is in improving the customer experience, it’s not the entire solution. By understanding the benefits of SSDs, 10GbE and Intel SW tools we can give an even better experience with Intel optimized platforms, and boost business results.
  18. Speaker Notes:If you wanted to see this process of transforming Big Data into action, it would look something like this.- Big Data provides rich, personalized, immersive experiences for clients. - This in turn creates more rich interactions, and generates more data into the cloud.- Which leads to higher volumes of data to analyze through intelligent systems, - Which leads to even more rich, personalized, and immersive experiences. As you can see, the cycle feeds into itself. And, this brings users into the fold. We’re not just talking businesses anymore, but we’re looking at how Big Data affects us all on a day-to-day basis.