Lynn Comp - Big Data & Cloud Summit 2013

19
APAC Big Data & Cloud Summit 2013 Re - Imagining the Datacenter Lynn Comp Director of Datacenter Solutions and Technologies Initiatives

description

 

Transcript of Lynn Comp - Big Data & Cloud Summit 2013

Page 1: Lynn Comp - Big Data & Cloud Summit 2013

APAC Big Data &

Cloud Summit 2013

Re-Imagining the Datacenter Lynn Comp

Director of Datacenter Solutions and Technologies Initiatives

Page 2: Lynn Comp - Big Data & Cloud Summit 2013

RE-IMAGINING THE DATACENTER

Lynn CompDirector of Datacenter Solutions and Technologies

Page 3: Lynn Comp - Big Data & Cloud Summit 2013

Other names and brands may be claimed as the property of others

Sort 1TB of Data:

7 MINUTES

Sort 1TB of Data:

>4 Hours

The Power of Re-imaginationData center Solutions: Big Data Example

Intel® Xeon®

E5-2690 processor

Intel® SSD

520

series

Intel® 10GbE

adapters

Intel® Distribution

for Apache

Hadoop*

Page 4: Lynn Comp - Big Data & Cloud Summit 2013

But….Datacenter Operations Under Stress

Server

Average utilization <50% despite

virtualization4

Network

2-3 weeks to provision new services1

Storage

40% data growth CAGR, 90% unstructured3

1: Source: Intel IT internal estimate

2: Cisco Visual Networking Index: Global Mobile Data Traffic Forecast Update, 2012–2017

3: IDC’s Digital Universe Study, sponsored by EMC, December 2012

4: IDC Server Virtualization and The Cloud 2012

Page 5: Lynn Comp - Big Data & Cloud Summit 2013

Which has Seismic Effects on the CIO

CIO on the hook…

• 5x9’s Reliability & Availability

• New: Public Cloud Economics

• New: Extreme Flexibility and Agility

Business Expectations

• Consumer-like expectations

• Tech-savvy

• “outside” alternatives

Page 6: Lynn Comp - Big Data & Cloud Summit 2013

Software Defined Infrastructure

DYNAMIC. AUTOMATED. FEDERATED

Datacenter Today

Time to Provision New Service:

8+ Weeks1

Time to Provision New Service:

Days/Minutes1

1: Source: Intel IT internal estimate

Re-architect the Datacenter

RIGID. LABOR-INTENSIVE. SLOW

SERVICE

Page 7: Lynn Comp - Big Data & Cloud Summit 2013

Re-Architecting for Software Defined Infrastructure

Composable Resources

Network Storage Server

Dynamic, automated Infrastructure

Page 8: Lynn Comp - Big Data & Cloud Summit 2013

Networking: Dynamic, standards based

Standards based, SW defined Composable Resources

Storage:Storage as a service

ServerDynamic resource allocation

Memory ComputeI/O

App AppAppPooled

Compute

Pooled

Memory

Pooled

I/O

App

Manual to Automated

Static, Purpose built to Dynamic, Composable

Warm

Hot

Cold

serverserver

server

server

server

HPC

OLTP

Offic

e

Prod.

Firewall MessageRouter

PE Router

DPI

FirewallMessageRouter

Virtual fabric

Page 9: Lynn Comp - Big Data & Cloud Summit 2013

Diversity of Datacenter Workloads

Break down silos

Automate Services and Infrastructure

Simplify deployment and maintenance

Page 10: Lynn Comp - Big Data & Cloud Summit 2013

Breaking down silosIntel Covering the Full Solution Space

Greater Efficiency through App Optimization & Arch Consistency

Efficient Performance

Dense Efficient(Integer)

Dense Parallelism(Vector)

Expandable Performance

Page 11: Lynn Comp - Big Data & Cloud Summit 2013

Automate Services and Infrastructure

Independent Telemetry, Metrics & Sensors

Power

DeliveryCooling &

Airflow

Utilizatio

n

Physically-oriented security:

Air gaps for security zones,

1:1 workload to system relationships, limited threatsAutomated compliance to SLA

Automated audit

Automated Geo-fencing

Automated workload placement

Automated power/cooling

Page 12: Lynn Comp - Big Data & Cloud Summit 2013

Automate Services and InfrastructurePower Management

Intel® Xeon® processor-based

servers

with

Intel Node Manager firmware

Power management

consoles

with

Intel Data Center Manager software

40%More rack density

15-17%Reduction in

datacenter power

Page 13: Lynn Comp - Big Data & Cloud Summit 2013

Visibility Control Compliance

IT manager

VM VM

IT manager

Policy: sensitive FISMA VM

requires trusted host, requires

US host

Automate Services and InfrastructureTrust and compliance

HW based platform integrity Store/report location

Trust status and asset descriptor control virtual workloads

Trust status and asset descriptor assert policy

Verify controls

Page 14: Lynn Comp - Big Data & Cloud Summit 2013

The End Game

Agility Automation Efficiency

From silos to standards based software on high-volume servers

Ongoing security & operational telemetry assists automation

Page 15: Lynn Comp - Big Data & Cloud Summit 2013

SoftwareCompatibility

Global Ecosystem

TechnologyPortfolio

ArchitectureConsistency

WorkloadOptimized

Silicon

Most EnergyEfficient

Transistors

Intel’s Unmatched Assets

Page 16: Lynn Comp - Big Data & Cloud Summit 2013
Page 17: Lynn Comp - Big Data & Cloud Summit 2013

Client to Cloud Security Demo

Trust Control

Configuration

and Event Data

to EPO

Policy to

Client

Trust Data

Placed in EPO

Trust Data

from vSpherePolicy

Enforcement

Web Apps

Web Apps

Server-Side Enforcement

Client-Side Enforcement

Intel TXT Integrity

McAfee Deep DefenderIntegrity

McAfee ePOPolicy

Management

Non-Intel TXT

Migration to Trusted

Server is OK

Migration to Untrusted Server is Restricted

ePO Serves as Policy Enforcer

Trapezoid extracts TXT

values and uses

them as trust control triggers

Trusted Client is allowed access only to apps on Trusted Servers

SEIM Logs and Shows

events

Enforce policies:1. Block access to

trusted host workloads from low integrity clients

2. Block access from High integrity clients to workloads on untrusted host

• Uses McAfee ePO to enforce security policies across data centers & client devices

• Demonstrates use of Intel® TXT for enhanced server integrity1

• Highlights client policy enforcement & integrity using McAfee Deep Defender

• Video Demo: http://www.intel.com/content/www/us/en/enterprise-security/enterprise-security-txt-client-to-cloud-

video.html

1 Integrating McAfee ePolicy Orchestrator (ePO) with Intel TXT requires custom integration work

Page 18: Lynn Comp - Big Data & Cloud Summit 2013

Legal DisclaimersAll products, computer systems, dates, and figures specified are preliminary based on current expectations, and are subject to change without notice.

Intel processor numbers are not a measure of performance. Processor numbers differentiate features within each processor family, not across different processor families. Go to: http://www.intel.com/products/processor_number

Intel, processors, chipsets, and desktop boards may contain design defects or errors known as errata, which may cause the product to deviate from published specifications. Current characterized errata are available on request.

Intel® Virtualization Technology requires a computer system with an enabled Intel® processor, BIOS, virtual machine monitor (VMM). Functionality, performance or other benefits will vary depending on hardware and software configurations. Software applications may not be compatible with all operating systems. Consult your PC manufacturer. For more information, visit http://www.intel.com/go/virtualization

No computer system can provide absolute security under all conditions. Intel® Trusted Execution Technology (Intel® TXT) requires a computer system with Intel® Virtualization Technology, an Intel TXT-enabled processor, chipset, BIOS, Authenticated Code Modules and an Intel TXT-compatible measured launched environment (MLE). Intel TXT also requires the system to contain a TPM v1.s. For more information, visit http://www.intel.com/technology/security

Intel, Intel Xeon, Intel Atom, Intel Xeon Phi, Intel Itanium, the Intel Itanium logo, the Intel Xeon Phi logo, the Intel Xeon logo and the Intel logo are trademarks or registered trademarks of Intel Corporation or its subsidiaries in the United States and other countries.

Other names and brands may be claimed as the property of others.

Copyright © 2013, Intel Corporation. All rights reserved.

Page 19: Lynn Comp - Big Data & Cloud Summit 2013

Apache Hadoop Performance Test Configuration4 hours to 7 minutes

Cluster Configuration 1 Head Node (name node, job tracker)

10 Workers (data nodes, task trackers)

10-Gigabit Switch: Cisco Nexus 5020

Software Configuration Intel Distribution for Apache Hadoop 2.1.1

Apache Hadoop 1.0.3

RHEL 6.3

Oracle Java 1.7.0_05

Head Node Hardware 1 x Dell r710 1U servers

Intel: 2x3.47GHz Intel® Xeon®

processor X5690

Memory: 48G RAM

Storage: 10K SAS HDD

Intel® Ethernet 10 Gigabit SFP+

Intel® Ethernet 1 Gigabit

Worker Node Hardware 10 x Dell r720 2U servers

Intel: 2 x 2.90Ghz Intel® Xeon® processor E5-2690

Memory: 128G RAM

Storage: 520 Series SSDs

Intel® Ethernet 10 Gigabit SFP+

Intel® Ethernet 1 Gigabit

Results have been estimated based on internal Intel analysis and are provided for

informational purposes only. Any difference in system hardware or software design or

configuration may affect actual 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. www.intel.com/performance