Turnkey and Scalable Infrastructure for Splunk
Denis Guyadeen, VCPx4, CCAH
Sr. Systems Engineer
Nutanix – Who are we
Delivering Google-like Infrastructure for the Enterprise
Incorporated:

Raised:

Sep 2009

$72M
• Lightspeed
• Khosla Ventures
• Goldman Sachs
• Battery Ventures

Product launch:
Nov 2011

Employees:
+300 in 25 countries

Spent:

IP:
50 + patents filed
1 granted
Filing ~10 / quarter

~50% of capital raised

Recognition:

Nutanix is the Only Company to Receive
Best of VMworld Recognition for Past Three
Consecutive Years!

2

Best of VMworld, 2011
Best of VMworld, 2012
Best of VMworld, 2013
Best of Interop, Tokyo
2012

European
coverage:
+150 partners
+100 customers
+15 employees
Splunk Requirements
• Splunk is IO intensive
•
•

Write-intensive (ingest data)
Read-intensive (search)

• Project timeline
•
•

Time to value (incredible business value, how fast can you get it?)
Coordinating across different groups (Storage, Compute, Networking, etc)

• Operational Challenges
•

Server Sprawl

• More data sources
•

How do I add capacity?
Splunk Requirements
• Splunk is IO intensive – Use SSD
•
•

Write-intensive (ingest data)
Read-intensive (search)

• Project Timeline
•
•

Time to value (incredible business value, how fast can you get it?)
Coordinating across different groups (Storage, Compute, Networking, etc)

• Operational Challenges
•

Server Sprawl

• More data sources
•

How do I add capacity?
Splunk Requirements
• Splunk is IO intensive – Use SSD
•
•

Write-intensive (ingest data)
Read-intensive (search)

• Project Timeline – Use a Datacenter appliance
•
•

Time to value (incredible business value, how fast can you get to it?)
Coordinating across different groups (Storage, Compute, Networking, etc)

• Operational Challenges
•

Server Sprawl

• More data sources
•

How do I add capacity?
Splunk Requirements
• Splunk is IO intensive – Use SSD
•
•

Write-intensive (ingest data)
Read-intensive (search)

• Project Timeline – Use a Datacenter Appliance
•
•

Time to value (incredible business value, how fast can you get to it?)
Coordinating across different groups (Storage, Compute, Networking, etc)

• Operational Challenges – Use a Scale-Out Architecture
•

Server Sprawl

• More data sources
•

How do I add capacity?
Splunk Requirements
• Splunk is IO intensive – Use SSD
•
•

Write-intensive (ingest data)
Read-intensive (search)

• Project timeline – Use a Datacenter Appliance
•
•

Time to value (incredible business value, how fast can you get to it?)
Coordinating across different groups (Storage, Compute, Networking, etc)

• Operational Challenges – Use a Scale-Out Cluster
•

Server Sprawl

• More data sources – Use a Scale-Out Datacenter Appliance
•

How do I add capacity?
Nutanix – The Big Picture
Convergence of Compute and Storage

• A Datacenter Appliance to run Splunk
• Compute & Storage all-in-one appliance

• Higher performance – SSD built-in
• Faster time to value – Delivered as an Appliance
• Scalable
• Pay only for what you need now
• No unexpected surprises ($$$!) from architectural limits

• Less expensive
• Smaller datacenter footprint, less power, less cooling

• Easier to manage – All-in-one solution
Definition of the Next-Gen Datacenter

Physical transforms
to virtual
Scale-out architectures
Services delivered via
software
Commodity hardware
alters economics

Massively Scalable.

Elastic.

Agile.
Virtualization Changes Everything

SAN/NAS
Storage Network

Centralized
Storage
Virtualization Changes Everything

• Complex to manage
• Costly to scale

SAN/NAS
Storage Network

• Managed separately

Centralized
Storage

from virtualization
• Difficult to provision
• Performance bottleneck
Cloud-Generation Systems
Convergence of Compute and Storage

The consumer cloud guys argued for…

Flatter datacenters

That scale by adding another x86
server…

NUTANIX INC. – CONFIDENTIAL AND PROPRIETARY

Building
embarrassingly
parallel DCs
Cloud and Web-Scale Architectures
Convergence of Compute and Storage

Add scale one x86
server at a time

Flat and
simple
datacenters

Software
driven to
reduce CapEx
Software-Defined Data Centers
Compute, Network, Storage, Security converged in x86 servers

So we are now converging on…

Flatter datacenters

That scale by adding another x86
server…

NUTANIX INC. – CONFIDENTIAL AND PROPRIETARY

Building
embarrassingly
parallel DCs
Software-Defined Data Centers
The Core Building Blocks

1

Simplicity

3
4

True
Convergence

2

Scale Out

All Sizes
All Workloads
All Hypervisors

5

End-to-end
Visibility
Convergence 2.0
Storage Fabric inside the x86 server, where VMs run!

Virtual Machine/Virtual Disk

Virtual Storage Control

Flash

Virtual Storage Control

HDD

Enterprise Grade Data
Services
Clones, snapshots,
replication,
compression, thin
provisioning

Fastest Performance

Hypervisor Agnostic

Data Locality,
Real-Time tiering,
De-Duplication

vSphere, KVM,
Hyper-V
The Virtual Computing Platform
Scale-out, Converged, Software-defined, Flash-enabled, and Hybrid

Convergence is only one of the pillars
of the next-generation datacenter…
Converged
Storage fabric collapsed on to compute
Hypervisor the de facto substrate, i.e., the new datacenter (DC) OS
All DC services are now virtual. No room for special-purpose “appliances”

Software-Defined
Zero hardware crutch
Deliver technology as a portfolio: pre-packaged, all sw, usage-based
VM-awareness for everything; mechanism decoupled from policy

Server-Side Flash
Flash needs to begin at the server, i.e., as close to compute as possible
Server-side form factors – DIMM-based, PCIe-based, SATA-based – critical

Hybrid Computing
Single control and data fabric to unify VMware ESXi, KVM, and Microsoft
Hyper-V environments
Private Cloud transparently bleeds into the Public Cloud
Achieving Scale
Metadata, Data Movement, Recovery, Self-description for Versioning
Self-Describing {Storage, Service}
protobuf’s for backward compatibility of data protobuf’s for versioning APIs,
services.

NoSQL
Metadata must scale with the cluster
Lock-less operations for metadata update: optimistic concurrency control

Compression
No impact to your workloads, order of magnitude faster then traditional algorithms,
runs on cold dataset

MapReduce for Scaling Operations
Massively Parallel Disk Recovery
Massively Parallel Data Rebalancing (when machines are added/removed)
Massively Parallel Data Tiering Algorithms
… and so on.
Large Clusters: Single Fabrics
Designed for Scalability Day One

1

Analytics

2

Configuration

4

Scaling UI

Patterns, Hotspots
Hive-based Log analytics, heat-maps

3

Scaling Ops

Rolling Upgrades, Add/Remove

Web Service, Stats

Every node upgrades itself, Auto-Discovery
Cluster re-balancing via MapReduce

Web service runs on all machines; leader
elected on the fly using ZooKeeper
Fine-grained stats stored in NoSQL
Pay-As-You-Grow

• Scale incrementally one server
at a time
• Protect infrastructure
investment by eliminating
forklift upgrades
• Scale storage capacity
and performance
independently
Elastic Deduplication Engine

Real-time deduplication for
RAM and flash
100% software-driven
Designed for scale-out
Extensible for all storage,
including HDD
Dynamic Cluster Expansion
Self-discovery with zero downtime

Flexible Clusters
Add nodes in 2 clicks
Expand cluster in minutes, not days or weeks

Self discovery
Automatically detects
new nodes

NUTANIX INC. – CONFIDENTIAL AND PROPRIETARY

Zero cluster
downtime
Rolling Upgrades
Zero downtime

Upgrade SW
with

NO DOWNTIME
Service Continuity
Dynamically utilizes neighboring controller

Minimal
Simple. administrative
intervention

Data remains available
No impact to end user

Even for large clusters
Capacity Optimization
Inline and Post-processed compression

•
•
•

Data compressed as its written (synchronously)
Ideal for archival data
High performance for sequential workloads

•

Data compressed after “cold” data is migrated
to lower-performance storage tiers
Processed only when data and compute
resources are available
No impact to normal IO path
Ideal for random batch workloads

•
•
•

VM
Centric

Purpose-built for virtualization
•
•
•
•

Increased usable capacity across all storage tiers
Compression policies align with VM-centric workflows
Maximum compression/decompression performance with Snappy algorithm
Sub-block compression for granularity and maximum efficiency
Snapshots / Clones
VM-centric with no LUNs or Volumes

Full VMware integration
Support for VMware API for Array Integration
(VAAI) primitives
Support for View Composer for Array
Integration (VCAI) standards

Offloads the virtualization tier to increase
performance of common operations

Native VM-centric
snapshots
No LUNs or
Volumes

Array-based
quick-clones for
efficient
provisioning
Native Disaster Recovery
VM-centric replication

VM-Centric workflows
Granular VM-based snapshots and policies
Better than LUN or file system based

Flexible n-way protection
Simultaneous bi-directional replication between sites
N-way master-master model

Data protection
VM and application level crash consistency
Flexible protection domains for VM grouping and
policies
Nutanix Prism
Consumer-like simplicity and cloud-ready

Prism GUI
Consumer-grade user experience
Vantage points for at-a-glance view of
server, storage and network operations
HTML5 based for multi device mgmt

Prism REST APIs
Supports all Nutanix functionality: server,
storage, virtualization and networking

Storage

Provides extensibility with OpenStack
and Cloud Management solutions
Why Virtualize Splunk?
Splunk Status Check

• Typically Bare Metal
• Dedicated, single-purpose
No Tiering

BIG DATA PRIVATE CLOUD

Provision clusters on
demand for test-anddev and ephemeral jobs

• Hot and cold data reside

SECURITY & MULTITENANCY

Keep data separate for
different business
units & prevent runaway jobs

on the same tier
Lacks Enterprise Features

• HA, vMotion, Snapshots,
Backup, DR, Quick Clones,
etc.

• Development & IT are

MANAGEABILITY

ELASTICITY

Use the same
Reclaim power, cooling,
and rack space and use
monitoring and
only what you need,
management tools you
when you need it.
know and love

tightly coupled
2
9
Linear scalability for Splunk
Convergence of Compute and Storage
EPS

Capacity
70
60

(EPS)

50
1,500,000

40

1,000,000

30
20

500,000

10

-

0
4

8

12

Nutanix Nodes
(4 nodes per 2U Appliance)

16

Raw Capacity

2,000,000

(TB)

Events Per Second

2,500,000
Dispelling the Myth
Nutanix outperforms virtualized and bare metal

Testing Events Per Seconds with Splunk on different appliances
160,000
124,000-126,000

EPS

120,000
73,409

80,000
40,000

38,731

0
EMC

HP

Nutanix

Bare metal

Rack Size

48U
EMC Isilon x400 (8 node)
2x UCS C240 Servers
vSphere 5
Per VM specs: 8 GB
RAM, 8vCPU

2U

.5U

DL 380
2 6 core Xeon
12 GB RAM

Nutanix 3000 series (1 node)
2x Xeon
vSphere 5.1
Per VM specs: 8 vCPU, 8GB
RAM
Splunk on Nutanix Reference Architecture

http://go.nutanix.com/rs/nutanix/images/TG_Splunk_on_Nutanix_RA.pdf
Splunk on Nutanix Reference Architecture

3 GB/s sequential

100,000 Random Read IOPS
500,000 EPS

2U
http://go.nutanix.com/rs/nutanix/images/TG_Splunk_on_Nutanix_RA.pdf
Technical Specifications
Complete Portfolio

NX-1000 Series

NX-6000 Series

NX-3000 Series

NX-1050

NX-3050/NX-3051

Per Node (4 per Block)

Per Node (4 per Block)

Server
Compute

Dual 6 core SandyBridge E5-2620 /
2.0GHz

Dual 8 core SandyBridge E5-2670 /
2.6GHz

Cold Tier

4 x 1 TB per node

4 x 1 TB per node

Hot Tier

400GB SSD per node

2 x 400GB/800GB SSD per node
(800GB/1.6TB)

Memory

64 or 128GB/node (DDR3 1600GHz)

128 or 256GB/node
(DDR3 1600GHz)

128 or 256GB/node
(DDR3 1600GHz)

Dual 10GbE, 2 x 1GbE
1 x IPMI (10/100 Mb/s)

Dual 10GbE, 2 x 1GbE
1 x IPMI (10/100 Mb/s)

Dual 10GbE, 2 x 1GbE
1 x IPMI (10/100 Mb/s)

Redundant 1100W, 110/1620W,
208V

Redundant 1620W, 208V

Redundant 1620W, 208V

Network
Connections
Power Supply

NX-6050

NX-6070

Per Node (2 per Block)
Dual 8 core SandyBridge
E5-2670 / 2.6GHz

Dual 8 core SandyBridge E52690 / 2.9GHz

4 x 4TB per node
2 x 400GB SSD per node
(800GB)

NUTANIX INC. – CONFIDENTIAL AND PROPRIETARY

2 x 800GB SSD per node (1.6
TB)
Next-Gen Infrastructure

• All physical resources pooled and abstracted
• Storage containers maintain logical separation between business units
• Runs mixed workloads with multiple hypervisors

• Simple elasticity through linear scale-out
• On-demand provisioning with existing virtualization tools
Customer Adoption

FAA

Dept. Energy
Broad Industry Recognition

Top 10 Storage
Startups
“ Converged storage makes SAN look like the mainframe.”
Computerworld

“ I am always hesitant to declare a product a "game changer" but Nutanix may have
just done that with their Nutanix Complete Cluster.”
George Crump, Founding Analyst

“ In the case of EMC, HP or NetApp, they're taking the same storage products they've
been selling for years and repackaging for virtual server environments. I think
Nutanix's product is a powerful solution. It's a powerful architecture concept.”
Andrew Reichman, Senior Analyst

“ Did Nutanix just create the ultimate server/storage big data combo hardware for VDI?”
Brian Madden, Independent Desktop Virtualization Expert

“ If workable in real-time, that would mean Nutanix has one-upped competitors like EMC
Corporation, Cisco Systems, NetApp, VMware and Hewlett-Packard”
Riley McDermid of VentureBeat
NUTANIX INC. – CONFIDENTIAL AND PROPRIETARY

SplunkLive! Nutanix Session - Turnkey and scalable infrastructure for Splunk Enterprise

  • 1.
    Turnkey and ScalableInfrastructure for Splunk Denis Guyadeen, VCPx4, CCAH Sr. Systems Engineer
  • 2.
    Nutanix – Whoare we Delivering Google-like Infrastructure for the Enterprise Incorporated: Raised: Sep 2009 $72M • Lightspeed • Khosla Ventures • Goldman Sachs • Battery Ventures Product launch: Nov 2011 Employees: +300 in 25 countries Spent: IP: 50 + patents filed 1 granted Filing ~10 / quarter ~50% of capital raised Recognition: Nutanix is the Only Company to Receive Best of VMworld Recognition for Past Three Consecutive Years! 2 Best of VMworld, 2011 Best of VMworld, 2012 Best of VMworld, 2013 Best of Interop, Tokyo 2012 European coverage: +150 partners +100 customers +15 employees
  • 3.
    Splunk Requirements • Splunkis IO intensive • • Write-intensive (ingest data) Read-intensive (search) • Project timeline • • Time to value (incredible business value, how fast can you get it?) Coordinating across different groups (Storage, Compute, Networking, etc) • Operational Challenges • Server Sprawl • More data sources • How do I add capacity?
  • 4.
    Splunk Requirements • Splunkis IO intensive – Use SSD • • Write-intensive (ingest data) Read-intensive (search) • Project Timeline • • Time to value (incredible business value, how fast can you get it?) Coordinating across different groups (Storage, Compute, Networking, etc) • Operational Challenges • Server Sprawl • More data sources • How do I add capacity?
  • 5.
    Splunk Requirements • Splunkis IO intensive – Use SSD • • Write-intensive (ingest data) Read-intensive (search) • Project Timeline – Use a Datacenter appliance • • Time to value (incredible business value, how fast can you get to it?) Coordinating across different groups (Storage, Compute, Networking, etc) • Operational Challenges • Server Sprawl • More data sources • How do I add capacity?
  • 6.
    Splunk Requirements • Splunkis IO intensive – Use SSD • • Write-intensive (ingest data) Read-intensive (search) • Project Timeline – Use a Datacenter Appliance • • Time to value (incredible business value, how fast can you get to it?) Coordinating across different groups (Storage, Compute, Networking, etc) • Operational Challenges – Use a Scale-Out Architecture • Server Sprawl • More data sources • How do I add capacity?
  • 7.
    Splunk Requirements • Splunkis IO intensive – Use SSD • • Write-intensive (ingest data) Read-intensive (search) • Project timeline – Use a Datacenter Appliance • • Time to value (incredible business value, how fast can you get to it?) Coordinating across different groups (Storage, Compute, Networking, etc) • Operational Challenges – Use a Scale-Out Cluster • Server Sprawl • More data sources – Use a Scale-Out Datacenter Appliance • How do I add capacity?
  • 8.
    Nutanix – TheBig Picture Convergence of Compute and Storage • A Datacenter Appliance to run Splunk • Compute & Storage all-in-one appliance • Higher performance – SSD built-in • Faster time to value – Delivered as an Appliance • Scalable • Pay only for what you need now • No unexpected surprises ($$$!) from architectural limits • Less expensive • Smaller datacenter footprint, less power, less cooling • Easier to manage – All-in-one solution
  • 9.
    Definition of theNext-Gen Datacenter Physical transforms to virtual Scale-out architectures Services delivered via software Commodity hardware alters economics Massively Scalable. Elastic. Agile.
  • 10.
  • 11.
    Virtualization Changes Everything •Complex to manage • Costly to scale SAN/NAS Storage Network • Managed separately Centralized Storage from virtualization • Difficult to provision • Performance bottleneck
  • 12.
    Cloud-Generation Systems Convergence ofCompute and Storage The consumer cloud guys argued for… Flatter datacenters That scale by adding another x86 server… NUTANIX INC. – CONFIDENTIAL AND PROPRIETARY Building embarrassingly parallel DCs
  • 13.
    Cloud and Web-ScaleArchitectures Convergence of Compute and Storage Add scale one x86 server at a time Flat and simple datacenters Software driven to reduce CapEx
  • 14.
    Software-Defined Data Centers Compute,Network, Storage, Security converged in x86 servers So we are now converging on… Flatter datacenters That scale by adding another x86 server… NUTANIX INC. – CONFIDENTIAL AND PROPRIETARY Building embarrassingly parallel DCs
  • 15.
    Software-Defined Data Centers TheCore Building Blocks 1 Simplicity 3 4 True Convergence 2 Scale Out All Sizes All Workloads All Hypervisors 5 End-to-end Visibility
  • 16.
    Convergence 2.0 Storage Fabricinside the x86 server, where VMs run! Virtual Machine/Virtual Disk Virtual Storage Control Flash Virtual Storage Control HDD Enterprise Grade Data Services Clones, snapshots, replication, compression, thin provisioning Fastest Performance Hypervisor Agnostic Data Locality, Real-Time tiering, De-Duplication vSphere, KVM, Hyper-V
  • 17.
    The Virtual ComputingPlatform Scale-out, Converged, Software-defined, Flash-enabled, and Hybrid Convergence is only one of the pillars of the next-generation datacenter…
  • 18.
    Converged Storage fabric collapsedon to compute Hypervisor the de facto substrate, i.e., the new datacenter (DC) OS All DC services are now virtual. No room for special-purpose “appliances” Software-Defined Zero hardware crutch Deliver technology as a portfolio: pre-packaged, all sw, usage-based VM-awareness for everything; mechanism decoupled from policy Server-Side Flash Flash needs to begin at the server, i.e., as close to compute as possible Server-side form factors – DIMM-based, PCIe-based, SATA-based – critical Hybrid Computing Single control and data fabric to unify VMware ESXi, KVM, and Microsoft Hyper-V environments Private Cloud transparently bleeds into the Public Cloud
  • 19.
    Achieving Scale Metadata, DataMovement, Recovery, Self-description for Versioning Self-Describing {Storage, Service} protobuf’s for backward compatibility of data protobuf’s for versioning APIs, services. NoSQL Metadata must scale with the cluster Lock-less operations for metadata update: optimistic concurrency control Compression No impact to your workloads, order of magnitude faster then traditional algorithms, runs on cold dataset MapReduce for Scaling Operations Massively Parallel Disk Recovery Massively Parallel Data Rebalancing (when machines are added/removed) Massively Parallel Data Tiering Algorithms … and so on.
  • 20.
    Large Clusters: SingleFabrics Designed for Scalability Day One 1 Analytics 2 Configuration 4 Scaling UI Patterns, Hotspots Hive-based Log analytics, heat-maps 3 Scaling Ops Rolling Upgrades, Add/Remove Web Service, Stats Every node upgrades itself, Auto-Discovery Cluster re-balancing via MapReduce Web service runs on all machines; leader elected on the fly using ZooKeeper Fine-grained stats stored in NoSQL
  • 21.
    Pay-As-You-Grow • Scale incrementallyone server at a time • Protect infrastructure investment by eliminating forklift upgrades • Scale storage capacity and performance independently
  • 22.
    Elastic Deduplication Engine Real-timededuplication for RAM and flash 100% software-driven Designed for scale-out Extensible for all storage, including HDD
  • 23.
    Dynamic Cluster Expansion Self-discoverywith zero downtime Flexible Clusters Add nodes in 2 clicks Expand cluster in minutes, not days or weeks Self discovery Automatically detects new nodes NUTANIX INC. – CONFIDENTIAL AND PROPRIETARY Zero cluster downtime
  • 24.
    Rolling Upgrades Zero downtime UpgradeSW with NO DOWNTIME Service Continuity Dynamically utilizes neighboring controller Minimal Simple. administrative intervention Data remains available No impact to end user Even for large clusters
  • 25.
    Capacity Optimization Inline andPost-processed compression • • • Data compressed as its written (synchronously) Ideal for archival data High performance for sequential workloads • Data compressed after “cold” data is migrated to lower-performance storage tiers Processed only when data and compute resources are available No impact to normal IO path Ideal for random batch workloads • • • VM Centric Purpose-built for virtualization • • • • Increased usable capacity across all storage tiers Compression policies align with VM-centric workflows Maximum compression/decompression performance with Snappy algorithm Sub-block compression for granularity and maximum efficiency
  • 26.
    Snapshots / Clones VM-centricwith no LUNs or Volumes Full VMware integration Support for VMware API for Array Integration (VAAI) primitives Support for View Composer for Array Integration (VCAI) standards Offloads the virtualization tier to increase performance of common operations Native VM-centric snapshots No LUNs or Volumes Array-based quick-clones for efficient provisioning
  • 27.
    Native Disaster Recovery VM-centricreplication VM-Centric workflows Granular VM-based snapshots and policies Better than LUN or file system based Flexible n-way protection Simultaneous bi-directional replication between sites N-way master-master model Data protection VM and application level crash consistency Flexible protection domains for VM grouping and policies
  • 28.
    Nutanix Prism Consumer-like simplicityand cloud-ready Prism GUI Consumer-grade user experience Vantage points for at-a-glance view of server, storage and network operations HTML5 based for multi device mgmt Prism REST APIs Supports all Nutanix functionality: server, storage, virtualization and networking Storage Provides extensibility with OpenStack and Cloud Management solutions
  • 29.
    Why Virtualize Splunk? SplunkStatus Check • Typically Bare Metal • Dedicated, single-purpose No Tiering BIG DATA PRIVATE CLOUD Provision clusters on demand for test-anddev and ephemeral jobs • Hot and cold data reside SECURITY & MULTITENANCY Keep data separate for different business units & prevent runaway jobs on the same tier Lacks Enterprise Features • HA, vMotion, Snapshots, Backup, DR, Quick Clones, etc. • Development & IT are MANAGEABILITY ELASTICITY Use the same Reclaim power, cooling, and rack space and use monitoring and only what you need, management tools you when you need it. know and love tightly coupled 2 9
  • 30.
    Linear scalability forSplunk Convergence of Compute and Storage EPS Capacity 70 60 (EPS) 50 1,500,000 40 1,000,000 30 20 500,000 10 - 0 4 8 12 Nutanix Nodes (4 nodes per 2U Appliance) 16 Raw Capacity 2,000,000 (TB) Events Per Second 2,500,000
  • 31.
    Dispelling the Myth Nutanixoutperforms virtualized and bare metal Testing Events Per Seconds with Splunk on different appliances 160,000 124,000-126,000 EPS 120,000 73,409 80,000 40,000 38,731 0 EMC HP Nutanix Bare metal Rack Size 48U EMC Isilon x400 (8 node) 2x UCS C240 Servers vSphere 5 Per VM specs: 8 GB RAM, 8vCPU 2U .5U DL 380 2 6 core Xeon 12 GB RAM Nutanix 3000 series (1 node) 2x Xeon vSphere 5.1 Per VM specs: 8 vCPU, 8GB RAM
  • 32.
    Splunk on NutanixReference Architecture http://go.nutanix.com/rs/nutanix/images/TG_Splunk_on_Nutanix_RA.pdf
  • 33.
    Splunk on NutanixReference Architecture 3 GB/s sequential 100,000 Random Read IOPS 500,000 EPS 2U http://go.nutanix.com/rs/nutanix/images/TG_Splunk_on_Nutanix_RA.pdf
  • 34.
    Technical Specifications Complete Portfolio NX-1000Series NX-6000 Series NX-3000 Series NX-1050 NX-3050/NX-3051 Per Node (4 per Block) Per Node (4 per Block) Server Compute Dual 6 core SandyBridge E5-2620 / 2.0GHz Dual 8 core SandyBridge E5-2670 / 2.6GHz Cold Tier 4 x 1 TB per node 4 x 1 TB per node Hot Tier 400GB SSD per node 2 x 400GB/800GB SSD per node (800GB/1.6TB) Memory 64 or 128GB/node (DDR3 1600GHz) 128 or 256GB/node (DDR3 1600GHz) 128 or 256GB/node (DDR3 1600GHz) Dual 10GbE, 2 x 1GbE 1 x IPMI (10/100 Mb/s) Dual 10GbE, 2 x 1GbE 1 x IPMI (10/100 Mb/s) Dual 10GbE, 2 x 1GbE 1 x IPMI (10/100 Mb/s) Redundant 1100W, 110/1620W, 208V Redundant 1620W, 208V Redundant 1620W, 208V Network Connections Power Supply NX-6050 NX-6070 Per Node (2 per Block) Dual 8 core SandyBridge E5-2670 / 2.6GHz Dual 8 core SandyBridge E52690 / 2.9GHz 4 x 4TB per node 2 x 400GB SSD per node (800GB) NUTANIX INC. – CONFIDENTIAL AND PROPRIETARY 2 x 800GB SSD per node (1.6 TB)
  • 35.
    Next-Gen Infrastructure • Allphysical resources pooled and abstracted • Storage containers maintain logical separation between business units • Runs mixed workloads with multiple hypervisors • Simple elasticity through linear scale-out • On-demand provisioning with existing virtualization tools
  • 36.
  • 37.
    Broad Industry Recognition Top10 Storage Startups “ Converged storage makes SAN look like the mainframe.” Computerworld “ I am always hesitant to declare a product a "game changer" but Nutanix may have just done that with their Nutanix Complete Cluster.” George Crump, Founding Analyst “ In the case of EMC, HP or NetApp, they're taking the same storage products they've been selling for years and repackaging for virtual server environments. I think Nutanix's product is a powerful solution. It's a powerful architecture concept.” Andrew Reichman, Senior Analyst “ Did Nutanix just create the ultimate server/storage big data combo hardware for VDI?” Brian Madden, Independent Desktop Virtualization Expert “ If workable in real-time, that would mean Nutanix has one-upped competitors like EMC Corporation, Cisco Systems, NetApp, VMware and Hewlett-Packard” Riley McDermid of VentureBeat
  • 38.
    NUTANIX INC. –CONFIDENTIAL AND PROPRIETARY

Editor's Notes

  • #4 The underlying solutionthat is used to store Splunk must be flexible and able to scale easily without interruption to the operation of the Splunk environment.
  • #9 Splunk processing requires dynamically scalable compute andstorage that can be non-disruptively scaled for capacity and performance.
  • #20 Google uses Protocol Buffers for almost all of its internal RPC protocols and file formats.Google developed protocol buffers to improve the performance and efficiency of communication in a distributed system. Awesome serialization tech.
  • #21 Anomalies
  • #29 Key Points:The Nutanix architecture is based on these same design principles that are powering the world’s largest cloud datacenters.Specifically, the Nutanix virtual computing platform converges all compute and storage resources into a single, integrated system.Multiple sever nodes and Nutanix blocks can be seamlessly clustered to achieve massive scale.Each Nutanix solution delivered in a easy-to-deploy 2U appliances, with virtualization software pre-installed and ready to run out of the boxEach server node integrates a virtual storage controller to manage storage resources across the cluster, and for all guest VMs
  • #32 3 ½ more perf then Isilon1 ½ times more perf then HP
  • #33 340,000-500,000 events per second (EPS)
  • #34 340,000-500,000 events per second (EPS)