SlideShare a Scribd company logo
1 of 29
Download to read offline
© 2020 Infinidat. All Rights Reserved. 1
┃ SCALE TO WIN
© 2020 Infinidat. All Rights Reserved. 1
┃ SCALE TO WIN
Rostislav Gemrot
September 2021
Empower Data-Driven
Competitive Advantage
at Multi-Petabyte Scale
© 2020 Infinidat. All Rights Reserved. 2
┃ SCALE TO WIN
© 2020 Infinidat. All Rights Reserved. 2
┃ SCALE TO WIN
HYPER STORAGE – NO COMPROMISE !
Unique/Patented
Software Driven
Architecture
100+ Patents
COTS hardware
Virtualized NL-SAS Backend
Unique IO placement and protection
© 2020 Infinidat. All Rights Reserved. 3
┃ SCALE TO WIN
© 2020 Infinidat. All Rights Reserved. 3
┃ SCALE TO WIN
INFINIDAT
About us
7+ Exabytes
Deployed
Cloud Providers, Financial,
Government, Academic,
Healthcare, Media, Internet,
Retail and more
Global Presence
USA, EMEA, Latin
America, Asia, R&D in
Israel and
Massachusetts
Innovation Spirit
180+ Patents: Data
Protection,
Performance, Scaling,
Automation, Energy
Savings and
Ease of Use
3 Generations of
Experience and
Knowledge
World-Class Resources
and Unparalleled
Pedigree
Unparalleled
Support Service
1st Class Support
Responsiveness and
Quality
Moshe Yanai
INFINIDAT Founder
© 2020 Infinidat. All Rights Reserved. 4
┃ SCALE TO WIN
© 2020 Infinidat. All Rights Reserved. 4
┃ SCALE TO WIN
CUSTOMER AND ANALYST RECOGNITION
Infinidat Dell
EMC
HPE NetApp IBM Hitachi
Vantara
Pure
Storage
Huawei
Rating out of
possible 5.0
4.9 4.5 4.6 4.7 4.5 4.7 4.8 4.8
Number of
Reviews
369 381 445 603 96 107 475 142
Willingness to
Recommend
97% 81% 89% 92% 85% 90% 98% 94%
© 2020 Infinidat. All Rights Reserved. 5
┃ SCALE TO WIN
© 2020 Infinidat. All Rights Reserved. 5
┃ SCALE TO WIN
INFINIBOX™
Performance Edge
Multi Petabyte Scale
115TB to 4.2PB net capacity
in a single 42U rack
Solutions
Rich integrations with leading
business platforms and
applications
Green Storage
Superior power efficiency
3kWh - 9kWh Max
Unmatched Reliability
Unique architecture enables
rock-solid uptime
Unified Storage
Truly unified storage built
from ground-up for multi
protocols
Easy
Simple and powerful management
interfaces – WebUI, RESTful
API, cross platform CLI
Disruptive pricing By design
Order of magnitude more usable
capacity per dollar
© 2020 Infinidat Proprietary and Confidential 6
┃ SCALE TO WIN
Infinidat Design Principles
Faster
Latency
130
µSec
1mSec
900µSec
800µSec
700µSec
600µSec
500µSec
400µSec
300µSec
200µSec
100µSec
0
150-
400
µSec
Infinidat
Typical
All-Flash
Array
More Reliable
100%
data
availability
guaranteed
100%
6-9s?
5-9s?
4-9s?
Infinidat
Typical
All-Flash
Array
Less Expensive
$
$5000
$4500
$4000
$3500
$3000
$2500
$2000
$1500
$1000
$500
0
$3-5K
per
Usable
TB
$/Usable
TB
Infinidat
Typical
All-Flash
Array
Up to
4PB
Effective
Up to
10 PB
Effective
lowest cost
storage for
E2EE!
4.1PB
Usable
10PB
9PB
8PB
7PB
6PB
5PB
4PB
3PB
2PB
1PB
0
Infinidat
Typical
All-Flash
Array
More Capacity
Up to
4PB
Effective
© 2020 Infinidat Proprietary and Confidential 7
┃ SCALE TO WIN
1U 3x ATS: Triple Redundant Power Management
3U 3x BBU: Triple Redundant Battery Backup
6U
3x Server Nodes: Active/Active/Active
• Up to 3TB DRAM
• Up to 368TB SSD
32U
Up to 8x High Capacity Drive Enclosures:
• 60 Drives per Enclosure
• 2, 4, or 8 Enclosures per System
• 120, 240, or 480 Drives
42U
InfiniBox Fx3xx/Fx2xx Hardware Configuration
© 2020 Infinidat Proprietary and Confidential 8
┃ SCALE TO WIN
Flexible Business Models
* Not available in all regions. All business models are subject to commercial terms and conditions.
Up-front Purchase
• All-inclusive
software licensing
• Technical Advisor
NEW: Elastic Pricing
• Partial capacity Day 1
• Grow base over time
• Burst up/down above base
with opex payments
Initial Base
Capacity
FLX (Utility)
• Partial capacity Day 1.
“Rent” additional capacity
through ongoing payments
as needed
Opex
Capacity
Minimal
Capacity
© 2020 Infinidat Proprietary and Confidential 9
┃ SCALE TO WIN
FC Hosts
InfiniBox Topology
Ethernet Hosts
Cache Layer
Up to 3TB DRAM
Up to 368TB SSD used for
non-persistent data
(with no overhead)
95% + Read
from cache
Host Connectivity
FC, iSCSI, NFS, SMB, NVMe/TCP
(12) 10/25GbE ports
( 6 ) 10GbE only ports
(24) FC ports 16Gb/32Gb
Block and File simultaneously
all commodity hardware
Persistent Layer
Server to Disk = SAS
(all nodes access all drives
= massive parallelism)
All physical HDD’s are
virtualized.
Data is protected with
InfiniRAID (not hardware RAID)
Up to 8 HDD Enclosures
(up to 480 NL-SAS HDD)
Processing Layer
3 nodes
Active Active Active
InfiniBand mesh (no IB switch)
Active
Active
Active
Drive
Shelves
BBU’s
ATS
InfiniBox
© 2020 Infinidat Proprietary and Confidential 10
┃ SCALE TO WIN
Intelligent IO Flow
Write Cache Attributes
• 100% writes to DRAM
• Dual Protected Across Nodes
• De-staging every 5 Min or less
Read Cache Attributes
• Aggressive read-ahead
• Primary & Secondary Layers
• Uncompressed for superior latency
Data Persistence Layer Attributes
• Intelligent data placement
• Always sequential access
• High performance dual parity data
protection method
Random
Reads
Host(s)
All
Writes
DRAM SSD
HDD
Sequential
Reads
Sequential
Writes
85-90% ns
10-20% μs
1-5% ms
Not compressed Not compressed
Compressed
Extended Read Cache
Sequential
Reads
3 Nodes of
Cache
DRAM + SSD
HOT
COLD
© 2020 Infinidat Proprietary and Confidential 11
┃ SCALE TO WIN
Data Distribution
iSCSI Host
Nodes
Drive
Enclosures
InfiniBox
NFS Host
FC Host
InfiniRaid
Data is stored on persistent media in
64k + 4k meta data sections
Data is destaged using 14 data sections
and 2 parity sections: 68k x 16 = 1088kb
Data is always destaged sequentially
Each destage is a virtual InfiniRaid
stripe to 16 independent NL-SAS drives
spread equally across the enclosures
✓ No hardware RAID or disk groupings
✓ No Hot-Spots
✓ No Tuning
✓ No Tiering
✓ Always Balanced
ACK
FC Host
© 2020 Infinidat Proprietary and Confidential 12
┃ SCALE TO WIN
MEDIA PRICE TREND
Source: Western Digital
© 2020 Infinidat Proprietary and Confidential 13
┃ SCALE TO WIN
Black Friday - Cyber Monday
Average
DRAM
Hit Ratio
84%
Average
SSD
Hit Ratio
10%
Average
Cache
Hit Ratio
94%
Unmatched Performance
© 2020 Infinidat Proprietary and Confidential 15
┃ SCALE TO WIN
InfiniBox Quality Of Service
Smart workload management aligned with cloud computing models
▪ Optimized for both service providers and IT workshops
▪ Enables SLO maintenance
▪ Enables Service level differentiations
▪ Eliminates Noisy neighbors
▪ Cloud optimized design
▪ Burst management allows for optimal resource utilization
▪ Hard and soft limits
▪ Graceful enforcement
▪ “artificial latency” added to slow exceeding entities
▪ Flexible and scalable
▪ Policy based management
▪ Up to 5000 policies
▪ Policy can span 500 entities
15
© 2020 Infinidat Proprietary and Confidential 16
┃ SCALE TO WIN
InfiniBox Snapshots Architecture
Zero Penalty, optimal cost and maximum scale
• Zero Overhead
• Instantaneous creation based on timestamp (no Metadata overhead).
• Redirect-on-write backend IO
• No capacity overhead (64KB delta block)
• Cache fast override minimizes disk IO
• TRIE version management negates snapshot metadata
• Enterprise ready
• 100,000+ entities per system
• 16 cascade generations per volume
• Any generation can be read enabled
• Rollback from any generation to any generation
• Can be time locked (Immutable snapshots)
• Block and File supported
16
© 2020 Infinidat Proprietary and Confidential 17
┃ SCALE TO WIN
Array Based Replication
• Leverages InfiniSnap Technology
• IP Based Replication
• Replicates Volumes, Filesystems &
Consistency Groups
• Asynchronous (4-second Interval)
• Synchronous
• Active/Active (Synchronous)
• Bi-Directional – Different Volumes
• VMware SRM Integration
© 2020 Infinidat Proprietary and Confidential 18
┃ SCALE TO WIN
InfiniBox Replication Solutions
All InfiniBox replication
solutions:
• Based on InfiniSnap
• Leverage TCP/IP for lower
infrastructure costs
• Do not require any additional
hardware or software licenses
Active-Active Replication
• Based on Sync Replication
• Zero RPO at Zero RTO
Multi-site Replication
• 3-site (or more) integrating
Active-Active and Asynch
Replication
• Industry-leading lowest RPO
Infinidat Solutions RPO RTO
Asynchronous
Replication
Standard replication at
any distance
As low as 4 seconds Non-zero
Usually within 2 minutes
to break relationships
and make volumes
accessible on target
Synchronous
Replication
Zero data loss replication
for metro distances
Zero Non-zero
Usually within 2 minutes
to break relationships
and make volumes
accessible on target
Active-Active
Replication
Nonstop operation at
metro distances
Zero Zero
© 2020 Infinidat Proprietary and Confidential 19
┃ SCALE TO WIN
Host A
Volume Volume
Host B
IP
• Both volumes are presented
as same LUN (same serial
number) to all hosts
• Both volumes can serve IOs
• Witness is a lightweight,
stateless, 3rd-site VM
• Solution is based on ALUA
(asymmetric LUN access)
across systems
• Standard and included!
Witness
Copy serial number
InfiniBox Active-Active Replication
© 2020 Infinidat Proprietary and Confidential 20
┃ SCALE TO WIN
Infinidat Concurrent 3-Site Replication
Data
Acknowledge
Maintain IO ordering and Acknowledge
Data
Site B Site A
Site C
Application
Active-Active Synchronous Replication
Typical <5ms Latency
Asynchronous Replication
No Distance or Latency Requirements
© 2020 Infinidat Proprietary and Confidential 21
┃ SCALE TO WIN
Infinidat Concurrent 3-Site Replication
Configuration Options
Site D
Site A Site B
Data
Data
Active-Active Replication
Site C
Asynchronous Replication
Asynchronous Replication
© 2020 Infinidat Proprietary and Confidential 23
┃ SCALE TO WIN
• InfiniVerse
• InfiniMetrics
• RESTful API / Python SDK
• Host PowerTools / VMware plug-ins
• HTML5 User Interface
Easy to Manage Easy to Integrate
Code.Infinidat.com
© 2020 Infinidat Proprietary and Confidential 24
┃ SCALE TO WIN
INFINIDAT –VMware Certified
Integration
Site A Site B
INFINIDAT
VMware Plug-Ins
Site
Recovery
Manager
(Replication)
VASA & VAAI
(Management &
Control)
INFINIDAT
HostPower Tools
(Configuration
Assurance &
Provisioning)
Third Party
Integration and
Customization
InfiniMetrics
Manage from
Server to Storage
Across and entire
Enterprise
Single
VM Restore
Single
VM Restore
© 2020 Infinidat Proprietary and Confidential 25
┃ SCALE TO WIN
EASY TO MANAGE –INFINIDAT InfiniBox
User Interface –One Click Away!
© 2020 Infinidat Proprietary and Confidential 27
┃ SCALE TO WIN
Reference architecture & usage
• InfiniBox v provozu cca 1 rok
• Všechny typy zátěže vyjma Oracle DB
• Celkově jsou velmi spokojeni
• Výkon
• Jednoduchost správy
• Spolehlivost
© 2020 Infinidat Proprietary and Confidential 28
┃ SCALE TO WIN
© 2020 Infinidat Proprietary and Confidential 29
┃ SCALE TO WIN
© 2020 Infinidat Proprietary and Confidential 30
┃ SCALE TO WIN
© 2020 Infinidat Proprietary and Confidential 31
┃ SCALE TO WIN
© 2020 Infinidat Proprietary and Confidential 32
┃ SCALE TO WIN
THANK YOU!
SCALE TO WIN

More Related Content

What's hot

Designing Apache Hudi for Incremental Processing With Vinoth Chandar and Etha...
Designing Apache Hudi for Incremental Processing With Vinoth Chandar and Etha...Designing Apache Hudi for Incremental Processing With Vinoth Chandar and Etha...
Designing Apache Hudi for Incremental Processing With Vinoth Chandar and Etha...HostedbyConfluent
 
Running Apache NiFi with Apache Spark : Integration Options
Running Apache NiFi with Apache Spark : Integration OptionsRunning Apache NiFi with Apache Spark : Integration Options
Running Apache NiFi with Apache Spark : Integration OptionsTimothy Spann
 
Oracle GoldenGate and Apache Kafka: A Deep Dive Into Real-Time Data Streaming
Oracle GoldenGate and Apache Kafka: A Deep Dive Into Real-Time Data StreamingOracle GoldenGate and Apache Kafka: A Deep Dive Into Real-Time Data Streaming
Oracle GoldenGate and Apache Kafka: A Deep Dive Into Real-Time Data StreamingMichael Rainey
 
Next generation business automation with the red hat decision manager and red...
Next generation business automation with the red hat decision manager and red...Next generation business automation with the red hat decision manager and red...
Next generation business automation with the red hat decision manager and red...Masahiko Umeno
 
Using Kafka and Kudu for fast, low-latency SQL analytics on streaming data
Using Kafka and Kudu for fast, low-latency SQL analytics on streaming dataUsing Kafka and Kudu for fast, low-latency SQL analytics on streaming data
Using Kafka and Kudu for fast, low-latency SQL analytics on streaming dataMike Percy
 
VMware Cloud Foundation - PnP presentation 8_6_18 EN.pptx
VMware Cloud Foundation - PnP presentation 8_6_18 EN.pptxVMware Cloud Foundation - PnP presentation 8_6_18 EN.pptx
VMware Cloud Foundation - PnP presentation 8_6_18 EN.pptxBradLai3
 
Ceph Object Storage at Spreadshirt (July 2015, Ceph Berlin Meetup)
Ceph Object Storage at Spreadshirt (July 2015, Ceph Berlin Meetup)Ceph Object Storage at Spreadshirt (July 2015, Ceph Berlin Meetup)
Ceph Object Storage at Spreadshirt (July 2015, Ceph Berlin Meetup)Jens Hadlich
 
When NOT to use Apache Kafka?
When NOT to use Apache Kafka?When NOT to use Apache Kafka?
When NOT to use Apache Kafka?Kai Wähner
 
Redis + Kafka = Performance at Scale | Julien Ruaux, Redis Labs
Redis + Kafka = Performance at Scale | Julien Ruaux, Redis LabsRedis + Kafka = Performance at Scale | Julien Ruaux, Redis Labs
Redis + Kafka = Performance at Scale | Julien Ruaux, Redis LabsHostedbyConfluent
 
NoSQL Data Modeling Foundations — Introducing Concepts & Principles
NoSQL Data Modeling Foundations — Introducing Concepts & PrinciplesNoSQL Data Modeling Foundations — Introducing Concepts & Principles
NoSQL Data Modeling Foundations — Introducing Concepts & PrinciplesScyllaDB
 
Kafka for Real-Time Replication between Edge and Hybrid Cloud
Kafka for Real-Time Replication between Edge and Hybrid CloudKafka for Real-Time Replication between Edge and Hybrid Cloud
Kafka for Real-Time Replication between Edge and Hybrid CloudKai Wähner
 
Kafka Streams vs. KSQL for Stream Processing on top of Apache Kafka
Kafka Streams vs. KSQL for Stream Processing on top of Apache KafkaKafka Streams vs. KSQL for Stream Processing on top of Apache Kafka
Kafka Streams vs. KSQL for Stream Processing on top of Apache KafkaKai Wähner
 
Database Migration Assistant for Unicode (DMU)
Database Migration Assistant for Unicode (DMU)Database Migration Assistant for Unicode (DMU)
Database Migration Assistant for Unicode (DMU)Ludovico Caldara
 
On-premise to Microsoft Azure Cloud Migration.
 On-premise to Microsoft Azure Cloud Migration. On-premise to Microsoft Azure Cloud Migration.
On-premise to Microsoft Azure Cloud Migration.Emtec Inc.
 
Azure Arc by K.Narisorn // Azure Multi-Cloud
Azure Arc by K.Narisorn // Azure Multi-CloudAzure Arc by K.Narisorn // Azure Multi-Cloud
Azure Arc by K.Narisorn // Azure Multi-CloudKumton Suttiraksiri
 

What's hot (20)

Designing Apache Hudi for Incremental Processing With Vinoth Chandar and Etha...
Designing Apache Hudi for Incremental Processing With Vinoth Chandar and Etha...Designing Apache Hudi for Incremental Processing With Vinoth Chandar and Etha...
Designing Apache Hudi for Incremental Processing With Vinoth Chandar and Etha...
 
Running Apache NiFi with Apache Spark : Integration Options
Running Apache NiFi with Apache Spark : Integration OptionsRunning Apache NiFi with Apache Spark : Integration Options
Running Apache NiFi with Apache Spark : Integration Options
 
Oracle GoldenGate and Apache Kafka: A Deep Dive Into Real-Time Data Streaming
Oracle GoldenGate and Apache Kafka: A Deep Dive Into Real-Time Data StreamingOracle GoldenGate and Apache Kafka: A Deep Dive Into Real-Time Data Streaming
Oracle GoldenGate and Apache Kafka: A Deep Dive Into Real-Time Data Streaming
 
Next generation business automation with the red hat decision manager and red...
Next generation business automation with the red hat decision manager and red...Next generation business automation with the red hat decision manager and red...
Next generation business automation with the red hat decision manager and red...
 
Using Kafka and Kudu for fast, low-latency SQL analytics on streaming data
Using Kafka and Kudu for fast, low-latency SQL analytics on streaming dataUsing Kafka and Kudu for fast, low-latency SQL analytics on streaming data
Using Kafka and Kudu for fast, low-latency SQL analytics on streaming data
 
VMware Cloud Foundation - PnP presentation 8_6_18 EN.pptx
VMware Cloud Foundation - PnP presentation 8_6_18 EN.pptxVMware Cloud Foundation - PnP presentation 8_6_18 EN.pptx
VMware Cloud Foundation - PnP presentation 8_6_18 EN.pptx
 
Ceph Object Storage at Spreadshirt (July 2015, Ceph Berlin Meetup)
Ceph Object Storage at Spreadshirt (July 2015, Ceph Berlin Meetup)Ceph Object Storage at Spreadshirt (July 2015, Ceph Berlin Meetup)
Ceph Object Storage at Spreadshirt (July 2015, Ceph Berlin Meetup)
 
Rds data lake @ Robinhood
Rds data lake @ Robinhood Rds data lake @ Robinhood
Rds data lake @ Robinhood
 
When NOT to use Apache Kafka?
When NOT to use Apache Kafka?When NOT to use Apache Kafka?
When NOT to use Apache Kafka?
 
Redis + Kafka = Performance at Scale | Julien Ruaux, Redis Labs
Redis + Kafka = Performance at Scale | Julien Ruaux, Redis LabsRedis + Kafka = Performance at Scale | Julien Ruaux, Redis Labs
Redis + Kafka = Performance at Scale | Julien Ruaux, Redis Labs
 
VMware Ready vRealize Automation Program
VMware Ready vRealize Automation ProgramVMware Ready vRealize Automation Program
VMware Ready vRealize Automation Program
 
NoSQL Data Modeling Foundations — Introducing Concepts & Principles
NoSQL Data Modeling Foundations — Introducing Concepts & PrinciplesNoSQL Data Modeling Foundations — Introducing Concepts & Principles
NoSQL Data Modeling Foundations — Introducing Concepts & Principles
 
Dynatrace
DynatraceDynatrace
Dynatrace
 
Kafka for Real-Time Replication between Edge and Hybrid Cloud
Kafka for Real-Time Replication between Edge and Hybrid CloudKafka for Real-Time Replication between Edge and Hybrid Cloud
Kafka for Real-Time Replication between Edge and Hybrid Cloud
 
Pave the Golden Path On Your Internal Platform
Pave the Golden Path On Your Internal PlatformPave the Golden Path On Your Internal Platform
Pave the Golden Path On Your Internal Platform
 
Kafka Streams vs. KSQL for Stream Processing on top of Apache Kafka
Kafka Streams vs. KSQL for Stream Processing on top of Apache KafkaKafka Streams vs. KSQL for Stream Processing on top of Apache Kafka
Kafka Streams vs. KSQL for Stream Processing on top of Apache Kafka
 
Database Migration Assistant for Unicode (DMU)
Database Migration Assistant for Unicode (DMU)Database Migration Assistant for Unicode (DMU)
Database Migration Assistant for Unicode (DMU)
 
On-premise to Microsoft Azure Cloud Migration.
 On-premise to Microsoft Azure Cloud Migration. On-premise to Microsoft Azure Cloud Migration.
On-premise to Microsoft Azure Cloud Migration.
 
Azure Arc by K.Narisorn // Azure Multi-Cloud
Azure Arc by K.Narisorn // Azure Multi-CloudAzure Arc by K.Narisorn // Azure Multi-Cloud
Azure Arc by K.Narisorn // Azure Multi-Cloud
 
Nginx Essential
Nginx EssentialNginx Essential
Nginx Essential
 

Similar to Infinidat InfiniBox

Garance 100% dostupnosti dat! Kdo z vás to má?
Garance 100% dostupnosti dat! Kdo z vás to má?Garance 100% dostupnosti dat! Kdo z vás to má?
Garance 100% dostupnosti dat! Kdo z vás to má?MarketingArrowECS_CZ
 
StorPool Storage presenting at Storage Field Day 25pdf
StorPool Storage presenting at Storage Field Day 25pdfStorPool Storage presenting at Storage Field Day 25pdf
StorPool Storage presenting at Storage Field Day 25pdfStorPool Storage
 
Cisco connect montreal 2018 compute v final
Cisco connect montreal 2018   compute v finalCisco connect montreal 2018   compute v final
Cisco connect montreal 2018 compute v finalCisco Canada
 
The role of NoSQL in the Next Generation of Financial Informatics
The role of NoSQL in the Next Generation of Financial InformaticsThe role of NoSQL in the Next Generation of Financial Informatics
The role of NoSQL in the Next Generation of Financial InformaticsAerospike, Inc.
 
Presentazione SimpliVity @ VMUGIT UserCon 2015
Presentazione SimpliVity @ VMUGIT UserCon 2015Presentazione SimpliVity @ VMUGIT UserCon 2015
Presentazione SimpliVity @ VMUGIT UserCon 2015VMUG IT
 
IME - Unlocking the Potential of NVMe
IME - Unlocking the Potential of NVMeIME - Unlocking the Potential of NVMe
IME - Unlocking the Potential of NVMeinside-BigData.com
 
Fusion-IO - Building a High Performance and Reliable VSAN Environment
Fusion-IO - Building a High Performance and Reliable VSAN EnvironmentFusion-IO - Building a High Performance and Reliable VSAN Environment
Fusion-IO - Building a High Performance and Reliable VSAN EnvironmentVMUG IT
 
2016-JAN-28 -- High Performance Production Databases on Ceph
2016-JAN-28 -- High Performance Production Databases on Ceph2016-JAN-28 -- High Performance Production Databases on Ceph
2016-JAN-28 -- High Performance Production Databases on CephCeph Community
 
Approaching hyperconvergedopenstack
Approaching hyperconvergedopenstackApproaching hyperconvergedopenstack
Approaching hyperconvergedopenstackIkuo Kumagai
 
Webinar: The Bifurcation of the Flash Market
Webinar: The Bifurcation of the Flash MarketWebinar: The Bifurcation of the Flash Market
Webinar: The Bifurcation of the Flash MarketStorage Switzerland
 
Qnap iei partners_day_2016 1108
Qnap iei partners_day_2016 1108Qnap iei partners_day_2016 1108
Qnap iei partners_day_2016 1108qnapivan
 
IBM Object Storage and Software Defined Solutions - Cleversafe
IBM Object Storage and Software Defined Solutions - CleversafeIBM Object Storage and Software Defined Solutions - Cleversafe
IBM Object Storage and Software Defined Solutions - CleversafeDiego Alberto Tamayo
 
Updates to Apache CloudStack and LINBIT SDS
Updates to Apache CloudStack and LINBIT SDSUpdates to Apache CloudStack and LINBIT SDS
Updates to Apache CloudStack and LINBIT SDSShapeBlue
 
Ceph Day Tokyo -- Ceph on All-Flash Storage
Ceph Day Tokyo -- Ceph on All-Flash StorageCeph Day Tokyo -- Ceph on All-Flash Storage
Ceph Day Tokyo -- Ceph on All-Flash StorageCeph Community
 
Dell emc - The Changing IT Landscape
Dell emc - The Changing IT LandscapeDell emc - The Changing IT Landscape
Dell emc - The Changing IT LandscapeVITO - Securitas
 

Similar to Infinidat InfiniBox (20)

Webinář InfiniBox
Webinář InfiniBoxWebinář InfiniBox
Webinář InfiniBox
 
Garance 100% dostupnosti dat! Kdo z vás to má?
Garance 100% dostupnosti dat! Kdo z vás to má?Garance 100% dostupnosti dat! Kdo z vás to má?
Garance 100% dostupnosti dat! Kdo z vás to má?
 
InfiniBox z pohledu zákazníka
InfiniBox z pohledu zákazníkaInfiniBox z pohledu zákazníka
InfiniBox z pohledu zákazníka
 
Qnap event v1.6
Qnap   event v1.6Qnap   event v1.6
Qnap event v1.6
 
StorPool Storage presenting at Storage Field Day 25pdf
StorPool Storage presenting at Storage Field Day 25pdfStorPool Storage presenting at Storage Field Day 25pdf
StorPool Storage presenting at Storage Field Day 25pdf
 
Cisco connect montreal 2018 compute v final
Cisco connect montreal 2018   compute v finalCisco connect montreal 2018   compute v final
Cisco connect montreal 2018 compute v final
 
The role of NoSQL in the Next Generation of Financial Informatics
The role of NoSQL in the Next Generation of Financial InformaticsThe role of NoSQL in the Next Generation of Financial Informatics
The role of NoSQL in the Next Generation of Financial Informatics
 
Presentazione SimpliVity @ VMUGIT UserCon 2015
Presentazione SimpliVity @ VMUGIT UserCon 2015Presentazione SimpliVity @ VMUGIT UserCon 2015
Presentazione SimpliVity @ VMUGIT UserCon 2015
 
IME - Unlocking the Potential of NVMe
IME - Unlocking the Potential of NVMeIME - Unlocking the Potential of NVMe
IME - Unlocking the Potential of NVMe
 
Fusion-IO - Building a High Performance and Reliable VSAN Environment
Fusion-IO - Building a High Performance and Reliable VSAN EnvironmentFusion-IO - Building a High Performance and Reliable VSAN Environment
Fusion-IO - Building a High Performance and Reliable VSAN Environment
 
2016-JAN-28 -- High Performance Production Databases on Ceph
2016-JAN-28 -- High Performance Production Databases on Ceph2016-JAN-28 -- High Performance Production Databases on Ceph
2016-JAN-28 -- High Performance Production Databases on Ceph
 
Approaching hyperconvergedopenstack
Approaching hyperconvergedopenstackApproaching hyperconvergedopenstack
Approaching hyperconvergedopenstack
 
Webinar: The Bifurcation of the Flash Market
Webinar: The Bifurcation of the Flash MarketWebinar: The Bifurcation of the Flash Market
Webinar: The Bifurcation of the Flash Market
 
Qnap iei partners_day_2016 1108
Qnap iei partners_day_2016 1108Qnap iei partners_day_2016 1108
Qnap iei partners_day_2016 1108
 
IBM Object Storage and Software Defined Solutions - Cleversafe
IBM Object Storage and Software Defined Solutions - CleversafeIBM Object Storage and Software Defined Solutions - Cleversafe
IBM Object Storage and Software Defined Solutions - Cleversafe
 
Updates to Apache CloudStack and LINBIT SDS
Updates to Apache CloudStack and LINBIT SDSUpdates to Apache CloudStack and LINBIT SDS
Updates to Apache CloudStack and LINBIT SDS
 
Ceph Day Tokyo -- Ceph on All-Flash Storage
Ceph Day Tokyo -- Ceph on All-Flash StorageCeph Day Tokyo -- Ceph on All-Flash Storage
Ceph Day Tokyo -- Ceph on All-Flash Storage
 
Dell emc - The Changing IT Landscape
Dell emc - The Changing IT LandscapeDell emc - The Changing IT Landscape
Dell emc - The Changing IT Landscape
 
Emc isilon overview
Emc isilon overview Emc isilon overview
Emc isilon overview
 
Mellanox Storage Solutions
Mellanox Storage SolutionsMellanox Storage Solutions
Mellanox Storage Solutions
 

More from MarketingArrowECS_CZ

INFINIDAT InfiniGuard - 20220330.pdf
INFINIDAT InfiniGuard - 20220330.pdfINFINIDAT InfiniGuard - 20220330.pdf
INFINIDAT InfiniGuard - 20220330.pdfMarketingArrowECS_CZ
 
Využijte svou Oracle databázi na maximum!
Využijte svou Oracle databázi na maximum!Využijte svou Oracle databázi na maximum!
Využijte svou Oracle databázi na maximum!MarketingArrowECS_CZ
 
Jak konsolidovat Vaše databáze s využitím Cloud služeb?
Jak konsolidovat Vaše databáze s využitím Cloud služeb?Jak konsolidovat Vaše databáze s využitím Cloud služeb?
Jak konsolidovat Vaše databáze s využitím Cloud služeb?MarketingArrowECS_CZ
 
Oracle databáze – Konsolidovaná Data Management Platforma
Oracle databáze – Konsolidovaná Data Management PlatformaOracle databáze – Konsolidovaná Data Management Platforma
Oracle databáze – Konsolidovaná Data Management PlatformaMarketingArrowECS_CZ
 
Nové vlastnosti Oracle Database Appliance
Nové vlastnosti Oracle Database ApplianceNové vlastnosti Oracle Database Appliance
Nové vlastnosti Oracle Database ApplianceMarketingArrowECS_CZ
 
Novinky ve světě Oracle DB a koncept konvergované databáze
Novinky ve světě Oracle DB a koncept konvergované databázeNovinky ve světě Oracle DB a koncept konvergované databáze
Novinky ve světě Oracle DB a koncept konvergované databázeMarketingArrowECS_CZ
 
Základy licencování Oracle software
Základy licencování Oracle softwareZáklady licencování Oracle software
Základy licencování Oracle softwareMarketingArrowECS_CZ
 
Využijte svou Oracle databázi naplno
Využijte svou Oracle databázi naplnoVyužijte svou Oracle databázi naplno
Využijte svou Oracle databázi naplnoMarketingArrowECS_CZ
 
Oracle Data Protection - 2. část
Oracle Data Protection - 2. částOracle Data Protection - 2. část
Oracle Data Protection - 2. částMarketingArrowECS_CZ
 
Oracle Data Protection - 1. část
Oracle Data Protection - 1. částOracle Data Protection - 1. část
Oracle Data Protection - 1. částMarketingArrowECS_CZ
 
Benefity Oracle Cloudu (4/4): Storage
Benefity Oracle Cloudu (4/4): StorageBenefity Oracle Cloudu (4/4): Storage
Benefity Oracle Cloudu (4/4): StorageMarketingArrowECS_CZ
 
Benefity Oracle Cloudu (3/4): Compute
Benefity Oracle Cloudu (3/4): ComputeBenefity Oracle Cloudu (3/4): Compute
Benefity Oracle Cloudu (3/4): ComputeMarketingArrowECS_CZ
 
Exadata z pohledu zákazníka a novinky generace X8M - 2. část
Exadata z pohledu zákazníka a novinky generace X8M - 2. částExadata z pohledu zákazníka a novinky generace X8M - 2. část
Exadata z pohledu zákazníka a novinky generace X8M - 2. částMarketingArrowECS_CZ
 
Exadata z pohledu zákazníka a novinky generace X8M - 1. část
Exadata z pohledu zákazníka a novinky generace X8M - 1. částExadata z pohledu zákazníka a novinky generace X8M - 1. část
Exadata z pohledu zákazníka a novinky generace X8M - 1. částMarketingArrowECS_CZ
 
Úvod do Oracle Cloud infrastruktury
Úvod do Oracle Cloud infrastrukturyÚvod do Oracle Cloud infrastruktury
Úvod do Oracle Cloud infrastrukturyMarketingArrowECS_CZ
 
Check Point automatizace a orchestrace
Check Point automatizace a orchestraceCheck Point automatizace a orchestrace
Check Point automatizace a orchestraceMarketingArrowECS_CZ
 
Oracle databáze - zkonsolidovat, ochránit a ještě ušetřit! (1. část)
Oracle databáze - zkonsolidovat, ochránit a ještě ušetřit! (1. část)Oracle databáze - zkonsolidovat, ochránit a ještě ušetřit! (1. část)
Oracle databáze - zkonsolidovat, ochránit a ještě ušetřit! (1. část)MarketingArrowECS_CZ
 

More from MarketingArrowECS_CZ (20)

INFINIDAT InfiniGuard - 20220330.pdf
INFINIDAT InfiniGuard - 20220330.pdfINFINIDAT InfiniGuard - 20220330.pdf
INFINIDAT InfiniGuard - 20220330.pdf
 
Využijte svou Oracle databázi na maximum!
Využijte svou Oracle databázi na maximum!Využijte svou Oracle databázi na maximum!
Využijte svou Oracle databázi na maximum!
 
Jak konsolidovat Vaše databáze s využitím Cloud služeb?
Jak konsolidovat Vaše databáze s využitím Cloud služeb?Jak konsolidovat Vaše databáze s využitím Cloud služeb?
Jak konsolidovat Vaše databáze s využitím Cloud služeb?
 
Chráníte správně svoje data?
Chráníte správně svoje data?Chráníte správně svoje data?
Chráníte správně svoje data?
 
Oracle databáze – Konsolidovaná Data Management Platforma
Oracle databáze – Konsolidovaná Data Management PlatformaOracle databáze – Konsolidovaná Data Management Platforma
Oracle databáze – Konsolidovaná Data Management Platforma
 
Nové vlastnosti Oracle Database Appliance
Nové vlastnosti Oracle Database ApplianceNové vlastnosti Oracle Database Appliance
Nové vlastnosti Oracle Database Appliance
 
Infinidat InfiniGuard
Infinidat InfiniGuardInfinidat InfiniGuard
Infinidat InfiniGuard
 
Novinky ve světě Oracle DB a koncept konvergované databáze
Novinky ve světě Oracle DB a koncept konvergované databázeNovinky ve světě Oracle DB a koncept konvergované databáze
Novinky ve světě Oracle DB a koncept konvergované databáze
 
Základy licencování Oracle software
Základy licencování Oracle softwareZáklady licencování Oracle software
Základy licencování Oracle software
 
Využijte svou Oracle databázi naplno
Využijte svou Oracle databázi naplnoVyužijte svou Oracle databázi naplno
Využijte svou Oracle databázi naplno
 
Oracle Data Protection - 2. část
Oracle Data Protection - 2. částOracle Data Protection - 2. část
Oracle Data Protection - 2. část
 
Oracle Data Protection - 1. část
Oracle Data Protection - 1. částOracle Data Protection - 1. část
Oracle Data Protection - 1. část
 
Benefity Oracle Cloudu (4/4): Storage
Benefity Oracle Cloudu (4/4): StorageBenefity Oracle Cloudu (4/4): Storage
Benefity Oracle Cloudu (4/4): Storage
 
Benefity Oracle Cloudu (3/4): Compute
Benefity Oracle Cloudu (3/4): ComputeBenefity Oracle Cloudu (3/4): Compute
Benefity Oracle Cloudu (3/4): Compute
 
Exadata z pohledu zákazníka a novinky generace X8M - 2. část
Exadata z pohledu zákazníka a novinky generace X8M - 2. částExadata z pohledu zákazníka a novinky generace X8M - 2. část
Exadata z pohledu zákazníka a novinky generace X8M - 2. část
 
Exadata z pohledu zákazníka a novinky generace X8M - 1. část
Exadata z pohledu zákazníka a novinky generace X8M - 1. částExadata z pohledu zákazníka a novinky generace X8M - 1. část
Exadata z pohledu zákazníka a novinky generace X8M - 1. část
 
Úvod do Oracle Cloud infrastruktury
Úvod do Oracle Cloud infrastrukturyÚvod do Oracle Cloud infrastruktury
Úvod do Oracle Cloud infrastruktury
 
Check Point automatizace a orchestrace
Check Point automatizace a orchestraceCheck Point automatizace a orchestrace
Check Point automatizace a orchestrace
 
vSAN a FileServices
vSAN a FileServicesvSAN a FileServices
vSAN a FileServices
 
Oracle databáze - zkonsolidovat, ochránit a ještě ušetřit! (1. část)
Oracle databáze - zkonsolidovat, ochránit a ještě ušetřit! (1. část)Oracle databáze - zkonsolidovat, ochránit a ještě ušetřit! (1. část)
Oracle databáze - zkonsolidovat, ochránit a ještě ušetřit! (1. část)
 

Recently uploaded

"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack
"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack
"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek SchlawackFwdays
 
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...shyamraj55
 
My INSURER PTE LTD - Insurtech Innovation Award 2024
My INSURER PTE LTD - Insurtech Innovation Award 2024My INSURER PTE LTD - Insurtech Innovation Award 2024
My INSURER PTE LTD - Insurtech Innovation Award 2024The Digital Insurer
 
Dev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio WebDev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio WebUiPathCommunity
 
Bun (KitWorks Team Study 노별마루 발표 2024.4.22)
Bun (KitWorks Team Study 노별마루 발표 2024.4.22)Bun (KitWorks Team Study 노별마루 발표 2024.4.22)
Bun (KitWorks Team Study 노별마루 발표 2024.4.22)Wonjun Hwang
 
Human Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR SystemsHuman Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR SystemsMark Billinghurst
 
Pigging Solutions in Pet Food Manufacturing
Pigging Solutions in Pet Food ManufacturingPigging Solutions in Pet Food Manufacturing
Pigging Solutions in Pet Food ManufacturingPigging Solutions
 
AI as an Interface for Commercial Buildings
AI as an Interface for Commercial BuildingsAI as an Interface for Commercial Buildings
AI as an Interface for Commercial BuildingsMemoori
 
SIP trunking in Janus @ Kamailio World 2024
SIP trunking in Janus @ Kamailio World 2024SIP trunking in Janus @ Kamailio World 2024
SIP trunking in Janus @ Kamailio World 2024Lorenzo Miniero
 
My Hashitalk Indonesia April 2024 Presentation
My Hashitalk Indonesia April 2024 PresentationMy Hashitalk Indonesia April 2024 Presentation
My Hashitalk Indonesia April 2024 PresentationRidwan Fadjar
 
Unraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdfUnraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdfAlex Barbosa Coqueiro
 
Powerpoint exploring the locations used in television show Time Clash
Powerpoint exploring the locations used in television show Time ClashPowerpoint exploring the locations used in television show Time Clash
Powerpoint exploring the locations used in television show Time Clashcharlottematthew16
 
Install Stable Diffusion in windows machine
Install Stable Diffusion in windows machineInstall Stable Diffusion in windows machine
Install Stable Diffusion in windows machinePadma Pradeep
 
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...Patryk Bandurski
 
Developer Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQLDeveloper Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQLScyllaDB
 
Scanning the Internet for External Cloud Exposures via SSL Certs
Scanning the Internet for External Cloud Exposures via SSL CertsScanning the Internet for External Cloud Exposures via SSL Certs
Scanning the Internet for External Cloud Exposures via SSL CertsRizwan Syed
 
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks..."LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...Fwdays
 
Connect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck PresentationConnect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck PresentationSlibray Presentation
 
Designing IA for AI - Information Architecture Conference 2024
Designing IA for AI - Information Architecture Conference 2024Designing IA for AI - Information Architecture Conference 2024
Designing IA for AI - Information Architecture Conference 2024Enterprise Knowledge
 
DevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platformsDevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platformsSergiu Bodiu
 

Recently uploaded (20)

"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack
"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack
"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack
 
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...
 
My INSURER PTE LTD - Insurtech Innovation Award 2024
My INSURER PTE LTD - Insurtech Innovation Award 2024My INSURER PTE LTD - Insurtech Innovation Award 2024
My INSURER PTE LTD - Insurtech Innovation Award 2024
 
Dev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio WebDev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio Web
 
Bun (KitWorks Team Study 노별마루 발표 2024.4.22)
Bun (KitWorks Team Study 노별마루 발표 2024.4.22)Bun (KitWorks Team Study 노별마루 발표 2024.4.22)
Bun (KitWorks Team Study 노별마루 발표 2024.4.22)
 
Human Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR SystemsHuman Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR Systems
 
Pigging Solutions in Pet Food Manufacturing
Pigging Solutions in Pet Food ManufacturingPigging Solutions in Pet Food Manufacturing
Pigging Solutions in Pet Food Manufacturing
 
AI as an Interface for Commercial Buildings
AI as an Interface for Commercial BuildingsAI as an Interface for Commercial Buildings
AI as an Interface for Commercial Buildings
 
SIP trunking in Janus @ Kamailio World 2024
SIP trunking in Janus @ Kamailio World 2024SIP trunking in Janus @ Kamailio World 2024
SIP trunking in Janus @ Kamailio World 2024
 
My Hashitalk Indonesia April 2024 Presentation
My Hashitalk Indonesia April 2024 PresentationMy Hashitalk Indonesia April 2024 Presentation
My Hashitalk Indonesia April 2024 Presentation
 
Unraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdfUnraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdf
 
Powerpoint exploring the locations used in television show Time Clash
Powerpoint exploring the locations used in television show Time ClashPowerpoint exploring the locations used in television show Time Clash
Powerpoint exploring the locations used in television show Time Clash
 
Install Stable Diffusion in windows machine
Install Stable Diffusion in windows machineInstall Stable Diffusion in windows machine
Install Stable Diffusion in windows machine
 
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
 
Developer Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQLDeveloper Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQL
 
Scanning the Internet for External Cloud Exposures via SSL Certs
Scanning the Internet for External Cloud Exposures via SSL CertsScanning the Internet for External Cloud Exposures via SSL Certs
Scanning the Internet for External Cloud Exposures via SSL Certs
 
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks..."LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
 
Connect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck PresentationConnect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck Presentation
 
Designing IA for AI - Information Architecture Conference 2024
Designing IA for AI - Information Architecture Conference 2024Designing IA for AI - Information Architecture Conference 2024
Designing IA for AI - Information Architecture Conference 2024
 
DevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platformsDevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platforms
 

Infinidat InfiniBox

  • 1. © 2020 Infinidat. All Rights Reserved. 1 ┃ SCALE TO WIN © 2020 Infinidat. All Rights Reserved. 1 ┃ SCALE TO WIN Rostislav Gemrot September 2021 Empower Data-Driven Competitive Advantage at Multi-Petabyte Scale
  • 2. © 2020 Infinidat. All Rights Reserved. 2 ┃ SCALE TO WIN © 2020 Infinidat. All Rights Reserved. 2 ┃ SCALE TO WIN HYPER STORAGE – NO COMPROMISE ! Unique/Patented Software Driven Architecture 100+ Patents COTS hardware Virtualized NL-SAS Backend Unique IO placement and protection
  • 3. © 2020 Infinidat. All Rights Reserved. 3 ┃ SCALE TO WIN © 2020 Infinidat. All Rights Reserved. 3 ┃ SCALE TO WIN INFINIDAT About us 7+ Exabytes Deployed Cloud Providers, Financial, Government, Academic, Healthcare, Media, Internet, Retail and more Global Presence USA, EMEA, Latin America, Asia, R&D in Israel and Massachusetts Innovation Spirit 180+ Patents: Data Protection, Performance, Scaling, Automation, Energy Savings and Ease of Use 3 Generations of Experience and Knowledge World-Class Resources and Unparalleled Pedigree Unparalleled Support Service 1st Class Support Responsiveness and Quality Moshe Yanai INFINIDAT Founder
  • 4. © 2020 Infinidat. All Rights Reserved. 4 ┃ SCALE TO WIN © 2020 Infinidat. All Rights Reserved. 4 ┃ SCALE TO WIN CUSTOMER AND ANALYST RECOGNITION Infinidat Dell EMC HPE NetApp IBM Hitachi Vantara Pure Storage Huawei Rating out of possible 5.0 4.9 4.5 4.6 4.7 4.5 4.7 4.8 4.8 Number of Reviews 369 381 445 603 96 107 475 142 Willingness to Recommend 97% 81% 89% 92% 85% 90% 98% 94%
  • 5. © 2020 Infinidat. All Rights Reserved. 5 ┃ SCALE TO WIN © 2020 Infinidat. All Rights Reserved. 5 ┃ SCALE TO WIN INFINIBOX™ Performance Edge Multi Petabyte Scale 115TB to 4.2PB net capacity in a single 42U rack Solutions Rich integrations with leading business platforms and applications Green Storage Superior power efficiency 3kWh - 9kWh Max Unmatched Reliability Unique architecture enables rock-solid uptime Unified Storage Truly unified storage built from ground-up for multi protocols Easy Simple and powerful management interfaces – WebUI, RESTful API, cross platform CLI Disruptive pricing By design Order of magnitude more usable capacity per dollar
  • 6. © 2020 Infinidat Proprietary and Confidential 6 ┃ SCALE TO WIN Infinidat Design Principles Faster Latency 130 µSec 1mSec 900µSec 800µSec 700µSec 600µSec 500µSec 400µSec 300µSec 200µSec 100µSec 0 150- 400 µSec Infinidat Typical All-Flash Array More Reliable 100% data availability guaranteed 100% 6-9s? 5-9s? 4-9s? Infinidat Typical All-Flash Array Less Expensive $ $5000 $4500 $4000 $3500 $3000 $2500 $2000 $1500 $1000 $500 0 $3-5K per Usable TB $/Usable TB Infinidat Typical All-Flash Array Up to 4PB Effective Up to 10 PB Effective lowest cost storage for E2EE! 4.1PB Usable 10PB 9PB 8PB 7PB 6PB 5PB 4PB 3PB 2PB 1PB 0 Infinidat Typical All-Flash Array More Capacity Up to 4PB Effective
  • 7. © 2020 Infinidat Proprietary and Confidential 7 ┃ SCALE TO WIN 1U 3x ATS: Triple Redundant Power Management 3U 3x BBU: Triple Redundant Battery Backup 6U 3x Server Nodes: Active/Active/Active • Up to 3TB DRAM • Up to 368TB SSD 32U Up to 8x High Capacity Drive Enclosures: • 60 Drives per Enclosure • 2, 4, or 8 Enclosures per System • 120, 240, or 480 Drives 42U InfiniBox Fx3xx/Fx2xx Hardware Configuration
  • 8. © 2020 Infinidat Proprietary and Confidential 8 ┃ SCALE TO WIN Flexible Business Models * Not available in all regions. All business models are subject to commercial terms and conditions. Up-front Purchase • All-inclusive software licensing • Technical Advisor NEW: Elastic Pricing • Partial capacity Day 1 • Grow base over time • Burst up/down above base with opex payments Initial Base Capacity FLX (Utility) • Partial capacity Day 1. “Rent” additional capacity through ongoing payments as needed Opex Capacity Minimal Capacity
  • 9. © 2020 Infinidat Proprietary and Confidential 9 ┃ SCALE TO WIN FC Hosts InfiniBox Topology Ethernet Hosts Cache Layer Up to 3TB DRAM Up to 368TB SSD used for non-persistent data (with no overhead) 95% + Read from cache Host Connectivity FC, iSCSI, NFS, SMB, NVMe/TCP (12) 10/25GbE ports ( 6 ) 10GbE only ports (24) FC ports 16Gb/32Gb Block and File simultaneously all commodity hardware Persistent Layer Server to Disk = SAS (all nodes access all drives = massive parallelism) All physical HDD’s are virtualized. Data is protected with InfiniRAID (not hardware RAID) Up to 8 HDD Enclosures (up to 480 NL-SAS HDD) Processing Layer 3 nodes Active Active Active InfiniBand mesh (no IB switch) Active Active Active Drive Shelves BBU’s ATS InfiniBox
  • 10. © 2020 Infinidat Proprietary and Confidential 10 ┃ SCALE TO WIN Intelligent IO Flow Write Cache Attributes • 100% writes to DRAM • Dual Protected Across Nodes • De-staging every 5 Min or less Read Cache Attributes • Aggressive read-ahead • Primary & Secondary Layers • Uncompressed for superior latency Data Persistence Layer Attributes • Intelligent data placement • Always sequential access • High performance dual parity data protection method Random Reads Host(s) All Writes DRAM SSD HDD Sequential Reads Sequential Writes 85-90% ns 10-20% μs 1-5% ms Not compressed Not compressed Compressed Extended Read Cache Sequential Reads 3 Nodes of Cache DRAM + SSD HOT COLD
  • 11. © 2020 Infinidat Proprietary and Confidential 11 ┃ SCALE TO WIN Data Distribution iSCSI Host Nodes Drive Enclosures InfiniBox NFS Host FC Host InfiniRaid Data is stored on persistent media in 64k + 4k meta data sections Data is destaged using 14 data sections and 2 parity sections: 68k x 16 = 1088kb Data is always destaged sequentially Each destage is a virtual InfiniRaid stripe to 16 independent NL-SAS drives spread equally across the enclosures ✓ No hardware RAID or disk groupings ✓ No Hot-Spots ✓ No Tuning ✓ No Tiering ✓ Always Balanced ACK FC Host
  • 12. © 2020 Infinidat Proprietary and Confidential 12 ┃ SCALE TO WIN MEDIA PRICE TREND Source: Western Digital
  • 13. © 2020 Infinidat Proprietary and Confidential 13 ┃ SCALE TO WIN Black Friday - Cyber Monday Average DRAM Hit Ratio 84% Average SSD Hit Ratio 10% Average Cache Hit Ratio 94% Unmatched Performance
  • 14. © 2020 Infinidat Proprietary and Confidential 15 ┃ SCALE TO WIN InfiniBox Quality Of Service Smart workload management aligned with cloud computing models ▪ Optimized for both service providers and IT workshops ▪ Enables SLO maintenance ▪ Enables Service level differentiations ▪ Eliminates Noisy neighbors ▪ Cloud optimized design ▪ Burst management allows for optimal resource utilization ▪ Hard and soft limits ▪ Graceful enforcement ▪ “artificial latency” added to slow exceeding entities ▪ Flexible and scalable ▪ Policy based management ▪ Up to 5000 policies ▪ Policy can span 500 entities 15
  • 15. © 2020 Infinidat Proprietary and Confidential 16 ┃ SCALE TO WIN InfiniBox Snapshots Architecture Zero Penalty, optimal cost and maximum scale • Zero Overhead • Instantaneous creation based on timestamp (no Metadata overhead). • Redirect-on-write backend IO • No capacity overhead (64KB delta block) • Cache fast override minimizes disk IO • TRIE version management negates snapshot metadata • Enterprise ready • 100,000+ entities per system • 16 cascade generations per volume • Any generation can be read enabled • Rollback from any generation to any generation • Can be time locked (Immutable snapshots) • Block and File supported 16
  • 16. © 2020 Infinidat Proprietary and Confidential 17 ┃ SCALE TO WIN Array Based Replication • Leverages InfiniSnap Technology • IP Based Replication • Replicates Volumes, Filesystems & Consistency Groups • Asynchronous (4-second Interval) • Synchronous • Active/Active (Synchronous) • Bi-Directional – Different Volumes • VMware SRM Integration
  • 17. © 2020 Infinidat Proprietary and Confidential 18 ┃ SCALE TO WIN InfiniBox Replication Solutions All InfiniBox replication solutions: • Based on InfiniSnap • Leverage TCP/IP for lower infrastructure costs • Do not require any additional hardware or software licenses Active-Active Replication • Based on Sync Replication • Zero RPO at Zero RTO Multi-site Replication • 3-site (or more) integrating Active-Active and Asynch Replication • Industry-leading lowest RPO Infinidat Solutions RPO RTO Asynchronous Replication Standard replication at any distance As low as 4 seconds Non-zero Usually within 2 minutes to break relationships and make volumes accessible on target Synchronous Replication Zero data loss replication for metro distances Zero Non-zero Usually within 2 minutes to break relationships and make volumes accessible on target Active-Active Replication Nonstop operation at metro distances Zero Zero
  • 18. © 2020 Infinidat Proprietary and Confidential 19 ┃ SCALE TO WIN Host A Volume Volume Host B IP • Both volumes are presented as same LUN (same serial number) to all hosts • Both volumes can serve IOs • Witness is a lightweight, stateless, 3rd-site VM • Solution is based on ALUA (asymmetric LUN access) across systems • Standard and included! Witness Copy serial number InfiniBox Active-Active Replication
  • 19. © 2020 Infinidat Proprietary and Confidential 20 ┃ SCALE TO WIN Infinidat Concurrent 3-Site Replication Data Acknowledge Maintain IO ordering and Acknowledge Data Site B Site A Site C Application Active-Active Synchronous Replication Typical <5ms Latency Asynchronous Replication No Distance or Latency Requirements
  • 20. © 2020 Infinidat Proprietary and Confidential 21 ┃ SCALE TO WIN Infinidat Concurrent 3-Site Replication Configuration Options Site D Site A Site B Data Data Active-Active Replication Site C Asynchronous Replication Asynchronous Replication
  • 21. © 2020 Infinidat Proprietary and Confidential 23 ┃ SCALE TO WIN • InfiniVerse • InfiniMetrics • RESTful API / Python SDK • Host PowerTools / VMware plug-ins • HTML5 User Interface Easy to Manage Easy to Integrate Code.Infinidat.com
  • 22. © 2020 Infinidat Proprietary and Confidential 24 ┃ SCALE TO WIN INFINIDAT –VMware Certified Integration Site A Site B INFINIDAT VMware Plug-Ins Site Recovery Manager (Replication) VASA & VAAI (Management & Control) INFINIDAT HostPower Tools (Configuration Assurance & Provisioning) Third Party Integration and Customization InfiniMetrics Manage from Server to Storage Across and entire Enterprise Single VM Restore Single VM Restore
  • 23. © 2020 Infinidat Proprietary and Confidential 25 ┃ SCALE TO WIN EASY TO MANAGE –INFINIDAT InfiniBox User Interface –One Click Away!
  • 24. © 2020 Infinidat Proprietary and Confidential 27 ┃ SCALE TO WIN Reference architecture & usage • InfiniBox v provozu cca 1 rok • Všechny typy zátěže vyjma Oracle DB • Celkově jsou velmi spokojeni • Výkon • Jednoduchost správy • Spolehlivost
  • 25. © 2020 Infinidat Proprietary and Confidential 28 ┃ SCALE TO WIN
  • 26. © 2020 Infinidat Proprietary and Confidential 29 ┃ SCALE TO WIN
  • 27. © 2020 Infinidat Proprietary and Confidential 30 ┃ SCALE TO WIN
  • 28. © 2020 Infinidat Proprietary and Confidential 31 ┃ SCALE TO WIN
  • 29. © 2020 Infinidat Proprietary and Confidential 32 ┃ SCALE TO WIN THANK YOU! SCALE TO WIN