SlideShare a Scribd company logo
Soumettre la recherche
Mettre en ligne
S’identifier
S’inscrire
Qwilt transparent caching-6keyfactors
Signaler
bui thequan
Suivre
Head of Technical Department, Transmission Centre at Hanoi Telecom Corporation à Hanoi Telecom Corporation
6 Jan 2016
•
0 j'aime
•
331 vues
Qwilt transparent caching-6keyfactors
6 Jan 2016
•
0 j'aime
•
331 vues
bui thequan
Suivre
Head of Technical Department, Transmission Centre at Hanoi Telecom Corporation à Hanoi Telecom Corporation
Signaler
Technologie
Qwilt transparent caching-6keyfactors detail
Qwilt transparent caching-6keyfactors
1 sur 9
Télécharger maintenant
1
sur
9
Recommandé
[Tel aviv merge world tour] Qwilt P4 Conference
Perforce
569 vues
•
16 diapositives
VMworld 2013: Failsafe at PCIe Level: Enabling PCIe Hot Swap
VMworld
875 vues
•
30 diapositives
Gearing up resiliency for your critical systems, Anand Bindumadhavan, SWIFT
SWIFT
680 vues
•
17 diapositives
VMworld Europe 2014: Ask the Experts - Design Advice for Small and Midsize Bu...
VMworld
420 vues
•
22 diapositives
VMworld Europe 2014: Insider Threat and the Cloud (Security)
VMworld
2.3K vues
•
12 diapositives
Plastic SCM: Entreprise Version Control Platform for Modern Applications and ...
Kiko Monteverde
2.3K vues
•
25 diapositives
Contenu connexe
Tendances
eFolder Expert Series Webinar — How to Back Up and Replicate Off-Site Using e...
eFolder
449 vues
•
24 diapositives
ClearCase Escape Plan
Perforce
1.5K vues
•
29 diapositives
VMworld 2014: What's New in vSphere
VMworld
383 vues
•
41 diapositives
Perforce on Tour 2015 Component Based Development
Perforce
682 vues
•
19 diapositives
Learning from the Early Adopters of DevOps: A Guidebook to Success featuring ...
Perforce
578 vues
•
35 diapositives
eFolder Webinar — Features and Facts: Replibit vs. Acronis vs. ShadowProtect
eFolder
633 vues
•
17 diapositives
Tendances
(20)
eFolder Expert Series Webinar — How to Back Up and Replicate Off-Site Using e...
eFolder
•
449 vues
ClearCase Escape Plan
Perforce
•
1.5K vues
VMworld 2014: What's New in vSphere
VMworld
•
383 vues
Perforce on Tour 2015 Component Based Development
Perforce
•
682 vues
Learning from the Early Adopters of DevOps: A Guidebook to Success featuring ...
Perforce
•
578 vues
eFolder Webinar — Features and Facts: Replibit vs. Acronis vs. ShadowProtect
eFolder
•
633 vues
Year in Review: Perforce 2014 Product Updates
Perforce
•
818 vues
FreeSWITCH Modules for Asterisk Developers
Moises Silva
•
3.9K vues
Delivering Performant, Reliable, and Scalable Apps with Anypoint Platform
MuleSoft
•
1.3K vues
FreeSWITCH as a Kickass SBC
Moises Silva
•
12.8K vues
VMworld 2013: Building a Validation Factory for VMware Partners
VMworld
•
621 vues
Command central 9.6 - Features Overview
Software AG
•
3.4K vues
Time to build and test results 3x faster - how we did it
Aurélien Pupier
•
1K vues
CDP.pl - tech case study by Divante
Divante
•
2.4K vues
eFolder Expert Series Webinar - BDR Do's and Dont's: Featuring Andrew Bensing...
eFolder
•
455 vues
MuleSoft Online Meetup - MuleSoft integration with snowflake and kafka
Royston Lobo
•
895 vues
How Software-Defined Data Center Technology Is Changing Cloud Computing
NIMBOXX
•
1.1K vues
MuleSoft Manchester Meetup #4 slides 11th February 2021
Ieva Navickaite
•
464 vues
Introducing Serena Dimensions CM 14, Discussion and product demonstration (We...
Serena Software
•
1.6K vues
Scaling FreeSWITCH Performance
Moises Silva
•
14.5K vues
Similaire à Qwilt transparent caching-6keyfactors
An SDN Based Approach To Measuring And Optimizing ABR Video Quality Of Experi...
Cisco Service Provider
2K vues
•
10 diapositives
LwTE: Light-weight Transcoding at the Edge
Alpen-Adria-Universität
565 vues
•
54 diapositives
MMSys'21 - Multi-access edge computing for adaptive bitrate video streaming
Jesus Aguilar
53 vues
•
13 diapositives
Mobile-Based Video Caching Architecture Based on Billboard Manager
csandit
329 vues
•
8 diapositives
ARA JAGUAR-5000 Product Brief
Chul-Woong Yang
26 vues
•
19 diapositives
ARA JAGUAR-7000 Product Brief
Chul-Woong Yang
26 vues
•
17 diapositives
Similaire à Qwilt transparent caching-6keyfactors
(20)
An SDN Based Approach To Measuring And Optimizing ABR Video Quality Of Experi...
Cisco Service Provider
•
2K vues
LwTE: Light-weight Transcoding at the Edge
Alpen-Adria-Universität
•
565 vues
MMSys'21 - Multi-access edge computing for adaptive bitrate video streaming
Jesus Aguilar
•
53 vues
Mobile-Based Video Caching Architecture Based on Billboard Manager
csandit
•
329 vues
ARA JAGUAR-5000 Product Brief
Chul-Woong Yang
•
26 vues
ARA JAGUAR-7000 Product Brief
Chul-Woong Yang
•
26 vues
Yongsan presentation 3
GovCloud Network
•
534 vues
Caching necessity and benifits for mobile Operator
Md. Abdul Hadi Dipu
•
611 vues
Монетизация сетевой инфраструктуры
BAKOTECH
•
704 vues
Smallworld_Network_Inventory_Brochure_-_print-HR_with_bleed_for_printers_0
Mitchell Menezes
•
163 vues
Monitoring whole mpeg transport stream
Volicon
•
692 vues
IBM VideoCharger and Digital Library MediaBase.doc
Videoguy
•
591 vues
IEEE ICC'22_ LEADER_ A Collaborative Edge- and SDN-Assisted Framework for HTT...
Reza Farahani
•
469 vues
Decision Making Analysis of Video Streaming Algorithm for Private Cloud Compu...
IJECEIAES
•
27 vues
[Streamroot] Whitepaper peer assisted adaptive streaming
Vu Nguyen
•
464 vues
Server-based and Network-assisted Solutions for Adaptive Video Streaming
Eswar Publications
•
284 vues
Cloud based OTT Video Services : a business case analysis
Ericsson France
•
2.3K vues
Paper id 2120148
IJRAT
•
285 vues
Proxy Cache Management for Fine-Grained Scalable Video Streaming
Videoguy
•
3.3K vues
The End of Appliances
Mike Alvarado
•
115 vues
Plus de bui thequan
dclc-r134a-968 detail.pdf
bui thequan
29 vues
•
32 diapositives
ajeep_04a_energy_eficient_chiller - Mitsu.pdf
bui thequan
15 vues
•
18 diapositives
Performance Gain for Multiple Stage Centrifugal Compressor by usi.pdf
bui thequan
12 vues
•
11 diapositives
Trane design chiller.pdf
bui thequan
374 vues
•
113 diapositives
chilled-water-system-presentation.pdf
bui thequan
36 vues
•
119 diapositives
multiple-chiller-system-design-and-control-trane-applications-engineering-man...
bui thequan
24 vues
•
100 diapositives
Plus de bui thequan
(13)
dclc-r134a-968 detail.pdf
bui thequan
•
29 vues
ajeep_04a_energy_eficient_chiller - Mitsu.pdf
bui thequan
•
15 vues
Performance Gain for Multiple Stage Centrifugal Compressor by usi.pdf
bui thequan
•
12 vues
Trane design chiller.pdf
bui thequan
•
374 vues
chilled-water-system-presentation.pdf
bui thequan
•
36 vues
multiple-chiller-system-design-and-control-trane-applications-engineering-man...
bui thequan
•
24 vues
399TGp_medical_light_ani.potx
bui thequan
•
4 vues
29422920 overview-of-ng-sdh
bui thequan
•
87 vues
20407473 ospf
bui thequan
•
274 vues
194 adss cable-installationguide
bui thequan
•
665 vues
Cisco me4600 ont_rgw_user_manual_v3_2-4
bui thequan
•
357 vues
Wccp introduction final2
bui thequan
•
1.5K vues
Guide otn ang
bui thequan
•
1.9K vues
Dernier
Exploration cyclefinding a better dining experience:a framework of meal-pl...
Matsushita Laboratory
39 vues
•
24 diapositives
Webinar: Discover the Power of SpiraTeam - A Jira Alternative To Revolutioniz...
Inflectra
26 vues
•
35 diapositives
The Rise of the Machines: How AI will shape our lives in 2024
Iain Martin
39 vues
•
49 diapositives
MapInfo Pro v2023: The Next Dimension in Spatial Analytics
Precisely
33 vues
•
25 diapositives
Swiss Re Reinsurance Solutions - Automated Claims Experience – Insurer Innova...
The Digital Insurer
22 vues
•
13 diapositives
Demystifying ML/AI
Matthew Reynolds
22 vues
•
30 diapositives
Dernier
(20)
Exploration cyclefinding a better dining experience:a framework of meal-pl...
Matsushita Laboratory
•
39 vues
Webinar: Discover the Power of SpiraTeam - A Jira Alternative To Revolutioniz...
Inflectra
•
26 vues
The Rise of the Machines: How AI will shape our lives in 2024
Iain Martin
•
39 vues
MapInfo Pro v2023: The Next Dimension in Spatial Analytics
Precisely
•
33 vues
Swiss Re Reinsurance Solutions - Automated Claims Experience – Insurer Innova...
The Digital Insurer
•
22 vues
Demystifying ML/AI
Matthew Reynolds
•
22 vues
The Ultimate Administrator’s Guide to HCL Nomad Web
panagenda
•
39 vues
Improve Employee Experiences on Cisco RoomOS Devices, Webex, and Microsoft Te...
ThousandEyes
•
78 vues
UiPath Tips and Techniques for Error Handling - Session 2
DianaGray10
•
17 vues
Data Formats: Reading and writing JSON – XML - YAML
CSUC - Consorci de Serveis Universitaris de Catalunya
•
22 vues
TEKART CON 2023
AdedoyinSamuel1
•
17 vues
BuilderAI Proposal_Malesniak
Michael Lesniak
•
81 vues
Elevate Your Enterprise with FME 23.1
Safe Software
•
110 vues
CoinEZ_whitepaper.pdf
KentaAratani
•
19 vues
Property Graphs in APEX.pptx
ssuser923120
•
172 vues
Keynote: Two years at the British Library... and counting / Alan Danskin (Bri...
CILIP MDG
•
17 vues
Industry 4.0.pdf
Tery Lockitski
•
30 vues
Microsoft Azure New - Sep 2023
Daniel Toomey
•
28 vues
Metadata & Discovery Group Conference 2023 - Day 1 Programme
CILIP MDG
•
20 vues
Nymity Framework: Privacy & Data Protection Update in 7 States
TrustArc
•
99 vues
Qwilt transparent caching-6keyfactors
1.
© 2013 Qwilt
1 6 Key Factors to Consider When Choosing a Transparent Caching Solution
2.
© 2013 Qwilt
2 OVERVIEW Transparent caching solutions help carriers reduce the impact of over-the-top (OTT) video traffic on their networks, improve quality of service for their end users, and prepare their networks for the future of online video. Selecting the right solution can be an overwhelming task - not all solutions are created equal, and there is a wide range of products on the market. The optimal solution must meet operators’ operational and strategic goals, and conform to specific network infrastructure layout requirements. NOT YOUR FATHER’S CACHE Network architectures and traffic management needs have changed drastically over the past several years, and caching technology has evolved to meet those new, more demanding requirements. The traditional cache was a fairly simple construct: it sat in the doorway of the ISP network and acted as a proxy to the Internet, caching content based on information in the Layer 3 and 4 headers (IP, TCP, UDP). As the web changed and most of the content migrated to HTTP, simply relying on Layer 3 parameters became an ineffective and inaccurate approach. The rapid growth of online video content consumption introduced another layer of complexity with varying file sizes and bit rates, media types, streaming protocols, and the mission-critical requirement of reliable and immersive subscriber experience. Legacy caching solutions repurposed to deliver video are bulky, archaic systems that combine several generic point products. The “bolted-together” approach creates a number of insertion, maintenance, performance, and availability-related issues for carriers. With the dramatic and constant increase of video traffic in carrier networks, operators need a compact, integrated, carrier-grade platform to effectively cache and deliver video at the network edge in close proximity to the subscriber. Operators must thoroughly consider the following factors to determine the best transparent caching solution for their unique needs in order to achieve a successful carrier-grade deployment: Total Cost of Ownership (TCO) Cache Efficiency and ABR Performance Video Network Intelligence Network Insertion Configuration Pre-requisites
3.
© 2013 Qwilt
3 TOTAL COST OF OWNERSHIP (TCO) As with any large scale network solution, cost is always one of the fundamental criteria. When comparing the costs of different caching solutions, network operators need to take into account all of the extra cost features needed to effectively cache and deliver a high volume of video content in their unique network environments. Caching products that may look like the most cost-effective solutions based on list price for the software or appliance package will likely end up costing much more when all of the required components, necessary licenses, and add- on modules or services are acquired. Carriers should carefully identify and quantify any hidden deployment and network reconfiguration costs and possible upgrade requirements to existing infrastructure. Operators need to look at the total cost to classify and deliver the required amount of video traffic. For example, while some of the required components do not directly connect to the network infrastructure, they ultimately add unforeseen equipment acquisition and deployment costs to the implementation. It is imperative to aggregate the costs of such components in order to accurately determine the overall cost per video delivery throughput. Unlike other solutions comprised of multiple generic point products, Qwilt’s unified, integrated platform approach makes the deployment and management simple and efficient, lowering the total cost of ownership (TCO) by reducing the maintenance burden on network administration teams. Rather than making configuration changes across multiple disparate point products as required by legacy caching systems, network operations staff has a single unified system to administer video delivery in their networks through an intuitive, easy to use web-based interface. In addition, the autonomous and small form factor nature of the solution allows operators to deploy the video delivery functionality at close proximity to the subscribers achieving maximum infrastructure cost savings while delivering unparalleled QoE to the end user. Qwilt’s QB-Series eliminates the need for 3rd party video content provider caches, and the associated deployment, management, maintenance, and recurring equipment leasing costs. Qwilt’s Universal Video Delivery features the fastest time-to-value in the industry, delivering savings immediately after being deployed into the network. Qwilt’s flexible “pay as you grow” pricing model, optimal subscriber edge deployment approach, and the most comprehensive media and content provider support in the industry deliver ROI to service providers faster than any competitive solution on the market.
4.
© 2013 Qwilt
4 CACHE EFFICIENCY AND ABR As high quality streaming video continues to make its way into our living rooms and mobile devices, online video is moving away from the old days of single video clip format - known as progressive download. Although progressive download is still used for smaller, shorter video titles like some of those posted on YouTube, Adaptive Bit Rate (ABR) format is universally agreed to be the future of streaming video in fixed and mobile networks, and already represents over 80% of video traffic in many regions. The idea behind ABR is essentially breaking video files into smaller sequential chunks in varying bit rates, lengths, and file sizes. This allows content providers to optimize download times, minimize delays and interruptions, and deliver video to their consumers in the best possible quality as allowed by network conditions or end user clients. A cache is only as good as the amount of duplicate traffic it is able to offload. When considering caching efficiency, the ability to properly identify progressive download is still important, but making sure that the caching solution you are considering is able to properly classify, cache, and deliver video in ABR formats is perhaps the most critical aspect of your transparent caching solution evaluation and decision. While many vendors claim to handle ABR traffic, not all are able to do it at an acceptable level - for example, legacy caching solutions are only able to successfully cache a mere 15% of ABR traffic. In contrast, Qwilt’s next generation caching solutions with Deep Video Classification capabilities is able to cache more than 50% of ABR traffic - now that is caching efficiency. PERFORMANCE One of the key considerations for any network equipment is performance, which is typically measured by throughput (amount of data transferred per second). A complete transparent caching solution must perform the following four key functions: Classification, Monitoring, Storage, and Video Delivery, without compromising or degrading network performance for video delivery or any other essential services In order to ascertain the performance of a complete solution, network operators need to account for the performance of all four functions working in parallel, factoring in all required network elements. In many legacy solutions this means accounting not only for the cache engines, but also for the required external storage enclosures, switches, DPI, and management appliances. As the industry moves towards greener data centers and energy efficient networks, power consumption is becoming a major consideration since typically more devices mean higher power usage and greater carbon footprint. Accurate performance measurement can be achieved by summing up all required elements and assessing the concurrent performance of the entire solution – instead of simply measuring cache-out figures which can be deceiving and inaccurate when presented out of context.
5.
© 2013 Qwilt
5 Operators also need to measure the actual number of devices needed for processing of the traffic that will eventually lead to cache out. The simplest way to perform an objective measurement is by normalizing performance with the amount of rack-space or rack units (RU). Rack-space accurately reflects the size, costs and power consumption of the solution. There are two key metrics to look for in a solution: Classification and Analysis Throughput per RU ATpU = ∑ {Analysis throughput of solution} / ∑ {storage rack units + networking rack units + caches rack units} Video Delivery Throughput per RU VTpU = ∑ {Video delivery throughput of solution} / ∑ {storage rack units + networking rack units + caches rack units} Example: A network insertion location requiring 20 Gbps classification and analysis and 5 Gbps of video delivery throughput. The tested solution requires several cache engines, storage devices, switches and management servers, totaling 20 RU to achieve these requirements. This means that the performance figures for that solution are: ATpU = 20 Gbps / 20 RU = 1 Gbps/RU VTpU = 5 Gbps / 20 RU = 0.25 Gbps/RU Unlike legacy solutions, Qwilt’s QB-Series does more with less by combining all required functionality into a single, integrated platform that requires a fraction of rack space and power consumption of competing products. Qwilt’s QB-Series all-in-one software approach delivers at least 5x the performance per rack unit of any other transparent video caching vendor, resulting in a smaller footprint, higher scalability and reliability, and lower total cost of ownership (TCO) than any alternative solution.
6.
© 2013 Qwilt
6 VIDEO NETWORK INTELLIGENCE Video network intelligence - the ability to identify, classify and monitor video traffic in the network – is among the most important feature of a comprehensive video delivery solution. Online video has changed dramatically over the years, with more people viewing larger amounts of online video content from a wide range of locations and devices. The underlying architecture has changed considerably as well, with new technologies such as adaptive streaming (ABR) rapidly becoming the industry standard used by many content providers. As a result, caching solutions have to adapt to meet the increasingly heavy demands in terms of complexity as well as performance, in order to achieve precise real time classification and analysis. First generation caching systems typically had to rely on external third party solutions for traffic classification and steering, which dramatically increased the complexity and footprint of the solution. At the same time, these solutions used basic non-granular file comparison techniques which have become inadequate and in some cases entirely obsolete in today’s advanced online video landscape. Qwilt’s QB-Series is the only video delivery solution with on-board network video traffic classification capabilities. Qwilt’s Online Video Classification Engine is a core component of its unified Universal Video Delivery platform, eliminating the need for costly and complex third party integrations and ensuring that classification and delivery are performed seamlessly, without impacting the network or disrupting content provider business logic - all while delivering the highest possible quality of service to the subscriber. The QB-Series Video Analytics application leverages the classification data to provide operators with real time and historic video consumption and trending reports. Video Analytics is deployed in a non-intrusive manner, providing out-of-the-box caching simulation results before the system delivers video traffic. Qwilt’s Online Video Classification Engine utilizes a wide array of advanced content analysis techniques for accurate video origin and format detection, and optimized network performance. Qwilt’s dedicated Video Signature Research team ensures that the Online Video Classification Engine solution proactively identifies and adapts to the rapidly changing media sources and formats, enabling carriers to maintain a robust network while delivering a high quality, immersive online video experience to their subscribers every time.
7.
© 2013 Qwilt
7 NETWORK INSERTION: INLINE VS. OUT-OF-BAND ARCHITECTURES One of the key factors in evaluating transparent caching solutions is the insertion method into the network infrastructure. Inline appliances must sit in the flow of live network traffic, while out-of-band appliances, as their name suggests, reside outside of the network traffic path. While some vendors describe their products as out-of-band, some elements of their solution reside directly on the data path, typically used as redirection. Such solutions should be considered as inline solutions as well in this comparison. Key factors that have limited the proliferation of inline deployments in major operator networks to date should be considered when evaluating inline solutions: Inline solutions present another physical or routed hop, which inherently adds latency to the existing network and could potentially degrade performance. Overloaded/underperforming inline solutions invariably become congestion points, introducing a point of failure into the network segments. Inline solutions are difficult to scale because of the amount of reconfiguration of the network topology that is required to deploy them and to maintain them as networks grow and change, especially in large deployments. Inline solution architecture, which typically hides the device’s identity, can interfere with normal network operations such as troubleshooting and debugging. Performance limitations increase overall inline solution costs in terms of footprint and per-unit delivery capabilities. In addition, since the networks need to be reconfigured to deploy inline solutions, administrative and management overhead increase the costs even further When compared with same criteria, out-of-band solutions feature several key strategic and operational advantages: Out-of-band solutions are easier to deploy within an existing infrastructure, are less invasive, and do not interfere with network operation - even if an appliance fails, it does not result in network downtime. Out-of-band solutions do not present another physical or routed hop in the network, maintaining agile and robust network performance. Out-of-band solutions scale readily and cost-effectively with zero adverse impact to the network. Out-of-band solutions can be transparently inserted via optical splitters or span/mirror ports. No other infrastructure components need to be reconfigured and no additional topology changes are required, which also makes it easier to remove, replace, or upgrade an existing out-of-band device.
8.
© 2013 Qwilt
8 CONFIGURATION PREREQUISITES System architecture is another key factor to consider when evaluating transparent caching solutions. Network operators must be aware of all solution components required for a successful implementation before the solution can deliver actual bandwidth saving results. Specifically, carriers must consider whether they can achieve desired results with a solution that relies on multiple external network systems in order to be fully operational. First generation caching solutions typically leveraged repurposed P2P caching architecture to deliver video. The result was bulky, overly complex systems comprised of multiple generic point products that required extensive network reconfigurations in order to be implemented. First generation inline caching approaches relied on DPI, PBR or WCCP traffic steering. In any one of the cases, network topology will have to be reconfigured to varying degrees - if not physically, then certainly logically. This often requires a significant effort in network redesign and planning, and invariably involves more effort than a unified, self- contained deployment. Not all infrastructure routers can be configured for traffic steering schemes (for instance, WCCP is only supported by certain Cisco routers) and non-conforming devices would need to be upgraded or replaced, adding further cost and complexity to an already costly and complex solution. So-called “out-of-band” legacy solutions that rely on BGP configurations through BGP table manipulations in the network routers face inevitable network disruptions and require access to core network control resources. Each time a new video server is introduced by any content provider site - a fairly common occurrence - its IP address needs to be manually added to all network BGP tables, requiring additional configuration demands on the network operational teams and adding further instability and outage risk to the network. Once deployed, legacy systems introduce numerous points of failure into the infrastructure due to the sheer number of devices dispersed throughout the network. Management of disparate components requires additional time and resources from the network operations staff. Multiple, independent, syntactically and semantically differentiated vendor-specific management consoles result in more configuration steps, e.g., black lists and white lists have to be manually synchronized across different platforms, adding yet another layer of administrative burden. Unlike other solutions comprised of multiple generic point products, Qwilt’s unified, integrated platform approach makes the deployment and management simple and efficient, lowering the total cost of ownership (TCO) further by reducing the maintenance burden on network administration teams. Rather than making configuration changes across multiple disparate point products, network operations staff has a single unified system to manage video delivery in their networks through an intuitive, easy to use web-based and CLI interface. Qwilt’s QB- Series ships ready to use directly out-of-the-box, requiring minimal effort and configuration to deploy.
9.
© 2013 Qwilt
9 SUMMARY Selecting a transparent caching solution for carrier networks can be a daunting task, but proper planning and preparation will ensure a successful implementation and deployment. Identifying and determining critical factors such as the number of subscribers and aggregate amount of video bandwidth it needs to support not only in near term but also accounting for future growth, network infrastructure integration strategy, anticipated and required performance levels, as well as total cost of ownership per video delivery unit will ensure an effective and successful transparent caching and video delivery deployment in carrier networks.