high_scalability high_scalability-2011 high_scalability-2011-1016 knowledge-graph by maker-knowledge-mining
Source: html
Introduction: A recent study showed that over 92 percent of executives from leading retailers are focusing their marketing efforts on Facebook and subsequent applications. Furthermore, over 71 percent of users have confirmed they are more likely to make a purchase after “liking” a brand they find online. ( source ) Sears Architect Tomer Gabel provides an insightful overview on how they built a Social Ecommerce solution for Sears.com that can handle complex relationship quires in real time. Tomer goes through: the architectural considerations behind their solution why they chose memory over disk how they partitioned the data to gain scalability why they chose to execute code with the data using GigaSpaces Map/Reduce execution framework how they integrated with Facebook why they chose GigaSpaces over Coherence and Terracotta for in-memory caching and scale In this post I tried to summarize the main takeaway from the interview. You can also watch the full interview (highly reco
sentIndex sentText sentNum sentScore
1 A recent study showed that over 92 percent of executives from leading retailers are focusing their marketing efforts on Facebook and subsequent applications. [sent-1, score-1.366]
2 Furthermore, over 71 percent of users have confirmed they are more likely to make a purchase after “liking” a brand they find online. [sent-2, score-0.633]
3 ( source ) Sears Architect Tomer Gabel provides an insightful overview on how they built a Social Ecommerce solution for Sears. [sent-3, score-0.254]
4 com that can handle complex relationship quires in real time. [sent-4, score-0.098]
5 You can also watch the full interview (highly recomended). [sent-6, score-0.273]
wordName wordTfidf (topN-words)
[('tomer', 0.438), ('chose', 0.315), ('gigaspaces', 0.204), ('percent', 0.202), ('facebookwhy', 0.198), ('sears', 0.198), ('retailers', 0.178), ('liking', 0.171), ('executives', 0.166), ('confirmed', 0.166), ('storyhere', 0.161), ('considerations', 0.151), ('takeaway', 0.151), ('terracotta', 0.143), ('furthermore', 0.141), ('subsequent', 0.135), ('insightful', 0.125), ('focusing', 0.123), ('brand', 0.122), ('summarize', 0.118), ('ecommerce', 0.117), ('coherence', 0.117), ('showed', 0.111), ('efforts', 0.106), ('relationship', 0.098), ('watch', 0.096), ('study', 0.094), ('execute', 0.092), ('full', 0.092), ('partitioned', 0.092), ('tried', 0.091), ('marketing', 0.091), ('gain', 0.091), ('architectural', 0.088), ('interview', 0.085), ('leading', 0.083), ('execution', 0.082), ('overview', 0.08), ('architect', 0.08), ('integrated', 0.079), ('recent', 0.077), ('memory', 0.077), ('purchase', 0.076), ('main', 0.067), ('likely', 0.067), ('social', 0.059), ('behind', 0.058), ('goes', 0.058), ('facebook', 0.054), ('provides', 0.049)]
simIndex simValue blogId blogTitle
same-blog 1 0.99999994 1016 high scalability-2011-04-04-Scaling Social Ecommerce Architecture Case study
Introduction: A recent study showed that over 92 percent of executives from leading retailers are focusing their marketing efforts on Facebook and subsequent applications. Furthermore, over 71 percent of users have confirmed they are more likely to make a purchase after “liking” a brand they find online. ( source ) Sears Architect Tomer Gabel provides an insightful overview on how they built a Social Ecommerce solution for Sears.com that can handle complex relationship quires in real time. Tomer goes through: the architectural considerations behind their solution why they chose memory over disk how they partitioned the data to gain scalability why they chose to execute code with the data using GigaSpaces Map/Reduce execution framework how they integrated with Facebook why they chose GigaSpaces over Coherence and Terracotta for in-memory caching and scale In this post I tried to summarize the main takeaway from the interview. You can also watch the full interview (highly reco
2 0.12781997 843 high scalability-2010-06-16-WTF is Elastic Data Grid? (By Example)
Introduction: Forrester released their new wave report: T he Forrester Wave™: Elastic Caching Platforms, Q2 2010 where they listed GigaSpaces, IBM, Oracle, and Terracotta as leading vendors in the field. In this post I'd like to take some time to explain what some of these terms mean, and why they’re important to you. I’ll start with a definition of Elastic Data Grid (Elastic Caching), how it is different then other caching and NoSQL alternatives, and more importantly -- I'll illustrate how it works through some real code examples. You can read the full story here .
3 0.11257821 749 high scalability-2009-12-15-The Common Principles Behind the NOSQL Alternatives
Introduction: This post draws some of the common patterns behind the various NOSQL alternatives, and how they address the database scalability challenge. Read the full story here
4 0.097085744 709 high scalability-2009-09-19-Space Based Programming in .NET
Introduction: Space-based architectures are an alternative to the traditional n-tier model for enterprise applications. Instead of a vertical tier partitioning, space based applications are partitioned horizontally into self-sufficient units. This leads to almost linear scalability of stateful, high-performance applications. This is a recording of a talk I did last month where I introduce space based programming and demonstrate how that works in practice on the .NET platform using Oracle Coherence and GigaSpaces.
5 0.093903601 613 high scalability-2009-06-01-Data grid comparison: Oracle Coherence vs Gigaspaces XAP
Introduction: A short summary of differences between Oracle Coherence and GigaSpaces XAP.
6 0.083930723 685 high scalability-2009-08-20-Dependency Injection and AOP frameworks for .NET
7 0.083379559 1081 high scalability-2011-07-18-Building your own Facebook Realtime Analytics System
8 0.081465662 364 high scalability-2008-08-14-Product: Terracotta - Open Source Network-Attached Memory
9 0.078814954 748 high scalability-2009-11-30-Why Existing Databases (RAC) are So Breakable!
10 0.076768331 416 high scalability-2008-10-15-Oracle opens Coherence Incubator
11 0.07154651 943 high scalability-2010-11-16-Facebook's New Real-time Messaging System: HBase to Store 135+ Billion Messages a Month
12 0.067363597 423 high scalability-2008-10-19-Alternatives to Google App Engine
13 0.063478 832 high scalability-2010-05-31-Scalable federated security with Kerberos
14 0.062816881 783 high scalability-2010-02-24-Hot Scalability Links for February 24, 2010
15 0.061576158 538 high scalability-2009-03-16-Are Cloud Based Memory Architectures the Next Big Thing?
16 0.059582371 1487 high scalability-2013-07-05-Stuff The Internet Says On Scalability For July 5, 2013
17 0.057771403 721 high scalability-2009-10-13-Why are Facebook, Digg, and Twitter so hard to scale?
18 0.057744838 1330 high scalability-2012-09-28-Stuff The Internet Says On Scalability For September 28, 2012
19 0.057734955 212 high scalability-2008-01-14-OpenSpaces.org community site launched - framework for building scale-out applications
20 0.056493483 453 high scalability-2008-12-01-Breakthrough Web-Tier Solutions with Record-Breaking Performance
topicId topicWeight
[(0, 0.077), (1, 0.018), (2, 0.019), (3, 0.003), (4, 0.012), (5, 0.024), (6, -0.028), (7, -0.011), (8, -0.021), (9, 0.044), (10, 0.002), (11, 0.025), (12, -0.003), (13, 0.002), (14, -0.049), (15, 0.006), (16, 0.031), (17, -0.039), (18, 0.022), (19, 0.006), (20, 0.009), (21, 0.0), (22, 0.069), (23, 0.061), (24, 0.013), (25, -0.011), (26, -0.031), (27, -0.08), (28, 0.009), (29, 0.013), (30, -0.012), (31, -0.002), (32, 0.01), (33, -0.03), (34, -0.009), (35, -0.002), (36, 0.008), (37, -0.057), (38, 0.018), (39, 0.026), (40, 0.015), (41, -0.008), (42, 0.06), (43, -0.026), (44, 0.003), (45, 0.02), (46, 0.02), (47, -0.023), (48, 0.031), (49, -0.001)]
simIndex simValue blogId blogTitle
same-blog 1 0.9518038 1016 high scalability-2011-04-04-Scaling Social Ecommerce Architecture Case study
Introduction: A recent study showed that over 92 percent of executives from leading retailers are focusing their marketing efforts on Facebook and subsequent applications. Furthermore, over 71 percent of users have confirmed they are more likely to make a purchase after “liking” a brand they find online. ( source ) Sears Architect Tomer Gabel provides an insightful overview on how they built a Social Ecommerce solution for Sears.com that can handle complex relationship quires in real time. Tomer goes through: the architectural considerations behind their solution why they chose memory over disk how they partitioned the data to gain scalability why they chose to execute code with the data using GigaSpaces Map/Reduce execution framework how they integrated with Facebook why they chose GigaSpaces over Coherence and Terracotta for in-memory caching and scale In this post I tried to summarize the main takeaway from the interview. You can also watch the full interview (highly reco
2 0.65250802 613 high scalability-2009-06-01-Data grid comparison: Oracle Coherence vs Gigaspaces XAP
Introduction: A short summary of differences between Oracle Coherence and GigaSpaces XAP.
3 0.65065581 843 high scalability-2010-06-16-WTF is Elastic Data Grid? (By Example)
Introduction: Forrester released their new wave report: T he Forrester Wave™: Elastic Caching Platforms, Q2 2010 where they listed GigaSpaces, IBM, Oracle, and Terracotta as leading vendors in the field. In this post I'd like to take some time to explain what some of these terms mean, and why they’re important to you. I’ll start with a definition of Elastic Data Grid (Elastic Caching), how it is different then other caching and NoSQL alternatives, and more importantly -- I'll illustrate how it works through some real code examples. You can read the full story here .
4 0.61729223 1081 high scalability-2011-07-18-Building your own Facebook Realtime Analytics System
Introduction: Recently, I was reading Todd Hoff's write-up on FaceBook real time analytics system . As usual, Todd did an excellent job in summarizing this video from Engineering Manager at Facebook Alex Himel . In the first post , I’d like to summarize the case study, and consider some things that weren't mentioned in the summaries. This will lead to an architecture for building your own Realtime Time Analytics for Big-Data that might be easier to implement, using Facebook's experience as a starting point and guide as well as the experience gathered through a recent work with few of GigaSpaces customers. The second post provide a summary of that new approach as well as a pattern and a demo for building your own Real Time Analytics system.. References Real Time analytics for Big Data: Facebook's New Realtime Analytics System Real Time Analytics for Big Data: An Alternative Approach
5 0.60326964 1031 high scalability-2011-04-28-PaaS on OpenStack - Run Applications on Any Cloud, Any Time Using Any Thing
Introduction: Yesterday, I had a session during the OpenStack Summit where I tried to present a more general view on how we should be thinking about PaaS in the context of OpenStack. The key takeaway : The main goal of PaaS is to drive productivity into the process by which we can deliver new applications. Most of the existing PaaS solutions take a fairly extreme approach with their abstraction of the underlying infrastructure and therefore fit a fairly small number of extremely simple applications and thus miss the real promise of PaaS. Amazon's Elastic Beanstalk took a more bottom up approach giving us better set of tradeoffs between the abstraction and control which makes it more broadly applicable to a larger set of applications. The fact that OpenStack is opensource allows us to think differently on the things we can do at the platform layer. We can create a tighter integration between the PaaS and IaaS layers and thus come up with better set of tradeoffs into the way we drive
6 0.57841021 423 high scalability-2008-10-19-Alternatives to Google App Engine
7 0.57743484 416 high scalability-2008-10-15-Oracle opens Coherence Incubator
8 0.54222131 450 high scalability-2008-11-24-Scalability Perspectives #3: Marc Andreessen – Internet Platforms
10 0.52427226 92 high scalability-2007-09-15-The Role of Memory within Web 2.0 Architectures and Deployments
11 0.50766116 1160 high scalability-2011-12-21-In Memory Data Grid Technologies
12 0.5071097 696 high scalability-2009-09-07-Product: Infinispan - Open Source Data Grid
14 0.5063712 180 high scalability-2007-12-10-Scalability Developer Competition Launched by GigaSpaces - $25k in prizes
15 0.50615221 597 high scalability-2009-05-12-GemStone Unveils GemFire Enterprise 6.0
16 0.50415379 709 high scalability-2009-09-19-Space Based Programming in .NET
17 0.49764121 1582 high scalability-2014-01-20-8 Ways Stardog Made its Database Insanely Scalable
18 0.49706084 1179 high scalability-2012-01-23-Facebook Timeline: Brought to You by the Power of Denormalization
19 0.49704638 774 high scalability-2010-02-08-How FarmVille Scales to Harvest 75 Million Players a Month
20 0.4933593 1223 high scalability-2012-04-06-Stuff The Internet Says On Scalability For April 6, 2012
topicId topicWeight
[(1, 0.12), (2, 0.137), (30, 0.582), (79, 0.036)]
simIndex simValue blogId blogTitle
1 0.9879244 131 high scalability-2007-10-25-Should JSPs be avoided for high scalability?
Introduction: I just heard about some web sites where Velocity templates are used to render HTML instead of using JSPs and all the processing in performed in servlets. Can JSPs cause issue with scalability? Thanks, Unmesh
same-blog 2 0.92297333 1016 high scalability-2011-04-04-Scaling Social Ecommerce Architecture Case study
Introduction: A recent study showed that over 92 percent of executives from leading retailers are focusing their marketing efforts on Facebook and subsequent applications. Furthermore, over 71 percent of users have confirmed they are more likely to make a purchase after “liking” a brand they find online. ( source ) Sears Architect Tomer Gabel provides an insightful overview on how they built a Social Ecommerce solution for Sears.com that can handle complex relationship quires in real time. Tomer goes through: the architectural considerations behind their solution why they chose memory over disk how they partitioned the data to gain scalability why they chose to execute code with the data using GigaSpaces Map/Reduce execution framework how they integrated with Facebook why they chose GigaSpaces over Coherence and Terracotta for in-memory caching and scale In this post I tried to summarize the main takeaway from the interview. You can also watch the full interview (highly reco
3 0.91742837 14 high scalability-2007-07-15-Web Analytics: An Hour a Day
Introduction: Web Analytics: An Hour A Day is the first book by an in-the-trenches practitioner of web analytics. It provides a unique insider’s perspective of the challenges and opportunities that web analytics presents to each person who touches the Web in your organization. Rather than spamming you with metrics and definitions, Web Analytics: An Hour A Day will enhance your mindset and teach you how to fish for yourself. Avinash Kaushik is a expert in web analytics and author of the top-rated blog Occam’s Razor (http://www.kaushik.net/avinash). In this book, he goes beyond web analytics concepts and definitions to provide a step-by-step guide to implementing a successful web analytics strategy. His revolutionary approach to web analytics challenges prevalent thinking about the field and guides readers to a solution that will provide truly informed and actionable insights.
4 0.90441161 991 high scalability-2011-02-16-Paper: An Experimental Investigation of the Akamai Adaptive Video Streaming
Introduction: Video is hot on the Internet and people are really interested in knowing how to make it work. Dan Rayburn has a post pointing to a fascinating paper: An Experimental Investigation of the Akamai Adaptive Video Streaming , which talks in some detail about the protocols big players like YouTube, Skype and Akamai use to serve video over on an inherently video unfriendly medium like the Internet. For Akamai they found: Each video is encoded in five versions at different bit rates and stored in separate files. The client sends commands to the server with an average inter departure time of about 2 s, i.e. the control algorithm is executed on average each 2 seconds. Akamai uses only the video level to adapt the video source to the available bandwidth, whereas the frame rate of the video is kept constant. When a sudden drop in the available bandwidth occurs, short interruptions of the video playback can occur due to the a large actuation delay. For a sudden increase of the avai
5 0.8871029 1459 high scalability-2013-05-16-Paper: Warp: Multi-Key Transactions for Key-Value Stores
Introduction: Looks like an interesting take on "a completely asynchronous, low-latency transaction management protocol, in line with the fully distributed NoSQL architecture." Warp: Multi-Key Transactions for Key-Value Stores  overview: Implementing ACID transactions has been a longstanding challenge for NoSQL systems. Because these systems are based on a sharded architecture, transactions necessarily require coordination across multiple servers. Past work in this space has relied either on heavyweight protocols such as Paxos or clock synchronization for this coordination. This paper presents a novel protocol for coordinating distributed transactions with ACID semantics on top of a sharded data store. Called linear transactions, this protocol achieves scalability by distributing the coordination task to only those servers that hold relevant data for each transaction. It achieves high performance by serializing only those transactions whose concurrent execution could potentially yield a vio
6 0.84400046 16 high scalability-2007-07-16-Book: High Performance MySQL
7 0.80968469 500 high scalability-2009-01-22-Heterogeneous vs. Homogeneous System Architectures
8 0.79572779 182 high scalability-2007-12-12-Oracle Can Do Read-Write Splitting Too
9 0.79280359 308 high scalability-2008-04-22-Simple NFS failover solution with symbolic link?
10 0.7729398 261 high scalability-2008-02-25-Make Your Site Run 10 Times Faster
11 0.75352234 43 high scalability-2007-07-30-Product: ImageShack
12 0.7273345 783 high scalability-2010-02-24-Hot Scalability Links for February 24, 2010
13 0.7250039 263 high scalability-2008-02-27-Product: System Imager - Automate Deployment and Installs
14 0.71317542 831 high scalability-2010-05-26-End-To-End Performance Study of Cloud Services
15 0.70830518 336 high scalability-2008-05-31-Biggest Under Reported Story: Google's BigTable Costs 10 Times Less than Amazon's SimpleDB
16 0.69799185 334 high scalability-2008-05-29-Amazon Improves Diagonal Scaling Support with High-CPU Instances
17 0.66142631 44 high scalability-2007-07-30-Product: Photobucket
18 0.64895719 1284 high scalability-2012-07-16-Cinchcast Architecture - Producing 1,500 Hours of Audio Every Day
19 0.60029423 291 high scalability-2008-03-29-20 New Rules for Faster Web Pages
20 0.58809781 917 high scalability-2010-10-08-4 Scalability Themes from Surgecon