high_scalability high_scalability-2009 high_scalability-2009-633 knowledge-graph by maker-knowledge-mining

633 high scalability-2009-06-19-GemFire 6.0: New innovations in data management


meta infos for this blog

Source: html

Introduction: GemStone has unveiled GemFire 6.0 which is the culmination of several years of development and the continuous solving of the hardest data management problems in the world. With this release GemFire touts some of the latest innovative features in data management. In this release: - GemFire introduces a resource manager to continuously monitor and protect cache instances from running out of memory, triggering rebalancing to migrate data to less loaded nodes or allow dynamic increase/decrease in the number of nodes hosting data for linear scalability without impeding ongoing operations (no contention points). - GemFire provides explicit control over when rebalancing can be triggered, on what class of data and even allows the administrator to simulate a "rebalance" operation to quantify the benefits before actually doing it. - With built in instrumentation that captures throughput and latency metrics, GemFire now enables applications to sense changing performance patterns and proactiv


Summary: the most important sentenses genereted by tfidf model

sentIndex sentText sentNum sentScore

1 0 which is the culmination of several years of development and the continuous solving of the hardest data management problems in the world. [sent-2, score-0.41]

2 With this release GemFire touts some of the latest innovative features in data management. [sent-3, score-0.302]

3 - GemFire provides explicit control over when rebalancing can be triggered, on what class of data and even allows the administrator to simulate a "rebalance" operation to quantify the benefits before actually doing it. [sent-5, score-0.357]

4 - With built in instrumentation that captures throughput and latency metrics, GemFire now enables applications to sense changing performance patterns and proactively provision extra resources and trigger rebalancing. [sent-6, score-0.234]

5 The end result is predictable data access throughput and latency without the need to overprovision capacity. [sent-7, score-0.329]

6 - Advanced Data Partitioning: Applications are no longer restricted by the memory available across the cluster to manage partitioned data. [sent-9, score-0.252]

7 Applications can pool available memory as well as disk and stripe the data across memory and disk across the cluster. [sent-10, score-0.564]

8 When the data fabric is configured as a cache, partitioned data can be expired or evicted so that only the most frequently used data is managed. [sent-11, score-0.817]

9 - Data-aware application behavior routing: There are several extensions added to the GemFire data-aware function execution service - a simple grid programming model that allows the application to synchronously or asynchronously execute application behavior on the data nodes. [sent-12, score-0.824]

10 Applications invoke functions hinting the data they are dependent on and the service parallelizes the execution of the application function on all the grid nodes where the data is being managed. [sent-13, score-0.959]

11 Applications can now define relationships between different classes of data to colocate all related data sets and application functions when routed to the data nodes can execute complex queries on in-process data. [sent-14, score-0.898]

12 These and other features offered in the 'Function execution service' offers linear scalability for compute and data intensive applications. [sent-15, score-0.391]

13 Simply add more nodes when demand spikes to rebalance data and behavior to increase the overall throughput for your application. [sent-16, score-0.653]

14 - API additions for C++, C#: Support for continuous querying, client side connection pooling and dynamic load balancing and ability to invoke server side functions. [sent-17, score-0.334]

15 - Cost based Query optimization: A new compact index to conserve memory utilizaton and enhanced query processor design with cost-based optimization has been introduced as part of this release. [sent-18, score-0.339]

16 - Developer productivity tools: It can be daunting when developers have to quickly develop and test their clustered application. [sent-19, score-0.081]

17 Developers need the capability to browse the distributed data using ad-hoc queries, apply corrections or monitor resource utilization and performance metrics. [sent-20, score-0.387]

18 A new graphical Data browser permits browsing and editing of data across the entire cluster, execution of ad-hoc queries and even create real-time table views that are continuously kept up-to-date through continuous queries. [sent-21, score-0.864]

19 The GemFire Monitor tool (GFMon) also has several enhancements making the tool much more developer friendly. [sent-22, score-0.074]

20 For more information on GemFire, view our newly rewritten technical white paper at: http://community. [sent-23, score-0.16]


similar blogs computed by tfidf model

tfidf for this blog:

wordName wordTfidf (topN-words)

[('gemfire', 0.57), ('data', 0.155), ('execution', 0.148), ('rebalance', 0.146), ('invoke', 0.146), ('behavior', 0.144), ('rebalancing', 0.137), ('nodes', 0.124), ('continuous', 0.117), ('fabric', 0.11), ('memory', 0.105), ('white', 0.095), ('impeding', 0.09), ('overprovision', 0.09), ('monitor', 0.088), ('linear', 0.088), ('continuously', 0.087), ('conserve', 0.084), ('evicted', 0.084), ('parallelizes', 0.084), ('throughput', 0.084), ('execute', 0.083), ('partitioned', 0.083), ('triggering', 0.081), ('daunting', 0.081), ('gemstone', 0.081), ('colocate', 0.081), ('permits', 0.081), ('optimization', 0.079), ('touts', 0.078), ('corrections', 0.078), ('function', 0.076), ('captures', 0.075), ('expired', 0.075), ('applications', 0.075), ('queries', 0.074), ('several', 0.074), ('functions', 0.071), ('enhanced', 0.071), ('additions', 0.071), ('stripe', 0.071), ('editing', 0.07), ('release', 0.069), ('browsing', 0.068), ('thresholds', 0.067), ('browse', 0.066), ('quantify', 0.065), ('rewritten', 0.065), ('across', 0.064), ('hardest', 0.064)]

similar blogs list:

simIndex simValue blogId blogTitle

same-blog 1 0.99999994 633 high scalability-2009-06-19-GemFire 6.0: New innovations in data management

Introduction: GemStone has unveiled GemFire 6.0 which is the culmination of several years of development and the continuous solving of the hardest data management problems in the world. With this release GemFire touts some of the latest innovative features in data management. In this release: - GemFire introduces a resource manager to continuously monitor and protect cache instances from running out of memory, triggering rebalancing to migrate data to less loaded nodes or allow dynamic increase/decrease in the number of nodes hosting data for linear scalability without impeding ongoing operations (no contention points). - GemFire provides explicit control over when rebalancing can be triggered, on what class of data and even allows the administrator to simulate a "rebalance" operation to quantify the benefits before actually doing it. - With built in instrumentation that captures throughput and latency metrics, GemFire now enables applications to sense changing performance patterns and proactiv

2 0.40894198 597 high scalability-2009-05-12-GemStone Unveils GemFire Enterprise 6.0

Introduction: GemFire Enterprise is in-memory distributed data management platform that pools memory (and CPU, network and optionally local disk) across multiple processes to manage application objects and behavior. With the 6.0 release, GemFire has reached a stage of maturity in its evolution. GemStone touts this version as the true 'best of breed' distributed caching technology, solving scalability issues in all industries.

3 0.26340964 730 high scalability-2009-10-28-GemFire: Solving the hardest problems in data management

Introduction: GemStone's website recently recieved a major facelift over at www.gemstone.com . I felt that the users of this site might find our detailed description of how we solve the hardest problems in data management interesting. This can be viewed at: http://www.gemstone.com/hardest-problems (PDF available for download). Also check out our industry page to see how GemFire applies to multiple industries, then head over to the solutions page to see how GemFire  enables mainframe migration, real-time BI in data warehousing, RDB scalup/speedup and the cloud. Finally, check out our community site if you want a more technical view of GemFire. We hope you enjoy the new facelift and content!

4 0.1720514 1160 high scalability-2011-12-21-In Memory Data Grid Technologies

Introduction: After winning a CSC Leading Edge Forum (LEF) research grant, I (Paul Colmer) wanted to publish some of the highlights of my research to share with the wider technology community. What is an In Memory Data Grid? It is not an in-memory relational database, a NOSQL database or a relational database.  It is a different breed of software datastore. In summary an IMDG is an ‘off the shelf’ software product that exhibits the following characteristics: The data model is distributed across many servers in a single location or across multiple locations.  This distribution is known as a data fabric.  This distributed model is known as a ‘shared nothing’ architecture. All servers can be active in each site. All data is stored in the RAM of the servers. Servers can be added or removed non-disruptively, to increase the amount of RAM available. The data model is non-relational and is object-based.  Distributed applications written on the .NET and Java application platforms are s

5 0.13567007 538 high scalability-2009-03-16-Are Cloud Based Memory Architectures the Next Big Thing?

Introduction: We are on the edge of two potent technological changes: Clouds and Memory Based Architectures. This evolution will rip open a chasm where new players can enter and prosper. Google is the master of disk. You can't beat them at a game they perfected. Disk based databases like SimpleDB and BigTable are complicated beasts, typical last gasp products of any aging technology before a change. The next era is the age of Memory and Cloud which will allow for new players to succeed. The tipping point will be soon. Let's take a short trip down web architecture lane: It's 1993: Yahoo runs on FreeBSD, Apache, Perl scripts and a SQL database It's 1995: Scale-up the database. It's 1998: LAMP It's 1999: Stateless + Load Balanced + Database + SAN It's 2001: In-memory data-grid. It's 2003: Add a caching layer. It's 2004: Add scale-out and partitioning. It's 2005: Add asynchronous job scheduling and maybe a distributed file system. It's 2007: Move it all into the cloud. It's 2008: C

6 0.12109596 920 high scalability-2010-10-15-Troubles with Sharding - What can we learn from the Foursquare Incident?

7 0.11672367 1529 high scalability-2013-10-08-F1 and Spanner Holistically Compared

8 0.10933322 666 high scalability-2009-07-30-Learn How to Think at Scale

9 0.10930127 1009 high scalability-2011-03-22-Sponsored Post: ClearStone, Schooner, deviantART, ScaleOut, aiCache, WAPT, Karmasphere, Kabam, Newrelic, Cloudkick, Membase, Joyent, CloudSigma, ManageEngine, Site24x7

10 0.1079517 1013 high scalability-2011-03-29-Sponsored Post: OPOWER, Data 2.0, ClearStone, Schooner, deviantART, ScaleOut, aiCache, WAPT, Karmasphere, Kabam, Newrelic, Cloudkick, Membase, Joyent, CloudSigma, ManageEngine, Site24x7

11 0.10665094 1021 high scalability-2011-04-12-Sponsored Post: Gazillion, Edmunds, OPOWER, ClearStone, deviantART, ScaleOut, aiCache, WAPT, Karmasphere, Kabam, Newrelic, Cloudkick, Membase, Joyent, CloudSigma, ManageEngine, Site24x7

12 0.10582598 1005 high scalability-2011-03-15-Sponsored Post: Schooner, deviantART, ScaleOut, aiCache, WAPT, Karmasphere, Kabam, Newrelic, Cloudkick, Membase, Joyent, CloudSigma, ManageEngine, Site24x7

13 0.10568868 997 high scalability-2011-03-01-Sponsored Post: ScaleOut, aiCache, WAPT, Karmasphere, Kabam, Opera Solutions, Newrelic, Cloudkick, Membase, Joyent, CloudSigma, ManageEngine, Site24x7

14 0.10558067 589 high scalability-2009-05-05-Drop ACID and Think About Data

15 0.10462458 1118 high scalability-2011-09-19-Big Iron Returns with BigMemory

16 0.10405373 661 high scalability-2009-07-25-Latency is Everywhere and it Costs You Sales - How to Crush it

17 0.10313113 1585 high scalability-2014-01-24-Stuff The Internet Says On Scalability For January 24th, 2014

18 0.1028756 1226 high scalability-2012-04-10-Sponsored Post: Infragistics, Reality Check Network, Gigaspaces, AiCache, ElasticHosts, Logic Monitor, Attribution Modeling, New Relic, AppDynamics, CloudSigma, ManageEnine, Site24x7

19 0.1028756 1232 high scalability-2012-04-24-Sponsored Post: Reality Check Network, Infragistics, Gigaspaces, AiCache, ElasticHosts, Logic Monitor, Attribution Modeling, New Relic, AppDynamics, CloudSigma, ManageEnine, Site24x7

20 0.10282812 1034 high scalability-2011-05-03-Sponsored Post: Percona, Mathworks, AppDynamics, Gazillion, Edmunds, OPOWER, ClearStone, ScaleOut, aiCache, WAPT, Karmasphere, Newrelic, Cloudkick, Membase, CloudSigma, ManageEngine, Site24x7


similar blogs computed by lsi model

lsi for this blog:

topicId topicWeight

[(0, 0.197), (1, 0.028), (2, -0.002), (3, 0.005), (4, -0.024), (5, 0.104), (6, 0.104), (7, -0.042), (8, -0.081), (9, 0.033), (10, 0.045), (11, 0.011), (12, -0.001), (13, 0.004), (14, -0.01), (15, -0.013), (16, 0.023), (17, -0.036), (18, 0.036), (19, 0.004), (20, -0.036), (21, 0.031), (22, 0.054), (23, 0.034), (24, -0.019), (25, -0.009), (26, -0.066), (27, -0.028), (28, -0.031), (29, -0.005), (30, -0.024), (31, -0.025), (32, -0.01), (33, -0.001), (34, -0.033), (35, 0.001), (36, 0.011), (37, -0.011), (38, -0.031), (39, 0.019), (40, -0.018), (41, -0.043), (42, 0.082), (43, 0.055), (44, 0.038), (45, -0.025), (46, 0.012), (47, 0.001), (48, 0.013), (49, -0.012)]

similar blogs list:

simIndex simValue blogId blogTitle

same-blog 1 0.93898082 633 high scalability-2009-06-19-GemFire 6.0: New innovations in data management

Introduction: GemStone has unveiled GemFire 6.0 which is the culmination of several years of development and the continuous solving of the hardest data management problems in the world. With this release GemFire touts some of the latest innovative features in data management. In this release: - GemFire introduces a resource manager to continuously monitor and protect cache instances from running out of memory, triggering rebalancing to migrate data to less loaded nodes or allow dynamic increase/decrease in the number of nodes hosting data for linear scalability without impeding ongoing operations (no contention points). - GemFire provides explicit control over when rebalancing can be triggered, on what class of data and even allows the administrator to simulate a "rebalance" operation to quantify the benefits before actually doing it. - With built in instrumentation that captures throughput and latency metrics, GemFire now enables applications to sense changing performance patterns and proactiv

2 0.82428926 597 high scalability-2009-05-12-GemStone Unveils GemFire Enterprise 6.0

Introduction: GemFire Enterprise is in-memory distributed data management platform that pools memory (and CPU, network and optionally local disk) across multiple processes to manage application objects and behavior. With the 6.0 release, GemFire has reached a stage of maturity in its evolution. GemStone touts this version as the true 'best of breed' distributed caching technology, solving scalability issues in all industries.

3 0.80799532 1160 high scalability-2011-12-21-In Memory Data Grid Technologies

Introduction: After winning a CSC Leading Edge Forum (LEF) research grant, I (Paul Colmer) wanted to publish some of the highlights of my research to share with the wider technology community. What is an In Memory Data Grid? It is not an in-memory relational database, a NOSQL database or a relational database.  It is a different breed of software datastore. In summary an IMDG is an ‘off the shelf’ software product that exhibits the following characteristics: The data model is distributed across many servers in a single location or across multiple locations.  This distribution is known as a data fabric.  This distributed model is known as a ‘shared nothing’ architecture. All servers can be active in each site. All data is stored in the RAM of the servers. Servers can be added or removed non-disruptively, to increase the amount of RAM available. The data model is non-relational and is object-based.  Distributed applications written on the .NET and Java application platforms are s

4 0.7720595 668 high scalability-2009-08-01-15 Scalability and Performance Best Practices

Introduction: These are from Laura Thomson of OmniTi : Profile early, profile often. Pick a profiling tool and learn it in and out.  Dev-ops cooperation is essential. The most critical difference in organizations that handles crises well. Test on production data. Code behavior (especially performance) is often data driven. Track and trend. Understanding your historical performance characteristics is essential for spotting emerging problems. Assumptions will burn you. Systems are complex and often break in unexpected ways. Decouple. Isolate performance failures. Cache. Caching is the core of most optimizations. Federate. Data federation is taking a single data set and spreading it across multiple database/application servers. Replicate. Replication is making synchronized copies of data available in more than one place. Avoid straining hard-to-scale resources. Some resources are inherently hard to scale: Uncacheable’ data, Data with a very high read+write rate

5 0.77089876 697 high scalability-2009-09-09-GridwiseTech revolutionizes data management

Introduction: GridwiseTech has developed AdHoc , an advanced framework for sharing geographically distributed data and compute resources. It simplifies the resource management and makes cooperation secure and effective. The premise of AdHoc is to enable each member of the associated institution to control access to his or her resources without an IT administrator’s help, and with high security level of any exposed data or applications assured. It takes 3 easy steps to establish cooperation within AdHoc: create a virtual organization, add resources and share them. The application can be implemented within any organization to exchange data and resources or between institutions to join forces for more efficient results. AdHoc was initially created for a consortium of hospitals and institutions to share medical data sets. As a technical partner in that project, GridwiseTech implemented the Security Framework to provide access to that data and designed a graphical tool to facilitate the administration

6 0.75955731 1221 high scalability-2012-04-03-Hazelcast 2.0: Big Data In-Memory

7 0.7557041 696 high scalability-2009-09-07-Product: Infinispan - Open Source Data Grid

8 0.7310887 1307 high scalability-2012-08-20-The Performance of Distributed Data-Structures Running on a "Cache-Coherent" In-Memory Data Grid

9 0.7304911 1570 high scalability-2014-01-01-Paper: Nanocubes: Nanocubes for Real-Time Exploration of Spatiotemporal Datasets

10 0.7298547 538 high scalability-2009-03-16-Are Cloud Based Memory Architectures the Next Big Thing?

11 0.72386974 393 high scalability-2008-09-25-GridGain: One Compute Grid, Many Data Grids

12 0.71932858 396 high scalability-2008-09-26-Lucasfilm: The Real Magic is in the Data Center

13 0.70909721 468 high scalability-2008-12-17-Ringo - Distributed key-value storage for immutable data

14 0.70624036 1648 high scalability-2014-05-15-Paper: SwiftCloud: Fault-Tolerant Geo-Replication Integrated all the Way to the Client Machine

15 0.70563793 1236 high scalability-2012-04-30-Masstree - Much Faster than MongoDB, VoltDB, Redis, and Competitive with Memcached

16 0.70489919 423 high scalability-2008-10-19-Alternatives to Google App Engine

17 0.70091486 421 high scalability-2008-10-17-A High Performance Memory Database for Web Application Caches

18 0.69826323 1118 high scalability-2011-09-19-Big Iron Returns with BigMemory

19 0.69141799 292 high scalability-2008-03-30-Scaling Out MySQL

20 0.68898922 1161 high scalability-2011-12-22-Architecting Massively-Scalable Near-Real-Time Risk Analysis Solutions


similar blogs computed by lda model

lda for this blog:

topicId topicWeight

[(1, 0.208), (2, 0.189), (10, 0.042), (19, 0.017), (29, 0.163), (30, 0.034), (40, 0.023), (46, 0.014), (47, 0.023), (61, 0.057), (79, 0.066), (85, 0.055), (94, 0.034)]

similar blogs list:

simIndex simValue blogId blogTitle

1 0.93898797 228 high scalability-2008-01-28-Product: ISPMan Centralized ISP Management System

Introduction: From FRESH Ports and their website: ISPman is an ISP management software written in perl, using an LDAP backend to manage virtual hosts for an ISP. It can be used to manage, DNS, virtual hosts for apache config, postfix configuration, cyrus mail boxes, proftpd etc. ISPMan was written as a management tool for the network at 4unet where between 30 to 50 domains are hosted and the number is crazily growing. Managing these domains and their users was a little time consuming, and needed an Administrator who knows linux and these daemons fluently. Now the help-desk can easily manage the domains and users. LDAP data can be easily replicated site wide, and mail box server can be scaled from 1 to n as required. An LDAP entry called maildrop tells the SMTP server (postfix) where to deliver the mail. The SMTP servers can be loadbalanced with one of many load balancing techniques. The program is written with scalability and High availability in mind. This may not be the right s

same-blog 2 0.92588109 633 high scalability-2009-06-19-GemFire 6.0: New innovations in data management

Introduction: GemStone has unveiled GemFire 6.0 which is the culmination of several years of development and the continuous solving of the hardest data management problems in the world. With this release GemFire touts some of the latest innovative features in data management. In this release: - GemFire introduces a resource manager to continuously monitor and protect cache instances from running out of memory, triggering rebalancing to migrate data to less loaded nodes or allow dynamic increase/decrease in the number of nodes hosting data for linear scalability without impeding ongoing operations (no contention points). - GemFire provides explicit control over when rebalancing can be triggered, on what class of data and even allows the administrator to simulate a "rebalance" operation to quantify the benefits before actually doing it. - With built in instrumentation that captures throughput and latency metrics, GemFire now enables applications to sense changing performance patterns and proactiv

3 0.9116863 36 high scalability-2007-07-28-Product: Web Log Expert

Introduction: WebLog Expert is a fast and powerful access log analyzer. It will give you information about your site's visitors: activity statistics, accessed files, paths through the site, information about referring pages, search engines, browsers, operating systems, and more. The program produces easy-to-read HTML reports that include both text information (tables) and charts. View the WebLog Expert sample report to get the general idea of the variety of information about your site's usage it can provide. WebLog Expert can analyze logs of Apache and IIS web servers. It can even read GZ and ZIP compressed logs so you won't need to unpack them manually. The log analyzer features intuitive interface. Built-in wizards will help you quickly and easily create a profile for your site and analyze it.

4 0.89397466 688 high scalability-2009-08-26-Hot Links for 2009-8-26

Introduction: I'm Going To Scale My Foot Up Your Ass - Shut up about scalability, no one is using your app anyway. Multi-Tenant Data Architecture - Microsoft's take on different approaches to multitenancy. Cloud computing rides on spiraling Energy costs - A report by US researchers has shown the increasing cost of power and cooling in the data centre is a driver towards cloud computing. Interview: Apple’s Gigantic New Data Center Hints at Cloud Computing - Companies building centers this big are getting into cloud computing. Running apps in the cloud requires massive infrastructure: Google-size infrastructure. What Does Cloud Computing Actually Cost? An Analysis of the Top Vendors - Amazon is currently the lowest cost cloud computing option overall. At least for production applications that need more than 6.5 hours of CPU/day, otherwise GAE is technically cheaper because it's free until this usage level. no:sql(east) - October 28–30, 2009, Atlanta, GA. Very cute pa

5 0.88831031 1295 high scalability-2012-08-02-Ask DuckDuckGo: Is there Anything you Want to Know About DDG?

Introduction: Next week I'm going to have the pleasure of interviewing Gabriel Weinberg , founder of rebel search engine DuckDuckGo . Is there anything you would like to know about DuckDuckGo that I can ask Gabe? Please contact me or comment on this thread with your deepest desires.

6 0.88677835 413 high scalability-2008-10-14-Sun Storage and Archive Solution for HPC

7 0.88497323 1265 high scalability-2012-06-15-Stuff The Internet Says On Scalability For June 15, 2012

8 0.86703652 511 high scalability-2009-02-12-MySpace Architecture

9 0.86437321 1096 high scalability-2011-08-10-LevelDB - Fast and Lightweight Key-Value Database From the Authors of MapReduce and BigTable

10 0.86305457 881 high scalability-2010-08-16-Scaling an AWS infrastructure - Tools and Patterns

11 0.86245996 1557 high scalability-2013-12-02-Evolution of Bazaarvoice’s Architecture to 500M Unique Users Per Month

12 0.86201704 233 high scalability-2008-01-30-How Rackspace Now Uses MapReduce and Hadoop to Query Terabytes of Data

13 0.86186534 678 high scalability-2009-08-09-Writing about cisco loadbalancer?

14 0.8617124 983 high scalability-2011-02-02-Piccolo - Building Distributed Programs that are 11x Faster than Hadoop

15 0.86156607 1472 high scalability-2013-06-07-Stuff The Internet Says On Scalability For June 7, 2013

16 0.86137146 558 high scalability-2009-04-06-How do you monitor the performance of your cluster?

17 0.86072385 1390 high scalability-2013-01-21-Processing 100 Million Pixels a Day - Small Amounts of Contention Cause Big Problems at Scale

18 0.86061597 304 high scalability-2008-04-19-How to build a real-time analytics system?

19 0.8602497 904 high scalability-2010-09-21-Playfish's Social Gaming Architecture - 50 Million Monthly Users and Growing

20 0.86014146 373 high scalability-2008-08-29-Product: ScaleOut StateServer is Memcached on Steroids