Submit Search
Upload
Real world capacity
•
Download as PPT, PDF
•
4 likes
•
1,863 views
Edward Capriolo
Follow
Report
Share
Report
Share
1 of 25
Download now
Recommended
Slides from my MySQL HA talk at LinuxDays.lu 2008
MySQL HA
MySQL HA
Kris Buytaert
DRBD is a block based replication solution, known and available for years under Linux. DRBD allows the implementation of high available systems without SAN. Further use cases are the implementation of storage heads for IP based SANs and long-distance replications over the internet. At present DRBD has a general limitation on two nodes. With DRBD 9 a new release (beta) is under way, allowing for the first time a replication up to 30 nodes. With these features many application possibilities open up for cluster file systems, storage for virtual machines “cloud storage”, and much more.
OSDC 2013 | Neues in DRBD9 by Philipp Reisner
OSDC 2013 | Neues in DRBD9 by Philipp Reisner
NETWAYS
My Barcamp Brussels 3 presentation on getting the most out of MySQL
Barcamp MySQL
Barcamp MySQL
Kris Buytaert
Gluster Developer Summit 2016
Life as a GlusterFS Consultant with Ivan Rossi
Life as a GlusterFS Consultant with Ivan Rossi
Gluster.org
Version reducida de "Exprimir cada centavo" para DevOpsConf 2015, BsAs, Arg.
Devopsconf 2015 sebamontini
Devopsconf 2015 sebamontini
Sebastian Montini
Presentation by Silvius Rus (Quantcast) at Big Data Gurus meetup @ 2013-Dec-10
Quantcast File System (QFS) - Alternative to HDFS
Quantcast File System (QFS) - Alternative to HDFS
bigdatagurus_meetup
This presentation gives a brief tutorial on Hadoop, Map Reduce and Apache Pig. Examples are also provided.
Hadoop, Map Reduce and Apache Pig tutorial
Hadoop, Map Reduce and Apache Pig tutorial
Pranamesh Chakraborty
Few highlights of the work done at Salesforce on Ceph in 2016
Ceph at salesforce ceph day external presentation
Ceph at salesforce ceph day external presentation
Sameer Tiwari
Recommended
Slides from my MySQL HA talk at LinuxDays.lu 2008
MySQL HA
MySQL HA
Kris Buytaert
DRBD is a block based replication solution, known and available for years under Linux. DRBD allows the implementation of high available systems without SAN. Further use cases are the implementation of storage heads for IP based SANs and long-distance replications over the internet. At present DRBD has a general limitation on two nodes. With DRBD 9 a new release (beta) is under way, allowing for the first time a replication up to 30 nodes. With these features many application possibilities open up for cluster file systems, storage for virtual machines “cloud storage”, and much more.
OSDC 2013 | Neues in DRBD9 by Philipp Reisner
OSDC 2013 | Neues in DRBD9 by Philipp Reisner
NETWAYS
My Barcamp Brussels 3 presentation on getting the most out of MySQL
Barcamp MySQL
Barcamp MySQL
Kris Buytaert
Gluster Developer Summit 2016
Life as a GlusterFS Consultant with Ivan Rossi
Life as a GlusterFS Consultant with Ivan Rossi
Gluster.org
Version reducida de "Exprimir cada centavo" para DevOpsConf 2015, BsAs, Arg.
Devopsconf 2015 sebamontini
Devopsconf 2015 sebamontini
Sebastian Montini
Presentation by Silvius Rus (Quantcast) at Big Data Gurus meetup @ 2013-Dec-10
Quantcast File System (QFS) - Alternative to HDFS
Quantcast File System (QFS) - Alternative to HDFS
bigdatagurus_meetup
This presentation gives a brief tutorial on Hadoop, Map Reduce and Apache Pig. Examples are also provided.
Hadoop, Map Reduce and Apache Pig tutorial
Hadoop, Map Reduce and Apache Pig tutorial
Pranamesh Chakraborty
Few highlights of the work done at Salesforce on Ceph in 2016
Ceph at salesforce ceph day external presentation
Ceph at salesforce ceph day external presentation
Sameer Tiwari
Hardware Provisioning for MongoDB
Hardware Provisioning for MongoDB
MongoDB
Basic introduction to HDFS internals
Hdfs internals
Hdfs internals
Bhupesh Chawda
Edge performance with in memory nosql, see how you can add high performance and scalability to your application. And try out some of the possible solutions: memcached, redis and aerospike
Edge performance with in memory nosql
Edge performance with in memory nosql
Liviu Costea
Some vignettes and advice based on prior experience with Cassandra clusters in live environments. Includes some material from other operational slides.
Cassandra in Operation
Cassandra in Operation
niallmilton
A quick presentation made for a Hadoop User Group meeting in Lyon, in february 2014.
Hive at booking
Hive at booking
David Morel
Check out these tips for before you deploy MongoDB.
MongoDB Deployment Checklist
MongoDB Deployment Checklist
MongoDB
Redis in short
Redis database
Redis database
Ñáwrás Ñzár
Implementing these top 10 database optimization tips will help in improving performance and productivity.
Top 10 database optimization tips
Top 10 database optimization tips
raviwriter
RedisConf17 breakout session
RedisConf17- Redis as a Primary Data Store
RedisConf17- Redis as a Primary Data Store
Redis Labs
Mark Nelson, Engineering, Inktank Ceph is a complicated system with lots of different components, which makes com- prehensive testing a challenge. However, storage - especially virtual machine storage - needs to be fast in order to be useful. In this talk, Inktank Performance Engineer Mark Nelson will discuss his approach to testing massively distributed systems like Ceph, will share and analyze recent bench- marks, and will discuss opportunities for enhancing performance.
Ceph Day Santa Clara: Ceph Performance & Benchmarking
Ceph Day Santa Clara: Ceph Performance & Benchmarking
Ceph Community
There are many common workloads in R that are "embarrassingly parallel": group-by analyses, simulations, and cross-validation of models are just a few examples. In this talk I'll describe several techniques available in R to speed up workloads like these, by running multiple iterations simultaneously, in parallel. Many of these techniques require the use of a cluster of machines running R, and I'll provide examples of using cloud-based services to provision clusters for parallel computations. In particular, I will describe how you can use the SparklyR package to distribute data manipulations using the dplyr syntax, on a cluster of servers provisioned in the Azure cloud. Presented by David Smith at Data Day Texas in Austin, January 27 2018.
Speed up R with parallel programming in the Cloud
Speed up R with parallel programming in the Cloud
Revolution Analytics
The slides from my 2011 MongoSF talk of the same name
Lessons Learned Migrating 2+ Billion Documents at Craigslist
Lessons Learned Migrating 2+ Billion Documents at Craigslist
Jeremy Zawodny
Ceph Days held in October 2014 at Brocade headquarters in Silicon Valley.
Ceph Days 2014 Paul Evans Slide Deck
Ceph Days 2014 Paul Evans Slide Deck
DaystromTech
Gluster Developer Summit 2016
DHT2 - O Brother, Where Art Thou with Shyam Ranganathan
DHT2 - O Brother, Where Art Thou with Shyam Ranganathan
Gluster.org
Some of the most common questions we hear from users relate to capacity planning and hardware choices. How many replicas do I need? Should I consider sharding right away? How much RAM will I need for my working set? SSD or HDD? No one likes spending a lot of cash on hardware and cloud bills can just be as painful. MongoDB is different from traditional RDBMSs in its resource management, so you need to be mindful when deciding on the cluster layout and hardware. In this talk we will review the factors that drive the capacity requirements: volume of queries, access patterns, indexing, working set size, among others. Attendees will gain additional insight as we go through a few real-world scenarios, as experienced with MongoDB Inc customers, and come up with their ideal cluster layout and hardware.
Hardware Provisioning
Hardware Provisioning
MongoDB
Wondering what Cassandra use cases are perfect for Scylla? Take a look at the presentation below, and message me if you'd like to learn more!
4 use cases for C* to Scylla
4 use cases for C* to Scylla
◄ ★ Jack Pavlov ★ ►
Redis Modules
Redis Modules - Redis India Tour - 2017
Redis Modules - Redis India Tour - 2017
HashedIn Technologies
Your MongoDB deployment is growing, but are you prepared for that growth? Capacity planning is an essential practice when deploying any database system. You need to understand your usage patterns and determine the appropriate hardware based on your application's needs. Scaling reads and scaling writes will require different types of resources. With the proper tools in place, you can understand your working set, gain visibility into when it's time to add resources or start sharding and avoid performance issues. In this session, you'll learn how to use MongoDB Management Service and other tools to identify patterns and predict growth, ensuring your success with MongoDB.
Capacity Planning For Your Growing MongoDB Cluster
Capacity Planning For Your Growing MongoDB Cluster
MongoDB
HDFS explained in detail: - HDFS Architecture and Blocks - Directory Structure and permissions - NameNodes, Datanodes, roles - File write and read mechanisms - High Availability and Data Protection techniques
HDFS Deep Dive
HDFS Deep Dive
Zoltan C. Toth
A very, very brief overview.
Adco teaser
Adco teaser
Don Farleo
Emerging technology powerpoint
My life
My life
dcbabb
Unit 7 y 8
Unit 7 y 8
Juan Abadia
More Related Content
What's hot
Hardware Provisioning for MongoDB
Hardware Provisioning for MongoDB
MongoDB
Basic introduction to HDFS internals
Hdfs internals
Hdfs internals
Bhupesh Chawda
Edge performance with in memory nosql, see how you can add high performance and scalability to your application. And try out some of the possible solutions: memcached, redis and aerospike
Edge performance with in memory nosql
Edge performance with in memory nosql
Liviu Costea
Some vignettes and advice based on prior experience with Cassandra clusters in live environments. Includes some material from other operational slides.
Cassandra in Operation
Cassandra in Operation
niallmilton
A quick presentation made for a Hadoop User Group meeting in Lyon, in february 2014.
Hive at booking
Hive at booking
David Morel
Check out these tips for before you deploy MongoDB.
MongoDB Deployment Checklist
MongoDB Deployment Checklist
MongoDB
Redis in short
Redis database
Redis database
Ñáwrás Ñzár
Implementing these top 10 database optimization tips will help in improving performance and productivity.
Top 10 database optimization tips
Top 10 database optimization tips
raviwriter
RedisConf17 breakout session
RedisConf17- Redis as a Primary Data Store
RedisConf17- Redis as a Primary Data Store
Redis Labs
Mark Nelson, Engineering, Inktank Ceph is a complicated system with lots of different components, which makes com- prehensive testing a challenge. However, storage - especially virtual machine storage - needs to be fast in order to be useful. In this talk, Inktank Performance Engineer Mark Nelson will discuss his approach to testing massively distributed systems like Ceph, will share and analyze recent bench- marks, and will discuss opportunities for enhancing performance.
Ceph Day Santa Clara: Ceph Performance & Benchmarking
Ceph Day Santa Clara: Ceph Performance & Benchmarking
Ceph Community
There are many common workloads in R that are "embarrassingly parallel": group-by analyses, simulations, and cross-validation of models are just a few examples. In this talk I'll describe several techniques available in R to speed up workloads like these, by running multiple iterations simultaneously, in parallel. Many of these techniques require the use of a cluster of machines running R, and I'll provide examples of using cloud-based services to provision clusters for parallel computations. In particular, I will describe how you can use the SparklyR package to distribute data manipulations using the dplyr syntax, on a cluster of servers provisioned in the Azure cloud. Presented by David Smith at Data Day Texas in Austin, January 27 2018.
Speed up R with parallel programming in the Cloud
Speed up R with parallel programming in the Cloud
Revolution Analytics
The slides from my 2011 MongoSF talk of the same name
Lessons Learned Migrating 2+ Billion Documents at Craigslist
Lessons Learned Migrating 2+ Billion Documents at Craigslist
Jeremy Zawodny
Ceph Days held in October 2014 at Brocade headquarters in Silicon Valley.
Ceph Days 2014 Paul Evans Slide Deck
Ceph Days 2014 Paul Evans Slide Deck
DaystromTech
Gluster Developer Summit 2016
DHT2 - O Brother, Where Art Thou with Shyam Ranganathan
DHT2 - O Brother, Where Art Thou with Shyam Ranganathan
Gluster.org
Some of the most common questions we hear from users relate to capacity planning and hardware choices. How many replicas do I need? Should I consider sharding right away? How much RAM will I need for my working set? SSD or HDD? No one likes spending a lot of cash on hardware and cloud bills can just be as painful. MongoDB is different from traditional RDBMSs in its resource management, so you need to be mindful when deciding on the cluster layout and hardware. In this talk we will review the factors that drive the capacity requirements: volume of queries, access patterns, indexing, working set size, among others. Attendees will gain additional insight as we go through a few real-world scenarios, as experienced with MongoDB Inc customers, and come up with their ideal cluster layout and hardware.
Hardware Provisioning
Hardware Provisioning
MongoDB
Wondering what Cassandra use cases are perfect for Scylla? Take a look at the presentation below, and message me if you'd like to learn more!
4 use cases for C* to Scylla
4 use cases for C* to Scylla
◄ ★ Jack Pavlov ★ ►
Redis Modules
Redis Modules - Redis India Tour - 2017
Redis Modules - Redis India Tour - 2017
HashedIn Technologies
Your MongoDB deployment is growing, but are you prepared for that growth? Capacity planning is an essential practice when deploying any database system. You need to understand your usage patterns and determine the appropriate hardware based on your application's needs. Scaling reads and scaling writes will require different types of resources. With the proper tools in place, you can understand your working set, gain visibility into when it's time to add resources or start sharding and avoid performance issues. In this session, you'll learn how to use MongoDB Management Service and other tools to identify patterns and predict growth, ensuring your success with MongoDB.
Capacity Planning For Your Growing MongoDB Cluster
Capacity Planning For Your Growing MongoDB Cluster
MongoDB
HDFS explained in detail: - HDFS Architecture and Blocks - Directory Structure and permissions - NameNodes, Datanodes, roles - File write and read mechanisms - High Availability and Data Protection techniques
HDFS Deep Dive
HDFS Deep Dive
Zoltan C. Toth
What's hot
(19)
Hardware Provisioning for MongoDB
Hardware Provisioning for MongoDB
Hdfs internals
Hdfs internals
Edge performance with in memory nosql
Edge performance with in memory nosql
Cassandra in Operation
Cassandra in Operation
Hive at booking
Hive at booking
MongoDB Deployment Checklist
MongoDB Deployment Checklist
Redis database
Redis database
Top 10 database optimization tips
Top 10 database optimization tips
RedisConf17- Redis as a Primary Data Store
RedisConf17- Redis as a Primary Data Store
Ceph Day Santa Clara: Ceph Performance & Benchmarking
Ceph Day Santa Clara: Ceph Performance & Benchmarking
Speed up R with parallel programming in the Cloud
Speed up R with parallel programming in the Cloud
Lessons Learned Migrating 2+ Billion Documents at Craigslist
Lessons Learned Migrating 2+ Billion Documents at Craigslist
Ceph Days 2014 Paul Evans Slide Deck
Ceph Days 2014 Paul Evans Slide Deck
DHT2 - O Brother, Where Art Thou with Shyam Ranganathan
DHT2 - O Brother, Where Art Thou with Shyam Ranganathan
Hardware Provisioning
Hardware Provisioning
4 use cases for C* to Scylla
4 use cases for C* to Scylla
Redis Modules - Redis India Tour - 2017
Redis Modules - Redis India Tour - 2017
Capacity Planning For Your Growing MongoDB Cluster
Capacity Planning For Your Growing MongoDB Cluster
HDFS Deep Dive
HDFS Deep Dive
Viewers also liked
A very, very brief overview.
Adco teaser
Adco teaser
Don Farleo
Emerging technology powerpoint
My life
My life
dcbabb
Unit 7 y 8
Unit 7 y 8
Juan Abadia
Successes2009
Successes2009
Georgette Palmer
Lecture2
Lecture2
FALLEE31188
Outland res. brochure 6 30-11 brown
Outland res. brochure 6 30-11 brown
Jessica Luth
hi
Desktop support qua
Desktop support qua
maheshnimbalkar
베트남 노동법 주요내용
베트남 노동법 주요내용
Nguyễn Khang
SBPS Staff Survey
SBPS Staff Survey
Scottsbluff Public Schools
A beginning tale. In this story a friendship is born.
Jennifer h. jenny and timmy
Jennifer h. jenny and timmy
jennydham04
themes from Ways of the World by Ashleigh Harris
Themes ways of the world
Themes ways of the world
ashleighalece
Avanta UK Ltd design, supply and install mezzanine floors, pallet racking, shelving systems, office and warehouse partitions
Avanta Brochure Presentation 2011
Avanta Brochure Presentation 2011
Neil Emmott
Linkedin
Linkedin
weareopen
1 ea5ea59 39b4-4e4c-a0cd183077e7b0aa
1 ea5ea59 39b4-4e4c-a0cd183077e7b0aa
Carlos Carvalho
Module 1
Module 1
Xiyue Yang
CV VI
CV VI
Nguyễn Khang
Business, Coaching, Personal Assessments, Career change, business consulting
Da rtn 11_jan2013
Da rtn 11_jan2013
DA Top Talent
Andrés bio
Andrés bio
ajpeace96
Cd y ci
Cd y ci
edertalen
แนะนำทุน พสวท.
แนะนำทุน พสวท.
yingsinee
Viewers also liked
(20)
Adco teaser
Adco teaser
My life
My life
Unit 7 y 8
Unit 7 y 8
Successes2009
Successes2009
Lecture2
Lecture2
Outland res. brochure 6 30-11 brown
Outland res. brochure 6 30-11 brown
Desktop support qua
Desktop support qua
베트남 노동법 주요내용
베트남 노동법 주요내용
SBPS Staff Survey
SBPS Staff Survey
Jennifer h. jenny and timmy
Jennifer h. jenny and timmy
Themes ways of the world
Themes ways of the world
Avanta Brochure Presentation 2011
Avanta Brochure Presentation 2011
Linkedin
Linkedin
1 ea5ea59 39b4-4e4c-a0cd183077e7b0aa
1 ea5ea59 39b4-4e4c-a0cd183077e7b0aa
Module 1
Module 1
CV VI
CV VI
Da rtn 11_jan2013
Da rtn 11_jan2013
Andrés bio
Andrés bio
Cd y ci
Cd y ci
แนะนำทุน พสวท.
แนะนำทุน พสวท.
Similar to Real world capacity
Cassandra, TTL, used Memcache.
Cassandra as Memcache
Cassandra as Memcache
Edward Capriolo
Cassandra admin
Cassandra admin
Cassandra admin
Sandeep Sharma IIMK Smart City,IoT,Bigdata,Cloud,BI,DW
http://www.iamcal.com/talks/
Web20expo Filesystems
Web20expo Filesystems
royans
Cal handerson's talk. Awesome http://www.iamcal.com/talks/
Web20expo Filesystems
Web20expo Filesystems
royans
Beyond the File System: Designing Large-Scale File Storage and Serving, Web 2.0 Expo, San Francisco
Beyond the File System: Designing Large-Scale File Storage and Serving
Beyond the File System: Designing Large-Scale File Storage and Serving
mclee
Web20expo Filesystems
Web20expo Filesystems
guest18a0f1
http://www.iamcal.com/talks/
Web20expo Filesystems
Web20expo Filesystems
royans
Beyond the File System - Designing Large Scale File Storage and Serving, Web Builder 2.0, Las Vegas
Beyond the File System - Designing Large Scale File Storage and Serving
Beyond the File System - Designing Large Scale File Storage and Serving
mclee
http://www.iamcal.com/talks/
Filesystems
Filesystems
royans
Ce202 Storage
Ce202 Storage
ultimate_guru
CS 542 Putting it all together -- Storage Management
CS 542 Putting it all together -- Storage Management
J Singh
Nachos 2
Nachos 2
Nightcrowl
Nachos 2
Nachos 2
Nightcrowl
Configuration of MongoDB Sharding.
MongoDB Sharding
MongoDB Sharding
uzzal basak
Hadoop has become a critical part of Criteo's operations. What started out as a proof of concept has turned into two in-house bare-metal clusters of over 2200 nodes. Hadoop contains the data required for billing and, perhaps even more importantly, the data used to create the machine learning models, computed every 6 hours by Hadoop, that participate in real time bidding for online advertising. Two clusters do not necessarily mean a redundant system, so Criteo must plan for any of the disasters that can destroy a cluster. This talk describes how Criteo built its second cluster in a new datacenter and how to do it better next time. How a small team is able to run and expand these clusters is explained. More importantly the talk describes how a redundant data and compute solution at this scale must function, what Criteo has already done to create this solution and what remains undone.
Pilot Hadoop Towards 2500 Nodes and Cluster Redundancy
Pilot Hadoop Towards 2500 Nodes and Cluster Redundancy
Stuart Pook
Scalable Web Architectures: Common Patterns and Approaches - Web 2.0 Expo NYC
Scalable Web Architectures: Common Patterns and Approaches - Web 2.0 Expo NYC
Cal Henderson
this is cloud computing Unit 2 presentation
Cloud computing UNIT 2.1 presentation in
Cloud computing UNIT 2.1 presentation in
RahulBhole12
Modern data lakes are now built on cloud storage, helping organizations leverage the scale and economics of object storage while simplifying overall data storage and analysis flow
Building modern data lakes
Building modern data lakes
Minio
a blend of theoretical and hands-on presentation on linux memory management with huge pages
Linux Huge Pages
Linux Huge Pages
Geraldo Netto
Hadoop Research
Hadoop Research
Shreyansh Ajit kumar
Similar to Real world capacity
(20)
Cassandra as Memcache
Cassandra as Memcache
Cassandra admin
Cassandra admin
Web20expo Filesystems
Web20expo Filesystems
Web20expo Filesystems
Web20expo Filesystems
Beyond the File System: Designing Large-Scale File Storage and Serving
Beyond the File System: Designing Large-Scale File Storage and Serving
Web20expo Filesystems
Web20expo Filesystems
Web20expo Filesystems
Web20expo Filesystems
Beyond the File System - Designing Large Scale File Storage and Serving
Beyond the File System - Designing Large Scale File Storage and Serving
Filesystems
Filesystems
Ce202 Storage
Ce202 Storage
CS 542 Putting it all together -- Storage Management
CS 542 Putting it all together -- Storage Management
Nachos 2
Nachos 2
Nachos 2
Nachos 2
MongoDB Sharding
MongoDB Sharding
Pilot Hadoop Towards 2500 Nodes and Cluster Redundancy
Pilot Hadoop Towards 2500 Nodes and Cluster Redundancy
Scalable Web Architectures: Common Patterns and Approaches - Web 2.0 Expo NYC
Scalable Web Architectures: Common Patterns and Approaches - Web 2.0 Expo NYC
Cloud computing UNIT 2.1 presentation in
Cloud computing UNIT 2.1 presentation in
Building modern data lakes
Building modern data lakes
Linux Huge Pages
Linux Huge Pages
Hadoop Research
Hadoop Research
More from Edward Capriolo
Design decisions and discussion on the Nibiru DB
Nibiru: Building your own NoSQL store
Nibiru: Building your own NoSQL store
Edward Capriolo
Web-scale data processing: practical approaches for low-latency and batch
Web-scale data processing: practical approaches for low-latency and batch
Web-scale data processing: practical approaches for low-latency and batch
Edward Capriolo
Big data talk done for Stern NY
Big data nyu
Big data nyu
Edward Capriolo
Cassandra presentation done for the HadoopNJ user group.
Cassandra4hadoop
Cassandra4hadoop
Edward Capriolo
IntraVert
Intravert Server side processing for Cassandra
Intravert Server side processing for Cassandra
Edward Capriolo
M6d cassandra summit
M6d cassandra summit
Edward Capriolo
Information and demonstration of Apache Kafka in action. Originally presented at m6d Lunch and Learn series.
Apache Kafka Demo
Apache Kafka Demo
Edward Capriolo
The PPT that should be displaying on the projector that guides you through the steps of a lan party.
Cassandra NoSQL Lan party
Cassandra NoSQL Lan party
Edward Capriolo
M6d cassandrapresentation
M6d cassandrapresentation
Edward Capriolo
Violating first normal form can be a good way to use hive.
Breaking first-normal form with Hive
Breaking first-normal form with Hive
Edward Capriolo
A breakdown of the high level design of CasBase and vivid descriptions of the reverse indexes.
Casbase presentation
Casbase presentation
Edward Capriolo
Monitoring hadoop With Cacti and Nagios
Hadoop Monitoring best Practices
Hadoop Monitoring best Practices
Edward Capriolo
Hadoop and Hive.
Whirlwind tour of Hadoop and HIve
Whirlwind tour of Hadoop and HIve
Edward Capriolo
How the consistencylevel keyword was added to the cassandra CLI.
Cli deep dive
Cli deep dive
Edward Capriolo
Using counters in Apache Cassandra for real time statistics.
Counters for real-time statistics
Counters for real-time statistics
Edward Capriolo
More from Edward Capriolo
(15)
Nibiru: Building your own NoSQL store
Nibiru: Building your own NoSQL store
Web-scale data processing: practical approaches for low-latency and batch
Web-scale data processing: practical approaches for low-latency and batch
Big data nyu
Big data nyu
Cassandra4hadoop
Cassandra4hadoop
Intravert Server side processing for Cassandra
Intravert Server side processing for Cassandra
M6d cassandra summit
M6d cassandra summit
Apache Kafka Demo
Apache Kafka Demo
Cassandra NoSQL Lan party
Cassandra NoSQL Lan party
M6d cassandrapresentation
M6d cassandrapresentation
Breaking first-normal form with Hive
Breaking first-normal form with Hive
Casbase presentation
Casbase presentation
Hadoop Monitoring best Practices
Hadoop Monitoring best Practices
Whirlwind tour of Hadoop and HIve
Whirlwind tour of Hadoop and HIve
Cli deep dive
Cli deep dive
Counters for real-time statistics
Counters for real-time statistics
Real world capacity
1.
Real world capacity
planning: Cassandra on blades and big iron July 2011
2.
3.
4.
5.
6.
7.
8.
9.
10.
11.
12.
13.
14.
15.
Capacity Planning rule
#1 Know your hard drive limits
16.
Capacity Planning rule
#2 Writes are fast, until c* flushes and compacts so much, that they are not
17.
18.
19.
20.
The use case:
Dr. Real Time and Mr. Batch
21.
22.
23.
24.
25.
Editor's Notes
10/01/10
Download now