Submit Search
Upload
Jon12
•
0 likes
•
206 views
S
s1170203
Follow
Report
Share
Report
Share
1 of 1
Download now
Download to read offline
Recommended
Log house
Log house
s1170203
Final portfolio
Final portfolio
s1170203
Implementing Multi-Dimensional Aggregate Composites with Counters in Cassandra For Reporting
Storing Time Series Metrics With Cassandra and Composite Columns
Storing Time Series Metrics With Cassandra and Composite Columns
Joe Stein
Knowledge of how to set up good benchmarks is invaluable in understanding performance of the system. Writing correct and useful benchmarks is hard, and verification of the results is difficult and prone to errors. When done right, benchmarks guide teams to improve the performance of their systems. When done wrong, hours of effort may result in a worse performing application, upset customers or worse! In this talk, we will discuss what you need to know to write better benchmarks. We will look at examples of bad benchmarks and learn about what biases can invalidate the measurements, in the hope of correctly applying our new-found skills and avoiding such pitfalls in the future.
Benchmarking: You're Doing It Wrong (StrangeLoop 2014)
Benchmarking: You're Doing It Wrong (StrangeLoop 2014)
Aysylu Greenberg
Service Oriented Architecture
Service Oriented Architecture
Andriy Buday
This is an introduction to Analysis Services focusing on when to use it and how to use it effectively. Dan Bulos covers the three pillars of multidimensional databases: Aggregation Management, Embedded Metadata, and the Calculation Engine. For analytical applications, performance management, or just about anything with a KPI, Analysis Services is the perfect companion for SQL Server. These are complementary databases that do different things well. Using the right tool for the right job will make development faster and usability easier. You Will Learn: • How SSAS aggregation management saves development time and runs faster • How the embedded metadata (semantic layer) of SSAS creates a more usable application • The benefits of using MDX as calculation language • How to make effective use of both the relational & multidimensional SQL Server databases
Microsoft Analysis Services July 2010
Microsoft Analysis Services July 2010
Mark Ginnebaugh
Percona Live 2016 presentation on best practices to monitor large scale MySQL deployments.
Monitoring MySQL at scale
Monitoring MySQL at scale
Ovais Tariq
What I’m going to talk about ‣Briefly we do and for whom ‣Where we started ‣The kind of data we deal with ‣How it fits altogether ‣A few things we learned along the way ‣Q+A
Events and metrics the Lifeblood of Webops
Events and metrics the Lifeblood of Webops
Datadog
Recommended
Log house
Log house
s1170203
Final portfolio
Final portfolio
s1170203
Implementing Multi-Dimensional Aggregate Composites with Counters in Cassandra For Reporting
Storing Time Series Metrics With Cassandra and Composite Columns
Storing Time Series Metrics With Cassandra and Composite Columns
Joe Stein
Knowledge of how to set up good benchmarks is invaluable in understanding performance of the system. Writing correct and useful benchmarks is hard, and verification of the results is difficult and prone to errors. When done right, benchmarks guide teams to improve the performance of their systems. When done wrong, hours of effort may result in a worse performing application, upset customers or worse! In this talk, we will discuss what you need to know to write better benchmarks. We will look at examples of bad benchmarks and learn about what biases can invalidate the measurements, in the hope of correctly applying our new-found skills and avoiding such pitfalls in the future.
Benchmarking: You're Doing It Wrong (StrangeLoop 2014)
Benchmarking: You're Doing It Wrong (StrangeLoop 2014)
Aysylu Greenberg
Service Oriented Architecture
Service Oriented Architecture
Andriy Buday
This is an introduction to Analysis Services focusing on when to use it and how to use it effectively. Dan Bulos covers the three pillars of multidimensional databases: Aggregation Management, Embedded Metadata, and the Calculation Engine. For analytical applications, performance management, or just about anything with a KPI, Analysis Services is the perfect companion for SQL Server. These are complementary databases that do different things well. Using the right tool for the right job will make development faster and usability easier. You Will Learn: • How SSAS aggregation management saves development time and runs faster • How the embedded metadata (semantic layer) of SSAS creates a more usable application • The benefits of using MDX as calculation language • How to make effective use of both the relational & multidimensional SQL Server databases
Microsoft Analysis Services July 2010
Microsoft Analysis Services July 2010
Mark Ginnebaugh
Percona Live 2016 presentation on best practices to monitor large scale MySQL deployments.
Monitoring MySQL at scale
Monitoring MySQL at scale
Ovais Tariq
What I’m going to talk about ‣Briefly we do and for whom ‣Where we started ‣The kind of data we deal with ‣How it fits altogether ‣A few things we learned along the way ‣Q+A
Events and metrics the Lifeblood of Webops
Events and metrics the Lifeblood of Webops
Datadog
Datadog is monitoring that does not suck. It's metrics friendly, people friendly and developer friendly monitoring. Learn more at https://www.datadoghq.com/
Just enough web ops for web developers
Just enough web ops for web developers
Datadog
This presentation was presented at Percona Live UK. Although a DBMS hides the internal mechanics of indexing. But to be able to create efficient indexes, you need to know how they work. This talk will help you understand the mechanics of the data structure used to store indexes and as to how it applies to InnoDB. At the end of the talk you will be able to learn how to use cost-analysis to pick and choose correct index definitions and will learn how to create indexes that will work efficiently with InnoDB.
B+Tree Indexes and InnoDB
B+Tree Indexes and InnoDB
Ovais Tariq
Things to think about while architecting azure solutions
Things to think about while architecting azure solutions
Arnon Rotem-Gal-Oz
Dig into an alert using Datadog graphs to correlate data from all of your system and determine and resolve the cause of your performance issue. Learn more about Datadog's infrastructure monitoring at https://www.datadoghq.com
I <3 graphs in 20 slides
I <3 graphs in 20 slides
Datadog
User Centred Design (UCD) Presentation
User Centred Design (UCD) Presentation
Vinai Kumar
Introduction to SOA
Soa
Soa
Arnon Rotem-Gal-Oz
Performance metrics + Nagios traffic + other sources + Datadog in the cloud = real time graphs + analytics
Deep dive into Nagios analytics
Deep dive into Nagios analytics
Datadog
Reliability and availability in SOA
Building reliable systems from unreliable components
Building reliable systems from unreliable components
Arnon Rotem-Gal-Oz
Containerized Data Persistence on Mesos with Kafka, MySQL, Cassandra, HDFS and More!
Containerized Data Persistence on Mesos
Containerized Data Persistence on Mesos
Joe Stein
Datadog is a monitoring as a service. We write software and we sell as service. We love customer support.
Customer Ops: DevOps <3 customer support
Customer Ops: DevOps <3 customer support
Datadog
Alexis goals this presentation are three-fold: 1) Dive into key Docker metrics 2) Explain operational complexity. In other words I want to take what we have seen on the field and show you where the pain points will be. 3) Rethink monitoring of Docker containers. The old tricks won’t work.
Monitoring Docker containers - Docker NYC Feb 2015
Monitoring Docker containers - Docker NYC Feb 2015
Datadog
Modern systems in production rely on decades of computer science research. Over time, new architectural patterns emerge that enable more resilient and robust systems. In this talk, we'll discuss some of these patterns from systems I've worked on at Google and the related work that provide insights into the motivations behind them.
QCon NYC: Distributed systems in practice, in theory
QCon NYC: Distributed systems in practice, in theory
Aysylu Greenberg
Best practices for monitoring your IT infrastructure using StatsD. Find dashboard examples here: https://p.datadoghq.com/sb/9b246c4ade Monitor StatsD easily with Datadog. Learn more at https://www.datadoghq.com
Effective monitoring with StatsD
Effective monitoring with StatsD
Datadog
Burasura
Burasura
s1170203
Brine11
Brine11
s1170203
Cmap102
Cmap102
s1170203
Cmap102
Cmap102
s1170203
Cmap102
Cmap102
s1170203
Cmap102
Cmap102
s1170203
Cmap10
Cmap10
s1170203
Brine9
Brine9
s1170203
Cmap82
Cmap82
s1170203
More Related Content
Viewers also liked
Datadog is monitoring that does not suck. It's metrics friendly, people friendly and developer friendly monitoring. Learn more at https://www.datadoghq.com/
Just enough web ops for web developers
Just enough web ops for web developers
Datadog
This presentation was presented at Percona Live UK. Although a DBMS hides the internal mechanics of indexing. But to be able to create efficient indexes, you need to know how they work. This talk will help you understand the mechanics of the data structure used to store indexes and as to how it applies to InnoDB. At the end of the talk you will be able to learn how to use cost-analysis to pick and choose correct index definitions and will learn how to create indexes that will work efficiently with InnoDB.
B+Tree Indexes and InnoDB
B+Tree Indexes and InnoDB
Ovais Tariq
Things to think about while architecting azure solutions
Things to think about while architecting azure solutions
Arnon Rotem-Gal-Oz
Dig into an alert using Datadog graphs to correlate data from all of your system and determine and resolve the cause of your performance issue. Learn more about Datadog's infrastructure monitoring at https://www.datadoghq.com
I <3 graphs in 20 slides
I <3 graphs in 20 slides
Datadog
User Centred Design (UCD) Presentation
User Centred Design (UCD) Presentation
Vinai Kumar
Introduction to SOA
Soa
Soa
Arnon Rotem-Gal-Oz
Performance metrics + Nagios traffic + other sources + Datadog in the cloud = real time graphs + analytics
Deep dive into Nagios analytics
Deep dive into Nagios analytics
Datadog
Reliability and availability in SOA
Building reliable systems from unreliable components
Building reliable systems from unreliable components
Arnon Rotem-Gal-Oz
Containerized Data Persistence on Mesos with Kafka, MySQL, Cassandra, HDFS and More!
Containerized Data Persistence on Mesos
Containerized Data Persistence on Mesos
Joe Stein
Datadog is a monitoring as a service. We write software and we sell as service. We love customer support.
Customer Ops: DevOps <3 customer support
Customer Ops: DevOps <3 customer support
Datadog
Alexis goals this presentation are three-fold: 1) Dive into key Docker metrics 2) Explain operational complexity. In other words I want to take what we have seen on the field and show you where the pain points will be. 3) Rethink monitoring of Docker containers. The old tricks won’t work.
Monitoring Docker containers - Docker NYC Feb 2015
Monitoring Docker containers - Docker NYC Feb 2015
Datadog
Modern systems in production rely on decades of computer science research. Over time, new architectural patterns emerge that enable more resilient and robust systems. In this talk, we'll discuss some of these patterns from systems I've worked on at Google and the related work that provide insights into the motivations behind them.
QCon NYC: Distributed systems in practice, in theory
QCon NYC: Distributed systems in practice, in theory
Aysylu Greenberg
Best practices for monitoring your IT infrastructure using StatsD. Find dashboard examples here: https://p.datadoghq.com/sb/9b246c4ade Monitor StatsD easily with Datadog. Learn more at https://www.datadoghq.com
Effective monitoring with StatsD
Effective monitoring with StatsD
Datadog
Viewers also liked
(13)
Just enough web ops for web developers
Just enough web ops for web developers
B+Tree Indexes and InnoDB
B+Tree Indexes and InnoDB
Things to think about while architecting azure solutions
Things to think about while architecting azure solutions
I <3 graphs in 20 slides
I <3 graphs in 20 slides
User Centred Design (UCD) Presentation
User Centred Design (UCD) Presentation
Soa
Soa
Deep dive into Nagios analytics
Deep dive into Nagios analytics
Building reliable systems from unreliable components
Building reliable systems from unreliable components
Containerized Data Persistence on Mesos
Containerized Data Persistence on Mesos
Customer Ops: DevOps <3 customer support
Customer Ops: DevOps <3 customer support
Monitoring Docker containers - Docker NYC Feb 2015
Monitoring Docker containers - Docker NYC Feb 2015
QCon NYC: Distributed systems in practice, in theory
QCon NYC: Distributed systems in practice, in theory
Effective monitoring with StatsD
Effective monitoring with StatsD
More from s1170203
Burasura
Burasura
s1170203
Brine11
Brine11
s1170203
Cmap102
Cmap102
s1170203
Cmap102
Cmap102
s1170203
Cmap102
Cmap102
s1170203
Cmap102
Cmap102
s1170203
Cmap10
Cmap10
s1170203
Brine9
Brine9
s1170203
Cmap82
Cmap82
s1170203
Cmap8
Cmap8
s1170203
Johnjohn6
Johnjohn6
s1170203
Johnjohn6
Johnjohn6
s1170203
Johnjohn6
Johnjohn6
s1170203
Johnjohn6(1)
Johnjohn6(1)
s1170203
Jon22
Jon22
s1170203
Jon22
Jon22
s1170203
More from s1170203
(16)
Burasura
Burasura
Brine11
Brine11
Cmap102
Cmap102
Cmap102
Cmap102
Cmap102
Cmap102
Cmap102
Cmap102
Cmap10
Cmap10
Brine9
Brine9
Cmap82
Cmap82
Cmap8
Cmap8
Johnjohn6
Johnjohn6
Johnjohn6
Johnjohn6
Johnjohn6
Johnjohn6
Johnjohn6(1)
Johnjohn6(1)
Jon22
Jon22
Jon22
Jon22
Download now