SlideShare a Scribd company logo
Tales from
Taming Tail Latencies
Deepankar Reddy, Ishan Chhabra
Rocket Fuel Inc.
Recap : Rocket Fuel Inc
◦ Programmatic Ad Tech firm
◦ Eval(s) ~100B Ad opportunities daily
◦ Each eval has strict SLA of 100 ms
Recap : Blackbird @RocketFuel
Recap : Blackbird
Scalable collection storage API
▫ Backed by HBase
▫ Append only collections
Recap : Blackbird
Stores rich anonymized user data
◦ Historical behavior - Ads viewed and clicked,
pages visited, etc.
◦ Interest - Third party and learned
interests
◦ Feature vectors for various ML models
◦ etc ..
Blackbird Workload
◦ 80% Read - 20% Write workload
◦ 90 - 95 % cache hit ratio
◦ Record size (compressed protobufs) :
▫ Mean : 11 KB
▫ Median : 8 KB
Blackbird Workload
◦ 14 TB of Unreplicated Data
◦ 60 - 70 Nodes in a Data Center
◦ Strict SLA of 40 ms
◦ Current SLA violation rate @ ~2 %
Blackbird Workload
◦ Read latencies:
▫ Mean, Median : < 1ms
▫ 95th perc : 25 ms
◦ Write latencies:
▫ Mean, Median : < 1ms
▫ 95th perc : 1 ms
Blackbird WorkLoad
Rocket Fuel Moment Scoring Pipeline
. . . . . . . . . . . . . . . . . .
. . . . . . . . . . . . . . . . . .
BlackBird
Service
... ... ...
Anon.
UserId
Tab
People Based Marketing
◦ Efforts to cluster identities of user
▫ Probabilistic using Machine Learning
▫ Deterministic via integrations
◦ Reduces information loss
◦ Aligns with user’s buying patterns
New Blackbird Queries
Rocket Fuel Moment Scoring Pipeline
. . . . . . . . . . . . . . . . . . . . . .
BlackBird Data Service
Anon
UserID
UserID
Clusters
Request for All IDs in
the cluster
Translated SLA
X axis :
SLA violation
rate for a
single read
Y axis :
New SLA
violation rate for
multiple reads
Observations
Server Observed Read Latency
99P ~ 25 ms
95P ~ 8 ms
Client Observed Read Latency
99P > 100MS
95P > 25MS
Why the difference?
Network Level Time (ms)
Server Side Time (ms)
RS Heap size (MBs)
Observations
◦ Client / Server times match
◦ Except during the longer mixed GCs
Co-ordinated omission
© Borrowed from Gil Tene How Not to Measure Latency QCON SF 2015
Co-ordinated omission
© Borrowed from Gil Tene How Not to Measure Latency QCON SF 2015
Co-ordinated omission
◦ ~ Censorship of Data
▫ Not random but co-ordinated omission
◦ Censorship during a GC*
▫ Queueing time in app
▫ Time sitting in the network buffer
▫ Time in the responder
*with normal latencies
Co-ordinated omission
Server Side Latencies
◦ GCs don’t show up on inprocess latencies
◦ More events of “request pipeline”, more
probability to capture a GC
▫ Add time in network buffer
▫ Add time in responder
▫ Add time in transit etc...
Co-ordinated omission
Client Side Latencies
◦ Very important to slice requests per
server to see the patterns
◦ Even the will miss Young GCs
▫ Problems with moving avgs (Yammer metrics)
Causes for Peaks
What’s causing Mixed GC :
Heap size MB
Cache size GB
~25GB
~4-5 GB
Around 5 times in a GC cycle
5 x 5 = 25
Causes for Peaks
Mixed GC:
◦ LRU on heap is bad for GC
▫ All evicted blocks will be in Old Gen
▫ Old Gen cleanup => Mixed GC
◦ No GC optimizations can fix this
Why peaks are bad
◦ Not so bad in normal use cases
▫ If peaks occur rarely
◦ Bad enough in clustered reads
◦ Decreases times for other parts in our
Moment Scoring Pipeline
Why peaks are bad
Why peaks are bad
Why peaks are bad
Fix is to move to Off Heap
for LRU cache
Off Heap Block Cache
◦ An array of byte buffers (4MB size)
◦ Offset based free space management
◦ Re-use the buffers by overwriting
◦ HBaseCon Talk at 3:10-3:50pm
Off Heap Advantages
◦ Can scale to higher memory
▫ Reserving less for promotion failures
◦ Potentially could be on SSDs/NVMes
▫ Allows us to use more denser boxes
Off Heap Tests
Work for moving Off Heap
◦ HBase 1.0 copies data onto Heap
◦ Leads to too much Garbage
▫ GCing once every 2 - 3 secs
Work for moving Off Heap
◦ HBase 2.0 fixes this
▫ HBASE-11425
◦ Pulled patches from upstream on 1.1
◦ Encountered a few issues
▫ HBASE-15064, HBASE-15525 . . .
What about Young GC ?
◦ Any GC time above your SLA is bad
◦ Hard to see this with Yammer metrics
▫ Sliding Window smoothing
▫ Eliminates peaks in percentiles
◦ Use histograms without Averaging
▫ HDRHistogram / HBase-2.0 Fast Histogram ...
What about Young GC ?
HDR Histogram
Yammer Histogram
Fixing measurements ?
More (precise) metrics
◦ Percentiles are confusing
▫ Very hard to reason sometimes
◦ Used SLA based violation counts
▫ Ex:- Time Bucketed counts
Fixing Young GC
How to fix Young GC ?
◦ Tried to get GC pause times << SLA
◦ Not possible with current heap sizes
◦ Need RS with smaller heaps
▫ Less promotion work
▫ Less Young cleanup work
How to fix Young GC ?
◦ Have to run a lot of RegionServers
▫ Commodity servers are multi core now with
large RAM
◦ Slider makes this easier
◦ Load Balancing issue
How to fix Young GC ?
◦ Smaller GC pauses => more freq GCs
◦ Need to reduce garbage gen. also
How to fix Young GC ?
Reducing Garbage generation
◦ Memstore / ConcurrentSkipList oppty.
◦ To use or not use Data Block Encoding
◦ Compress / Decompress Opts.
◦ Misc….
How to fix Young GC ?
Results
How to fix Young GC ?
Results
Reads going to Disk
Processing Times
Processing Times
◦ Huge bump between 95 & 99 percs
◦ Cache hit ratio 95 %
◦ We are going to disks for these
How can we fix this gap?
1. Increase cache hit ratio
2. Make disk reads faster
Exploring SSD & NVMe
Increasing Cache Hit Ratio
Using NVME cards
◦ ~ SSD higher throughput due to PCIe
◦ Support already in Bucket Cache
◦ Cost effective w.r.t RAM
▫ RAM ~ $10 per GB, NVMe ~ $1 per GB
Disk throughputs
Exploring move to SSDs
◦ SSDs cost ~ SAS disks costs
▫ Depends on SSD grade
▫ Including SAS backplane costs
◦ HDFS can store 1 replica in SSDs,
other 2 in HDDs
Thanks!
ANY QUESTIONS?
Addendum
Newer SLA Requirements
◦ Older single read SLA is not enough
▫ 98% translate to 90% in newer model
◦ Top two areas of improvements
▫ Garbage Collection in JVM
▫ Reads going to Disks
How to fix Young GC ?
RS with 14GB heap
pauses < 10ms
SLA violation counts
How to fix Young GC ?
Results (sunday)
How to fix Young GC ?
Results (sunday)
Off Heap Tests

More Related Content

What's hot

HBaseConAsia2018 Track1-7: HDFS optimizations for HBase at Xiaomi
HBaseConAsia2018 Track1-7: HDFS optimizations for HBase at XiaomiHBaseConAsia2018 Track1-7: HDFS optimizations for HBase at Xiaomi
HBaseConAsia2018 Track1-7: HDFS optimizations for HBase at Xiaomi
Michael Stack
 
HBaseCon2017 Improving HBase availability in a multi tenant environment
HBaseCon2017 Improving HBase availability in a multi tenant environmentHBaseCon2017 Improving HBase availability in a multi tenant environment
HBaseCon2017 Improving HBase availability in a multi tenant environment
HBaseCon
 
Rolling Out Apache HBase for Mobile Offerings at Visa
Rolling Out Apache HBase for Mobile Offerings at Visa Rolling Out Apache HBase for Mobile Offerings at Visa
Rolling Out Apache HBase for Mobile Offerings at Visa
HBaseCon
 
Apache HBase, Accelerated: In-Memory Flush and Compaction
Apache HBase, Accelerated: In-Memory Flush and Compaction Apache HBase, Accelerated: In-Memory Flush and Compaction
Apache HBase, Accelerated: In-Memory Flush and Compaction
HBaseCon
 
Accordion HBaseCon 2017
Accordion HBaseCon 2017Accordion HBaseCon 2017
Accordion HBaseCon 2017
Edward Bortnikov
 
Off-heaping the Apache HBase Read Path
Off-heaping the Apache HBase Read Path Off-heaping the Apache HBase Read Path
Off-heaping the Apache HBase Read Path
HBaseCon
 
OpenTSDB: HBaseCon2017
OpenTSDB: HBaseCon2017OpenTSDB: HBaseCon2017
OpenTSDB: HBaseCon2017
HBaseCon
 
Date-tiered Compaction Policy for Time-series Data
Date-tiered Compaction Policy for Time-series DataDate-tiered Compaction Policy for Time-series Data
Date-tiered Compaction Policy for Time-series Data
HBaseCon
 
HBaseCon2017 Transactions in HBase
HBaseCon2017 Transactions in HBaseHBaseCon2017 Transactions in HBase
HBaseCon2017 Transactions in HBase
HBaseCon
 
HBaseCon2017 HBase at Xiaomi
HBaseCon2017 HBase at XiaomiHBaseCon2017 HBase at Xiaomi
HBaseCon2017 HBase at Xiaomi
HBaseCon
 
Argus Production Monitoring at Salesforce
Argus Production Monitoring at SalesforceArgus Production Monitoring at Salesforce
Argus Production Monitoring at Salesforce
HBaseCon
 
HBaseCon2017 Highly-Available HBase
HBaseCon2017 Highly-Available HBaseHBaseCon2017 Highly-Available HBase
HBaseCon2017 Highly-Available HBase
HBaseCon
 
Kafka Summit SF 2017 - Infrastructure for Streaming Applications
Kafka Summit SF 2017 - Infrastructure for Streaming Applications Kafka Summit SF 2017 - Infrastructure for Streaming Applications
Kafka Summit SF 2017 - Infrastructure for Streaming Applications
confluent
 
Hadoop Meetup Jan 2019 - Dynamometer and a Case Study in NameNode GC
Hadoop Meetup Jan 2019 - Dynamometer and a Case Study in NameNode GCHadoop Meetup Jan 2019 - Dynamometer and a Case Study in NameNode GC
Hadoop Meetup Jan 2019 - Dynamometer and a Case Study in NameNode GC
Erik Krogen
 
HBaseCon2017 Removable singularity: a story of HBase upgrade in Pinterest
HBaseCon2017 Removable singularity: a story of HBase upgrade in PinterestHBaseCon2017 Removable singularity: a story of HBase upgrade in Pinterest
HBaseCon2017 Removable singularity: a story of HBase upgrade in Pinterest
HBaseCon
 
HBaseCon 2013: How (and Why) Phoenix Puts the SQL Back into NoSQL
HBaseCon 2013: How (and Why) Phoenix Puts the SQL Back into NoSQLHBaseCon 2013: How (and Why) Phoenix Puts the SQL Back into NoSQL
HBaseCon 2013: How (and Why) Phoenix Puts the SQL Back into NoSQL
Cloudera, Inc.
 
HBaseCon 2015: Taming GC Pauses for Large Java Heap in HBase
HBaseCon 2015: Taming GC Pauses for Large Java Heap in HBaseHBaseCon 2015: Taming GC Pauses for Large Java Heap in HBase
HBaseCon 2015: Taming GC Pauses for Large Java Heap in HBase
HBaseCon
 
HBaseCon2017 Quanta: Quora's hierarchical counting system on HBase
HBaseCon2017 Quanta: Quora's hierarchical counting system on HBaseHBaseCon2017 Quanta: Quora's hierarchical counting system on HBase
HBaseCon2017 Quanta: Quora's hierarchical counting system on HBase
HBaseCon
 
HBaseConAsia2018 Track1-1: Use CCSMap to improve HBase YGC time
HBaseConAsia2018 Track1-1: Use CCSMap to improve HBase YGC timeHBaseConAsia2018 Track1-1: Use CCSMap to improve HBase YGC time
HBaseConAsia2018 Track1-1: Use CCSMap to improve HBase YGC time
Michael Stack
 
Kafka on ZFS: Better Living Through Filesystems
Kafka on ZFS: Better Living Through Filesystems Kafka on ZFS: Better Living Through Filesystems
Kafka on ZFS: Better Living Through Filesystems
confluent
 

What's hot (20)

HBaseConAsia2018 Track1-7: HDFS optimizations for HBase at Xiaomi
HBaseConAsia2018 Track1-7: HDFS optimizations for HBase at XiaomiHBaseConAsia2018 Track1-7: HDFS optimizations for HBase at Xiaomi
HBaseConAsia2018 Track1-7: HDFS optimizations for HBase at Xiaomi
 
HBaseCon2017 Improving HBase availability in a multi tenant environment
HBaseCon2017 Improving HBase availability in a multi tenant environmentHBaseCon2017 Improving HBase availability in a multi tenant environment
HBaseCon2017 Improving HBase availability in a multi tenant environment
 
Rolling Out Apache HBase for Mobile Offerings at Visa
Rolling Out Apache HBase for Mobile Offerings at Visa Rolling Out Apache HBase for Mobile Offerings at Visa
Rolling Out Apache HBase for Mobile Offerings at Visa
 
Apache HBase, Accelerated: In-Memory Flush and Compaction
Apache HBase, Accelerated: In-Memory Flush and Compaction Apache HBase, Accelerated: In-Memory Flush and Compaction
Apache HBase, Accelerated: In-Memory Flush and Compaction
 
Accordion HBaseCon 2017
Accordion HBaseCon 2017Accordion HBaseCon 2017
Accordion HBaseCon 2017
 
Off-heaping the Apache HBase Read Path
Off-heaping the Apache HBase Read Path Off-heaping the Apache HBase Read Path
Off-heaping the Apache HBase Read Path
 
OpenTSDB: HBaseCon2017
OpenTSDB: HBaseCon2017OpenTSDB: HBaseCon2017
OpenTSDB: HBaseCon2017
 
Date-tiered Compaction Policy for Time-series Data
Date-tiered Compaction Policy for Time-series DataDate-tiered Compaction Policy for Time-series Data
Date-tiered Compaction Policy for Time-series Data
 
HBaseCon2017 Transactions in HBase
HBaseCon2017 Transactions in HBaseHBaseCon2017 Transactions in HBase
HBaseCon2017 Transactions in HBase
 
HBaseCon2017 HBase at Xiaomi
HBaseCon2017 HBase at XiaomiHBaseCon2017 HBase at Xiaomi
HBaseCon2017 HBase at Xiaomi
 
Argus Production Monitoring at Salesforce
Argus Production Monitoring at SalesforceArgus Production Monitoring at Salesforce
Argus Production Monitoring at Salesforce
 
HBaseCon2017 Highly-Available HBase
HBaseCon2017 Highly-Available HBaseHBaseCon2017 Highly-Available HBase
HBaseCon2017 Highly-Available HBase
 
Kafka Summit SF 2017 - Infrastructure for Streaming Applications
Kafka Summit SF 2017 - Infrastructure for Streaming Applications Kafka Summit SF 2017 - Infrastructure for Streaming Applications
Kafka Summit SF 2017 - Infrastructure for Streaming Applications
 
Hadoop Meetup Jan 2019 - Dynamometer and a Case Study in NameNode GC
Hadoop Meetup Jan 2019 - Dynamometer and a Case Study in NameNode GCHadoop Meetup Jan 2019 - Dynamometer and a Case Study in NameNode GC
Hadoop Meetup Jan 2019 - Dynamometer and a Case Study in NameNode GC
 
HBaseCon2017 Removable singularity: a story of HBase upgrade in Pinterest
HBaseCon2017 Removable singularity: a story of HBase upgrade in PinterestHBaseCon2017 Removable singularity: a story of HBase upgrade in Pinterest
HBaseCon2017 Removable singularity: a story of HBase upgrade in Pinterest
 
HBaseCon 2013: How (and Why) Phoenix Puts the SQL Back into NoSQL
HBaseCon 2013: How (and Why) Phoenix Puts the SQL Back into NoSQLHBaseCon 2013: How (and Why) Phoenix Puts the SQL Back into NoSQL
HBaseCon 2013: How (and Why) Phoenix Puts the SQL Back into NoSQL
 
HBaseCon 2015: Taming GC Pauses for Large Java Heap in HBase
HBaseCon 2015: Taming GC Pauses for Large Java Heap in HBaseHBaseCon 2015: Taming GC Pauses for Large Java Heap in HBase
HBaseCon 2015: Taming GC Pauses for Large Java Heap in HBase
 
HBaseCon2017 Quanta: Quora's hierarchical counting system on HBase
HBaseCon2017 Quanta: Quora's hierarchical counting system on HBaseHBaseCon2017 Quanta: Quora's hierarchical counting system on HBase
HBaseCon2017 Quanta: Quora's hierarchical counting system on HBase
 
HBaseConAsia2018 Track1-1: Use CCSMap to improve HBase YGC time
HBaseConAsia2018 Track1-1: Use CCSMap to improve HBase YGC timeHBaseConAsia2018 Track1-1: Use CCSMap to improve HBase YGC time
HBaseConAsia2018 Track1-1: Use CCSMap to improve HBase YGC time
 
Kafka on ZFS: Better Living Through Filesystems
Kafka on ZFS: Better Living Through Filesystems Kafka on ZFS: Better Living Through Filesystems
Kafka on ZFS: Better Living Through Filesystems
 

Viewers also liked

HBaseCon 2015: HBase at Scale in an Online and High-Demand Environment
HBaseCon 2015: HBase at Scale in an Online and  High-Demand EnvironmentHBaseCon 2015: HBase at Scale in an Online and  High-Demand Environment
HBaseCon 2015: HBase at Scale in an Online and High-Demand Environment
HBaseCon
 
Apache HBase at Airbnb
Apache HBase at Airbnb Apache HBase at Airbnb
Apache HBase at Airbnb
HBaseCon
 
Improvements to Apache HBase and Its Applications in Alibaba Search
Improvements to Apache HBase and Its Applications in Alibaba Search Improvements to Apache HBase and Its Applications in Alibaba Search
Improvements to Apache HBase and Its Applications in Alibaba Search
HBaseCon
 
Apache HBase - Just the Basics
Apache HBase - Just the BasicsApache HBase - Just the Basics
Apache HBase - Just the Basics
HBaseCon
 
Keynote: Welcome Message/State of Apache HBase
Keynote: Welcome Message/State of Apache HBase Keynote: Welcome Message/State of Apache HBase
Keynote: Welcome Message/State of Apache HBase
HBaseCon
 
HBaseCon 2015: Elastic HBase on Mesos
HBaseCon 2015: Elastic HBase on MesosHBaseCon 2015: Elastic HBase on Mesos
HBaseCon 2015: Elastic HBase on Mesos
HBaseCon
 
HBaseCon 2015: Solving HBase Performance Problems with Apache HTrace
HBaseCon 2015: Solving HBase Performance Problems with Apache HTraceHBaseCon 2015: Solving HBase Performance Problems with Apache HTrace
HBaseCon 2015: Solving HBase Performance Problems with Apache HTrace
HBaseCon
 
HBaseCon 2015: HBase Performance Tuning @ Salesforce
HBaseCon 2015: HBase Performance Tuning @ SalesforceHBaseCon 2015: HBase Performance Tuning @ Salesforce
HBaseCon 2015: HBase Performance Tuning @ Salesforce
HBaseCon
 
Apache HBase in the Enterprise Data Hub at Cerner
Apache HBase in the Enterprise Data Hub at CernerApache HBase in the Enterprise Data Hub at Cerner
Apache HBase in the Enterprise Data Hub at Cerner
HBaseCon
 
Apache Spark on Apache HBase: Current and Future
Apache Spark on Apache HBase: Current and Future Apache Spark on Apache HBase: Current and Future
Apache Spark on Apache HBase: Current and Future
HBaseCon
 
HBaseCon 2015: HBase @ Flipboard
HBaseCon 2015: HBase @ FlipboardHBaseCon 2015: HBase @ Flipboard
HBaseCon 2015: HBase @ Flipboard
HBaseCon
 
Breaking the Sound Barrier with Persistent Memory
Breaking the Sound Barrier with Persistent Memory Breaking the Sound Barrier with Persistent Memory
Breaking the Sound Barrier with Persistent Memory
HBaseCon
 
Apache HBase Improvements and Practices at Xiaomi
Apache HBase Improvements and Practices at XiaomiApache HBase Improvements and Practices at Xiaomi
Apache HBase Improvements and Practices at Xiaomi
HBaseCon
 
Keynote: The Future of Apache HBase
Keynote: The Future of Apache HBaseKeynote: The Future of Apache HBase
Keynote: The Future of Apache HBase
HBaseCon
 
HBaseCon 2015: S2Graph - A Large-scale Graph Database with HBase
HBaseCon 2015: S2Graph - A Large-scale Graph Database with HBaseHBaseCon 2015: S2Graph - A Large-scale Graph Database with HBase
HBaseCon 2015: S2Graph - A Large-scale Graph Database with HBase
HBaseCon
 
Apache Phoenix: Use Cases and New Features
Apache Phoenix: Use Cases and New FeaturesApache Phoenix: Use Cases and New Features
Apache Phoenix: Use Cases and New Features
HBaseCon
 
Optimizing Apache HBase for Cloud Storage in Microsoft Azure HDInsight
Optimizing Apache HBase for Cloud Storage in Microsoft Azure HDInsightOptimizing Apache HBase for Cloud Storage in Microsoft Azure HDInsight
Optimizing Apache HBase for Cloud Storage in Microsoft Azure HDInsight
HBaseCon
 
Apache Argus - How do I secure my entire Hadoop cluster? Olivier Renault @ Ho...
Apache Argus - How do I secure my entire Hadoop cluster? Olivier Renault @ Ho...Apache Argus - How do I secure my entire Hadoop cluster? Olivier Renault @ Ho...
Apache Argus - How do I secure my entire Hadoop cluster? Olivier Renault @ Ho...
huguk
 
Argus Production Monitoring at Salesforce
Argus Production Monitoring at Salesforce Argus Production Monitoring at Salesforce
Argus Production Monitoring at Salesforce
HBaseCon
 
Time-Series Apache HBase
Time-Series Apache HBaseTime-Series Apache HBase
Time-Series Apache HBase
HBaseCon
 

Viewers also liked (20)

HBaseCon 2015: HBase at Scale in an Online and High-Demand Environment
HBaseCon 2015: HBase at Scale in an Online and  High-Demand EnvironmentHBaseCon 2015: HBase at Scale in an Online and  High-Demand Environment
HBaseCon 2015: HBase at Scale in an Online and High-Demand Environment
 
Apache HBase at Airbnb
Apache HBase at Airbnb Apache HBase at Airbnb
Apache HBase at Airbnb
 
Improvements to Apache HBase and Its Applications in Alibaba Search
Improvements to Apache HBase and Its Applications in Alibaba Search Improvements to Apache HBase and Its Applications in Alibaba Search
Improvements to Apache HBase and Its Applications in Alibaba Search
 
Apache HBase - Just the Basics
Apache HBase - Just the BasicsApache HBase - Just the Basics
Apache HBase - Just the Basics
 
Keynote: Welcome Message/State of Apache HBase
Keynote: Welcome Message/State of Apache HBase Keynote: Welcome Message/State of Apache HBase
Keynote: Welcome Message/State of Apache HBase
 
HBaseCon 2015: Elastic HBase on Mesos
HBaseCon 2015: Elastic HBase on MesosHBaseCon 2015: Elastic HBase on Mesos
HBaseCon 2015: Elastic HBase on Mesos
 
HBaseCon 2015: Solving HBase Performance Problems with Apache HTrace
HBaseCon 2015: Solving HBase Performance Problems with Apache HTraceHBaseCon 2015: Solving HBase Performance Problems with Apache HTrace
HBaseCon 2015: Solving HBase Performance Problems with Apache HTrace
 
HBaseCon 2015: HBase Performance Tuning @ Salesforce
HBaseCon 2015: HBase Performance Tuning @ SalesforceHBaseCon 2015: HBase Performance Tuning @ Salesforce
HBaseCon 2015: HBase Performance Tuning @ Salesforce
 
Apache HBase in the Enterprise Data Hub at Cerner
Apache HBase in the Enterprise Data Hub at CernerApache HBase in the Enterprise Data Hub at Cerner
Apache HBase in the Enterprise Data Hub at Cerner
 
Apache Spark on Apache HBase: Current and Future
Apache Spark on Apache HBase: Current and Future Apache Spark on Apache HBase: Current and Future
Apache Spark on Apache HBase: Current and Future
 
HBaseCon 2015: HBase @ Flipboard
HBaseCon 2015: HBase @ FlipboardHBaseCon 2015: HBase @ Flipboard
HBaseCon 2015: HBase @ Flipboard
 
Breaking the Sound Barrier with Persistent Memory
Breaking the Sound Barrier with Persistent Memory Breaking the Sound Barrier with Persistent Memory
Breaking the Sound Barrier with Persistent Memory
 
Apache HBase Improvements and Practices at Xiaomi
Apache HBase Improvements and Practices at XiaomiApache HBase Improvements and Practices at Xiaomi
Apache HBase Improvements and Practices at Xiaomi
 
Keynote: The Future of Apache HBase
Keynote: The Future of Apache HBaseKeynote: The Future of Apache HBase
Keynote: The Future of Apache HBase
 
HBaseCon 2015: S2Graph - A Large-scale Graph Database with HBase
HBaseCon 2015: S2Graph - A Large-scale Graph Database with HBaseHBaseCon 2015: S2Graph - A Large-scale Graph Database with HBase
HBaseCon 2015: S2Graph - A Large-scale Graph Database with HBase
 
Apache Phoenix: Use Cases and New Features
Apache Phoenix: Use Cases and New FeaturesApache Phoenix: Use Cases and New Features
Apache Phoenix: Use Cases and New Features
 
Optimizing Apache HBase for Cloud Storage in Microsoft Azure HDInsight
Optimizing Apache HBase for Cloud Storage in Microsoft Azure HDInsightOptimizing Apache HBase for Cloud Storage in Microsoft Azure HDInsight
Optimizing Apache HBase for Cloud Storage in Microsoft Azure HDInsight
 
Apache Argus - How do I secure my entire Hadoop cluster? Olivier Renault @ Ho...
Apache Argus - How do I secure my entire Hadoop cluster? Olivier Renault @ Ho...Apache Argus - How do I secure my entire Hadoop cluster? Olivier Renault @ Ho...
Apache Argus - How do I secure my entire Hadoop cluster? Olivier Renault @ Ho...
 
Argus Production Monitoring at Salesforce
Argus Production Monitoring at Salesforce Argus Production Monitoring at Salesforce
Argus Production Monitoring at Salesforce
 
Time-Series Apache HBase
Time-Series Apache HBaseTime-Series Apache HBase
Time-Series Apache HBase
 

Similar to Tales from Taming the Long Tail

EVCache: Lowering Costs for a Low Latency Cache with RocksDB
EVCache: Lowering Costs for a Low Latency Cache with RocksDBEVCache: Lowering Costs for a Low Latency Cache with RocksDB
EVCache: Lowering Costs for a Low Latency Cache with RocksDB
Scott Mansfield
 
High Performance Solr and JVM Tuning Strategies used for MapQuest’s Search Ah...
High Performance Solr and JVM Tuning Strategies used for MapQuest’s Search Ah...High Performance Solr and JVM Tuning Strategies used for MapQuest’s Search Ah...
High Performance Solr and JVM Tuning Strategies used for MapQuest’s Search Ah...
Lucidworks
 
MariaDB Server Performance Tuning & Optimization
MariaDB Server Performance Tuning & OptimizationMariaDB Server Performance Tuning & Optimization
MariaDB Server Performance Tuning & Optimization
MariaDB plc
 
Twitter Fatcache
Twitter FatcacheTwitter Fatcache
Twitter Fatcache
its_skm
 
No C-QL (Or how I learned to stop worrying, and love eventual consistency) (N...
No C-QL (Or how I learned to stop worrying, and love eventual consistency) (N...No C-QL (Or how I learned to stop worrying, and love eventual consistency) (N...
No C-QL (Or how I learned to stop worrying, and love eventual consistency) (N...
Brian Brazil
 
CASSANDRA MEETUP - Choosing the right cloud instances for success
CASSANDRA MEETUP - Choosing the right cloud instances for successCASSANDRA MEETUP - Choosing the right cloud instances for success
CASSANDRA MEETUP - Choosing the right cloud instances for success
Erick Ramirez
 
PGConf.ASIA 2019 Bali - Tune Your LInux Box, Not Just PostgreSQL - Ibrar Ahmed
PGConf.ASIA 2019 Bali - Tune Your LInux Box, Not Just PostgreSQL - Ibrar AhmedPGConf.ASIA 2019 Bali - Tune Your LInux Box, Not Just PostgreSQL - Ibrar Ahmed
PGConf.ASIA 2019 Bali - Tune Your LInux Box, Not Just PostgreSQL - Ibrar Ahmed
Equnix Business Solutions
 
AWS Webcast - Cost and Performance Optimization in Amazon RDS
AWS Webcast - Cost and Performance Optimization in Amazon RDSAWS Webcast - Cost and Performance Optimization in Amazon RDS
AWS Webcast - Cost and Performance Optimization in Amazon RDS
Amazon Web Services
 
How to Make SQL Server Go Faster
How to Make SQL Server Go FasterHow to Make SQL Server Go Faster
How to Make SQL Server Go Faster
Brent Ozar
 
Performance Tipping Points - Hitting Hardware Bottlenecks
Performance Tipping Points - Hitting Hardware BottlenecksPerformance Tipping Points - Hitting Hardware Bottlenecks
Performance Tipping Points - Hitting Hardware Bottlenecks
MongoDB
 
Maximizing performance via tuning and optimization
Maximizing performance via tuning and optimizationMaximizing performance via tuning and optimization
Maximizing performance via tuning and optimization
MariaDB plc
 
Maximizing performance via tuning and optimization
Maximizing performance via tuning and optimizationMaximizing performance via tuning and optimization
Maximizing performance via tuning and optimization
MariaDB plc
 
Red Hat Storage Day Seattle: Stabilizing Petabyte Ceph Cluster in OpenStack C...
Red Hat Storage Day Seattle: Stabilizing Petabyte Ceph Cluster in OpenStack C...Red Hat Storage Day Seattle: Stabilizing Petabyte Ceph Cluster in OpenStack C...
Red Hat Storage Day Seattle: Stabilizing Petabyte Ceph Cluster in OpenStack C...
Red_Hat_Storage
 
Right-Sizing your SQL Server Virtual Machine
Right-Sizing your SQL Server Virtual MachineRight-Sizing your SQL Server Virtual Machine
Right-Sizing your SQL Server Virtual Machine
heraflux
 
Application Caching: The Hidden Microservice
Application Caching: The Hidden MicroserviceApplication Caching: The Hidden Microservice
Application Caching: The Hidden Microservice
Scott Mansfield
 
Journey to Stability: Petabyte Ceph Cluster in OpenStack Cloud
Journey to Stability: Petabyte Ceph Cluster in OpenStack CloudJourney to Stability: Petabyte Ceph Cluster in OpenStack Cloud
Journey to Stability: Petabyte Ceph Cluster in OpenStack Cloud
Ceph Community
 
Journey to Stability: Petabyte Ceph Cluster in OpenStack Cloud
Journey to Stability: Petabyte Ceph Cluster in OpenStack CloudJourney to Stability: Petabyte Ceph Cluster in OpenStack Cloud
Journey to Stability: Petabyte Ceph Cluster in OpenStack Cloud
Patrick McGarry
 
Netflix - Realtime Impression Store
Netflix - Realtime Impression Store Netflix - Realtime Impression Store
Netflix - Realtime Impression Store
Nitin S
 
Why is My Stream Processing Job Slow? with Xavier Leaute
Why is My Stream Processing Job Slow? with Xavier LeauteWhy is My Stream Processing Job Slow? with Xavier Leaute
Why is My Stream Processing Job Slow? with Xavier Leaute
Databricks
 
How we got to 1 millisecond latency in 99% under repair, compaction, and flus...
How we got to 1 millisecond latency in 99% under repair, compaction, and flus...How we got to 1 millisecond latency in 99% under repair, compaction, and flus...
How we got to 1 millisecond latency in 99% under repair, compaction, and flus...
ScyllaDB
 

Similar to Tales from Taming the Long Tail (20)

EVCache: Lowering Costs for a Low Latency Cache with RocksDB
EVCache: Lowering Costs for a Low Latency Cache with RocksDBEVCache: Lowering Costs for a Low Latency Cache with RocksDB
EVCache: Lowering Costs for a Low Latency Cache with RocksDB
 
High Performance Solr and JVM Tuning Strategies used for MapQuest’s Search Ah...
High Performance Solr and JVM Tuning Strategies used for MapQuest’s Search Ah...High Performance Solr and JVM Tuning Strategies used for MapQuest’s Search Ah...
High Performance Solr and JVM Tuning Strategies used for MapQuest’s Search Ah...
 
MariaDB Server Performance Tuning & Optimization
MariaDB Server Performance Tuning & OptimizationMariaDB Server Performance Tuning & Optimization
MariaDB Server Performance Tuning & Optimization
 
Twitter Fatcache
Twitter FatcacheTwitter Fatcache
Twitter Fatcache
 
No C-QL (Or how I learned to stop worrying, and love eventual consistency) (N...
No C-QL (Or how I learned to stop worrying, and love eventual consistency) (N...No C-QL (Or how I learned to stop worrying, and love eventual consistency) (N...
No C-QL (Or how I learned to stop worrying, and love eventual consistency) (N...
 
CASSANDRA MEETUP - Choosing the right cloud instances for success
CASSANDRA MEETUP - Choosing the right cloud instances for successCASSANDRA MEETUP - Choosing the right cloud instances for success
CASSANDRA MEETUP - Choosing the right cloud instances for success
 
PGConf.ASIA 2019 Bali - Tune Your LInux Box, Not Just PostgreSQL - Ibrar Ahmed
PGConf.ASIA 2019 Bali - Tune Your LInux Box, Not Just PostgreSQL - Ibrar AhmedPGConf.ASIA 2019 Bali - Tune Your LInux Box, Not Just PostgreSQL - Ibrar Ahmed
PGConf.ASIA 2019 Bali - Tune Your LInux Box, Not Just PostgreSQL - Ibrar Ahmed
 
AWS Webcast - Cost and Performance Optimization in Amazon RDS
AWS Webcast - Cost and Performance Optimization in Amazon RDSAWS Webcast - Cost and Performance Optimization in Amazon RDS
AWS Webcast - Cost and Performance Optimization in Amazon RDS
 
How to Make SQL Server Go Faster
How to Make SQL Server Go FasterHow to Make SQL Server Go Faster
How to Make SQL Server Go Faster
 
Performance Tipping Points - Hitting Hardware Bottlenecks
Performance Tipping Points - Hitting Hardware BottlenecksPerformance Tipping Points - Hitting Hardware Bottlenecks
Performance Tipping Points - Hitting Hardware Bottlenecks
 
Maximizing performance via tuning and optimization
Maximizing performance via tuning and optimizationMaximizing performance via tuning and optimization
Maximizing performance via tuning and optimization
 
Maximizing performance via tuning and optimization
Maximizing performance via tuning and optimizationMaximizing performance via tuning and optimization
Maximizing performance via tuning and optimization
 
Red Hat Storage Day Seattle: Stabilizing Petabyte Ceph Cluster in OpenStack C...
Red Hat Storage Day Seattle: Stabilizing Petabyte Ceph Cluster in OpenStack C...Red Hat Storage Day Seattle: Stabilizing Petabyte Ceph Cluster in OpenStack C...
Red Hat Storage Day Seattle: Stabilizing Petabyte Ceph Cluster in OpenStack C...
 
Right-Sizing your SQL Server Virtual Machine
Right-Sizing your SQL Server Virtual MachineRight-Sizing your SQL Server Virtual Machine
Right-Sizing your SQL Server Virtual Machine
 
Application Caching: The Hidden Microservice
Application Caching: The Hidden MicroserviceApplication Caching: The Hidden Microservice
Application Caching: The Hidden Microservice
 
Journey to Stability: Petabyte Ceph Cluster in OpenStack Cloud
Journey to Stability: Petabyte Ceph Cluster in OpenStack CloudJourney to Stability: Petabyte Ceph Cluster in OpenStack Cloud
Journey to Stability: Petabyte Ceph Cluster in OpenStack Cloud
 
Journey to Stability: Petabyte Ceph Cluster in OpenStack Cloud
Journey to Stability: Petabyte Ceph Cluster in OpenStack CloudJourney to Stability: Petabyte Ceph Cluster in OpenStack Cloud
Journey to Stability: Petabyte Ceph Cluster in OpenStack Cloud
 
Netflix - Realtime Impression Store
Netflix - Realtime Impression Store Netflix - Realtime Impression Store
Netflix - Realtime Impression Store
 
Why is My Stream Processing Job Slow? with Xavier Leaute
Why is My Stream Processing Job Slow? with Xavier LeauteWhy is My Stream Processing Job Slow? with Xavier Leaute
Why is My Stream Processing Job Slow? with Xavier Leaute
 
How we got to 1 millisecond latency in 99% under repair, compaction, and flus...
How we got to 1 millisecond latency in 99% under repair, compaction, and flus...How we got to 1 millisecond latency in 99% under repair, compaction, and flus...
How we got to 1 millisecond latency in 99% under repair, compaction, and flus...
 

More from HBaseCon

hbaseconasia2017: HBase on Beam
hbaseconasia2017: HBase on Beamhbaseconasia2017: HBase on Beam
hbaseconasia2017: HBase on Beam
HBaseCon
 
hbaseconasia2017: HBase Disaster Recovery Solution at Huawei
hbaseconasia2017: HBase Disaster Recovery Solution at Huaweihbaseconasia2017: HBase Disaster Recovery Solution at Huawei
hbaseconasia2017: HBase Disaster Recovery Solution at Huawei
HBaseCon
 
hbaseconasia2017: Removable singularity: a story of HBase upgrade in Pinterest
hbaseconasia2017: Removable singularity: a story of HBase upgrade in Pinteresthbaseconasia2017: Removable singularity: a story of HBase upgrade in Pinterest
hbaseconasia2017: Removable singularity: a story of HBase upgrade in Pinterest
HBaseCon
 
hbaseconasia2017: HareQL:快速HBase查詢工具的發展過程
hbaseconasia2017: HareQL:快速HBase查詢工具的發展過程hbaseconasia2017: HareQL:快速HBase查詢工具的發展過程
hbaseconasia2017: HareQL:快速HBase查詢工具的發展過程
HBaseCon
 
hbaseconasia2017: Apache HBase at Netease
hbaseconasia2017: Apache HBase at Neteasehbaseconasia2017: Apache HBase at Netease
hbaseconasia2017: Apache HBase at Netease
HBaseCon
 
hbaseconasia2017: HBase在Hulu的使用和实践
hbaseconasia2017: HBase在Hulu的使用和实践hbaseconasia2017: HBase在Hulu的使用和实践
hbaseconasia2017: HBase在Hulu的使用和实践
HBaseCon
 
hbaseconasia2017: 基于HBase的企业级大数据平台
hbaseconasia2017: 基于HBase的企业级大数据平台hbaseconasia2017: 基于HBase的企业级大数据平台
hbaseconasia2017: 基于HBase的企业级大数据平台
HBaseCon
 
hbaseconasia2017: HBase at JD.com
hbaseconasia2017: HBase at JD.comhbaseconasia2017: HBase at JD.com
hbaseconasia2017: HBase at JD.com
HBaseCon
 
hbaseconasia2017: Large scale data near-line loading method and architecture
hbaseconasia2017: Large scale data near-line loading method and architecturehbaseconasia2017: Large scale data near-line loading method and architecture
hbaseconasia2017: Large scale data near-line loading method and architecture
HBaseCon
 
hbaseconasia2017: Ecosystems with HBase and CloudTable service at Huawei
hbaseconasia2017: Ecosystems with HBase and CloudTable service at Huaweihbaseconasia2017: Ecosystems with HBase and CloudTable service at Huawei
hbaseconasia2017: Ecosystems with HBase and CloudTable service at Huawei
HBaseCon
 
hbaseconasia2017: hbase-2.0.0
hbaseconasia2017: hbase-2.0.0hbaseconasia2017: hbase-2.0.0
hbaseconasia2017: hbase-2.0.0
HBaseCon
 
HBaseCon2017 Democratizing HBase
HBaseCon2017 Democratizing HBaseHBaseCon2017 Democratizing HBase
HBaseCon2017 Democratizing HBase
HBaseCon
 
HBaseCon2017 Apache HBase at Didi
HBaseCon2017 Apache HBase at DidiHBaseCon2017 Apache HBase at Didi
HBaseCon2017 Apache HBase at Didi
HBaseCon
 
HBaseCon2017 Spark HBase Connector: Feature Rich and Efficient Access to HBas...
HBaseCon2017 Spark HBase Connector: Feature Rich and Efficient Access to HBas...HBaseCon2017 Spark HBase Connector: Feature Rich and Efficient Access to HBas...
HBaseCon2017 Spark HBase Connector: Feature Rich and Efficient Access to HBas...
HBaseCon
 
HBaseCon2017 Efficient and portable data processing with Apache Beam and HBase
HBaseCon2017 Efficient and portable data processing with Apache Beam and HBaseHBaseCon2017 Efficient and portable data processing with Apache Beam and HBase
HBaseCon2017 Efficient and portable data processing with Apache Beam and HBase
HBaseCon
 
HBaseCon2017 HBase/Phoenix @ Scale @ Salesforce
HBaseCon2017 HBase/Phoenix @ Scale @ SalesforceHBaseCon2017 HBase/Phoenix @ Scale @ Salesforce
HBaseCon2017 HBase/Phoenix @ Scale @ Salesforce
HBaseCon
 
HBaseCon2017 Community-Driven Graphs with JanusGraph
HBaseCon2017 Community-Driven Graphs with JanusGraphHBaseCon2017 Community-Driven Graphs with JanusGraph
HBaseCon2017 Community-Driven Graphs with JanusGraph
HBaseCon
 
HBaseCon2017 Warp 10, a novel approach to managing and analyzing time series ...
HBaseCon2017 Warp 10, a novel approach to managing and analyzing time series ...HBaseCon2017 Warp 10, a novel approach to managing and analyzing time series ...
HBaseCon2017 Warp 10, a novel approach to managing and analyzing time series ...
HBaseCon
 
HBaseCon2017 Analyzing cryptocurrencies in real time with hBase, Kafka and St...
HBaseCon2017 Analyzing cryptocurrencies in real time with hBase, Kafka and St...HBaseCon2017 Analyzing cryptocurrencies in real time with hBase, Kafka and St...
HBaseCon2017 Analyzing cryptocurrencies in real time with hBase, Kafka and St...
HBaseCon
 
HBaseCon2017 Achieving HBase Multi-Tenancy with RegionServer Groups and Favor...
HBaseCon2017 Achieving HBase Multi-Tenancy with RegionServer Groups and Favor...HBaseCon2017 Achieving HBase Multi-Tenancy with RegionServer Groups and Favor...
HBaseCon2017 Achieving HBase Multi-Tenancy with RegionServer Groups and Favor...
HBaseCon
 

More from HBaseCon (20)

hbaseconasia2017: HBase on Beam
hbaseconasia2017: HBase on Beamhbaseconasia2017: HBase on Beam
hbaseconasia2017: HBase on Beam
 
hbaseconasia2017: HBase Disaster Recovery Solution at Huawei
hbaseconasia2017: HBase Disaster Recovery Solution at Huaweihbaseconasia2017: HBase Disaster Recovery Solution at Huawei
hbaseconasia2017: HBase Disaster Recovery Solution at Huawei
 
hbaseconasia2017: Removable singularity: a story of HBase upgrade in Pinterest
hbaseconasia2017: Removable singularity: a story of HBase upgrade in Pinteresthbaseconasia2017: Removable singularity: a story of HBase upgrade in Pinterest
hbaseconasia2017: Removable singularity: a story of HBase upgrade in Pinterest
 
hbaseconasia2017: HareQL:快速HBase查詢工具的發展過程
hbaseconasia2017: HareQL:快速HBase查詢工具的發展過程hbaseconasia2017: HareQL:快速HBase查詢工具的發展過程
hbaseconasia2017: HareQL:快速HBase查詢工具的發展過程
 
hbaseconasia2017: Apache HBase at Netease
hbaseconasia2017: Apache HBase at Neteasehbaseconasia2017: Apache HBase at Netease
hbaseconasia2017: Apache HBase at Netease
 
hbaseconasia2017: HBase在Hulu的使用和实践
hbaseconasia2017: HBase在Hulu的使用和实践hbaseconasia2017: HBase在Hulu的使用和实践
hbaseconasia2017: HBase在Hulu的使用和实践
 
hbaseconasia2017: 基于HBase的企业级大数据平台
hbaseconasia2017: 基于HBase的企业级大数据平台hbaseconasia2017: 基于HBase的企业级大数据平台
hbaseconasia2017: 基于HBase的企业级大数据平台
 
hbaseconasia2017: HBase at JD.com
hbaseconasia2017: HBase at JD.comhbaseconasia2017: HBase at JD.com
hbaseconasia2017: HBase at JD.com
 
hbaseconasia2017: Large scale data near-line loading method and architecture
hbaseconasia2017: Large scale data near-line loading method and architecturehbaseconasia2017: Large scale data near-line loading method and architecture
hbaseconasia2017: Large scale data near-line loading method and architecture
 
hbaseconasia2017: Ecosystems with HBase and CloudTable service at Huawei
hbaseconasia2017: Ecosystems with HBase and CloudTable service at Huaweihbaseconasia2017: Ecosystems with HBase and CloudTable service at Huawei
hbaseconasia2017: Ecosystems with HBase and CloudTable service at Huawei
 
hbaseconasia2017: hbase-2.0.0
hbaseconasia2017: hbase-2.0.0hbaseconasia2017: hbase-2.0.0
hbaseconasia2017: hbase-2.0.0
 
HBaseCon2017 Democratizing HBase
HBaseCon2017 Democratizing HBaseHBaseCon2017 Democratizing HBase
HBaseCon2017 Democratizing HBase
 
HBaseCon2017 Apache HBase at Didi
HBaseCon2017 Apache HBase at DidiHBaseCon2017 Apache HBase at Didi
HBaseCon2017 Apache HBase at Didi
 
HBaseCon2017 Spark HBase Connector: Feature Rich and Efficient Access to HBas...
HBaseCon2017 Spark HBase Connector: Feature Rich and Efficient Access to HBas...HBaseCon2017 Spark HBase Connector: Feature Rich and Efficient Access to HBas...
HBaseCon2017 Spark HBase Connector: Feature Rich and Efficient Access to HBas...
 
HBaseCon2017 Efficient and portable data processing with Apache Beam and HBase
HBaseCon2017 Efficient and portable data processing with Apache Beam and HBaseHBaseCon2017 Efficient and portable data processing with Apache Beam and HBase
HBaseCon2017 Efficient and portable data processing with Apache Beam and HBase
 
HBaseCon2017 HBase/Phoenix @ Scale @ Salesforce
HBaseCon2017 HBase/Phoenix @ Scale @ SalesforceHBaseCon2017 HBase/Phoenix @ Scale @ Salesforce
HBaseCon2017 HBase/Phoenix @ Scale @ Salesforce
 
HBaseCon2017 Community-Driven Graphs with JanusGraph
HBaseCon2017 Community-Driven Graphs with JanusGraphHBaseCon2017 Community-Driven Graphs with JanusGraph
HBaseCon2017 Community-Driven Graphs with JanusGraph
 
HBaseCon2017 Warp 10, a novel approach to managing and analyzing time series ...
HBaseCon2017 Warp 10, a novel approach to managing and analyzing time series ...HBaseCon2017 Warp 10, a novel approach to managing and analyzing time series ...
HBaseCon2017 Warp 10, a novel approach to managing and analyzing time series ...
 
HBaseCon2017 Analyzing cryptocurrencies in real time with hBase, Kafka and St...
HBaseCon2017 Analyzing cryptocurrencies in real time with hBase, Kafka and St...HBaseCon2017 Analyzing cryptocurrencies in real time with hBase, Kafka and St...
HBaseCon2017 Analyzing cryptocurrencies in real time with hBase, Kafka and St...
 
HBaseCon2017 Achieving HBase Multi-Tenancy with RegionServer Groups and Favor...
HBaseCon2017 Achieving HBase Multi-Tenancy with RegionServer Groups and Favor...HBaseCon2017 Achieving HBase Multi-Tenancy with RegionServer Groups and Favor...
HBaseCon2017 Achieving HBase Multi-Tenancy with RegionServer Groups and Favor...
 

Recently uploaded

Understanding Globus Data Transfers with NetSage
Understanding Globus Data Transfers with NetSageUnderstanding Globus Data Transfers with NetSage
Understanding Globus Data Transfers with NetSage
Globus
 
In 2015, I used to write extensions for Joomla, WordPress, phpBB3, etc and I ...
In 2015, I used to write extensions for Joomla, WordPress, phpBB3, etc and I ...In 2015, I used to write extensions for Joomla, WordPress, phpBB3, etc and I ...
In 2015, I used to write extensions for Joomla, WordPress, phpBB3, etc and I ...
Juraj Vysvader
 
Utilocate provides Smarter, Better, Faster, Safer Locate Ticket Management
Utilocate provides Smarter, Better, Faster, Safer Locate Ticket ManagementUtilocate provides Smarter, Better, Faster, Safer Locate Ticket Management
Utilocate provides Smarter, Better, Faster, Safer Locate Ticket Management
Utilocate
 
Custom Healthcare Software for Managing Chronic Conditions and Remote Patient...
Custom Healthcare Software for Managing Chronic Conditions and Remote Patient...Custom Healthcare Software for Managing Chronic Conditions and Remote Patient...
Custom Healthcare Software for Managing Chronic Conditions and Remote Patient...
Mind IT Systems
 
GraphSummit Paris - The art of the possible with Graph Technology
GraphSummit Paris - The art of the possible with Graph TechnologyGraphSummit Paris - The art of the possible with Graph Technology
GraphSummit Paris - The art of the possible with Graph Technology
Neo4j
 
2024 RoOUG Security model for the cloud.pptx
2024 RoOUG Security model for the cloud.pptx2024 RoOUG Security model for the cloud.pptx
2024 RoOUG Security model for the cloud.pptx
Georgi Kodinov
 
Top Features to Include in Your Winzo Clone App for Business Growth (4).pptx
Top Features to Include in Your Winzo Clone App for Business Growth (4).pptxTop Features to Include in Your Winzo Clone App for Business Growth (4).pptx
Top Features to Include in Your Winzo Clone App for Business Growth (4).pptx
rickgrimesss22
 
Providing Globus Services to Users of JASMIN for Environmental Data Analysis
Providing Globus Services to Users of JASMIN for Environmental Data AnalysisProviding Globus Services to Users of JASMIN for Environmental Data Analysis
Providing Globus Services to Users of JASMIN for Environmental Data Analysis
Globus
 
Navigating the Metaverse: A Journey into Virtual Evolution"
Navigating the Metaverse: A Journey into Virtual Evolution"Navigating the Metaverse: A Journey into Virtual Evolution"
Navigating the Metaverse: A Journey into Virtual Evolution"
Donna Lenk
 
Enterprise Software Development with No Code Solutions.pptx
Enterprise Software Development with No Code Solutions.pptxEnterprise Software Development with No Code Solutions.pptx
Enterprise Software Development with No Code Solutions.pptx
QuickwayInfoSystems3
 
Developing Distributed High-performance Computing Capabilities of an Open Sci...
Developing Distributed High-performance Computing Capabilities of an Open Sci...Developing Distributed High-performance Computing Capabilities of an Open Sci...
Developing Distributed High-performance Computing Capabilities of an Open Sci...
Globus
 
How Recreation Management Software Can Streamline Your Operations.pptx
How Recreation Management Software Can Streamline Your Operations.pptxHow Recreation Management Software Can Streamline Your Operations.pptx
How Recreation Management Software Can Streamline Your Operations.pptx
wottaspaceseo
 
GlobusWorld 2024 Opening Keynote session
GlobusWorld 2024 Opening Keynote sessionGlobusWorld 2024 Opening Keynote session
GlobusWorld 2024 Opening Keynote session
Globus
 
Launch Your Streaming Platforms in Minutes
Launch Your Streaming Platforms in MinutesLaunch Your Streaming Platforms in Minutes
Launch Your Streaming Platforms in Minutes
Roshan Dwivedi
 
Vitthal Shirke Microservices Resume Montevideo
Vitthal Shirke Microservices Resume MontevideoVitthal Shirke Microservices Resume Montevideo
Vitthal Shirke Microservices Resume Montevideo
Vitthal Shirke
 
Orion Context Broker introduction 20240604
Orion Context Broker introduction 20240604Orion Context Broker introduction 20240604
Orion Context Broker introduction 20240604
Fermin Galan
 
Large Language Models and the End of Programming
Large Language Models and the End of ProgrammingLarge Language Models and the End of Programming
Large Language Models and the End of Programming
Matt Welsh
 
APIs for Browser Automation (MoT Meetup 2024)
APIs for Browser Automation (MoT Meetup 2024)APIs for Browser Automation (MoT Meetup 2024)
APIs for Browser Automation (MoT Meetup 2024)
Boni García
 
Globus Connect Server Deep Dive - GlobusWorld 2024
Globus Connect Server Deep Dive - GlobusWorld 2024Globus Connect Server Deep Dive - GlobusWorld 2024
Globus Connect Server Deep Dive - GlobusWorld 2024
Globus
 
Exploring Innovations in Data Repository Solutions - Insights from the U.S. G...
Exploring Innovations in Data Repository Solutions - Insights from the U.S. G...Exploring Innovations in Data Repository Solutions - Insights from the U.S. G...
Exploring Innovations in Data Repository Solutions - Insights from the U.S. G...
Globus
 

Recently uploaded (20)

Understanding Globus Data Transfers with NetSage
Understanding Globus Data Transfers with NetSageUnderstanding Globus Data Transfers with NetSage
Understanding Globus Data Transfers with NetSage
 
In 2015, I used to write extensions for Joomla, WordPress, phpBB3, etc and I ...
In 2015, I used to write extensions for Joomla, WordPress, phpBB3, etc and I ...In 2015, I used to write extensions for Joomla, WordPress, phpBB3, etc and I ...
In 2015, I used to write extensions for Joomla, WordPress, phpBB3, etc and I ...
 
Utilocate provides Smarter, Better, Faster, Safer Locate Ticket Management
Utilocate provides Smarter, Better, Faster, Safer Locate Ticket ManagementUtilocate provides Smarter, Better, Faster, Safer Locate Ticket Management
Utilocate provides Smarter, Better, Faster, Safer Locate Ticket Management
 
Custom Healthcare Software for Managing Chronic Conditions and Remote Patient...
Custom Healthcare Software for Managing Chronic Conditions and Remote Patient...Custom Healthcare Software for Managing Chronic Conditions and Remote Patient...
Custom Healthcare Software for Managing Chronic Conditions and Remote Patient...
 
GraphSummit Paris - The art of the possible with Graph Technology
GraphSummit Paris - The art of the possible with Graph TechnologyGraphSummit Paris - The art of the possible with Graph Technology
GraphSummit Paris - The art of the possible with Graph Technology
 
2024 RoOUG Security model for the cloud.pptx
2024 RoOUG Security model for the cloud.pptx2024 RoOUG Security model for the cloud.pptx
2024 RoOUG Security model for the cloud.pptx
 
Top Features to Include in Your Winzo Clone App for Business Growth (4).pptx
Top Features to Include in Your Winzo Clone App for Business Growth (4).pptxTop Features to Include in Your Winzo Clone App for Business Growth (4).pptx
Top Features to Include in Your Winzo Clone App for Business Growth (4).pptx
 
Providing Globus Services to Users of JASMIN for Environmental Data Analysis
Providing Globus Services to Users of JASMIN for Environmental Data AnalysisProviding Globus Services to Users of JASMIN for Environmental Data Analysis
Providing Globus Services to Users of JASMIN for Environmental Data Analysis
 
Navigating the Metaverse: A Journey into Virtual Evolution"
Navigating the Metaverse: A Journey into Virtual Evolution"Navigating the Metaverse: A Journey into Virtual Evolution"
Navigating the Metaverse: A Journey into Virtual Evolution"
 
Enterprise Software Development with No Code Solutions.pptx
Enterprise Software Development with No Code Solutions.pptxEnterprise Software Development with No Code Solutions.pptx
Enterprise Software Development with No Code Solutions.pptx
 
Developing Distributed High-performance Computing Capabilities of an Open Sci...
Developing Distributed High-performance Computing Capabilities of an Open Sci...Developing Distributed High-performance Computing Capabilities of an Open Sci...
Developing Distributed High-performance Computing Capabilities of an Open Sci...
 
How Recreation Management Software Can Streamline Your Operations.pptx
How Recreation Management Software Can Streamline Your Operations.pptxHow Recreation Management Software Can Streamline Your Operations.pptx
How Recreation Management Software Can Streamline Your Operations.pptx
 
GlobusWorld 2024 Opening Keynote session
GlobusWorld 2024 Opening Keynote sessionGlobusWorld 2024 Opening Keynote session
GlobusWorld 2024 Opening Keynote session
 
Launch Your Streaming Platforms in Minutes
Launch Your Streaming Platforms in MinutesLaunch Your Streaming Platforms in Minutes
Launch Your Streaming Platforms in Minutes
 
Vitthal Shirke Microservices Resume Montevideo
Vitthal Shirke Microservices Resume MontevideoVitthal Shirke Microservices Resume Montevideo
Vitthal Shirke Microservices Resume Montevideo
 
Orion Context Broker introduction 20240604
Orion Context Broker introduction 20240604Orion Context Broker introduction 20240604
Orion Context Broker introduction 20240604
 
Large Language Models and the End of Programming
Large Language Models and the End of ProgrammingLarge Language Models and the End of Programming
Large Language Models and the End of Programming
 
APIs for Browser Automation (MoT Meetup 2024)
APIs for Browser Automation (MoT Meetup 2024)APIs for Browser Automation (MoT Meetup 2024)
APIs for Browser Automation (MoT Meetup 2024)
 
Globus Connect Server Deep Dive - GlobusWorld 2024
Globus Connect Server Deep Dive - GlobusWorld 2024Globus Connect Server Deep Dive - GlobusWorld 2024
Globus Connect Server Deep Dive - GlobusWorld 2024
 
Exploring Innovations in Data Repository Solutions - Insights from the U.S. G...
Exploring Innovations in Data Repository Solutions - Insights from the U.S. G...Exploring Innovations in Data Repository Solutions - Insights from the U.S. G...
Exploring Innovations in Data Repository Solutions - Insights from the U.S. G...
 

Tales from Taming the Long Tail

  • 1. Tales from Taming Tail Latencies Deepankar Reddy, Ishan Chhabra Rocket Fuel Inc.
  • 2. Recap : Rocket Fuel Inc ◦ Programmatic Ad Tech firm ◦ Eval(s) ~100B Ad opportunities daily ◦ Each eval has strict SLA of 100 ms
  • 3. Recap : Blackbird @RocketFuel
  • 4. Recap : Blackbird Scalable collection storage API ▫ Backed by HBase ▫ Append only collections
  • 5. Recap : Blackbird Stores rich anonymized user data ◦ Historical behavior - Ads viewed and clicked, pages visited, etc. ◦ Interest - Third party and learned interests ◦ Feature vectors for various ML models ◦ etc ..
  • 6. Blackbird Workload ◦ 80% Read - 20% Write workload ◦ 90 - 95 % cache hit ratio ◦ Record size (compressed protobufs) : ▫ Mean : 11 KB ▫ Median : 8 KB
  • 7. Blackbird Workload ◦ 14 TB of Unreplicated Data ◦ 60 - 70 Nodes in a Data Center ◦ Strict SLA of 40 ms ◦ Current SLA violation rate @ ~2 %
  • 8. Blackbird Workload ◦ Read latencies: ▫ Mean, Median : < 1ms ▫ 95th perc : 25 ms ◦ Write latencies: ▫ Mean, Median : < 1ms ▫ 95th perc : 1 ms
  • 9. Blackbird WorkLoad Rocket Fuel Moment Scoring Pipeline . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . BlackBird Service ... ... ... Anon. UserId Tab
  • 10. People Based Marketing ◦ Efforts to cluster identities of user ▫ Probabilistic using Machine Learning ▫ Deterministic via integrations ◦ Reduces information loss ◦ Aligns with user’s buying patterns
  • 11. New Blackbird Queries Rocket Fuel Moment Scoring Pipeline . . . . . . . . . . . . . . . . . . . . . . BlackBird Data Service Anon UserID UserID Clusters Request for All IDs in the cluster
  • 12. Translated SLA X axis : SLA violation rate for a single read Y axis : New SLA violation rate for multiple reads
  • 14. Server Observed Read Latency 99P ~ 25 ms 95P ~ 8 ms
  • 15. Client Observed Read Latency 99P > 100MS 95P > 25MS
  • 17. Network Level Time (ms) Server Side Time (ms) RS Heap size (MBs)
  • 18. Observations ◦ Client / Server times match ◦ Except during the longer mixed GCs
  • 19. Co-ordinated omission © Borrowed from Gil Tene How Not to Measure Latency QCON SF 2015
  • 20. Co-ordinated omission © Borrowed from Gil Tene How Not to Measure Latency QCON SF 2015
  • 21. Co-ordinated omission ◦ ~ Censorship of Data ▫ Not random but co-ordinated omission ◦ Censorship during a GC* ▫ Queueing time in app ▫ Time sitting in the network buffer ▫ Time in the responder *with normal latencies
  • 22. Co-ordinated omission Server Side Latencies ◦ GCs don’t show up on inprocess latencies ◦ More events of “request pipeline”, more probability to capture a GC ▫ Add time in network buffer ▫ Add time in responder ▫ Add time in transit etc...
  • 23. Co-ordinated omission Client Side Latencies ◦ Very important to slice requests per server to see the patterns ◦ Even the will miss Young GCs ▫ Problems with moving avgs (Yammer metrics)
  • 24. Causes for Peaks What’s causing Mixed GC : Heap size MB Cache size GB ~25GB ~4-5 GB Around 5 times in a GC cycle 5 x 5 = 25
  • 25. Causes for Peaks Mixed GC: ◦ LRU on heap is bad for GC ▫ All evicted blocks will be in Old Gen ▫ Old Gen cleanup => Mixed GC ◦ No GC optimizations can fix this
  • 26. Why peaks are bad ◦ Not so bad in normal use cases ▫ If peaks occur rarely ◦ Bad enough in clustered reads ◦ Decreases times for other parts in our Moment Scoring Pipeline
  • 30. Fix is to move to Off Heap for LRU cache
  • 31. Off Heap Block Cache ◦ An array of byte buffers (4MB size) ◦ Offset based free space management ◦ Re-use the buffers by overwriting ◦ HBaseCon Talk at 3:10-3:50pm
  • 32. Off Heap Advantages ◦ Can scale to higher memory ▫ Reserving less for promotion failures ◦ Potentially could be on SSDs/NVMes ▫ Allows us to use more denser boxes
  • 34. Work for moving Off Heap ◦ HBase 1.0 copies data onto Heap ◦ Leads to too much Garbage ▫ GCing once every 2 - 3 secs
  • 35. Work for moving Off Heap ◦ HBase 2.0 fixes this ▫ HBASE-11425 ◦ Pulled patches from upstream on 1.1 ◦ Encountered a few issues ▫ HBASE-15064, HBASE-15525 . . .
  • 36. What about Young GC ? ◦ Any GC time above your SLA is bad ◦ Hard to see this with Yammer metrics ▫ Sliding Window smoothing ▫ Eliminates peaks in percentiles ◦ Use histograms without Averaging ▫ HDRHistogram / HBase-2.0 Fast Histogram ...
  • 37. What about Young GC ? HDR Histogram Yammer Histogram
  • 38. Fixing measurements ? More (precise) metrics ◦ Percentiles are confusing ▫ Very hard to reason sometimes ◦ Used SLA based violation counts ▫ Ex:- Time Bucketed counts
  • 40. How to fix Young GC ? ◦ Tried to get GC pause times << SLA ◦ Not possible with current heap sizes ◦ Need RS with smaller heaps ▫ Less promotion work ▫ Less Young cleanup work
  • 41. How to fix Young GC ? ◦ Have to run a lot of RegionServers ▫ Commodity servers are multi core now with large RAM ◦ Slider makes this easier ◦ Load Balancing issue
  • 42. How to fix Young GC ? ◦ Smaller GC pauses => more freq GCs ◦ Need to reduce garbage gen. also
  • 43. How to fix Young GC ? Reducing Garbage generation ◦ Memstore / ConcurrentSkipList oppty. ◦ To use or not use Data Block Encoding ◦ Compress / Decompress Opts. ◦ Misc….
  • 44. How to fix Young GC ? Results
  • 45. How to fix Young GC ? Results
  • 48. Processing Times ◦ Huge bump between 95 & 99 percs ◦ Cache hit ratio 95 % ◦ We are going to disks for these
  • 49. How can we fix this gap? 1. Increase cache hit ratio 2. Make disk reads faster
  • 51. Increasing Cache Hit Ratio Using NVME cards ◦ ~ SSD higher throughput due to PCIe ◦ Support already in Bucket Cache ◦ Cost effective w.r.t RAM ▫ RAM ~ $10 per GB, NVMe ~ $1 per GB
  • 52. Disk throughputs Exploring move to SSDs ◦ SSDs cost ~ SAS disks costs ▫ Depends on SSD grade ▫ Including SAS backplane costs ◦ HDFS can store 1 replica in SSDs, other 2 in HDDs
  • 55. Newer SLA Requirements ◦ Older single read SLA is not enough ▫ 98% translate to 90% in newer model ◦ Top two areas of improvements ▫ Garbage Collection in JVM ▫ Reads going to Disks
  • 56. How to fix Young GC ? RS with 14GB heap pauses < 10ms SLA violation counts
  • 57.
  • 58. How to fix Young GC ? Results (sunday)
  • 59. How to fix Young GC ? Results (sunday)