SlideShare une entreprise Scribd logo
1  sur  27
Télécharger pour lire hors ligne
Presto as a Service
Tips for operation and monitoring
Taro L. Saito
Treasure Data, Inc.
leo@treasure-data.com
January 20, 2015
Presto Meetup Japan @ FreakOut, Roppongi
About Me: @taroleo
•  2007 University of Tokyo. Ph.D.
–  XML DBMS, Transaction Processing
•  Relational-Style XML Query. ACM SIGMOD 2008
•  ~ 2014 Assistant Professor at University of Tokyo
–  Genome Science Research
•  Distributed Computing
•  2014.3月~ Treasure Data
–  Software Engineer, MPP Team Leader
2
My Open Source Projects
•  sqlite-jdbc
–  SQLite DBMS for Java
–  1file =1DB
•  snappy-java
–  Fast compression library
–  More than 100,000 downloads/month
•  Used in Spark, Parquet, etc.
•  msgpack-java
•  UT Genome Browser (UTGB)
–  Visualization of massive amount of
genome science data
3
Topics
•  Presto as a Service in Treasure Data
–  Error Recovery
–  Presto Deployment
•  Tips for Monitoring Presto
–  JSON API
–  Presto + Fluentd
4
Treasure Data: Presto as a Service
5
Presto Public Release
Hive
TD API /
Web ConsoleInteractive query
batch query
Presto
Treasure Data
PlazmaDB:
MessagePack Columnar Storage
td-presto connector
Deployment
•  Building Presto takes more than 20 minutes.
•  Facebook frequently releases new versions
•  Let CircleCI build Presto
–  Deploy jar files to private Maven repository
–  We sometime use non-release versions
•  for fixing serious bugs
•  hot-fix patches
•  Integration Test
–  td-presto connector
•  PlazmaDB, Multi-tenant query scheduler
•  Query optimizer
–  Run test queries on staging cluster
7
Production: Blue-Green Deployment
•  http://martinfowler.com/bliki/BlueGreenDeployment.html
•  2 Presto Coordinators (Blue/Green)
–  Route Presto queries to the active cluster
–  No down-time upon deployment
•  Launch Presto worker instances with chef <- less than 5 min. in AWS
•  Inactive clusters is used for pre-production testing and customer support
–  Investigation and tuning of customer query performance
–  Trouble shooting
8
Error Recovery
•  Presto has no fault tolerance
•  Error types
–  User error
•  Syntax errors
–  SQL syntax, missing function
•  Semantic errors
–  missing tables/columns
–  Insufficient resource
•  Exceeded task memory size
–  Internal failure
•  I/O error
–  S3/Riak CS
•  worker failure
•  etc.
9
Worth A Retry!
Failed Query Rate
10
11
Query Retry Patterns used in TD
•  Error code + message pattern
12
Monitoring Presto
•  REST API for monitoring Presto state
–  JSON format
•  (presto server IP):8080/v1/query
–  List of recent queries (BasicQueryInfo class)
•  (presto server IP):8080/v1/query/(query id)
–  Detailed query state information
–  Query plan, tasks and running worker IDs
–  Processed rows/data size
13
Query List /v1/query
14
Detailed query Info /v1/query/(query id)
15
/ui/query-execution/(query id)
16
Complex Queries
17
18
Presto Coordinator
•  Organizes query execution pipelines
–  Coordinates presto workers
•  Retrieves table partition and split location from connectors
–  Creates distributed query plans
•  Full GC
–  Stalls coordinator
•  When memory is insufficient
–  Use memory-rich machine
–  GC Tuning
•  CMSInitiatingOccupancyFraction
19
Monitoring Presto with Fluentd
20
Hive
Presto
presto-metrics (Ruby)
•  https://github.com/xerial/presto-metrics
21
22
23
Detecting Anomaly
•  Started Query Rate (in 5min/15min)
–  If no query has started, cluster may be down (or not started properly)
•  Processed rows in a query
–  Sum up the number of the processed rows from all of the sub stages
–  Simple, but the most reliable measure
•  Send an alert
–  HipChat notification
–  PagerDuty call
•  JP/US team rotation
24
Benchmarking
•  Query performance comparison
–  between two versions of Presto
•  Benchmark
–  Run query set multiple times
–  Store the results to TD
–  Report the result with Presto
•  Aggregation query
25
Presto Operation Tool
•  Prestop
–  Our internal tool for managing multiple presto
clusters
•  written in Scala
–  Query monitoring
–  Benchmarking
–  Workload simulation
•  stress testing
•  Monitoring
–  Librato
–  Datadog
–  ChartIO (query stats)
26
WE ARE HIRING!
27
Check: www.treasuredata.com

Contenu connexe

Tendances

A Thorough Comparison of Delta Lake, Iceberg and Hudi
A Thorough Comparison of Delta Lake, Iceberg and HudiA Thorough Comparison of Delta Lake, Iceberg and Hudi
A Thorough Comparison of Delta Lake, Iceberg and HudiDatabricks
 
Where is my bottleneck? Performance troubleshooting in Flink
Where is my bottleneck? Performance troubleshooting in FlinkWhere is my bottleneck? Performance troubleshooting in Flink
Where is my bottleneck? Performance troubleshooting in FlinkFlink Forward
 
Ceph and RocksDB
Ceph and RocksDBCeph and RocksDB
Ceph and RocksDBSage Weil
 
Amazon S3 Best Practice and Tuning for Hadoop/Spark in the Cloud
Amazon S3 Best Practice and Tuning for Hadoop/Spark in the CloudAmazon S3 Best Practice and Tuning for Hadoop/Spark in the Cloud
Amazon S3 Best Practice and Tuning for Hadoop/Spark in the CloudNoritaka Sekiyama
 
Introducing KRaft: Kafka Without Zookeeper With Colin McCabe | Current 2022
Introducing KRaft: Kafka Without Zookeeper With Colin McCabe | Current 2022Introducing KRaft: Kafka Without Zookeeper With Colin McCabe | Current 2022
Introducing KRaft: Kafka Without Zookeeper With Colin McCabe | Current 2022HostedbyConfluent
 
Presto At Arm Treasure Data - 2019 Updates
Presto At Arm Treasure Data - 2019 UpdatesPresto At Arm Treasure Data - 2019 Updates
Presto At Arm Treasure Data - 2019 UpdatesTaro L. Saito
 
Tame the small files problem and optimize data layout for streaming ingestion...
Tame the small files problem and optimize data layout for streaming ingestion...Tame the small files problem and optimize data layout for streaming ingestion...
Tame the small files problem and optimize data layout for streaming ingestion...Flink Forward
 
RocksDB detail
RocksDB detailRocksDB detail
RocksDB detailMIJIN AN
 
Using Queryable State for Fun and Profit
Using Queryable State for Fun and ProfitUsing Queryable State for Fun and Profit
Using Queryable State for Fun and ProfitFlink Forward
 
Flink Forward San Francisco 2019: Moving from Lambda and Kappa Architectures ...
Flink Forward San Francisco 2019: Moving from Lambda and Kappa Architectures ...Flink Forward San Francisco 2019: Moving from Lambda and Kappa Architectures ...
Flink Forward San Francisco 2019: Moving from Lambda and Kappa Architectures ...Flink Forward
 
Spark Shuffle Deep Dive (Explained In Depth) - How Shuffle Works in Spark
Spark Shuffle Deep Dive (Explained In Depth) - How Shuffle Works in SparkSpark Shuffle Deep Dive (Explained In Depth) - How Shuffle Works in Spark
Spark Shuffle Deep Dive (Explained In Depth) - How Shuffle Works in SparkBo Yang
 
Pegasus: Designing a Distributed Key Value System (Arch summit beijing-2016)
Pegasus: Designing a Distributed Key Value System (Arch summit beijing-2016)Pegasus: Designing a Distributed Key Value System (Arch summit beijing-2016)
Pegasus: Designing a Distributed Key Value System (Arch summit beijing-2016)涛 吴
 
Hadoop Interview Questions And Answers Part-1 | Big Data Interview Questions ...
Hadoop Interview Questions And Answers Part-1 | Big Data Interview Questions ...Hadoop Interview Questions And Answers Part-1 | Big Data Interview Questions ...
Hadoop Interview Questions And Answers Part-1 | Big Data Interview Questions ...Simplilearn
 
Performant Streaming in Production: Preventing Common Pitfalls when Productio...
Performant Streaming in Production: Preventing Common Pitfalls when Productio...Performant Streaming in Production: Preventing Common Pitfalls when Productio...
Performant Streaming in Production: Preventing Common Pitfalls when Productio...Databricks
 
Practical learnings from running thousands of Flink jobs
Practical learnings from running thousands of Flink jobsPractical learnings from running thousands of Flink jobs
Practical learnings from running thousands of Flink jobsFlink Forward
 
Iceberg: a fast table format for S3
Iceberg: a fast table format for S3Iceberg: a fast table format for S3
Iceberg: a fast table format for S3DataWorks Summit
 

Tendances (20)

A Thorough Comparison of Delta Lake, Iceberg and Hudi
A Thorough Comparison of Delta Lake, Iceberg and HudiA Thorough Comparison of Delta Lake, Iceberg and Hudi
A Thorough Comparison of Delta Lake, Iceberg and Hudi
 
Kudu Deep-Dive
Kudu Deep-DiveKudu Deep-Dive
Kudu Deep-Dive
 
The basics of fluentd
The basics of fluentdThe basics of fluentd
The basics of fluentd
 
Where is my bottleneck? Performance troubleshooting in Flink
Where is my bottleneck? Performance troubleshooting in FlinkWhere is my bottleneck? Performance troubleshooting in Flink
Where is my bottleneck? Performance troubleshooting in Flink
 
Ceph and RocksDB
Ceph and RocksDBCeph and RocksDB
Ceph and RocksDB
 
Amazon S3 Best Practice and Tuning for Hadoop/Spark in the Cloud
Amazon S3 Best Practice and Tuning for Hadoop/Spark in the CloudAmazon S3 Best Practice and Tuning for Hadoop/Spark in the Cloud
Amazon S3 Best Practice and Tuning for Hadoop/Spark in the Cloud
 
Introducing KRaft: Kafka Without Zookeeper With Colin McCabe | Current 2022
Introducing KRaft: Kafka Without Zookeeper With Colin McCabe | Current 2022Introducing KRaft: Kafka Without Zookeeper With Colin McCabe | Current 2022
Introducing KRaft: Kafka Without Zookeeper With Colin McCabe | Current 2022
 
Presto At Arm Treasure Data - 2019 Updates
Presto At Arm Treasure Data - 2019 UpdatesPresto At Arm Treasure Data - 2019 Updates
Presto At Arm Treasure Data - 2019 Updates
 
Log Structured Merge Tree
Log Structured Merge TreeLog Structured Merge Tree
Log Structured Merge Tree
 
Tame the small files problem and optimize data layout for streaming ingestion...
Tame the small files problem and optimize data layout for streaming ingestion...Tame the small files problem and optimize data layout for streaming ingestion...
Tame the small files problem and optimize data layout for streaming ingestion...
 
RocksDB detail
RocksDB detailRocksDB detail
RocksDB detail
 
Using Queryable State for Fun and Profit
Using Queryable State for Fun and ProfitUsing Queryable State for Fun and Profit
Using Queryable State for Fun and Profit
 
Flink Forward San Francisco 2019: Moving from Lambda and Kappa Architectures ...
Flink Forward San Francisco 2019: Moving from Lambda and Kappa Architectures ...Flink Forward San Francisco 2019: Moving from Lambda and Kappa Architectures ...
Flink Forward San Francisco 2019: Moving from Lambda and Kappa Architectures ...
 
Spark Shuffle Deep Dive (Explained In Depth) - How Shuffle Works in Spark
Spark Shuffle Deep Dive (Explained In Depth) - How Shuffle Works in SparkSpark Shuffle Deep Dive (Explained In Depth) - How Shuffle Works in Spark
Spark Shuffle Deep Dive (Explained In Depth) - How Shuffle Works in Spark
 
Pegasus: Designing a Distributed Key Value System (Arch summit beijing-2016)
Pegasus: Designing a Distributed Key Value System (Arch summit beijing-2016)Pegasus: Designing a Distributed Key Value System (Arch summit beijing-2016)
Pegasus: Designing a Distributed Key Value System (Arch summit beijing-2016)
 
HBase Accelerated: In-Memory Flush and Compaction
HBase Accelerated: In-Memory Flush and CompactionHBase Accelerated: In-Memory Flush and Compaction
HBase Accelerated: In-Memory Flush and Compaction
 
Hadoop Interview Questions And Answers Part-1 | Big Data Interview Questions ...
Hadoop Interview Questions And Answers Part-1 | Big Data Interview Questions ...Hadoop Interview Questions And Answers Part-1 | Big Data Interview Questions ...
Hadoop Interview Questions And Answers Part-1 | Big Data Interview Questions ...
 
Performant Streaming in Production: Preventing Common Pitfalls when Productio...
Performant Streaming in Production: Preventing Common Pitfalls when Productio...Performant Streaming in Production: Preventing Common Pitfalls when Productio...
Performant Streaming in Production: Preventing Common Pitfalls when Productio...
 
Practical learnings from running thousands of Flink jobs
Practical learnings from running thousands of Flink jobsPractical learnings from running thousands of Flink jobs
Practical learnings from running thousands of Flink jobs
 
Iceberg: a fast table format for S3
Iceberg: a fast table format for S3Iceberg: a fast table format for S3
Iceberg: a fast table format for S3
 

En vedette

Understanding Presto - Presto meetup @ Tokyo #1
Understanding Presto - Presto meetup @ Tokyo #1Understanding Presto - Presto meetup @ Tokyo #1
Understanding Presto - Presto meetup @ Tokyo #1Sadayuki Furuhashi
 
Presto in my_use_case
Presto in my_use_casePresto in my_use_case
Presto in my_use_casewyukawa
 
20140120 presto meetup_en
20140120 presto meetup_en20140120 presto meetup_en
20140120 presto meetup_enOgibayashi
 
Hello, Enterprise! Meet Presto. (Presto Boston Meetup 10062015)
Hello, Enterprise! Meet Presto. (Presto Boston Meetup 10062015)Hello, Enterprise! Meet Presto. (Presto Boston Meetup 10062015)
Hello, Enterprise! Meet Presto. (Presto Boston Meetup 10062015)Matt Fuller
 
Presto: Distributed sql query engine
Presto: Distributed sql query engine Presto: Distributed sql query engine
Presto: Distributed sql query engine kiran palaka
 
Presto @ Facebook: Past, Present and Future
Presto @ Facebook: Past, Present and FuturePresto @ Facebook: Past, Present and Future
Presto @ Facebook: Past, Present and FutureDataWorks Summit
 
Presto for the Enterprise @ Hadoop Meetup
Presto for the Enterprise @ Hadoop MeetupPresto for the Enterprise @ Hadoop Meetup
Presto for the Enterprise @ Hadoop MeetupWojciech Biela
 
Presto Testing Tools: Benchto & Tempto (Presto Boston Meetup 10062015)
Presto Testing Tools: Benchto & Tempto (Presto Boston Meetup 10062015)Presto Testing Tools: Benchto & Tempto (Presto Boston Meetup 10062015)
Presto Testing Tools: Benchto & Tempto (Presto Boston Meetup 10062015)Matt Fuller
 
Presto - Hadoop Conference Japan 2014
Presto - Hadoop Conference Japan 2014Presto - Hadoop Conference Japan 2014
Presto - Hadoop Conference Japan 2014Sadayuki Furuhashi
 
Building Physical in a Virtual World
Building Physical in a Virtual WorldBuilding Physical in a Virtual World
Building Physical in a Virtual WorldChris Maxwell
 
Presto @ Treasure Data - Presto Meetup Boston 2015
Presto @ Treasure Data - Presto Meetup Boston 2015Presto @ Treasure Data - Presto Meetup Boston 2015
Presto @ Treasure Data - Presto Meetup Boston 2015Taro L. Saito
 
Prestoで実現するインタラクティブクエリ - dbtech showcase 2014 Tokyo
Prestoで実現するインタラクティブクエリ - dbtech showcase 2014 TokyoPrestoで実現するインタラクティブクエリ - dbtech showcase 2014 Tokyo
Prestoで実現するインタラクティブクエリ - dbtech showcase 2014 TokyoTreasure Data, Inc.
 
Presto Meetup 2016 Small Start
Presto Meetup 2016 Small StartPresto Meetup 2016 Small Start
Presto Meetup 2016 Small StartHiroshi Toyama
 
Presto Meetup @ Facebook (3/22/2016)
Presto Meetup @ Facebook (3/22/2016)Presto Meetup @ Facebook (3/22/2016)
Presto Meetup @ Facebook (3/22/2016)Martin Traverso
 
AWS Meet-up: Logging At Scale on AWS
AWS Meet-up: Logging At Scale on AWSAWS Meet-up: Logging At Scale on AWS
AWS Meet-up: Logging At Scale on AWSChris Riddell
 

En vedette (20)

Understanding Presto - Presto meetup @ Tokyo #1
Understanding Presto - Presto meetup @ Tokyo #1Understanding Presto - Presto meetup @ Tokyo #1
Understanding Presto - Presto meetup @ Tokyo #1
 
Presto in my_use_case
Presto in my_use_casePresto in my_use_case
Presto in my_use_case
 
20140120 presto meetup_en
20140120 presto meetup_en20140120 presto meetup_en
20140120 presto meetup_en
 
Presto overview
Presto overviewPresto overview
Presto overview
 
Hello, Enterprise! Meet Presto. (Presto Boston Meetup 10062015)
Hello, Enterprise! Meet Presto. (Presto Boston Meetup 10062015)Hello, Enterprise! Meet Presto. (Presto Boston Meetup 10062015)
Hello, Enterprise! Meet Presto. (Presto Boston Meetup 10062015)
 
Internals of Presto Service
Internals of Presto ServiceInternals of Presto Service
Internals of Presto Service
 
Presto: Distributed sql query engine
Presto: Distributed sql query engine Presto: Distributed sql query engine
Presto: Distributed sql query engine
 
Presto @ Facebook: Past, Present and Future
Presto @ Facebook: Past, Present and FuturePresto @ Facebook: Past, Present and Future
Presto @ Facebook: Past, Present and Future
 
Presto for the Enterprise @ Hadoop Meetup
Presto for the Enterprise @ Hadoop MeetupPresto for the Enterprise @ Hadoop Meetup
Presto for the Enterprise @ Hadoop Meetup
 
Presto Testing Tools: Benchto & Tempto (Presto Boston Meetup 10062015)
Presto Testing Tools: Benchto & Tempto (Presto Boston Meetup 10062015)Presto Testing Tools: Benchto & Tempto (Presto Boston Meetup 10062015)
Presto Testing Tools: Benchto & Tempto (Presto Boston Meetup 10062015)
 
Presto - Hadoop Conference Japan 2014
Presto - Hadoop Conference Japan 2014Presto - Hadoop Conference Japan 2014
Presto - Hadoop Conference Japan 2014
 
Introduction to Apache Drill
Introduction to Apache DrillIntroduction to Apache Drill
Introduction to Apache Drill
 
Building Physical in a Virtual World
Building Physical in a Virtual WorldBuilding Physical in a Virtual World
Building Physical in a Virtual World
 
Presto @ Treasure Data - Presto Meetup Boston 2015
Presto @ Treasure Data - Presto Meetup Boston 2015Presto @ Treasure Data - Presto Meetup Boston 2015
Presto @ Treasure Data - Presto Meetup Boston 2015
 
Prestoで実現するインタラクティブクエリ - dbtech showcase 2014 Tokyo
Prestoで実現するインタラクティブクエリ - dbtech showcase 2014 TokyoPrestoで実現するインタラクティブクエリ - dbtech showcase 2014 Tokyo
Prestoで実現するインタラクティブクエリ - dbtech showcase 2014 Tokyo
 
Presto Meetup 2016 Small Start
Presto Meetup 2016 Small StartPresto Meetup 2016 Small Start
Presto Meetup 2016 Small Start
 
hotdog a TD tool for DD
hotdog a TD tool for DDhotdog a TD tool for DD
hotdog a TD tool for DD
 
Presto Meetup @ Facebook (3/22/2016)
Presto Meetup @ Facebook (3/22/2016)Presto Meetup @ Facebook (3/22/2016)
Presto Meetup @ Facebook (3/22/2016)
 
AWS Meet-up: Logging At Scale on AWS
AWS Meet-up: Logging At Scale on AWSAWS Meet-up: Logging At Scale on AWS
AWS Meet-up: Logging At Scale on AWS
 
Diary of Support Engineer
Diary of Support EngineerDiary of Support Engineer
Diary of Support Engineer
 

Similaire à Presto as a Service - Tips for operation and monitoring

Presto meetup 2015-03-19 @Facebook
Presto meetup 2015-03-19 @FacebookPresto meetup 2015-03-19 @Facebook
Presto meetup 2015-03-19 @FacebookTreasure Data, Inc.
 
Presto At Treasure Data
Presto At Treasure DataPresto At Treasure Data
Presto At Treasure DataTaro L. Saito
 
Big Data Introduction - Solix empower
Big Data Introduction - Solix empowerBig Data Introduction - Solix empower
Big Data Introduction - Solix empowerDurga Gadiraju
 
From Python Scikit-learn to Scala Apache Spark—The Road to Uncovering Botnets...
From Python Scikit-learn to Scala Apache Spark—The Road to Uncovering Botnets...From Python Scikit-learn to Scala Apache Spark—The Road to Uncovering Botnets...
From Python Scikit-learn to Scala Apache Spark—The Road to Uncovering Botnets...Databricks
 
Overview of data analytics service: Treasure Data Service
Overview of data analytics service: Treasure Data ServiceOverview of data analytics service: Treasure Data Service
Overview of data analytics service: Treasure Data ServiceSATOSHI TAGOMORI
 
Multi dimension aggregations using spark and dataframes
Multi dimension aggregations using spark and dataframesMulti dimension aggregations using spark and dataframes
Multi dimension aggregations using spark and dataframesRomi Kuntsman
 
Migrating from Redshift to Spark at Stitch Fix: Spark Summit East talk by Sky...
Migrating from Redshift to Spark at Stitch Fix: Spark Summit East talk by Sky...Migrating from Redshift to Spark at Stitch Fix: Spark Summit East talk by Sky...
Migrating from Redshift to Spark at Stitch Fix: Spark Summit East talk by Sky...Spark Summit
 
Migration from Redshift to Spark
Migration from Redshift to SparkMigration from Redshift to Spark
Migration from Redshift to SparkSky Yin
 
Using Familiar BI Tools and Hadoop to Analyze Enterprise Networks
Using Familiar BI Tools and Hadoop to Analyze Enterprise NetworksUsing Familiar BI Tools and Hadoop to Analyze Enterprise Networks
Using Familiar BI Tools and Hadoop to Analyze Enterprise NetworksDataWorks Summit
 
Apache Spark sql
Apache Spark sqlApache Spark sql
Apache Spark sqlaftab alam
 
A machine learning and data science pipeline for real companies
A machine learning and data science pipeline for real companiesA machine learning and data science pipeline for real companies
A machine learning and data science pipeline for real companiesDataWorks Summit
 
ElasticSearch as (only) datastore
ElasticSearch as (only) datastoreElasticSearch as (only) datastore
ElasticSearch as (only) datastoreTomas Sirny
 
MongoDB Capacity Planning
MongoDB Capacity PlanningMongoDB Capacity Planning
MongoDB Capacity PlanningNorberto Leite
 
Data Science at Scale: Using Apache Spark for Data Science at Bitly
Data Science at Scale: Using Apache Spark for Data Science at BitlyData Science at Scale: Using Apache Spark for Data Science at Bitly
Data Science at Scale: Using Apache Spark for Data Science at BitlySarah Guido
 
Using Familiar BI Tools and Hadoop to Analyze Enterprise Networks
Using Familiar BI Tools and Hadoop to Analyze Enterprise NetworksUsing Familiar BI Tools and Hadoop to Analyze Enterprise Networks
Using Familiar BI Tools and Hadoop to Analyze Enterprise NetworksMapR Technologies
 
Powering Interactive Data Analysis at Pinterest by Amazon Redshift
Powering Interactive Data Analysis at Pinterest by Amazon RedshiftPowering Interactive Data Analysis at Pinterest by Amazon Redshift
Powering Interactive Data Analysis at Pinterest by Amazon RedshiftJie Li
 
Netflix - Pig with Lipstick by Jeff Magnusson
Netflix - Pig with Lipstick by Jeff Magnusson Netflix - Pig with Lipstick by Jeff Magnusson
Netflix - Pig with Lipstick by Jeff Magnusson Hakka Labs
 
Putting Lipstick on Apache Pig at Netflix
Putting Lipstick on Apache Pig at NetflixPutting Lipstick on Apache Pig at Netflix
Putting Lipstick on Apache Pig at NetflixJeff Magnusson
 
Session 03 acquiring data
Session 03 acquiring dataSession 03 acquiring data
Session 03 acquiring databodaceacat
 

Similaire à Presto as a Service - Tips for operation and monitoring (20)

Presto meetup 2015-03-19 @Facebook
Presto meetup 2015-03-19 @FacebookPresto meetup 2015-03-19 @Facebook
Presto meetup 2015-03-19 @Facebook
 
Presto At Treasure Data
Presto At Treasure DataPresto At Treasure Data
Presto At Treasure Data
 
Big Data Introduction - Solix empower
Big Data Introduction - Solix empowerBig Data Introduction - Solix empower
Big Data Introduction - Solix empower
 
From Python Scikit-learn to Scala Apache Spark—The Road to Uncovering Botnets...
From Python Scikit-learn to Scala Apache Spark—The Road to Uncovering Botnets...From Python Scikit-learn to Scala Apache Spark—The Road to Uncovering Botnets...
From Python Scikit-learn to Scala Apache Spark—The Road to Uncovering Botnets...
 
Overview of data analytics service: Treasure Data Service
Overview of data analytics service: Treasure Data ServiceOverview of data analytics service: Treasure Data Service
Overview of data analytics service: Treasure Data Service
 
Multi dimension aggregations using spark and dataframes
Multi dimension aggregations using spark and dataframesMulti dimension aggregations using spark and dataframes
Multi dimension aggregations using spark and dataframes
 
Migrating from Redshift to Spark at Stitch Fix: Spark Summit East talk by Sky...
Migrating from Redshift to Spark at Stitch Fix: Spark Summit East talk by Sky...Migrating from Redshift to Spark at Stitch Fix: Spark Summit East talk by Sky...
Migrating from Redshift to Spark at Stitch Fix: Spark Summit East talk by Sky...
 
Migration from Redshift to Spark
Migration from Redshift to SparkMigration from Redshift to Spark
Migration from Redshift to Spark
 
Using Familiar BI Tools and Hadoop to Analyze Enterprise Networks
Using Familiar BI Tools and Hadoop to Analyze Enterprise NetworksUsing Familiar BI Tools and Hadoop to Analyze Enterprise Networks
Using Familiar BI Tools and Hadoop to Analyze Enterprise Networks
 
Apache Spark sql
Apache Spark sqlApache Spark sql
Apache Spark sql
 
A machine learning and data science pipeline for real companies
A machine learning and data science pipeline for real companiesA machine learning and data science pipeline for real companies
A machine learning and data science pipeline for real companies
 
ElasticSearch as (only) datastore
ElasticSearch as (only) datastoreElasticSearch as (only) datastore
ElasticSearch as (only) datastore
 
MongoDB Capacity Planning
MongoDB Capacity PlanningMongoDB Capacity Planning
MongoDB Capacity Planning
 
Data Science at Scale: Using Apache Spark for Data Science at Bitly
Data Science at Scale: Using Apache Spark for Data Science at BitlyData Science at Scale: Using Apache Spark for Data Science at Bitly
Data Science at Scale: Using Apache Spark for Data Science at Bitly
 
Using Familiar BI Tools and Hadoop to Analyze Enterprise Networks
Using Familiar BI Tools and Hadoop to Analyze Enterprise NetworksUsing Familiar BI Tools and Hadoop to Analyze Enterprise Networks
Using Familiar BI Tools and Hadoop to Analyze Enterprise Networks
 
Powering Interactive Data Analysis at Pinterest by Amazon Redshift
Powering Interactive Data Analysis at Pinterest by Amazon RedshiftPowering Interactive Data Analysis at Pinterest by Amazon Redshift
Powering Interactive Data Analysis at Pinterest by Amazon Redshift
 
Lipstick On Pig
Lipstick On Pig Lipstick On Pig
Lipstick On Pig
 
Netflix - Pig with Lipstick by Jeff Magnusson
Netflix - Pig with Lipstick by Jeff Magnusson Netflix - Pig with Lipstick by Jeff Magnusson
Netflix - Pig with Lipstick by Jeff Magnusson
 
Putting Lipstick on Apache Pig at Netflix
Putting Lipstick on Apache Pig at NetflixPutting Lipstick on Apache Pig at Netflix
Putting Lipstick on Apache Pig at Netflix
 
Session 03 acquiring data
Session 03 acquiring dataSession 03 acquiring data
Session 03 acquiring data
 

Plus de Taro L. Saito

Unifying Frontend and Backend Development with Scala - ScalaCon 2021
Unifying Frontend and Backend Development with Scala - ScalaCon 2021Unifying Frontend and Backend Development with Scala - ScalaCon 2021
Unifying Frontend and Backend Development with Scala - ScalaCon 2021Taro L. Saito
 
Journey of Migrating 1 Million Presto Queries - Presto Webinar 2020
Journey of Migrating 1 Million Presto Queries - Presto Webinar 2020Journey of Migrating 1 Million Presto Queries - Presto Webinar 2020
Journey of Migrating 1 Million Presto Queries - Presto Webinar 2020Taro L. Saito
 
Scala for Everything: From Frontend to Backend Applications - Scala Matsuri 2020
Scala for Everything: From Frontend to Backend Applications - Scala Matsuri 2020Scala for Everything: From Frontend to Backend Applications - Scala Matsuri 2020
Scala for Everything: From Frontend to Backend Applications - Scala Matsuri 2020Taro L. Saito
 
td-spark internals: Extending Spark with Airframe - Spark Meetup Tokyo #3 2020
td-spark internals: Extending Spark with Airframe - Spark Meetup Tokyo #3 2020td-spark internals: Extending Spark with Airframe - Spark Meetup Tokyo #3 2020
td-spark internals: Extending Spark with Airframe - Spark Meetup Tokyo #3 2020Taro L. Saito
 
Airframe Meetup #3: 2019 Updates & AirSpec
Airframe Meetup #3: 2019 Updates & AirSpecAirframe Meetup #3: 2019 Updates & AirSpec
Airframe Meetup #3: 2019 Updates & AirSpecTaro L. Saito
 
Reading The Source Code of Presto
Reading The Source Code of PrestoReading The Source Code of Presto
Reading The Source Code of PrestoTaro L. Saito
 
How To Use Scala At Work - Airframe In Action at Arm Treasure Data
How To Use Scala At Work - Airframe In Action at Arm Treasure DataHow To Use Scala At Work - Airframe In Action at Arm Treasure Data
How To Use Scala At Work - Airframe In Action at Arm Treasure DataTaro L. Saito
 
Airframe: Lightweight Building Blocks for Scala - Scale By The Bay 2018
Airframe: Lightweight Building Blocks for Scala - Scale By The Bay 2018Airframe: Lightweight Building Blocks for Scala - Scale By The Bay 2018
Airframe: Lightweight Building Blocks for Scala - Scale By The Bay 2018Taro L. Saito
 
Airframe: Lightweight Building Blocks for Scala @ TD Tech Talk 2018-10-17
Airframe: Lightweight Building Blocks for Scala @ TD Tech Talk 2018-10-17Airframe: Lightweight Building Blocks for Scala @ TD Tech Talk 2018-10-17
Airframe: Lightweight Building Blocks for Scala @ TD Tech Talk 2018-10-17Taro L. Saito
 
Tips For Maintaining OSS Projects
Tips For Maintaining OSS ProjectsTips For Maintaining OSS Projects
Tips For Maintaining OSS ProjectsTaro L. Saito
 
Learning Silicon Valley Culture
Learning Silicon Valley CultureLearning Silicon Valley Culture
Learning Silicon Valley CultureTaro L. Saito
 
Scala at Treasure Data
Scala at Treasure DataScala at Treasure Data
Scala at Treasure DataTaro L. Saito
 
Introduction to Presto at Treasure Data
Introduction to Presto at Treasure DataIntroduction to Presto at Treasure Data
Introduction to Presto at Treasure DataTaro L. Saito
 
Workflow Hacks #1 - dots. Tokyo
Workflow Hacks #1 - dots. TokyoWorkflow Hacks #1 - dots. Tokyo
Workflow Hacks #1 - dots. TokyoTaro L. Saito
 
Presto As A Service - Treasure DataでのPresto運用事例
Presto As A Service - Treasure DataでのPresto運用事例Presto As A Service - Treasure DataでのPresto運用事例
Presto As A Service - Treasure DataでのPresto運用事例Taro L. Saito
 
Treasure Dataを支える技術 - MessagePack編
Treasure Dataを支える技術 - MessagePack編Treasure Dataを支える技術 - MessagePack編
Treasure Dataを支える技術 - MessagePack編Taro L. Saito
 
Weaving Dataflows with Silk - ScalaMatsuri 2014, Tokyo
Weaving Dataflows with Silk - ScalaMatsuri 2014, TokyoWeaving Dataflows with Silk - ScalaMatsuri 2014, Tokyo
Weaving Dataflows with Silk - ScalaMatsuri 2014, TokyoTaro L. Saito
 
Spark Internals - Hadoop Source Code Reading #16 in Japan
Spark Internals - Hadoop Source Code Reading #16 in JapanSpark Internals - Hadoop Source Code Reading #16 in Japan
Spark Internals - Hadoop Source Code Reading #16 in JapanTaro L. Saito
 

Plus de Taro L. Saito (20)

Unifying Frontend and Backend Development with Scala - ScalaCon 2021
Unifying Frontend and Backend Development with Scala - ScalaCon 2021Unifying Frontend and Backend Development with Scala - ScalaCon 2021
Unifying Frontend and Backend Development with Scala - ScalaCon 2021
 
Journey of Migrating 1 Million Presto Queries - Presto Webinar 2020
Journey of Migrating 1 Million Presto Queries - Presto Webinar 2020Journey of Migrating 1 Million Presto Queries - Presto Webinar 2020
Journey of Migrating 1 Million Presto Queries - Presto Webinar 2020
 
Scala for Everything: From Frontend to Backend Applications - Scala Matsuri 2020
Scala for Everything: From Frontend to Backend Applications - Scala Matsuri 2020Scala for Everything: From Frontend to Backend Applications - Scala Matsuri 2020
Scala for Everything: From Frontend to Backend Applications - Scala Matsuri 2020
 
Airframe RPC
Airframe RPCAirframe RPC
Airframe RPC
 
td-spark internals: Extending Spark with Airframe - Spark Meetup Tokyo #3 2020
td-spark internals: Extending Spark with Airframe - Spark Meetup Tokyo #3 2020td-spark internals: Extending Spark with Airframe - Spark Meetup Tokyo #3 2020
td-spark internals: Extending Spark with Airframe - Spark Meetup Tokyo #3 2020
 
Airframe Meetup #3: 2019 Updates & AirSpec
Airframe Meetup #3: 2019 Updates & AirSpecAirframe Meetup #3: 2019 Updates & AirSpec
Airframe Meetup #3: 2019 Updates & AirSpec
 
Reading The Source Code of Presto
Reading The Source Code of PrestoReading The Source Code of Presto
Reading The Source Code of Presto
 
How To Use Scala At Work - Airframe In Action at Arm Treasure Data
How To Use Scala At Work - Airframe In Action at Arm Treasure DataHow To Use Scala At Work - Airframe In Action at Arm Treasure Data
How To Use Scala At Work - Airframe In Action at Arm Treasure Data
 
Airframe: Lightweight Building Blocks for Scala - Scale By The Bay 2018
Airframe: Lightweight Building Blocks for Scala - Scale By The Bay 2018Airframe: Lightweight Building Blocks for Scala - Scale By The Bay 2018
Airframe: Lightweight Building Blocks for Scala - Scale By The Bay 2018
 
Airframe: Lightweight Building Blocks for Scala @ TD Tech Talk 2018-10-17
Airframe: Lightweight Building Blocks for Scala @ TD Tech Talk 2018-10-17Airframe: Lightweight Building Blocks for Scala @ TD Tech Talk 2018-10-17
Airframe: Lightweight Building Blocks for Scala @ TD Tech Talk 2018-10-17
 
Tips For Maintaining OSS Projects
Tips For Maintaining OSS ProjectsTips For Maintaining OSS Projects
Tips For Maintaining OSS Projects
 
Learning Silicon Valley Culture
Learning Silicon Valley CultureLearning Silicon Valley Culture
Learning Silicon Valley Culture
 
Scala at Treasure Data
Scala at Treasure DataScala at Treasure Data
Scala at Treasure Data
 
Introduction to Presto at Treasure Data
Introduction to Presto at Treasure DataIntroduction to Presto at Treasure Data
Introduction to Presto at Treasure Data
 
Workflow Hacks #1 - dots. Tokyo
Workflow Hacks #1 - dots. TokyoWorkflow Hacks #1 - dots. Tokyo
Workflow Hacks #1 - dots. Tokyo
 
Presto As A Service - Treasure DataでのPresto運用事例
Presto As A Service - Treasure DataでのPresto運用事例Presto As A Service - Treasure DataでのPresto運用事例
Presto As A Service - Treasure DataでのPresto運用事例
 
JNuma Library
JNuma LibraryJNuma Library
JNuma Library
 
Treasure Dataを支える技術 - MessagePack編
Treasure Dataを支える技術 - MessagePack編Treasure Dataを支える技術 - MessagePack編
Treasure Dataを支える技術 - MessagePack編
 
Weaving Dataflows with Silk - ScalaMatsuri 2014, Tokyo
Weaving Dataflows with Silk - ScalaMatsuri 2014, TokyoWeaving Dataflows with Silk - ScalaMatsuri 2014, Tokyo
Weaving Dataflows with Silk - ScalaMatsuri 2014, Tokyo
 
Spark Internals - Hadoop Source Code Reading #16 in Japan
Spark Internals - Hadoop Source Code Reading #16 in JapanSpark Internals - Hadoop Source Code Reading #16 in Japan
Spark Internals - Hadoop Source Code Reading #16 in Japan
 

Dernier

Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonData Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonAnna Loughnan Colquhoun
 
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...apidays
 
Histor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slideHistor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slidevu2urc
 
Partners Life - Insurer Innovation Award 2024
Partners Life - Insurer Innovation Award 2024Partners Life - Insurer Innovation Award 2024
Partners Life - Insurer Innovation Award 2024The Digital Insurer
 
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptxHampshireHUG
 
Automating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps ScriptAutomating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps Scriptwesley chun
 
🐬 The future of MySQL is Postgres 🐘
🐬  The future of MySQL is Postgres   🐘🐬  The future of MySQL is Postgres   🐘
🐬 The future of MySQL is Postgres 🐘RTylerCroy
 
Presentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreterPresentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreternaman860154
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerThousandEyes
 
Handwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed textsHandwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed textsMaria Levchenko
 
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking MenDelhi Call girls
 
08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking Men08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking MenDelhi Call girls
 
2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...Martijn de Jong
 
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Miguel Araújo
 
What Are The Drone Anti-jamming Systems Technology?
What Are The Drone Anti-jamming Systems Technology?What Are The Drone Anti-jamming Systems Technology?
What Are The Drone Anti-jamming Systems Technology?Antenna Manufacturer Coco
 
[2024]Digital Global Overview Report 2024 Meltwater.pdf
[2024]Digital Global Overview Report 2024 Meltwater.pdf[2024]Digital Global Overview Report 2024 Meltwater.pdf
[2024]Digital Global Overview Report 2024 Meltwater.pdfhans926745
 
Boost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfBoost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfsudhanshuwaghmare1
 
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProduct Anonymous
 
Artificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and MythsArtificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and MythsJoaquim Jorge
 
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptxEIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptxEarley Information Science
 

Dernier (20)

Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonData Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt Robison
 
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
 
Histor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slideHistor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slide
 
Partners Life - Insurer Innovation Award 2024
Partners Life - Insurer Innovation Award 2024Partners Life - Insurer Innovation Award 2024
Partners Life - Insurer Innovation Award 2024
 
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
 
Automating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps ScriptAutomating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps Script
 
🐬 The future of MySQL is Postgres 🐘
🐬  The future of MySQL is Postgres   🐘🐬  The future of MySQL is Postgres   🐘
🐬 The future of MySQL is Postgres 🐘
 
Presentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreterPresentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreter
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
 
Handwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed textsHandwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed texts
 
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
 
08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking Men08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking Men
 
2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...
 
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
 
What Are The Drone Anti-jamming Systems Technology?
What Are The Drone Anti-jamming Systems Technology?What Are The Drone Anti-jamming Systems Technology?
What Are The Drone Anti-jamming Systems Technology?
 
[2024]Digital Global Overview Report 2024 Meltwater.pdf
[2024]Digital Global Overview Report 2024 Meltwater.pdf[2024]Digital Global Overview Report 2024 Meltwater.pdf
[2024]Digital Global Overview Report 2024 Meltwater.pdf
 
Boost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfBoost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdf
 
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
 
Artificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and MythsArtificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and Myths
 
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptxEIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
 

Presto as a Service - Tips for operation and monitoring

  • 1. Presto as a Service Tips for operation and monitoring Taro L. Saito Treasure Data, Inc. leo@treasure-data.com January 20, 2015 Presto Meetup Japan @ FreakOut, Roppongi
  • 2. About Me: @taroleo •  2007 University of Tokyo. Ph.D. –  XML DBMS, Transaction Processing •  Relational-Style XML Query. ACM SIGMOD 2008 •  ~ 2014 Assistant Professor at University of Tokyo –  Genome Science Research •  Distributed Computing •  2014.3月~ Treasure Data –  Software Engineer, MPP Team Leader 2
  • 3. My Open Source Projects •  sqlite-jdbc –  SQLite DBMS for Java –  1file =1DB •  snappy-java –  Fast compression library –  More than 100,000 downloads/month •  Used in Spark, Parquet, etc. •  msgpack-java •  UT Genome Browser (UTGB) –  Visualization of massive amount of genome science data 3
  • 4. Topics •  Presto as a Service in Treasure Data –  Error Recovery –  Presto Deployment •  Tips for Monitoring Presto –  JSON API –  Presto + Fluentd 4
  • 5. Treasure Data: Presto as a Service 5 Presto Public Release
  • 6. Hive TD API / Web ConsoleInteractive query batch query Presto Treasure Data PlazmaDB: MessagePack Columnar Storage td-presto connector
  • 7. Deployment •  Building Presto takes more than 20 minutes. •  Facebook frequently releases new versions •  Let CircleCI build Presto –  Deploy jar files to private Maven repository –  We sometime use non-release versions •  for fixing serious bugs •  hot-fix patches •  Integration Test –  td-presto connector •  PlazmaDB, Multi-tenant query scheduler •  Query optimizer –  Run test queries on staging cluster 7
  • 8. Production: Blue-Green Deployment •  http://martinfowler.com/bliki/BlueGreenDeployment.html •  2 Presto Coordinators (Blue/Green) –  Route Presto queries to the active cluster –  No down-time upon deployment •  Launch Presto worker instances with chef <- less than 5 min. in AWS •  Inactive clusters is used for pre-production testing and customer support –  Investigation and tuning of customer query performance –  Trouble shooting 8
  • 9. Error Recovery •  Presto has no fault tolerance •  Error types –  User error •  Syntax errors –  SQL syntax, missing function •  Semantic errors –  missing tables/columns –  Insufficient resource •  Exceeded task memory size –  Internal failure •  I/O error –  S3/Riak CS •  worker failure •  etc. 9 Worth A Retry!
  • 11. 11
  • 12. Query Retry Patterns used in TD •  Error code + message pattern 12
  • 13. Monitoring Presto •  REST API for monitoring Presto state –  JSON format •  (presto server IP):8080/v1/query –  List of recent queries (BasicQueryInfo class) •  (presto server IP):8080/v1/query/(query id) –  Detailed query state information –  Query plan, tasks and running worker IDs –  Processed rows/data size 13
  • 15. Detailed query Info /v1/query/(query id) 15
  • 18. 18
  • 19. Presto Coordinator •  Organizes query execution pipelines –  Coordinates presto workers •  Retrieves table partition and split location from connectors –  Creates distributed query plans •  Full GC –  Stalls coordinator •  When memory is insufficient –  Use memory-rich machine –  GC Tuning •  CMSInitiatingOccupancyFraction 19
  • 20. Monitoring Presto with Fluentd 20 Hive Presto
  • 22. 22
  • 23. 23
  • 24. Detecting Anomaly •  Started Query Rate (in 5min/15min) –  If no query has started, cluster may be down (or not started properly) •  Processed rows in a query –  Sum up the number of the processed rows from all of the sub stages –  Simple, but the most reliable measure •  Send an alert –  HipChat notification –  PagerDuty call •  JP/US team rotation 24
  • 25. Benchmarking •  Query performance comparison –  between two versions of Presto •  Benchmark –  Run query set multiple times –  Store the results to TD –  Report the result with Presto •  Aggregation query 25
  • 26. Presto Operation Tool •  Prestop –  Our internal tool for managing multiple presto clusters •  written in Scala –  Query monitoring –  Benchmarking –  Workload simulation •  stress testing •  Monitoring –  Librato –  Datadog –  ChartIO (query stats) 26
  • 27. WE ARE HIRING! 27 Check: www.treasuredata.com