SlideShare une entreprise Scribd logo
1  sur  22
DeNA West & BigQuery
Yoshiki Izawa
Who is DeNA?
Japan
China
West
Who is DeNA West?
• 1st Party: developed in house
• 2nd-3rd Party: Developed externally
with/without our help and published
by DeNA
• JP 1st Party: Import hits made by
DeNA in Japan
What data do we care about?
Standard Game KPIs Marketing Data Custom Game Insight
What’s our data like?
of raw logs per minute
~60MB
of raw logs per day
~50GB
How were we dealing with it?
Log Table
Logs from over
100 titles and
multiple studios
42TB raw log
data from May
2011 to Jan 2015
Accessed
via HiveQL
What were our data woes?
Data sources
ETL
Table Storage
Data access for ad
hoc analysis Visualization solutions
Visualization workflows
Issue #1 - 3 Hour Data Delay
Production Collector (add rats, scrip)
Amazon S3 (for backup)
ETL (Validation, Normalization)
PS
Logs
GS
Logs
GC/PC
Logs
Issue #2 - Too Many Cooks
Hadoop
Marketing
Finance
Game Analysts
User Retention
Clipart credit: iconka.com, webdesignhot.com
Issue #3 - Slow Queries
What was our solution?
Simplify common tech using AppEngine and BigQuery
Solution #1 - BigQuery Instantly Ingestion
Google API
Ad Data
PS / PC
Logs
GC/GC
Logs
PF Data
Solution #1 - BigQuery Instantly Ingestion (original)
Gateway module
PS / PC
Logs
GC/GC
Logs
Pull Task Queue
Game Project
Common
Project
App Engine Big Query
streaming insert
Game ProjectGame ProjectGame Project
Solution #1 - BigQuery Instantly Ingestion (current)
Gateway
module
PS / PC
Logs
GC/GC
Logs
Cloud Storage
Game
Project
Common
Project
App Engine Big Query
Game ProjectGame ProjectGame Project
Log
Common
Project
TEMP
dataset
batch load
every 3min
create log timestamp
base files
by 3min cron job
bq query
every 3min
Solution #2 - BigQuery Scaling
Scaling + support = happier analysts!
Wh ya gonna call?
Solution #2 - BigQuery Permissions
Solution #3 - BigQuery is fast
Lessons Learned
• Quotas
• Different cost structure
• New(ish) Product - some features may not work as expected
Is BigQuery for you?
• Cutting edge tech
• High control of your analysis
• Zero maintenance
Let’s see some data!
Let’s see some data!
Dropped entry price,
increased conversion Reduced overall revenue at
start of funnel but increase
overall
Let’s see some data!
Ruby Medal Balance over Time
Tutorial Completion RateTCP Latency Distribution

Contenu connexe

Tendances

Clipper: A Low-Latency Online Prediction Serving System
Clipper: A Low-Latency Online Prediction Serving SystemClipper: A Low-Latency Online Prediction Serving System
Clipper: A Low-Latency Online Prediction Serving SystemDatabricks
 
Deploying Kafka Streams Applications with Docker and Kubernetes
Deploying Kafka Streams Applications with Docker and KubernetesDeploying Kafka Streams Applications with Docker and Kubernetes
Deploying Kafka Streams Applications with Docker and Kubernetesconfluent
 
You Must Construct Additional Pipelines: Pub-Sub on Kafka at Blizzard
You Must Construct Additional Pipelines: Pub-Sub on Kafka at Blizzard You Must Construct Additional Pipelines: Pub-Sub on Kafka at Blizzard
You Must Construct Additional Pipelines: Pub-Sub on Kafka at Blizzard confluent
 
More Data, More Problems: Scaling Kafka-Mirroring Pipelines at LinkedIn
More Data, More Problems: Scaling Kafka-Mirroring Pipelines at LinkedIn More Data, More Problems: Scaling Kafka-Mirroring Pipelines at LinkedIn
More Data, More Problems: Scaling Kafka-Mirroring Pipelines at LinkedIn confluent
 
Apache Beam @ GCPUG.TW Flink.TW 20161006
Apache Beam @ GCPUG.TW Flink.TW 20161006Apache Beam @ GCPUG.TW Flink.TW 20161006
Apache Beam @ GCPUG.TW Flink.TW 20161006Randy Huang
 
Putting Kafka Together with the Best of Google Cloud Platform
Putting Kafka Together with the Best of Google Cloud Platform Putting Kafka Together with the Best of Google Cloud Platform
Putting Kafka Together with the Best of Google Cloud Platform confluent
 
High Available Task Scheduling Design using Kafka and Kafka Streams | Naveen ...
High Available Task Scheduling Design using Kafka and Kafka Streams | Naveen ...High Available Task Scheduling Design using Kafka and Kafka Streams | Naveen ...
High Available Task Scheduling Design using Kafka and Kafka Streams | Naveen ...HostedbyConfluent
 
Apache Beam and Google Cloud Dataflow - IDG - final
Apache Beam and Google Cloud Dataflow - IDG - finalApache Beam and Google Cloud Dataflow - IDG - final
Apache Beam and Google Cloud Dataflow - IDG - finalSub Szabolcs Feczak
 
Leveraging Microservice Architectures & Event-Driven Systems for Global APIs
Leveraging Microservice Architectures & Event-Driven Systems for Global APIsLeveraging Microservice Architectures & Event-Driven Systems for Global APIs
Leveraging Microservice Architectures & Event-Driven Systems for Global APIsconfluent
 
From my sql to postgresql using kafka+debezium
From my sql to postgresql using kafka+debeziumFrom my sql to postgresql using kafka+debezium
From my sql to postgresql using kafka+debeziumClement Demonchy
 
Introduction to Streaming with Apache Flink
Introduction to Streaming with Apache FlinkIntroduction to Streaming with Apache Flink
Introduction to Streaming with Apache FlinkTugdual Grall
 
Spark and S3 with Ryan Blue
Spark and S3 with Ryan BlueSpark and S3 with Ryan Blue
Spark and S3 with Ryan BlueDatabricks
 
Serverless and Streaming: Building ‘eBay’ by ‘Turning the Database Inside Out’
Serverless and Streaming: Building ‘eBay’ by ‘Turning the Database Inside Out’ Serverless and Streaming: Building ‘eBay’ by ‘Turning the Database Inside Out’
Serverless and Streaming: Building ‘eBay’ by ‘Turning the Database Inside Out’ confluent
 
Ingesting and Processing IoT Data - using MQTT, Kafka Connect and KSQL
Ingesting and Processing IoT Data - using MQTT, Kafka Connect and KSQLIngesting and Processing IoT Data - using MQTT, Kafka Connect and KSQL
Ingesting and Processing IoT Data - using MQTT, Kafka Connect and KSQLGuido Schmutz
 
Exactly-Once Made Easy: Transactional Messaging Improvement for Usability and...
Exactly-Once Made Easy: Transactional Messaging Improvement for Usability and...Exactly-Once Made Easy: Transactional Messaging Improvement for Usability and...
Exactly-Once Made Easy: Transactional Messaging Improvement for Usability and...HostedbyConfluent
 
Flink Forward San Francisco 2018: Steven Wu - "Scaling Flink in Cloud"
Flink Forward San Francisco 2018: Steven Wu - "Scaling Flink in Cloud" Flink Forward San Francisco 2018: Steven Wu - "Scaling Flink in Cloud"
Flink Forward San Francisco 2018: Steven Wu - "Scaling Flink in Cloud" Flink Forward
 
The State of Stream Processing
The State of Stream ProcessingThe State of Stream Processing
The State of Stream Processingconfluent
 
Spark (Structured) Streaming vs. Kafka Streams
Spark (Structured) Streaming vs. Kafka StreamsSpark (Structured) Streaming vs. Kafka Streams
Spark (Structured) Streaming vs. Kafka StreamsGuido Schmutz
 

Tendances (20)

Data Pipeline at Tapad
Data Pipeline at TapadData Pipeline at Tapad
Data Pipeline at Tapad
 
Clipper: A Low-Latency Online Prediction Serving System
Clipper: A Low-Latency Online Prediction Serving SystemClipper: A Low-Latency Online Prediction Serving System
Clipper: A Low-Latency Online Prediction Serving System
 
Deploying Kafka Streams Applications with Docker and Kubernetes
Deploying Kafka Streams Applications with Docker and KubernetesDeploying Kafka Streams Applications with Docker and Kubernetes
Deploying Kafka Streams Applications with Docker and Kubernetes
 
You Must Construct Additional Pipelines: Pub-Sub on Kafka at Blizzard
You Must Construct Additional Pipelines: Pub-Sub on Kafka at Blizzard You Must Construct Additional Pipelines: Pub-Sub on Kafka at Blizzard
You Must Construct Additional Pipelines: Pub-Sub on Kafka at Blizzard
 
More Data, More Problems: Scaling Kafka-Mirroring Pipelines at LinkedIn
More Data, More Problems: Scaling Kafka-Mirroring Pipelines at LinkedIn More Data, More Problems: Scaling Kafka-Mirroring Pipelines at LinkedIn
More Data, More Problems: Scaling Kafka-Mirroring Pipelines at LinkedIn
 
Apache Beam @ GCPUG.TW Flink.TW 20161006
Apache Beam @ GCPUG.TW Flink.TW 20161006Apache Beam @ GCPUG.TW Flink.TW 20161006
Apache Beam @ GCPUG.TW Flink.TW 20161006
 
Putting Kafka Together with the Best of Google Cloud Platform
Putting Kafka Together with the Best of Google Cloud Platform Putting Kafka Together with the Best of Google Cloud Platform
Putting Kafka Together with the Best of Google Cloud Platform
 
Introduction to Apache Beam
Introduction to Apache BeamIntroduction to Apache Beam
Introduction to Apache Beam
 
High Available Task Scheduling Design using Kafka and Kafka Streams | Naveen ...
High Available Task Scheduling Design using Kafka and Kafka Streams | Naveen ...High Available Task Scheduling Design using Kafka and Kafka Streams | Naveen ...
High Available Task Scheduling Design using Kafka and Kafka Streams | Naveen ...
 
Apache Beam and Google Cloud Dataflow - IDG - final
Apache Beam and Google Cloud Dataflow - IDG - finalApache Beam and Google Cloud Dataflow - IDG - final
Apache Beam and Google Cloud Dataflow - IDG - final
 
Leveraging Microservice Architectures & Event-Driven Systems for Global APIs
Leveraging Microservice Architectures & Event-Driven Systems for Global APIsLeveraging Microservice Architectures & Event-Driven Systems for Global APIs
Leveraging Microservice Architectures & Event-Driven Systems for Global APIs
 
From my sql to postgresql using kafka+debezium
From my sql to postgresql using kafka+debeziumFrom my sql to postgresql using kafka+debezium
From my sql to postgresql using kafka+debezium
 
Introduction to Streaming with Apache Flink
Introduction to Streaming with Apache FlinkIntroduction to Streaming with Apache Flink
Introduction to Streaming with Apache Flink
 
Spark and S3 with Ryan Blue
Spark and S3 with Ryan BlueSpark and S3 with Ryan Blue
Spark and S3 with Ryan Blue
 
Serverless and Streaming: Building ‘eBay’ by ‘Turning the Database Inside Out’
Serverless and Streaming: Building ‘eBay’ by ‘Turning the Database Inside Out’ Serverless and Streaming: Building ‘eBay’ by ‘Turning the Database Inside Out’
Serverless and Streaming: Building ‘eBay’ by ‘Turning the Database Inside Out’
 
Ingesting and Processing IoT Data - using MQTT, Kafka Connect and KSQL
Ingesting and Processing IoT Data - using MQTT, Kafka Connect and KSQLIngesting and Processing IoT Data - using MQTT, Kafka Connect and KSQL
Ingesting and Processing IoT Data - using MQTT, Kafka Connect and KSQL
 
Exactly-Once Made Easy: Transactional Messaging Improvement for Usability and...
Exactly-Once Made Easy: Transactional Messaging Improvement for Usability and...Exactly-Once Made Easy: Transactional Messaging Improvement for Usability and...
Exactly-Once Made Easy: Transactional Messaging Improvement for Usability and...
 
Flink Forward San Francisco 2018: Steven Wu - "Scaling Flink in Cloud"
Flink Forward San Francisco 2018: Steven Wu - "Scaling Flink in Cloud" Flink Forward San Francisco 2018: Steven Wu - "Scaling Flink in Cloud"
Flink Forward San Francisco 2018: Steven Wu - "Scaling Flink in Cloud"
 
The State of Stream Processing
The State of Stream ProcessingThe State of Stream Processing
The State of Stream Processing
 
Spark (Structured) Streaming vs. Kafka Streams
Spark (Structured) Streaming vs. Kafka StreamsSpark (Structured) Streaming vs. Kafka Streams
Spark (Structured) Streaming vs. Kafka Streams
 

Similaire à DeNA West & BigQuery

From 6 hours to 1 minute... in 2 days! How we managed to stream our (long) Ha...
From 6 hours to 1 minute... in 2 days! How we managed to stream our (long) Ha...From 6 hours to 1 minute... in 2 days! How we managed to stream our (long) Ha...
From 6 hours to 1 minute... in 2 days! How we managed to stream our (long) Ha...Dataconomy Media
 
Big Data Berlin - Criteo
Big Data Berlin - CriteoBig Data Berlin - Criteo
Big Data Berlin - CriteoSofian Djamaa
 
VoxxedDays Bucharest 2017 - Powering interactive data analysis with Google Bi...
VoxxedDays Bucharest 2017 - Powering interactive data analysis with Google Bi...VoxxedDays Bucharest 2017 - Powering interactive data analysis with Google Bi...
VoxxedDays Bucharest 2017 - Powering interactive data analysis with Google Bi...Márton Kodok
 
Voxxed Days Cluj - Powering interactive data analysis with Google BigQuery
Voxxed Days Cluj - Powering interactive data analysis with Google BigQueryVoxxed Days Cluj - Powering interactive data analysis with Google BigQuery
Voxxed Days Cluj - Powering interactive data analysis with Google BigQueryMárton Kodok
 
Melt iron heterogeneous computing - lspe v3
Melt iron   heterogeneous computing - lspe v3Melt iron   heterogeneous computing - lspe v3
Melt iron heterogeneous computing - lspe v3Rinka Singh
 
CodeCamp Iasi - Creating serverless data analytics system on GCP using BigQuery
CodeCamp Iasi - Creating serverless data analytics system on GCP using BigQueryCodeCamp Iasi - Creating serverless data analytics system on GCP using BigQuery
CodeCamp Iasi - Creating serverless data analytics system on GCP using BigQueryMárton Kodok
 
DevOps Days Austin 2014 - Vendor DEMO
DevOps Days Austin 2014 - Vendor DEMODevOps Days Austin 2014 - Vendor DEMO
DevOps Days Austin 2014 - Vendor DEMOstonevil
 
Rumble Entertainment GDC 2014: Maximizing Revenue Through Logging
Rumble Entertainment GDC 2014: Maximizing Revenue Through LoggingRumble Entertainment GDC 2014: Maximizing Revenue Through Logging
Rumble Entertainment GDC 2014: Maximizing Revenue Through LoggingSolarWinds Loggly
 
Atlassian User Group NYC April 27 2017 Presentations
Atlassian User Group NYC April 27 2017 PresentationsAtlassian User Group NYC April 27 2017 Presentations
Atlassian User Group NYC April 27 2017 PresentationsMarlon Palha
 
A Big (Query) Frog in a Small Pond, Jakub Motyl, BuffPanel
A Big (Query) Frog in a Small Pond, Jakub Motyl, BuffPanelA Big (Query) Frog in a Small Pond, Jakub Motyl, BuffPanel
A Big (Query) Frog in a Small Pond, Jakub Motyl, BuffPanelData Science Club
 
GDG DevFest Ukraine - Powering Interactive Data Analysis with Google BigQuery
GDG DevFest Ukraine - Powering Interactive Data Analysis with Google BigQueryGDG DevFest Ukraine - Powering Interactive Data Analysis with Google BigQuery
GDG DevFest Ukraine - Powering Interactive Data Analysis with Google BigQueryMárton Kodok
 
Using Machine Learning at Scale: A Gaming Industry Experience!
Using Machine Learning at Scale: A Gaming Industry Experience!Using Machine Learning at Scale: A Gaming Industry Experience!
Using Machine Learning at Scale: A Gaming Industry Experience!Databricks
 
[RakutenTechConf2013] [D-3_2] Counting Big Data by Streaming Algorithms
[RakutenTechConf2013] [D-3_2] Counting Big Databy Streaming Algorithms[RakutenTechConf2013] [D-3_2] Counting Big Databy Streaming Algorithms
[RakutenTechConf2013] [D-3_2] Counting Big Data by Streaming AlgorithmsRakuten Group, Inc.
 
Designing a pragmatic back-end service for mobile games
Designing a pragmatic back-end service for mobile gamesDesigning a pragmatic back-end service for mobile games
Designing a pragmatic back-end service for mobile gamesiFunFactory Inc.
 
Building Data Products with BigQuery for PPC and SEO (SMX 2022)
Building Data Products with BigQuery for PPC and SEO (SMX 2022)Building Data Products with BigQuery for PPC and SEO (SMX 2022)
Building Data Products with BigQuery for PPC and SEO (SMX 2022)Christopher Gutknecht
 
Big-Data Server Farm Architecture
Big-Data Server Farm Architecture Big-Data Server Farm Architecture
Big-Data Server Farm Architecture Jordan Chung
 
SEO for Large/Enterprise Websites - Data & Tech Side
SEO for Large/Enterprise Websites - Data & Tech SideSEO for Large/Enterprise Websites - Data & Tech Side
SEO for Large/Enterprise Websites - Data & Tech SideDominic Woodman
 
Database Shootout: What's best for BI?
Database Shootout: What's best for BI?Database Shootout: What's best for BI?
Database Shootout: What's best for BI?Jos van Dongen
 

Similaire à DeNA West & BigQuery (20)

From 6 hours to 1 minute... in 2 days! How we managed to stream our (long) Ha...
From 6 hours to 1 minute... in 2 days! How we managed to stream our (long) Ha...From 6 hours to 1 minute... in 2 days! How we managed to stream our (long) Ha...
From 6 hours to 1 minute... in 2 days! How we managed to stream our (long) Ha...
 
Big Data Berlin - Criteo
Big Data Berlin - CriteoBig Data Berlin - Criteo
Big Data Berlin - Criteo
 
VoxxedDays Bucharest 2017 - Powering interactive data analysis with Google Bi...
VoxxedDays Bucharest 2017 - Powering interactive data analysis with Google Bi...VoxxedDays Bucharest 2017 - Powering interactive data analysis with Google Bi...
VoxxedDays Bucharest 2017 - Powering interactive data analysis with Google Bi...
 
Voxxed Days Cluj - Powering interactive data analysis with Google BigQuery
Voxxed Days Cluj - Powering interactive data analysis with Google BigQueryVoxxed Days Cluj - Powering interactive data analysis with Google BigQuery
Voxxed Days Cluj - Powering interactive data analysis with Google BigQuery
 
Melt iron heterogeneous computing - lspe v3
Melt iron   heterogeneous computing - lspe v3Melt iron   heterogeneous computing - lspe v3
Melt iron heterogeneous computing - lspe v3
 
CodeCamp Iasi - Creating serverless data analytics system on GCP using BigQuery
CodeCamp Iasi - Creating serverless data analytics system on GCP using BigQueryCodeCamp Iasi - Creating serverless data analytics system on GCP using BigQuery
CodeCamp Iasi - Creating serverless data analytics system on GCP using BigQuery
 
DevOps Days Austin 2014 - Vendor DEMO
DevOps Days Austin 2014 - Vendor DEMODevOps Days Austin 2014 - Vendor DEMO
DevOps Days Austin 2014 - Vendor DEMO
 
Rumble Entertainment GDC 2014: Maximizing Revenue Through Logging
Rumble Entertainment GDC 2014: Maximizing Revenue Through LoggingRumble Entertainment GDC 2014: Maximizing Revenue Through Logging
Rumble Entertainment GDC 2014: Maximizing Revenue Through Logging
 
Atlassian User Group NYC April 27 2017 Presentations
Atlassian User Group NYC April 27 2017 PresentationsAtlassian User Group NYC April 27 2017 Presentations
Atlassian User Group NYC April 27 2017 Presentations
 
A Big (Query) Frog in a Small Pond, Jakub Motyl, BuffPanel
A Big (Query) Frog in a Small Pond, Jakub Motyl, BuffPanelA Big (Query) Frog in a Small Pond, Jakub Motyl, BuffPanel
A Big (Query) Frog in a Small Pond, Jakub Motyl, BuffPanel
 
GDG DevFest Ukraine - Powering Interactive Data Analysis with Google BigQuery
GDG DevFest Ukraine - Powering Interactive Data Analysis with Google BigQueryGDG DevFest Ukraine - Powering Interactive Data Analysis with Google BigQuery
GDG DevFest Ukraine - Powering Interactive Data Analysis with Google BigQuery
 
Using Machine Learning at Scale: A Gaming Industry Experience!
Using Machine Learning at Scale: A Gaming Industry Experience!Using Machine Learning at Scale: A Gaming Industry Experience!
Using Machine Learning at Scale: A Gaming Industry Experience!
 
[RakutenTechConf2013] [D-3_2] Counting Big Data by Streaming Algorithms
[RakutenTechConf2013] [D-3_2] Counting Big Databy Streaming Algorithms[RakutenTechConf2013] [D-3_2] Counting Big Databy Streaming Algorithms
[RakutenTechConf2013] [D-3_2] Counting Big Data by Streaming Algorithms
 
PM Club session 6
PM Club session 6PM Club session 6
PM Club session 6
 
Designing a pragmatic back-end service for mobile games
Designing a pragmatic back-end service for mobile gamesDesigning a pragmatic back-end service for mobile games
Designing a pragmatic back-end service for mobile games
 
Building Data Products with BigQuery for PPC and SEO (SMX 2022)
Building Data Products with BigQuery for PPC and SEO (SMX 2022)Building Data Products with BigQuery for PPC and SEO (SMX 2022)
Building Data Products with BigQuery for PPC and SEO (SMX 2022)
 
How will development change with LLMs
How will development change with LLMsHow will development change with LLMs
How will development change with LLMs
 
Big-Data Server Farm Architecture
Big-Data Server Farm Architecture Big-Data Server Farm Architecture
Big-Data Server Farm Architecture
 
SEO for Large/Enterprise Websites - Data & Tech Side
SEO for Large/Enterprise Websites - Data & Tech SideSEO for Large/Enterprise Websites - Data & Tech Side
SEO for Large/Enterprise Websites - Data & Tech Side
 
Database Shootout: What's best for BI?
Database Shootout: What's best for BI?Database Shootout: What's best for BI?
Database Shootout: What's best for BI?
 

Dernier

APNIC Updates presented by Paul Wilson at ARIN 53
APNIC Updates presented by Paul Wilson at ARIN 53APNIC Updates presented by Paul Wilson at ARIN 53
APNIC Updates presented by Paul Wilson at ARIN 53APNIC
 
一比一原版奥兹学院毕业证如何办理
一比一原版奥兹学院毕业证如何办理一比一原版奥兹学院毕业证如何办理
一比一原版奥兹学院毕业证如何办理F
 
Tadepalligudem Escorts Service Girl ^ 9332606886, WhatsApp Anytime Tadepallig...
Tadepalligudem Escorts Service Girl ^ 9332606886, WhatsApp Anytime Tadepallig...Tadepalligudem Escorts Service Girl ^ 9332606886, WhatsApp Anytime Tadepallig...
Tadepalligudem Escorts Service Girl ^ 9332606886, WhatsApp Anytime Tadepallig...meghakumariji156
 
在线制作约克大学毕业证(yu毕业证)在读证明认证可查
在线制作约克大学毕业证(yu毕业证)在读证明认证可查在线制作约克大学毕业证(yu毕业证)在读证明认证可查
在线制作约克大学毕业证(yu毕业证)在读证明认证可查ydyuyu
 
Russian Call girls in Abu Dhabi 0508644382 Abu Dhabi Call girls
Russian Call girls in Abu Dhabi 0508644382 Abu Dhabi Call girlsRussian Call girls in Abu Dhabi 0508644382 Abu Dhabi Call girls
Russian Call girls in Abu Dhabi 0508644382 Abu Dhabi Call girlsMonica Sydney
 
2nd Solid Symposium: Solid Pods vs Personal Knowledge Graphs
2nd Solid Symposium: Solid Pods vs Personal Knowledge Graphs2nd Solid Symposium: Solid Pods vs Personal Knowledge Graphs
2nd Solid Symposium: Solid Pods vs Personal Knowledge GraphsEleniIlkou
 
原版制作美国爱荷华大学毕业证(iowa毕业证书)学位证网上存档可查
原版制作美国爱荷华大学毕业证(iowa毕业证书)学位证网上存档可查原版制作美国爱荷华大学毕业证(iowa毕业证书)学位证网上存档可查
原版制作美国爱荷华大学毕业证(iowa毕业证书)学位证网上存档可查ydyuyu
 
Story Board.pptxrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrr
Story Board.pptxrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrStory Board.pptxrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrr
Story Board.pptxrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrHenryBriggs2
 
一比一原版(Offer)康考迪亚大学毕业证学位证靠谱定制
一比一原版(Offer)康考迪亚大学毕业证学位证靠谱定制一比一原版(Offer)康考迪亚大学毕业证学位证靠谱定制
一比一原版(Offer)康考迪亚大学毕业证学位证靠谱定制pxcywzqs
 
哪里办理美国迈阿密大学毕业证(本硕)umiami在读证明存档可查
哪里办理美国迈阿密大学毕业证(本硕)umiami在读证明存档可查哪里办理美国迈阿密大学毕业证(本硕)umiami在读证明存档可查
哪里办理美国迈阿密大学毕业证(本硕)umiami在读证明存档可查ydyuyu
 
pdfcoffee.com_business-ethics-q3m7-pdf-free.pdf
pdfcoffee.com_business-ethics-q3m7-pdf-free.pdfpdfcoffee.com_business-ethics-q3m7-pdf-free.pdf
pdfcoffee.com_business-ethics-q3m7-pdf-free.pdfJOHNBEBONYAP1
 
20240508 QFM014 Elixir Reading List April 2024.pdf
20240508 QFM014 Elixir Reading List April 2024.pdf20240508 QFM014 Elixir Reading List April 2024.pdf
20240508 QFM014 Elixir Reading List April 2024.pdfMatthew Sinclair
 
Best SEO Services Company in Dallas | Best SEO Agency Dallas
Best SEO Services Company in Dallas | Best SEO Agency DallasBest SEO Services Company in Dallas | Best SEO Agency Dallas
Best SEO Services Company in Dallas | Best SEO Agency DallasDigicorns Technologies
 
Indian Escort in Abu DHabi 0508644382 Abu Dhabi Escorts
Indian Escort in Abu DHabi 0508644382 Abu Dhabi EscortsIndian Escort in Abu DHabi 0508644382 Abu Dhabi Escorts
Indian Escort in Abu DHabi 0508644382 Abu Dhabi EscortsMonica Sydney
 
Call girls Service in Ajman 0505086370 Ajman call girls
Call girls Service in Ajman 0505086370 Ajman call girlsCall girls Service in Ajman 0505086370 Ajman call girls
Call girls Service in Ajman 0505086370 Ajman call girlsMonica Sydney
 
Ballia Escorts Service Girl ^ 9332606886, WhatsApp Anytime Ballia
Ballia Escorts Service Girl ^ 9332606886, WhatsApp Anytime BalliaBallia Escorts Service Girl ^ 9332606886, WhatsApp Anytime Ballia
Ballia Escorts Service Girl ^ 9332606886, WhatsApp Anytime Balliameghakumariji156
 
Mira Road Housewife Call Girls 07506202331, Nalasopara Call Girls
Mira Road Housewife Call Girls 07506202331, Nalasopara Call GirlsMira Road Housewife Call Girls 07506202331, Nalasopara Call Girls
Mira Road Housewife Call Girls 07506202331, Nalasopara Call GirlsPriya Reddy
 
Local Call Girls in Seoni 9332606886 HOT & SEXY Models beautiful and charmin...
Local Call Girls in Seoni  9332606886 HOT & SEXY Models beautiful and charmin...Local Call Girls in Seoni  9332606886 HOT & SEXY Models beautiful and charmin...
Local Call Girls in Seoni 9332606886 HOT & SEXY Models beautiful and charmin...kumargunjan9515
 
Meaning of On page SEO & its process in detail.
Meaning of On page SEO & its process in detail.Meaning of On page SEO & its process in detail.
Meaning of On page SEO & its process in detail.krishnachandrapal52
 

Dernier (20)

APNIC Updates presented by Paul Wilson at ARIN 53
APNIC Updates presented by Paul Wilson at ARIN 53APNIC Updates presented by Paul Wilson at ARIN 53
APNIC Updates presented by Paul Wilson at ARIN 53
 
一比一原版奥兹学院毕业证如何办理
一比一原版奥兹学院毕业证如何办理一比一原版奥兹学院毕业证如何办理
一比一原版奥兹学院毕业证如何办理
 
Tadepalligudem Escorts Service Girl ^ 9332606886, WhatsApp Anytime Tadepallig...
Tadepalligudem Escorts Service Girl ^ 9332606886, WhatsApp Anytime Tadepallig...Tadepalligudem Escorts Service Girl ^ 9332606886, WhatsApp Anytime Tadepallig...
Tadepalligudem Escorts Service Girl ^ 9332606886, WhatsApp Anytime Tadepallig...
 
在线制作约克大学毕业证(yu毕业证)在读证明认证可查
在线制作约克大学毕业证(yu毕业证)在读证明认证可查在线制作约克大学毕业证(yu毕业证)在读证明认证可查
在线制作约克大学毕业证(yu毕业证)在读证明认证可查
 
call girls in Anand Vihar (delhi) call me [🔝9953056974🔝] escort service 24X7
call girls in Anand Vihar (delhi) call me [🔝9953056974🔝] escort service 24X7call girls in Anand Vihar (delhi) call me [🔝9953056974🔝] escort service 24X7
call girls in Anand Vihar (delhi) call me [🔝9953056974🔝] escort service 24X7
 
Russian Call girls in Abu Dhabi 0508644382 Abu Dhabi Call girls
Russian Call girls in Abu Dhabi 0508644382 Abu Dhabi Call girlsRussian Call girls in Abu Dhabi 0508644382 Abu Dhabi Call girls
Russian Call girls in Abu Dhabi 0508644382 Abu Dhabi Call girls
 
2nd Solid Symposium: Solid Pods vs Personal Knowledge Graphs
2nd Solid Symposium: Solid Pods vs Personal Knowledge Graphs2nd Solid Symposium: Solid Pods vs Personal Knowledge Graphs
2nd Solid Symposium: Solid Pods vs Personal Knowledge Graphs
 
原版制作美国爱荷华大学毕业证(iowa毕业证书)学位证网上存档可查
原版制作美国爱荷华大学毕业证(iowa毕业证书)学位证网上存档可查原版制作美国爱荷华大学毕业证(iowa毕业证书)学位证网上存档可查
原版制作美国爱荷华大学毕业证(iowa毕业证书)学位证网上存档可查
 
Story Board.pptxrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrr
Story Board.pptxrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrStory Board.pptxrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrr
Story Board.pptxrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrr
 
一比一原版(Offer)康考迪亚大学毕业证学位证靠谱定制
一比一原版(Offer)康考迪亚大学毕业证学位证靠谱定制一比一原版(Offer)康考迪亚大学毕业证学位证靠谱定制
一比一原版(Offer)康考迪亚大学毕业证学位证靠谱定制
 
哪里办理美国迈阿密大学毕业证(本硕)umiami在读证明存档可查
哪里办理美国迈阿密大学毕业证(本硕)umiami在读证明存档可查哪里办理美国迈阿密大学毕业证(本硕)umiami在读证明存档可查
哪里办理美国迈阿密大学毕业证(本硕)umiami在读证明存档可查
 
pdfcoffee.com_business-ethics-q3m7-pdf-free.pdf
pdfcoffee.com_business-ethics-q3m7-pdf-free.pdfpdfcoffee.com_business-ethics-q3m7-pdf-free.pdf
pdfcoffee.com_business-ethics-q3m7-pdf-free.pdf
 
20240508 QFM014 Elixir Reading List April 2024.pdf
20240508 QFM014 Elixir Reading List April 2024.pdf20240508 QFM014 Elixir Reading List April 2024.pdf
20240508 QFM014 Elixir Reading List April 2024.pdf
 
Best SEO Services Company in Dallas | Best SEO Agency Dallas
Best SEO Services Company in Dallas | Best SEO Agency DallasBest SEO Services Company in Dallas | Best SEO Agency Dallas
Best SEO Services Company in Dallas | Best SEO Agency Dallas
 
Indian Escort in Abu DHabi 0508644382 Abu Dhabi Escorts
Indian Escort in Abu DHabi 0508644382 Abu Dhabi EscortsIndian Escort in Abu DHabi 0508644382 Abu Dhabi Escorts
Indian Escort in Abu DHabi 0508644382 Abu Dhabi Escorts
 
Call girls Service in Ajman 0505086370 Ajman call girls
Call girls Service in Ajman 0505086370 Ajman call girlsCall girls Service in Ajman 0505086370 Ajman call girls
Call girls Service in Ajman 0505086370 Ajman call girls
 
Ballia Escorts Service Girl ^ 9332606886, WhatsApp Anytime Ballia
Ballia Escorts Service Girl ^ 9332606886, WhatsApp Anytime BalliaBallia Escorts Service Girl ^ 9332606886, WhatsApp Anytime Ballia
Ballia Escorts Service Girl ^ 9332606886, WhatsApp Anytime Ballia
 
Mira Road Housewife Call Girls 07506202331, Nalasopara Call Girls
Mira Road Housewife Call Girls 07506202331, Nalasopara Call GirlsMira Road Housewife Call Girls 07506202331, Nalasopara Call Girls
Mira Road Housewife Call Girls 07506202331, Nalasopara Call Girls
 
Local Call Girls in Seoni 9332606886 HOT & SEXY Models beautiful and charmin...
Local Call Girls in Seoni  9332606886 HOT & SEXY Models beautiful and charmin...Local Call Girls in Seoni  9332606886 HOT & SEXY Models beautiful and charmin...
Local Call Girls in Seoni 9332606886 HOT & SEXY Models beautiful and charmin...
 
Meaning of On page SEO & its process in detail.
Meaning of On page SEO & its process in detail.Meaning of On page SEO & its process in detail.
Meaning of On page SEO & its process in detail.
 

DeNA West & BigQuery

  • 1. DeNA West & BigQuery Yoshiki Izawa
  • 3. Who is DeNA West? • 1st Party: developed in house • 2nd-3rd Party: Developed externally with/without our help and published by DeNA • JP 1st Party: Import hits made by DeNA in Japan
  • 4. What data do we care about? Standard Game KPIs Marketing Data Custom Game Insight
  • 5. What’s our data like? of raw logs per minute ~60MB of raw logs per day ~50GB
  • 6. How were we dealing with it? Log Table Logs from over 100 titles and multiple studios 42TB raw log data from May 2011 to Jan 2015 Accessed via HiveQL
  • 7. What were our data woes? Data sources ETL Table Storage Data access for ad hoc analysis Visualization solutions Visualization workflows
  • 8. Issue #1 - 3 Hour Data Delay Production Collector (add rats, scrip) Amazon S3 (for backup) ETL (Validation, Normalization) PS Logs GS Logs GC/PC Logs
  • 9. Issue #2 - Too Many Cooks Hadoop Marketing Finance Game Analysts User Retention Clipart credit: iconka.com, webdesignhot.com
  • 10. Issue #3 - Slow Queries
  • 11. What was our solution? Simplify common tech using AppEngine and BigQuery
  • 12. Solution #1 - BigQuery Instantly Ingestion Google API Ad Data PS / PC Logs GC/GC Logs PF Data
  • 13. Solution #1 - BigQuery Instantly Ingestion (original) Gateway module PS / PC Logs GC/GC Logs Pull Task Queue Game Project Common Project App Engine Big Query streaming insert Game ProjectGame ProjectGame Project
  • 14. Solution #1 - BigQuery Instantly Ingestion (current) Gateway module PS / PC Logs GC/GC Logs Cloud Storage Game Project Common Project App Engine Big Query Game ProjectGame ProjectGame Project Log Common Project TEMP dataset batch load every 3min create log timestamp base files by 3min cron job bq query every 3min
  • 15. Solution #2 - BigQuery Scaling Scaling + support = happier analysts! Wh ya gonna call?
  • 16. Solution #2 - BigQuery Permissions
  • 17. Solution #3 - BigQuery is fast
  • 18. Lessons Learned • Quotas • Different cost structure • New(ish) Product - some features may not work as expected
  • 19. Is BigQuery for you? • Cutting edge tech • High control of your analysis • Zero maintenance
  • 21. Let’s see some data! Dropped entry price, increased conversion Reduced overall revenue at start of funnel but increase overall
  • 22. Let’s see some data! Ruby Medal Balance over Time Tutorial Completion RateTCP Latency Distribution

Notes de l'éditeur

  1. Don’t plan on saying anything here. This is just the slide to bring up while you’re getting on stage. But you can certainly duplicate this if you want.
  2. Hi everyone! I work at DeNA, Japanese company growing our western presence in gaming. Last year, we had just under 2 Billion dollars worth of virtual currency spent in Japan and around 270 million dollars across the rest of the world.
  3. Internally like Blood Brothers 2, or with licensed IP like Transformers, Star Wars, and Marvel. And we’re bringing over Final Fantasy: Record Keeper, one of our biggest hits in Japan that’s making us over $10 million dollars a month there.
  4. common logs across all our games to compare KPIs. We get marketing data from ad vendors on install sources and spend. We implement custom logs in each game for design tuning.
  5. <have time> On busy days, we get around 60 megabytes of raw player logs per minute and 50 gigabites of raw logs per day. <struggled to process this volume>
  6. Old solution: Hadoop cluster accessed primarily via Hive. All of our player logs since May 2011 from over 100 titles across multiple studios is stored in one big 42TB table
  7. Old infrastructure <pause> 15 seconds is definitely not enough time to describe it all. We had a pretty complicated set up before, and we would run into various bottlenecks and failure points that I’ll dive into next.
  8. Our first big issue was a hefty delay between when a player would trigger logs to when analysts could query the data. The log collection and ETL process took a while, and analysts would need to wait 3 or more hours for new data - not fun when your games run live events.
  9. Next, as DeNA West grew our portfolio, we also grew our data users - our increasing team of analysts would clog our systems and we had issues controlling permissions, especially with external developers.
  10. And - this one drove me crazy -Queries took so long to run you’d forget what you were looking for, and exploratory analysis was clunky - just not as fun and intuitive as it should be.
  11. <have time> So how did we decide to solve these issues? We simplified our games’ common tech in the West by using Google AppEngine as a platform server and Google BigQuery for analysis.
  12. This addressed a lot of the problems we used to deal with. For starters, we experimented with Google’s Streaming API, Cloud Logging, and other set ups to get our logs almost instantly after they’re sent - not 3 hours later.
  13. Gateway module receives ~35,000 records/min Pull Tasks queue handles 8K~9K/min including retries Hit URLFetch Quota on GAE
  14. 3 queries per minute per game x 7 game projects x 1440 minutes per day = 30,240 queries per day
  15. Not to mention pager duty for our Hadoop cluster will soon be a thing of the past. Now if we have too many users clogging the system, it’s Google’s problem, not ours. BigQuery is built to scale, so if we launch 20 more titles, we don’t need to worry about stress on our cluster like we used to.
  16. And we can much more flexibly control permissions - internally as well as externally. For example, we can easily share 3rd party game data with the partner developer, an issue we struggled with before. <if time, our old solution for this was a nightmare>
  17. And queries are SO much faster. In this video I’m getting tutorial completion rate by country, platform, and device. As the rules go, I only have 15 seconds to crunch over 150 gigs data - and it’s done! In Hadoop, the same query over the same volume took 2 minutes.
  18. Not to say it’s been completely smooth sailing in our transition, mostly because we’ve had to look at things differently. We’ve learned to keep an eye on hitting quotas, as well as query and storage costs. And given it’s a newer product, we’ve had some problems where things don’t work as expected. It’s been crucial to be able to iterate quickly and work with Google when we’ve noticed issues.
  19. <time, sum bq has helped us deal with some headaches> We’ve felt that it’s been a good solution given that we like doing our analysis in house, but don’t want to maintain a cluster ourselves.
  20. Before I go, show you data with Tableau. In Blood Brothers 2 for example, we saw an issue where players lost easy missions early on, so we improved educating them and drilling into the data by day we could see our change helped.
  21. dropped the entry price for a live event’s step-up gacha, which is one that has unlocking steps increasing in price. Though this meant lower revenue early in the funnel, overall revenue (the green line) was due to increased conversion to the end
  22. We always strive to drive actions with data - prioritizing engineering effort by monitoring game performance, optimizing tutorial and purchase funnels, tuning our games, and iterating on live events which are our primary drive for monetization.