SlideShare uma empresa Scribd logo
1 de 70
Baixar para ler offline
使⽤用 Elasticsearch 及 Kibana 進⾏行
巨量資料搜尋及視覺化
Suiting @ DSC 2015
Who	
  Am	
  I
曾書庭	
  (@suitingtseng)	
  
Data	
  Engineer	
  
Gogolook	
  
Jeff, CEO
As	
  a	
  data	
  engineer	
  in	
  Gogolook…
書庭,請問我們的	
  DAU	
  是多少?
As	
  a	
  data	
  engineer	
  in	
  Gogolook…
書庭,請問我們的	
  DAU	
  是多少?
我算⼀一下...
As	
  a	
  data	
  engineer	
  in	
  Gogolook…
書庭,請問我們的	
  DAU	
  是多少?
資料好了嗎?
我算⼀一下...
As	
  a	
  data	
  engineer	
  in	
  Gogolook…
書庭,請問我們的	
  DAU	
  是多少?
資料好了嗎?
還在跑...
我算⼀一下...
As	
  a	
  data	
  engineer	
  in	
  Gogolook…
書庭,請問我們的	
  DAU	
  是多少?
As	
  a	
  data	
  engineer	
  in	
  Gogolook…
書庭,請問我們的	
  DAU	
  是多少?
可以分國家嗎?
As	
  a	
  data	
  engineer	
  in	
  Gogolook…
書庭,請問我們的	
  DAU	
  是多少?
可以分版本嗎?
可以分國家嗎?
As	
  a	
  data	
  engineer	
  in	
  Gogolook…
書庭,請問我們的	
  DAU	
  是多少?
可以分版本嗎?
可以看⼀一年嗎?
可以分國家嗎?
As	
  a	
  data	
  engineer	
  in	
  Gogolook…
書庭,請問我們的	
  DAU	
  是多少?
可以分版本嗎?
可以看⼀一年嗎?
可以嗎? 可以嗎? 可以嗎?
可以分國家嗎?
⼀一句話激怒⼯工程師⼤大賽
• 可以分XX嗎
⼀一句話激怒⼯工程師⼤大賽
• 可以分XX嗎	
  
• 可以畫成圖嗎	
  
• 可以給我	
  raw	
  data	
  嗎
⼀一句話激怒⼯工程師⼤大賽
• 可以分XX嗎	
  
• 可以畫成圖嗎	
  
• 可以給我	
  raw	
  data	
  嗎	
  
• 有沒有辦法知道	
  user	
  住哪裡	
  
• 可以知道哪些	
  user	
  ⽐比較有錢嗎	
  
• 下⾬雨天	
  user	
  會睡⽐比較晚嗎
Table	
  of	
  Contents
• Problems	
  
• Solution	
  Requirements	
  
• Elasticsearch	
  &	
  Kibana	
  
• In	
  Gogolook	
  
• Future
Problems
• Request-­‐response	
  model
https://medium.com/@samson_hu/building-analytics-at-500px-92e9a7005c83
Problems
• Request-­‐response	
  model	
  
• Long	
  cycle
https://medium.com/@samson_hu/building-analytics-at-500px-92e9a7005c83
Problems
• Request-­‐response	
  model	
  
• Long	
  cycle	
  
• EAAB	
  (engineer	
  as	
  a	
  bottleneck)
https://medium.com/@samson_hu/building-analytics-at-500px-92e9a7005c83
Problems
• Request-­‐response	
  model	
  
• Long	
  cycle	
  
• EAAB	
  (engineer	
  as	
  a	
  bottleneck)	
  
• HDC	
  (Hippo-­‐driven	
  company)
https://medium.com/@samson_hu/building-analytics-at-500px-92e9a7005c83
Problems
• Request-­‐response	
  model	
  
• Long	
  cycle	
  
• EAAB	
  (engineer	
  as	
  a	
  bottleneck)	
  
• HDC	
  (Hippo-­‐driven	
  company)	
  
• Lack	
  of	
  speed
https://medium.com/@samson_hu/building-analytics-at-500px-92e9a7005c83
Problems
• Request-­‐response	
  model	
  
• Long	
  innovation	
  cycle	
  
• EAAB	
  (engineer	
  as	
  a	
  bottleneck)	
  
• HDC	
  (Hippo-­‐driven	
  company)	
  
• Lack	
  of	
  speed	
  
• =>	
  We	
  are	
  not	
  alone	
  (500px)
https://medium.com/@samson_hu/building-analytics-at-500px-92e9a7005c83
Table	
  of	
  Contents
• Problems	
  
• Solution	
  Requirements	
  
• Elasticsearch	
  &	
  Kibana	
  
• In	
  Gogolook	
  
• Future
Possible	
  solutions
• Approach	
  1:

SQL	
  monkey*	
  zoo
http://www.slideshare.net/GloriaLau1/keynote-at-spark-summit/5
Possible	
  solutions
• Approach	
  1:

SQL	
  monkey	
  zoo	
  
• Approach	
  2:

Provide	
  limited	
  yet	
  easy	
  visualization
http://www.slideshare.net/GloriaLau1/keynote-at-spark-summit/5
Requirement
• Easy:	
  Even	
  CEO	
  can	
  use	
  it	
  
• Fast:	
  Must	
  be	
  interactive	
  
• Export:	
  Provide	
  the	
  csv	
  file	
  
• Big:	
  Must	
  be	
  scalable	
  
• 80-­‐20:	
  Solves	
  80%	
  problems
Table	
  of	
  Contents
• Problems	
  
• Solution	
  Requirements	
  
• Elasticsearch	
  &	
  Kibana	
  
• In	
  Gogolook	
  
• Future
Elasticsearch
• Lucene-­‐based	
  search	
  engine	
  
• Document	
  storage	
  (JSON)	
  
• Distributed,	
  scalable	
  
• Serve	
  search	
  request	
  in	
  ms	
  
• Build	
  index	
  for	
  every	
  field
Kibana
• ES	
  visualization	
  tool	
  
• No	
  code	
  required
ES	
  +	
  Kibana
• Fast:	
  index	
  every	
  field	
  
• Fast:	
  columnar	
  storage*	
  
• Big:	
  born	
  distributed/scalable	
  
• Easy:	
  GUI	
  without	
  code	
  
• Export:	
  csv
Kibana
• Discover	
  
• Visualization	
  
• Dashboard
Discover
• Raw	
  data	
  
• Check	
  data	
  	
  
• Find	
  dirty	
  data	
  
• Try	
  query
Discover
Discover
Visualization
• 8	
  visualization	
  types	
  
• 9	
  group	
  methods	
  
• 9	
  aggregation	
  values
Visualization
Visualization	
  types
Grouping	
  methods
• Date	
  histogram	
  
• Histogram	
  
• Range	
  of	
  a	
  value	
  
• Top	
  N	
  
• Filter
Aggregation	
  values
• Count	
  
• Avg,	
  Sum,	
  Min,	
  Max,	
  S.D.	
  
• Unique	
  count*	
  (Hyperloglog)	
  
• Percentile*	
  (T-­‐digest)
Visualization
• Same	
  concept,	
  different	
  graph	
  
• FILTER	
  
• GROUP	
  
• AGGREGATE
DAU
書庭,請問我們的	
  DAU	
  是多少?
DAU	
  by	
  region
可以分國家嗎?
DAU	
  by	
  version
可以分版本嗎?
server	
  request	
  log
Request_total	
  per	
  minute
GROUP	
  BY	
  DATE	
  HISTOGRAM(minute)	
  
COUNT(*)
Request_total	
  by	
  path
GROUP	
  BY	
  TOP(path,	
  5),	
  DATE	
  HISTOGRAM(minute)	
  
COUNT(*)
Dashboard
• Collection	
  of	
  visualizations
Community	
  tag	
  in	
  MongoDB
Dashboard
Dashboard	
  -­‐	
  1st	
  peak
Dashboard	
  -­‐	
  2nd	
  peak
Table	
  of	
  Contents
• Problems	
  
• Solution	
  Requirements	
  
• Elasticsearch	
  &	
  Kibana	
  
• In	
  Gogolook	
  
• Future
In	
  Gogolook	
  (Aug.	
  2015)
• 200M+	
  data	
  point	
  daily	
  
• 150GB+	
  data	
  size	
  daily	
  
• 24	
  dashboards,	
  160	
  visualizations	
  
• Service	
  status	
  e.g.	
  requests_total	
  
• Application	
  data	
  e.g.	
  tag_total	
  
• Log	
  data	
  e.g.	
  button_ctr
In	
  Gogolook	
  (currently)
• Log	
  user	
  behavior	
  on	
  features	
  
• ⾃自⼰己的	
  log	
  ⾃自⼰己記	
  (Planner/PM)	
  
• ⾃自⼰己的	
  board	
  ⾃自⼰己拉	
  (every	
  one)	
  
• Monitor	
  performance	
  from	
  day	
  1
In	
  Gogolook
In	
  Gogolook
• Tracking	
  Kibana	
  usage	
  by	
  Google	
  Analytics
Table	
  of	
  Contents
• Problems	
  
• Solution	
  Requirements	
  
• Elasticsearch	
  &	
  Kibana	
  
• In	
  Gogolook	
  
• Future
In	
  Gogolook	
  (future)
• Log	
  all	
  user-­‐event,	
  not	
  feature-­‐based
In	
  Gogolook	
  (future)
• Log	
  all	
  user-­‐event,	
  not	
  feature-­‐based	
  
• {

	
  	
  "userid":	
  "suiting",

	
  	
  "@timestamp":	
  "2015-­‐08-­‐23T11:48:00",

	
  	
  "page":	
  "login",

	
  	
  "button":	
  "register",

	
  	
  "period":	
  3500

}
In	
  Gogolook	
  (future)
• Answer	
  questions
A
B
40%
60%
In	
  Gogolook	
  (future)
• Answer	
  questions
A
B
40%, 7000ms
60%, 1500ms
Limit
• No	
  SQL	
  JOIN	
  
• Subquery
How	
  about	
  20%
• Powerful	
  engine/tool	
  required	
  
• Compute	
  engines:	
  
• Google	
  BigQuery	
  
• AWS	
  Redshift	
  
• Visualization	
  tools:	
  
• Tableau	
  
• Periscope
Thank you
Questions ?

Mais conteúdo relacionado

Mais procurados

Log analysis with the elk stack
Log analysis with the elk stackLog analysis with the elk stack
Log analysis with the elk stackVikrant Chauhan
 
Kubernetes and service mesh application
Kubernetes  and service mesh applicationKubernetes  and service mesh application
Kubernetes and service mesh applicationThao Huynh Quang
 
Elastic stack Presentation
Elastic stack PresentationElastic stack Presentation
Elastic stack PresentationAmr Alaa Yassen
 
Downscaling: The Achilles heel of Autoscaling Apache Spark Clusters
Downscaling: The Achilles heel of Autoscaling Apache Spark ClustersDownscaling: The Achilles heel of Autoscaling Apache Spark Clusters
Downscaling: The Achilles heel of Autoscaling Apache Spark ClustersDatabricks
 
Top 5 Mistakes When Writing Spark Applications
Top 5 Mistakes When Writing Spark ApplicationsTop 5 Mistakes When Writing Spark Applications
Top 5 Mistakes When Writing Spark ApplicationsSpark Summit
 
ELK Stack - Kibana操作實務
ELK Stack - Kibana操作實務ELK Stack - Kibana操作實務
ELK Stack - Kibana操作實務Kedy Chang
 
Apache Spark on K8S Best Practice and Performance in the Cloud
Apache Spark on K8S Best Practice and Performance in the CloudApache Spark on K8S Best Practice and Performance in the Cloud
Apache Spark on K8S Best Practice and Performance in the CloudDatabricks
 
Singularity: The Inner Workings of Securely Running User Containers on HPC Sy...
Singularity: The Inner Workings of Securely Running User Containers on HPC Sy...Singularity: The Inner Workings of Securely Running User Containers on HPC Sy...
Singularity: The Inner Workings of Securely Running User Containers on HPC Sy...inside-BigData.com
 
Solving Enterprise Data Challenges with Apache Arrow
Solving Enterprise Data Challenges with Apache ArrowSolving Enterprise Data Challenges with Apache Arrow
Solving Enterprise Data Challenges with Apache ArrowWes McKinney
 
Introduction to memcached
Introduction to memcachedIntroduction to memcached
Introduction to memcachedJurriaan Persyn
 
Sonatype nexus 로 docker registry 관리하기
Sonatype nexus 로 docker registry 관리하기Sonatype nexus 로 docker registry 관리하기
Sonatype nexus 로 docker registry 관리하기KwangSeob Jeong
 
ELK, a real case study
ELK,  a real case studyELK,  a real case study
ELK, a real case studyPaolo Tonin
 
Etsy Activity Feeds Architecture
Etsy Activity Feeds ArchitectureEtsy Activity Feeds Architecture
Etsy Activity Feeds ArchitectureDan McKinley
 
Elk devops
Elk devopsElk devops
Elk devopsIdeato
 
Loki - like prometheus, but for logs
Loki - like prometheus, but for logsLoki - like prometheus, but for logs
Loki - like prometheus, but for logsJuraj Hantak
 
Elastic - ELK, Logstash & Kibana
Elastic - ELK, Logstash & KibanaElastic - ELK, Logstash & Kibana
Elastic - ELK, Logstash & KibanaSpringPeople
 
ksqlDB - Stream Processing simplified!
ksqlDB - Stream Processing simplified!ksqlDB - Stream Processing simplified!
ksqlDB - Stream Processing simplified!Guido Schmutz
 
Elasticsearch in Netflix
Elasticsearch in NetflixElasticsearch in Netflix
Elasticsearch in NetflixDanny Yuan
 
Elastic Stack Introduction
Elastic Stack IntroductionElastic Stack Introduction
Elastic Stack IntroductionVikram Shinde
 

Mais procurados (20)

Log analysis with the elk stack
Log analysis with the elk stackLog analysis with the elk stack
Log analysis with the elk stack
 
Kubernetes and service mesh application
Kubernetes  and service mesh applicationKubernetes  and service mesh application
Kubernetes and service mesh application
 
Elastic stack Presentation
Elastic stack PresentationElastic stack Presentation
Elastic stack Presentation
 
Downscaling: The Achilles heel of Autoscaling Apache Spark Clusters
Downscaling: The Achilles heel of Autoscaling Apache Spark ClustersDownscaling: The Achilles heel of Autoscaling Apache Spark Clusters
Downscaling: The Achilles heel of Autoscaling Apache Spark Clusters
 
Top 5 Mistakes When Writing Spark Applications
Top 5 Mistakes When Writing Spark ApplicationsTop 5 Mistakes When Writing Spark Applications
Top 5 Mistakes When Writing Spark Applications
 
ELK Stack - Kibana操作實務
ELK Stack - Kibana操作實務ELK Stack - Kibana操作實務
ELK Stack - Kibana操作實務
 
Apache Spark on K8S Best Practice and Performance in the Cloud
Apache Spark on K8S Best Practice and Performance in the CloudApache Spark on K8S Best Practice and Performance in the Cloud
Apache Spark on K8S Best Practice and Performance in the Cloud
 
Singularity: The Inner Workings of Securely Running User Containers on HPC Sy...
Singularity: The Inner Workings of Securely Running User Containers on HPC Sy...Singularity: The Inner Workings of Securely Running User Containers on HPC Sy...
Singularity: The Inner Workings of Securely Running User Containers on HPC Sy...
 
Solving Enterprise Data Challenges with Apache Arrow
Solving Enterprise Data Challenges with Apache ArrowSolving Enterprise Data Challenges with Apache Arrow
Solving Enterprise Data Challenges with Apache Arrow
 
Introduction to memcached
Introduction to memcachedIntroduction to memcached
Introduction to memcached
 
Log analytics with ELK stack
Log analytics with ELK stackLog analytics with ELK stack
Log analytics with ELK stack
 
Sonatype nexus 로 docker registry 관리하기
Sonatype nexus 로 docker registry 관리하기Sonatype nexus 로 docker registry 관리하기
Sonatype nexus 로 docker registry 관리하기
 
ELK, a real case study
ELK,  a real case studyELK,  a real case study
ELK, a real case study
 
Etsy Activity Feeds Architecture
Etsy Activity Feeds ArchitectureEtsy Activity Feeds Architecture
Etsy Activity Feeds Architecture
 
Elk devops
Elk devopsElk devops
Elk devops
 
Loki - like prometheus, but for logs
Loki - like prometheus, but for logsLoki - like prometheus, but for logs
Loki - like prometheus, but for logs
 
Elastic - ELK, Logstash & Kibana
Elastic - ELK, Logstash & KibanaElastic - ELK, Logstash & Kibana
Elastic - ELK, Logstash & Kibana
 
ksqlDB - Stream Processing simplified!
ksqlDB - Stream Processing simplified!ksqlDB - Stream Processing simplified!
ksqlDB - Stream Processing simplified!
 
Elasticsearch in Netflix
Elasticsearch in NetflixElasticsearch in Netflix
Elasticsearch in Netflix
 
Elastic Stack Introduction
Elastic Stack IntroductionElastic Stack Introduction
Elastic Stack Introduction
 

Destaque

Elasticsearch 簡介
Elasticsearch 簡介Elasticsearch 簡介
Elasticsearch 簡介Pei-Hsun Kao
 
【HITCON FreeTalk】HITCON 2017 下半年活動介紹
【HITCON FreeTalk】HITCON 2017 下半年活動介紹【HITCON FreeTalk】HITCON 2017 下半年活動介紹
【HITCON FreeTalk】HITCON 2017 下半年活動介紹Hacks in Taiwan (HITCON)
 
Logging with Elasticsearch, Logstash & Kibana
Logging with Elasticsearch, Logstash & KibanaLogging with Elasticsearch, Logstash & Kibana
Logging with Elasticsearch, Logstash & KibanaAmazee Labs
 

Destaque (6)

Elasticsearch 簡介
Elasticsearch 簡介Elasticsearch 簡介
Elasticsearch 簡介
 
Using Logstash, elasticsearch & kibana
Using Logstash, elasticsearch & kibanaUsing Logstash, elasticsearch & kibana
Using Logstash, elasticsearch & kibana
 
【HITCON FreeTalk】HITCON 2017 下半年活動介紹
【HITCON FreeTalk】HITCON 2017 下半年活動介紹【HITCON FreeTalk】HITCON 2017 下半年活動介紹
【HITCON FreeTalk】HITCON 2017 下半年活動介紹
 
Elasticsearch 簡介
Elasticsearch 簡介Elasticsearch 簡介
Elasticsearch 簡介
 
【HITCON FreeTalk】Supply Chain Attack
【HITCON FreeTalk】Supply Chain Attack【HITCON FreeTalk】Supply Chain Attack
【HITCON FreeTalk】Supply Chain Attack
 
Logging with Elasticsearch, Logstash & Kibana
Logging with Elasticsearch, Logstash & KibanaLogging with Elasticsearch, Logstash & Kibana
Logging with Elasticsearch, Logstash & Kibana
 

Semelhante a 使用 Elasticsearch 及 Kibana 進行巨量資料搜尋及視覺化-曾書庭

node-crate: node.js and big data
 node-crate: node.js and big data node-crate: node.js and big data
node-crate: node.js and big dataStefan Thies
 
Data Pipelines - Big Data meets Salesforce
Data Pipelines - Big Data meets SalesforceData Pipelines - Big Data meets Salesforce
Data Pipelines - Big Data meets Salesforceagarciaodeian
 
Denver Cloud Foundry Meetup - February 2016
Denver Cloud Foundry Meetup - February 2016Denver Cloud Foundry Meetup - February 2016
Denver Cloud Foundry Meetup - February 2016Josh Ghiloni
 
Monitoring Big Data Systems Done "The Simple Way" - Codemotion Berlin 2017
Monitoring Big Data Systems Done "The Simple Way" - Codemotion Berlin 2017Monitoring Big Data Systems Done "The Simple Way" - Codemotion Berlin 2017
Monitoring Big Data Systems Done "The Simple Way" - Codemotion Berlin 2017Demi Ben-Ari
 
MongoDB Tick Data Presentation
MongoDB Tick Data PresentationMongoDB Tick Data Presentation
MongoDB Tick Data PresentationMongoDB
 
Workshop on Google Cloud Data Platform
Workshop on Google Cloud Data PlatformWorkshop on Google Cloud Data Platform
Workshop on Google Cloud Data PlatformGoDataDriven
 
PostgreSQL as a Strategic Tool
PostgreSQL as a Strategic ToolPostgreSQL as a Strategic Tool
PostgreSQL as a Strategic ToolEDB
 
Joker'15 Java straitjackets for MongoDB
Joker'15 Java straitjackets for MongoDBJoker'15 Java straitjackets for MongoDB
Joker'15 Java straitjackets for MongoDBAlexey Zinoviev
 
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
 
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
 
Monitoring Big Data Systems Done "The Simple Way" - Codemotion Milan 2017 - D...
Monitoring Big Data Systems Done "The Simple Way" - Codemotion Milan 2017 - D...Monitoring Big Data Systems Done "The Simple Way" - Codemotion Milan 2017 - D...
Monitoring Big Data Systems Done "The Simple Way" - Codemotion Milan 2017 - D...Demi Ben-Ari
 
Demi Ben-Ari - Monitoring Big Data Systems Done "The Simple Way" - Codemotion...
Demi Ben-Ari - Monitoring Big Data Systems Done "The Simple Way" - Codemotion...Demi Ben-Ari - Monitoring Big Data Systems Done "The Simple Way" - Codemotion...
Demi Ben-Ari - Monitoring Big Data Systems Done "The Simple Way" - Codemotion...Codemotion
 
Google BigQuery for Everyday Developer
Google BigQuery for Everyday DeveloperGoogle BigQuery for Everyday Developer
Google BigQuery for Everyday DeveloperMárton Kodok
 
Workflow Hacks #1 - dots. Tokyo
Workflow Hacks #1 - dots. TokyoWorkflow Hacks #1 - dots. Tokyo
Workflow Hacks #1 - dots. TokyoTaro L. Saito
 
Why and How to integrate Hadoop and NoSQL?
Why and How to integrate Hadoop and NoSQL?Why and How to integrate Hadoop and NoSQL?
Why and How to integrate Hadoop and NoSQL?Tugdual Grall
 
Using ClickHouse for Experimentation
Using ClickHouse for ExperimentationUsing ClickHouse for Experimentation
Using ClickHouse for ExperimentationGleb Kanterov
 
Open Source Monitoring Tools
Open Source Monitoring ToolsOpen Source Monitoring Tools
Open Source Monitoring Toolsm_richardson
 
Apache AGE and the synergy effect in the combination of Postgres and NoSQL
 Apache AGE and the synergy effect in the combination of Postgres and NoSQL Apache AGE and the synergy effect in the combination of Postgres and NoSQL
Apache AGE and the synergy effect in the combination of Postgres and NoSQLEDB
 
Presto talk @ Global AI conference 2018 Boston
Presto talk @ Global AI conference 2018 BostonPresto talk @ Global AI conference 2018 Boston
Presto talk @ Global AI conference 2018 Bostonkbajda
 

Semelhante a 使用 Elasticsearch 及 Kibana 進行巨量資料搜尋及視覺化-曾書庭 (20)

node-crate: node.js and big data
 node-crate: node.js and big data node-crate: node.js and big data
node-crate: node.js and big data
 
Data Pipelines - Big Data meets Salesforce
Data Pipelines - Big Data meets SalesforceData Pipelines - Big Data meets Salesforce
Data Pipelines - Big Data meets Salesforce
 
Denver Cloud Foundry Meetup - February 2016
Denver Cloud Foundry Meetup - February 2016Denver Cloud Foundry Meetup - February 2016
Denver Cloud Foundry Meetup - February 2016
 
Monitoring Big Data Systems Done "The Simple Way" - Codemotion Berlin 2017
Monitoring Big Data Systems Done "The Simple Way" - Codemotion Berlin 2017Monitoring Big Data Systems Done "The Simple Way" - Codemotion Berlin 2017
Monitoring Big Data Systems Done "The Simple Way" - Codemotion Berlin 2017
 
MongoDB Tick Data Presentation
MongoDB Tick Data PresentationMongoDB Tick Data Presentation
MongoDB Tick Data Presentation
 
Workshop on Google Cloud Data Platform
Workshop on Google Cloud Data PlatformWorkshop on Google Cloud Data Platform
Workshop on Google Cloud Data Platform
 
PostgreSQL as a Strategic Tool
PostgreSQL as a Strategic ToolPostgreSQL as a Strategic Tool
PostgreSQL as a Strategic Tool
 
Joker'15 Java straitjackets for MongoDB
Joker'15 Java straitjackets for MongoDBJoker'15 Java straitjackets for MongoDB
Joker'15 Java straitjackets for MongoDB
 
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...
 
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
 
Monitoring Big Data Systems Done "The Simple Way" - Codemotion Milan 2017 - D...
Monitoring Big Data Systems Done "The Simple Way" - Codemotion Milan 2017 - D...Monitoring Big Data Systems Done "The Simple Way" - Codemotion Milan 2017 - D...
Monitoring Big Data Systems Done "The Simple Way" - Codemotion Milan 2017 - D...
 
Demi Ben-Ari - Monitoring Big Data Systems Done "The Simple Way" - Codemotion...
Demi Ben-Ari - Monitoring Big Data Systems Done "The Simple Way" - Codemotion...Demi Ben-Ari - Monitoring Big Data Systems Done "The Simple Way" - Codemotion...
Demi Ben-Ari - Monitoring Big Data Systems Done "The Simple Way" - Codemotion...
 
Google BigQuery for Everyday Developer
Google BigQuery for Everyday DeveloperGoogle BigQuery for Everyday Developer
Google BigQuery for Everyday Developer
 
Workflow Hacks #1 - dots. Tokyo
Workflow Hacks #1 - dots. TokyoWorkflow Hacks #1 - dots. Tokyo
Workflow Hacks #1 - dots. Tokyo
 
Dibi Conference 2012
Dibi Conference 2012Dibi Conference 2012
Dibi Conference 2012
 
Why and How to integrate Hadoop and NoSQL?
Why and How to integrate Hadoop and NoSQL?Why and How to integrate Hadoop and NoSQL?
Why and How to integrate Hadoop and NoSQL?
 
Using ClickHouse for Experimentation
Using ClickHouse for ExperimentationUsing ClickHouse for Experimentation
Using ClickHouse for Experimentation
 
Open Source Monitoring Tools
Open Source Monitoring ToolsOpen Source Monitoring Tools
Open Source Monitoring Tools
 
Apache AGE and the synergy effect in the combination of Postgres and NoSQL
 Apache AGE and the synergy effect in the combination of Postgres and NoSQL Apache AGE and the synergy effect in the combination of Postgres and NoSQL
Apache AGE and the synergy effect in the combination of Postgres and NoSQL
 
Presto talk @ Global AI conference 2018 Boston
Presto talk @ Global AI conference 2018 BostonPresto talk @ Global AI conference 2018 Boston
Presto talk @ Global AI conference 2018 Boston
 

Mais de 台灣資料科學年會

[台灣人工智慧學校] 人工智慧技術發展與應用
[台灣人工智慧學校] 人工智慧技術發展與應用[台灣人工智慧學校] 人工智慧技術發展與應用
[台灣人工智慧學校] 人工智慧技術發展與應用台灣資料科學年會
 
[台灣人工智慧學校] 執行長報告
[台灣人工智慧學校] 執行長報告[台灣人工智慧學校] 執行長報告
[台灣人工智慧學校] 執行長報告台灣資料科學年會
 
[台灣人工智慧學校] 工業 4.0 與智慧製造的發展趨勢與挑戰
[台灣人工智慧學校] 工業 4.0 與智慧製造的發展趨勢與挑戰[台灣人工智慧學校] 工業 4.0 與智慧製造的發展趨勢與挑戰
[台灣人工智慧學校] 工業 4.0 與智慧製造的發展趨勢與挑戰台灣資料科學年會
 
[台灣人工智慧學校] 開創台灣產業智慧轉型的新契機
[台灣人工智慧學校] 開創台灣產業智慧轉型的新契機[台灣人工智慧學校] 開創台灣產業智慧轉型的新契機
[台灣人工智慧學校] 開創台灣產業智慧轉型的新契機台灣資料科學年會
 
[台灣人工智慧學校] 開創台灣產業智慧轉型的新契機
[台灣人工智慧學校] 開創台灣產業智慧轉型的新契機[台灣人工智慧學校] 開創台灣產業智慧轉型的新契機
[台灣人工智慧學校] 開創台灣產業智慧轉型的新契機台灣資料科學年會
 
[台灣人工智慧學校] 台北總校第三期結業典禮 - 執行長談話
[台灣人工智慧學校] 台北總校第三期結業典禮 - 執行長談話[台灣人工智慧學校] 台北總校第三期結業典禮 - 執行長談話
[台灣人工智慧學校] 台北總校第三期結業典禮 - 執行長談話台灣資料科學年會
 
[TOxAIA台中分校] AI 引爆新工業革命,智慧機械首都台中轉型論壇
[TOxAIA台中分校] AI 引爆新工業革命,智慧機械首都台中轉型論壇[TOxAIA台中分校] AI 引爆新工業革命,智慧機械首都台中轉型論壇
[TOxAIA台中分校] AI 引爆新工業革命,智慧機械首都台中轉型論壇台灣資料科學年會
 
[TOxAIA台中分校] 2019 台灣數位轉型 與產業升級趨勢觀察
[TOxAIA台中分校] 2019 台灣數位轉型 與產業升級趨勢觀察 [TOxAIA台中分校] 2019 台灣數位轉型 與產業升級趨勢觀察
[TOxAIA台中分校] 2019 台灣數位轉型 與產業升級趨勢觀察 台灣資料科學年會
 
[TOxAIA台中分校] 智慧製造成真! 產線導入AI的致勝關鍵
[TOxAIA台中分校] 智慧製造成真! 產線導入AI的致勝關鍵[TOxAIA台中分校] 智慧製造成真! 產線導入AI的致勝關鍵
[TOxAIA台中分校] 智慧製造成真! 產線導入AI的致勝關鍵台灣資料科學年會
 
[台灣人工智慧學校] 從經濟學看人工智慧產業應用
[台灣人工智慧學校] 從經濟學看人工智慧產業應用[台灣人工智慧學校] 從經濟學看人工智慧產業應用
[台灣人工智慧學校] 從經濟學看人工智慧產業應用台灣資料科學年會
 
[台灣人工智慧學校] 台中分校第二期開學典禮 - 執行長報告
[台灣人工智慧學校] 台中分校第二期開學典禮 - 執行長報告[台灣人工智慧學校] 台中分校第二期開學典禮 - 執行長報告
[台灣人工智慧學校] 台中分校第二期開學典禮 - 執行長報告台灣資料科學年會
 
[台中分校] 第一期結業典禮 - 執行長談話
[台中分校] 第一期結業典禮 - 執行長談話[台中分校] 第一期結業典禮 - 執行長談話
[台中分校] 第一期結業典禮 - 執行長談話台灣資料科學年會
 
[TOxAIA新竹分校] 工業4.0潛力新應用! 多模式對話機器人
[TOxAIA新竹分校] 工業4.0潛力新應用! 多模式對話機器人[TOxAIA新竹分校] 工業4.0潛力新應用! 多模式對話機器人
[TOxAIA新竹分校] 工業4.0潛力新應用! 多模式對話機器人台灣資料科學年會
 
[TOxAIA新竹分校] AI整合是重點! 竹科的關鍵轉型思維
[TOxAIA新竹分校] AI整合是重點! 竹科的關鍵轉型思維[TOxAIA新竹分校] AI整合是重點! 竹科的關鍵轉型思維
[TOxAIA新竹分校] AI整合是重點! 竹科的關鍵轉型思維台灣資料科學年會
 
[TOxAIA新竹分校] 2019 台灣數位轉型與產業升級趨勢觀察
[TOxAIA新竹分校] 2019 台灣數位轉型與產業升級趨勢觀察[TOxAIA新竹分校] 2019 台灣數位轉型與產業升級趨勢觀察
[TOxAIA新竹分校] 2019 台灣數位轉型與產業升級趨勢觀察台灣資料科學年會
 
[TOxAIA新竹分校] 深度學習與Kaggle實戰
[TOxAIA新竹分校] 深度學習與Kaggle實戰[TOxAIA新竹分校] 深度學習與Kaggle實戰
[TOxAIA新竹分校] 深度學習與Kaggle實戰台灣資料科學年會
 
[台灣人工智慧學校] Bridging AI to Precision Agriculture through IoT
[台灣人工智慧學校] Bridging AI to Precision Agriculture through IoT[台灣人工智慧學校] Bridging AI to Precision Agriculture through IoT
[台灣人工智慧學校] Bridging AI to Precision Agriculture through IoT台灣資料科學年會
 
[2018 台灣人工智慧學校校友年會] 產業經驗分享: 如何用最少的訓練樣本,得到最好的深度學習影像分析結果,減少一半人力,提升一倍品質 / 李明達
[2018 台灣人工智慧學校校友年會] 產業經驗分享: 如何用最少的訓練樣本,得到最好的深度學習影像分析結果,減少一半人力,提升一倍品質 / 李明達[2018 台灣人工智慧學校校友年會] 產業經驗分享: 如何用最少的訓練樣本,得到最好的深度學習影像分析結果,減少一半人力,提升一倍品質 / 李明達
[2018 台灣人工智慧學校校友年會] 產業經驗分享: 如何用最少的訓練樣本,得到最好的深度學習影像分析結果,減少一半人力,提升一倍品質 / 李明達台灣資料科學年會
 
[2018 台灣人工智慧學校校友年會] 啟動物聯網新關鍵 - 未來由你「喚」醒 / 沈品勳
[2018 台灣人工智慧學校校友年會] 啟動物聯網新關鍵 - 未來由你「喚」醒 / 沈品勳[2018 台灣人工智慧學校校友年會] 啟動物聯網新關鍵 - 未來由你「喚」醒 / 沈品勳
[2018 台灣人工智慧學校校友年會] 啟動物聯網新關鍵 - 未來由你「喚」醒 / 沈品勳台灣資料科學年會
 

Mais de 台灣資料科學年會 (20)

[台灣人工智慧學校] 人工智慧技術發展與應用
[台灣人工智慧學校] 人工智慧技術發展與應用[台灣人工智慧學校] 人工智慧技術發展與應用
[台灣人工智慧學校] 人工智慧技術發展與應用
 
[台灣人工智慧學校] 執行長報告
[台灣人工智慧學校] 執行長報告[台灣人工智慧學校] 執行長報告
[台灣人工智慧學校] 執行長報告
 
[台灣人工智慧學校] 工業 4.0 與智慧製造的發展趨勢與挑戰
[台灣人工智慧學校] 工業 4.0 與智慧製造的發展趨勢與挑戰[台灣人工智慧學校] 工業 4.0 與智慧製造的發展趨勢與挑戰
[台灣人工智慧學校] 工業 4.0 與智慧製造的發展趨勢與挑戰
 
[台灣人工智慧學校] 開創台灣產業智慧轉型的新契機
[台灣人工智慧學校] 開創台灣產業智慧轉型的新契機[台灣人工智慧學校] 開創台灣產業智慧轉型的新契機
[台灣人工智慧學校] 開創台灣產業智慧轉型的新契機
 
[台灣人工智慧學校] 開創台灣產業智慧轉型的新契機
[台灣人工智慧學校] 開創台灣產業智慧轉型的新契機[台灣人工智慧學校] 開創台灣產業智慧轉型的新契機
[台灣人工智慧學校] 開創台灣產業智慧轉型的新契機
 
[台灣人工智慧學校] 台北總校第三期結業典禮 - 執行長談話
[台灣人工智慧學校] 台北總校第三期結業典禮 - 執行長談話[台灣人工智慧學校] 台北總校第三期結業典禮 - 執行長談話
[台灣人工智慧學校] 台北總校第三期結業典禮 - 執行長談話
 
[TOxAIA台中分校] AI 引爆新工業革命,智慧機械首都台中轉型論壇
[TOxAIA台中分校] AI 引爆新工業革命,智慧機械首都台中轉型論壇[TOxAIA台中分校] AI 引爆新工業革命,智慧機械首都台中轉型論壇
[TOxAIA台中分校] AI 引爆新工業革命,智慧機械首都台中轉型論壇
 
[TOxAIA台中分校] 2019 台灣數位轉型 與產業升級趨勢觀察
[TOxAIA台中分校] 2019 台灣數位轉型 與產業升級趨勢觀察 [TOxAIA台中分校] 2019 台灣數位轉型 與產業升級趨勢觀察
[TOxAIA台中分校] 2019 台灣數位轉型 與產業升級趨勢觀察
 
[TOxAIA台中分校] 智慧製造成真! 產線導入AI的致勝關鍵
[TOxAIA台中分校] 智慧製造成真! 產線導入AI的致勝關鍵[TOxAIA台中分校] 智慧製造成真! 產線導入AI的致勝關鍵
[TOxAIA台中分校] 智慧製造成真! 產線導入AI的致勝關鍵
 
[台灣人工智慧學校] 從經濟學看人工智慧產業應用
[台灣人工智慧學校] 從經濟學看人工智慧產業應用[台灣人工智慧學校] 從經濟學看人工智慧產業應用
[台灣人工智慧學校] 從經濟學看人工智慧產業應用
 
[台灣人工智慧學校] 台中分校第二期開學典禮 - 執行長報告
[台灣人工智慧學校] 台中分校第二期開學典禮 - 執行長報告[台灣人工智慧學校] 台中分校第二期開學典禮 - 執行長報告
[台灣人工智慧學校] 台中分校第二期開學典禮 - 執行長報告
 
台灣人工智慧學校成果發表會
台灣人工智慧學校成果發表會台灣人工智慧學校成果發表會
台灣人工智慧學校成果發表會
 
[台中分校] 第一期結業典禮 - 執行長談話
[台中分校] 第一期結業典禮 - 執行長談話[台中分校] 第一期結業典禮 - 執行長談話
[台中分校] 第一期結業典禮 - 執行長談話
 
[TOxAIA新竹分校] 工業4.0潛力新應用! 多模式對話機器人
[TOxAIA新竹分校] 工業4.0潛力新應用! 多模式對話機器人[TOxAIA新竹分校] 工業4.0潛力新應用! 多模式對話機器人
[TOxAIA新竹分校] 工業4.0潛力新應用! 多模式對話機器人
 
[TOxAIA新竹分校] AI整合是重點! 竹科的關鍵轉型思維
[TOxAIA新竹分校] AI整合是重點! 竹科的關鍵轉型思維[TOxAIA新竹分校] AI整合是重點! 竹科的關鍵轉型思維
[TOxAIA新竹分校] AI整合是重點! 竹科的關鍵轉型思維
 
[TOxAIA新竹分校] 2019 台灣數位轉型與產業升級趨勢觀察
[TOxAIA新竹分校] 2019 台灣數位轉型與產業升級趨勢觀察[TOxAIA新竹分校] 2019 台灣數位轉型與產業升級趨勢觀察
[TOxAIA新竹分校] 2019 台灣數位轉型與產業升級趨勢觀察
 
[TOxAIA新竹分校] 深度學習與Kaggle實戰
[TOxAIA新竹分校] 深度學習與Kaggle實戰[TOxAIA新竹分校] 深度學習與Kaggle實戰
[TOxAIA新竹分校] 深度學習與Kaggle實戰
 
[台灣人工智慧學校] Bridging AI to Precision Agriculture through IoT
[台灣人工智慧學校] Bridging AI to Precision Agriculture through IoT[台灣人工智慧學校] Bridging AI to Precision Agriculture through IoT
[台灣人工智慧學校] Bridging AI to Precision Agriculture through IoT
 
[2018 台灣人工智慧學校校友年會] 產業經驗分享: 如何用最少的訓練樣本,得到最好的深度學習影像分析結果,減少一半人力,提升一倍品質 / 李明達
[2018 台灣人工智慧學校校友年會] 產業經驗分享: 如何用最少的訓練樣本,得到最好的深度學習影像分析結果,減少一半人力,提升一倍品質 / 李明達[2018 台灣人工智慧學校校友年會] 產業經驗分享: 如何用最少的訓練樣本,得到最好的深度學習影像分析結果,減少一半人力,提升一倍品質 / 李明達
[2018 台灣人工智慧學校校友年會] 產業經驗分享: 如何用最少的訓練樣本,得到最好的深度學習影像分析結果,減少一半人力,提升一倍品質 / 李明達
 
[2018 台灣人工智慧學校校友年會] 啟動物聯網新關鍵 - 未來由你「喚」醒 / 沈品勳
[2018 台灣人工智慧學校校友年會] 啟動物聯網新關鍵 - 未來由你「喚」醒 / 沈品勳[2018 台灣人工智慧學校校友年會] 啟動物聯網新關鍵 - 未來由你「喚」醒 / 沈品勳
[2018 台灣人工智慧學校校友年會] 啟動物聯網新關鍵 - 未來由你「喚」醒 / 沈品勳
 

Último

꧁❤ Greater Noida Call Girls Delhi ❤꧂ 9711199171 ☎️ Hard And Sexy Vip Call
꧁❤ Greater Noida Call Girls Delhi ❤꧂ 9711199171 ☎️ Hard And Sexy Vip Call꧁❤ Greater Noida Call Girls Delhi ❤꧂ 9711199171 ☎️ Hard And Sexy Vip Call
꧁❤ Greater Noida Call Girls Delhi ❤꧂ 9711199171 ☎️ Hard And Sexy Vip Callshivangimorya083
 
Mature dropshipping via API with DroFx.pptx
Mature dropshipping via API with DroFx.pptxMature dropshipping via API with DroFx.pptx
Mature dropshipping via API with DroFx.pptxolyaivanovalion
 
Data-Analysis for Chicago Crime Data 2023
Data-Analysis for Chicago Crime Data  2023Data-Analysis for Chicago Crime Data  2023
Data-Analysis for Chicago Crime Data 2023ymrp368
 
VidaXL dropshipping via API with DroFx.pptx
VidaXL dropshipping via API with DroFx.pptxVidaXL dropshipping via API with DroFx.pptx
VidaXL dropshipping via API with DroFx.pptxolyaivanovalion
 
FESE Capital Markets Fact Sheet 2024 Q1.pdf
FESE Capital Markets Fact Sheet 2024 Q1.pdfFESE Capital Markets Fact Sheet 2024 Q1.pdf
FESE Capital Markets Fact Sheet 2024 Q1.pdfMarinCaroMartnezBerg
 
100-Concepts-of-AI by Anupama Kate .pptx
100-Concepts-of-AI by Anupama Kate .pptx100-Concepts-of-AI by Anupama Kate .pptx
100-Concepts-of-AI by Anupama Kate .pptxAnupama Kate
 
Market Analysis in the 5 Largest Economic Countries in Southeast Asia.pdf
Market Analysis in the 5 Largest Economic Countries in Southeast Asia.pdfMarket Analysis in the 5 Largest Economic Countries in Southeast Asia.pdf
Market Analysis in the 5 Largest Economic Countries in Southeast Asia.pdfRachmat Ramadhan H
 
April 2024 - Crypto Market Report's Analysis
April 2024 - Crypto Market Report's AnalysisApril 2024 - Crypto Market Report's Analysis
April 2024 - Crypto Market Report's Analysismanisha194592
 
BabyOno dropshipping via API with DroFx.pptx
BabyOno dropshipping via API with DroFx.pptxBabyOno dropshipping via API with DroFx.pptx
BabyOno dropshipping via API with DroFx.pptxolyaivanovalion
 
Halmar dropshipping via API with DroFx
Halmar  dropshipping  via API with DroFxHalmar  dropshipping  via API with DroFx
Halmar dropshipping via API with DroFxolyaivanovalion
 
(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Service
(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Service(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Service
(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Serviceranjana rawat
 
CebaBaby dropshipping via API with DroFX.pptx
CebaBaby dropshipping via API with DroFX.pptxCebaBaby dropshipping via API with DroFX.pptx
CebaBaby dropshipping via API with DroFX.pptxolyaivanovalion
 
Log Analysis using OSSEC sasoasasasas.pptx
Log Analysis using OSSEC sasoasasasas.pptxLog Analysis using OSSEC sasoasasasas.pptx
Log Analysis using OSSEC sasoasasasas.pptxJohnnyPlasten
 
BPAC WITH UFSBI GENERAL PRESENTATION 18_05_2017-1.pptx
BPAC WITH UFSBI GENERAL PRESENTATION 18_05_2017-1.pptxBPAC WITH UFSBI GENERAL PRESENTATION 18_05_2017-1.pptx
BPAC WITH UFSBI GENERAL PRESENTATION 18_05_2017-1.pptxMohammedJunaid861692
 
Generative AI on Enterprise Cloud with NiFi and Milvus
Generative AI on Enterprise Cloud with NiFi and MilvusGenerative AI on Enterprise Cloud with NiFi and Milvus
Generative AI on Enterprise Cloud with NiFi and MilvusTimothy Spann
 
VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130
VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130
VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130Suhani Kapoor
 
Ravak dropshipping via API with DroFx.pptx
Ravak dropshipping via API with DroFx.pptxRavak dropshipping via API with DroFx.pptx
Ravak dropshipping via API with DroFx.pptxolyaivanovalion
 
Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...
Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...
Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...amitlee9823
 

Último (20)

꧁❤ Greater Noida Call Girls Delhi ❤꧂ 9711199171 ☎️ Hard And Sexy Vip Call
꧁❤ Greater Noida Call Girls Delhi ❤꧂ 9711199171 ☎️ Hard And Sexy Vip Call꧁❤ Greater Noida Call Girls Delhi ❤꧂ 9711199171 ☎️ Hard And Sexy Vip Call
꧁❤ Greater Noida Call Girls Delhi ❤꧂ 9711199171 ☎️ Hard And Sexy Vip Call
 
Mature dropshipping via API with DroFx.pptx
Mature dropshipping via API with DroFx.pptxMature dropshipping via API with DroFx.pptx
Mature dropshipping via API with DroFx.pptx
 
Data-Analysis for Chicago Crime Data 2023
Data-Analysis for Chicago Crime Data  2023Data-Analysis for Chicago Crime Data  2023
Data-Analysis for Chicago Crime Data 2023
 
VidaXL dropshipping via API with DroFx.pptx
VidaXL dropshipping via API with DroFx.pptxVidaXL dropshipping via API with DroFx.pptx
VidaXL dropshipping via API with DroFx.pptx
 
FESE Capital Markets Fact Sheet 2024 Q1.pdf
FESE Capital Markets Fact Sheet 2024 Q1.pdfFESE Capital Markets Fact Sheet 2024 Q1.pdf
FESE Capital Markets Fact Sheet 2024 Q1.pdf
 
100-Concepts-of-AI by Anupama Kate .pptx
100-Concepts-of-AI by Anupama Kate .pptx100-Concepts-of-AI by Anupama Kate .pptx
100-Concepts-of-AI by Anupama Kate .pptx
 
Market Analysis in the 5 Largest Economic Countries in Southeast Asia.pdf
Market Analysis in the 5 Largest Economic Countries in Southeast Asia.pdfMarket Analysis in the 5 Largest Economic Countries in Southeast Asia.pdf
Market Analysis in the 5 Largest Economic Countries in Southeast Asia.pdf
 
CHEAP Call Girls in Saket (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
CHEAP Call Girls in Saket (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICECHEAP Call Girls in Saket (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
CHEAP Call Girls in Saket (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
 
April 2024 - Crypto Market Report's Analysis
April 2024 - Crypto Market Report's AnalysisApril 2024 - Crypto Market Report's Analysis
April 2024 - Crypto Market Report's Analysis
 
BabyOno dropshipping via API with DroFx.pptx
BabyOno dropshipping via API with DroFx.pptxBabyOno dropshipping via API with DroFx.pptx
BabyOno dropshipping via API with DroFx.pptx
 
Halmar dropshipping via API with DroFx
Halmar  dropshipping  via API with DroFxHalmar  dropshipping  via API with DroFx
Halmar dropshipping via API with DroFx
 
(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Service
(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Service(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Service
(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Service
 
CebaBaby dropshipping via API with DroFX.pptx
CebaBaby dropshipping via API with DroFX.pptxCebaBaby dropshipping via API with DroFX.pptx
CebaBaby dropshipping via API with DroFX.pptx
 
Log Analysis using OSSEC sasoasasasas.pptx
Log Analysis using OSSEC sasoasasasas.pptxLog Analysis using OSSEC sasoasasasas.pptx
Log Analysis using OSSEC sasoasasasas.pptx
 
BPAC WITH UFSBI GENERAL PRESENTATION 18_05_2017-1.pptx
BPAC WITH UFSBI GENERAL PRESENTATION 18_05_2017-1.pptxBPAC WITH UFSBI GENERAL PRESENTATION 18_05_2017-1.pptx
BPAC WITH UFSBI GENERAL PRESENTATION 18_05_2017-1.pptx
 
Generative AI on Enterprise Cloud with NiFi and Milvus
Generative AI on Enterprise Cloud with NiFi and MilvusGenerative AI on Enterprise Cloud with NiFi and Milvus
Generative AI on Enterprise Cloud with NiFi and Milvus
 
VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130
VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130
VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130
 
Ravak dropshipping via API with DroFx.pptx
Ravak dropshipping via API with DroFx.pptxRavak dropshipping via API with DroFx.pptx
Ravak dropshipping via API with DroFx.pptx
 
Delhi 99530 vip 56974 Genuine Escort Service Call Girls in Kishangarh
Delhi 99530 vip 56974 Genuine Escort Service Call Girls in  KishangarhDelhi 99530 vip 56974 Genuine Escort Service Call Girls in  Kishangarh
Delhi 99530 vip 56974 Genuine Escort Service Call Girls in Kishangarh
 
Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...
Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...
Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...
 

使用 Elasticsearch 及 Kibana 進行巨量資料搜尋及視覺化-曾書庭