SlideShare uma empresa Scribd logo
1 de 29
Baixar para ler offline
Muga Nishizawa (西澤 無我)
Using Embulk at Treasure Data
Today’s talk
> What’s Embulk?
> Why our customers use Embulk?
> Embulk
> Data Connector
> Data Connector
> The architecture
> The use case
> with MapReduce Executor
> How we configure MapReduce Executor?
2
What’s Embulk?
> An open-source parallel bulk data loader
> loads records from “A” to “B”
> using plugins
> for various kinds of “A” and “B”
> to make data integration easy.
> which was very painful…
3
Storage, RDBMS,
NoSQL, Cloud Service,
etc.
broken records,

transactions (idempotency),

performance, …
HDFS
MySQL
Amazon S3
Embulk
CSV Files
SequenceFile
Salesforce.com
Elasticsearch
Cassandra
Hive
Redis
✓ Parallel execution
✓ Data validation
✓ Error recovery
✓ Deterministic behavior
✓ Resuming
Plugins Plugins
bulk load
Why our customers use Embulk?
> Upload various types of their data to TD with Embulk 

> Various file formats
> CSV, TSV, JSON, XML,..
> Various data source
> Local disk, RDBMS, SFTP,..
> Various network environments
> embulk-output-td
> https://github.com/treasure-data/embulk-output-td
5
Out of scope for Embulk
> They develop scripts for
> generating Embulk configs
> changing schema on a regular basis
> logic to select some files but not others
> managing cron settings
> e.g. some users want to upload yesterday’s data



as daily batch
> Embulk is just “bulk loader”
6
Best practice to manage Embulk!!
7
http://www.slideshare.net/GONNakaTaka/embulk5
Yes, yes,..
8
Data Connector
Users/Customers
PlazmaDBConnector Worker
submit
connector jobs
see loaded data
on Console
Guess/Preview API
Data Connector
Users/Customers
PlazmaDBConnector Worker
submit
connector jobs
see loaded data
on Console
Guess/Preview API
2 types of hosted Embulk service
11
Import
(Data Connector)
Export
(Result Output)
MySQL
PostgreSQL
Redshift
AWS S3
Google Cloud Storage
SalesForce
Marketo
…etc
MySQL
PostgreSQL
Redshift
BigQuery
…etc
Guess/Preview API
Users/Customers
PlazmaDB
Connector Worker
submit
connector jobs
see loaded data
on Console
Guess/Preview API
Guess/Preview API
> Guesses Embulk config based on sample data
> Creates parser config
> Adds schema, escape char, quote char, etc..
> Creates rename filter config
> TD requires uncapitalized column names
> Preview data before uploading
> Ensures quick response
> Embulk performs this functionality running



on our web application servers
13
Connector Worker
Users/Customers
PlazmaDB
Connector Worker
submit
connector jobs
see loaded data
on Console
Guess/Preview API
Connector Worker
> Generates Embulk config and executes Embulk
> Uses private output plugin instead of embulk-output-td



to upload users’ data to PlazmaDB directly
> Appropriate retry mechanism
> Embulk runs on our Job Queue clients
15
Timestamp parsing
Users/Customers
PlazmaDB
Connector Worker
submit
connector jobs
see loaded data
on Console
Guess/Preview API
Timestamp parsing
> Implement strptime in Java
> Ported from CRuby implementation
> Can precompile the format
> Faster than JRuby’s strptime
> Has been maintained in Embulk repo obscurely..
> It will be merged into JRuby
17
How we use Data Connector at TD
> a. Monitoring our S3 buckets access
> e.g. “IAM users who accessed our S3 buckets?”



“Access frequency”
> {in: {type: s3}} and {parser: {type: csv}}
> b. Measuring KPIs for development process
> e.g. “phases that we took a long time on the process”
> {in: {type: jira}}
> c. Measuring Business & Support Performance
> {in: {type: Salesforce, Marketo, ZenDesk, …}}
18
Scaling Embulk
> Requests for massive data loading from users
> e.g. “Upload 150GB data by hourly batch”



“Start PoC and upload 500GB data today”
> Local Executor can not handle this scale
> MapReduce Executor enables us to scale
19
W/ MapReduce
Users/Customers
PlazmaDB
Connector Worker
submit
connector jobs
see loaded data
on Console
Guess/Preview API
Hadoop Clusters
What’s MapReduce Executor?
21
Task
Task
Task
Task
Map tasks
Task queue
run tasks on Hadoop
MapReduce Executor
with TimestampPartitioning
22
Task
Map tasks
Task queue
run tasks on Hadoop
Reduce tasksShuffle
built Embulk configs
23
exec:
type: mapreduce
job_name: embulk.100000
config_files:
- /etc/hadoop/conf/core-site.xml
- /etc/hadoop/conf/hdfs-site.xml
- /etc/hadoop/conf/mapred-site.xml
config:
fs.defaultFS: “hdfs://my-hdfs.example.net:8020”
yarn.resourcemanager.hostname: "my-yarn.example.net"
dfs.replication: 1
mapreduce.client.submit.file.replication: 1
state_path: /mnt/xxx/embulk/
partitioning:
type: timestamp
unit: hour
column: time
unix_timestamp_unit: hour
map_side_partition_split: 3
reducers: 3
in:
...
Connector Workers (single-machine workers)
are still able to generate config
Different sized files
24
Map tasks Reduce tasksShuffle
Same time range data
25
Map tasks Reduce tasksShuffle
Grouping input files
- {in: {min_task_size}}
26
Map tasks Reduce tasksShuffle
Task
Task
Task
It also can reduce mapper’s launch cost.
One partition into multi-reducers
- {exec: {partitioning: {map_side_split}}}
27
Map tasks Reduce tasksShuffle
Conclusion
> What’s Embulk?
> Why we use Embulk?
> Embulk
> Data Connector
> Data Connector
> The architecture of Data Connector
> The use case
> with MapReduce Executor
28
29

Mais conteúdo relacionado

Mais procurados

Fluentd - road to v1 -
Fluentd - road to v1 -Fluentd - road to v1 -
Fluentd - road to v1 -N Masahiro
 
Logging for Production Systems in The Container Era
Logging for Production Systems in The Container EraLogging for Production Systems in The Container Era
Logging for Production Systems in The Container EraSadayuki Furuhashi
 
Digdagによる大規模データ処理の自動化とエラー処理
Digdagによる大規模データ処理の自動化とエラー処理Digdagによる大規模データ処理の自動化とエラー処理
Digdagによる大規模データ処理の自動化とエラー処理Sadayuki Furuhashi
 
Embulk and Machine Learning infrastructure
Embulk and Machine Learning infrastructureEmbulk and Machine Learning infrastructure
Embulk and Machine Learning infrastructureHiroshi Toyama
 
[245] presto 내부구조 파헤치기
[245] presto 내부구조 파헤치기[245] presto 내부구조 파헤치기
[245] presto 내부구조 파헤치기NAVER D2
 
Digdag Updates 2020 July
Digdag Updates 2020 JulyDigdag Updates 2020 July
Digdag Updates 2020 JulyYou Yamagata
 
Data Analytics Service Company and Its Ruby Usage
Data Analytics Service Company and Its Ruby UsageData Analytics Service Company and Its Ruby Usage
Data Analytics Service Company and Its Ruby UsageSATOSHI TAGOMORI
 
Google App Engine With Java And Groovy
Google App Engine With Java And GroovyGoogle App Engine With Java And Groovy
Google App Engine With Java And GroovyKen Kousen
 
WebCamp 2016: DevOps. Ярослав Погребняк: Gobetween - новый лоад балансер для ...
WebCamp 2016: DevOps. Ярослав Погребняк: Gobetween - новый лоад балансер для ...WebCamp 2016: DevOps. Ярослав Погребняк: Gobetween - новый лоад балансер для ...
WebCamp 2016: DevOps. Ярослав Погребняк: Gobetween - новый лоад балансер для ...WebCamp
 
CouchDB Mobile - From Couch to 5K in 1 Hour
CouchDB Mobile - From Couch to 5K in 1 HourCouchDB Mobile - From Couch to 5K in 1 Hour
CouchDB Mobile - From Couch to 5K in 1 HourPeter Friese
 
WebCamp 2016: DevOps. Николай Дойков: Опыт создания клауда для потокового вид...
WebCamp 2016: DevOps. Николай Дойков: Опыт создания клауда для потокового вид...WebCamp 2016: DevOps. Николай Дойков: Опыт создания клауда для потокового вид...
WebCamp 2016: DevOps. Николай Дойков: Опыт создания клауда для потокового вид...WebCamp
 
Async and Non-blocking IO w/ JRuby
Async and Non-blocking IO w/ JRubyAsync and Non-blocking IO w/ JRuby
Async and Non-blocking IO w/ JRubyJoe Kutner
 
Nodejs Explained with Examples
Nodejs Explained with ExamplesNodejs Explained with Examples
Nodejs Explained with ExamplesGabriele Lana
 
Get more than a cache back! The Microsoft Azure Redis Cache (NDC Oslo)
Get more than a cache back! The Microsoft Azure Redis Cache (NDC Oslo)Get more than a cache back! The Microsoft Azure Redis Cache (NDC Oslo)
Get more than a cache back! The Microsoft Azure Redis Cache (NDC Oslo)Maarten Balliauw
 
Meetup cassandra sfo_jdbc
Meetup cassandra sfo_jdbcMeetup cassandra sfo_jdbc
Meetup cassandra sfo_jdbczznate
 
PostgREST Design Philosophy
PostgREST Design PhilosophyPostgREST Design Philosophy
PostgREST Design Philosophybegriffs
 
using Mithril.js + postgREST to build and consume API's
using Mithril.js + postgREST to build and consume API'susing Mithril.js + postgREST to build and consume API's
using Mithril.js + postgREST to build and consume API'sAntônio Roberto Silva
 

Mais procurados (20)

Fluentd - road to v1 -
Fluentd - road to v1 -Fluentd - road to v1 -
Fluentd - road to v1 -
 
Scripting Embulk Plugins
Scripting Embulk PluginsScripting Embulk Plugins
Scripting Embulk Plugins
 
Logging for Production Systems in The Container Era
Logging for Production Systems in The Container EraLogging for Production Systems in The Container Era
Logging for Production Systems in The Container Era
 
Digdagによる大規模データ処理の自動化とエラー処理
Digdagによる大規模データ処理の自動化とエラー処理Digdagによる大規模データ処理の自動化とエラー処理
Digdagによる大規模データ処理の自動化とエラー処理
 
Embulk and Machine Learning infrastructure
Embulk and Machine Learning infrastructureEmbulk and Machine Learning infrastructure
Embulk and Machine Learning infrastructure
 
[245] presto 내부구조 파헤치기
[245] presto 내부구조 파헤치기[245] presto 내부구조 파헤치기
[245] presto 내부구조 파헤치기
 
Bosh 2.0
Bosh 2.0Bosh 2.0
Bosh 2.0
 
Digdag Updates 2020 July
Digdag Updates 2020 JulyDigdag Updates 2020 July
Digdag Updates 2020 July
 
Data Analytics Service Company and Its Ruby Usage
Data Analytics Service Company and Its Ruby UsageData Analytics Service Company and Its Ruby Usage
Data Analytics Service Company and Its Ruby Usage
 
Google App Engine With Java And Groovy
Google App Engine With Java And GroovyGoogle App Engine With Java And Groovy
Google App Engine With Java And Groovy
 
WebCamp 2016: DevOps. Ярослав Погребняк: Gobetween - новый лоад балансер для ...
WebCamp 2016: DevOps. Ярослав Погребняк: Gobetween - новый лоад балансер для ...WebCamp 2016: DevOps. Ярослав Погребняк: Gobetween - новый лоад балансер для ...
WebCamp 2016: DevOps. Ярослав Погребняк: Gobetween - новый лоад балансер для ...
 
CouchDB Mobile - From Couch to 5K in 1 Hour
CouchDB Mobile - From Couch to 5K in 1 HourCouchDB Mobile - From Couch to 5K in 1 Hour
CouchDB Mobile - From Couch to 5K in 1 Hour
 
WebCamp 2016: DevOps. Николай Дойков: Опыт создания клауда для потокового вид...
WebCamp 2016: DevOps. Николай Дойков: Опыт создания клауда для потокового вид...WebCamp 2016: DevOps. Николай Дойков: Опыт создания клауда для потокового вид...
WebCamp 2016: DevOps. Николай Дойков: Опыт создания клауда для потокового вид...
 
Async and Non-blocking IO w/ JRuby
Async and Non-blocking IO w/ JRubyAsync and Non-blocking IO w/ JRuby
Async and Non-blocking IO w/ JRuby
 
Nodejs Explained with Examples
Nodejs Explained with ExamplesNodejs Explained with Examples
Nodejs Explained with Examples
 
Get more than a cache back! The Microsoft Azure Redis Cache (NDC Oslo)
Get more than a cache back! The Microsoft Azure Redis Cache (NDC Oslo)Get more than a cache back! The Microsoft Azure Redis Cache (NDC Oslo)
Get more than a cache back! The Microsoft Azure Redis Cache (NDC Oslo)
 
Meetup cassandra sfo_jdbc
Meetup cassandra sfo_jdbcMeetup cassandra sfo_jdbc
Meetup cassandra sfo_jdbc
 
Introducing CouchDB
Introducing CouchDBIntroducing CouchDB
Introducing CouchDB
 
PostgREST Design Philosophy
PostgREST Design PhilosophyPostgREST Design Philosophy
PostgREST Design Philosophy
 
using Mithril.js + postgREST to build and consume API's
using Mithril.js + postgREST to build and consume API'susing Mithril.js + postgREST to build and consume API's
using Mithril.js + postgREST to build and consume API's
 

Semelhante a Using Embulk at Treasure Data

Treasure Data and AWS - Developers.io 2015
Treasure Data and AWS - Developers.io 2015Treasure Data and AWS - Developers.io 2015
Treasure Data and AWS - Developers.io 2015N Masahiro
 
Getting Maximum Performance from Amazon Redshift (DAT305) | AWS re:Invent 2013
Getting Maximum Performance from Amazon Redshift (DAT305) | AWS re:Invent 2013Getting Maximum Performance from Amazon Redshift (DAT305) | AWS re:Invent 2013
Getting Maximum Performance from Amazon Redshift (DAT305) | AWS re:Invent 2013Amazon Web Services
 
Building a Sustainable Data Platform on AWS
Building a Sustainable Data Platform on AWSBuilding a Sustainable Data Platform on AWS
Building a Sustainable Data Platform on AWSSmartNews, Inc.
 
Synapse 2018 Guarding against failure in a hundred step pipeline
Synapse 2018 Guarding against failure in a hundred step pipelineSynapse 2018 Guarding against failure in a hundred step pipeline
Synapse 2018 Guarding against failure in a hundred step pipelineCalvin French-Owen
 
Yaroslav Nedashkovsky "How to manage hundreds of pipelines for processing da...
Yaroslav Nedashkovsky  "How to manage hundreds of pipelines for processing da...Yaroslav Nedashkovsky  "How to manage hundreds of pipelines for processing da...
Yaroslav Nedashkovsky "How to manage hundreds of pipelines for processing da...Lviv Startup Club
 
Accumulo Summit 2015: Building Aggregation Systems on Accumulo [Leveraging Ac...
Accumulo Summit 2015: Building Aggregation Systems on Accumulo [Leveraging Ac...Accumulo Summit 2015: Building Aggregation Systems on Accumulo [Leveraging Ac...
Accumulo Summit 2015: Building Aggregation Systems on Accumulo [Leveraging Ac...Accumulo Summit
 
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
 
Understanding Presto - Presto meetup @ Tokyo #1
Understanding Presto - Presto meetup @ Tokyo #1Understanding Presto - Presto meetup @ Tokyo #1
Understanding Presto - Presto meetup @ Tokyo #1Sadayuki Furuhashi
 
Embulk, an open-source plugin-based parallel bulk data loader
Embulk, an open-source plugin-based parallel bulk data loaderEmbulk, an open-source plugin-based parallel bulk data loader
Embulk, an open-source plugin-based parallel bulk data loaderSadayuki Furuhashi
 
Scaling asp.net websites to millions of users
Scaling asp.net websites to millions of usersScaling asp.net websites to millions of users
Scaling asp.net websites to millions of usersoazabir
 
Streaming sql w kafka and flink
Streaming sql w  kafka and flinkStreaming sql w  kafka and flink
Streaming sql w kafka and flinkKenny Gorman
 
How to Build a Big Data Application: Serverless Edition
How to Build a Big Data Application: Serverless EditionHow to Build a Big Data Application: Serverless Edition
How to Build a Big Data Application: Serverless Editionecobold
 
Treasure Data and OSS
Treasure Data and OSSTreasure Data and OSS
Treasure Data and OSSN Masahiro
 
How to Build a Big Data Application: Serverless Edition
How to Build a Big Data Application: Serverless EditionHow to Build a Big Data Application: Serverless Edition
How to Build a Big Data Application: Serverless EditionLecole Cole
 
Apache Samza 1.0 - What's New, What's Next
Apache Samza 1.0 - What's New, What's NextApache Samza 1.0 - What's New, What's Next
Apache Samza 1.0 - What's New, What's NextPrateek Maheshwari
 
Fluentd - RubyKansai 65
Fluentd - RubyKansai 65Fluentd - RubyKansai 65
Fluentd - RubyKansai 65N Masahiro
 

Semelhante a Using Embulk at Treasure Data (20)

Using Embulk at Treasure Data
Using Embulk at Treasure DataUsing Embulk at Treasure Data
Using Embulk at Treasure Data
 
Treasure Data and AWS - Developers.io 2015
Treasure Data and AWS - Developers.io 2015Treasure Data and AWS - Developers.io 2015
Treasure Data and AWS - Developers.io 2015
 
Getting Maximum Performance from Amazon Redshift (DAT305) | AWS re:Invent 2013
Getting Maximum Performance from Amazon Redshift (DAT305) | AWS re:Invent 2013Getting Maximum Performance from Amazon Redshift (DAT305) | AWS re:Invent 2013
Getting Maximum Performance from Amazon Redshift (DAT305) | AWS re:Invent 2013
 
SQL Injection
SQL InjectionSQL Injection
SQL Injection
 
Building a Sustainable Data Platform on AWS
Building a Sustainable Data Platform on AWSBuilding a Sustainable Data Platform on AWS
Building a Sustainable Data Platform on AWS
 
Synapse 2018 Guarding against failure in a hundred step pipeline
Synapse 2018 Guarding against failure in a hundred step pipelineSynapse 2018 Guarding against failure in a hundred step pipeline
Synapse 2018 Guarding against failure in a hundred step pipeline
 
Yaroslav Nedashkovsky "How to manage hundreds of pipelines for processing da...
Yaroslav Nedashkovsky  "How to manage hundreds of pipelines for processing da...Yaroslav Nedashkovsky  "How to manage hundreds of pipelines for processing da...
Yaroslav Nedashkovsky "How to manage hundreds of pipelines for processing da...
 
Accumulo Summit 2015: Building Aggregation Systems on Accumulo [Leveraging Ac...
Accumulo Summit 2015: Building Aggregation Systems on Accumulo [Leveraging Ac...Accumulo Summit 2015: Building Aggregation Systems on Accumulo [Leveraging Ac...
Accumulo Summit 2015: Building Aggregation Systems on Accumulo [Leveraging Ac...
 
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
 
Understanding Presto - Presto meetup @ Tokyo #1
Understanding Presto - Presto meetup @ Tokyo #1Understanding Presto - Presto meetup @ Tokyo #1
Understanding Presto - Presto meetup @ Tokyo #1
 
Sql Server
Sql ServerSql Server
Sql Server
 
Embulk, an open-source plugin-based parallel bulk data loader
Embulk, an open-source plugin-based parallel bulk data loaderEmbulk, an open-source plugin-based parallel bulk data loader
Embulk, an open-source plugin-based parallel bulk data loader
 
Scaling asp.net websites to millions of users
Scaling asp.net websites to millions of usersScaling asp.net websites to millions of users
Scaling asp.net websites to millions of users
 
Streaming sql w kafka and flink
Streaming sql w  kafka and flinkStreaming sql w  kafka and flink
Streaming sql w kafka and flink
 
How to Build a Big Data Application: Serverless Edition
How to Build a Big Data Application: Serverless EditionHow to Build a Big Data Application: Serverless Edition
How to Build a Big Data Application: Serverless Edition
 
Treasure Data and OSS
Treasure Data and OSSTreasure Data and OSS
Treasure Data and OSS
 
How To Scale v2
How To Scale v2How To Scale v2
How To Scale v2
 
How to Build a Big Data Application: Serverless Edition
How to Build a Big Data Application: Serverless EditionHow to Build a Big Data Application: Serverless Edition
How to Build a Big Data Application: Serverless Edition
 
Apache Samza 1.0 - What's New, What's Next
Apache Samza 1.0 - What's New, What's NextApache Samza 1.0 - What's New, What's Next
Apache Samza 1.0 - What's New, What's Next
 
Fluentd - RubyKansai 65
Fluentd - RubyKansai 65Fluentd - RubyKansai 65
Fluentd - RubyKansai 65
 

Último

Call Girls In Bangalore ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Bangalore ☎ 7737669865 🥵 Book Your One night StandCall Girls In Bangalore ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Bangalore ☎ 7737669865 🥵 Book Your One night Standamitlee9823
 
Java Programming :Event Handling(Types of Events)
Java Programming :Event Handling(Types of Events)Java Programming :Event Handling(Types of Events)
Java Programming :Event Handling(Types of Events)simmis5
 
VIP Call Girls Ankleshwar 7001035870 Whatsapp Number, 24/07 Booking
VIP Call Girls Ankleshwar 7001035870 Whatsapp Number, 24/07 BookingVIP Call Girls Ankleshwar 7001035870 Whatsapp Number, 24/07 Booking
VIP Call Girls Ankleshwar 7001035870 Whatsapp Number, 24/07 Bookingdharasingh5698
 
AKTU Computer Networks notes --- Unit 3.pdf
AKTU Computer Networks notes ---  Unit 3.pdfAKTU Computer Networks notes ---  Unit 3.pdf
AKTU Computer Networks notes --- Unit 3.pdfankushspencer015
 
Online banking management system project.pdf
Online banking management system project.pdfOnline banking management system project.pdf
Online banking management system project.pdfKamal Acharya
 
The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...
The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...
The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...ranjana rawat
 
Unit 1 - Soil Classification and Compaction.pdf
Unit 1 - Soil Classification and Compaction.pdfUnit 1 - Soil Classification and Compaction.pdf
Unit 1 - Soil Classification and Compaction.pdfRagavanV2
 
PVC VS. FIBERGLASS (FRP) GRAVITY SEWER - UNI BELL
PVC VS. FIBERGLASS (FRP) GRAVITY SEWER - UNI BELLPVC VS. FIBERGLASS (FRP) GRAVITY SEWER - UNI BELL
PVC VS. FIBERGLASS (FRP) GRAVITY SEWER - UNI BELLManishPatel169454
 
Intze Overhead Water Tank Design by Working Stress - IS Method.pdf
Intze Overhead Water Tank  Design by Working Stress - IS Method.pdfIntze Overhead Water Tank  Design by Working Stress - IS Method.pdf
Intze Overhead Water Tank Design by Working Stress - IS Method.pdfSuman Jyoti
 
Double rodded leveling 1 pdf activity 01
Double rodded leveling 1 pdf activity 01Double rodded leveling 1 pdf activity 01
Double rodded leveling 1 pdf activity 01KreezheaRecto
 
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXssuser89054b
 
UNIT - IV - Air Compressors and its Performance
UNIT - IV - Air Compressors and its PerformanceUNIT - IV - Air Compressors and its Performance
UNIT - IV - Air Compressors and its Performancesivaprakash250
 
Booking open Available Pune Call Girls Pargaon 6297143586 Call Hot Indian Gi...
Booking open Available Pune Call Girls Pargaon  6297143586 Call Hot Indian Gi...Booking open Available Pune Call Girls Pargaon  6297143586 Call Hot Indian Gi...
Booking open Available Pune Call Girls Pargaon 6297143586 Call Hot Indian Gi...Call Girls in Nagpur High Profile
 
Top Rated Pune Call Girls Budhwar Peth ⟟ 6297143586 ⟟ Call Me For Genuine Se...
Top Rated  Pune Call Girls Budhwar Peth ⟟ 6297143586 ⟟ Call Me For Genuine Se...Top Rated  Pune Call Girls Budhwar Peth ⟟ 6297143586 ⟟ Call Me For Genuine Se...
Top Rated Pune Call Girls Budhwar Peth ⟟ 6297143586 ⟟ Call Me For Genuine Se...Call Girls in Nagpur High Profile
 
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756dollysharma2066
 
Double Revolving field theory-how the rotor develops torque
Double Revolving field theory-how the rotor develops torqueDouble Revolving field theory-how the rotor develops torque
Double Revolving field theory-how the rotor develops torqueBhangaleSonal
 
Thermal Engineering-R & A / C - unit - V
Thermal Engineering-R & A / C - unit - VThermal Engineering-R & A / C - unit - V
Thermal Engineering-R & A / C - unit - VDineshKumar4165
 
Generative AI or GenAI technology based PPT
Generative AI or GenAI technology based PPTGenerative AI or GenAI technology based PPT
Generative AI or GenAI technology based PPTbhaskargani46
 

Último (20)

Call Girls In Bangalore ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Bangalore ☎ 7737669865 🥵 Book Your One night StandCall Girls In Bangalore ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Bangalore ☎ 7737669865 🥵 Book Your One night Stand
 
Java Programming :Event Handling(Types of Events)
Java Programming :Event Handling(Types of Events)Java Programming :Event Handling(Types of Events)
Java Programming :Event Handling(Types of Events)
 
VIP Call Girls Ankleshwar 7001035870 Whatsapp Number, 24/07 Booking
VIP Call Girls Ankleshwar 7001035870 Whatsapp Number, 24/07 BookingVIP Call Girls Ankleshwar 7001035870 Whatsapp Number, 24/07 Booking
VIP Call Girls Ankleshwar 7001035870 Whatsapp Number, 24/07 Booking
 
AKTU Computer Networks notes --- Unit 3.pdf
AKTU Computer Networks notes ---  Unit 3.pdfAKTU Computer Networks notes ---  Unit 3.pdf
AKTU Computer Networks notes --- Unit 3.pdf
 
Online banking management system project.pdf
Online banking management system project.pdfOnline banking management system project.pdf
Online banking management system project.pdf
 
The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...
The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...
The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...
 
Unit 1 - Soil Classification and Compaction.pdf
Unit 1 - Soil Classification and Compaction.pdfUnit 1 - Soil Classification and Compaction.pdf
Unit 1 - Soil Classification and Compaction.pdf
 
PVC VS. FIBERGLASS (FRP) GRAVITY SEWER - UNI BELL
PVC VS. FIBERGLASS (FRP) GRAVITY SEWER - UNI BELLPVC VS. FIBERGLASS (FRP) GRAVITY SEWER - UNI BELL
PVC VS. FIBERGLASS (FRP) GRAVITY SEWER - UNI BELL
 
Intze Overhead Water Tank Design by Working Stress - IS Method.pdf
Intze Overhead Water Tank  Design by Working Stress - IS Method.pdfIntze Overhead Water Tank  Design by Working Stress - IS Method.pdf
Intze Overhead Water Tank Design by Working Stress - IS Method.pdf
 
Double rodded leveling 1 pdf activity 01
Double rodded leveling 1 pdf activity 01Double rodded leveling 1 pdf activity 01
Double rodded leveling 1 pdf activity 01
 
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
 
Water Industry Process Automation & Control Monthly - April 2024
Water Industry Process Automation & Control Monthly - April 2024Water Industry Process Automation & Control Monthly - April 2024
Water Industry Process Automation & Control Monthly - April 2024
 
UNIT - IV - Air Compressors and its Performance
UNIT - IV - Air Compressors and its PerformanceUNIT - IV - Air Compressors and its Performance
UNIT - IV - Air Compressors and its Performance
 
Booking open Available Pune Call Girls Pargaon 6297143586 Call Hot Indian Gi...
Booking open Available Pune Call Girls Pargaon  6297143586 Call Hot Indian Gi...Booking open Available Pune Call Girls Pargaon  6297143586 Call Hot Indian Gi...
Booking open Available Pune Call Girls Pargaon 6297143586 Call Hot Indian Gi...
 
Top Rated Pune Call Girls Budhwar Peth ⟟ 6297143586 ⟟ Call Me For Genuine Se...
Top Rated  Pune Call Girls Budhwar Peth ⟟ 6297143586 ⟟ Call Me For Genuine Se...Top Rated  Pune Call Girls Budhwar Peth ⟟ 6297143586 ⟟ Call Me For Genuine Se...
Top Rated Pune Call Girls Budhwar Peth ⟟ 6297143586 ⟟ Call Me For Genuine Se...
 
Call Now ≽ 9953056974 ≼🔝 Call Girls In New Ashok Nagar ≼🔝 Delhi door step de...
Call Now ≽ 9953056974 ≼🔝 Call Girls In New Ashok Nagar  ≼🔝 Delhi door step de...Call Now ≽ 9953056974 ≼🔝 Call Girls In New Ashok Nagar  ≼🔝 Delhi door step de...
Call Now ≽ 9953056974 ≼🔝 Call Girls In New Ashok Nagar ≼🔝 Delhi door step de...
 
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
 
Double Revolving field theory-how the rotor develops torque
Double Revolving field theory-how the rotor develops torqueDouble Revolving field theory-how the rotor develops torque
Double Revolving field theory-how the rotor develops torque
 
Thermal Engineering-R & A / C - unit - V
Thermal Engineering-R & A / C - unit - VThermal Engineering-R & A / C - unit - V
Thermal Engineering-R & A / C - unit - V
 
Generative AI or GenAI technology based PPT
Generative AI or GenAI technology based PPTGenerative AI or GenAI technology based PPT
Generative AI or GenAI technology based PPT
 

Using Embulk at Treasure Data