SlideShare a Scribd company logo
1 of 20
Download to read offline
Mladen Kovacevic, Senior Solutions Architect
Cloudera Inc.
Storage Engine
Considerations for your
Apache Spark Applications
#EUdev10
Outline
• Motivation – store your data – where exactly?
• Storage Capabilities:
– HDFS
– HBase
– Kudu
– Solr
• Asking the right questions
• Decide on right storage solution
2#EUdev10
Motivation
• Spark, SparkStreaming, SparkSQL – great for
processing – need a place to store content
• Integration with variety of storage systems
• Ingest and consumption requirements – use
case!
3#EUdev10
Design patterns
4#EUdev10
Choosing the right storage
for the use case
2006
2007
2016
2008
HDFS
• Distributed file system – cheap, scalable, storage
• Immutable – “record” changes are painful
• Columnar file formats - ideal for analytics
• SQL overlays (SparkSQL, Hive Metastore, more) to
define schema
Highlights
Very high throughput, painful random IO, batch oriented,
coding overhead (ie. dealing with small files problems), any
file
5#EUdev10
HDFS design pattern
df.write.parquet(“/data/person_table”)
6#EUdev10
• Small files accumulate
• External processes, or additional
application logic to manage these files
• Partition management
• Manage metadata carefully (depends
on ecosystem)
• Considerations- changing dimensions
(fast/slow)
• Late arriving data
HBase
• NoSQL engine, manages files on HDFS
• Key-value, distributed storage engine
• No data types – just binary fields
• Thousands to millions of columns
• Store entity data (profiles of people, devices, accounts)
Highlights
Very fast random IO, low throughput, NRT oriented,
challenging BI, no strict data types
7#EUdev10
HBase design pattern
8#EUdev10
• HBase Connection anywhere in
Spark/SparkStreaming app
• SparkSQL/DataFrames, Bulk Load
• Primary storage for ingestion or
complementary preserving state
• NoSQL store vs. structured
• Near-real-time
CDH hbase-spark: https://github.com/cloudera/hbase/tree/cdh5-1.2.0_5.13.0/hbase-spark
CDH HBase and Spark docs: http://archive.cloudera.com/cdh5/cdh/5/hbase-1.2.0-cdh5.13.0/book.html#spark
Upstream hbase-spark (watch for updates in HBase 2.x release): https://github.com/apache/hbase/tree/master/hbase-spark/
Upstream HBase and Spark book: http://hbase.apache.org/book.html#spark
Analytic Gap
9#EUdev10
Kudu
• Storage system for tables of structured data
• Bring-your-own-SQL (SparkSQL, Impala), NoSQL-like
API, integration with Spark, MapReduce, more..
• Columnar, key partitioning by range and/or hash
• Limited number of columns (strongly typed)
Highlights
Fast random IO, fast throughput, NRT oriented, terrific for
BI, structured data
10#EUdev10
Kudu design pattern
df.write.options(kuduOptions).mode(“append”).kudu
OR
kuduContext.insertRows()
11#EUdev10
• DataFrame perfect match for Kudu
(structured)
• Data available immediately to SQL
engines (Impala, SparkSQL)
• Ideal case is append with moderate
updates
Kudu Integration with Spark: http://kudu.apache.org/docs/developing.html#_kudu_integration_with_spark
Up and running with Apache Spark on Apache Kudu: https://blog.cloudera.com/blog/2017/02/up-and-running-with-apache-spark-on-apache-kudu/
Analytic Gap Filled
12#EUdev10
Solr
• Distributed index enabling search capabilities (Lucene)
• Typed, REST API based, search index query processing
• Search interface, faceting, integration with HBase storing
content (typically) in HDFS
Highlights
High random IO, low throughput, multi-faceted use cases,
NRT oriented, terrific for BI with the right tools (non-SQL),
loose schema, data types
13#EUdev10
Solr design pattern
14#EUdev10
• Prepare Solr document, add to
SolrCloud directly OR
• Write to HBase, leverage Lily
HBase Indexer service to update
Solr
• Store complete record in HBase,
while indexed fields for search in
Solr
• NRT availability (short soft
commits)
Questions we ask (1)
• How many voters have cast their ballots by city
thus far in the election, by the second?
– streaming data into ‘voter’ table, aggregate query,
immediate data availability : Kudu
• How many people watched last nights game
compared to the night before?
– daily batch, aggregate query : HDFS parquet
15#EUdev10
Questions we ask (2)
• What version is my device running and how
many dropped packets do I have?
– streaming entity profile data, metrics may change per
release, many updates, specific device, NRT: HBase
• Which tweets talk to the housing market, in the
21-30 age group?
– streaming, keyword search, facet filtering : Solr
16#EUdev10
Use case questionnaire
• Consumption interface: SQL (JDBC/ODBC) vs. API
• Near-real-time requirement for consumers
• Ingestion rate (can we keep up?)
• Entity vs. Events (time-based)
• Append-only vs moderate updates vs many updates
• Distinct values in dataset
17#EUdev10
Storage considerations (1)
18#EUdev10
Criteria
SQL interface
API interface
Near-real-time ingestion
Append-only + available for query
Appends with moderate updates
Mostly updates
Storage considerations (2)
19#EUdev10
Criteria
Entity based data
Event based data (time-series)
High distinct values
Many and unknown attributes
Binary data (Images, PDFs, etc)
Analytics
Wrap-up
• Review entire use-case end-to-end early
• Understand storage capabilities
• Ask the right questions (upstream/consumers)
• Consider security, architecture and development
costs
• Decide on the right storage solution
20#EUdev10

More Related Content

What's hot

Introduction to Amazon Relational Database Service
Introduction to Amazon Relational Database ServiceIntroduction to Amazon Relational Database Service
Introduction to Amazon Relational Database ServiceAmazon Web Services
 
Introduction to HBase - NoSqlNow2015
Introduction to HBase - NoSqlNow2015Introduction to HBase - NoSqlNow2015
Introduction to HBase - NoSqlNow2015Apekshit Sharma
 
Introduction to Amazon Relational Database Service (Amazon RDS)
Introduction to Amazon Relational Database Service (Amazon RDS)Introduction to Amazon Relational Database Service (Amazon RDS)
Introduction to Amazon Relational Database Service (Amazon RDS)Amazon Web Services
 
Facebook's TAO & Unicorn data storage and search platforms
Facebook's TAO & Unicorn data storage and search platformsFacebook's TAO & Unicorn data storage and search platforms
Facebook's TAO & Unicorn data storage and search platformsNitish Upreti
 
Introduction to Amazon Relational Database Service
Introduction to Amazon Relational Database ServiceIntroduction to Amazon Relational Database Service
Introduction to Amazon Relational Database ServiceAmazon Web Services
 
Apache Hive Tutorial
Apache Hive TutorialApache Hive Tutorial
Apache Hive TutorialSandeep Patil
 
DB12c: All You Need to Know About the Resource Manager
DB12c: All You Need to Know About the Resource ManagerDB12c: All You Need to Know About the Resource Manager
DB12c: All You Need to Know About the Resource ManagerAndrejs Vorobjovs
 
Maximum Availability Architecture - Best Practices for Oracle Database 19c
Maximum Availability Architecture - Best Practices for Oracle Database 19cMaximum Availability Architecture - Best Practices for Oracle Database 19c
Maximum Availability Architecture - Best Practices for Oracle Database 19cGlen Hawkins
 
Auto scaling using Amazon Web Services ( AWS )
Auto scaling using Amazon Web Services ( AWS )Auto scaling using Amazon Web Services ( AWS )
Auto scaling using Amazon Web Services ( AWS )Harish Ganesan
 
Creating and Managing a WordPress Website with Amazon Lightsail - AWS Online ...
Creating and Managing a WordPress Website with Amazon Lightsail - AWS Online ...Creating and Managing a WordPress Website with Amazon Lightsail - AWS Online ...
Creating and Managing a WordPress Website with Amazon Lightsail - AWS Online ...Amazon Web Services
 
Apache Jackrabbit Oak - Scale your content repository to the cloud
Apache Jackrabbit Oak - Scale your content repository to the cloudApache Jackrabbit Oak - Scale your content repository to the cloud
Apache Jackrabbit Oak - Scale your content repository to the cloudRobert Munteanu
 
Introduction to NoSQL Databases
Introduction to NoSQL DatabasesIntroduction to NoSQL Databases
Introduction to NoSQL DatabasesDerek Stainer
 
VMware vSphere 6.0 - Troubleshooting Training - Day 5
VMware vSphere 6.0 - Troubleshooting Training - Day 5VMware vSphere 6.0 - Troubleshooting Training - Day 5
VMware vSphere 6.0 - Troubleshooting Training - Day 5Sanjeev Kumar
 

What's hot (20)

DynamodbDB Deep Dive
DynamodbDB Deep DiveDynamodbDB Deep Dive
DynamodbDB Deep Dive
 
Introduction to Amazon Relational Database Service
Introduction to Amazon Relational Database ServiceIntroduction to Amazon Relational Database Service
Introduction to Amazon Relational Database Service
 
CouchDB
CouchDBCouchDB
CouchDB
 
Introduction to HBase - NoSqlNow2015
Introduction to HBase - NoSqlNow2015Introduction to HBase - NoSqlNow2015
Introduction to HBase - NoSqlNow2015
 
Oracle on AWS RDS Migration - 성기명
Oracle on AWS RDS Migration - 성기명Oracle on AWS RDS Migration - 성기명
Oracle on AWS RDS Migration - 성기명
 
Introduction to Amazon Relational Database Service (Amazon RDS)
Introduction to Amazon Relational Database Service (Amazon RDS)Introduction to Amazon Relational Database Service (Amazon RDS)
Introduction to Amazon Relational Database Service (Amazon RDS)
 
RDBMS vs NoSQL
RDBMS vs NoSQLRDBMS vs NoSQL
RDBMS vs NoSQL
 
Facebook's TAO & Unicorn data storage and search platforms
Facebook's TAO & Unicorn data storage and search platformsFacebook's TAO & Unicorn data storage and search platforms
Facebook's TAO & Unicorn data storage and search platforms
 
Introduction to Amazon Relational Database Service
Introduction to Amazon Relational Database ServiceIntroduction to Amazon Relational Database Service
Introduction to Amazon Relational Database Service
 
AWS Storage Options
AWS Storage OptionsAWS Storage Options
AWS Storage Options
 
Become an IAM Policy Ninja
Become an IAM Policy NinjaBecome an IAM Policy Ninja
Become an IAM Policy Ninja
 
AWS ELB
AWS ELBAWS ELB
AWS ELB
 
Apache Hive Tutorial
Apache Hive TutorialApache Hive Tutorial
Apache Hive Tutorial
 
DB12c: All You Need to Know About the Resource Manager
DB12c: All You Need to Know About the Resource ManagerDB12c: All You Need to Know About the Resource Manager
DB12c: All You Need to Know About the Resource Manager
 
Maximum Availability Architecture - Best Practices for Oracle Database 19c
Maximum Availability Architecture - Best Practices for Oracle Database 19cMaximum Availability Architecture - Best Practices for Oracle Database 19c
Maximum Availability Architecture - Best Practices for Oracle Database 19c
 
Auto scaling using Amazon Web Services ( AWS )
Auto scaling using Amazon Web Services ( AWS )Auto scaling using Amazon Web Services ( AWS )
Auto scaling using Amazon Web Services ( AWS )
 
Creating and Managing a WordPress Website with Amazon Lightsail - AWS Online ...
Creating and Managing a WordPress Website with Amazon Lightsail - AWS Online ...Creating and Managing a WordPress Website with Amazon Lightsail - AWS Online ...
Creating and Managing a WordPress Website with Amazon Lightsail - AWS Online ...
 
Apache Jackrabbit Oak - Scale your content repository to the cloud
Apache Jackrabbit Oak - Scale your content repository to the cloudApache Jackrabbit Oak - Scale your content repository to the cloud
Apache Jackrabbit Oak - Scale your content repository to the cloud
 
Introduction to NoSQL Databases
Introduction to NoSQL DatabasesIntroduction to NoSQL Databases
Introduction to NoSQL Databases
 
VMware vSphere 6.0 - Troubleshooting Training - Day 5
VMware vSphere 6.0 - Troubleshooting Training - Day 5VMware vSphere 6.0 - Troubleshooting Training - Day 5
VMware vSphere 6.0 - Troubleshooting Training - Day 5
 

Viewers also liked

Fast Data with Apache Ignite and Apache Spark with Christos Erotocritou
Fast Data with Apache Ignite and Apache Spark with Christos ErotocritouFast Data with Apache Ignite and Apache Spark with Christos Erotocritou
Fast Data with Apache Ignite and Apache Spark with Christos ErotocritouSpark Summit
 
A Tale of Three Apache Spark APIs: RDDs, DataFrames, and Datasets with Jules ...
A Tale of Three Apache Spark APIs: RDDs, DataFrames, and Datasets with Jules ...A Tale of Three Apache Spark APIs: RDDs, DataFrames, and Datasets with Jules ...
A Tale of Three Apache Spark APIs: RDDs, DataFrames, and Datasets with Jules ...Databricks
 
Accelerating Shuffle: A Tailor-Made RDMA Solution for Apache Spark with Yuval...
Accelerating Shuffle: A Tailor-Made RDMA Solution for Apache Spark with Yuval...Accelerating Shuffle: A Tailor-Made RDMA Solution for Apache Spark with Yuval...
Accelerating Shuffle: A Tailor-Made RDMA Solution for Apache Spark with Yuval...Spark Summit
 
Supporting Highly Multitenant Spark Notebook Workloads with Craig Ingram and ...
Supporting Highly Multitenant Spark Notebook Workloads with Craig Ingram and ...Supporting Highly Multitenant Spark Notebook Workloads with Craig Ingram and ...
Supporting Highly Multitenant Spark Notebook Workloads with Craig Ingram and ...Spark Summit
 
Extending Apache Spark SQL Data Source APIs with Join Push Down with Ioana De...
Extending Apache Spark SQL Data Source APIs with Join Push Down with Ioana De...Extending Apache Spark SQL Data Source APIs with Join Push Down with Ioana De...
Extending Apache Spark SQL Data Source APIs with Join Push Down with Ioana De...Databricks
 
Spark Pipelines in the Cloud with Alluxio with Gene Pang
Spark Pipelines in the Cloud with Alluxio with Gene PangSpark Pipelines in the Cloud with Alluxio with Gene Pang
Spark Pipelines in the Cloud with Alluxio with Gene PangSpark Summit
 
Apache Spark Performance Troubleshooting at Scale, Challenges, Tools, and Met...
Apache Spark Performance Troubleshooting at Scale, Challenges, Tools, and Met...Apache Spark Performance Troubleshooting at Scale, Challenges, Tools, and Met...
Apache Spark Performance Troubleshooting at Scale, Challenges, Tools, and Met...Databricks
 
Running Spark Inside Containers with Haohai Ma and Khalid Ahmed
Running Spark Inside Containers with Haohai Ma and Khalid Ahmed Running Spark Inside Containers with Haohai Ma and Khalid Ahmed
Running Spark Inside Containers with Haohai Ma and Khalid Ahmed Spark Summit
 
Optimal Strategies for Large Scale Batch ETL Jobs with Emma Tang
Optimal Strategies for Large Scale Batch ETL Jobs with Emma TangOptimal Strategies for Large Scale Batch ETL Jobs with Emma Tang
Optimal Strategies for Large Scale Batch ETL Jobs with Emma TangDatabricks
 
Best Practices for Using Alluxio with Apache Spark with Gene Pang
Best Practices for Using Alluxio with Apache Spark with Gene PangBest Practices for Using Alluxio with Apache Spark with Gene Pang
Best Practices for Using Alluxio with Apache Spark with Gene PangSpark Summit
 
An Adaptive Execution Engine for Apache Spark with Carson Wang and Yucai Yu
An Adaptive Execution Engine for Apache Spark with Carson Wang and Yucai YuAn Adaptive Execution Engine for Apache Spark with Carson Wang and Yucai Yu
An Adaptive Execution Engine for Apache Spark with Carson Wang and Yucai YuDatabricks
 
Deep Learning and Streaming in Apache Spark 2.x with Matei Zaharia
Deep Learning and Streaming in Apache Spark 2.x with Matei ZahariaDeep Learning and Streaming in Apache Spark 2.x with Matei Zaharia
Deep Learning and Streaming in Apache Spark 2.x with Matei ZahariaDatabricks
 
Spark Streaming Programming Techniques You Should Know with Gerard Maas
Spark Streaming Programming Techniques You Should Know with Gerard MaasSpark Streaming Programming Techniques You Should Know with Gerard Maas
Spark Streaming Programming Techniques You Should Know with Gerard MaasSpark Summit
 

Viewers also liked (13)

Fast Data with Apache Ignite and Apache Spark with Christos Erotocritou
Fast Data with Apache Ignite and Apache Spark with Christos ErotocritouFast Data with Apache Ignite and Apache Spark with Christos Erotocritou
Fast Data with Apache Ignite and Apache Spark with Christos Erotocritou
 
A Tale of Three Apache Spark APIs: RDDs, DataFrames, and Datasets with Jules ...
A Tale of Three Apache Spark APIs: RDDs, DataFrames, and Datasets with Jules ...A Tale of Three Apache Spark APIs: RDDs, DataFrames, and Datasets with Jules ...
A Tale of Three Apache Spark APIs: RDDs, DataFrames, and Datasets with Jules ...
 
Accelerating Shuffle: A Tailor-Made RDMA Solution for Apache Spark with Yuval...
Accelerating Shuffle: A Tailor-Made RDMA Solution for Apache Spark with Yuval...Accelerating Shuffle: A Tailor-Made RDMA Solution for Apache Spark with Yuval...
Accelerating Shuffle: A Tailor-Made RDMA Solution for Apache Spark with Yuval...
 
Supporting Highly Multitenant Spark Notebook Workloads with Craig Ingram and ...
Supporting Highly Multitenant Spark Notebook Workloads with Craig Ingram and ...Supporting Highly Multitenant Spark Notebook Workloads with Craig Ingram and ...
Supporting Highly Multitenant Spark Notebook Workloads with Craig Ingram and ...
 
Extending Apache Spark SQL Data Source APIs with Join Push Down with Ioana De...
Extending Apache Spark SQL Data Source APIs with Join Push Down with Ioana De...Extending Apache Spark SQL Data Source APIs with Join Push Down with Ioana De...
Extending Apache Spark SQL Data Source APIs with Join Push Down with Ioana De...
 
Spark Pipelines in the Cloud with Alluxio with Gene Pang
Spark Pipelines in the Cloud with Alluxio with Gene PangSpark Pipelines in the Cloud with Alluxio with Gene Pang
Spark Pipelines in the Cloud with Alluxio with Gene Pang
 
Apache Spark Performance Troubleshooting at Scale, Challenges, Tools, and Met...
Apache Spark Performance Troubleshooting at Scale, Challenges, Tools, and Met...Apache Spark Performance Troubleshooting at Scale, Challenges, Tools, and Met...
Apache Spark Performance Troubleshooting at Scale, Challenges, Tools, and Met...
 
Running Spark Inside Containers with Haohai Ma and Khalid Ahmed
Running Spark Inside Containers with Haohai Ma and Khalid Ahmed Running Spark Inside Containers with Haohai Ma and Khalid Ahmed
Running Spark Inside Containers with Haohai Ma and Khalid Ahmed
 
Optimal Strategies for Large Scale Batch ETL Jobs with Emma Tang
Optimal Strategies for Large Scale Batch ETL Jobs with Emma TangOptimal Strategies for Large Scale Batch ETL Jobs with Emma Tang
Optimal Strategies for Large Scale Batch ETL Jobs with Emma Tang
 
Best Practices for Using Alluxio with Apache Spark with Gene Pang
Best Practices for Using Alluxio with Apache Spark with Gene PangBest Practices for Using Alluxio with Apache Spark with Gene Pang
Best Practices for Using Alluxio with Apache Spark with Gene Pang
 
An Adaptive Execution Engine for Apache Spark with Carson Wang and Yucai Yu
An Adaptive Execution Engine for Apache Spark with Carson Wang and Yucai YuAn Adaptive Execution Engine for Apache Spark with Carson Wang and Yucai Yu
An Adaptive Execution Engine for Apache Spark with Carson Wang and Yucai Yu
 
Deep Learning and Streaming in Apache Spark 2.x with Matei Zaharia
Deep Learning and Streaming in Apache Spark 2.x with Matei ZahariaDeep Learning and Streaming in Apache Spark 2.x with Matei Zaharia
Deep Learning and Streaming in Apache Spark 2.x with Matei Zaharia
 
Spark Streaming Programming Techniques You Should Know with Gerard Maas
Spark Streaming Programming Techniques You Should Know with Gerard MaasSpark Streaming Programming Techniques You Should Know with Gerard Maas
Spark Streaming Programming Techniques You Should Know with Gerard Maas
 

Similar to Storage Engine Considerations for Your Apache Spark Applications with Mladen Kovacevic

Big Data Meets HPC - Exploiting HPC Technologies for Accelerating Big Data Pr...
Big Data Meets HPC - Exploiting HPC Technologies for Accelerating Big Data Pr...Big Data Meets HPC - Exploiting HPC Technologies for Accelerating Big Data Pr...
Big Data Meets HPC - Exploiting HPC Technologies for Accelerating Big Data Pr...inside-BigData.com
 
Etu Solution Day 2014 Track-D: 掌握Impala和Spark
Etu Solution Day 2014 Track-D: 掌握Impala和SparkEtu Solution Day 2014 Track-D: 掌握Impala和Spark
Etu Solution Day 2014 Track-D: 掌握Impala和SparkJames Chen
 
Accelerating Hadoop, Spark, and Memcached with HPC Technologies
Accelerating Hadoop, Spark, and Memcached with HPC TechnologiesAccelerating Hadoop, Spark, and Memcached with HPC Technologies
Accelerating Hadoop, Spark, and Memcached with HPC Technologiesinside-BigData.com
 
Hoodie - DataEngConf 2017
Hoodie - DataEngConf 2017Hoodie - DataEngConf 2017
Hoodie - DataEngConf 2017Vinoth Chandar
 
Designing Convergent HPC and Big Data Software Stacks: An Overview of the HiB...
Designing Convergent HPC and Big Data Software Stacks: An Overview of the HiB...Designing Convergent HPC and Big Data Software Stacks: An Overview of the HiB...
Designing Convergent HPC and Big Data Software Stacks: An Overview of the HiB...inside-BigData.com
 
Tcloud Computing Hadoop Family and Ecosystem Service 2013.Q3
Tcloud Computing Hadoop Family and Ecosystem Service 2013.Q3Tcloud Computing Hadoop Family and Ecosystem Service 2013.Q3
Tcloud Computing Hadoop Family and Ecosystem Service 2013.Q3tcloudcomputing-tw
 
Introduction to Kudu: Hadoop Storage for Fast Analytics on Fast Data - Rüdige...
Introduction to Kudu: Hadoop Storage for Fast Analytics on Fast Data - Rüdige...Introduction to Kudu: Hadoop Storage for Fast Analytics on Fast Data - Rüdige...
Introduction to Kudu: Hadoop Storage for Fast Analytics on Fast Data - Rüdige...Dataconomy Media
 
Introducing Apache Kudu (Incubating) - Montreal HUG May 2016
Introducing Apache Kudu (Incubating) - Montreal HUG May 2016Introducing Apache Kudu (Incubating) - Montreal HUG May 2016
Introducing Apache Kudu (Incubating) - Montreal HUG May 2016Mladen Kovacevic
 
SQL Engines for Hadoop - The case for Impala
SQL Engines for Hadoop - The case for ImpalaSQL Engines for Hadoop - The case for Impala
SQL Engines for Hadoop - The case for Impalamarkgrover
 
Gunther hagleitner:apache hive & stinger
Gunther hagleitner:apache hive & stingerGunther hagleitner:apache hive & stinger
Gunther hagleitner:apache hive & stingerhdhappy001
 
Eric Baldeschwieler Keynote from Storage Developers Conference
Eric Baldeschwieler Keynote from Storage Developers ConferenceEric Baldeschwieler Keynote from Storage Developers Conference
Eric Baldeschwieler Keynote from Storage Developers ConferenceHortonworks
 
Michael stack -the state of apache h base
Michael stack -the state of apache h baseMichael stack -the state of apache h base
Michael stack -the state of apache h basehdhappy001
 
Java One 2017: Open Source Big Data in the Cloud: Hadoop, M/R, Hive, Spark an...
Java One 2017: Open Source Big Data in the Cloud: Hadoop, M/R, Hive, Spark an...Java One 2017: Open Source Big Data in the Cloud: Hadoop, M/R, Hive, Spark an...
Java One 2017: Open Source Big Data in the Cloud: Hadoop, M/R, Hive, Spark an...Frank Munz
 
Introduction to Kudu - StampedeCon 2016
Introduction to Kudu - StampedeCon 2016Introduction to Kudu - StampedeCon 2016
Introduction to Kudu - StampedeCon 2016StampedeCon
 

Similar to Storage Engine Considerations for Your Apache Spark Applications with Mladen Kovacevic (20)

Big Data Meets HPC - Exploiting HPC Technologies for Accelerating Big Data Pr...
Big Data Meets HPC - Exploiting HPC Technologies for Accelerating Big Data Pr...Big Data Meets HPC - Exploiting HPC Technologies for Accelerating Big Data Pr...
Big Data Meets HPC - Exploiting HPC Technologies for Accelerating Big Data Pr...
 
Etu Solution Day 2014 Track-D: 掌握Impala和Spark
Etu Solution Day 2014 Track-D: 掌握Impala和SparkEtu Solution Day 2014 Track-D: 掌握Impala和Spark
Etu Solution Day 2014 Track-D: 掌握Impala和Spark
 
Accelerating Hadoop, Spark, and Memcached with HPC Technologies
Accelerating Hadoop, Spark, and Memcached with HPC TechnologiesAccelerating Hadoop, Spark, and Memcached with HPC Technologies
Accelerating Hadoop, Spark, and Memcached with HPC Technologies
 
Hoodie - DataEngConf 2017
Hoodie - DataEngConf 2017Hoodie - DataEngConf 2017
Hoodie - DataEngConf 2017
 
Designing Convergent HPC and Big Data Software Stacks: An Overview of the HiB...
Designing Convergent HPC and Big Data Software Stacks: An Overview of the HiB...Designing Convergent HPC and Big Data Software Stacks: An Overview of the HiB...
Designing Convergent HPC and Big Data Software Stacks: An Overview of the HiB...
 
Tcloud Computing Hadoop Family and Ecosystem Service 2013.Q3
Tcloud Computing Hadoop Family and Ecosystem Service 2013.Q3Tcloud Computing Hadoop Family and Ecosystem Service 2013.Q3
Tcloud Computing Hadoop Family and Ecosystem Service 2013.Q3
 
Introduction to Kudu: Hadoop Storage for Fast Analytics on Fast Data - Rüdige...
Introduction to Kudu: Hadoop Storage for Fast Analytics on Fast Data - Rüdige...Introduction to Kudu: Hadoop Storage for Fast Analytics on Fast Data - Rüdige...
Introduction to Kudu: Hadoop Storage for Fast Analytics on Fast Data - Rüdige...
 
Apache drill
Apache drillApache drill
Apache drill
 
Hadoop ppt1
Hadoop ppt1Hadoop ppt1
Hadoop ppt1
 
Introducing Apache Kudu (Incubating) - Montreal HUG May 2016
Introducing Apache Kudu (Incubating) - Montreal HUG May 2016Introducing Apache Kudu (Incubating) - Montreal HUG May 2016
Introducing Apache Kudu (Incubating) - Montreal HUG May 2016
 
SQL Engines for Hadoop - The case for Impala
SQL Engines for Hadoop - The case for ImpalaSQL Engines for Hadoop - The case for Impala
SQL Engines for Hadoop - The case for Impala
 
Gunther hagleitner:apache hive & stinger
Gunther hagleitner:apache hive & stingerGunther hagleitner:apache hive & stinger
Gunther hagleitner:apache hive & stinger
 
Hadoop and Distributed Computing
Hadoop and Distributed ComputingHadoop and Distributed Computing
Hadoop and Distributed Computing
 
Eric Baldeschwieler Keynote from Storage Developers Conference
Eric Baldeschwieler Keynote from Storage Developers ConferenceEric Baldeschwieler Keynote from Storage Developers Conference
Eric Baldeschwieler Keynote from Storage Developers Conference
 
Michael stack -the state of apache h base
Michael stack -the state of apache h baseMichael stack -the state of apache h base
Michael stack -the state of apache h base
 
List of Engineering Colleges in Uttarakhand
List of Engineering Colleges in UttarakhandList of Engineering Colleges in Uttarakhand
List of Engineering Colleges in Uttarakhand
 
Hadoop.pptx
Hadoop.pptxHadoop.pptx
Hadoop.pptx
 
Hadoop.pptx
Hadoop.pptxHadoop.pptx
Hadoop.pptx
 
Java One 2017: Open Source Big Data in the Cloud: Hadoop, M/R, Hive, Spark an...
Java One 2017: Open Source Big Data in the Cloud: Hadoop, M/R, Hive, Spark an...Java One 2017: Open Source Big Data in the Cloud: Hadoop, M/R, Hive, Spark an...
Java One 2017: Open Source Big Data in the Cloud: Hadoop, M/R, Hive, Spark an...
 
Introduction to Kudu - StampedeCon 2016
Introduction to Kudu - StampedeCon 2016Introduction to Kudu - StampedeCon 2016
Introduction to Kudu - StampedeCon 2016
 

More from Spark Summit

FPGA-Based Acceleration Architecture for Spark SQL Qi Xie and Quanfu Wang
FPGA-Based Acceleration Architecture for Spark SQL Qi Xie and Quanfu Wang FPGA-Based Acceleration Architecture for Spark SQL Qi Xie and Quanfu Wang
FPGA-Based Acceleration Architecture for Spark SQL Qi Xie and Quanfu Wang Spark Summit
 
VEGAS: The Missing Matplotlib for Scala/Apache Spark with DB Tsai and Roger M...
VEGAS: The Missing Matplotlib for Scala/Apache Spark with DB Tsai and Roger M...VEGAS: The Missing Matplotlib for Scala/Apache Spark with DB Tsai and Roger M...
VEGAS: The Missing Matplotlib for Scala/Apache Spark with DB Tsai and Roger M...Spark Summit
 
Apache Spark Structured Streaming Helps Smart Manufacturing with Xiaochang Wu
Apache Spark Structured Streaming Helps Smart Manufacturing with  Xiaochang WuApache Spark Structured Streaming Helps Smart Manufacturing with  Xiaochang Wu
Apache Spark Structured Streaming Helps Smart Manufacturing with Xiaochang WuSpark Summit
 
Improving Traffic Prediction Using Weather Data with Ramya Raghavendra
Improving Traffic Prediction Using Weather Data  with Ramya RaghavendraImproving Traffic Prediction Using Weather Data  with Ramya Raghavendra
Improving Traffic Prediction Using Weather Data with Ramya RaghavendraSpark Summit
 
A Tale of Two Graph Frameworks on Spark: GraphFrames and Tinkerpop OLAP Artem...
A Tale of Two Graph Frameworks on Spark: GraphFrames and Tinkerpop OLAP Artem...A Tale of Two Graph Frameworks on Spark: GraphFrames and Tinkerpop OLAP Artem...
A Tale of Two Graph Frameworks on Spark: GraphFrames and Tinkerpop OLAP Artem...Spark Summit
 
No More Cumbersomeness: Automatic Predictive Modeling on Apache Spark Marcin ...
No More Cumbersomeness: Automatic Predictive Modeling on Apache Spark Marcin ...No More Cumbersomeness: Automatic Predictive Modeling on Apache Spark Marcin ...
No More Cumbersomeness: Automatic Predictive Modeling on Apache Spark Marcin ...Spark Summit
 
Apache Spark and Tensorflow as a Service with Jim Dowling
Apache Spark and Tensorflow as a Service with Jim DowlingApache Spark and Tensorflow as a Service with Jim Dowling
Apache Spark and Tensorflow as a Service with Jim DowlingSpark Summit
 
Apache Spark and Tensorflow as a Service with Jim Dowling
Apache Spark and Tensorflow as a Service with Jim DowlingApache Spark and Tensorflow as a Service with Jim Dowling
Apache Spark and Tensorflow as a Service with Jim DowlingSpark Summit
 
MMLSpark: Lessons from Building a SparkML-Compatible Machine Learning Library...
MMLSpark: Lessons from Building a SparkML-Compatible Machine Learning Library...MMLSpark: Lessons from Building a SparkML-Compatible Machine Learning Library...
MMLSpark: Lessons from Building a SparkML-Compatible Machine Learning Library...Spark Summit
 
Next CERN Accelerator Logging Service with Jakub Wozniak
Next CERN Accelerator Logging Service with Jakub WozniakNext CERN Accelerator Logging Service with Jakub Wozniak
Next CERN Accelerator Logging Service with Jakub WozniakSpark Summit
 
Powering a Startup with Apache Spark with Kevin Kim
Powering a Startup with Apache Spark with Kevin KimPowering a Startup with Apache Spark with Kevin Kim
Powering a Startup with Apache Spark with Kevin KimSpark Summit
 
Improving Traffic Prediction Using Weather Datawith Ramya Raghavendra
Improving Traffic Prediction Using Weather Datawith Ramya RaghavendraImproving Traffic Prediction Using Weather Datawith Ramya Raghavendra
Improving Traffic Prediction Using Weather Datawith Ramya RaghavendraSpark Summit
 
Hiding Apache Spark Complexity for Fast Prototyping of Big Data Applications—...
Hiding Apache Spark Complexity for Fast Prototyping of Big Data Applications—...Hiding Apache Spark Complexity for Fast Prototyping of Big Data Applications—...
Hiding Apache Spark Complexity for Fast Prototyping of Big Data Applications—...Spark Summit
 
How Nielsen Utilized Databricks for Large-Scale Research and Development with...
How Nielsen Utilized Databricks for Large-Scale Research and Development with...How Nielsen Utilized Databricks for Large-Scale Research and Development with...
How Nielsen Utilized Databricks for Large-Scale Research and Development with...Spark Summit
 
Spline: Apache Spark Lineage not Only for the Banking Industry with Marek Nov...
Spline: Apache Spark Lineage not Only for the Banking Industry with Marek Nov...Spline: Apache Spark Lineage not Only for the Banking Industry with Marek Nov...
Spline: Apache Spark Lineage not Only for the Banking Industry with Marek Nov...Spark Summit
 
Goal Based Data Production with Sim Simeonov
Goal Based Data Production with Sim SimeonovGoal Based Data Production with Sim Simeonov
Goal Based Data Production with Sim SimeonovSpark Summit
 
Preventing Revenue Leakage and Monitoring Distributed Systems with Machine Le...
Preventing Revenue Leakage and Monitoring Distributed Systems with Machine Le...Preventing Revenue Leakage and Monitoring Distributed Systems with Machine Le...
Preventing Revenue Leakage and Monitoring Distributed Systems with Machine Le...Spark Summit
 
Getting Ready to Use Redis with Apache Spark with Dvir Volk
Getting Ready to Use Redis with Apache Spark with Dvir VolkGetting Ready to Use Redis with Apache Spark with Dvir Volk
Getting Ready to Use Redis with Apache Spark with Dvir VolkSpark Summit
 
Deduplication and Author-Disambiguation of Streaming Records via Supervised M...
Deduplication and Author-Disambiguation of Streaming Records via Supervised M...Deduplication and Author-Disambiguation of Streaming Records via Supervised M...
Deduplication and Author-Disambiguation of Streaming Records via Supervised M...Spark Summit
 
MatFast: In-Memory Distributed Matrix Computation Processing and Optimization...
MatFast: In-Memory Distributed Matrix Computation Processing and Optimization...MatFast: In-Memory Distributed Matrix Computation Processing and Optimization...
MatFast: In-Memory Distributed Matrix Computation Processing and Optimization...Spark Summit
 

More from Spark Summit (20)

FPGA-Based Acceleration Architecture for Spark SQL Qi Xie and Quanfu Wang
FPGA-Based Acceleration Architecture for Spark SQL Qi Xie and Quanfu Wang FPGA-Based Acceleration Architecture for Spark SQL Qi Xie and Quanfu Wang
FPGA-Based Acceleration Architecture for Spark SQL Qi Xie and Quanfu Wang
 
VEGAS: The Missing Matplotlib for Scala/Apache Spark with DB Tsai and Roger M...
VEGAS: The Missing Matplotlib for Scala/Apache Spark with DB Tsai and Roger M...VEGAS: The Missing Matplotlib for Scala/Apache Spark with DB Tsai and Roger M...
VEGAS: The Missing Matplotlib for Scala/Apache Spark with DB Tsai and Roger M...
 
Apache Spark Structured Streaming Helps Smart Manufacturing with Xiaochang Wu
Apache Spark Structured Streaming Helps Smart Manufacturing with  Xiaochang WuApache Spark Structured Streaming Helps Smart Manufacturing with  Xiaochang Wu
Apache Spark Structured Streaming Helps Smart Manufacturing with Xiaochang Wu
 
Improving Traffic Prediction Using Weather Data with Ramya Raghavendra
Improving Traffic Prediction Using Weather Data  with Ramya RaghavendraImproving Traffic Prediction Using Weather Data  with Ramya Raghavendra
Improving Traffic Prediction Using Weather Data with Ramya Raghavendra
 
A Tale of Two Graph Frameworks on Spark: GraphFrames and Tinkerpop OLAP Artem...
A Tale of Two Graph Frameworks on Spark: GraphFrames and Tinkerpop OLAP Artem...A Tale of Two Graph Frameworks on Spark: GraphFrames and Tinkerpop OLAP Artem...
A Tale of Two Graph Frameworks on Spark: GraphFrames and Tinkerpop OLAP Artem...
 
No More Cumbersomeness: Automatic Predictive Modeling on Apache Spark Marcin ...
No More Cumbersomeness: Automatic Predictive Modeling on Apache Spark Marcin ...No More Cumbersomeness: Automatic Predictive Modeling on Apache Spark Marcin ...
No More Cumbersomeness: Automatic Predictive Modeling on Apache Spark Marcin ...
 
Apache Spark and Tensorflow as a Service with Jim Dowling
Apache Spark and Tensorflow as a Service with Jim DowlingApache Spark and Tensorflow as a Service with Jim Dowling
Apache Spark and Tensorflow as a Service with Jim Dowling
 
Apache Spark and Tensorflow as a Service with Jim Dowling
Apache Spark and Tensorflow as a Service with Jim DowlingApache Spark and Tensorflow as a Service with Jim Dowling
Apache Spark and Tensorflow as a Service with Jim Dowling
 
MMLSpark: Lessons from Building a SparkML-Compatible Machine Learning Library...
MMLSpark: Lessons from Building a SparkML-Compatible Machine Learning Library...MMLSpark: Lessons from Building a SparkML-Compatible Machine Learning Library...
MMLSpark: Lessons from Building a SparkML-Compatible Machine Learning Library...
 
Next CERN Accelerator Logging Service with Jakub Wozniak
Next CERN Accelerator Logging Service with Jakub WozniakNext CERN Accelerator Logging Service with Jakub Wozniak
Next CERN Accelerator Logging Service with Jakub Wozniak
 
Powering a Startup with Apache Spark with Kevin Kim
Powering a Startup with Apache Spark with Kevin KimPowering a Startup with Apache Spark with Kevin Kim
Powering a Startup with Apache Spark with Kevin Kim
 
Improving Traffic Prediction Using Weather Datawith Ramya Raghavendra
Improving Traffic Prediction Using Weather Datawith Ramya RaghavendraImproving Traffic Prediction Using Weather Datawith Ramya Raghavendra
Improving Traffic Prediction Using Weather Datawith Ramya Raghavendra
 
Hiding Apache Spark Complexity for Fast Prototyping of Big Data Applications—...
Hiding Apache Spark Complexity for Fast Prototyping of Big Data Applications—...Hiding Apache Spark Complexity for Fast Prototyping of Big Data Applications—...
Hiding Apache Spark Complexity for Fast Prototyping of Big Data Applications—...
 
How Nielsen Utilized Databricks for Large-Scale Research and Development with...
How Nielsen Utilized Databricks for Large-Scale Research and Development with...How Nielsen Utilized Databricks for Large-Scale Research and Development with...
How Nielsen Utilized Databricks for Large-Scale Research and Development with...
 
Spline: Apache Spark Lineage not Only for the Banking Industry with Marek Nov...
Spline: Apache Spark Lineage not Only for the Banking Industry with Marek Nov...Spline: Apache Spark Lineage not Only for the Banking Industry with Marek Nov...
Spline: Apache Spark Lineage not Only for the Banking Industry with Marek Nov...
 
Goal Based Data Production with Sim Simeonov
Goal Based Data Production with Sim SimeonovGoal Based Data Production with Sim Simeonov
Goal Based Data Production with Sim Simeonov
 
Preventing Revenue Leakage and Monitoring Distributed Systems with Machine Le...
Preventing Revenue Leakage and Monitoring Distributed Systems with Machine Le...Preventing Revenue Leakage and Monitoring Distributed Systems with Machine Le...
Preventing Revenue Leakage and Monitoring Distributed Systems with Machine Le...
 
Getting Ready to Use Redis with Apache Spark with Dvir Volk
Getting Ready to Use Redis with Apache Spark with Dvir VolkGetting Ready to Use Redis with Apache Spark with Dvir Volk
Getting Ready to Use Redis with Apache Spark with Dvir Volk
 
Deduplication and Author-Disambiguation of Streaming Records via Supervised M...
Deduplication and Author-Disambiguation of Streaming Records via Supervised M...Deduplication and Author-Disambiguation of Streaming Records via Supervised M...
Deduplication and Author-Disambiguation of Streaming Records via Supervised M...
 
MatFast: In-Memory Distributed Matrix Computation Processing and Optimization...
MatFast: In-Memory Distributed Matrix Computation Processing and Optimization...MatFast: In-Memory Distributed Matrix Computation Processing and Optimization...
MatFast: In-Memory Distributed Matrix Computation Processing and Optimization...
 

Recently uploaded

BDSM⚡Call Girls in Mandawali Delhi >༒8448380779 Escort Service
BDSM⚡Call Girls in Mandawali Delhi >༒8448380779 Escort ServiceBDSM⚡Call Girls in Mandawali Delhi >༒8448380779 Escort Service
BDSM⚡Call Girls in Mandawali Delhi >༒8448380779 Escort ServiceDelhi Call girls
 
Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...
Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...
Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...Valters Lauzums
 
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip CallDelhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp 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
 
Determinants of health, dimensions of health, positive health and spectrum of...
Determinants of health, dimensions of health, positive health and spectrum of...Determinants of health, dimensions of health, positive health and spectrum of...
Determinants of health, dimensions of health, positive health and spectrum of...shambhavirathore45
 
BigBuy dropshipping via API with DroFx.pptx
BigBuy dropshipping via API with DroFx.pptxBigBuy dropshipping via API with DroFx.pptx
BigBuy dropshipping via API with DroFx.pptxolyaivanovalion
 
Accredited-Transport-Cooperatives-Jan-2021-Web.pdf
Accredited-Transport-Cooperatives-Jan-2021-Web.pdfAccredited-Transport-Cooperatives-Jan-2021-Web.pdf
Accredited-Transport-Cooperatives-Jan-2021-Web.pdfadriantubila
 
Call Girls Indiranagar Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
Call Girls Indiranagar Just Call 👗 7737669865 👗 Top Class Call Girl Service B...Call Girls Indiranagar Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
Call Girls Indiranagar Just Call 👗 7737669865 👗 Top Class Call Girl Service B...amitlee9823
 
Best VIP Call Girls Noida Sector 22 Call Me: 8448380779
Best VIP Call Girls Noida Sector 22 Call Me: 8448380779Best VIP Call Girls Noida Sector 22 Call Me: 8448380779
Best VIP Call Girls Noida Sector 22 Call Me: 8448380779Delhi Call girls
 
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
 
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
 
Week-01-2.ppt BBB human Computer interaction
Week-01-2.ppt BBB human Computer interactionWeek-01-2.ppt BBB human Computer interaction
Week-01-2.ppt BBB human Computer interactionfulawalesam
 
Introduction-to-Machine-Learning (1).pptx
Introduction-to-Machine-Learning (1).pptxIntroduction-to-Machine-Learning (1).pptx
Introduction-to-Machine-Learning (1).pptxfirstjob4
 
Discover Why Less is More in B2B Research
Discover Why Less is More in B2B ResearchDiscover Why Less is More in B2B Research
Discover Why Less is More in B2B Researchmichael115558
 
Log Analysis using OSSEC sasoasasasas.pptx
Log Analysis using OSSEC sasoasasasas.pptxLog Analysis using OSSEC sasoasasasas.pptx
Log Analysis using OSSEC sasoasasasas.pptxJohnnyPlasten
 
Vip Model Call Girls (Delhi) Karol Bagh 9711199171✔️Body to body massage wit...
Vip Model  Call Girls (Delhi) Karol Bagh 9711199171✔️Body to body massage wit...Vip Model  Call Girls (Delhi) Karol Bagh 9711199171✔️Body to body massage wit...
Vip Model Call Girls (Delhi) Karol Bagh 9711199171✔️Body to body massage wit...shivangimorya083
 
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
 

Recently uploaded (20)

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
 
BDSM⚡Call Girls in Mandawali Delhi >༒8448380779 Escort Service
BDSM⚡Call Girls in Mandawali Delhi >༒8448380779 Escort ServiceBDSM⚡Call Girls in Mandawali Delhi >༒8448380779 Escort Service
BDSM⚡Call Girls in Mandawali Delhi >༒8448380779 Escort Service
 
Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...
Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...
Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...
 
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip CallDelhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp 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
 
Determinants of health, dimensions of health, positive health and spectrum of...
Determinants of health, dimensions of health, positive health and spectrum of...Determinants of health, dimensions of health, positive health and spectrum of...
Determinants of health, dimensions of health, positive health and spectrum of...
 
BigBuy dropshipping via API with DroFx.pptx
BigBuy dropshipping via API with DroFx.pptxBigBuy dropshipping via API with DroFx.pptx
BigBuy dropshipping via API with DroFx.pptx
 
(NEHA) Call Girls Katra Call Now 8617697112 Katra Escorts 24x7
(NEHA) Call Girls Katra Call Now 8617697112 Katra Escorts 24x7(NEHA) Call Girls Katra Call Now 8617697112 Katra Escorts 24x7
(NEHA) Call Girls Katra Call Now 8617697112 Katra Escorts 24x7
 
Accredited-Transport-Cooperatives-Jan-2021-Web.pdf
Accredited-Transport-Cooperatives-Jan-2021-Web.pdfAccredited-Transport-Cooperatives-Jan-2021-Web.pdf
Accredited-Transport-Cooperatives-Jan-2021-Web.pdf
 
Sampling (random) method and Non random.ppt
Sampling (random) method and Non random.pptSampling (random) method and Non random.ppt
Sampling (random) method and Non random.ppt
 
Call Girls Indiranagar Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
Call Girls Indiranagar Just Call 👗 7737669865 👗 Top Class Call Girl Service B...Call Girls Indiranagar Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
Call Girls Indiranagar Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
 
Best VIP Call Girls Noida Sector 22 Call Me: 8448380779
Best VIP Call Girls Noida Sector 22 Call Me: 8448380779Best VIP Call Girls Noida Sector 22 Call Me: 8448380779
Best VIP Call Girls Noida Sector 22 Call Me: 8448380779
 
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
 
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
 
Week-01-2.ppt BBB human Computer interaction
Week-01-2.ppt BBB human Computer interactionWeek-01-2.ppt BBB human Computer interaction
Week-01-2.ppt BBB human Computer interaction
 
Introduction-to-Machine-Learning (1).pptx
Introduction-to-Machine-Learning (1).pptxIntroduction-to-Machine-Learning (1).pptx
Introduction-to-Machine-Learning (1).pptx
 
Discover Why Less is More in B2B Research
Discover Why Less is More in B2B ResearchDiscover Why Less is More in B2B Research
Discover Why Less is More in B2B Research
 
Log Analysis using OSSEC sasoasasasas.pptx
Log Analysis using OSSEC sasoasasasas.pptxLog Analysis using OSSEC sasoasasasas.pptx
Log Analysis using OSSEC sasoasasasas.pptx
 
Vip Model Call Girls (Delhi) Karol Bagh 9711199171✔️Body to body massage wit...
Vip Model  Call Girls (Delhi) Karol Bagh 9711199171✔️Body to body massage wit...Vip Model  Call Girls (Delhi) Karol Bagh 9711199171✔️Body to body massage wit...
Vip Model Call Girls (Delhi) Karol Bagh 9711199171✔️Body to body massage wit...
 
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
 

Storage Engine Considerations for Your Apache Spark Applications with Mladen Kovacevic

  • 1. Mladen Kovacevic, Senior Solutions Architect Cloudera Inc. Storage Engine Considerations for your Apache Spark Applications #EUdev10
  • 2. Outline • Motivation – store your data – where exactly? • Storage Capabilities: – HDFS – HBase – Kudu – Solr • Asking the right questions • Decide on right storage solution 2#EUdev10
  • 3. Motivation • Spark, SparkStreaming, SparkSQL – great for processing – need a place to store content • Integration with variety of storage systems • Ingest and consumption requirements – use case! 3#EUdev10
  • 4. Design patterns 4#EUdev10 Choosing the right storage for the use case 2006 2007 2016 2008
  • 5. HDFS • Distributed file system – cheap, scalable, storage • Immutable – “record” changes are painful • Columnar file formats - ideal for analytics • SQL overlays (SparkSQL, Hive Metastore, more) to define schema Highlights Very high throughput, painful random IO, batch oriented, coding overhead (ie. dealing with small files problems), any file 5#EUdev10
  • 6. HDFS design pattern df.write.parquet(“/data/person_table”) 6#EUdev10 • Small files accumulate • External processes, or additional application logic to manage these files • Partition management • Manage metadata carefully (depends on ecosystem) • Considerations- changing dimensions (fast/slow) • Late arriving data
  • 7. HBase • NoSQL engine, manages files on HDFS • Key-value, distributed storage engine • No data types – just binary fields • Thousands to millions of columns • Store entity data (profiles of people, devices, accounts) Highlights Very fast random IO, low throughput, NRT oriented, challenging BI, no strict data types 7#EUdev10
  • 8. HBase design pattern 8#EUdev10 • HBase Connection anywhere in Spark/SparkStreaming app • SparkSQL/DataFrames, Bulk Load • Primary storage for ingestion or complementary preserving state • NoSQL store vs. structured • Near-real-time CDH hbase-spark: https://github.com/cloudera/hbase/tree/cdh5-1.2.0_5.13.0/hbase-spark CDH HBase and Spark docs: http://archive.cloudera.com/cdh5/cdh/5/hbase-1.2.0-cdh5.13.0/book.html#spark Upstream hbase-spark (watch for updates in HBase 2.x release): https://github.com/apache/hbase/tree/master/hbase-spark/ Upstream HBase and Spark book: http://hbase.apache.org/book.html#spark
  • 10. Kudu • Storage system for tables of structured data • Bring-your-own-SQL (SparkSQL, Impala), NoSQL-like API, integration with Spark, MapReduce, more.. • Columnar, key partitioning by range and/or hash • Limited number of columns (strongly typed) Highlights Fast random IO, fast throughput, NRT oriented, terrific for BI, structured data 10#EUdev10
  • 11. Kudu design pattern df.write.options(kuduOptions).mode(“append”).kudu OR kuduContext.insertRows() 11#EUdev10 • DataFrame perfect match for Kudu (structured) • Data available immediately to SQL engines (Impala, SparkSQL) • Ideal case is append with moderate updates Kudu Integration with Spark: http://kudu.apache.org/docs/developing.html#_kudu_integration_with_spark Up and running with Apache Spark on Apache Kudu: https://blog.cloudera.com/blog/2017/02/up-and-running-with-apache-spark-on-apache-kudu/
  • 13. Solr • Distributed index enabling search capabilities (Lucene) • Typed, REST API based, search index query processing • Search interface, faceting, integration with HBase storing content (typically) in HDFS Highlights High random IO, low throughput, multi-faceted use cases, NRT oriented, terrific for BI with the right tools (non-SQL), loose schema, data types 13#EUdev10
  • 14. Solr design pattern 14#EUdev10 • Prepare Solr document, add to SolrCloud directly OR • Write to HBase, leverage Lily HBase Indexer service to update Solr • Store complete record in HBase, while indexed fields for search in Solr • NRT availability (short soft commits)
  • 15. Questions we ask (1) • How many voters have cast their ballots by city thus far in the election, by the second? – streaming data into ‘voter’ table, aggregate query, immediate data availability : Kudu • How many people watched last nights game compared to the night before? – daily batch, aggregate query : HDFS parquet 15#EUdev10
  • 16. Questions we ask (2) • What version is my device running and how many dropped packets do I have? – streaming entity profile data, metrics may change per release, many updates, specific device, NRT: HBase • Which tweets talk to the housing market, in the 21-30 age group? – streaming, keyword search, facet filtering : Solr 16#EUdev10
  • 17. Use case questionnaire • Consumption interface: SQL (JDBC/ODBC) vs. API • Near-real-time requirement for consumers • Ingestion rate (can we keep up?) • Entity vs. Events (time-based) • Append-only vs moderate updates vs many updates • Distinct values in dataset 17#EUdev10
  • 18. Storage considerations (1) 18#EUdev10 Criteria SQL interface API interface Near-real-time ingestion Append-only + available for query Appends with moderate updates Mostly updates
  • 19. Storage considerations (2) 19#EUdev10 Criteria Entity based data Event based data (time-series) High distinct values Many and unknown attributes Binary data (Images, PDFs, etc) Analytics
  • 20. Wrap-up • Review entire use-case end-to-end early • Understand storage capabilities • Ask the right questions (upstream/consumers) • Consider security, architecture and development costs • Decide on the right storage solution 20#EUdev10