SlideShare una empresa de Scribd logo
1 de 19
Descargar para leer sin conexión
Building realtime BI
Systems with Kafka,
Spark and Kudu
Ruhollah Farchtchi
Zoomdata
Drivers for Streaming Data
Data Freshness Time to Analytic Business Context
2
Streaming Data @ Zoomdata
Visualizations react to
new data delivered
Users start,
stop, pause
the stream
Users select a rolling
window or pin a start
time to capture
cumulative metrics
3
Typical Streaming Architectures
Event
Kafka, JMS,
RabbitMQ,
etc...
Spark
Streaming,
Flink, etc..
Now What?
Cassandra (no
aggregation)
HDFS (what
about query)
Lambda (let’s
take a look at
that for a sec)
4
Lambda
● Stream data to hdfs
● Keep some in avro
● Do your own compactions to
parquet / orc
● Expose via impala,
sparksql, or other
● Impala avro partition
(speed)
● With history in parquet
● Union compatible schema
● Project as single table via
view
● Works ok… still doing a lot
of manual data
management
Oh.. and what happens to noncommutative operations like
Distinct Count?
OR
5
Restatements … yeah we went there
Txn ID Item Price Quantity Partition
1 Jeans 25.00 2 2016-05-30
2 Shirt 10.00 1 2016-05-31
3 Skirt 20.00 1 2016-06-01
1 Jeans 25.00 3
Restatement
6
Restatements … how you do it
Txn ID Item Price Quantity Partition
1 Jeans 25.00 2 2016-05-30
2 Shirt 10.00 1 2016-05-31
3 Skirt 20.00 1 2016-06-01
1 Jeans 25.00 3
Restatement
General Algorithm
● Figure out which partition(s) are affected
● Recompute affected partition(s) with restated data
● Drop/replace existing partition(s) with new data
7
Enter Kudu
What is Kudu?
● Kudu is an open source storage engine for structured data which supports low-latency
random access together with efficient analytical access patterns. (Source: http://getkudu.io/kudu.pdf)
Why do you care?
● It makes management of streaming data for ad-hoc analysis MUCH easier
● Bridges the mental gap from random access to append only
Why does Zoomdata care?
8
Impala + Kudu: Performance
Nearly the same performance as Parquet for many similar workloads
Simplified data management model
Can handle a new class of streaming use cases and workloads
9
Impala + Kudu: Performance
Nearly the same performance as Parquet for many similar workloads
Simplified data management model
Can handle a new class of streaming use cases and workloads
Great… let’s just use Kudu from now on:
● We can ingest data with great write throughput
● Support analytic queries
● Support random access writes
What’s not to love?
Ship It!
10
There’s a catch...
… it’s your data model
Good news! If you have figured this out with HDFS and Parquet, you’re not too far off.
Things to consider:
● Access pattern and partition scheme (similar to partitioning data parquet)
○ Has a big role to play in parallelism of your queries
● Cardinality of your attributes
○ Affects what type of column encoding you decide to use
● Key structure
○ You get only one, use it wisely
More on this can be found at : http://getkudu.io/docs/schema_design.html
11
Let’s put it all together
I have a fruit stand
I sell my fruits via phone order to remote
buyers
My transactions look something like:
Orders(orderID,orderTS,fruit,price,customerID,
customerPhone,customerAddress)
12
Impala DDL for Kudu
CREATE EXTERNAL TABLE `strata_fruits_expanded` (
`_ts` BIGINT,
`_id` STRING,
`fruit` STRING,
`country_code` STRING,
`country_area_code` STRING,
`phone_num` STRING,
`message_date` BIGINT,
`price` FLOAT,
`keyword` STRING
)
DISTRIBUTE BY HASH (_ts) INTO 60 BUCKETS
TBLPROPERTIES(
'storage_handler' =
'com.cloudera.kudu.hive.KuduStorageHandler',
'kudu.table_name' = 'strata_fruits_expanded',
'kudu.master_addresses' = '10.xxx.xxx.xxx:7051',
'kudu.key_columns' = '_ts, _id'
);
Key
Key
13
Impala DDL for Kudu
CREATE EXTERNAL TABLE `strata_fruits_expanded` (
`_ts` BIGINT,
`_id` STRING,
`fruit` STRING,
`country_code` STRING,
`country_area_code` STRING,
`phone_num` STRING,
`message_date` BIGINT,
`price` FLOAT,
`keyword` STRING
)
DISTRIBUTE BY HASH (_ts) INTO 60 BUCKETS
TBLPROPERTIES(
'storage_handler' =
'com.cloudera.kudu.hive.KuduStorageHandler',
'kudu.table_name' = 'strata_fruits_expanded',
'kudu.master_addresses' = '10.xxx.xxx.xxx:7051',
'kudu.key_columns' = '_ts, _id'
);
attributes
attributes
Low cardinality attributes -- things I
want to group by -- are great
candidates for dictionary encoding
14
Impala DDL for Kudu
CREATE EXTERNAL TABLE `strata_fruits_expanded` (
`_ts` BIGINT,
`_id` STRING,
`fruit` STRING,
`country_code` STRING,
`country_area_code` STRING,
`phone_num` STRING,
`message_date` BIGINT,
`price` FLOAT,
`keyword` STRING
)
DISTRIBUTE BY HASH (_ts) INTO 60 BUCKETS
TBLPROPERTIES(
'storage_handler' =
'com.cloudera.kudu.hive.KuduStorageHandler',
'kudu.table_name' = 'strata_fruits_expanded',
'kudu.master_addresses' = '10.xxx.xxx.xxx:7051',
'kudu.key_columns' = '_ts, _id'
);
Partition Scheme
How you distribute your data directly
impacts your ability to process in
parallel as well as any predicate
push-down type of operations Kudu
can perform
For large tables, such as fact tables,
aim for as many tablets as you have
cores in the cluster -- but figure out
what else you are running as well.
15
Let’s see it in action….
16
Kafka Source Topic
Spark Streaming
App
Data Writer Kudu
ZoomdataKafka Sink Topic
write read
Streaming Source
Let’s see it in action… not actually that simple
17
Kafka Source Topic
Spark Streaming
App
Data Writer API
Writer Client
Data Writer
Writer Server
Register
Read request
Kudu, Solr,
Elastic, etc...
ZoomdataKafka Sink Topic
write read
Streaming Source
Special Thanks
Anton Gorshkov: For his original streaming with kafka fruit stand demo
The Cloudera Kudu Team: Specifically Todd Lipcon for all the insight
into Kudu optimization
Nexmo: For use of their SaaS SMS service in this demo
18
Thank You.
www.zoomdata.com

Más contenido relacionado

La actualidad más candente

Advanced Streaming Analytics with Apache Flink and Apache Kafka, Stephan Ewen
Advanced Streaming Analytics with Apache Flink and Apache Kafka, Stephan EwenAdvanced Streaming Analytics with Apache Flink and Apache Kafka, Stephan Ewen
Advanced Streaming Analytics with Apache Flink and Apache Kafka, Stephan Ewenconfluent
 
Performance Optimizations in Apache Impala
Performance Optimizations in Apache ImpalaPerformance Optimizations in Apache Impala
Performance Optimizations in Apache ImpalaCloudera, Inc.
 
What is in a Lucene index?
What is in a Lucene index?What is in a Lucene index?
What is in a Lucene index?lucenerevolution
 
Change Data Feed in Delta
Change Data Feed in DeltaChange Data Feed in Delta
Change Data Feed in DeltaDatabricks
 
AWSKRUG DS - 데이터 엔지니어가 실무에서 맞닥뜨리는 문제들
AWSKRUG DS - 데이터 엔지니어가 실무에서 맞닥뜨리는 문제들AWSKRUG DS - 데이터 엔지니어가 실무에서 맞닥뜨리는 문제들
AWSKRUG DS - 데이터 엔지니어가 실무에서 맞닥뜨리는 문제들Woong Seok Kang
 
High Performance Data Lake with Apache Hudi and Alluxio at T3Go
High Performance Data Lake with Apache Hudi and Alluxio at T3GoHigh Performance Data Lake with Apache Hudi and Alluxio at T3Go
High Performance Data Lake with Apache Hudi and Alluxio at T3GoAlluxio, Inc.
 
How to understand and analyze Apache Hive query execution plan for performanc...
How to understand and analyze Apache Hive query execution plan for performanc...How to understand and analyze Apache Hive query execution plan for performanc...
How to understand and analyze Apache Hive query execution plan for performanc...DataWorks Summit/Hadoop Summit
 
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
 
Building a Real-Time Analytics Application with Apache Pulsar and Apache Pinot
Building a Real-Time Analytics Application with  Apache Pulsar and Apache PinotBuilding a Real-Time Analytics Application with  Apache Pulsar and Apache Pinot
Building a Real-Time Analytics Application with Apache Pulsar and Apache PinotAltinity Ltd
 
Optimizing Delta/Parquet Data Lakes for Apache Spark
Optimizing Delta/Parquet Data Lakes for Apache SparkOptimizing Delta/Parquet Data Lakes for Apache Spark
Optimizing Delta/Parquet Data Lakes for Apache SparkDatabricks
 
Redshift at Lightspeed: How to continuously optimize and modify Redshift sche...
Redshift at Lightspeed: How to continuously optimize and modify Redshift sche...Redshift at Lightspeed: How to continuously optimize and modify Redshift sche...
Redshift at Lightspeed: How to continuously optimize and modify Redshift sche...Amazon Web Services
 
Hadoop World 2011: Hadoop Troubleshooting 101 - Kate Ting - Cloudera
Hadoop World 2011: Hadoop Troubleshooting 101 - Kate Ting - ClouderaHadoop World 2011: Hadoop Troubleshooting 101 - Kate Ting - Cloudera
Hadoop World 2011: Hadoop Troubleshooting 101 - Kate Ting - ClouderaCloudera, Inc.
 
Performance Troubleshooting Using Apache Spark Metrics
Performance Troubleshooting Using Apache Spark MetricsPerformance Troubleshooting Using Apache Spark Metrics
Performance Troubleshooting Using Apache Spark MetricsDatabricks
 
Introduction to Cassandra
Introduction to CassandraIntroduction to Cassandra
Introduction to CassandraGokhan Atil
 
Processing Large Data with Apache Spark -- HasGeek
Processing Large Data with Apache Spark -- HasGeekProcessing Large Data with Apache Spark -- HasGeek
Processing Large Data with Apache Spark -- HasGeekVenkata Naga Ravi
 
Memory Management in Apache Spark
Memory Management in Apache SparkMemory Management in Apache Spark
Memory Management in Apache SparkDatabricks
 
The Parquet Format and Performance Optimization Opportunities
The Parquet Format and Performance Optimization OpportunitiesThe Parquet Format and Performance Optimization Opportunities
The Parquet Format and Performance Optimization OpportunitiesDatabricks
 
Dynamically Scaling Data Streams across Multiple Kafka Clusters with Zero Fli...
Dynamically Scaling Data Streams across Multiple Kafka Clusters with Zero Fli...Dynamically Scaling Data Streams across Multiple Kafka Clusters with Zero Fli...
Dynamically Scaling Data Streams across Multiple Kafka Clusters with Zero Fli...Flink Forward
 

La actualidad más candente (20)

Advanced Streaming Analytics with Apache Flink and Apache Kafka, Stephan Ewen
Advanced Streaming Analytics with Apache Flink and Apache Kafka, Stephan EwenAdvanced Streaming Analytics with Apache Flink and Apache Kafka, Stephan Ewen
Advanced Streaming Analytics with Apache Flink and Apache Kafka, Stephan Ewen
 
Performance Optimizations in Apache Impala
Performance Optimizations in Apache ImpalaPerformance Optimizations in Apache Impala
Performance Optimizations in Apache Impala
 
What is in a Lucene index?
What is in a Lucene index?What is in a Lucene index?
What is in a Lucene index?
 
Change Data Feed in Delta
Change Data Feed in DeltaChange Data Feed in Delta
Change Data Feed in Delta
 
Apache Spark Overview
Apache Spark OverviewApache Spark Overview
Apache Spark Overview
 
AWSKRUG DS - 데이터 엔지니어가 실무에서 맞닥뜨리는 문제들
AWSKRUG DS - 데이터 엔지니어가 실무에서 맞닥뜨리는 문제들AWSKRUG DS - 데이터 엔지니어가 실무에서 맞닥뜨리는 문제들
AWSKRUG DS - 데이터 엔지니어가 실무에서 맞닥뜨리는 문제들
 
High Performance Data Lake with Apache Hudi and Alluxio at T3Go
High Performance Data Lake with Apache Hudi and Alluxio at T3GoHigh Performance Data Lake with Apache Hudi and Alluxio at T3Go
High Performance Data Lake with Apache Hudi and Alluxio at T3Go
 
How to understand and analyze Apache Hive query execution plan for performanc...
How to understand and analyze Apache Hive query execution plan for performanc...How to understand and analyze Apache Hive query execution plan for performanc...
How to understand and analyze Apache Hive query execution plan for performanc...
 
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
 
Building a Real-Time Analytics Application with Apache Pulsar and Apache Pinot
Building a Real-Time Analytics Application with  Apache Pulsar and Apache PinotBuilding a Real-Time Analytics Application with  Apache Pulsar and Apache Pinot
Building a Real-Time Analytics Application with Apache Pulsar and Apache Pinot
 
Optimizing Delta/Parquet Data Lakes for Apache Spark
Optimizing Delta/Parquet Data Lakes for Apache SparkOptimizing Delta/Parquet Data Lakes for Apache Spark
Optimizing Delta/Parquet Data Lakes for Apache Spark
 
Redshift at Lightspeed: How to continuously optimize and modify Redshift sche...
Redshift at Lightspeed: How to continuously optimize and modify Redshift sche...Redshift at Lightspeed: How to continuously optimize and modify Redshift sche...
Redshift at Lightspeed: How to continuously optimize and modify Redshift sche...
 
Hadoop World 2011: Hadoop Troubleshooting 101 - Kate Ting - Cloudera
Hadoop World 2011: Hadoop Troubleshooting 101 - Kate Ting - ClouderaHadoop World 2011: Hadoop Troubleshooting 101 - Kate Ting - Cloudera
Hadoop World 2011: Hadoop Troubleshooting 101 - Kate Ting - Cloudera
 
Performance Troubleshooting Using Apache Spark Metrics
Performance Troubleshooting Using Apache Spark MetricsPerformance Troubleshooting Using Apache Spark Metrics
Performance Troubleshooting Using Apache Spark Metrics
 
Introduction to Cassandra
Introduction to CassandraIntroduction to Cassandra
Introduction to Cassandra
 
Processing Large Data with Apache Spark -- HasGeek
Processing Large Data with Apache Spark -- HasGeekProcessing Large Data with Apache Spark -- HasGeek
Processing Large Data with Apache Spark -- HasGeek
 
Memory Management in Apache Spark
Memory Management in Apache SparkMemory Management in Apache Spark
Memory Management in Apache Spark
 
The Parquet Format and Performance Optimization Opportunities
The Parquet Format and Performance Optimization OpportunitiesThe Parquet Format and Performance Optimization Opportunities
The Parquet Format and Performance Optimization Opportunities
 
The Impala Cookbook
The Impala CookbookThe Impala Cookbook
The Impala Cookbook
 
Dynamically Scaling Data Streams across Multiple Kafka Clusters with Zero Fli...
Dynamically Scaling Data Streams across Multiple Kafka Clusters with Zero Fli...Dynamically Scaling Data Streams across Multiple Kafka Clusters with Zero Fli...
Dynamically Scaling Data Streams across Multiple Kafka Clusters with Zero Fli...
 

Destacado

Scaling Apache Spark MLlib to Billions of Parameters: Spark Summit East talk ...
Scaling Apache Spark MLlib to Billions of Parameters: Spark Summit East talk ...Scaling Apache Spark MLlib to Billions of Parameters: Spark Summit East talk ...
Scaling Apache Spark MLlib to Billions of Parameters: Spark Summit East talk ...Spark Summit
 
Spark + Parquet In Depth: Spark Summit East Talk by Emily Curtin and Robbie S...
Spark + Parquet In Depth: Spark Summit East Talk by Emily Curtin and Robbie S...Spark + Parquet In Depth: Spark Summit East Talk by Emily Curtin and Robbie S...
Spark + Parquet In Depth: Spark Summit East Talk by Emily Curtin and Robbie S...Spark Summit
 
Spark and Online Analytics: Spark Summit East talky by Shubham Chopra
Spark and Online Analytics: Spark Summit East talky by Shubham ChopraSpark and Online Analytics: Spark Summit East talky by Shubham Chopra
Spark and Online Analytics: Spark Summit East talky by Shubham ChopraSpark Summit
 
Practical Large Scale Experiences with Spark 2.0 Machine Learning: Spark Summ...
Practical Large Scale Experiences with Spark 2.0 Machine Learning: Spark Summ...Practical Large Scale Experiences with Spark 2.0 Machine Learning: Spark Summ...
Practical Large Scale Experiences with Spark 2.0 Machine Learning: Spark Summ...Spark Summit
 
Spark-Streaming-as-a-Service with Kafka and YARN: Spark Summit East talk by J...
Spark-Streaming-as-a-Service with Kafka and YARN: Spark Summit East talk by J...Spark-Streaming-as-a-Service with Kafka and YARN: Spark Summit East talk by J...
Spark-Streaming-as-a-Service with Kafka and YARN: Spark Summit East talk by J...Spark Summit
 
Real-time Platform for Second Look Business Use Case Using Spark and Kafka: S...
Real-time Platform for Second Look Business Use Case Using Spark and Kafka: S...Real-time Platform for Second Look Business Use Case Using Spark and Kafka: S...
Real-time Platform for Second Look Business Use Case Using Spark and Kafka: S...Spark Summit
 
Apache Spark for Machine Learning with High Dimensional Labels: Spark Summit ...
Apache Spark for Machine Learning with High Dimensional Labels: Spark Summit ...Apache Spark for Machine Learning with High Dimensional Labels: Spark Summit ...
Apache Spark for Machine Learning with High Dimensional Labels: Spark Summit ...Spark Summit
 
IoT and the Autonomous Vehicle in the Clouds: Simultaneous Localization and M...
IoT and the Autonomous Vehicle in the Clouds: Simultaneous Localization and M...IoT and the Autonomous Vehicle in the Clouds: Simultaneous Localization and M...
IoT and the Autonomous Vehicle in the Clouds: Simultaneous Localization and M...Spark Summit
 
Engineering Fast Indexes for Big-Data Applications: Spark Summit East talk by...
Engineering Fast Indexes for Big-Data Applications: Spark Summit East talk by...Engineering Fast Indexes for Big-Data Applications: Spark Summit East talk by...
Engineering Fast Indexes for Big-Data Applications: Spark Summit East talk by...Spark Summit
 
Spark Autotuning: Spark Summit East talk by Lawrence Spracklen
Spark Autotuning: Spark Summit East talk by Lawrence SpracklenSpark Autotuning: Spark Summit East talk by Lawrence Spracklen
Spark Autotuning: Spark Summit East talk by Lawrence SpracklenSpark Summit
 
Effective Spark with Alluxio: Spark Summit East talk by Gene Pang and Haoyuan...
Effective Spark with Alluxio: Spark Summit East talk by Gene Pang and Haoyuan...Effective Spark with Alluxio: Spark Summit East talk by Gene Pang and Haoyuan...
Effective Spark with Alluxio: Spark Summit East talk by Gene Pang and Haoyuan...Spark Summit
 
FIS: Accelerating Digital Intelligence in FinTech: Spark Summit East talk by...
 FIS: Accelerating Digital Intelligence in FinTech: Spark Summit East talk by... FIS: Accelerating Digital Intelligence in FinTech: Spark Summit East talk by...
FIS: Accelerating Digital Intelligence in FinTech: Spark Summit East talk by...Spark Summit
 
Scalable Data Science with SparkR: Spark Summit East talk by Felix Cheung
Scalable Data Science with SparkR: Spark Summit East talk by Felix CheungScalable Data Science with SparkR: Spark Summit East talk by Felix Cheung
Scalable Data Science with SparkR: Spark Summit East talk by Felix CheungSpark Summit
 
Distributed Real-Time Stream Processing: Why and How: Spark Summit East talk ...
Distributed Real-Time Stream Processing: Why and How: Spark Summit East talk ...Distributed Real-Time Stream Processing: Why and How: Spark Summit East talk ...
Distributed Real-Time Stream Processing: Why and How: Spark Summit East talk ...Spark Summit
 
Engineering Fast Indexes for Big-Data Applications: Spark Summit East talk by...
Engineering Fast Indexes for Big-Data Applications: Spark Summit East talk by...Engineering Fast Indexes for Big-Data Applications: Spark Summit East talk by...
Engineering Fast Indexes for Big-Data Applications: Spark Summit East talk by...Spark Summit
 
Fault Tolerance in Spark: Lessons Learned from Production: Spark Summit East ...
Fault Tolerance in Spark: Lessons Learned from Production: Spark Summit East ...Fault Tolerance in Spark: Lessons Learned from Production: Spark Summit East ...
Fault Tolerance in Spark: Lessons Learned from Production: Spark Summit East ...Spark Summit
 
Improving Python and Spark Performance and Interoperability: Spark Summit Eas...
Improving Python and Spark Performance and Interoperability: Spark Summit Eas...Improving Python and Spark Performance and Interoperability: Spark Summit Eas...
Improving Python and Spark Performance and Interoperability: Spark Summit Eas...Spark Summit
 
Unlocking Value in Device Data Using Spark: Spark Summit East talk by John La...
Unlocking Value in Device Data Using Spark: Spark Summit East talk by John La...Unlocking Value in Device Data Using Spark: Spark Summit East talk by John La...
Unlocking Value in Device Data Using Spark: Spark Summit East talk by John La...Spark Summit
 
R&D to Product Pipeline Using Apache Spark in AdTech: Spark Summit East talk ...
R&D to Product Pipeline Using Apache Spark in AdTech: Spark Summit East talk ...R&D to Product Pipeline Using Apache Spark in AdTech: Spark Summit East talk ...
R&D to Product Pipeline Using Apache Spark in AdTech: Spark Summit East talk ...Spark Summit
 
Powering Predictive Mapping at Scale with Spark, Kafka, and Elastic Search: S...
Powering Predictive Mapping at Scale with Spark, Kafka, and Elastic Search: S...Powering Predictive Mapping at Scale with Spark, Kafka, and Elastic Search: S...
Powering Predictive Mapping at Scale with Spark, Kafka, and Elastic Search: S...Spark Summit
 

Destacado (20)

Scaling Apache Spark MLlib to Billions of Parameters: Spark Summit East talk ...
Scaling Apache Spark MLlib to Billions of Parameters: Spark Summit East talk ...Scaling Apache Spark MLlib to Billions of Parameters: Spark Summit East talk ...
Scaling Apache Spark MLlib to Billions of Parameters: Spark Summit East talk ...
 
Spark + Parquet In Depth: Spark Summit East Talk by Emily Curtin and Robbie S...
Spark + Parquet In Depth: Spark Summit East Talk by Emily Curtin and Robbie S...Spark + Parquet In Depth: Spark Summit East Talk by Emily Curtin and Robbie S...
Spark + Parquet In Depth: Spark Summit East Talk by Emily Curtin and Robbie S...
 
Spark and Online Analytics: Spark Summit East talky by Shubham Chopra
Spark and Online Analytics: Spark Summit East talky by Shubham ChopraSpark and Online Analytics: Spark Summit East talky by Shubham Chopra
Spark and Online Analytics: Spark Summit East talky by Shubham Chopra
 
Practical Large Scale Experiences with Spark 2.0 Machine Learning: Spark Summ...
Practical Large Scale Experiences with Spark 2.0 Machine Learning: Spark Summ...Practical Large Scale Experiences with Spark 2.0 Machine Learning: Spark Summ...
Practical Large Scale Experiences with Spark 2.0 Machine Learning: Spark Summ...
 
Spark-Streaming-as-a-Service with Kafka and YARN: Spark Summit East talk by J...
Spark-Streaming-as-a-Service with Kafka and YARN: Spark Summit East talk by J...Spark-Streaming-as-a-Service with Kafka and YARN: Spark Summit East talk by J...
Spark-Streaming-as-a-Service with Kafka and YARN: Spark Summit East talk by J...
 
Real-time Platform for Second Look Business Use Case Using Spark and Kafka: S...
Real-time Platform for Second Look Business Use Case Using Spark and Kafka: S...Real-time Platform for Second Look Business Use Case Using Spark and Kafka: S...
Real-time Platform for Second Look Business Use Case Using Spark and Kafka: S...
 
Apache Spark for Machine Learning with High Dimensional Labels: Spark Summit ...
Apache Spark for Machine Learning with High Dimensional Labels: Spark Summit ...Apache Spark for Machine Learning with High Dimensional Labels: Spark Summit ...
Apache Spark for Machine Learning with High Dimensional Labels: Spark Summit ...
 
IoT and the Autonomous Vehicle in the Clouds: Simultaneous Localization and M...
IoT and the Autonomous Vehicle in the Clouds: Simultaneous Localization and M...IoT and the Autonomous Vehicle in the Clouds: Simultaneous Localization and M...
IoT and the Autonomous Vehicle in the Clouds: Simultaneous Localization and M...
 
Engineering Fast Indexes for Big-Data Applications: Spark Summit East talk by...
Engineering Fast Indexes for Big-Data Applications: Spark Summit East talk by...Engineering Fast Indexes for Big-Data Applications: Spark Summit East talk by...
Engineering Fast Indexes for Big-Data Applications: Spark Summit East talk by...
 
Spark Autotuning: Spark Summit East talk by Lawrence Spracklen
Spark Autotuning: Spark Summit East talk by Lawrence SpracklenSpark Autotuning: Spark Summit East talk by Lawrence Spracklen
Spark Autotuning: Spark Summit East talk by Lawrence Spracklen
 
Effective Spark with Alluxio: Spark Summit East talk by Gene Pang and Haoyuan...
Effective Spark with Alluxio: Spark Summit East talk by Gene Pang and Haoyuan...Effective Spark with Alluxio: Spark Summit East talk by Gene Pang and Haoyuan...
Effective Spark with Alluxio: Spark Summit East talk by Gene Pang and Haoyuan...
 
FIS: Accelerating Digital Intelligence in FinTech: Spark Summit East talk by...
 FIS: Accelerating Digital Intelligence in FinTech: Spark Summit East talk by... FIS: Accelerating Digital Intelligence in FinTech: Spark Summit East talk by...
FIS: Accelerating Digital Intelligence in FinTech: Spark Summit East talk by...
 
Scalable Data Science with SparkR: Spark Summit East talk by Felix Cheung
Scalable Data Science with SparkR: Spark Summit East talk by Felix CheungScalable Data Science with SparkR: Spark Summit East talk by Felix Cheung
Scalable Data Science with SparkR: Spark Summit East talk by Felix Cheung
 
Distributed Real-Time Stream Processing: Why and How: Spark Summit East talk ...
Distributed Real-Time Stream Processing: Why and How: Spark Summit East talk ...Distributed Real-Time Stream Processing: Why and How: Spark Summit East talk ...
Distributed Real-Time Stream Processing: Why and How: Spark Summit East talk ...
 
Engineering Fast Indexes for Big-Data Applications: Spark Summit East talk by...
Engineering Fast Indexes for Big-Data Applications: Spark Summit East talk by...Engineering Fast Indexes for Big-Data Applications: Spark Summit East talk by...
Engineering Fast Indexes for Big-Data Applications: Spark Summit East talk by...
 
Fault Tolerance in Spark: Lessons Learned from Production: Spark Summit East ...
Fault Tolerance in Spark: Lessons Learned from Production: Spark Summit East ...Fault Tolerance in Spark: Lessons Learned from Production: Spark Summit East ...
Fault Tolerance in Spark: Lessons Learned from Production: Spark Summit East ...
 
Improving Python and Spark Performance and Interoperability: Spark Summit Eas...
Improving Python and Spark Performance and Interoperability: Spark Summit Eas...Improving Python and Spark Performance and Interoperability: Spark Summit Eas...
Improving Python and Spark Performance and Interoperability: Spark Summit Eas...
 
Unlocking Value in Device Data Using Spark: Spark Summit East talk by John La...
Unlocking Value in Device Data Using Spark: Spark Summit East talk by John La...Unlocking Value in Device Data Using Spark: Spark Summit East talk by John La...
Unlocking Value in Device Data Using Spark: Spark Summit East talk by John La...
 
R&D to Product Pipeline Using Apache Spark in AdTech: Spark Summit East talk ...
R&D to Product Pipeline Using Apache Spark in AdTech: Spark Summit East talk ...R&D to Product Pipeline Using Apache Spark in AdTech: Spark Summit East talk ...
R&D to Product Pipeline Using Apache Spark in AdTech: Spark Summit East talk ...
 
Powering Predictive Mapping at Scale with Spark, Kafka, and Elastic Search: S...
Powering Predictive Mapping at Scale with Spark, Kafka, and Elastic Search: S...Powering Predictive Mapping at Scale with Spark, Kafka, and Elastic Search: S...
Powering Predictive Mapping at Scale with Spark, Kafka, and Elastic Search: S...
 

Similar a Building Real-Time BI Systems with Kafka, Spark, and Kudu: Spark Summit East talk by Ruhollah Farchtchi

Fast and Scalable Python
Fast and Scalable PythonFast and Scalable Python
Fast and Scalable PythonTravis Oliphant
 
Hive + Amazon EMR + S3 = Elastic big data SQL analytics processing in the cloud
Hive + Amazon EMR + S3 = Elastic big data SQL analytics processing in the cloudHive + Amazon EMR + S3 = Elastic big data SQL analytics processing in the cloud
Hive + Amazon EMR + S3 = Elastic big data SQL analytics processing in the cloudJaipaul Agonus
 
Dataiku - hadoop ecosystem - @Epitech Paris - janvier 2014
Dataiku  - hadoop ecosystem - @Epitech Paris - janvier 2014Dataiku  - hadoop ecosystem - @Epitech Paris - janvier 2014
Dataiku - hadoop ecosystem - @Epitech Paris - janvier 2014Dataiku
 
Intro to hadoop ecosystem
Intro to hadoop ecosystemIntro to hadoop ecosystem
Intro to hadoop ecosystemGrzegorz Kolpuc
 
Dirty data? Clean it up! - Datapalooza Denver 2016
Dirty data? Clean it up! - Datapalooza Denver 2016Dirty data? Clean it up! - Datapalooza Denver 2016
Dirty data? Clean it up! - Datapalooza Denver 2016Dan Lynn
 
A fast introduction to PySpark with a quick look at Arrow based UDFs
A fast introduction to PySpark with a quick look at Arrow based UDFsA fast introduction to PySpark with a quick look at Arrow based UDFs
A fast introduction to PySpark with a quick look at Arrow based UDFsHolden Karau
 
Dirty Data? Clean it up! - Rocky Mountain DataCon 2016
Dirty Data? Clean it up! - Rocky Mountain DataCon 2016Dirty Data? Clean it up! - Rocky Mountain DataCon 2016
Dirty Data? Clean it up! - Rocky Mountain DataCon 2016Dan Lynn
 
Sql on hadoop the secret presentation.3pptx
Sql on hadoop  the secret presentation.3pptxSql on hadoop  the secret presentation.3pptx
Sql on hadoop the secret presentation.3pptxPaulo Alonso
 
Big Data - JAX2011 (Pavlo Baron)
Big Data - JAX2011 (Pavlo Baron)Big Data - JAX2011 (Pavlo Baron)
Big Data - JAX2011 (Pavlo Baron)Pavlo Baron
 
Data Engineer's Lunch #82: Automating Apache Cassandra Operations with Apache...
Data Engineer's Lunch #82: Automating Apache Cassandra Operations with Apache...Data Engineer's Lunch #82: Automating Apache Cassandra Operations with Apache...
Data Engineer's Lunch #82: Automating Apache Cassandra Operations with Apache...Anant Corporation
 
Web-scale data processing: practical approaches for low-latency and batch
Web-scale data processing: practical approaches for low-latency and batchWeb-scale data processing: practical approaches for low-latency and batch
Web-scale data processing: practical approaches for low-latency and batchEdward Capriolo
 
Adios hadoop, Hola Spark! T3chfest 2015
Adios hadoop, Hola Spark! T3chfest 2015Adios hadoop, Hola Spark! T3chfest 2015
Adios hadoop, Hola Spark! T3chfest 2015dhiguero
 
Getting Started with Splunk Breakout Session
Getting Started with Splunk Breakout SessionGetting Started with Splunk Breakout Session
Getting Started with Splunk Breakout SessionSplunk
 
Elephant in the room: A DBA's Guide to Hadoop
Elephant in the room: A DBA's Guide to HadoopElephant in the room: A DBA's Guide to Hadoop
Elephant in the room: A DBA's Guide to HadoopStuart Ainsworth
 
Scaling opensimulator inventory using nosql
Scaling opensimulator inventory using nosqlScaling opensimulator inventory using nosql
Scaling opensimulator inventory using nosqlDavid Daeschler
 
Big data for the rest of us with hadoop
Big data for the rest of us with hadoopBig data for the rest of us with hadoop
Big data for the rest of us with hadoopDhaval Anjaria
 
[SSA] 04.sql on hadoop(2014.02.05)
[SSA] 04.sql on hadoop(2014.02.05)[SSA] 04.sql on hadoop(2014.02.05)
[SSA] 04.sql on hadoop(2014.02.05)Steve Min
 
Artur Fejklowicz - “Data Lake architecture” AI&BigDataDay 2017
Artur Fejklowicz - “Data Lake architecture” AI&BigDataDay 2017Artur Fejklowicz - “Data Lake architecture” AI&BigDataDay 2017
Artur Fejklowicz - “Data Lake architecture” AI&BigDataDay 2017Lviv Startup Club
 
20150704 benchmark and user experience in sahara weiting
20150704 benchmark and user experience in sahara weiting20150704 benchmark and user experience in sahara weiting
20150704 benchmark and user experience in sahara weitingWei Ting Chen
 

Similar a Building Real-Time BI Systems with Kafka, Spark, and Kudu: Spark Summit East talk by Ruhollah Farchtchi (20)

Fast and Scalable Python
Fast and Scalable PythonFast and Scalable Python
Fast and Scalable Python
 
Hive + Amazon EMR + S3 = Elastic big data SQL analytics processing in the cloud
Hive + Amazon EMR + S3 = Elastic big data SQL analytics processing in the cloudHive + Amazon EMR + S3 = Elastic big data SQL analytics processing in the cloud
Hive + Amazon EMR + S3 = Elastic big data SQL analytics processing in the cloud
 
Google Cloud Spanner Preview
Google Cloud Spanner PreviewGoogle Cloud Spanner Preview
Google Cloud Spanner Preview
 
Dataiku - hadoop ecosystem - @Epitech Paris - janvier 2014
Dataiku  - hadoop ecosystem - @Epitech Paris - janvier 2014Dataiku  - hadoop ecosystem - @Epitech Paris - janvier 2014
Dataiku - hadoop ecosystem - @Epitech Paris - janvier 2014
 
Intro to hadoop ecosystem
Intro to hadoop ecosystemIntro to hadoop ecosystem
Intro to hadoop ecosystem
 
Dirty data? Clean it up! - Datapalooza Denver 2016
Dirty data? Clean it up! - Datapalooza Denver 2016Dirty data? Clean it up! - Datapalooza Denver 2016
Dirty data? Clean it up! - Datapalooza Denver 2016
 
A fast introduction to PySpark with a quick look at Arrow based UDFs
A fast introduction to PySpark with a quick look at Arrow based UDFsA fast introduction to PySpark with a quick look at Arrow based UDFs
A fast introduction to PySpark with a quick look at Arrow based UDFs
 
Dirty Data? Clean it up! - Rocky Mountain DataCon 2016
Dirty Data? Clean it up! - Rocky Mountain DataCon 2016Dirty Data? Clean it up! - Rocky Mountain DataCon 2016
Dirty Data? Clean it up! - Rocky Mountain DataCon 2016
 
Sql on hadoop the secret presentation.3pptx
Sql on hadoop  the secret presentation.3pptxSql on hadoop  the secret presentation.3pptx
Sql on hadoop the secret presentation.3pptx
 
Big Data - JAX2011 (Pavlo Baron)
Big Data - JAX2011 (Pavlo Baron)Big Data - JAX2011 (Pavlo Baron)
Big Data - JAX2011 (Pavlo Baron)
 
Data Engineer's Lunch #82: Automating Apache Cassandra Operations with Apache...
Data Engineer's Lunch #82: Automating Apache Cassandra Operations with Apache...Data Engineer's Lunch #82: Automating Apache Cassandra Operations with Apache...
Data Engineer's Lunch #82: Automating Apache Cassandra Operations with Apache...
 
Web-scale data processing: practical approaches for low-latency and batch
Web-scale data processing: practical approaches for low-latency and batchWeb-scale data processing: practical approaches for low-latency and batch
Web-scale data processing: practical approaches for low-latency and batch
 
Adios hadoop, Hola Spark! T3chfest 2015
Adios hadoop, Hola Spark! T3chfest 2015Adios hadoop, Hola Spark! T3chfest 2015
Adios hadoop, Hola Spark! T3chfest 2015
 
Getting Started with Splunk Breakout Session
Getting Started with Splunk Breakout SessionGetting Started with Splunk Breakout Session
Getting Started with Splunk Breakout Session
 
Elephant in the room: A DBA's Guide to Hadoop
Elephant in the room: A DBA's Guide to HadoopElephant in the room: A DBA's Guide to Hadoop
Elephant in the room: A DBA's Guide to Hadoop
 
Scaling opensimulator inventory using nosql
Scaling opensimulator inventory using nosqlScaling opensimulator inventory using nosql
Scaling opensimulator inventory using nosql
 
Big data for the rest of us with hadoop
Big data for the rest of us with hadoopBig data for the rest of us with hadoop
Big data for the rest of us with hadoop
 
[SSA] 04.sql on hadoop(2014.02.05)
[SSA] 04.sql on hadoop(2014.02.05)[SSA] 04.sql on hadoop(2014.02.05)
[SSA] 04.sql on hadoop(2014.02.05)
 
Artur Fejklowicz - “Data Lake architecture” AI&BigDataDay 2017
Artur Fejklowicz - “Data Lake architecture” AI&BigDataDay 2017Artur Fejklowicz - “Data Lake architecture” AI&BigDataDay 2017
Artur Fejklowicz - “Data Lake architecture” AI&BigDataDay 2017
 
20150704 benchmark and user experience in sahara weiting
20150704 benchmark and user experience in sahara weiting20150704 benchmark and user experience in sahara weiting
20150704 benchmark and user experience in sahara weiting
 

Más de 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
 

Más de 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...
 

Último

Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...ZurliaSoop
 
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
 
Capstone Project on IBM Data Analytics Program
Capstone Project on IBM Data Analytics ProgramCapstone Project on IBM Data Analytics Program
Capstone Project on IBM Data Analytics ProgramMoniSankarHazra
 
5CL-ADBA,5cladba, Chinese supplier, safety is guaranteed
5CL-ADBA,5cladba, Chinese supplier, safety is guaranteed5CL-ADBA,5cladba, Chinese supplier, safety is guaranteed
5CL-ADBA,5cladba, Chinese supplier, safety is guaranteedamy56318795
 
Call me @ 9892124323 Cheap Rate Call Girls in Vashi with Real Photo 100% Secure
Call me @ 9892124323  Cheap Rate Call Girls in Vashi with Real Photo 100% SecureCall me @ 9892124323  Cheap Rate Call Girls in Vashi with Real Photo 100% Secure
Call me @ 9892124323 Cheap Rate Call Girls in Vashi with Real Photo 100% SecurePooja Nehwal
 
Detecting Credit Card Fraud: A Machine Learning Approach
Detecting Credit Card Fraud: A Machine Learning ApproachDetecting Credit Card Fraud: A Machine Learning Approach
Detecting Credit Card Fraud: A Machine Learning ApproachBoston Institute of Analytics
 
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
 
👉 Amritsar Call Girl 👉📞 6367187148 👉📞 Just📲 Call Ruhi Call Girl Phone No Amri...
👉 Amritsar Call Girl 👉📞 6367187148 👉📞 Just📲 Call Ruhi Call Girl Phone No Amri...👉 Amritsar Call Girl 👉📞 6367187148 👉📞 Just📲 Call Ruhi Call Girl Phone No Amri...
👉 Amritsar Call Girl 👉📞 6367187148 👉📞 Just📲 Call Ruhi Call Girl Phone No Amri...karishmasinghjnh
 
Call Girls In Doddaballapur Road ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Doddaballapur Road ☎ 7737669865 🥵 Book Your One night StandCall Girls In Doddaballapur Road ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Doddaballapur Road ☎ 7737669865 🥵 Book Your One night Standamitlee9823
 
Escorts Service Kumaraswamy Layout ☎ 7737669865☎ Book Your One night Stand (B...
Escorts Service Kumaraswamy Layout ☎ 7737669865☎ Book Your One night Stand (B...Escorts Service Kumaraswamy Layout ☎ 7737669865☎ Book Your One night Stand (B...
Escorts Service Kumaraswamy Layout ☎ 7737669865☎ Book Your One night Stand (B...amitlee9823
 
Call Girls In Bellandur ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Bellandur ☎ 7737669865 🥵 Book Your One night StandCall Girls In Bellandur ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Bellandur ☎ 7737669865 🥵 Book Your One night Standamitlee9823
 
Midocean dropshipping via API with DroFx
Midocean dropshipping via API with DroFxMidocean dropshipping via API with DroFx
Midocean dropshipping via API with DroFxolyaivanovalion
 
Junnasandra Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore...
Junnasandra Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore...Junnasandra Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore...
Junnasandra Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore...amitlee9823
 
➥🔝 7737669865 🔝▻ Bangalore Call-girls in Women Seeking Men 🔝Bangalore🔝 Esc...
➥🔝 7737669865 🔝▻ Bangalore Call-girls in Women Seeking Men  🔝Bangalore🔝   Esc...➥🔝 7737669865 🔝▻ Bangalore Call-girls in Women Seeking Men  🔝Bangalore🔝   Esc...
➥🔝 7737669865 🔝▻ Bangalore Call-girls in Women Seeking Men 🔝Bangalore🔝 Esc...amitlee9823
 
➥🔝 7737669865 🔝▻ Mathura Call-girls in Women Seeking Men 🔝Mathura🔝 Escorts...
➥🔝 7737669865 🔝▻ Mathura Call-girls in Women Seeking Men  🔝Mathura🔝   Escorts...➥🔝 7737669865 🔝▻ Mathura Call-girls in Women Seeking Men  🔝Mathura🔝   Escorts...
➥🔝 7737669865 🔝▻ Mathura Call-girls in Women Seeking Men 🔝Mathura🔝 Escorts...amitlee9823
 
Call Girls In Hsr Layout ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Hsr Layout ☎ 7737669865 🥵 Book Your One night StandCall Girls In Hsr Layout ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Hsr Layout ☎ 7737669865 🥵 Book Your One night Standamitlee9823
 
➥🔝 7737669865 🔝▻ mahisagar Call-girls in Women Seeking Men 🔝mahisagar🔝 Esc...
➥🔝 7737669865 🔝▻ mahisagar Call-girls in Women Seeking Men  🔝mahisagar🔝   Esc...➥🔝 7737669865 🔝▻ mahisagar Call-girls in Women Seeking Men  🔝mahisagar🔝   Esc...
➥🔝 7737669865 🔝▻ mahisagar Call-girls in Women Seeking Men 🔝mahisagar🔝 Esc...amitlee9823
 

Último (20)

CHEAP Call Girls in Rabindra Nagar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
CHEAP Call Girls in Rabindra Nagar  (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICECHEAP Call Girls in Rabindra Nagar  (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
CHEAP Call Girls in Rabindra Nagar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
 
Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
 
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
 
Capstone Project on IBM Data Analytics Program
Capstone Project on IBM Data Analytics ProgramCapstone Project on IBM Data Analytics Program
Capstone Project on IBM Data Analytics Program
 
5CL-ADBA,5cladba, Chinese supplier, safety is guaranteed
5CL-ADBA,5cladba, Chinese supplier, safety is guaranteed5CL-ADBA,5cladba, Chinese supplier, safety is guaranteed
5CL-ADBA,5cladba, Chinese supplier, safety is guaranteed
 
Call me @ 9892124323 Cheap Rate Call Girls in Vashi with Real Photo 100% Secure
Call me @ 9892124323  Cheap Rate Call Girls in Vashi with Real Photo 100% SecureCall me @ 9892124323  Cheap Rate Call Girls in Vashi with Real Photo 100% Secure
Call me @ 9892124323 Cheap Rate Call Girls in Vashi with Real Photo 100% Secure
 
Detecting Credit Card Fraud: A Machine Learning Approach
Detecting Credit Card Fraud: A Machine Learning ApproachDetecting Credit Card Fraud: A Machine Learning Approach
Detecting Credit Card Fraud: A Machine Learning Approach
 
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
 
Predicting Loan Approval: A Data Science Project
Predicting Loan Approval: A Data Science ProjectPredicting Loan Approval: A Data Science Project
Predicting Loan Approval: A Data Science Project
 
👉 Amritsar Call Girl 👉📞 6367187148 👉📞 Just📲 Call Ruhi Call Girl Phone No Amri...
👉 Amritsar Call Girl 👉📞 6367187148 👉📞 Just📲 Call Ruhi Call Girl Phone No Amri...👉 Amritsar Call Girl 👉📞 6367187148 👉📞 Just📲 Call Ruhi Call Girl Phone No Amri...
👉 Amritsar Call Girl 👉📞 6367187148 👉📞 Just📲 Call Ruhi Call Girl Phone No Amri...
 
Call Girls In Doddaballapur Road ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Doddaballapur Road ☎ 7737669865 🥵 Book Your One night StandCall Girls In Doddaballapur Road ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Doddaballapur Road ☎ 7737669865 🥵 Book Your One night Stand
 
Escorts Service Kumaraswamy Layout ☎ 7737669865☎ Book Your One night Stand (B...
Escorts Service Kumaraswamy Layout ☎ 7737669865☎ Book Your One night Stand (B...Escorts Service Kumaraswamy Layout ☎ 7737669865☎ Book Your One night Stand (B...
Escorts Service Kumaraswamy Layout ☎ 7737669865☎ Book Your One night Stand (B...
 
Call Girls In Bellandur ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Bellandur ☎ 7737669865 🥵 Book Your One night StandCall Girls In Bellandur ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Bellandur ☎ 7737669865 🥵 Book Your One night Stand
 
Midocean dropshipping via API with DroFx
Midocean dropshipping via API with DroFxMidocean dropshipping via API with DroFx
Midocean dropshipping via API with DroFx
 
Anomaly detection and data imputation within time series
Anomaly detection and data imputation within time seriesAnomaly detection and data imputation within time series
Anomaly detection and data imputation within time series
 
Junnasandra Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore...
Junnasandra Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore...Junnasandra Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore...
Junnasandra Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore...
 
➥🔝 7737669865 🔝▻ Bangalore Call-girls in Women Seeking Men 🔝Bangalore🔝 Esc...
➥🔝 7737669865 🔝▻ Bangalore Call-girls in Women Seeking Men  🔝Bangalore🔝   Esc...➥🔝 7737669865 🔝▻ Bangalore Call-girls in Women Seeking Men  🔝Bangalore🔝   Esc...
➥🔝 7737669865 🔝▻ Bangalore Call-girls in Women Seeking Men 🔝Bangalore🔝 Esc...
 
➥🔝 7737669865 🔝▻ Mathura Call-girls in Women Seeking Men 🔝Mathura🔝 Escorts...
➥🔝 7737669865 🔝▻ Mathura Call-girls in Women Seeking Men  🔝Mathura🔝   Escorts...➥🔝 7737669865 🔝▻ Mathura Call-girls in Women Seeking Men  🔝Mathura🔝   Escorts...
➥🔝 7737669865 🔝▻ Mathura Call-girls in Women Seeking Men 🔝Mathura🔝 Escorts...
 
Call Girls In Hsr Layout ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Hsr Layout ☎ 7737669865 🥵 Book Your One night StandCall Girls In Hsr Layout ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Hsr Layout ☎ 7737669865 🥵 Book Your One night Stand
 
➥🔝 7737669865 🔝▻ mahisagar Call-girls in Women Seeking Men 🔝mahisagar🔝 Esc...
➥🔝 7737669865 🔝▻ mahisagar Call-girls in Women Seeking Men  🔝mahisagar🔝   Esc...➥🔝 7737669865 🔝▻ mahisagar Call-girls in Women Seeking Men  🔝mahisagar🔝   Esc...
➥🔝 7737669865 🔝▻ mahisagar Call-girls in Women Seeking Men 🔝mahisagar🔝 Esc...
 

Building Real-Time BI Systems with Kafka, Spark, and Kudu: Spark Summit East talk by Ruhollah Farchtchi

  • 1. Building realtime BI Systems with Kafka, Spark and Kudu Ruhollah Farchtchi Zoomdata
  • 2. Drivers for Streaming Data Data Freshness Time to Analytic Business Context 2
  • 3. Streaming Data @ Zoomdata Visualizations react to new data delivered Users start, stop, pause the stream Users select a rolling window or pin a start time to capture cumulative metrics 3
  • 4. Typical Streaming Architectures Event Kafka, JMS, RabbitMQ, etc... Spark Streaming, Flink, etc.. Now What? Cassandra (no aggregation) HDFS (what about query) Lambda (let’s take a look at that for a sec) 4
  • 5. Lambda ● Stream data to hdfs ● Keep some in avro ● Do your own compactions to parquet / orc ● Expose via impala, sparksql, or other ● Impala avro partition (speed) ● With history in parquet ● Union compatible schema ● Project as single table via view ● Works ok… still doing a lot of manual data management Oh.. and what happens to noncommutative operations like Distinct Count? OR 5
  • 6. Restatements … yeah we went there Txn ID Item Price Quantity Partition 1 Jeans 25.00 2 2016-05-30 2 Shirt 10.00 1 2016-05-31 3 Skirt 20.00 1 2016-06-01 1 Jeans 25.00 3 Restatement 6
  • 7. Restatements … how you do it Txn ID Item Price Quantity Partition 1 Jeans 25.00 2 2016-05-30 2 Shirt 10.00 1 2016-05-31 3 Skirt 20.00 1 2016-06-01 1 Jeans 25.00 3 Restatement General Algorithm ● Figure out which partition(s) are affected ● Recompute affected partition(s) with restated data ● Drop/replace existing partition(s) with new data 7
  • 8. Enter Kudu What is Kudu? ● Kudu is an open source storage engine for structured data which supports low-latency random access together with efficient analytical access patterns. (Source: http://getkudu.io/kudu.pdf) Why do you care? ● It makes management of streaming data for ad-hoc analysis MUCH easier ● Bridges the mental gap from random access to append only Why does Zoomdata care? 8
  • 9. Impala + Kudu: Performance Nearly the same performance as Parquet for many similar workloads Simplified data management model Can handle a new class of streaming use cases and workloads 9
  • 10. Impala + Kudu: Performance Nearly the same performance as Parquet for many similar workloads Simplified data management model Can handle a new class of streaming use cases and workloads Great… let’s just use Kudu from now on: ● We can ingest data with great write throughput ● Support analytic queries ● Support random access writes What’s not to love? Ship It! 10
  • 11. There’s a catch... … it’s your data model Good news! If you have figured this out with HDFS and Parquet, you’re not too far off. Things to consider: ● Access pattern and partition scheme (similar to partitioning data parquet) ○ Has a big role to play in parallelism of your queries ● Cardinality of your attributes ○ Affects what type of column encoding you decide to use ● Key structure ○ You get only one, use it wisely More on this can be found at : http://getkudu.io/docs/schema_design.html 11
  • 12. Let’s put it all together I have a fruit stand I sell my fruits via phone order to remote buyers My transactions look something like: Orders(orderID,orderTS,fruit,price,customerID, customerPhone,customerAddress) 12
  • 13. Impala DDL for Kudu CREATE EXTERNAL TABLE `strata_fruits_expanded` ( `_ts` BIGINT, `_id` STRING, `fruit` STRING, `country_code` STRING, `country_area_code` STRING, `phone_num` STRING, `message_date` BIGINT, `price` FLOAT, `keyword` STRING ) DISTRIBUTE BY HASH (_ts) INTO 60 BUCKETS TBLPROPERTIES( 'storage_handler' = 'com.cloudera.kudu.hive.KuduStorageHandler', 'kudu.table_name' = 'strata_fruits_expanded', 'kudu.master_addresses' = '10.xxx.xxx.xxx:7051', 'kudu.key_columns' = '_ts, _id' ); Key Key 13
  • 14. Impala DDL for Kudu CREATE EXTERNAL TABLE `strata_fruits_expanded` ( `_ts` BIGINT, `_id` STRING, `fruit` STRING, `country_code` STRING, `country_area_code` STRING, `phone_num` STRING, `message_date` BIGINT, `price` FLOAT, `keyword` STRING ) DISTRIBUTE BY HASH (_ts) INTO 60 BUCKETS TBLPROPERTIES( 'storage_handler' = 'com.cloudera.kudu.hive.KuduStorageHandler', 'kudu.table_name' = 'strata_fruits_expanded', 'kudu.master_addresses' = '10.xxx.xxx.xxx:7051', 'kudu.key_columns' = '_ts, _id' ); attributes attributes Low cardinality attributes -- things I want to group by -- are great candidates for dictionary encoding 14
  • 15. Impala DDL for Kudu CREATE EXTERNAL TABLE `strata_fruits_expanded` ( `_ts` BIGINT, `_id` STRING, `fruit` STRING, `country_code` STRING, `country_area_code` STRING, `phone_num` STRING, `message_date` BIGINT, `price` FLOAT, `keyword` STRING ) DISTRIBUTE BY HASH (_ts) INTO 60 BUCKETS TBLPROPERTIES( 'storage_handler' = 'com.cloudera.kudu.hive.KuduStorageHandler', 'kudu.table_name' = 'strata_fruits_expanded', 'kudu.master_addresses' = '10.xxx.xxx.xxx:7051', 'kudu.key_columns' = '_ts, _id' ); Partition Scheme How you distribute your data directly impacts your ability to process in parallel as well as any predicate push-down type of operations Kudu can perform For large tables, such as fact tables, aim for as many tablets as you have cores in the cluster -- but figure out what else you are running as well. 15
  • 16. Let’s see it in action…. 16 Kafka Source Topic Spark Streaming App Data Writer Kudu ZoomdataKafka Sink Topic write read Streaming Source
  • 17. Let’s see it in action… not actually that simple 17 Kafka Source Topic Spark Streaming App Data Writer API Writer Client Data Writer Writer Server Register Read request Kudu, Solr, Elastic, etc... ZoomdataKafka Sink Topic write read Streaming Source
  • 18. Special Thanks Anton Gorshkov: For his original streaming with kafka fruit stand demo The Cloudera Kudu Team: Specifically Todd Lipcon for all the insight into Kudu optimization Nexmo: For use of their SaaS SMS service in this demo 18