SlideShare a Scribd company logo
1 of 29
Download to read offline
Dara Adib (Marketplace Data)
Spark: Interactive to
Production
Spark Summit 2016
June 7, 2016
Who
• Uber
–70+ countries. 450+ cities.
•Marketplace Data
–Realtime Data Processing
–Analytics
–Forecasting
•Spark
Who
• Uber
–70+ countries. 450+ cities.
•Marketplace Data
–Realtime Data Processing
–Analytics
–Forecasting
•Spark
Marketplace Data
Relational Data
• Traditionally data is stored in a RDBMS.
• This works well for row lookups and joins.
• But what about events and windowing?
Stream Processing
Trip States
OLAP Queries
•How many open cars are in London now?
•What is the driving time in New York’s Financial
District, by time of day and day of week?
•What is the conversion rate of requests into
trips on Friday evenings in San Francisco?
Our Challenges
Complex Event Processing
Geo Aggregation
Hexagons
•Indexing, Lookup, Rendering
•Symmetric Neighbors
•Convex Regions
•~Equal Area
•~Equal Shape
No magic bullet, yet?
•Empower users. Democratize data.
–Services want reliability and consistent performance.
–Data Scientists want Pandas and flexibility.
•Spark is not a database.
–Data too big to fit in memory?
–Checkpointing UPDATEs.
•Spark 2.0? Alluxio?
A Tale of Two Cities
•Extensibility vs. Reliability
•Months of Data vs. Minutes of Data
•Batch v.s. Streaming
•Development v.s. Production
•HDFS v.s. Relational Database
•YARN v.s. Mesos
“Data scientists don’t know how to code.”
-Software Engineer
Other Challenges
•Data discoverability
•Data freshness
•Query latency
•Debuggability
•Isolation
–CPU, memory, disk space, disk I/O, network I/O
–“Bad queries”
Service Oriented Architecture
Backend
Services
S3
Query
Service
Compute
Engine
Spark
backfill
low-latency
high-latency
Forecast
Service
Why Jupyter
•Ease-of-Use
•Extensibility
–Python and
JavaScript
libraries
•Alternatives
–Apache
Zeppelin
–Databricks
capture
stdout
PySpark
Mesos
Frameworks
• Scheduler
– Connects to Mesos master.
– Accepts or declines resources.
– Contains delay scheduling logic for
rack locality, etc.
• Executor
– Connects to local Mesos slave.
– Runs framework tasks.
• Examples
– Aurora, Marathon, Chronos
– Spark, Storm, Myriad (Hadoop)
Masters and Agents
• Master
– Shares resources between
frameworks.
– Keeps state (frameworks, agents,
tasks) in memory.
– HA: 1 master elected.
• Agent
– Runs on each cluster node.
– Specifies resources and attributes.
– Starts executors.
– Communicates with master and
executors to run tasks.
Mesos Resource Offers
1. Slave reports available resources
to the master.
2. Master sends a resource offer to
the framework scheduler.
3. Framework schedulerrequests
two tasks on the slave.
4. Master sends the tasks to the
slave which allocates resources
to the framework’s executor,
which in turn launches the two
tasks.
Mesos Resources
Types
• cpu: CPU share
– optional CFS for fixed
• mem: memory limit
• disk space: disk limit
• ports: integer port range
• bandwidth
Custom resources: k,v pairs
Isolation
• Linux container
– control groups (cgroup)
– namespaces
• Docker container
• External container
Other features
• Reserved resources by role
• Oversubscription
• Persistent volumes
A Tale of Two CitiesSpark doesn't have
built-in GIS support but
we can leverage
Shapely and rtree,
Python libraries based
on libgeos (used by
PostGIS) and
libspatialindex,
respectively.
Workflow
Technical Workarounds
•Use Mesos coarse-grained mode with dynamic
allocation and the external shuffler.
–Backported 13 commits from Spark master branch to
fix dynamic allocation and launch multiple executors
per slave.
•Deploy Python virtualenvs to Spark executors.
–Managed with requirements.txt files and pip-compile.
•Stitch Parquet files together (SPARK-11441).
Other Issues
• Spark SQL scans all partitions despite LIMIT
(SPARK-12843)
• Mesos checkpoints (SPARK-4899)
– Restart Mesos agent without killing Spark executors.
• Mesos oversubscription (SPARK-10293)
– “Steal” idle but allocated resources.
Tomorrow, Wednesday, June 8
5:25 PM – 5:55 PM
Room: Imperial
Locality Sensitive Hashing by Spark
Alain Rodriguez, Fraud Platform, Uber
Kelvin Chu, Hadoop Platform, Uber
Other Resources
● Stream Computing & Analytics at Uber
○ http://www.slideshare.net/stonse/stream-computing-analytics-at-uber
● Spark at Uber
○ http://www.slideshare.net/databricks/spark-meetup-at-uber
● Career at Uber
○ https://www.uber.com/careers/
THANK YOU.
Feedback? Dara Adib <dara@uber.com>
Happy to discuss technical details.
No product/business questions please.

More Related Content

What's hot

Building a Business Logic Translation Engine with Spark Streaming for Communi...
Building a Business Logic Translation Engine with Spark Streaming for Communi...Building a Business Logic Translation Engine with Spark Streaming for Communi...
Building a Business Logic Translation Engine with Spark Streaming for Communi...Spark Summit
 
Deploying Accelerators At Datacenter Scale Using Spark
Deploying Accelerators At Datacenter Scale Using SparkDeploying Accelerators At Datacenter Scale Using Spark
Deploying Accelerators At Datacenter Scale Using SparkJen Aman
 
GPU Support In Spark And GPU/CPU Mixed Resource Scheduling At Production Scale
GPU Support In Spark And GPU/CPU Mixed Resource Scheduling At Production ScaleGPU Support In Spark And GPU/CPU Mixed Resource Scheduling At Production Scale
GPU Support In Spark And GPU/CPU Mixed Resource Scheduling At Production ScaleSpark Summit
 
Tagging and Processing Data in Real Time-(Hari Shreedharan and Siddhartha Jai...
Tagging and Processing Data in Real Time-(Hari Shreedharan and Siddhartha Jai...Tagging and Processing Data in Real Time-(Hari Shreedharan and Siddhartha Jai...
Tagging and Processing Data in Real Time-(Hari Shreedharan and Siddhartha Jai...Spark Summit
 
Scaling Apache Spark on Kubernetes at Lyft
Scaling Apache Spark on Kubernetes at LyftScaling Apache Spark on Kubernetes at Lyft
Scaling Apache Spark on Kubernetes at LyftDatabricks
 
Spark Summit EU talk by Kaarthik Sivashanmugam
Spark Summit EU talk by Kaarthik SivashanmugamSpark Summit EU talk by Kaarthik Sivashanmugam
Spark Summit EU talk by Kaarthik SivashanmugamSpark Summit
 
Sparking up Data Engineering: Spark Summit East talk by Rohan Sharma
Sparking up Data Engineering: Spark Summit East talk by Rohan SharmaSparking up Data Engineering: Spark Summit East talk by Rohan Sharma
Sparking up Data Engineering: Spark Summit East talk by Rohan SharmaSpark Summit
 
Spark Summit EU talk by Shay Nativ and Dvir Volk
Spark Summit EU talk by Shay Nativ and Dvir VolkSpark Summit EU talk by Shay Nativ and Dvir Volk
Spark Summit EU talk by Shay Nativ and Dvir VolkSpark Summit
 
Spark Summit EU talk by Bas Geerdink
Spark Summit EU talk by Bas GeerdinkSpark Summit EU talk by Bas Geerdink
Spark Summit EU talk by Bas GeerdinkSpark Summit
 
Spark Summit EU talk by Debasish Das and Pramod Narasimha
Spark Summit EU talk by Debasish Das and Pramod NarasimhaSpark Summit EU talk by Debasish Das and Pramod Narasimha
Spark Summit EU talk by Debasish Das and Pramod NarasimhaSpark Summit
 
Performance Troubleshooting Using Apache Spark Metrics
Performance Troubleshooting Using Apache Spark MetricsPerformance Troubleshooting Using Apache Spark Metrics
Performance Troubleshooting Using Apache Spark MetricsDatabricks
 
Dynamic DDL: Adding Structure to Streaming Data on the Fly with David Winters...
Dynamic DDL: Adding Structure to Streaming Data on the Fly with David Winters...Dynamic DDL: Adding Structure to Streaming Data on the Fly with David Winters...
Dynamic DDL: Adding Structure to Streaming Data on the Fly with David Winters...Databricks
 
Spark Summit EU talk by Josef Habdank
Spark Summit EU talk by Josef HabdankSpark Summit EU talk by Josef Habdank
Spark Summit EU talk by Josef HabdankSpark Summit
 
A Journey into Databricks' Pipelines: Journey and Lessons Learned
A Journey into Databricks' Pipelines: Journey and Lessons LearnedA Journey into Databricks' Pipelines: Journey and Lessons Learned
A Journey into Databricks' Pipelines: Journey and Lessons LearnedDatabricks
 
VEGAS: The Missing Matplotlib for Scala/Apache Spark with Roger Menezes and D...
VEGAS: The Missing Matplotlib for Scala/Apache Spark with Roger Menezes and D...VEGAS: The Missing Matplotlib for Scala/Apache Spark with Roger Menezes and D...
VEGAS: The Missing Matplotlib for Scala/Apache Spark with Roger Menezes and D...Spark Summit
 
Spark Summit EU talk by Elena Lazovik
Spark Summit EU talk by Elena LazovikSpark Summit EU talk by Elena Lazovik
Spark Summit EU talk by Elena LazovikSpark Summit
 
SSR: Structured Streaming for R and Machine Learning
SSR: Structured Streaming for R and Machine LearningSSR: Structured Streaming for R and Machine Learning
SSR: Structured Streaming for R and Machine Learningfelixcss
 
Spark Summit EU talk by Michael Nitschinger
Spark Summit EU talk by Michael NitschingerSpark Summit EU talk by Michael Nitschinger
Spark Summit EU talk by Michael NitschingerSpark Summit
 
Challenging Web-Scale Graph Analytics with Apache Spark with Xiangrui Meng
Challenging Web-Scale Graph Analytics with Apache Spark with Xiangrui MengChallenging Web-Scale Graph Analytics with Apache Spark with Xiangrui Meng
Challenging Web-Scale Graph Analytics with Apache Spark with Xiangrui MengDatabricks
 
Scalable And Incremental Data Profiling With Spark
Scalable And Incremental Data Profiling With SparkScalable And Incremental Data Profiling With Spark
Scalable And Incremental Data Profiling With SparkJen Aman
 

What's hot (20)

Building a Business Logic Translation Engine with Spark Streaming for Communi...
Building a Business Logic Translation Engine with Spark Streaming for Communi...Building a Business Logic Translation Engine with Spark Streaming for Communi...
Building a Business Logic Translation Engine with Spark Streaming for Communi...
 
Deploying Accelerators At Datacenter Scale Using Spark
Deploying Accelerators At Datacenter Scale Using SparkDeploying Accelerators At Datacenter Scale Using Spark
Deploying Accelerators At Datacenter Scale Using Spark
 
GPU Support In Spark And GPU/CPU Mixed Resource Scheduling At Production Scale
GPU Support In Spark And GPU/CPU Mixed Resource Scheduling At Production ScaleGPU Support In Spark And GPU/CPU Mixed Resource Scheduling At Production Scale
GPU Support In Spark And GPU/CPU Mixed Resource Scheduling At Production Scale
 
Tagging and Processing Data in Real Time-(Hari Shreedharan and Siddhartha Jai...
Tagging and Processing Data in Real Time-(Hari Shreedharan and Siddhartha Jai...Tagging and Processing Data in Real Time-(Hari Shreedharan and Siddhartha Jai...
Tagging and Processing Data in Real Time-(Hari Shreedharan and Siddhartha Jai...
 
Scaling Apache Spark on Kubernetes at Lyft
Scaling Apache Spark on Kubernetes at LyftScaling Apache Spark on Kubernetes at Lyft
Scaling Apache Spark on Kubernetes at Lyft
 
Spark Summit EU talk by Kaarthik Sivashanmugam
Spark Summit EU talk by Kaarthik SivashanmugamSpark Summit EU talk by Kaarthik Sivashanmugam
Spark Summit EU talk by Kaarthik Sivashanmugam
 
Sparking up Data Engineering: Spark Summit East talk by Rohan Sharma
Sparking up Data Engineering: Spark Summit East talk by Rohan SharmaSparking up Data Engineering: Spark Summit East talk by Rohan Sharma
Sparking up Data Engineering: Spark Summit East talk by Rohan Sharma
 
Spark Summit EU talk by Shay Nativ and Dvir Volk
Spark Summit EU talk by Shay Nativ and Dvir VolkSpark Summit EU talk by Shay Nativ and Dvir Volk
Spark Summit EU talk by Shay Nativ and Dvir Volk
 
Spark Summit EU talk by Bas Geerdink
Spark Summit EU talk by Bas GeerdinkSpark Summit EU talk by Bas Geerdink
Spark Summit EU talk by Bas Geerdink
 
Spark Summit EU talk by Debasish Das and Pramod Narasimha
Spark Summit EU talk by Debasish Das and Pramod NarasimhaSpark Summit EU talk by Debasish Das and Pramod Narasimha
Spark Summit EU talk by Debasish Das and Pramod Narasimha
 
Performance Troubleshooting Using Apache Spark Metrics
Performance Troubleshooting Using Apache Spark MetricsPerformance Troubleshooting Using Apache Spark Metrics
Performance Troubleshooting Using Apache Spark Metrics
 
Dynamic DDL: Adding Structure to Streaming Data on the Fly with David Winters...
Dynamic DDL: Adding Structure to Streaming Data on the Fly with David Winters...Dynamic DDL: Adding Structure to Streaming Data on the Fly with David Winters...
Dynamic DDL: Adding Structure to Streaming Data on the Fly with David Winters...
 
Spark Summit EU talk by Josef Habdank
Spark Summit EU talk by Josef HabdankSpark Summit EU talk by Josef Habdank
Spark Summit EU talk by Josef Habdank
 
A Journey into Databricks' Pipelines: Journey and Lessons Learned
A Journey into Databricks' Pipelines: Journey and Lessons LearnedA Journey into Databricks' Pipelines: Journey and Lessons Learned
A Journey into Databricks' Pipelines: Journey and Lessons Learned
 
VEGAS: The Missing Matplotlib for Scala/Apache Spark with Roger Menezes and D...
VEGAS: The Missing Matplotlib for Scala/Apache Spark with Roger Menezes and D...VEGAS: The Missing Matplotlib for Scala/Apache Spark with Roger Menezes and D...
VEGAS: The Missing Matplotlib for Scala/Apache Spark with Roger Menezes and D...
 
Spark Summit EU talk by Elena Lazovik
Spark Summit EU talk by Elena LazovikSpark Summit EU talk by Elena Lazovik
Spark Summit EU talk by Elena Lazovik
 
SSR: Structured Streaming for R and Machine Learning
SSR: Structured Streaming for R and Machine LearningSSR: Structured Streaming for R and Machine Learning
SSR: Structured Streaming for R and Machine Learning
 
Spark Summit EU talk by Michael Nitschinger
Spark Summit EU talk by Michael NitschingerSpark Summit EU talk by Michael Nitschinger
Spark Summit EU talk by Michael Nitschinger
 
Challenging Web-Scale Graph Analytics with Apache Spark with Xiangrui Meng
Challenging Web-Scale Graph Analytics with Apache Spark with Xiangrui MengChallenging Web-Scale Graph Analytics with Apache Spark with Xiangrui Meng
Challenging Web-Scale Graph Analytics with Apache Spark with Xiangrui Meng
 
Scalable And Incremental Data Profiling With Spark
Scalable And Incremental Data Profiling With SparkScalable And Incremental Data Profiling With Spark
Scalable And Incremental Data Profiling With Spark
 

Viewers also liked

Operational Tips For Deploying Apache Spark
Operational Tips For Deploying Apache SparkOperational Tips For Deploying Apache Spark
Operational Tips For Deploying Apache SparkDatabricks
 
High-Performance Python On Spark
High-Performance Python On SparkHigh-Performance Python On Spark
High-Performance Python On SparkJen Aman
 
Connecting Python To The Spark Ecosystem
Connecting Python To The Spark EcosystemConnecting Python To The Spark Ecosystem
Connecting Python To The Spark EcosystemSpark Summit
 
Low Latency Execution For Apache Spark
Low Latency Execution For Apache SparkLow Latency Execution For Apache Spark
Low Latency Execution For Apache SparkJen Aman
 
Spark Uber Development Kit
Spark Uber Development KitSpark Uber Development Kit
Spark Uber Development KitJen Aman
 
Spark on Mesos
Spark on MesosSpark on Mesos
Spark on MesosJen Aman
 
Getting The Best Performance With PySpark
Getting The Best Performance With PySparkGetting The Best Performance With PySpark
Getting The Best Performance With PySparkSpark Summit
 
Spark Summit EU 2015: Lessons from 300+ production users
Spark Summit EU 2015: Lessons from 300+ production usersSpark Summit EU 2015: Lessons from 300+ production users
Spark Summit EU 2015: Lessons from 300+ production usersDatabricks
 
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
 
Netflix - Productionizing Spark On Yarn For ETL At Petabyte Scale
Netflix - Productionizing Spark On Yarn For ETL At Petabyte ScaleNetflix - Productionizing Spark On Yarn For ETL At Petabyte Scale
Netflix - Productionizing Spark On Yarn For ETL At Petabyte ScaleJen Aman
 
Deep Dive: Memory Management in Apache Spark
Deep Dive: Memory Management in Apache SparkDeep Dive: Memory Management in Apache Spark
Deep Dive: Memory Management in Apache SparkDatabricks
 
Spark to Production @Windward
Spark to Production @WindwardSpark to Production @Windward
Spark to Production @WindwardDemi Ben-Ari
 
Hadoop application architectures - Fraud detection tutorial
Hadoop application architectures - Fraud detection tutorialHadoop application architectures - Fraud detection tutorial
Hadoop application architectures - Fraud detection tutorialhadooparchbook
 
Hadoop & Cloud Storage: Object Store Integration in Production
Hadoop & Cloud Storage: Object Store Integration in ProductionHadoop & Cloud Storage: Object Store Integration in Production
Hadoop & Cloud Storage: Object Store Integration in ProductionDataWorks Summit/Hadoop Summit
 
Streaming ETL for All
Streaming ETL for AllStreaming ETL for All
Streaming ETL for AllJoey Echeverria
 
Morticia: Visualizing And Debugging Complex Spark Workflows
Morticia: Visualizing And Debugging Complex Spark WorkflowsMorticia: Visualizing And Debugging Complex Spark Workflows
Morticia: Visualizing And Debugging Complex Spark WorkflowsSpark Summit
 
Spark and Couchbase: Augmenting the Operational Database with Spark
Spark and Couchbase: Augmenting the Operational Database with SparkSpark and Couchbase: Augmenting the Operational Database with Spark
Spark and Couchbase: Augmenting the Operational Database with SparkSpark Summit
 
Spark and Hadoop at Production Scale-(Anil Gadre, MapR)
Spark and Hadoop at Production Scale-(Anil Gadre, MapR)Spark and Hadoop at Production Scale-(Anil Gadre, MapR)
Spark and Hadoop at Production Scale-(Anil Gadre, MapR)Spark Summit
 
Test Automation and Continuous Integration
Test Automation and Continuous Integration Test Automation and Continuous Integration
Test Automation and Continuous Integration TestCampRO
 

Viewers also liked (20)

Operational Tips For Deploying Apache Spark
Operational Tips For Deploying Apache SparkOperational Tips For Deploying Apache Spark
Operational Tips For Deploying Apache Spark
 
High-Performance Python On Spark
High-Performance Python On SparkHigh-Performance Python On Spark
High-Performance Python On Spark
 
Connecting Python To The Spark Ecosystem
Connecting Python To The Spark EcosystemConnecting Python To The Spark Ecosystem
Connecting Python To The Spark Ecosystem
 
Low Latency Execution For Apache Spark
Low Latency Execution For Apache SparkLow Latency Execution For Apache Spark
Low Latency Execution For Apache Spark
 
Spark Uber Development Kit
Spark Uber Development KitSpark Uber Development Kit
Spark Uber Development Kit
 
Spark on Mesos
Spark on MesosSpark on Mesos
Spark on Mesos
 
Getting The Best Performance With PySpark
Getting The Best Performance With PySparkGetting The Best Performance With PySpark
Getting The Best Performance With PySpark
 
Spark Summit EU 2015: Lessons from 300+ production users
Spark Summit EU 2015: Lessons from 300+ production usersSpark Summit EU 2015: Lessons from 300+ production users
Spark Summit EU 2015: Lessons from 300+ production users
 
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
 
Netflix - Productionizing Spark On Yarn For ETL At Petabyte Scale
Netflix - Productionizing Spark On Yarn For ETL At Petabyte ScaleNetflix - Productionizing Spark On Yarn For ETL At Petabyte Scale
Netflix - Productionizing Spark On Yarn For ETL At Petabyte Scale
 
Deep Dive: Memory Management in Apache Spark
Deep Dive: Memory Management in Apache SparkDeep Dive: Memory Management in Apache Spark
Deep Dive: Memory Management in Apache Spark
 
Spark to Production @Windward
Spark to Production @WindwardSpark to Production @Windward
Spark to Production @Windward
 
Hadoop application architectures - Fraud detection tutorial
Hadoop application architectures - Fraud detection tutorialHadoop application architectures - Fraud detection tutorial
Hadoop application architectures - Fraud detection tutorial
 
Geohash
GeohashGeohash
Geohash
 
Hadoop & Cloud Storage: Object Store Integration in Production
Hadoop & Cloud Storage: Object Store Integration in ProductionHadoop & Cloud Storage: Object Store Integration in Production
Hadoop & Cloud Storage: Object Store Integration in Production
 
Streaming ETL for All
Streaming ETL for AllStreaming ETL for All
Streaming ETL for All
 
Morticia: Visualizing And Debugging Complex Spark Workflows
Morticia: Visualizing And Debugging Complex Spark WorkflowsMorticia: Visualizing And Debugging Complex Spark Workflows
Morticia: Visualizing And Debugging Complex Spark Workflows
 
Spark and Couchbase: Augmenting the Operational Database with Spark
Spark and Couchbase: Augmenting the Operational Database with SparkSpark and Couchbase: Augmenting the Operational Database with Spark
Spark and Couchbase: Augmenting the Operational Database with Spark
 
Spark and Hadoop at Production Scale-(Anil Gadre, MapR)
Spark and Hadoop at Production Scale-(Anil Gadre, MapR)Spark and Hadoop at Production Scale-(Anil Gadre, MapR)
Spark and Hadoop at Production Scale-(Anil Gadre, MapR)
 
Test Automation and Continuous Integration
Test Automation and Continuous Integration Test Automation and Continuous Integration
Test Automation and Continuous Integration
 

Similar to Spark: Interactive To Production

Introduction to NetGuardians' Big Data Software Stack
Introduction to NetGuardians' Big Data Software StackIntroduction to NetGuardians' Big Data Software Stack
Introduction to NetGuardians' Big Data Software StackJĂŠrĂ´me Kehrli
 
Time-oriented event search. A new level of scale
Time-oriented event search. A new level of scale Time-oriented event search. A new level of scale
Time-oriented event search. A new level of scale DataWorks Summit/Hadoop Summit
 
Agility and Scalability with MongoDB
Agility and Scalability with MongoDBAgility and Scalability with MongoDB
Agility and Scalability with MongoDBMongoDB
 
Introduction to Apache Geode (Cork, Ireland)
Introduction to Apache Geode (Cork, Ireland)Introduction to Apache Geode (Cork, Ireland)
Introduction to Apache Geode (Cork, Ireland)Anthony Baker
 
Spark summit 2019 infrastructure for deep learning in apache spark 0425
Spark summit 2019 infrastructure for deep learning in apache spark 0425Spark summit 2019 infrastructure for deep learning in apache spark 0425
Spark summit 2019 infrastructure for deep learning in apache spark 0425Wee Hyong Tok
 
Frontera: open source, large scale web crawling framework
Frontera: open source, large scale web crawling frameworkFrontera: open source, large scale web crawling framework
Frontera: open source, large scale web crawling frameworkScrapinghub
 
AWS re:Invent 2016| GAM302 | Sony PlayStation: Breaking the Bandwidth Barrier...
AWS re:Invent 2016| GAM302 | Sony PlayStation: Breaking the Bandwidth Barrier...AWS re:Invent 2016| GAM302 | Sony PlayStation: Breaking the Bandwidth Barrier...
AWS re:Invent 2016| GAM302 | Sony PlayStation: Breaking the Bandwidth Barrier...Amazon Web Services
 
Swiss Big Data User Group - Introduction to Apache Drill
Swiss Big Data User Group - Introduction to Apache DrillSwiss Big Data User Group - Introduction to Apache Drill
Swiss Big Data User Group - Introduction to Apache DrillMapR Technologies
 
Seattle Spark Meetup Mobius CSharp API
Seattle Spark Meetup Mobius CSharp APISeattle Spark Meetup Mobius CSharp API
Seattle Spark Meetup Mobius CSharp APIshareddatamsft
 
Hadoop Ecosystem
Hadoop EcosystemHadoop Ecosystem
Hadoop EcosystemLior Sidi
 
Using Spring with NoSQL databases (SpringOne China 2012)
Using Spring with NoSQL databases (SpringOne China 2012)Using Spring with NoSQL databases (SpringOne China 2012)
Using Spring with NoSQL databases (SpringOne China 2012)Chris Richardson
 
Liferay & Big Data Dev Con 2014
Liferay & Big Data Dev Con 2014Liferay & Big Data Dev Con 2014
Liferay & Big Data Dev Con 2014Miguel Pastor
 
Uncovering an Apache Spark 2 Benchmark - Configuration, Tuning and Test Results
Uncovering an Apache Spark 2 Benchmark - Configuration, Tuning and Test ResultsUncovering an Apache Spark 2 Benchmark - Configuration, Tuning and Test Results
Uncovering an Apache Spark 2 Benchmark - Configuration, Tuning and Test ResultsDataWorks Summit
 
MongoDB Capacity Planning
MongoDB Capacity PlanningMongoDB Capacity Planning
MongoDB Capacity PlanningNorberto Leite
 
Conceptos bĂĄsicos. Seminario web 1: IntroducciĂłn a NoSQL
Conceptos bĂĄsicos. Seminario web 1: IntroducciĂłn a NoSQLConceptos bĂĄsicos. Seminario web 1: IntroducciĂłn a NoSQL
Conceptos bĂĄsicos. Seminario web 1: IntroducciĂłn a NoSQLMongoDB
 
Apache Spark and Online Analytics
Apache Spark and Online Analytics Apache Spark and Online Analytics
Apache Spark and Online Analytics Databricks
 

Similar to Spark: Interactive To Production (20)

Spark 1.0
Spark 1.0Spark 1.0
Spark 1.0
 
Introduction to NetGuardians' Big Data Software Stack
Introduction to NetGuardians' Big Data Software StackIntroduction to NetGuardians' Big Data Software Stack
Introduction to NetGuardians' Big Data Software Stack
 
Time-oriented event search. A new level of scale
Time-oriented event search. A new level of scale Time-oriented event search. A new level of scale
Time-oriented event search. A new level of scale
 
Agility and Scalability with MongoDB
Agility and Scalability with MongoDBAgility and Scalability with MongoDB
Agility and Scalability with MongoDB
 
Wmware NoSQL
Wmware NoSQLWmware NoSQL
Wmware NoSQL
 
Introduction to Apache Geode (Cork, Ireland)
Introduction to Apache Geode (Cork, Ireland)Introduction to Apache Geode (Cork, Ireland)
Introduction to Apache Geode (Cork, Ireland)
 
Spark summit 2019 infrastructure for deep learning in apache spark 0425
Spark summit 2019 infrastructure for deep learning in apache spark 0425Spark summit 2019 infrastructure for deep learning in apache spark 0425
Spark summit 2019 infrastructure for deep learning in apache spark 0425
 
Frontera: open source, large scale web crawling framework
Frontera: open source, large scale web crawling frameworkFrontera: open source, large scale web crawling framework
Frontera: open source, large scale web crawling framework
 
Introduction to Apache Drill
Introduction to Apache DrillIntroduction to Apache Drill
Introduction to Apache Drill
 
AWS re:Invent 2016| GAM302 | Sony PlayStation: Breaking the Bandwidth Barrier...
AWS re:Invent 2016| GAM302 | Sony PlayStation: Breaking the Bandwidth Barrier...AWS re:Invent 2016| GAM302 | Sony PlayStation: Breaking the Bandwidth Barrier...
AWS re:Invent 2016| GAM302 | Sony PlayStation: Breaking the Bandwidth Barrier...
 
Swiss Big Data User Group - Introduction to Apache Drill
Swiss Big Data User Group - Introduction to Apache DrillSwiss Big Data User Group - Introduction to Apache Drill
Swiss Big Data User Group - Introduction to Apache Drill
 
Seattle Spark Meetup Mobius CSharp API
Seattle Spark Meetup Mobius CSharp APISeattle Spark Meetup Mobius CSharp API
Seattle Spark Meetup Mobius CSharp API
 
Hadoop Ecosystem
Hadoop EcosystemHadoop Ecosystem
Hadoop Ecosystem
 
Using Spring with NoSQL databases (SpringOne China 2012)
Using Spring with NoSQL databases (SpringOne China 2012)Using Spring with NoSQL databases (SpringOne China 2012)
Using Spring with NoSQL databases (SpringOne China 2012)
 
Liferay & Big Data Dev Con 2014
Liferay & Big Data Dev Con 2014Liferay & Big Data Dev Con 2014
Liferay & Big Data Dev Con 2014
 
Spark Uber Development Kit
Spark Uber Development KitSpark Uber Development Kit
Spark Uber Development Kit
 
Uncovering an Apache Spark 2 Benchmark - Configuration, Tuning and Test Results
Uncovering an Apache Spark 2 Benchmark - Configuration, Tuning and Test ResultsUncovering an Apache Spark 2 Benchmark - Configuration, Tuning and Test Results
Uncovering an Apache Spark 2 Benchmark - Configuration, Tuning and Test Results
 
MongoDB Capacity Planning
MongoDB Capacity PlanningMongoDB Capacity Planning
MongoDB Capacity Planning
 
Conceptos bĂĄsicos. Seminario web 1: IntroducciĂłn a NoSQL
Conceptos bĂĄsicos. Seminario web 1: IntroducciĂłn a NoSQLConceptos bĂĄsicos. Seminario web 1: IntroducciĂłn a NoSQL
Conceptos bĂĄsicos. Seminario web 1: IntroducciĂłn a NoSQL
 
Apache Spark and Online Analytics
Apache Spark and Online Analytics Apache Spark and Online Analytics
Apache Spark and Online Analytics
 

More from Jen Aman

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 ZahariaJen Aman
 
Snorkel: Dark Data and Machine Learning with Christopher RĂŠ
Snorkel: Dark Data and Machine Learning with Christopher RĂŠSnorkel: Dark Data and Machine Learning with Christopher RĂŠ
Snorkel: Dark Data and Machine Learning with Christopher RĂŠJen Aman
 
Deep Learning on Apache® Spark™: Workflows and Best Practices
Deep Learning on Apache® Spark™: Workflows and Best PracticesDeep Learning on Apache® Spark™: Workflows and Best Practices
Deep Learning on Apache® Spark™: Workflows and Best PracticesJen Aman
 
Deep Learning on Apache® Spark™ : Workflows and Best Practices
Deep Learning on Apache® Spark™ : Workflows and Best PracticesDeep Learning on Apache® Spark™ : Workflows and Best Practices
Deep Learning on Apache® Spark™ : Workflows and Best PracticesJen Aman
 
RISELab:Enabling Intelligent Real-Time Decisions
RISELab:Enabling Intelligent Real-Time DecisionsRISELab:Enabling Intelligent Real-Time Decisions
RISELab:Enabling Intelligent Real-Time DecisionsJen Aman
 
Spatial Analysis On Histological Images Using Spark
Spatial Analysis On Histological Images Using SparkSpatial Analysis On Histological Images Using Spark
Spatial Analysis On Histological Images Using SparkJen Aman
 
Massive Simulations In Spark: Distributed Monte Carlo For Global Health Forec...
Massive Simulations In Spark: Distributed Monte Carlo For Global Health Forec...Massive Simulations In Spark: Distributed Monte Carlo For Global Health Forec...
Massive Simulations In Spark: Distributed Monte Carlo For Global Health Forec...Jen Aman
 
A Graph-Based Method For Cross-Entity Threat Detection
 A Graph-Based Method For Cross-Entity Threat Detection A Graph-Based Method For Cross-Entity Threat Detection
A Graph-Based Method For Cross-Entity Threat DetectionJen Aman
 
Yggdrasil: Faster Decision Trees Using Column Partitioning In Spark
Yggdrasil: Faster Decision Trees Using Column Partitioning In SparkYggdrasil: Faster Decision Trees Using Column Partitioning In Spark
Yggdrasil: Faster Decision Trees Using Column Partitioning In SparkJen Aman
 
Time-Evolving Graph Processing On Commodity Clusters
Time-Evolving Graph Processing On Commodity ClustersTime-Evolving Graph Processing On Commodity Clusters
Time-Evolving Graph Processing On Commodity ClustersJen Aman
 
Re-Architecting Spark For Performance Understandability
Re-Architecting Spark For Performance UnderstandabilityRe-Architecting Spark For Performance Understandability
Re-Architecting Spark For Performance UnderstandabilityJen Aman
 
Re-Architecting Spark For Performance Understandability
Re-Architecting Spark For Performance UnderstandabilityRe-Architecting Spark For Performance Understandability
Re-Architecting Spark For Performance UnderstandabilityJen Aman
 
Efficient State Management With Spark 2.0 And Scale-Out Databases
Efficient State Management With Spark 2.0 And Scale-Out DatabasesEfficient State Management With Spark 2.0 And Scale-Out Databases
Efficient State Management With Spark 2.0 And Scale-Out DatabasesJen Aman
 
Livy: A REST Web Service For Apache Spark
Livy: A REST Web Service For Apache SparkLivy: A REST Web Service For Apache Spark
Livy: A REST Web Service For Apache SparkJen Aman
 
GPU Computing With Apache Spark And Python
GPU Computing With Apache Spark And PythonGPU Computing With Apache Spark And Python
GPU Computing With Apache Spark And PythonJen Aman
 
Spark And Cassandra: 2 Fast, 2 Furious
Spark And Cassandra: 2 Fast, 2 FuriousSpark And Cassandra: 2 Fast, 2 Furious
Spark And Cassandra: 2 Fast, 2 FuriousJen Aman
 
Building Custom Machine Learning Algorithms With Apache SystemML
Building Custom Machine Learning Algorithms With Apache SystemMLBuilding Custom Machine Learning Algorithms With Apache SystemML
Building Custom Machine Learning Algorithms With Apache SystemMLJen Aman
 
Elasticsearch And Apache Lucene For Apache Spark And MLlib
Elasticsearch And Apache Lucene For Apache Spark And MLlibElasticsearch And Apache Lucene For Apache Spark And MLlib
Elasticsearch And Apache Lucene For Apache Spark And MLlibJen Aman
 
Spark at Bloomberg: Dynamically Composable Analytics
Spark at Bloomberg:  Dynamically Composable Analytics Spark at Bloomberg:  Dynamically Composable Analytics
Spark at Bloomberg: Dynamically Composable Analytics Jen Aman
 
Scaling Machine Learning To Billions Of Parameters
Scaling Machine Learning To Billions Of ParametersScaling Machine Learning To Billions Of Parameters
Scaling Machine Learning To Billions Of ParametersJen Aman
 

More from Jen Aman (20)

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
 
Snorkel: Dark Data and Machine Learning with Christopher RĂŠ
Snorkel: Dark Data and Machine Learning with Christopher RĂŠSnorkel: Dark Data and Machine Learning with Christopher RĂŠ
Snorkel: Dark Data and Machine Learning with Christopher RĂŠ
 
Deep Learning on Apache® Spark™: Workflows and Best Practices
Deep Learning on Apache® Spark™: Workflows and Best PracticesDeep Learning on Apache® Spark™: Workflows and Best Practices
Deep Learning on Apache® Spark™: Workflows and Best Practices
 
Deep Learning on Apache® Spark™ : Workflows and Best Practices
Deep Learning on Apache® Spark™ : Workflows and Best PracticesDeep Learning on Apache® Spark™ : Workflows and Best Practices
Deep Learning on Apache® Spark™ : Workflows and Best Practices
 
RISELab:Enabling Intelligent Real-Time Decisions
RISELab:Enabling Intelligent Real-Time DecisionsRISELab:Enabling Intelligent Real-Time Decisions
RISELab:Enabling Intelligent Real-Time Decisions
 
Spatial Analysis On Histological Images Using Spark
Spatial Analysis On Histological Images Using SparkSpatial Analysis On Histological Images Using Spark
Spatial Analysis On Histological Images Using Spark
 
Massive Simulations In Spark: Distributed Monte Carlo For Global Health Forec...
Massive Simulations In Spark: Distributed Monte Carlo For Global Health Forec...Massive Simulations In Spark: Distributed Monte Carlo For Global Health Forec...
Massive Simulations In Spark: Distributed Monte Carlo For Global Health Forec...
 
A Graph-Based Method For Cross-Entity Threat Detection
 A Graph-Based Method For Cross-Entity Threat Detection A Graph-Based Method For Cross-Entity Threat Detection
A Graph-Based Method For Cross-Entity Threat Detection
 
Yggdrasil: Faster Decision Trees Using Column Partitioning In Spark
Yggdrasil: Faster Decision Trees Using Column Partitioning In SparkYggdrasil: Faster Decision Trees Using Column Partitioning In Spark
Yggdrasil: Faster Decision Trees Using Column Partitioning In Spark
 
Time-Evolving Graph Processing On Commodity Clusters
Time-Evolving Graph Processing On Commodity ClustersTime-Evolving Graph Processing On Commodity Clusters
Time-Evolving Graph Processing On Commodity Clusters
 
Re-Architecting Spark For Performance Understandability
Re-Architecting Spark For Performance UnderstandabilityRe-Architecting Spark For Performance Understandability
Re-Architecting Spark For Performance Understandability
 
Re-Architecting Spark For Performance Understandability
Re-Architecting Spark For Performance UnderstandabilityRe-Architecting Spark For Performance Understandability
Re-Architecting Spark For Performance Understandability
 
Efficient State Management With Spark 2.0 And Scale-Out Databases
Efficient State Management With Spark 2.0 And Scale-Out DatabasesEfficient State Management With Spark 2.0 And Scale-Out Databases
Efficient State Management With Spark 2.0 And Scale-Out Databases
 
Livy: A REST Web Service For Apache Spark
Livy: A REST Web Service For Apache SparkLivy: A REST Web Service For Apache Spark
Livy: A REST Web Service For Apache Spark
 
GPU Computing With Apache Spark And Python
GPU Computing With Apache Spark And PythonGPU Computing With Apache Spark And Python
GPU Computing With Apache Spark And Python
 
Spark And Cassandra: 2 Fast, 2 Furious
Spark And Cassandra: 2 Fast, 2 FuriousSpark And Cassandra: 2 Fast, 2 Furious
Spark And Cassandra: 2 Fast, 2 Furious
 
Building Custom Machine Learning Algorithms With Apache SystemML
Building Custom Machine Learning Algorithms With Apache SystemMLBuilding Custom Machine Learning Algorithms With Apache SystemML
Building Custom Machine Learning Algorithms With Apache SystemML
 
Elasticsearch And Apache Lucene For Apache Spark And MLlib
Elasticsearch And Apache Lucene For Apache Spark And MLlibElasticsearch And Apache Lucene For Apache Spark And MLlib
Elasticsearch And Apache Lucene For Apache Spark And MLlib
 
Spark at Bloomberg: Dynamically Composable Analytics
Spark at Bloomberg:  Dynamically Composable Analytics Spark at Bloomberg:  Dynamically Composable Analytics
Spark at Bloomberg: Dynamically Composable Analytics
 
Scaling Machine Learning To Billions Of Parameters
Scaling Machine Learning To Billions Of ParametersScaling Machine Learning To Billions Of Parameters
Scaling Machine Learning To Billions Of Parameters
 

Recently uploaded

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 SERVICE9953056974 Low Rate Call Girls In Saket, Delhi NCR
 
Call Girls Indiranagar Just Call 👗 9155563397 👗 Top Class Call Girl Service B...
Call Girls Indiranagar Just Call 👗 9155563397 👗 Top Class Call Girl Service B...Call Girls Indiranagar Just Call 👗 9155563397 👗 Top Class Call Girl Service B...
Call Girls Indiranagar Just Call 👗 9155563397 👗 Top Class Call Girl Service B...only4webmaster01
 
DATA SUMMIT 24 Building Real-Time Pipelines With FLaNK
DATA SUMMIT 24  Building Real-Time Pipelines With FLaNKDATA SUMMIT 24  Building Real-Time Pipelines With FLaNK
DATA SUMMIT 24 Building Real-Time Pipelines With FLaNKTimothy Spann
 
Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...
Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...
Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...amitlee9823
 
Just Call Vip call girls Mysore Escorts ☎️9352988975 Two shot with one girl (...
Just Call Vip call girls Mysore Escorts ☎️9352988975 Two shot with one girl (...Just Call Vip call girls Mysore Escorts ☎️9352988975 Two shot with one girl (...
Just Call Vip call girls Mysore Escorts ☎️9352988975 Two shot with one girl (...gajnagarg
 
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
 
Vip Mumbai Call Girls Marol Naka Call On 9920725232 With Body to body massage...
Vip Mumbai Call Girls Marol Naka Call On 9920725232 With Body to body massage...Vip Mumbai Call Girls Marol Naka Call On 9920725232 With Body to body massage...
Vip Mumbai Call Girls Marol Naka Call On 9920725232 With Body to body massage...amitlee9823
 
Thane Call Girls 7091864438 Call Girls in Thane Escort service book now -
Thane Call Girls 7091864438 Call Girls in Thane Escort service book now -Thane Call Girls 7091864438 Call Girls in Thane Escort service book now -
Thane Call Girls 7091864438 Call Girls in Thane Escort service book now -Pooja Nehwal
 
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
 
➥🔝 7737669865 🔝▻ Ongole Call-girls in Women Seeking Men 🔝Ongole🔝 Escorts S...
➥🔝 7737669865 🔝▻ Ongole Call-girls in Women Seeking Men  🔝Ongole🔝   Escorts S...➥🔝 7737669865 🔝▻ Ongole Call-girls in Women Seeking Men  🔝Ongole🔝   Escorts S...
➥🔝 7737669865 🔝▻ Ongole Call-girls in Women Seeking Men 🔝Ongole🔝 Escorts S...amitlee9823
 
Call Girls In Nandini Layout ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Nandini Layout ☎ 7737669865 🥵 Book Your One night StandCall Girls In Nandini Layout ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Nandini Layout ☎ 7737669865 🥵 Book Your One night Standamitlee9823
 
Call Girls Bannerghatta Road Just Call 👗 7737669865 👗 Top Class Call Girl Ser...
Call Girls Bannerghatta Road Just Call 👗 7737669865 👗 Top Class Call Girl Ser...Call Girls Bannerghatta Road Just Call 👗 7737669865 👗 Top Class Call Girl Ser...
Call Girls Bannerghatta Road Just Call 👗 7737669865 👗 Top Class Call Girl Ser...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
 
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
 
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
 
Just Call Vip call girls Erode Escorts ☎️9352988975 Two shot with one girl (E...
Just Call Vip call girls Erode Escorts ☎️9352988975 Two shot with one girl (E...Just Call Vip call girls Erode Escorts ☎️9352988975 Two shot with one girl (E...
Just Call Vip call girls Erode Escorts ☎️9352988975 Two shot with one girl (E...gajnagarg
 

Recently uploaded (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
 
Call Girls Indiranagar Just Call 👗 9155563397 👗 Top Class Call Girl Service B...
Call Girls Indiranagar Just Call 👗 9155563397 👗 Top Class Call Girl Service B...Call Girls Indiranagar Just Call 👗 9155563397 👗 Top Class Call Girl Service B...
Call Girls Indiranagar Just Call 👗 9155563397 👗 Top Class Call Girl Service B...
 
DATA SUMMIT 24 Building Real-Time Pipelines With FLaNK
DATA SUMMIT 24  Building Real-Time Pipelines With FLaNKDATA SUMMIT 24  Building Real-Time Pipelines With FLaNK
DATA SUMMIT 24 Building Real-Time Pipelines With FLaNK
 
Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...
Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...
Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...
 
Just Call Vip call girls Mysore Escorts ☎️9352988975 Two shot with one girl (...
Just Call Vip call girls Mysore Escorts ☎️9352988975 Two shot with one girl (...Just Call Vip call girls Mysore Escorts ☎️9352988975 Two shot with one girl (...
Just Call Vip call girls Mysore Escorts ☎️9352988975 Two shot with one girl (...
 
(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
 
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 Girls In Shalimar Bagh ( Delhi) 9953330565 Escorts Service
Call Girls In Shalimar Bagh ( Delhi) 9953330565 Escorts ServiceCall Girls In Shalimar Bagh ( Delhi) 9953330565 Escorts Service
Call Girls In Shalimar Bagh ( Delhi) 9953330565 Escorts Service
 
Vip Mumbai Call Girls Marol Naka Call On 9920725232 With Body to body massage...
Vip Mumbai Call Girls Marol Naka Call On 9920725232 With Body to body massage...Vip Mumbai Call Girls Marol Naka Call On 9920725232 With Body to body massage...
Vip Mumbai Call Girls Marol Naka Call On 9920725232 With Body to body massage...
 
Thane Call Girls 7091864438 Call Girls in Thane Escort service book now -
Thane Call Girls 7091864438 Call Girls in Thane Escort service book now -Thane Call Girls 7091864438 Call Girls in Thane Escort service book now -
Thane Call Girls 7091864438 Call Girls in Thane Escort service book now -
 
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
 
➥🔝 7737669865 🔝▻ Ongole Call-girls in Women Seeking Men 🔝Ongole🔝 Escorts S...
➥🔝 7737669865 🔝▻ Ongole Call-girls in Women Seeking Men  🔝Ongole🔝   Escorts S...➥🔝 7737669865 🔝▻ Ongole Call-girls in Women Seeking Men  🔝Ongole🔝   Escorts S...
➥🔝 7737669865 🔝▻ Ongole Call-girls in Women Seeking Men 🔝Ongole🔝 Escorts S...
 
Call Girls In Nandini Layout ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Nandini Layout ☎ 7737669865 🥵 Book Your One night StandCall Girls In Nandini Layout ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Nandini Layout ☎ 7737669865 🥵 Book Your One night Stand
 
Call Girls Bannerghatta Road Just Call 👗 7737669865 👗 Top Class Call Girl Ser...
Call Girls Bannerghatta Road Just Call 👗 7737669865 👗 Top Class Call Girl Ser...Call Girls Bannerghatta Road Just Call 👗 7737669865 👗 Top Class Call Girl Ser...
Call Girls Bannerghatta Road Just Call 👗 7737669865 👗 Top Class Call Girl Ser...
 
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
 
Abortion pills in Jeddah | +966572737505 | Get Cytotec
Abortion pills in Jeddah | +966572737505 | Get CytotecAbortion pills in Jeddah | +966572737505 | Get Cytotec
Abortion pills in Jeddah | +966572737505 | Get Cytotec
 
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...
 
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...
 
Just Call Vip call girls Erode Escorts ☎️9352988975 Two shot with one girl (E...
Just Call Vip call girls Erode Escorts ☎️9352988975 Two shot with one girl (E...Just Call Vip call girls Erode Escorts ☎️9352988975 Two shot with one girl (E...
Just Call Vip call girls Erode Escorts ☎️9352988975 Two shot with one girl (E...
 
Abortion pills in Doha Qatar (+966572737505 ! Get Cytotec
Abortion pills in Doha Qatar (+966572737505 ! Get CytotecAbortion pills in Doha Qatar (+966572737505 ! Get Cytotec
Abortion pills in Doha Qatar (+966572737505 ! Get Cytotec
 

Spark: Interactive To Production

  • 1. Dara Adib (Marketplace Data) Spark: Interactive to Production Spark Summit 2016 June 7, 2016
  • 2. Who • Uber –70+ countries. 450+ cities. •Marketplace Data –Realtime Data Processing –Analytics –Forecasting •Spark
  • 3. Who • Uber –70+ countries. 450+ cities. •Marketplace Data –Realtime Data Processing –Analytics –Forecasting •Spark
  • 5. Relational Data • Traditionally data is stored in a RDBMS. • This works well for row lookups and joins. • But what about events and windowing?
  • 8. OLAP Queries •How many open cars are in London now? •What is the driving time in New York’s Financial District, by time of day and day of week? •What is the conversion rate of requests into trips on Friday evenings in San Francisco?
  • 12. Hexagons •Indexing, Lookup, Rendering •Symmetric Neighbors •Convex Regions •~Equal Area •~Equal Shape
  • 13. No magic bullet, yet? •Empower users. Democratize data. –Services want reliability and consistent performance. –Data Scientists want Pandas and flexibility. •Spark is not a database. –Data too big to fit in memory? –Checkpointing UPDATEs. •Spark 2.0? Alluxio?
  • 14. A Tale of Two Cities •Extensibility vs. Reliability •Months of Data vs. Minutes of Data •Batch v.s. Streaming •Development v.s. Production •HDFS v.s. Relational Database •YARN v.s. Mesos “Data scientists don’t know how to code.” -Software Engineer
  • 15. Other Challenges •Data discoverability •Data freshness •Query latency •Debuggability •Isolation –CPU, memory, disk space, disk I/O, network I/O –“Bad queries”
  • 20. Mesos Frameworks • Scheduler – Connects to Mesos master. – Accepts or declines resources. – Contains delay scheduling logic for rack locality, etc. • Executor – Connects to local Mesos slave. – Runs framework tasks. • Examples – Aurora, Marathon, Chronos – Spark, Storm, Myriad (Hadoop) Masters and Agents • Master – Shares resources between frameworks. – Keeps state (frameworks, agents, tasks) in memory. – HA: 1 master elected. • Agent – Runs on each cluster node. – Specifies resources and attributes. – Starts executors. – Communicates with master and executors to run tasks.
  • 21. Mesos Resource Offers 1. Slave reports available resources to the master. 2. Master sends a resource offer to the framework scheduler. 3. Framework schedulerrequests two tasks on the slave. 4. Master sends the tasks to the slave which allocates resources to the framework’s executor, which in turn launches the two tasks.
  • 22. Mesos Resources Types • cpu: CPU share – optional CFS for fixed • mem: memory limit • disk space: disk limit • ports: integer port range • bandwidth Custom resources: k,v pairs Isolation • Linux container – control groups (cgroup) – namespaces • Docker container • External container Other features • Reserved resources by role • Oversubscription • Persistent volumes
  • 23. A Tale of Two CitiesSpark doesn't have built-in GIS support but we can leverage Shapely and rtree, Python libraries based on libgeos (used by PostGIS) and libspatialindex, respectively.
  • 25. Technical Workarounds •Use Mesos coarse-grained mode with dynamic allocation and the external shuffler. –Backported 13 commits from Spark master branch to fix dynamic allocation and launch multiple executors per slave. •Deploy Python virtualenvs to Spark executors. –Managed with requirements.txt files and pip-compile. •Stitch Parquet files together (SPARK-11441).
  • 26. Other Issues • Spark SQL scans all partitions despite LIMIT (SPARK-12843) • Mesos checkpoints (SPARK-4899) – Restart Mesos agent without killing Spark executors. • Mesos oversubscription (SPARK-10293) – “Steal” idle but allocated resources.
  • 27. Tomorrow, Wednesday, June 8 5:25 PM – 5:55 PM Room: Imperial Locality Sensitive Hashing by Spark Alain Rodriguez, Fraud Platform, Uber Kelvin Chu, Hadoop Platform, Uber
  • 28. Other Resources ● Stream Computing & Analytics at Uber ○ http://www.slideshare.net/stonse/stream-computing-analytics-at-uber ● Spark at Uber ○ http://www.slideshare.net/databricks/spark-meetup-at-uber ● Career at Uber ○ https://www.uber.com/careers/
  • 29. THANK YOU. Feedback? Dara Adib <dara@uber.com> Happy to discuss technical details. No product/business questions please.