SlideShare a Scribd company logo
1 of 37
Download to read offline
Deep Learning on Apache®
Spark™: Workflows and Best
Practices
Tim Hunter (Software Engineer)
Jules S. Damji (Spark Community Evangelist)
May 4, 2017
Agenda
• Logistics
• Databricks Overview
• Deep Learning on Apache® Spark™: Workflows and Best
Practices
• Q & A
Logistics
• We can’t hear you…
• Recording will be available...
• Slides and Notebooks will be available...
• Queue up Questions ….
• Orange Button for Tech Support difficulties...
Empower anyone to innovate faster with big data.
Founded by the creators of Apache Spark.
Contributes 75%of the open source code,
10x more than any other company.
VISION
WHO WE ARE
A data processing for data scientists, data engineers, and data
analysts that simplifies that data integration, real-time
experimentation, machine learning and deployment of
production pipelines .
PRODUCT
A New Paradigm
SECOND GENERATION
THE BEST OF BOTH WORLDS
Hadoop + data lake
Hard to centralize data and
extract value with disparate tools
Virtual analytics
• Holisticallyanalyze data from
data warehouses, data lakes,
and other data stores
• Utilize a single engine for batch,
ML, streaming & real-time
queries
• Enable enterprise-wide
collaboration
+
FIRST GENERATION
Data warehouses
ETL process is rigid, scaling out
is expensive, limited to SQL
CLUSTER TUNING &
MANAGEMENT
INTERACTIVE
WORKSPACE
PRODUCTION
PIPELINE
AUTOMATION
OPTIMIZED DATA
ACCESS
DATABRICKS ENTERPRISE SECURITY
YOUR	TEAMS
Data Science
Data Engineering
Many others…
BI Analysts
YOUR	DATA
Cloud Storage
Data Warehouses
Data Lake
VIRTUAL ANALYTICS PLATFORM
Deep Learning on Apache®
Spark™: Workflows and Best
Practices
Tim Hunter (Software Engineer)
May 4 , 2017
About Me
• Tim Hunter
• Software engineer @ Databricks
• Ph.D. from UC Berkeley in Machine Learning
• Very early Spark user
• Contributor to MLlib
• Author of TensorFrames and GraphFrames
Deep Learning and Apache Spark
Deep Learning frameworks w/ Spark bindings
• Caffe (CaffeOnSpark)
• Keras (Elephas)
• MXNet
• Paddle
• TensorFlow(TensorFlowOnSpark,TensorFrames)
Extensions to Spark for specialized hardware
• Blaze (UCLA & Falcon Computing Solutions)
• IBM Conductor with Spark
Native Spark
• BigDL
• DeepDist
• DeepLearning4J
• MLlib
• SparkCL
• SparkNet
Deep Learning and Apache Spark
2016: the year of emerging solutions for Spark + Deep Learning
No consensus
• Many approaches for libraries: integrate existing ones with Spark, build on
top of Spark, modify Spark itself
• Official Spark MLlib support is limited(perceptron-like networks)
One Framework to Rule Them All?
Should we look for The One Deep Learning Framework?
Databricks’ perspective
• Databricks: hosted Spark platform on public cloud
• GPUs for compute-intensive workloads
• Customers use many Deep Learning frameworks: TensorFlow, MXNet, BigDL,
Theano, Caffe, and more
This talk
• Lessons learned from supporting many Deep Learning frameworks
• Multiple ways to integrate Deep Learning & Spark
• Best practices for these integrations
Outline
• Deep Learning in data pipelines
• Recurring patterns in Spark + Deep Learning integrations
• Developer tips
• Monitoring
Outline
• Deep Learning in data pipelines
• Recurring patterns in Spark + Deep Learning integrations
• Developer tips
• Monitoring
ML is a small part of data pipelines.
Hidden	technical	debt	in	Machine	Learning	systems
Sculley et	al.,	NIPS	2016
DL in a data pipeline: Training
Data
collection
ETL Featurization Deep
Learning
Validation Export,
Serving
compute intensive IO intensiveIO intensive
Large cluster
High memory/CPU ratio
Small cluster
Low memory/CPU ratio
DL in a data pipeline: Transformation
Specialized data transforms: feature extraction & prediction
Input Output
cat
dog
dog
Saulius Garalevicius - CC BY-SA3.0
Outline
• Deep Learning in data pipelines
• Recurringpatterns in Spark + Deep Learning integrations
• Developer tips
• Monitoring
Recurring patterns
Spark as a scheduler
• Data-parallel tasks
• Data stored outside Spark
Embedded Deep Learning transforms
• Data-parallel tasks
• Data stored in DataFrames/RDDs
Cooperative frameworks
• Multiple passes over data
• Heavy and/or specialized communication
Streaming data through DL
Primary storage choices:
• Cold layer (HDFS/S3/etc.)
• Local storage: files, Spark’s on-disk persistence layer
• In memory: SparkRDDs or SparkDataFrames
Find out if you are I/O constrained or processor-constrained
• How big is your dataset? MNIST or ImageNet?
If using PySpark:
• All frameworks heavily optimized for diskI/O
• Use Spark’s broadcastfor small datasets that fitin memory
• Reading files is fast: use local files when it does not fit
Cooperative frameworks
• Use Spark for data input
• Examples:
• IBM GPU efforts
• Skymind’s DeepLearning4J
• DistML and other Parameter Server efforts
RDD
Partition	1
Partition	n
RDD
Partition	1
Partition	m
Black	box
Cooperative frameworks
• Bypass Spark for asynchronous / specific communication
patterns across machines
• Lose benefit of RDDs and DataFrames and
reproducibility/determinism
• But these guarantees are not requested anyway when doing
deep learning (stochastic gradient)
• “reproducibility is worth a factor of 2” (Leon Bottou, quoted by
John Langford)
Outline
• Deep Learning in data pipelines
• Recurring patterns in Spark + Deep Learning integrations
• Developer tips
• Monitoring
The GPU software stack
• Deep Learning commonly used with GPUs
• A lot of workon Spark dependencies:
• Few dependencies on local machine when compiling Spark
• The build process works well in a largenumber of configurations (just scala +
maven)
• GPUs present challenges: CUDA, support libraries, drivers, etc.
• Deep softwarestack, requires careful construction (hardware+ drivers + CUDA
+ libraries)
• All these are expected by the user
• Turnkey stacks just starting to appear
• Provide a Docker image with all the GPU SDK
• Pre-install GPU drivers on the instance
Container:
nvidia-docker,
lxc,	etc.
The GPU software stack
GPU	hardware
Linux	kernel NV	Kernel	driver
CuBLAS CuDNN
Deep	learning	libraries
(Tensorflow,	etc.) JCUDA
Python	/	JVM	clients
CUDA
NV	kernel	driver	(userspace interface)
Using GPUs through PySpark
• Popular choice for many independent tasks
• Many DL packages have Python interfaces: TensorFlow,
Theano, Caffe, MXNet, etc.
• Lifetime for python packages: the process
• Requires some configuration tweaks in Spark
PySpark recommendation
• spark.executor.cores = 1
• Gives the DL framework full access over all the resources
• Important for frameworks that optimize processor pipelines
Outline
• Deep Learning in data pipelines
• Recurring patterns in Spark + Deep Learning integrations
• Developer tips
• Monitoring
Monitoring
?
Monitoring
• How do you monitor the progress of your tasks?
• It depends on the granularity
• Around tasks
• Inside (long-running) tasks
Monitoring: Accumulators
• Good to check throughput
or failure rate
• Works for Scala
• Limited use for Python
(for now, SPARK-2868)
• No “real-time” update
batchesAcc = sc.accumulator(1)
def processBatch(i):
global acc
acc += 1
# Process image batch here
images = sc.parallelize(…)
images.map(processBatch).collect()
Monitoring: external system
• Plugs into an external system
• Existing solutions: Grafana, Graphite, Prometheus, etc.
• Most flexible, but more complex to deploy
Conclusion
• Distributed deep learning: exciting and fast-moving space
• Most insights are specific to a task, a dataset and an algorithm:
nothing replaces experiments
• Get started with data-parallel jobs
• Move to cooperative frameworks only when your data are too large.
Challenges to address
For Spark developers
• Monitoringlong-running tasks
• Presentingand introspecting intermediate results
For DL developers
• What boundary to put between the algorithm and Spark?
• How to integrate with Spark at the low-level?
Resources
Recent blog posts — http://databricks.com/blog
• TensorFrames
• GPU acceleration
• Getting started with Deep Learning
• Intel’s BigDL
Docs for Deep Learning on Databricks — http://docs.databricks.com
• Getting started
• Spark integration
SPARK SUMMIT 2017
DATA SCIENCE AND ENGINEERING AT SCALE
JUNE 5 – 7 | MOSCONE CENTER | SAN FRANCISCO
ORGANIZED BY spark-summit.org/2017
Thank You!
Questions?
Happy Sparking & Deep Learning!

More Related Content

What's hot

SparkApplicationDevMadeEasy_Spark_Summit_2015
SparkApplicationDevMadeEasy_Spark_Summit_2015SparkApplicationDevMadeEasy_Spark_Summit_2015
SparkApplicationDevMadeEasy_Spark_Summit_2015
Lance Co Ting Keh
 
Deep Learning on Apache Spark at CERN’s Large Hadron Collider with Intel Tech...
Deep Learning on Apache Spark at CERN’s Large Hadron Collider with Intel Tech...Deep Learning on Apache Spark at CERN’s Large Hadron Collider with Intel Tech...
Deep Learning on Apache Spark at CERN’s Large Hadron Collider with Intel Tech...
Databricks
 
Going Real-Time: Creating Frequently-Updating Datasets for Personalization: S...
Going Real-Time: Creating Frequently-Updating Datasets for Personalization: S...Going Real-Time: Creating Frequently-Updating Datasets for Personalization: S...
Going Real-Time: Creating Frequently-Updating Datasets for Personalization: S...
Spark Summit
 
Improving the Life of Data Scientists: Automating ML Lifecycle through MLflow
Improving the Life of Data Scientists: Automating ML Lifecycle through MLflowImproving the Life of Data Scientists: Automating ML Lifecycle through MLflow
Improving the Life of Data Scientists: Automating ML Lifecycle through MLflow
Databricks
 
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
Wee Hyong Tok
 

What's hot (18)

Apache Spark in Scientific Applciations
Apache Spark in Scientific ApplciationsApache Spark in Scientific Applciations
Apache Spark in Scientific Applciations
 
Fast and Scalable Python
Fast and Scalable PythonFast and Scalable Python
Fast and Scalable Python
 
RISELab:Enabling Intelligent Real-Time Decisions
RISELab:Enabling Intelligent Real-Time DecisionsRISELab:Enabling Intelligent Real-Time Decisions
RISELab:Enabling Intelligent Real-Time Decisions
 
SparkApplicationDevMadeEasy_Spark_Summit_2015
SparkApplicationDevMadeEasy_Spark_Summit_2015SparkApplicationDevMadeEasy_Spark_Summit_2015
SparkApplicationDevMadeEasy_Spark_Summit_2015
 
Deep Learning on Apache Spark at CERN’s Large Hadron Collider with Intel Tech...
Deep Learning on Apache Spark at CERN’s Large Hadron Collider with Intel Tech...Deep Learning on Apache Spark at CERN’s Large Hadron Collider with Intel Tech...
Deep Learning on Apache Spark at CERN’s Large Hadron Collider with Intel Tech...
 
Going Real-Time: Creating Frequently-Updating Datasets for Personalization: S...
Going Real-Time: Creating Frequently-Updating Datasets for Personalization: S...Going Real-Time: Creating Frequently-Updating Datasets for Personalization: S...
Going Real-Time: Creating Frequently-Updating Datasets for Personalization: S...
 
Scala: the unpredicted lingua franca for data science
Scala: the unpredicted lingua franca  for data scienceScala: the unpredicted lingua franca  for data science
Scala: the unpredicted lingua franca for data science
 
Tiny Batches, in the wine: Shiny New Bits in Spark Streaming
Tiny Batches, in the wine: Shiny New Bits in Spark StreamingTiny Batches, in the wine: Shiny New Bits in Spark Streaming
Tiny Batches, in the wine: Shiny New Bits in Spark Streaming
 
Bring Satellite and Drone Imagery into your Data Science Workflows
Bring Satellite and Drone Imagery into your Data Science WorkflowsBring Satellite and Drone Imagery into your Data Science Workflows
Bring Satellite and Drone Imagery into your Data Science Workflows
 
Geospatial Analytics at Scale with Deep Learning and Apache Spark with Tim hu...
Geospatial Analytics at Scale with Deep Learning and Apache Spark with Tim hu...Geospatial Analytics at Scale with Deep Learning and Apache Spark with Tim hu...
Geospatial Analytics at Scale with Deep Learning and Apache Spark with Tim hu...
 
Insights Without Tradeoffs: Using Structured Streaming
Insights Without Tradeoffs: Using Structured StreamingInsights Without Tradeoffs: Using Structured Streaming
Insights Without Tradeoffs: Using Structured Streaming
 
Improving the Life of Data Scientists: Automating ML Lifecycle through MLflow
Improving the Life of Data Scientists: Automating ML Lifecycle through MLflowImproving the Life of Data Scientists: Automating ML Lifecycle through MLflow
Improving the Life of Data Scientists: Automating ML Lifecycle through MLflow
 
QCon São Paulo: Real-Time Analytics with Spark Streaming
QCon São Paulo: Real-Time Analytics with Spark StreamingQCon São Paulo: Real-Time Analytics with Spark Streaming
QCon São Paulo: Real-Time Analytics with Spark Streaming
 
A Predictive Analytics Workflow on DICOM Images using Apache Spark with Anahi...
A Predictive Analytics Workflow on DICOM Images using Apache Spark with Anahi...A Predictive Analytics Workflow on DICOM Images using Apache Spark with Anahi...
A Predictive Analytics Workflow on DICOM Images using Apache Spark with Anahi...
 
No More Cumbersomeness: Automatic Predictive Modeling on Apache Spark with Ma...
No More Cumbersomeness: Automatic Predictive Modeling on Apache Spark with Ma...No More Cumbersomeness: Automatic Predictive Modeling on Apache Spark with Ma...
No More Cumbersomeness: Automatic Predictive Modeling on Apache Spark with Ma...
 
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
 
Snorkel: Dark Data and Machine Learning with Christopher Ré
Snorkel: Dark Data and Machine Learning with Christopher RéSnorkel: Dark Data and Machine Learning with Christopher Ré
Snorkel: Dark Data and Machine Learning with Christopher Ré
 
Strata EU 2014: Spark Streaming Case Studies
Strata EU 2014: Spark Streaming Case StudiesStrata EU 2014: Spark Streaming Case Studies
Strata EU 2014: Spark Streaming Case Studies
 

Similar to Deep Learning on Apache® Spark™ : Workflows and Best Practices

Infrastructure for Deep Learning in Apache Spark
Infrastructure for Deep Learning in Apache SparkInfrastructure for Deep Learning in Apache Spark
Infrastructure for Deep Learning in Apache Spark
Databricks
 
Taboola Road To Scale With Apache Spark
Taboola Road To Scale With Apache SparkTaboola Road To Scale With Apache Spark
Taboola Road To Scale With Apache Spark
tsliwowicz
 

Similar to Deep Learning on Apache® Spark™ : Workflows and Best Practices (20)

Apache Spark Fundamentals
Apache Spark FundamentalsApache Spark Fundamentals
Apache Spark Fundamentals
 
Tuning and Monitoring Deep Learning on Apache Spark
Tuning and Monitoring Deep Learning on Apache SparkTuning and Monitoring Deep Learning on Apache Spark
Tuning and Monitoring Deep Learning on Apache Spark
 
Deep learning and Apache Spark
Deep learning and Apache SparkDeep learning and Apache Spark
Deep learning and Apache Spark
 
Infrastructure for Deep Learning in Apache Spark
Infrastructure for Deep Learning in Apache SparkInfrastructure for Deep Learning in Apache Spark
Infrastructure for Deep Learning in Apache Spark
 
Bringing Deep Learning into production
Bringing Deep Learning into production Bringing Deep Learning into production
Bringing Deep Learning into production
 
Data Science at Scale: Using Apache Spark for Data Science at Bitly
Data Science at Scale: Using Apache Spark for Data Science at BitlyData Science at Scale: Using Apache Spark for Data Science at Bitly
Data Science at Scale: Using Apache Spark for Data Science at Bitly
 
Apache Spark for Everyone - Women Who Code Workshop
Apache Spark for Everyone - Women Who Code WorkshopApache Spark for Everyone - Women Who Code Workshop
Apache Spark for Everyone - Women Who Code Workshop
 
Integrating Deep Learning Libraries with Apache Spark
Integrating Deep Learning Libraries with Apache SparkIntegrating Deep Learning Libraries with Apache Spark
Integrating Deep Learning Libraries with Apache Spark
 
From Pipelines to Refineries: scaling big data applications with Tim Hunter
From Pipelines to Refineries: scaling big data applications with Tim HunterFrom Pipelines to Refineries: scaling big data applications with Tim Hunter
From Pipelines to Refineries: scaling big data applications with Tim Hunter
 
Sa introduction to big data pipelining with cassandra & spark west mins...
Sa introduction to big data pipelining with cassandra & spark   west mins...Sa introduction to big data pipelining with cassandra & spark   west mins...
Sa introduction to big data pipelining with cassandra & spark west mins...
 
From Pipelines to Refineries: Scaling Big Data Applications
From Pipelines to Refineries: Scaling Big Data ApplicationsFrom Pipelines to Refineries: Scaling Big Data Applications
From Pipelines to Refineries: Scaling Big Data Applications
 
Combining Machine Learning frameworks with Apache Spark
Combining Machine Learning frameworks with Apache SparkCombining Machine Learning frameworks with Apache Spark
Combining Machine Learning frameworks with Apache Spark
 
Apache Spark in Industry
Apache Spark in IndustryApache Spark in Industry
Apache Spark in Industry
 
Taboola Road To Scale With Apache Spark
Taboola Road To Scale With Apache SparkTaboola Road To Scale With Apache Spark
Taboola Road To Scale With Apache Spark
 
Combining Machine Learning Frameworks with Apache Spark
Combining Machine Learning Frameworks with Apache SparkCombining Machine Learning Frameworks with Apache Spark
Combining Machine Learning Frameworks with Apache Spark
 
Build Deep Learning Applications for Big Data Platforms (CVPR 2018 tutorial)
Build Deep Learning Applications for Big Data Platforms (CVPR 2018 tutorial)Build Deep Learning Applications for Big Data Platforms (CVPR 2018 tutorial)
Build Deep Learning Applications for Big Data Platforms (CVPR 2018 tutorial)
 
Big Data training
Big Data trainingBig Data training
Big Data training
 
Apache Spark sql
Apache Spark sqlApache Spark sql
Apache Spark sql
 
Big Data Processing with Apache Spark 2014
Big Data Processing with Apache Spark 2014Big Data Processing with Apache Spark 2014
Big Data Processing with Apache Spark 2014
 
Big Data Retrospective - STL Big Data IDEA Jan 2019
Big Data Retrospective - STL Big Data IDEA Jan 2019Big Data Retrospective - STL Big Data IDEA Jan 2019
Big Data Retrospective - STL Big Data IDEA Jan 2019
 

More from Jen 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
 
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
 
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
 
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
 
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
 
Low Latency Execution For Apache Spark
Low Latency Execution For Apache SparkLow Latency Execution For Apache Spark
Low Latency Execution For Apache Spark
 
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
 
Spark on Mesos
Spark on MesosSpark on Mesos
Spark on Mesos
 
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
 
Spark Uber Development Kit
Spark Uber Development KitSpark Uber Development Kit
Spark Uber Development Kit
 

Recently uploaded

➥🔝 7737669865 🔝▻ malwa Call-girls in Women Seeking Men 🔝malwa🔝 Escorts Ser...
➥🔝 7737669865 🔝▻ malwa Call-girls in Women Seeking Men  🔝malwa🔝   Escorts Ser...➥🔝 7737669865 🔝▻ malwa Call-girls in Women Seeking Men  🔝malwa🔝   Escorts Ser...
➥🔝 7737669865 🔝▻ malwa Call-girls in Women Seeking Men 🔝malwa🔝 Escorts Ser...
amitlee9823
 
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
 
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
Abortion pills in Riyadh +966572737505 get cytotec
 
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
amitlee9823
 
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
amitlee9823
 
Call Girls Begur Just Call 👗 7737669865 👗 Top Class Call Girl Service Bangalore
Call Girls Begur Just Call 👗 7737669865 👗 Top Class Call Girl Service BangaloreCall Girls Begur Just Call 👗 7737669865 👗 Top Class Call Girl Service Bangalore
Call Girls Begur Just Call 👗 7737669865 👗 Top Class Call Girl Service Bangalore
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 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
9953056974 Low Rate Call Girls In Saket, Delhi NCR
 
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 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
 
Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...
Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...
Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...
amitlee9823
 
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
Abortion pills in Riyadh +966572737505 get cytotec
 
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
9953056974 Low Rate Call Girls In Saket, Delhi NCR
 
Call Girls Hsr Layout Just Call 👗 7737669865 👗 Top Class Call Girl Service Ba...
Call Girls Hsr Layout Just Call 👗 7737669865 👗 Top Class Call Girl Service Ba...Call Girls Hsr Layout Just Call 👗 7737669865 👗 Top Class Call Girl Service Ba...
Call Girls Hsr Layout Just Call 👗 7737669865 👗 Top Class Call Girl Service Ba...
amitlee9823
 

Recently uploaded (20)

➥🔝 7737669865 🔝▻ malwa Call-girls in Women Seeking Men 🔝malwa🔝 Escorts Ser...
➥🔝 7737669865 🔝▻ malwa Call-girls in Women Seeking Men  🔝malwa🔝   Escorts Ser...➥🔝 7737669865 🔝▻ malwa Call-girls in Women Seeking Men  🔝malwa🔝   Escorts Ser...
➥🔝 7737669865 🔝▻ malwa Call-girls in Women Seeking Men 🔝malwa🔝 Escorts Ser...
 
Discover Why Less is More in B2B Research
Discover Why Less is More in B2B ResearchDiscover Why Less is More in B2B Research
Discover Why Less is More in B2B Research
 
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...
 
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
 
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
 
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
 
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
 
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
 
Call Girls Begur Just Call 👗 7737669865 👗 Top Class Call Girl Service Bangalore
Call Girls Begur Just Call 👗 7737669865 👗 Top Class Call Girl Service BangaloreCall Girls Begur Just Call 👗 7737669865 👗 Top Class Call Girl Service Bangalore
Call Girls Begur Just Call 👗 7737669865 👗 Top Class Call Girl Service Bangalore
 
➥🔝 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 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
 
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...
 
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
 
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...
 
Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...
Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...
Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...
 
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
 
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 Hsr Layout Just Call 👗 7737669865 👗 Top Class Call Girl Service Ba...
Call Girls Hsr Layout Just Call 👗 7737669865 👗 Top Class Call Girl Service Ba...Call Girls Hsr Layout Just Call 👗 7737669865 👗 Top Class Call Girl Service Ba...
Call Girls Hsr Layout Just Call 👗 7737669865 👗 Top Class Call Girl Service Ba...
 
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 -
 
VIP Model Call Girls Hinjewadi ( Pune ) Call ON 8005736733 Starting From 5K t...
VIP Model Call Girls Hinjewadi ( Pune ) Call ON 8005736733 Starting From 5K t...VIP Model Call Girls Hinjewadi ( Pune ) Call ON 8005736733 Starting From 5K t...
VIP Model Call Girls Hinjewadi ( Pune ) Call ON 8005736733 Starting From 5K t...
 

Deep Learning on Apache® Spark™ : Workflows and Best Practices

  • 1. Deep Learning on Apache® Spark™: Workflows and Best Practices Tim Hunter (Software Engineer) Jules S. Damji (Spark Community Evangelist) May 4, 2017
  • 2. Agenda • Logistics • Databricks Overview • Deep Learning on Apache® Spark™: Workflows and Best Practices • Q & A
  • 3. Logistics • We can’t hear you… • Recording will be available... • Slides and Notebooks will be available... • Queue up Questions …. • Orange Button for Tech Support difficulties...
  • 4. Empower anyone to innovate faster with big data. Founded by the creators of Apache Spark. Contributes 75%of the open source code, 10x more than any other company. VISION WHO WE ARE A data processing for data scientists, data engineers, and data analysts that simplifies that data integration, real-time experimentation, machine learning and deployment of production pipelines . PRODUCT
  • 5. A New Paradigm SECOND GENERATION THE BEST OF BOTH WORLDS Hadoop + data lake Hard to centralize data and extract value with disparate tools Virtual analytics • Holisticallyanalyze data from data warehouses, data lakes, and other data stores • Utilize a single engine for batch, ML, streaming & real-time queries • Enable enterprise-wide collaboration + FIRST GENERATION Data warehouses ETL process is rigid, scaling out is expensive, limited to SQL
  • 6. CLUSTER TUNING & MANAGEMENT INTERACTIVE WORKSPACE PRODUCTION PIPELINE AUTOMATION OPTIMIZED DATA ACCESS DATABRICKS ENTERPRISE SECURITY YOUR TEAMS Data Science Data Engineering Many others… BI Analysts YOUR DATA Cloud Storage Data Warehouses Data Lake VIRTUAL ANALYTICS PLATFORM
  • 7. Deep Learning on Apache® Spark™: Workflows and Best Practices Tim Hunter (Software Engineer) May 4 , 2017
  • 8. About Me • Tim Hunter • Software engineer @ Databricks • Ph.D. from UC Berkeley in Machine Learning • Very early Spark user • Contributor to MLlib • Author of TensorFrames and GraphFrames
  • 9. Deep Learning and Apache Spark Deep Learning frameworks w/ Spark bindings • Caffe (CaffeOnSpark) • Keras (Elephas) • MXNet • Paddle • TensorFlow(TensorFlowOnSpark,TensorFrames) Extensions to Spark for specialized hardware • Blaze (UCLA & Falcon Computing Solutions) • IBM Conductor with Spark Native Spark • BigDL • DeepDist • DeepLearning4J • MLlib • SparkCL • SparkNet
  • 10. Deep Learning and Apache Spark 2016: the year of emerging solutions for Spark + Deep Learning No consensus • Many approaches for libraries: integrate existing ones with Spark, build on top of Spark, modify Spark itself • Official Spark MLlib support is limited(perceptron-like networks)
  • 11. One Framework to Rule Them All? Should we look for The One Deep Learning Framework?
  • 12. Databricks’ perspective • Databricks: hosted Spark platform on public cloud • GPUs for compute-intensive workloads • Customers use many Deep Learning frameworks: TensorFlow, MXNet, BigDL, Theano, Caffe, and more This talk • Lessons learned from supporting many Deep Learning frameworks • Multiple ways to integrate Deep Learning & Spark • Best practices for these integrations
  • 13. Outline • Deep Learning in data pipelines • Recurring patterns in Spark + Deep Learning integrations • Developer tips • Monitoring
  • 14. Outline • Deep Learning in data pipelines • Recurring patterns in Spark + Deep Learning integrations • Developer tips • Monitoring
  • 15. ML is a small part of data pipelines. Hidden technical debt in Machine Learning systems Sculley et al., NIPS 2016
  • 16. DL in a data pipeline: Training Data collection ETL Featurization Deep Learning Validation Export, Serving compute intensive IO intensiveIO intensive Large cluster High memory/CPU ratio Small cluster Low memory/CPU ratio
  • 17. DL in a data pipeline: Transformation Specialized data transforms: feature extraction & prediction Input Output cat dog dog Saulius Garalevicius - CC BY-SA3.0
  • 18. Outline • Deep Learning in data pipelines • Recurringpatterns in Spark + Deep Learning integrations • Developer tips • Monitoring
  • 19. Recurring patterns Spark as a scheduler • Data-parallel tasks • Data stored outside Spark Embedded Deep Learning transforms • Data-parallel tasks • Data stored in DataFrames/RDDs Cooperative frameworks • Multiple passes over data • Heavy and/or specialized communication
  • 20. Streaming data through DL Primary storage choices: • Cold layer (HDFS/S3/etc.) • Local storage: files, Spark’s on-disk persistence layer • In memory: SparkRDDs or SparkDataFrames Find out if you are I/O constrained or processor-constrained • How big is your dataset? MNIST or ImageNet? If using PySpark: • All frameworks heavily optimized for diskI/O • Use Spark’s broadcastfor small datasets that fitin memory • Reading files is fast: use local files when it does not fit
  • 21. Cooperative frameworks • Use Spark for data input • Examples: • IBM GPU efforts • Skymind’s DeepLearning4J • DistML and other Parameter Server efforts RDD Partition 1 Partition n RDD Partition 1 Partition m Black box
  • 22. Cooperative frameworks • Bypass Spark for asynchronous / specific communication patterns across machines • Lose benefit of RDDs and DataFrames and reproducibility/determinism • But these guarantees are not requested anyway when doing deep learning (stochastic gradient) • “reproducibility is worth a factor of 2” (Leon Bottou, quoted by John Langford)
  • 23. Outline • Deep Learning in data pipelines • Recurring patterns in Spark + Deep Learning integrations • Developer tips • Monitoring
  • 24. The GPU software stack • Deep Learning commonly used with GPUs • A lot of workon Spark dependencies: • Few dependencies on local machine when compiling Spark • The build process works well in a largenumber of configurations (just scala + maven) • GPUs present challenges: CUDA, support libraries, drivers, etc. • Deep softwarestack, requires careful construction (hardware+ drivers + CUDA + libraries) • All these are expected by the user • Turnkey stacks just starting to appear
  • 25. • Provide a Docker image with all the GPU SDK • Pre-install GPU drivers on the instance Container: nvidia-docker, lxc, etc. The GPU software stack GPU hardware Linux kernel NV Kernel driver CuBLAS CuDNN Deep learning libraries (Tensorflow, etc.) JCUDA Python / JVM clients CUDA NV kernel driver (userspace interface)
  • 26. Using GPUs through PySpark • Popular choice for many independent tasks • Many DL packages have Python interfaces: TensorFlow, Theano, Caffe, MXNet, etc. • Lifetime for python packages: the process • Requires some configuration tweaks in Spark
  • 27. PySpark recommendation • spark.executor.cores = 1 • Gives the DL framework full access over all the resources • Important for frameworks that optimize processor pipelines
  • 28. Outline • Deep Learning in data pipelines • Recurring patterns in Spark + Deep Learning integrations • Developer tips • Monitoring
  • 30. Monitoring • How do you monitor the progress of your tasks? • It depends on the granularity • Around tasks • Inside (long-running) tasks
  • 31. Monitoring: Accumulators • Good to check throughput or failure rate • Works for Scala • Limited use for Python (for now, SPARK-2868) • No “real-time” update batchesAcc = sc.accumulator(1) def processBatch(i): global acc acc += 1 # Process image batch here images = sc.parallelize(…) images.map(processBatch).collect()
  • 32. Monitoring: external system • Plugs into an external system • Existing solutions: Grafana, Graphite, Prometheus, etc. • Most flexible, but more complex to deploy
  • 33. Conclusion • Distributed deep learning: exciting and fast-moving space • Most insights are specific to a task, a dataset and an algorithm: nothing replaces experiments • Get started with data-parallel jobs • Move to cooperative frameworks only when your data are too large.
  • 34. Challenges to address For Spark developers • Monitoringlong-running tasks • Presentingand introspecting intermediate results For DL developers • What boundary to put between the algorithm and Spark? • How to integrate with Spark at the low-level?
  • 35. Resources Recent blog posts — http://databricks.com/blog • TensorFrames • GPU acceleration • Getting started with Deep Learning • Intel’s BigDL Docs for Deep Learning on Databricks — http://docs.databricks.com • Getting started • Spark integration
  • 36. SPARK SUMMIT 2017 DATA SCIENCE AND ENGINEERING AT SCALE JUNE 5 – 7 | MOSCONE CENTER | SAN FRANCISCO ORGANIZED BY spark-summit.org/2017