Spark Summit Europe Roundup

The 2015 Spark Summit Europe met in Amsterdam October 27-29.  Here is a roundup of the presentations, organized by subject areas.   I’ve omitted a few less interesting presentations, including some advertorials from sponsors.

State of Spark

— In his keynoter, Matei Zaharia recaps findings from Databricks’ Spark user survey, notes growth in summit attendance, meetup membership and contributor headcount.  (Video here). Enhancements expected for Spark 1.6:

  • Dataset API
  • DataFrame integration for GraphX, Streaming
  • Project Tungsten: faster in-memory caching, SSD storage, improved code generation
  • Additional data sources for Streaming

— Databricks co-founder Reynold Xin recaps the last twelve months of Spark development.  New user-facing developments in the past twelve months include:

  • DataFrames
  • Data source API
  • R binding and machine learning pipelines

Back-end developments include:

  • Project Tungsten
  • Sort-based shuffle
  • Netty-based network

Of these, Xin covers DataFrames and Project Tungsten in some detail.  Looking ahead, Xin discusses the Dataset API, Streaming DataFrames and additional Project Tungsten work.  Video here.

Getting Into Production

— Databricks engineer and Spark committer Aaron Davidson summarizes common issues in production and offers tips to avoid them.  Key issues: moving beyond Python performance; using Spark with R; network and CPU-bound workloads.  Video here.

— Tuplejump’s Evan Chan summarizes Spark deployment options and explains how to productionize Spark, with special attention to the Spark Job Server.  Video here.

— Spark committer and Databricks engineer Andrew Or explains how to use the Spark UI to visualize and debug performance issues.  Video here.

— Kostas Sakellis and Marcelo Vanzin of Cloudera provide a comprehensive overview of Spark security, covering encryption, authentication, delegation and authorization.  They tout Sentry, Cloudera’s preferred security platform.  Video here.

Spark for the Enterprise

— Revisting Matthew Glickman’s presentation at Spark Summit East earlier this year, Vinny Saulys reviews Spark’s impact at Goldman Sachs, noting the attractiveness of Spark’s APIs, in-memory processing and broad functionality.  He recaps Spark’s viral adoption within GS, and its broad use within the company’s data science toolkit.  His wish list for Spark: continued development of the DataFrame API; more built-in formulae; and a better IDE for Spark.  Video here.

— Alan Saldich summarizes Cloudera’s two years of experience working with Spark: a host of engineering contributions and 200+ customers (including Equifax, Barclays and a slide full of others).  Video here.  Key insights:

  • Prediction is the most popular use case
  • Hive is most frequently co-installed, followed by HBase, Impala and Solr.
  • Customers want security and performance comparable to leading relational databases combined with simplicity.

Data Sources and File Systems

— Stephan Kessler of SAP and Santiago Mola of Stratio explain Spark integration with SAP HANA Vora through the Data Sources API.  (Video unavailable).

— Tachyon Nexus’ Gene Pang offers an excellent overview of Tachyon’s memory-centric storage architecture and how to use Spark with Tachyon.  Video here.

Spark SQL and DataFrames

— Michael Armbrust, lead developer for Spark SQL, explains DataFrames.  Good intro for those unfamiliar with the feature.  Video here.

— For those who think you can’t do fast SQL without a Teradata box, Gianmario Spacagna showcases the Insight Engine, an application built on Spark.  More detail about the use case and solution here.  The application, which requires many very complex queries, runs 500 times faster on Spark than on Hive, and likely would not run at all on Teradata.  Video here.

— Informatica’s Kiran Lonikar summarizes a proposal to use GPUs to support columnar data frames.  Video here.

— Ema Orhian of Atigeo describes jaws, a restful data warehousing framework built on Spark SQL with Mesos and Tachyon support.  Video here.

Spark Streaming

— Helena Edelson, VP of Product Engineering at Tuplejump, offers a comprehensive overview of streaming analytics with Spark, Kafka, Cassandra and Akka.  Video here.

— Francois Garillot of Typesafe and Gerard Maas of virdata explain and demo Spark Streaming.    Video here.

— Iulian Dragos and Luc Bourlier explain how to leverage Mesos for Spark Streaming applications.  Video here.

Data Science and Machine Learning

— Apache Zeppelin creator and NFLabs co-founder Moon Soo Lee reviews the Data Science lifecycle, then demonstrates how Zeppelin supports development and collaboration through all phases of a project.  Video here.

— Alexander Ulanov, Senior Research Scientist at Hewlett-Packard Labs, describes his work with Deep Learning, building on MLLib’s multilayer perceptron capability.  Video here.

— Databricks’ Hossein Falaki offers an introduction to R’s strengths and weaknesses, then dives into SparkR.  He provides an overview of SparkR architecture and functionality, plus some pointers on mixing languages.  The SparkR roadmap, he notes, includes expanded MLLib functionality; UDF support; and a complete DataFrame API.  Finally, he demos SparkR and explains how to get started.  Video here.

— MLlib committer Joseph Bradley explains how to combine the strengths R, scikit-learn and MLlib.  Noting the strengths of R and scikit-learn libraries, he addresses the key question: how do you leverage software built to support single-machine workloads in a distributed computing environment?   Bradley demonstrates how to do this with Spark, using sentiment analysis as an example.  Video here.

— Natalino Busa of ING offers an introduction to real-time anomaly detection with Spark MLLib, Akka and Cassandra.  He describes different methods for anomaly detection, including distance-based and density-based techniques. Video here.

— Bitly’s Sarah Guido explains topic modeling, using Spark MLLib’s Latent Dirchlet Allocation.  Video here.

— Casey Stella describes using word2vec in MLLib to extract features from medical records for a Kaggle competition.  Video here.

— Piotr Dendek and Mateusz Fedoryszak of the University of Warsaw explain Random Ferns, a bagged form of Naive Bayes, for which they have developed a Spark package. Video here.

GeoSpatial Analytics

— Ram Sriharsha touts Magellan, an open source geospatial library that uses Spark as an engine.  Magellan, a Spark package, supports ESRI format files and GeoJSON; the developers aim to support the full suite of OpenGIS Simple Features for SQL.  Video here.

Use Cases and Applications

— Ion Stoica summarizes Databricks’ experience working with hundreds of companies, distills to two generic Spark use cases:  (1) the “Just-in-Time Data Warehouse”, bypassing IT bottlenecks inherent in conventional DW; (2) the unified compute engine, combining multiple frameworks in a single platform.  Video here.

— Apache committer and SKT engineer Yousun Jeong delivers a presentation documenting SKT’s Big Data architecture and a use case real-time analytics.  SKT needs to perform real-time analysis of the radio access network to improve utilization, as well as timely network quality assurance and fault analysis; the solution is a multi-layered appliance that combines Spark and other components with FPGA and Flash-based hardware acceleration.  Video here.

— Yahoo’s Ayman Farahat describes a collaborative filtering application built on Spark that generates 26 trillion recommendations.  Training time: 52 minutes; prediction time: 8 minutes.  Video here.

— Sujit Pal explains how Elsevier uses Spark together with Solr, OpenNLP to annotate documents at scale.  Elsevier has donated the application, called SoDA, back to open source.  Video here.

— Parkinson’s Disease affects one out of every 100 people over 60, and there is no cure.  Ido Karavany of Intel describes a project to use wearables to track the progression of the illness, using a complex stack including pebble, Android, IOS, play, Phoenix, HBase, Akka, Kafka, HDFS, MySQL and Spark, all running in AWS.   With Spark, the team runs complex computations daily on large data sets, and implements a rules engine to identify changes in patient behavior.  Video here.

— Paula Ta-Shma of IBM introduces a real-time routing use case from the Madrid bus system, then describes a solution that includes kafka, Secor, Swift, Parquet and elasticsearch for data collection; Spark SQL and MLLib for pattern learning; and a complex event processing engine for application in real time.  Video here.

Spark Summit 2015: Preliminary Report

So I guess Spark really is enterprise ready.  Nick Heudecker, call your office.

There are several key themes coming from the Summit:

Spark Continues to Mature

Spark and its contributors deserve a round of applause.  Some key measures of growth since the 2014 Summit:

  • Contributor headcount increased from 255 to 730
  • Committed lines of code increased from 175K to 400K

There is increasing evidence of Spark’s scalability:

  • Largest cluster: 8,000 nodes
  • Largest job: 1 petabyte
  • Top streaming intake: 1TB/hour

Project Tungsten aims to make Spark faster and prepare for the next five years; the project has already accomplished significant performance improvements through better use of memory and CPU.

IBM and Spark

IBM drops the big one with its announcement.  Key bits from the announcement:

  • IBM will build Spark into the core of its analytic and commerce products, including IBM Watson Health Cloud
  • IBM will open source its machine learning library (System ML) and work with Databricks to port it to Spark.
  • IBM will offer Spark as a Cloud service on Bluemix.
  • IBM will commit 3,500 developers to Spark-related projects.
  • IBM (and its partners) will train more than a million people on Spark

I will post separately on this next week

Spark is Enterprise-Ready

If IBM’s announcement is not sufficient to persuade skeptics, presentations from Adobe, Airbnb, Baidu, Capital One, CIA, NASA/JPL, NBC Universal, Netflix, Thompson Reuters, Toyota and many others demonstrate that Spark already supports enterprise-level workloads.

In one of the breakouts, Arsalan Tavakoli-Shiraji of Databricks presented results from his analysis of more than 150 production deployments of Spark.  As expected, organizations use Spark for BI and advanced analytics; the big surprise is that 60% use non-HDFS data sources.  These organizations use Spark for data consolidation on the fly, decoupling compute from storage, with unification taking place on the processing layer.

Databricks Cloud is GA

Enough said.

SparkR

Spark 1.4 includes R bindings, opening Spark to the large community of R users.  Out of the gate, the R interface enables the R user to leverage Spark DataFrames; the Spark team plans to extend the capability to include machine learning APIs in Spark 1.5.

Spark’s Expanding Ecosystem

Every major Hadoop distributor showed up this year, but there were no major announcements from the distributors (other than IBM’s bombshell).

In other developments:

  • Amazon Web Services announced availability of a new Spark on EMR service
  • Intel announced a new Streaming SQL project for Spark
  • Lucidworks showcased its Fusion product, with Spark embedded
  • Alteryx announced its plans to integrate with Spark in its Release 10

One interesting footnote — while there were a number of presentations about Tachyon last year, there were none this year.

These are just the key themes.  I’ll publish a more detailed story next week.