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Supercharging R with
Apache Spark
Hossein Falaki
@mhfalaki
About Apache Spark and Databricks
Apache Spark is a general distributed computing engine that unifies:
•  Real-time streaming (Spark Streaming)
•  Machine learning (SparkML/MLLib)
•  SQL (SparkSQL)
•  Graph processing (GraphX)
Databricks Inc. is a company founded by creators of Spark focused on
making big data simple by offering an end to end data processing
platform in the cloud
2
What is R?
Language and runtime
The corner stone of R is the
data frame concept
3
Many data scientists love R
4
•  Open source
•  Highly dynamic
•  Interactive environment
•  Rich ecosystem of packages
•  Powerful visualization infrastructure
•  Data frames make data manipulation convenient
•  Taught by many schools to stats and computing students
Performance Limitations of R
R language
•  R’s dynamic design imposes restrictions on optimization
R runtime
•  Single threaded
•  Everything has to fit in memory
5
What would be ideal?
Seamless manipulation and analysis of very large data in R
•  R’s flexible syntax
•  R’s rich package ecosystem
•  R’s interactive environment
•  Scalability (scale up and out)
•  Integration with distributed data sources / storage
6
Augmenting R with other frameworks
In practice data scientists use R in conjunction with other frameworks
(Hadoop MR, Hive, Pig, Relational Databases, etc)
7
Framework	
  X	
  
(Language	
  Y)	
  
Distributed	
  
Storage	
  
1.	
  Load,	
  clean,	
  transform,	
  aggregate,	
  sample	
  
Local	
  
Storage	
  
2.	
  Save	
  to	
  local	
  storage	
   3.	
  Read	
  and	
  analyze	
  in	
  R	
  
Iterate	
  
What is SparkR?
An R package distributed with Apache Spark:
•  Provides R frontend to Spark
•  Exposes Spark Dataframes (inspired by R and Pandas)
•  Convenient interoperability between R and Spark DataFrames
8
+	
  distributed/robust	
  processing,	
  data	
  
sources,	
  off-­‐memory	
  data	
  structures	
  
Spark	
  
Dynamic	
  environment,	
  interacJvity,	
  
packages,	
  visualizaJon	
  
R	
  
How does SparkR solve our problems?
No local storage involved
Write everything in R
Use Spark’s distributed cache for interactive/iterative analysis at speed
of thought
9
Local	
  
Storage	
  
2.	
  Save	
  to	
  local	
  storage	
   3.	
  Read	
  and	
  analyze	
  in	
  R	
  
Framework	
  X	
  
(Language	
  Y)	
  
Distributed	
  
Storage	
  
1.	
  Load,	
  clean,	
  transform,	
  aggregate,	
  sample	
  
Iterate	
  
Example SparkR program
# Loading distributed data
df <- read.df(“hdfs://bigdata/logs”, source = “json”)

# Distributed filtering and aggregation
errors <- subset(df, df$type == “error”)
counts <- agg(groupBy(errors, df$code), num = count(df$code))

# Collecting and plotting small data
qplot(code, num, data = collect(counts), geom = "bar", stat =
"identity") + coord_flip()
10
Overview of SparkR API
IO
•  read.df / write.df
•  createDataFrame
Caching
•  cache / persist / unpersist
•  cacheTable / uncacheTable
Utility functions
•  dim / head / take 
•  names / rand / sample 
11
ML Lib
•  glm / predict
DataFrame API
select / subset / groupBy 
head / collect / showDF 
unionAll / agg / avg / column
SQL 
sql / table / saveAsTable
registerTempTable / tables
SparkR architecture
12
Spark	
  Driver	
  
R	
   	
  	
  	
  	
  	
  	
  	
  JVM	
  
R	
  Backend	
   JVM	
  
Worker	
  
JVM	
  
Worker	
  
Data	
  Sources	
  
Moving data between R and JVM
13
R	
   	
  	
  	
  	
  	
  	
  	
  JVM	
  
R	
  Backend	
  
SparkR::collect()	
  
SparkR::createDataFrame()	
  
Moving data between R and JVM
14
R	
   	
  	
  	
  	
  	
  	
  	
  JVM	
  
R	
  Backend	
  
JVM	
  
Worker	
  
JVM	
  
Worker	
  
HDFS/S3/…	
  
FUSE	
  
Moving between languages (notebooks)
15
R Scala
Spark	
  
df <- read.df(…)

wiki <- filter(df, …)

registerTempTable(wiki,
“wiki”)
val wiki = table(“wiki”)

val parsed = recent.map {
Row(_, _, text: String,
_, _) =>text.split(‘ ’)
}

val model =
Kmeans.train(parsed)
Example use case: exploratory analysis
•  Data pipeline implemented in Scala/Python
•  New files are appended to existing data partitioned by time
•  Table scheme is saved in Hive metastore
•  Data scientists use SparkR to analyze and visualize data
1.  refreshTable(sqlConext, “logsTable”)
2.  logs <- table(sqlContext, “logsTable”)
3.  Iteratively analyze/aggregate/visualize using Spark & R DataFrames
4.  Publish/share results
16
Demo
17
Summary
1.  SparkR is an R frontend to Apache Spark
2.  Distributed data resides in the JVM
3.  Workers are not running R process (yet)
4.  Distinction between Spark DataFrames and R data frames
18
Further pointers
http://spark.apache.org
http://www.r-project.org
http://www.ggplot2.org
https://cran.r-project.org/web/packages/magrittr
https://databricks.com/blog/2015/09/22/large-scale-topic-modeling-
improvements-to-lda-on-spark.html
www.databricks.com
Office hour: 2:55 – 3:35 at Table A (O’Reilly Booth) / Databricks booth
19
Thank you

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Strata NYC 2015 - Supercharging R with Apache Spark

  • 1. Supercharging R with Apache Spark Hossein Falaki @mhfalaki
  • 2. About Apache Spark and Databricks Apache Spark is a general distributed computing engine that unifies: •  Real-time streaming (Spark Streaming) •  Machine learning (SparkML/MLLib) •  SQL (SparkSQL) •  Graph processing (GraphX) Databricks Inc. is a company founded by creators of Spark focused on making big data simple by offering an end to end data processing platform in the cloud 2
  • 3. What is R? Language and runtime The corner stone of R is the data frame concept 3
  • 4. Many data scientists love R 4 •  Open source •  Highly dynamic •  Interactive environment •  Rich ecosystem of packages •  Powerful visualization infrastructure •  Data frames make data manipulation convenient •  Taught by many schools to stats and computing students
  • 5. Performance Limitations of R R language •  R’s dynamic design imposes restrictions on optimization R runtime •  Single threaded •  Everything has to fit in memory 5
  • 6. What would be ideal? Seamless manipulation and analysis of very large data in R •  R’s flexible syntax •  R’s rich package ecosystem •  R’s interactive environment •  Scalability (scale up and out) •  Integration with distributed data sources / storage 6
  • 7. Augmenting R with other frameworks In practice data scientists use R in conjunction with other frameworks (Hadoop MR, Hive, Pig, Relational Databases, etc) 7 Framework  X   (Language  Y)   Distributed   Storage   1.  Load,  clean,  transform,  aggregate,  sample   Local   Storage   2.  Save  to  local  storage   3.  Read  and  analyze  in  R   Iterate  
  • 8. What is SparkR? An R package distributed with Apache Spark: •  Provides R frontend to Spark •  Exposes Spark Dataframes (inspired by R and Pandas) •  Convenient interoperability between R and Spark DataFrames 8 +  distributed/robust  processing,  data   sources,  off-­‐memory  data  structures   Spark   Dynamic  environment,  interacJvity,   packages,  visualizaJon   R  
  • 9. How does SparkR solve our problems? No local storage involved Write everything in R Use Spark’s distributed cache for interactive/iterative analysis at speed of thought 9 Local   Storage   2.  Save  to  local  storage   3.  Read  and  analyze  in  R   Framework  X   (Language  Y)   Distributed   Storage   1.  Load,  clean,  transform,  aggregate,  sample   Iterate  
  • 10. Example SparkR program # Loading distributed data df <- read.df(“hdfs://bigdata/logs”, source = “json”) # Distributed filtering and aggregation errors <- subset(df, df$type == “error”) counts <- agg(groupBy(errors, df$code), num = count(df$code)) # Collecting and plotting small data qplot(code, num, data = collect(counts), geom = "bar", stat = "identity") + coord_flip() 10
  • 11. Overview of SparkR API IO •  read.df / write.df •  createDataFrame Caching •  cache / persist / unpersist •  cacheTable / uncacheTable Utility functions •  dim / head / take •  names / rand / sample 11 ML Lib •  glm / predict DataFrame API select / subset / groupBy head / collect / showDF unionAll / agg / avg / column SQL sql / table / saveAsTable registerTempTable / tables
  • 12. SparkR architecture 12 Spark  Driver   R                JVM   R  Backend   JVM   Worker   JVM   Worker   Data  Sources  
  • 13. Moving data between R and JVM 13 R                JVM   R  Backend   SparkR::collect()   SparkR::createDataFrame()  
  • 14. Moving data between R and JVM 14 R                JVM   R  Backend   JVM   Worker   JVM   Worker   HDFS/S3/…   FUSE  
  • 15. Moving between languages (notebooks) 15 R Scala Spark   df <- read.df(…) wiki <- filter(df, …) registerTempTable(wiki, “wiki”) val wiki = table(“wiki”) val parsed = recent.map { Row(_, _, text: String, _, _) =>text.split(‘ ’) } val model = Kmeans.train(parsed)
  • 16. Example use case: exploratory analysis •  Data pipeline implemented in Scala/Python •  New files are appended to existing data partitioned by time •  Table scheme is saved in Hive metastore •  Data scientists use SparkR to analyze and visualize data 1.  refreshTable(sqlConext, “logsTable”) 2.  logs <- table(sqlContext, “logsTable”) 3.  Iteratively analyze/aggregate/visualize using Spark & R DataFrames 4.  Publish/share results 16
  • 18. Summary 1.  SparkR is an R frontend to Apache Spark 2.  Distributed data resides in the JVM 3.  Workers are not running R process (yet) 4.  Distinction between Spark DataFrames and R data frames 18