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Uwe L. Korn
PyData Paris 14th June 2016
How Apache Arrow and Parquet
boost cross-language interop
About me
• Data Scientist at Blue Yonder (@BlueYonderTech)
• We optimize Replenishment and Pricing for the Retail
industry with Predictive Analytics
• Contributor to Apache {Arrow, Parquet}
• Work in Python, Cython, C++11 and SQL
Agenda
The Problem
Arrow
Parquet
Outlook
Why is columnar better?
Image source: https://arrow.apache.org/img/simd.png ( https://arrow.apache.org/ )
Different Systems - Varying
Python Support
• Various levels of Python Support
• Build in Python
• Python API
• No Python at all
• Each tool/algorithm works on
columnar data
• Separate conversion routines for
each pair
• causes overhead
• there’s no one-size-fits-all solution
Image source: https://arrow.apache.org/img/copy2.png ( https://arrow.apache.org/ )
Apache Arrow
• Specification for in-memory
columnar data layout
• No overhead for cross-system /
cross-language communication
• Designed for efficiency (exploit
SIMD, cache locality, ..)
• Supports nested data structures
Image source: https://arrow.apache.org/img/shared2.png ( https://arrow.apache.org/ )
Apache Arrow - The Impact
• An example: Retrieve a dataset from an MPP database
and analyze it in Pandas
• Run a query in the DB
• Pass it in columnar form to the DB driver
• The OBDC layer transform it into row-wise form
• Pandas makes it columnar again
• Ugly real-life solution: export as CSV, bypass ODBC
• In future: Use Arrow as interface between the DB and
Pandas
Apache Arrow
• Top-level Apache project from the beginning
• Not only a specification: also includes C++ / Java /
Python / .. code.
• Arrow structures / classes
• RPC (upcoming) & IPC (alpha) support
• Conversion code for Parquet, Pandas, ..
• Combined effort from developer of over 13 major OSS
projects
• Impala, Kudu, Spark, Cassandra, Drill, Pandas, R, ..
• Spec: https://github.com/apache/arrow/blob/master/format/Layout.md
Arrow in Action: Feather
• Language-agnostic file format for
binary data frame storage
• Read performance close to raw
disk I/O
• by Wes McKinney (Python) and
Hadley Wickham (R)
• Julia Support in progress
Arrow Arrays
Feather Metadata
(flatbuffers)
Apache Parquet
Apache Parquet
• Binary file format for nested columnar data
• Inspired from Google Dremel paper
• space and query efficient
• multiple encodings
• predicate pushdown
• column-wise compression
• many tools use Parquet as the default input format
• very popular in the JVM/Hadoop-based world
The Basics
• 1 File, includes metadata
• Several row groups
• all with the same number of column chunks
• n pages per column chunk
• Benefits:
• pre-partitioned for fast distributed access
• statistics in the metadata for predicate pushdown
Blogpost by Julien Le Dem: https://blog.twitter.com/2013/dremel-made-
simple-with-parquet
File
Row Group
Column Chunk
Page
Using Parquet in Python
• You can use it already today with Python:
• sqlContext.read.parquet(“..“).toPandas()	
• Needs to pass through Spark, very slow
• Native Python support on its way:
• Parquet I/O to Arrow
• Arrow provides NumPy conversion
State of Arrow & Parquet
Arrow
in-memory spec for columnar data
• Java (beta)
• C++ (in progress)
• Python (in progress)
• Planned:
• Julia
• R
Parquet
columnar on-disk storage
• Java (mature)
• C++ (in progress)
• Python (in progress)
• Planned:
• Julia
• R
Upcoming
• Parquet <-Arrow-> Pandas
• IPC on its way
• alpha implementation using memory mapped files
• JVM <-> native with shared reference counting
Get Involved!
• dev@arrow.apache.org & dev@parquet.apache.org
• https://apachearrowslackin.herokuapp.com/
• https://arrow.apache.org/
• https://parquet.apache.org/
• @ApacheArrow & @ApacheParquet
Questions ?!

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How Apache Arrow and Parquet boost cross-language interoperability

  • 1. Uwe L. Korn PyData Paris 14th June 2016 How Apache Arrow and Parquet boost cross-language interop
  • 2. About me • Data Scientist at Blue Yonder (@BlueYonderTech) • We optimize Replenishment and Pricing for the Retail industry with Predictive Analytics • Contributor to Apache {Arrow, Parquet} • Work in Python, Cython, C++11 and SQL
  • 4. Why is columnar better? Image source: https://arrow.apache.org/img/simd.png ( https://arrow.apache.org/ )
  • 5. Different Systems - Varying Python Support • Various levels of Python Support • Build in Python • Python API • No Python at all • Each tool/algorithm works on columnar data • Separate conversion routines for each pair • causes overhead • there’s no one-size-fits-all solution Image source: https://arrow.apache.org/img/copy2.png ( https://arrow.apache.org/ )
  • 6. Apache Arrow • Specification for in-memory columnar data layout • No overhead for cross-system / cross-language communication • Designed for efficiency (exploit SIMD, cache locality, ..) • Supports nested data structures Image source: https://arrow.apache.org/img/shared2.png ( https://arrow.apache.org/ )
  • 7. Apache Arrow - The Impact • An example: Retrieve a dataset from an MPP database and analyze it in Pandas • Run a query in the DB • Pass it in columnar form to the DB driver • The OBDC layer transform it into row-wise form • Pandas makes it columnar again • Ugly real-life solution: export as CSV, bypass ODBC • In future: Use Arrow as interface between the DB and Pandas
  • 8. Apache Arrow • Top-level Apache project from the beginning • Not only a specification: also includes C++ / Java / Python / .. code. • Arrow structures / classes • RPC (upcoming) & IPC (alpha) support • Conversion code for Parquet, Pandas, .. • Combined effort from developer of over 13 major OSS projects • Impala, Kudu, Spark, Cassandra, Drill, Pandas, R, .. • Spec: https://github.com/apache/arrow/blob/master/format/Layout.md
  • 9. Arrow in Action: Feather • Language-agnostic file format for binary data frame storage • Read performance close to raw disk I/O • by Wes McKinney (Python) and Hadley Wickham (R) • Julia Support in progress Arrow Arrays Feather Metadata (flatbuffers)
  • 11. Apache Parquet • Binary file format for nested columnar data • Inspired from Google Dremel paper • space and query efficient • multiple encodings • predicate pushdown • column-wise compression • many tools use Parquet as the default input format • very popular in the JVM/Hadoop-based world
  • 12. The Basics • 1 File, includes metadata • Several row groups • all with the same number of column chunks • n pages per column chunk • Benefits: • pre-partitioned for fast distributed access • statistics in the metadata for predicate pushdown Blogpost by Julien Le Dem: https://blog.twitter.com/2013/dremel-made- simple-with-parquet File Row Group Column Chunk Page
  • 13. Using Parquet in Python • You can use it already today with Python: • sqlContext.read.parquet(“..“).toPandas() • Needs to pass through Spark, very slow • Native Python support on its way: • Parquet I/O to Arrow • Arrow provides NumPy conversion
  • 14. State of Arrow & Parquet Arrow in-memory spec for columnar data • Java (beta) • C++ (in progress) • Python (in progress) • Planned: • Julia • R Parquet columnar on-disk storage • Java (mature) • C++ (in progress) • Python (in progress) • Planned: • Julia • R
  • 15. Upcoming • Parquet <-Arrow-> Pandas • IPC on its way • alpha implementation using memory mapped files • JVM <-> native with shared reference counting
  • 16. Get Involved! • dev@arrow.apache.org & dev@parquet.apache.org • https://apachearrowslackin.herokuapp.com/ • https://arrow.apache.org/ • https://parquet.apache.org/ • @ApacheArrow & @ApacheParquet