20

How to read partitioned parquet with condition as dataframe,

this works fine,

val dataframe = sqlContext.read.parquet("file:///home/msoproj/dev_data/dev_output/aln/partitions/data=jDD/year=2015/month=10/day=25/*")

Partition is there for day=1 to day=30 is it possible to read something like(day = 5 to 6) or day=5,day=6,

val dataframe = sqlContext.read.parquet("file:///home/msoproj/dev_data/dev_output/aln/partitions/data=jDD/year=2015/month=10/day=??/*")

If I put * it gives me all 30 days data and it too big.

58
+50

sqlContext.read.parquet can take multiple paths as input. If you want just day=5 and day=6, you can simply add two paths like:

val dataframe = sqlContext
      .read.parquet("file:///your/path/data=jDD/year=2015/month=10/day=5/", 
                    "file:///your/path/data=jDD/year=2015/month=10/day=6/")

If you have folders under day=X, like say country=XX, country will automatically be added as a column in the dataframe.

EDIT: As of Spark 1.6 one needs to provide a "basepath"-option in order for Spark to generate columns automatically. In Spark 1.6.x the above would have to be re-written like this to create a dataframe with the columns "data", "year", "month" and "day":

val dataframe = sqlContext
     .read
     .option("basePath", "file:///your/path/")
     .parquet("file:///your/path/data=jDD/year=2015/month=10/day=5/", 
                    "file:///your/path/data=jDD/year=2015/month=10/day=6/")
  • First thanks for response, I was looking for more simple way. In case some 20 days as subset this way will be kind of difficult. I would be filtering often to check the data accuracy. – WoodChopper Nov 11 '15 at 17:50
  • 1
    Then why not simply do val dataframe = sqlContext.read.parquet("file:///your/path/data=jDD/year=2015/month=10/")? day` is added as a column in the dataframe, which you can then filter on. – Glennie Helles Sindholt Nov 11 '15 at 18:18
  • Actually, it very huge data running. Data is from 2007 to 2015. On an average 5 billion row of raw logs are processed and stored. I would be asked for particular data report on demand – WoodChopper Nov 11 '15 at 18:21
  • 4
    Right, so the first thing you do is a filter operation. Since Spark does lazy evaluation you should have no problems with the size of the data set. The filter will be applied before any actions and only the data you are interested in will be kept in memory. – Glennie Helles Sindholt Nov 11 '15 at 19:05
  • Well it seems only answer is this! – WoodChopper Nov 26 '15 at 8:04
15

If you want to read for multiple days, for example day = 5 and day = 6 and want to mention the range in the path itself, wildcards can be used:

val dataframe = sqlContext
  .read
  .parquet("file:///your/path/data=jDD/year=2015/month=10/day={5,6}/*")

Wildcards can also be used to specify a range of days:

val dataframe = sqlContext
  .read
  .parquet("file:///your/path/data=jDD/year=2015/month=10/day=[5-10]/*")

This matches all days from 5 to 10.

  • Is this exclusively for scala? I'm trying it with pyspark, it works with {} notation but not []. I'm trying to read in a range. – Auren Ferguson Jul 29 at 13:10
5

you need to provide mergeSchema = true option. like mentioned below (this is from 1.6.0):

val dataframe = sqlContext.read.option("mergeSchema", "true").parquet("file:///your/path/data=jDD")

This will read all the parquet files into dataframe and also creates columns year, month and day in the dataframe data.

Ref: https://spark.apache.org/docs/1.6.0/sql-programming-guide.html#schema-merging

  • 1
    Schema Merging is only required if the schema's are different, if they are the same then you do not need this. – mightymephisto Feb 18 '17 at 10:58

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