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I am working on a time series forecasting project on R. However I need to fetch my data from the tables located in Hadoop environment. I am using Sparklyr to reach these tables. But I realized a strange problem after finishing data transfer.

My date column shifts by one day and I see 27.03.2017's data in the row representing 26.03.2017.

sc <- spark_connect(master = "yarn-client", 
                    spark_home = "/usr/hdp/current/spark2-client/",
                    config = conf)

invoke(hive_context(sc), "sql", "USE mydb")

data <- tbl(sc, 'mydata_raw')
data.df <- data.frame(data)
filter(data.df, date == "2018-05-05")


          date        unit 
         <date>       <int>                 
1        2018-05-04   1111 

In my hive tables there is no such problem.

  • 1
    I don't know Sparklyr but first thing I would check is if the time zones differ. – JBGruber Mar 18 at 13:13
  • I have checked that. My R session and Hive nodes share same timezone. I am not sure if there is a problem related with time zone. – omzeybek Mar 18 at 13:36
  • 1
    Do you experience the same issue when you use Apache Spark directly (let's say with Scala or Python API), or is it something that happens only in sparklyr? Additionally how did you create the table in Hive? Could your provide corresponding DDL statement and Spark-side schema? – user10938362 Mar 18 at 19:44
  • I do not experience same problem when I used pyspark. It happens only in sparklyr. I transfer data to HDFS by Kylo, then create table in Hive. Do you mean the statement, I used to create the table in Hive. If so, this is the code CREATE TABLE mydb.mydata_raw ( date DATE, unit INT ) ROW FORMAT DELIMITED FIELDS TERMINATED BY '\u003B' STORED AS TEXTFILE location '/mypath/myfolder' TBLPROPERTIES("orc.compress"="snappy"); – omzeybek Mar 19 at 6:51
  • 1
    I cannot reproduce that, but it is definitely not the expected behavior, so I recommend visiting sparklyr bug tracker and creating an issue. This issue has been raised on SO before, but never (AFAIK) seen outside sparklyr. To further assign the blame you can check filter(data.df, date == "2018-05-05") %>% spark_dataframe() %>% invoke("show") and then spark_log(sc) to see if native Spark output looks OK. If you decide to open an issue please drop by, and leave an edit / comment with the link. – user10938362 Mar 19 at 10:56

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