I have a dataframe of

date, string, string

I want to select dates before a certain period. I have tried the following with no luck

 data.filter(data("date") < new java.sql.Date(format.parse("2015-03-14").getTime))

I'm getting an error stating the following

org.apache.spark.sql.AnalysisException: resolved attribute(s) date#75 missing from date#72,uid#73,iid#74 in operator !Filter (date#75 < 16508);

As far as I can guess the query is incorrect. Can anyone show me what way the query should be formatted?

I checked that all enteries in the dataframe have values - they do.


The following solutions are applicable since spark 1.5 :

For lower than :

// filter data where the date is lesser than 2015-03-14

For greater than :

// filter data where the date is greater than 2015-03-14

For equality, you can use either equalTo or === :

data.filter(data("date") === lit("2015-03-14"))

If your DataFrame date column is of type StringType, you can convert it using the to_date function :

// filter data where the date is greater than 2015-03-14

You can also filter according to a year using the year function :

// filter data where year is greater or equal to 2016
  • 1
    Is there any option like between for date column in spark? Also i have date in 'dd/MM/yyyy' format. – Sivailango Nov 26 '15 at 12:41
  • @Sivailango Of course, it's filter on between, check my answer here – eliasah Nov 26 '15 at 13:14
  • df.select(df("ID"), date_format(df("Week_Ending_Date"), "yyyy-MM-dd")) .filter(date_format(df("Week_Ending_Date"), "yyyy-MM-dd").between("2015-07-05", "2015-09-02")) Is it right? Also i am looking your another answer here stackoverflow.com/questions/33938806/… – Sivailango Nov 26 '15 at 13:22
  • is there any way to tell gt o lt to be like now - 5 months? or i just have to calculate that date and give it to the function as string – Raul H Oct 4 '16 at 20:41
  • If you want to use current date with date diff, comparing dates will be different. – eliasah Oct 4 '16 at 20:48

Don't use this as suggested in other answers

.filter(f.col("dateColumn") < f.lit('2017-11-01'))

But use this instead

.filter(f.col("dateColumn") < f.unix_timestamp(f.lit('2017-11-01 00:00:00')).cast('timestamp'))

This will use the TimestampType instead of the StringType, which will be more performant in some cases. For example Parquet predicate pushdown will only work with the latter.


In PySpark(python) one of the option is to have the column in unix_timestamp format.We can convert string to unix_timestamp and specify the format as shown below. Note we need to import unix_timestamp and lit function

from pyspark.sql.functions import unix_timestamp, lit

df.withColumn("tx_date", to_date(unix_timestamp(df_cast["date"], "MM/dd/yyyy").cast("timestamp")))

Now we can apply the filters

df_cast.filter(df_cast["tx_date"] >= lit('2017-01-01')) \
       .filter(df_cast["tx_date"] <= lit('2017-01-31')).show()

I find the most readable way to express this is using a sql expression:

df.filter("my_date < date'2015-01-01'")

we can verify this works correctly by looking at the physical plan from .explain()

+- *(1) Filter (isnotnull(my_date#22) && (my_date#22 < 16436))
  • 1
    This didn't work for me, but .filter("effectivedate > to_date('1900-02-02')") did work (for the situation related to me). Most likely I need some library loaded for the given solution to work. But all in all this was the best answer. – Harlan Nelson Apr 7 at 13:53
  • Strange - it should work in vanilla pyspark. – RobinL Apr 7 at 15:52

We can also use SQL kind of expression inside filter :

Note -> Here I am showing two conditions and a date range for future reference :

ordersDf.filter("order_status = 'PENDING_PAYMENT' AND order_date BETWEEN '2013-07-01' AND '2013-07-31' ")

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.