170

Right now, I have to use df.count > 0 to check if the DataFrame is empty or not. But it is kind of inefficient. Is there any better way to do that?

PS: I want to check if it's empty so that I only save the DataFrame if it's not empty

18 Answers 18

217
+50

For Spark 2.1.0, my suggestion would be to use head(n: Int) or take(n: Int) with isEmpty, whichever one has the clearest intent to you.

df.head(1).isEmpty
df.take(1).isEmpty

with Python equivalent:

len(df.head(1)) == 0  # or bool(df.head(1))
len(df.take(1)) == 0  # or bool(df.take(1))

Using df.first() and df.head() will both return the java.util.NoSuchElementException if the DataFrame is empty. first() calls head() directly, which calls head(1).head.

def first(): T = head()
def head(): T = head(1).head

head(1) returns an Array, so taking head on that Array causes the java.util.NoSuchElementException when the DataFrame is empty.

def head(n: Int): Array[T] = withAction("head", limit(n).queryExecution)(collectFromPlan)

So instead of calling head(), use head(1) directly to get the array and then you can use isEmpty.

take(n) is also equivalent to head(n)...

def take(n: Int): Array[T] = head(n)

And limit(1).collect() is equivalent to head(1) (notice limit(n).queryExecution in the head(n: Int) method), so the following are all equivalent, at least from what I can tell, and you won't have to catch a java.util.NoSuchElementException exception when the DataFrame is empty.

df.head(1).isEmpty
df.take(1).isEmpty
df.limit(1).collect().isEmpty

I know this is an older question so hopefully it will help someone using a newer version of Spark.

8
  • 42
    For those using pyspark. isEmpty is not a thing. Do len(d.head(1)) > 0 instead.
    – AntiPawn79
    Nov 21, 2017 at 16:39
  • 7
    why is this better then df.rdd.isEmpty? Jan 20, 2018 at 3:33
  • 3
    df.head(1).isEmpty is taking huge time is there any other optimized solution for this. Feb 20, 2019 at 6:26
  • 2
    Hey @Rakesh Sabbani, If df.head(1) is taking a large amount of time, it's probably because your df's execution plan is doing something complicated that prevents spark from taking shortcuts. For example, if you are just reading from parquet files, df = spark.read.parquet(...), I'm pretty sure spark will only read one file partition. But if your df is doing other things like aggregations, you may be inadvertently forcing spark to read and process a large portion, if not all, of you source data.
    – hulin003
    Mar 28, 2019 at 19:35
  • 4
    just reporting my experience to AVOID: I was using df.limit(1).count() naively. On big datasets it takes much more time than the reported examples by @hulin003 which are almost instantaneous
    – Vzzarr
    Dec 5, 2019 at 12:27
63

I would say to just grab the underlying RDD. In Scala:

df.rdd.isEmpty

in Python:

df.rdd.isEmpty()

That being said, all this does is call take(1).length, so it'll do the same thing as Rohan answered...just maybe slightly more explicit?

6
  • 9
    This is surprisingly slower than df.count() == 0 in my case Dec 2, 2015 at 12:40
  • 3
    Isn't converting to rdd a heavy task?
    – Alok
    Jan 28, 2016 at 6:42
  • 1
    Not really. RDD's still are the underpinning of everything Spark for the most part. Feb 17, 2016 at 3:13
  • 41
    Don't convert the df to RDD. It slows down the process. If you convert it will convert whole DF to RDD and check if its empty. Think if DF has millions of rows, it takes lot of time in converting to RDD itself. Nov 1, 2016 at 21:18
  • 3
    .rdd slows down so much the process like a lot
    – Raul H
    Nov 9, 2016 at 22:04
37

I had the same question, and I tested 3 main solution :

  1. (df != null) && (df.count > 0)
  2. df.head(1).isEmpty() as @hulin003 suggest
  3. df.rdd.isEmpty() as @Justin Pihony suggest

and of course the 3 works, however in term of perfermance, here is what I found, when executing the these methods on the same DF in my machine, in terme of execution time :

  1. it takes ~9366ms
  2. it takes ~5607ms
  3. it takes ~1921ms

therefore I think that the best solution is df.rdd.isEmpty() as @Justin Pihony suggest

3
  • 9
    out of curiosity... what size DataFrames was this tested with?
    – aiguofer
    Jul 6, 2020 at 16:59
  • 2
    I've tested 10 million rows... and got the same time as for df.count() or df.rdd.isEmpty() May 31, 2022 at 19:23
  • In my use case, I want to test if at least one row contains a particular string. isEmpy() is faster the majority of times since it finds at least a row and stops. When checking for a string not found in the df. Both count() and isEmpty() have to scan the whole df and then take the same time.
    – kael
    Aug 1, 2023 at 11:51
21

Since Spark 2.4.0 there is Dataset.isEmpty.

It's implementation is :

def isEmpty: Boolean = 
  withAction("isEmpty", limit(1).groupBy().count().queryExecution) { plan =>
    plan.executeCollect().head.getLong(0) == 0
}

Note that a DataFrame is no longer a class in Scala, it's just a type alias (probably changed with Spark 2.0):

type DataFrame = Dataset[Row]
4
  • 1
    isEmpty is slower than df.head(1).isEmpty
    – Sandeep540
    Oct 23, 2019 at 20:30
  • @Sandeep540 Really? Benchmark? Your proposal instantiates at least one row. The Spark implementation just transports a number. head() is using limit() as well, the groupBy() is not really doing anything, it is required to get a RelationalGroupedDataset which in turn provides count(). So that should not be significantly slower. It is probably faster in case of a data set which contains a lot of columns (possibly denormalized nested data). Anway you have to type less :-)
    – Beryllium
    Oct 24, 2019 at 11:52
  • Beware: I am using .option("mode", "DROPMALFORMED") and df.isEmpty returned false whereas df.head(1).isEmpty returned the correct result of true because... all of the rows were malformed (someone upstream changed the schema on me). Apr 8, 2022 at 15:53
  • This should be the accepted answer now with a built-in method. Jan 12 at 11:44
16

You can take advantage of the head() (or first()) functions to see if the DataFrame has a single row. If so, it is not empty.

1
  • 10
    if dataframe is empty it throws "java.util.NoSuchElementException: next on empty iterator" ; [Spark 1.3.1]
    – FelixHo
    May 26, 2016 at 3:53
13

PySpark 3.3.0+ / Scala 2.4.0+

df.isEmpty()
3
  • 'DataFrame' object has no attribute 'isEmpty'. Spark 3.0 May 31, 2022 at 19:21
  • 3
    In PySpark, it's introduced only from version 3.3.0
    – ZygD
    Jun 17, 2022 at 7:36
  • 1
    In scala current you should do df.isEmpty without parenthesis (). Nov 10, 2022 at 17:45
11

If you do df.count > 0. It takes the counts of all partitions across all executors and add them up at Driver. This take a while when you are dealing with millions of rows.

The best way to do this is to perform df.take(1) and check if its null. This will return java.util.NoSuchElementException so better to put a try around df.take(1).

The dataframe return an error when take(1) is done instead of an empty row. I have highlighted the specific code lines where it throws the error.

enter image description here

4
  • 1
    if you run this on a massive dataframe with millions of records that count method is going to take some time.
    – TheM00s3
    Nov 4, 2016 at 17:35
  • using df.take(1) when the df is empty results in getting back an empty ROW which cannot be compared with null Mar 16, 2017 at 19:45
  • i'm using first() instead of take(1) in a try/catch block and it works Mar 21, 2017 at 10:38
  • 1
    @LetsPlayYahtzee I have updated the answer with same run and picture that shows error. take(1) returns Array[Row]. And when Array doesn't have any values, by default it gives ArrayOutOfBounds. So I don't think it gives an empty Row. I would say to observe this and change the vote. Jul 3, 2017 at 22:46
7

If you are using Pyspark, you could also do:

len(df.head(1)) > 0
6

For Java users you can use this on a dataset :

public boolean isDatasetEmpty(Dataset<Row> ds) {
        boolean isEmpty;
        try {
            isEmpty = ((Row[]) ds.head(1)).length == 0;
        } catch (Exception e) {
            return true;
        }
        return isEmpty;
}

This check all possible scenarios ( empty, null ).

4

On PySpark, you can also use this bool(df.head(1)) to obtain a True of False value

It returns False if the dataframe contains no rows

4

In Scala you can use implicits to add the methods isEmpty() and nonEmpty() to the DataFrame API, which will make the code a bit nicer to read.

object DataFrameExtensions {
  implicit def extendedDataFrame(dataFrame: DataFrame): ExtendedDataFrame = 
    new ExtendedDataFrame(dataFrame: DataFrame)

  class ExtendedDataFrame(dataFrame: DataFrame) {
    def isEmpty(): Boolean = dataFrame.head(1).isEmpty // Any implementation can be used
    def nonEmpty(): Boolean = !isEmpty
  }
}

Here, other methods can be added as well. To use the implicit conversion, use import DataFrameExtensions._ in the file you want to use the extended functionality. Afterwards, the methods can be used directly as so:

val df: DataFrame = ...
if (df.isEmpty) {
  // Do something
}
0
1

If you want only to find out whether the DataFrame is empty, then df.isEmpty, df.head(1).isEmpty() or df.rdd.isEmpty() should work, these are taking a limit(1) if you examine them:

== Physical Plan ==
*(2) HashAggregate(keys=[], functions=[count(1)], output=[count#52L])
+- *(2) HashAggregate(keys=[], functions=[partial_count(1)], output=[count#60L])
   +- *(2) GlobalLimit 1
      +- Exchange SinglePartition
         +- *(1) LocalLimit 1
            ... // the rest of the plan related to your computation

But if you are doing some other computation that requires a lot of memory and you don't want to cache your DataFrame just to check whether it is empty, then you can use an accumulator:

def accumulateRows(acc: LongAccumulator)(df: DataFrame): DataFrame =
  df.map { row => // we map to the same row, count during this map
    acc.add(1)
    row
  }(RowEncoder(df.schema))

val rowAccumulator = spark.sparkContext.longAccumulator("Row Accumulator")
val countedDF = df.transform(accumulateRows(rowAccumulator))
countedDF.write.saveAsTable(...) // main action
val isEmpty = rowAccumulator.isZero

Note that to see the row count, you should first perform the action. If we change the order of the last 2 lines, isEmpty will be true regardless of the computation.

0

I found that on some cases:

>>>print(type(df))
<class 'pyspark.sql.dataframe.DataFrame'>

>>>df.take(1).isEmpty
'list' object has no attribute 'isEmpty'

this is same for "length" or replace take() by head()

[Solution] for the issue we can use.

>>>df.limit(2).count() > 1
False
0

My case was a bit different and I want to share it with you all. My Dataframe was delivered empty however, there was a null value record. The dataframe is considered empty but it wasn't actually. Therefore I wrote the below code as a solution for my problem.

My Problem: When I issue df.count() I don't get 0 but one record with null values. If I issue df.rdd.isEmpty() I get False.

The Solution:

from pyspark.sql.functions import col,when
def isDfEmpty(df):
  if df.count() == 1: #When df has only one record
    _df_ = df.select([when(col(c)=="",None).otherwise(col(c)).alias(c) for c in df.columns]).na.drop('all')
    return(_df_.rdd.isEmpty())
  else:
    return False

isDfEmpty(df) #Replace df with your respective dataframe variable

Note: In my case I got only one record in the empty dataframe. If that is not the case please reconsider the if condition.

1
  • Unclear how this answers the actual question, then. Null values and empty strings aren't technically empty dataframes. Have you tried dropNa operation before counting? Jul 30, 2023 at 14:46
-1
df1.take(1).length>0

The take method returns the array of rows, so if the array size is equal to zero, there are no records in df.

-2

You can do it like:

val df = sqlContext.emptyDataFrame
if( df.eq(sqlContext.emptyDataFrame) )
    println("empty df ")
else 
    println("normal df")
2
  • 1
    won't it require the schema of two dataframes (sqlContext.emptyDataFrame & df) to be same in order to ever return true? Jan 22, 2018 at 13:59
  • 1
    This won't work. eq is inherited from AnyRef and tests whether the argument (that) is a reference to the receiver object (this). Jan 30, 2018 at 1:32
-2

dataframe.limit(1).count > 0

This also triggers a job but since we are selecting single record, even in case of billion scale records the time consumption could be much lower.

From: https://medium.com/checking-emptiness-in-distributed-objects/count-vs-isempty-surprised-to-see-the-impact-fa70c0246ee0

2
  • All these are bad options taking almost equal time Jul 1, 2020 at 19:56
  • 1
    @PushpendraJaiswal yes, and in a world of bad options, we should chose the best bad option Jul 2, 2020 at 4:11
-2

Let's suppose we have the following empty dataframe:

df = spark.sql("show tables").limit(0)

If you are using Spark 2.1, for pyspark, to check if this dataframe is empty, you can use:

df.count() > 0

Or

bool(df.head(1))

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