Table of Contents
You can use the following methods to count the number of values in a column of a PySpark DataFrame that meet a specific condition:
Method 1: Count Values that Meet One Condition
#count values in 'team' column that are equal to 'C' df.filter(df.team == 'C').count()
Method 2: Count Values that Meet One of Several Conditions
from pyspark.sql.functions import col #count values in 'team' column that are equal to 'A' or 'D' df.filter(col('team').isin(['A','D'])).count()
The following examples show how to use each method in practice with the following PySpark DataFrame that contains information about various basketball players:
from pyspark.sql import SparkSession
spark = SparkSession.builder.getOrCreate()
#define data
data = [['A', 'East', 11],
['A', 'East', 8],
['A', 'East', 10],
['B', 'West', 6],
['B', 'West', 6],
['C', 'East', 5],
['C', 'East', 15],
['C', 'West', 31],
['D', 'West', 24]]
#define column names
columns = ['team', 'conference', 'points']
#create dataframe using data and column names
df = spark.createDataFrame(data, columns)
#view dataframe
df.show()
+----+----------+------+
|team|conference|points|
+----+----------+------+
| A| East| 11|
| A| East| 8|
| A| East| 10|
| B| West| 6|
| B| West| 6|
| C| East| 5|
| C| East| 15|
| C| West| 31|
| D| West| 24|
+----+----------+------+
Example 1: Count Values that Meet One Condition
We can use the following syntax to count the number of values in the team column that are equal to C:
#count values in 'team' column that are equal to 'C' df.filter(df.team == 'C').count() 3
We can see that a total of 3 values in the team column are equal to C.
Example 2: Count Values that Meet One of Several Conditions
We can use the following syntax to count the number of values in the team column that are equal to either A or D:
from pyspark.sql.functions import col #count values in 'team' column that are equal to 'A' or 'D' df.filter(col('team').isin(['A','D'])).count() 4
We can see that a total of 4 values in the team column are equal to either A or D.
Note: You can find the complete documentation for the PySpark filter function .
Cite this article
stats writer (2026). How to Count Values in a PySpark Column Based on a Condition. PSYCHOLOGICAL SCALES. Retrieved from https://scales.arabpsychology.com/stats/how-can-values-in-a-column-be-counted-using-a-condition-in-pyspark/
stats writer. "How to Count Values in a PySpark Column Based on a Condition." PSYCHOLOGICAL SCALES, 20 Jan. 2026, https://scales.arabpsychology.com/stats/how-can-values-in-a-column-be-counted-using-a-condition-in-pyspark/.
stats writer. "How to Count Values in a PySpark Column Based on a Condition." PSYCHOLOGICAL SCALES, 2026. https://scales.arabpsychology.com/stats/how-can-values-in-a-column-be-counted-using-a-condition-in-pyspark/.
stats writer (2026) 'How to Count Values in a PySpark Column Based on a Condition', PSYCHOLOGICAL SCALES. Available at: https://scales.arabpsychology.com/stats/how-can-values-in-a-column-be-counted-using-a-condition-in-pyspark/.
[1] stats writer, "How to Count Values in a PySpark Column Based on a Condition," PSYCHOLOGICAL SCALES, vol. X, no. Y, ص Z-Z, January, 2026.
stats writer. How to Count Values in a PySpark Column Based on a Condition. PSYCHOLOGICAL SCALES. 2026;vol(issue):pages.
