pyspark.sql.DataFrame.freqItems¶
-
DataFrame.
freqItems
(cols: Union[List[str], Tuple[str]], support: Optional[float] = None) → pyspark.sql.dataframe.DataFrame[source]¶ Finding frequent items for columns, possibly with false positives. Using the frequent element count algorithm described in “https://doi.org/10.1145/762471.762473, proposed by Karp, Schenker, and Papadimitriou”.
DataFrame.freqItems()
andDataFrameStatFunctions.freqItems()
are aliases.New in version 1.4.0.
Changed in version 3.4.0: Supports Spark Connect.
- Parameters
- colslist or tuple
Names of the columns to calculate frequent items for as a list or tuple of strings.
- supportfloat, optional
The frequency with which to consider an item ‘frequent’. Default is 1%. The support must be greater than 1e-4.
- Returns
DataFrame
DataFrame with frequent items.
Notes
This function is meant for exploratory data analysis, as we make no guarantee about the backward compatibility of the schema of the resulting
DataFrame
.Examples
>>> df = spark.createDataFrame([(1, 11), (1, 11), (3, 10), (4, 8), (4, 8)], ["c1", "c2"]) >>> df.freqItems(["c1", "c2"]).show() +------------+------------+ |c1_freqItems|c2_freqItems| +------------+------------+ | [4, 1, 3]| [8, 11, 10]| +------------+------------+