A pandas user-defined function (UDF)—also known as vectorized UDF—is a user-defined function that uses Apache Arrow to transfer data and pandas to work with the data. pandas UDFs allow vectorized operations that can increase performance up to 100x compared to row-at-a-time Python UDFs.
For background information, see the blog post New Pandas UDFs and Python Type Hints in the Upcoming Release of Apache Spark 3.0.
You define a pandas UDF using the keyword
pandas_udf as a decorator and wrap the function with a Python type hint.
This article describes the different types of pandas UDFs and shows how to use pandas UDFs with type hints.
You use a Series to Series pandas UDF to vectorize scalar operations.
You can use them with APIs such as
The Python function should take a pandas Series as an input and return a pandas Series of the same length, and you should specify these in the Python type hints. Spark runs a pandas UDF by splitting columns into batches, calling the function for each batch as a subset of the data, then concatenating the results.
The following example shows how to create a pandas UDF that computes the product of 2 columns.
import pandas as pd from pyspark.sql.functions import col, pandas_udf from pyspark.sql.types import LongType # Declare the function and create the UDF def multiply_func(a: pd.Series, b: pd.Series) -> pd.Series: return a * b multiply = pandas_udf(multiply_func, returnType=LongType()) # The function for a pandas_udf should be able to execute with local pandas data x = pd.Series([1, 2, 3]) print(multiply_func(x, x)) # 0 1 # 1 4 # 2 9 # dtype: int64 # Create a Spark DataFrame, 'spark' is an existing SparkSession df = spark.createDataFrame(pd.DataFrame(x, columns=["x"])) # Execute function as a Spark vectorized UDF df.select(multiply(col("x"), col("x"))).show() # +-------------------+ # |multiply_func(x, x)| # +-------------------+ # | 1| # | 4| # | 9| # +-------------------+
An iterator UDF is the same as a scalar pandas UDF except:
The Python function
Takes an iterator of batches instead of a single input batch as input.
Returns an iterator of output batches instead of a single output batch.
The length of the entire output in the iterator should be the same as the length of the entire input.
The wrapped pandas UDF takes a single Spark column as an input.
You should specify the Python type hint as
This pandas UDF is useful when the UDF execution requires initializing some state, for example, loading a machine learning model file to apply inference to every input batch.
The following example shows how to create a pandas UDF with iterator support.
import pandas as pd from typing import Iterator from pyspark.sql.functions import col, pandas_udf, struct pdf = pd.DataFrame([1, 2, 3], columns=["x"]) df = spark.createDataFrame(pdf) # When the UDF is called with the column, # the input to the underlying function is an iterator of pd.Series. @pandas_udf("long") def plus_one(batch_iter: Iterator[pd.Series]) -> Iterator[pd.Series]: for x in batch_iter: yield x + 1 df.select(plus_one(col("x"))).show() # +-----------+ # |plus_one(x)| # +-----------+ # | 2| # | 3| # | 4| # +-----------+ # In the UDF, you can initialize some state before processing batches. # Wrap your code with try/finally or use context managers to ensure # the release of resources at the end. y_bc = spark.sparkContext.broadcast(1) @pandas_udf("long") def plus_y(batch_iter: Iterator[pd.Series]) -> Iterator[pd.Series]: y = y_bc.value # initialize states try: for x in batch_iter: yield x + y finally: pass # release resources here, if any df.select(plus_y(col("x"))).show() # +---------+ # |plus_y(x)| # +---------+ # | 2| # | 3| # | 4| # +---------+
An Iterator of multiple Series to Iterator of Series UDF has similar characteristics and restrictions as Iterator of Series to Iterator of Series UDF. The specified function takes an iterator of batches and outputs an iterator of batches. It is also useful when the UDF execution requires initializing some state.
The differences are:
The underlying Python function takes an iterator of a tuple of pandas Series.
The wrapped pandas UDF takes multiple Spark columns as an input.
You specify the type hints as
Iterator[Tuple[pandas.Series, ...]] ->
from typing import Iterator, Tuple import pandas as pd from pyspark.sql.functions import col, pandas_udf, struct pdf = pd.DataFrame([1, 2, 3], columns=["x"]) df = spark.createDataFrame(pdf) @pandas_udf("long") def multiply_two_cols( iterator: Iterator[Tuple[pd.Series, pd.Series]]) -> Iterator[pd.Series]: for a, b in iterator: yield a * b df.select(multiply_two_cols("x", "x")).show() # +-----------------------+ # |multiply_two_cols(x, x)| # +-----------------------+ # | 1| # | 4| # | 9| # +-----------------------+
Series to scalar pandas UDFs are similar to Spark aggregate functions.
A Series to scalar pandas UDF defines an aggregation from one or more
pandas Series to a scalar value, where each pandas Series represents a Spark column.
You use a Series to scalar pandas UDF with APIs such as
You express the type hint as
pandas.Series, ... ->
Any. The return type should be a
primitive data type, and the returned scalar can be either a Python primitive type, for example,
float or a NumPy data type such as
Any should ideally
be a specific scalar type.
This type of UDF does not support partial aggregation and all data for each group is loaded into memory.
The following example shows how to use this type of UDF to compute mean with
import pandas as pd from pyspark.sql.functions import pandas_udf from pyspark.sql import Window df = spark.createDataFrame( [(1, 1.0), (1, 2.0), (2, 3.0), (2, 5.0), (2, 10.0)], ("id", "v")) # Declare the function and create the UDF @pandas_udf("double") def mean_udf(v: pd.Series) -> float: return v.mean() df.select(mean_udf(df['v'])).show() # +-----------+ # |mean_udf(v)| # +-----------+ # | 4.2| # +-----------+ df.groupby("id").agg(mean_udf(df['v'])).show() # +---+-----------+ # | id|mean_udf(v)| # +---+-----------+ # | 1| 1.5| # | 2| 6.0| # +---+-----------+ w = Window \ .partitionBy('id') \ .rowsBetween(Window.unboundedPreceding, Window.unboundedFollowing) df.withColumn('mean_v', mean_udf(df['v']).over(w)).show() # +---+----+------+ # | id| v|mean_v| # +---+----+------+ # | 1| 1.0| 1.5| # | 1| 2.0| 1.5| # | 2| 3.0| 6.0| # | 2| 5.0| 6.0| # | 2|10.0| 6.0| # +---+----+------+
For detailed usage, see pyspark.sql.functions.pandas_udf.
Data partitions in Spark are converted into Arrow record batches, which
can temporarily lead to high memory usage in the JVM. To avoid possible
out of memory exceptions, you can adjust the size of the Arrow record batches
by setting the
spark.sql.execution.arrow.maxRecordsPerBatch configuration to an integer that
determines the maximum number of rows for each batch. The default value
is 10,000 records per batch. If the number of columns is large, the
value should be adjusted accordingly. Using this limit, each data
partition is divided into 1 or more record batches for processing.
Spark internally stores timestamps as UTC values, and timestamp data brought in without a specified time zone is converted as local time to UTC with microsecond resolution.
When timestamp data is exported or displayed in Spark,
the session time zone is used to localize the
timestamp values. The session time zone is set with the
spark.sql.session.timeZone configuration and defaults to the JVM system local
time zone. pandas uses a
datetime64 type with nanosecond
datetime64[ns], with optional time zone on a per-column
When timestamp data is transferred from Spark to pandas it is
converted to nanoseconds and each column is converted to the Spark
session time zone then localized to that time zone, which removes the
time zone and displays values as local time. This occurs when
pandas_udf with timestamp columns.
When timestamp data is transferred from pandas to Spark, it is
converted to UTC microseconds. This occurs when calling
createDataFrame with a pandas DataFrame or when returning a
timestamp from a pandas UDF. These conversions are done
automatically to ensure Spark has data in the expected format, so
it is not necessary to do any of these conversions yourself. Any
nanosecond values are truncated.
A standard UDF loads timestamp data as Python datetime objects, which is different than a pandas timestamp. To get the best performance, we recommend that you use pandas time series functionality when working with timestamps in a pandas UDF. For details, see Time Series / Date functionality.