--- layout: global title: "Migration Guide: PySpark (Python on Spark)" displayTitle: "Migration Guide: PySpark (Python on Spark)" license: | Licensed to the Apache Software Foundation (ASF) under one or more contributor license agreements. See the NOTICE file distributed with this work for additional information regarding copyright ownership. The ASF licenses this file to You under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with the License. You may obtain a copy of the License at http://www.apache.org/licenses/LICENSE-2.0 Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the specific language governing permissions and limitations under the License. --- * Table of contents {:toc} Note that this migration guide describes the items specific to PySpark. Many items of SQL migration can be applied when migrating PySpark to higher versions. Please refer [Migration Guide: SQL, Datasets and DataFrame](sql-migration-guide.html). ## Upgrading from PySpark 2.4 to 3.0 - In Spark 3.0, PySpark requires a pandas version of 0.23.2 or higher to use pandas related functionality, such as `toPandas`, `createDataFrame` from pandas DataFrame, and so on. - In Spark 3.0, PySpark requires a PyArrow version of 0.12.1 or higher to use PyArrow related functionality, such as `pandas_udf`, `toPandas` and `createDataFrame` with "spark.sql.execution.arrow.enabled=true", etc. - In PySpark, when creating a `SparkSession` with `SparkSession.builder.getOrCreate()`, if there is an existing `SparkContext`, the builder was trying to update the `SparkConf` of the existing `SparkContext` with configurations specified to the builder, but the `SparkContext` is shared by all `SparkSession`s, so we should not update them. In 3.0, the builder comes to not update the configurations. This is the same behavior as Java/Scala API in 2.3 and above. If you want to update them, you need to update them prior to creating a `SparkSession`. - In PySpark, when Arrow optimization is enabled, if Arrow version is higher than 0.11.0, Arrow can perform safe type conversion when converting `pandas.Series` to an Arrow array during serialization. Arrow raises errors when detecting unsafe type conversions like overflow. You enable it by setting `spark.sql.execution.pandas.convertToArrowArraySafely` to `true`. The default setting is `false`. PySpark behavior for Arrow versions is illustrated in the following table: | PyArrow version | Integer overflow | Floating point truncation | | ---------------- | ---------------- | ------------------------- | | 0.11.0 and below | Raise error | Silently allows | | \> 0.11.0, arrowSafeTypeConversion=false | Silent overflow | Silently allows | | \> 0.11.0, arrowSafeTypeConversion=true | Raise error | Raise error | - In Spark 3.0, `createDataFrame(..., verifySchema=True)` validates `LongType` as well in PySpark. Previously, `LongType` was not verified and resulted in `None` in case the value overflows. To restore this behavior, `verifySchema` can be set to `False` to disable the validation. - As of Spark 3.0, `Row` field names are no longer sorted alphabetically when constructing with named arguments for Python versions 3.6 and above, and the order of fields will match that as entered. To enable sorted fields by default, as in Spark 2.4, set the environment variable `PYSPARK_ROW_FIELD_SORTING_ENABLED` to `true` for both executors and driver - this environment variable must be consistent on all executors and driver; otherwise, it may cause failures or incorrect answers. For Python versions less than 3.6, the field names will be sorted alphabetically as the only option. - In Spark 3.0, `pyspark.ml.param.shared.Has*` mixins do not provide any `set*(self, value)` setter methods anymore, use the respective `self.set(self.*, value)` instead. See [SPARK-29093](https://issues.apache.org/jira/browse/SPARK-29093) for details. ## Upgrading from PySpark 2.3 to 2.4 - In PySpark, when Arrow optimization is enabled, previously `toPandas` just failed when Arrow optimization is unable to be used whereas `createDataFrame` from Pandas DataFrame allowed the fallback to non-optimization. Now, both `toPandas` and `createDataFrame` from Pandas DataFrame allow the fallback by default, which can be switched off by `spark.sql.execution.arrow.fallback.enabled`. ## Upgrading from PySpark 2.3.0 to 2.3.1 and above - As of version 2.3.1 Arrow functionality, including `pandas_udf` and `toPandas()`/`createDataFrame()` with `spark.sql.execution.arrow.enabled` set to `True`, has been marked as experimental. These are still evolving and not currently recommended for use in production. ## Upgrading from PySpark 2.2 to 2.3 - In PySpark, now we need Pandas 0.19.2 or upper if you want to use Pandas related functionalities, such as `toPandas`, `createDataFrame` from Pandas DataFrame, etc. - In PySpark, the behavior of timestamp values for Pandas related functionalities was changed to respect session timezone. If you want to use the old behavior, you need to set a configuration `spark.sql.execution.pandas.respectSessionTimeZone` to `False`. See [SPARK-22395](https://issues.apache.org/jira/browse/SPARK-22395) for details. - In PySpark, `na.fill()` or `fillna` also accepts boolean and replaces nulls with booleans. In prior Spark versions, PySpark just ignores it and returns the original Dataset/DataFrame. - In PySpark, `df.replace` does not allow to omit `value` when `to_replace` is not a dictionary. Previously, `value` could be omitted in the other cases and had `None` by default, which is counterintuitive and error-prone. ## Upgrading from PySpark 1.4 to 1.5 - Resolution of strings to columns in Python now supports using dots (`.`) to qualify the column or access nested values. For example `df['table.column.nestedField']`. However, this means that if your column name contains any dots you must now escape them using backticks (e.g., ``table.`column.with.dots`.nested``). - DataFrame.withColumn method in PySpark supports adding a new column or replacing existing columns of the same name. ## Upgrading from PySpark 1.0-1.2 to 1.3 #### Python DataTypes No Longer Singletons {:.no_toc} When using DataTypes in Python you will need to construct them (i.e. `StringType()`) instead of referencing a singleton.