Migration Guide
Migrate non-Delta Lake workloads to Delta Lake
When you migrate workloads to Delta Lake, you should be aware of the following simplifications and differences compared with the data sources provided by Apache Spark and Apache Hive.
Delta Lake handles the following operations automatically, which you should never perform manually:
- Add and remove partitions: Delta Lake automatically tracks the set of partitions present in a table and updates the list as data is added or removed. As a result, there is no need to run
ALTER TABLE [ADD|DROP] PARTITION
orMSCK
. - Load a single partition: As an optimization, you may sometimes directly load the partition of data you are interested in. For example,
spark.read.parquet("/data/date=2017-01-01")
. This is unnecessary with Delta Lake, since it can quickly read the list of files from the transaction log to find the relevant ones. If you are interested in a single partition, specify it using aWHERE
clause. For example,spark.read.delta("/data").where("date = '2017-01-01'")
. For large tables with many files in the partition, this can be much faster than loading a single partition (with direct partition path, or withWHERE
) from a Parquet table because listing the files in the directory is often slower than reading the list of files from the the transaction log.
When you port an existing application to Delta Lake, you should avoid the following operations, which bypass the transaction log:
- Manually modify data: Delta Lake uses the transaction log to atomically commit changes to the table. Because the log is the source of truth, files that are written out but not added to the transaction log are not read by Spark. Similarly, even if you manually delete a file, a pointer to the file is still present in the transaction log. Instead of manually modifying files stored in a Delta table, always use the commands that are described in this guide.
- External readers: Directly reading the data stored in Delta Lake. For information on how to read Delta tables, see Integrations.
Example
Suppose you have Parquet data stored in the directory /data-pipeline
and want to create a table named events
. You can always read into DataFrame and save as Delta table. This approach copies data and lets Spark manage the table. Alternatively you can convert to Delta Lake which is faster but results in an unmanaged table.
Save as Delta table
Read the data into a DataFrame and save it to a new directory in
delta
format:data = spark.read.parquet("/data-pipeline") data.write.format("delta").save("/delta/data-pipeline/")
Create a Delta table
events
that refers to the files in the Delta Lake directory:spark.sql("CREATE TABLE events USING DELTA LOCATION '/delta/data-pipeline/'")
Convert to Delta table
You have two options for converting a Parquet table to a Delta table:
Convert files to Delta Lake format and create Delta table:
CONVERT TO DELTA parquet.`/data-pipeline/` CREATE TABLE events USING DELTA LOCATION '/data-pipeline/'
Create Parquet table and convert to Delta table:
CREATE TABLE events USING PARQUET OPTIONS (path '/data-pipeline/') CONVERT TO DELTA events
For details, see Convert to Delta.
Migrate Delta Lake workloads to newer versions
This section discusses any changes that may be required in the user code when migrating from older to newer versions of Delta Lake.
Delta Lake 0.6 and below to 0.7 and above
If you are using DeltaTable
APIs in Scala, Java, or Python to update or run utility operations on them, then you may have to add the following configurations when creating the SparkSession
used to perform those operations.
from pyspark.sql import SparkSession
spark = SparkSession \
.builder \
.appName("...") \
.master("...") \
.config("spark.sql.extensions", "io.delta.sql.DeltaSparkSessionExtension") \
.config("spark.sql.catalog.spark_catalog", "org.apache.spark.sql.delta.catalog.DeltaCatalog") \
.getOrCreate()
import org.apache.spark.sql.SparkSession
val spark = SparkSession
.builder()
.appName("...")
.master("...")
.config("spark.sql.extensions", "io.delta.sql.DeltaSparkSessionExtension")
.config("spark.sql.catalog.spark_catalog", "org.apache.spark.sql.delta.catalog.DeltaCatalog")
.getOrCreate()
import org.apache.spark.sql.SparkSession;
SparkSession spark = SparkSession
.builder()
.appName("...")
.master("...")
.config("spark.sql.extensions", "io.delta.sql.DeltaSparkSessionExtension")
.config("spark.sql.catalog.spark_catalog", "org.apache.spark.sql.delta.catalog.DeltaCatalog")
.getOrCreate();
Alternatively, you can add additional configurations when submitting you Spark application using spark-submit
or when starting spark-shell
/pyspark
by specifying them as command line parameters.
spark-submit --conf "spark.sql.extensions=io.delta.sql.DeltaSparkSessionExtension" --conf "spark.sql.catalog.spark_catalog=org.apache.spark.sql.delta.catalog.DeltaCatalog" ...
pyspark --conf "spark.sql.extensions=io.delta.sql.DeltaSparkSessionExtension" --conf "spark.sql.catalog.spark_catalog=org.apache.spark.sql.delta.catalog.DeltaCatalog" ...