teradata spark pyspark

Load Data from Teradata in Spark (PySpark)

482 views 0 comments about 3 months ago Raymond Tang

In my article Connect to Teradata database through Python, I demonstrated about how to use Teradata python package or Teradata ODBC driver to connect to Teradata. In this article, I’m going to show you how to connect to Teradata through JDBC drivers so that you can load data directly into PySpark data frames.

PySpark code

Create a PySpark script file named teradata-jdbc.py with the following code:

from pyspark.sql import SparkSession

appName = "PySpark Teradata Example"
master = "local"

# Create Spark session
spark = SparkSession.builder \
    .appName(appName) \
    .master(master) \
    .getOrCreate()

driver = 'com.teradata.jdbc.TeraDriver'

# Define the function to load data from Teradata


def load_data(driver, jdbc_url, sql, user, password):
    return spark.read \
        .format('jdbc') \
        .option('driver', driver) \
        .option('url', jdbc_url) \
        .option('dbtable', '({sql}) as src'.format(sql=sql)) \
        .option('user', user) \
        .option('password', password) \
        .load()

sql = "select * from mydb.mytable"
url = "jdbc:teradata://myserver/Database=mydb,LOGMECH=LDAP"
user = "dbc"
password = "dbc"

df_td = load_data(driver,url,sql,user,password)
df_td.show(10)

Some details about the code snippets

In the above example, JDBC connection string is configured to use LDAP as login mechanism. You can also change it to TD2 so that you can use a Teradata database username and password to connect.

Depends on the version of your Spark, you may be able to directly use query parameter to pass in your SQL query instead of dbtable. query and dbtable parameters cannot be specified at the same time. In lower version of Spark, you can pass in your SQL as a subquery as I did in the above examples.

Run the code

Now you can run the code with the follow command in Spark:

spark2-submit --jars 'your/path/to/teradata/jdbc/drivers/*' teradata-jdbc.py

You need to specify the JARs for Teradata JDBC drivers if you have not done that in your Spark configurations. Two JARs are required:

  • tdgssconfig.jar
  • terajdbc4.jar

You can also use different version of Teradata JDBC drivers.

Run the code in a cluster

If you are going to run the code in a cluster or workflow tools like Oozie, you can copy these JAR files into HDFS and then pass in the library path or jars arguments as HDFS file paths. In this way, all the workloads can load Teradata JDBC drivers successfully.

SQL Server, Oracle, MySQL…

You can also use similar approach to connect to your SQL Server, Oracle, MySQL or any other JDBC supported databases.

Have fun!

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