Example: Importing custom Python library modules - Amazon Redshift
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Example: Importing custom Python library modules

You define scalar functions using Python language syntax. You can use the Python Standard Library modules and Amazon Redshift preinstalled modules. You can also create your own custom Python library modules and import the libraries into your clusters, or use existing libraries from Python or third parties.

You cannot create a library that contains a module with the same name as a Python Standard Library module or an Amazon Redshift preinstalled Python module. If an existing user-installed library uses the same Python package as a library you create, you must drop the existing library before installing the new library.

You must be a superuser or have USAGE ON LANGUAGE plpythonu privilege to install custom libraries; however, any user with sufficient privileges to create functions can use the installed libraries. You can query the PG_LIBRARY system catalog to view information about the libraries installed on your cluster.

Importing a custom Python module into your cluster

This section provides an example of importing a custom Python module into your cluster. To perform the steps in this section, you must have an Amazon S3 bucket, where you upload the library package. You then install the package in your cluster. For more information about creating buckets, go to Creating a bucket in the Amazon Simple Storage Service User Guide.

In this example, let's suppose that you create UDFs to work with positions and distances in your data. Connect to your Amazon Redshift cluster from a SQL client tool, and run the following commands to create the functions.

CREATE FUNCTION f_distance (x1 float, y1 float, x2 float, y2 float) RETURNS float IMMUTABLE as $$ def distance(x1, y1, x2, y2): import math return math.sqrt((y2 - y1) ** 2 + (x2 - x1) ** 2) return distance(x1, y1, x2, y2) $$ LANGUAGE plpythonu; CREATE FUNCTION f_within_range (x1 float, y1 float, x2 float, y2 float) RETURNS bool IMMUTABLE as $$ def distance(x1, y1, x2, y2): import math return math.sqrt((y2 - y1) ** 2 + (x2 - x1) ** 2) return distance(x1, y1, x2, y2) < 20 $$ LANGUAGE plpythonu;

Note that a few lines of code are duplicated in the previous functions. This duplication is necessary because a UDF cannot reference the contents of another UDF, and both functions require the same functionality. However, instead of duplicating code in multiple functions, you can create a custom library and configure your functions to use it.

To do so, first create the library package by following these steps:

  1. Create a folder named geometry. This folder is the top level package of the library.

  2. In the geometry folder, create a file named __init__.py. Note that the file name contains two double underscore characters. This file indicates to Python that the package can be initialized.

  3. Also in the geometry folder, create a folder named trig. This folder is the subpackage of the library.

  4. In the trig folder, create another file named __init__.py and a file named line.py. In this folder, __init__.py indicates to Python that the subpackage can be initialized and that line.py is the file that contains library code.

    Your folder and file structure should be the same as the following:

    geometry/ __init__.py trig/ __init__.py line.py

    For more information about package structure, go to Modules in the Python tutorial on the Python website.

  5. The following code contains a class and member functions for the library. Copy and paste it into line.py.

    class LineSegment: def __init__(self, x1, y1, x2, y2): self.x1 = x1 self.y1 = y1 self.x2 = x2 self.y2 = y2 def angle(self): import math return math.atan2(self.y2 - self.y1, self.x2 - self.x1) def distance(self): import math return math.sqrt((self.y2 - self.y1) ** 2 + (self.x2 - self.x1) ** 2)

After you have created the package, do the following to prepare the package and upload it to Amazon S3.

  1. Compress the contents of the geometry folder into a .zip file named geometry.zip. Do not include the geometry folder itself; only include the contents of the folder as shown following:

    geometry.zip __init__.py trig/ __init__.py line.py
  2. Upload geometry.zip to your Amazon S3 bucket.

    Important

    If the Amazon S3 bucket does not reside in the same region as your Amazon Redshift cluster, you must use the REGION option to specify the region in which the data is located. For more information, see CREATE LIBRARY.

  3. From your SQL client tool, run the following command to install the library. Replace <bucket_name> with the name of your bucket, and replace <access key id> and <secret key> with an access key and secret access key from your Amazon Identity and Access Management (IAM) user credentials.

    CREATE LIBRARY geometry LANGUAGE plpythonu FROM 's3://<bucket_name>/geometry.zip' CREDENTIALS 'aws_access_key_id=<access key id>;aws_secret_access_key=<secret key>';

After you install the library in your cluster, you need to configure your functions to use the library. To do this, run the following commands.

CREATE OR REPLACE FUNCTION f_distance (x1 float, y1 float, x2 float, y2 float) RETURNS float IMMUTABLE as $$ from trig.line import LineSegment return LineSegment(x1, y1, x2, y2).distance() $$ LANGUAGE plpythonu; CREATE OR REPLACE FUNCTION f_within_range (x1 float, y1 float, x2 float, y2 float) RETURNS bool IMMUTABLE as $$ from trig.line import LineSegment return LineSegment(x1, y1, x2, y2).distance() < 20 $$ LANGUAGE plpythonu;

In the preceding commands, import trig/line eliminates the duplicated code from the original functions in this section. You can reuse the functionality provided by this library in multiple UDFs. Note that to import the module, you only need to specify the path to the subpackage and module name (trig/line).