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Amazon Aurora DSQL dialect for SQLAlchemy

Project description

Amazon Aurora DSQL dialect for SQLAlchemy

PyPI - Version

Introduction

The Aurora DSQL dialect for SQLAlchemy provides integration between SQLAlchemy ORM and Aurora DSQL. This dialect enables Python applications to leverage SQLAlchemy's powerful object-relational mapping capabilities while taking advantage of Aurora DSQL's distributed architecture and high availability.

Sample Application

There is an included sample application in examples/pet-clinic-app that shows how to use Aurora DSQL with SQLAlchemy. To run the included example please refer to the sample README.

Prerequisites

  • Python 3.10 or higher
  • SQLAlchemy 2.0.0 or higher
  • One of the following drivers:
    • psycopg 3.2.0 or higher
    • psycopg2 2.9.0 or higher

Installation

Install the packages using the commands below:

pip install aurora-dsql-sqlalchemy

# driver installation (in case you opt for psycopg)
# DO NOT use pip install psycopg-binary
pip install "psycopg[binary]"

# driver installation (in case you opt for psycopg2)
pip install psycopg2-binary

Dialect Configuration

After installation, you can connect to an Aurora DSQL cluster using SQLAlchemy's create_engine:

The connection parameter auroradsql+psycopg specifies to use the auroradsql dialect with the driver psycopg (psycopg3). To use the driver psycopg2, change the connection parameter to auroradsql+psycopg2.

from sqlalchemy import create_engine
from sqlalchemy.engine.url import URL

url = URL.create(
    "auroradsql+psycopg",
    username=<CLUSTER_USER>,
    host=<CLUSTER_ENDPOINT>,
    database='postgres',
)

engine = create_engine(
    url,
    connect_args={"sslmode": "verify-full", "sslrootcert": "<ROOT_CERT_PATH>"},
    pool_size=5,
    max_overflow=10
)

Note: Each connection has a maximum duration limit. See the Maximum connection duration time limit in the Cluster quotas and database limits in Amazon Aurora DSQL page.

Best Practices

Primary Key Generation

SQLAlchemy applications connecting to Aurora DSQL should use UUID for the primary key column since auto-incrementing integer keys (sequences or serial) are not supported in DSQL. The following column definition can be used to define an UUID primary key column.

Column(
    "id",
    UUID(as_uuid=True),
    primary_key=True,
    default=text('gen_random_uuid()')
)

gen_random_uuid() returns an UUID version 4 as the default value.

Dialect Features and Limitations

  • Column Metadata: The dialect fixes an issue related to "datatype json not supported" when calling SQLAlchemy's metadata() API.

  • Foreign Keys: Aurora DSQL does not support foreign key constraints. The dialect disables these constraints, but be aware that referential integrity must be maintained at the application level.

  • Index Creation: Aurora DSQL does not support CREATE INDEX or CREATE UNIQUE INDEX commands. The dialect instead uses CREATE INDEX ASYNC and CREATE UNIQUE INDEX ASYNC commands. See the Asynchronous indexes in Aurora DSQL page for more information.

    The following parameters are used for customizing index creation

    • auroradsql_include - specifies which columns to includes in an index by using the INCLUDE clause:

      Index(
          "include_index",
          table.c.id,
          auroradsql_include=['name', 'email']
      )
      

      Generated SQL output:

      CREATE INDEX ASYNC include_index ON table (id) INCLUDE (name, email)
      
    • auroradsql_nulls_not_distinct - controls how NULL values are treated in unique indexes:

      Index(
          "idx_name",
          table.c.column,
          unique=True,
          auroradsql_nulls_not_distinct=True
      )
      

      Generated SQL output:

      CREATE UNIQUE INDEX idx_name ON table (column) NULLS NOT DISTINCT
      
  • Index Interface Limitation: NULLS FIRST | LAST - SQLalchemy's Index() interface does not have a way to pass in the sort order of null and non-null columns. (Default: NULLS LAST). If NULLS FIRST is required, please refer to the syntax as specified in Asynchronous indexes in Aurora DSQL and execute the corresponding SQL query directly in SQLAlchemy.

  • Psycopg (psycopg3) support: When connecting to DSQL using the default postgresql dialect with psycopg, an unsupported SAVEPOINT error occurs. The DSQL dialect addresses this issue by disabling the SAVEPOINT during connection.

Developer instructions

Instructions on how to build and test the dialect are available in the Developer Instructions.

Security

See CONTRIBUTING for more information.

License

This project is licensed under the Apache-2.0 License.

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