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This tutorial shows you how build a simple CRUD Python application with CockroachDB and the SQLAlchemy ORM.
Step 1. Start CockroachDB
Create a free cluster
Organizations without billing information on file can only create one CockroachDB Serverless cluster.
- If you haven't already, sign up for a CockroachDB Cloud account.
- Log in to your CockroachDB Cloud account.
- On the Clusters page, click Create Cluster.
- On the Select a plan page, select Serverless.
- On the Cloud & Regions page, select a cloud provider (GCP or AWS) in the Cloud provider section.
- In the Regions section, select a region for the cluster. Refer to CockroachDB Cloud Regions for the regions where CockroachDB Serverless clusters can be deployed. To create a multi-region cluster, click Add region and select additional regions. A cluster can have at most six regions.
- Click Next: Capacity.
- On the Capacity page, select Start for free. Click Next: Finalize.
On the Finalize page, click Create cluster.
Your cluster will be created in a few seconds and the Create SQL user dialog will display.
Set up your cluster connection
Navigate to the cluster's Overview page, and select Connect.
Under the Connection String tab, download the cluster certificate.
Take note of the connection string provided. You'll use it to connect to the database later in this tutorial.
- If you haven't already, download the CockroachDB binary.
Run the
cockroach start-single-node
command:$ cockroach start-single-node --advertise-addr 'localhost' --insecure
This starts an insecure, single-node cluster.
Take note of the following connection information in the SQL shell welcome text:
CockroachDB node starting at 2021-08-30 17:25:30.06524 +0000 UTC (took 4.3s) build: CCL v21.1.6 @ 2021/07/20 15:33:43 (go1.15.11) webui: http://localhost:8080 sql: postgresql://root@localhost:26257?sslmode=disable
You'll use the
sql
connection string to connect to the cluster later in this tutorial.
The --insecure
flag used in this tutorial is intended for non-production testing only. To run CockroachDB in production, use a secure cluster instead.
Step 2. Get the code
Clone the code's GitHub repo:
$ git clone https://github.com/cockroachlabs/example-app-python-sqlalchemy/
The project has the following directory structure:
├── README.md
├── dbinit.sql
├── main.py
├── models.py
└── requirements.txt
The requirements.txt
file includes the required libraries to connect to CockroachDB with SQLAlchemy, including the sqlalchemy-cockroachdb
Python package, which accounts for some differences between CockroachDB and PostgreSQL:
psycopg2-binary
sqlalchemy
sqlalchemy-cockroachdb
The dbinit.sql
file initializes the database schema that the application uses:
CREATE TABLE accounts (
id UUID PRIMARY KEY,
balance INT8
);
The models.py
uses SQLAlchemy to map the Accounts
table to a Python object:
from sqlalchemy import Column, Integer
from sqlalchemy.dialects.postgresql import UUID
from sqlalchemy.orm import declarative_base
Base = declarative_base()
class Account(Base):
"""The Account class corresponds to the "accounts" database table.
"""
__tablename__ = 'accounts'
id = Column(UUID(as_uuid=True), primary_key=True)
balance = Column(Integer)
The main.py
uses SQLAlchemy to map Python methods to SQL operations:
"""This simple CRUD application performs the following operations sequentially:
1. Creates 100 new accounts with randomly generated IDs and randomly-computed balance amounts.
2. Chooses two accounts at random and takes half of the money from the first and deposits it
into the second.
3. Chooses five accounts at random and deletes them.
"""
from math import floor
import os
import random
import uuid
from sqlalchemy import create_engine
from sqlalchemy.orm import sessionmaker
from sqlalchemy_cockroachdb import run_transaction
from sqlalchemy.orm.exc import NoResultFound, MultipleResultsFound
from models import Account
# The code below inserts new accounts.
def create_accounts(session, num):
"""Create N new accounts with random account IDs and account balances.
"""
print("Creating new accounts...")
new_accounts = []
while num > 0:
account_id = uuid.uuid4()
account_balance = floor(random.random()*1_000_000)
new_accounts.append(Account(id=account_id, balance=account_balance))
seen_account_ids.append(account_id)
print(f"Created new account with id {account_id} and balance {account_balance}.")
num = num - 1
session.add_all(new_accounts)
def transfer_funds_randomly(session, one, two):
"""Transfer money between two accounts.
"""
try:
source = session.query(Account).filter(Account.id == one).one()
except NoResultFound:
print("No result was found")
except MultipleResultsFound:
print("Multiple results were found")
dest = session.query(Account).filter(Account.id == two).first()
print(f"Random account balances:\nAccount {one}: {source.balance}\nAccount {two}: {dest.balance}")
amount = floor(source.balance/2)
print(f"Transferring {amount} from account {one} to account {two}...")
# Check balance of the first account.
if source.balance < amount:
raise ValueError(f"Insufficient funds in account {one}")
source.balance -= amount
dest.balance += amount
print(f"Transfer complete.\nNew balances:\nAccount {one}: {source.balance}\nAccount {two}: {dest.balance}")
def delete_accounts(session, num):
"""Delete N existing accounts, at random.
"""
print("Deleting existing accounts...")
delete_ids = []
while num > 0:
delete_id = random.choice(seen_account_ids)
delete_ids.append(delete_id)
seen_account_ids.remove(delete_id)
num = num - 1
accounts = session.query(Account).filter(Account.id.in_(delete_ids)).all()
for account in accounts:
print(f"Deleted account {account.id}.")
session.delete(account)
if __name__ == '__main__':
# For cockroach demo:
# DATABASE_URL=postgresql://demo:<demo_password>@127.0.0.1:26257?sslmode=require
# For CockroachCloud:
# DATABASE_URL=postgresql://<username>:<password>@<globalhost>:26257/<cluster_name>.defaultdb?sslmode=verify-full&sslrootcert=<certs_dir>/<ca.crt>
db_uri = os.environ['DATABASE_URL'].replace("postgresql://", "cockroachdb://")
try:
engine = create_engine(db_uri, connect_args={"application_name":"docs_simplecrud_sqlalchemy"})
except Exception as e:
print("Failed to connect to database.")
print(f"{e}")
seen_account_ids = []
run_transaction(sessionmaker(bind=engine),
lambda s: create_accounts(s, 100))
from_id = random.choice(seen_account_ids)
to_id = random.choice([id for id in seen_account_ids if id != from_id])
run_transaction(sessionmaker(bind=engine),
lambda s: transfer_funds_randomly(s, from_id, to_id))
run_transaction(sessionmaker(bind=engine), lambda s: delete_accounts(s, 5))
main.py
also executes the main
method of the program.
Step 3. Install the application requirements
At the top level of the app's project directory, create and then activate a virtual environment:
$ virtualenv env
$ source env/bin/activate
Install the required modules to the virtual environment:
$ pip install -r requirements.txt
Step 4. Initialize the database
To initialize the example database, use the cockroach sql
command to execute the SQL statements in the dbinit.sql
file:
cat dbinit.sql | cockroach sql --url "<connection-string>"
Where <connection-string>
is the connection string you obtained earlier from the CockroachDB Cloud Console.
cat dbinit.sql | cockroach sql --url "postgresql://root@localhost:26257?sslmode=disable"
postgresql://root@localhost:26257?sslmode=disable
is the sql
connection string you obtained earlier from the cockroach
welcome text.
The SQL statements in the initialization file should execute:
SET
Time: 1ms
SET
Time: 2ms
DROP DATABASE
Time: 1ms
CREATE DATABASE
Time: 2ms
SET
Time: 10ms
CREATE TABLE
Time: 4ms
Step 5. Run the code
Set the
DATABASE_URL
environment variable to the connection string for your cluster:$ export DATABASE_URL=<connection-string>
Where
<connection_string>
is thesql
connection URL provided in the cluster's welcome text, but with thedatabase
parameter set tobank
instead ofdefaultdb
.Where
<connection_string>
is the connection string you obtained earlier from the CockroachDB Cloud Console, but with thedatabase
parameter set tobank
instead ofdefaultdb
.Run the app:
$ python main.py
The application will connect to CockroachDB, and then perform some simple row inserts, updates, and deletes.
The output should look something like the following:
Creating new accounts... Created new account with id 3a8b74c8-6a05-4247-9c60-24b46e3a88fd and balance 248835. Created new account with id c3985926-5b77-4c6d-a73d-7c0d4b2a51e7 and balance 781972. ... Created new account with id 7b41386c-11d3-465e-a2a0-56e0dcd2e7db and balance 984387. Random account balances: Account 7ad14d02-217f-48ca-a53c-2c3a2528a0d9: 800795 Account 4040aeba-7194-4f29-b8e5-a27ed4c7a297: 149861 Transferring 400397 from account 7ad14d02-217f-48ca-a53c-2c3a2528a0d9 to account 4040aeba-7194-4f29-b8e5-a27ed4c7a297... Transfer complete. New balances: Account 7ad14d02-217f-48ca-a53c-2c3a2528a0d9: 400398 Account 4040aeba-7194-4f29-b8e5-a27ed4c7a297: 550258 Deleting existing accounts... Deleted account 41247e24-6210-4032-b622-c10b3c7222de. Deleted account 502450e4-6daa-4ced-869c-4dff62dc52de. Deleted account 6ff06ef0-423a-4b08-8b87-48af2221bc18. Deleted account a1acb134-950c-4882-9ac7-6d6fbdaaaee1. Deleted account e4f33c55-7230-4080-b5ac-5dde8a7ae41d.
In a SQL shell connected to the cluster, you can verify that the rows were inserted, updated, and deleted successfully:
> SELECT COUNT(*) FROM bank.accounts;
count --------- 95 (1 row)
Best practices
Use the run_transaction
function
We strongly recommend using the sqlalchemy_cockroachdb.run_transaction()
function as shown in the code samples on this page. This abstracts the details of transaction retries away from your application code. Transaction retries are more frequent in CockroachDB than in some other databases because we use optimistic concurrency control rather than locking. Because of this, a CockroachDB transaction may have to be tried more than once before it can commit. This is part of how we ensure that our transaction ordering guarantees meet the ANSI SERIALIZABLE isolation level.
In addition to the above, using run_transaction
has the following benefits:
- Because it must be passed a sqlalchemy.orm.session.sessionmaker object (not a session), it ensures that a new session is created exclusively for use by the callback, which protects you from accidentally reusing objects via any sessions created outside the transaction.
- It abstracts away the client-side transaction retry logic from your application, which keeps your application code portable across different databases. For example, the sample code given on this page works identically when run against Postgres (modulo changes to the prefix and port number in the connection string).
For more information about how transactions (and retries) work, see Transactions.
Avoid mutations of session and/or transaction state inside run_transaction()
In general, this is in line with the recommendations of the SQLAlchemy FAQs, which state (with emphasis added by the original author) that
As a general rule, the application should manage the lifecycle of the session externally to functions that deal with specific data. This is a fundamental separation of concerns which keeps data-specific operations agnostic of the context in which they access and manipulate that data.
and
Keep the lifecycle of the session (and usually the transaction) separate and external.
In keeping with the above recommendations from the official docs, we strongly recommend avoiding any explicit mutations of the transaction state inside the callback passed to run_transaction
, since that will lead to breakage. Specifically, do not make calls to the following functions from inside run_transaction
:
sqlalchemy.orm.Session.commit()
(or other variants ofcommit()
): This is not necessary becausecockroachdb.sqlalchemy.run_transaction
handles the savepoint/commit logic for you.sqlalchemy.orm.Session.rollback()
(or other variants ofrollback()
): This is not necessary becausecockroachdb.sqlalchemy.run_transaction
handles the commit/rollback logic for you.Session.flush()
: This will not work as expected with CockroachDB because CockroachDB does not support nested transactions, which are necessary forSession.flush()
to work properly. If the call toSession.flush()
encounters an error and aborts, it will try to rollback. This will not be allowed by the currently-executing CockroachDB transaction created byrun_transaction()
, and will result in an error message like the following:sqlalchemy.orm.exc.DetachedInstanceError: Instance <FooModel at 0x12345678> is not bound to a Session; attribute refresh operation cannot proceed (Background on this error at: http://sqlalche.me/e/bhk3)
.
Break up large transactions into smaller units of work
If you see an error message like transaction is too large to complete; try splitting into pieces
, you are trying to commit too much data in a single transaction. As described in our Cluster Settings docs, the size limit for transactions is defined by the kv.transaction.max_intents_bytes
setting, which defaults to 256 KiB. Although this setting can be changed by an admin, we strongly recommend against it in most cases.
Instead, we recommend breaking your transaction into smaller units of work (or "chunks"). A pattern that works for inserting large numbers of objects using run_transaction
to handle retries automatically for you is shown below.
from sqlalchemy import create_engine, Column, Float, Integer
from sqlalchemy.ext.declarative import declarative_base
from sqlalchemy.orm import sessionmaker
from cockroachdb.sqlalchemy import run_transaction
from random import random
Base = declarative_base()
# The code below assumes you have run the following SQL statements.
# CREATE DATABASE pointstore;
# USE pointstore;
# CREATE TABLE points (
# id INT PRIMARY KEY DEFAULT unique_rowid(),
# x FLOAT NOT NULL,
# y FLOAT NOT NULL,
# z FLOAT NOT NULL
# );
engine = create_engine(
# For cockroach demo:
'cockroachdb://<username>:<password>@<hostname>:<port>/bank?sslmode=require',
echo=True # Log SQL queries to stdout
)
class Point(Base):
__tablename__ = 'points'
id = Column(Integer, primary_key=True)
x = Column(Float)
y = Column(Float)
z = Column(Float)
def add_points(num_points):
chunk_size = 1000 # Tune this based on object sizes.
def add_points_helper(sess, chunk, num_points):
points = []
for i in range(chunk, min(chunk + chunk_size, num_points)):
points.append(
Point(x=random()*1024, y=random()*1024, z=random()*1024)
)
sess.bulk_save_objects(points)
for chunk in range(0, num_points, chunk_size):
run_transaction(
sessionmaker(bind=engine),
lambda s: add_points_helper(
s, chunk, min(chunk + chunk_size, num_points)
)
)
add_points(10000)
Use IMPORT
to read in large data sets
If you are trying to get a large data set into CockroachDB all at once (a bulk import), avoid writing client-side code that uses an ORM and use the IMPORT
statement instead. It is much faster and more efficient than making a series of INSERT
s and UPDATE
s such as are generated by calls to session.bulk_save_objects()
.
For more information about importing data from Postgres, see Migrate from Postgres.
For more information about importing data from MySQL, see Migrate from MySQL.
Prefer the query builder
In general, we recommend using the query-builder APIs of SQLAlchemy (e.g., Engine.execute()
) in your application over the Session/ORM APIs if at all possible. That way, you know exactly what SQL is being generated and sent to CockroachDB, which has the following benefits:
- It's easier to debug your SQL queries and make sure they are working as expected.
- You can more easily tune SQL query performance by issuing different statements, creating and/or using different indexes, etc. For more information, see SQL Performance Best Practices.
Joins without foreign keys
SQLAlchemy relies on the existence of foreign keys to generate JOIN
expressions from your application code. If you remove foreign keys from your schema, SQLAlchemy will not generate joins for you. As a workaround, you can create a "custom foreign condition" by adding a relationship
field to your table objects, or do the equivalent work in your application.
See also
- The SQLAlchemy docs
- Transactions
You might also be interested in the following pages: