Python context manager to query a SQLite file stored on S3
Project description
sqlite-s3-query
Python context managers to query a SQLite file stored on S3. It uses multiple HTTP range requests per query to avoid downloading the entire file, and so is suitable for large databases.
All queries using the same instance of the context will query the same version of the database object in S3. This means that a context is roughly equivalent to a REPEATABLE READ transaction, and queries should complete succesfully even if the database is replaced concurrently by another S3 client. Versioning must be enabled on the S3 bucket.
SQL statements that write to the database are not supported. If you're looking for a way to write to a SQLite database in S3, try sqlite-s3vfs.
Inspired by phiresky's sql.js-httpvfs, and dacort's Stack Overflow answer.
Installation
pip install sqlite_s3_query
The libsqlite3 binary library is also required, but this is typically already installed on most systems. The earliest version of libsqlite3 known to work is 2012-12-12 (3.7.15).
Usage
For single-statement queries, the sqlite_s3_query
function can be used.
from sqlite_s3_query import sqlite_s3_query
with sqlite_s3_query(url='https://my-bucket.s3.eu-west-2.amazonaws.com/my-db.sqlite') as query:
with query('SELECT * FROM my_table WHERE my_column = ?', params=('my-value',)) as (columns, rows):
for row in rows:
print(row)
# Exactly the same results, even if the object in S3 was replaced
with query('SELECT * FROM my_table WHERE my_column = ?', params=('my-value',)) as (columns, rows):
for row in rows:
print(row)
# Or can use named parameters
with query('SELECT * FROM my_table WHERE my_column = :my_param', named_params=((':my_param', 'my-value'),)) as (columns, rows):
for row in rows:
print(row)
For multi-statement queries, the sqlite_s3_query_multi
function can be used.
from sqlite_s3_query import sqlite_s3_query_multi
with sqlite_s3_query_multi(url='https://my-bucket.s3.eu-west-2.amazonaws.com/my-db.sqlite') as query_multi:
for (columns, rows) in query_multi('''
SELECT * FROM my_table_a WHERE my_column_a = ?;
SELECT * FROM my_table_b WHERE my_column_b = ?;
''', params=(('my-value-a',), ('my-value-b',)):
for row in rows:
print(row)
If in your project you query the same object from multiple places, functools.partial
can be used to make an interface with less duplication.
from functools import partial
from sqlite_s3_query import sqlite_s3_query
query_my_db = partial(sqlite_s3_query,
url='https://my-bucket.s3.eu-west-2.amazonaws.com/my-db.sqlite',
)
with \
query_my_db() as query, \
query('SELECT * FROM my_table WHERE my_col = ?', params=('my-value',)) as (columns, rows):
for row in rows:
print(row)
with \
query_my_db() as query, \
query('SELECT * FROM my_table_2 WHERE my_col = ?', params=('my-value',)) as (columns, rows):
for row in rows:
print(row)
Pandas DataFrame
You can create a Pandas DataFrame from query results by passing the rows
iterable and columns
tuple to the DataFrame
constructor as below.
import pandas as pd
from sqlite_s3_query import sqlite_s3_query
with \
sqlite_s3_query(url='https://my-bucket.s3.eu-west-2.amazonaws.com/my-db.sqlite') as query, \
query('SELECT * FROM my_table WHERE my_column = ?', params=('my-value',)) as (columns, rows):
df = pd.DataFrame(rows, columns=columns)
print(df)
Permissions
The AWS credentials must have both the s3:GetObject
and s3:GetObjectVersion
permissions on the database object. For example if the database is at the key my-db.sqlite
in bucket my-bucket
, then the minimal set of permissions are shown below.
{
"Version": "2012-10-17",
"Statement": [{
"Effect": "Allow",
"Action": ["s3:GetObject", "s3:GetObjectVersion"],
"Resource": "arn:aws:s3:::my-bucket/my-db.sqlite"
}]
}
Credentials
The AWS region and the credentials are taken from environment variables, but this can be changed using the get_credentials
parameter. Below shows the default implementation of this that can be overriden.
from sqlite_s3_query import sqlite_s3_query
import os
def get_credentials(_):
return (
os.environ['AWS_REGION'],
os.environ['AWS_ACCESS_KEY_ID'],
os.environ['AWS_SECRET_ACCESS_KEY'],
os.environ.get('AWS_SESSION_TOKEN'), # Only needed for temporary credentials
)
query_my_db = partial(sqlite_s3_query,
url='https://my-bucket.s3.eu-west-2.amazonaws.com/my-db.sqlite',
get_credentials=get_credentials,
)
with \
query_my_db() as query, \
query('SELECT * FROM my_table_2 WHERE my_col = ?', params=('my-value',)) as (columns, rows):
for row in rows:
print(row)
sqlite-s3-query does not install or use boto3, but if you install it separately, you can use it to fetch credentials as in the below example. This can be useful when you want to use temporary credentials associated with an ECS or EC2 role, which boto3 fetches automatically.
import boto3
from sqlite_s3_query import sqlite_s3_query
def GetBoto3Credentials():
session = boto3.Session()
credentials = session.get_credentials()
def get_credentials(_):
return (session.region_name,) + credentials.get_frozen_credentials()
return get_credentials
query_my_db = partial(sqlite_s3_query,
url='https://my-bucket.s3.eu-west-2.amazonaws.com/my-db.sqlite',
get_credentials=GetBoto3Credentials(),
)
with \
query_my_db() as query, \
query('SELECT * FROM my_table_2 WHERE my_col = ?', params=('my-value',)) as (columns, rows):
for row in rows:
print(row)
HTTP Client
The HTTP client can be changed by overriding the the default get_http_client
parameter, which is shown below.
from functools import partial
import httpx
from sqlite_s3_query import sqlite_s3_query
query_my_db = partial(sqlite_s3_query,
url='https://my-bucket.s3.eu-west-2.amazonaws.com/my-db.sqlite',
get_http_client=lambda: httpx.Client(transport=httpx.HTTPTransport(retries=3)),
)
with \
query_my_db() as query, \
query('SELECT * FROM my_table WHERE my_col = ?', params=('my-value',)) as (columns, rows):
for row in rows:
print(row)
Location of libsqlite3
The location of the libsqlite3 library can be changed by overriding the get_libsqlite3
parameter.
from ctypes import cdll
from ctypes.util import find_library
from functools import partial
from sqlite_s3_query import sqlite_s3_query
query_my_db = partial(sqlite_s3_query,
url='https://my-bucket.s3.eu-west-2.amazonaws.com/my-db.sqlite',
get_libsqlite3=lambda: cdll.LoadLibrary(find_library('sqlite3'))
)
with \
query_my_db() as query, \
query('SELECT * FROM my_table WHERE my_col = ?', params=('my-value',)) as (columns, rows):
for row in rows:
print(row)
Multithreading
It is safe for multiple threads to call the same query
function. Under the hood, each use of query
uses a separate SQLite "connection" to the database combined with theSQLITE_OPEN_NOMUTEX
flag, which makes this safe while not locking unnecessarily.
Compatibility
- Linux (tested on Ubuntu 20.04), Windows (tested on Windows Server 2019), or macOS (tested on macOS 11)
- SQLite >= 3.7.15, (tested on 3.7.15, 3.36.0, 3.42.0, and the default version available on each OS tested)
- Python >= 3.6.7 (tested on 3.6.7, 3.7.1, 3.8.0, 3.9.0, 3.10.0, and 3.11.0)
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