{
"cells": [
{
"cell_type": "markdown",
"id": "fd3eb704",
"metadata": {},
"source": [
"# MariaDB\n",
"\n",
"\n",
"In this tutorial, we'll see how to query MariaDB from Jupyter. Optionally, you can spin up a testing server.\n",
"\n",
"```{tip}\n",
"If you encounter issues, feel free to join our [community](https://ploomber.io/community) and we'll be happy to help!\n",
"```\n"
]
},
{
"cell_type": "markdown",
"id": "4727e0b9",
"metadata": {},
"source": [
"## Pre-requisites\n",
"\n",
"To run this tutorial, you need to install the `mysqlclient` package.\n",
"\n",
"```{note}\n",
"We highly recommend you that you install it using `conda`, since it'll also install `mysql-connector-c`; if you want to use `pip`, then you need to install `mysql-connector-c` and then `mysqlclient`.\n",
"```"
]
},
{
"cell_type": "code",
"execution_count": 1,
"id": "ae033470",
"metadata": {},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"Collecting package metadata (current_repodata.json): ...working... done\n",
"Solving environment: ...working... done\n",
"\n",
"## Package Plan ##\n",
"\n",
" environment location: /Users/eduardo/miniconda3/envs/jupysql\n",
"\n",
" added / updated specs:\n",
" - mysqlclient\n",
"\n",
"\n",
"The following NEW packages will be INSTALLED:\n",
"\n",
" mysql-connector-c pkgs/main/osx-arm64::mysql-connector-c-6.1.11-h4a942e0_1 \n",
" mysqlclient pkgs/main/osx-arm64::mysqlclient-2.0.3-py310hc377ac9_1 \n",
"\n",
"\n",
"Preparing transaction: ...working... done\n",
"Verifying transaction: ...working... done\n",
"Executing transaction: ...working... done\n",
"\n",
"Note: you may need to restart the kernel to use updated packages.\n"
]
}
],
"source": [
"%conda install mysqlclient -c conda-forge --quiet"
]
},
{
"cell_type": "markdown",
"id": "dbf4706e",
"metadata": {},
"source": [
"## Start MariaDB instance\n",
"\n",
"If you don't have a MariaDB Server running or you want to spin up one for testing, you can do it with the official [Docker image](https://hub.docker.com/_/mariadb).\n",
"\n",
"To start the server:"
]
},
{
"cell_type": "code",
"execution_count": 2,
"id": "f9c88366",
"metadata": {
"tags": []
},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"c2a0a18f9c37285ffdb17b22d75a3a8ae789a93f58a59c9c1892a4f30f7bf9a2\n"
]
}
],
"source": [
"%%bash\n",
"docker run --detach --name mariadb \\\n",
" --env MARIADB_USER=user \\\n",
" --env MARIADB_PASSWORD=password \\\n",
" --env MARIADB_ROOT_PASSWORD=password \\\n",
" --env MARIADB_DATABASE=db \\\n",
" -p 3306:3306 mariadb:latest"
]
},
{
"cell_type": "markdown",
"id": "eaae2079",
"metadata": {},
"source": [
"Ensure that the container is running:"
]
},
{
"cell_type": "code",
"execution_count": 3,
"id": "ec326f31-6cac-4f97-a5f6-5538e694082b",
"metadata": {
"tags": []
},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"CONTAINER ID IMAGE COMMAND CREATED STATUS PORTS NAMES\n",
"c2a0a18f9c37 mariadb:latest \"docker-entrypoint.s…\" 1 second ago Up Less than a second 0.0.0.0:3306->3306/tcp mariadb\n"
]
}
],
"source": [
"%%bash\n",
"docker ps"
]
},
{
"cell_type": "markdown",
"id": "9d74d2df",
"metadata": {},
"source": [
"## Load sample data\n",
"\n",
"Now, let's fetch some sample data. We'll be using the [NYC taxi dataset](https://www.nyc.gov/site/tlc/about/tlc-trip-record-data.page):"
]
},
{
"cell_type": "code",
"execution_count": 4,
"id": "82b7d34f-aa22-4625-b2ff-cebcc70747da",
"metadata": {},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"Note: you may need to restart the kernel to use updated packages.\n"
]
}
],
"source": [
"%pip install pandas pyarrow --quiet"
]
},
{
"cell_type": "code",
"execution_count": 5,
"id": "16b1bfed",
"metadata": {
"tags": []
},
"outputs": [
{
"data": {
"text/plain": [
"(1369769, 19)"
]
},
"execution_count": 5,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"import pandas as pd\n",
"\n",
"df = pd.read_parquet(\n",
" \"https://d37ci6vzurychx.cloudfront.net/trip-data/yellow_tripdata_2021-01.parquet\"\n",
")\n",
"df.shape"
]
},
{
"cell_type": "markdown",
"id": "f9ba5421",
"metadata": {},
"source": [
"As you can see, this chunk of data contains ~1.4M rows, loading the data will take about a minute:"
]
},
{
"cell_type": "code",
"execution_count": 6,
"id": "a3402cdf",
"metadata": {
"tags": []
},
"outputs": [],
"source": [
"from sqlalchemy import create_engine\n",
"\n",
"engine = create_engine(\"mysql+mysqldb://user:password@127.0.0.1:3306/db\")\n",
"df.to_sql(name=\"taxi\", con=engine, chunksize=100_000)\n",
"engine.dispose()"
]
},
{
"cell_type": "markdown",
"id": "c7f25de0",
"metadata": {
"user_expressions": []
},
"source": [
"## Query\n",
"\n",
"```{note}\n",
"`mysql` and `mysql+pymysql` connections (and perhaps others) don't read your client character set information from `.my.cnf.` You need to specify it in the connection string:\n",
"\n",
"~~~\n",
"mysql+pymysql://scott:tiger@localhost/foo?charset=utf8\n",
"~~~\n",
"```\n",
"\n",
"\n",
"Now, let's install JupySQL, authenticate and start querying the data!"
]
},
{
"cell_type": "code",
"execution_count": 7,
"id": "3df653d7",
"metadata": {
"tags": []
},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"Note: you may need to restart the kernel to use updated packages.\n"
]
}
],
"source": [
"%pip install jupysql --quiet\n",
"%load_ext sql\n",
"%sql mysql+mysqldb://user:password@127.0.0.1:3306/db"
]
},
{
"cell_type": "markdown",
"id": "4e7beda3",
"metadata": {},
"source": [
"```{important}\n",
"If the cell above fails, you might have some missing packages. Message us on [Slack](https://ploomber.io/community) and we'll help you!\n",
"```"
]
},
{
"cell_type": "markdown",
"id": "42d41200-2429-4f50-98c4-d974065f8070",
"metadata": {},
"source": [
"List the tables in the database:"
]
},
{
"cell_type": "code",
"execution_count": 13,
"id": "3ff7c2d9-20b3-4214-bbd0-8043dd78aa67",
"metadata": {
"tags": []
},
"outputs": [
{
"data": {
"text/html": [
"
\n",
" \n",
" \n",
" Name | \n",
"
\n",
" \n",
" \n",
" \n",
" taxi | \n",
"
\n",
" \n",
"
"
],
"text/plain": [
"+------+\n",
"| Name |\n",
"+------+\n",
"| taxi |\n",
"+------+"
]
},
"execution_count": 13,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"%sqlcmd tables"
]
},
{
"cell_type": "markdown",
"id": "89b881b3-ec2f-4002-ba61-2cf3c9fe2ef2",
"metadata": {},
"source": [
"List columns in the taxi table:"
]
},
{
"cell_type": "code",
"execution_count": 14,
"id": "547d41a8-2ea1-4152-a4da-653da9f4bcc9",
"metadata": {
"tags": []
},
"outputs": [
{
"data": {
"text/html": [
"\n",
" \n",
" \n",
" name | \n",
" type | \n",
" default | \n",
" comment | \n",
" nullable | \n",
" autoincrement | \n",
"
\n",
" \n",
" \n",
" \n",
" index | \n",
" BIGINT | \n",
" None | \n",
" None | \n",
" True | \n",
" False | \n",
"
\n",
" \n",
" VendorID | \n",
" BIGINT | \n",
" None | \n",
" None | \n",
" True | \n",
" False | \n",
"
\n",
" \n",
" tpep_pickup_datetime | \n",
" DATETIME | \n",
" None | \n",
" None | \n",
" True | \n",
" | \n",
"
\n",
" \n",
" tpep_dropoff_datetime | \n",
" DATETIME | \n",
" None | \n",
" None | \n",
" True | \n",
" | \n",
"
\n",
" \n",
" passenger_count | \n",
" DOUBLE | \n",
" None | \n",
" None | \n",
" True | \n",
" | \n",
"
\n",
" \n",
" trip_distance | \n",
" DOUBLE | \n",
" None | \n",
" None | \n",
" True | \n",
" | \n",
"
\n",
" \n",
" RatecodeID | \n",
" DOUBLE | \n",
" None | \n",
" None | \n",
" True | \n",
" | \n",
"
\n",
" \n",
" store_and_fwd_flag | \n",
" TEXT | \n",
" None | \n",
" None | \n",
" True | \n",
" | \n",
"
\n",
" \n",
" PULocationID | \n",
" BIGINT | \n",
" None | \n",
" None | \n",
" True | \n",
" False | \n",
"
\n",
" \n",
" DOLocationID | \n",
" BIGINT | \n",
" None | \n",
" None | \n",
" True | \n",
" False | \n",
"
\n",
" \n",
" payment_type | \n",
" BIGINT | \n",
" None | \n",
" None | \n",
" True | \n",
" False | \n",
"
\n",
" \n",
" fare_amount | \n",
" DOUBLE | \n",
" None | \n",
" None | \n",
" True | \n",
" | \n",
"
\n",
" \n",
" extra | \n",
" DOUBLE | \n",
" None | \n",
" None | \n",
" True | \n",
" | \n",
"
\n",
" \n",
" mta_tax | \n",
" DOUBLE | \n",
" None | \n",
" None | \n",
" True | \n",
" | \n",
"
\n",
" \n",
" tip_amount | \n",
" DOUBLE | \n",
" None | \n",
" None | \n",
" True | \n",
" | \n",
"
\n",
" \n",
" tolls_amount | \n",
" DOUBLE | \n",
" None | \n",
" None | \n",
" True | \n",
" | \n",
"
\n",
" \n",
" improvement_surcharge | \n",
" DOUBLE | \n",
" None | \n",
" None | \n",
" True | \n",
" | \n",
"
\n",
" \n",
" total_amount | \n",
" DOUBLE | \n",
" None | \n",
" None | \n",
" True | \n",
" | \n",
"
\n",
" \n",
" congestion_surcharge | \n",
" DOUBLE | \n",
" None | \n",
" None | \n",
" True | \n",
" | \n",
"
\n",
" \n",
" airport_fee | \n",
" DOUBLE | \n",
" None | \n",
" None | \n",
" True | \n",
" | \n",
"
\n",
" \n",
"
"
],
"text/plain": [
"+-----------------------+----------+---------+---------+----------+---------------+\n",
"| name | type | default | comment | nullable | autoincrement |\n",
"+-----------------------+----------+---------+---------+----------+---------------+\n",
"| index | BIGINT | None | None | True | False |\n",
"| VendorID | BIGINT | None | None | True | False |\n",
"| tpep_pickup_datetime | DATETIME | None | None | True | |\n",
"| tpep_dropoff_datetime | DATETIME | None | None | True | |\n",
"| passenger_count | DOUBLE | None | None | True | |\n",
"| trip_distance | DOUBLE | None | None | True | |\n",
"| RatecodeID | DOUBLE | None | None | True | |\n",
"| store_and_fwd_flag | TEXT | None | None | True | |\n",
"| PULocationID | BIGINT | None | None | True | False |\n",
"| DOLocationID | BIGINT | None | None | True | False |\n",
"| payment_type | BIGINT | None | None | True | False |\n",
"| fare_amount | DOUBLE | None | None | True | |\n",
"| extra | DOUBLE | None | None | True | |\n",
"| mta_tax | DOUBLE | None | None | True | |\n",
"| tip_amount | DOUBLE | None | None | True | |\n",
"| tolls_amount | DOUBLE | None | None | True | |\n",
"| improvement_surcharge | DOUBLE | None | None | True | |\n",
"| total_amount | DOUBLE | None | None | True | |\n",
"| congestion_surcharge | DOUBLE | None | None | True | |\n",
"| airport_fee | DOUBLE | None | None | True | |\n",
"+-----------------------+----------+---------+---------+----------+---------------+"
]
},
"execution_count": 14,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"%sqlcmd columns --table taxi"
]
},
{
"cell_type": "markdown",
"id": "490e8aae-2aa1-4c19-bb2a-141849b03c2d",
"metadata": {},
"source": [
"Query our data:"
]
},
{
"cell_type": "code",
"execution_count": 8,
"id": "84902d46",
"metadata": {
"tags": []
},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"* mysql+mysqldb://user:***@127.0.0.1:3306/db\n",
"1 rows affected.\n"
]
},
{
"data": {
"text/html": [
"\n",
" \n",
" \n",
" COUNT(*) | \n",
"
\n",
" \n",
" \n",
" \n",
" 1369769 | \n",
"
\n",
" \n",
"
"
],
"text/plain": [
"[(1369769,)]"
]
},
"execution_count": 8,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"%%sql\n",
"SELECT COUNT(*) FROM taxi"
]
},
{
"cell_type": "markdown",
"id": "4e838b37-e679-4ffa-98b7-1dc80e909a41",
"metadata": {},
"source": [
"## Parametrize queries"
]
},
{
"cell_type": "code",
"execution_count": 9,
"id": "ff575b33-c27c-4c58-8f31-17b930454191",
"metadata": {
"tags": []
},
"outputs": [],
"source": [
"threshold = 10"
]
},
{
"cell_type": "code",
"execution_count": 10,
"id": "58106d30-790d-4c8a-88da-86dd0b0c12bc",
"metadata": {
"tags": []
},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"* mysql+mysqldb://user:***@127.0.0.1:3306/db\n",
"1 rows affected.\n"
]
},
{
"data": {
"text/html": [
"\n",
" \n",
" \n",
" COUNT(*) | \n",
"
\n",
" \n",
" \n",
" \n",
" 1297415 | \n",
"
\n",
" \n",
"
"
],
"text/plain": [
"[(1297415,)]"
]
},
"execution_count": 10,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"%%sql\n",
"SELECT COUNT(*) FROM taxi\n",
"WHERE trip_distance < {{threshold}}"
]
},
{
"cell_type": "code",
"execution_count": 11,
"id": "b820944c-0016-484a-a23f-42f4290ccce8",
"metadata": {
"tags": []
},
"outputs": [],
"source": [
"threshold = 0.5"
]
},
{
"cell_type": "code",
"execution_count": 12,
"id": "7fb73771-2251-4ed4-95ca-8f89ef0131b6",
"metadata": {
"tags": []
},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"* mysql+mysqldb://user:***@127.0.0.1:3306/db\n",
"1 rows affected.\n"
]
},
{
"data": {
"text/html": [
"\n",
" \n",
" \n",
" COUNT(*) | \n",
"
\n",
" \n",
" \n",
" \n",
" 73849 | \n",
"
\n",
" \n",
"
"
],
"text/plain": [
"[(73849,)]"
]
},
"execution_count": 12,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"%%sql\n",
"SELECT COUNT(*) FROM taxi\n",
"WHERE trip_distance < {{threshold}}"
]
},
{
"cell_type": "markdown",
"id": "cffcaf73-c2f3-4cc6-b777-7a2784c743e9",
"metadata": {},
"source": [
"## CTEs\n",
"\n",
"You can break down queries into multiple cells, JupySQL will build a CTE for you:"
]
},
{
"cell_type": "code",
"execution_count": 15,
"id": "7ec71402",
"metadata": {
"tags": []
},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"* mysql+mysqldb://user:***@127.0.0.1:3306/db\n",
"Skipping execution...\n"
]
}
],
"source": [
"%%sql --save many_passengers --no-execute\n",
"SELECT *\n",
"FROM taxi\n",
"WHERE passenger_count > 3\n",
"-- remove top 1% outliers for better visualization\n",
"AND trip_distance < 18.93"
]
},
{
"cell_type": "code",
"execution_count": 16,
"id": "e5195ed0-d354-4565-937e-fb6be55e4353",
"metadata": {
"tags": []
},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"* mysql+mysqldb://user:***@127.0.0.1:3306/db\n",
"1 rows affected.\n"
]
},
{
"data": {
"text/html": [
"\n",
" \n",
" \n",
" MIN(trip_distance) | \n",
" AVG(trip_distance) | \n",
" MAX(trip_distance) | \n",
"
\n",
" \n",
" \n",
" \n",
" 0.0 | \n",
" 2.5010889812889836 | \n",
" 18.92 | \n",
"
\n",
" \n",
"
"
],
"text/plain": [
"[(0.0, 2.5010889812889836, 18.92)]"
]
},
"execution_count": 16,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"%%sql --save trip_stats --with many_passengers\n",
"SELECT MIN(trip_distance), AVG(trip_distance), MAX(trip_distance)\n",
"FROM many_passengers"
]
},
{
"cell_type": "markdown",
"id": "4e9882ea-2769-4a12-abc3-1a2bf95bfdc0",
"metadata": {},
"source": [
"This is what JupySQL executes:"
]
},
{
"cell_type": "code",
"execution_count": 17,
"id": "636803f1-7c40-4695-b950-5604dad98c33",
"metadata": {
"tags": []
},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"WITH `many_passengers` AS (\n",
"SELECT *\n",
"FROM taxi\n",
"WHERE passenger_count > 3\n",
"-- remove top 1% outliers for better visualization\n",
"AND trip_distance < 18.93)\n",
"SELECT MIN(trip_distance), AVG(trip_distance), MAX(trip_distance)\n",
"FROM many_passengers\n"
]
}
],
"source": [
"query = %sqlcmd snippets trip_stats\n",
"print(query)"
]
},
{
"cell_type": "markdown",
"id": "8599517c-10a3-47f4-9a5d-a4d45712503a",
"metadata": {},
"source": [
"## Plotting"
]
},
{
"cell_type": "code",
"execution_count": 18,
"id": "3c7845eb-59f4-495f-a3a3-d9ff150e323e",
"metadata": {
"tags": []
},
"outputs": [
{
"data": {
"text/plain": [
""
]
},
"execution_count": 18,
"metadata": {},
"output_type": "execute_result"
},
{
"data": {
"image/png": 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",
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