2022-07-23 09:06:31 +00:00
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---
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sidebar_position: 9
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title: Databases
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---
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import current from '/version.js';
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import Tabs from '@theme/Tabs';
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import TabItem from '@theme/TabItem';
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2022-07-24 10:22:17 +00:00
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"Database" is a catch-all term referring to traditional RDBMS as well as K/V
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stores, document databases, and other "NoSQL" storages. There are many external
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database systems as well as browser APIs like WebSQL and `localStorage`
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This demo discusses general strategies and provides examples for a variety of
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database systems. The examples are merely intended to demonstrate very basic
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functionality.
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## Structured Tables
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Database tables are a common import and export target for spreadsheets. One
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common representation of a database table is an array of JS objects whose keys
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are column headers and whose values are the underlying data values. For example,
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| Name | Index |
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| :----------- | ----: |
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| Barack Obama | 44 |
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| Donald Trump | 45 |
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| Joseph Biden | 46 |
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is naturally represented as an array of objects
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```js
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[
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{ Name: "Barack Obama", Index: 44 },
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{ Name: "Donald Trump", Index: 45 },
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{ Name: "Joseph Biden", Index: 46 }
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]
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```
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The `sheet_to_json` and `json_to_sheet` helper functions work with objects of
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similar shape, converting to and from worksheet objects. The corresponding
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worksheet would include a header row for the labels:
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```
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XXX| A | B |
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---+--------------+-------+
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1 | Name | Index |
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2 | Barack Obama | 44 |
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3 | Donald Trump | 45 |
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3 | Joseph Biden | 46 |
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```
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### Building Worksheets from Structured Tables
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There are NodeJS connector libraries for many popular RDBMS systems. Libraries
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have facilities for connecting to a database, executing queries, and obtaining
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results as arrays of JS objects that can be passed to `json_to_sheet`. The main
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differences surround API shape and supported data types.
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For example, `better-sqlite3` is a connector library for SQLite. The result of
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a `SELECT` query is an array of objects suitable for `json_to_sheet`:
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```js
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var aoo = db.prepare("SELECT * FROM 'Presidents' LIMIT 100000").all();
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// highlight-next-line
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var worksheet = XLSX.utils.json_to_sheet(aoo);
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```
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Other databases will require post-processing. For example, MongoDB results
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include the Object ID (usually stored in the `_id` key). This can be removed
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before generating a worksheet:
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```js
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const aoo = await db.collection('coll').find({}).toArray();
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// highlight-next-line
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aoo.forEach((x) => delete x._id);
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const ws = XLSX.utils.json_to_sheet(aoo);
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```
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### Building Schemas from Worksheets
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When a strict schema is needed, the `sheet_to_json` helper function generates
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arrays of JS objects that can be scanned to determine the column "types".
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:::note
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Document databases like MongoDB tend not to require schemas. Arrays of objects
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can be used directly without setting up a schema:
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```js
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const aoa = XLSX.utils.sheet_to_json(ws);
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// highlight-next-line
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await db.collection('coll').insertMany(aoa, { ordered: true });
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```
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:::
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This example will fetch <https://sheetjs.com/cd.xls>, scan the columns of the
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first worksheet to determine data types, and generate 6 PostgreSQL statements.
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<details><summary><b>Explanation</b> (click to show)</summary>
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The relevant `generate_sql` function takes a worksheet name and a table name:
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```js
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// define mapping between determined types and PostgreSQL types
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const PG = { "n": "float8", "s": "text", "b": "boolean" };
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function generate_sql(ws, wsname) {
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// generate an array of objects from the data
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const aoo = XLSX.utils.sheet_to_json(ws);
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// types will map column headers to types, while hdr holds headers in order
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const types = {}, hdr = [];
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// loop across each row object
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aoo.forEach(row =>
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// Object.entries returns a row of [key, value] pairs. Loop across those
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Object.entries(row).forEach(([k,v]) => {
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// If this is first time seeing key, mark unknown and append header array
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if(!types[k]) { types[k] = "?"; hdr.push(k); }
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// skip null and undefined
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if(v == null) return;
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// check and resolve type
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switch(typeof v) {
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case "string": // strings are the broadest type
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types[k] = "s"; break;
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case "number": // if column is not string, number is the broadest type
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if(types[k] != "s") types[k] = "n"; break;
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case "boolean": // only mark boolean if column is unknown or boolean
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if("?b".includes(types[k])) types[k] = "b"; break;
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default: types[k] = "s"; break; // default to string type
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}
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})
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);
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// The final array consists of the CREATE TABLE query and a series of INSERTs
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return [
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// generate CREATE TABLE query and return batch
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`CREATE TABLE \`${wsname}\` (${hdr.map(h =>
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// column name must be wrapped in backticks
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`\`${h}\` ${PG[types[h]]}`
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).join(", ")});`
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].concat(aoo.map(row => { // generate INSERT query for each row
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// entries will be an array of [key, value] pairs for the data in the row
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const entries = Object.entries(row);
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// fields will hold the column names and values will hold the values
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const fields = [], values = [];
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// check each key/value pair in the row
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entries.forEach(([k,v]) => {
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// skip null / undefined
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if(v == null) return;
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// column name must be wrapped in backticks
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fields.push(`\`${k}\``);
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// when the field type is numeric, `true` -> 1 and `false` -> 0
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if(types[k] == "n") values.push(typeof v == "boolean" ? (v ? 1 : 0) : v);
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// otherwise,
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else values.push(`'${v.toString().replaceAll("'", "''")}'`);
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})
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if(fields.length) return `INSERT INTO \`${wsname}\` (${fields.join(", ")}) VALUES (${values.join(", ")})`;
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})).filter(x => x); // filter out skipped rows
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}
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```
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</details>
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```jsx live
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function SheetJSQLWriter() {
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// define mapping between determined types and PostgreSQL types
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const PG = { "n": "float8", "s": "text", "b": "boolean" };
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function generate_sql(ws, wsname) {
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const aoo = XLSX.utils.sheet_to_json(ws);
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const types = {}, hdr = [];
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// loop across each key in each column
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aoo.forEach(row => Object.entries(row).forEach(([k,v]) => {
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// set up type if header hasn't been seen
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if(!types[k]) { types[k] = "?"; hdr.push(k); }
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// check and resolve type
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switch(typeof v) {
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case "string": types[k] = "s"; break;
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case "number": if(types[k] != "s") types[k] = "n"; break;
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case "boolean": if("?b".includes(types[k])) types[k] = "b"; break;
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default: types[k] = "s"; break;
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}
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}));
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return [
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// generate CREATE TABLE query and return batch
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`CREATE TABLE \`${wsname}\` (${hdr.map(h => `\`${h}\` ${PG[types[h]]}`).join(", ")});`
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].concat(aoo.map(row => {
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const entries = Object.entries(row);
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const fields = [], values = [];
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entries.forEach(([k,v]) => {
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if(v == null) return;
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fields.push(`\`${k}\``);
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if(types[k] == "n") values.push(typeof v == "boolean" ? (v ? 1 : 0) : v);
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else values.push(`'${v.toString().replaceAll("'", "''")}'`);
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})
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if(fields.length) return `INSERT INTO \`${wsname}\` (${fields.join(", ")}) VALUES (${values.join(", ")})`;
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})).filter(x => x).slice(0, 5);
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}
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const [url, setUrl] = React.useState("https://sheetjs.com/cd.xls");
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const set_url = React.useCallback((evt) => setUrl(evt.target.value));
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const [out, setOut] = React.useState("");
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const xport = React.useCallback(async() => {
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console.log(url);
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const ab = await (await fetch(url)).arrayBuffer();
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const wb = XLSX.read(ab), wsname = wb.SheetNames[0];
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setOut(generate_sql(wb.Sheets[wsname], wsname).join("\n"));
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});
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return ( <> {out && (<pre>{out}</pre>)}
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<b>URL: </b><input type="text" value={url} onChange={set_url} size="50"/>
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<br/><button onClick={xport}><b>Fetch!</b></button>
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</> );
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}
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```
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## SQL
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### SQLite
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Most platforms offer a simple way to query SQLite databases.
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2022-07-23 09:06:31 +00:00
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The following example shows how to query for each table in an SQLite database,
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query for the data for each table, add each non-empty table to a workbook, and
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export as XLSX.
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[The Northwind database is available in SQLite form](https://github.com/jpwhite3/northwind-SQLite3/raw/master/Northwind_large.sqlite.zip).
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Download and expand the zip archive to reveal `Northwind_large.sqlite`
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<Tabs>
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<TabItem value="nodejs" label="NodeJS">
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2022-07-24 10:22:17 +00:00
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[The `better-sqlite3` module](https://www.npmjs.com/package/better-sqlite3)
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provides a very simple API for working with SQLite databases. `Statement#all`
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runs a prepared statement and returns an array of JS objects.
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2022-07-23 09:06:31 +00:00
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1) Install the dependencies:
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```bash
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$ npm i --save https://cdn.sheetjs.com/xlsx-latest/xlsx-latest.tgz better-sqlite3
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```
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2) Save the following to `node.mjs`:
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```js title="node.mjs"
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/* Load SQLite3 connector library */
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import Database from "better-sqlite3";
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/* Load SheetJS library */
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import * as XLSX from 'xlsx/xlsx.mjs';
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import * as fs from 'fs';
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XLSX.set_fs(fs);
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/* Initialize database */
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var db = Database("Northwind_large.sqlite");
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/* Create new workbook */
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var wb = XLSX.utils.book_new();
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/* Get list of table names */
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var sql = db.prepare("SELECT name FROM sqlite_master WHERE type='table'");
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var result = sql.all();
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/* Loop across each name */
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result.forEach(function(row) {
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/* Get first 100K rows */
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var aoo = db.prepare("SELECT * FROM '" + row.name + "' LIMIT 100000").all();
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if(aoo.length > 0) {
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/* Create Worksheet from the row objects */
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var ws = XLSX.utils.json_to_sheet(aoo, {dense: true});
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/* Add to Workbook */
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XLSX.utils.book_append_sheet(wb, ws, row.name);
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}
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});
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/* Write File */
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XLSX.writeFile(wb, "node.xlsx");
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```
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3) Run `node node.mjs` and open `node.xlsx`
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</TabItem>
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<TabItem value="bun" label="Bun">
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2022-07-24 10:22:17 +00:00
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Bun ships with a built-in high-performance module `bun:sqlite`.
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2022-07-23 09:06:31 +00:00
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1) Install the dependencies:
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```bash
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$ npm i --save https://cdn.sheetjs.com/xlsx-latest/xlsx-latest.tgz
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```
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2) Save the following to `bun.mjs`:
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```js title="bun.mjs"
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/* Load SQLite3 connector library */
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import { Database } from "bun:sqlite";
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/* Load SheetJS library */
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import * as XLSX from 'xlsx/xlsx.mjs';
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import * as fs from 'fs';
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XLSX.set_fs(fs);
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/* Initialize database */
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var db = Database.open("Northwind_large.sqlite");
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/* Create new workbook */
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var wb = XLSX.utils.book_new();
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/* Get list of table names */
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var sql = db.prepare("SELECT name FROM sqlite_master WHERE type='table'");
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var result = sql.all();
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/* Loop across each name */
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result.forEach(function(row) {
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/* Get first 100K rows */
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var aoo = db.prepare("SELECT * FROM '" + row.name + "' LIMIT 100000").all();
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if(aoo.length > 0) {
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/* Create Worksheet from the row objects */
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var ws = XLSX.utils.json_to_sheet(aoo, {dense: true});
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/* Add to Workbook */
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XLSX.utils.book_append_sheet(wb, ws, row.name);
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}
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});
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/* Write File */
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XLSX.writeFile(wb, "bun.xlsx");
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```
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3) Run `bun bun.mjs` and open `bun.xlsx`
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</TabItem>
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2022-07-24 10:22:17 +00:00
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</Tabs>
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### WebSQL
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:::warning
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This information is included for legacy deployments. Web SQL is deprecated.
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<https://caniuse.com/sql-storage> has up-to-date info on browser support.
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::::
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WebSQL was a popular SQL-based in-browser database available on Chrome. In
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practice, it is powered by SQLite, and most simple SQLite-compatible queries
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work as-is in WebSQL.
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The public demo <http://sheetjs.com/sql> generates a database from workbook.
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## Objects, K/V and "Schema-less" Databases
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So-called "Schema-less" databases allow for arbitrary keys and values within the
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entries in the database. K/V stores and Objects add additional restrictions.
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There is no natural way to translate arbitrarily shaped schemas to worksheets
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in a workbook. One common trick is to dedicate one worksheet to holding named
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keys. For example, considering the JS object:
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```json
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{
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"title": "SheetDB",
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"metadata": {
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"author": "SheetJS",
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"code": 7262
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},
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"data": [
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{ "Name": "Barack Obama", "Index": 44 },
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{ "Name": "Donald Trump", "Index": 45 },
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]
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}
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```
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A dedicated worksheet should store the one-off named values:
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```
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XXX| A | B |
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---+-----------------+---------+
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1 | Path | Value |
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2 | title | SheetDB |
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3 | metadata.author | SheetJS |
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4 | metadata.code | 7262 |
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```
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