Package Exports
- @tidy-ts/dataframe
- @tidy-ts/dataframe/index.js
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Readme
Tidy-TS
🔗 GitHub | 📚 Documentation
Type-safe data analytics and statistics framework for TypeScript. Built for modern data science workflows with compile-time safety, known to prevent 15-38% of production bugs.
Key Features
- Type-Safe DataFrames: Full TypeScript support with automatic column typing and compile-time safety
- Data Analytics: Group, aggregate, join, reshape, and analyze data with a fluent API
- Statistics Toolkit: 80+ functions for descriptive statistics, hypothesis testing, and probability distributions
- High Performance: Columnar storage with WASM-backed operations for critical paths
- Multi-Format I/O: Read/write CSV, XLSX, JSON, Parquet, and Arrow files with Zod schema validation
- Data Visualization: Create interactive charts with Vega-backed visualization (Jupyter notebook support)
- Async Operations: Built-in support for asynchronous data transformations with concurrency control
- Time-Series Support: Resampling, missing data handling, as-of joins, and rolling windows
Installation
deno add jsr:@tidy-ts/dataframe // Deno
bunx jsr add @tidy-ts/dataframe // bun
pnpm add jsr:@tidy-ts/dataframe // pnpm
npx jsr add @tidy-ts/dataframe // npm
yarn add jsr:@tidy-ts/dataframe // yarnBrowser Setup
For browser environments, call setupTidyTS() once before using any tidy-ts functions:
import { setupTidyTS, createDataFrame, stats } from "@tidy-ts/dataframe";
// Required in browsers - call once at app startup
await setupTidyTS();Quick Start
import { createDataFrame, stats as s } from "@tidy-ts/dataframe";
// Create DataFrame from rows
const sales = createDataFrame([
{ region: "North", product: "Widget", quantity: 10, price: 100 },
{ region: "South", product: "Widget", quantity: 20, price: 100 },
{ region: "East", product: "Widget", quantity: 8, price: 100 },
]);
// Complete data analysis workflow
const analysis = sales
.mutate({
revenue: (row) => row.quantity * row.price,
moreThanAvg: (row, _index, df) => row.quantity > s.mean(df.quantity)
})
.groupBy("region")
.summarize({
total_revenue: (group) => s.sum(group.revenue),
avg_quantity: (group) => s.mean(group.quantity),
product_count: (group) => group.nrows()
})
.arrange("total_revenue", "desc");
analysis.print("Sales Analysis");Core Operations
DataFrame Creation & Manipulation
createDataFrame([...])- Create from row objects with type inferencecreateDataFrame({ columns: {...} })- Create from column arraysselect(),drop()- Column selectionfilter(),slice()- Row filtering (sync & async)mutate()- Add/transform columns with functions, arrays, or scalars (sync & async)arrange()- Sort datadistinct()- Unique rowsnrows(),ncols()- Dimensionsdf.columnName- Direct readonly access to column arrays
Aggregation & Grouping
groupBy()- Group by columnssummarize()- Aggregate groups (sync & async)count()- Count rows by grouping columns
Joins & Reshaping
innerJoin(),leftJoin(),rightJoin(),outerJoin()- Multi-key joinsasofJoin()- Nearest key match for time-series datapivotLonger(),pivotWider()- Reshape data with type safetytranspose()- Flip rows and columns with type safetybindRows()- Concatenate DataFrames
Missing Data
replaceNull(),replaceUndefined()- Replace null/undefined with defaults (replaceNA()deprecated)removeNull(),removeUndefined()- Drop rows with null/undefined; narrow types for inference (filter alone cannot)fillForward(),fillBackward()- Forward/backward fillinterpolate()- Linear or spline interpolation
Features Overview
Statistical Analysis
80+ statistical functions including descriptive stats, hypothesis testing, and probability distributions. Features both direct test APIs and an intent-driven comparison API to help choose the right test.
import { stats as s } from "@tidy-ts/dataframe";
// Descriptive statistics
const mean = s.mean([1, 2, 3, 4, 5]);
const median = s.median([1, 2, 3, 4, 5]);
// Hypothesis testing - Direct API
const tTest = s.test.t.oneSample({
data: [170, 165, 180, 175, 172, 168],
mu: 170,
alternative: "two-sided",
alpha: 0.05
});
// Hypothesis testing - Compare API (intent-driven)
const comparison = s.compare.oneGroup.centralTendency.toValue({
data: [170, 165, 180, 175, 172, 168],
comparator: "not equal to",
hypothesizedValue: 170,
parametric: "auto",
alpha: 0.05
});
// Probability distributions
const normalSample = s.dist.normal.random({ mean: 0, standardDeviation: 1, sampleSize: 10 });
const quantile = s.dist.normal.quantile({ probability: 0.975, mean: 0, standardDeviation: 1 });📖 Statistical Analysis Guide →
Time-Series Operations
Comprehensive time-series functionality for handling temporal data with missing values, resampling, and advanced joins.
import { createDataFrame, stats as s } from "@tidy-ts/dataframe";
// Missing data handling
const timeSeries = createDataFrame([
{ timestamp: new Date("2023-01-01"), price: 100 },
{ timestamp: new Date("2023-01-02"), price: null },
{ timestamp: new Date("2023-01-04"), price: 110 },
]);
const filled = timeSeries.fillForward("price");
const interpolated = timeSeries.interpolate("price", "timestamp", "linear");
// Downsampling (aggregate to lower frequency)
const daily = hourlyData.downsample({
timeColumn: "timestamp",
frequency: "1D",
aggregations: { price: s.last, volume: s.sum }
});
// As-of joins
const joined = trades.asofJoin(quotes, "time", {
direction: "backward",
tolerance: 1000,
group_by: ["symbol"]
});
// Rolling windows
const rollingMean = s.rolling({ values: prices, windowSize: 7, fn: (window) => s.mean(window) });Data Visualization
Create interactive charts directly from DataFrames with Vega-backed visualization.
const chart = salesData
.mutate({
revenue: (r) => r.quantity * r.price,
profit: (r) => r.quantity * r.price * 0.2,
})
.graph({
type: "scatter",
mappings: {
x: "revenue",
y: "quantity",
color: "region",
size: "profit",
},
config: {
layout: { title: "Sales Analysis", width: 700, height: 400 },
color: { scheme: "professional" },
}
});
await chart.savePNG({ filename: "sales-chart.png" });Data I/O
Read and write multiple formats with Zod schema validation for type safety.
import { readCSV, readXLSX, readJSON, writeCSV, writeXLSX } from "@tidy-ts/dataframe";
import { readParquet, writeParquet } from "@tidy-ts/parquet";
import { readArrow, writeArrow } from "@tidy-ts/arrow";
import { z } from "zod";
const PersonSchema = z.object({
name: z.string(),
age: z.number(),
city: z.string(),
});
// Read with schema validation
const dataCSV = await readCSV(pathToCSV, PersonSchema);
const dataXLSX = await readXLSX(pathToXLSX, PersonSchema);
const dataParquet = await readParquet(pathToParquet, PersonSchema);
const dataArrow = await readArrow(pathToArrow, PersonSchema);
// Write
await writeCSV(dataframe, pathToSaveCSV);
await writeXLSX(dataframe, pathToSaveXLSX, { sheet: "Summary" });
await writeParquet(dataframe, pathToSaveParquet);
await writeArrow(dataframe, pathToSaveArrow);Database Integration
Seamlessly integrate with SQLite, Drizzle ORM, and other database libraries.
import { createDataFrame, stats } from "@tidy-ts/dataframe";
import { DatabaseSync } from "node:sqlite";
// Raw SQLite
const db = new DatabaseSync("data.db");
const employees = db.prepare("SELECT * FROM employees").all();
const employeesDF = createDataFrame(employees, EmployeeSchema);
// Drizzle ORM
import { drizzle } from "npm:drizzle-orm/libsql";
const employees = await db.select().from(employeesTable).all();
const employeesDF = createDataFrame(employees); // Auto-inferred typesAsync Operations
Mix sync and async operations seamlessly with built-in concurrency control.
const asyncData = await sales
.mutate({
revenue: r => r.quantity * r.price, // sync
market_data: async r => await fetchMarketData(r.region), // async
}, { concurrency: 3 })
.filter(async r => await validateRegion(r.region));Documentation
Visit the documentation website for:
- Complete API reference
- Detailed tutorials and examples
- Time-series operations guide
- Statistical analysis guide
- Data visualization guide
- And much more!
Architecture
Tidy-TS is built on a modern, performance-focused architecture:
- Columnar Storage: Memory-efficient column-major storage for cache-friendly operations
- Lazy Evaluation: Views use BitSet masks for copy-free filtering and sorting
- Copy-on-Write: Share unmodified columns between DataFrames to minimize memory usage
- WASM Integration: Performance-critical operations (joins, sorting, grouping) compiled to WebAssembly
- Type Safety: Full TypeScript type inference and checking throughout the API
Issues
If you encounter any problems or have feature requests, please open an issue on GitHub.
License
MIT