

NumFu Programming Language
NumFu is a pure, interpreted, functional programming language designed for readable & expressive code, extensibility, and ease of learning for beginners.
NumFu's simple syntax and semantics make it well-suited for educational applications, such as courses in functional programming and general programming introductions. At the same time, as its name suggests, NumFu is also ideal for exploring mathematical ideas and sketching algorithms, thanks to its native support for arbitrary-precision arithmetic.
Features
- Arbitrary Precision Arithmetic - Reliable mathematical computing powered by Python's mpmath
- First-Class Functions - Automatic currying, partial application, and function composition
- Expressive Syntax - Infix operators, spread/rest operators, and lots of syntactic sugar
- Tail Call Optimization for efficient recursive algorithms without stack overflow
- Interactive Development - Friendly REPL and helpful error messages
- Minimal Complexity - Only four core types:
Number, Boolean, List, and String
- Python Integration - Large & reliable standard library through NumFu's Python runtime
- Extensible - NumFu is written entirely in Python with the goal of being extensible and easy to understand.
Quick Start
Installation
From PyPI
pip install numfu-lang
From Source
git clone https://github.com/rphle/numfu
cd numfu
make install
Hello NumFu!
Create hello.nfu:
import sqrt from "math"
// Mathematical computing with arbitrary precision
let golden = {depth ->
let recur =
{d -> if d <= 0 then 1 else 1 + 1 / recur(d - 1)}
in recur(depth)
} in golden(10) // ≈ 1.618
// Function composition & piping
let add1 = {x -> x + 1},
double = {x -> x * 2}
in 5 |> (add1 >> double) // 12
// Partial Application
{a, b, c -> a+b+c}(_, 5, _)
// {a,c -> a+5+c}
// Assertions
sqrt(49) ---> $ == 7
// Built-in testing with assertions
let square = {x -> x * x} in
square(7) ---> $ == 49 // ✓ passes
Run it:
numfu hello.nfu
Interactive REPL
numfu repl
NumFu REPL. Type 'exit' or press Ctrl+D to exit.
>>> 2 + 3 * 4
14
>>> let square = {x -> x * x} in square(7)
49
>>> import max from "math"
>>> [1, 2, 3, 4, 5, 6, 7] |> filter(_, {x -> x%2 == 0}) |> max
6
📖 Documentation
[!NOTE]
As a language interpreted in Python, which is itself an interpreted language, NumFu is not especially fast. Therefore, it is not recommended for performance-critical applications or large-scale projects. However, NumFu has not yet been thoroughly optimized so you can expect some performance improvements in the future.
🛠️ Development
Prerequisites
Setup Development Environment
git clone https://github.com/rphle/numfu
cd numfu
make dev
The make dev command also installs Pyright and Ruff via Pip. To format code and check types, it is strongly recommended to run both ruff check --fix and pyright before committing.
Building NumFu
make build
NumFu contains built-ins written in NumFu itself (src/numfu/stdlib/builtins.nfu).
make build first installs NumFu without the built-ins, then parses and serializes the file, and finally performs a full editable install. The script also builds NumFu and creates wheels.
Building Documentation
cd docusaurus && npm i && cd ..
make serve
make docs
Project Structure
numfu/
├── src/numfu/
│ ├── __init__.py # Package exports
│ ├── _version.py # Version & metadata
│ ├── classes.py # Basic dataclasses
│ ├── parser.py # Lark-based parser & AST generator
│ ├── interpreter.py # Complete Interpreter
│ ├── modules.py # Import/export & module resolving
│ ├── ast_types.py # AST node definitions
│ ├── builtins.py # Built-in functions
│ ├── cli.py # Command-line interface
│ ├── repl.py # Interactive REPL
│ ├── errors.py # Error handling & display
│ ├── typechecks.py # Built-in type system
│ ├── reconstruct.py # Code reconstruction for printing
│ ├── grammar/ # Lark grammar files
│ └── stdlib/ # Standard library modules
├── docs/ # Language documentation
│ ├── guide/ # User guides
│ └── reference/ # Reference
├── docusaurus/ # Docusaurus website
├── tests/ # Test files
├── scripts/ # Build and utility scripts
└── pyproject.toml # Configuration
Testing
NumFu is tested with over 300 tests covering core features, edge cases, and real-world examples — including most snippets from the documentation. Tests are grouped by category and include handwritten cases as well as tests generated by LLMs (mostly Claude Sonnet 4).
Every test is self-validating using assertions and fails with an error if the output isn’t exactly as expected.
To run all tests from the tests folder:
make test
Contributing
Found a bug or have an idea? Open an issue.
Want to contribute code?
- Check existing issues and TODO.md for open tasks.
- Run all tests before committing.
- Please consider running
ruff check and pyright to format code and check types before committing.
- Pull requests are welcome!
License
This project is licensed under Apache License 2.0 - see the LICENSE file for details.