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JAX-native Vector Symbolic Algebra library

Project description

VSAX: Vector Symbolic Algebra for JAX

PyPI version Python Version License Documentation Code style: ruff

VSAX is a GPU-accelerated, JAX-native Python library for Vector Symbolic Architectures (VSAs). It provides composable symbolic representations using hypervectors, algebraic operations for binding and bundling, and encoding strategies for symbolic and structured data.

Features

  • 🚀 Three VSA Models: FHRR, MAP, and Binary implementations ✅
  • 🏭 Factory Functions: One-line model creation with sensible defaults ✅
  • 💾 VSAMemory: Dictionary-style symbol management ✅
  • 📊 5 Core Encoders: Scalar, Sequence, Set, Dict, and Graph encoders ✅ NEW in v0.4.0
  • 🎨 Custom Encoders: Easy-to-extend AbstractEncoder base class ✅ NEW in v0.4.0
  • GPU-Accelerated: Built on JAX for high-performance computation
  • 🧩 Modular Architecture: Clean separation between representations and operations
  • 🧬 Complete Representations: Complex, Real, and Binary hypervectors ✅
  • ⚙️ Full Operation Sets: FFT-based FHRR, MAP, and XOR/majority Binary ops ✅
  • 🎲 Random Sampling: Sampling utilities for all representation types ✅
  • 🔍 Similarity Metrics: Cosine, dot, and Hamming similarity (coming in v0.5.0)
  • 📚 Comprehensive Documentation: Full API docs and examples ✅
  • 80%+ Test Coverage: 280+ tests ensuring reliability

Installation

From PyPI (Recommended)

pip install vsax

Or with uv:

uv pip install vsax

From Source

Using uv (Recommended)

uv is a fast Python package installer and resolver. Install it first:

# Install uv (Unix/macOS)
curl -LsSf https://astral.sh/uv/install.sh | sh

# Install uv (Windows)
powershell -c "irm https://astral.sh/uv/install.ps1 | iex"

Then install VSAX:

git clone https://github.com/vasanthsarathy/vsax.git
cd vsax

# Create virtual environment and install package
uv venv
source .venv/bin/activate  # On Windows: .venv\Scripts\activate
uv pip install -e .

Using pip

git clone https://github.com/vasanthsarathy/vsax.git
cd vsax
pip install -e .

Development Installation

Using uv (Recommended)

uv venv
source .venv/bin/activate  # On Windows: .venv\Scripts\activate
uv pip install -e ".[dev,docs]"

Using pip

pip install -e ".[dev,docs]"

Quick Start

New in v0.4.0: 5 core encoders for structured data!

Simple Example

from vsax import create_fhrr_model, VSAMemory, DictEncoder

# Create model with factory function (one line!)
model = create_fhrr_model(dim=512)

# Create memory for symbol management
memory = VSAMemory(model)

# Add symbols - automatically samples and stores hypervectors
memory.add_many(["subject", "action", "dog", "run", "cat", "jump"])

# Dictionary-style access
dog = memory["dog"]

# Encode structured data with DictEncoder
encoder = DictEncoder(model, memory)
sentence = encoder.encode({"subject": "dog", "action": "run"})

# Bind concepts (circular convolution)
dog_is_animal = model.opset.bind(dog.vec, memory["animal"].vec)

# Bundle concepts (sum and normalize)
pets = model.opset.bundle(memory["dog"].vec, memory["cat"].vec)

All Three Models

VSAX supports three VSA models, all with the same simple API:

from vsax import create_fhrr_model, create_map_model, create_binary_model, VSAMemory

# FHRR: Complex hypervectors, exact unbinding
fhrr = create_fhrr_model(dim=512)

# MAP: Real hypervectors, approximate unbinding
map_model = create_map_model(dim=512)

# Binary: Discrete hypervectors, exact unbinding
binary = create_binary_model(dim=10000, bipolar=True)

# Same interface for all models!
for model in [fhrr, map_model, binary]:
    memory = VSAMemory(model)
    memory.add("concept")
    vec = memory["concept"]

Advanced: Manual Model Creation

You can still create models manually if you need custom configuration:

from vsax import VSAModel, ComplexHypervector, FHRROperations, sample_complex_random

model = VSAModel(
    dim=512,
    rep_cls=ComplexHypervector,
    opset=FHRROperations(),
    sampler=sample_complex_random
)

See docs/design-spec.md for complete technical specification.

Development Status

Currently in Iteration 4: Encoders + ExamplesFIRST USABLE RELEASE!

Completed

Iteration 1 (v0.1.0): Foundation & Infrastructure ✅

  • ✅ Core abstract classes (AbstractHypervector, AbstractOpSet)
  • ✅ VSAModel dataclass
  • ✅ Package structure
  • ✅ Testing infrastructure (pytest, coverage)
  • ✅ CI/CD pipeline (GitHub Actions)
  • ✅ Documentation site (MkDocs)
  • ✅ Development tooling (ruff, mypy)

Iteration 2 (v0.2.0): All 3 Representations + All 3 OpSets ✅

  • ✅ ComplexHypervector, RealHypervector, BinaryHypervector
  • ✅ FHRROperations, MAPOperations, BinaryOperations
  • ✅ Sampling utilities (sample_random, sample_complex_random, sample_binary_random)
  • ✅ 175 comprehensive tests with 96% coverage
  • ✅ Full integration tests for all model combinations

Iteration 3 (v0.3.0): VSAMemory + Factory Functions ✅

  • ✅ VSAMemory class - dictionary-style symbol management
  • ✅ Factory functions (create_fhrr_model, create_map_model, create_binary_model)
  • ✅ Utility functions (coerce_to_array, validation helpers)
  • ✅ 230 tests with 89% coverage
  • ✅ Comprehensive documentation guides

Iteration 4 (v0.4.0): Encoders + Examples ✅ FIRST USABLE RELEASE!

  • ✅ ScalarEncoder - Numeric values with power encoding
  • ✅ SequenceEncoder - Ordered sequences (lists, tuples)
  • ✅ SetEncoder - Unordered collections (sets)
  • ✅ DictEncoder - Key-value pairs (dictionaries)
  • ✅ GraphEncoder - Graph structures (edge lists)
  • ✅ AbstractEncoder - Base class for custom encoders
  • ✅ Complete integration examples for all 3 models
  • ✅ Custom encoder examples (DateEncoder, ColorEncoder)
  • ✅ 280+ tests with 80%+ coverage

Coming Next

Iteration 5 (v0.5.0): Similarity Metrics & I/O

  • Cosine, dot, and Hamming similarity functions
  • Save/load functionality for basis vectors
  • Batch operations with JAX vmap

See todo.md for the complete development roadmap.

Documentation

Contributing

We welcome contributions! Please see CONTRIBUTING.md for guidelines.

Development

Run tests:

pytest

Run tests with coverage:

pytest --cov=vsax --cov-report=term-missing

Type checking:

mypy vsax

Linting:

ruff check vsax tests

Build documentation:

mkdocs serve

License

VSAX is released under the MIT License. See LICENSE for details.

Citation

If you use VSAX in your research, please cite:

@software{vsax2025,
  title = {VSAX: Vector Symbolic Algebra for JAX},
  author = {Sarathy, Vasanth},
  year = {2025},
  url = {https://github.com/vasanthsarathy/vsax},
  version = {0.2.0}
}

Acknowledgments

VSAX is built on JAX and inspired by the VSA/HDC research community.

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