GPU-accelerated Bayesian evidence calculation via radial shooting techniques
Project description
SunBURST
Seeded Universe Navigation — Bayesian Unification via Radial Shooting Techniques
A GPU-accelerated Bayesian evidence calculator achieving machine-precision accuracy through 1024 dimensions with sub-linear scaling.
Features
- Extreme scalability: O(D^0.67) scaling vs O(exp(D)) for traditional methods
- GPU acceleration: 1000× speedup over dynesty/PolyChord at matched dimensions
- High dimensions: Works reliably from 2D to 1024D+
- Pure Python: No compilation required, NumPy/CuPy compatible
- Automatic mode detection: Handles multimodal posteriors automatically
Installation
pip install sunburst-bayes
For GPU acceleration (optional but recommended):
pip install cupy-cuda11x # For CUDA 11.x
# or
pip install cupy-cuda12x # For CUDA 12.x
Quick Start
from sunburst import compute_evidence, get_array_module
# Define your log-likelihood (GPU-native, handles batched inputs)
def log_likelihood(x):
xp = get_array_module(x) # CuPy if GPU, NumPy if CPU
return -0.5 * xp.sum(x**2, axis=1) # Gaussian
# Define parameter bounds
dim = 64
bounds = [(-10, 10)] * dim
# Compute evidence
result = compute_evidence(log_likelihood, bounds)
print(f"log Z = {result.log_evidence:.4f} ± {result.log_evidence_std:.4f}")
print(f"Peaks found: {result.n_peaks}")
print(f"Time: {result.wall_time:.2f}s")
Expected output (RTX 3080, 64D Gaussian):
log Z = -91.8939 ± 0.0001
Peaks found: 1
Time: 0.71s
The true value is log Z = -91.8939 for a 64D unit Gaussian on [-10, 10]^64. SunBURST recovers it to machine precision in under a second.
When Not to Use SunBURST
SunBURST works best on posteriors that are approximately Gaussian near their peaks. It is not the right tool when:
- Heavy-tailed posteriors (e.g. Student-t with low ν). The Laplace approximation underestimates probability mass in the tails. Errors can exceed 100%.
- Highly curved or banana-shaped posteriors where the Hessian at the peak misrepresents the global geometry.
- Ring/shell distributions (e.g. donut posteriors) where probability mass concentrates far from any peak.
- You need posterior samples, not evidence. SunBURST computes log Z; it does not produce MCMC-like samples. Use dynesty or PolyChord if you need the posterior itself.
For these cases, traditional nested samplers remain more reliable. See Table 4 in the paper for detailed failure-mode benchmarks.
Interactive GUI
An interactive Streamlit demo is available:
git clone https://github.com/beastraban/sunburst.git
cd sunburst/sunburst_super_gui
pip install streamlit
streamlit run app.py
Performance Benchmarks
Tested on RTX 3080 Laptop GPU with n_oscillations=1:
| Dimension | SunBURST | dynesty | UltraNest | Speedup |
|---|---|---|---|---|
| 2D | 0.39s | 0.61s | 0.87s | 1.6–2.2× |
| 8D | 0.42s | 37s | 54s | 88–129× |
| 64D | 0.71s | TIMEOUT | TIMEOUT | >1200× |
| 256D | 2.72s | — | — | ∞ |
| 1024D | 14.0s | — | — | ∞ |
TIMEOUT = >600s (10 minutes)
SunBURST completes in seconds where traditional methods timeout.
Built-in Test
Verify your installation:
import sunburst
result = sunburst.test(dim=64) # Runs Gaussian benchmark
Or from command line:
sunburst --test gaussian --dim 64
Configuration Options
result = compute_evidence(
log_likelihood,
bounds,
n_oscillations=1, # 1=fast, 3=conservative mode detection
fast=True, # Fast Hessian estimation
return_peaks=True, # Include peak locations in result
verbose=False, # Suppress progress output
seed=42, # Reproducibility
)
Result Object
result.log_evidence # float: Estimated log Z
result.log_evidence_std # float: Uncertainty estimate
result.n_peaks # int: Number of modes found
result.peaks # ndarray: (n_peaks, dim) peak locations
result.hessians # list: Hessian matrices at peaks
result.log_evidence_per_peak # ndarray: Evidence contribution per peak
result.wall_time # float: Total computation time
result.module_times # dict: Per-stage timing breakdown
result.n_likelihood_calls # int: Total likelihood evaluations
result.config # dict: Configuration used
GPU Utilities
from sunburst import gpu_available, gpu_info, get_array_module
if gpu_available():
print(gpu_info())
xp = get_array_module() # Returns cupy if available, else numpy
Architecture
SunBURST uses a 4-stage pipeline, named after Guang Ping Yang Style Tai Chi forms:
- CarryTiger (抱虎歸山): Mode detection via ray casting
- GreenDragon (青龍出水): Peak refinement with L-BFGS
- BendTheBow (彎弓射虎): Evidence calculation via Laplace approximation
- GraspBirdsTail (攬雀尾): Optional dimensional reduction
Citation
If you use SunBURST in your research, please cite:
@article{wolfson2026sunburst,
title={SunBURST: Deterministic GPU-Accelerated Bayesian Evidence
via Mode-Centric Laplace Integration},
author={Wolfson, Ira},
journal={arXiv preprint arXiv:2601.19957},
year={2026}
}
License
MIT License — see LICENSE for details.
Contributing
Contributions welcome! Please see our contributing guidelines.
Acknowledgments
Module names honor Master Donald Rubbo and the Guang Ping Yang Style Tai Chi (廣平楊式太極拳) tradition.
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
Built Distribution
Filter files by name, interpreter, ABI, and platform.
If you're not sure about the file name format, learn more about wheel file names.
Copy a direct link to the current filters
File details
Details for the file sunburst_bayes-1.0.2.tar.gz.
File metadata
- Download URL: sunburst_bayes-1.0.2.tar.gz
- Upload date:
- Size: 2.5 MB
- Tags: Source
- Uploaded using Trusted Publishing? No
- Uploaded via: twine/6.2.0 CPython/3.11.14
File hashes
| Algorithm | Hash digest | |
|---|---|---|
| SHA256 |
a399a9188bffbd421db88baa7b2b720f0d5ad3738056d341d6d3f32f15dfd709
|
|
| MD5 |
266c961e660a8c914a2abeb17592e42f
|
|
| BLAKE2b-256 |
b948bdb8fe39ec061413da4c491359f347b52c18222d6380d405169f3cc6e30a
|
File details
Details for the file sunburst_bayes-1.0.2-py3-none-any.whl.
File metadata
- Download URL: sunburst_bayes-1.0.2-py3-none-any.whl
- Upload date:
- Size: 135.7 kB
- Tags: Python 3
- Uploaded using Trusted Publishing? No
- Uploaded via: twine/6.2.0 CPython/3.11.14
File hashes
| Algorithm | Hash digest | |
|---|---|---|
| SHA256 |
e477b7bebf1deda6f0d64175ce8f2d3688219aacf6a8ba1769c06d064927b79f
|
|
| MD5 |
ced896078d7f8269096e416bc4a2f5a2
|
|
| BLAKE2b-256 |
c7696f85f1a758c6637341f70ec74f7bad926cb75b23c2cba12348852bf8def8
|