Sensitivity Analysis Library in Python. Contains Sobol, Morris, FAST, and other methods.
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Updated
Jun 24, 2026 - Python
Sensitivity Analysis Library in Python. Contains Sobol, Morris, FAST, and other methods.
A Sobol sequence generator for Scala and Javascript
(t, m, s)-nets generator / Генератор (t, m, s)-сетей
Sobol sequence generator
Lightweight, no_std-friendly RNG library for Rust. Xoshiro256++ default; optional Mersenne Twister, PCG32/64, ChaCha20 CSPRNG, SIMD bulk-byte (NEON/AVX2), Halton/Sobol/Van der Corput quasi-random. Ziggurat normal(), 4 built-in distributions + pluggable Distribution trait. 100% test coverage.
Spatial Statistic with Kriging
APEXSENSUN is a package in R for performing uncertainty and sensitivity analysis for the APEX model.
Battery life modeling pipeline: power decomposition + WLS estimation + RK4 SOC simulation for TTE prediction; includes scenario analysis, Monte Carlo uncertainty, Sobol sensitivity, and optimization (paper/fit dual mode).
Sensitivity Analysis script using Sobol method implemented in R.
experiment with the quasi-random Sobol sequence
Python derivatives analytics with Monte Carlo and Sobol pricing, Black-Scholes validation, variance reduction, Greeks, implied volatility, and Streamlit.
Random number generation for AWS Trainium via NKI (cuRAND-equivalent) — Philox counter-based RNG, standard distributions, Sobol / Halton / Latin-hypercube quasi-random sequences for Monte Carlo and QMC.
Quasi-Random Sequence Generators in Rust
Zero-dependency seeded key generation framework for Python — define parameter spaces, generate unique keys, and persist results.
Low-discrepancy (quasi-random) sequence generators for Scilab (Halton/Sobol/Faure/Niederreiter) — modernized to build on Scilab 2026.1.0
Generalized Niederreiter Sequences
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