RPN command-line calculator
-
Updated
Feb 18, 2026 - Python
RPN command-line calculator
Functional programming language designed for readable & expressive code, extensibility, and mathematical computing with arbitrary precision arithmetic.
Assorted functions for statistics and mathematics built on mpmath.
Find polynomial roots with multiplicities using mpmath.
Experimental Riemann Hypothesis numeric scanner for Python
A Scientific Calculator with Graphing and advanced mathematical calculation capabilities
Certified first 1,000 nontrivial zeros of the Riemann zeta function using a dual-evaluator (mpmath ΞΆ + Ξ·βseries) contour method with strict Krawczyk isolation and automatic refinement.
Python Transcendental Equation Solvers
SoluΓ§Γ£o robusta para o MΓ©todo dos MΓnimos Quadrados em Python. Projetada para ajustar polinΓ΄mios de grau alto (10+) sem divergΓͺncia. Integra aritmΓ©tica de precisΓ£o infinita, correΓ§Γ£o automΓ‘tica para falta de dados e estabilizaΓ§Γ£o de matrizes mal-condicionadas. Ideal para modelagem matemΓ‘tica onde o NumPy padrΓ£o falha por erros de arredondamento.
First-principles derivation of the fine-structure constant (Ξ±β1) via Modular Information Thermodynamics (Z/6Z). Includes Python validation code demonstrating 10β14 precision against CODATA 2022, effectively eliminating alpha as a free parameter.
Official repository for the Modular Substrate Theory (MST). Unifying alpha, H0, e, and zeta(0) via a Z/6Z substrate. Featuring 110-digit precision audits, a 10^-14 exact derivation of the fine-structure constant, and the resolution of the Hubble tension.
Lerch transcendent implementation for arbitrary-precision
Official repo for the paper: "The Emergence of Geometry". Analytical derivation and 150-digit validation of the identity linking ΞΆ(0), ln 2, and the emergence of spatial geometry within the Z/6Z modular substrate.
A few functions related to signal processing, implemented with mpmath.
π Certify and explore the first 1,000 nontrivial zeros of the Riemann zeta function with a reliable, reproducible dataset for research and analysis.
Add a description, image, and links to the mpmath topic page so that developers can more easily learn about it.
To associate your repository with the mpmath topic, visit your repo's landing page and select "manage topics."