Назад към всички

scipy-optimization-toolkit

// SciPy scientific computing skill for numerical optimization, integration, and signal processing in physics

$ git log --oneline --stat
stars:384
forks:73
updated:March 4, 2026
SKILL.mdreadonly
SKILL.md Frontmatter
namescipy-optimization-toolkit
descriptionSciPy scientific computing skill for numerical optimization, integration, and signal processing in physics
allowed-toolsBash,Read,Write,Edit,Glob,Grep
metadata[object Object]

SciPy Optimization Toolkit

Purpose

Provides expert guidance on SciPy for scientific computing in physics, including optimization, integration, and signal processing.

Capabilities

  • Nonlinear least squares fitting
  • Global optimization methods
  • Numerical integration (quadrature)
  • ODE/PDE solvers
  • Signal processing (FFT, filtering)
  • Sparse matrix operations

Usage Guidelines

  1. Optimization: Use appropriate optimizer for the problem type
  2. Fitting: Apply nonlinear least squares for data fitting
  3. Integration: Choose proper quadrature methods
  4. ODEs: Solve differential equations with adaptive solvers
  5. Signal Processing: Apply FFT and filtering techniques

Tools/Libraries

  • SciPy
  • NumPy
  • lmfit