scientific-computing

star 5

Use when "scientific computing", "astronomy", "astropy", "bioinformatics", "biopython", "symbolic math", "sympy", "statistics", "statsmodels", "scientific Python"

eyadsibai By eyadsibai schedule Updated 1/15/2026

name: scientific-computing description: Use when "scientific computing", "astronomy", "astropy", "bioinformatics", "biopython", "symbolic math", "sympy", "statistics", "statsmodels", "scientific Python" version: 1.0.0

Scientific Computing

Domain-specific Python libraries for scientific applications.

Libraries

Library Domain Purpose
AstroPy Astronomy Coordinates, units, FITS files
BioPython Bioinformatics Sequences, BLAST, PDB
SymPy Mathematics Symbolic computation
Statsmodels Statistics Statistical modeling, tests

AstroPy

Astronomy and astrophysics computations.

Key capabilities:

  • Units: Physical unit handling with automatic conversion
  • Coordinates: Celestial coordinate systems (ICRS, galactic, etc.)
  • Time: Astronomical time scales (UTC, TAI, Julian dates)
  • FITS: Read/write FITS astronomical data format

Key concept: Unit-aware calculations prevent errors from unit mismatches.


BioPython

Bioinformatics - sequences, structures, databases.

Key capabilities:

  • Sequences: DNA/RNA/protein manipulation, translation, complement
  • File parsing: FASTA, GenBank, PDB formats
  • BLAST: Local and remote sequence alignment
  • NCBI Entrez: Database access (nucleotide, protein, taxonomy)

Key concept: SeqIO for reading any sequence format, Seq for sequence operations.


SymPy

Symbolic mathematics - algebra, calculus, equation solving.

Key capabilities:

  • Algebra: Solve equations, simplify, expand, factor
  • Calculus: Derivatives, integrals, limits, series
  • Linear algebra: Matrix operations, eigenvalues
  • Printing: LaTeX output for documentation

Key concept: Work with symbols, not numbers. Get exact answers, not approximations.


Statsmodels

Statistical modeling with R-like formula interface.

Key capabilities:

  • Regression: OLS, logistic, generalized linear models
  • Time series: ARIMA, VAR, state space models
  • Statistical tests: t-tests, ANOVA, diagnostics
  • Formula API: R-style formulas (y ~ x1 + x2)

Key concept: model.summary() gives comprehensive statistical output like R.


Decision Guide

Domain Library
Astronomy/astrophysics AstroPy
Biology/genetics BioPython
Symbolic math SymPy
Statistical analysis Statsmodels
Numerical computing NumPy, SciPy
Data manipulation Pandas

Resources

Install via CLI
npx skills add https://github.com/eyadsibai/ltk --skill scientific-computing
Repository Details
star Stars 5
call_split Forks 1
navigation Branch main
article Path SKILL.md
More from Creator