Julia Numerical
by kongdd
Execute numerical calculations and mathematical computations using Julia. Use this skill for matrix operations, linear algebra, numerical integration, optimization, statistics, and scientific computing tasks.
Skill Details
Repository Files
3 files in this skill directory
name: julia-numerical description: Execute numerical calculations and mathematical computations using Julia. Use this skill for matrix operations, linear algebra, numerical integration, optimization, statistics, and scientific computing tasks.
Julia Numerical Calculation Skill
This skill enables you to execute numerical calculations using Julia, a high-performance programming language designed for numerical and scientific computing.
When to Use
Use this skill when you need to:
- Perform matrix operations and linear algebra
- Solve differential equations
- Execute numerical integration or optimization
- Calculate statistical measures
- Handle large-scale numerical computations
- Work with complex mathematical operations
Setup
Before using this skill, ensure Julia is installed on your system:
# On macOS (using Homebrew)
brew install julia
# On Linux (Ubuntu/Debian)
sudo apt-get install julia
# On Windows (using Chocolatey)
choco install julia
# Or download from https://julialang.org/downloads/
Basic Examples
Linear Algebra
using LinearAlgebra
# Create matrices
A = [1 2; 3 4]
B = [5 6; 7 8]
# Matrix multiplication
C = A * B
# Eigenvalues and eigenvectors
eigenvals, eigenvecs = eigen(A)
# Matrix inverse
A_inv = inv(A)
Numerical Integration
using QuadGK
# Define a function
f(x) = sin(x) * exp(-x)
# Integrate from 0 to ∞
result, error = quadgk(f, 0, Inf)
Optimization
using Optim
# Define objective function
f(x) = (x[1] - 2)^2 + (x[2] - 3)^2
# Minimize
result = optimize(f, [0.0, 0.0])
Statistics
using Statistics
data = [1, 2, 3, 4, 5, 6, 7, 8, 9, 10]
# Statistical measures
mean_val = mean(data)
std_val = std(data)
var_val = var(data)
median_val = median(data)
How to Use This Skill
When you ask me to perform a numerical calculation:
- I'll identify the appropriate Julia packages needed
- Write Julia code to solve the problem
- Execute the code
- Return results and explanations
Common Julia Packages
- LinearAlgebra: Matrix operations and linear algebra
- Statistics: Statistical functions
- QuadGK: Numerical integration
- Optim: Optimization algorithms
- DifferentialEquations: Solving differential equations
- Plots: Visualization
- Distributions: Probability distributions
- Random: Random number generation
Notes
- Julia is JIT-compiled, so first runs may include compilation time
- Use
.jlfiles for organizing longer scripts - Install packages with
using Pkg; Pkg.add("PackageName") - Results are returned as Julia objects that are converted to readable format
Related Skills
Attack Tree Construction
Build comprehensive attack trees to visualize threat paths. Use when mapping attack scenarios, identifying defense gaps, or communicating security risks to stakeholders.
Grafana Dashboards
Create and manage production Grafana dashboards for real-time visualization of system and application metrics. Use when building monitoring dashboards, visualizing metrics, or creating operational observability interfaces.
Matplotlib
Foundational plotting library. Create line plots, scatter, bar, histograms, heatmaps, 3D, subplots, export PNG/PDF/SVG, for scientific visualization and publication figures.
Scientific Visualization
Create publication figures with matplotlib/seaborn/plotly. Multi-panel layouts, error bars, significance markers, colorblind-safe, export PDF/EPS/TIFF, for journal-ready scientific plots.
Seaborn
Statistical visualization. Scatter, box, violin, heatmaps, pair plots, regression, correlation matrices, KDE, faceted plots, for exploratory analysis and publication figures.
Shap
Model interpretability and explainability using SHAP (SHapley Additive exPlanations). Use this skill when explaining machine learning model predictions, computing feature importance, generating SHAP plots (waterfall, beeswarm, bar, scatter, force, heatmap), debugging models, analyzing model bias or fairness, comparing models, or implementing explainable AI. Works with tree-based models (XGBoost, LightGBM, Random Forest), deep learning (TensorFlow, PyTorch), linear models, and any black-box model
Pydeseq2
Differential gene expression analysis (Python DESeq2). Identify DE genes from bulk RNA-seq counts, Wald tests, FDR correction, volcano/MA plots, for RNA-seq analysis.
Query Writing
For writing and executing SQL queries - from simple single-table queries to complex multi-table JOINs and aggregations
Pydeseq2
Differential gene expression analysis (Python DESeq2). Identify DE genes from bulk RNA-seq counts, Wald tests, FDR correction, volcano/MA plots, for RNA-seq analysis.
Scientific Visualization
Meta-skill for publication-ready figures. Use when creating journal submission figures requiring multi-panel layouts, significance annotations, error bars, colorblind-safe palettes, and specific journal formatting (Nature, Science, Cell). Orchestrates matplotlib/seaborn/plotly with publication styles. For quick exploration use seaborn or plotly directly.
