Agent Skills for computational materials science -- numerical stability, solvers, meshing, convergence, and simulation workflows.
npx skills add https://github.com/HeshamFS/materials-simulation-skills --skill post-processing使用 CLI 安装这个技能,并在你的工作区中直接复用对应的 SKILL.md 工作流。
Open-source Agent Skills for computational materials science and numerical simulation workflows.
Give your AI coding agent domain expertise in numerical methods, simulation best practices, and scientific computing -- without re-explaining the same concepts every session. Skills are portable across Claude Code, Codex, Gemini CLI, Cursor, VS Code Copilot, and 20+ other compatible tools.
Simulation engineers repeat the same guidance to AI agents constantly: "Check the CFL number before running," "Use Richardson extrapolation for grid convergence," "Exit code 2 means bad input." General-purpose agents lack the domain knowledge to run reliable numerical simulations without heavy hand-holding.
This project packages that domain knowledge into skills -- structured folders of instructions, scripts, and references that agents discover automatically and load on demand. Each skill teaches an agent a specific simulation competency, backed by validated Python scripts that produce reproducible results.
You: Check if dt=0.001 is stable for my advection problem with v=2.0 m/s and dx=0.01.
Agent: I'll use the numerical-stability skill to check this.
[runs cfl_checker.py --dx 0.01 --dt 0.001 --velocity 2.0 --json]
CFL number = 0.2 (limit: 1.0) -- stable.
Recommended max dt = 0.005 with safety factor 1.0.
No prompt engineering. No copy-pasting formulas. The agent finds the right skill, runs the script, and interprets the results.
17 skills | 67 scripts | 932 tests | 78 eval cases | 312 assertions | Cross-platform CI on Python 3.10-3.12
skills/core-numerical/)Foundational numerical methods and analysis tools.
| Skill | What it does |
|---|---|
numerical-stability |
CFL/Fourier analysis, von Neumann stability, stiffness detection, matrix conditioning |
time-stepping |
Time integrator selection, adaptive step-size control, output scheduling |
mesh-generation |
Mesh quality metrics (aspect ratio, skewness, orthogonality), refinement guidance |
convergence-study |
Grid/time convergence analysis, Richardson extrapolation, GCI calculation |
numerical-integration |
Quadrature rule selection, error estimation, adaptive stepping |
differentiation-schemes |
Finite difference stencil generation, truncation error analysis, scheme comparison |
linear-solvers |
Iterative/direct solver selection, preconditioner advice, convergence diagnostics |
nonlinear-solvers |
Newton/quasi-Newton/fixed-point selection, globalization strategies, convergence diagnostics |
skills/simulation-workflow/)End-to-end simulation management and automation.
| Skill | What it does |
|---|---|
simulation-validator |
Pre-flight checks, runtime log monitoring, post-flight validation |
parameter-optimization |
DOE sampling (LHS, factorial), optimizer selection, sensitivity analysis |
simulation-orchestrator |
Parameter sweeps, batch campaign management, result aggregation |
post-processing |
Field extraction, time series analysis, derived quantity computation |
performance-profiling |
Timing analysis, scaling studies, memory profiling, bottleneck detection |
skills/hpc-deployment/)Deployment and job submission tooling for running simulations on HPC systems.
| Skill | What it does |
|---|---|
slurm-job-script-generator |
Generate sbatch scripts, sanity-check resource requests, and standardize #SBATCH directives |
skills/ontology/)Materials science ontology understanding, mapping, and validation.
| Skill | What it does |
|---|---|
ontology-explorer |
Parse OWL/XML ontologies, browse class hierarchies, look up properties, search concepts (CMSO, ASMO, OCDO ecosystem) |
ontology-mapper |
Map natural-language materials terms and crystal parameters to ontology classes and properties (CMSO, ASMO) |
ontology-validator |
Validate annotations against ontology constraints, check completeness, verify relationship domain/range |
Skills follow the open Agent Skills standard. Each skill is a folder with three tiers of content, loaded progressively to keep context efficient:
skills/core-numerical/numerical-stability/
SKILL.md # Instructions + YAML metadata (loaded when skill triggers)
scripts/ # Python CLI tools (executed for reproducible results)
cfl_checker.py
von_neumann_analyzer.py
matrix_condition.py
stiffness_detector.py
references/ # Deep domain knowledge (loaded only when needed)
stability_criteria.md
common_pitfalls.md
scheme_catalog.md
evals/ # Evaluation suite per agentskills.io spec
evals.json # Test cases with prompts, assertions, expected outputs
CHANGELOG.md # Version history
SKILL.md with decision guidance, workflows, and CLI examples--json output for structured, parseable resultsAll scripts are standalone CLI tools with --help, a pure-function core for testing, and consistent error handling (exit code 2 for bad input, 1 for runtime errors).
All skills are hardened against the OWASP Top 10 for LLM Applications, with 75 dedicated security tests. Key safeguards:
allowed-tools: Read, Write, Grep, Glob (no Bash), preventing the agent from executing arbitrary commands when processing untrusted datanp.load() uses allow_pickle=Falseeval()/exec() -- Region condition parsing uses strict regex matching, never dynamic code executionshlex.quote() escapes paths interpolated into shell commands; command templates are validated against a shell-operator denylistEach skill documents its specific safeguards in a Security section within its SKILL.md, with standardized subsections for Input Validation, File Access, Tool Restrictions, and Safety Measures.
Every skill is classified by its tool access surface:
| Tier | Criteria | Skills |
|---|---|---|
| HIGH | Has Bash (can execute scripts) |
9 skills — numerical-stability, time-stepping, convergence-study, differentiation-schemes, nonlinear-solvers, ontology-explorer, ontology-validator, simulation-validator, slurm-job-script-generator |
| MEDIUM | Has Write but no Bash |
7 skills — linear-solvers, mesh-generation, numerical-integration, parameter-optimization, performance-profiling, post-processing, simulation-orchestrator |
| LOW | Read/Grep/Glob only | 1 skill — ontology-mapper |
Every skill includes an evaluation suite (evals/evals.json) following the agentskills.io evaluation spec. Each suite contains 4-5 test cases with realistic prompts, expected outputs, and verifiable assertions.
Current metrics: 78 eval test cases | 312 assertions | All 17 skills evaluated
The CI pipeline validates:
## Security)git clone https://github.com/heshamfs/materials-simulation-skills.git
cd materials-simulation-skills
pip install -r requirements-dev.txt
python -m pytest tests/ -v --tb=short # All 932 tests
python -m pytest tests/unit -v --tb=short # Unit tests only
python -m pytest tests/integration -v # Integration tests only
These skills follow the open Agent Skills standard and work across 20+ AI coding tools. Choose your agent below.
Copy individual skills (or the whole skills/ tree) into your personal or project skills directory:
# Personal (available across all projects)
cp -r skills/core-numerical/numerical-stability ~/.claude/skills/numerical-stability
# Project-level (committed to version control)
cp -r skills/core-numerical/numerical-stability .claude/skills/numerical-stability
Or clone the whole repo and point Claude Code at it with --add-dir:
claude --add-dir /path/to/materials-simulation-skills/skills
Verify with: What skills are available? or type / to see skills in the autocomplete menu.
See the Claude Code skills docs for more details.
Install directly from the repo, or copy skills into your Gemini skills directory:
# User-scoped (available across all workspaces)
cp -r skills/core-numerical/numerical-stability ~/.gemini/skills/numerical-stability
# Workspace-scoped (project-specific)
cp -r skills/core-numerical/numerical-stability .gemini/skills/numerical-stability
Verify with: gemini skills list
See the Gemini CLI skills docs for more details.
Copy skills into one of the Codex skills directories:
# User-scoped
cp -r skills/core-numerical/numerical-stability ~/.agents/skills/numerical-stability
# Repository-scoped
cp -r skills/core-numerical/numerical-stability .agents/skills/numerical-stability
Restart Codex after adding skills. Use /skills or $ to invoke skills by name.
See the Codex skills docs for more details.
Copy skills into your workspace or personal skills directory:
# Workspace (committed to version control)
cp -r skills/core-numerical/numerical-stability .github/skills/numerical-stability
# Personal (across all workspaces)
cp -r skills/core-numerical/numerical-stability ~/.copilot/skills/numerical-stability
Type /skills in the chat input to see and invoke available skills.
See the VS Code skills docs for more details.
Copy skills into a skills/ directory at your project root:
cp -r skills/core-numerical/numerical-stability skills/numerical-stability
Cursor's MCP server auto-discovers skills from the skills/ directory.
Any agent that supports the Agent Skills standard can use these skills. The general pattern:
SKILL.md, scripts/, references/) into your agent's skills foldername and description in the YAML frontmatterUse numerical-stability to check a proposed dt for my phase-field run.
The agent loads the skill's instructions, runs the appropriate scripts, and interprets the results.
skills/
core-numerical/ # 8 skills: stability, solvers, meshing, convergence, ...
simulation-workflow/ # 5 skills: validation, optimization, orchestration, ...
hpc-deployment/ # 1 skill: SLURM job script generation
ontology/ # 3 skills: ontology exploration, mapping, validation
<each-skill>/
SKILL.md # Instructions + YAML frontmatter (with metadata block)
scripts/ # Python CLI tools with --json output
references/ # Domain knowledge documents
evals/evals.json # Evaluation suite (prompts, assertions)
CHANGELOG.md # Version history
tests/
unit/ # Pure-function tests via load_module()
integration/ # Subprocess + JSON schema validation
fixtures/ # Sample data files for CI smoke tests
.github/
workflows/ci.yml # Cross-platform CI + quality validation
ISSUE_TEMPLATE/ # Bug reports, skill proposals
PULL_REQUEST_TEMPLATE.md # PR checklist
We welcome contributions of all kinds -- new skills, bug fixes, documentation, and tests. The project is designed to grow from 17 skills across 4 categories into a broader collection spanning materials physics, verification & validation, HPC deployment, and more.
See CONTRIBUTING.md for: