Select and configure linear solvers for systems Ax=b in dense and sparse problems. Use when choosing direct vs iterative methods, diagnosing convergence issues, estimating conditioning, selecting preconditioners, or debugging stagnation in GMRES/CG/BiCGSTAB.
Install with the open skills CLI (global, non-interactive — available in every Claude Code session):
npx skills add FreedomIntelligence/OpenClaw-Medical-Skills --skill "linear-solvers" -g -a claude-code -yOr manually — clone and copy the skill directory (SKILL.md + companion files):
git clone --depth 1 https://github.com/FreedomIntelligence/OpenClaw-Medical-Skills /tmp/OpenClaw-Medical-Skills && cp -r /tmp/OpenClaw-Medical-Skills/skills/linear-solvers ~/.claude/skills/linear-solversThis skill is a directory: SKILL.md is the entry point; the files below ship with it.
---
name: linear-solvers
description: Select and configure linear solvers for systems Ax=b in dense and sparse problems. Use when choosing direct vs iterative methods, diagnosing convergence issues, estimating conditioning, selecting preconditioners, or debugging stagnation in GMRES/CG/BiCGSTAB.
allowed-tools: Read, Bash, Write, Grep, Glob
---
# Linear Solvers
## Goal
Provide a universal workflow to select a solver, assess conditioning, and diagnose convergence for linear systems arising in numerical simulations.
## Requirements
- Python 3.8+
- NumPy, SciPy (for matrix operations)
- See individual scripts for dependencies
## Inputs to Gather
| Input | Description | Example |
|-------|-------------|---------|
| Matrix size | Dimension of system | `n = 1000000` |
| Sparsity | Fraction of nonzeros | `0.01%` |
| Symmetry | Is A = Aᵀ? | `yes` |
| Definiteness | Is A positive definite? | `yes (SPD)` |
| Conditioning | Estimated condition number | `10⁶` |
## Decision Guidance
### Solver Selection Flowchart
```
Is matrix small (n < 5000) and dense?
├── YES → Use direct solver (LU, Cholesky)
└── NO → Is matrix symmetric?
├── YES → Is it positive definite?
│ ├── YES → Use CG with AMG/IC preconditioner
│ └── NO → Use MINRES
└── NO → Is it nearly symmetric?
├── YES → Use BiCGSTAB
└── NO → Use GMRES with ILU/AMG
```
### Quick Reference
| Matrix Type | Solver | Preconditioner |
|-------------|--------|----------------|
| SPD, sparse | CG | AMG, IC |
| Symmetric indefinite | MINRES | ILU |
| Nonsymmetric | GMRES, BiCGSTAB | ILU, AMG |
| Dense | LU, Cholesky | None |
| Saddle point | Schur complement, Uzawa | Block preconditioner |
## Script Outputs (JSON Fields)
| Script | Key Outputs |
|--------|-------------|
| `scripts/solver_selector.py` | `recommended`, `alternatives`, `notes` |
| `scripts/convergence_diagnostics.py` | `rate`, `stagnation`, `recommended_action` |
| `scripts/sparsity_stats.py` | `nnz`, `density`, `bandwidth`, `symmetry` |
| `scripts/preconditioner_advisor.py` | `suggested`, `notes` |
| `scripts/scaling_equilibration.py` | `row_scale`, `col_scale`, `notes` |
| `scripts/residual_norms.py` | `residual_norms`, `relative_norms`, `converged` |
## Workflow
1. **Characterize matrix** - symmetry, definiteness, sparsity
2. **Analyze sparsity** - Run `scripts/sparsity_stats.py`
3. **Select solver** - Run `scripts/solver_selector.py`
4. **Choose preconditioner** - Run `scripts/preconditioner_advisor.py`
5. **Apply scaling** - If ill-conditioned, use `scripts/scaling_equilibration.py`
6. **Monitor convergence** - Use `scripts/convergence_diagnostics.py`
7. **Diagnose issues** - Check residual history with `scripts/residual_norms.py`
## Conversational Workflow Example
**User**: My GMRES solver is stagnating after 50 iterations. The residual drops to 1e-3 then stops improving.
**Agent workflow**:
1. Diagnose convergence:
```bash
python3 scripts/convergence_diagnostics.py --residuals 1,0.1,0.01,0.005,0.003,0.002,0.002,0.002 --json
```
2. Check for preconditioning advice:
```bash
python3 scripts/preconditioner_advisor.py --matrix-type nonsymmetric --sparse --stagnation --json
```
3. Recommend: Increase restart parameter, try ILU(k) with higher k, or switch to AMG.
## Pre-Solve Checklist
- [ ] Confirm matrix symmetry/definiteness
- [ ] Decide direct vs iterative based on size and sparsity
- [ ] Set residual tolerance relative to physics scale
- [ ] Choose preconditioner appropriate to matrix structure
- [ ] Apply scaling/equilibration if needed
- [ ] Track convergence and adjust if stagnation occurs
## CLI Examples
```bash
# Analyze sparsity pattern
python3 scripts/sparsity_stats.py --matrix A.npy --json
# Select solver for SPD sparse system
python3 scripts/solver_selector.py --symmetric --positive-definite --sparse --size 1000000 --json
# Get preconditioner recommendation
python3 scripts/preconditioner_advisor.py --matrix-type spd --sparse --json
# Diagnose convergence from residual history
python3 scripts/convergence_diagnostics.py --residuals 1,0.2,0.05,0.01 --json
# Apply scaling
python3 scripts/scaling_equilibration.py --matrix A.npy --symmetric --json
# Compute residual norms
python3 scripts/residual_norms.py --residual 1,0.1,0.01 --rhs 1,0,0 --json
```
## Error Handling
| Error | Cause | Resolution |
|-------|-------|------------|
| `Matrix file not found` | Invalid path | Check file exists |
| `Matrix must be square` | Non-square input | Verify matrix dimensions |
| `Residuals must be positive` | Invalid residual data | Check input format |
## Interpretation Guidance
### Convergence Rate
| Rate | Meaning | Action |
|------|---------|--------|
| < 0.1 | Excellent | Current setup optimal |
| 0.1 - 0.5 | Good | Acceptable for most problems |
| 0.5 - 0.9 | Slow | Consider better preconditioner |
| > 0.9 | Stagnation | Change solver or preconditioner |
### Stagnation Diagnosis
| Pattern | Likely Cause | Fix |
|---------|--------------|-----|
| Flat residual | Poor preconditioner | Improve preconditioner |
| Oscillating | Near-singular or indefinite | Check matrix, try different solver |
| Very slow decay | Ill-conditioned | Apply scaling, use AMG |
## Limitations
- **Large dense matrices**: Direct solvers may run out of memory
- **Highly indefinite**: Standard preconditioners may fail
- **Saddle-point**: Requires specialized block preconditioners
## References
- `references/solver_decision_tree.md` - Selection logic
- `references/preconditioner_catalog.md` - Preconditioner options
- `references/convergence_patterns.md` - Diagnosing failures
- `references/scaling_guidelines.md` - Equilibration guidance
## Version History
- **v1.1.0** (2024-12-24): Enhanced documentation, decision guidance, examples
- **v1.0.0**: Initial release with 6 solver analysis scripts
Use when facing 2+ independent tasks that can be worked on without shared state or sequential dependencies
Use when encountering any bug, test failure, or unexpected behavior, before proposing fixes
Use when implementing any feature or bugfix, before writing implementation code