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lingzhi227/agent-research-skills1.2k installs

experiment-design

Design experiment plans with progressive stages — initial implementation, baseline tuning, creative research, and ablation studies. Plan baselines, datasets, hyperparameter sweeps, and evaluation metrics. Use when planning experiments for a research paper.

How do I install this agent skill?

npx skills add https://github.com/lingzhi227/agent-research-skills --skill experiment-design
view source ↗

Is this agent skill safe to install?

  • Gen Agent Trust Hubpass

    The 'experiment-design' skill is a tool for creating structured research plans. It uses a local Python script to generate experiment stages and baselines using only the Python standard library. It contains no network access, external dependencies, or obfuscated code, and it follows security best practices.

  • Socketpass

    No alerts

  • Snykpass

    Risk: LOW · No issues

  • Runlayerpass

    1/3 files flagged

What does this agent skill do?

Experiment Design

Design structured, progressive experiment plans for research papers.

Input

  • $0 — Research idea, plan, or method description

References

  • 4-stage progressive experiment prompts: ~/.claude/skills/experiment-design/references/stage-prompts.md

Scripts

Generate experiment design

python ~/.claude/skills/experiment-design/scripts/design_experiments.py --plan research_plan.json --output experiment_design.json
python ~/.claude/skills/experiment-design/scripts/design_experiments.py --method "contrastive learning" --task classification --format markdown

Generates baselines, ablation matrix, hyperparameter grid, metric selection. Stdlib-only.

4-Stage Progressive Framework (from AI-Scientist-v2)

Stage 1: Initial Implementation

  • Focus on getting a basic working implementation
  • Use a simple dataset
  • Aim for basic functional correctness
  • Completion: at least one working (non-buggy) implementation

Stage 2: Baseline Tuning

  • Tune hyperparameters (learning rate, epochs, batch size)
  • Do NOT change model architecture
  • Test on at least TWO datasets
  • Completion: stable training curves, improvement over Stage 1

Stage 3: Creative Research

  • Explore novel improvements and insights
  • Be creative and think outside the box
  • Test on at least THREE datasets
  • Completion: demonstrated novel improvement

Stage 4: Ablation Studies

  • Systematic component analysis
  • Each ablation tests a different aspect
  • Use same datasets as Stage 3
  • Completion: all planned ablations done

Output Format

{
  "stages": [
    {
      "name": "initial_implementation",
      "goals": ["Basic working baseline", "Simple dataset"],
      "max_iterations": 5,
      "completion_criteria": "Working implementation with non-zero accuracy"
    }
  ],
  "baselines": ["Method A", "Method B"],
  "datasets": ["Dataset1", "Dataset2", "Dataset3"],
  "metrics": ["accuracy", "F1", "inference_time"],
  "ablation_components": ["component_A", "component_B"],
  "hyperparameter_grid": {
    "lr": [1e-4, 1e-3, 1e-2],
    "batch_size": [32, 64, 128]
  },
  "num_seeds": 3
}

Rules

  • Always start simple (Stage 1) before complex experiments
  • Each stage builds on the best result from the previous stage
  • Multi-seed evaluation for statistical significance
  • Document every experiment run in notes.txt
  • Generate figures for training curves and comparisons

Related Skills

Add the canonical catalog link to the repository README so users can inspect current installs and available audits. The publishing guide covers the complete discovery path.

<a href="https://skillzs.dev/skills/lingzhi227/agent-research-skills/experiment-design">View experiment-design on skillZs</a>