mechanical-engineering-research-skill

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SUMMARY

A Codex skill for thermal-fluid mechanical engineering research, proposal development, technical writing, data analysis, presentations, and AI-assisted workflows.

README.md

Thermal-Fluid Research Workflow Plugin

English | 简体中文 | 繁體中文

A domain-rigor layer for thermal-fluid mechanical engineering research with AI agents.

Generic research agents can summarize papers and draft prose. This plugin helps them do the harder mechanical-engineering work: check heat-transfer and fluid-flow assumptions, catch invalid correlation use, question CFD validation, protect uncertainty analysis, explain mechanisms, and turn evidence into decision-ready research artifacts.

Use it when a thermal-fluid answer needs to be physically defensible, not just well written.

Version
Codex Plugin
Claude Code
Skill
Domain
License: MIT
GitHub stars

If this helps your research workflow, please star the repo so other mechanical-engineering researchers can find it.

Want the fastest path? Start with QUICKSTART.md.

Two-Minute Demo

Paste a prompt like this after installing the skill:

Use the mechanical-engineering-research skill to review this claim:

"The CFD model proves that the new microchannel heat sink is optimal because
the average Nusselt number is 40% higher than the baseline. The simulation used
k-epsilon turbulence, a coarse wall mesh, constant water properties, and three
flow rates between Re = 350 and 900. Pressure drop is not discussed."

Expected style of response:

Bottom line: The claim is overconfident. The result may indicate better heat
transfer in the tested cases, but it does not prove optimality.

Key issues:
- Re = 350-900 may be laminar or transitional for the stated geometry, so a
  k-epsilon turbulence model needs justification.
- A coarse wall mesh weakens confidence in wall heat flux and Nusselt number.
- Constant water properties may be acceptable only over a small temperature
  range; the temperature span must be stated.
- A 40% Nusselt increase is incomplete without pressure drop, pumping power,
  and thermal resistance.
- "Optimal" requires a design space, objective function, constraints, and
  uncertainty or grid-independence evidence.

Next checks: compare against laminar correlations or a conjugate heat-transfer
baseline, report y+ or wall treatment, run mesh independence, include pressure
drop and pumping power, and rewrite the claim as evidence from a limited CFD
study rather than proof of global optimality.

Workflow

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flowchart TB
    A["Researcher or agent request<br/>paper, proposal, CFD, experiment, data, code, or slides"]:::input
    B["Thermal-Fluid Research Workflow Plugin<br/>routes the task and loads the right reference guidance"]:::core

    C["Academic research workflow<br/>outline, checkpoints, citation flow, review and revision loop"]:::scaffold
    D["Mechanical-engineering judgment layer<br/>physics, assumptions, validity ranges, mechanisms, and engineering tradeoffs"]:::core

    A --> B
    C -. "process scaffold" .-> B
    B --> D

    D --> E{"Choose the work mode"}:::gate

    E --> F1["Literature review<br/>mechanism map, source hierarchy, gaps, benchmark tables"]:::lane
    E --> F2["Analysis and DOE<br/>baseline case, parameter logic, plots, uncertainty"]:::lane
    E --> F3["CFD and experiments<br/>boundary conditions, mesh, sensors, calibration, validation"]:::lane
    E --> F4["Writing and proposals<br/>methods, results discussion, aims, reviewer criteria"]:::lane
    E --> F5["Research code and AI/ML<br/>reproducible pipeline, leakage checks, physics sanity tests"]:::lane
    E --> F6["Slides and innovation<br/>visual story, impact, disclosure, commercialization notes"]:::lane

    F1 --> G
    F2 --> G
    F3 --> G
    F4 --> G
    F5 --> G
    F6 --> G

    G["Thermal-fluid rigor gate<br/>regime | correlations | properties | scaling | validation | safety | standards"]:::gate
    H["Decision-ready output<br/>assumptions, evidence, equations, tradeoffs, gaps, and next verification steps"]:::output
    I["Reusable artifact<br/>brief, literature matrix, manuscript section, proposal narrative, code review, or slide outline"]:::artifact

    G --> H --> I

    classDef input fill:#eff6ff,stroke:#2563eb,stroke-width:2px,color:#0f172a;
    classDef core fill:#ccfbf1,stroke:#0f766e,stroke-width:3px,color:#0f172a;
    classDef scaffold fill:#f8fafc,stroke:#64748b,stroke-width:2px,color:#0f172a;
    classDef lane fill:#fff7ed,stroke:#f97316,stroke-width:2px,color:#0f172a;
    classDef gate fill:#fef3c7,stroke:#d97706,stroke-width:3px,color:#0f172a;
    classDef output fill:#ecfdf5,stroke:#16a34a,stroke-width:3px,color:#0f172a;
    classDef artifact fill:#f5f3ff,stroke:#7c3aed,stroke-width:2px,color:#0f172a;

Editable Mermaid source: assets/workflow.mmd.

What It Catches

  • Correlations used outside their Reynolds, Prandtl, geometry, roughness, orientation, or phase-change validity range.
  • CFD claims without mesh independence, wall treatment, convergence, boundary-condition, property-model, or validation evidence.
  • Experiment plans missing sensor calibration, uncertainty propagation, repeatability, heat-loss correction, or flow-development checks.
  • AI/ML workflows with leakage across videos, surfaces, experiments, geometries, pressures, or simulation families.
  • Literature reviews that list papers chronologically instead of synthesizing mechanisms, methods, gaps, and benchmark evidence.
  • Proposal sections that describe ambitious methods but do not connect barrier, capability, validation, metrics, risk, and impact.
  • Results discussions that report trends without explaining the dominant physics.

Quick Install

OpenAI Codex

Ask Codex to install the plugin from GitHub:

Install the Codex plugin from https://github.com/hanhuark/mechanical-engineering-research-skill

If your Codex environment does not yet support community plugin installation from a GitHub repo, install the skill folder directly:

Install the Codex skill from GitHub repo hanhuark/mechanical-engineering-research-skill, path skills/mechanical-engineering-research.

Manual install on Windows:

git clone https://github.com/hanhuark/mechanical-engineering-research-skill.git
cd mechanical-engineering-research-skill
Copy-Item -Recurse .\skills\mechanical-engineering-research "$env:USERPROFILE\.codex\skills\mechanical-engineering-research" -Force

Claude Code

Clone the repository and launch Claude Code with the plugin directory:

git clone https://github.com/hanhuark/mechanical-engineering-research-skill.git
claude --plugin-dir ./mechanical-engineering-research-skill

Then invoke one of the workflow prompts, for example:

/thermal-fluid-research-workflow:me-cfd-review
/thermal-fluid-research-workflow:me-correlation-check
/thermal-fluid-research-workflow:me-figure-discussion

Use With Generic Academic Workflows

This plugin does not replace broad academic-research tools. Use generic academic workflows for process scaffolding: outline, citation management, drafting sequence, peer-review loop, and finalization. Use this plugin when the work depends on thermal-fluid validity: regimes, assumptions, correlations, property variation, scaling, CFD credibility, experiment design, uncertainty, and engineering tradeoffs.

academic research workflow = process scaffold
mechanical-engineering-research = thermal-fluid domain judgment layer

Workflow Prompts

Prompt Use
me-correlation-check.md Check whether equations, correlations, and dimensionless groups are being used within valid limits.
me-cfd-review.md Review CFD setup, mesh, wall treatment, convergence, validation, and claim strength.
me-experiment-plan.md Plan thermal-fluid experiments around instrumentation, calibration, uncertainty, repeatability, and safety.
me-lit-matrix.md Build a mechanism-based literature matrix with methods, metrics, validity limits, and gaps.
me-figure-discussion.md Turn a figure into a physical explanation with claims, comparisons, and limitations.
me-proposal-aims.md Rewrite aims around barrier, hypothesis, approach, metrics, risk, and impact.
me-code-sanity.md Review research code for units, reproducibility, leakage, baselines, and physics checks.
me-lit-review.md Develop a critical thermal-fluid literature review and gap synthesis.
me-proposal.md Develop or revise a solicitation-aligned research proposal.
me-write-section.md Draft or revise manuscript, proposal, report, or thesis sections.
me-data-analysis.md Plan baseline-first thermal-fluid data analysis and hypothesis-driven DOE.
me-build-slides.md Build graphics-first research presentations and speaker notes.
me-code-review.md Review and refactor reproducible thermal-fluid research code.

Showcase

The examples are synthetic, public-safe artifacts designed to show the plugin's expected behavior:

Artifact What it demonstrates
cfd-review-memo.md How to downshift overclaimed CFD evidence into a defensible review memo.
heat-exchanger-design-matrix.md How to compare design options by mechanism, pressure drop, manufacturability, and risk.
boiling-literature-matrix.md How to synthesize a boiling literature review by mechanism rather than paper order.
proposal-aims-rewrite.md How to convert vague proposal aims into reviewer-ready technical aims.
figure-discussion-before-after.md How to rewrite a weak results paragraph into a physical explanation.

Capabilities

Area What the plugin helps with Reference
Research workflow Source-aware thermal-fluid research, assumptions, correlations, trade studies, validation SKILL.md
Literature review Critical review, seminal-work tracing, citation path, review figures, benchmark tables literature-review.md
Paper writing style Abstracts, methods, figure-led results, conclusions, AI/ML paper style paper-writing-style.md
Technical writing Methodology detail, modeling assumptions, results discussion technical-writing-analysis.md
Proposal development DOE/NSF/NASA-style narratives, solicitation alignment, milestones, risks proposal-development.md
Research coding Reproducible scripts, notebooks, plotting, simulation automation, code review research-coding.md
Presentations Graphics-first research talks, slide logic, speaker notes, backup slides presentation-slides.md
AI/ML tools BubbleID, SeqReg, CFDTwin, DataDroid-LAM, sensor fusion, surrogate modeling ai-tools-thermal-fluids.md
Toolchain Overleaf, VS Code, GitHub, git, releases, reproducibility hygiene research-toolchain.md
Innovation Invention disclosure, patent-support packets, commercialization briefs innovation-commercialization.md

Validation

Run repository validation:

python scripts\validate_repo.py

Optional local Codex/plugin validation:

python "$env:USERPROFILE\.codex\skills\.system\skill-creator\scripts\quick_validate.py" ".\skills\mechanical-engineering-research"
python "$env:USERPROFILE\.codex\skills\.system\plugin-creator\scripts\validate_plugin.py" "."

The CI workflow in .github/workflows/validate.yml runs the repository validation script and checks the thermal-fluid eval fixtures.

Release Notes

See CHANGELOG.md. The v0.2.0 release line adds the public-positioning refresh, workflow diagram, showcase examples, micro-workflows, validation fixtures, CI, and bilingual README files.

Related Tools

Tool Use
BubbleID Computer vision for bubble and interface dynamics
SeqReg Sequence regression for boiling and sensor data
CFDTwin CFD surrogate modeling and digital-twin workflows
DataDroid-LAM Lab analysis and automation tooling
MEEG-54403 Machine Learning for Mechanical Engineers course material

Contributing

Contributions are welcome when they improve reusable thermal-fluid research practice: stronger validity checks, better examples, clearer workflows, more robust eval fixtures, or better installation documentation. See CONTRIBUTING.md.

License

MIT License. See LICENSE.

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