astm
Reference ASTM standards for material properties, testing methods, and design code compliance
Best use case
astm is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Reference ASTM standards for material properties, testing methods, and design code compliance
Teams using astm should expect a more consistent output, faster repeated execution, less prompt rewriting.
When to use this skill
- You want a reusable workflow that can be run more than once with consistent structure.
When not to use this skill
- You only need a quick one-off answer and do not need a reusable workflow.
- You cannot install or maintain the underlying files, dependencies, or repository context.
Installation
Claude Code / Cursor / Codex
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/astm/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How astm Compares
| Feature / Agent | astm | Standard Approach |
|---|---|---|
| Platform Support | Not specified | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
Reference ASTM standards for material properties, testing methods, and design code compliance
Where can I find the source code?
You can find the source code on GitHub using the link provided at the top of the page.
SKILL.md Source
# ASTM Standards Specialist
> American Society for Testing and Materials (ASTM) standards for material properties and testing methods.
**Version:** 1.0.0
**Created:** 2026-01-12
**Category:** SME / Codes & Standards
## Overview
ASTM standards define the specific properties of materials (steel, plastic, rubber) and the exact methods used to test them. They are referenced by almost all other design codes (API, DNV, ASME).
## Core Capabilities
### 1. Ferrous Metals (Steel)
- **ASTM A36**: Standard Carbon Structural Steel.
- **ASTM A193 / A320**: Alloy steel and stainless steel bolting materials (High/Low temp).
- **ASTM A370**: Standard Test Methods and Definitions for Mechanical Testing of Steel Products.
### 2. Testing Methods
- **ASTM E8**: Tension Testing of Metallic Materials.
- **ASTM E23**: Notched Bar Impact Testing (Charpy V-Notch).
## When to Use
### Use This Skill When:
- Specifying material grades on engineering drawings.
- Reviewing Material Test Reports (MTRs).
- Defining Charpy impact test requirements for low-temperature service.
## Knowledge Areas
### 1. Grades and Classes
ASTM specifications often have multiple Grades (strength levels) and Classes (heat treatment/processing).
* Example: **ASTM A193 Grade B7** (Chromium-Molybdenum steel, Quenched & Tempered).
### 2. Charpy Impact Testing
Critical for offshore/subsea applications. Ensures material is ductile at operating temperature.
## Code & Data Patterns
### Bolting Material Selector
```python
def select_bolt_grade(temperature_c):
"""
Suggest ASTM bolt grade based on service temperature.
"""
if temperature_c < -40:
return "ASTM A320 Grade L7 (Low Temp)"
elif temperature_c > 400:
return "ASTM A193 Grade B16 (High Temp)"
else:
return "ASTM A193 Grade B7 (Standard)"
```
## Best Practices
- **MTR Review**: Always verify that the Yield and Tensile strengths on the MTR meet the ASTM minimums.
- **Supplementary Requirements**: Use "S" codes (e.g., S1, S5) to mandate additional testing like Ultrasonics (UT) or Magnetic Particle (MT).
## Resources
- **Source Files**: `/mnt/ace/O&G-Standards/ASTM/`Related Skills
signal-analysis-1-rainflow-cycle-counting-astm-e1049-85
Sub-skill of signal-analysis: 1. Rainflow Cycle Counting (ASTM E1049-85) (+4).
test-oversized-skill
A test fixture skill that exceeds 200 lines with multiple H2/H3 sections for split testing.
interactive-report-generator
Generate interactive HTML reports with Plotly visualizations from data analysis results. Supports dashboards, charts, and professional styling.
data-validation-reporter
Generate interactive validation reports with quality scoring, missing data analysis, and type checking. Combines Pandas validation, Plotly visualization, and YAML configuration for comprehensive data quality reporting.
agent-os-framework
Generate standardized .agent-os directory structure with product documentation, mission, tech-stack, roadmap, and decision records. Enables AI-native workflows.
OrcaFlex Specialist Skill
```yaml
repo-ecosystem-hygiene
Interpret the daily read-only repo ecosystem hygiene audit and route remediation through approved workflows.
domain-knowledge-sweep
Systematic multi-source research of an engineering domain. Spawns parent issue → 6 research subissues (Standards, Academic, Industry, LinkedIn-marketing, Code-audit, Synthesis) → gap implementation subissues. Replaces LinkedIn-only extraction with defensible comprehensive sourcing.
subagent-write-verification
Independently verify subagent-claimed file writes with filesystem and git checks before treating the artifact as real, before committing it, and before referencing the path in downstream prompts.
git-operation-serialization-preflight
Before any commit, stash, merge, reset, rebase, or checkout in a multi-agent or shared-checkout environment, run a bounded preflight to detect active git writers and stale index/config locks, then serialize the mutating step under a single-writer guarantee.
public-knowledge-graph-governance
Maintain public-safe knowledge graph artifacts for llm-wiki and similar markdown knowledge bases. Use when changing graph generators, validators, schema docs, weekly freshness checks, or public/private source-scope boundaries.
llm-wiki-weekly-freshness
Class-level governance workflow for keeping llm-wiki-style markdown knowledge bases current, public-safe, graph/index-valid, and useful for code development. Use when reviewing llm-wiki architecture/content, scanning new LLM concepts, maintaining public knowledge graphs, producing an issue roadmap, or running recurring freshness cadence.