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jaccen

Clawhub Publish

by jaccen · GitHub ↗ · v2.0.1 · MIT-0
cross-platform ✓ Security Clean
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Install in OpenClaw
/install fde-industrial-skill
Description
FDE skill for industrial AI deployment: scenario diagnosis, data governance, solution design, POC-to-scale methodology, ROI quantification. Covers predictive...
README (SKILL.md)

FDE Industrial AI Deployment Skill

Open Source: https://github.com/jaccen/FDE-Industrial-Skill

Overview

Full-spectrum support for FDEs deploying AI & big data on industrial production lines — from scenario diagnosis to scaled deployment.

Core Workflow

Scenario Diagnosis -> Data Governance -> Solution Design -> POC -> Scale-up -> Feedback Loop

Step 1: Scenario Diagnosis

  1. Read references/fde-role-model.md for FDE capability framework.
  2. Apply "Pain-Data-Impact" triage: Pain (business pain), Data (sufficiency), Impact (quantifiable ROI).
  3. Classify into 5 core categories — references/industrial-ai-scenarios.md.

Step 2: Data Governance & Integration

  1. Map data sources: OT (SCADA/PLC/sensors), IT (MES/ERP/PLM), ET (engineering docs).
  2. Palantir-style Ontology: Objects, Links, Actions.
  3. Data quality gaps: missing values, timestamp misalignment, label scarcity.
  4. Pipeline: edge collection -> ETL -> feature store.

Key: Start from business decisions, not data tables.

Step 3: Solution Design

  • Visual inspection: CNN/ViT + edge GPU boxes
  • Predictive maintenance: LSTM/Transformer + physics-informed features; 7-14 day window
  • Process optimization: RL/Bayesian + digital twin; single process first
  • Energy efficiency: regression + control optimization; baseline first
  • Supply chain: graph model + demand forecast + ERP integration

Step 4: POC Deployment (Zero Week)

Day 1-3: data audit + interviews; Day 4-7: baseline model + quick wins; Week 2-4: training + integration; Week 4-6: A/B test + operator training.

Critical: Deliver measurable quick win within 2 weeks.

Step 5: Scale-up & Feedback

Measure ROI, generalize single -> multi -> factory-wide, FDE+FDR feedback loop.

ROI Framework

Metric Typical Range
Defect detection improvement 80-95% reduction
Unplanned downtime reduction 30-60% reduction
Yield improvement 2-8% increase
Energy savings 5-15% reduction
ROI payback period 6-18 months

Reference Guide

Need Reference
FDE role & skills fde-role-model.md
Scenario & algorithm industrial-ai-scenarios.md
Deployment methodology landing-methodology.md
Case studies case-studies.md
Usage Guidance
Treat this as an incomplete review: install only after independently checking metadata.json and the artifact directory for broad permissions, credential handling, persistence, or hidden execution.
Capability Tags
crypto
Capability Assessment
Purpose & Capability
Artifact inspection was attempted, but local file reads failed before metadata.json or artifact contents could be reviewed.
Instruction Scope
No instruction-scope risk is reported because no artifact text could be inspected.
Install Mechanism
No install-mechanism risk is reported because install artifacts could not be read.
Credentials
No environment-proportionality risk is reported because capability and runtime artifacts could not be inspected.
Persistence & Privilege
No persistence or privilege risk is reported because the relevant artifacts could not be inspected.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install fde-industrial-skill
  3. After installation, invoke the skill by name or use /fde-industrial-skill
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v2.0.1
- Updated GitHub repository link in documentation to https://github.com/jaccen/FDE-Industrial-Skill. - Incremented version to 2.0.1.
v2.0.0
Major update with ecosystem content removal and streamlined focus. - Removed China Telecom AI ecosystem details from documentation. - Updated tags to exclude China Telecom-specific terms. - Cleaned description to focus on core industrial AI skills and methodology. - Improved clarity and conciseness across documentation sections.
v1.1.3
- Updated skill name casing in metadata from "FDE-Industrial-Skill" to "fde-industrial-skill". - Incremented version from 1.1.2 to 1.1.3. - No changes made to the documentation content or features.
v1.1.2
- Expanded and clarified documentation in SKILL.md for end-to-end industrial AI deployment. - Included detailed scenario workflow, data governance guidance, and solution design strategies. - Added specific industrial use cases: predictive maintenance, visual inspection, process optimization, energy efficiency, and supply chain. - Integrated China Telecom AI ecosystem overview and tools relevant for FDEs. - Provided ROI metrics and reference guide for quick access to core resources.
Metadata
Slug fde-industrial-skill
Version 2.0.1
License MIT-0
All-time Installs 0
Active Installs 0
Total Versions 4
Frequently Asked Questions

What is Clawhub Publish?

FDE skill for industrial AI deployment: scenario diagnosis, data governance, solution design, POC-to-scale methodology, ROI quantification. Covers predictive... It is an AI Agent Skill for Claude Code / OpenClaw, with 147 downloads so far.

How do I install Clawhub Publish?

Run "/install fde-industrial-skill" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is Clawhub Publish free?

Yes, Clawhub Publish is completely free, licensed under MIT-0. You can download, install and use it at no cost.

Which platforms does Clawhub Publish support?

Clawhub Publish is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).

Who created Clawhub Publish?

It is built and maintained by jaccen (@jaccen); the current version is v2.0.1.

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