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Retail Agent Setup

Onboarding wizard for retail digital employee agents — guides businesses through a 12-step setup to configure a fully operational AI store assistant. Use whe...
面向零售数字员工代理的入职向导 — 引导企业完成12步设置,配置完整的AI店铺助理。使用...
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未分类 clawhub v1.0.0 1 版本 100000 Key: 无需
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概述

Retail Agent Setup — Onboarding Wizard

Overview

This skill transforms a blank OpenClaw agent into a fully configured retail digital employee

tailored to a specific store or chain. Each step produces a concrete artifact that persists in

the agent's memory, making the setup cumulative and resumable.

Setup takes 20–40 minutes end-to-end. Each step can be paused and resumed.

Run retail agent setup or 数字员工配置 to start or continue.


Execution Protocol

  • Run steps in order — each step depends on outputs from the previous
  • Pause after each step — show the artifact, ask "Confirm and continue?" before proceeding
  • Resumable — if a step was previously completed, show its saved output and ask whether to redo or skip
  • Save state — write each step's output to agent memory before moving to the next
  • Zero-config entry — if the user just says "set up my retail agent," start at Step 1

The 12 Steps

Step 01 — System Inventory

> "What retail systems are you currently using?"

Identify the store's existing tech stack across 5 categories: POS, ERP/WMS, CRM/membership,

e-commerce platforms, and supply chain tools.

Map each system to its API availability (real-time / batch / none).

Reference: step-01-systems.md

Artifact: System inventory card + API availability matrix


Step 02 — Data Infrastructure Assessment

> "Where does your data live, and what format is it in?"

Evaluate data across 6 dimensions: products, inventory, sales, staff, customers, and policy docs.

Score completeness and freshness. Prioritize what to connect first.

Reference: step-02-data-infra.md

Artifact: Data map + connection priority list


Step 03 — Data Import & Auto-Structuring

> "Send me your data — I'll organize it into a format the agent can use."

Accept uploads (Excel/CSV/PDF/Word/image), API connections, or pasted text.

Auto-parse into structured knowledge base entries. Flag gaps and prompt to fill them.

Script: scripts/parse_products.py — Excel/CSV → structured JSON

Script: scripts/parse_policy.py — PDF/Word → rule tree

Script: scripts/score_knowledge.py — completeness scoring

Reference: step-03-data-import.md

Artifact: Structured knowledge base + completeness score (0–100)


Step 04 — Role Selection

> "What role should this digital employee play?"

Choose from 6 preset roles or define a custom role. Each role activates a specific skill bundle

and response style. One agent = one primary role (multi-role is advanced config).

Reference: step-04-role-select.md

Artifact: Role definition file + activated skill bundle list


Step 05 — Skills Configuration

> "Which capabilities should this agent have?"

Review recommended skills for the chosen role. Toggle on/off. Configure each enabled skill

(thresholds, data sources, escalation rules).

Reference: step-05-skills-config.md

Artifact: skills-config.json — active skills with their parameters


Step 06 — Knowledge Base Validation

> "Let me test what your agent knows."

Auto-generate 10 test questions covering products, inventory, policies, and recommendations.

Run them against the knowledge base. Flag failures. Guide the user to fill gaps.

Script: scripts/gen_test_cases.py — generate test questions by vertical

Script: scripts/score_knowledge.py — run and score responses

Reference: step-06-knowledge.md

Artifact: Knowledge base score + gap report


Step 07 — Digital Employee Persona

> "Give your digital employee a name and personality."

Configure: name, personality type, tone, reply style, customer address form, brand keywords.

Generate 3 sample dialogues for preview. Confirm before saving.

Reference: step-07-persona.md

Artifact: persona-config.json + 3 preview dialogues


Step 08 — Channel Integration

> "How will staff and customers reach this agent?"

Select and configure delivery channels: WeCom (企业微信), WeChat MP/Mini Program,

Lark (飞书), Web kiosk UI, WhatsApp, or SMS/IVR.

Each channel has a dedicated setup guide with step-by-step auth instructions.

Reference: step-08-channels.md

Artifact: Channel connection status + test message confirmation


Step 09 — Permissions & Escalation

> "What can the agent decide alone, and what needs a human?"

Define 4-level permission matrix: L0 auto-handle, L1 suggest+confirm, L2 submit for approval,

L3 force escalate to human. Set escalation targets and on-call schedules.

Reference: step-09-permissions.md

Artifact: permissions-matrix.json + escalation routing config


Step 10 — Pre-Launch Testing

> "Let's run real-scenario tests before going live."

Run a full scenario test suite based on the store's vertical and configured skills.

Score readiness 0–100. Must reach 80+ to proceed to launch.

Script: scripts/gen_test_cases.py

Reference: step-10-test.md

Artifact: Test report + launch-readiness score


Step 11 — Launch & Handoff

> "You're ready. Let's go live."

Activate the agent on all configured channels. Generate staff onboarding card (one-pager).

Send welcome message. Schedule first check-in reminder (7 days out).

Reference: step-11-handoff.md

Artifact: Staff guide PDF + activation confirmation


Step 12 — Continuous Improvement

> "Going live is the beginning, not the end."

Set up weekly unanswered-question digests and monthly usage reports.

Configure knowledge-gap alerts. Schedule quarterly persona review.

Reference: step-12-iterate.md

Artifact: Cron jobs for digest + alert thresholds set


State Management

Track onboarding progress in agent memory under key retail_setup_state:

{
  "version": "1.0",
  "started_at": "<ISO timestamp>",
  "completed_steps": [1, 2, 3],
  "current_step": 4,
  "artifacts": {
    "systems": { ... },
    "data_map": { ... },
    "knowledge_base": { ... },
    "role": "...",
    "skills_config": { ... },
    "persona": { ... },
    "channels": [ ... ],
    "permissions": { ... }
  }
}

On any new message, check this state first. If setup is incomplete, offer to resume.


Supported Retail Verticals

Apparel · Footwear · Beauty & Skincare · Consumer Electronics · Home & Furniture ·

Maternal & Infant · Convenience Store · Supermarket · Specialty Food · Jewelry ·

Sporting Goods · Books & Stationery · Pet Supplies · Pharmacy · Toy & Hobby

For verticals not listed, use "General Retail" defaults and customize in Step 4.

版本历史

共 1 个版本

  • v1.0.0 当前
    2026-05-07 09:29 安全 安全

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