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headteacher

Bootstrap and operate an AI-native headteacher workspace. Guide users through backend selection, environment-aware Feishu Base access routing, schema install...
启动并运营AI原生的班主任工作空间。引导用户完成后端选型、环境感知的飞书Base访问路由以及模式安装等操作。
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未分类 clawhub v2.1.0 1 版本 100000 Key: 无需
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概述

> Language / 语言: Detect the user's language from their first message and keep using it. The guidance below is written in English and Chinese for the same workflow.

Headteacher Workbench

When this skill should trigger

Trigger this skill when the user wants to do any of the following:

  • Set up a headteacher workspace for the first time
  • Install or verify lark-cli
  • Install or verify the official OpenClaw Feishu plugin
  • Connect Feishu Base, Notion, or Obsidian
  • Bootstrap a class-management schema
  • Inspect an existing Feishu Base and decide whether it is reusable
  • Import student rosters or update grades, conduct records, parent communication, seat plans, duty schedules, or committee assignments
  • Generate .docx, .xlsx, or .pptx artifacts from structured data
  • Query an existing class workspace and update or summarize it

Do not treat this skill as:

  • A persona simulator
  • A teacher role-play prompt
  • A colleague distillation workflow

Default operating mode

This skill is setup-first. On first use, do not jump straight into task execution.

  1. Check whether a local workspace manifest exists at:
    • ./.headteacher-skill/workspace_manifest.json
  2. If the manifest does not exist or is incomplete, enter setup mode.
  3. Default-recommend feishu_base as the backend.
  4. Only after setup is complete should normal runtime task routing begin.

After setup, treat the skill as two cooperating subsystems:

  1. Data record and retrieval
    • write mode:
    • one-time import
    • dynamic append / update
    • read mode:
    • longitudinal read: follow one student across a timeline
    • horizontal read: inspect a cohort or the whole class at one time slice
  2. Artifact generation
    • generate Office outputs from structured data
    • typical cases:
    • seat plan / duty schedule arranged by attributes
    • parent meeting PPT generated from scores plus daily records

Setup workflow

Step 1: Environment doctor

Run:

python3 tools/setup_doctor.py --format markdown

Use the result to decide:

  • which agent runtime is currently hosting the skill
  • whether Feishu should be accessed through the OpenClaw official plugin or through lark-cli
  • whether lark-cli is installed
  • whether Feishu is configured
  • whether office artifact generation dependencies are present
  • whether Notion MCP is available in the current agent environment
  • whether Obsidian CLI is available
  • whether the user still needs the official Obsidian skill / connector setup

Step 2: Backend selection

Read prompts/backend-selector.md.

Default recommendation order:

  1. feishu_base
  2. notion
  3. obsidian
  4. local_only

Use Feishu as the default unless the user explicitly prefers otherwise.

Step 3: Workspace bootstrap

Read:

If backend is feishu_base, also read:

Then choose the Feishu access path:

  1. If tools/setup_doctor.py reports agent_runtime.runtime = openclaw:
    • check whether the official OpenClaw plugin openclaw-lark is installed
    • if missing, guide installation first
    • then use the plugin's Feishu Base tools / API capabilities to create the base, tables, fields, views, and records
    • do not require lark-cli in this branch
  2. If runtime is codex, claude_code, or another local agent:
    • use the existing local toolchain
    • run:
python3 tools/feishu_bootstrap.py bootstrap --workspace-name "<class-name>"

If the user provides an existing Base, inspect it first:

python3 tools/migration_inspector.py feishu --base-token "<base-token>" --format markdown

Step 4: Runtime routing

Once setup is complete, read prompts/runtime-router.md and route the user's request into one of these intents:

  • setup workspace
  • connect backend
  • bootstrap schema
  • inspect existing workspace
  • migrate from subject-teacher base
  • append records
  • query student/class data
  • generate artifact
  • sync artifact

Runtime rules

Capability split

Treat all runtime work as belonging to one of two families:

  1. data operations
    • import existing roster / score / conduct material
    • append or update new records
    • read one student longitudinally
    • read multiple students horizontally
  2. artifact generation
    • produce .docx, .xlsx, .pptx outputs from structured data
    • never treat Office files as the source of truth

Data model

All runtime work should use the unified semantic model described in references/schema-manifest.md, not backend-specific ad hoc field guesses.

Core entities:

  • student master
  • exam batch
  • score detail
  • growth event
  • parent communication
  • seat assignment
  • duty assignment
  • committee assignment
  • artifact registry

The model is intentionally object-event based:

  • student master is the stable object layer
  • scores, conduct, duties, observations, and parent communication are event or assignment layers
  • artifacts are downstream products generated from those layers

Backend rules

Feishu Base

The only fully supported backend in v1.

Always route access by runtime first:

  • openclaw -> official OpenClaw Lark/Feishu plugin (openclaw-lark) + Feishu Base API tools
  • codex, claude_code, or local agent -> lark-cli + local Python tools in this repository

Use local tools when the runtime is not OpenClaw:

  • python3 tools/setup_doctor.py
  • python3 tools/feishu_bootstrap.py
  • python3 tools/migration_inspector.py
  • python3 tools/artifact_registry.py

Notion

Supported as a planning target only in v1.

Read:

Treat Notion as an external dependency:

  • verify that Notion MCP is already connected
  • if it is not connected, guide the user to install or connect Notion MCP first
  • do not attempt to bundle Notion capability into this repository

You may produce the mapping plan and minimal bootstrap instructions, but do not claim full runtime parity with Feishu in v1.

Obsidian

Supported as a local-first planning target only in v1.

Read:

Treat Obsidian as an external dependency:

  • verify whether obsidian CLI is installed locally
  • if missing, guide the user to install Obsidian CLI
  • recommend that the user also installs the official Obsidian-related skill exposed by the agent environment
  • do not attempt to bundle the Obsidian CLI or official skill into this repository

You may generate folder and note templates plus schema mapping guidance, but do not claim a full structured database experience in v1.

Artifact generation

Use prompts/artifact-generator.md and references/artifact-spec.md.

Supported artifact kinds in v1:

  • .docx: parent visit records, class notices, student talk records
  • .xlsx: seat plans, duty schedules, committee tables, deduction summaries
  • .pptx: parent meeting slides

Before generating artifacts:

  1. Confirm the workspace has already been initialized
  2. Query structured data first
  3. Choose a template or explain that a template is missing
  4. Register the result with:
python3 tools/artifact_registry.py register ...

Safety and change control

  • Never overwrite an existing Feishu Base by default.
  • If the user provides an existing Base, inspect and classify it before proposing migration.
  • Preview destructive or schema-changing operations before applying them.
  • Treat student contact details, addresses, and IDs as sensitive fields.
  • Do not claim Notion or Obsidian parity that v1 does not implement.
  • Do not imply that Notion MCP or Obsidian CLI are shipped by this repository; only guide installation or verification.

Resource map

Prompts

References

Tools

  • tools/setup_doctor.py
  • tools/schema_planner.py
  • tools/feishu_bootstrap.py
  • tools/migration_inspector.py
  • tools/artifact_registry.py

版本历史

共 1 个版本

  • v2.1.0 当前
    2026-05-07 21:20 安全 安全

安全检测

腾讯云安全 (Keen)

安全,无风险
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腾讯云安全 (Sanbu)

安全,无风险
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