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Lovefromio Ontology

作者 AI · GitHub ↗ · v1.0.0 · MIT-0
cross-platform ✓ 安全检测通过
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在 OpenClaw 中安装
/install lovefromio-ontology
功能描述
Typed knowledge graph for structured agent memory and composable skills. Use when creating/querying entities (Person, Project, Task, Event, Document), linkin...
使用说明 (SKILL.md)

Ontology

A typed vocabulary + constraint system for representing knowledge as a verifiable graph.

Core Concept

Everything is an entity with a type, properties, and relations to other entities. Every mutation is validated against type constraints before committing.

Entity: { id, type, properties, relations, created, updated }
Relation: { from_id, relation_type, to_id, properties }

When to Use

Trigger Action
"Remember that..." Create/update entity
"What do I know about X?" Query graph
"Link X to Y" Create relation
"Show all tasks for project Z" Graph traversal
"What depends on X?" Dependency query
Planning multi-step work Model as graph transformations
Skill needs shared state Read/write ontology objects

Core Types

# Agents & People
Person: { name, email?, phone?, notes? }
Organization: { name, type?, members[] }

# Work
Project: { name, status, goals[], owner? }
Task: { title, status, due?, priority?, assignee?, blockers[] }
Goal: { description, target_date?, metrics[] }

# Time & Place
Event: { title, start, end?, location?, attendees[], recurrence? }
Location: { name, address?, coordinates? }

# Information
Document: { title, path?, url?, summary? }
Message: { content, sender, recipients[], thread? }
Thread: { subject, participants[], messages[] }
Note: { content, tags[], refs[] }

# Resources
Account: { service, username, credential_ref? }
Device: { name, type, identifiers[] }
Credential: { service, secret_ref }  # Never store secrets directly

# Meta
Action: { type, target, timestamp, outcome? }
Policy: { scope, rule, enforcement }

Storage

Default: memory/ontology/graph.jsonl

{"op":"create","entity":{"id":"p_001","type":"Person","properties":{"name":"Alice"}}}
{"op":"create","entity":{"id":"proj_001","type":"Project","properties":{"name":"Website Redesign","status":"active"}}}
{"op":"relate","from":"proj_001","rel":"has_owner","to":"p_001"}

Query via scripts or direct file ops. For complex graphs, migrate to SQLite.

Append-Only Rule

When working with existing ontology data or schema, append/merge changes instead of overwriting files. This preserves history and avoids clobbering prior definitions.

Workflows

Create Entity

python3 scripts/ontology.py create --type Person --props '{"name":"Alice","email":"[email protected]"}'

Query

python3 scripts/ontology.py query --type Task --where '{"status":"open"}'
python3 scripts/ontology.py get --id task_001
python3 scripts/ontology.py related --id proj_001 --rel has_task

Link Entities

python3 scripts/ontology.py relate --from proj_001 --rel has_task --to task_001

Validate

python3 scripts/ontology.py validate  # Check all constraints

Constraints

Define in memory/ontology/schema.yaml:

types:
  Task:
    required: [title, status]
    status_enum: [open, in_progress, blocked, done]
  
  Event:
    required: [title, start]
    validate: "end >= start if end exists"

  Credential:
    required: [service, secret_ref]
    forbidden_properties: [password, secret, token]  # Force indirection

relations:
  has_owner:
    from_types: [Project, Task]
    to_types: [Person]
    cardinality: many_to_one
  
  blocks:
    from_types: [Task]
    to_types: [Task]
    acyclic: true  # No circular dependencies

Skill Contract

Skills that use ontology should declare:

# In SKILL.md frontmatter or header
ontology:
  reads: [Task, Project, Person]
  writes: [Task, Action]
  preconditions:
    - "Task.assignee must exist"
  postconditions:
    - "Created Task has status=open"

Planning as Graph Transformation

Model multi-step plans as a sequence of graph operations:

Plan: "Schedule team meeting and create follow-up tasks"

1. CREATE Event { title: "Team Sync", attendees: [p_001, p_002] }
2. RELATE Event -> has_project -> proj_001
3. CREATE Task { title: "Prepare agenda", assignee: p_001 }
4. RELATE Task -> for_event -> event_001
5. CREATE Task { title: "Send summary", assignee: p_001, blockers: [task_001] }

Each step is validated before execution. Rollback on constraint violation.

Integration Patterns

With Causal Inference

Log ontology mutations as causal actions:

# When creating/updating entities, also log to causal action log
action = {
    "action": "create_entity",
    "domain": "ontology", 
    "context": {"type": "Task", "project": "proj_001"},
    "outcome": "created"
}

Cross-Skill Communication

# Email skill creates commitment
commitment = ontology.create("Commitment", {
    "source_message": msg_id,
    "description": "Send report by Friday",
    "due": "2026-01-31"
})

# Task skill picks it up
tasks = ontology.query("Commitment", {"status": "pending"})
for c in tasks:
    ontology.create("Task", {
        "title": c.description,
        "due": c.due,
        "source": c.id
    })

Quick Start

# Initialize ontology storage
mkdir -p memory/ontology
touch memory/ontology/graph.jsonl

# Create schema (optional but recommended)
python3 scripts/ontology.py schema-append --data '{
  "types": {
    "Task": { "required": ["title", "status"] },
    "Project": { "required": ["name"] },
    "Person": { "required": ["name"] }
  }
}'

# Start using
python3 scripts/ontology.py create --type Person --props '{"name":"Alice"}'
python3 scripts/ontology.py list --type Person

References

  • references/schema.md — Full type definitions and constraint patterns
  • references/queries.md — Query language and traversal examples

Instruction Scope

Runtime instructions operate on local files (memory/ontology/graph.jsonl and memory/ontology/schema.yaml) and provide CLI usage for create/query/relate/validate; this is within scope. The skill reads/writes workspace files and will create the memory/ontology directory when used. Validation includes property/enum/forbidden checks, relation type/cardinality validation, acyclicity for relations marked acyclic: true, and Event end >= start checks; other higher-level constraints may still be documentation-only unless implemented in code.

安全使用建议
This skill is coherent and implements a local ontology stored under memory/ontology/graph.jsonl; it does not ask for credentials or network access. Before installing: (1) verify the skill's provenance because _meta.json and registry metadata disagree; (2) ensure your workspace directory is secure since the graph file is persistent and readable by other skills or users with access; (3) do not store raw secrets in entities—use secret_ref indirection as advised and ensure any referenced secret store is trusted; (4) if you plan to pass custom graph paths to the CLI, confirm the CLI/agent enforces workspace-scoped paths to avoid accidental file access outside the project. If any of these checks fail, treat the package with caution or request a vetted release from a known source.
功能分析
Type: OpenClaw Skill Name: lovefromio-ontology Version: 1.0.0 The lovefromio-ontology skill bundle provides a structured knowledge graph system for agent memory. The core logic in scripts/ontology.py includes a resolve_safe_path function to prevent path traversal and implements schema validation that explicitly forbids storing raw secrets in Credential entities. The instructions and documentation are consistent with the stated purpose of entity and relation management, with no signs of data exfiltration, malicious execution, or prompt injection.
能力标签
requires-sensitive-credentials
能力评估
Purpose & Capability
Name/description, SKILL.md, schema references, and the included scripts/ontology.py all align: this is a local typed knowledge graph for agent memory and cross-skill state. There are no declared env vars or external services required that would be unrelated to the ontology purpose.
Instruction Scope
SKILL.md limits operations to creating/querying/relating entities and storing an append-only graph file under memory/ontology/graph.jsonl. It does not instruct the agent to read arbitrary system files or exfiltrate data. Note: Documents can reference local file paths (Document.path) and the skill advises storing secret references rather than raw secrets—users should avoid putting secrets or sensitive content directly into the graph.
Install Mechanism
No install spec is provided (instruction-only packaging) and the script is included in the bundle. There is no external URL download or package installation required, which minimizes install-time risk.
Credentials
The skill requires no environment variables, credentials, or config paths. The schema explicitly forbids storing secrets directly and instead uses secret_ref indirection. This is proportionate to the described functionality.
Persistence & Privilege
The skill persists an append-only graph file under memory/ontology/graph.jsonl within the workspace and can be invoked autonomously (disable-model-invocation is false). This is expected for a shared agent memory component, but users should be aware that stored ontology data is persistent and readable by other skills and local users with access to the workspace.
如何使用
  1. 确保已安装 OpenClaw(本地或 Docker 部署)
  2. 在对话框中输入安装命令:/install lovefromio-ontology
  3. 安装完成后,直接呼叫该 Skill 的名称或使用 /lovefromio-ontology 触发
  4. 根据 Skill 的参数说明提供必要输入,即可获得结构化输出
版本历史
v1.0.0
Initial release of the ontology skill: a typed knowledge graph for structured agent memory and composable skills. - Supports creating, updating, linking, and querying entities (Person, Project, Task, Event, Document). - Enforces type constraints and relation rules with schema validation. - Provides CLI scripts for entity CRUD, graph traversal, and validation. - Uses append-only log storage for data durability and history. - Designed for integration with other skills, shared state, and multi-step planning as graph transformations.
元数据
Slug lovefromio-ontology
版本 1.0.0
许可证 MIT-0
累计安装 1
当前安装数 1
历史版本数 1
常见问题

Lovefromio Ontology 是什么?

Typed knowledge graph for structured agent memory and composable skills. Use when creating/querying entities (Person, Project, Task, Event, Document), linkin... 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 50 次。

如何安装 Lovefromio Ontology?

在 OpenClaw 或 Claude Code 对话框中运行命令「/install lovefromio-ontology」即可一键安装,无需额外配置。

Lovefromio Ontology 是免费的吗?

是的,Lovefromio Ontology 完全免费,采用 MIT-0 许可证,可自由下载、安装和使用。

Lovefromio Ontology 支持哪些平台?

Lovefromio Ontology 跨平台运行,可在任意部署了 OpenClaw / Claude Code 的环境中使用(cross-platform)。

谁开发了 Lovefromio Ontology?

由 AI(@lovefromio)开发并维护,当前版本 v1.0.0。

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