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jpengcheng523-netizen

knowledge-graph-memory

by jpengcheng523-netizen · GitHub ↗ · v1.0.0 · MIT-0
cross-platform ✓ Security Clean
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Install in OpenClaw
/install jpeng-knowledge-graph-memory
Description
Builds and maintains a knowledge graph for long-term memory with concept drift detection and temporal reasoning. Use when storing structured knowledge, detec...
README (SKILL.md)

Knowledge Graph Memory

Long-term memory system with knowledge graph, concept drift detection, and temporal reasoning.

When to Use

  • Building knowledge graphs from concepts and relationships
  • Detecting concept drift over time
  • Temporal reasoning and time-based queries
  • Long-term memory storage with consolidation

Usage

const { KnowledgeGraph, Memory } = require('./skills/knowledge-graph-memory');

// Create a knowledge graph
const kg = new KnowledgeGraph();

// Add concepts
kg.addConcept('AI', { category: 'technology', importance: 0.9 });
kg.addConcept('Machine Learning', { category: 'technology' });

// Link concepts
kg.link('AI', 'Machine Learning', 'includes');

// Find related concepts
const related = kg.getRelated('AI');

// Detect concept drift
const drift = kg.detectDrift('AI');

// Search concepts
const results = kg.search({ name: 'AI' });

Features

  • Knowledge Graph: Nodes (concepts) and edges (relationships)
  • Concept Drift Detection: ADWIN, DDM, statistical methods
  • Temporal Reasoning: Time-based queries and event tracking
  • Memory Consolidation: Promote important memories, forget unused ones

API

KnowledgeGraph

const kg = new KnowledgeGraph({
  maxNodes: 10000,
  consolidationThreshold: 0.1,
  driftDetection: { method: 'statistical', threshold: 2.0 }
});

// Add and get concepts
kg.addConcept(name, properties);
kg.getConcept(idOrName);

// Create relationships
kg.link(sourceId, targetId, edgeType, properties);

// Query
kg.getRelated(conceptId, edgeType);
kg.findPath(startId, endId, maxDepth);
kg.search({ name: 'pattern', type: 'concept' });

// Drift detection
kg.detectDrift(conceptId);

// Memory management
kg.consolidate();
kg.removeConcept(id);

// Serialization
kg.toJSON();
KnowledgeGraph.fromJSON(data);

Concept

const concept = new Concept({
  name: 'AI',
  type: 'concept',
  properties: { category: 'technology' },
  importance: 0.8
});

concept.access();  // Increment access count
concept.update({ newProperty: 'value' });  // Update with history

DriftDetector

const detector = new DriftDetector({
  method: 'statistical',
  windowSize: 100,
  threshold: 2.0
});

const result = detector.addSample(value);
// { drift: boolean, warning: boolean, mean, stdDev }

TemporalReasoner

const reasoner = new TemporalReasoner();

reasoner.addEvent({ type: 'concept_added', conceptId: 'AI' });
reasoner.getEventsInRange(start, end);
reasoner.getEventsBefore(time);
reasoner.getEventsAfter(time);
reasoner.getRecentEvents(10);

Memory

const memory = new Memory({
  shortTermMaxSize: 100,
  consolidationInterval: 3600000
});

memory.remember('key', { data: 'value' }, { importance: 0.8 });
memory.recall('key');
memory.forget('key');
memory.consolidate();

Node Types

  • CONCEPT: Abstract concept
  • ENTITY: Concrete entity
  • EVENT: Time-based event
  • FACT: Verified fact
  • RELATION: Relationship node

Edge Types

  • IS_A: Inheritance relationship
  • HAS_A: Composition relationship
  • RELATED_TO: Generic relationship
  • CAUSES: Causal relationship
  • PRECEDES: Temporal ordering
  • INCLUDES: Set membership
  • SIMILAR_TO: Similarity relationship
  • DERIVED_FROM: Derivation relationship

Example: Building a Knowledge Base

const { KnowledgeGraph, EdgeType } = require('./skills/knowledge-graph-memory');

const kg = new KnowledgeGraph();

// Build knowledge structure
kg.addConcept('Technology', { category: 'domain' });
kg.addConcept('AI', { category: 'field' });
kg.addConcept('Machine Learning', { category: 'subfield' });
kg.addConcept('Neural Networks', { category: 'technique' });
kg.addConcept('Deep Learning', { category: 'technique' });

// Create relationships
kg.link('AI', 'Technology', EdgeType.IS_A);
kg.link('Machine Learning', 'AI', EdgeType.IS_A);
kg.link('Neural Networks', 'Machine Learning', EdgeType.IS_A);
kg.link('Deep Learning', 'Neural Networks', EdgeType.IS_A);
kg.link('Deep Learning', 'Machine Learning', EdgeType.RELATED_TO);

// Query the graph
const mlRelated = kg.getRelated('Machine Learning');
const path = kg.findPath('Deep Learning', 'Technology');

console.log('ML related concepts:', mlRelated.map(r => r.concept.name));
console.log('Path:', path?.map(c => c.name));

Example: Concept Drift Detection

const { KnowledgeGraph } = require('./skills/knowledge-graph-memory');

const kg = new KnowledgeGraph();
kg.addConcept('User Behavior', { pattern: 'initial' });

// Simulate concept evolution
for (let i = 0; i \x3C 50; i++) {
  const concept = kg.getConcept('User Behavior');
  concept.update({ pattern: `evolved_${i}` });
  
  const drift = kg.detectDrift('User Behavior');
  if (drift.drift) {
    console.log('Drift detected at iteration', i);
  }
}

Example: Memory Consolidation

const { Memory } = require('./skills/knowledge-graph-memory');

const memory = new Memory();

// Store memories
memory.remember('important_fact', { value: 'critical data' }, { importance: 0.9 });
memory.remember('temporary_note', { value: 'temp data' }, { importance: 0.3 });

// Access important memory multiple times
for (let i = 0; i \x3C 5; i++) {
  memory.recall('important_fact');
}

// Consolidate - promotes frequently accessed to long-term
const result = memory.consolidate();
console.log('Promoted:', result.promoted, 'Removed:', result.removed);
Usage Guidance
This skill appears to be a local JavaScript library implementing a knowledge graph and drift detection and is coherent with its description. Before installing or using it: 1) verify the module export (module.exports / exports) and the correct require/import path — SKILL.md examples reference ./skills/knowledge-graph-memory which may not match the package layout; 2) read the remaining portion of index.js (the file was partially shown) to confirm there are no network calls, file writes, or hidden endpoints; 3) treat stored memories as potentially sensitive — implement access controls and avoid storing PII or secrets in the graph; and 4) run the code in a sandbox or review tests locally if you plan to use it in production.
Capability Analysis
Type: OpenClaw Skill Name: jpeng-knowledge-graph-memory Version: 1.0.0 The skill bundle provides a legitimate implementation of a knowledge graph and long-term memory system. The code in index.js focuses entirely on data structure management, including concept drift detection and temporal reasoning, without any high-risk behaviors such as network requests, file system access, or shell execution. No evidence of malicious intent or prompt injection was found in the documentation or logic.
Capability Assessment
Purpose & Capability
The name and description (knowledge graph, drift detection, temporal reasoning) match the API and the included index.js implementation. The functionality requested in SKILL.md (addConcept, link, detectDrift, temporal queries, memory consolidation) is implemented or clearly represented in the code.
Instruction Scope
Runtime instructions and examples operate on in-memory graph objects and do not instruct reading system files, environment variables, or contacting external endpoints. Minor documentation mismatch: examples call require('./skills/knowledge-graph-memory') while the package's main file is index.js at the package root and the visible portion of index.js does not show module.exports — you should verify the module export path and names before using.
Install Mechanism
No install spec and no external downloads are declared. The skill is effectively an embedded library (code file present) and does not pull external artifacts or run installers.
Credentials
No environment variables, credentials, or config paths are required or referenced. The code does not access process.env or similar in the visible portion.
Persistence & Privilege
The skill is not force-enabled (always: false) and does not request elevated persistent privileges. It does not modify other skills or system-wide configs in the visible code.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install jpeng-knowledge-graph-memory
  3. After installation, invoke the skill by name or use /jpeng-knowledge-graph-memory
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v1.0.0
Initial release of knowledge-graph-memory skill. - Provides a knowledge graph for long-term memory with concept drift detection and temporal reasoning. - Supports adding concepts, linking relationships, and querying related nodes or paths. - Includes statistical methods for detecting concept drift over time. - Enables temporal reasoning with event tracking and time-based queries. - Memory management features: short-term and long-term storage, memory consolidation, and forgetting unused items. - Offers a modular API for KnowledgeGraph, Concept, DriftDetector, TemporalReasoner, and Memory.
Metadata
Slug jpeng-knowledge-graph-memory
Version 1.0.0
License MIT-0
All-time Installs 2
Active Installs 2
Total Versions 1
Frequently Asked Questions

What is knowledge-graph-memory?

Builds and maintains a knowledge graph for long-term memory with concept drift detection and temporal reasoning. Use when storing structured knowledge, detec... It is an AI Agent Skill for Claude Code / OpenClaw, with 394 downloads so far.

How do I install knowledge-graph-memory?

Run "/install jpeng-knowledge-graph-memory" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is knowledge-graph-memory free?

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

Which platforms does knowledge-graph-memory support?

knowledge-graph-memory is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).

Who created knowledge-graph-memory?

It is built and maintained by jpengcheng523-netizen (@jpengcheng523-netizen); the current version is v1.0.0.

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