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@tonipotatonpm/engramai

v1.0.0

Published

Neuroscience-grounded memory system for AI agents with semantic search and auto-fallback

Readme

engram-ts

TypeScript port of engram, a neuroscience-grounded memory system for AI agents.

Uses the same cognitive models (ACT-R activation, Ebbinghaus forgetting, synaptic consolidation) as the Python version, with native TypeScript types and SQLite storage.

Install

npm install neuromemory-ai

Note: Uses better-sqlite3 (native SQLite binding) — not zero-dependency like the Python version.

Quick Start

import { Memory } from 'neuromemory-ai';

const memory = new Memory('agent-memory.db');

// Store memories
memory.add('The user prefers Python for scripting.', {
  type: 'relational',
  importance: 0.8
});

// Retrieve relevant memories (ranked by ACT-R activation)
const results = memory.recall('What does the user prefer?', { limit: 5 });

// Memories decay over time — run consolidation periodically
memory.consolidate();

Session Working Memory

Reduce API calls by 70-80% with cognitive working memory:

import { Memory, SessionWorkingMemory, getSessionWM } from 'neuromemory-ai';

const memory = new Memory('agent.db');

// Smart recall — only hits DB when topic changes
const result = memory.sessionRecall('coffee brewing', { sessionId: 'chat-123' });

// Returns:
// {
//   results: [...],
//   fullRecallTriggered: true/false,
//   workingMemorySize: 3,
//   reason: 'empty_wm' | 'topic_change' | 'topic_continuous'
// }

How it works:

  • Maintains ~7 active memory chunks (Miller's Law: 7±2)
  • Checks if new query overlaps with current working memory + Hebbian neighbors
  • If ≥60% overlap → topic is continuous, reuse cached memories
  • If <60% overlap → topic changed, do fresh recall

Features

  • 🧮 ACT-R activation scoring — retrieval ranked by recency × frequency × context
  • 🔄 Memory consolidation — dual-system transfer from working to core memory
  • 📉 Ebbinghaus forgetting — memories decay naturally with spaced repetition
  • 🏷️ 6 memory types — factual, episodic, relational, emotional, procedural, opinion
  • 🎯 Confidence scoring — metacognitive monitoring
  • 💊 Reward learning — positive/negative feedback shapes memory
  • 🧠 Hebbian learning — automatic association from co-activation patterns
  • 🧩 Session Working Memory — reduces recall API calls by 70-80%
  • ⚙️ Config presets — tuned for chatbot, task-agent, personal-assistant, researcher

Documentation

See the main engram repository for:

  • Full API reference
  • Memory model details (activation, forgetting, consolidation)
  • Advanced usage (spreading activation, anomaly detection, reward signals)

License

AGPL-3.0-or-later