Skip to content

phoenix-assistant/mem-gc

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

1 Commit
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

mem-gc

Garbage collection runtime for agent memory stores. Zero LLM dependency — all algorithms are deterministic.

Features

  • Generational Decay — Weibull TTL with access-frequency reinforcement
  • Semantic Deduplication — TF-IDF cosine similarity (no external APIs)
  • Contradiction Detection — Finds conflicting facts via negation analysis
  • Memory Health Score — Composite 0-100: freshness, uniqueness, consistency, retrieval utility
  • Adapter Pattern — JSON file adapter built-in, extensible interface for custom backends
  • CLImem-gc scan, mem-gc prune, mem-gc health, mem-gc report

Install

npm install @phoenixaihub/mem-gc

CLI Usage

# Scan a memory file
mem-gc scan --file ./memories.json

# Get health score
mem-gc health --file ./memories.json

# Prune expired and duplicate memories
mem-gc prune --file ./memories.json

# Dry run (show what would be pruned)
mem-gc prune --file ./memories.json --dry-run

# JSON output
mem-gc report --file ./memories.json --json

# Custom thresholds
mem-gc scan --file ./memories.json --threshold 0.2 --similarity 0.9

Library Usage

import { MemGC, JsonAdapter } from '@phoenixaihub/mem-gc';

const adapter = new JsonAdapter('./memories.json');
const gc = new MemGC(adapter, {
  decay: { shape: 1.5, scale: 30, accessBonus: 0.1, threshold: 0.1 },
  dedup: { similarityThreshold: 0.85 },
});

// Scan for issues
const report = await gc.scan();
console.log(`Health: ${report.health.score}/100`);
console.log(`Expired: ${report.health.expiredCount}`);
console.log(`Duplicates: ${report.health.duplicateCount}`);
console.log(`Contradictions: ${report.health.contradictionCount}`);

// Prune (remove expired + duplicates)
const { pruned } = await gc.prune();
console.log(`Removed ${pruned.length} records`);

Memory Record Format

interface MemoryRecord {
  id: string;
  content: string;
  metadata?: Record<string, unknown>;
  createdAt: number;       // unix ms
  lastAccessedAt: number;  // unix ms
  accessCount: number;
  tags?: string[];
  confidence?: number;     // 0-1
}

Custom Adapters

Implement the MemoryAdapter interface:

import { MemoryAdapter, MemoryRecord } from '@phoenixaihub/mem-gc';

class MyAdapter implements MemoryAdapter {
  async loadAll(): Promise<MemoryRecord[]> { /* ... */ }
  async deleteMany(ids: string[]): Promise<void> { /* ... */ }
  async update(record: MemoryRecord): Promise<void> { /* ... */ }
  async saveAll(records: MemoryRecord[]): Promise<void> { /* ... */ }
}

How It Works

Decay Engine

Uses a Weibull survival function: S(t) = exp(-(t/λ')^k) where λ' is scaled by access frequency. Frequently accessed memories live longer.

Deduplication

Builds TF-IDF vectors for all memories, computes pairwise cosine similarity, and clusters near-duplicates. Keeps the most-accessed record as canonical.

Contradiction Detection

Identifies pairs of memories that are topically similar (cosine similarity > threshold) but contain opposing sentiment via negation word analysis.

Health Score

Weighted average of four dimensions (25% each):

  • Freshness — % of non-expired records
  • Uniqueness — % of non-duplicate records
  • Consistency — penalizes contradictions
  • Retrieval Utility — average survival score

License

MIT

About

Garbage collection runtime for agent memory stores. Weibull decay, semantic deduplication, contradiction detection, health scoring.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

 
 
 

Contributors