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Smart memory with exponential decay. Memories strengthen on access and fade when unused — solving the Karpathy problem of unbounded context growth. 7 tools, SQL
Smart memory with exponential decay. Memories strengthen on access and fade when unused — solving the Karpathy problem of unbounded context growth. 7 tools, SQLite-based, zero dependencies.
Smart memory for AI agents. Memories decay, topics are frequency-weighted, one-time questions don't become obsessions.
Solves the Karpathy problem: "A single question from 2 months ago keeps coming up as a deep interest with undue mentions in perpetuity."
Day 1: User asks 5 questions (Rust, dark mode, Python, job title, Haskell)
#1 [ACTIVE] rel=1.000 cat=preference "User prefers dark mode in all editors"
#2 [ACTIVE] rel=0.900 cat=fact "User works as a senior software engineer"
#3 [FADING] rel=0.500 cat=question "User is building a Python web scraper"
#4 [FADING] rel=0.300 cat=one-time "User asked about Rust programming"
#5 [FADING] rel=0.300 cat=one-time "User asked what Haskell monads are"
Day 2-5: User mentions Python 4 more times → auto-upgraded to "interest"
#1 [ACTIVE] rel=2.658 mentions=5 cat=interest "Python web scraper"
#2 [ACTIVE] rel=1.000 mentions=1 cat=preference "dark mode"
#3 [ACTIVE] rel=0.900 mentions=1 cat=fact "senior software engineer"
#4 [FADING] rel=0.300 mentions=1 cat=one-time "Rust" ← FADING, won't obsess
#5 [FADING] rel=0.300 mentions=1 cat=one-time "Haskell" ← FADING, won't obsess
After 60 days:
Rust: 0.3 × 0.5^(60/7) = 0.0008 → DEAD (gone, as it should be)
Python: 0.8 × 0.5^(60/60) × 3.32 = 1.329 → STILL ACTIVE (real interest)
| Current LLM Memory | mcp-memory |
|---|---|
| Ask about Rust once → mentioned forever | Ask once → fades in 7 days |
| All memories equal weight | Categories: one-time (7d), question (14d), interest (60d), preference (180d) |
| No decay | Exponential decay — old memories naturally fade |
| No frequency tracking | Mentioned 5+ times → auto-upgrades from "question" to "interest" |
| Keyword matching | Bigram similarity + relevance scoring |
| Agent must decide to remember | Auto-categorizes from content patterns |
| Contradicting preferences coexist | New preference supersedes old one |
| Manual cleanup required | Auto-prunes dead memories on recall |
"mcpServers": {
"memory": {
"command": "npx",
"args": ["-y", "mcp-memory"]
}
}
| Tool | What it does |
|---|---|
remember |
Store a memory. Auto-categorizes from content. Auto-deduplicates via bigram similarity. Supersedes conflicting preferences. |
recall |
Retrieve memories ranked by relevance. Auto-reinforces top match. Auto-prunes dead memories. |
forget |
Delete a memory by ID or fuzzy content match. |
inspect |
Debug view: all memories with decay status, relevance scores, category breakdown, health. |
No need to specify category — it's inferred from content:
| Content Pattern | Auto-Category | Decay |
|---|---|---|
| "prefers X", "likes X", "always uses X" | preference |
180 days |
| "works as X", "is a X", "lives in X" | fact |
365 days |
| "actually X", "meant X", "wrong" | correction |
365 days |
| "currently building", "working on" | context |
30 days |
| "what is X", "how to X" | one-time |
7 days |
| anything else | question |
14 days |
You can still override: remember(content: "...", category: "preference")
Auto-categorized preference:
remember(content: "User prefers TypeScript over JavaScript")
→ Auto-detected as "preference". Persists 180 days.
Semantic dedup:
remember(content: "Works as data scientist at Google")
remember(content: "Works as senior data scientist at Google")
→ Second call reinforces first (80% similar). Keeps longer version.
Preference supersede:
remember(content: "User prefers dark mode")
remember(content: "User prefers light mode")
→ Superseded: "dark mode" → "light mode". One memory, not two.
Recall auto-reinforces:
recall(query: "MCP servers")
→ Returns matching memories AND counts this as a mention.
mention_count goes from 1 → 2 automatically.
Fuzzy forget:
forget(content: "VS Code")
→ Matches and removes "User prefers VS Code for all editing"
relevance = base_weight × decay × frequency_boost
where:
base_weight = category-specific (0.3 for one-time, 1.0 for preference)
decay = 0.5 ^ (age_days / halflife_days)
freq_boost = 1 + log2(mention_count)
A one-time question from 2 months ago:
0.3 × 0.5^(60/7) × 1.0 = 0.0003 → effectively zero. Won't surface.
A preference mentioned 8 times, last week:
1.0 × 0.5^(7/180) × 4.0 = 3.89 → top of every recall.
v0.2.0 still accepts the old v0.1.0 tool names (reinforce, prune, stats). They map to the new tools internally. No breaking changes.
MIT
Run in your terminal:
claude mcp add shipitandpray-mcp-memory -- npx Query your database in natural language
by AnthropicA universal database MCP server supporting simultaneous connections to multiple databases. It provides tools for database operations, health analysis, SQL optim
by wenb1n-devRead-only database access with schema inspection.
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