Documentation Index Fetch the complete documentation index at: https://docs.agentfront.dev/llms.txt
Use this file to discover all available pages before exploring further.
Installation
npm install @frontmcp/plugin-remember
Basic Usage
import { FrontMcp } from ' @frontmcp/sdk ' ;
import { RememberPlugin } from ' @frontmcp/plugin-remember ' ;
@ FrontMcp ({
plugins : [
new RememberPlugin ({
store : redis // or 'memory' for development
})
]
})
export class MyServer {}
The plugin adds these tools to your server:
remember
Store information for later:
// AI agent can call:
await mcp . callTool ( ' remember ' , {
key : ' user_preference ' ,
value : ' prefers dark mode ' ,
ttl : 86400000 // 24 hours
});
recall
Retrieve stored information:
const preference = await mcp . callTool ( ' recall ' , {
key : ' user_preference '
});
// "prefers dark mode"
forget
Remove stored information:
await mcp . callTool ( ' forget ' , {
key : ' user_preference '
});
Configuration
new RememberPlugin ({
// Storage backend
store : redis , // or 'memory'
// Default TTL
ttl : 86400000 * 30 , // 30 days
// Key prefix
prefix : ' memory: ' ,
// Per-user namespacing
namespace : ( ctx ) => ctx . userId ,
// Maximum memories per user
maxItems : 1000
})
Memory Categories
Organize memories by category:
await mcp . callTool ( ' remember ' , {
category : ' preferences ' ,
key : ' theme ' ,
value : ' dark '
});
await mcp . callTool ( ' remember ' , {
category : ' context ' ,
key : ' current_project ' ,
value : ' AgentFront documentation '
});
Semantic Memory
Store with embeddings for semantic retrieval:
new RememberPlugin ({
store : redis ,
vectorDb : vectoriaDb , // Enable semantic search
// Configure embedding
embedding : {
model : ' text-embedding-3-small ' ,
dimensions : 1536
}
})
Semantic recall:
const memories = await mcp . callTool ( ' recallSimilar ' , {
query : ' What does the user like? ' ,
limit : 5
});
Conversation History
Automatically remember conversation context:
new RememberPlugin ({
store : redis ,
conversationHistory : {
enabled : true ,
maxMessages : 100 ,
summarizeAfter : 50
}
})
Access memories in your tools:
@ App ({ name : ' assistant ' })
class AssistantApp {
constructor ( private memory : MemoryProvider ) {}
@ Tool ({ name : ' greet ' })
async greet () {
const name = await this . memory . get ( ' user_name ' );
return ` Hello, ${ name || ' there ' } ! ` ;
}
}
Next Steps
CodeCall Plugin Code execution
VectoriaDB Semantic search