JSPM

@memberjunction/aiengine

1.3.3
  • ESM via JSPM
  • ES Module Entrypoint
  • Export Map
  • Keywords
  • License
  • Repository URL
  • TypeScript Types
  • README
  • Created
  • Published
  • Downloads 1595
  • Score
    100M100P100Q122628F
  • License ISC

MemberJunction: AI Engine Package - handles automatic execution of Entity AI Actions using AI Models

Package Exports

  • @memberjunction/aiengine
  • @memberjunction/aiengine/dist/index.js

This package does not declare an exports field, so the exports above have been automatically detected and optimized by JSPM instead. If any package subpath is missing, it is recommended to post an issue to the original package (@memberjunction/aiengine) to support the "exports" field. If that is not possible, create a JSPM override to customize the exports field for this package.

Readme

@memberjunction/aiengine

Server-side AI Engine for MemberJunction. Wraps AIEngineBase and adds server-only capabilities including LLM execution, embedding generation, vector-based semantic search for agents and actions, and conversation attachment management. This package is the main orchestration layer for AI operations on the server.

Architecture

graph TD
    AIB["AIEngineBase<br/>Metadata Cache"]
    style AIB fill:#2d6a9f,stroke:#1a4971,color:#fff

    AIE["AIEngine<br/>Server-Side Singleton"]
    style AIE fill:#2d8659,stroke:#1a5c3a,color:#fff

    subgraph "Server Capabilities"
        LLM["LLM Execution<br/>ChatCompletion, Classify, Summarize"]
        style LLM fill:#7c5295,stroke:#563a6b,color:#fff

        EMB["Embedding Services<br/>Agent & Action Embeddings"]
        style EMB fill:#7c5295,stroke:#563a6b,color:#fff

        VS["Vector Search<br/>Semantic Agent/Action/Note Matching"]
        style VS fill:#b8762f,stroke:#8a5722,color:#fff

        ATT["Attachment Service<br/>Conversation Media Management"]
        style ATT fill:#b8762f,stroke:#8a5722,color:#fff
    end

    AIB --> AIE
    AIE --> LLM
    AIE --> EMB
    AIE --> VS
    AIE --> ATT

    subgraph "Result Types"
        AMR["AgentMatchResult"]
        style AMR fill:#7c5295,stroke:#563a6b,color:#fff

        ACMR["ActionMatchResult"]
        style ACMR fill:#7c5295,stroke:#563a6b,color:#fff

        NMR["NoteMatchResult"]
        style NMR fill:#7c5295,stroke:#563a6b,color:#fff

        EMR["ExampleMatchResult"]
        style EMR fill:#7c5295,stroke:#563a6b,color:#fff
    end

    VS --> AMR
    VS --> ACMR
    VS --> NMR
    VS --> EMR

Installation

npm install @memberjunction/aiengine

Note: This package is server-side only. For metadata access on the client, use @memberjunction/ai-engine-base directly.

Key Exports

AIEngine (Singleton)

The main server-side engine. Uses composition (not inheritance) to delegate metadata operations to AIEngineBase.Instance while adding server-specific features.

import { AIEngine } from '@memberjunction/aiengine';

// Initialize
await AIEngine.Instance.Config(false, contextUser);

// All AIEngineBase properties are delegated:
const models = AIEngine.Instance.Models;
const agents = AIEngine.Instance.Agents;

LLM Execution

// Direct chat completion
const result = await AIEngine.Instance.ChatCompletion({
    model: 'gpt-4',
    messages: [{ role: 'user', content: 'Explain quantum computing' }]
});

// Summarize text
const summary = await AIEngine.Instance.SummarizeText({
    model: 'gpt-4',
    text: longDocument
});

// Classify text
const classification = await AIEngine.Instance.ClassifyText({
    model: 'gpt-4',
    text: inputText,
    categories: ['positive', 'negative', 'neutral']
});

Find agents, actions, notes, and examples using vector similarity:

// Find agents matching a user query
const agentMatches: AgentMatchResult[] = await AIEngine.Instance.FindSimilarAgents(
    'Help me analyze sales data',
    5,           // topK
    contextUser
);

// Find relevant actions
const actionMatches: ActionMatchResult[] = await AIEngine.Instance.FindSimilarActions(
    'Send an email notification',
    5,
    contextUser
);

// Find relevant notes for an agent
const noteMatches: NoteMatchResult[] = await AIEngine.Instance.FindSimilarNotes(
    agentId,
    'Customer wants a refund',
    10,
    contextUser
);

// Find relevant examples for an agent
const exampleMatches: ExampleMatchResult[] = await AIEngine.Instance.FindSimilarExamples(
    agentId,
    'How do I reset my password?',
    5,
    contextUser
);

Embedding Services

Class Purpose
AgentEmbeddingService Generates and manages embeddings for AI agents, enabling semantic agent discovery
ActionEmbeddingService Generates and manages embeddings for actions, enabling semantic action matching

Match Result Types

Type Fields Description
AgentMatchResult agent, score, metadata Agent found via semantic similarity
ActionMatchResult action, score, metadata Action found via semantic similarity
NoteMatchResult note, score, metadata Agent note found via semantic similarity
ExampleMatchResult example, score, metadata Agent example found via semantic similarity

Vector Store Invariant Preservation

AIEngine exposes FindSimilarAgentNotes over the in-process _noteVectorService. Since v5.30.x the vector store is kept strictly in sync with the persisted note state:

  • Invariant. _noteVectorService contains an entry for an AIAgentNote if and only if its persisted Status='Active' AND its EmbeddingVector is non-null.
  • Write-side enforcement. MJAIAgentNoteEntityServer.Save() and .Delete() (in @memberjunction/core-entities-server) update the in-process vector store inline with each note write — adding entries when a note becomes Active with a non-null embedding, removing them when Status flips away from Active or when the note is deleted.
  • What this fixes. Before this change, revoking a note (e.g. during MemoryManagerAgent consolidation, or when a contradiction was resolved) would leave a stale entry in _noteVectorService until MJAPI was restarted. Subsequent calls to FindSimilarAgentNotes would surface revoked notes back to retrieval. The invariant now holds without a restart.

The relevant code paths live in src/AIEngine.ts and packages/MJCoreEntitiesServer/src/custom/MJAIAgentNoteEntityServer.server.ts.

ConversationAttachmentService

Manages media attachments (images, audio, video, files) in agent conversations:

import { ConversationAttachmentService } from '@memberjunction/aiengine';

const service = new ConversationAttachmentService();

// Process uploaded attachments for a conversation
await service.ProcessAttachments(conversationId, attachments, contextUser);

Usage Pattern

import { AIEngine } from '@memberjunction/aiengine';

// 1. Initialize at server startup
await AIEngine.Instance.Config(false, contextUser);

// 2. Access metadata (delegated to AIEngineBase)
const model = AIEngine.Instance.Models.find(m => m.Name === 'GPT-4');
const agent = AIEngine.Instance.GetAgentByName('Sales Assistant');

// 3. Use server-side capabilities
const similar = await AIEngine.Instance.FindSimilarAgents(userQuery, 5, contextUser);

Dependencies

  • @memberjunction/ai-engine-base -- Base metadata cache (AIEngineBase)
  • @memberjunction/ai -- Core AI abstractions (BaseLLM, BaseEmbeddings)
  • @memberjunction/ai-core-plus -- Extended entity classes
  • @memberjunction/ai-vectors-memory -- In-memory vector service for semantic search
  • @memberjunction/core -- MJ framework core
  • @memberjunction/core-entities -- Generated entity classes
  • @memberjunction/actions-base -- Action framework integration
  • @memberjunction/storage -- File storage integration for attachments