
Research
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npm Package Uses Prompt Injection and Token Flooding to Disrupt AI Malware Scanners
A new npm package tests AI malware scanners with prompt injection, safety-triggering comments, context flooding, and obfuscated JavaScript.
@hazeljs/messaging
Advanced tools
Multichannel messaging for HazelJS - WhatsApp, Telegram, Viber with LLM-powered bot responses
Multichannel messaging for HazelJS: WhatsApp, Telegram, Viber with LLM-powered bot responses.
IncomingMessage / OutgoingMessage@hazeljs/ai providers (OpenAI, Anthropic, etc.) for conversational responsesnpm install @hazeljs/messaging @hazeljs/ai @hazeljs/core
For Redis context (horizontal scaling):
npm install ioredis
For Kafka async processing (horizontal scaling):
npm install @hazeljs/kafka
For Viber support:
npm install viber-bot
import { HazelApp } from '@hazeljs/core';
import { MessagingModule } from '@hazeljs/messaging';
import { OpenAIProvider } from '@hazeljs/ai';
const app = new HazelApp({
imports: [
MessagingModule.forRoot({
aiProvider: new OpenAIProvider(process.env.OPENAI_API_KEY),
systemPrompt: 'You are a helpful support assistant. Keep responses concise.',
model: 'gpt-4o-mini',
channels: {
telegram: { botToken: process.env.TELEGRAM_BOT_TOKEN! },
whatsapp: {
accessToken: process.env.WHATSAPP_ACCESS_TOKEN!,
phoneNumberId: process.env.WHATSAPP_PHONE_NUMBER_ID!,
},
},
}),
],
});
app.listen(3000);
For horizontal scalability, use Redis for context and Kafka for async processing:
import Redis from 'ioredis';
MessagingModule.forRoot({
aiProvider: new OpenAIProvider(),
channels: { telegram: { botToken: process.env.TELEGRAM_BOT_TOKEN! } },
redis: {
host: process.env.REDIS_HOST ?? 'localhost',
port: parseInt(process.env.REDIS_PORT ?? '6379', 10),
password: process.env.REDIS_PASSWORD,
ttlSeconds: 86400, // 24h
},
kafka: {
brokers: (process.env.KAFKA_BROKERS ?? 'localhost:9092').split(','),
},
});
| Channel | Method | URL |
|---|---|---|
| Telegram | POST | /api/messaging/webhook/telegram |
| GET | /api/messaging/webhook/whatsapp (verification) | |
| POST | /api/messaging/webhook/whatsapp | |
| Viber | POST | /api/messaging/webhook/viber |
aiProvider – IAIProvider from @hazeljs/ai (e.g. OpenAIProvider)systemPrompt – System prompt for the LLMmodel – Model name (default: gpt-4o-mini)temperature – 0–1 (default: 0.7)maxTokens – Max response tokens (default: 500)maxContextTurns – Conversation turns to keep (default: 10)customHandler – Override LLM with a custom (msg) => string | Promise<string>channels – Channel config (see below)WHATSAPP_VERIFY_TOKEN in env for webhook verificationaccessToken, phoneNumberId from Meta for Developershttps://api.telegram.org/bot<token>/setWebhook?url=https://your-domain/api/messaging/webhook/telegramnpm install viber-botUse a knowledge base to ground responses. Compatible with @hazeljs/rag RAGService:
import { RAGService } from '@hazeljs/rag';
// ... set up RAGService with vector store, embeddings, etc.
MessagingModule.forRoot({
aiProvider: new OpenAIProvider(),
ragService: myRAGService,
ragTopK: 5,
ragMinScore: 0.5,
channels: { telegram: { botToken: process.env.TELEGRAM_BOT_TOKEN! } },
});
Wire your CSRService or AgentRuntime for full control—tools, RAG, external lookups:
import { MessagingModule } from '@hazeljs/messaging';
import { CSRService } from './csr'; // your CSRService like hazeljs-csr-example
const csrService = new CSRService(...);
MessagingModule.forRoot({
agentHandler: async ({ message, sessionId }) => {
const result = await csrService.chat(message.text, sessionId, message.userId);
return { response: result.response, sources: result.sources };
},
channels: { telegram: { botToken: process.env.TELEGRAM_BOT_TOKEN! } },
});
The agent handler receives { message, sessionId, conversationTurns } and can:
AgentRuntime.execute() with tools and RAGstring or { response, sources }MessagingModule.forRoot({
customHandler: async (msg) => {
if (msg.text === '/help') return 'Available commands: /help, /status';
return 'Use /help for commands.';
},
});
Implement IChannelAdapter and register via providers.
FAQs
Multichannel messaging for HazelJS - WhatsApp, Telegram, Viber with LLM-powered bot responses
The npm package @hazeljs/messaging receives a total of 567 weekly downloads. As such, @hazeljs/messaging popularity was classified as not popular.
We found that @hazeljs/messaging demonstrated a healthy version release cadence and project activity because the last version was released less than a year ago. It has 1 open source maintainer collaborating on the project.
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