groq-webhooks-events
Build event-driven architectures with Groq streaming, batch processing, and async patterns. Use when setting up real-time SSE endpoints, batch processing pipelines, or event-driven LLM processing with Groq. Trigger with phrases like "groq streaming", "groq events", "groq SSE", "groq batch", "groq async", "groq event-driven".
What this skill does
# Groq Events & Async Patterns
## Overview
Build event-driven architectures around Groq's inference API. Groq does not provide native webhooks, but its sub-second latency enables unique patterns: real-time SSE streaming, batch processing with callbacks, queue-based pipelines, and event processors that use Groq as an LLM classification/extraction engine.
## Prerequisites
- `groq-sdk` installed, `GROQ_API_KEY` set
- Queue system for batch patterns (BullMQ, Redis, SQS)
- Understanding of Server-Sent Events (SSE) for streaming
## Instructions
### Step 1: SSE Streaming Endpoint
```typescript
import Groq from "groq-sdk";
import express from "express";
const groq = new Groq();
const app = express();
app.use(express.json());
app.post("/api/chat/stream", async (req, res) => {
const { messages, model = "llama-3.3-70b-versatile" } = req.body;
res.writeHead(200, {
"Content-Type": "text/event-stream",
"Cache-Control": "no-cache",
Connection: "keep-alive",
"X-Accel-Buffering": "no", // Disable nginx buffering
});
try {
const stream = await groq.chat.completions.create({
model,
messages,
stream: true,
max_tokens: 2048,
});
for await (const chunk of stream) {
const content = chunk.choices[0]?.delta?.content;
if (content) {
res.write(`data: ${JSON.stringify({ content, type: "token" })}\n\n`);
}
}
res.write(`data: ${JSON.stringify({ type: "done" })}\n\n`);
} catch (err: any) {
res.write(`data: ${JSON.stringify({ type: "error", message: err.message })}\n\n`);
}
res.end();
});
```
### Step 2: Batch Processing with BullMQ
```typescript
import { Queue, Worker } from "bullmq";
import Groq from "groq-sdk";
import { randomUUID } from "crypto";
const groq = new Groq();
const groqQueue = new Queue("groq-batch", { connection: { host: "localhost" } });
// Enqueue a batch of prompts
async function submitBatch(
prompts: string[],
callbackUrl: string,
model = "llama-3.1-8b-instant"
): Promise<string> {
const batchId = randomUUID();
for (const [index, prompt] of prompts.entries()) {
await groqQueue.add("inference", {
batchId,
index,
prompt,
model,
callbackUrl,
total: prompts.length,
});
}
return batchId;
}
// Worker processes queue items
const worker = new Worker("groq-batch", async (job) => {
const { prompt, model, callbackUrl, batchId, index, total } = job.data;
const completion = await groq.chat.completions.create({
model,
messages: [{ role: "user", content: prompt }],
temperature: 0,
});
const result = {
batchId,
index,
total,
content: completion.choices[0].message.content,
model: completion.model,
usage: completion.usage,
};
// Fire callback on completion
if (callbackUrl) {
await fetch(callbackUrl, {
method: "POST",
headers: { "Content-Type": "application/json" },
body: JSON.stringify({
event: "groq.batch.item_completed",
data: result,
}),
});
}
return result;
}, {
connection: { host: "localhost" },
concurrency: 5,
limiter: { max: 25, duration: 60_000 }, // 25 RPM to stay under limits
});
```
### Step 3: Webhook Event Processor
```typescript
// Use Groq as an LLM engine to process incoming webhook events
async function processWebhookEvent(event: any) {
// Classify event type and extract key data using fast 8B model
const classification = await groq.chat.completions.create({
model: "llama-3.1-8b-instant",
messages: [
{
role: "system",
content: `Classify this webhook event and extract key fields.
Respond with JSON: {"type": string, "priority": "high"|"medium"|"low", "summary": string, "action": string}`,
},
{ role: "user", content: JSON.stringify(event) },
],
response_format: { type: "json_object" },
temperature: 0,
max_tokens: 200,
});
return JSON.parse(classification.choices[0].message.content!);
}
// Express webhook receiver
app.post("/webhook", async (req, res) => {
const event = req.body;
// Acknowledge immediately (don't block the sender)
res.status(202).json({ received: true });
// Process asynchronously with Groq
const analysis = await processWebhookEvent(event);
if (analysis.priority === "high") {
await notifySlack(`High priority event: ${analysis.summary}`);
}
await logEvent({ raw: event, analysis });
});
```
### Step 4: Scheduled Health Monitor
```typescript
// Periodic Groq API health check with latency tracking
async function monitorGroqHealth() {
const models = ["llama-3.1-8b-instant", "llama-3.3-70b-versatile"];
const results: Record<string, any> = {};
for (const model of models) {
const start = performance.now();
try {
const completion = await groq.chat.completions.create({
model,
messages: [{ role: "user", content: "OK" }],
max_tokens: 1,
});
results[model] = {
status: "ok",
latencyMs: Math.round(performance.now() - start),
tokensPerSec: completion.usage!.completion_tokens / ((completion.usage as any).completion_time || 1),
};
} catch (err: any) {
results[model] = {
status: "error",
latencyMs: Math.round(performance.now() - start),
error: `${err.status}: ${err.message}`,
};
}
}
return results;
}
// Run every 5 minutes
setInterval(() => monitorGroqHealth().then(console.log), 5 * 60_000);
```
### Step 5: Python Async Batch Processing
```python
import asyncio
from groq import AsyncGroq
client = AsyncGroq()
async def process_batch(prompts: list[str], model: str = "llama-3.1-8b-instant"):
"""Process prompts concurrently with rate limit awareness."""
semaphore = asyncio.Semaphore(5) # Max 5 concurrent requests
async def process_one(prompt: str):
async with semaphore:
return await client.chat.completions.create(
model=model,
messages=[{"role": "user", "content": prompt}],
max_tokens=256,
)
results = await asyncio.gather(
*[process_one(p) for p in prompts],
return_exceptions=True,
)
return [
r.choices[0].message.content if not isinstance(r, Exception) else str(r)
for r in results
]
```
## Event Pattern Summary
| Pattern | Groq Model | Latency | Use Case |
|---------|-----------|---------|----------|
| SSE streaming | `llama-3.3-70b-versatile` | ~200ms TTFT | Real-time chat |
| Batch queue | `llama-3.1-8b-instant` | ~80ms TTFT | Document processing |
| Webhook processor | `llama-3.1-8b-instant` | ~80ms TTFT | Event classification |
| Health monitor | `llama-3.1-8b-instant` | ~80ms TTFT | Uptime tracking |
## Error Handling
| Issue | Cause | Solution |
|-------|-------|----------|
| SSE disconnect | Client timeout or network | Implement reconnection with last-event-id |
| Batch item fails | Rate limit or model error | Queue retry with exponential backoff |
| Webhook timeout | Processing takes too long | Acknowledge immediately (202), process async |
| Health check 429 | Monitoring consuming quota | Reduce check frequency, use smallest model |
## Resources
- [Groq API Reference](https://console.groq.com/docs/api-reference)
- [Groq Text Generation (streaming)](https://console.groq.com/docs/text-chat)
- [BullMQ Documentation](https://docs.bullmq.io/)
## Next Steps
For performance optimization, see `groq-performance-tuning`.
Related in AI Agents
skill-development
IncludedComprehensive meta-skill for creating, managing, validating, auditing, and distributing Claude Code skills and slash commands (unified in v2.1.3+). Provides skill templates, creation workflows, validation patterns, audit checklists, naming conventions, YAML frontmatter guidance, progressive disclosure examples, and best practices lookup. Use when creating new skills, validating existing skills, auditing skill quality, understanding skill architecture, needing skill templates, learning about YAML frontmatter requirements, progressive disclosure patterns, tool restrictions (allowed-tools), skill composition, skill naming conventions, troubleshooting skill activation issues, creating custom slash commands, configuring command frontmatter, using command arguments ($ARGUMENTS, $1, $2), bash execution in commands, file references in commands, command namespacing, plugin commands, MCP slash commands, Skill tool configuration, or deciding between skills vs slash commands. Delegates to docs-management skill for official documentation.
reprompter
IncludedTransform messy prompts into well-structured, effective prompts — single or multi-agent. Use when: "reprompt", "reprompt this", "clean up this prompt", "structure my prompt", rough text needing XML tags and best practices, "reprompter teams", "repromptception", "run with quality", "smart run", "smart agents", multi-agent tasks, audits, parallel work, anything going to agent teams. Don't use when: simple Q&A, pure chat, immediate execution-only tasks. See "Don't Use When" section for details. Outputs: Structured XML/Markdown prompt, quality score (before/after), optional team brief + per-agent sub-prompts, agent team output files. Success criteria: Single mode quality score ≥ 7/10; Repromptception per-agent prompt quality score 8+/10; all required sections present, actionable and specific.
adaptive-compaction
IncludedAdaptive add-on policy and recovery layer that decides WHEN to compact, prune, snapshot, or fork -- replacing fixed-percent auto-compaction across Claude Code, Codex, and MCP-capable hosts. Trigger on auto-compact timing or damage: "when should I compact", "is it safe to compact now or start a fresh session", "auto-compact fires too early/mid-task", "switching to an unrelated task but the window still has space", "context rot", "answers get worse the longer the session runs", "the agent forgot the plan or my decisions after it summarized", "add a layer on top that manages context without changing the agent", raising autoCompactWindow to give the policy room, or installing/tuning a cross-tool compaction policy or PreCompact hook -- even when "compaction" is never said but the problem is context-window pressure or post-summarization memory loss. Do NOT use to summarize a conversation, build RAG, write a summarization prompt (decides WHEN not HOW), or answer max-context-length trivia.
agent-skill-creator
IncludedCreate cross-platform agent skills from workflow descriptions. Activates when users ask to create an agent, automate a repetitive workflow, create a custom skill, or need advanced agent creation. Triggers on phrases like create agent for, automate workflow, create skill for, every day I have to, daily I need to, turn process into agent, need to automate, create a cross-platform skill, validate this skill, export this skill, migrate this skill. Supports single skills, multi-agent suites, transcript processing, template-based creation, interactive configuration, cross-platform export, and spec validation.
llm-wiki
IncludedUse when building or maintaining a persistent personal knowledge base (second brain) in Obsidian where an LLM incrementally ingests sources, updates entity/concept pages, maintains cross-references, and keeps a synthesis current. Triggers include "second brain", "Obsidian wiki", "personal knowledge management", "ingest this paper/article/book", "build a research wiki", "compound knowledge", "Memex", or whenever the user wants knowledge to accumulate across sessions instead of being re-derived by RAG on every query.
skill-master
IncludedAgent Skills authoring, evaluation, and optimization. Create, edit, validate, benchmark, and improve skills following the agentskills.io specification. Use when designing SKILL.md files, structuring skill folders (references, scripts, assets), ingesting external documentation into skills, running trigger evals, benchmarking skill quality, optimizing descriptions, or performing blind A/B comparisons. Keywords: agentskills.io, SKILL.md, skill authoring, eval, benchmark, trigger optimization.