From intercom-pack
Optimizes Intercom API costs with usage auditing, caching, request reduction via webhooks, and monitoring to avoid rate limits and infrastructure overhead.
How this skill is triggered — by the user, by Claude, or both
Slash command
/intercom-pack:intercom-cost-tuningThis skill is limited to the following tools:
The summary Claude sees in its skill listing — used to decide when to auto-load this skill
Reduce Intercom API costs through smart caching, search optimization, webhook-driven architecture, and usage monitoring. Intercom pricing is primarily seat-based and feature-based, but API efficiency reduces infrastructure costs and avoids rate limits.
Reduce Intercom API costs through smart caching, search optimization, webhook-driven architecture, and usage monitoring. Intercom pricing is primarily seat-based and feature-based, but API efficiency reduces infrastructure costs and avoids rate limits.
| Component | Pricing Basis | Cost Driver |
|---|---|---|
| Seats | Per agent/month | Number of teammates |
| Fin AI Agent | Per resolution | AI-handled conversations |
| Proactive Support | Per message sent | Outbound messages volume |
| Help Center | Included | N/A |
| API | Included (rate-limited) | Request volume determines infra cost |
Key insight: The API itself is free to use, but hitting rate limits (10K req/min) forces you to build queuing infrastructure. Reducing requests saves engineering time and infrastructure costs.
// Instrument all API calls to track usage patterns
class IntercomUsageTracker {
private calls = new Map<string, { count: number; totalMs: number }>();
track(endpoint: string, durationMs: number): void {
const existing = this.calls.get(endpoint) || { count: 0, totalMs: 0 };
existing.count++;
existing.totalMs += durationMs;
this.calls.set(endpoint, existing);
}
report(): void {
console.log("\n=== Intercom API Usage Report ===");
const sorted = [...this.calls.entries()].sort((a, b) => b[1].count - a[1].count);
for (const [endpoint, stats] of sorted) {
console.log(
`${endpoint}: ${stats.count} calls, avg ${(stats.totalMs / stats.count).toFixed(0)}ms`
);
}
const total = sorted.reduce((sum, [, s]) => sum + s.count, 0);
console.log(`\nTotal: ${total} API calls`);
console.log(`Estimated rate: ${(total / 60).toFixed(0)} req/min (limit: 10,000)`);
}
}
// BAD: Polling for new conversations every 30 seconds
// Cost: ~2,880 requests/day for ONE check
setInterval(async () => {
const conversations = await client.conversations.list();
// Check for new conversations...
}, 30000);
// GOOD: Webhook-driven (0 requests, instant notification)
app.post("/webhooks/intercom", (req, res) => {
const notification = req.body;
if (notification.topic === "conversation.user.created") {
handleNewConversation(notification.data.item);
}
res.status(200).json({ received: true });
});
import { LRUCache } from "lru-cache";
const contactCache = new LRUCache<string, any>({
max: 10000,
ttl: 10 * 60 * 1000, // 10 min TTL
});
// Before: 1 API call per contact lookup
async function getContactName(contactId: string): Promise<string> {
const contact = await client.contacts.find({ contactId });
return contact.name;
}
// After: API call only on cache miss
async function getContactNameCached(contactId: string): Promise<string> {
let name = contactCache.get(contactId) as string | undefined;
if (!name) {
const contact = await client.contacts.find({ contactId });
name = contact.name;
contactCache.set(contactId, name);
}
return name;
}
// Invalidate cache via webhooks
function onContactUpdated(contactId: string): void {
contactCache.delete(contactId);
}
// BAD: Fetch all contacts, filter client-side
// Cost: N pages * 1 request each
let startingAfter: string | undefined;
const matchingContacts = [];
do {
const page = await client.contacts.list({ perPage: 50, startingAfter });
matchingContacts.push(...page.data.filter(c => c.customAttributes?.plan === "pro"));
startingAfter = page.pages?.next?.startingAfter;
} while (startingAfter);
// GOOD: Server-side search (1 request for up to 150 results)
const proUsers = await client.contacts.search({
query: {
operator: "AND",
value: [
{ field: "role", operator: "=", value: "user" },
{ field: "custom_attributes.plan", operator: "=", value: "pro" },
],
},
pagination: { per_page: 150 },
});
// BAD: N individual conversation lookups
for (const id of conversationIds) {
const convo = await client.conversations.find({ conversationId: id });
process(convo);
}
// GOOD: Search conversations with filter
const conversations = await client.conversations.search({
query: {
operator: "AND",
value: [
{ field: "state", operator: "=", value: "open" },
{ field: "admin_assignee_id", operator: "=", value: adminId },
],
},
pagination: { per_page: 50 },
});
class RequestBudgetMonitor {
private requestsThisMinute = 0;
private resetTime = Date.now() + 60000;
async checkBudget(): Promise<void> {
if (Date.now() > this.resetTime) {
this.requestsThisMinute = 0;
this.resetTime = Date.now() + 60000;
}
this.requestsThisMinute++;
// Warn at 80% of limit
if (this.requestsThisMinute > 8000) {
console.warn(
`[Intercom] High request rate: ${this.requestsThisMinute}/10000 per minute`
);
}
// Hard stop at 95% to prevent 429s
if (this.requestsThisMinute > 9500) {
const waitMs = this.resetTime - Date.now();
console.warn(`[Intercom] Throttling: waiting ${waitMs}ms`);
await new Promise(r => setTimeout(r, waitMs));
}
}
}
| Issue | Cause | Solution |
|---|---|---|
| Rate limited (429) | Too many requests | Implement request queuing |
| Stale cached data | TTL too long | Use webhook cache invalidation |
| High infra costs | Queue + retry infrastructure | Reduce request volume first |
| Search too slow | Complex query | Simplify filters, reduce per_page |
For architecture patterns, see intercom-reference-architecture.
npx claudepluginhub jeremylongshore/claude-code-plugins-plus-skills --plugin intercom-packOptimizes Intercom API performance with caching, efficient searches, pagination, batching, and connection pooling. Use for slow responses in Node.js/TypeScript Intercom integrations.
Optimizes HubSpot API costs by monitoring usage against daily limits, selecting plans, and reducing calls via batch reads and tracking.
Automates Intercom tasks—conversations, contacts, companies, segments, admins—via Composio's Rube MCP toolkit. Use when managing support tickets, replies, assignments, or CRM data.