Musa Molla

The hidden cost of AI agents nobody talks about

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Most people think AI agents fail because the LLM “wasn’t smart enough.”

But in practice, they usually fail because of the infrastructure around them.

Here are 3 patterns we keep seeing while working with teams:

1️⃣ Context loss mid-task → agents “forget” what they were doing after a few hops.

2️⃣ Concurrency gaps → two workflows collide and suddenly nothing completes.

3️⃣ Observability black holes → debugging agents feels like debugging ghosts 👻

When you add scale (real users, live data, multiple tools), these cracks widen fast.

That’s why we’ve been heads-down building GraphBit- a framework designed to keep agents fast, reliable, and production-ready. We launch tomorrow.

👉 But I’d love to hear from you:

What’s been your biggest frustration when running multi-step AI workflows in production?

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