Airbolt lets you securely call LLM APIs with zero backend. Just add our client SDK to your app and start making inference calls with best practices built in.
The only way to add AI to your app with zero backend code
Airbolt lets you securely call LLM APIs with zero backend. Just add our client SDK to your app and start making inference calls with best practices built in.
Hi Product Hunt Community! As builders and founders, we love the “backend-less” stack: Stripe for payments, Supabase for data, Clerk for auth, PostHog for analytics. But the moment we add even a basic AI feature, we end up having to spin up a backend just to hide API keys, reimplement token-based per-user rate limits, set spend limits, and integrate with the application authentication. So we built Airbolt. How does it work? Sign up, add our SDK, and start making calls to OpenAI’s API from your a
Congrats on the launch! So just thinking about this here... you could enable some really powerful capabilities with almost no additional prompt engineering effort. You already mentioned the control plane and guard rails which i assume could be proxy side but having hooks on backend as well as frontend really opens up a lot of options to dynamically alter llm inputs, outputs, and user interface. I am thinking of my app switching to short form responses when screen space is tight. Maybe providing
Love the zero backend approach—super convenient for AI micro-SaaS founders. The security features are impressive. Excited to try it and see how it simplifies prototyping. What use cases are you most excited about?
This is really a good product and much needed one
Can't wait to take this for a test drive!
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