Inconvo (YC S23) – AI agents for customer-facing analytics

Hi HN, we are Liam and Eoghan of Inconvo (https://inconvo.com), a platform that makes it easy to build and deploy AI analytics agents into your SaaS products, so your customers can quickly interact with their data.

There’s a demo video at https://www.youtube.com/watch?v=4wlZL3XGWTQ and a live demo at https://demo.inconvo.ai/ (no signup required). Docs are at https://inconvo.com/docs.

SaaS products typically offer dashboards and reports, which work for high-level metrics but are clunky for drill-downs and slow for ad-hoc questions. Modern users, shaped by tools like ChatGPT, now expect a similar degree of speed and flexibility when getting insights from their data. To meet these expectations, you need an AI analytics agent, but these are painful to develop and manage.

Inconvo is a platform built from the ground up for developers building AI agents for customer-facing analytics. We make it simple to expose data to Inconvo by connecting to SQL databases. We offer a semantic model to create a layer that governs data access and defines business logic, conversation logs to track user interactions, and a developer-friendly API for easy integration. For observability we show a trace for each agent response to make agent behaviour easily debuggable.

We didn’t start out building Inconvo, initially we built a developer productivity SaaS from which we pivoted. Our favourite feature of that product was its analytics agent, and we knew that building one was a big enough problem to solve on its own so we decided to build a developer tool to do so.

Our API is designed for multi-tenant databases, allowing you to pass session information as context. This instructs the agent to only analyse data relevant to the specific tenant making the request.

Most of our competitors are BI tools primarily designed for internal analytics with limited embedding options through iFrame or unintuitive APIs.

If you’re concerned about AI SQL generation, we are too. In our opinion, AI agents for customer-facing analytics shouldn’t generate and run raw SQL without validation. Instead, our agents generate structured query objects that are programmatically validated to guarantee they request only the data allowed within the context of the request. Then we send validated objects to our QueryEngine which converts the object to SQL. With this approach we ensure a bounded set of possible SQL that can be generated, which stops the agent from hallucinating and running rouge queries.

Our pricing is upfront and available on our website. You can try the platform for free without a credit card.

If you want to try out the full product, you can sign up for free at https://auth.inconvo.ai/en/signup. As mentioned, our sandbox demo is at https://demo.inconvo.ai/, and there’s a video at https://youtu.be/4wlZL3XGWTQ.

We're really interested in any feedback you have so please share your thoughts and ideas in the comments, as we aim to make this tool as developer-friendly as possible. Thanks!



Get Top 5 Posts of the Week



best of all time best of today best of yesterday best of this week best of this month best of last month best of this year best of 2024 best of 2023 yc s25 yc w25 yc s24 yc w24 yc s23 yc w23 yc s22 yc w22 yc s21 yc w21 yc s20 yc w20 yc s19 yc w19 yc s18 yc w18 yc all-time 3d algorithms animation android [ai] artificial-intelligence api augmented-reality big data bitcoin blockchain book bootstrap bot css c chart chess chrome extension cli command line compiler crypto covid-19 cryptography data deep learning elexir ether excel framework game git go html ios iphone java js javascript jobs kubernetes learn linux lisp mac machine-learning most successful neural net nft node optimisation parser performance privacy python raspberry pi react retro review my ruby rust saas scraper security sql tensor flow terminal travel virtual reality visualisation vue windows web3 young talents


andrey azimov by Andrey Azimov