Chirantan Desai
Management
Yes. I would say one example, and this in my remarks, I shared that there is a super high growth AI company that is doing very, very well and will become a very large company. I have absolutely no doubts about that. They were not able to scale with Postgres and few other technologies, Redis and so on that they were using, and they moved completely to MongoDB and seeing that week-over-week and month-over-month growth is super inspiring. And I spoke to the hyperscaler where this workload is running and they are seeing the same that, wow, this company is doing really well. So that's built on MongoDB because Postgres had scaling issue. The other extreme, I spoke to a fairly successful AI native company that is doing decent ARR, growing very fast. And when I said, hey, have you considered MongoDB to the founder, CEO, who is very technical. And he said, CJ, we didn't, we built our own vector database and so on. And while I was speaking to him Alex, about 10 days ago, he basically said, once he looked at the portfolio, he said, let me start with embeddings first. So we are going to try. Of course, we have to prove it to him why our embeddings improves his accuracy on search and so on and improve the performance. So he said, let's start with embedding models first from Voyage AI once that works CJ, I'm willing to replace my vector DB that we have homegrown created it with MongoDB and oh, by the way, if that works well, eventually, I'm willing to swap out my operational database as well and use MongoDB. So in those kind of scenarios where they are already on a certain track we can land with Voyage AI embeddings. And I'm also seeing in a very large customer of MongoDB, I spoke to somebody who is running the AI initiatives, and they love the Voyage AI embeddings and reranking model, and they've already approved it for 2 big workloads. So we can absolutely land with that is the short answer.