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Hi Thank you for your question. Our system is definitely set up for scale - we have had experience with scaling libraries with each library containing hundreds of thousands of large documents using our system with multiple concurrent users. Regarding Langchain, we would need to understand the features in Langchain you are referring to. We would be happy to discuss this project in more detail - please feel free to set up a meeting with us for a more in-depth discussion! https://calendly.com/noberst/discovery-call |
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Hello,
im working in a quite large company inside the insurance industry, we are planing on setting up an AI assistant which we want to feed with our very large base on business know how as well as all the stuff we did document in the IT department but is hard to find anything anymore as all the expensive enterprise tools only provide keyword search.
so the question is will your RAG solution scale when connected to a large filled vector database? Im asking as we have a hard time to impelemt GPU power into our system but we would have quite a bit in spare CPU time.
Lets say we talk about a constant number of 50 users talking to the system at the same time.
How about your solution together with langchain? Any way that would work?
thanks a lot and sorry if I did not find the answer to the same question someone has asked before me =)
Kind regards
Werner
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