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by majidfekri
8 days ago
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I assure you it is not a vibe coded pg_vector wrapper. It is built on top of a custom made search engine that is state-of-the-art in semantic search. Check out moorcheh.ai, cloud infrastructure, moorcheh on-prem and moorcheh-on-edge.
Here is the paper explaining how we came up with the idea of memanto: https://arxiv.org/abs/2604.22085 |
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I'm honestly not sold on memory layers as a whole, I find that adding more context only serves to make the LLM's dumber and I've been slowly leaning towards just having no memory and working on features in isolation.
You've done benchmarks already so that's another step in the right direction, do you find that these benchmarks are good indications of practicality? Have you seen a major difference in LLM performance utilizing this as a memory layer?