I am trying to understand how Annoy Indexing works..I have referred the following documents: https://github.com/spotify/annoy#how-does-it-work https://cloud.google.com/solutions/machine-learning/building-real-time-embeddings-similarity-matching-system These documents explain how to get index from annoy but it does not explain HOW the Indexes are created?
Lets say I have sentence embedding matrix of 3 dimension (for simplicity)
[[1,2,3] [4,2,3] [1,2,3] [1,1,1]]
Looking at many resources has confused me in the following:
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