Please check out the full podcast here: • Etienne Dilocker on ANN Benchmarks - ...
This video is a commentary on the latest Weaviate Podcast with Etienne Dilocker on ANN Benchmarks. ANN search -- short for Approximate Nearest Neighbors -- describes algorithms that enable efficient distance comparison between an encoded query vector and a vector database. For example, we may have 1 billion vectors to search through -- we don't want to do a dot product distance between our query and 1 billion candidate vectors! This podcast describes Weaviate's efforts to benchmark HNSW within the Weaviate system and give users a sense of how performance varies with respect to each dataset (and their respective properties), as well as the hyperparameters of the HNSW algorithm.
I hope you find this useful, happy to answer any questions / hold any discussion! Thank you for watching!
Watch video Approximate Nearest Neighbor Benchmarks - Weaviate Podcast Recap online without registration, duration hours minute second in high quality. This video was added by user Connor Shorten 30 May 2022, don't forget to share it with your friends and acquaintances, it has been viewed on our site 994 once and liked it 36 people.