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Home » Ebooks & Tutorials » Technical » Programming » Use PyNNDescent and `nessvec` to Index High Dimensional Vectors (Word Embeddings) | Manning Publications

Use PyNNDescent and `nessvec` to Index High Dimensional Vectors (Word Embeddings) | Manning Publications

18/06/2022 Tut4DL Leave a Comment


Use PyNNDescent and `nessvec` to Index High Dimensional Vectors (Word Embeddings) | Manning Publications
English | Size: 899.64 MB
Genre: eLearning

In this video, Hobson shows how to index high dimensional vectors like word embeddings using a new approximate nearest neighbor algorithm by Leland McInnes.
Along the way you can see how to explore an unfamiliar Python package like PyNNDescent without ever having to leave the keyboard (tab-completion, `help()`, `?` operator)
And you will see how to use `SpaCy` language models to retrieve all sorts of NLU tags for words, including word vectors.

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Programming Index High Dimensional Vectors, Nessvec, PyNNDescent, Word Embeddings

← Using Lightning and Hangar with PyTorch to Reduce Coding in Deep Learning Projects | Manning Publications Train Word Embeddings from Scratch with Nessvec and PyTorch | Manning Publications →

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