Fast_Sentence_Embeddings VS kgtk

Compare Fast_Sentence_Embeddings vs kgtk and see what are their differences.

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Fast_Sentence_Embeddings kgtk
3 1
603 339
- 2.9%
0.0 4.3
about 1 year ago 7 months ago
Jupyter Notebook Jupyter Notebook
GNU General Public License v3.0 only MIT License
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Fast_Sentence_Embeddings

Posts with mentions or reviews of Fast_Sentence_Embeddings. We have used some of these posts to build our list of alternatives and similar projects. The last one was on 2024-04-19.
  • The Illustrated Word2Vec
    3 projects | news.ycombinator.com | 19 Apr 2024
    This is a great guide.

    Also - despite the fact that language model embedding [1] are currently the hot rage, good old embedding models are more than good enough for most tasks.

    With just a bit of tuning, they're generally as good at many sentence embedding tasks [2], and with good libraries [3] you're getting something like 400k sentence/sec on laptop CPU versus ~4k-15k sentences/sec on a v100 for LM embeddings.

    When you should use language model embeddings:

    - Multilingual tasks. While some embedding models are multilingual aligned (eg. MUSE [4]), you still need to route the sentence to the correct embedding model file (you need something like langdetect). It's also cumbersome, with one 400mb file per language.

    For LM embedding models, many are multilingual aligned right away.

    - Tasks that are very context specific or require fine-tuning. For instance, if you're making a RAG system for medical documents, the embedding space is best when it creates larger deviations for the difference between seemingly-related medical words.

    This means models with more embedding dimensions, and heavily favors LM models over classic embedding models.

    1. sbert.net

    2. https://collaborate.princeton.edu/en/publications/a-simple-b...

    3. https://github.com/oborchers/Fast_Sentence_Embeddings

    4. https://github.com/facebookresearch/MUSE

  • You probably shouldn't use OpenAI's embeddings
    5 projects | news.ycombinator.com | 30 Mar 2023
    You can find some comparisons and evaluation datasets/tasks here: https://www.sbert.net/docs/pretrained_models.html

    Generally MiniLM is a good baseline. For faster models you want this library:

    https://github.com/oborchers/Fast_Sentence_Embeddings

    For higher quality ones, just take the bigger/slower models in the SentenceTransformers library

  • [D] Unsupervised document similarity state of the art
    2 projects | /r/MachineLearning | 9 Apr 2021
    Links: fse: https://github.com/oborchers/Fast_Sentence_Embeddings Sentence-transformers: https://github.com/oborchers/sentence-transformers

kgtk

Posts with mentions or reviews of kgtk. We have used some of these posts to build our list of alternatives and similar projects.

What are some alternatives?

When comparing Fast_Sentence_Embeddings and kgtk you can also consider the following projects:

gensim - Topic Modelling for Humans

gastrodon - Visualize RDF data in Jupyter with Pandas

smaller-labse - Applying "Load What You Need: Smaller Versions of Multilingual BERT" to LaBSE

graph-notebook - Library extending Jupyter notebooks to integrate with Apache TinkerPop, openCypher, and RDF SPARQL.

cso-classifier - Python library that classifies content from scientific papers with the topics of the Computer Science Ontology (CSO).

cleora - Cleora AI is a general-purpose model for efficient, scalable learning of stable and inductive entity embeddings for heterogeneous relational data.

RecSys_Course_AT_PoliMi - This is the official repository for the Recommender Systems course at Politecnico di Milano.

sentence-transformers - Sentence Embeddings with BERT & XLNet

wembedder - Wikidata embedding

gpt4-pdf-chatbot-langchain - GPT4 & LangChain Chatbot for large PDF docs