Vector embeddings

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Introduction

Vector embeddings are numerical representations of data that encapsulate particular features of the data. These embeddings enable the effective execution of semantic search by capturing the semantic similarity between different data objects.

Understanding Vector Embeddings

In the context of text data, words with similar meanings, such as "cat" and "kitty", must be represented in a manner that captures their semantic similarity. Vector representations achieve this by transforming data objects into arrays of real numbers with a fixed length, typically ranging from hundreds to thousands of elements. These arrays are generated by machine learning models through a process called vectorization.

For instance, the words "cat" and "kitty" may be vectorized as follows:

cat = [1.5, -0.4, 7.2, 19.6, 3.1, ..., 20.2] kitty = [1.5, -0.4, 7.2, 19.5, 3.2, ..., 20.8]

These vectors exhibit a high similarity, while vectors for words like "banjo" or "comedy" would not be similar to either of these. In this way, vector embeddings capture the semantic similarity of words. The specific meaning of each number in a vector depends on the machine learning model that generated the vectors, and is not always clear in terms of human understanding of language and meaning.

Vector-based representation of meaning has gained attention due to its ability to perform mathematical operations between words, revealing semantic relationships. A famous example is:

"king − man + woman ≈ queen"

This result suggests that the difference between "king" and "man" represents some sort of "royalty", which is analogously applicable to "queen" minus "woman". Various concepts, such as "woman", "girl", "boy", etc., can be vectorized into arrays of numbers, often referred to as dimensions. These arrays can be visualized and correlated to familiar words, giving insight into their meaning.

Vector embeddings can represent more than just word meanings. They can effectively be generated from any data object, including text, images, audio, time series data, 3D models, video, and molecules. Embeddings are constructed such that two objects with similar semantics have vectors that are "close" to each other in vector space, with a "small" distance between them.

Generating Vector Embeddings

The primary aspect of vector search's effectiveness lies in generating embeddings for each entity and query. The secondary aspect is efficiently searching within very large datasets.

Vector embeddings can be generated for various media types, such as text, images, audio, and others. For text, vectorization techniques have significantly evolved over the last decade, from word2vec (2013) to the state-of-the-art transformer models era, which began with the release of BERT in 2018.

Word-level Dense Vector Models (word2vec, GloVe, etc.)

word2vec is a group of model architectures that introduced the concept of "dense" vectors in language processing, in which all values are non-zero. It uses a neural network model to learn word associations from a large text corpus. The model first creates a vocabulary from the corpus and then learns vector representations for the words, usually with 300 dimensions. Words found in similar contexts have vector representations that are close in vector space.

However, word2vec suffers from limitations, including its inability to address words with multiple meanings (polysemantic) and words with ambiguous meanings.

Transformer Models (BERT, ELMo, and others)

The current state-of-the-art models are based on the transformer architecture. Models like BERT and its successors improve search accuracy, precision, and recall by examining the context of each word to create full contextual embeddings. Unlike word2vec embeddings, which are context-agnostic, transformer-generated embeddings consider the entire input text. Each occurrence of a word has its own embedding that is influenced by the surrounding text, better reflecting the polysemantic nature of words, which can only be disambiguated when considered in context.

Some potential downsides of transformer models include:

Increased compute requirements: Fine-tuning transformer models is much slower (taking hours instead of minutes). Increased memory requirements: Context-sensitivity greatly increases memory requirements, often leading to limitations on possible input lengths. Despite these drawbacks, transformer models have been incredibly successful, leading to a proliferation of text vectorizer models for various data types such as audio, video, and images. Some models, like CLIP, can vectorize multiple data types (e.g., images and text) into a single vector space, enabling content-based image searches using only text.

Vector Embeddings with Weaviate

Weaviate is designed to support a wide range of vectorizer models and vectorizer service providers. Users can bring their own vectors, for example, if they already have a vectorization pipeline available or if none of the publicly available models are suitable.

Weaviate supports using any Hugging Face models through the text2vec-huggingface module, allowing users to choose from many sentence transformers published on Hugging Face. Other popular vectorization APIs, such as OpenAI or Cohere, can be used through the text2vec-openai or text2vec-cohere modules. Users can also run transformer models locally with text2vec-transformers, and modules like multi2vec-clip can convert images and text to vectors using a CLIP model.

All of these models perform the same core task, which is to represent the "meaning" of the original data as a set of numbers, enabling the effective implementation of semantic search.