Documentation for the vector module

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Louis Dureuil 2024-03-12 15:00:26 +01:00
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@ -16,46 +16,62 @@ pub use self::error::Error;
pub type Embedding = Vec<f32>;
/// One or multiple embeddings stored consecutively in a flat vector.
pub struct Embeddings<F> {
data: Vec<F>,
dimension: usize,
}
impl<F> Embeddings<F> {
/// Declares an empty vector of embeddings of the specified dimensions.
pub fn new(dimension: usize) -> Self {
Self { data: Default::default(), dimension }
}
/// Declares a vector of embeddings containing a single element.
///
/// The dimension is inferred from the length of the passed embedding.
pub fn from_single_embedding(embedding: Vec<F>) -> Self {
Self { dimension: embedding.len(), data: embedding }
}
/// Declares a vector of embeddings from its components.
///
/// `data.len()` must be a multiple of `dimension`, otherwise an error is returned.
pub fn from_inner(data: Vec<F>, dimension: usize) -> Result<Self, Vec<F>> {
let mut this = Self::new(dimension);
this.append(data)?;
Ok(this)
}
/// Returns the number of embeddings in this vector of embeddings.
pub fn embedding_count(&self) -> usize {
self.data.len() / self.dimension
}
/// Dimension of a single embedding.
pub fn dimension(&self) -> usize {
self.dimension
}
/// Deconstructs self into the inner flat vector.
pub fn into_inner(self) -> Vec<F> {
self.data
}
/// A reference to the inner flat vector.
pub fn as_inner(&self) -> &[F] {
&self.data
}
/// Iterates over the embeddings contained in the flat vector.
pub fn iter(&self) -> impl Iterator<Item = &'_ [F]> + '_ {
self.data.as_slice().chunks_exact(self.dimension)
}
/// Push an embedding at the end of the embeddings.
///
/// If `embedding.len() != self.dimension`, then the push operation fails.
pub fn push(&mut self, mut embedding: Vec<F>) -> Result<(), Vec<F>> {
if embedding.len() != self.dimension {
return Err(embedding);
@ -64,6 +80,9 @@ impl<F> Embeddings<F> {
Ok(())
}
/// Append a flat vector of embeddings a the end of the embeddings.
///
/// If `embeddings.len() % self.dimension != 0`, then the append operation fails.
pub fn append(&mut self, mut embeddings: Vec<F>) -> Result<(), Vec<F>> {
if embeddings.len() % self.dimension != 0 {
return Err(embeddings);
@ -73,37 +92,57 @@ impl<F> Embeddings<F> {
}
}
/// An embedder can be used to transform text into embeddings.
#[derive(Debug)]
pub enum Embedder {
/// An embedder based on running local models, fetched from the Hugging Face Hub.
HuggingFace(hf::Embedder),
/// An embedder based on making embedding queries against the OpenAI API.
OpenAi(openai::Embedder),
/// An embedder based on the user providing the embeddings in the documents and queries.
UserProvided(manual::Embedder),
Ollama(ollama::Embedder),
}
/// Configuration for an embedder.
#[derive(Debug, Clone, Default, serde::Deserialize, serde::Serialize)]
pub struct EmbeddingConfig {
/// Options of the embedder, specific to each kind of embedder
pub embedder_options: EmbedderOptions,
/// Document template
pub prompt: PromptData,
// TODO: add metrics and anything needed
}
/// Map of embedder configurations.
///
/// Each configuration is mapped to a name.
#[derive(Clone, Default)]
pub struct EmbeddingConfigs(HashMap<String, (Arc<Embedder>, Arc<Prompt>)>);
impl EmbeddingConfigs {
/// Create the map from its internal component.s
pub fn new(data: HashMap<String, (Arc<Embedder>, Arc<Prompt>)>) -> Self {
Self(data)
}
/// Get an embedder configuration and template from its name.
pub fn get(&self, name: &str) -> Option<(Arc<Embedder>, Arc<Prompt>)> {
self.0.get(name).cloned()
}
/// Get the default embedder configuration, if any.
pub fn get_default(&self) -> Option<(Arc<Embedder>, Arc<Prompt>)> {
self.get_default_embedder_name().and_then(|default| self.get(&default))
}
/// Get the name of the default embedder configuration.
///
/// The default embedder is determined as follows:
///
/// - If there is only one embedder, it is always the default.
/// - If there are multiple embedders and one of them is called `default`, then that one is the default embedder.
/// - In all other cases, there is no default embedder.
pub fn get_default_embedder_name(&self) -> Option<String> {
let mut it = self.0.keys();
let first_name = it.next();
@ -126,6 +165,7 @@ impl IntoIterator for EmbeddingConfigs {
}
}
/// Options of an embedder, specific to each kind of embedder.
#[derive(Debug, Clone, Hash, PartialEq, Eq, serde::Deserialize, serde::Serialize)]
pub enum EmbedderOptions {
HuggingFace(hf::EmbedderOptions),
@ -141,10 +181,12 @@ impl Default for EmbedderOptions {
}
impl EmbedderOptions {
/// Default options for the Hugging Face embedder
pub fn huggingface() -> Self {
Self::HuggingFace(hf::EmbedderOptions::new())
}
/// Default options for the OpenAI embedder
pub fn openai(api_key: Option<String>) -> Self {
Self::OpenAi(openai::EmbedderOptions::with_default_model(api_key))
}
@ -155,6 +197,7 @@ impl EmbedderOptions {
}
impl Embedder {
/// Spawns a new embedder built from its options.
pub fn new(options: EmbedderOptions) -> std::result::Result<Self, NewEmbedderError> {
Ok(match options {
EmbedderOptions::HuggingFace(options) => Self::HuggingFace(hf::Embedder::new(options)?),
@ -166,6 +209,9 @@ impl Embedder {
})
}
/// Embed one or multiple texts.
///
/// Each text can be embedded as one or multiple embeddings.
pub async fn embed(
&self,
texts: Vec<String>,
@ -184,6 +230,10 @@ impl Embedder {
}
}
/// Embed multiple chunks of texts.
///
/// Each chunk is composed of one or multiple texts.
///
/// # Panics
///
/// - if called from an asynchronous context
@ -199,6 +249,7 @@ impl Embedder {
}
}
/// Indicates the preferred number of chunks to pass to [`Self::embed_chunks`]
pub fn chunk_count_hint(&self) -> usize {
match self {
Embedder::HuggingFace(embedder) => embedder.chunk_count_hint(),
@ -208,6 +259,7 @@ impl Embedder {
}
}
/// Indicates the preferred number of texts in a single chunk passed to [`Self::embed`]
pub fn prompt_count_in_chunk_hint(&self) -> usize {
match self {
Embedder::HuggingFace(embedder) => embedder.prompt_count_in_chunk_hint(),
@ -217,6 +269,7 @@ impl Embedder {
}
}
/// Indicates the dimensions of a single embedding produced by the embedder.
pub fn dimensions(&self) -> usize {
match self {
Embedder::HuggingFace(embedder) => embedder.dimensions(),
@ -226,6 +279,7 @@ impl Embedder {
}
}
/// An optional distribution used to apply an affine transformation to the similarity score of a document.
pub fn distribution(&self) -> Option<DistributionShift> {
match self {
Embedder::HuggingFace(embedder) => embedder.distribution(),
@ -236,9 +290,20 @@ impl Embedder {
}
}
/// Describes the mean and sigma of distribution of embedding similarity in the embedding space.
///
/// The intended use is to make the similarity score more comparable to the regular ranking score.
/// This allows to correct effects where results are too "packed" around a certain value.
#[derive(Debug, Clone, Copy)]
pub struct DistributionShift {
/// Value where the results are "packed".
///
/// Similarity scores are translated so that they are packed around 0.5 instead
pub current_mean: f32,
/// standard deviation of a similarity score.
///
/// Set below 0.4 to make the results less packed around the mean, and above 0.4 to make them more packed.
pub current_sigma: f32,
}
@ -280,6 +345,7 @@ impl DistributionShift {
}
}
/// Whether CUDA is supported in this version of Meilisearch.
pub const fn is_cuda_enabled() -> bool {
cfg!(feature = "cuda")
}