MeiliSearch/milli/src/search/new/resolve_query_graph.rs
2023-05-02 18:54:09 +02:00

263 lines
8.7 KiB
Rust

#![allow(clippy::too_many_arguments)]
use std::collections::VecDeque;
use fxhash::FxHashMap;
use roaring::{MultiOps, RoaringBitmap};
use super::interner::Interned;
use super::query_graph::QueryNodeData;
use super::query_term::{Phrase, QueryTermSubset};
use super::small_bitmap::SmallBitmap;
use super::{QueryGraph, SearchContext, Word};
use crate::search::new::query_term::LocatedQueryTermSubset;
use crate::Result;
#[derive(Default)]
pub struct PhraseDocIdsCache {
pub cache: FxHashMap<Interned<Phrase>, RoaringBitmap>,
}
impl<'ctx> SearchContext<'ctx> {
/// Get the document ids associated with the given phrase
pub fn get_phrase_docids(&mut self, phrase: Interned<Phrase>) -> Result<&RoaringBitmap> {
if self.phrase_docids.cache.contains_key(&phrase) {
return Ok(&self.phrase_docids.cache[&phrase]);
};
let docids = compute_phrase_docids(self, phrase)?;
let _ = self.phrase_docids.cache.insert(phrase, docids);
let docids = &self.phrase_docids.cache[&phrase];
Ok(docids)
}
}
pub fn compute_query_term_subset_docids(
ctx: &mut SearchContext,
term: &QueryTermSubset,
) -> Result<RoaringBitmap> {
// TODO Use the roaring::MultiOps trait
let mut docids = RoaringBitmap::new();
for word in term.all_single_words_except_prefix_db(ctx)? {
if let Some(word_docids) = ctx.word_docids(word)? {
docids |= word_docids;
}
}
for phrase in term.all_phrases(ctx)? {
docids |= ctx.get_phrase_docids(phrase)?;
}
if let Some(prefix) = term.use_prefix_db(ctx) {
if let Some(prefix_docids) = ctx.word_prefix_docids(prefix)? {
docids |= prefix_docids;
}
}
Ok(docids)
}
pub fn compute_query_term_subset_docids_within_field_id(
ctx: &mut SearchContext,
term: &QueryTermSubset,
fid: u16,
) -> Result<RoaringBitmap> {
// TODO Use the roaring::MultiOps trait
let mut docids = RoaringBitmap::new();
for word in term.all_single_words_except_prefix_db(ctx)? {
if let Some(word_fid_docids) = ctx.get_db_word_fid_docids(word.interned(), fid)? {
docids |= word_fid_docids;
}
}
for phrase in term.all_phrases(ctx)? {
// There may be false positives when resolving a phrase, so we're not
// guaranteed that all of its words are within a single fid.
// TODO: fix this?
if let Some(word) = phrase.words(ctx).iter().flatten().next() {
if let Some(word_fid_docids) = ctx.get_db_word_fid_docids(*word, fid)? {
docids |= ctx.get_phrase_docids(phrase)? & word_fid_docids;
}
}
}
if let Some(word_prefix) = term.use_prefix_db(ctx) {
if let Some(word_fid_docids) =
ctx.get_db_word_prefix_fid_docids(word_prefix.interned(), fid)?
{
docids |= word_fid_docids;
}
}
Ok(docids)
}
pub fn compute_query_term_subset_docids_within_position(
ctx: &mut SearchContext,
term: &QueryTermSubset,
position: u16,
) -> Result<RoaringBitmap> {
// TODO Use the roaring::MultiOps trait
let mut docids = RoaringBitmap::new();
for word in term.all_single_words_except_prefix_db(ctx)? {
if let Some(word_position_docids) =
ctx.get_db_word_position_docids(word.interned(), position)?
{
docids |= word_position_docids;
}
}
for phrase in term.all_phrases(ctx)? {
// It's difficult to know the expected position of the words in the phrase,
// so instead we just check the first one.
// TODO: fix this?
if let Some(word) = phrase.words(ctx).iter().flatten().next() {
if let Some(word_position_docids) = ctx.get_db_word_position_docids(*word, position)? {
docids |= ctx.get_phrase_docids(phrase)? & word_position_docids
}
}
}
if let Some(word_prefix) = term.use_prefix_db(ctx) {
if let Some(word_position_docids) =
ctx.get_db_word_prefix_position_docids(word_prefix.interned(), position)?
{
docids |= word_position_docids;
}
}
Ok(docids)
}
/// Returns the subset of the input universe that satisfies the contraints of the input query graph.
pub fn compute_query_graph_docids(
ctx: &mut SearchContext,
q: &QueryGraph,
universe: &RoaringBitmap,
) -> Result<RoaringBitmap> {
// TODO: there must be a faster way to compute this big
// roaring bitmap expression
let mut nodes_resolved = SmallBitmap::for_interned_values_in(&q.nodes);
let mut path_nodes_docids = q.nodes.map(|_| RoaringBitmap::new());
let mut next_nodes_to_visit = VecDeque::new();
next_nodes_to_visit.push_back(q.root_node);
while let Some(node_id) = next_nodes_to_visit.pop_front() {
let node = q.nodes.get(node_id);
let predecessors = &node.predecessors;
if !predecessors.is_subset(&nodes_resolved) {
next_nodes_to_visit.push_back(node_id);
continue;
}
// Take union of all predecessors
let predecessors_docids =
MultiOps::union(predecessors.iter().map(|p| path_nodes_docids.get(p)));
let node_docids = match &node.data {
QueryNodeData::Term(LocatedQueryTermSubset {
term_subset,
positions: _,
term_ids: _,
}) => {
let node_docids = compute_query_term_subset_docids(ctx, term_subset)?;
predecessors_docids & node_docids
}
QueryNodeData::Deleted => {
panic!()
}
QueryNodeData::Start => universe.clone(),
QueryNodeData::End => {
return Ok(predecessors_docids);
}
};
nodes_resolved.insert(node_id);
*path_nodes_docids.get_mut(node_id) = node_docids;
for succ in node.successors.iter() {
if !next_nodes_to_visit.contains(&succ) && !nodes_resolved.contains(succ) {
next_nodes_to_visit.push_back(succ);
}
}
for prec in node.predecessors.iter() {
if q.nodes.get(prec).successors.is_subset(&nodes_resolved) {
path_nodes_docids.get_mut(prec).clear();
}
}
}
panic!()
}
pub fn compute_phrase_docids(
ctx: &mut SearchContext,
phrase: Interned<Phrase>,
) -> Result<RoaringBitmap> {
let Phrase { words } = ctx.phrase_interner.get(phrase).clone();
if words.is_empty() {
return Ok(RoaringBitmap::new());
}
let mut candidates = RoaringBitmap::new();
for word in words.iter().flatten().copied() {
if let Some(word_docids) = ctx.word_docids(Word::Original(word))? {
candidates |= word_docids;
} else {
return Ok(RoaringBitmap::new());
}
}
let winsize = words.len().min(3);
for win in words.windows(winsize) {
// Get all the documents with the matching distance for each word pairs.
let mut bitmaps = Vec::with_capacity(winsize.pow(2));
for (offset, &s1) in win
.iter()
.enumerate()
.filter_map(|(index, word)| word.as_ref().map(|word| (index, word)))
{
for (dist, &s2) in win
.iter()
.skip(offset + 1)
.enumerate()
.filter_map(|(index, word)| word.as_ref().map(|word| (index, word)))
{
if dist == 0 {
match ctx.get_db_word_pair_proximity_docids(s1, s2, 1)? {
Some(m) => bitmaps.push(m),
// If there are no documents for this pair, there will be no
// results for the phrase query.
None => return Ok(RoaringBitmap::new()),
}
} else {
let mut bitmap = RoaringBitmap::new();
for dist in 0..=dist {
if let Some(m) =
ctx.get_db_word_pair_proximity_docids(s1, s2, dist as u8 + 1)?
{
bitmap |= m;
}
}
if bitmap.is_empty() {
return Ok(bitmap);
} else {
bitmaps.push(bitmap);
}
}
}
}
// We sort the bitmaps so that we perform the small intersections first, which is faster.
bitmaps.sort_unstable_by_key(|a| a.len());
for bitmap in bitmaps {
candidates &= bitmap;
// There will be no match, return early
if candidates.is_empty() {
break;
}
}
}
Ok(candidates)
}