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executor.rs
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//! Query executors — evaluate parsed SQL statements against the in-memory
//! storage and produce formatted output.
use std::cmp::Ordering;
use prettytable::{Cell as PrintCell, Row as PrintRow, Table as PrintTable};
use sqlparser::ast::{
AssignmentTarget, BinaryOperator, CreateIndex, Delete, Expr, FromTable, FunctionArg,
FunctionArgExpr, FunctionArguments, IndexType, ObjectNamePart, Statement, TableFactor,
TableWithJoins, UnaryOperator, Update,
};
use crate::error::{Result, SQLRiteError};
use crate::sql::db::database::Database;
use crate::sql::db::secondary_index::{IndexOrigin, SecondaryIndex};
use crate::sql::db::table::{DataType, HnswIndexEntry, Table, Value, parse_vector_literal};
use crate::sql::hnsw::{DistanceMetric, HnswIndex};
use crate::sql::parser::select::{OrderByClause, Projection, SelectQuery};
/// Executes a parsed `SelectQuery` against the database and returns a
/// human-readable rendering of the result set (prettytable). Also returns
/// the number of rows produced, for the top-level status message.
/// Structured result of a SELECT: column names in projection order,
/// and each matching row as a `Vec<Value>` aligned with the columns.
/// Phase 5a introduced this so the public `Connection` / `Statement`
/// API has typed rows to yield; the existing `execute_select` that
/// returns pre-rendered text is now a thin wrapper on top.
pub struct SelectResult {
pub columns: Vec<String>,
pub rows: Vec<Vec<Value>>,
}
/// Executes a SELECT and returns structured rows. The typed rows are
/// what the new public API streams to callers; the REPL / Tauri app
/// pre-render into a prettytable via `execute_select`.
pub fn execute_select_rows(query: SelectQuery, db: &Database) -> Result<SelectResult> {
let table = db
.get_table(query.table_name.clone())
.map_err(|_| SQLRiteError::Internal(format!("Table '{}' not found", query.table_name)))?;
// Resolve projection to a concrete ordered column list.
let projected_cols: Vec<String> = match &query.projection {
Projection::All => table.column_names(),
Projection::Columns(cols) => {
for c in cols {
if !table.contains_column(c.to_string()) {
return Err(SQLRiteError::Internal(format!(
"Column '{c}' does not exist on table '{}'",
query.table_name
)));
}
}
cols.clone()
}
};
// Collect matching rowids. If the WHERE is the shape `col = literal`
// and `col` has a secondary index, probe the index for an O(log N)
// seek; otherwise fall back to the full table scan.
let matching = match select_rowids(table, query.selection.as_ref())? {
RowidSource::IndexProbe(rowids) => rowids,
RowidSource::FullScan => {
let mut out = Vec::new();
for rowid in table.rowids() {
if let Some(expr) = &query.selection {
if !eval_predicate(expr, table, rowid)? {
continue;
}
}
out.push(rowid);
}
out
}
};
let mut matching = matching;
// Phase 7c — bounded-heap top-k optimization.
//
// The naive "ORDER BY <expr>" path (Phase 7b) sorts every matching
// rowid: O(N log N) sort_by + a truncate. For KNN queries
//
// SELECT id FROM docs
// ORDER BY vec_distance_l2(embedding, [...])
// LIMIT 10;
//
// N is the table row count and k is the LIMIT. With a bounded
// max-heap of size k we can find the top-k in O(N log k) — same
// sort_by-per-row cost on the heap operations, but k is typically
// 10-100 while N can be millions.
//
// Phase 7d.2 — HNSW ANN probe.
//
// Even better than the bounded heap: if the ORDER BY expression is
// exactly `vec_distance_l2(<col>, <bracket-array literal>)` AND
// `<col>` has an HNSW index attached, skip the linear scan
// entirely and probe the graph in O(log N). Approximate but
// typically ≥ 0.95 recall (verified by the recall tests in
// src/sql/hnsw.rs).
//
// We branch in cases:
// 1. ORDER BY + LIMIT k matches the HNSW probe pattern → graph probe.
// 2. ORDER BY + LIMIT k where k < |matching| → bounded heap (7c).
// 3. ORDER BY without LIMIT, or LIMIT >= |matching| → full sort.
// 4. LIMIT without ORDER BY → just truncate.
match (&query.order_by, query.limit) {
(Some(order), Some(k)) if try_hnsw_probe(table, &order.expr, k).is_some() => {
matching = try_hnsw_probe(table, &order.expr, k).unwrap();
}
(Some(order), Some(k)) if k < matching.len() => {
matching = select_topk(&matching, table, order, k)?;
}
(Some(order), _) => {
sort_rowids(&mut matching, table, order)?;
if let Some(k) = query.limit {
matching.truncate(k);
}
}
(None, Some(k)) => {
matching.truncate(k);
}
(None, None) => {}
}
// Build typed rows. Missing cells surface as `Value::Null` — that
// maps a column-not-present-for-this-rowid case onto the public
// `Row::get` → `Option<T>` surface cleanly.
let mut rows: Vec<Vec<Value>> = Vec::with_capacity(matching.len());
for rowid in &matching {
let row: Vec<Value> = projected_cols
.iter()
.map(|col| table.get_value(col, *rowid).unwrap_or(Value::Null))
.collect();
rows.push(row);
}
Ok(SelectResult {
columns: projected_cols,
rows,
})
}
/// Executes a SELECT and returns `(rendered_table, row_count)`. The
/// REPL and Tauri app use this to keep the table-printing behaviour
/// the engine has always shipped. Structured callers use
/// `execute_select_rows` instead.
pub fn execute_select(query: SelectQuery, db: &Database) -> Result<(String, usize)> {
let result = execute_select_rows(query, db)?;
let row_count = result.rows.len();
let mut print_table = PrintTable::new();
let header_cells: Vec<PrintCell> = result.columns.iter().map(|c| PrintCell::new(c)).collect();
print_table.add_row(PrintRow::new(header_cells));
for row in &result.rows {
let cells: Vec<PrintCell> = row
.iter()
.map(|v| PrintCell::new(&v.to_display_string()))
.collect();
print_table.add_row(PrintRow::new(cells));
}
Ok((print_table.to_string(), row_count))
}
/// Executes a DELETE statement. Returns the number of rows removed.
pub fn execute_delete(stmt: &Statement, db: &mut Database) -> Result<usize> {
let Statement::Delete(Delete {
from, selection, ..
}) = stmt
else {
return Err(SQLRiteError::Internal(
"execute_delete called on a non-DELETE statement".to_string(),
));
};
let tables = match from {
FromTable::WithFromKeyword(t) | FromTable::WithoutKeyword(t) => t,
};
let table_name = extract_single_table_name(tables)?;
// Compute matching rowids with an immutable borrow, then mutate.
let matching: Vec<i64> = {
let table = db
.get_table(table_name.clone())
.map_err(|_| SQLRiteError::Internal(format!("Table '{table_name}' not found")))?;
match select_rowids(table, selection.as_ref())? {
RowidSource::IndexProbe(rowids) => rowids,
RowidSource::FullScan => {
let mut out = Vec::new();
for rowid in table.rowids() {
if let Some(expr) = selection {
if !eval_predicate(expr, table, rowid)? {
continue;
}
}
out.push(rowid);
}
out
}
}
};
let table = db.get_table_mut(table_name)?;
for rowid in &matching {
table.delete_row(*rowid);
}
// Phase 7d.3 — any DELETE invalidates every HNSW index on this
// table (the deleted node could still appear in other nodes'
// neighbor lists, breaking subsequent searches). Mark dirty so
// the next save rebuilds from current rows before serializing.
if !matching.is_empty() {
for entry in &mut table.hnsw_indexes {
entry.needs_rebuild = true;
}
}
Ok(matching.len())
}
/// Executes an UPDATE statement. Returns the number of rows updated.
pub fn execute_update(stmt: &Statement, db: &mut Database) -> Result<usize> {
let Statement::Update(Update {
table,
assignments,
from,
selection,
..
}) = stmt
else {
return Err(SQLRiteError::Internal(
"execute_update called on a non-UPDATE statement".to_string(),
));
};
if from.is_some() {
return Err(SQLRiteError::NotImplemented(
"UPDATE ... FROM is not supported yet".to_string(),
));
}
let table_name = extract_table_name(table)?;
// Resolve assignment targets to plain column names and verify they exist.
let mut parsed_assignments: Vec<(String, Expr)> = Vec::with_capacity(assignments.len());
{
let tbl = db
.get_table(table_name.clone())
.map_err(|_| SQLRiteError::Internal(format!("Table '{table_name}' not found")))?;
for a in assignments {
let col = match &a.target {
AssignmentTarget::ColumnName(name) => name
.0
.last()
.map(|p| p.to_string())
.ok_or_else(|| SQLRiteError::Internal("empty column name".to_string()))?,
AssignmentTarget::Tuple(_) => {
return Err(SQLRiteError::NotImplemented(
"tuple assignment targets are not supported".to_string(),
));
}
};
if !tbl.contains_column(col.clone()) {
return Err(SQLRiteError::Internal(format!(
"UPDATE references unknown column '{col}'"
)));
}
parsed_assignments.push((col, a.value.clone()));
}
}
// Gather matching rowids + the new values to write for each assignment, under
// an immutable borrow. Uses the index-probe fast path when the WHERE is
// `col = literal` on an indexed column.
let work: Vec<(i64, Vec<(String, Value)>)> = {
let tbl = db.get_table(table_name.clone())?;
let matched_rowids: Vec<i64> = match select_rowids(tbl, selection.as_ref())? {
RowidSource::IndexProbe(rowids) => rowids,
RowidSource::FullScan => {
let mut out = Vec::new();
for rowid in tbl.rowids() {
if let Some(expr) = selection {
if !eval_predicate(expr, tbl, rowid)? {
continue;
}
}
out.push(rowid);
}
out
}
};
let mut rows_to_update = Vec::new();
for rowid in matched_rowids {
let mut values = Vec::with_capacity(parsed_assignments.len());
for (col, expr) in &parsed_assignments {
// UPDATE's RHS is evaluated in the context of the row being updated,
// so column references on the right resolve to the current row's values.
let v = eval_expr(expr, tbl, rowid)?;
values.push((col.clone(), v));
}
rows_to_update.push((rowid, values));
}
rows_to_update
};
let tbl = db.get_table_mut(table_name)?;
for (rowid, values) in &work {
for (col, v) in values {
tbl.set_value(col, *rowid, v.clone())?;
}
}
// Phase 7d.3 — UPDATE may have changed a vector column that an
// HNSW index covers. Mark every covering index dirty so save
// rebuilds from current rows. (Updates that only touched
// non-vector columns also mark dirty, which is over-conservative
// but harmless — the rebuild walks rows anyway, and the cost is
// only paid on save.)
if !work.is_empty() {
let updated_columns: std::collections::HashSet<&str> = work
.iter()
.flat_map(|(_, values)| values.iter().map(|(c, _)| c.as_str()))
.collect();
for entry in &mut tbl.hnsw_indexes {
if updated_columns.contains(entry.column_name.as_str()) {
entry.needs_rebuild = true;
}
}
}
Ok(work.len())
}
/// Handles `CREATE INDEX [UNIQUE] <name> ON <table> [USING <method>] (<column>)`.
/// Single-column indexes only.
///
/// Two flavours, branching on the optional `USING <method>` clause:
/// - **No USING, or `USING btree`**: regular B-Tree secondary index
/// (Phase 3e). Indexable types: Integer, Text.
/// - **`USING hnsw`**: HNSW ANN index (Phase 7d.2). Indexable types:
/// Vector(N) only. Distance metric is L2 by default; cosine and
/// dot variants are deferred to Phase 7d.x.
///
/// Returns the (possibly synthesized) index name for the status message.
pub fn execute_create_index(stmt: &Statement, db: &mut Database) -> Result<String> {
let Statement::CreateIndex(CreateIndex {
name,
table_name,
columns,
using,
unique,
if_not_exists,
predicate,
..
}) = stmt
else {
return Err(SQLRiteError::Internal(
"execute_create_index called on a non-CREATE-INDEX statement".to_string(),
));
};
if predicate.is_some() {
return Err(SQLRiteError::NotImplemented(
"partial indexes (CREATE INDEX ... WHERE) are not supported yet".to_string(),
));
}
if columns.len() != 1 {
return Err(SQLRiteError::NotImplemented(format!(
"multi-column indexes are not supported yet ({} columns given)",
columns.len()
)));
}
let index_name = name.as_ref().map(|n| n.to_string()).ok_or_else(|| {
SQLRiteError::NotImplemented(
"anonymous CREATE INDEX (no name) is not supported — give it a name".to_string(),
)
})?;
// Detect USING <method>. The `using` field on CreateIndex covers the
// pre-column form `CREATE INDEX … USING hnsw (col)`. (sqlparser also
// accepts a post-column form `… (col) USING hnsw` and parks that in
// `index_options`; we don't bother with it — the canonical form is
// pre-column and matches PG/pgvector convention.)
let method = match using {
Some(IndexType::Custom(ident)) if ident.value.eq_ignore_ascii_case("hnsw") => {
IndexMethod::Hnsw
}
Some(IndexType::Custom(ident)) if ident.value.eq_ignore_ascii_case("btree") => {
IndexMethod::Btree
}
Some(other) => {
return Err(SQLRiteError::NotImplemented(format!(
"CREATE INDEX … USING {other:?} is not supported (try `hnsw` or no USING clause)"
)));
}
None => IndexMethod::Btree,
};
let table_name_str = table_name.to_string();
let column_name = match &columns[0].column.expr {
Expr::Identifier(ident) => ident.value.clone(),
Expr::CompoundIdentifier(parts) => parts
.last()
.map(|p| p.value.clone())
.ok_or_else(|| SQLRiteError::Internal("empty compound identifier".to_string()))?,
other => {
return Err(SQLRiteError::NotImplemented(format!(
"CREATE INDEX only supports simple column references, got {other:?}"
)));
}
};
// Validate: table exists, column exists, type matches the index method,
// name is unique across both index kinds. Snapshot (rowid, value) pairs
// up front under the immutable borrow so the mutable attach later
// doesn't fight over `self`.
let (datatype, existing_rowids_and_values): (DataType, Vec<(i64, Value)>) = {
let table = db.get_table(table_name_str.clone()).map_err(|_| {
SQLRiteError::General(format!(
"CREATE INDEX references unknown table '{table_name_str}'"
))
})?;
if !table.contains_column(column_name.clone()) {
return Err(SQLRiteError::General(format!(
"CREATE INDEX references unknown column '{column_name}' on table '{table_name_str}'"
)));
}
let col = table
.columns
.iter()
.find(|c| c.column_name == column_name)
.expect("we just verified the column exists");
// Name uniqueness check spans BOTH index kinds — a btree and an
// hnsw can't share a name.
if table.index_by_name(&index_name).is_some()
|| table.hnsw_indexes.iter().any(|i| i.name == index_name)
{
if *if_not_exists {
return Ok(index_name);
}
return Err(SQLRiteError::General(format!(
"index '{index_name}' already exists"
)));
}
let datatype = clone_datatype(&col.datatype);
let mut pairs = Vec::new();
for rowid in table.rowids() {
if let Some(v) = table.get_value(&column_name, rowid) {
pairs.push((rowid, v));
}
}
(datatype, pairs)
};
match method {
IndexMethod::Btree => create_btree_index(
db,
&table_name_str,
&index_name,
&column_name,
&datatype,
*unique,
&existing_rowids_and_values,
),
IndexMethod::Hnsw => create_hnsw_index(
db,
&table_name_str,
&index_name,
&column_name,
&datatype,
*unique,
&existing_rowids_and_values,
),
}
}
/// `USING <method>` choices recognized by `execute_create_index`. A
/// missing USING clause defaults to `Btree` so existing CREATE INDEX
/// statements (Phase 3e) keep working unchanged.
#[derive(Debug, Clone, Copy)]
enum IndexMethod {
Btree,
Hnsw,
}
/// Builds a Phase 3e B-Tree secondary index and attaches it to the table.
fn create_btree_index(
db: &mut Database,
table_name: &str,
index_name: &str,
column_name: &str,
datatype: &DataType,
unique: bool,
existing: &[(i64, Value)],
) -> Result<String> {
let mut idx = SecondaryIndex::new(
index_name.to_string(),
table_name.to_string(),
column_name.to_string(),
datatype,
unique,
IndexOrigin::Explicit,
)?;
// Populate from existing rows. UNIQUE violations here mean the
// existing data already breaks the new index's constraint — a
// common source of user confusion, so be explicit.
for (rowid, v) in existing {
if unique && idx.would_violate_unique(v) {
return Err(SQLRiteError::General(format!(
"cannot create UNIQUE index '{index_name}': column '{column_name}' \
already contains the duplicate value {}",
v.to_display_string()
)));
}
idx.insert(v, *rowid)?;
}
let table_mut = db.get_table_mut(table_name.to_string())?;
table_mut.secondary_indexes.push(idx);
Ok(index_name.to_string())
}
/// Builds a Phase 7d.2 HNSW index and attaches it to the table.
fn create_hnsw_index(
db: &mut Database,
table_name: &str,
index_name: &str,
column_name: &str,
datatype: &DataType,
unique: bool,
existing: &[(i64, Value)],
) -> Result<String> {
// HNSW only makes sense on VECTOR columns. Reject anything else
// with a clear message — this is the most likely user error.
let dim = match datatype {
DataType::Vector(d) => *d,
other => {
return Err(SQLRiteError::General(format!(
"USING hnsw requires a VECTOR column; '{column_name}' is {other}"
)));
}
};
if unique {
return Err(SQLRiteError::General(
"UNIQUE has no meaning for HNSW indexes".to_string(),
));
}
// Build the in-memory graph. Distance metric is L2 by default
// (Phase 7d.2 doesn't yet expose a knob for picking cosine/dot —
// see `docs/phase-7-plan.md` for the deferral).
//
// Seed: hash the index name so different indexes get different
// graph topologies, but the same index always gets the same one
// — useful when debugging recall / index size.
let seed = hash_str_to_seed(index_name);
let mut idx = HnswIndex::new(DistanceMetric::L2, seed);
// Snapshot the (rowid, vector) pairs into a side map so the
// get_vec closure below can serve them by id without re-borrowing
// the table (we're already holding `existing` — flatten it).
let mut vec_map: std::collections::HashMap<i64, Vec<f32>> =
std::collections::HashMap::with_capacity(existing.len());
for (rowid, v) in existing {
match v {
Value::Vector(vec) => {
if vec.len() != dim {
return Err(SQLRiteError::Internal(format!(
"row {rowid} stores a {}-dim vector in column '{column_name}' \
declared as VECTOR({dim}) — schema invariant violated",
vec.len()
)));
}
vec_map.insert(*rowid, vec.clone());
}
// Non-vector values (theoretical NULL, type coercion bug)
// get skipped — they wouldn't have a sensible graph
// position anyway.
_ => continue,
}
}
for (rowid, _) in existing {
if let Some(v) = vec_map.get(rowid) {
let v_clone = v.clone();
idx.insert(*rowid, &v_clone, |id| {
vec_map.get(&id).cloned().unwrap_or_default()
});
}
}
let table_mut = db.get_table_mut(table_name.to_string())?;
table_mut.hnsw_indexes.push(HnswIndexEntry {
name: index_name.to_string(),
column_name: column_name.to_string(),
index: idx,
// Freshly built — no DELETE/UPDATE has invalidated it yet.
needs_rebuild: false,
});
Ok(index_name.to_string())
}
/// Stable, deterministic hash of a string into a u64 RNG seed. FNV-1a;
/// avoids pulling in `std::hash::DefaultHasher` (which is randomized
/// per process).
fn hash_str_to_seed(s: &str) -> u64 {
let mut h: u64 = 0xCBF29CE484222325;
for b in s.as_bytes() {
h ^= *b as u64;
h = h.wrapping_mul(0x100000001B3);
}
h
}
/// Cheap clone helper — `DataType` intentionally doesn't derive `Clone`
/// because the enum has no ergonomic reason to be cloneable elsewhere.
fn clone_datatype(dt: &DataType) -> DataType {
match dt {
DataType::Integer => DataType::Integer,
DataType::Text => DataType::Text,
DataType::Real => DataType::Real,
DataType::Bool => DataType::Bool,
DataType::Vector(dim) => DataType::Vector(*dim),
DataType::Json => DataType::Json,
DataType::None => DataType::None,
DataType::Invalid => DataType::Invalid,
}
}
fn extract_single_table_name(tables: &[TableWithJoins]) -> Result<String> {
if tables.len() != 1 {
return Err(SQLRiteError::NotImplemented(
"multi-table DELETE is not supported yet".to_string(),
));
}
extract_table_name(&tables[0])
}
fn extract_table_name(twj: &TableWithJoins) -> Result<String> {
if !twj.joins.is_empty() {
return Err(SQLRiteError::NotImplemented(
"JOIN is not supported yet".to_string(),
));
}
match &twj.relation {
TableFactor::Table { name, .. } => Ok(name.to_string()),
_ => Err(SQLRiteError::NotImplemented(
"only plain table references are supported".to_string(),
)),
}
}
/// Tells the executor how to produce its candidate rowid list.
enum RowidSource {
/// The WHERE was simple enough to probe a secondary index directly.
/// The `Vec` already contains exactly the rows the index matched;
/// no further WHERE evaluation is needed (the probe is precise).
IndexProbe(Vec<i64>),
/// No applicable index; caller falls back to walking `table.rowids()`
/// and evaluating the WHERE on each row.
FullScan,
}
/// Try to satisfy `WHERE` with an index probe. Currently supports the
/// simplest shape: a single `col = literal` (or `literal = col`) where
/// `col` is on a secondary index. AND/OR/range predicates fall back to
/// full scan — those can be layered on later without changing the caller.
fn select_rowids(table: &Table, selection: Option<&Expr>) -> Result<RowidSource> {
let Some(expr) = selection else {
return Ok(RowidSource::FullScan);
};
let Some((col, literal)) = try_extract_equality(expr) else {
return Ok(RowidSource::FullScan);
};
let Some(idx) = table.index_for_column(&col) else {
return Ok(RowidSource::FullScan);
};
// Convert the literal into a runtime Value. If the literal type doesn't
// match the column's index we still need correct semantics — evaluate
// the WHERE against every row. Fall back to full scan.
let literal_value = match convert_literal(&literal) {
Ok(v) => v,
Err(_) => return Ok(RowidSource::FullScan),
};
// Index lookup returns the full list of rowids matching this equality
// predicate. For unique indexes that's at most one; for non-unique it
// can be many.
let mut rowids = idx.lookup(&literal_value);
rowids.sort_unstable();
Ok(RowidSource::IndexProbe(rowids))
}
/// Recognizes `expr` as a simple equality on a column reference against a
/// literal. Returns `(column_name, literal_value)` if the shape matches;
/// `None` otherwise. Accepts both `col = literal` and `literal = col`.
fn try_extract_equality(expr: &Expr) -> Option<(String, sqlparser::ast::Value)> {
// Peel off Nested parens so `WHERE (x = 1)` is recognized too.
let peeled = match expr {
Expr::Nested(inner) => inner.as_ref(),
other => other,
};
let Expr::BinaryOp { left, op, right } = peeled else {
return None;
};
if !matches!(op, BinaryOperator::Eq) {
return None;
}
let col_from = |e: &Expr| -> Option<String> {
match e {
Expr::Identifier(ident) => Some(ident.value.clone()),
Expr::CompoundIdentifier(parts) => parts.last().map(|p| p.value.clone()),
_ => None,
}
};
let literal_from = |e: &Expr| -> Option<sqlparser::ast::Value> {
if let Expr::Value(v) = e {
Some(v.value.clone())
} else {
None
}
};
if let (Some(c), Some(l)) = (col_from(left), literal_from(right)) {
return Some((c, l));
}
if let (Some(l), Some(c)) = (literal_from(left), col_from(right)) {
return Some((c, l));
}
None
}
/// Recognizes the HNSW-probable query pattern and probes the graph
/// if a matching index exists.
///
/// Looks for ORDER BY `vec_distance_l2(<col>, <bracket-array literal>)`
/// where the table has an HNSW index attached to `<col>`. On a match,
/// returns the top-k rowids straight from the graph (O(log N)). On
/// any miss — different function name, no matching index, query
/// dimension wrong, etc. — returns `None` and the caller falls through
/// to the bounded-heap brute-force path (7c) or the full sort (7b),
/// preserving correct results regardless of whether the HNSW pathway
/// kicked in.
///
/// Phase 7d.2 caveats:
/// - Only `vec_distance_l2` is recognized. Cosine and dot fall through
/// to brute-force because we don't yet expose a per-index distance
/// knob (deferred to Phase 7d.x — see `docs/phase-7-plan.md`).
/// - Only ASCENDING order makes sense for "k nearest" — DESC ORDER BY
/// `vec_distance_l2(...) LIMIT k` would mean "k farthest", which
/// isn't what the index is built for. We don't bother to detect
/// `ascending == false` here; the optimizer just skips and the
/// fallback path handles it correctly (slower).
fn try_hnsw_probe(table: &Table, order_expr: &Expr, k: usize) -> Option<Vec<i64>> {
if k == 0 {
return None;
}
// Pattern-match: order expr must be a function call vec_distance_l2(a, b).
let func = match order_expr {
Expr::Function(f) => f,
_ => return None,
};
let fname = match func.name.0.as_slice() {
[ObjectNamePart::Identifier(ident)] => ident.value.to_lowercase(),
_ => return None,
};
if fname != "vec_distance_l2" {
return None;
}
// Extract the two args as raw Exprs.
let arg_list = match &func.args {
FunctionArguments::List(l) => &l.args,
_ => return None,
};
if arg_list.len() != 2 {
return None;
}
let exprs: Vec<&Expr> = arg_list
.iter()
.filter_map(|a| match a {
FunctionArg::Unnamed(FunctionArgExpr::Expr(e)) => Some(e),
_ => None,
})
.collect();
if exprs.len() != 2 {
return None;
}
// One arg must be a column reference (the indexed col); the other
// must be a bracket-array literal (the query vector). Try both
// orderings — pgvector's idiom puts the column on the left, but
// SQL is commutative for distance.
let (col_name, query_vec) = match identify_indexed_arg_and_literal(exprs[0], exprs[1]) {
Some(v) => v,
None => match identify_indexed_arg_and_literal(exprs[1], exprs[0]) {
Some(v) => v,
None => return None,
},
};
// Find the HNSW index on this column.
let entry = table
.hnsw_indexes
.iter()
.find(|e| e.column_name == col_name)?;
// Dimension sanity check — the query vector must match the
// indexed column's declared dimension. If it doesn't, the brute-
// force fallback would also error at the vec_distance_l2 dim-check;
// returning None here lets that path produce the user-visible
// error message.
let declared_dim = match table.columns.iter().find(|c| c.column_name == col_name) {
Some(c) => match &c.datatype {
DataType::Vector(d) => *d,
_ => return None,
},
None => return None,
};
if query_vec.len() != declared_dim {
return None;
}
// Probe the graph. Vectors are looked up from the table's row
// storage — a closure rather than a `&Table` so the algorithm
// module stays decoupled from the SQL types.
let column_for_closure = col_name.clone();
let table_ref = table;
let result = entry.index.search(&query_vec, k, |id| {
match table_ref.get_value(&column_for_closure, id) {
Some(Value::Vector(v)) => v,
_ => Vec::new(),
}
});
Some(result)
}
/// Helper for `try_hnsw_probe`: given two function args, identify which
/// one is a bare column identifier (the indexed column) and which is a
/// bracket-array literal (the query vector). Returns
/// `Some((column_name, query_vec))` on a match, `None` otherwise.
fn identify_indexed_arg_and_literal(a: &Expr, b: &Expr) -> Option<(String, Vec<f32>)> {
let col_name = match a {
Expr::Identifier(ident) if ident.quote_style.is_none() => ident.value.clone(),
_ => return None,
};
let lit_str = match b {
Expr::Identifier(ident) if ident.quote_style == Some('[') => {
format!("[{}]", ident.value)
}
_ => return None,
};
let v = parse_vector_literal(&lit_str).ok()?;
Some((col_name, v))
}
/// One entry in the bounded-heap top-k path. Holds a pre-evaluated
/// sort key + the rowid it came from. The `asc` flag inverts `Ord`
/// so a single `BinaryHeap<HeapEntry>` works for both ASC and DESC
/// without wrapping in `std::cmp::Reverse` at the call site:
///
/// - ASC LIMIT k = "k smallest": natural Ord. Max-heap top is the
/// largest currently kept; new items smaller than top displace.
/// - DESC LIMIT k = "k largest": Ord reversed. Max-heap top is now
/// the smallest currently kept (under reversed Ord, smallest
/// looks largest); new items larger than top displace.
///
/// In both cases the displacement test reduces to "new entry < heap top".
struct HeapEntry {
key: Value,
rowid: i64,
asc: bool,
}
impl PartialEq for HeapEntry {
fn eq(&self, other: &Self) -> bool {
self.cmp(other) == Ordering::Equal
}
}
impl Eq for HeapEntry {}
impl PartialOrd for HeapEntry {
fn partial_cmp(&self, other: &Self) -> Option<Ordering> {
Some(self.cmp(other))
}
}
impl Ord for HeapEntry {
fn cmp(&self, other: &Self) -> Ordering {
let raw = compare_values(Some(&self.key), Some(&other.key));
if self.asc { raw } else { raw.reverse() }
}
}
/// Bounded-heap top-k selection. Returns at most `k` rowids in the
/// caller's desired order (ascending key for `order.ascending`,
/// descending otherwise).
///
/// O(N log k) where N = `matching.len()`. Caller must check
/// `k < matching.len()` for this to be a win — for k ≥ N the
/// `sort_rowids` full-sort path is the same asymptotic cost without
/// the heap overhead.
fn select_topk(
matching: &[i64],
table: &Table,
order: &OrderByClause,
k: usize,
) -> Result<Vec<i64>> {
use std::collections::BinaryHeap;
if k == 0 || matching.is_empty() {
return Ok(Vec::new());
}
let mut heap: BinaryHeap<HeapEntry> = BinaryHeap::with_capacity(k + 1);
for &rowid in matching {
let key = eval_expr(&order.expr, table, rowid)?;
let entry = HeapEntry {
key,
rowid,
asc: order.ascending,
};
if heap.len() < k {
heap.push(entry);
} else {
// peek() returns the largest under our direction-aware Ord
// — the worst entry currently kept. Displace it iff the
// new entry is "better" (i.e. compares Less).
if entry < *heap.peek().unwrap() {
heap.pop();
heap.push(entry);
}
}
}
// `into_sorted_vec` returns ascending under our direction-aware Ord:
// ASC: ascending by raw key (what we want)
// DESC: ascending under reversed Ord = descending by raw key (what
// we want for an ORDER BY DESC LIMIT k result)
Ok(heap
.into_sorted_vec()
.into_iter()
.map(|e| e.rowid)
.collect())
}
fn sort_rowids(rowids: &mut [i64], table: &Table, order: &OrderByClause) -> Result<()> {
// Phase 7b: ORDER BY now accepts any expression (column ref,
// arithmetic, function call, …). Pre-compute the sort key for
// every rowid up front so the comparator is called O(N log N)
// times against pre-evaluated Values rather than re-evaluating
// the expression O(N log N) times. Not strictly necessary today,
// but vital once 7d's HNSW index lands and this same code path
// could be running tens of millions of distance computations.
let mut keys: Vec<(i64, Result<Value>)> = rowids
.iter()
.map(|r| (*r, eval_expr(&order.expr, table, *r)))
.collect();
// Surface the FIRST evaluation error if any. We could be lazy
// and let sort_by encounter it, but `Ord::cmp` can't return a
// Result and we'd have to swallow errors silently.
for (_, k) in &keys {
if let Err(e) = k {
return Err(SQLRiteError::General(format!(
"ORDER BY expression failed: {e}"
)));
}
}
keys.sort_by(|(_, ka), (_, kb)| {
// Both unwrap()s are safe — we just verified above that
// every key Result is Ok.
let va = ka.as_ref().unwrap();
let vb = kb.as_ref().unwrap();
let ord = compare_values(Some(va), Some(vb));
if order.ascending { ord } else { ord.reverse() }
});
// Write the sorted rowids back into the caller's slice.
for (i, (rowid, _)) in keys.into_iter().enumerate() {
rowids[i] = rowid;
}
Ok(())
}
fn compare_values(a: Option<&Value>, b: Option<&Value>) -> Ordering {
match (a, b) {
(None, None) => Ordering::Equal,
(None, _) => Ordering::Less,
(_, None) => Ordering::Greater,
(Some(a), Some(b)) => match (a, b) {
(Value::Null, Value::Null) => Ordering::Equal,