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wifi-densepose/crates/ruvector-postgres/benches/quantization_bench.rs
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//! Comprehensive quantization benchmarks
//!
//! Compares exact vs quantized search with different quantization methods
use criterion::{black_box, criterion_group, criterion_main, BenchmarkId, Criterion};
use rand::prelude::*;
use rand_chacha::ChaCha8Rng;
use ruvector_postgres::distance::DistanceMetric;
use ruvector_postgres::types::{BinaryVec, ProductVec, RuVector, ScalarVec};
// ============================================================================
// Test Data Generation
// ============================================================================
fn generate_vectors(n: usize, dims: usize, seed: u64) -> Vec<Vec<f32>> {
let mut rng = ChaCha8Rng::seed_from_u64(seed);
(0..n)
.map(|_| (0..dims).map(|_| rng.gen_range(-1.0..1.0)).collect())
.collect()
}
// ============================================================================
// Scalar Quantization (SQ8) Benchmarks
// ============================================================================
fn bench_sq8_quantization(c: &mut Criterion) {
let mut group = c.benchmark_group("sq8_quantization");
for dims in [128, 384, 768, 1536, 3072].iter() {
let data: Vec<f32> = (0..*dims).map(|i| (i as f32) * 0.001).collect();
group.bench_with_input(BenchmarkId::new("encode", dims), dims, |bench, _| {
bench.iter(|| black_box(ScalarVec::from_f32(&data)));
});
let encoded = ScalarVec::from_f32(&data);
group.bench_with_input(BenchmarkId::new("decode", dims), dims, |bench, _| {
bench.iter(|| black_box(encoded.to_f32()));
});
}
group.finish();
}
fn bench_sq8_distance(c: &mut Criterion) {
let mut group = c.benchmark_group("sq8_distance");
for dims in [128, 384, 768, 1536, 3072].iter() {
let a_data: Vec<f32> = (0..*dims).map(|i| i as f32 * 0.1).collect();
let b_data: Vec<f32> = (0..*dims).map(|i| (*dims - i) as f32 * 0.1).collect();
let a_exact = RuVector::from_slice(&a_data);
let b_exact = RuVector::from_slice(&b_data);
let a_sq8 = ScalarVec::from_f32(&a_data);
let b_sq8 = ScalarVec::from_f32(&b_data);
group.bench_with_input(BenchmarkId::new("exact", dims), dims, |bench, _| {
bench.iter(|| black_box(a_exact.dot(&b_exact)));
});
group.bench_with_input(BenchmarkId::new("quantized", dims), dims, |bench, _| {
bench.iter(|| black_box(a_sq8.distance(&b_sq8)));
});
}
group.finish();
}
fn bench_sq8_search(c: &mut Criterion) {
let mut group = c.benchmark_group("sq8_search");
for dims in [128, 768, 1536].iter() {
let n = 10000;
let vectors = generate_vectors(n, *dims, 42);
let query = generate_vectors(1, *dims, 999)[0].clone();
// Exact search
let exact_vecs: Vec<RuVector> = vectors.iter().map(|v| RuVector::from_slice(v)).collect();
let exact_query = RuVector::from_slice(&query);
group.bench_with_input(BenchmarkId::new("exact", dims), dims, |bench, _| {
bench.iter(|| {
let mut distances: Vec<(usize, f32)> = exact_vecs
.iter()
.enumerate()
.map(|(id, vec)| {
let dist = exact_query.dot(vec);
(id, -dist) // Negative for max inner product
})
.collect();
distances.sort_by(|a, b| a.1.partial_cmp(&b.1).unwrap());
let top_k: Vec<_> = distances[..10].to_vec();
black_box(top_k)
});
});
// Quantized search
let sq8_vecs: Vec<ScalarVec> = vectors.iter().map(|v| ScalarVec::from_f32(v)).collect();
let sq8_query = ScalarVec::from_f32(&query);
group.bench_with_input(BenchmarkId::new("quantized", dims), dims, |bench, _| {
bench.iter(|| {
let mut distances: Vec<(usize, f32)> = sq8_vecs
.iter()
.enumerate()
.map(|(id, vec)| (id, sq8_query.distance(vec)))
.collect();
distances.sort_by(|a, b| a.1.partial_cmp(&b.1).unwrap());
let top_k: Vec<_> = distances[..10].to_vec();
black_box(top_k)
});
});
}
group.finish();
}
// ============================================================================
// Binary Quantization Benchmarks
// ============================================================================
fn bench_binary_quantization(c: &mut Criterion) {
let mut group = c.benchmark_group("binary_quantization");
for dims in [128, 512, 1024, 2048, 4096].iter() {
let data: Vec<f32> = (0..*dims)
.map(|i| if i % 2 == 0 { 1.0 } else { -1.0 })
.collect();
group.bench_with_input(BenchmarkId::new("encode", dims), dims, |bench, _| {
bench.iter(|| black_box(BinaryVec::from_f32(&data)));
});
}
group.finish();
}
fn bench_binary_hamming(c: &mut Criterion) {
let mut group = c.benchmark_group("binary_hamming");
for dims in [128, 512, 1024, 2048, 4096, 8192].iter() {
let a_data: Vec<f32> = (0..*dims)
.map(|i| if i % 2 == 0 { 1.0 } else { -1.0 })
.collect();
let b_data: Vec<f32> = (0..*dims)
.map(|i| if i % 3 == 0 { 1.0 } else { -1.0 })
.collect();
let a = BinaryVec::from_f32(&a_data);
let b = BinaryVec::from_f32(&b_data);
group.bench_with_input(BenchmarkId::new("simd", dims), dims, |bench, _| {
bench.iter(|| black_box(a.hamming_distance(&b)));
});
}
group.finish();
}
fn bench_binary_search(c: &mut Criterion) {
let mut group = c.benchmark_group("binary_search");
for dims in [1024, 2048, 4096].iter() {
let n = 100000;
let vectors = generate_vectors(n, *dims, 42);
let query = generate_vectors(1, *dims, 999)[0].clone();
let binary_vecs: Vec<BinaryVec> = vectors.iter().map(|v| BinaryVec::from_f32(v)).collect();
let binary_query = BinaryVec::from_f32(&query);
group.bench_with_input(BenchmarkId::new("scan", dims), dims, |bench, _| {
bench.iter(|| {
let mut distances: Vec<(usize, u32)> = binary_vecs
.iter()
.enumerate()
.map(|(id, vec)| (id, binary_query.hamming_distance(vec)))
.collect();
distances.sort_by_key(|k| k.1);
let top_k: Vec<_> = distances[..10].to_vec();
black_box(top_k)
});
});
}
group.finish();
}
// ============================================================================
// Product Quantization (PQ) Benchmarks
// ============================================================================
fn bench_pq_adc_distance(c: &mut Criterion) {
let mut group = c.benchmark_group("pq_adc_distance");
for m in [8u8, 16, 32, 48, 64].iter() {
let k: usize = 256; // Number of centroids
let codes: Vec<u8> = (0..*m).map(|i| ((i * 7) % k as u8) as u8).collect();
let pq = ProductVec::new((*m as usize * 32) as u16, *m, 255, codes);
// Create distance table
let mut table = Vec::with_capacity(*m as usize * k as usize);
for i in 0..(*m as usize * k as usize) {
table.push((i % 100) as f32 * 0.01);
}
group.bench_with_input(BenchmarkId::new("simd", m), m, |bench, _| {
bench.iter(|| black_box(pq.adc_distance_simd(&table)));
});
group.bench_with_input(BenchmarkId::new("flat", m), m, |bench, _| {
bench.iter(|| black_box(pq.adc_distance_flat(&table)));
});
}
group.finish();
}
// ============================================================================
// Compression Ratio Benchmarks
// ============================================================================
fn bench_compression_comparison(c: &mut Criterion) {
let mut group = c.benchmark_group("compression_ratio");
for dims in [384, 768, 1536, 3072].iter() {
let data: Vec<f32> = (0..*dims).map(|i| (i as f32) * 0.001).collect();
let original_size = dims * std::mem::size_of::<f32>();
group.bench_with_input(BenchmarkId::new("binary", dims), dims, |bench, _| {
bench.iter(|| {
let binary = black_box(BinaryVec::from_f32(&data));
let compressed = binary.memory_size();
let ratio = original_size as f32 / compressed as f32;
black_box(ratio)
});
});
group.bench_with_input(BenchmarkId::new("scalar", dims), dims, |bench, _| {
bench.iter(|| {
let scalar = black_box(ScalarVec::from_f32(&data));
let compressed = scalar.memory_size();
let ratio = original_size as f32 / compressed as f32;
black_box(ratio)
});
});
group.bench_with_input(BenchmarkId::new("product", dims), dims, |bench, _| {
bench.iter(|| {
let m = (dims / 32).min(64);
let pq = black_box(ProductVec::new(*dims as u16, m as u8, 255, vec![0; m]));
let compressed = pq.memory_size();
let ratio = original_size as f32 / compressed as f32;
black_box(ratio)
});
});
}
group.finish();
}
// ============================================================================
// Speedup vs Accuracy Trade-off
// ============================================================================
fn bench_quantization_tradeoff(c: &mut Criterion) {
let mut group = c.benchmark_group("quantization_tradeoff");
group.sample_size(10);
let dims = 768;
let n = 10000;
let num_queries = 100;
let vectors = generate_vectors(n, dims, 42);
let queries = generate_vectors(num_queries, dims, 999);
// Compute ground truth
let exact_vecs: Vec<RuVector> = vectors.iter().map(|v| RuVector::from_slice(v)).collect();
let ground_truth: Vec<Vec<usize>> = queries
.iter()
.map(|query| {
let query_vec = RuVector::from_slice(query);
let mut distances: Vec<(usize, f32)> = exact_vecs
.iter()
.enumerate()
.map(|(id, vec)| {
let diff = query_vec.sub(vec);
let dist = diff.norm();
(id, dist)
})
.collect();
distances.sort_by(|a, b| a.1.partial_cmp(&b.1).unwrap());
distances.iter().take(10).map(|(id, _)| *id).collect()
})
.collect();
// Benchmark SQ8
let sq8_vecs: Vec<ScalarVec> = vectors.iter().map(|v| ScalarVec::from_f32(v)).collect();
group.bench_function("sq8_speedup", |bench| {
bench.iter(|| {
for (i, query) in queries.iter().enumerate() {
let sq8_query = ScalarVec::from_f32(query);
let mut distances: Vec<(usize, f32)> = sq8_vecs
.iter()
.enumerate()
.map(|(id, vec)| (id, sq8_query.distance(vec)))
.collect();
distances.sort_by(|a, b| a.1.partial_cmp(&b.1).unwrap());
let results: Vec<usize> = distances.iter().take(10).map(|(id, _)| *id).collect();
// Compute recall
let hits = results
.iter()
.filter(|id| ground_truth[i].contains(id))
.count();
black_box(hits as f32 / 10.0);
}
});
});
// Benchmark Binary
let binary_vecs: Vec<BinaryVec> = vectors.iter().map(|v| BinaryVec::from_f32(v)).collect();
group.bench_function("binary_speedup", |bench| {
bench.iter(|| {
for (i, query) in queries.iter().enumerate() {
let binary_query = BinaryVec::from_f32(query);
let mut distances: Vec<(usize, u32)> = binary_vecs
.iter()
.enumerate()
.map(|(id, vec)| (id, binary_query.hamming_distance(vec)))
.collect();
distances.sort_by_key(|k| k.1);
let results: Vec<usize> = distances.iter().take(10).map(|(id, _)| *id).collect();
// Compute recall
let hits = results
.iter()
.filter(|id| ground_truth[i].contains(id))
.count();
black_box(hits as f32 / 10.0);
}
});
});
group.finish();
}
// ============================================================================
// Throughput Comparison
// ============================================================================
fn bench_quantization_throughput(c: &mut Criterion) {
let mut group = c.benchmark_group("quantization_throughput");
let dims = 1536;
let n = 100000;
let vectors = generate_vectors(n, dims, 42);
let query = generate_vectors(1, dims, 999)[0].clone();
// Exact
let exact_vecs: Vec<RuVector> = vectors.iter().map(|v| RuVector::from_slice(v)).collect();
let exact_query = RuVector::from_slice(&query);
group.bench_function("exact_scan", |bench| {
bench.iter(|| {
let mut total = 0.0f32;
for vec in &exact_vecs {
total += exact_query.dot(vec);
}
black_box(total)
});
});
// SQ8
let sq8_vecs: Vec<ScalarVec> = vectors.iter().map(|v| ScalarVec::from_f32(v)).collect();
let sq8_query = ScalarVec::from_f32(&query);
group.bench_function("sq8_scan", |bench| {
bench.iter(|| {
let mut total = 0.0f32;
for vec in &sq8_vecs {
total += sq8_query.distance(vec);
}
black_box(total)
});
});
// Binary
let binary_vecs: Vec<BinaryVec> = vectors.iter().map(|v| BinaryVec::from_f32(v)).collect();
let binary_query = BinaryVec::from_f32(&query);
group.bench_function("binary_scan", |bench| {
bench.iter(|| {
let mut total = 0u64;
for vec in &binary_vecs {
total += binary_query.hamming_distance(vec) as u64;
}
black_box(total)
});
});
group.finish();
}
criterion_group!(
benches,
bench_sq8_quantization,
bench_sq8_distance,
bench_sq8_search,
bench_binary_quantization,
bench_binary_hamming,
bench_binary_search,
bench_pq_adc_distance,
bench_compression_comparison,
bench_quantization_tradeoff,
bench_quantization_throughput,
);
criterion_main!(benches);