git-subtree-dir: vendor/ruvector git-subtree-split: b64c21726f2bb37286d9ee36a7869fef60cc6900
330 lines
11 KiB
Rust
330 lines
11 KiB
Rust
use criterion::{black_box, criterion_group, criterion_main, BenchmarkId, Criterion};
|
|
use ruvector_attention::{
|
|
attention::ScaledDotProductAttention,
|
|
graph::{
|
|
DualSpaceAttention, DualSpaceConfig, EdgeFeaturedAttention, EdgeFeaturedConfig, GraphRoPE,
|
|
RoPEConfig,
|
|
},
|
|
hyperbolic::{HyperbolicAttention, HyperbolicAttentionConfig},
|
|
moe::{MoEAttention, MoEConfig},
|
|
sparse::{FlashAttention, LinearAttention, LocalGlobalAttention},
|
|
training::{Adam, InfoNCELoss, Loss, Optimizer},
|
|
traits::Attention,
|
|
};
|
|
|
|
fn bench_scaled_dot_product(c: &mut Criterion) {
|
|
let mut group = c.benchmark_group("scaled_dot_product");
|
|
|
|
for dim in [64, 128, 256, 512] {
|
|
let attention = ScaledDotProductAttention::new(dim);
|
|
|
|
group.bench_with_input(BenchmarkId::new("dim", dim), &dim, |b, &dim| {
|
|
let query = vec![0.5; dim];
|
|
let keys: Vec<Vec<f32>> = (0..100)
|
|
.map(|i| vec![(i as f32 * 0.01) % 1.0; dim])
|
|
.collect();
|
|
let values: Vec<Vec<f32>> = (0..100)
|
|
.map(|i| vec![(i as f32 * 0.02) % 1.0; dim])
|
|
.collect();
|
|
let keys_refs: Vec<&[f32]> = keys.iter().map(|k| k.as_slice()).collect();
|
|
let values_refs: Vec<&[f32]> = values.iter().map(|v| v.as_slice()).collect();
|
|
|
|
b.iter(|| black_box(attention.compute(&query, &keys_refs, &values_refs).unwrap()));
|
|
});
|
|
}
|
|
|
|
group.finish();
|
|
}
|
|
|
|
fn bench_flash_attention(c: &mut Criterion) {
|
|
let mut group = c.benchmark_group("flash_attention");
|
|
|
|
for seq_len in [64, 256, 512, 1024] {
|
|
let dim = 256;
|
|
let attention = FlashAttention::new(dim, 64);
|
|
|
|
group.bench_with_input(
|
|
BenchmarkId::new("seq_len", seq_len),
|
|
&seq_len,
|
|
|b, &seq_len| {
|
|
let query = vec![0.5; dim];
|
|
let keys: Vec<Vec<f32>> = (0..seq_len)
|
|
.map(|i| vec![(i as f32 * 0.01) % 1.0; dim])
|
|
.collect();
|
|
let values: Vec<Vec<f32>> = (0..seq_len)
|
|
.map(|i| vec![(i as f32 * 0.02) % 1.0; dim])
|
|
.collect();
|
|
let keys_refs: Vec<&[f32]> = keys.iter().map(|k| k.as_slice()).collect();
|
|
let values_refs: Vec<&[f32]> = values.iter().map(|v| v.as_slice()).collect();
|
|
|
|
b.iter(|| black_box(attention.compute(&query, &keys_refs, &values_refs).unwrap()));
|
|
},
|
|
);
|
|
}
|
|
|
|
group.finish();
|
|
}
|
|
|
|
fn bench_linear_attention(c: &mut Criterion) {
|
|
let mut group = c.benchmark_group("linear_attention");
|
|
|
|
for seq_len in [256, 512, 1024, 2048] {
|
|
let dim = 256;
|
|
let attention = LinearAttention::new(dim, 64);
|
|
|
|
group.bench_with_input(
|
|
BenchmarkId::new("seq_len", seq_len),
|
|
&seq_len,
|
|
|b, &seq_len| {
|
|
let query = vec![0.5; dim];
|
|
let keys: Vec<Vec<f32>> = (0..seq_len)
|
|
.map(|i| vec![(i as f32 * 0.01) % 1.0; dim])
|
|
.collect();
|
|
let values: Vec<Vec<f32>> = (0..seq_len)
|
|
.map(|i| vec![(i as f32 * 0.02) % 1.0; dim])
|
|
.collect();
|
|
let keys_refs: Vec<&[f32]> = keys.iter().map(|k| k.as_slice()).collect();
|
|
let values_refs: Vec<&[f32]> = values.iter().map(|v| v.as_slice()).collect();
|
|
|
|
b.iter(|| black_box(attention.compute(&query, &keys_refs, &values_refs).unwrap()));
|
|
},
|
|
);
|
|
}
|
|
|
|
group.finish();
|
|
}
|
|
|
|
fn bench_local_global_attention(c: &mut Criterion) {
|
|
let mut group = c.benchmark_group("local_global_attention");
|
|
|
|
for window_size in [16, 32, 64, 128] {
|
|
let dim = 256;
|
|
let attention = LocalGlobalAttention::new(dim, window_size, 4);
|
|
|
|
group.bench_with_input(
|
|
BenchmarkId::new("window", window_size),
|
|
&window_size,
|
|
|b, _| {
|
|
let query = vec![0.5; dim];
|
|
let keys: Vec<Vec<f32>> = (0..512)
|
|
.map(|i| vec![(i as f32 * 0.01) % 1.0; dim])
|
|
.collect();
|
|
let values: Vec<Vec<f32>> = (0..512)
|
|
.map(|i| vec![(i as f32 * 0.02) % 1.0; dim])
|
|
.collect();
|
|
let keys_refs: Vec<&[f32]> = keys.iter().map(|k| k.as_slice()).collect();
|
|
let values_refs: Vec<&[f32]> = values.iter().map(|v| v.as_slice()).collect();
|
|
|
|
b.iter(|| black_box(attention.compute(&query, &keys_refs, &values_refs).unwrap()));
|
|
},
|
|
);
|
|
}
|
|
|
|
group.finish();
|
|
}
|
|
|
|
fn bench_moe_attention(c: &mut Criterion) {
|
|
let mut group = c.benchmark_group("moe_attention");
|
|
|
|
for num_experts in [2, 4, 8] {
|
|
let config = MoEConfig::builder()
|
|
.dim(256)
|
|
.num_experts(num_experts)
|
|
.top_k(2)
|
|
.build();
|
|
let attention = MoEAttention::new(config);
|
|
|
|
group.bench_with_input(
|
|
BenchmarkId::new("experts", num_experts),
|
|
&num_experts,
|
|
|b, _| {
|
|
let query = vec![0.5; 256];
|
|
let keys: Vec<Vec<f32>> = (0..100)
|
|
.map(|i| vec![(i as f32 * 0.01) % 1.0; 256])
|
|
.collect();
|
|
let values: Vec<Vec<f32>> = (0..100)
|
|
.map(|i| vec![(i as f32 * 0.02) % 1.0; 256])
|
|
.collect();
|
|
let keys_refs: Vec<&[f32]> = keys.iter().map(|k| k.as_slice()).collect();
|
|
let values_refs: Vec<&[f32]> = values.iter().map(|v| v.as_slice()).collect();
|
|
|
|
b.iter(|| black_box(attention.compute(&query, &keys_refs, &values_refs).unwrap()));
|
|
},
|
|
);
|
|
}
|
|
|
|
group.finish();
|
|
}
|
|
|
|
fn bench_hyperbolic_attention(c: &mut Criterion) {
|
|
let mut group = c.benchmark_group("hyperbolic_attention");
|
|
|
|
for dim in [64, 128, 256] {
|
|
let config = HyperbolicAttentionConfig {
|
|
dim,
|
|
curvature: -1.0,
|
|
..Default::default()
|
|
};
|
|
let attention = HyperbolicAttention::new(config);
|
|
|
|
group.bench_with_input(BenchmarkId::new("dim", dim), &dim, |b, &dim| {
|
|
let query = vec![0.1; dim];
|
|
let keys: Vec<Vec<f32>> = (0..100)
|
|
.map(|i| vec![(i as f32 * 0.001) % 0.5; dim])
|
|
.collect();
|
|
let values: Vec<Vec<f32>> = (0..100)
|
|
.map(|i| vec![(i as f32 * 0.002) % 0.5; dim])
|
|
.collect();
|
|
let keys_refs: Vec<&[f32]> = keys.iter().map(|k| k.as_slice()).collect();
|
|
let values_refs: Vec<&[f32]> = values.iter().map(|v| v.as_slice()).collect();
|
|
|
|
b.iter(|| black_box(attention.compute(&query, &keys_refs, &values_refs).unwrap()));
|
|
});
|
|
}
|
|
|
|
group.finish();
|
|
}
|
|
|
|
fn bench_edge_featured_attention(c: &mut Criterion) {
|
|
let mut group = c.benchmark_group("edge_featured_attention");
|
|
|
|
for num_heads in [1, 2, 4, 8] {
|
|
let config = EdgeFeaturedConfig::builder()
|
|
.node_dim(256)
|
|
.edge_dim(32)
|
|
.num_heads(num_heads)
|
|
.build();
|
|
let attention = EdgeFeaturedAttention::new(config);
|
|
|
|
group.bench_with_input(BenchmarkId::new("heads", num_heads), &num_heads, |b, _| {
|
|
let query = vec![0.5; 256];
|
|
let keys: Vec<Vec<f32>> = (0..64)
|
|
.map(|i| vec![(i as f32 * 0.01) % 1.0; 256])
|
|
.collect();
|
|
let values: Vec<Vec<f32>> = (0..64)
|
|
.map(|i| vec![(i as f32 * 0.02) % 1.0; 256])
|
|
.collect();
|
|
let keys_refs: Vec<&[f32]> = keys.iter().map(|k| k.as_slice()).collect();
|
|
let values_refs: Vec<&[f32]> = values.iter().map(|v| v.as_slice()).collect();
|
|
|
|
b.iter(|| black_box(attention.compute(&query, &keys_refs, &values_refs).unwrap()));
|
|
});
|
|
}
|
|
|
|
group.finish();
|
|
}
|
|
|
|
fn bench_graph_rope(c: &mut Criterion) {
|
|
let mut group = c.benchmark_group("graph_rope");
|
|
|
|
for dim in [64, 128, 256] {
|
|
let config = RoPEConfig::builder().dim(dim).max_position(1024).build();
|
|
let attention = GraphRoPE::new(config);
|
|
|
|
group.bench_with_input(BenchmarkId::new("dim", dim), &dim, |b, &dim| {
|
|
let query = vec![0.5; dim];
|
|
let keys: Vec<Vec<f32>> = (0..256)
|
|
.map(|i| vec![(i as f32 * 0.01) % 1.0; dim])
|
|
.collect();
|
|
let values: Vec<Vec<f32>> = (0..256)
|
|
.map(|i| vec![(i as f32 * 0.02) % 1.0; dim])
|
|
.collect();
|
|
let keys_refs: Vec<&[f32]> = keys.iter().map(|k| k.as_slice()).collect();
|
|
let values_refs: Vec<&[f32]> = values.iter().map(|v| v.as_slice()).collect();
|
|
|
|
b.iter(|| black_box(attention.compute(&query, &keys_refs, &values_refs).unwrap()));
|
|
});
|
|
}
|
|
|
|
group.finish();
|
|
}
|
|
|
|
fn bench_dual_space_attention(c: &mut Criterion) {
|
|
let mut group = c.benchmark_group("dual_space_attention");
|
|
|
|
for dim in [64, 128, 256] {
|
|
let config = DualSpaceConfig::builder()
|
|
.dim(dim)
|
|
.euclidean_weight(0.5)
|
|
.hyperbolic_weight(0.5)
|
|
.build();
|
|
let attention = DualSpaceAttention::new(config);
|
|
|
|
group.bench_with_input(BenchmarkId::new("dim", dim), &dim, |b, &dim| {
|
|
let query = vec![0.1; dim];
|
|
let keys: Vec<Vec<f32>> = (0..100)
|
|
.map(|i| vec![(i as f32 * 0.001) % 0.3; dim])
|
|
.collect();
|
|
let values: Vec<Vec<f32>> = (0..100)
|
|
.map(|i| vec![(i as f32 * 0.002) % 0.3; dim])
|
|
.collect();
|
|
let keys_refs: Vec<&[f32]> = keys.iter().map(|k| k.as_slice()).collect();
|
|
let values_refs: Vec<&[f32]> = values.iter().map(|v| v.as_slice()).collect();
|
|
|
|
b.iter(|| black_box(attention.compute(&query, &keys_refs, &values_refs).unwrap()));
|
|
});
|
|
}
|
|
|
|
group.finish();
|
|
}
|
|
|
|
fn bench_infonce_loss(c: &mut Criterion) {
|
|
let mut group = c.benchmark_group("infonce_loss");
|
|
|
|
for num_negatives in [10, 50, 100, 200] {
|
|
let loss = InfoNCELoss::new(0.07);
|
|
|
|
group.bench_with_input(
|
|
BenchmarkId::new("negatives", num_negatives),
|
|
&num_negatives,
|
|
|b, &num_neg| {
|
|
let anchor = vec![0.5; 128];
|
|
let positive = vec![0.6; 128];
|
|
let negatives: Vec<Vec<f32>> = (0..num_neg)
|
|
.map(|i| vec![(i as f32 * 0.01) % 1.0; 128])
|
|
.collect();
|
|
let neg_refs: Vec<&[f32]> = negatives.iter().map(|n| n.as_slice()).collect();
|
|
|
|
b.iter(|| black_box(loss.compute(&anchor, &positive, &neg_refs)));
|
|
},
|
|
);
|
|
}
|
|
|
|
group.finish();
|
|
}
|
|
|
|
fn bench_adam_optimizer(c: &mut Criterion) {
|
|
let mut group = c.benchmark_group("adam_optimizer");
|
|
|
|
for dim in [128, 256, 512, 1024] {
|
|
group.bench_with_input(BenchmarkId::new("dim", dim), &dim, |b, &dim| {
|
|
let mut optimizer = Adam::new(dim, 0.001);
|
|
let mut params = vec![0.5; dim];
|
|
let gradients = vec![0.01; dim];
|
|
|
|
b.iter(|| {
|
|
optimizer.step(&mut params, &gradients);
|
|
black_box(¶ms)
|
|
});
|
|
});
|
|
}
|
|
|
|
group.finish();
|
|
}
|
|
|
|
criterion_group!(
|
|
benches,
|
|
bench_scaled_dot_product,
|
|
bench_flash_attention,
|
|
bench_linear_attention,
|
|
bench_local_global_attention,
|
|
bench_moe_attention,
|
|
bench_hyperbolic_attention,
|
|
bench_edge_featured_attention,
|
|
bench_graph_rope,
|
|
bench_dual_space_attention,
|
|
bench_infonce_loss,
|
|
bench_adam_optimizer,
|
|
);
|
|
criterion_main!(benches);
|