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OpenDAS
vllm_cscc
Commits
7da296be
Unverified
Commit
7da296be
authored
Jul 01, 2025
by
Chengji Yao
Committed by
GitHub
Jul 02, 2025
Browse files
[TPU] kv cache update kernel supports dynamic grid (#20235)
Signed-off-by:
Chengji Yao
<
chengjiyao@google.com
>
parent
b205e846
Changes
4
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Showing
4 changed files
with
42 additions
and
17 deletions
+42
-17
tests/v1/tpu/test_kv_cache_update_kernel.py
tests/v1/tpu/test_kv_cache_update_kernel.py
+6
-2
vllm/attention/ops/pallas_kv_cache_update.py
vllm/attention/ops/pallas_kv_cache_update.py
+6
-3
vllm/v1/attention/backends/pallas.py
vllm/v1/attention/backends/pallas.py
+22
-12
vllm/v1/worker/tpu_model_runner.py
vllm/v1/worker/tpu_model_runner.py
+8
-0
No files found.
tests/v1/tpu/test_kv_cache_update_kernel.py
View file @
7da296be
...
@@ -32,6 +32,7 @@ def test_kv_cache_update_kernel(page_size: int, combined_kv_head_num: int,
...
@@ -32,6 +32,7 @@ def test_kv_cache_update_kernel(page_size: int, combined_kv_head_num: int,
new_kv_xla
=
new_kv_cpu
.
to
(
torch_xla
.
device
())
new_kv_xla
=
new_kv_cpu
.
to
(
torch_xla
.
device
())
slice_lens
=
np
.
array
([
7
,
page_size
,
page_size
,
1
,
1
,
1
,
9
],
slice_lens
=
np
.
array
([
7
,
page_size
,
page_size
,
1
,
1
,
1
,
9
],
dtype
=
np
.
int32
)
dtype
=
np
.
int32
)
num_kv_update_slices
=
len
(
slice_lens
)
kv_cache_start_indices
=
np
.
array
([
kv_cache_start_indices
=
np
.
array
([
page_size
*
2
-
7
,
page_size
*
2
,
page_size
*
3
,
page_size
*
4
+
6
,
page_size
*
2
-
7
,
page_size
*
2
,
page_size
*
3
,
page_size
*
4
+
6
,
page_size
*
5
+
7
,
page_size
*
6
+
8
,
page_size
*
15
+
3
page_size
*
5
+
7
,
page_size
*
6
+
8
,
page_size
*
15
+
3
...
@@ -52,12 +53,15 @@ def test_kv_cache_update_kernel(page_size: int, combined_kv_head_num: int,
...
@@ -52,12 +53,15 @@ def test_kv_cache_update_kernel(page_size: int, combined_kv_head_num: int,
device
=
"cpu"
,
device
=
"cpu"
,
dtype
=
torch
.
int32
)
dtype
=
torch
.
int32
)
slot_mapping_xla
=
slot_mapping_cpu
.
to
(
torch_xla
.
device
())
slot_mapping_xla
=
slot_mapping_cpu
.
to
(
torch_xla
.
device
())
num_kv_update_slices_xla
=
torch
.
tensor
([
num_kv_update_slices
],
device
=
torch_xla
.
device
(),
dtype
=
torch
.
int32
)
torch_xla
.
sync
()
torch_xla
.
sync
()
torch
.
ops
.
xla
.
dynamo_set_buffer_donor_
(
kv_cache_xla
,
True
)
torch
.
ops
.
xla
.
dynamo_set_buffer_donor_
(
kv_cache_xla
,
True
)
new_kv_cache_xla
=
torch
.
ops
.
xla
.
kv_cache_update_op
(
new_kv_cache_xla
=
torch
.
ops
.
xla
.
kv_cache_update_op
(
new_kv_xla
,
slot_mapping_xla
,
kv_cache_xla
,
page_size
,
new_kv_xla
,
slot_mapping_xla
,
kv_cache_xla
,
num_kv_update_slices_xla
,
num_slices_per_block
)
page_size
,
num_slices_per_block
)
kv_cache_xla
.
copy_
(
new_kv_cache_xla
)
kv_cache_xla
.
copy_
(
new_kv_cache_xla
)
torch_xla
.
sync
()
torch_xla
.
sync
()
...
...
vllm/attention/ops/pallas_kv_cache_update.py
View file @
7da296be
...
@@ -7,11 +7,13 @@ import jax
...
@@ -7,11 +7,13 @@ import jax
from
jax.experimental
import
pallas
as
pl
from
jax.experimental
import
pallas
as
pl
from
jax.experimental.pallas
import
tpu
as
pltpu
from
jax.experimental.pallas
import
tpu
as
pltpu
from
vllm.utils
import
cdiv
def
_kv_cache_update_kernel
(
def
_kv_cache_update_kernel
(
# Prefetch
# Prefetch
slices_ref
,
# [3, num_slices], list of (kv_cache_start,
new_kv_start,
slices_ref
,
# [3,
padded_
num_slices], list of (kv_cache_start,
# slice_len)
#
new_kv_start,
slice_len)
# Input
# Input
new_kv_hbm_ref
,
# [num_tokens, num_combined_kv_heads, head_dim]
new_kv_hbm_ref
,
# [num_tokens, num_combined_kv_heads, head_dim]
kv_cache_hbm_ref
,
# [total_num_pages * page_size, num_combined_kv_heads,
kv_cache_hbm_ref
,
# [total_num_pages * page_size, num_combined_kv_heads,
...
@@ -70,6 +72,7 @@ def kv_cache_update(
...
@@ -70,6 +72,7 @@ def kv_cache_update(
Array
,
# [3, slices], list of (kv_cache_start, new_kv_start, slice_len)
Array
,
# [3, slices], list of (kv_cache_start, new_kv_start, slice_len)
kv_cache
:
jax
.
kv_cache
:
jax
.
Array
,
# [total_num_pages * page_size, num_combined_kv_heads, head_dim]
Array
,
# [total_num_pages * page_size, num_combined_kv_heads, head_dim]
num_kv_update_slices
:
jax
.
Array
,
# [1]
*
,
*
,
page_size
:
int
=
32
,
page_size
:
int
=
32
,
num_slices_per_block
:
int
=
8
,
num_slices_per_block
:
int
=
8
,
...
@@ -107,7 +110,7 @@ def kv_cache_update(
...
@@ -107,7 +110,7 @@ def kv_cache_update(
num_scalar_prefetch
=
len
(
scalar_prefetches
),
num_scalar_prefetch
=
len
(
scalar_prefetches
),
in_specs
=
in_specs
,
in_specs
=
in_specs
,
out_specs
=
out_specs
,
out_specs
=
out_specs
,
grid
=
(
slices
.
shape
[
1
]
//
num_slices_per_block
,
),
grid
=
(
cdiv
(
num_kv_update_slices
[
0
],
num_slices_per_block
)
,
),
scratch_shapes
=
scratch_shapes
,
scratch_shapes
=
scratch_shapes
,
),
),
out_shape
=
out_shape
,
out_shape
=
out_shape
,
...
...
vllm/v1/attention/backends/pallas.py
View file @
7da296be
...
@@ -111,6 +111,7 @@ class PallasMetadata:
...
@@ -111,6 +111,7 @@ class PallasMetadata:
context_lens
:
torch
.
Tensor
context_lens
:
torch
.
Tensor
query_start_loc
:
torch
.
Tensor
query_start_loc
:
torch
.
Tensor
num_seqs
:
torch
.
Tensor
num_seqs
:
torch
.
Tensor
num_kv_update_slices
:
torch
.
Tensor
num_slices_per_kv_cache_update_block
:
int
num_slices_per_kv_cache_update_block
:
int
...
@@ -219,7 +220,8 @@ class PallasAttentionBackendImpl(AttentionImpl):
...
@@ -219,7 +220,8 @@ class PallasAttentionBackendImpl(AttentionImpl):
slot_mapping
=
attn_metadata
.
slot_mapping
slot_mapping
=
attn_metadata
.
slot_mapping
write_to_kv_cache
(
write_to_kv_cache
(
key
,
value
,
kv_cache
,
slot_mapping
,
key
,
value
,
kv_cache
,
slot_mapping
,
attn_metadata
.
num_slices_per_kv_cache_update_block
)
attn_metadata
.
num_slices_per_kv_cache_update_block
,
attn_metadata
.
num_kv_update_slices
)
output
=
torch
.
ops
.
xla
.
ragged_paged_attention
(
output
=
torch
.
ops
.
xla
.
ragged_paged_attention
(
query
,
query
,
...
@@ -252,6 +254,7 @@ def write_to_kv_cache(
...
@@ -252,6 +254,7 @@ def write_to_kv_cache(
kv_cache
:
torch
.
Tensor
,
kv_cache
:
torch
.
Tensor
,
slot_mapping
:
torch
.
Tensor
,
slot_mapping
:
torch
.
Tensor
,
num_slices_per_kv_cache_update_block
:
int
,
num_slices_per_kv_cache_update_block
:
int
,
num_kv_update_slices
:
torch
.
Tensor
,
)
->
None
:
)
->
None
:
""" Write the key and values to the KV cache.
""" Write the key and values to the KV cache.
...
@@ -271,7 +274,7 @@ def write_to_kv_cache(
...
@@ -271,7 +274,7 @@ def write_to_kv_cache(
kv_cache
=
kv_cache
.
flatten
(
0
,
1
)
kv_cache
=
kv_cache
.
flatten
(
0
,
1
)
new_kv_cache
=
torch
.
ops
.
xla
.
kv_cache_update_op
(
new_kv_cache
=
torch
.
ops
.
xla
.
kv_cache_update_op
(
kv
,
slot_mapping
,
kv_cache
,
page_size
,
kv
,
slot_mapping
,
kv_cache
,
num_kv_update_slices
,
page_size
,
num_slices_per_kv_cache_update_block
)
num_slices_per_kv_cache_update_block
)
# NOTE: the in-place copy will be optimized away by XLA compiler.
# NOTE: the in-place copy will be optimized away by XLA compiler.
kv_cache
.
copy_
(
new_kv_cache
)
kv_cache
.
copy_
(
new_kv_cache
)
...
@@ -279,10 +282,12 @@ def write_to_kv_cache(
...
@@ -279,10 +282,12 @@ def write_to_kv_cache(
@
requires_jax
@
requires_jax
def
kv_cache_update_op_impl
(
kv
:
torch
.
Tensor
,
slot_mapping
:
torch
.
Tensor
,
def
kv_cache_update_op_impl
(
kv
:
torch
.
Tensor
,
slot_mapping
:
torch
.
Tensor
,
kv_cache
:
torch
.
Tensor
,
page_size
:
int
,
kv_cache
:
torch
.
Tensor
,
num_kv_update_slices
:
torch
.
Tensor
,
page_size
:
int
,
num_slices_per_block
:
int
):
num_slices_per_block
:
int
):
from
vllm.attention.ops.pallas_kv_cache_update
import
kv_cache_update
from
vllm.attention.ops.pallas_kv_cache_update
import
kv_cache_update
new_kv_cache
=
xb
.
call_jax
(
kv_cache_update
,
(
kv
,
slot_mapping
,
kv_cache
),
{
new_kv_cache
=
xb
.
call_jax
(
kv_cache_update
,
(
kv
,
slot_mapping
,
kv_cache
,
num_kv_update_slices
),
{
"page_size"
:
page_size
,
"page_size"
:
page_size
,
"num_slices_per_block"
:
num_slices_per_block
"num_slices_per_block"
:
num_slices_per_block
})
})
...
@@ -290,21 +295,26 @@ def kv_cache_update_op_impl(kv: torch.Tensor, slot_mapping: torch.Tensor,
...
@@ -290,21 +295,26 @@ def kv_cache_update_op_impl(kv: torch.Tensor, slot_mapping: torch.Tensor,
XLA_LIB
.
define
(
XLA_LIB
.
define
(
"kv_cache_update_op(Tensor kv, Tensor slot_mapping, Tensor kv_cache, "
"kv_cache_update_op(Tensor kv, Tensor slot_mapping, Tensor kv_cache,"
\
"int page_size, int num_slices_per_block) -> Tensor"
,
)
"Tensor num_kv_update_slices, int page_size, int num_slices_per_block)"
\
"-> Tensor"
,
)
@
impl
(
XLA_LIB
,
"kv_cache_update_op"
,
"XLA"
)
@
impl
(
XLA_LIB
,
"kv_cache_update_op"
,
"XLA"
)
def
kv_cache_update_op_xla
(
kv
:
torch
.
Tensor
,
slot_mapping
:
torch
.
Tensor
,
def
kv_cache_update_op_xla
(
kv
:
torch
.
Tensor
,
slot_mapping
:
torch
.
Tensor
,
kv_cache
:
torch
.
Tensor
,
page_size
:
int
,
kv_cache
:
torch
.
Tensor
,
num_kv_update_slices
:
torch
.
Tensor
,
page_size
:
int
,
num_slices_per_block
:
int
)
->
torch
.
Tensor
:
num_slices_per_block
:
int
)
->
torch
.
Tensor
:
new_kv_cache
=
kv_cache_update_op_impl
(
kv
,
slot_mapping
,
kv_cache
,
new_kv_cache
=
kv_cache_update_op_impl
(
kv
,
slot_mapping
,
kv_cache
,
page_size
,
num_slices_per_block
)
num_kv_update_slices
,
page_size
,
num_slices_per_block
)
return
new_kv_cache
return
new_kv_cache
@
impl
(
XLA_LIB
,
"kv_cache_update_op"
,
"CompositeExplicitAutograd"
)
@
impl
(
XLA_LIB
,
"kv_cache_update_op"
,
"CompositeExplicitAutograd"
)
def
kv_cache_update_op_non_xla
(
kv
:
torch
.
Tensor
,
slot_mapping
:
torch
.
Tensor
,
def
kv_cache_update_op_non_xla
(
kv
:
torch
.
Tensor
,
slot_mapping
:
torch
.
Tensor
,
kv_cache
:
torch
.
Tensor
,
page_size
:
int
,
kv_cache
:
torch
.
Tensor
,
num_kv_update_slices
:
torch
.
Tensor
,
page_size
:
int
,
num_slices_per_block
:
int
)
->
torch
.
Tensor
:
num_slices_per_block
:
int
)
->
torch
.
Tensor
:
return
kv_cache
return
kv_cache
vllm/v1/worker/tpu_model_runner.py
View file @
7da296be
...
@@ -713,8 +713,10 @@ class TPUModelRunner(LoRAModelRunnerMixin):
...
@@ -713,8 +713,10 @@ class TPUModelRunner(LoRAModelRunnerMixin):
self
.
device
)
self
.
device
)
block_tables
=
block_tables
.
to
(
self
.
device
)
block_tables
=
block_tables
.
to
(
self
.
device
)
# Calculate the slot mapping
slot_mapping_metadata
=
self
.
_get_slot_mapping_metadata
(
slot_mapping_metadata
=
self
.
_get_slot_mapping_metadata
(
num_reqs
,
num_scheduled_tokens_per_req
)
num_reqs
,
num_scheduled_tokens_per_req
)
num_kv_update_slices
=
slot_mapping_metadata
.
shape
[
0
]
padded_num_slices
=
_get_padded_num_kv_cache_update_slices
(
padded_num_slices
=
_get_padded_num_kv_cache_update_slices
(
padded_total_num_scheduled_tokens
,
self
.
max_num_reqs
,
padded_total_num_scheduled_tokens
,
self
.
max_num_reqs
,
self
.
block_size
)
self
.
block_size
)
...
@@ -745,6 +747,9 @@ class TPUModelRunner(LoRAModelRunnerMixin):
...
@@ -745,6 +747,9 @@ class TPUModelRunner(LoRAModelRunnerMixin):
num_seqs
=
torch
.
tensor
([
num_reqs
],
num_seqs
=
torch
.
tensor
([
num_reqs
],
dtype
=
torch
.
int32
,
dtype
=
torch
.
int32
,
device
=
self
.
device
),
device
=
self
.
device
),
num_kv_update_slices
=
torch
.
tensor
([
num_kv_update_slices
],
dtype
=
torch
.
int32
,
device
=
self
.
device
),
num_slices_per_kv_cache_update_block
=
num_slices_per_kv_cache_update_block
=
NUM_SLICES_PER_KV_CACHE_UPDATE_BLOCK
,
NUM_SLICES_PER_KV_CACHE_UPDATE_BLOCK
,
)
)
...
@@ -1174,6 +1179,8 @@ class TPUModelRunner(LoRAModelRunnerMixin):
...
@@ -1174,6 +1179,8 @@ class TPUModelRunner(LoRAModelRunnerMixin):
dtype
=
torch
.
int32
).
to
(
self
.
device
)
dtype
=
torch
.
int32
).
to
(
self
.
device
)
padded_num_slices
=
_get_padded_num_kv_cache_update_slices
(
padded_num_slices
=
_get_padded_num_kv_cache_update_slices
(
num_tokens
,
self
.
max_num_reqs
,
self
.
block_size
)
num_tokens
,
self
.
max_num_reqs
,
self
.
block_size
)
num_kv_update_slices
=
torch
.
tensor
([
padded_num_slices
],
dtype
=
torch
.
int32
).
to
(
self
.
device
)
slot_mapping
=
torch
.
zeros
((
3
,
padded_num_slices
),
slot_mapping
=
torch
.
zeros
((
3
,
padded_num_slices
),
dtype
=
torch
.
int32
).
to
(
self
.
device
)
dtype
=
torch
.
int32
).
to
(
self
.
device
)
block_tables
=
torch
.
zeros
((
num_reqs
,
num_blocks
),
block_tables
=
torch
.
zeros
((
num_reqs
,
num_blocks
),
...
@@ -1193,6 +1200,7 @@ class TPUModelRunner(LoRAModelRunnerMixin):
...
@@ -1193,6 +1200,7 @@ class TPUModelRunner(LoRAModelRunnerMixin):
context_lens
=
context_lens
,
context_lens
=
context_lens
,
query_start_loc
=
query_start_loc
,
query_start_loc
=
query_start_loc
,
num_seqs
=
num_seqs
,
num_seqs
=
num_seqs
,
num_kv_update_slices
=
num_kv_update_slices
,
num_slices_per_kv_cache_update_block
=
num_slices_per_kv_cache_update_block
=
NUM_SLICES_PER_KV_CACHE_UPDATE_BLOCK
,
NUM_SLICES_PER_KV_CACHE_UPDATE_BLOCK
,
)
)
...
...
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