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chenpangpang
transformers
Commits
bf3dfd11
Unverified
Commit
bf3dfd11
authored
Mar 18, 2024
by
Joao Gante
Committed by
GitHub
Mar 18, 2024
Browse files
CI / generate: batch size computation compatible with all models (#29671)
parent
00c1d87a
Changes
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src/transformers/generation/utils.py
src/transformers/generation/utils.py
+12
-20
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src/transformers/generation/utils.py
View file @
bf3dfd11
...
@@ -1949,11 +1949,9 @@ class GenerationMixin:
...
@@ -1949,11 +1949,9 @@ class GenerationMixin:
)
)
# keep track of which sequences are already finished
# keep track of which sequences are already finished
batch_size
,
cur_len
=
(
batch_size
,
cur_len
=
input_ids
.
shape
model_kwargs
[
"attention_mask"
].
shape
if
"inputs_embeds"
in
model_kwargs
:
if
model_kwargs
.
get
(
"attention_mask"
,
None
)
is
not
None
cur_len
=
model_kwargs
[
"inputs_embeds"
].
shape
[
1
]
else
input_ids
.
shape
)
unfinished_sequences
=
torch
.
ones
(
batch_size
,
dtype
=
torch
.
long
,
device
=
input_ids
.
device
)
unfinished_sequences
=
torch
.
ones
(
batch_size
,
dtype
=
torch
.
long
,
device
=
input_ids
.
device
)
model_kwargs
[
"cache_position"
]
=
torch
.
arange
(
cur_len
,
device
=
input_ids
.
device
)
model_kwargs
[
"cache_position"
]
=
torch
.
arange
(
cur_len
,
device
=
input_ids
.
device
)
...
@@ -2398,12 +2396,10 @@ class GenerationMixin:
...
@@ -2398,12 +2396,10 @@ class GenerationMixin:
)
)
# keep track of which sequences are already finished
# keep track of which sequences are already finished
batch_size
,
cur_len
=
input_ids
.
shape
if
"inputs_embeds"
in
model_kwargs
:
cur_len
=
model_kwargs
[
"inputs_embeds"
].
shape
[
1
]
this_peer_finished
=
False
this_peer_finished
=
False
batch_size
,
cur_len
=
(
model_kwargs
[
"attention_mask"
].
shape
if
model_kwargs
.
get
(
"attention_mask"
,
None
)
is
not
None
else
input_ids
.
shape
)
unfinished_sequences
=
torch
.
ones
(
batch_size
,
dtype
=
torch
.
long
,
device
=
input_ids
.
device
)
unfinished_sequences
=
torch
.
ones
(
batch_size
,
dtype
=
torch
.
long
,
device
=
input_ids
.
device
)
model_kwargs
[
"cache_position"
]
=
torch
.
arange
(
cur_len
,
device
=
input_ids
.
device
)
model_kwargs
[
"cache_position"
]
=
torch
.
arange
(
cur_len
,
device
=
input_ids
.
device
)
...
@@ -2686,12 +2682,10 @@ class GenerationMixin:
...
@@ -2686,12 +2682,10 @@ class GenerationMixin:
)
)
# keep track of which sequences are already finished
# keep track of which sequences are already finished
batch_size
,
cur_len
=
input_ids
.
shape
if
"inputs_embeds"
in
model_kwargs
:
cur_len
=
model_kwargs
[
"inputs_embeds"
].
shape
[
1
]
this_peer_finished
=
False
this_peer_finished
=
False
batch_size
,
cur_len
=
(
model_kwargs
[
"attention_mask"
].
shape
if
model_kwargs
.
get
(
"attention_mask"
,
None
)
is
not
None
else
input_ids
.
shape
)
unfinished_sequences
=
torch
.
ones
(
batch_size
,
dtype
=
torch
.
long
,
device
=
input_ids
.
device
)
unfinished_sequences
=
torch
.
ones
(
batch_size
,
dtype
=
torch
.
long
,
device
=
input_ids
.
device
)
model_kwargs
[
"cache_position"
]
=
torch
.
arange
(
cur_len
,
device
=
input_ids
.
device
)
model_kwargs
[
"cache_position"
]
=
torch
.
arange
(
cur_len
,
device
=
input_ids
.
device
)
...
@@ -4461,11 +4455,9 @@ class GenerationMixin:
...
@@ -4461,11 +4455,9 @@ class GenerationMixin:
)
)
# keep track of which sequences are already finished
# keep track of which sequences are already finished
batch_size
,
cur_len
=
batch_size
,
cur_len
=
(
batch_size
,
cur_len
=
input_ids
.
shape
model_kwargs
[
"attention_mask"
].
shape
if
"inputs_embeds"
in
model_kwargs
:
if
model_kwargs
.
get
(
"attention_mask"
,
None
)
is
not
None
cur_len
=
model_kwargs
[
"inputs_embeds"
].
shape
[
1
]
else
input_ids
.
shape
)
unfinished_sequences
=
torch
.
ones
(
batch_size
,
dtype
=
torch
.
long
,
device
=
input_ids
.
device
)
unfinished_sequences
=
torch
.
ones
(
batch_size
,
dtype
=
torch
.
long
,
device
=
input_ids
.
device
)
model_kwargs
[
"cache_position"
]
=
torch
.
arange
(
cur_len
,
device
=
input_ids
.
device
)
model_kwargs
[
"cache_position"
]
=
torch
.
arange
(
cur_len
,
device
=
input_ids
.
device
)
...
...
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