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林帅浩
OvoTools
Commits
b97a30ed
Commit
b97a30ed
authored
Apr 04, 2019
by
IlyaOvodov
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adaptiveLR v3
parent
a2fb35df
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26 additions
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17 deletions
+26
-17
adaptive_lr.py
ovotools/adaptive_lr.py
+26
-17
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ovotools/adaptive_lr.py
View file @
b97a30ed
...
...
@@ -4,10 +4,10 @@ import ignite
def
create_adaptive_supervised_trainer
(
model
,
optimizer
,
loss_fn
,
metrics
=
{},
device
=
None
,
non_blocking
=
False
,
prepare_batch
=
ignite
.
engine
.
_prepare_batch
,
lr_scale
=
1.1
,
warmup_iters
=
50
):
prepare_batch
=
ignite
.
engine
.
_prepare_batch
,
lr_scale
=
1.1
,
warmup_iters
=
50
,
ls_mult
=
3
):
"""
Factory function for creating a trainer for supervised models.
l
Args:
model (`torch.nn.Module`): the model to train.
optimizer (`torch.optim.Optimizer`): the optimizer to use.
...
...
@@ -41,29 +41,38 @@ def create_adaptive_supervised_trainer(model, optimizer, loss_fn, metrics={},
model
.
train
()
if
engine
.
state
.
iteration
>
warmup_iters
:
prev_k
=
1
loss
=
None
new_ks_list
=
(
1
/
lr_scale
,
lr_scale
,)
if
engine
.
state
.
iteration
%
2
:
new_k
=
1
/
lr_scale
else
:
new_k
=
lr_scale
for
group
in
optimizer
.
param_groups
:
group
[
'lr'
]
*=
new_k
else
:
prev_k
=
new_k
=
1
if
engine
.
state
.
iteration
>
1
:
optimizer
.
step
()
if
engine
.
state
.
iteration
>
warmup_iters
:
with
torch
.
no_grad
():
for
new_k
in
new_ks_list
:
correct_model
(
prev_k
,
new_k
)
y_pred
=
model
(
x
)
loss0
=
loss
loss
=
loss_fn
(
y_pred
,
y
)
loss0
=
loss_fn
(
y_pred
,
y
)
print
(
'iter
\t
{}.{}'
.
format
(
engine
.
state
.
epoch
,
engine
.
state
.
iteration
),
'lr * {:5.3}'
.
format
(
new_k
),
'loss'
,
loss0
.
item
()
)
prev_k
=
new_k
print
(
'iter
\t
{}.{}'
.
format
(
engine
.
state
.
epoch
,
engine
.
state
.
iteration
),
'lr'
,
optimizer
.
param_groups
[
0
][
'lr'
],
'*'
,
new_k
,
'loss'
,
loss
.
item
())
if
loss0
<
loss
or
(
loss0
==
loss
and
engine
.
state
.
iteration
%
2
):
new_k
=
new_ks_list
[
0
]
new_k
=
1
/
new_k
correct_model
(
prev_k
,
new_k
)
for
group
in
optimizer
.
param_groups
:
group
[
'lr'
]
*=
new_k
optimizer
.
zero_grad
()
y_pred
=
model
(
x
)
loss
=
loss_fn
(
y_pred
,
y
)
loss
.
backward
()
optimizer
.
step
()
if
engine
.
state
.
iteration
>
warmup_iters
:
with
torch
.
no_grad
():
print
(
'iter
\t
{}.{}'
.
format
(
engine
.
state
.
epoch
,
engine
.
state
.
iteration
),
'lr * {:5.3}'
.
format
(
new_k
),
'loss'
,
loss
.
item
())
if
loss
<
loss0
or
(
loss
==
loss0
and
engine
.
state
.
iteration
%
2
):
for
group
in
optimizer
.
param_groups
:
group
[
'lr'
]
*=
new_k
/
prev_k
print
(
'iter
\t
{}.{}'
.
format
(
engine
.
state
.
epoch
,
engine
.
state
.
iteration
),
'lr'
,
optimizer
.
param_groups
[
0
][
'lr'
],
'loss'
,
loss
.
item
())
...
...
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