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6588d2e9
编写于
6月 15, 2018
作者:
Y
yi.wu
浏览文件
操作
浏览文件
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电子邮件补丁
差异文件
complete dist transpiler doc
上级
4c3eb448
变更
2
显示空白变更内容
内联
并排
Showing
2 changed file
with
207 addition
and
151 deletion
+207
-151
python/paddle/fluid/transpiler/distribute_transpiler.py
python/paddle/fluid/transpiler/distribute_transpiler.py
+197
-149
python/paddle/fluid/transpiler/ps_dispatcher.py
python/paddle/fluid/transpiler/ps_dispatcher.py
+10
-2
未找到文件。
python/paddle/fluid/transpiler/distribute_transpiler.py
浏览文件 @
6588d2e9
...
...
@@ -12,14 +12,6 @@
# See the License for the specific language governing permissions and
# limitations under the License.
"""
Transpile the program to distributed data-parallelism programs.
The main_program will be transformed to use a remote parameter server
to do parameter optimization. And the optimization graph will be put
into a parameter server program.
Use different methods to split trainable variables to different
parameter servers.
Steps to transpile trainer:
1. split variable to multiple blocks, aligned by product(dim[1:]) (width).
2. rename splited grad variables to add trainer_id suffix ".trainer_%d".
...
...
@@ -118,128 +110,40 @@ def slice_variable(var_list, slice_count, min_block_size=8192):
class
DistributeTranspiler
:
def
_has_distributed_lookup_table
(
self
):
# process lookup_table_op
# 1. check all lookup_table_op is distributed
# 2. check all lookup_table_op share the same table.
distributed_lookup_table_ops
=
[]
# support only one distributed_lookup_table now
self
.
table_name
=
None
for
op
in
self
.
origin_program
.
global_block
().
ops
:
if
op
.
type
==
LOOKUP_TABLE_TYPE
:
if
op
.
attrs
[
'is_distributed'
]
is
True
:
if
self
.
table_name
is
None
:
self
.
table_name
=
op
.
input
(
"W"
)[
0
]
if
self
.
table_name
!=
op
.
input
(
"W"
)[
0
]:
raise
RuntimeError
(
"all distributed lookup_table_ops"
" should have only one table"
)
distributed_lookup_table_ops
.
append
(
op
)
else
:
if
self
.
table_name
is
not
None
:
assert
op
.
input
(
"W"
)[
0
]
!=
self
.
table_name
return
len
(
distributed_lookup_table_ops
)
>
0
def
_update_dist_lookup_table_vars
(
self
,
param_list
,
grad_list
,
params_grads
):
# TODO(wuyi): put find a way to put dist lookup table stuff all together.
# update self.table_param_grad and self.trainer_side_table_grad_list
program
=
self
.
origin_program
if
self
.
has_distributed_lookup_table
:
param_list
=
[
param
for
param
in
param_list
if
param
.
name
!=
self
.
table_name
]
grad_list
=
[
grad
for
grad
in
grad_list
if
grad
.
name
!=
grad_var_name
(
self
.
table_name
)
]
self
.
table_param_grad
=
[
param_grad
for
param_grad
in
params_grads
if
param_grad
[
0
].
name
==
self
.
table_name
][
0
]
table_grad_var
=
self
.
table_param_grad
[
1
]
if
self
.
sync_mode
:
self
.
trainer_side_table_grad_list
=
[
program
.
global_block
().
create_var
(
name
=
"%s.trainer_%d.pserver_%d"
%
(
table_grad_var
.
name
,
self
.
trainer_id
,
index
),
type
=
table_grad_var
.
type
,
shape
=
table_grad_var
.
shape
,
dtype
=
table_grad_var
.
dtype
)
for
index
in
range
(
len
(
self
.
pserver_endpoints
))
]
else
:
self
.
trainer_side_table_grad_list
=
[
program
.
global_block
().
create_var
(
name
=
"%s.pserver_%d"
%
(
table_grad_var
.
name
,
index
),
type
=
table_grad_var
.
type
,
shape
=
table_grad_var
.
shape
,
dtype
=
table_grad_var
.
dtype
)
for
index
in
range
(
len
(
self
.
pserver_endpoints
))
]
return
param_list
,
grad_list
def
_init_splited_vars
(
self
,
slice_var_up
):
# update these mappings for further transpile:
# 1. param_var_mapping: param var name -> [splited params vars]
# 2. grad_var_mapping: grad var name -> [splited grads vars]
# 3. grad_param_mapping: grad.blockx -> param.blockx
# 4. param_grad_ep_mapping: ep -> {"params": [], "grads": []}
param_list
=
[]
grad_list
=
[]
param_grad_set
=
set
()
for
p
,
g
in
self
.
params_grads
:
# skip parameter marked not trainable
if
type
(
p
)
==
Parameter
and
p
.
trainable
==
False
:
continue
if
p
.
name
not
in
param_grad_set
:
param_list
.
append
(
p
)
param_grad_set
.
add
(
p
.
name
)
if
g
.
name
not
in
param_grad_set
:
grad_list
.
append
(
g
)
param_grad_set
.
add
(
g
.
name
)
param_list
,
grad_list
=
self
.
_update_dist_lookup_table_vars
(
param_list
,
grad_list
,
self
.
params_grads
)
if
slice_var_up
:
# when we slice var up into blocks, we will slice the var according to
# pserver services' count. A pserver may have two or more listening ports.
grad_blocks
=
slice_variable
(
grad_list
,
len
(
self
.
pserver_endpoints
))
param_blocks
=
slice_variable
(
param_list
,
len
(
self
.
pserver_endpoints
))
else
:
# when we do NOT slice var up into blocks, we will always slice params
# grads into one block.
grad_blocks
=
slice_variable
(
grad_list
,
1
)
param_blocks
=
slice_variable
(
param_list
,
1
)
assert
(
len
(
grad_blocks
)
==
len
(
param_blocks
))
# origin_varname -> [splited_var]
self
.
param_var_mapping
=
self
.
_create_vars_from_blocklist
(
self
.
origin_program
,
param_blocks
)
self
.
grad_var_mapping
=
self
.
_create_vars_from_blocklist
(
self
.
origin_program
,
grad_blocks
,
add_trainer_suffix
=
self
.
trainer_num
>
1
)
self
.
grad_param_mapping
=
dict
()
for
g
,
p
in
zip
(
grad_blocks
,
param_blocks
):
g_name
,
g_bid
,
_
=
g
.
split
(
":"
)
p_name
,
p_bid
,
_
=
p
.
split
(
":"
)
self
.
grad_param_mapping
[
self
.
grad_var_mapping
[
g_name
][
int
(
g_bid
)]]
=
\
self
.
param_var_mapping
[
p_name
][
int
(
p_bid
)]
# create mapping of endpoint -> split var to create pserver side program
self
.
param_grad_ep_mapping
=
dict
()
[
self
.
param_grad_ep_mapping
.
update
({
ep
:
{
"params"
:
[],
"grads"
:
[]
}
})
for
ep
in
self
.
pserver_endpoints
]
"""
**DistributeTranspiler**
Convert the fluid program to distributed data-parallelism programs.
The main_program will be transformed to use a remote parameter server
to do parameter optimization. And the optimization graph will be put
into a parameter server program.
Examples:
.. code-block:: python
# Define your model before these codes.
port = os.getenv("PADDLE_PSERVER_PORT", "6174")
pserver_ips = os.getenv("PADDLE_PSERVER_IPS", "")
eplist = []
for ip in pserver_ips.split(","):
eplist.append(':'.join([ip, port]))
pserver_endpoints = ",".join(eplist)
trainers = int(os.getenv("PADDLE_TRAINERS"))
current_endpoint = os.getenv("PADDLE_CURRENT_IP", "") + ":" + port
trainer_id = int(os.getenv("PADDLE_TRAINER_ID", "0"))
role = os.getenv("PADDLE_TRAINING_ROLE")
t = distribute_transpiler.DistributeTranspiler()
t.transpile(
trainer_id, pservers=pserver_endpoints, trainers=trainers)
if role == "PSERVER":
pserver_program = t.get_pserver_program(current_endpoint)
pserver_startup_program = t.get_startup_program(current_endpoint,
pserver_program)
elif role == "TRAINER":
trainer_program = t.get_trainer_program()
"""
def
transpile
(
self
,
trainer_id
,
...
...
@@ -250,20 +154,20 @@ class DistributeTranspiler:
split_method
=
RoundRobin
,
sync_mode
=
True
):
"""
:param trainer_id: one unique id for each trainer in a job
.
:type trainer_id: int
:param program: program to transpile, default is default_main_program
:type program: Program
:param pservers: parameter server endpoints like "m1:6174,m2:6174"
:type pservers: string
:param trainers: total number of workers/trainers in the job
:type trainers: int
:param split_method: A function to determin how to split variables
t
o different servers equally
.
:type split_method: function
:type sync_mode: boolean default True
:param sync_mode: if sync_mode is set True, it means that dist transpiler
will transpile the program into sync_mode pserver and trainer program
.
Run the transpiler
.
Args:
trainer_id (int): id for current trainer worker, if you have
n workers, the id may range from 0 ~ n-1
program (Program|None): program to transpile,
default is fluid.default_main_program().
pservers (str): comma separated ip:port string for the pserver
list.
t
rainers (int): number of trainers in the distributed job
.
slice_var_up (bool): Do Tensor slice for pservers, default is True.
split_method (PSDispatcher): RoundRobin or HashName can be used
try to choose the best method to balance loads for pservers.
sync_mode (bool): Do sync training or not, default is True
.
"""
assert
(
split_method
.
__bases__
[
0
]
==
PSDispatcher
)
if
program
is
None
:
...
...
@@ -390,6 +294,12 @@ class DistributeTranspiler:
self
.
_split_table_grad_and_add_send_vars
(
program
,
pserver_endpoints
)
def
get_trainer_program
(
self
):
"""
Get transpiled trainer side program.
Returns:
Program: trainer side program.
"""
# remove optimize ops and add a send op to main_program
delete_ops
(
self
.
origin_program
.
global_block
(),
self
.
optimize_ops
)
# FIXME(typhoonzero): serialize once will fix error occurs when clone.
...
...
@@ -398,12 +308,19 @@ class DistributeTranspiler:
def
get_pserver_program
(
self
,
endpoint
):
"""
Get pserver side program using the endpoint.
TODO(panyx0718): Revisit this assumption. what if #blocks > #pservers.
NOTE: assume blocks of the same variable is not distributed
on the same pserver, only change param/grad varnames for
trainers to fetch.
Get parameter server side program.
Args:
endpoint (str): current parameter server endpoint.
Returns:
Program: the program for current parameter server to run.
"""
# TODO(panyx0718): Revisit this assumption. what if #blocks > #pservers.
# NOTE: assume blocks of the same variable is not distributed
# on the same pserver, only change param/grad varnames for
# trainers to fetch.
# step1
pserver_program
=
Program
()
# step2: Create vars to receive vars at parameter servers.
...
...
@@ -556,6 +473,14 @@ class DistributeTranspiler:
Get startup program for current parameter server.
Modify operator input variables if there are variables that
were split to several blocks.
Args:
endpoint (str): current pserver endpoint.
pserver_program (Program): call get_pserver_program first and
pass the result here.
Returns:
Program: parameter server side startup program.
"""
s_prog
=
Program
()
orig_s_prog
=
default_startup_program
()
...
...
@@ -607,6 +532,129 @@ class DistributeTranspiler:
# ====================== private transpiler functions =====================
def
_has_distributed_lookup_table
(
self
):
# process lookup_table_op
# 1. check all lookup_table_op is distributed
# 2. check all lookup_table_op share the same table.
distributed_lookup_table_ops
=
[]
# support only one distributed_lookup_table now
self
.
table_name
=
None
for
op
in
self
.
origin_program
.
global_block
().
ops
:
if
op
.
type
==
LOOKUP_TABLE_TYPE
:
if
op
.
attrs
[
'is_distributed'
]
is
True
:
if
self
.
table_name
is
None
:
self
.
table_name
=
op
.
input
(
"W"
)[
0
]
if
self
.
table_name
!=
op
.
input
(
"W"
)[
0
]:
raise
RuntimeError
(
"all distributed lookup_table_ops"
" should have only one table"
)
distributed_lookup_table_ops
.
append
(
op
)
else
:
if
self
.
table_name
is
not
None
:
assert
op
.
input
(
"W"
)[
0
]
!=
self
.
table_name
return
len
(
distributed_lookup_table_ops
)
>
0
def
_update_dist_lookup_table_vars
(
self
,
param_list
,
grad_list
,
params_grads
):
# TODO(wuyi): put find a way to put dist lookup table stuff all together.
# update self.table_param_grad and self.trainer_side_table_grad_list
program
=
self
.
origin_program
if
self
.
has_distributed_lookup_table
:
param_list
=
[
param
for
param
in
param_list
if
param
.
name
!=
self
.
table_name
]
grad_list
=
[
grad
for
grad
in
grad_list
if
grad
.
name
!=
grad_var_name
(
self
.
table_name
)
]
self
.
table_param_grad
=
[
param_grad
for
param_grad
in
params_grads
if
param_grad
[
0
].
name
==
self
.
table_name
][
0
]
table_grad_var
=
self
.
table_param_grad
[
1
]
if
self
.
sync_mode
:
self
.
trainer_side_table_grad_list
=
[
program
.
global_block
().
create_var
(
name
=
"%s.trainer_%d.pserver_%d"
%
(
table_grad_var
.
name
,
self
.
trainer_id
,
index
),
type
=
table_grad_var
.
type
,
shape
=
table_grad_var
.
shape
,
dtype
=
table_grad_var
.
dtype
)
for
index
in
range
(
len
(
self
.
pserver_endpoints
))
]
else
:
self
.
trainer_side_table_grad_list
=
[
program
.
global_block
().
create_var
(
name
=
"%s.pserver_%d"
%
(
table_grad_var
.
name
,
index
),
type
=
table_grad_var
.
type
,
shape
=
table_grad_var
.
shape
,
dtype
=
table_grad_var
.
dtype
)
for
index
in
range
(
len
(
self
.
pserver_endpoints
))
]
return
param_list
,
grad_list
def
_init_splited_vars
(
self
,
slice_var_up
):
# update these mappings for further transpile:
# 1. param_var_mapping: param var name -> [splited params vars]
# 2. grad_var_mapping: grad var name -> [splited grads vars]
# 3. grad_param_mapping: grad.blockx -> param.blockx
# 4. param_grad_ep_mapping: ep -> {"params": [], "grads": []}
param_list
=
[]
grad_list
=
[]
param_grad_set
=
set
()
for
p
,
g
in
self
.
params_grads
:
# skip parameter marked not trainable
if
type
(
p
)
==
Parameter
and
p
.
trainable
==
False
:
continue
if
p
.
name
not
in
param_grad_set
:
param_list
.
append
(
p
)
param_grad_set
.
add
(
p
.
name
)
if
g
.
name
not
in
param_grad_set
:
grad_list
.
append
(
g
)
param_grad_set
.
add
(
g
.
name
)
param_list
,
grad_list
=
self
.
_update_dist_lookup_table_vars
(
param_list
,
grad_list
,
self
.
params_grads
)
if
slice_var_up
:
# when we slice var up into blocks, we will slice the var according to
# pserver services' count. A pserver may have two or more listening ports.
grad_blocks
=
slice_variable
(
grad_list
,
len
(
self
.
pserver_endpoints
))
param_blocks
=
slice_variable
(
param_list
,
len
(
self
.
pserver_endpoints
))
else
:
# when we do NOT slice var up into blocks, we will always slice params
# grads into one block.
grad_blocks
=
slice_variable
(
grad_list
,
1
)
param_blocks
=
slice_variable
(
param_list
,
1
)
assert
(
len
(
grad_blocks
)
==
len
(
param_blocks
))
# origin_varname -> [splited_var]
self
.
param_var_mapping
=
self
.
_create_vars_from_blocklist
(
self
.
origin_program
,
param_blocks
)
self
.
grad_var_mapping
=
self
.
_create_vars_from_blocklist
(
self
.
origin_program
,
grad_blocks
,
add_trainer_suffix
=
self
.
trainer_num
>
1
)
self
.
grad_param_mapping
=
dict
()
for
g
,
p
in
zip
(
grad_blocks
,
param_blocks
):
g_name
,
g_bid
,
_
=
g
.
split
(
":"
)
p_name
,
p_bid
,
_
=
p
.
split
(
":"
)
self
.
grad_param_mapping
[
self
.
grad_var_mapping
[
g_name
][
int
(
g_bid
)]]
=
\
self
.
param_var_mapping
[
p_name
][
int
(
p_bid
)]
# create mapping of endpoint -> split var to create pserver side program
self
.
param_grad_ep_mapping
=
dict
()
[
self
.
param_grad_ep_mapping
.
update
({
ep
:
{
"params"
:
[],
"grads"
:
[]
}
})
for
ep
in
self
.
pserver_endpoints
]
# transpiler function for dis lookup_table
def
_replace_lookup_table_op_with_prefetch
(
self
,
program
,
pserver_endpoints
):
...
...
python/paddle/fluid/transpiler/ps_dispatcher.py
浏览文件 @
6588d2e9
...
...
@@ -41,7 +41,11 @@ class PSDispatcher(object):
class
HashName
(
PSDispatcher
):
"""
Hash variable names to several endpoints
Hash variable names to several endpoints using python
"hash()" function.
Args:
pserver_endpoints (list): list of endpoint(ip:port).
"""
def
__init__
(
self
,
pserver_endpoints
):
...
...
@@ -61,7 +65,11 @@ class HashName(PSDispatcher):
class
RoundRobin
(
PSDispatcher
):
"""
Distribute variables to serveral endpoints.
Distribute variables to serveral endpoints using
RondRobin<https://en.wikipedia.org/wiki/Round-robin_scheduling> method.
Args:
pserver_endpoints (list): list of endpoint(ip:port).
"""
def
__init__
(
self
,
pserver_endpoints
):
...
...
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