688 lines
26 KiB
Python
688 lines
26 KiB
Python
# Copyright (c) 2019 PaddlePaddle Authors. All Rights Reserved.
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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"""Definition of device workers."""
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import sys
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__all__ = []
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class DeviceWorker:
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"""
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DeviceWorker is an abstract class, which generates worker desc.
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This class is an inner class that we do computation logics within
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the implementation. For example, execution of a program or a graph.
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"""
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def __init__(self):
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"""Init."""
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self._program = None
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self._infer = None
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def _set_infer(self, infer=False):
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"""
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set inference flag for current device worker
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Args:
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infer(bool): whether to do inference
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"""
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self._infer = infer
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def _set_fleet_desc(self, fleet_desc):
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"""
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Set fleet desc.
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Args:
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fleet_desc(PSParameter): pslib.PSParameter object
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"""
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self._fleet_desc = fleet_desc
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def _set_program(self, program):
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"""
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Set program.
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Args:
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program(Program): a Program object
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"""
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self._program = program
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def _gen_worker_desc(self, trainer_desc):
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"""
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Generator worker desc.
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Args:
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trainer_desc(TrainerDesc): a TrainerDesc object
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"""
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raise NotImplementedError(
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"DeviceWorker does not implement gen_worker_desc, "
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"please use Hogwild or DownpourSGD, etc."
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)
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class Hogwild(DeviceWorker):
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"""
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Hogwild is a kind of SGD algorithm.
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"""
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def __init__(self):
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"""Init."""
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super().__init__()
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def _gen_worker_desc(self, trainer_desc):
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"""
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Generator worker desc, which device worker is HogwildWorker.
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Args:
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trainer_desc(TrainerDesc): a TrainerDesc object
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"""
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trainer_desc.device_worker_name = "HogwildWorker"
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if self._infer:
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# just ignore feed op for inference model
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trainer_desc.hogwild_param.skip_ops.extend(
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[
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"feed",
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"push_sparse_v2",
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"push_dense",
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"distributed_push_sparse",
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"send",
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]
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)
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dense_table_set = set()
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program_id = str(id(self._program))
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print("device worker program id:", program_id)
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if self._program is None:
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print("program of current device worker is not configured")
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sys.exit(-1)
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opt_info = self._program._fleet_opt
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# when opt_info is None or empty dict, it should return
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if not opt_info:
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return
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downpour = trainer_desc.downpour_param
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hogwild = trainer_desc.hogwild_param
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if opt_info["stat_var_names"]:
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for i in opt_info["stat_var_names"]:
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hogwild.stat_var_names.extend([i])
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downpour.stat_var_names.extend([i])
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from paddle.incubate.distributed.fleet.parameter_server import version
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if (
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version.is_transpiler()
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and "fleet_desc" not in opt_info
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and "program_configs" not in opt_info
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):
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return
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program_configs = opt_info["program_configs"]
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print("device worker program_configs:", program_configs)
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for pid in program_configs:
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print("device worker", pid, program_id)
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if pid == program_id:
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pc = downpour.program_config.add()
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pc.program_id = program_id
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print(
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"device worker pull dense:",
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program_configs[program_id]["pull_dense"],
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)
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for i in program_configs[program_id]["push_sparse"]:
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pc.push_sparse_table_id.extend([i])
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for i in program_configs[program_id]["push_dense"]:
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pc.push_dense_table_id.extend([i])
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dense_table_set.add(i)
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for i in program_configs[program_id]["pull_sparse"]:
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pc.pull_sparse_table_id.extend([i])
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for i in program_configs[program_id]["pull_dense"]:
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pc.pull_dense_table_id.extend([i])
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dense_table_set.add(i)
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break
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trainer_desc.device_worker_name = "HogwildWorker"
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pull_thread = trainer_desc.pull_dense_param
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pull_thread.device_num = trainer_desc.thread_num
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if (
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opt_info.get("program_id_to_worker") is None
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and opt_info.get("dense_table_config") is None
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):
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raise ValueError(
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"opt_info must have program_id_to_worker or dense_table_config"
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)
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if opt_info.get("program_id_to_worker") is not None:
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prog_id_to_worker = opt_info["program_id_to_worker"]
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if prog_id_to_worker.get(program_id) is None:
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raise ValueError(
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f"{program_id} not found in program_id_to_worker"
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)
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worker = opt_info["program_id_to_worker"][program_id]
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for i in worker.get_desc().dense_table:
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if i.table_id in dense_table_set:
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dense_table = pull_thread.dense_table.add()
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dense_table.dense_value_name.extend(i.dense_variable_name)
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dense_table.table_id = i.table_id
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sparse_len = len(worker.get_desc().sparse_table)
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for i in range(sparse_len):
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sparse_table = downpour.sparse_table.add()
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sparse_table.table_id = (
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worker.get_desc().sparse_table[i].table_id
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)
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sparse_table.sparse_key_name.extend(
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worker.get_desc().sparse_table[i].slot_key
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)
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sparse_table.sparse_value_name.extend(
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worker.get_desc().sparse_table[i].slot_value
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)
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sparse_table.sparse_grad_name.extend(
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worker.get_desc().sparse_table[i].slot_gradient
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)
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sparse_table.fea_dim = self._fleet_desc.server_param.downpour_server_param.downpour_table_param[
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i
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].accessor.fea_dim
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# not use emb_dim
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sparse_table.emb_dim = -1
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# not use hard code click
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sparse_table.label_var_name = ""
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for i in worker.get_desc().dense_table:
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if i.table_id in dense_table_set:
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dense_table = downpour.dense_table.add()
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dense_table.table_id = i.table_id
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dense_table.dense_value_name.extend(i.dense_variable_name)
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dense_table.dense_grad_name.extend(
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i.dense_gradient_variable_name
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)
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hogwild.skip_ops.extend(worker.get_desc().skip_op)
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else:
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dense_table_config = opt_info.get("dense_table_config")
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print("device worker dense_table_config:", dense_table_config)
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for table_id, varnames in dense_table_config.items():
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dense_table = pull_thread.dense_table.add()
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dense_table.dense_value_name.extend(varnames)
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dense_table.table_id = table_id
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if self._infer:
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hogwild.skip_ops.extend(
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["push_sparse", "push_sparse_v2", "push_dense"]
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)
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class DownpourLite(DeviceWorker):
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"""
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DownpourLite is a kind of SGD algorithm.
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"""
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def __init__(self):
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"""Init."""
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super().__init__()
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def _gen_worker_desc(self, trainer_desc):
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"""
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Generator worker desc, which device worker is DownpourLiteWorker.
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Args:
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trainer_desc(TrainerDesc): a TrainerDesc object
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"""
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print("create DownpourLiteWorker")
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trainer_desc.device_worker_name = "DownpourLiteWorker"
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if self._infer:
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# just ignore feed op for inference model
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trainer_desc.downpour_param.skip_ops.extend(
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[
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"feed",
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"push_sparse",
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"push_sparse_v2",
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"push_dense",
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"distributed_push_sparse",
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"send",
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]
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)
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dense_table_set = set()
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program_id = str(id(self._program))
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print("device worker program id:", program_id)
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if self._program is None:
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print("program of current device worker is not configured")
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sys.exit(-1)
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opt_info = self._program._fleet_opt
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# when opt_info is None or empty dict, it should return
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if not opt_info:
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return
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downpour = trainer_desc.downpour_param
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if opt_info["stat_var_names"]:
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for i in opt_info["stat_var_names"]:
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downpour.stat_var_names.extend([i])
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from paddle.incubate.distributed.fleet.parameter_server import version
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if (
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version.is_transpiler()
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and "fleet_desc" not in opt_info
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and "program_configs" not in opt_info
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):
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return
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program_configs = opt_info["program_configs"]
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print("device worker program_configs:", program_configs)
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for pid in program_configs:
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print("device worker", pid, program_id)
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if pid == program_id:
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pc = downpour.program_config.add()
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pc.program_id = program_id
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print(
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"device worker pull dense:",
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program_configs[program_id]["pull_dense"],
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)
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for i in program_configs[program_id]["push_sparse"]:
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pc.push_sparse_table_id.extend([i])
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for i in program_configs[program_id]["push_dense"]:
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pc.push_dense_table_id.extend([i])
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dense_table_set.add(i)
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for i in program_configs[program_id]["pull_sparse"]:
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pc.pull_sparse_table_id.extend([i])
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for i in program_configs[program_id]["pull_dense"]:
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pc.pull_dense_table_id.extend([i])
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dense_table_set.add(i)
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break
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pull_thread = trainer_desc.pull_dense_param
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pull_thread.device_num = trainer_desc.thread_num
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if (
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opt_info.get("program_id_to_worker") is None
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and opt_info.get("dense_table_config") is None
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):
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raise ValueError(
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"opt_info must have program_id_to_worker or dense_table_config"
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)
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if opt_info.get("program_id_to_worker") is not None:
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prog_id_to_worker = opt_info["program_id_to_worker"]
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if prog_id_to_worker.get(program_id) is None:
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raise ValueError(
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f"{program_id} not found in program_id_to_worker"
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)
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worker = opt_info["program_id_to_worker"][program_id]
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for i in worker.get_desc().dense_table:
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if i.table_id in dense_table_set:
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dense_table = pull_thread.dense_table.add()
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dense_table.dense_value_name.extend(i.dense_variable_name)
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dense_table.table_id = i.table_id
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sparse_len = len(worker.get_desc().sparse_table)
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for i in range(sparse_len):
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sparse_table = downpour.sparse_table.add()
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sparse_table.table_id = (
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worker.get_desc().sparse_table[i].table_id
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)
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sparse_table.sparse_key_name.extend(
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worker.get_desc().sparse_table[i].slot_key
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)
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sparse_table.sparse_value_name.extend(
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worker.get_desc().sparse_table[i].slot_value
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)
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sparse_table.sparse_grad_name.extend(
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worker.get_desc().sparse_table[i].slot_gradient
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)
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sparse_table.fea_dim = self._fleet_desc.server_param.downpour_server_param.downpour_table_param[
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i
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].accessor.fea_dim
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# not use emb_dim
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sparse_table.emb_dim = -1
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# not use hard code click
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sparse_table.label_var_name = ""
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for i in worker.get_desc().dense_table:
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if i.table_id in dense_table_set:
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dense_table = downpour.dense_table.add()
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dense_table.table_id = i.table_id
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dense_table.dense_value_name.extend(i.dense_variable_name)
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dense_table.dense_grad_name.extend(
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i.dense_gradient_variable_name
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)
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downpour.skip_ops.extend(worker.get_desc().skip_op)
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else:
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dense_table_config = opt_info.get("dense_table_config")
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print("device worker dense_table_config:", dense_table_config)
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for table_id, varnames in dense_table_config.items():
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dense_table = pull_thread.dense_table.add()
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dense_table.dense_value_name.extend(varnames)
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dense_table.table_id = table_id
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if self._infer:
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downpour.skip_ops.extend(
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["push_sparse", "push_sparse_v2", "push_dense"]
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)
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class DownpourSGD(DeviceWorker):
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"""
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DownpourSGD is a kind of distributed SGD algorithm.
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"""
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def __init__(self):
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"""
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Init.
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initialize downpourSGD device worker
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"""
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super().__init__()
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def _gen_worker_desc(self, trainer_desc):
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"""
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Generator worker desc, which device worker is DownpourWorker.
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Args:
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trainer_desc(TrainerDesc): a TrainerDesc object
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"""
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dense_table_set = set()
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program_id = str(id(self._program))
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if self._program is None:
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print("program of current device worker is not configured")
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sys.exit(-1)
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opt_info = self._program._fleet_opt
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program_configs = opt_info["program_configs"]
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downpour = trainer_desc.downpour_param
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for pid in program_configs:
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if pid == program_id:
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pc = downpour.program_config.add()
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pc.program_id = program_id
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for i in program_configs[program_id]["push_sparse"]:
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pc.push_sparse_table_id.extend([i])
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for i in program_configs[program_id]["push_dense"]:
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pc.push_dense_table_id.extend([i])
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dense_table_set.add(i)
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for i in program_configs[program_id]["pull_sparse"]:
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pc.pull_sparse_table_id.extend([i])
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for i in program_configs[program_id]["pull_dense"]:
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pc.pull_dense_table_id.extend([i])
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dense_table_set.add(i)
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# code for partial push dense table such as multitask
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if "cond2denseid" in program_configs[program_id]:
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cond2denseid = program_configs[program_id]["cond2denseid"]
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for key, value in cond2denseid.items():
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mc_map = pc.partial_pushdense_condtable_map.add()
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mc_map.key = key
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mc_map.value = value
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break
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trainer_desc.device_worker_name = opt_info.get(
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"worker_class", "DownpourWorker"
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)
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pull_thread = trainer_desc.pull_dense_param
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pull_thread.device_num = trainer_desc.thread_num
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if opt_info.get("program_id_to_worker") is None:
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raise ValueError("opt_info must have program_id_to_worker")
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prog_id_to_worker = opt_info["program_id_to_worker"]
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if prog_id_to_worker.get(program_id) is None:
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raise ValueError(f"{program_id} not found in program_id_to_worker")
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worker = opt_info["program_id_to_worker"][program_id]
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for i in worker.get_desc().dense_table:
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if i.table_id in dense_table_set:
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dense_table = pull_thread.dense_table.add()
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dense_table.dense_value_name.extend(i.dense_variable_name)
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dense_table.table_id = i.table_id
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sparse_len = len(worker.get_desc().sparse_table)
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for i in range(sparse_len):
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sparse_table = downpour.sparse_table.add()
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sparse_table.table_id = worker.get_desc().sparse_table[i].table_id
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sparse_table.sparse_key_name.extend(
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worker.get_desc().sparse_table[i].slot_key
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)
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sparse_table.sparse_value_name.extend(
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worker.get_desc().sparse_table[i].slot_value
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)
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sparse_table.sparse_grad_name.extend(
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worker.get_desc().sparse_table[i].slot_gradient
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)
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if (
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opt_info["use_cvm"]
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or "no_cvm" in opt_info
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and opt_info["no_cvm"] is True
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):
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sparse_table.emb_dim = self._fleet_desc.server_param.downpour_server_param.downpour_table_param[
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i
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].accessor.fea_dim
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sparse_table.fea_dim = sparse_table.emb_dim
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else:
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sparse_table.emb_dim = (
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self._fleet_desc.server_param.downpour_server_param.downpour_table_param[
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i
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].accessor.fea_dim
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- 2
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)
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sparse_table.fea_dim = sparse_table.emb_dim + 2
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# TODO(guru4elephant): hard code here, need to improve
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sparse_table.label_var_name = "click"
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if opt_info["stat_var_names"]:
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for i in opt_info["stat_var_names"]:
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downpour.stat_var_names.extend([i])
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for i in worker.get_desc().dense_table:
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if i.table_id in dense_table_set:
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dense_table = downpour.dense_table.add()
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dense_table.table_id = i.table_id
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dense_table.dense_value_name.extend(i.dense_variable_name)
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dense_table.dense_grad_name.extend(
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i.dense_gradient_variable_name
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)
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downpour.skip_ops.extend(worker.get_desc().skip_op)
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if self._infer:
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downpour.push_dense = False
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downpour.push_sparse = False
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class DownpourSGDOPT(DeviceWorker):
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"""
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DownpourSGDOPT is a kind of distributed SGD algorithm.
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"""
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def __init__(self):
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"""
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Init.
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initialize downpourSGDOPT device worker
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"""
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super().__init__()
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def _gen_worker_desc(self, trainer_desc):
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"""
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Generator worker desc, which device worker is DownpourWorker.
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Args:
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trainer_desc(TrainerDesc): a TrainerDesc object
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"""
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dense_table_set = set()
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program_id = str(id(self._program))
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if self._program is None:
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print("program of current device worker is not configured")
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sys.exit(-1)
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opt_info = self._program._fleet_opt
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program_configs = opt_info["program_configs"]
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downpour = trainer_desc.downpour_param
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for pid in program_configs:
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if pid == program_id:
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pc = downpour.program_config.add()
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pc.program_id = program_id
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for i in program_configs[program_id]["push_sparse"]:
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pc.push_sparse_table_id.extend([i])
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for i in program_configs[program_id]["push_dense"]:
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pc.push_dense_table_id.extend([i])
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dense_table_set.add(i)
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for i in program_configs[program_id]["pull_sparse"]:
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pc.pull_sparse_table_id.extend([i])
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for i in program_configs[program_id]["pull_dense"]:
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pc.pull_dense_table_id.extend([i])
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dense_table_set.add(i)
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break
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trainer_desc.device_worker_name = "DownpourWorkerOpt"
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pull_thread = trainer_desc.pull_dense_param
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pull_thread.device_num = trainer_desc.thread_num
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if opt_info.get("program_id_to_worker") is None:
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raise ValueError("opt_info must have program_id_to_worker")
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prog_id_to_worker = opt_info["program_id_to_worker"]
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if prog_id_to_worker.get(program_id) is None:
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raise ValueError(f"{program_id} not found in program_id_to_worker")
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worker = opt_info["program_id_to_worker"][program_id]
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for i in worker.get_desc().dense_table:
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if i.table_id in dense_table_set:
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dense_table = pull_thread.dense_table.add()
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dense_table.dense_value_name.extend(i.dense_variable_name)
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dense_table.table_id = i.table_id
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sparse_len = len(worker.get_desc().sparse_table)
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for i in range(sparse_len):
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sparse_table = downpour.sparse_table.add()
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sparse_table.table_id = worker.get_desc().sparse_table[i].table_id
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sparse_table.sparse_key_name.extend(
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worker.get_desc().sparse_table[i].slot_key
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)
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sparse_table.sparse_value_name.extend(
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worker.get_desc().sparse_table[i].slot_value
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)
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sparse_table.sparse_grad_name.extend(
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worker.get_desc().sparse_table[i].slot_gradient
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)
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if (
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opt_info["use_cvm"]
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or "no_cvm" in opt_info
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and opt_info["no_cvm"] is True
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):
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sparse_table.emb_dim = self._fleet_desc.server_param.downpour_server_param.downpour_table_param[
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i
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].accessor.fea_dim
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sparse_table.fea_dim = sparse_table.emb_dim
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else:
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sparse_table.emb_dim = (
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self._fleet_desc.server_param.downpour_server_param.downpour_table_param[
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i
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].accessor.fea_dim
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- 2
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)
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sparse_table.fea_dim = sparse_table.emb_dim + 2
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# TODO(guru4elephant): hard code here, need to improve
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sparse_table.label_var_name = "click"
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if (
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"local_tables" in opt_info
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and sparse_table.table_id in opt_info["local_tables"]
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):
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sparse_table.is_local = True
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if (
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"async_tables" in opt_info
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and sparse_table.table_id in opt_info["async_tables"]
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):
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sparse_table.is_async = True
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if opt_info["stat_var_names"]:
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for i in opt_info["stat_var_names"]:
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downpour.stat_var_names.extend([i])
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for i in worker.get_desc().dense_table:
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if i.table_id in dense_table_set:
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dense_table = downpour.dense_table.add()
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dense_table.table_id = i.table_id
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dense_table.dense_value_name.extend(i.dense_variable_name)
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dense_table.dense_grad_name.extend(
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i.dense_gradient_variable_name
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)
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downpour.skip_ops.extend(worker.get_desc().skip_op)
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if self._infer:
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downpour.push_dense = False
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downpour.push_sparse = False
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class Section(DeviceWorker):
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"""SectionWorker."""
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def __init__(self):
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"""Init."""
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super().__init__()
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def _gen_worker_desc(self, trainer_desc):
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"""
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Generator worker desc, which device worker is SectionWorker.
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Args:
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trainer_desc(TrainerDesc): a TrainerDesc object
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"""
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from . import core
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trainer_desc.device_worker_name = "SectionWorker"
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pipeline_opt = self._program._pipeline_opt
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section_param = trainer_desc.section_param
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section_param.num_microbatches = pipeline_opt["num_microbatches"]
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section_param.start_cpu_core_id = pipeline_opt["start_cpu_core_id"]
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section_param.pipeline_stage = pipeline_opt["pipeline_stage"]
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section_param.num_pipeline_stages = pipeline_opt["num_pipeline_stages"]
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schedule_mode_str = pipeline_opt["schedule_mode"]
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# F-then-B scheduler which runs Forward phase for all microbatches,
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# then runs Backward phase for all microbatches.
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# 1F1B scheduler, which runs forward phase and backward phase alternatively
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# after startup phase.
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assert schedule_mode_str in [
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"F-then-B",
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"1F1B",
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], "The schedule mode for pipeline must be one of F-then-B or 1F1B"
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schedule_mode = 0 if schedule_mode_str == "F-then-B" else 1
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section_param.schedule_mode = schedule_mode
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cfg = section_param.section_config
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program = pipeline_opt["section_program"]
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cfg.program_desc.ParseFromString(
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program._get_desc().serialize_to_string()
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)
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# TODO: why does not work
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# cfg.program_desc.CopyFrom(program.program._get_desc())
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place = pipeline_opt["place"]
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place_id = pipeline_opt["place_id"]
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if core.is_compiled_with_cuda():
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assert isinstance(place, core.CUDAPlace)
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cfg.place = cfg.CUDAPlace
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|
cfg.place_id = place_id
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|
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class HeterSection(DeviceWorker):
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"""HeterSectionWorker."""
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|
|
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def __init__(self):
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"""Init."""
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|
super().__init__()
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|
|
def _gen_worker_desc(self, trainer_desc):
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"""
|
|
Generator worker desc, which device worker is HeterSectionWorker.
|
|
Args:
|
|
trainer_desc(TrainerDesc): a TrainerDesc object
|
|
"""
|
|
|
|
trainer_desc.device_worker_name = "HeterSectionWorker"
|
|
heter_pipeline_opt = self._program._heter_pipeline_opt
|
|
heter_section_param = trainer_desc.heter_section_param
|
|
heter_section_param.num_microbatches = heter_pipeline_opt[
|
|
"num_microbatches"
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|
]
|
|
heter_section_param.pipeline_stage = heter_pipeline_opt[
|
|
"pipeline_stage"
|
|
]
|
|
heter_section_param.num_pipeline_stages = heter_pipeline_opt[
|
|
"num_pipeline_stages"
|
|
]
|
|
cfg = heter_section_param.section_config
|
|
program = heter_pipeline_opt["section_program"]
|
|
cfg.program_desc.ParseFromString(
|
|
program._get_desc().serialize_to_string()
|
|
)
|
|
|
|
|
|
class DeviceWorkerFactory:
|
|
def _create_device_worker(self, worker_type):
|
|
classname = worker_type.capitalize()
|
|
return globals()[classname]()
|