# Copyright (c) 2021 PaddlePaddle Authors. All Rights Reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License from .common import DistributedOperatorImplContainer from .common import DistributedOperatorImpl from .common import register_distributed_operator_impl_container from .common import gradient_synchronization from .common import register_distributed_operator_impl, is_parameter_related from ..utils import is_dim_shard from ..utils import is_dim_replicate from ..utils import is_valid_list_index, is_prim_op from ..utils import compute_compatible_dim_mapping from ..utils import compute_compatible_dims_mapping from ..utils import compute_compatible_and_update_dim_mapping from ..utils import set_dist_op_desc_original_id from ..dist_attribute import OperatorDistributedAttribute from paddle.fluid import core, unique_name from paddle.fluid.framework import _non_static_mode from paddle.fluid.framework import Program, Parameter, Variable, program_guard from paddle.fluid.data_feeder import check_variable_and_dtype, check_dtype from paddle.distributed.fleet.meta_optimizers.common import ( OpRole, OP_ROLE_KEY, OP_ROLE_VAR_KEY, ) from ..process_group import new_process_group from ..utils import _get_comm_group, _get_corresponding_rank from ..cost import _g_op_cost_factory from ..cost import build_comp_desc_from_dist_op, build_dp_costs from ..cost import build_comp_costs_from_descs __op_not_need_param_init__ = ["while", "cond"] __op_has_shape_attr__ = ["fill_constant_batch_size_like", "fill_constant"] def prim_operator_data_parallel_functor(ctx, src_op): dist_op_context = ctx.dist_op_context main_block = dist_op_context.work_block startup_block = dist_op_context.startup_block var_name = src_op.output_arg_names[0] if var_name in ctx.grads_params: assert ( var_name not in ctx.synced_gradient ), "in primtive mode, grad is already {} synced".format(var_name) ctx.synced_gradient.add(var_name) sync_group = new_process_group(ctx.data_parallel_group) allreduce_op = main_block.append_op( type='c_allreduce_sum', inputs={'X': [var_name]}, outputs={'Out': [var_name]}, attrs={ 'ring_id': sync_group.id, 'use_calc_stream': True, OP_ROLE_KEY: OpRole.Backward, }, ) param = ctx.grads_params[var_name] startup_block = dist_op_context.startup_block new_op = startup_block.append_op( type='c_broadcast', inputs={'X': [param]}, outputs={'Out': [param]}, attrs={ 'ring_id': sync_group.id, 'root': 0, 'use_calc_stream': True, OP_ROLE_KEY: OpRole.Forward, }, ) grad_var = main_block.var(var_name) dims_mapping = ctx.get_tensor_dist_attr_for_program( grad_var ).dims_mapping dist_attr = ctx.get_op_dist_attr_for_program(src_op) process_mesh = dist_attr.process_mesh op_attr = OperatorDistributedAttribute() op_attr.process_mesh = process_mesh op_attr.set_output_dims_mapping(grad_var.name, dims_mapping) op_attr.set_input_dims_mapping(grad_var.name, dims_mapping) ctx.set_op_dist_attr_for_program(allreduce_op, op_attr) return class DistributedDefault(DistributedOperatorImplContainer): def __init__(self, op_type): super(DistributedDefault, self).__init__(op_type) register_distributed_operator_impl_container(DistributedDefault("default")) # Replicated Default class DistributedDefaultImpl0(DistributedOperatorImpl): def __init__(self, name): super(DistributedDefaultImpl0, self).__init__(name) self._forward_implemented = True self._backward_implemented = True def calc_cost(self, op_role, dist_op, ctx, cluster): """Calculate the cost by the op role.""" cost = None if int(op_role) == int(OpRole.Backward): cost = self.calc_bwd_cost(dist_op, ctx, cluster) else: cost = self.calc_fwd_cost(dist_op, ctx, cluster) assert cost is not None return cost def calc_fwd_cost(self, dist_op, ctx, cluster): # calc comp op cost desc_mapping = build_comp_desc_from_dist_op( dist_op=dist_op, dist_context=ctx ) processes = dist_op.dist_attr.process_mesh.processes op_type = dist_op.serial_op.type cost_mapping = build_comp_costs_from_descs( _g_op_cost_factory[op_type], ctx, processes, desc_mapping, cluster ) res_cost = [cost_mapping] return res_cost def calc_bwd_cost(self, dist_op, ctx, cluster): # calc comp op cost res = [] desc_mapping = build_comp_desc_from_dist_op( dist_op=dist_op, dist_context=ctx ) dist_attr = dist_op.dist_attr process_mesh = dist_attr.process_mesh processes = process_mesh.processes backward_op = dist_op.serial_op op_type = backward_op.type cost_mapping = build_comp_costs_from_descs( _g_op_cost_factory[op_type], ctx, processes, desc_mapping, cluster ) res.append(cost_mapping) main_block = backward_op.block vars = main_block.vars need_gradient_allreduce = False for input_name in backward_op.desc.input_names(): for varname in backward_op.desc.input(input_name): if "@GRAD" not in varname and not is_parameter_related( varname, main_block ): var_dim_mapping = dist_attr.get_input_dims_mapping(varname) mesh_shape = process_mesh.topology batch_size_axis = var_dim_mapping[0] if batch_size_axis > -1 and mesh_shape[batch_size_axis] > 1: need_gradient_allreduce = True break if need_gradient_allreduce: for input_name in backward_op.desc.input_names(): for varname in backward_op.desc.input(input_name): if "@GRAD" not in varname and is_parameter_related( varname, main_block ): var_dim_mapping = dist_attr.get_input_dims_mapping( varname ) mesh_shape = process_mesh.topology batch_size_axis = var_dim_mapping[0] parallel_axis = batch_size_axis attrs = {"use_calc_stream": True} var_names = [varname + "@GRAD"] build_dp_costs( res, dist_op, ctx, var_names, attrs, parallel_axis, cluster, ) return res def is_input_compatible(self, dist_op): op_desc = dist_op.serial_op.desc op_dist_attr = dist_op.dist_attr batch_dim_mappings = [] input_names = op_desc.input_names() xshape_arg_names = [] if "XShape" in input_names: xshape_arg_names = op_desc.input("XShape") for arg_name in op_desc.input_arg_names(): serial_tensor = dist_op.get_serial_input(arg_name) dims_mapping = op_dist_attr.get_input_dims_mapping(arg_name) if serial_tensor.is_parameter: for mapping in dims_mapping: if mapping != -1: return False continue if arg_name not in xshape_arg_names: if len(dims_mapping) > 1: for mapping in dims_mapping[1:]: if mapping != -1: return False if len(dims_mapping) >= 1: batch_dim_mappings.append(dims_mapping[0]) else: if dims_mapping[0] != -1: return False if len(dims_mapping) > 2: for mapping in dims_mapping[2:]: if mapping != -1: return False if len(dims_mapping) >= 2: batch_dim_mappings.append(dims_mapping[1]) if compute_compatible_dim_mapping(batch_dim_mappings) is None: return False return True def is_output_compatible(self, dist_op): op_desc = dist_op.serial_op.desc op_dist_attr = dist_op.dist_attr output_names = op_desc.output_names() batch_dim_mappings = [] xshape_arg_names = [] if "XShape" in output_names: xshape_arg_names = op_desc.output("XShape") for arg_name in op_desc.output_arg_names(): serial_tensor = dist_op.get_serial_output(arg_name) dims_mapping = op_dist_attr.get_output_dims_mapping(arg_name) if serial_tensor.is_parameter: for mapping in dims_mapping: if mapping != -1: return False continue if arg_name not in xshape_arg_names: if len(dims_mapping) > 1: for mapping in dims_mapping[1:]: if mapping != -1: return False if len(dims_mapping) >= 1: batch_dim_mappings.append(dims_mapping[0]) else: if dims_mapping[0] != -1: return False if len(dims_mapping) > 2: for mapping in dims_mapping[2:]: if mapping != -1: return False if len(dims_mapping) >= 2: batch_dim_mappings.append(dims_mapping[1]) if compute_compatible_dim_mapping(batch_dim_mappings) is None: return False return True def is_auto_compatible(self, dist_op): op_desc = dist_op.serial_op.desc op_dist_attr = dist_op.dist_attr batch_dim_mappings = [] # Check input compatibility input_names = op_desc.input_names() xshape_arg_names = [] if "XShape" in input_names: xshape_arg_names = op_desc.input("XShape") for arg_name in op_desc.input_arg_names(): serial_tensor = dist_op.get_serial_input(arg_name) dims_mapping = op_dist_attr.get_input_dims_mapping(arg_name) if serial_tensor is not None and serial_tensor.is_parameter: for mapping in dims_mapping: if mapping != -1: return False continue if arg_name not in xshape_arg_names: if len(dims_mapping) > 1: for mapping in dims_mapping[1:]: if mapping != -1: return False if len(dims_mapping) >= 1: batch_dim_mappings.append(dims_mapping[0]) else: if dims_mapping[0] != -1: return False if len(dims_mapping) > 2: for mapping in dims_mapping[2:]: if mapping != -1: return False if len(dims_mapping) >= 2: batch_dim_mappings.append(dims_mapping[1]) # Check output compatibility output_names = op_desc.output_names() xshape_arg_names = [] if "XShape" in output_names: xshape_arg_names = op_desc.output("XShape") for arg_name in op_desc.output_arg_names(): serial_tensor = dist_op.get_serial_output(arg_name) dims_mapping = op_dist_attr.get_output_dims_mapping(arg_name) if serial_tensor is not None and serial_tensor.is_parameter: for mapping in dims_mapping: if mapping != -1: return False continue if arg_name not in xshape_arg_names: if len(dims_mapping) > 1: for mapping in dims_mapping[1:]: if mapping != -1: return False if len(dims_mapping) >= 1: batch_dim_mappings.append(dims_mapping[0]) else: if dims_mapping[0] != -1: return False if len(dims_mapping) > 2: for mapping in dims_mapping[2:]: if mapping != -1: return False if len(dims_mapping) >= 2: batch_dim_mappings.append(dims_mapping[1]) # Check batch dim mapping compatibility if not all( batch_dim_mappings[0] == dim_mapping for dim_mapping in batch_dim_mappings ): return False return True def update_dims_mapping(self, dist_op): changed = False op_desc = dist_op.serial_op.desc op_dist_attr = dist_op.dist_attr if op_desc.type() == "while": return False input_names = op_desc.input_names() input_xshape_arg_names = [] if "XShape" in input_names: input_xshape_arg_names = op_desc.input("XShape") output_names = op_desc.output_names() output_xshape_arg_names = [] if "XShape" in output_names: output_xshape_arg_names = op_desc.output("XShape") batch_dim_mappings = [] for arg_name in op_desc.input_arg_names(): serial_tensor = dist_op.get_serial_input(arg_name) if serial_tensor.is_parameter: continue dims_mapping = op_dist_attr.get_input_dims_mapping(arg_name) if arg_name not in input_xshape_arg_names: if len(dims_mapping) >= 1: batch_dim_mappings.append(dims_mapping[0]) else: batch_dim_mappings.append(dims_mapping[1]) for arg_name in op_desc.output_arg_names(): if op_desc.type() == 'fill_any_like': input_tensor = dist_op.get_serial_input( op_desc.input_arg_names()[0] ) if input_tensor.is_parameter: continue serial_tensor = dist_op.get_serial_output(arg_name) if serial_tensor.is_parameter: continue dims_mapping = op_dist_attr.get_output_dims_mapping(arg_name) if arg_name not in output_xshape_arg_names: if len(dims_mapping) >= 1: batch_dim_mappings.append(dims_mapping[0]) else: batch_dim_mappings.append(dims_mapping[1]) if not batch_dim_mappings: return changed compatible_dim_mapping = compute_compatible_dim_mapping( batch_dim_mappings ) if compatible_dim_mapping is None: return False for arg_name in op_desc.input_arg_names(): serial_tensor = dist_op.get_serial_input(arg_name) if serial_tensor.is_parameter: continue dims_mapping = op_dist_attr.get_input_dims_mapping(arg_name) if arg_name not in input_xshape_arg_names: if ( len(dims_mapping) >= 1 and compatible_dim_mapping != dims_mapping[0] ): dims_mapping[0] = compatible_dim_mapping changed = True else: if ( len(dims_mapping) >= 2 and compatible_dim_mapping != dims_mapping[1] ): dims_mapping[1] = compatible_dim_mapping changed = True for arg_name in op_desc.output_arg_names(): if op_desc.type() == 'fill_any_like': input_tensor = dist_op.get_serial_input( op_desc.input_arg_names()[0] ) if input_tensor.is_parameter: continue if op_desc.type() in ["shape", "slice"]: continue serial_tensor = dist_op.get_serial_output(arg_name) if serial_tensor.is_parameter: continue dims_mapping = op_dist_attr.get_output_dims_mapping(arg_name) if arg_name not in output_xshape_arg_names: if ( len(dims_mapping) >= 1 and compatible_dim_mapping != dims_mapping[0] ): dims_mapping[0] = compatible_dim_mapping changed = True else: if ( len(dims_mapping) >= 2 and compatible_dim_mapping != dims_mapping[1] ): dims_mapping[1] = compatible_dim_mapping changed = True return changed @staticmethod def forward(ctx, *args, **kwargs): dist_op_context = ctx.dist_op_context main_block = dist_op_context.work_block startup_block = dist_op_context.startup_block src_op = dist_op_context.cur_src_op rank_id = dist_op_context.rank_id # check validation of inputs / outputs for input_name in src_op.desc.input_names(): assert input_name in kwargs, "input [{}] is not given".format( input_name ) assert len(kwargs[input_name]) == len( src_op.desc.input(input_name) ), "number of tensor for input [{}] is not match".format(input_name) for output_name in src_op.desc.output_names(): assert output_name in kwargs, "input [{}] is not given".format( output_name ) assert len(kwargs[output_name]) == len( src_op.desc.output(output_name) ), "number of tensor for input [{}] is not match".format( output_name ) # replicate op in dist program dist_op_desc = main_block.append_op(type='nop').desc dist_op_desc.copy_from(src_op.desc) set_dist_op_desc_original_id(dist_op_desc, src_op.desc, ctx) for input_name in src_op.desc.input_names(): dist_op_desc.set_input(input_name, kwargs[input_name]) for output_name in src_op.desc.output_names(): dist_op_desc.set_output(output_name, kwargs[output_name]) if ( src_op.has_attr('shape') and src_op.attr('shape') and src_op.type in __op_has_shape_attr__ ): shape_list = src_op.attr('shape') Out_var = main_block._var_recursive(kwargs['Out'][0]) op_dist_attr = ctx.get_op_dist_attr_for_program(src_op) dim_mapping = op_dist_attr.get_output_dims_mapping(Out_var.name) process_mesh_shape = op_dist_attr.process_mesh.shape assert len(shape_list) == len(dim_mapping) # modify target shape for idx, axis in enumerate(dim_mapping): if axis >= 0: if len(shape_list) > idx: shape_list[idx] = ( shape_list[idx] // process_mesh_shape[axis] ) dist_op_desc._set_attr('shape', shape_list) # data parallel synchronization for primtive operators from paddle.incubate.autograd import prim_enabled if prim_enabled(): assert is_prim_op(src_op) prim_operator_data_parallel_functor(ctx, src_op) return # param initialization sync if src_op.type in __op_not_need_param_init__: return for varname in dist_op_desc.input_arg_names(): if ( startup_block.has_var(varname) and startup_block.var(varname).is_parameter and varname not in dist_op_context.already_init_sync_vars ): dist_op_context.already_init_sync_vars.add(varname) param = startup_block.var(varname) param_dist_attr = ctx.get_tensor_dist_attr_for_program(param) process_mesh = param_dist_attr.process_mesh dims_mapping = param_dist_attr.dims_mapping # FIXME (JZ-LIANG) Remove this hack to support any op mesh group for Pipeline Parallelism if rank_id not in process_mesh.processes: rank_id = _get_corresponding_rank( ctx, process_mesh, rank_id ) # NOTE all not splited axis should be presented in mesh for axis, size in enumerate(process_mesh.topology): if size <= 1 or axis in dims_mapping: pass else: group_ranks = _get_comm_group( process_mesh.processes, process_mesh.topology, axis, rank_id, ) sync_group = new_process_group(group_ranks) new_op = startup_block.append_op( type='c_broadcast', inputs={'X': param}, outputs={'Out': param}, attrs={ 'ring_id': sync_group.id, 'root': 0, 'use_calc_stream': True, OP_ROLE_KEY: OpRole.Forward, }, ) # set distributed attribute op_attr = OperatorDistributedAttribute() op_attr.process_mesh = process_mesh op_attr.set_output_dims_mapping( param.name, dims_mapping ) op_attr.set_input_dims_mapping(param.name, dims_mapping) ctx.set_op_dist_attr_for_program(new_op, op_attr) @staticmethod def backward(ctx, *args, **kwargs): # by now the backward function only insert the gradient allreduce for dist op itself dist_op_context = ctx.dist_op_context main_block = dist_op_context.work_block backward_op = dist_op_context.cur_src_op dist_attr = ctx.get_op_dist_attr_for_program(backward_op) assert ( dist_attr is not None ), "backward op [{}] don't have dist attribute !".format( str(backward_op) ) rank_id = dist_op_context.rank_id # check validation of inputs / outputs for input_name in backward_op.desc.input_names(): assert input_name in kwargs, "input [{}] is not given".format( input_name ) assert len(kwargs[input_name]) == len( backward_op.desc.input(input_name) ), "number of tensor for input [{}] is not match".format(input_name) for output_name in backward_op.desc.output_names(): assert output_name in kwargs, "input [{}] is not given".format( output_name ) assert len(kwargs[output_name]) == len( backward_op.desc.output(output_name) ), "number of tensor for input [{}] is not match".format( output_name ) # replicate op in dist program dist_op_desc = main_block.append_op(type='nop').desc dist_op_desc.copy_from(backward_op.desc) # Refer to the related dist op set_dist_op_desc_original_id(dist_op_desc, backward_op.desc, ctx) for input_name in backward_op.desc.input_names(): dist_op_desc.set_input(input_name, kwargs[input_name]) for output_name in backward_op.desc.output_names(): dist_op_desc.set_output(output_name, kwargs[output_name]) # data parallel gradient synchronization act_grad_names = [] for input_name in backward_op.desc.input_names(): for varname in backward_op.desc.input(input_name): if "@GRAD" not in varname and not is_parameter_related( varname, main_block ): act_grad_names.append(varname) out_grad_names = [] for output_name in backward_op.desc.output_names(): for varname in backward_op.desc.output(output_name): if varname in kwargs["grad_var_to_var"]: fwd_name = kwargs["grad_var_to_var"][varname] if fwd_name not in main_block.vars: continue if is_parameter_related(fwd_name, main_block): out_grad_names.append(varname) gradient_synchronization( ctx, backward_op, act_grad_names, out_grad_names, rank_id ) register_distributed_operator_impl( "default", DistributedDefaultImpl0("replicate_parallel") )