601 lines
22 KiB
Python
601 lines
22 KiB
Python
# Copyright (c) 2021 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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import collections
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import logging
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import struct
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import numpy as np
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import paddle
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from paddle.base import core, framework, global_scope
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from paddle.base.log_helper import get_logger
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from paddle.base.wrapped_decorator import signature_safe_contextmanager
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from ..fp16_utils import (
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_rename_arg,
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_rename_op_input,
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find_true_post_op,
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find_true_prev_op,
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)
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from .amp_lists import AutoMixedPrecisionListsBF16
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_logger = get_logger(
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__name__, logging.INFO, fmt='%(asctime)s-%(levelname)s: %(message)s'
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)
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_valid_types = [
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core.VarDesc.VarType.DENSE_TENSOR,
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core.VarDesc.VarType.SELECTED_ROWS,
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core.VarDesc.VarType.DENSE_TENSOR_ARRAY,
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]
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_bf16_guard_pattern = "__use_bf16__"
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def convert_float_to_uint16(in_list):
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in_list = np.asarray(in_list)
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out = np.vectorize(
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lambda x: struct.unpack('<I', struct.pack('<f', x))[0] >> 16,
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otypes=[np.uint16],
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)(in_list.flat)
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return np.reshape(out, in_list.shape)
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def _dtype_to_str(dtype):
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"""
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Convert specific variable type to its corresponding string.
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Args:
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dtype (VarType): Variable type.
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"""
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if dtype == paddle.bfloat16:
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return 'bf16'
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else:
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return 'fp32'
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def _insert_cast_op(block, op, idx, src_dtype, dest_dtype):
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"""
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Insert cast op and rename args of input and output.
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Args:
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block (Program): The block in which the operator is.
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op (Operator): The operator to insert cast op.
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idx (int): The index of current operator.
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src_dtype (VarType): The input variable dtype of cast op.
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dest_dtype (VarType): The output variable dtype of cast op.
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Returns:
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num_cast_op (int): The number of cast ops that have been inserted.
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"""
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num_cast_ops = 0
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for in_name in op.input_names:
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if src_dtype == paddle.float32 and op.type in [
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'batch_norm',
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'fused_bn_add_activation',
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'layer_norm',
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]:
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if in_name not in {'X', 'Z'}:
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continue
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for in_var_name in op.input(in_name):
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in_var = block.var(in_var_name)
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if in_var.type not in _valid_types or in_var.dtype == dest_dtype:
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continue
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if in_var.dtype == src_dtype:
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cast_name = in_var.name + '.cast_' + _dtype_to_str(dest_dtype)
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out_var = block.vars.get(cast_name)
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if out_var is None or out_var.dtype != dest_dtype:
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out_var = block.create_var(
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name=cast_name,
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dtype=dest_dtype,
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persistable=False,
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stop_gradient=in_var.stop_gradient,
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)
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block._insert_op(
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idx,
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type="cast",
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inputs={"X": in_var},
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outputs={"Out": out_var},
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attrs={
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"in_dtype": in_var.dtype,
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"out_dtype": out_var.dtype,
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},
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)
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num_cast_ops += 1
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_rename_arg(op, in_var.name, out_var.name)
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else:
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if op.has_attr('in_dtype'):
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op._set_attr('in_dtype', dest_dtype)
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if src_dtype == paddle.float32 and dest_dtype == paddle.bfloat16:
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for out_name in op.output_names:
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if (
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op.type
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in ['batch_norm', 'fused_bn_add_activation', 'layer_norm']
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and out_name != 'Y'
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):
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continue
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for out_var_name in op.output(out_name):
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out_var = block.var(out_var_name)
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if out_var.type not in _valid_types:
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continue
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if out_var.dtype == paddle.float32:
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out_var.desc.set_dtype(core.VarDesc.VarType.BF16)
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if op.has_attr('out_dtype'):
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op._set_attr('out_dtype', core.VarDesc.VarType.BF16)
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return num_cast_ops
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def _insert_cast_post_op(
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block, op, idx, src_dtype, dest_dtype, target_name, op_var_rename_map
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):
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num_cast_ops = 0
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target_var = block.var(target_name)
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if target_var.type not in _valid_types or target_var.dtype == dest_dtype:
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return num_cast_ops
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assert target_var.dtype == src_dtype, (
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f"The real dtype({_dtype_to_str(target_var.dtype)}) is not equal to the src dtype({_dtype_to_str(src_dtype)})"
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)
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cast_name = target_var.name + '.cast_' + _dtype_to_str(dest_dtype)
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cast_var = block.vars.get(cast_name)
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if cast_var is None or cast_var.dtype != dest_dtype:
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cast_var = block.create_var(
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name=cast_name,
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dtype=dest_dtype,
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persistable=False,
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stop_gradient=target_var.stop_gradient,
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)
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block._insert_op(
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idx,
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type="cast",
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inputs={"X": target_var},
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outputs={"Out": cast_var},
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attrs={"in_dtype": target_var.dtype, "out_dtype": cast_var.dtype},
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)
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num_cast_ops += 1
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op_var_rename_map[block.idx][target_var.name] = cast_var.name
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return num_cast_ops
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def _is_in_fp32_varnames(op, amp_lists):
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if not amp_lists.fp32_varnames:
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return False
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for in_name in op.input_arg_names:
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if in_name in amp_lists.fp32_varnames:
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return True
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for out_name in op.output_arg_names:
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if out_name in amp_lists.fp32_varnames:
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return True
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return False
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def _need_keep_fp32(op, unsupported_op_list, use_bf16_guard):
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if op.type in unsupported_op_list:
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# the highest priority condition: If ops don't have bf16 computing kernels,
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# they must be executed in fp32 calculation pattern.
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return True
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# process ops about learning rate
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in_out_arg_names = []
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in_out_arg_names.extend(list(op.input_arg_names))
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in_out_arg_names.extend(list(op.output_arg_names))
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for name in in_out_arg_names:
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if "learning_rate" in name:
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return True
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if use_bf16_guard:
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if op.has_attr("op_namescope") and (
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_bf16_guard_pattern in op.attr("op_namescope")
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):
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# op in bf16 guard
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return False
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else:
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# op not in bf16 guard
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return True
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else:
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return False
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@signature_safe_contextmanager
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def bf16_guard():
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"""
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As for the pure bf16 training, if users set `use_bf16_guard` to True,
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only those ops created in the context manager `bf16_guard` will be
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transformed as float16 type.
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Examples:
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.. code-block:: pycon
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>>> import numpy as np
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>>> import paddle
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>>> import paddle.nn.functional as F
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>>> paddle.enable_static()
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>>> data = paddle.static.data(name='X', shape=[None, 1, 28, 28], dtype='float32')
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>>> conv2d = paddle.static.nn.conv2d(input=data, num_filters=6, filter_size=3)
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>>> with paddle.static.amp.bf16.bf16_guard():
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... bn = paddle.static.nn.batch_norm(input=conv2d, act="relu")
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... pool = F.max_pool2d(bn, kernel_size=2, stride=2)
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... hidden = paddle.static.nn.fc(pool, size=10)
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... loss = paddle.mean(hidden)
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"""
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with framework.name_scope(prefix=_bf16_guard_pattern):
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yield
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def are_post_ops_bf16(post_ops, keep_fp32_ops):
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for post_op in post_ops:
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for op in post_op:
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if op in keep_fp32_ops:
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return False
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return True
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def cast_initializers_to_bf16(
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startup_prog,
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amp_lists,
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block,
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all_ops,
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keep_fp32_ops,
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to_bf16_var_names=None,
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):
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prepend_ops = startup_prog.global_block().ops
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for op in prepend_ops:
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if str(op.type) in amp_lists.bf16_initializer_list:
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change_op = True
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op_post_ops = []
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op_out_vars = []
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for out_name in op.output_names:
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for out_var_name in op.output(out_name):
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out_var = block.var(out_var_name)
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post_op = find_true_post_op(all_ops, op, out_var_name, True)
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if out_var is None or out_var.type not in _valid_types:
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change_op = False
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break
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op_post_ops.append(post_op)
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op_out_vars.append(out_var)
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if change_op and are_post_ops_bf16(op_post_ops, keep_fp32_ops):
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for out_var in op_out_vars:
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if out_var.dtype == paddle.float32:
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out_var.desc.set_dtype(core.VarDesc.VarType.BF16)
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if (
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to_bf16_var_names is not None
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and out_var.name in to_bf16_var_names
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):
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to_bf16_var_names.remove(out_var.name)
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if (
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op.has_attr('dtype')
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and op.attr('dtype') == core.VarDesc.VarType.FP32
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):
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op._set_attr('dtype', core.VarDesc.VarType.BF16)
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def cast_model_to_bf16(
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program, startup_prog=None, amp_lists=None, use_bf16_guard=True
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):
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"""
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Traverse all ops in the whole model and set their inputs and outputs
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to the bf16 data type. This function will do some special processing for
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the batch normalization, which will keep the batchnorm's computations in FP32.
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Args:
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program (Program): The used program.
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amp_lists (AutoMixedPrecisionListsBF16): An AutoMixedPrecisionListsBF16 object.
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use_bf16_guard(bool): Determine whether to use `bf16_guard` when
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constructing the program. Default True.
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"""
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if amp_lists is None:
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amp_lists = AutoMixedPrecisionListsBF16()
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global_block = program.global_block()
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keep_fp32_ops = set()
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to_bf16_var_names = set()
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to_bf16_pre_cast_ops = set()
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origin_ops = []
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for block in program.blocks:
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origin_ops.extend(block.ops)
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for block in program.blocks:
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ops = block.ops
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for op in ops:
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if op.type == 'create_py_reader' or op.type == 'read':
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continue
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if _need_keep_fp32(op, amp_lists.unsupported_list, use_bf16_guard):
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keep_fp32_ops.add(op)
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continue # processed below
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for in_name in op.input_names:
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if op.type in {
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'batch_norm',
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'fused_bn_add_activation',
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'layer_norm',
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} and in_name not in {'X', 'Z'}:
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continue
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for in_var_name in op.input(in_name):
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in_var = None
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try:
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in_var = block.var(in_var_name)
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except ValueError as e:
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_logger.debug(
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f"-- {e}, try to get it in the global block --"
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)
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in_var = global_block.var(in_var_name)
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if in_var is not None:
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_logger.debug(
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f"-- var {in_var_name} is got in the global block --"
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)
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if in_var is None or in_var.type not in _valid_types:
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continue
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if in_var.dtype == paddle.float32:
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in_var.desc.set_dtype(core.VarDesc.VarType.BF16)
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to_bf16_var_names.add(in_var_name)
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_logger.debug(
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f"-- op type: {op.type}, in var name: {in_var_name}, in var dtype: {in_var.dtype} --"
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)
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for out_name in op.output_names:
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if (
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op.type
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in {'batch_norm', 'fused_bn_add_activation', 'layer_norm'}
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and out_name != 'Y'
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):
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continue
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for out_var_name in op.output(out_name):
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out_var = None
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try:
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out_var = block.var(out_var_name)
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except ValueError as e:
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_logger.debug(
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f"-- {e}, try to get it in the global block --"
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)
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out_var = global_block.var(out_var_name)
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if out_var is not None:
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_logger.debug(
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f"-- var {out_var_name} is got in the global block --"
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)
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if out_var is None or out_var.type not in _valid_types:
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continue
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if out_var.dtype == paddle.float32:
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out_var.desc.set_dtype(core.VarDesc.VarType.BF16)
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_logger.debug(
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f"-- op type: {op.type}, out var name: {out_var_name}, out var dtype: {out_var.dtype} --"
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)
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for attr_name in ['in_dtype', 'out_dtype', 'dtype']:
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if (
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op.has_attr(attr_name)
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and op.attr(attr_name) == paddle.float32
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):
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op._set_attr(attr_name, core.VarDesc.VarType.BF16)
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if startup_prog is not None:
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cast_initializers_to_bf16(
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startup_prog,
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amp_lists,
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global_block,
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ops,
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keep_fp32_ops,
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to_bf16_var_names,
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)
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# process ops in keep_fp32_ops
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op_var_rename_map = [
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collections.OrderedDict() for _ in range(len(program.blocks))
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]
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for block in program.blocks:
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ops = block.ops
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idx = 0
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while idx < len(ops):
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op = ops[idx]
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num_cast_ops = 0
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if op not in keep_fp32_ops:
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if op in to_bf16_pre_cast_ops:
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in_var_cast_num = _insert_cast_op(
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block,
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op,
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idx,
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core.VarDesc.VarType.FP32,
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core.VarDesc.VarType.BF16,
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)
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num_cast_ops += in_var_cast_num
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else:
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pre_cast_num = _insert_cast_op(
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block,
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op,
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idx,
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core.VarDesc.VarType.BF16,
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core.VarDesc.VarType.FP32,
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)
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num_cast_ops += pre_cast_num
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for out_var_name in op.output_arg_names:
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out_var = block.vars.get(out_var_name)
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if out_var is None or out_var.type not in _valid_types:
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continue
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if out_var.dtype == paddle.bfloat16:
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out_var.desc.set_dtype(core.VarDesc.VarType.FP32)
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post_ops = find_true_post_op(ops, op, out_var_name)
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for post_op in post_ops:
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if post_op in keep_fp32_ops:
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continue
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post_cast_num = _insert_cast_post_op(
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block,
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op,
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idx + pre_cast_num + 1,
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core.VarDesc.VarType.FP32,
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core.VarDesc.VarType.BF16,
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out_var_name,
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op_var_rename_map,
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)
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num_cast_ops += post_cast_num
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idx += num_cast_ops + 1
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_rename_op_input(program, op_var_rename_map, origin_ops, keep_fp32_ops)
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return to_bf16_var_names
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def cast_parameters_to_bf16(place, program, scope=None, to_bf16_var_names=None):
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"""
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Traverse all parameters in the whole model and set them to the BF16 data type.
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Whereas, this function will keep parameters of batchnorms in FP32.
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Args:
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place(base.CPUPlace|base.CUDAPlace): `place` is used to restore the BF16 weight tensors.
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program (Program): The used program.
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scope(base.Scope, optional): `scope` is used to get the FP32 weight tensor values.
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Default is None.
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to_bf16_var_names(set|list, optional): The data types of vars in `to_bf16_var_names`
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will be set to BF16. Usually, it is the returned
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value of `cast_model_to_bf16` API.
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"""
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all_parameters = []
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for block in program.blocks:
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all_parameters.extend(block.all_parameters())
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bf16_var_names = to_bf16_var_names if to_bf16_var_names else set()
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var_scope = scope if scope else global_scope()
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for param in all_parameters:
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if param.name in bf16_var_names:
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_logger.debug(f"---- cast {param.name} to bf16 dtype ----")
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param_t = var_scope.find_var(param.name).get_tensor()
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data = np.array(param_t)
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param_t.set(convert_float_to_uint16(data), place)
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def rewrite_program_bf16(main_prog, amp_lists=None):
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"""
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Traverse all ops in current block and insert cast op according to
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which set current op belongs to.
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1. When an op belongs to the fp32 list, add it to fp32 set
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2. When an op belongs to the bf16 list, add it to bf16 set
|
|
3. When an op belongs to the gray list. If one
|
|
of its inputs is the output of fp32 set op or fp32 list op,
|
|
add it to fp32 set. If all of its previous ops are not fp32
|
|
op and one of its inputs is the output of bf16 set op or
|
|
bf16 list op, add it to bf16 set.
|
|
4. When an op isn't in the lists, add it to fp32 op set.
|
|
5. Add necessary cast ops to make sure that fp32 set op will be
|
|
computed in fp32 mode, while bf16 set op will be computed in
|
|
bf16 mode.
|
|
|
|
Args:
|
|
main_prog (Program): The main program for training.
|
|
"""
|
|
if amp_lists is None:
|
|
amp_lists = AutoMixedPrecisionListsBF16()
|
|
block = main_prog.global_block()
|
|
ops = block.ops
|
|
bf16_op_set = set()
|
|
fp32_op_set = set()
|
|
for op in ops:
|
|
# NOTE(zhiqiu): 'create_py_reader' and 'read' is used in non-iterable DataLoader,
|
|
# we don't need to handle reader op and the input of 'create_py_reader' is not
|
|
# in block, which may result in errors.
|
|
# See GeneratorLoader._init_non_iterable() for details.
|
|
if op.type == 'create_py_reader' or op.type == 'read':
|
|
continue
|
|
|
|
if amp_lists.fp32_varnames is not None and _is_in_fp32_varnames(
|
|
op, amp_lists
|
|
):
|
|
fp32_op_set.add(op)
|
|
continue
|
|
|
|
if op.type in amp_lists.fp32_list:
|
|
fp32_op_set.add(op)
|
|
elif op.type in amp_lists.bf16_list:
|
|
bf16_op_set.add(op)
|
|
elif op.type in amp_lists.gray_list:
|
|
is_fp32_op = False
|
|
is_bf16_op = False
|
|
for in_name in op.input_names:
|
|
# if this op has inputs
|
|
if in_name:
|
|
for in_var_name in op.input(in_name):
|
|
in_var = block.var(in_var_name)
|
|
# this in_var isn't the output of other op
|
|
if in_var.op is None:
|
|
continue
|
|
elif in_var.op is op:
|
|
prev_op = find_true_prev_op(ops, op, in_var_name)
|
|
if prev_op is None:
|
|
continue
|
|
else:
|
|
prev_op = in_var.op
|
|
# if it's one of inputs
|
|
if (
|
|
prev_op in fp32_op_set
|
|
or prev_op.type in amp_lists.fp32_list
|
|
):
|
|
is_fp32_op = True
|
|
elif (
|
|
prev_op in bf16_op_set
|
|
or prev_op.type in amp_lists.bf16_list
|
|
):
|
|
is_bf16_op = True
|
|
if is_fp32_op:
|
|
fp32_op_set.add(op)
|
|
elif is_bf16_op:
|
|
bf16_op_set.add(op)
|
|
else:
|
|
pass
|
|
else:
|
|
# For numerical safe, we apply fp32 computation on ops that
|
|
# are not determined which list they should stay.
|
|
fp32_op_set.add(op)
|
|
|
|
idx = 0
|
|
while idx < len(ops):
|
|
op = ops[idx]
|
|
num_cast_ops = 0
|
|
if op in fp32_op_set:
|
|
num_cast_ops = _insert_cast_op(
|
|
block,
|
|
op,
|
|
idx,
|
|
core.VarDesc.VarType.BF16,
|
|
core.VarDesc.VarType.FP32,
|
|
)
|
|
elif op in bf16_op_set:
|
|
if (
|
|
op.has_attr('dtype')
|
|
and op.attr('dtype') == core.VarDesc.VarType.FP32
|
|
):
|
|
op._set_attr('dtype', core.VarDesc.VarType.BF16)
|
|
|
|
num_cast_ops = _insert_cast_op(
|
|
block,
|
|
op,
|
|
idx,
|
|
core.VarDesc.VarType.FP32,
|
|
core.VarDesc.VarType.BF16,
|
|
)
|
|
else:
|
|
pass
|
|
|
|
idx += num_cast_ops + 1
|