Files
2026-07-13 12:40:42 +08:00

133 lines
3.9 KiB
Python

# Copyright (c) 2019 PaddlePaddle Authors. All Rights Reserve.
#
# 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.
import numpy as np
SEED = 2020
def build_fake_sentence(seed):
random = np.random.RandomState(seed)
sentence_len = random.randint(5, 15)
token_ids = [random.randint(0, 1000) for _ in range(sentence_len - 1)]
return token_ids
def get_data_iter(batch_size, mode='train', cache_num=20):
self_random = np.random.RandomState(SEED)
def to_pad_np(data, source=False):
max_len = 0
bs = min(batch_size, len(data))
for ele in data:
if len(ele) > max_len:
max_len = len(ele)
ids = np.ones((bs, max_len), dtype='int64') * 2
mask = np.zeros((bs), dtype='int32')
for i, ele in enumerate(data):
ids[i, : len(ele)] = ele
if not source:
mask[i] = len(ele) - 1
else:
mask[i] = len(ele)
return ids, mask
b_src = []
if mode != "train":
cache_num = 1
data_len = 1000
for j in range(data_len):
if len(b_src) == batch_size * cache_num:
if mode == 'infer':
new_cache = b_src
else:
new_cache = sorted(b_src, key=lambda k: len(k[0]))
for i in range(cache_num):
batch_data = new_cache[i * batch_size : (i + 1) * batch_size]
src_cache = [w[0] for w in batch_data]
tar_cache = [w[1] for w in batch_data]
src_ids, src_mask = to_pad_np(src_cache, source=True)
tar_ids, tar_mask = to_pad_np(tar_cache)
yield (src_ids, src_mask, tar_ids, tar_mask)
b_src = []
src_seed = self_random.randint(0, data_len)
tar_seed = self_random.randint(0, data_len)
src_data = build_fake_sentence(src_seed)
tar_data = build_fake_sentence(tar_seed)
b_src.append((src_data, tar_data))
if len(b_src) == batch_size * cache_num or mode == 'infer':
if mode == 'infer':
new_cache = b_src
else:
new_cache = sorted(b_src, key=lambda k: len(k[0]))
for i in range(cache_num):
batch_end = min(len(new_cache), (i + 1) * batch_size)
batch_data = new_cache[i * batch_size : batch_end]
src_cache = [w[0] for w in batch_data]
tar_cache = [w[1] for w in batch_data]
src_ids, src_mask = to_pad_np(src_cache, source=True)
tar_ids, tar_mask = to_pad_np(tar_cache)
yield (src_ids, src_mask, tar_ids, tar_mask)
class Seq2SeqModelHyperParams:
# Whether use attention model
attention = False
# learning rate for optimizer
learning_rate = 0.01
# layers number of encoder and decoder
num_layers = 2
# hidden size of encoder and decoder
hidden_size = 8
src_vocab_size = 1000
tar_vocab_size = 1000
batch_size = 8
max_epoch = 12
# max length for source and target sentence
max_len = 30
# drop probability
dropout = 0.0
# init scale for parameter
init_scale = 0.1
# max grad norm for global norm clip
max_grad_norm = 5.0
# model path for model to save
base_model_path = "dy2stat/model/base_seq2seq"
attn_model_path = "dy2stat/model/attn_seq2seq"
# reload model to inference
reload_model = "model/epoch_0.pdparams"
beam_size = 4
max_seq_len = 3