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data_processer.py
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data_processer.py
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# @Time : 2023/3/25 18:36
# @Author : tk
import copy
import random
import typing
from enum import Enum
import numpy as np
from transformers import PreTrainedTokenizer
class DataStrategy(Enum):
tunction = 1
slidding = 2
def build_template_default(query, answer = None,prefix=None, history=None):
prompt = prefix or ''
if history is not None:
for q,a in history:
prompt += "User: {}\nAssistant:{}".format(q,a)
prompt += "User: {}\nAssistant:".format(query)
if answer is not None:
prompt += answer
return prompt
def build_template_tiger(query,answer = None,prefix=None, history=None):
prompt = prefix or ''
tok_ins = "\n\n### Instruction:\n"
tok_res = "\n\n### Response:\n"
if history is not None:
for q,a in history:
prompt += "{}{}{}{}".format(tok_ins,q,tok_res,a)
prompt += "{}{}{}".format(tok_ins, query, tok_res)
if answer is not None:
prompt += answer
return prompt
#切换模板
build_template = build_template_default
class TokenIdsMaker:
@classmethod
def final(cls, tokenizer, input_ids, labels, max_seq_length):
seqlen = np.asarray(len(input_ids), dtype=np.int32)
pad_len = max_seq_length - seqlen
input_ids = np.asarray(input_ids, dtype=np.int32)
attention_mask = np.asarray([1] * len(input_ids), dtype=np.int32)
labels = np.asarray(labels, dtype=np.int32)
if pad_len:
pad_val = tokenizer.eos_token_id
input_ids = np.pad(input_ids, (0, pad_len), 'constant', constant_values=(pad_val, pad_val))
attention_mask = np.pad(attention_mask, (0, pad_len), 'constant', constant_values=(0, 0))
labels = np.pad(labels, (0, pad_len), 'constant', constant_values=(-100, -100))
d = {
'input_ids': input_ids,
'attention_mask': attention_mask,
'labels': labels,
'seqlen': seqlen
}
return d
@classmethod
def tunction(cls, tokenizer: PreTrainedTokenizer, config, sup, max_seq_length, examples):
sptoken = [config.bos_token_id]
ds = []
prefix = None
history = []
for sid, (role,q,a) in enumerate(examples):
if role == 'system':
prefix = q
continue
history += [(q,a)]
a_ids = tokenizer.encode(text=build_template(q,prefix=prefix,history=examples[:sid]), add_special_tokens=False)
b_ids = tokenizer.encode(text=a, add_special_tokens=False)
while len(a_ids) + len(b_ids) > max_seq_length - len(sptoken) - 1:
if len(b_ids) > len(a_ids):
b_ids.pop(-1)
else:
a_ids.pop(0)
b_ids += [ config.eos_token_id ]
input_ids = a_ids + b_ids
labels = copy.deepcopy(input_ids) if not sup else [ -100 ] * len(a_ids) + copy.deepcopy(b_ids)
input_ids = sptoken + input_ids
labels = sptoken + labels if not sup else [ -100 ] * len(sptoken) + labels
assert len(input_ids) <= max_seq_length
ds.append(cls.final(tokenizer, input_ids, labels, max_seq_length))
return ds
@classmethod
def slidding(cls, tokenizer: PreTrainedTokenizer,config,stride,max_seq_length, examples,
sliding_size=None,
src_max_length=-1,
dst_max_length=-1,
sup=True):
sptoken = [config.bos_token_id]
if sliding_size is None or sliding_size < 0:
sliding_size = max_seq_length - len(sptoken)
assert sliding_size <= max_seq_length - len(sptoken)
ds = []
prefix = None
history = []
for sid, (role,q,a) in enumerate(examples):
if role == 'system':
prefix = q
continue
history += [(q,a)]
a_ids = tokenizer.encode(text=build_template(q, prefix=prefix, history=history[:-1]),add_special_tokens=False)
b_ids = tokenizer.encode(text=a, add_special_tokens=False)
if src_max_length and src_max_length > 0:
a_ids = a_ids[:src_max_length]
if dst_max_length and dst_max_length > 0:
b_ids = b_ids[:dst_max_length]
b_ids += [config.eos_token_id]
input_ids_qa = a_ids + b_ids
labels_all = copy.deepcopy(input_ids_qa) if not sup else [-100] * len(a_ids) + b_ids
pos = 0
while pos < len(input_ids_qa):
input_ids = input_ids_qa[pos:pos + max_seq_length - len(sptoken)]
labels = labels_all[pos:pos + max_seq_length - len(sptoken)]
pos += sliding_size
if np.all(np.asarray(labels) == -100):
continue
input_ids = sptoken + input_ids
labels = sptoken + labels if not sup else [-100] * len(sptoken) + labels
ds.append(cls.final(tokenizer, input_ids, labels, max_seq_length))
return ds