KoichiYasuoka's picture
model improved for transformers 4.42
000444e
#! /bin/sh
S=Xunzi-Qwen1.5-7B
U=UD_Classical_Chinese-Kyoto
test -d $U || git clone --depth=1 https://github.com/UniversalDependencies/$U
for F in train dev test
do cp $U/*-$F.conllu $F.conllu
done
test -d $S || git clone --depth=1 https://www.modelscope.cn/Xunzillm4cc/$S.git
TMP=./maker$$.py
( echo '#! /usr/bin/env deepspeed'
echo 'src="'$S'"'
echo 'tgt="KoichiYasuoka/'$S'-upos"'
) > $TMP
cat << 'EOF' >> $TMP
from transformers import AutoTokenizer,Qwen2ForTokenClassification,AutoConfig,DataCollatorForTokenClassification,TrainingArguments,Trainer
class UPOSFileDataset(object):
def __init__(self,conllu,tokenizer):
self.conllu=open(conllu,"r",encoding="utf-8")
self.tokenizer=tokenizer
self.seeks=[0]
self.multiword={}
label=set(["SYM"])
s=self.conllu.readline()
while s!="":
if s=="\n":
self.seeks.append(self.conllu.tell())
else:
w=s.split("\t")
if len(w)==10:
if w[0].isdecimal():
label.add(w[3] if w[5]=="_" else w[3]+"|"+w[5])
elif w[0].find("-")>0:
t=w[0].split("-")
f,j,k=w[1],[],[]
for i in range(int(t[0]),int(t[1])+1):
w=self.conllu.readline().split("\t")
j.append(w[3] if w[5]=="_" else w[3]+"|"+w[5])
k.append(w[1])
p="+".join(j)
label.add(p)
if p in self.multiword:
self.multiword[p][f]=list(k)
else:
self.multiword[p]={f:list(k)}
s=self.conllu.readline()
lid={}
for i,l in enumerate(sorted(label)):
lid[l],lid["B-"+l],lid["I-"+l]=i*3,i*3+1,i*3+2
self.label2id=lid
def __call__(*args):
lid={l:i for i,l in enumerate(sorted(set(sum([list(t.label2id) for t in args],[]))))}
for t in args:
t.label2id=lid
return lid
def __del__(self):
self.conllu.close()
__len__=lambda self:len(self.seeks)-1
def __getitem__(self,i):
self.conllu.seek(self.seeks[i])
form,upos=[],[]
while self.conllu.tell()<self.seeks[i+1]:
w=self.conllu.readline().split("\t")
if len(w)==10:
form.append(w[1])
if w[0].isdecimal():
upos.append(w[3] if w[5]=="_" else w[3]+"|"+w[5])
elif w[0].find("-")>0:
t=w[0].split("-")
u=[]
for j in range(int(t[0]),int(t[1])+1):
k=self.conllu.readline().split("\t")
u.append(k[3] if k[5]=="_" else k[3]+"|"+k[5])
upos.append("+".join(u))
v=self.tokenizer(form,add_special_tokens=False)
i,u=[],[]
for j,(x,y) in enumerate(zip(v["input_ids"],upos)):
if x!=[]:
i+=x
u+=[y] if len(x)==1 else ["B-"+y]+["I-"+y]*(len(x)-1)
if len(i)<self.tokenizer.model_max_length-3:
ids=i
upos=u
else:
ids=i[0:self.tokenizer.model_max_length-2]
upos=u[0:self.tokenizer.model_max_length-2]
return {"input_ids":ids,"labels":[self.label2id[t] for t in upos]}
tkz=AutoTokenizer.from_pretrained(src)
trainDS=UPOSFileDataset("train.conllu",tkz)
devDS=UPOSFileDataset("dev.conllu",tkz)
testDS=UPOSFileDataset("test.conllu",tkz)
lid=trainDS(devDS,testDS)
cfg=AutoConfig.from_pretrained(src,num_labels=len(lid),label2id=lid,id2label={i:l for l,i in lid.items()},ignore_mismatched_sizes=True)
dsp={"fp16":{"enabled":"auto"},"optimizer":{"type":"AdamW"},"scheduler":{"type":"WarmupLR","params":{}},"train_batch_size":"auto","train_micro_batch_size_per_gpu":"auto","zero_optimization":{"stage":3,"offload_optimizer":{"device":"cpu","pin_memory":True},"offload_param":{"device":"cpu","pin_memory":True},"overlap_comm":True,"contiguous_gradients":True,"reduce_bucket_size":"auto","stage3_prefetch_bucket_size":"auto","stage3_param_persistence_threshold":"auto","stage3_gather_16bit_weights_on_model_save":True}}
arg=TrainingArguments(num_train_epochs=3,per_device_train_batch_size=16,deepspeed=dsp,output_dir=tgt,overwrite_output_dir=True,save_total_limit=2,learning_rate=5e-05,warmup_ratio=0.1,save_safetensors=False)
trn=Trainer(args=arg,data_collator=DataCollatorForTokenClassification(tkz),model=Qwen2ForTokenClassification.from_pretrained(src,config=cfg,ignore_mismatched_sizes=True),train_dataset=trainDS)
trn.train()
trn.save_model(tgt)
tkz.save_pretrained(tgt)
EOF
chmod 755 $TMP
$TMP
exit