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initial release
0359194
#! /usr/bin/python3
src="nlp-waseda/roberta-base-japanese"
tgt="KoichiYasuoka/roberta-base-japanese-juman-ud-goeswith"
url="https://github.com/KoichiYasuoka/SuPar-UniDic/raw/main/suparunidic/suparmodels/ja_gsd_modern.conllu"
import os
f=os.path.basename(url)
os.system("test -f "+f+" || curl -LO "+url)
class UDgoeswithDataset(object):
def __init__(self,conllu,tokenizer):
self.ids,self.tags,label=[],[],set()
with open(conllu,"r",encoding="utf-8") as r:
cls,sep,msk=tokenizer.cls_token_id,tokenizer.sep_token_id,tokenizer.mask_token_id
dep,c="-|_|dep",[]
for s in r:
t=s.split("\t")
if len(t)==10 and t[0].isdecimal():
c.append(t)
elif c!=[] and s.strip()=="":
v=tokenizer([t[1] for t in c],add_special_tokens=False)["input_ids"]
for i in range(len(v)-1,-1,-1):
for j in range(1,len(v[i])):
c.insert(i+1,[c[i][0],"_","_","X","_","_",c[i][0],"goeswith","_","_"])
y=["0"]+[t[0] for t in c]
h=[i if t[6]=="0" else y.index(t[6]) for i,t in enumerate(c,1)]
p,v=[t[3]+"|"+t[5]+"|"+t[7] for t in c],sum(v,[])
self.ids.append([cls]+v+[sep])
self.tags.append([dep]+p+[dep])
label=set(sum([self.tags[-1],list(label)],[]))
for i,k in enumerate(v):
self.ids.append([cls]+v[0:i]+[msk]+v[i+1:]+[sep,k])
self.tags.append([dep]+[t if h[j]==i+1 else dep for j,t in enumerate(p)]+[dep,dep])
c=[]
self.label2id={l:i for i,l in enumerate(sorted(label))}
def __call__(*args):
label=set(sum([list(t.label2id) for t in args],[]))
lid={l:i for i,l in enumerate(sorted(label))}
for t in args:
t.label2id=lid
return lid
__len__=lambda self:len(self.ids)
__getitem__=lambda self,i:{"input_ids":self.ids[i],"labels":[self.label2id[t] for t in self.tags[i]]}
from transformers import AutoTokenizer,AutoConfig,AutoModelForTokenClassification,DataCollatorForTokenClassification,TrainingArguments,Trainer
tkz=AutoTokenizer.from_pretrained(src)
trainDS=UDgoeswithDataset(f,tkz)
lid=trainDS.label2id
cfg=AutoConfig.from_pretrained(src,num_labels=len(lid),label2id=lid,id2label={i:l for l,i in lid.items()})
arg=TrainingArguments(num_train_epochs=3,per_device_train_batch_size=32,output_dir="/tmp",overwrite_output_dir=True,save_total_limit=2,learning_rate=5e-05,warmup_ratio=0.1)
trn=Trainer(args=arg,data_collator=DataCollatorForTokenClassification(tkz),model=AutoModelForTokenClassification.from_pretrained(src,config=cfg),train_dataset=trainDS)
trn.train()
trn.save_model(tgt)
tkz.save_pretrained(tgt)