--- language: en thumbnail: https://github.com/junnyu tags: - pytorch - electra - roformer - rotary position embedding license: mit datasets: - openwebtext --- # 一、 个人在openwebtext数据集上添加rotary-position-embedding,训练得到的electra-small模型 # 二、 复现结果(dev dataset) |Model|CoLA|SST|MRPC|STS|QQP|MNLI|QNLI|RTE|Avg.| |---|---|---|---|---|---|---|---|---|---| |ELECTRA-Small-OWT(original)|56.8|88.3|87.4|86.8|88.3|78.9|87.9|68.5|80.36| |**ELECTRA-RoFormer-Small-OWT (this)**|55.76|90.45|87.3|86.64|89.61|81.17|88.85|62.71|80.31| # 三、 训练细节 - 数据集 openwebtext - 训练batch_size 256 - 学习率lr 5e-4 - 最大句子长度max_seqlen 128 - 训练total step 50W - GPU RTX3090 - 训练时间总共耗费55h # 四、wandb日志 - [**预训练日志**](https://wandb.ai/junyu/electra_rotary_small_pretrain?workspace=user-junyu) - [**GLUE微调日志**](https://wandb.ai/junyu/electra_rotary_glue_100?workspace=user-junyu) # 五、 使用 ```python import torch from transformers import ElectraTokenizer,RoFormerModel tokenizer = ElectraTokenizer.from_pretrained("junnyu/roformer_small_discriminator") model = RoFormerModel.from_pretrained("junnyu/roformer_small_discriminator") inputs = tokenizer("Beijing is the capital of China.", return_tensors="pt") with torch.no_grad(): outputs = model(**inputs) print(outputs[0].shape) ```