Model cards for finance-koelectra models (#5313)
* Add finance-koelectra readme card * Add finance-koelectra readme card * Add finance-koelectra readme card * Add finance-koelectra readme card
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language: korean
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---
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# 📈 Financial Korean ELECTRA model
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Pretrained ELECTRA Language Model for Korean (`finance-koelectra-base-discriminator`)
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> ELECTRA is a new method for self-supervised language representation learning. It can be used to
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> pre-train transformer networks using relatively little compute. ELECTRA models are trained to
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> distinguish "real" input tokens vs "fake" input tokens generated by another neural network, similar to
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> the discriminator of a GAN.
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More details about ELECTRA can be found in the [ICLR paper](https://openreview.net/forum?id=r1xMH1BtvB)
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or in the [official ELECTRA repository](https://github.com/google-research/electra) on GitHub.
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## Stats
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The current version of the model is trained on a financial news data of Naver news.
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The final training corpus has a size of 25GB and 2.3B tokens.
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This model was trained a cased model on a TITAN RTX for 500k steps.
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## Usage
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```python
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from transformers import ElectraForPreTraining, ElectraTokenizer
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import torch
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discriminator = ElectraForPreTraining.from_pretrained("krevas/finance-koelectra-base-discriminator")
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tokenizer = ElectraTokenizer.from_pretrained("krevas/finance-koelectra-base-discriminator")
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sentence = "내일 해당 종목이 대폭 상승할 것이다"
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fake_sentence = "내일 해당 종목이 맛있게 상승할 것이다"
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fake_tokens = tokenizer.tokenize(fake_sentence)
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fake_inputs = tokenizer.encode(fake_sentence, return_tensors="pt")
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discriminator_outputs = discriminator(fake_inputs)
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predictions = torch.round((torch.sign(discriminator_outputs[0]) + 1) / 2)
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[print("%7s" % token, end="") for token in fake_tokens]
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[print("%7s" % int(prediction), end="") for prediction in predictions.tolist()[1:-1]]
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print("fake token : %s" % fake_tokens[predictions.tolist()[1:-1].index(1)])
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```
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# Huggingface model hub
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All models are available on the [Huggingface model hub](https://huggingface.co/krevas).
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---
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language: korean
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---
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# 📈 Financial Korean ELECTRA model
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Pretrained ELECTRA Language Model for Korean (`finance-koelectra-base-generator`)
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> ELECTRA is a new method for self-supervised language representation learning. It can be used to
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> pre-train transformer networks using relatively little compute. ELECTRA models are trained to
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> distinguish "real" input tokens vs "fake" input tokens generated by another neural network, similar to
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> the discriminator of a GAN.
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More details about ELECTRA can be found in the [ICLR paper](https://openreview.net/forum?id=r1xMH1BtvB)
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or in the [official ELECTRA repository](https://github.com/google-research/electra) on GitHub.
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## Stats
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The current version of the model is trained on a financial news data of Naver news.
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The final training corpus has a size of 25GB and 2.3B tokens.
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This model was trained a cased model on a TITAN RTX for 500k steps.
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## Usage
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```python
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from transformers import pipeline
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fill_mask = pipeline(
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"fill-mask",
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model="krevas/finance-koelectra-base-generator",
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tokenizer="krevas/finance-koelectra-base-generator"
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)
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print(fill_mask(f"내일 해당 종목이 대폭 {fill_mask.tokenizer.mask_token}할 것이다."))
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```
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# Huggingface model hub
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All models are available on the [Huggingface model hub](https://huggingface.co/krevas).
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---
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language: korean
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---
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# 📈 Financial Korean ELECTRA model
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Pretrained ELECTRA Language Model for Korean (`finance-koelectra-small-discriminator`)
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> ELECTRA is a new method for self-supervised language representation learning. It can be used to
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> pre-train transformer networks using relatively little compute. ELECTRA models are trained to
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> distinguish "real" input tokens vs "fake" input tokens generated by another neural network, similar to
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> the discriminator of a GAN.
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More details about ELECTRA can be found in the [ICLR paper](https://openreview.net/forum?id=r1xMH1BtvB)
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or in the [official ELECTRA repository](https://github.com/google-research/electra) on GitHub.
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## Stats
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The current version of the model is trained on a financial news data of Naver news.
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The final training corpus has a size of 25GB and 2.3B tokens.
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This model was trained a cased model on a TITAN RTX for 500k steps.
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## Usage
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```python
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from transformers import ElectraForPreTraining, ElectraTokenizer
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import torch
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discriminator = ElectraForPreTraining.from_pretrained("krevas/finance-koelectra-small-discriminator")
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tokenizer = ElectraTokenizer.from_pretrained("krevas/finance-koelectra-small-discriminator")
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sentence = "내일 해당 종목이 대폭 상승할 것이다"
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fake_sentence = "내일 해당 종목이 맛있게 상승할 것이다"
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fake_tokens = tokenizer.tokenize(fake_sentence)
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fake_inputs = tokenizer.encode(fake_sentence, return_tensors="pt")
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discriminator_outputs = discriminator(fake_inputs)
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predictions = torch.round((torch.sign(discriminator_outputs[0]) + 1) / 2)
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[print("%7s" % token, end="") for token in fake_tokens]
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[print("%7s" % int(prediction), end="") for prediction in predictions.tolist()[1:-1]]
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print("fake token : %s" % fake_tokens[predictions.tolist()[1:-1].index(1)])
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```
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# Huggingface model hub
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All models are available on the [Huggingface model hub](https://huggingface.co/krevas).
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@@ -0,0 +1,41 @@
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---
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language: korean
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---
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# 📈 Financial Korean ELECTRA model
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Pretrained ELECTRA Language Model for Korean (`finance-koelectra-small-generator`)
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> ELECTRA is a new method for self-supervised language representation learning. It can be used to
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> pre-train transformer networks using relatively little compute. ELECTRA models are trained to
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> distinguish "real" input tokens vs "fake" input tokens generated by another neural network, similar to
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> the discriminator of a GAN.
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More details about ELECTRA can be found in the [ICLR paper](https://openreview.net/forum?id=r1xMH1BtvB)
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or in the [official ELECTRA repository](https://github.com/google-research/electra) on GitHub.
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## Stats
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The current version of the model is trained on a financial news data of Naver news.
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The final training corpus has a size of 25GB and 2.3B tokens.
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This model was trained a cased model on a TITAN RTX for 500k steps.
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## Usage
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```python
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from transformers import pipeline
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fill_mask = pipeline(
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"fill-mask",
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model="krevas/finance-koelectra-small-generator",
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tokenizer="krevas/finance-koelectra-small-generator"
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)
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print(fill_mask(f"내일 해당 종목이 대폭 {fill_mask.tokenizer.mask_token}할 것이다."))
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```
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# Huggingface model hub
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All models are available on the [Huggingface model hub](https://huggingface.co/krevas).
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