Model card for SaraPiscitelli/roberta-base-qa-v1
This model is a finetuned model starting from the base transformer model roberta-base.
This model is finetuned on extractive question answering task using squad dataset.
You can access the training code here and the evaluation code here.
Model Description
- Developed by: Sara Piscitelli
- Model type: Transformer Encoder - RobertaBaseForQuestionAnswering (124.056.578 params)
- Language(s) (NLP): English
- License: Apache 2.0
- Finetuned from model: roberta-base
- Maximum input tokens: 512
Model Sources
Uses
The model can be utilized for the extractive question-answering task, where both the context and the question are provide.
Recommendations
This is a basic standard model; some results may be inaccurate.
Refer to the evaluation metrics for a better understanding of its performance.
How to Get Started with the Model
You can use the Huggingface pipeline:
from transformers import pipeline
qa_model = pipeline("question-answering", model="SaraPiscitelli/roberta-base-qa-v1")
question = "Which name is also used to describe the Amazon rainforest in English?"
context = """The Amazon rainforest (Portuguese: Floresta Amazônica or Amazônia; Spanish: Selva Amazónica, Amazonía or usually Amazonia; French: Forêt amazonienne; Dutch: Amazoneregenwoud), also known in English as Amazonia or the Amazon Jungle, is a moist broadleaf forest that covers most of the Amazon basin of South America. This basin encompasses 7,000,000 square kilometres (2,700,000 sq mi), of which 5,500,000 square kilometres (2,100,000 sq mi) are covered by the rainforest. This region includes territory belonging to nine nations. The majority of the forest is contained within Brazil, with 60% of the rainforest, followed by Peru with 13%, Colombia with 10%, and with minor amounts in Venezuela, Ecuador, Bolivia, Guyana, Suriname and French Guiana. States or departments in four nations contain "Amazonas" in their names. The Amazon represents over half of the planet's remaining rainforests, and comprises the largest and most biodiverse tract of tropical rainforest in the world, with an estimated 390 billion individual trees divided into 16,000 species."""
print(qa_model(question = question, context = context)['answer'])
or load it directly:
import torch
from typing import List, Optional
from transformers import AutoModelForQuestionAnswering, AutoTokenizer
class InferenceModel:
def __init__(self, model_name_or_checkpoin_path: str,
tokenizer_name: Optional[str] = None,
device_type: Optional[str] = None) -> List[str]:
if tokenizer_name is None:
tokenizer_name = model_name_or_checkpoin_path
if device_type is None:
device_type = "cuda" if torch.cuda.is_available() else "mps" if torch.backends.mps.is_available() else "cpu"
self.model = AutoModelForQuestionAnswering.from_pretrained(model_name_or_checkpoin_path, device_map=device_type)
self.model.eval()
self.tokenizer = AutoTokenizer.from_pretrained(model_name_or_checkpoin_path)
def inference(self, questions: List[str], contexts: List[str]) -> List[str]:
inputs = self.tokenizer(questions, contexts,
padding="longest",
return_tensors="pt").to(self.model.device)
with torch.no_grad():
logits = self.model(**inputs)
# logits.start_logits.shape == (batch_size, input_length) = inputs['input_ids'].shape
# logits.end_logits.shape == (batch_size, input_length) = inputs['input_ids'].shape
answer_start_index: List[int] = logits.start_logits.argmax(dim=-1).tolist()
answer_end_index: List[int] = logits.end_logits.argmax(dim=-1).tolist()
answer_tokens: List[str] = [self.tokenizer.decode(inputs.input_ids[i, answer_start_index[i] : answer_end_index[i] + 1])
for i in range(len(questions))]
return answer_tokens
model = InferenceModel("SaraPiscitelli/roberta-base-qa-v1")
question = "Which name is also used to describe the Amazon rainforest in English?"
context = """The Amazon rainforest (Portuguese: Floresta Amazônica or Amazônia; Spanish: Selva Amazónica, Amazonía or usually Amazonia; French: Forêt amazonienne; Dutch: Amazoneregenwoud), also known in English as Amazonia or the Amazon Jungle, is a moist broadleaf forest that covers most of the Amazon basin of South America. This basin encompasses 7,000,000 square kilometres (2,700,000 sq mi), of which 5,500,000 square kilometres (2,100,000 sq mi) are covered by the rainforest. This region includes territory belonging to nine nations. The majority of the forest is contained within Brazil, with 60% of the rainforest, followed by Peru with 13%, Colombia with 10%, and with minor amounts in Venezuela, Ecuador, Bolivia, Guyana, Suriname and French Guiana. States or departments in four nations contain "Amazonas" in their names. The Amazon represents over half of the planet's remaining rainforests, and comprises the largest and most biodiverse tract of tropical rainforest in the world, with an estimated 390 billion individual trees divided into 16,000 species."""
print(model.inference(questions=[question], contexts=[context])[0])
In both cases, the answer will be printed out: "Amazonia or the Amazon Jungle"
Training Details
Training Data
- squad dataset.
To retrieve the dataset, use the following code:
from datasets import load_dataset
squad = load_dataset("squad")
squad['train'] = squad['train'].select(range(30000))
squad['test'] = squad['validation']
squad['validation'] = squad['validation'].select(range(2000))
The dataset used after preprocessing is listed below:
Train Dataset({
features: ['id', 'title', 'context', 'question', 'answers'],
num_rows: 8207
})Validation dataset({
features: ['id', 'title', 'context', 'question', 'answers'],
num_rows: 637
})
Preprocessing
All samples with more than 512 tokens have been removed.
This was necessary due to the maximum input token limit accepted by the RoBERTa-base model.
Training Hyperparameters
- Training regime: fp32
- base_model_name_or_path: roberta-base
- max_tokens_length: 512
- training_arguments: TrainingArguments( output_dir=results_dir, num_train_epochs=5, per_device_train_batch_size=8, per_device_eval_batch_size=8, gradient_accumulation_steps=1, learning_rate=0.00001, lr_scheduler_type="linear", optim="adamw_torch", eval_accumulation_steps=1, evaluation_strategy="steps", eval_steps=0.2, save_strategy="steps", save_steps=0.2, logging_strategy="steps", logging_steps=1, report_to="tensorboard", do_train=True, do_eval=True, max_grad_norm=0.3, warmup_ratio=0.03, #group_by_length=True, dataloader_drop_last=False, fp16=False, bf16=False )
Testing Data & Evaluation Metrics
Testing Data
To retrieve the dataset, use the following code:
from datasets import load_dataset
squad = load_dataset("squad")
squad['test'] = squad['validation']
Test Dataset({
features: ['id', 'title', 'context', 'question', 'answers'],
num_rows: 10570
})
Metrics
To evaluate model has been used the standard metric for squad:
import evaluate
metric_eval = evaluate.load("squad_v2")
Results
{'exact-match': 66.00660066006601,
'f1': 78.28040573606134,
'total': 909,
'HasAns_exact': 66.00660066006601,
'HasAns_f1': 78.28040573606134,
'HasAns_total': 909,
'best_exact': 66.00660066006601,
'best_exact_thresh': 0.0,
'best_f1': 78.28040573606134,
'best_f1_thresh': 0.0}
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Dataset used to train SaraPiscitelli/roberta-base-qa-v1
Evaluation results
- f1 on squad (a subset, not official dataset)self-reported78.280
- exact-match on squad (a subset, not official dataset)self-reported66.000