metadata
language: en
tags:
- sagemaker
- bart
- summarization
license: apache-2.0
datasets:
- samsum
model-index:
- name: bart-large-cnn-samsum
results:
- task:
name: Abstractive Text Summarization
type: abstractive-text-summarization
dataset:
name: >-
SAMSum Corpus: A Human-annotated Dialogue Dataset for Abstractive
Summarization
type: samsum
metrics:
- name: Validation ROGUE-1
type: rogue-1
value: 43.2111
- name: Validation ROGUE-2
type: rogue-2
value: 22.3519
- name: Validation ROGUE-L
type: rogue-l
value: 33.315
- name: Test ROGUE-1
type: rogue-1
value: 41.8283
- name: Test ROGUE-2
type: rogue-2
value: 20.9857
- name: Test ROGUE-L
type: rogue-l
value: 32.3602
widget:
- text: >
Sugi: I am tired of everything in my life.
Tommy: What? How happy you life is! I do envy you.
Sugi: You don't know that I have been over-protected by my mother these
years. I am really about to leave the family and spread my wings.
Tommy: Maybe you are right.
bart-large-cnn-samsum
This model was trained using Amazon SageMaker and the new Hugging Face Deep Learning container. For more information look at:
- 🤗 Transformers Documentation: Amazon SageMaker
- Example Notebooks
- Amazon SageMaker documentation for Hugging Face
- Python SDK SageMaker documentation for Hugging Face
- Deep Learning Container
Hyperparameters
{
"dataset_name": "samsum",
"do_eval": true,
"do_predict": true,
"do_train": true,
"fp16": true,
"learning_rate": 5e-05,
"model_name_or_path": "facebook/bart-large-cnn",
"num_train_epochs": 3,
"output_dir": "/opt/ml/model",
"per_device_eval_batch_size": 4,
"per_device_train_batch_size": 4,
"predict_with_generate": true,
"seed": 7
}
Usage
from transformers import pipeline
summarizer = pipeline("summarization", model="slauw87/bart-large-cnn-samsum")
conversation = '''Sugi: I am tired of everything in my life.
Tommy: What? How happy you life is! I do envy you.
Sugi: You don't know that I have been over-protected by my mother these years. I am really about to leave the family and spread my wings.
Tommy: Maybe you are right.
'''
nlp(conversation)
Results
key | value |
---|---|
eval_rouge1 | 43.2111 |
eval_rouge2 | 22.3519 |
eval_rougeL | 33.3153 |
eval_rougeLsum | 40.0527 |
predict_rouge1 | 41.8283 |
predict_rouge2 | 20.9857 |
predict_rougeL | 32.3602 |
predict_rougeLsum | 38.7316 |