yangheng commited on
Commit
93c4011
1 Parent(s): f958f30

Update app.py

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Files changed (1) hide show
  1. app.py +19 -27
app.py CHANGED
@@ -4,17 +4,15 @@ import gradio as gr
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  import pandas as pd
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  import requests
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- from pyabsa import ATEPCCheckpointManager
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- from pyabsa.functional.dataset.dataset_manager import download_datasets_from_github, ABSADatasetList, detect_infer_dataset
9
 
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- download_datasets_from_github(os.getcwd())
11
 
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- dataset_items = {dataset.name: dataset for dataset in ABSADatasetList()}
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-
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- URL = 'https://api.visitorbadge.io/api/combined?path=https%3A%2F%2Fhuggingface.co%2Fspaces%2Fyangheng%2Fpyabsa_inference&label=Inference%20Count&labelColor=%2337d67a&countColor=%23f47373&style=flat&labelStyle=none'
15
 
16
  def get_example(dataset):
17
- task = 'apc'
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  dataset_file = detect_infer_dataset(dataset_items[dataset], task)
19
 
20
  for fname in dataset_file:
@@ -28,27 +26,27 @@ def get_example(dataset):
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  lines.extend(fin.readlines())
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  fin.close()
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  for i in range(len(lines)):
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- lines[i] = lines[i][:lines[i].find('!sent!')].replace('[ASP]', '')
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  return sorted(set(lines), key=lines.index)
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34
 
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- dataset_dict = {dataset.name: get_example(dataset.name) for dataset in ABSADatasetList()}
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- aspect_extractor = ATEPCCheckpointManager.get_aspect_extractor(checkpoint='multilingual-256-2')
37
 
38
 
39
  def perform_inference(text, dataset):
40
  if not text:
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  text = dataset_dict[dataset][random.randint(0, len(dataset_dict[dataset]) - 1)]
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- result = aspect_extractor.extract_aspect(inference_source=[text],
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- pred_sentiment=True)
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  result = pd.DataFrame({
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- 'aspect': result[0]['aspect'],
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- 'sentiment': result[0]['sentiment'],
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  # 'probability': result[0]['probs'],
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- 'confidence': [round(x, 4) for x in result[0]['confidence']],
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- 'position': result[0]['position']
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  })
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  return result, '{}'.format(text)
54
 
@@ -57,22 +55,20 @@ demo = gr.Blocks()
57
 
58
  with demo:
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  gr.Markdown("# <p align='center'>Multilingual Aspect-based Sentiment Analysis !</p>")
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- gr.Markdown("""### Repo: [PyABSA](https://github.com/yangheng95/PyABSA)
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  ### Author: [Heng Yang](https://github.com/yangheng95) (杨恒)
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  [![Downloads](https://pepy.tech/badge/pyabsa)](https://pepy.tech/project/pyabsa)
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  [![Downloads](https://pepy.tech/badge/pyabsa/month)](https://pepy.tech/project/pyabsa)
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  """
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  )
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- gr.Markdown("Your input text should be no more than 80 words, that's the longest text we used in training. However, you can train your own model using 512 max length")
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- gr.Markdown("**You don't need to split each Chinese (Korean, etc.) token as the provided examples, just input the natural language text.**")
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- gr.Markdown("请确保输入的文本长度不超过200词,这是训练时的最大文本长度,过长将不会获得结果")
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- gr.Markdown("**提供的中文等其他非拉丁语系数据集采用了空格分字,这是早期数据集的遗留问题,预测时不用对中文等语言进行空格分字**")
70
  output_dfs = []
71
  with gr.Row():
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  with gr.Column():
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  input_sentence = gr.Textbox(placeholder='Leave this box blank and choose a dataset will give you a random example...', label="Example:")
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  gr.Markdown("You can find the datasets at [github.com/yangheng95/ABSADatasets](https://github.com/yangheng95/ABSADatasets/tree/v1.2/datasets/text_classification)")
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- dataset_ids = gr.Radio(choices=[dataset.name for dataset in ABSADatasetList()[:-1]], value='Laptop14', label="Datasets")
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  inference_button = gr.Button("Let's go!")
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  gr.Markdown("There is a [demo](https://huggingface.co/spaces/yangheng/PyABSA-ATEPC-Chinese) specialized for the Chinese langauge")
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  gr.Markdown("This demo support many other language as well, you can try and explore the results of other languages by yourself.")
@@ -84,10 +80,6 @@ with demo:
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  inference_button.click(fn=perform_inference,
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  inputs=[input_sentence, dataset_ids],
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- outputs=[output_df, output_text],
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- api_name='inference')
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-
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- gr.Markdown("![visitor badge](https://visitor-badge.glitch.me/badge?page_id=https://huggingface.co/spaces/yangheng/Multilingual-Aspect-Based-Sentiment-Analysis)")
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- gr.Markdown("![Visitors]({})".format(URL))
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  demo.launch()
 
4
  import pandas as pd
5
  import requests
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+ from pyabsa import download_all_available_datasets, AspectTermExtraction as ATEPC, TaskCodeOption
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+ from pyabsa.utils.data_utils.dataset_manager import detect_infer_dataset
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+ download_all_available_datasets()
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+ dataset_items = {dataset.name: dataset for dataset in ATEPC.ATEPCDatasetList()}
 
 
13
 
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  def get_example(dataset):
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+ task = TaskCodeOption.Aspect_Polarity_Classification
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  dataset_file = detect_infer_dataset(dataset_items[dataset], task)
17
 
18
  for fname in dataset_file:
 
26
  lines.extend(fin.readlines())
27
  fin.close()
28
  for i in range(len(lines)):
29
+ lines[i] = lines[i][:lines[i].find('$LABEL$')].replace('[B-ASP]', '').replace('[E-ASP]', '').strip()
30
  return sorted(set(lines), key=lines.index)
31
 
32
 
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+ dataset_dict = {dataset.name: get_example(dataset.name) for dataset in ATEPC.ATEPCDatasetList()}
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+ aspect_extractor = ATEPC.AspectExtractor(checkpoint='multilingual')
35
 
36
 
37
  def perform_inference(text, dataset):
38
  if not text:
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  text = dataset_dict[dataset][random.randint(0, len(dataset_dict[dataset]) - 1)]
40
 
41
+ result = aspect_extractor.predict(text,
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+ pred_sentiment=True)
43
 
44
  result = pd.DataFrame({
45
+ 'aspect': result['aspect'],
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+ 'sentiment': result['sentiment'],
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  # 'probability': result[0]['probs'],
48
+ 'confidence': [round(x, 4) for x in result['confidence']],
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+ 'position': result['position']
50
  })
51
  return result, '{}'.format(text)
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55
 
56
  with demo:
57
  gr.Markdown("# <p align='center'>Multilingual Aspect-based Sentiment Analysis !</p>")
58
+ gr.Markdown("""### Repo: [PyABSA V2](https://github.com/yangheng95/PyABSA)
59
  ### Author: [Heng Yang](https://github.com/yangheng95) (杨恒)
60
  [![Downloads](https://pepy.tech/badge/pyabsa)](https://pepy.tech/project/pyabsa)
61
  [![Downloads](https://pepy.tech/badge/pyabsa/month)](https://pepy.tech/project/pyabsa)
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  """
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  )
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+ gr.Markdown("Your input text should be no more than 80 words, that's the longest text we used in trainer. However, you can try longer text in self-trainer ")
65
+ gr.Markdown("**You don't need to split each Chinese (Korean, etc.) token as the provided, just input the natural language text.**")
 
 
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  output_dfs = []
67
  with gr.Row():
68
  with gr.Column():
69
  input_sentence = gr.Textbox(placeholder='Leave this box blank and choose a dataset will give you a random example...', label="Example:")
70
  gr.Markdown("You can find the datasets at [github.com/yangheng95/ABSADatasets](https://github.com/yangheng95/ABSADatasets/tree/v1.2/datasets/text_classification)")
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+ dataset_ids = gr.Radio(choices=[dataset.name for dataset in ATEPC.ATEPCDatasetList()[:-1]], value='Laptop14', label="Datasets")
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  inference_button = gr.Button("Let's go!")
73
  gr.Markdown("There is a [demo](https://huggingface.co/spaces/yangheng/PyABSA-ATEPC-Chinese) specialized for the Chinese langauge")
74
  gr.Markdown("This demo support many other language as well, you can try and explore the results of other languages by yourself.")
 
80
 
81
  inference_button.click(fn=perform_inference,
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  inputs=[input_sentence, dataset_ids],
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+ outputs=[output_df, output_text])
 
 
 
 
84
 
85
  demo.launch()