wissamantoun commited on
Commit
5792077
1 Parent(s): 4d5674d

removed sarcasm

Browse files

will later be added into it's own space

Files changed (3) hide show
  1. app.py +0 -1
  2. backend/home.py +0 -1
  3. backend/services.py +2 -2
app.py CHANGED
@@ -8,7 +8,6 @@ import backend.home
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  import backend.processor
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  import backend.sa
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  import backend.qa
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- import backend.sarcasm
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  st.set_page_config(
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  page_title="TEST", page_icon="📖", initial_sidebar_state="expanded", layout="wide"
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  import backend.processor
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  import backend.sa
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  import backend.qa
 
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  st.set_page_config(
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  page_title="TEST", page_icon="📖", initial_sidebar_state="expanded", layout="wide"
backend/home.py CHANGED
@@ -16,7 +16,6 @@ def write():
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  - Arabic Text Preprocessor: Test how text imput is treated by our preprocessor
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  - Arabic Language Generation: Generate Arabic text using our AraGPT2 language models
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  - Arabic Sentiment Analysis: Test the senitment analysis model that won the [Arabic Senitment Analysis competition @ KAUST](https://www.kaggle.com/c/arabic-sentiment-analysis-2021-kaust)
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- - Arabic Sarcasm Detection: Test MARBERT trained for sarcasm detection
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  - Arabic Question Answering: Test our AraELECTRA QA capabilities
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  """
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  )
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  - Arabic Text Preprocessor: Test how text imput is treated by our preprocessor
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  - Arabic Language Generation: Generate Arabic text using our AraGPT2 language models
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  - Arabic Sentiment Analysis: Test the senitment analysis model that won the [Arabic Senitment Analysis competition @ KAUST](https://www.kaggle.com/c/arabic-sentiment-analysis-2021-kaust)
 
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  - Arabic Question Answering: Test our AraELECTRA QA capabilities
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  """
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  )
backend/services.py CHANGED
@@ -216,7 +216,7 @@ class SentimentAnalyzer:
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  # "sa_no_aoa_in_neutral": NewArabicPreprocessorBalanced(model_name='UBC-NLP/MARBERT'),
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  # "sa_cnnbert": CNNMarbertArabicPreprocessor(model_name='UBC-NLP/MARBERT'),
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  # "sa_sarcasm": SarcasmArabicPreprocessor(model_name='UBC-NLP/MARBERT'),
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- "sar_trial10": SarcasmArabicPreprocessor(model_name='UBC-NLP/MARBERT'),
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  # "sa_no_AOA": NewArabicPreprocessorBalanced(model_name='UBC-NLP/MARBERT'),
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  }
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@@ -224,7 +224,7 @@ class SentimentAnalyzer:
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  "sa_trial5_1": [pipeline("sentiment-analysis", model="{}/train_{}/best_model".format("sa_trial5_1",i), device=-1,return_all_scores =True) for i in tqdm(range(0,5), desc=f"Loading pipeline for model: sa_trial5_1")],
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  # "sa_no_aoa_in_neutral": [pipeline("sentiment-analysis", model="{}/train_{}/best_model".format("sa_no_aoa_in_neutral",i), device=-1,return_all_scores =True) for i in tqdm(range(0,5), desc=f"Loading pipeline for model: sa_no_aoa_in_neutral")],
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  # "sa_cnnbert": [CNNTextClassificationPipeline("{}/train_{}/best_model".format("sa_cnnbert",i), device=-1, return_all_scores =True) for i in tqdm(range(0,5), desc=f"Loading pipeline for model: sa_cnnbert")],
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- "sa_sarcasm": [pipeline("sentiment-analysis", model="{}/train_{}/best_model".format("sa_sarcasm",i), device=-1,return_all_scores =True) for i in tqdm(range(0,5), desc=f"Loading pipeline for model: sa_sarcasm")],
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  # "sar_trial10": [pipeline("sentiment-analysis", model="{}/train_{}/best_model".format("sar_trial10",i), device=-1,return_all_scores =True) for i in tqdm(range(0,5), desc=f"Loading pipeline for model: sar_trial10")],
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  # "sa_no_AOA": [pipeline("sentiment-analysis", model="{}/train_{}/best_model".format("sa_no_AOA",i), device=-1,return_all_scores =True) for i in tqdm(range(0,5), desc=f"Loading pipeline for model: sa_no_AOA")],
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  }
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  # "sa_no_aoa_in_neutral": NewArabicPreprocessorBalanced(model_name='UBC-NLP/MARBERT'),
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  # "sa_cnnbert": CNNMarbertArabicPreprocessor(model_name='UBC-NLP/MARBERT'),
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  # "sa_sarcasm": SarcasmArabicPreprocessor(model_name='UBC-NLP/MARBERT'),
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+ # "sar_trial10": SarcasmArabicPreprocessor(model_name='UBC-NLP/MARBERT'),
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  # "sa_no_AOA": NewArabicPreprocessorBalanced(model_name='UBC-NLP/MARBERT'),
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  }
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  "sa_trial5_1": [pipeline("sentiment-analysis", model="{}/train_{}/best_model".format("sa_trial5_1",i), device=-1,return_all_scores =True) for i in tqdm(range(0,5), desc=f"Loading pipeline for model: sa_trial5_1")],
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  # "sa_no_aoa_in_neutral": [pipeline("sentiment-analysis", model="{}/train_{}/best_model".format("sa_no_aoa_in_neutral",i), device=-1,return_all_scores =True) for i in tqdm(range(0,5), desc=f"Loading pipeline for model: sa_no_aoa_in_neutral")],
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  # "sa_cnnbert": [CNNTextClassificationPipeline("{}/train_{}/best_model".format("sa_cnnbert",i), device=-1, return_all_scores =True) for i in tqdm(range(0,5), desc=f"Loading pipeline for model: sa_cnnbert")],
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+ # "sa_sarcasm": [pipeline("sentiment-analysis", model="{}/train_{}/best_model".format("sa_sarcasm",i), device=-1,return_all_scores =True) for i in tqdm(range(0,5), desc=f"Loading pipeline for model: sa_sarcasm")],
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  # "sar_trial10": [pipeline("sentiment-analysis", model="{}/train_{}/best_model".format("sar_trial10",i), device=-1,return_all_scores =True) for i in tqdm(range(0,5), desc=f"Loading pipeline for model: sar_trial10")],
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  # "sa_no_AOA": [pipeline("sentiment-analysis", model="{}/train_{}/best_model".format("sa_no_AOA",i), device=-1,return_all_scores =True) for i in tqdm(range(0,5), desc=f"Loading pipeline for model: sa_no_AOA")],
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  }