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--- |
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title: Covid Sentiment Anlaysis With Streamlit |
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emoji: 🏢 |
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colorFrom: gray |
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colorTo: pink |
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sdk: streamlit |
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sdk_version: 1.28.2 |
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app_file: app.py |
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pinned: false |
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license: mit |
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--- |
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Check out the configuration reference at https://huggingface.co/docs/hub/spaces-config-reference |
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--- |
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# Sentiment Analysis for Covid Feelings using Transformers and Streamlit |
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This Python script performs sentiment analysis using pre-trained transformer models from the `transformers` library and integrates it into a Streamlit app to analyze sentiments related to Covid feelings. |
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## Installation |
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### Requirements |
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- Python 3.x |
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- Required libraries: `transformers`, `datasets`, `streamlit` |
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Install necessary libraries by running: |
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```bash |
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pip install -q transformers datasets streamlit |
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``` |
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## Usage |
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1. Clone or download the script. |
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2. Ensure Python and required libraries are installed. |
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3. Run the script in a Python environment. |
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The script showcases sentiment analysis using a pre-trained model (`avichr/heBERT_sentiment_analysis`) to classify the sentiment of input text into `Negative`, `Neutral`, or `Positive` categories related to Covid feelings. |
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### Steps: |
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1. Preprocesses the input text by handling placeholders for usernames and links. |
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2. Utilizes a pre-trained model (`bert-base-cased`) and the specified sentiment analysis model (`avichr/heBERT_sentiment_analysis`). |
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3. Calculates sentiment scores using softmax probabilities for each sentiment category. |
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4. Displays sentiment scores in a Streamlit app based on user input. |
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## Additional Information |
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- The script offers sentiment analysis functionality for Covid-related text input via a Streamlit interface. |
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- Ensure access to the specified model (`avichr/heBERT_sentiment_analysis`) before running the script. |
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- Users can interact with the Streamlit app by entering text related to Covid feelings to receive sentiment scores for Negative, Neutral, and Positive categories. |
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