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README.md
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"Chinese (中文)", "Spanish (Español)", "Hindi (हिन्दी)", "Arabic (العربية)",
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"Bengali (বাংলা)", "Portuguese (Português)", "Russian (Русский)", "Japanese (日本語)",
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"German (Deutsch)", "Malay (Bahasa Melayu)", "Telugu (తెలుగు)",
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"Vietnamese (Tiếng Việt)", "Korean (한국어)", "French (Français)", "Turkish (Türkçe)",
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"Italian (Italiano)", "Polish (Polski)", "Ukrainian (Українська)",
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"Tagalog", "Dutch (Nederlands)", "Swiss German (Schweizerdeutsch)"
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# 🚀 distilbert-based Multilingual Sentiment Classification Model
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TRY IT HERE:
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# NEWS!
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- 2024/12: We are excited to introduce a multilingual sentiment model! Now you can analyze sentiment across multiple languages, enhancing your global reach.
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```
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## Model Details
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- `Model Name:` tabularisai/multilingual-sentiment-analysis
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Below is a Python example on how to use the multilingual sentiment model:
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```
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from transformers import AutoTokenizer, AutoModelForSequenceClassification
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import torch
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print(f"Sentiment: {sentiment}\n")
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```
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## Model Performance
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Example predictions:
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$$$
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1. "I absolutely loved this movie! The acting was superb and the plot was engaging."
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Predicted Sentiment: Very Positive (English)
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2. "我讨厌这种无休止的争吵。"
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Predicted Sentiment: Very Negative (Chinese)
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3. "El producto funciona como se espera. Nada especial, pero cumple con su función."
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Predicted Sentiment: Neutral (Spanish)
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4. "هذا الكتاب غير حياتي! لقد تعلمت الكثير منه."
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Predicted Sentiment: Very Positive (Arabic)
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5. "Я разочарован покупкой, это не так хорошо, как я надеялся."
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Predicted Sentiment: Negative (Russian)
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$$$
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## Training Procedure
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## Contact
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For inquiries
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tabularis.ai
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temperature: 1
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# 🚀 distilbert-based Multilingual Sentiment Classification Model
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TRY IT HERE: `coming soon`
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# NEWS!
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- 2024/12: We are excited to introduce a multilingual sentiment model! Now you can analyze sentiment across multiple languages, enhancing your global reach.
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## Model Details
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- `Model Name:` tabularisai/multilingual-sentiment-analysis
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Below is a Python example on how to use the multilingual sentiment model:
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```python
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from transformers import AutoTokenizer, AutoModelForSequenceClassification
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import torch
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print(f"Sentiment: {sentiment}\n")
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```
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## Training Procedure
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## Contact
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For inquiries, private APIs, better models, contact info@tabularis.ai
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tabularis.ai
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