dimitreOliveira/bert-as-a-service_TFX
End-to-end pipeline with TFX to train and deploy a BERT model for sentiment analysis.
This project helps you automatically understand customer sentiment from text reviews. It takes raw text like customer feedback or social media posts as input and tells you if the sentiment is positive or negative. Business analysts, product managers, or customer service managers can use this to quickly gauge public opinion or user satisfaction.
No commits in the last 6 months.
Use this if you need a reliable way to automate sentiment analysis for large volumes of text, especially if you're working with movie reviews or similar short text snippets.
Not ideal if your primary goal is to analyze very nuanced, domain-specific text that requires highly specialized sentiment understanding beyond general positive/negative.
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Jupyter Notebook
License
Apache-2.0
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Last pushed
Oct 21, 2023
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