IBM/MAX-Text-Sentiment-Classifier
Detect the sentiment captured in short pieces of text
This tool helps you quickly understand the emotional tone of short text messages. You provide a single sentence or brief text, and it tells you if the sentiment is positive or negative. It's ideal for anyone analyzing customer feedback, social media comments, or short survey responses.
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Use this if you need to rapidly categorize short pieces of text, like tweets, product reviews, or customer service chat snippets, by their emotional sentiment (positive or negative).
Not ideal if you need to analyze very long documents or complex, multi-sentence texts with nuanced emotional expressions.
Stars
58
Forks
30
Language
Python
License
Apache-2.0
Category
Last pushed
Sep 17, 2025
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