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Sentiment Analysis Tool

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Swarmauri Tool Sentimentanalysis

A tool for analyzing the sentiment of text using Hugging Face's transformers library. This tool provides simple sentiment analysis capabilities, classifying text as POSITIVE, NEGATIVE, or NEUTRAL.

Installation

pip install swarmauri_tool_sentimentanalysis

Usage

Here's a basic example of how to use the Sentiment Analysis Tool:

from swarmauri.tools.SentimentAnalysisTool import SentimentAnalysisTool

# Initialize the tool
tool = SentimentAnalysisTool()

# Analyze sentiment
result = tool("I love this product!")
print(result)  # {'sentiment': 'POSITIVE'}

# Another example
result = tool("This product is okay.")
print(result)  # {'sentiment': 'NEUTRAL'}

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