Sentiment Analyzer Analyze the sentiment of text content with detailed scoring, emotion detection, and visualization capabilities. Process single texts, CSV files, or track sentiment trends over time. Quick Start from scripts . sentiment_analyzer import SentimentAnalyzer
Analyze single text
analyzer
SentimentAnalyzer ( ) result = analyzer . analyze ( "I love this product! It's amazing." ) print ( f"Sentiment: { result [ 'sentiment' ] } ( { result [ 'score' ] : .2f } )" )
Batch analyze CSV
results
- analyzer
- .
- analyze_csv
- (
- "reviews.csv"
- ,
- text_column
- =
- "review"
- )
- analyzer
- .
- plot_distribution
- (
- "sentiment_dist.png"
- )
- Features
- Sentiment Classification
-
- Positive, negative, neutral with confidence
- Polarity Scoring
-
- -1.0 (negative) to +1.0 (positive)
- Subjectivity Detection
-
- Objective vs subjective content
- Emotion Detection
-
- Joy, anger, sadness, fear, surprise
- Batch Processing
-
- Analyze CSV files with any text column
- Trend Analysis
-
- Track sentiment over time
- Visualizations
- Distribution plots, trend charts, word clouds API Reference Initialization analyzer = SentimentAnalyzer ( ) Single Text Analysis result = analyzer . analyze ( "This is great!" )
Returns:
{
'text': 'This is great!',
'sentiment': 'positive', # positive, negative, neutral
'score': 0.85, # -1.0 to 1.0
'confidence': 0.92, # 0.0 to 1.0
'subjectivity': 0.75, # 0.0 (objective) to 1.0 (subjective)
'emotions':
}
Batch Analysis
From list
texts
[ "Great product!" , "Terrible service." , "It's okay." ] results = analyzer . analyze_batch ( texts )
From CSV
results
analyzer . analyze_csv ( "reviews.csv" , text_column = "review_text" , output = "results.csv" ) Trend Analysis
Analyze sentiment over time
results
analyzer . analyze_csv ( "posts.csv" , text_column = "content" , date_column = "posted_at" ) analyzer . plot_trend ( "sentiment_trend.png" ) Visualizations
Sentiment distribution
analyzer . plot_distribution ( "distribution.png" )
Sentiment over time
analyzer . plot_trend ( "trend.png" )
Word cloud by sentiment
analyzer . plot_wordcloud ( "positive" , "positive_words.png" ) CLI Usage
Analyze single text
python sentiment_analyzer.py --text "I love this product!"
Analyze file
python sentiment_analyzer.py --input reviews.csv --column review --output results.csv
With visualization
python sentiment_analyzer.py --input reviews.csv --column text --plot distribution.png
Trend analysis
python sentiment_analyzer.py --input posts.csv --column content --date posted_at --trend trend.png CLI Arguments Argument Description Default --text Single text to analyze - --input Input CSV file - --column Text column name text --date Date column for trends - --output Output CSV file - --plot Save distribution plot - --trend Save trend plot - --format Output format (json, csv) json Examples Product Review Analysis analyzer = SentimentAnalyzer ( ) results = analyzer . analyze_csv ( "amazon_reviews.csv" , text_column = "review" )
Summary statistics
positive
sum ( 1 for r in results if r [ 'sentiment' ] == 'positive' ) negative = sum ( 1 for r in results if r [ 'sentiment' ] == 'negative' ) print ( f"Positive: { positive } , Negative: { negative } " )
Average sentiment score
avg_score
sum ( r [ 'score' ] for r in results ) / len ( results ) print ( f"Average sentiment: { avg_score : .2f } " ) Social Media Monitoring analyzer = SentimentAnalyzer ( )
Analyze tweets with timestamps
results
analyzer . analyze_csv ( "tweets.csv" , text_column = "tweet_text" , date_column = "created_at" )
Plot sentiment trend
analyzer . plot_trend ( "twitter_sentiment.png" , title = "Brand Sentiment Over Time" ) Customer Feedback Categorization analyzer = SentimentAnalyzer ( ) feedback = [ "Your support team was incredibly helpful!" , "The product broke after one day." , "Shipping was on time." , "I'm extremely disappointed with the quality." , "It works as expected, nothing special." ] for text in feedback : result = analyzer . analyze ( text ) print ( f" { result [ 'sentiment' ] . upper ( ) : 8 } ( { result [ 'score' ] : +.2f } ): { text [ : 50] } " ) Output Format JSON Output { "text" : "I love this product!" , "sentiment" : "positive" , "score" : 0.85 , "confidence" : 0.92 , "subjectivity" : 0.75 , "emotions" : { "joy" : 0.82 , "anger" : 0.02 , "sadness" : 0.01 , "fear" : 0.03 , "surprise" : 0.12 } } CSV Output text sentiment score confidence subjectivity Great product! positive 0.85 0.91 0.80 Terrible... negative -0.72 0.88 0.65 Dependencies textblob>=0.17.0 pandas>=2.0.0 matplotlib>=3.7.0 Limitations English language optimized (other languages may have reduced accuracy) Sarcasm and irony may not be detected accurately Context-dependent sentiment may be missed Short texts (<5 words) have lower confidence