π Data Analytics vs Data Science β Key Differences Explained
These two fields often get mixed up, but hereβs how they truly differ π
π Data Analytics
- Examines structured datasets
- Uses tools like SQL, Excel, Power BI, Tableau
- Focuses on descriptive (what happened) & diagnostic (why it happened) insights
- Helps businesses improve processes & make informed decisions
π€ Data Science
- Works with structured + unstructured data
- Uses Python, R, TensorFlow, Machine Learning models
- Focuses on predictive (whatβs likely to happen) & prescriptive (what should be done) insights
- Builds AI-driven solutions & forecasts trends
π‘ Think of it this way:
β‘οΈ Data Analytics looks into the past to explain the present.
β‘οΈ Data Science predicts the future and creates intelligent solutions.
π Both are essential for modern businesses β Analytics sharpens todayβs decisions, while Science designs tomorrowβs opportunities.
Join Realtime Program with hands-on Business client projects.
π Call on +91 7989319567 / WhatsApp on https://wa.link/t1hnyy
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