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What makes deep learning better than traditional ML? www.samyak.comban site
Deep learning is superior to traditional ML in several ways:
Handles Large Data: Deep learning excels with vast amounts of unstructured data (images, text, audio), while traditional ML struggles with this without heavy preprocessing.
Automatic Feature Extraction: Deep learning automatically identifies important features from raw data, unlike traditional ML which requires manual feature engineering.
Better Accuracy: Deep learning models generally outperform traditional ML in tasks like image recognition, speech recognition, and NLP.
Improved Generalization: Deep learning models tend to generalize better to new data, while traditional ML can struggle without proper tuning.
Scalability: Deep learning models improve with larger datasets, whereas traditional ML may plateau.
End-to-End Learning: Deep learning simplifies the process by learning directly from input to output, unlike traditional ML which requires multiple stages.
Versatility: Deep learning is ideal for complex tasks, like autonomous driving and real-time recognition, that traditional ML can't handle as effectively.
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