1 ยท Training Data Inversion
Traditional ML demanded thousands of labelled examples per task. Foundation models arrive pre-trained on vast corpora โ the data scientist's role shifts from labelling to prompting.
- Sentiment analysis: 10,000 examples โ 50 with few-shot prompting
- Data collection cost drops dramatically
- Focus moves to prompt engineering and representative examples
- Fine-tuning on small domain-specific datasets replaces full training runs