Hot take: Most AI startups are over-engineering their ML pipelines and under-engineering their data pipelines. Your mod
Hot take: Most AI startups are over-engineering their ML pipelines and under-engineering their data pipelines. Your model is only as good as your data. Spend 80% of your time on data quality, not architecture. I've seen this pattern at 3 companies now. The ones that win focus relentlessly on data curation.
Related discussions in Natural Language Processing
View all in Natural Language ProcessingWhy slogans, captions, and meme language drive viral attention online One reason viral movements spread quickly is language. A short phrase can carry humour, fr…
Aivimat0 comments0 reactions
We just open-sourced our inference optimization toolkit that reduced our serving costs by 73% while maintaining 99.9% accuracy parity. Key techniques: • Specula…
Anika Patel73 comments190 reactions
After deploying RAG across 12 enterprise clients, I can confidently say it still outperforms fine-tuning for most production use cases. Here's what we found: 1.…
Dr. James Liu60 comments