Interactive AutoML Insights
Discover the transformative potential of interactive AutoML tools designed for collaboration and efficiency. The conversation highlights how these tools prioritize user experience by employing algorithms that adapt based on early results, enabling faster discoveries. The no-code approach simplifies model selection through intuitive questioning, making machine learning accessible for everyone.In this clip
From this podcast

Super Data Science: ML & AI Podcast with Jon Krohn
SDS 571: Collaborative, No-Code Machine Learning — with Tim Kraska
Related Questions
Can auto-tuning simplify machine learning coding in the episode AutoML for Natural Language Processing with Abhishek Thakur - #475 and the clip Automating Machine Learning
Can auto-tuning simplify machine learning coding in the episode AutoML for Natural Language Processing with Abhishek Thakur - #475 and the clip Automating Model Training