Great news on organizations quickly becoming more efficient with putting machine learning models into production: Based on the ratio of (the number of) logged ML experiments to actually deployed/registered models, the average efficiency increased by a factor of 3 in only 14 months! The data for this evaluation stems from MLflow (as open source MLOps platform). And looking at the results separately, the number of registered models even increased by a factor of 10 (!) within a single year. The number of companies registering at least one model was up by 210%! All in all, great data to show that the GenAI wave also accelerates ML production adoption in general! Thanks Databricks for the insightful report! #mlflow #ml #ai
Our data shows that organizations have become 3x more efficient at putting ML models into production in just 14 months. They're spending fewer resources on experimental models that never provide real-world value. We break down these trends and more in the State of Data + AI, which examines usage data from our 10,000+ global customers. https://dbricks.co/3KB4OIK