Production ML: 6 Key Challenges & Insights—an MLOps Roundtable Discussion
Deploying machine learning (ML) models into production poses several challenges, including establishing efficient data pipelines, understanding and attributing costs, and designing organizational processes that support quick execution. A roundtable discussion with ML experts highlighted six key takeaways: bringing ML models into production requires coordinating data, tools, and teams; demonstrating the return on investment of ML is crucial to leadership's continued investment, but calculating ROI without good cost attribution is challenging; as organizations grow larger, their challenges deploying ML into production also grow due to increased complexity and requirements; setting up a data science team for success involves generating reliable and accessible training data and providing them with an environment to experiment and train models; juggling different data processing strategies can be tricky, requiring pairing batch and streaming infrastructure with tools like Tecton; and future-proofing systems and processes is crucial to mitigate the pain of scaling ML.
Company
Tecton
Date published
Jan. 24, 2024
Author(s)
Evelyn Chea
Word count
1124
Language
English
Hacker News points
None found.