Date: Wednesday, May 24
Start Time: 10:50 am
End Time: 11:20 am
With the boom in tools for developing, monitoring and maintaining ML models, data science teams have many options to choose from. Proprietary tools provided by cloud service providers are enticing, but teams may fear being locked in—and may worry that these tools are too costly or missing important features when compared with alternatives from specialized providers. Fortunately, most proprietary, fee-based tools have an open-source component that can be integrated into a home-grown solution at low cost. This can be a good starting point, enabling teams to get started with modern tools without making big investments and leaving the door open to evolve tool selection over time. In this talk, we’ll present a step-by-step process for creating an MLOps tool set that enables you to deliver maximum value as a data scientist. We’ll share how we built pipelines for model development and put them into production using open-source projects.