Date: Wednesday, May 22
Start Time: 1:30 pm
End Time: 2:00 pm
AI models that produce accurate results on test data are a necessary component of successful applications, but by themselves they are insufficient. In this talk, we delve into often-overlooked, but critical, elements required to create and sustain a robust application solution based on AI models. We will explore the need for deep understanding of model performance and highlight techniques for identification of specific hyperparameters that can be tuned to optimize real-world accuracy. We will also examine the importance of pre- and post-processing and the advantages of using multiple models in concert to improve accuracy. Finally, at the organization level, we will provide recommendations for improving product development via synergy between data engineers, application domain experts, machine learning engineers, data scientists, quality assurance engineers, DevOps specialists and software engineers.