Session

How to solve technical dept in AI System development with DevOps?

Growing interest in development AI systems also brings some challenges besides data models, such as technical dept, deployment of the AI system timely. Statistically, more than 65% of companies are taking longer than a month to deploy a developed model. There is a huge knowledge gap in understanding how foster collaboration between data science teams and other stakeholders. The purpose of collaboration is to evolve the model and maintain the AI system relevant to a user’s need. However, there are challenges which are hidden feedback loops, configuration management complexity, data dependencies, and end-2-end development pipeline. These challenges can be overcome with common DevOps practices including continuous feedback and continuous integration and deployment. We may call it MlOps or something, but the root of the solution is DevOps.

Hasan Yasar

Technical Director, Adjunct Faculty Member

Pittsburgh, Pennsylvania, United States

Actions

Please note that Sessionize is not responsible for the accuracy or validity of the data provided by speakers. If you suspect this profile to be fake or spam, please let us know.

Jump to top