Machine Learning projects and artifacts are scattered across local and shared systems, making it difficult to rapidly iterate and execute end to end ML projects in a collaborative manner. Further, data scientists need to work closely with business SMEs to discover use cases and show tangible returns using ML for them. To foster this frictionless collaboration for AI teams with multiple stakeholders, it is important to enable organized access to shared resources for a particular business problem. With the needed assets in one place, data scientists have faster iteration between data prep and modeling and more opportunities for collaboration by inviting other data scientists to engage in the use case and be instantly familiarized with the ML project.
In this session you will learn:
- How to speed and scale experimentation with new DataRobot capabilities, including both code-first and GUI based options
- Why a collaborative experimentation experience is critical for today’s data-driven enterprises
- How global motorsports leader Polaris amplified the productivity of the data science team
Speakers
Product Manager, DataRobot
Data Science Product Manager, Polaris Inc.
DataRobot is an indispensable partner helping us maintain our reputation both internally and externally by deploying, monitoring, and governing generative AI responsibly and effectively.
The generative AI space is changing quickly, and the flexibility, safety and security of DataRobot helps us stay on the cutting edge with a HIPAA-compliant environment we trust to uphold critical health data protection standards. We’re harnessing innovation for real-world applications, giving us the ability to transform patient care and improve operations and efficiency with confidence
DataRobot provides us with innovative ways to test new ideas. Given a problem and a dataset, DataRobot allows us to generate multiple prototypes 20% faster. And the process facilitates the learning evolution of our data scientists.
The value of having a single platform that pulls all the components together can’t be underestimated. Then there’s the combination of the technology and the collaborative DataRobot team. If either one of those wasn’t there, I would have looked elsewhere.