New features include Composable ML, Continuous AI, No Code AI App Builder, Bias & Fairness Monitoring, and Model Grader
DataRobot, the leader in enterprise AI, announced new enhancements to its enterprise AI platform. The new featuresโwhich were unveiled today at DataRobotโs virtual conference, AI Experience Worldwideโare designed to make it easier for every user, from advanced data scientists to non-technical, front-line decision makers, to derive value from AI.
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โWeโve always seen AI as a team sport, and to truly democratize its capabilities we need to serve the most technical and the most urgent business audiencesโ
โOur research has shown that early adopters of AI report improved customer experience, accelerated rates of innovation, higher competitiveness, higher margins, and better employee experience, yet despite the benefits, many struggle with deploying AI. To truly get the most value from AI, it needs to be trustworthy, scalable, and easy to manage,โ said Ritu Jyoti, Program Vice President, WW AI and Automation Research Practice at IDC. โDataRobotโs new capabilities will open up the power of AI to even more personas, including advanced data scientists, and empower organizations to work on data science initiatives in a highly collaborative way, ultimately improving front-line decision making through higher quality AI powered applications.โ
Specifically, the new enhancements include:
- Composable ML โย Created with the most advanced data scientists in mind, the Composable ML feature allowsย AutoMLย users to clone, edit, and reconfigure DataRobotโs blueprints to fit the specific needs of their use case. Composable ML opens the hood to DataRobot’s world class automation and unlocks the blueprints provided in its repository to granular levels of configuration. Users can also integrate their own custom training code to create entirely new models that instantly work with DataRobot’s explainability tools and have a clear path to production via DataRobotย MLOps.
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- Continuous AI โย To ensure every model put into production remains accurate and viable, DataRobot has extended the power of itsย MLOps productย with Continuous AI: a feature that will allow users to set up multiple retraining policies on their production models. With Continuous AI, users can schedule their models to be automatically retrained on a regular basis or when an event like data drift occurs. The feature will also leverage DataRobotโsย AutoMLย capabilities to automatically create new challengers ensuring the best, most accurate model is always available for use. Continuous AI operates within the existing MLOps governance framework, ensuring no production models are updated or replaced without passing through a gated approval process.
- No Code AI App Builder โย The No Code AI App Builder allows users to quickly turn any model into anย AI application, without requiring any coding. Drag and drop widgets, data visualizations, and pre-built templates enable the creation and deployment of powerful new AI apps in a matter of minutes. The No Code AI App Builder makes it much easier for business users and front-line decision makers to leverage the predictions generated by their models to make more informed, AI-backed business decisions.
- Bias & Fairness Production Monitoring โย Building on itsย Bias & Fairness Testing feature, DataRobot created Bias & Fairness Production Monitoring, which proactively monitors production models for bias. With this addition, DataRobotโs platform enables end-to-end bias testing and monitoring, ensuring every model that is created and put into production is trusted and fair. The platform will alert users whenever bias is detected and provide guidance on the factors that cause bias to mitigate recurrence.
- Model Graderย โย Aย new toolย to evaluate existing AI models and generate an automatic scorecard grading them across four critical areas: Data Quality, Robustness, Accuracy, and Fairness. For each grade, detailed explanations are also provided, enabling customers to understand if their models are best-in-class and ready for production.
โWeโve always seen AI as a team sport, and to truly democratize its capabilities we need to serve the most technical and the most urgent business audiences,โ said Nenshad Bardoliwalla, SVP of Product at DataRobot. โWeโre opening up our platform to enable advanced data scientists to explore their own custom-built code, while simultaneously delivering no-code solutions to empower non-technical business users with AI at their fingertips. These investments allow us to truly tackle all the personas necessary to make AI pervasive.โ
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