DataRobot reduces costs for financial firms
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Traditional data science methods—marked by heavy reliance on specialized expertise and lengthy development cycles—tend to hinder innovation in financial firms. DataRobot’s AI-driven, automated platform overcomes these challenges by streamlining the entire machine learning lifecycle. DataRobot users have seen a 3 to 10 percent improvement in risk modeling accuracy, with one consumer credit firm realizing an annual profit impact of $7 to $8 million AUD. By automating model development and deployment, the firm accelerated the building and iteration of risk models, enabling the integration of more granular borrower data to enhance creditworthiness assessments. These refined models allowed for increased loan volumes without elevating credit losses. Financial firms utilizing DataRobot’s AI-driven fraud and money laundering detection typically see a 25 to 40 percent reduction in false positives. Additionally, businesses using DataRobot’s automation have reduced model development time by up to 50 percent, enabling smaller teams to experiment with predictive modeling at scale. By reducing false positives, improving risk modeling accuracy, and cutting development time, DataRobot helps financial firms overcome the traditional inefficiencies of data science, enabling financial firms to make faster decisions and reduce operational costs.
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