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H2O.ai Launches Deep Water, Deep Learning for Enterprise

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by Angela Guess

A new press release reports, “H2O.ai, the company bringing AI to business, last month announced the release of its Deep Water product, a GPU-powered deep learning offering that’s giving Fortune 500 companies the ability to optimize business operations by analyzing and processing massive amounts of unstructured data, such as images, video, text and audio, at a much faster rate. Deep Water integrates GPU backends TensorFlow, MXNet and Caffe for broad adoption and ease of use. Most enterprise businesses have been blindsided by the unprecedented amount of data that’s materialized over the past decade. Deep Water ingests these enormous data sets and simplifies tasks for portfolio managers, claims adjusters, doctors and more. The tool’s unmatched computational power and predictive abilities fully automate processes like credit scoring and disease diagnosis.”

The release goes on, “Other use cases include: Credit Risk and Lending – Redefine credit assessment using non-traditional data gathered through social media and instant loan approval with data analytics. Preventative Maintenance – Analyze images of homes and other property and provide insights on how to protect from potential damages. X-Ray Diagnosis – Automatically predict likelihood of specific diseases and ailments using x-ray scans. Predictive IT Traffic – Pattern analysis and prediction for Distributed Denial of Service (DDoS) detection and prevention and predictive maintenance of data center equipment… From a technical perspective, Deep Water’s multipronged solution bundles H2O’s familiar interfaces from Python, R and H2O’s graphical UI (Flow) with the most popular deep learning GPU backends: TensorFlow, MXNet and Caffe. Moving forward, H2O.ai will continue to make Deep Water and its other tools even more automated using data from its enterprise customers, and its own community of open source users.”

Read more at Business Wire.

Photo credit: H2O.ai

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