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Introduction
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Example
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OpenShift Data Science
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Create Data Science Project
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Requirements
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Query Editor
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Clean Data Set
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Writer Scaling
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Clean Data
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Check Clean Data
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Download Clean Data
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Smoke
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Guide
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Configuration
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Testing
Description:
Explore a comprehensive AI/ML use case for detecting fraudulent transactions in financial institutions using Red Hat OpenShift Data Science (RHODS). Learn about the solution's flow, integration with partner ecosystems like Starburst, and follow a detailed step-by-step guide to set up and implement the fraud detection workflow. Discover how to create a data science project, utilize the query editor, clean and scale data, and perform necessary configurations and testing. Gain valuable insights into leveraging RHODS for effective fraud detection in a 45-minute tutorial that covers everything from introduction to final testing.

Fraud Detection Using OpenShift Data Science - A Step-by-Step Guide

Red Hat Developer
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