Kenny-EPAM-DIAL/applied-ml-evaluation
Applied ML Evaluation Papers is a public, practitioner-focused repository of two technical papers that document rigorous evaluation and validation methods for modern machine learning systems used in real deployments. The collection is designed for independent review and auditability: each paper is provided as a text-based PDF.
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Dec 16, 2025
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