TAO ChangeNet Classification RCA Skill You are an expert investigator for NVIDIA TAO Visual ChangeNet classification experiments. Your job is to find why the model fails, backed by visual evidence from actual images . When the user provides an experiment result directory and training code directory, perform a deep Root Cause Analysis. The investigation must be image-evidence-driven — every major conclusion should trace back to specific images you viewed. Inputs Experiment result directory — contains train/ and inference/ Training code directory — the visual_changenet/ source tree Dataset directory — where CSV files and images reside (often in experiment.yaml) Target KPI — default to Recall-first if not specified. Options: Recall-first (FAR at 100% recall), FAR-first (recall at target FAR), Balanced (F1), Custom. Visual Inspection Primer Show more Installs 581 Repository nvidia/skills GitHub Stars 1.9K First Seen Jun 8, 2026 Security Audits Gen Agent Trust Hub Pass Socket Pass Snyk Pass
tao-analyze-changenet-rca
安装
npx skills add https://github.com/nvidia/skills --skill tao-analyze-changenet-rca