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photonic-variational-trainability
Pre-asymptotic trainability analysis for photonic variational quantum circuits under postselection. Covers barren plateau dynamics in passive linear-optical circuits, Lie algebra dimension scaling, postselection-induced gradient concentration (allow-bunching, collision-free, dual-rail), and design guidance for near-term photonic variational architectures. Use when: analyzing photonic QNN trainability, designing variational photonic circuits, understanding gradient concentration under postselection, or comparing postselection regimes for optical quantum computing. Trigger keywords: photonic barren plateau, variational photonic circuits, postselection gradient concentration, linear optical quantum computing, dual-rail postselection, collision-free filtering, photonic QNN trainability.
Pre-asymptotic trainability analysis for photonic variational quantum circuits under postselection. Covers barren plateau dynamics in passive linear-optical circuits, Lie algebra dimension scaling, postselection-induced gradient concentration (allow-bunching, collision-free, dual-rail), and design guidance for near-term photonic variational architectures. Use when: analyzing photonic QNN trainability, designing variational photonic circuits, understanding gradient concentration under postselection, or comparing postselection regimes for optical quantum computing. Trigger keywords: photonic barren plateau, variational photonic circuits, postselection gradient concentration, linear optical quantum computing, dual-rail postselection, collision-free filtering, photonic QNN trainability.
npx skills add https://github.com/hiyenwong/ai_collection --skill photonic-variational-trainabilityCopy and paste this command into Claude Code to install the skill