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AgeCommit message (Expand)Author
8 hoursdocs(cnn_v3): add uv inline deps to train_cnn_v3.py + HOW_TO_CNN noteskal
8 hoursperf(cnn_v3): cache dataset images at init to avoid per-patch disk I/Oskal
8 hoursfix(cnn_v3): correct weight budget in docstring (3.9→5.4 KB f16)skal
8 hoursfix(cnn_v3): resize target to albedo dims when sizes differskal
8 hoursdocs(cnn_v3): add full Old House example to HOW_TO_CNN §1bskal
9 hoursfix(cnn_v3): native OPEN_EXR_MULTILAYER + quiet render + flexible channel namesskal
9 hoursfix(blender_export): version detection + Blender 5.x warning + cleanupskal
10 hoursfix(cnn_v3): blender_export Blender 5 compositor activation + document Render...skal
10 hoursfeat(cnn_v3): blender_export print pack_blender_sample.py batch command after...skal
10 hoursfix(cnn_v3): blender_export fallback socket name aliases for Shadow etc.skal
10 hoursfix(cnn_v3): blender_export discard dir next to --output, not in /tmpskal
10 hoursfix(cnn_v3): blender_export.py Blender 5 File Output node slots + file_nameskal
11 hoursdocs(cnn_v3): clarify --output is a base dir, not a frame_### patternskal
11 hoursfix(cnn_v3): blender_export.py Blender 5.x API compatibilityskal
11 hoursfix(cnn_v3): blender_export --view-layer flag + fallback to layer[0]skal
11 hoursfeat(cnn_v3): gen_sample tool + 7 simple training samplesskal
11 hoursfeat(cnn_v3): gen_sample tool + 7 simple training samplesskal
12 hoursfeat(cnn_v3): gen_sample tool + 7 simple training samplesskal
29 hoursrefactor(cnn_v3): code review — comments, simplifications, test fixskal
33 hoursfeat(cnn_v3): export script + HOW_TO_CNN.md playbookskal
33 hoursfeat(cnn_v3): Phase 6 — training script (train_cnn_v3.py + cnn_v3_utils.py)skal
33 hoursfeat(cnn_v3): Phase 5 complete — parity validation passing (36/36 tests)skal
2 daysfeat(cnn_v3): G-buffer phase 1 + training infrastructureskal
2026-03-05add training photosskal
2026-02-27remove old files, add new training setskal
2026-02-15feat(cnn): add CNN v3 directory structure with training dataskal