eea609d960
RecursiveRetriever was a failed approach, not carried into TRM5. - delete app/retriever/ (empty placeholder) - drop retriever + train blocks from config/default.yaml - renumber fidelity checklist 13->12 items (drop #4, shift up) - sync core-goal text, dir tree, module-interaction diagrams across CLAUDE.md, ARCHITECTURE.md, overview.md, README.md - reference/ kept intact as historical code
72 lines
1.9 KiB
YAML
72 lines
1.9 KiB
YAML
# config/default.yaml
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# 科研实验配置默认值来源(会在实验中反复扫动/对比的参数)。
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# 工程配置(少变、敏感)由 .env / pydantic-settings 管理,不在此文件。
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# 优先级: CLI args > 此文件。CLI 仅用于单次临时覆盖。
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# ── 建树模块 ──
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tree:
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max_paragraphs_per_l2: 5
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l1_segment_duration: 600.0 # L1 段时长(秒)
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l2_clip_duration: 60.0 # L2 clip 时长(秒)
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l3_fps: 0.5 # L3 帧提取频率(帧/秒)
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l2_representative_frames: 6 # L2 VLM 描述用的代表帧数
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cache_dir: "cache/trees"
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concurrency: 16 # asyncio Semaphore 上限
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subtitle_inject: true # 建树时是否注入 SRT 字幕
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srt_window_sec: 5.0 # 字幕匹配时间窗口(前后各 N 秒)
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# ── Embedding ──
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embed:
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backend: "local"
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model_name: "BAAI/bge-base-zh-v1.5"
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embed_dim: 768
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device: "cpu"
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# ── Harness 自进化循环 ──
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harness:
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workspace_dir: "workspaces/default"
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store_dir: store
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mode: infer
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concurrency: 12
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max_steps: 15
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skill_mode: auto
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n_samples: 0
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questions: "benchmarks/Video-MME"
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skills_version: v1
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prompts_version: v1
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epochs: 1
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# CE-Gate 参数
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gate_e_confirm: 20.0
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gate_e_provisional: 3.0
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gate_w_net_min: 2
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gate_delta_min: 0.02
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gate_lambda_dir: -0.642
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gate_e_rollback: 10.0
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gate_block: 8
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gate_n_max: 40
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gate_p_low: 0.05
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gate_p_high: 0.95
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gate_probe_quota: 0.2
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gate_gamma_decay: 0.9
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gate_cooldown_steps: 2
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gate_guard_err: 0.10
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# 进化参数
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edit_budget_start: 5
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edit_budget_end: 2
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skill_update_mode: patch
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appendix_consolidate_threshold: 6
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# 数据池
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diag_size: 200
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diag_correct_ratio: 0.5
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val_size: 30
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val_correct_ratio: 0.5
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test_size: 60
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# mini-batch
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batch_size: 15
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min_class_per_batch: 2
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batch_correct_ratio: 0.5
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momentum_samples: 20
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eval_min_per_class: 2
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early_stop_patience: 8
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use_slow_momentum: true
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