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Album Review

Deep, source-traceable long-form Chinese album review (乐评). Use when the user supplies a primary music credit (歌手 / 作曲家 / 指挥家 / 乐队 / 演奏家) + an album name and...
深度、可溯源的长篇中文专辑评论(乐评),用于用户指定音乐人或专辑并需要详尽评论时。
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概述

album-review

Produce ONE extremely-high-quality long-form 乐评 (10,000–15,000 中文字符) from a

primary credit + album name. Deep multi-pass research grounds every

discographic fact; strong reasoning forms the critical thesis; a deterministic

validator gates length, section coverage, and claim→evidence traceability before

anything ships. Speed is not a concern — quality and honesty are the only bars.

Locked decisions (do not re-litigate):

  • 中文字符 = CJK 汉字 ONLY (regex [一-鿿]). Latin/digits/punctuation do NOT

count toward the 10,000–15,000 window, so padding cannot game the floor.

  • Emit a backing JSON (claims[] + evidence[]) alongside the prose, so the

traceability gate is machine-checkable. A fact-class claim whose source_id is

absent from evidence[] FAILs the gate.

  • Research access: at runtime USE web/search tools (WebSearch/WebFetch) for the

fan-out when available; degrade honestly to caller-supplied material when offline

(set trace.research_mode). Never fabricate to fill a gap or hit the floor.

Steps

  1. Preflight + route. Confirm exactly one album + a primary credit. If the

input is gear, lyric-translation, or buying advice, do NOT produce a review —

route per the description's Do-NOT line. The classifier in

scripts/check_review.py:classify_route mirrors this.

  1. Classify (runtime judgment, not a fixed enum). Set rich descriptors: idiom,

era, role-of-credit, work-vs-performance (classical), and release form

(single / EP / LP / box / live). Set the unit of analysis (逐曲 vs 逐乐章 vs 逐碟).

Pick the critical lens from the descriptors — never force a pop template onto a

symphony or vice versa. Load rules/genre-lenses.md.

  1. Research. Build a source roster, breadth-fan-out across angles

[artist/genesis, recording/production, the music itself, reception/criticism,

comparisons, cultural-historical context], then depth-deepen thin angles. Clean,

grade, triangulate. Map every discographic fact to a source_id. For thin

(obscure) albums, degrade honestly with explicit 资料不足/公开资料有限 — never

invent track/personnel/date specifics. Load rules/research-protocol.md and

references/source-roster.md.

  1. Reason. Multi-pass: form the critical thesis and per-section judgments; tag

each statement grounded-fact vs interpretation.

  1. Write. Render the genre-adapted long-form skeleton (assets/review-template.md),

10,000–15,000 中文字符, classical separating WORK from PERFORMANCE and carrying a

参考录音/版本比较 section. Emit the backing JSON (assets/backing.example.json,

contract schemas/backing.schema.json).

  1. Verify (gate — never ship a FAIL). Run the validator over the review +

backing; fix and re-run until exit 0:

```bash

python3 scripts/check_review.py --class standard|classical \

--backing

```

  1. Report. The 乐评 + an 证据附录 (evidence appendix) summarizing sources.

Controls (externalized, not prose-only)

  • Length + section + traceability are enforced by scripts/check_review.py

(CJK-字 window, genre-adapted section linter) + scripts/validate_backing.py

(every fact-class claim's source_id must exist in evidence[]). Ship is

blocked on any non-zero exit.

  • No buying/price/transaction advice; read-only research.
  • Honest degradation for thin-info albums (explicit 资料不足, zero invented

specifics).

Metrics

See rules/metric-plan.md: length-window conformance rate (target ≥0.9),

ungrounded-claim rate (target 0), section-coverage pass rate, and activation

precision vs adjacent skills (album-review vs hifi-review vs lyric-translation).

Modules

FileWhen to load
--------------------
rules/research-protocol.mdStep 3 — source roster classes, breadth/depth fan-out, grading, triangulation, honest-degradation.
rules/genre-lenses.mdStep 2 — per-idiom descriptors and which critical dimensions to foreground.
rules/output-template.mdStep 5 — required long-form section skeleton + genre-adaptive substitutions.
rules/metric-plan.mdMetrics — definitions and targets.
references/source-roster.mdStep 3 — concrete music source classes with type/orientation/reliability.

Scripts

FileUsage
-------------
scripts/check_review.py`python3 scripts/check_review.py [--class standard\classical] [--min 10000 --max 15000] [--backing ]` — CJK-字 window + section linter + traceability gate. Exit 1 on any violation.
scripts/validate_backing.pypython3 scripts/validate_backing.py — schema + claim→evidence traceability. Exit 1 on any untraced/fabricated fact.

Assets

FileUsage
-------------
assets/review-template.mdFillable 长文骨架 the writer renders into.
assets/backing.example.jsonA conforming backing JSON to copy from.
schemas/backing.schema.jsonJSON contract for the backing (claims + evidence).

Lifecycle

Version 0.1.0; see CHANGELOG.md. Release gate: ship only when

python3 evals/run_all.py is GREEN (length + section + traceability + routing).

Roster/template changes require a re-run of the eval fixtures. Rollback = revert

to the prior SKILL.md + scripts/.

版本历史

共 2 个版本

  • v0.1.1 当前
    2026-06-24 23:30
  • v0.1.0
    2026-06-07 06:49

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