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assisted-mastery
Makes agent reasoning visible, surfaces tradeoffs, and fades help so humans build judgment. Use when reviewing or learning from agent-written code.
用 Codex 或 Claude 帮你安装 复制这段 Prompt,粘贴到 Codex、Claude 或其他助手里,让它检查 Skill 页面并帮你完成安装。
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Makes agent reasoning visible, surfaces tradeoffs, and fades help so humans build judgment. Use when reviewing or learning from agent-written code.
用 Codex 或 Claude 帮你安装 复制这段 Prompt,粘贴到 Codex、Claude 或其他助手里,让它检查 Skill 页面并帮你完成安装。
基于 SOC 职业分类
Detects AI-generated writing patterns in prose. Use when reviewing docs for slop, vague language, or identity leaks before publishing.
Audits Rust code for unsafe blocks, ownership issues, and Cargo dependency risks. Use when reviewing Rust code or before merging Rust changes.
Recommends context compression strategies for bloated or quota-heavy sessions. Use when context feels sluggish or quota burns faster than expected.
Guide minimal code via a decision ladder with full safety, edge, and negative-case coverage. Use when adding code, choosing a dependency, or auditing a diff.
Optimizes context window via MECW principles and memory tiering. Use when context exceeds 30% or before long multi-step tasks.
Generates or remediates documentation with human-quality writing. Use when creating new docs, rewriting AI-generated content, or applying style profiles.
| name | assisted-mastery |
| description | Makes agent reasoning visible, surfaces tradeoffs, and fades help so humans build judgment. Use when reviewing or learning from agent-written code. |
| alwaysApply | false |
| category | workflow-methodology |
| tags | ["learning","assistance-dilemma","visible-reasoning","tradeoffs","skill-retention","automation-bias"] |
| dependencies | [] |
| tools | [] |
| usage_patterns | ["visible-reasoning","mode-selection","assistance-fading"] |
| complexity | intermediate |
| model_hint | standard |
| estimated_tokens | 2200 |
| modules | ["modules/modes-and-fading.md","modules/tradeoff-ledger.md","modules/research-basis.md"] |
| role | library |
A finished diff hides the thinking that produced it. The thinking is what the human needs to keep. Show the work, surface the choices, and hand back the parts worth struggling with.
A coding agent that always returns the finished answer is maximally helpful to throughput and quietly corrosive to skill. The learning-science evidence is consistent: instructional support that helps a novice actively harms an expert (the expertise reversal effect, Kalyuga et al. 2003), so help must fade as competence grows rather than stay constant. Struggling with a problem before being shown the solution produces deeper understanding and transfer than being handed the answer (productive failure, Kapur 2008). And offloading the thinking to a tool measurably reduces what the human retains (the cognitive offloading and critical-thinking correlation of r = -0.75, Gerlich 2025; the Google effect, Sparrow et al. 2011).
This is the assistance dilemma: the same help that speeds the output erodes the judgment needed to verify it. The danger compounds with automation bias: AI-assisted developers in a controlled study wrote less secure code while believing it was more secure (Perry et al. 2023). You cannot verify what you do not understand, and a fluent diff signals competence it has not earned.
This skill does not slow down throughput work. It makes the reasoning a first-class deliverable alongside the code, surfaces the tradeoffs before a design is locked in, and lets the human choose how much of the work to keep for themselves.
For any non-trivial change, emit the reasoning alongside the diff, sized to the blast radius:
A high-blast-radius change with no stated reasoning is treated as incomplete, the same way an apprentice who "just did it" without showing their thinking would be sent back. This mirrors cognitive apprenticeship: the expert's invisible reasoning must be externalized before anyone can supervise or learn from it.
Do not present a single design as inevitable. State the decision, the options, and the axis each option wins on, then make the call and say why. Record consequential decisions in the tradeoff ledger so the reasoning is auditable later and the human can challenge it now. This is how novices were always trained into experts: by working through the positives, negatives, and ramifications of a decision, not by copying the conclusion.
Pick the assistance mode deliberately per task, and reduce it over time on skills the human is building. See modes-and-fading.md:
Default to produce mode for commodity work and explain mode where understanding is the point. As the human's competence on a given area grows, fade from produce toward explain to manual: permanent scaffolding is the failure mode, not the goal.
Skip it for trivial, reversible, well-understood edits where the reasoning is self-evident: forcing a ledger entry on a typo fix is ceremony, and ceremony trains people to ignore the gate.
| Thought | Reality |
|---|---|
| "The diff is obviously correct" | Correct to whom? State why, or you are guessing. |
| "Explaining slows me down" | On work you must own, the explanation is the deliverable. |
| "There was only one way to do it" | There is rarely one way. Name the alternatives you dismissed. |
| "I'll understand it later if it breaks" | Automation bias: you will trust it precisely when it is wrong. |
| "More agent help is always better" | Help that never fades builds dependence, not skill. |
imbue:graduated-implementation: the other direction of the same
axis. This skill fades scaffolding; that one ramps the ambition
of the next increment as understanding is demonstrated.imbue:proof-of-work: evidence that the code works; this skill
adds evidence that the human understands it.imbue:rigorous-reasoning: anti-sycophancy when evaluating the
agent's stated tradeoffs rather than deferring to them.imbue:karpathy-principles: think-first and simplicity, the
pre-implementation companion to visible reasoning.leyline:decision-journal: the durable home for tradeoff-ledger
entries that outlive the session.leyline:risk-classification: choosing the automation tier from
the task's risk, the input to mode selection.The measured evidence for blind-trust failure, the learning-science basis for fading, and the six workflow principles are preserved in research-basis.md.