| name | confusion-tracker |
| description | 教学过程中自动捕获和记录学习者的概念疑难点("为什么/是什么/怎么推/什么意思"类型的问题),保存到进度文件的"概念疑难点记录"区,形成考前回顾清单。 |
| license | MIT |
confusion-tracker — concept-confusion tracking
Purpose
Capture the learner's concept-level confusions (why / what / how-derived questions — not quiz answers) during tutoring and record them into the 「概念疑难点记录」 section of study_progress.md, building a pre-exam review list. Used by exam-tutor (while teaching) and exam-review (during the final sweep).
Activation
- During tutoring, when the learner asks a concept question matching: 「为什么…?」/「…是什么、什么意思?」/「这个公式怎么推、怎么来的?」/「…的重点是什么?」/「讲一下…」, or any clarification follow-up that is not a quiz answer.
- Skip for: pure quiz answering (right or wrong), and chit-chat that needs no concept explanation.
Inputs
- The progress-file path (e.g.
study_progress.md), read at session start.
- The current chapter/phase name being taught.
Workflow
- Detect — decide whether the follow-up is a concept question (not a quiz item or its answer).
- Answer — give a concise, clear explanation grounded in the current wiki chapter. Label the source: 🟢 来自资料 for material-sourced content, 🟡 AI补充,可能与你老师讲的不完全一致 for AI-supplied background. Never present AI-added content as the teacher's.
- Record — persist the confusion:
关联章节 / 疑难点 (one line) / 解答要点 (≤2 sentences) / 状态 (default 待回顾). If study_state.json is absent and Python works, first run python "${CLAUDE_SKILL_DIR}/scripts/update_progress.py" --workspace <ws> init. The normal and ONLY state-backed write path is then python "${CLAUDE_SKILL_DIR}/scripts/update_progress.py" --workspace <ws> add-confusion --chapter <ch> --note <疑难点/解答要点> — the md table is a generated view and a hand-appended row is lost on the next render. Only when Python truly cannot run may the no-Python fallback append directly to the 「## 💡 概念疑难点记录」 table in study_progress.md, auto-incrementing the 序号 column. A nonzero state command while Python runs is a fail-loud write failure, not permission to hand-edit.
- Persist-first (notebook CLI) — the state row stays exactly as above; ADDITIONALLY persist the full explanation itself (step 2's answer, provenance labels included) so it survives outside chat:
echo <explanation body> | python "${CLAUDE_SKILL_DIR}/scripts/notebook.py" --workspace <ws> add-entry --chapter <ch> --type confusion --id <slug> --title <confusion gist> (body via STDIN; same --id replaces in place; notebook/index.md rebuilds; the script resolves from the skill package root). The receipt line then carries the pack-provided link line (zh 「完整解答:notebook/chNN.md#<anchor>|目录:notebook/index.md」, en Full explanation: notebook/chNN.md#<anchor> | Index: notebook/index.md). On a failed notebook write, TELL the student (the chat explanation already delivered stands as the copy); file-less clients keep chat-only output per exam-cram's capability dispatch.
- Confirm — tell the learner it was logged (e.g. 「已记录到疑难点」) in one short line, without breaking the teaching flow.
Output Contract
- Persist one confusion record (
关联章节 / 疑难点 / 解答要点 / 状态) through update_progress.py add-confusion; initialize state first when Python works. Only a true no-Python fallback appends one row to the 「## 💡 概念疑难点记录」 table in study_progress.md (序号 auto-increments).
- Persist-first default: the full confusion explanation is ALSO written into
notebook/chNN.md via the notebook CLI (--type confusion, Workflow step 3) — the state row records that the confusion exists, the notebook entry preserves the explanation itself; the receipt carries the pack-provided link line. File-less clients keep chat-only output.
- During the final sweep, read the confusion records and have the learner restate each: update
状态 in place — 待回顾 → 已回顾 when explained correctly; keep 待回顾 and re-explain otherwise. Never overwrite other skills' writes.
- Student-facing output defaults to English (Simplified Chinese if the student opened in Chinese); a persisted
study_state.json language (中文/English/双语) switches it per exam-cram's dispatch rule with single-language purity.
Language packs
Student-visible wording for this skill lives in per-language packs — load the one matching study_state.json.language BEFORE emitting any student-visible output:
Boundaries
- Structured progress state: when
study_state.json exists it is the SINGLE SOURCE OF TRUTH — record via python "${CLAUDE_SKILL_DIR}/scripts/update_progress.py" --workspace <ws> add-confusion, update review status via set-confusion-status --id <qid>|--index <N> --status 已回顾/待回顾; never hand-patch the generated study_progress.md. If the state write fails, TELL the user; never continue as if it saved.
- Only record concept questions; never quiz or grade (that is
exam-quiz).
- Concept answers carry the canonical provenance labels (🟢 来自资料 / 🟡 AI补充,可能与你老师讲的不完全一致 / ⚠️ AI生成答案,非老师/教材提供); never disguise AI-added content as teacher-provided.
- Share the progress state with
exam-review: in state-backed workspaces both skills go through update_progress.py (append via add-confusion, status via set-confusion-status); only a true no-Python md-only workspace appends/updates study_progress.md in place. Never overwrite other skills' writes.