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FSRS-4.5 flashcard review session for OpenAlgernon. Use when the user runs `/algernon review`, says "revisar flashcards", "quero revisar", "cards em atraso",...

综合技能

作者:Antonio V. Franco @antoniovfranco

许可证:MIT-0

MIT-0 ·免费使用、修改和重新分发。无需归因。

版本:v1.0.0

统计:⭐ 0 · 76 · 0 current installs · 0 all-time installs

0

安装量(当前) 0

🛡 VirusTotal :良性 · OpenClaw :良性

Package:antoniovfranco/algernon-review

安全扫描(ClawHub)

  • VirusTotal :良性
  • OpenClaw :良性

OpenClaw 评估

The skill's instructions are consistent with a local flashcard review tool that reads and updates a local SQLite database, but there are a few practical mismatches and minor safety notes you should be aware of before installing.

目的

The skill is described as a local FSRS-based review session and all runtime instructions operate on a local SQLite DB (default: $ALGERNON_HOME/data/study.db), which is coherent with the purpose. However the SKILL.md depends on the sqlite3 command-line tool being available, yet the registry metadata lists no required binaries — this is an omission in the metadata (the skill will fail or cannot run without sqlite3).

说明范围

The instructions explicitly run SQL SELECT/UPDATE/INSERT against a local DB and direct creation of 'correction' cards. This is expected for a flashcard reviewer, but it means the agent will read and write all card content in the database (private user data). The SQL snippets insert unsanitized values (e.g., DECK_ID, MISCONCEPTION_QUESTION, CORRECT_EXPLANATION) which could cause accidental corruption or SQL injection if variables are not valida…

安装机制

Instruction-only skill with no install steps or external downloads — lowest install risk. Nothing is written to disk by an installer.

证书

No required environment variables or credentials are declared, which matches the skill being local. The instructions do reference ALGERNON_HOME (optional) and $HOME, so the skill will read files under the user's home directory; this is appropriate for a local study DB but should be made explicit in metadata (e.g., declare that it needs filesystem access to ~/.openalgernon).

持久

The skill does not request always:true and does not modify other skills or global agent settings. It performs only its own DB reads/writes during a session, which is expected behavior.

综合结论

This skill appears to be what it says: a local FSRS review agent that reads and updates an SQLite database. Before installing, be aware of these points: - The skill expects sqlite3 on PATH but the metadata doesn't declare it; install sqlite3 or ensure your runtime includes it. The skill will fail without it. - It will read and write your flashcard DB (default ~/.openalgernon/data/study.db). If your cards are sensitive, back up the DB and confi…

安装(复制给龙虾 AI)

将下方整段复制到龙虾中文库对话中,由龙虾按 SKILL.md 完成安装。

请把本段交给龙虾中文库(龙虾 AI)执行:为本机安装 OpenClaw 技能「Algernon Review」。简介:FSRS-4.5 flashcard review session for OpenAlgernon. Use when the user runs `/al…。
请 fetch 以下地址读取 SKILL.md 并按文档完成安装:https://raw.githubusercontent.com/openclaw/skills/refs/heads/main/skills/antoniovfranco/algernon-review/SKILL.md
(来源:yingzhi8.cn 技能库)

SKILL.md

打开原始 SKILL.md(GitHub raw)

---
name: algernon-review
version: "1.0.0"
description: >
  FSRS-4.5 flashcard review session for OpenAlgernon. Use when the user runs
  `/algernon review`, says "revisar flashcards", "quero revisar", "cards em atraso",
  "modo revisao", "review session", or asks to practice due cards. Handles all card
  types (flashcard, dissertative, argumentative), AI evaluation of open-ended
  answers, automatic FSRS scheduling, N1/N2/N3 promotion, and correction card
  generation.
---

# algernon-review

You run the interactive flashcard review session with FSRS-4.5 spaced repetition.
You handle flashcards (binary reveal), dissertative cards (AI-graded), and
argumentative cards (AI-graded). At the end, you check promotion eligibility and
save the session.

## Constants

```bash
ALGERNON_HOME="${ALGERNON_HOME:-$HOME/.openalgernon}"
DB="${ALGERNON_HOME}/data/study.db"
```

## FSRS-4.5 Parameters

- DECAY = -0.5, FACTOR = 0.2346
- Stability (S) = days to reach 90% retention
- Grades: 1 = Again, 3 = Good

## Step 1 — Fetch Due Cards

```bash
sqlite3 "$DB" 
  "SELECT c.id, c.type, c.front, c.back, c.tags, c.source_title, c.deck_id,
          cs.stability, cs.reps, cs.state
   FROM cards c
   JOIN card_state cs ON cs.card_id = c.id
   JOIN decks d ON d.id = c.deck_id
   JOIN materials m ON m.id = d.material_id
   WHERE cs.due_date <= date('now')
   [AND m.slug = 'SLUG']
   ORDER BY cs.due_date ASC
   LIMIT 50;"
```

(Include `AND m.slug = 'SLUG'` only if a specific slug was provided.)

If no cards due: "No cards due for review. Great job staying on top of it." and stop.

Display: "Starting review: N cards due."

## Step 2 — Review Loop

### Flashcards (type = 'flashcard')

1. Show front. AskUserQuestion options: ["Show answer"]
2. Show back. AskUserQuestion options: ["Again", "Good"]
3. Run FSRS update (see Step 3).

### Dissertative and Argumentative Cards

1. Show front. AskUserQuestion options: ["Ready to answer"]
2. AskUserQuestion: "Type your answer:" (free text)
3. Evaluate the response against the reference answer (card back):
   - Dissertative: check accuracy of key points, completeness
   - Argumentative: check that both sides are represented, trade-offs identified
   - Output: brief feedback + suggested grade (1 or 3) + optional MISCONCEPTION note
4. Show evaluator feedback + reference answer. AskUserQuestion options: ["Again", "Good"]
   (Use the user's button choice, not the AI suggestion.)
5. Run FSRS update using the user's chosen grade.
6. If a MISCONCEPTION was detected, create a correction card:
   ```bash
   sqlite3 "$DB" 
     "INSERT INTO cards (deck_id, type, front, back, tags)
      VALUES (DECK_ID, 'flashcard',
              'CORRECTION: MISCONCEPTION_QUESTION',
              'CORRECT_EXPLANATION',
              '["[correction]","[N1]"]');
      INSERT INTO card_state (card_id, due_date)
      VALUES (last_insert_rowid(), date('now'));"
   ```

## Step 3 — FSRS Scheduling

For each graded card, compute new values and update `card_state`.

### Read current state:
```bash
sqlite3 "$DB" 
  "SELECT stability, difficulty, reps, lapses, state, last_review
   FROM card_state WHERE card_id = CARD_ID;"
```

### Compute elapsed days (if last_review is not NULL):
```bash
sqlite3 "$DB" 
  "SELECT ROUND(julianday('now') - julianday('LAST_REVIEW'), 2) AS elapsed;"
```

### State transitions:

| State      | Grade | New stability             | New difficulty              | New state  | Interval         |
|------------|-------|---------------------------|-----------------------------|------------|------------------|
| new        | Good  | 0.4                       | 0.3                         | review     | 1 day            |
| new        | Again | 0.1                       | 0.4                         | learning   | 1 day            |
| learning   | Good  | stability * 1.5           | MAX(0.1, difficulty - 0.05) | review     | MAX(1, ROUND(S)) |
| learning   | Again | stability (unchanged)     | MIN(1.0, difficulty + 0.1)  | learning   | 1 day            |
| relearning | Good  | stability * 1.5           | MAX(0.1, difficulty - 0.05) | review     | MAX(1, ROUND(S)) |
| relearning | Again | stability (unchanged)     | MIN(1.0, difficulty + 0.1)  | relearning | 1 day            |
| review     | Good  | S * EXP(0.9*(1-R))        | MAX(0.1, difficulty - 0.05) | review     | MAX(1, ROUND(S)) |
| review     | Again | MAX(0.1, stability * 0.2) | MIN(1.0, difficulty + 0.1)  | relearning | 1 day, lapses+1  |

For review+Good, compute retrievability first:
```bash
sqlite3 "$DB" 
  "SELECT EXP(LN(0.9) * ELAPSED / STABILITY) AS R;"
```

### Update:
```bash
sqlite3 "$DB" 
  "UPDATE card_state SET
     stability   = NEW_S,
     difficulty  = NEW_D,
     due_date    = date('now', '+' || INTERVAL || ' days'),
     last_review = datetime('now'),
     reps        = reps + 1,
     lapses      = NEW_LAPSES,
     state       = 'NEW_STATE'
   WHERE card_id = CARD_ID;
   INSERT INTO reviews (card_id, grade, scheduled_days, elapsed_days)
   VALUES (CARD_ID, GRADE, INTERVAL, ELAPSED);"
```

## Step 4 — Promotion Check (after all cards)

For each card reviewed with grade = Good where reps >= 5:
```bash
sqlite3 "$DB" 
  "SELECT c.id, c.tags, c.deck_id, cs.reps
   FROM cards c JOIN card_state cs ON cs.card_id = c.id
   WHERE c.id = CARD_ID AND cs.reps >= 5;"
```

If reps >= 5 and tags contain `[N1]`, check deck retention over last 7 days:
```bash
sqlite3 "$DB" 
  "SELECT CAST(SUM(CASE WHEN grade=3 THEN 1 ELSE 0 END) AS REAL) / COUNT(id) AS retention
   FROM reviews r JOIN cards c ON c.id = r.card_id
   WHERE c.deck_id = DECK_ID AND r.reviewed_at >= datetime('now', '-7 days');"
```

If retention >= 0.9:
- Generate a deeper N2 version of the card (N2: differentiator + when to use + main trade-off).
- Insert as new card with tag `[N2]`, due today.
- Apply same logic for `[N2]` cards: promote to N3 (full technical depth, production
  nuances, edge cases).

## Step 5 — Session Summary

```
Session complete.
Cards reviewed: N
Again: X  |  Good: Y
Retention this session: Z%
Next review: [earliest due_date from card_state]
```

Append to today's conversation log:
```bash
echo "[HH:MM] review session | Cards: N | Retention: Z% | Promotions: P" 
  >> "${ALGERNON_HOME}/memory/conversations/YYYY-MM-DD.md"
```