Nsforge Formula Management
by u9401066
公式庫管理。觸發詞:找公式, 列出, 更新公式, 刪除公式, 公式庫。
Skill Details
Repository Files
1 file in this skill directory
name: nsforge-formula-management description: 公式庫管理。觸發詞:找公式, 列出, 更新公式, 刪除公式, 公式庫。
公式庫管理 Skill
⚠️ 操作後必須向用戶展示結果!
derivation_get_saved後顯示公式內容(LaTeX 格式)derivation_search_saved後顯示搜尋結果摘要- 刪除前務必用
derivation_get_saved顯示內容讓用戶確認
工具速查
| 操作 | 工具 | 參數 |
|---|---|---|
| 列出 | derivation_list_saved(category?) |
可選分類篩選 |
| 搜尋 | derivation_search_saved(query) |
關鍵字 |
| 取得 | derivation_get_saved(result_id) |
ID |
| 更新 | derivation_update_saved(result_id, ...) |
ID + 要更新的欄位 |
| 刪除 | derivation_delete_saved(result_id, confirm=True) |
⚠️ 需確認 |
| 統計 | derivation_repository_stats() |
無 |
調用範例
# 列出所有
derivation_list_saved()
# 按分類
derivation_list_saved(category="pharmacokinetics")
# 搜尋
derivation_search_saved(query="temperature")
# 取得詳情
derivation_get_saved(result_id="temp_corrected_elimination_20260102")
# 更新(可更新欄位:description, clinical_context, assumptions, limitations, references, tags, verified, verification_notes)
derivation_update_saved(
result_id="...",
verified=True,
tags=["pk", "temperature"]
)
# 刪除(⚠️ 先 get 顯示內容,獲得用戶確認後才執行)
derivation_delete_saved(result_id="...", confirm=True)
刪除流程
derivation_get_saved顯示要刪除的內容- 詢問用戶確認
- 用戶同意後才執行
derivation_delete_saved(..., confirm=True)
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