transmute
关于
The `transmute` skill transforms individual code units like functions or data structures from one form to another while preserving core behavior. It's a lightweight tool for targeted conversions between languages, paradigms, or APIs when the scope is a single component, not a full system. Use it for precise refactoring tasks like migrating an API consumer or converting data formats.
快速安装
Claude Code
推荐npx skills add pjt222/agent-almanac -a claude-code/plugin add https://github.com/pjt222/agent-almanacgit clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/transmute在 Claude Code 中复制并粘贴此命令以安装该技能
技能文档
変容
Transform a specific piece of code or data from one form to another — language translation, paradigm shift, format conversion, or API migration — while preserving essential behavior and semantics.
使用タイミング
- Converting a function from one language to another (Python to R, JavaScript to TypeScript)
- Shifting a module from one paradigm (class-based to functional, callbacks to async/await)
- Migrating an API consumer from v1 to v2 of an external service
- Converting data between formats (CSV to Parquet, REST to GraphQL schema)
- Replacing a dependency with an equivalent (moment.js to date-fns, jQuery to vanilla JS)
- When the transformation scope is a single function, class, or module (not a full system)
入力
- 必須: Source material (file path, function name, or data sample)
- 必須: Target form (language, paradigm, format, or API version)
- 任意: Behavioral contract (tests, type signatures, or expected I/O pairs)
- 任意: Constraints (must maintain backward compatibility, performance budget)
手順
ステップ1: Analyze the Source Material
Understand exactly what the source does before attempting transformation.
- Read the source completely — every branch, edge case, and error path
- Identify the behavioral contract:
- What inputs does it accept? (types, ranges, edge cases)
- What outputs does it produce? (return values, side effects, error signals)
- What invariants does it maintain? (ordering, uniqueness, referential integrity)
- Catalog dependencies: what does the source import, call, or rely on?
- If tests exist, read them to understand expected behavior
- If no tests exist, write behavioral characterization tests before transmuting
期待結果: A complete understanding of what the source does (not how it does it). The behavioral contract is explicit and testable.
失敗時: If the source is too complex for a single transmute, consider breaking it into smaller pieces or escalating to the full athanor procedure. If behavior is ambiguous, ask for clarification rather than guessing.
ステップ2: Map Source to Target Form
Design the transformation mapping.
- For each element in the source, identify the target equivalent:
- Language constructs: loops → map/filter, classes → closures, etc.
- API calls: old endpoint → new endpoint, request/response shape changes
- Data types: data frame columns → schema fields, nested JSON → flat tables
- Identify elements with no direct equivalent:
- Source features missing in target (e.g., pattern matching in a language without it)
- Target idioms that don't exist in source (e.g., R's vectorization vs. Python loops)
- For each gap, choose an adaptation strategy:
- Emulate: reproduce the behavior with target-native constructs
- Simplify: if the source construct was a workaround, use the target's native solution
- Document: if behavior changes slightly, note the difference explicitly
- Write the transformation map: source element → target element, for every piece
期待結果: A complete mapping where every source element has a target destination. Gaps are identified and adaptation strategies chosen.
失敗時: If too many elements lack direct equivalents, the transformation may be inappropriate (e.g., transmuting a highly object-oriented design into a language without classes). Reconsider the target form or escalate to athanor.
ステップ3: Execute the Transformation
Write the target form following the map.
- Create the target file(s) with appropriate structure and boilerplate
- Transmute each element following the map from Step 2:
- Preserve the behavioral contract — same inputs produce same outputs
- Use target-native idioms rather than literal translations
- Maintain or improve error handling
- Handle dependencies:
- Replace source dependencies with target equivalents
- If a dependency has no equivalent, implement a minimal adapter
- Add inline comments only where the transformation was non-obvious
期待結果: A complete target implementation that follows the transformation map. The code reads like it was written natively in the target form, not mechanically translated.
失敗時: If a specific element resists transformation, isolate it. Transform everything else first, then tackle the resistant element with focused attention. If it truly cannot be transmuted, document why and provide a workaround.
ステップ4: Verify Behavioral Equivalence
Confirm the transmuted form preserves the original's behavior.
- Run the behavioral contract tests against the target implementation
- For each test case, verify:
- Same inputs → same outputs (within acceptable tolerance for numeric conversions)
- Same error conditions → equivalent error signals
- Side effects (if any) are preserved or documented as changed
- Check edge cases explicitly:
- Null/NA/undefined handling
- Empty collections
- Boundary values (max int, empty string, zero-length arrays)
- If the target form adds capabilities (e.g., type safety), verify those too
期待結果: All behavioral contract tests pass. Edge cases are handled equivalently. Any behavioral differences are documented and intentional.
失敗時: If tests fail, diff the source and target behavior to find the divergence. Fix the target to match the source contract. If the divergence is intentional (e.g., fixing a bug in the original), document it explicitly.
バリデーション Checklist
- Source material fully analyzed with explicit behavioral contract
- Transformation map covers every source element
- Gaps identified with adaptation strategies documented
- Target implementation uses native idioms (not literal translation)
- All behavioral contract tests pass against target
- Edge cases verified (null, empty, boundary values)
- Dependencies resolved with target equivalents
- Any behavioral differences documented and intentional
よくある落とし穴
- Literal translation: Writing Python-in-R or Java-in-JavaScript instead of using target idioms. The result should look native
- Skipping behavioral tests: Transmuting without tests means you can't verify equivalence. Write characterization tests first
- Ignoring edge cases: The happy path transmutes easily; edge cases are where bugs hide
- Over-engineering the adapter: If a dependency needs a 200-line adapter, the transmutation scope is too large
- Transmuting comments verbatim: Comments should explain the target code, not echo the source. Rewrite them
関連スキル
athanor— Full four-stage transformation for systems too large for a single transmutechrysopoeia— Optimizing transmuted code for maximum value extractionreview-software-architecture— Post-transmutation architecture review for larger conversionsserialize-data-formats— Specialized data format conversion procedures
GitHub 仓库
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