Agent-almanac transmute

install
source · Clone the upstream repo
git clone https://github.com/pjt222/agent-almanac
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/pjt222/agent-almanac "$T" && mkdir -p ~/.claude/skills && cp -r "$T/i18n/caveman-lite/skills/transmute" ~/.claude/skills/pjt222-agent-almanac-transmute && rm -rf "$T"
manifest: i18n/caveman-lite/skills/transmute/SKILL.md
source content

Transmute

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.

When to Use

  • 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)

Inputs

  • Required: Source material (file path, function name, or data sample)
  • Required: Target form (language, paradigm, format, or API version)
  • Optional: Behavioral contract (tests, type signatures, or expected I/O pairs)
  • Optional: Constraints (must maintain backward compatibility, performance budget)

Procedure

Step 1: Analyze the Source Material

Understand exactly what the source does before attempting transformation.

  1. Read the source completely — every branch, edge case, and error path
  2. 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)
  3. Catalog dependencies: what does the source import, call, or rely on?
  4. If tests exist, read them to understand expected behavior
  5. If no tests exist, write behavioral characterization tests before transmuting

Expected: A complete understanding of what the source does (not how it does it). The behavioral contract is explicit and testable.

On failure: 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.

Step 2: Map Source to Target Form

Design the transformation mapping.

  1. 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
  2. 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)
  3. 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
  4. Write the transformation map: source element → target element, for every piece

Expected: A complete mapping where every source element has a target destination. Gaps are identified and adaptation strategies chosen.

On failure: 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
.

Step 3: Execute the Transformation

Write the target form following the map.

  1. Create the target file(s) with appropriate structure and boilerplate
  2. 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
  3. Handle dependencies:
    • Replace source dependencies with target equivalents
    • If a dependency has no equivalent, implement a minimal adapter
  4. Add inline comments only where the transformation was non-obvious

Expected: A complete target implementation that follows the transformation map. The code reads like it was written natively in the target form, not mechanically translated.

On failure: 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.

Step 4: Verify Behavioral Equivalence

Confirm the transmuted form preserves the original's behavior.

  1. Run the behavioral contract tests against the target implementation
  2. 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
  3. Check edge cases explicitly:
    • Null/NA/undefined handling
    • Empty collections
    • Boundary values (max int, empty string, zero-length arrays)
  4. If the target form adds capabilities (e.g., type safety), verify those too

Expected: All behavioral contract tests pass. Edge cases are handled equivalently. Any behavioral differences are documented and intentional.

On failure: 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.

Validation 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

Common Pitfalls

  • 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

Related Skills

  • athanor
    — Full four-stage transformation for systems too large for a single transmute
  • chrysopoeia
    — Optimizing transmuted code for maximum value extraction
  • review-software-architecture
    — Post-transmutation architecture review for larger conversions
  • serialize-data-formats
    — Specialized data format conversion procedures