Files
manual_slop/mma-orchestrator/SKILL.md
Ed_ 4e2003c191 chore(gemini): Encode surgical methodology into all Gemini MMA skills
Updates three Gemini skill files to match the Claude command methodology:

mma-orchestrator/SKILL.md:
- New Section 0: Architecture Fallback with links to all 4 docs/guide_*.md
- New Surgical Spec Protocol (6-point mandatory checklist)
- New Section 5: Cross-Skill Activation for tier transitions
- Example 2 rewritten with surgical prompt (exact line refs + API calls)
- New Example 3: Track creation with audit-first workflow
- Added py_get_definition to tool usage guidance

mma-tier1-orchestrator/SKILL.md:
- Added Architecture Fallback and Surgical Spec Protocol summary
- References activate_skill mma-orchestrator for full protocol

mma-tier2-tech-lead/SKILL.md:
- Added Architecture Fallback section
- Added Surgical Delegation Protocol with WHERE/WHAT/HOW/SAFETY example

Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>
2026-03-01 10:13:29 -05:00

8.9 KiB

name, description
name description
mma-orchestrator Enforces the 4-Tier Hierarchical Multi-Model Architecture (MMA) within Gemini CLI using Token Firewalling and sub-agent task delegation.

MMA Token Firewall & Tiered Delegation Protocol

You are operating within the MMA Framework, acting as either the Tier 1 Orchestrator (for setup/init) or the Tier 2 Tech Lead (for execution). Your context window is extremely valuable and must be protected from token bloat (such as raw, repetitive code edits, trial-and-error histories, or massive stack traces).

To accomplish this, you MUST delegate token-heavy or stateless tasks to Tier 3 Workers or Tier 4 QA Agents by spawning secondary Gemini CLI instances via run_shell_command.

CRITICAL Prerequisite: To ensure proper environment handling and logging, you MUST NOT call the gemini command directly for sub-tasks. Instead, use the wrapper script: uv run python scripts/mma_exec.py --role <Role> "..."

0. Architecture Fallback & Surgical Methodology

Before creating or refining any track, consult the deep-dive architecture docs:

  • docs/guide_architecture.md: Thread domains, event system (AsyncEventQueue, _pending_gui_tasks action catalog), AI client multi-provider architecture, HITL Execution Clutch blocking flow, frame-sync mechanism
  • docs/guide_tools.md: MCP Bridge 3-layer security model, full 26-tool inventory with params, Hook API GET/POST endpoints with request/response formats, ApiHookClient method reference
  • docs/guide_mma.md: Ticket/Track/WorkerContext data structures, DAG engine (cycle detection, topological sort), ConductorEngine execution loop, Tier 2 ticket generation, Tier 3 worker lifecycle with context amnesia
  • docs/guide_simulations.md: live_gui fixture lifecycle, Puppeteer pattern, mock provider JSON-L protocol, visual verification patterns

The Surgical Spec Protocol (MANDATORY for track creation)

When creating tracks (activate_skill mma-tier1-orchestrator), follow this protocol:

  1. AUDIT BEFORE SPECIFYING: Use get_code_outline, py_get_definition, grep_search, and get_git_diff to map what already exists. Previous track specs asked to re-implement existing features (Track Browser, DAG tree, approval dialogs) because no audit was done. Document findings in a "Current State Audit" section with file:line references.

  2. GAPS, NOT FEATURES: Frame requirements as what's MISSING relative to what exists.

    • GOOD: "The existing _render_mma_dashboard (gui_2.py:2633-2724) has a token usage table but no cost column."
    • BAD: "Build a metrics dashboard with token and cost tracking."
  3. WORKER-READY TASKS: Each plan task must specify:

    • WHERE: Exact file and line range (gui_2.py:2700-2701)
    • WHAT: The specific change (add function, modify dict, extend table)
    • HOW: Which API calls (imgui.progress_bar(...), imgui.collapsing_header(...))
    • SAFETY: Thread-safety constraints if cross-thread data is involved
  4. ROOT CAUSE ANALYSIS (for fix tracks): Don't write "investigate and fix." List specific candidates with code-level reasoning.

  5. REFERENCE DOCS: Link to relevant docs/guide_*.md sections in every spec.

  6. MAP DEPENDENCIES: State execution order and blockers between tracks.

1. The Tier 3 Worker (Execution)

When performing code modifications or implementing specific requirements:

  1. Pre-Delegation Checkpoint: For dangerous or non-trivial changes, ALWAYS stage your changes (git add .) or commit before delegating to a Tier 3 Worker. If the worker fails or runs git restore, you will lose all prior AI iterations for that file if it wasn't staged/committed.
  2. Code Style Enforcement: You MUST explicitly remind the worker to "use exactly 1-space indentation for Python code" in your prompt to prevent them from breaking the established codebase style.
  3. DO NOT perform large code writes yourself.
  4. DO construct a single, highly specific prompt with a clear objective. Include exact file:line references and the specific API calls to use (from your audit or the architecture docs).
  5. DO spawn a Tier 3 Worker. Command: uv run python scripts/mma_exec.py --role tier3-worker "Implement [SPECIFIC_INSTRUCTION] in [FILE_PATH] at lines [N-M]. Use [SPECIFIC_API_CALL]. Use 1-space indentation."
  6. Handling Repeated Failures: If a Tier 3 Worker fails multiple times on the same task, it may lack the necessary capability. You must track failures and retry with --failure-count <N> (e.g., --failure-count 2). This tells mma_exec.py to escalate the sub-agent to a more powerful reasoning model (like gemini-3-flash).
  7. The Tier 3 Worker is stateless and has tool access for file I/O.

2. The Tier 4 QA Agent (Diagnostics)

If you run a test or command that fails with a significant error or large traceback:

  1. DO NOT analyze the raw logs in your own context window.
  2. DO spawn a stateless Tier 4 agent to diagnose the failure.
  3. Command: uv run python scripts/mma_exec.py --role tier4-qa "Analyze this failure and summarize the root cause: [LOG_DATA]"
  4. Mandatory Research-First Protocol: Avoid direct read_file calls for any file over 50 lines. Use get_file_summary, py_get_skeleton, or py_get_code_outline first to identify relevant sections. Use git diff to understand changes.

3. Persistent Tech Lead Memory (Tier 2)

Unlike the stateless sub-agents (Tiers 3 & 4), the Tier 2 Tech Lead maintains persistent context throughout the implementation of a track. Do NOT apply "Context Amnesia" to your own session during track implementation. You are responsible for the continuity of the technical strategy.

4. AST Skeleton & Outline Views

To minimize context bloat for Tier 2 & 3:

  1. Use py_get_code_outline or get_tree to map out the structure of a file or project.
  2. Use py_get_skeleton and py_get_imports to understand the interface, docstrings, and dependencies of modules.
  3. Use py_get_definition to read specific functions/classes by name without loading entire files.
  4. Use py_find_usages to pinpoint where a function or class is called instead of searching the whole codebase.
  5. Use py_check_syntax after making string replacements to ensure the file is still syntactically valid.
  6. Only use read_file with start_line and end_line for specific implementation details once target areas are identified.
  7. Tier 3 workers MUST NOT read the full content of unrelated files.

5. Cross-Skill Activation

When your current role requires capabilities from another tier, use activate_skill:

  • Track creation/refinement: activate_skill mma-tier1-orchestrator — applies the Surgical Spec Protocol
  • Track execution: activate_skill mma-tier2-tech-lead — applies persistent context and TDD workflow
  • Quick code task: Spawn via mma_exec.py --role tier3-worker (stateless, no skill activation needed)
  • Error analysis: Spawn via mma_exec.py --role tier4-qa (stateless, no skill activation needed)
### Example 1: Spawning a Tier 4 QA Agent **User / System:** `pytest tests/test_gui.py` failed with 400 lines of output. **Agent (You):** ```json { "command": "python scripts/mma_exec.py --role tier4-qa \"Summarize this stack trace into a 20-word fix: [snip first 30 lines...]\"", "description": "Spawning Tier 4 QA to compress error trace statelessly." } ```

Example 2: Spawning a Tier 3 Worker with Surgical Prompt

User: Please implement the cost tracking column in the token usage table. Agent (You):

{
  "command": "python scripts/mma_exec.py --role tier3-worker \"In gui_2.py, modify _render_mma_dashboard (lines 2685-2699). Extend the token usage table from 3 columns to 5 by adding 'Model' and 'Est. Cost' columns. Use imgui.table_setup_column() for the new columns. Import cost_tracker and call cost_tracker.estimate_cost(model, input_tokens, output_tokens) for each tier row. Add a total row at the bottom. Use 1-space indentation.\"",
  "description": "Delegating surgical implementation to Tier 3 Worker with exact line refs."
}

Example 3: Creating a Track with Audit

User: Create a track for adding dark mode support. Agent (You):

  1. First, audit the codebase: py_get_code_outline gui_2.py → find _render_theme_panel (lines 2993-3030).
  2. Read the existing implementation: py_get_definition gui_2.py _render_theme_panel.
  3. Check for existing color constants: grep_search "vec4\|C_" gui_2.py.
  4. Now write the spec with a "Current State Audit" section documenting what the theme panel already does.
  5. Write tasks referencing the exact lines and imgui color APIs to use.
- When asked to write large amounts of boilerplate or repetitive code (Coding > 50 lines). - When encountering a large error trace from a shell execution (Errors > 100 lines). - When explicitly instructed to act as a "Tech Lead" or "Orchestrator". - When managing complex, multi-file Track implementations. - When creating or refining conductor tracks (MUST follow Surgical Spec Protocol).