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manual_slop/conductor
ed f069a8b27b chore(audit): spec code path audit track
Design for a data-oriented static-analysis tool
(src/code_path_audit.py) that audits the 3 major actions (AI
message lifecycle, discussion save/load, GUI startup) for
expensive operations, redundant calls, and pipelining
candidates. Output: JSON data files + markdown summaries +
Mermaid per-action call graphs in docs/reports/code_path_audit/.

61 src/ files, 27,447 total lines. Call graph is non-trivial;
per-action traversal is what makes analysis tractable.

Cost model: 7 cost classes (file_io, network, ast_parse,
json_io, pickle, deep_copy, loop_amplified) with heuristic
weights; EXPENSIVE_THRESHOLD = 40,000 module constant. 5
state mutation kinds (attr_write, container_mutate, file_write,
ipc_emit, global_write).

The 3 action entry points are per-action defined (see Per-Action
Design table). MMA worker spawn is OUT of scope per user (cold
until 1:1 discussion UX is dogfooded).

Two follow-up tracks recorded but NOT in this track:
- pipeline_runtime_profiling_20260607: calibrate the heuristic
  cost model with real measurements; catch C-extension cost,
  decorator dispatch, JIT effects that static analysis can't
  resolve.
- pipeline_pruning_20260607: implement the high-priority
  optimization candidates surfaced by this track's report.

6 atomic commits planned: data structures; trace_action +
ActionProfile + cost model; output (JSON/MD/Mermaid); MCP +
CLI; run audit + commit report; tracks.md update.
2026-06-07 11:30:06 -04:00
..