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scalpel
scalpel에는 radheradhe01에서 수집한 skills 23개가 있으며, 저장소 수준 직업 범위와 사이트 내 skill 상세 페이지를 제공합니다.
이 저장소의 skills
Call graph soundness framework: 9 pattern families, 10 safety vetoes, soundness-vs-precision tradeoffs. Use before changing merge.rs, analyzer, or prune pipeline.
Assess if a CVE in a dep is reachable from project code using 15-signal union (runtime/static/external). Outputs audit trail. Security-grade, conservative.
Runtime+static consensus: 15-signal weights, modes, saturation curve. Scalpel's novel moat. Use before changing tracer merge, prune decision, or adding signal sources.
Use to validate Scalpel's pruning safety on any Python project. Analyzes a real-world Python project with test suite, identifies dead code, stubs it, then runs the full test suite to prove nothing broke. Invoke with: /prune-safety-test <project-url-or-path>
Use to validate ALL Scalpel capabilities on a real-world Python project — static analysis accuracy, genome building, reachability classification, pruning safety, and context generation. Invoke with: /validate-on-project <project-url-or-path>
Use when working on scalpel-core, scalpel-proto, Code Genome graph structure, hybrid merge logic, reachability algorithms, confidence classification, or edge resolution
Use when working on scalpel-ipc, scalpel-alloc, shared memory ring buffer, Unix domain sockets, string interning protocol, custom GlobalAlloc, or any unsafe memory/IPC code
Use when working on scalpel-prune crate, Docker integration, SBOM generation, code removal logic, re-export chain resolution, or any code that modifies user source files
Use when working on scalpel-analyze crate, tree-sitter parsing, call graph construction, function extraction, import resolution, or debugging false positives in the genome
Use when working on scalpel-tracer crate, language probes in probes/ directory, coverage pipelines, event ingestion, resource attribution, or debugging missing trace events
Use after ANY change to analysis, merge, classification, or pruning logic. Also use before claiming accuracy improved or false positives fixed. Mandatory exit gate for all domain skills.
Run static analysis on a project directory and show results
Run CI pipeline checks (trace + score + optional diff)
Compare two genome exports to show what changed
Export the Code Genome in various formats
Query the Code Genome graph for analysis and debugging
Undo the last pruning operation
Compute and display the dependency health score
Start the interactive Code Genome visualization UI
Run scalpel trace against a test project and inspect the output
Run benchmarks and compare against performance budgets
Run pruning in audit mode against a test fixture and verify results
Run the full test suite with formatted output, or test a specific crate