swiftui-performance-audit
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npx mdskill add openai/plugins/swiftui-performance-auditUse this skill to diagnose SwiftUI performance issues from code first, then request profiling evidence when code review alone cannot explain the symptoms.
SKILL.md
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--- name: swiftui-performance-audit description: Audit SwiftUI runtime performance from code first. Use when diagnosing slow rendering, janky scrolling, expensive updates, or profiling needs. --- # SwiftUI Performance Audit ## Quick start Use this skill to diagnose SwiftUI performance issues from code first, then request profiling evidence when code review alone cannot explain the symptoms. ## Workflow 1. Classify the symptom: slow rendering, janky scrolling, high CPU, memory growth, hangs, or excessive view updates. 2. If code is available, start with a code-first review using `references/code-smells.md`. 3. If code is not available, ask for the smallest useful slice: target view, data flow, reproduction steps, and deployment target. 4. If code review is inconclusive or runtime evidence is required, guide the user through profiling with `references/profiling-intake.md`. 5. Summarize likely causes, evidence, remediation, and validation steps using `references/report-template.md`. ## 1. Intake Collect: - Target view or feature code. - Symptoms and exact reproduction steps. - Data flow: `@State`, `@Binding`, environment dependencies, and observable models. - Whether the issue shows up on device or simulator, and whether it was observed in Debug or Release. Ask the user to classify the issue if possible: - CPU spike or battery drain - Janky scrolling or dropped frames - High memory or image pressure - Hangs or unresponsive interactions - Excessive or unexpectedly broad view updates For the full profiling intake checklist, read `references/profiling-intake.md`. ## 2. Code-First Review Focus on: - Invalidation storms from broad observation or environment reads. - Unstable identity in lists and `ForEach`. - Heavy derived work in `body` or view builders. - Layout thrash from complex hierarchies, `GeometryReader`, or preference chains. - Large image decode or resize work on the main thread. - Animation or transition work applied too broadly. Use `references/code-smells.md` for the detailed smell catalog and fix guidance. Provide: - Likely root causes with code references. - Suggested fixes and refactors. - If needed, a minimal repro or instrumentation suggestion. ## 3. Guide the User to Profile If code review does not explain the issue, ask for runtime evidence: - A trace export or screenshots of the SwiftUI timeline and Time Profiler call tree. - Device/OS/build configuration. - The exact interaction being profiled. - Before/after metrics if the user is comparing a change. Use `references/profiling-intake.md` for the exact checklist and collection steps. ## 4. Analyze and Diagnose - Map the evidence to the most likely category: invalidation, identity churn, layout thrash, main-thread work, image cost, or animation cost. - Prioritize problems by impact, not by how easy they are to explain. - Distinguish code-level suspicion from trace-backed evidence. - Call out when profiling is still insufficient and what additional evidence would reduce uncertainty. ## 5. Remediate Apply targeted fixes: - Narrow state scope and reduce broad observation fan-out. - Stabilize identities for `ForEach` and lists. - Move heavy work out of `body` into derived state updated from inputs, model-layer precomputation, memoized helpers, or background preprocessing. Use `@State` only for view-owned state, not as an ad hoc cache for arbitrary computation. - Use `equatable()` only when equality is cheaper than recomputing the subtree and the inputs are truly value-semantic. - Downsample images before rendering. - Reduce layout complexity or use fixed sizing where possible. Use `references/code-smells.md` for examples, Observation-specific fan-out guidance, and remediation patterns. ## 6. Verify Ask the user to re-run the same capture and compare with baseline metrics. Summarize the delta (CPU, frame drops, memory peak) if provided. ## Outputs Provide: - A short metrics table (before/after if available). - Top issues (ordered by impact). - Proposed fixes with estimated effort. Use `references/report-template.md` when formatting the final audit. ## References - Profiling intake and collection checklist: `references/profiling-intake.md` - Common code smells and remediation patterns: `references/code-smells.md` - Audit output template: `references/report-template.md` - Add Apple documentation and WWDC resources under `references/` as they are supplied by the user. - Optimizing SwiftUI performance with Instruments: `references/optimizing-swiftui-performance-instruments.md` - Understanding and improving SwiftUI performance: `references/understanding-improving-swiftui-performance.md` - Understanding hangs in your app: `references/understanding-hangs-in-your-app.md` - Demystify SwiftUI performance (WWDC23): `references/demystify-swiftui-performance-wwdc23.md` - In addition to the references above, use web search to consult current Apple Developer documentation when Instruments workflows or SwiftUI performance guidance may have changed.
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