Rust最佳实践
rust-best-practices
by anderskev
>
安装
claude skill add --url https://github.com/openclaw/skills文档
Rust Best Practices
Guidance for writing idiomatic, performant, and safe Rust code. This is a development skill, not a review skill -- use it when building, not reviewing.
Quick Reference
| Topic | Key Rule | Reference |
|---|---|---|
| Ownership | Borrow by default, clone only when you need a separate owned copy | references/coding-idioms.md |
| Clippy | Run cargo clippy -- -D warnings on every commit; configure workspace lints | references/clippy-config.md |
| Performance | Don't guess, measure. Profile with --release first | references/performance.md |
| Generics | Static dispatch by default, dynamic dispatch when you need mixed types | references/generics-dispatch.md |
| Type State | Encode state in the type system when invalid operations should be compile errors | references/type-state-pattern.md |
| Documentation | // for why, /// for what and how, //! for module/crate purpose | references/documentation.md |
| Pointers | Choose pointer types based on ownership needs and threading model | references/pointer-types.md |
| API Design | Unsurprising, flexible, obvious, constrained -- encode invariants in types | references/api-design.md |
| Ecosystem | Evaluate crates, pick error handling strategy, stay current | references/ecosystem-patterns.md |
Coding Idioms
Prefer &T over .clone(), use &str/&[T] in parameters, and chain iterators instead of index-based loops. For Option/Result, use let Ok(x) = expr else { return } for early returns and ? for propagation. See references/coding-idioms.md for ownership, iterator, and import patterns.
Error Handling
Return Result<T, E> for fallible operations. Use thiserror for library error types, anyhow for binaries. Propagate with ?, never unwrap() outside tests. See references/coding-idioms.md for Option/Result patterns.
Clippy Discipline
Run cargo clippy --all-targets --all-features -- -D warnings on every commit. Configure workspace lints in Cargo.toml and use #[expect(clippy::lint)] (not #[allow]) as the standard for lint suppression -- it warns when the suppression becomes stale. See references/clippy-config.md for lint configuration and key lints.
Performance Mindset
Always benchmark with --release, profile before optimizing, and avoid cloning in loops or premature .collect() calls. Keep small types on the stack and heap-allocate only recursive structures and large buffers. See references/performance.md for profiling tools and allocation guidance.
Generics and Dispatch
Use static dispatch (impl Trait / <T: Trait>) by default for zero-cost monomorphization. Switch to dyn Trait only for heterogeneous collections or plugin architectures, preferring &dyn Trait over Box<dyn Trait> when ownership isn't needed. In edition 2024, -> impl Trait captures all in-scope lifetimes by default -- use + use<'a, T> for precise capture control. Prefer native async fn in traits over the async-trait crate for static dispatch. See references/generics-dispatch.md for dispatch trade-offs, RPIT capture rules, and async trait guidance.
Type State Pattern
Encode valid states in the type system so invalid operations become compile errors. Use for builders with required fields, protocol state machines, and workflow pipelines. See references/type-state-pattern.md for implementation patterns and when to avoid.
Documentation
Use // for why, /// for what/how on public APIs, and //! for module purpose. Every TODO needs a linked issue and library crates should enable #![deny(missing_docs)]. Use #[diagnostic::on_unimplemented] to provide custom compiler errors for your public traits. See references/documentation.md for doc test patterns, comment conventions, and diagnostic attributes.
API Design
Follow four principles: unsurprising (reuse standard names and traits), flexible (use generics and impl Trait to avoid unnecessary restrictions), obvious (encode invariants in the type system so misuse is a compile error), and constrained (expose only what you can commit to long-term). Use #[non_exhaustive] for types that may grow, seal traits you need to extend without breaking changes, and wrap foreign types in newtypes to control your SemVer surface. See references/api-design.md for builder patterns, sealed traits, and SemVer implications.
Ecosystem Patterns
Evaluate crates by recent download trends, maintenance activity, documentation quality, and transitive dependency weight. Use thiserror for library error types, anyhow for binaries, and eyre when you need custom error reporters. Prefer vendoring or writing code yourself when a crate pulls heavy dependencies for a small feature. Run cargo-deny for license and vulnerability auditing and cargo-udeps to trim unused dependencies. See references/ecosystem-patterns.md for crate evaluation criteria, edition migration, and essential tooling.
Pointer Types
Choose pointer types based on ownership and threading: Box<T> for single-owner heap allocation, Rc<T>/Arc<T> for shared ownership, Cell/RefCell/Mutex/RwLock for interior mutability. Use LazyLock/LazyCell (stable since 1.80) instead of lazy_static or once_cell. See references/pointer-types.md for the full single-thread vs multi-thread decision table and migration guidance.
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✎ 想把页面做得既能上线又有设计感,就用前端设计:组件到整站都能产出,难得的是能避开千篇一律的 AI 味。
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用 Playwright 为本地 Web 应用编写自动化测试,支持启动开发服务器、校验前端交互、排查 UI 异常、抓取截图与浏览器日志,适合调试动态页面和回归验证。
✎ 借助 Playwright 一站式验证本地 Web 应用前端功能,调 UI 时还能同步查看日志和截图,定位问题更快。
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面向复杂 claude.ai HTML artifact 开发,快速初始化 React + Tailwind CSS + shadcn/ui 项目并打包为单文件 HTML,适合需要状态管理、路由或多组件交互的页面。
✎ 在 claude.ai 里做复杂网页 Artifact 很省心,多组件、状态和路由都能顺手搭起来,React、Tailwind 与 shadcn/ui 组合效率高、成品也更精致。
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