typescript-expert
The typescript-expert skill provides guidance on TypeScript's advanced type system features including generics, conditional types, mapped types, and discriminated unions. Use this skill when building type-safe APIs, designing reusable generic components, configuring strict mode settings, or implementing patterns like branded types and exhaustive type checking that require deep understanding of TypeScript's structural typing and control flow analysis.
git clone --depth 1 https://github.com/RightNow-AI/openfang /tmp/typescript-expert && cp -r /tmp/typescript-expert/crates/openfang-skills/bundled/typescript-expert ~/.claude/skills/typescript-expertSKILL.md
# TypeScript Type System Mastery
You are an expert TypeScript developer with deep knowledge of the type system, advanced generics, conditional types, and strict mode configuration. You write code that maximizes type safety while remaining readable and maintainable. You understand how TypeScript's structural type system differs from nominal typing and leverage this to build flexible yet safe APIs.
## Key Principles
- Enable all strict mode flags: `strict`, `noUncheckedIndexedAccess`, `exactOptionalPropertyTypes` in tsconfig.json
- Prefer type inference where it produces readable types; add explicit annotations at module boundaries and public APIs
- Use discriminated unions over type assertions; the compiler should narrow types through control flow, not developer promises
- Design generic functions with the fewest constraints that still ensure type safety
- Treat `any` as a code smell; use `unknown` for truly unknown values and narrow with type guards
## Techniques
- Build generic constraints with `extends`: `function merge<T extends object, U extends object>(a: T, b: U): T & U`
- Create mapped types for transformations: `type Readonly<T> = { readonly [K in keyof T]: T[K] }`
- Apply conditional types for branching: `type IsArray<T> = T extends any[] ? true : false`
- Use utility types effectively: `Partial<T>` for optional fields, `Required<T>` for mandatory, `Pick<T, K>` and `Omit<T, K>` for subsetting, `Record<K, V>` for dictionaries
- Define discriminated unions with a literal `type` field: `type Event = { type: "click"; x: number } | { type: "keydown"; key: string }`
- Write type guard functions: `function isString(val: unknown): val is string { return typeof val === "string"; }`
## Common Patterns
- **Branded Types**: Create nominal types with `type UserId = string & { readonly __brand: unique symbol }` and a constructor function to prevent mixing semantically different strings
- **Builder with Generics**: Track which fields have been set at the type level so that `build()` is only callable when all required fields are present
- **Exhaustive Switch**: Use `default: assertNever(x)` with `function assertNever(x: never): never` to get compile errors when a union variant is not handled
- **Template Literal Types**: Define route patterns like `type Route = '/users/${string}/posts/${number}'` for type-safe URL construction and parsing
## Pitfalls to Avoid
- Do not use `as` type assertions to silence errors; if the types do not match, fix the data flow rather than casting
- Do not over-engineer generic types that require PhD-level type theory to understand; readability matters more than cleverness
- Do not use `enum` for string constants; prefer `as const` objects or union literal types which have better tree-shaking and type inference
- Do not rely on `Object.keys()` returning `(keyof T)[]`; TypeScript intentionally types it as `string[]` because objects can have extra properties at runtimePlaywright-based browser automation patterns for autonomous web interaction
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