‹ 首页

implementing-search-filter

@ancoleman · 收录于 1 周前

Implements search and filter interfaces for both frontend (React/TypeScript) and backend (Python) with debouncing, query management, and database integration. Use when adding search functionality, building filter UIs, implementing faceted search, or optimizing search performance.

适合你,如果需要在应用中实现搜索和筛选功能

/ 下载安装
implementing-search-filter.skill双击,或拖进 Claude 桌面版 / Cowork,即完成安装↓ .skill↓ .zip
用别的 agent?下载 .zip 解压,把文件夹放进它的技能目录
Claude Code~/.claude/skills/(项目级 .claude/skills/)
Codex CLI~/.codex/skills/
Cursor自动读取上面两处目录
其他工具见其文档的「skills」目录;两个下载是同一份文件,只是名字不同
/ 通过 npx 安装 校验哈希
npx oh-my-skill add ancoleman/ai-design-components/implementing-search-filter
/ 通过 bash 安装
curl -fsSL https://oh-my-skill.com/install.sh | bash -s -- ancoleman/ai-design-components/implementing-search-filter
/ 已经装过?验证本机副本,不用重装
npx oh-my-skill verify ancoleman/ai-design-components/implementing-search-filter
安装目标可用 --agent / --scope 或 --to 明确指定;省略时只会在唯一已存在的 agent 目录上自动选择,零命中或多命中会停止并提示。content_hash 缺失或不一致均拒装。
384GitHub stars
~1.1K最小装载
~46.6K含声明引用
~48.3K文本包总量
镜像托管

怎么用

技能原文 SKILL.md作者撰写 · MIT · 76551b7

Search & Filter Implementation

Implement search and filter interfaces with comprehensive frontend components and backend query optimization.

Purpose

This skill provides production-ready patterns for implementing search and filtering functionality across the full stack. It covers React/TypeScript components for the frontend (search inputs, filter UIs, autocomplete) and Python patterns for the backend (SQLAlchemy queries, Elasticsearch integration, API design). The skill emphasizes performance optimization, accessibility, and user experience.

When to Use
  • Building product search with category and price filters
  • Implementing autocomplete/typeahead search
  • Creating faceted search interfaces with dynamic counts
  • Adding search to data tables or lists
  • Building advanced boolean search for power users
  • Implementing backend search with SQLAlchemy or Django ORM
  • Integrating Elasticsearch for full-text search
  • Optimizing search performance with debouncing and caching
  • Creating accessible search experiences
Core Components
Frontend Search Patterns

Search Input with Debouncing

  • Implement 300ms debounce for performance
  • Show loading states during search
  • Clear button (X) for resetting
  • Keyboard shortcuts (Cmd/Ctrl+K)
  • See references/search-input-patterns.md

Autocomplete/Typeahead

  • Suggestion dropdown with keyboard navigation
  • Highlight matched text in suggestions
  • Recent searches and popular items
  • Prevent request flooding with debouncing
  • See references/autocomplete-patterns.md

Filter UI Components

  • Checkbox filters for multi-select
  • Range sliders for numerical values
  • Dropdown filters for single selection
  • Filter chips showing active selections
  • See references/filter-ui-patterns.md
Backend Query Patterns

Database Query Building

  • Dynamic query construction with SQLAlchemy
  • Django ORM filter chaining
  • Index optimization for search columns
  • Full-text search in PostgreSQL
  • See references/database-querying.md

Elasticsearch Integration

  • Document indexing strategies
  • Query DSL for complex searches
  • Faceted aggregations
  • Relevance scoring and boosting
  • See references/elasticsearch-integration.md

API Design

  • RESTful search endpoints
  • Query parameter validation
  • Pagination with cursor/offset
  • Response caching strategies
  • See references/api-design.md
Implementation Workflows
Client-Side Search (<1000 items)
  1. Load data into memory
  2. Implement filter functions in JavaScript
  3. Apply debounced search on text input
  4. Update results instantly
  5. Maintain filter state in React
Server-Side Search (>1000 items)
  1. Design search API endpoint
  2. Validate and sanitize query parameters
  3. Build database query dynamically
  4. Apply pagination
  5. Return results with metadata
  6. Cache frequent queries
Hybrid Approach
  1. Use client-side filtering for immediate feedback
  2. Fetch server results in background
  3. Merge and deduplicate results
  4. Update UI progressively
  5. Cache recent searches locally
Performance Optimization
Frontend Optimization

Debouncing Implementation

  • Use debounce from lodash or custom implementation
  • Cancel pending requests on new input
  • Show skeleton loaders during fetch
  • Script: scripts/debounce_calculator.js

Query Parameter Management

  • Sync filters with URL for shareable searches
  • Use React Router or Next.js for URL state
  • Compress complex queries
  • See references/query-parameter-management.md
Backend Optimization

Query Optimization

  • Create appropriate database indexes
  • Use query analyzers to identify bottlenecks
  • Implement query result caching
  • Script: scripts/generate_filter_query.py

Validation & Security

  • Sanitize all search inputs
  • Prevent SQL injection
  • Rate limit search endpoints
  • Script: scripts/validate_search_params.py
Accessibility Requirements
ARIA Patterns
  • Use role="search" for search regions
  • Implement aria-live for result updates
  • Provide clear labels for filters
  • Support keyboard-only navigation
Keyboard Support
  • Tab through all interactive elements
  • Arrow keys for autocomplete navigation
  • Escape to close dropdowns
  • Enter to select/submit
Technology Stack
Frontend Libraries

Primary: Downshift (Autocomplete)

  • Accessible autocomplete primitives
  • Headless/unstyled for flexibility
  • WAI-ARIA compliant
  • Install: npm install downshift

Alternative: React Select

  • Full-featured select/filter component
  • Built-in async search
  • Multi-select support
Backend Technologies

Python/SQLAlchemy

  • Dynamic query building
  • Relationship loading optimization
  • Query result pagination

Python/Django

  • Django Filter backend
  • Django REST Framework filters
  • Full-text search with PostgreSQL

Elasticsearch (Python)

  • elasticsearch-py client
  • elasticsearch-dsl for query building
Bundled Resources
References
  • references/search-input-patterns.md - Input implementations
  • references/autocomplete-patterns.md - Typeahead patterns
  • references/filter-ui-patterns.md - Filter components
  • references/database-querying.md - SQL query patterns
  • references/elasticsearch-integration.md - Elasticsearch setup
  • references/api-design.md - API endpoint patterns
  • references/performance-optimization.md - Performance tips
  • references/library-comparison.md - Library evaluation
Scripts
  • scripts/generate_filter_query.py - Build SQL/ES queries
  • scripts/validate_search_params.py - Validate inputs
  • scripts/debounce_calculator.js - Calculate debounce timing
Examples
  • examples/product-search.tsx - E-commerce search
  • examples/autocomplete-search.tsx - Autocomplete implementation
  • examples/sqlalchemy_search.py - SQLAlchemy patterns
  • examples/fastapi_search.py - FastAPI search endpoint
  • examples/django_filter_backend.py - Django filters
Assets
  • assets/filter-config-schema.json - Filter configuration
  • assets/search-api-spec.json - OpenAPI specification
按 MIT 许可原样转载,未经改动 · 在 GitHub 查看 →

评论

登录即可评论;带「已验证安装」的,是发布者名下有本店的安装或持有记录。