semantic-code-hunter

Use when you need to find code by concept (not just text). Uses Serena MCP for semantic code search across the codebase with minimal token usage. Ideal for understanding architecture, finding authentication flows, or multi-file refactoring.

242 stars

Best use case

semantic-code-hunter is best used when you need a repeatable AI agent workflow instead of a one-off prompt. It is especially useful for teams working in multi. Use when you need to find code by concept (not just text). Uses Serena MCP for semantic code search across the codebase with minimal token usage. Ideal for understanding architecture, finding authentication flows, or multi-file refactoring.

Use when you need to find code by concept (not just text). Uses Serena MCP for semantic code search across the codebase with minimal token usage. Ideal for understanding architecture, finding authentication flows, or multi-file refactoring.

Users should expect a more consistent workflow output, faster repeated execution, and less time spent rewriting prompts from scratch.

Practical example

Example input

Use the "semantic-code-hunter" skill to help with this workflow task. Context: Use when you need to find code by concept (not just text). Uses Serena MCP for semantic code search across the codebase with minimal token usage. Ideal for understanding architecture, finding authentication flows, or multi-file refactoring.

Example output

A structured workflow result with clearer steps, more consistent formatting, and an output that is easier to reuse in the next run.

When to use this skill

  • Use this skill when you want a reusable workflow rather than writing the same prompt again and again.

When not to use this skill

  • Do not use this when you only need a one-off answer and do not need a reusable workflow.
  • Do not use it if you cannot install or maintain the related files, repository context, or supporting tools.

Installation

Claude Code / Cursor / Codex

$curl -o ~/.claude/skills/semantic-code-hunter/SKILL.md --create-dirs "https://raw.githubusercontent.com/aiskillstore/marketplace/main/skills/barnhardt-enterprises-inc/semantic-code-hunter/SKILL.md"

Manual Installation

  1. Download SKILL.md from GitHub
  2. Place it in .claude/skills/semantic-code-hunter/SKILL.md inside your project
  3. Restart your AI agent — it will auto-discover the skill

How semantic-code-hunter Compares

Feature / Agentsemantic-code-hunterStandard Approach
Platform SupportNot specifiedLimited / Varies
Context Awareness High Baseline
Installation ComplexityUnknownN/A

Frequently Asked Questions

What does this skill do?

Use when you need to find code by concept (not just text). Uses Serena MCP for semantic code search across the codebase with minimal token usage. Ideal for understanding architecture, finding authentication flows, or multi-file refactoring.

Where can I find the source code?

You can find the source code on GitHub using the link provided at the top of the page.

Related Guides

SKILL.md Source

# Semantic Code Hunter (Powered by Serena MCP)

## When to Use
- "Where do we handle X?" questions
- Finding authentication flows
- Locating validation logic
- Multi-file refactoring
- Understanding component relationships
- Finding all usages of a symbol
- Tracing dependencies

## When NOT to Use
- Small projects (< 10 files) - use Grep instead
- Simple text searches - use Grep instead
- Single-file edits - use Read instead
- You already know the exact file

## How It Works
Uses Serena MCP tools for semantic understanding:
- `find_symbol` - Find symbols by concept, not just name
- `find_referencing_symbols` - Trace code relationships
- `find_referencing_code_snippets` - Find where code is used
- `get_symbols_overview` - Understand file structure first
- Token-efficient (70% savings vs traditional search)

## Serena Tools Available

### find_symbol
Find symbols globally or locally with/containing a given name/substring.
```
Example: find_symbol("authenticate")
Finds: authenticateUser, isAuthenticated, AuthenticationService
```

### find_referencing_symbols
Find symbols that reference another symbol.
```
Example: find_referencing_symbols("User", type="function")
Finds: All functions that use the User model
```

### get_symbols_overview
Get high-level overview of symbols in a file.
```
Example: get_symbols_overview("src/services/auth.ts")
Returns: List of classes, functions, exports in file
```

### search_for_pattern
Pattern search across project (when semantic search not sufficient).

## Usage Pattern

### Step 1: Start with Overview
```
If you know the file:
1. get_symbols_overview("path/to/file.ts")
2. Identify relevant symbols
3. Use find_symbol to get details
```

### Step 2: Semantic Search
```
If you don't know the file:
1. find_symbol("concept")
2. Review results
3. Use find_referencing_symbols to trace usage
```

### Step 3: Targeted Retrieval
```
Once you know what you need:
1. Use find_symbol to get specific code
2. Only loads relevant sections (not entire files)
3. Minimal token consumption
```

## Examples

### Example 1: Find Authentication Flow
```
Task: "Where do we handle user authentication?"

Process:
1. find_symbol("auth") - Find auth-related symbols
2. Identify: authenticateUser, validateToken, etc.
3. find_referencing_symbols("authenticateUser") - Where is it called?
4. Trace the flow: Login route → Auth service → JWT generation

Result: Complete authentication flow mapped without reading full files
```

### Example 2: Multi-file Refactoring
```
Task: "Rename User model to Account"

Process:
1. find_symbol("User") - Find User model
2. find_referencing_symbols("User") - Find all usages
3. List all files that need updating
4. Use rename_symbol (Serena tool) for safe refactoring

Result: All references found and renamed consistently
```

### Example 3: Understanding Component Relationships
```
Task: "How does ProjectCard component get data?"

Process:
1. find_symbol("ProjectCard")
2. find_referencing_symbols("ProjectCard") - Where is it used?
3. Trace backwards to data source
4. Understand the data flow

Result: Complete data flow from API → Page → Component
```

## Best Practices

1. **Start broad, narrow down**
   - Use find_symbol with general terms first
   - Filter results by type (function, class, interface)
   - Then get specific symbol details

2. **Use type filters**
   - type="function" - Only functions
   - type="class" - Only classes
   - type="interface" - Only interfaces

3. **Leverage symbol relationships**
   - find_referencing_symbols shows dependencies
   - Helps understand impact of changes
   - Reveals architectural patterns

4. **Combine with traditional tools**
   - Serena for semantic understanding
   - Grep for simple text matches
   - Read for config files, documentation

## Token Efficiency

Traditional approach (without Serena):
1. Read entire files → 10,000+ tokens
2. Multiple grep iterations → 5,000+ tokens
3. Manual analysis → High cognitive load

Serena approach:
1. find_symbol → 200 tokens
2. Targeted retrieval → 500 tokens
3. Total: ~700 tokens (93% savings)

## Troubleshooting

**If Serena returns too many results:**
- Add type filter: type="function"
- Use more specific search term
- Check specific file with get_symbols_overview first

**If Serena returns no results:**
- Check spelling (case-sensitive)
- Try broader search term
- Fall back to Grep for text search
- Ensure Serena is indexed (run: serena project index)

**If symbols missing:**
- Re-index project: serena project index
- Check if file is in .gitignore
- Verify language server supports file type

Related Skills

seo-snippet-hunter

242
from aiskillstore/marketplace

Formats content to be eligible for featured snippets and SERP features. Creates snippet-optimized content blocks based on best practices. Use PROACTIVELY for question-based content.

oss-hunter

242
from aiskillstore/marketplace

Automatically hunt for high-impact OSS contribution opportunities in trending repositories.

agentdb-semantic-vector-search

242
from aiskillstore/marketplace

Build semantic vector search systems with AgentDB for intelligent document retrieval, RAG applications, and knowledge bases using embedding-based similarity matching

azure-quotas

242
from aiskillstore/marketplace

Check/manage Azure quotas and usage across providers. For deployment planning, capacity validation, region selection. WHEN: "check quotas", "service limits", "current usage", "request quota increase", "quota exceeded", "validate capacity", "regional availability", "provisioning limits", "vCPU limit", "how many vCPUs available in my subscription".

DevOps & Infrastructure

raindrop-io

242
from aiskillstore/marketplace

Manage Raindrop.io bookmarks with AI assistance. Save and organize bookmarks, search your collection, manage reading lists, and organize research materials. Use when working with bookmarks, web research, reading lists, or when user mentions Raindrop.io.

Data & Research

zlibrary-to-notebooklm

242
from aiskillstore/marketplace

自动从 Z-Library 下载书籍并上传到 Google NotebookLM。支持 PDF/EPUB 格式,自动转换,一键创建知识库。

discover-skills

242
from aiskillstore/marketplace

当你发现当前可用的技能都不够合适(或用户明确要求你寻找技能)时使用。本技能会基于任务目标和约束,给出一份精简的候选技能清单,帮助你选出最适配当前任务的技能。

web-performance-seo

242
from aiskillstore/marketplace

Fix PageSpeed Insights/Lighthouse accessibility "!" errors caused by contrast audit failures (CSS filters, OKLCH/OKLAB, low opacity, gradient text, image backgrounds). Use for accessibility-driven SEO/performance debugging and remediation.

project-to-obsidian

242
from aiskillstore/marketplace

将代码项目转换为 Obsidian 知识库。当用户提到 obsidian、项目文档、知识库、分析项目、转换项目 时激活。 【激活后必须执行】: 1. 先完整阅读本 SKILL.md 文件 2. 理解 AI 写入规则(默认到 00_Inbox/AI/、追加式、统一 Schema) 3. 执行 STEP 0: 使用 AskUserQuestion 询问用户确认 4. 用户确认后才开始 STEP 1 项目扫描 5. 严格按 STEP 0 → 1 → 2 → 3 → 4 顺序执行 【禁止行为】: - 禁止不读 SKILL.md 就开始分析项目 - 禁止跳过 STEP 0 用户确认 - 禁止直接在 30_Resources 创建(先到 00_Inbox/AI/) - 禁止自作主张决定输出位置

obsidian-helper

242
from aiskillstore/marketplace

Obsidian 智能笔记助手。当用户提到 obsidian、日记、笔记、知识库、capture、review 时激活。 【激活后必须执行】: 1. 先完整阅读本 SKILL.md 文件 2. 理解 AI 写入三条硬规矩(00_Inbox/AI/、追加式、白名单字段) 3. 按 STEP 0 → STEP 1 → ... 顺序执行 4. 不要跳过任何步骤,不要自作主张 【禁止行为】: - 禁止不读 SKILL.md 就开始工作 - 禁止跳过用户确认步骤 - 禁止在非 00_Inbox/AI/ 位置创建新笔记(除非用户明确指定)

internationalizing-websites

242
from aiskillstore/marketplace

Adds multi-language support to Next.js websites with proper SEO configuration including hreflang tags, localized sitemaps, and language-specific content. Use when adding new languages, setting up i18n, optimizing for international SEO, or when user mentions localization, translation, multi-language, or specific languages like Japanese, Korean, Chinese.

google-official-seo-guide

242
from aiskillstore/marketplace

Official Google SEO guide covering search optimization, best practices, Search Console, crawling, indexing, and improving website search visibility based on official Google documentation