Java Inspector
Decompiles Maven dependencies into readable Java source directly inside your AI agent.
README
Java Inspector
Decompile Maven dependencies into readable Java source — directly inside your AI agent.
What is this?
AI editors can't read compiled .class files. Ask "How does JpaRepository work?" and the agent hallucinates.
Java Inspector is an MCP server that exposes the internals of your project's Maven dependencies (Spring, Hibernate, Jackson, Micrometer, etc.) as decompiled Java source code. Zero configuration — just point your agent at it.
Supported operations
| Tool | What it does |
|---|---|
scan_dependencies |
Kicks off a background scan of every JAR on the Maven classpath. Call again to poll progress. |
decompile_class |
Returns the full Java source (method bodies and all) via Vineflower. Optionally extract a single method by methodName, or paginate with offset/limit. |
analyze_class |
Returns the structural signature — fields, methods, constructors, inheritance — via javap. No method bodies. |
search_class |
Fuzzy-find classes by partial name (e.g. "ObservationRegistry"). |
get_inheritance_tree |
Walks the superclass chain up to java.lang.Object. |
Response formats
Every tool accepts a format parameter (text | json | toon). Default is text.
| Format | What you get | Best for |
|---|---|---|
text |
Human-readable markdown, tables, code blocks | Reading by LLMs and humans |
json |
Pure structuredContent — no text wrapper |
Programmatic consumption, piping to other tools |
toon |
Token-Oriented Object Notation — compact, schema-aware text | LLM prompts where token count matters (~40% fewer tokens than JSON) |
json strips the text wrapper and returns only the structured payload.
toon encodes the same payload via @toon-format/toon, giving you YAML-like readability with CSV-like compactness for uniform arrays.
Architecture
graph LR
A[AI Agent<br/>Claude / Cursor / Codex / Opencode] -->|MCP| B[java-inspector<br/>TypeScript Server]
B -->|auto-detect| C{Maven Resolver}
C -->|priority 1| D[MAVEN_CMD env]
C -->|priority 2| E[mvnd daemon<br/>~2x faster]
C -->|priority 3| F[MAVEN_HOME/bin/mvn]
C -->|priority 4| G[mvn from PATH]
B -->|dependency:build-classpath| H[~/.m2/repository]
H -->|JAR streams| I[yauzl extractor]
I -->|class names| J[JSON Lines Cache]
B -->|cache hit| J
B -->|cache miss| I
B -->|java -jar vineflower.jar| K[Vineflower 1.11.2<br/>Decompiler]
K -->|*.java source| A
Why JSON Lines?
Traditional JSON caches rewrite the entire file on every batch — O(n²) overhead for large projects. We use append-only JSON Lines:
- Crash-safe: each line is independent; a truncated final line is skipped on reload.
- Fast startup: the server replays the JSONL into an in-memory
Map<string, ClassIndexEntry>on launch. - Low memory: ~35 MB RAM for 100,000 classes.
Cache layout
~/.cache/java-inspector/<project>_<hash>/
├── classpath.json # pomHash + jarPaths[] + classpathHash + timestamp
├── class-index.jsonl # Append-only ClassIndexEntry batches
├── scan-state.json # jarCount, processedJars[], isComplete
├── server-<pid>.log # Per-process append-only logs (multi-process safe)
├── write.lock # Cross-process lock for JSONL / state writes
├── scan.lock # Cross-process lock for scan lifecycle
└── decompile-cache-vineflower/ # Cached .java sources
Quick Start
Add to your MCP client config:
Claude Desktop
Edit %APPDATA%\Claude\claude_desktop_config.json:
{
"mcpServers": {
"java-inspector": {
"command": "npx",
"args": ["-y", "@mustafagoksever/java-inspector"]
}
}
}
Cursor
Settings → MCP Servers → Add:
{
"mcpServers": {
"java-inspector": {
"command": "npx",
"args": ["-y", "@mustafagoksever/java-inspector"]
}
}
}
Codex
Edit ~/.codex/config.toml:
[mcp_servers.java-inspector]
command = "npx"
args = ["-y", "@mustafagoksever/java-inspector"]
Opencode
Edit %APPDATA%\opencode\config.json:
{
"mcp": {
"java-inspector": {
"type": "local",
"command": [
"npx",
"-y",
"@mustafagoksever/java-inspector"
]
}
}
}
Restart your editor and ask: "Show me the source of ObservationRegistry"
That's it. No JAVA_HOME tweaks. No manual decompiler download. The server ships the ~1.8 MB Vineflower JAR inside the package.
Workflow
sequenceDiagram
participant U as User
participant A as AI Agent
participant S as java-inspector
participant M as Maven / mvnd
participant C as Cache
U->>A: "Show me JpaRepository source"
A->>S: decompile_class("org.springframework.data.jpa.repository.JpaRepository")
alt Index not built yet
S->>M: dependency:build-classpath
M-->>S: JAR list
S->>S: Background scan (20 JARs in parallel)
S-->>A: Class found via lazy JAR search
else Cache hit
S->>C: Map.get(className) — O(1)
C-->>S: ClassIndexEntry
end
S->>S: Extract .class from JAR (yauzl)
S->>S: java -jar vineflower.jar ...
S-->>A: Decompiled .java source
A-->>U: Formatted response
Cache invalidation
flowchart TD
A[scan_dependencies called] --> B{isIndexComplete?}
B -->|pomHash mismatch| C[Invalidate disk + memory]
B -->|classpathHash mismatch| C
B -->|both match| D[Return existing index]
C --> E[Delete ~/.cache/java-inspector/<hash>/*]
E --> F[Re-run Maven dependency:build-classpath]
F --> G[Start background scan]
D --> H[Return Map of classes]
Invalidation triggers:
- Module
pom.xmlchanges —pomHashmismatch. - Parent POM / dependency-management changes —
classpathHashmismatch. - Manual — call
scan_dependencieswithforceRefresh: true. This force-releases cross-process locks and wipes the cache directory before restarting.
Platform Support
| OS | Command |
|---|---|
| Windows | npx -y @mustafagoksever/java-inspector |
| Linux | npx -y @mustafagoksever/java-inspector |
| macOS | npx -y @mustafagoksever/java-inspector |
Requirements: Node.js ≥ 16, Java runtime, Maven (or mvnd for faster resolves).
Environment variables
| Variable | Effect |
|---|---|
JAVA_HOME |
Locates java and javap. |
MAVEN_HOME |
Locates mvn / mvn.cmd. |
MAVEN_CMD |
Override executable entirely — e.g. mvnd, mvnw, or a full path. |
MAVEN_REPO |
Overrides ~/.m2/repository. |
DECOMPILER_PATH |
Use a custom Vineflower JAR instead of the bundled one. |
NODE_ENV=development |
Enables verbose server.log output. |
Installation alternatives
Zero-setup (recommended)
npx @mustafagoksever/java-inspector
Global install
npm install -g @mustafagoksever/java-inspector
java-inspector start
Build from source
git clone https://github.com/mustafagoksever/java-inspector.git
cd java-inspector
npm install
npm run build
Troubleshooting
Log Files
All logs are stored in the cache directory under your user home:
~/.cache/java-inspector/<project>_<hash>/server-<pid>.log
Viewing logs while connected:
# PowerShell
Get-Content ~/.cache/java-inspector/<project>_<hash>/server-<pid>.log -Wait -Tail 20
# Unix/macOS
tail -f ~/.cache/java-inspector/<project>_<hash>/server-<pid>.log
Log files are cleared when cache is invalidated (forceRefresh: true or hash mismatch).
| Tag | Description |
|---|---|
[SERVER] |
Server startup/shutdown |
[AUTO-SCAN] |
Automatic scan on startup |
[MAVEN] |
Maven command resolution & classpath building |
[SCAN] |
Background JAR scanning |
[JAVAP] |
javap class analysis |
[DECOMPILE] |
Vineflower decompilation |
[TOOL:<name>] |
Tool call entry/exit with duration |
[CACHE] |
Cache invalidation & state |
[LOCK] |
Cross-process lock acquire/release/compromise |
Common Issues
"command not found" error
- Ensure Node.js and npm are in your PATH.
Maven not found
- Set
MAVEN_HOMEenvironment variable or ensure Maven is in your PATH. - Try using
mvnd(Maven Daemon) for ~2x faster resolves.
Lock timeout errors
- If a process was killed with SIGKILL while scanning, locks become stale after 60 seconds.
- Another process can then acquire the lock. No action needed unless the problem persists.
Cache problems
- Call
scan_dependencieswithforceRefresh: trueto clear cache and restart.
Technical stack
| Layer | Technology |
|---|---|
| Language | TypeScript 5.7 |
| Runtime | Node.js 16+ |
| Protocol | Model Context Protocol (MCP) |
| Decompiler | Vineflower 1.11.2 (bundled) |
| JAR reader | yauzl (streaming, lazy entries) |
| Build tool | tsc |
| Package manager | npm |
| License | Apache-2.0 |
Performance Test Results
Spring AI Project Test (April 2026)
Test Environment: Windows, Maven Daemon (mvnd)
Project: Spring AI (multi-module project)
| Operation | Time |
|---|---|
| Maven classpath resolution (185 JARs) | 44.87s |
| Background scan (185 JARs, 30,612 classes) | 12.38s |
| Total initial scan | ~57s |
| analyze_class (UserMessage) | <1s |
| decompile_class (UserMessage) | <1s |
| search_class (query: "UserMessage") | <1s |
Notes:
- First call triggers classpath resolution + background scan (non-blocking)
- Subsequent calls use cached index (in-memory Map)
- Cross-process locking prevents duplicate scans
License
Apache-2.0
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