Orihime

Orihime

Cross-repository code knowledge graph MCP server for Java, Kotlin, JavaScript, and TypeScript. Indexes source code into embedded KuzuDB via tree-sitter and exposes 30+ tools for call-flow tracing, multi-hop taint analysis (OWASP/CWE/PCI/STIG), entry-point reachability filtering, performance hotspot detection, and license compliance — without reading source files. 95% fewer tokens vs source-read

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README

Orihime

<!-- mcp-name: io.github.srinivasan-sundaresan95/orihime -->

PyPI License: MIT MCP orihime MCP server

A cross-repository code knowledge graph for Java/Kotlin/JavaScript/TypeScript codebases. Orihime indexes your source code into an embedded KuzuDB graph database using tree-sitter and exposes the graph through an MCP server (for AI assistants), a local web UI, and a CLI.

Mythology: Orihime (織姫) is Vega — the weaving princess who weaves the fabric of the cosmos. She weaves connections. The tool that weaves your codebase into a single graph.


What It Does

  • Call graph across repositories — who calls what, across service boundaries, including REST calls resolved to the endpoint they target
  • Cross-repo taint analysis — track user-controlled data from HTTP/Kafka/JMS entry points through the call graph to dangerous sinks (SQL injection, path traversal, XXE, deserialization, SSRF, log injection, …)
  • Security reports — OWASP Top 10, CWE, PCI DSS, STIG frameworks; second-order injection detection; custom sources/sinks via YAML
  • Entry-point reachability filtering — suppress false positives from dead code; only surface findings reachable from real entry points (HTTP handlers, @KafkaListener, @Scheduled, @JmsListener, @RabbitListener)
  • Complexity hints — static O(n²) loop detection, N+1 JPA risk, unbounded queries, recursive calls — no profiler needed
  • Performance correlation — ingest Gatling/JMeter load test results; correlate with the call graph to find confirmed hotspots and Little's Law capacity ceilings per endpoint
  • License compliance — scan Maven/Gradle dependencies against SPDX identifiers; flag GPL/AGPL/LGPL in commercial projects
  • Incremental re-index — git blob-hash-based skip; only changed files are re-parsed on subsequent runs
  • Multi-language — Java, Kotlin, JavaScript, TypeScript (Next.js, Express, React)

Quick Start — AI-first (Claude Code)

The primary way to use Orihime is through an AI assistant via MCP. You index once, then ask questions in natural language — no Cypher, no grep, no reading source files.

1. Install

git clone https://github.com/srinivasan-sundaresan95/orihime.git
cd orihime
pip install -e .

2. Register with Claude Code (one-time setup)

python -m orihime register       # writes MCP server entry to ~/.claude/settings.json
python -m orihime install-skills # copies Claude Code skills to ~/.claude/skills/

Restart Claude Code. The orihime MCP tools and skills (/orihime-call-flow, /orihime-security-audit, /orihime-perf-analysis, /orihime-change-impact) are now active.

3. Index your repositories

python -m orihime index --repo /path/to/your/service-a --name service-a
python -m orihime index --repo /path/to/your/service-b --name service-b

4. Ask questions

Trace the call flow for GET /api/orders in service-a
Find SQL injection risks in service-b
What breaks if I change OrderService.processPayment?
Which endpoints are approaching saturation?

No source file reads. No grep. Claude uses the graph directly — typically 5–8 tool calls vs 30+ for source-only analysis.

CLI alternative: All operations above are also available as Python commands (python -m orihime index, python -m orihime ui, etc.) if you prefer working outside an AI assistant. See CLI Reference below.


Feature Comparison

Capability Orihime GitNexus SonarQube Community SonarQube Developer SonarQube Enterprise
Cross-repo call graph
REST endpoint resolution
MCP integration (AI assistants) ✓¹ ✓¹ ✓¹
Claude Code hooks + skills
Cross-file taint (SAST / injection)
Second-order injection
Entry-point reachability filter
Custom sources/sinks (YAML) ✓²
OWASP/CWE/PCI/STIG compliance reports
Argument-level taint (value-flow)
Complexity hints (O(n²), N+1) partial partial partial
I/O fan-out + serial/parallel analysis
Perf ingestion + capacity model
Cross-service cascade risk
License compliance ✓³
Embedded DB (no server daemon)
Indexes Java / Kotlin
Indexes JS / TS
License MIT PolyForm NC LGPL Commercial Commercial

¹ Via the official sonarqube-mcp-server (SonarSource, production-ready). Works with all SonarQube editions. ² Custom taint sources/sinks require the Advanced Security add-on (Enterprise+). ³ License compliance (SBOM + policy enforcement) requires the Advanced Security add-on (Enterprise+).

GitNexus (PolyForm Non-Commercial) provides cross-repo call graphs and MCP integration across 14 languages including Java and Kotlin. It does not cover SAST, perf analysis, or compliance reporting.


MCP Tools Reference

Call Graph

Tool Description
find_callers(method_fqn) All methods that call the given method
find_callees(method_fqn) All methods called by the given method
blast_radius(method_fqn, max_depth) Transitive set of callers up to N hops
find_endpoint_callers(http_method, path_pattern) Trace back from an HTTP endpoint to its callers
find_implementations(interface_fqn) All classes implementing an interface
find_superclasses(class_fqn, max_depth) Inheritance chain
find_external_calls(repo_name) All calls to methods outside the indexed repo

Discovery

Tool Description
search_symbol(query) Full-text search across class/method FQNs
get_file_location(fqn) File path and line number for any class or method
list_repos() All indexed repositories
list_branches(repo_name) All indexed branches for a repo
list_endpoints(repo_name) All HTTP endpoints in a repo
list_unresolved_calls(repo_name) REST calls that couldn't be matched to an endpoint
find_repo_dependencies(repo_name) Cross-service DEPENDS_ON edges

ORM / JPA

Tool Description
list_entity_relations(repo_name) All JPA entity relationships — also used in design review (Phase 1.5)
find_eager_fetches(repo_name) EAGER-fetched collections (N+1 risk)

Security (SAST)

Tool Description
find_taint_sinks(repo_name) All taint sinks reachable in the call graph
find_taint_flows(repo_name) Value-flow taint: argument → parameter across CALLS edges
find_cross_service_taint(repo_name, max_depth) Taint that crosses service boundaries via REST
find_second_order_injection(repo_name) Taint stored to DB then re-read and used as sink
find_entry_points(repo_name) All HTTP/Kafka/Scheduled/JMS/RabbitMQ entry points
find_reachable_sinks(repo_name, show_all) Taint sinks filtered to those reachable from entry points only
generate_security_report(repo_name, framework) Report in OWASP / CWE / PCI / STIG format
list_security_config() Show active sources, sinks, and sanitizers from YAML config

Complexity & Performance

Tool Description
find_complexity_hints(repo_name, min_severity) Methods flagged with O(n²), N+1, unbounded-query, recursive
ingest_perf_results(repo_name, file_path) Load Gatling simulation.log, JMeter XML, or JSON perf data
find_hotspots(repo_name) Complexity hints × p99 latency, sorted by risk score
estimate_capacity(repo_name) Little's Law capacity per endpoint; flags near-saturation
find_cascade_risk(repo_name) Cross-service cascade: upstream endpoints limited by downstream saturation

License Compliance

Tool Description
find_license_violations(repo_name, allowed, skip_lookup) Flag GPL/AGPL/LGPL dependencies via Maven Central

Index

Tool Description
index_repo_tool(repo_path, repo_name) Trigger an index from within the MCP session

CLI Reference

All operations are also accessible directly without an AI assistant:

python -m orihime index        --repo PATH  --name NAME  [--db PATH] [--force] [--branch NAME]
python -m orihime ui           [--port 7700] [--db PATH]
python -m orihime serve
python -m orihime serve-sse    [--port 7702] [--db PATH]
python -m orihime resolve        [--db PATH]
python -m orihime write-server   [--port 7701] [--db PATH]
python -m orihime register       [--db PATH] [--python PATH]
python -m orihime install-skills
Command Description
index Parse a repository and write its graph into KuzuDB
ui Start the local web UI on port 7700
serve Start the MCP server on stdio (for Claude Code, Claude Desktop, any MCP client)
serve-sse Start the MCP server with SSE transport (for CI runners and remote clients)
resolve Match RestCall URL patterns against Endpoints across all indexed repos
write-server Start the write-serialization server for team/server deployments
register Write the Orihime MCP server entry to ~/.claude/settings.json
install-skills Copy bundled skills to the target AI assistant's config dir (--agent claude|cursor|codex|copilot|all)

Web UI

http://localhost:7700
Page Description
/ Call graph explorer: search methods, trace callers/callees, visualize CALLS graph
/findings Security + complexity findings table — filter by OWASP category, severity, file
/api/… JSON endpoints backing the UI (also usable directly)

Configuration

Environment Variables

Variable Default Description
ORIHIME_DB_PATH ~/.orihime/orihime.db Path to KuzuDB database directory
ORIHIME_SERVER_URL (unset) URL of the write-serialization server (team mode)

Custom Sources and Sinks

Create ~/.orihime/security_config.yaml (or set ORIHIME_SECURITY_CONFIG):

sources:
  - method_pattern: ".*getCustomUserInput"
    description: "Custom input source"

sinks:
  - method_pattern: ".*legacyExec"
    sink_type: "COMMAND_INJECTION"
    description: "Legacy shell executor"

sanitizers:
  - method_pattern: ".*sanitizeForLegacy"

The built-in config covers HttpServletRequest, @RequestParam, @PathVariable, @RequestBody, JDBC execute*, JPA native queries, Runtime.exec, ProcessBuilder, XML parsers, ObjectInputStream, Files.get, Paths.get, new URL, logging calls, and more.


Documentation

Doc Description
MCP Server All MCP tools with parameters and examples
Extractors How Java/Kotlin/JS/TS are parsed; ExtractResult schema
Security Config Custom sources, sinks, sanitizers — YAML reference
CI Integration GitHub Actions PR review workflow setup
Docker Docker Compose setup for server deployments
Adding a Language How to add a new language extractor
Cross-Repo Resolution How REST calls are matched to endpoints across repos

Team / Server Mode

KuzuDB has a single-writer constraint. In team deployments where multiple developers re-index simultaneously, run the write-serialization server:

# On the shared server — owns the KuzuDB connection
python -m orihime write-server --port 7701 --db /shared/orihime.db

# Each developer's indexer sends writes to the server
ORIHIME_SERVER_URL=http://server:7701 python -m orihime index --repo /path --name my-service

Developers running locally without ORIHIME_SERVER_URL open KuzuDB directly as always. The web UI and MCP server always read directly from KuzuDB (reads do not go through the write server).


Architecture

Source files
    │
    ▼ tree-sitter (Java, Kotlin, JS, TS)
ParseResult (plain Python dicts, picklable)
    │
    ▼ ProcessPoolExecutor (parallel parse workers)
Phase 2: KuzuDB writes (batched by table, 500-edge transactions)
    │
    ▼
KuzuDB embedded graph  ←──────────────────────────────┐
    │                                                   │
    ├── MCP server (FastMCP, stdio)                     │
    ├── Web UI (Starlette, port 7700)                   │
    └── Write server (FastAPI, port 7701, team mode) ──┘

Graph schema (SCHEMA_VERSION 10):

Node Key fields
Repo id, name, root_path
File path, language, blob_hash, branch_name
Class fqn, annotations, is_interface
Method fqn, line_start, annotations, is_entry_point, complexity_hint
Endpoint http_method, path, path_regex
RestCall http_method, url_pattern
EntityRelation source_class, target_class, fetch_type, relation_type
PerfSample endpoint_fqn, p50_ms, p99_ms, rps, source
CapacityEstimate endpoint_fqn, saturation_rps, ceiling_concurrency, risk_level
Relationship Description
CALLS Method → Method; carries callee_name, caller_arg_pos, callee_param_pos
CALLS_REST Method → Endpoint (resolved cross-service call)
UNRESOLVED_CALL Method → RestCall (not yet resolved)
CONTAINS_CLASS File → Class
CONTAINS_METHOD Class → Method
EXPOSES Repo → Endpoint
DEPENDS_ON Repo → Repo (cross-service dependency)
EXTENDS Class → Class
IMPLEMENTS Class → Class
HAS_RELATION Class → EntityRelation
OBSERVED_AT Method → PerfSample

Performance

Query performance (graph DB)

Benchmarked on an 845-file Java/Kotlin service:

Operation Time
Cold index ~67s
Incremental re-index (no changes) ~34s
find_callers <5ms
blast_radius (depth 3) <15ms
find_taint_sinks (full repo) <25ms

Batch write speedup vs naive per-row writes: 12×.


AI assistant benchmark — tracing a single call flow

Java/Kotlin codebase (845 + 224 files, measured)

Benchmarked on a 845-file Kotlin service and a 224-file Java service, tracing one controller endpoint through service → repositories → upstream APIs. GitNexus v1.6.3, Orihime v1.9, and a grep+source-read baseline were all measured on the same codebase on the same hardware (WSL2/Ubuntu, Intel i7, 2026-04-30).

Approach Cold index Query latency Avg tokens/query Files read
Baseline — Claude reads source files directly ~4–5 min ~14,000 27
GitNexus v1.6.3 51.4s 2–10s⁴ ~1,490 0
Orihime v1.9 66.6s 3–22ms ~683 0

Orihime vs baseline: 95% fewer tokens · 200–1,400× faster queries
Orihime vs GitNexus: 2.2× fewer tokens · 200–1,400× faster queries · MCP-native

The 7 Orihime tool calls produced ~80% of the structural picture (full controller→service→repo→upstream chain, 27 test methods surfaced, resilience wiring discovered automatically). The remaining ~20% — upstream API URLs, auth headers, branch-level control flow — requires targeted source reads, scoped to ~5 specific files rather than 27.

GitNexus's cold index is ~1.3× faster on NTFS (Node.js parse throughput advantage). On native Linux this gap narrows to near parity.

⁴ GitNexus query latency is dominated by live GitHub API round trips (1–3 per query × 500–2,000ms each, rate-limit dependent). Blast radius returned results in the wrong direction (upstream imports rather than downstream dependents).


License

MIT

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