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OrangePro

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Analyzes code to map behaviors, identify untested gaps, and generate grounded integration tests that actually run.

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Описание

Analyzes code to map behaviors, identify untested gaps, and generate grounded integration tests that actually run.

README

Find the behaviors your tests miss. Generate grounded tests that actually run.

opro builds a knowledge graph from your local checkout, maps every behavior in your code, shows which ones are tested and which aren't, and generates integration-level tests grounded in real symbols — not hallucinated imports. It runs as a CLI and a local stdio MCP server.

Install the target repository's dependencies first, then run OrangePro from that repository:

cd /path/to/your/repo
npm install # or pnpm install / bun install / the repository's package manager

# Optional: enables AI candidate links, candidate flows, and test generation.
export ANTHROPIC_API_KEY="..." # or OPENAI_API_KEY / OLLAMA_BASE_URL

npx -y @orangepro/mcp-server@latest start . --prompt-version v5
open .orangepro/behavior-coverage.html

With no model key, the same command still performs deterministic analysis, renders the report, and dynamically proves eligible behaviors using existing tests. With a key, it also discovers AI candidate flows and drafts grounded tests for the highest-risk gaps. AI output never changes evidence tiers; only the mutation-kill oracle can mint Dynamically Proven.

The command writes:

.orangepro/
├── behavior-coverage.html   ← open this: interactive gap report
├── graph.json               ← deterministic evidence graph
├── COVERAGE_REPORT.md       ← coverage and gap summary
├── rtm.md                   ← requirements traceability matrix
└── ai/                      ← candidate AI links/flows when a provider is configured

orangepro_generated/         ← contained generated tests; existing source files are untouched

Run opro export when you want a machine-readable evidence pack. Screenshot 2026-07-08 at 1 18 01 AM


Install

# No install needed: run the full local workflow in the current repository
npx -y @orangepro/mcp-server@latest start . --prompt-version v5

# Or global install
npm install -g @orangepro/orangepro-mcp
opro start . --prompt-version v5

# Or from source
git clone https://github.com/OrangeproAI/orangepro-mcp.git
cd orangepro-mcp && npm ci && npm run build && npm link

Use with your coding agent

OrangePro runs as an MCP server. Any MCP-compatible agent (Cursor, Claude Code, Codex, Copilot, OpenCode) can drive it.

Quick agent setup

If you already have opro on your PATH, print the exact config for your client:

opro agent --client codex
opro agent --client claude-code
opro agent --client cursor
opro agent --client opencode
opro agent --client generic

No global install is required. These commands use the published package:

# Codex
npx -y @orangepro/mcp-server@latest agent --client codex

# Claude Code
npx -y @orangepro/mcp-server@latest agent --client claude-code

# Cursor
npx -y @orangepro/mcp-server@latest agent --client cursor

# OpenCode
npx -y @orangepro/mcp-server@latest agent --client opencode

# Generic MCP clients, including VS Code/Copilot-style MCP settings
npx -y @orangepro/mcp-server@latest agent --client generic

Manual MCP config

Add to your client's MCP config:

{
  "mcpServers": {
    "orangepro-local": {
      "command": "npx",
      "args": ["-y", "@orangepro/mcp-server@latest", "mcp"]
    }
  }
}
Client Config location
Claude Code .mcp.json or ~/.claude.json
Cursor ~/.cursor/mcp.json or Settings → MCP
Codex Config printed by opro agent --client codex or npx -y @orangepro/mcp-server@latest agent --client codex
VS Code / Copilot MCP settings; use the generic config if your client accepts raw MCP server JSON
OpenCode Config printed by opro agent --client opencode

The workflow

Tell your agent:

"Use orangepro_start, then orangepro_generate_tests with base_ref=main. Write each test to its suggested_path, run it, and report pass/fail."

The agent writes the test, runs it, calls orangepro_prove, and the behavior turns Dynamically Proven. One prompt, full loop.

MCP tools (18 total)

Tool What it does
orangepro_start One-command setup: analyze + report + next actions
orangepro_analyze_sources Build/refresh the evidence graph
orangepro_generate_tests Generate grounded tests for gaps
orangepro_prove Run mutation-kill oracle on a behavior
orangepro_prove_loop Setup commands + dynamic proof + report refresh for one behavior
orangepro_find_test_gaps List behaviors with weak/missing tests, ranked by risk
orangepro_graph_score Graph readiness score (0–100)
orangepro_status Workspace state without generating anything
orangepro_doctor Recommend next evidence to improve quality
orangepro_rtm Requirements traceability matrix
orangepro_stats Aggregate statistics
orangepro_changed_impact What a diff touches (requires git + base ref)
orangepro_record_run Record a test run result
orangepro_explain_test Explain why a test was generated
orangepro_export_evidence_pack Export metadata-only evidence pack
orangepro_update_graph Incremental graph update
orangepro_ai_links Weak behavior→symbol suggestions (optional AI)
orangepro_ai_flows Candidate flow discovery (optional AI)

CLI reference

opro                          # analyze + report + agent next actions
opro start --base main        # same, scoped to a branch diff
opro analyze                  # build the evidence graph
opro score                    # graph readiness (0–100)
opro gaps --limit 10          # top 10 untested behaviors
opro generate --base main     # tests for PR diff
opro generate --single        # top gap, whole repo
opro prove                    # mutation-kill oracle (use the prove_run args returned by generate)
opro rtm                      # traceability matrix
opro export                   # metadata-only evidence pack
opro mcp                      # run as MCP server (stdio)
opro doctor                   # what evidence to add next
opro doctor --proof           # explain why dynamic proof could not close
opro coverage                 # ingest runtime coverage

Add --json to any read command for machine output. Run opro help for the full reference.


PR workflow

opro generate --base main              # tests for what this branch changed
opro generate --pr 1234                # checks out PR #1234 — mutates your working tree; needs gh + confirmation (prefer --base)
opro generate --changed                # current branch diff vs main

Each generated test includes:

  • Grounding — the real files, symbols, and existing tests it cites
  • Run hints — where to write it, how to run it
  • Scenario bucket + technique — what failure mode it targets and how

Test categories

Generation is evidence-gated. A category is produced only when the graph has supporting evidence — never padded with generic filler. These are the public local generation buckets. The broader concern taxonomy used by planning prompts is not a public coverage taxonomy and does not change report tiers.

Category What it targets
Happy path Primary expected behavior
Validation error Bad/invalid input handling
Edge case Boundaries, empty/null, concurrency, retries
Integration flow Multi-step behavior across services
Security / privacy Auth, injection, data leakage
Regression Pinning a previously-broken behavior

Evidence tiers

Every behavior gets exactly one tier. Nothing is labeled "tested" on faith.

Tier What it means How you get there
Dynamically Proven A real test kills a targeted mutant of this behavior opro prove after writing/running a test
Runtime-covered Coverage tool executed this code opro start --generate-coverage
Statically Linked Import/name/structural match links a test to this code Automatic during analysis
No Signal Nothing tests this behavior yet

"Dynamically Proven 0" is normal on first run. Static analysis always runs. Dynamic proof requires running tests against targeted mutations. That's the trust model — nothing is Dynamically Proven until a real test kills a real mutant.

When runtime coverage is available, opro start also compares Runtime-covered and Dynamically Proven behaviors over the same deterministic denominator. It never compares source-line coverage with behavior proof or folds off-denominator proofs into that percentage.


Language support

OrangePro separates static mapping, generated tests, runtime coverage, and dynamic proof. Those are different confidence bars.

Language Static behavior extraction Generated tests Runtime coverage Dynamic proof
TypeScript / JavaScript ✓ Jest / Vitest / Mocha / AVA-style drafts ✓ lcov.info ✓ Vitest / Jest / Mocha
Python ✓ pytest ✓ coverage.py / pytest-cov XML ✓ pytest
Go ✓ same-package *_test.go ✓ coverprofile go test
Java ✓ JUnit 4/5 ✓ JaCoCo XML ✓ Maven/JUnit
Kotlin, Rust, PHP, C#, Ruby, Swift, C, C++ ✓ static behavior extraction planned planned where standard coverage exists planned proof profiles

Static mapping works across many languages through tree-sitter and repo metadata. Dynamic proof is deliberately narrower: each language needs a runner, mutation locator, sandbox profile, and false-proof regressions before it can mint Dynamically Proven.


Model setup (BYOK)

Analysis, scoring, and proof need no model key. Generation does.

Provider Environment variable
OpenAI-compatible OPENAI_API_KEY (optional: OPENAI_BASE_URL, OPENAI_MODEL)
Anthropic ANTHROPIC_API_KEY (optional: ANTHROPIC_MODEL)
Ollama (local, no key) OLLAMA_BASE_URL (optional: OLLAMA_MODEL)

Auto-detect order: OpenAI → Ollama → Anthropic. Override with --provider and --model.

Run opro setup to configure interactively. Keys stay in your environment — never written to graph, config, or artifacts.


AI candidate lanes

With a provider key, OrangePro can stage weak AI behavior→symbol links and AI-suggested candidate flows. These are ready for local use as review/generation worklists, but they are not evidence:

  • AI links appear as AI-linked suggestions.
  • AI flows are stored separately from deterministic flows.
  • Neither lane changes Dynamically Proven, Runtime-covered, Statically Linked, denominator counts, or evidence tiers.

Use them when you want the agent to find likely service-boundary flows faster; ignore them when you want a deterministic-only report.


How it works

OrangePro separates analysis (what your code does) from proof (whether tests actually verify it).

┌─────────────┐     ┌──────────────┐     ┌─────────────┐
│  Your Code  │ ──► │  Knowledge   │ ──► │  Evidence   │
│  (any lang) │     │    Graph     │     │   Tiers     │
└─────────────┘     └──────────────┘     └─────────────┘
                           │
                    ┌──────┴──────┐
                    ▼             ▼
             ┌───────────┐  ┌──────────┐
             │ Gap Report│  │ Generate │
             │ + Risks   │  │  Tests   │
             └───────────┘  └──────────┘
Phase What happens Needs a model key?
Analyze AST walk → behaviors, flows, evidence tiers No
Score Graph readiness score (0–100) with reasons No
Generate Grounded tests for top gaps, per-behavior Yes (BYOK)
Prove Mutation-kill oracle confirms test actually breaks if behavior changes No

Privacy

  • No stored source. Reads code in-process. Never uploads to an OrangePro server.
  • No existing-source mutation. Never edits existing source or test files. Writes metadata to .orangepro/; keyed auto-drive may write new, reviewable tests under orangepro_generated/.
  • Metadata-only exports. File paths, names, hashes, scores — not raw source.
  • Your keys stay yours. Read from env at call time, never persisted.
  • BYOK is direct. When AI lanes are enabled, grounded code context is sent directly to the model provider you configure; OrangePro's hosted service is not in that path.

What's on the hosted platform

This repo is the free local tool. The OrangePro platform adds:

  • Persistent knowledge graph across PRs and repos
  • Managed dynamic proof at scale (larger budgets, CI workers, service setup profiles)
  • PR/CI policy gates over Dynamically Proven, Runtime-covered, and risk deltas
  • Jira / Confluence / TestRail / OpenAPI enrichment
  • Cross-repo intelligence and recurring-flow memory
  • Production incident correlation and regression targeting
  • Full test lifecycle management and team dashboards

Contributing

npm run build       # compile to dist/
npm test            # vitest
npm run typecheck   # type check without emitting

See docs/local-proof-kit.md for the full development reference.

License

MIT © OrangePro

from github.com/OrangeproAI/orangepro-mcp

Установка OrangePro

У этого сервера нет опубликованного пакета — он собирается из исходников. Открой репозиторий и следуй инструкции в README.

▸ github.com/OrangeproAI/orangepro-mcp

FAQ

OrangePro MCP бесплатный?

Да, OrangePro MCP бесплатный — установка в пару кликов через Unyly без оплаты.

Нужен ли API-ключ для OrangePro?

Нет, OrangePro работает без API-ключей и переменных окружения.

OrangePro — hosted или self-hosted?

Self-hosted: сервер запускается локально на твоей машине командой из раздела установки.

Как установить OrangePro в Claude Desktop, Claude Code или Cursor?

Открой OrangePro на unyly.org, выбери вкладку своего клиента (Claude Desktop, Claude Code, Cursor) и нажми Install — конфиг сгенерируется автоматически, без правки JSON.

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