Deterministic orchestration shell for autonomous AI agent execution
Project description
Arcwright AI
Deterministic orchestration shell for autonomous AI agent execution.
Arcwright AI takes BMAD planning artifacts (PRD, Architecture, Epics, Stories) and autonomously executes them through Claude, enforcing validation gates, tracking decision provenance, and writing structured run artifacts after every execution.
Table of Contents
- Prerequisites
- Installation
- Project Setup
- Running Stories
- Run Artifacts
- Understanding the Output
- LangGraph Studio
- Development
- Troubleshooting
Prerequisites
- Python 3.11+ (3.14 recommended; see LangGraph Studio for the exception)
- Claude API key (Anthropic):
ARCWRIGHT_API_CLAUDE_API_KEY - BMAD 6.1+ — planning artifacts and dev-story workflow features require BMAD 6.1 or later
- A project initialised with BMAD (
_spec/planning-artifacts/containing PRD, architecture, epics, and story files)
Installation
From PyPI (end users):
python3 -m venv .venv
source .venv/bin/activate
pip install arcwright-ai
From source (contributors):
git clone https://github.com/ProductEngineerIO/arcwright-ai.git
cd arcwright-ai/arcwright-ai
python -m venv .venv
.venv/bin/pip install -e ".[dev]"
Set your API key (add to your shell profile or .env):
export ARCWRIGHT_API_CLAUDE_API_KEY="sk-ant-..."
Project Setup
Before dispatching stories, initialise Arcwright AI in your target project (the project whose stories you want to implement — not this repo):
# From inside the target project root:
arcwright-ai init
# Or point explicitly:
arcwright-ai init --path /path/to/your/project
This creates .arcwright-ai/ with the following layout:
.arcwright-ai/
├── config.yaml ← project-level configuration (committed)
├── runs/ ← execution artifacts (git-ignored)
├── worktrees/ ← git worktrees (git-ignored)
└── tmp/ ← transient scratch space (git-ignored)
config.yaml defaults (edit to suit your project):
model:
version: "claude-opus-4-6"
limits:
tokens_per_story: 200000
cost_per_run: 10.0
retry_budget: 3
timeout_per_story: 300
methodology:
artifacts_path: "_bmad-output" # where your BMAD planning docs live
type: "bmad"
scm:
branch_template: "arcwright-ai/{story_slug}"
API key security: Never put your API key in
config.yaml. Set it viaARCWRIGHT_API_CLAUDE_API_KEYenvironment variable, or in the global~/.arcwright-ai/config.yaml(user-level, outside any repo).
Verify your setup:
arcwright-ai validate-setup
Running Stories
Dispatch a single story by its epic.story identifier (e.g., story 4 of epic 2 is 2.4):
# From inside the target project root:
arcwright-ai dispatch --story 2.4
# Dashes also work:
arcwright-ai dispatch --story 2-4
The pipeline runs:
preflight → budget_check → agent_dispatch → validate → commit → finalize
Each node writes artifacts to .arcwright-ai/runs/<run-id>/stories/<story-slug>/.
Exit codes:
| Code | Meaning |
|---|---|
0 |
Story completed successfully |
1 |
Unexpected error (configuration, I/O, etc.) |
2 |
Story escalated (validation failed, could not auto-fix) |
Run Artifacts
Every execution produces a run directory:
.arcwright-ai/runs/<run-id>/
├── run.yaml ← metadata: status, cost, story list
└── stories/<story-slug>/
├── context-bundle.md ← assembled context injected into the agent
├── agent-output.md ← raw output from Claude
├── validation.md ← V6 invariant + V3 reflexion results and decision log
├── halt-report.md ← populated only on escalation
└── summary.md ← produced by finalize node (success or halt)
Run ID format: YYYYMMDD-HHMMSS-<4-char-id> (e.g. 20260305-022632-4b90)
Reading a halt report
When a run escalates, check these files in order:
halt-report.md— escalation reason, retry history, suggested fixvalidation.md— exact V6 invariant failures and V3 reflexion AC resultsagent-output.md— what Claude produced (verify files actually exist on disk before trusting V6 failures)
Understanding the Output
status: escalated vs. failure
escalated means the pipeline ran successfully but validation could not be satisfied within the retry budget. It does not mean the agent crashed. The agent's work (files, code) is still on disk in the target project.
Escalation reasons:
| Reason | Meaning |
|---|---|
v6_invariant_failure |
Hard rule violation (missing file, bad name, syntax error) — retries won't help without a fix |
max_retries_exhausted |
V3 reflexion (AC review) kept failing after N retries |
budget_exceeded |
Token/cost ceiling hit before validation passed |
False-positive V6 failures
If validation.md shows a file_existence failure for a file that does exist on disk, check whether the path in the error has a leading backtick (e.g., `backend/app/routers/admin.py). This is a known pattern when the agent uses inline code formatting in markdown headers. The V6 checker strips backticks as of the current version. If you see this after upgrading from an older run, the files are fine — re-run to get a clean pass.
LangGraph Studio
Arcwright AI ships a langgraph.json config so you can visualise and inspect the execution graph in LangGraph Studio.
Why a separate venv?
The main .venv uses Python 3.14. The langgraph-api package (required for langgraph dev) depends on pyo3-based Rust extensions that do not yet publish wheels for Python 3.14 and cannot be compiled without matching support. A separate Python 3.13 venv is used exclusively for Studio.
One-time setup
Ensure Python 3.13 is available (via Homebrew or pyenv), then:
cd arcwright-ai/
# Create Studio venv with Python 3.13
python3.13 -m venv .venv-studio
# Install project + LangGraph Studio deps
.venv-studio/bin/pip install -e ".[dev]" "langgraph-cli[inmem]"
Starting Studio
cd arcwright-ai/
.venv-studio/bin/langgraph dev
The server starts at http://127.0.0.1:2024. Open the Studio UI at:
https://smith.langchain.com/studio/?baseUrl=http://127.0.0.1:2024
You'll see the story_graph with all nodes and conditional edges:
START → preflight → budget_check ──(ok)──→ agent_dispatch → validate ──(success)──→ commit → finalize → END
│ │
(exceeded) (escalated)
└──────────────────────────────────────┴──→ finalize → END
↑(retry)
validate ─┘ → budget_check
A free LangSmith account is required to use the Studio UI. The local API server itself runs without one.
Development
All development commands use the main .venv (Python 3.14):
# Install dev dependencies
pip install -e ".[dev]"
# Prefer explicit venv invocation to avoid interpreter mismatch:
.venv/bin/pip install -e ".[dev]"
# Run tests
.venv/bin/python -m pytest -q
# Lint
.venv/bin/ruff check .
.venv/bin/ruff format --check .
# Type check
.venv/bin/python -m mypy --strict src/
# All quality gates in one pass
.venv/bin/ruff check . && .venv/bin/ruff format --check . && .venv/bin/python -m mypy --strict src/ && .venv/bin/python -m pytest -q
Python version note
The project targets Python 3.11+ and is developed against 3.14. The .venv-studio venv (Python 3.13) is only for running langgraph dev. Do not use it for tests or type checking — results may differ.
Troubleshooting
ModuleNotFoundError: No module named 'arcwright_ai'
The venv's editable install link may be stale or was not processed correctly on Python 3.14. Re-install:
cd arcwright-ai/
.venv/bin/pip install -e .
This rewrites the .pth file. Verify with:
.venv/bin/python -c "import arcwright_ai; print(arcwright_ai.__file__)"
langgraph dev fails with Required package 'langgraph-api' is not installed
You're using the main .venv (Python 3.14). Use .venv-studio instead:
.venv-studio/bin/langgraph dev
Story dispatched but files don't match what validation expected
Check .arcwright-ai/config.yaml in the target project. The methodology.artifacts_path must point to the directory containing your BMAD planning artifacts (PRD, architecture, epics). Default is _bmad-output; adjust if your project uses _spec/planning-artifacts or another path.
Dev agent File List is consistently incomplete or doesn't match git diff output after a BMAD update
The dev-story workflow in this project includes a custom enhancement to workflow.md — the Step 9 git diff File List reconciliation audit. This customization lives in _bmad/bmm/workflows/4-implementation/dev-story/ — a directory that is gitignored and gets overwritten by BMAD framework updates. (Other features that were previously custom — review-continuation detection, [AI-Review] follow-up handling, enhanced checklist — are now stock in BMAD 6.1.)
If you have recently run a BMAD update and agent File Lists are again going unaudited, the Step 9 customization was likely overwritten. Re-apply it manually — see the BMAD Workflow Customizations section in the root README.md for details.
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