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PurrrrrFocus: Pomodoro Timer App - App Store Workflow Engine — Multi-Step Orchestration for Bun RapidPhoto: Pro Photo Editor App - App Store GitHub - DheerG/swarms: Achieve extraordinary results with claude code across a variety of tasks SPICE simulation → oscilloscope → verification with Claude Code — Lucas Gerads Show HN: VCoding – A 5 MB native Windows IDE with no dynamic dependencies Show HN: LLMs don't hallucinate because they're bad at math, it's the format GitHub - Agent-FM/agentfm-core: AgentFM is a peer-to-peer network that turns everyday computers into a decentralized AI supercomputer. AgentFM lets you run massive AI workloads directly across a global mesh of idle CPUs and GPUs. Show HN: Tracking Top US Science Olympiad Alumni over Last 25 Years GitHub - Potarix/agent-hub: One place to talk to all your agents Show HN: Runtime security for AI agents(injection,tool abuse, data exfiltration) GitHub - dubeyKartikay/lazyspotify: Terminal Spotify client for macOS and Linux GitHub - the-banana-tool/king-louie: Easy to use GUI Personal AI Assistant. Win/Linux/Mac. Show HN I made my vacation rental bookable by AI agents–no Airbnb, 0% commission GitHub - basteez/jsf-autoreload: maven plugin to enable hot reload on jsf projects uvm32/hosts/host-gdbstub at main · ringtailsoftware/uvm32 GitHub - labsai/EDDI: Config-driven engine that turns JSON into production-grade AI agents. Multi-agent orchestration, 12+ LLM providers, MCP/A2A protocols, RAG, persistent memory, and enterprise compliance (EU AI Act, GDPR, HIPAA). Built on Quarkus. GitHub - glitchnsec/fortyone-oss: AI Executive Assistant Platform Quickstart | Alien GitHub - muxshed/shed: One stream in, or many. Every destination, simultaneously. No cloud middleman, no per-channel fees, no limits. GitHub - ocrbase-hq/ocrbase: 📄 PDF/IMG ->.MD/JSON Document OCR API for PaddleOCR and GLMOCR. Self-hostable. GitHub - impactjo/home-memory: MCP server that lets your AI assistant remember everything about your home. GitHub - Sets88/dbcls: DbCls is a powerful terminal database client that supports various databases GitHub - neptun2000/heor-agent-mcp GitHub - SeanFDZ/macmind: Single-layer transformer in HyperTalk for the classic Macintosh RollQuation: Math Puzzles - Apps on Google Play GitHub - dropbox/witchcraft Show HN: Agent-cache – Multi-tier LLM/tool/session caching for Valkey and Redis GitHub - opentalon/opentalon: OpenTalon is an open-source platform built from the ground up in Go as a robust alternative to OpenClaw LinkedIn™ 职位抓取工具 - Chrome 应用商店 GitHub - EdoardoBambini/Agent-Armor-Iaga: AI agents are getting tool access — shell, file system, databases, APIs, secrets. But **nobody is governing what they actually do with it**. Frameworks like LangChain, CrewAI, AutoGen, and Claude Code give agents the power to execute. Agent Armor gives you the power to control, audit, and approve every single action before it happens. HN Vibes — Week 15, Apr 7–13 2026 GitHub - chojs23/ec: Easy terminal-native 3-way git mergetool vim-like workflow GitHub - SethPyle376/hiraeth: Local AWS emulator focused on fast integration testing, with SQS support, SQLite-backed state, and a debug-friendly web UI. GitHub - JakOb-dotcom/cloud-sandbox-security-analysis: Technical analysis and Proof of Concept (PoC) regarding environment variable exfiltration in containerized cloud sandboxes via side-channel data leaks. Springboards - Flint Alpha Show HN: A simpler coding agent harness GitHub - audiodude/sudomake-friends GitHub - 256thFission/mini-mythos: OSS clone of Anthropic’s Mythos harness to locate C/C++ memory vulnerabilities Show HN: OpenParallax: OS-level privilege separation for AI agent execution Hacker News Sorted - Chrome 应用商店 Show HN: How to Install Docker on Ubuntu 24.04 LTS: Complete 2026 Guide GitHub - himanshudongre/smriti GitHub - sverrirsig/claude-control: macOS desktop dashboard for monitoring and managing multiple Claude Code sessions GitHub - ory/dockertest: Write better integration tests! Dockertest helps you boot up ephermal docker images for your Go tests with minimal work. Chiral - Chrome 应用商店 Show HN: Two Claudes collaborating through shared memory on a $100 mini-PC GitHub - pmichaillat/latex-cv: Minimalist LaTeX template for academic CVs GitHub - oguzbilgic/posse: A web UI for Anthropic Managed Agents. GitHub - sshiraz/depsly: Dependency risk analysis tool for npm packages ABI Add safari/agent-harness — Safari browser automation via safari-mcp by achiya-automation · Pull Request #212 · HKUDS/CLI-Anything GitHub - Halfblood-Prince/trustcheck: Verify PyPI package attestations and improve Python supply-chain security GitHub - oguzbilgic/kern-ai: Agents that do the work and show it. GitHub - bruits/satteri: High-performance Markdown and MDX processing for the JavaScript ecosystem GitHub - tylergibbs1/feedstock: High-performance web crawler and scraper for TypeScript, powered by Bun and Playwright GitHub - Grimm67123/grimmbot: The self-improving sandboxed and open-source AI agent. With persistent memory and scheduling. GitHub - whitevanillaskies/whitebloom: Local whiteboard that blooms. GitHub - hwdsl2/docker-whisper: Docker image for a self-hosted Whisper speech-to-text server with speaker diarization and OpenAI-compatible transcription and translation APIs. Powered by faster-whisper. Supports all Whisper models, NVIDIA GPU (CUDA) acceleration, JSON/SRT/VTT output, SSE streaming, offline mode, and multi-arch (amd64, arm64). GitHub - yisding/reviewwiggum GitHub - MarwanAlsoltany/serrors: Structured errors for Go: sentinel hierarchies, typed data, custom formatting, and slog integration. GitHub - soatok/age-php GitHub - Luthiraa/markitme GitHub - stagas/rtdiff: realtime git diff gui and AI-assisted commits GitHub - tombedor/excalicharts GitHub - wh1le/excalidraw-edit: Open and edit .excalidraw files from the terminal. Offline, auto-saves to disk. MalExt Sentry - Malicious Extension Scanner - Chrome 应用商店 GitHub - syi0808/asciianimesvg: Generate animated ASCII art SVGs from text. CLI, Rust library, WASM, and web editor. GitHub - zaina-ml/ml_forge: A visual-based graph node editor for training computer vision models. GitHub - anakin87/llm-rl-environments-lil-course: 🌱 A little course on Reinforcement Learning Environments for evaluating and training Language Models GitHub - takaakit/superpowers-uml: Superpowers-UML modifies Superpowers to ensure a software development workflow in which AI agents design through UML modeling. AdriByte Studio - Sviluppo Web e Soluzioni Digitali GitHub - chouligi/angel-copilot: Your personalized Angel Investment Advisor Show HN: MoodSense AI (ML and FastAPI and Gradio, Deployed on Hugging Face) Moodsense Ai - a Hugging Face Space by aman179102 GitHub - agenteractai/lodmem: Level Of Detail Context Management for Agents GitHub - ostefani/subnetlens: A fast, concurrent network scanner with a TUI and plain-text CLI, built in Go. It discovers live hosts on your network, scans their open ports, resolves hostnames, and fingerprints operating systems—delivered. Cyber Pulse: Agentic Intel - Apps on Google Play Whisper API: Self-Hostable Speech to Text Transcription The Agent-Web Protocol Stack: A Research Thesis GitHub - msmarkgu/RelayFreeLLM: A restful API designed to route user prompts to various AI model providers. Show HN: Provepy – A Python decorator that proves your code using Lean and LLMs Show HN: Pardonned.com – A searchable database of US Pardons GitHub - patrickdappollonio/dux: Dux is a terminal UI that lets you run multiple AI coding agents side by side, each in its own git worktree, with full companion terminals, macros, commit generation, and a command palette that knows more tricks than you do. kMC Crystal Simulator Show HN: HyperFlow – A self-improving agent framework built on LangGraph GitHub - stef41/vibescore: 🎵 Grade your vibe-coded project. One command, instant letter grade across security, quality, dependencies, and testing. GitHub - stef41/lmscan: 🔍 Detect AI-generated text and fingerprint which LLM wrote it. Open-source GPTZero alternative. Zero dependencies, works offline. imgur.com GitHub - visionscaper/collabmem: Enabling long-term collaboration with Agentic AI - building up episodic and world model memory over time with in-context awareness 在 Steam 上购买 FriedrichAI: Offline AI 立省 10% GitHub - atripati/ark: AI Runtime Kernel — a context operating system for AI agents. Eliminates tool bloat, loads only what’s needed, and gives LLMs their reasoning space back. GitHub - nowork-studio/toprank: Open-source Claude Code skills for SEO, SEM, Google Ads GitHub - tacomanator/sash: Lightweight macOS menu bar app for reliably cycling through windows of the current application. Appents | Social Media Management for Product-First Teams GitHub - pnhoang/youtube-spam-blocker: Automatically detects and hides spam messages in YouTube Live chat. Set rate limits, keyword filters, and block repeat offenders. GitHub - decisionnode/DecisionNode: CLI + Local MCP - A shared structured memory store across Claude Code, Cursor, Windsurf, Antigravity, and every MCP client. Semantically queryable. GitHub - AvaCodeSolutions/django-email-learning: An open source Django app for creating email-based learning platforms with IMAP integration and React frontend components. The $100K Gap in Kubernetes Security Tooling Function Calling Harness: From 6.75% to 100%
Build A Harness — Visual Canvas for AI Agent Harnesses
3IVIS · 2026-06-24 · via Hacker News: Show HN

OPEN SOURCE · VISUAL CANVAS · APACHE 2.0

Design, test, and deploy
AI agent harnesses.

Pick the nodes your agent needs. Draw the graph. Run on any framework.

A workflow routes prompts. A harness governs what your agent believes, what it's allowed to do, and how it recovers. Build one on a canvas, compile to any framework, trace every decision with Langfuse, and deploy as a REST endpoint, MCP tool, or A2A agent.

LangGraph CrewAI Mastra MS Agent Framework

Diagram: a simple agent loop (input → LLM call → tool call → output) compared with a full Build A Harness — an 11-layer architecture across 22 nodes that adds caller state, a world model, reasoning, a 5-tier control layer, planning, execution, 9-layer verification, recovery, memory, optional learning, and an output reviewer pass.

Simple Agent Loop

Input / Caller

LLM Call

Tool Call↺ loop

Output

prompt in → answer out
no world model · no control state · no verification

Full Harness — Implemented

Caller Stateconstraints · clarification · propagation

World Modelbeliefs · contradictions · generation_id

Reasoningevidence · hypotheses (4 sources) · VOI

Control5-tier resolver · deadlock detectkey

Planningtask graph (6-state) · parallel concurrency

ExecutionVOI · review gate

Verification9 layers

Recovery6 strategies

Memorycompression · journal

Learningexperience store · warm start (optional)

Output & Reviewer Passcontract · 3-lens review

22 nodes · 11 layers · world model + 5-tier control · 9-layer verification

WHY A HARNESS, NOT JUST A WORKFLOW

A harness does what a workflow can't.

A workflow routes prompts from node to node. A harness governs what the AI believes, what it's allowed to do, how it catches its own mistakes, and what it learns for next time. Use three nodes or eleven — the same FlowSpec runs either.

Reasoning, not just prompting

Add a world_model node and your agent tracks typed beliefs, detects contradictions, and evaluates hypotheses from four generation sources before acting — instead of just asking the LLM and hoping.

Control that holds

Drop in a control_state node and your agent gains a five-tier resolver that governs every action — NORMAL → CAUTIOUS → BLOCKED. Diagnostic health vectors drive it; deadlock detection stops it escalating forever.

Verification with teeth

A verify_gate runs nine checks before every action. Pair it with reviewer_pass for adversarial review and contract validation before every return. Trust, but verify — and actually enforce it.

Recovery and learning

Add recovery for six named strategies, typed failure detection, and local vs global replanning. Attach exp_store and your agent reuses successful decompositions across future runs.

27 node types · 14 execution + 13 harness · 4 framework adapters · Langfuse observability

HARNESS NODE LIBRARY

Every layer you need. Use one or all.

27 node types — 14 execution, 13 harness. Use what your agent needs: a minimal harness might be three nodes, the full stack runs to eleven layers. Both are valid FlowSpec.

Diagram: the same node types compose into different harness graphs — a minimal harness (input → llm_call → verify_gate → recovery → output) and a full 11-layer harness — both valid FlowSpec that compile to LangGraph, CrewAI, Mastra, or Microsoft Agent Framework.

Same bricks. Different graphs. · Compose exactly the harness your agent needs — minimal or full.

Minimal · just verification + recovery

input

llm_call

verify_gate9 layers

recovery6 strategies

output

Full Harness · all 11 layers

caller_stateconstraints · escalation

world_modelbeliefs · contradictions

reasoninghypotheses · VOI

control_state5-tier resolver

task_graph6-state planning

learningoptional

reviewer_pass3-lens · adversarial

outputcontract validated

verify_gate and recovery appear in both graphs — same brick, any config · draw on the canvas · FlowSpec compiles to LangGraph, CrewAI, Mastra, or MAF

Execution layer · 14 node types

Mix and match — any subset of nodes is valid FlowSpec

4 framework adapters — same spec, any runtime

Langfuse observability — harness traces, all 4 runtimes

HITL pause/resume · REST/MCP/A2A deploy

FlowSpec v0.2.0 — open, portable JSON format

Process concepts — pre-seeded task graph scaffolds

Harness layer · 13 node types

World model · typed beliefs · contradiction detection

5-tier control state resolver · deadlock detection

Pre-execution review gate · 9-layer verification

6 named recovery strategies · typed failure library

Experience store — cross-run structural reuse

Adversarial reviewer pass · output contract validation

22 nodes · 11 layers · 379 tests passing

Foundation State Architecture

Evidence & Reasoning

World Model & Contradiction

Diagnostics & Control State

Planning & Task Graph

Execution & Verification

Recovery & Memory

Caller State & Escalation

Experience Store

Reviewer Pass & Output Contract

Canvas Integration

E2E Integration & Testing

Start with state and reasoning

world_model, hypothesis_set, evidence_store, control_state, and a six-state task_graph — the infrastructure for an agent that thinks before it acts.

Add verification and recovery

verify_gate with nine layers, pre-execution review gate, six named recovery strategies via recovery, context compression, exp_store for cross-run reuse, and adversarial reviewer_pass.

Draw, compile, and deploy

Thirteen harness node types on the canvas, Langfuse tracing with harness-specific spans, framework adapters for all four runtimes, and end-to-end tests across every combination.

GET STARTED

Up and running in two commands.

Build A Harness runs entirely on your machine via Docker. No cloud account, no sign-up — clone the repo, run two commands, and you're drawing harnesses in minutes.

terminal

# 1. Generate secrets and configure your environment
./scripts/setup-env.sh

# 2. Start all services
docker compose up

What starts up

Canvas — localhost:3000

The visual harness editor. Design with 27 node types — 14 execution nodes and 13 harness nodes including world model, control state, verify gate, and recovery.

API — localhost:8000

Compiles FlowSpec to LangGraph, CrewAI, Mastra, or Microsoft Agent Framework and runs your harnesses. Publishes each harness simultaneously as a REST endpoint, MCP tool, and A2A agent.

Langfuse — localhost:3001

Harness-aware observability dashboard. Every run traced automatically across all 4 frameworks — including world model transitions, control state changes, and recovery strategy activations.

Nine services in total. scripts/setup-env.sh handles all the secrets and configuration automatically — you only need to provide your LLM API key (or skip it and use a free local model instead).

AI MODELS

Use OpenAI, Claude, or run completely free locally.

Build A Harness routes all AI calls through LiteLLM — a proxy that works with any model provider. You pick the model in your workflow; the rest is handled automatically.

OpenAI

Add your OPENAI_API_KEY and use gpt-4o or gpt-4o-mini in any flow.

Anthropic

Add your ANTHROPIC_API_KEY and use claude-sonnet, claude-haiku, or claude-opus.

Ollama — free & local

Run mistral, qwen3, or qwen2.5-coder locally. No API key, no cost, no data leaving your machine.

Any custom model

Edit one config file to add any OpenAI-compatible model or endpoint — including self-hosted or fine-tuned models.

Want to try it without an API key? Install Ollama, pull a model (ollama pull mistral), and run ./scripts/setup-ollama.sh — it tests all four frameworks end-to-end with no paid account needed.

HOW IT WORKS

Draw your harness once. Run it on any engine.

Build A Harness stores every harness in FlowSpec — an open JSON format you own. Draw on the canvas and the spec is written for you. The same file compiles to LangGraph, CrewAI, Mastra, or MAF. Add harness nodes like verify_gate, world_model, or recovery and they compile too — no rewriting, no lock-in.

support-triage.flow.json

{
  "workflow": "support-triage",

  "nodes": [
    {
      "type": "llm_call",
      "prompt": "Classify severity"
    },
    {
      "type": "condition",
      "route": "high_priority"
    },
    {
      "type": "human_review"
    }
  ],

  "telemetry": {
    "provider": "langfuse"
  }
}

What you can build

Composable harness graphs

A minimal harness is just input → llm_call → output. Add verify_gate and recovery when you want them. Every combination is valid FlowSpec.

Safe by construction

Guardrails, retry logic, and HITL approval checkpoints are first-class node types — not wrappers you bolt on afterwards.

Shareable and portable

Your harness is a JSON file. Check it in, share it, load it on any canvas, or import into your CI pipeline.

Observable by default

Langfuse traces every step across all four frameworks — prompts, tool calls, harness transitions, failures, and costs — without any setup.

node taxonomy · execution layer14 types

agents

agent_roleagent_debate

flow control

conditionparallel_forkparallel_join

memory

memory_readmemory_write

composition

subgraphtransform

Harness node palette — 13 node types

world_model hypothesis_set control_state task_graph verify_gate recovery evidence_store exp_store reviewer_pass gather_evidence apply_tool_rel update_wm process_concept

SUPPORTED FRAMEWORKS

Use the AI framework your team already knows.

Every other visual canvas is tied to one runtime. Build A Harness separates harness design from execution via FlowSpec — so you can experiment, migrate, or compare runtimes without rebuilding your architecture each time.

LangGraph

Python · JS · MIT

The production standard for stateful agent orchestration. LangGraph's graph model maps cleanly to FlowSpec — conditional edges compile without rewriting, and harness nodes like world_model, control_state, and verify_gate slot in as standard graph nodes with no translation layer.

  • Checkpoint to Postgres or Redis — resume from any node after failure
  • Full token and graph-update streaming
  • Best fit: RAG agents, complex multi-step stateful flows

CrewAI

Python · MIT

The largest community for role-based multi-agent patterns. agent_role nodes map directly to CrewAI Crew, Agent, and Task — your canvas design becomes a crew without translation. parallel_fork for fan-out, memory_read for vector retrieval, and native vector store support included.

  • Role-based agents compile natively — no wrapping needed
  • Full memory (vector) support with top-k and threshold
  • Best fit: specialist agent teams, research crews, parallel review

Mastra

TypeScript · Apache 2.0

The only TypeScript-native orchestrator with first-class harness support. Full HITL pause and resume, full streaming (tokens and graph updates), and native vector memory — all from the same FlowSpec that also runs on LangGraph or CrewAI if you switch later.

  • Full HITL — pause, inspect state, resume from the canvas
  • Full streaming and native vector memory
  • Best fit: TypeScript / Node.js teams, JS-native stacks

Microsoft Agent Framework

C# · Python · Java · MIT

The merger of Semantic Kernel and AutoGen in one SDK, covering enterprise .NET, Python, and Java teams in a single adapter. agent_role and agent_debate map natively to AgentGroupChat; HITL runs via the _HitlPause exception pattern; durable state checkpoints via Dapr or Orleans.

  • AgentGroupChat native — debate and role patterns compile directly
  • Durable execution via Dapr or Orleans
  • Best fit: enterprise .NET, Java, or Python teams
Feature LangGraph CrewAI Mastra MS Agent Framework

llm_call · structured output

Prompt templates, model overrides, validators.

fullfullfullfull

agent_role · agent_debate

Named personas, multi-agent loops. MAF maps natively to AgentGroupChat.

via synthesisrole nativevia synthesisAgentGroupChat native

condition · parallel_fork / join

Branching, fan-out, configurable join reducers.

fullfullfullfull

hitl_breakpoint

Pause, inspect, edit state, resume.

fullpartialfull_HitlPause exception

memory · semantic (vector)

Embeddings, top-k, similarity threshold.

via pluginfullfullfull

streaming · tokens / updates

Token streaming and graph-update events.

fullpartialfullvia adapter

checkpoint · Postgres / Redis

Durable execution, resume from any node.

fullvia pluginfullvia Dapr / Orleans

EXAMPLE HARNESSES

Five ready-made harnesses to fork and build on.

The repo ships with five real, working harnesses. Each demonstrates a different composition of node types — open them in the canvas, run them, and modify them for your use case.

Flow Best framework What it shows

RAG Agent

Search a knowledge base, retrieve the most relevant chunks, and generate a grounded answer.

LangGraph Memory read, semantic search, caching

Content Moderation + Human Review

Classify content, auto-approve low-risk items, and pause for a human to review anything flagged as high risk.

Mastra Human-in-the-loop, structured output

Parallel Risk Assessment

Three specialist AI agents review a document simultaneously, then their findings are merged into one report.

CrewAI Parallel agents, fan-out/merge

Research Crew

A team of AI agents collaborate on a research task, with human approval required before any external tool is used.

CrewAI Multi-agent, tool approval

Debate Agent

Multiple AI agents argue different sides of a question until they reach a conclusion — then the flow is also exposed as an A2A agent other systems can call.

MS Agent Framework Multi-agent debate, A2A protocol

LANGFUSE OBSERVABILITY

Know exactly what your AI did — and why it did it.

Langfuse is the open-source observability platform built into Build A Harness. Every run is traced automatically across all four runtimes — no configuration required. One dashboard covers every prompt, tool call, decision, failure, and recovery action.

Build A Harness extends Langfuse with harness-specific spans that no standard tracing library produces:

Standard — every AI framework

llm_call prompt, model, tokens, latency, cost

tool_invoke name, inputs, outputs, duration

error failure type, node, stack, retry count

hitl pause time, who resumed, state diff

memory retrieval query, top-k results, scores

Harness-specific — Build A Harness only

world_model belief delta, generation_id, contradictions

control_state tier transition · NORMAL → CAUTIOUS → BLOCKED

verify_gate which of 9 layers fired, verdict, score

recovery strategy selected, failure type, replanning scope

reviewer_pass 3-lens score, contract verdict, findings

Run the same FlowSpec on LangGraph and Mastra and compare traces side by side. Langfuse runs locally at localhost:3001 — no data leaves your machine.

DEPLOY & INTEGRATE

One click to publish your harness as an API, a Claude tool, or an agent.

One API call publishes your harness three ways at once — a REST endpoint, an MCP tool, and an A2A agent — so whatever system needs it can call it the way that makes sense.

REST endpoint

Any app can trigger your flow with a standard HTTP POST. No special SDK needed — a curl command or a fetch call is all it takes to run the full harness.

MCP tool

The Model Context Protocol (MCP) lets AI assistants call external tools during inference. Publishing as an MCP server means Claude Desktop, Cursor, and any MCP client can invoke the full harness — including its 11-layer control architecture — directly from a prompt, with no extra code.

A2A agent

The Agent-to-Agent (A2A) protocol is an open standard for AI agent interoperability. Publishing as an A2A agent means other agents — built on Google ADK, OpenAI Agents SDK, Claude Agent SDK, or any A2A runtime — can discover your harness via its Agent Card and delegate tasks to it without a custom adapter.

Embeddable canvas

Drop the visual editor into your own app with the @buildaharness/canvas npm package.

MCP · Model Context Protocol

MCP is Anthropic's open standard that lets AI assistants call tools and read context during inference. When Build A Harness publishes a harness as an MCP server, each harness is exposed as a callable tool with a typed input and output schema. Any MCP client — Claude Desktop, Cursor, the Claude Agent SDK — can discover and invoke it with no additional setup.

What this means in practice: a user in Claude Desktop types "summarise this contract and flag unusual clauses" and Claude automatically calls your content-moderation harness — complete with HITL controls, verify_gate, and Langfuse tracing — as if it were a local tool.

A2A · Agent-to-Agent Protocol

A2A is Google's open protocol for AI agent interoperability. An A2A agent publishes an Agent Card — a machine-readable description of its capabilities, inputs, and outputs. Other agents, regardless of their framework, can discover the card and invoke the agent over a standard HTTP interface without needing to know its internal architecture.

What this means in practice: a research agent built on Google ADK can delegate a "parallel risk assessment" subtask to your Build A Harness flow and receive a structured result — with neither agent needing a custom adapter. Compatible with Google ADK, OpenAI Agents SDK, Claude Agent SDK, and any A2A runtime.

PUBLIC ALPHA · v0.8.0

Build A Harness is in public alpha.
Build with it.

The canvas, framework adapters, observability layer, and the full harness node library are working and ready to use. Your real harnesses, bug reports, and contributions shape what gets fixed and what gets prioritised next.

Public alpha — current and planned work is in the open

The canvas-and-adapters layer is stable but alpha — APIs may shift, Docker Compose behaviour may vary, and edge cases in less-common node combinations aren't fully covered yet. The full harness reasoning and control architecture is implemented and tested. Run it, break it, and tell us what you need. Every report shapes what gets prioritised.

track A · run & report

Run it against real flows

One docker compose up starts all nine services. Point it at a real flow — your actual use case, not a toy example. When something breaks, crashes silently, or produces wrong output, open a bug report with your FlowSpec JSON, the runtime you used, and the full error. The more specific, the faster it gets fixed.

Report a bug →

track B · shape the roadmap

Tell us what you need

Missing a node type? A harness feature that would change how you build? A runtime behaviour that doesn't map cleanly? Open a feature request. Describe what you're building and where Build A Harness falls short — concrete use cases carry far more weight than abstract asks. Phase priority is influenced by community demand.

Request a feature →

track C · build with it

Build a node pack or contribute a phase

FlowSpec v0.2.0 is stable for third-party node packs (@buildaharness/nodes/…). The full harness implementation is public and open for community contribution. The spec, adapter interface, and canvas package are all stable enough to build on today.

FAQ

Questions, answered.

What is Build A Harness?

Build A Harness is an open-source (Apache 2.0) visual canvas for designing, testing, and deploying production AI agent harnesses. Draw the full architecture using 27 node types — 14 execution nodes plus 13 harness nodes that implement the complete 11-layer control architecture: world model, 5-tier control state, 9-layer verification, 6 recovery strategies, and cross-run learning. A single FlowSpec export compiles the same design to LangGraph, CrewAI, Mastra, or Microsoft Agent Framework without rewriting. Every run is traced automatically via Langfuse, HITL controls let humans pause and resume any flow, and one API call publishes the harness simultaneously as a REST endpoint, an MCP tool, and an A2A agent. Everything runs locally via Docker — no cloud account required.

What's the difference between a harness and a workflow?

A workflow routes prompts from node to node. A harness governs what the agent believes, what it's allowed to do, how it catches its own mistakes, and what it learns for next time. The 5-tier control state knows when to slow down or stop; nine verification layers check outputs before they land; recovery strategies handle failures systematically instead of crashing.

What is FlowSpec?

FlowSpec is Build A Harness's open, runtime-neutral JSON format for describing AI agent workflows. It is the intermediate representation that sits between the visual canvas and any execution runtime. A single FlowSpec file compiles to LangGraph, CrewAI, Mastra, or Microsoft Agent Framework without rewriting. FlowSpec v0.2.0 is stable and open for third-party node packs (@buildaharness/nodes/…).

Why a runtime-neutral FlowSpec?

It decouples the canvas from any single runtime. Adding a new runtime is one adapter file, and canvas features — HITL, observability, versioning — stay independent of your runtime choice. One flow runs across all four supported runtimes without rewriting.

Why these four frameworks?

LangGraph is the production standard for stateful agents. CrewAI has the largest audience for multi-agent team patterns. Mastra is the only TypeScript-native orchestrator with first-class support. Microsoft Agent Framework merged Semantic Kernel and AutoGen, covering enterprise .NET and Python users.

Is it open source?

Yes — Apache 2.0. The canvas, adapters, FlowSpec, and the full harness implementation are all open.

Does it require a cloud account?

No. Everything runs locally via Docker — ./scripts/setup-env.sh && docker compose up. You only need an LLM API key, or skip it and run a free local model with Ollama.