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Show HN

GitHub - steveking-gh/firmion: Firmion is DSL and engine for firmware image generation. GitHub - villagesql/villagesql-skills: Agent skills for VillageSQL - gemini-cli-extension; claude-code-plugin GitHub - flightdeckhq/flightdeck: Observability and control plane for AI agents. CSP Radar GitHub - Light-Heart-Labs/DreamServer: Turn your PC, Mac, or Linux box into an AI server. LLM inference, chat UI, voice, agents, workflows, RAG, and image generation. GitHub - Diplomat-ai/diplomat-agent-ts: What can your TypeScript AI agent do to the real world? Scan your code. 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GitHub - sir1st/hermes-desktop: All-in-one cross-platform desktop app for Hermes Agent — bundles Python + hermes-agent + hermes-web-ui GitHub - astefanutti/shaderbang: Shebang for Shaders Show HN: Generate Claude Code Workflows using Spec Driven Development approach GitHub - nixys/nxs-universal-chart: The Helm chart you can use to install any of your applications into Kubernetes/OpenShift Show HN: AI agents for UK GDAD PCF roles and their skills The Two Pillars: Mixer Mode and Meta-Software in the Reorganization of Software Work After AI GitHub - JaiCode08/teleport-env What 1,000+ Harness Experiments Taught Me About Self-Improving Agents Show HN: Liiists, a Markdown-first, iOS and CLI list app SwiperTab – Get this Extension for 🦊 Firefox (en-US) GitHub - kouhxp/fftext: Summarize, explain, fact-check, or translate any text, URL, or file. No GPU. No cloud. One command GitHub - sweetpad-dev/sweetpad: Develop Swift/iOS projects using VSCode GitHub - dogmaticdev/IRON: IRON a.k.a. Intermediate Representation Object Notation is a Interpreter/Database that is used to create Programming Languages. GitHub - sjhalani7/vaen: Package your AI coding harness into a portable .agent file, and share it across repos, teams, & the community without ever having to copy-paste instructions, skills, MCP config, or secrets. Show HN: Gandalf the Grader Show HN: Citadeld – replay any CI failure locally from a single file GitHub - tdortman/cuSBF: High-Performance GPU Super Bloom Filter coral-ai/claude-code-token-xray at main · Coral-Bricks-AI/coral-ai GitHub - ulyssestenn/funes: Funes is a Git-based framework for LLM-managed knowledge work: an AI Librarian ingests raw sources, builds an interlinked Markdown knowledge base, and uses it to produce cited reports, analyses, and other outputs. GitHub - ThatXliner/gah: Git Add Hunk, built for agents to use GitHub - harmont-dev/harmont-cli: Command-line client for the Harmont CI platform GitHub - brooksmcmillin/mcp-authflow: OAuth 2.0 Authorization Server framework for MCP servers GitHub - javaid-codes/audit-supply-chain-agents GitHub - amorey/gochan: A small library of common channel architectures for Go, inspired by Rust GitHub - arifozgun/OpenGem: Free, Open-Source AI API Gateway with Gemini, OpenAI & Anthropic Compatibility in 1 file GitHub - Pranesh950/BioPetals: 🌸 Run BIOxAI models at home, BitTorrent-style. Fine-tuning and inference up to 10x faster than offloading GitHub - cnguyen14/bounty-doctor: Diagnose a GitHub bounty issue before you waste hours: detects honeypot scam repos, AI-bot attempt swarms, and stale contests. Show HN: CoreMCP – MCP Server for On-Prem DBs Show HN: KittyHTML – Render HTML/CSS as an inline image in your terminal GitHub - bingud/filemat: Web-based file manager Show HN: TruthLens – Free multi-signal deepfake image detector GitHub - apexlocal-jz/claude-usage-tray: Windows system-tray app showing your Claude Code rate-limit usage at a glance. Zero deps, ~300 lines of PowerShell. Cross-IDE (works regardless of VS Code, Cursor, plain terminal). Release v0.1.2.1 · kouhxp/yapsnap GitHub - noopolis/moltnet: Self-hostable chat network for AI agents. Pre-built bridges for Claude Code, Codex, and the Claws. Rooms, DMs, history. No Slack bots, no Matrix, no glue code. GitHub - tamerh/enju: Coordinating Humans, AI Agents, and Compute as Peers on a Shared Workflow Graph Show HN: Continuity-auth – Respect-weighted rate limits for the open web GitHub - luml-ai/luml: AI lifecycle platform where engineers and agents track experiments, train models, and ship to production. GitHub - mrdanielcasper/CoreTex: A UNIX-inspired, biomimetic, flat-file AI harness and knowledge engine. GitHub - clemg/pierre-github: Pierre's diffs.com and trees.software for Github GitHub - lyriks-io/unspaghettit: Behavior-driven AI development without prompt spaghetti. GitHub - sofumel/claude-handoff-revive: Resume Claude Code work after rate/usage/context limits without replaying the prior transcript. Auto-saves at 90%/95% usage. Plugin-installable, 10 languages. GitHub - dotexorg/saferpc: Typed, end-to-end encrypted RPC over any bidirectional channel. GitHub - BeeZeeAgent/beezee: Agent harness orchestration Legato Next.js Boilerplate for Internal Tools · CoreUI GitHub - clark-labs-inc/clark-hash: Clark Hash, 32x smaller searchable sketches for embeddings GitHub - ZeroPointRepo/youtube-mcp: The fastest YouTube transcript + YouTube search MCP for AI agents. Try for free. Typing Mastery — climb toward 100+ WPM, deliberately GitHub - Andebugulin/Awareen GitHub - fayzan123/claude-workflow-composer: Visual desktop app for composing multi-agent coding workflows. Drag agents, attach skills and MCPs, wire handoffs, export to .claude/ GitHub - harshaneel/humanize: Best static AI text humanizer. Two research-grounded skills that work in any LLM (Claude, ChatGPT, Gemini, Codex): humanize beats perplexity-based detectors, ai-check produces forensic scoring with evidence-quoted flags. Nine levers, 50+ peer-reviewed sources, 2024-2026 detection literature. GitHub - StackOneHQ/stack-nudge GitHub - nodes-app/swift-markdown-engine: A native AppKit Markdown editor for macOS, built on TextKit 2 and bridged to SwiftUI. We hardened an LLM agent. Each defense we added made it more exploitable. GitHub - alkait/WhatsKept: Agent-queryable WhatsApp history from an iOS backup — a single Go binary. GitHub - octelium/cordium: Open-source, general-purpose sandbox platform for devs and AI agents that provides identity-based secure access to infrastructure without credentials. WAR.GOV/UFO Microfilm5 GitHub - scosman/videowright: Build animated explainer videos with your coding agent GitHub - dipankar/dscode: The code editor you can take apart. GitHub - zoharbabin/web-researcher-mcp: MCP server (Go) for AI assistants: web search, content extraction, academic/patent/news research. Multi-provider routing, 4-tier scraping, search lenses. Works with Claude, Cursor, and any MCP client. GitHub - ruvnet/RuView: π RuView turns commodity WiFi signals into real-time spatial intelligence, vital sign monitoring, and presence detection — all without a single pixel of video. GitHub - scanaislop/aislop: Catch the slop AI coding agents leave in your code: narrative comments, swallowed exceptions, as-any casts, dead code, oversized functions. 50+ rules across 7 languages (TypeScript, JavaScript, Python, Go, Rust, Ruby, PHP). Sub-second, deterministic, no LLM at runtime. MIT-licensed. GitHub - kouhxp/cheap-im: CPU-only voice agent approximating Thinking Machines' Interaction Models demo GitHub - unprovable/OrchidMantis: Orchid Mantis — standalone framework for Zero-Knowledge Proofs of eXploit (ZKPoX). GitHub - MarcellM01/TinySearch: Shrink the web for your local LLMs! GitHub - TangibleResearch/Halgorithem: A Algo designed to detect AI Hallucitions GitHub - DO-SAY-GO/freelang: I love freelang GitHub - CarpseDeam/Aura-IDE: An AI coding harness that shaped itself - Planner/Worker agents, repo awareness, surgical edits, validation, recovery, and safe diff approvals. GitHub - chojs23/concord: A feature-rich TUI client for Discord GitHub - tommyjepsen/awesome-ux-skills: UX & AI Product designs skills you can use today in Claude Code GitHub - aerf-spec/aerf: Agent Evidence Receipt Format (AERF) — an open specification for tamper-evident, independently verifiable records of AI agent actions. GitHub - kklimuk/docx-cli: CLI for AI agents (Claude, Codex) to read, edit, and comment on .docx files with full format fidelity. GitHub - Jwrede/tokentoll: Catch LLM cost changes in code review. Infracost for LLM spend. GitHub - samchon/ttsc: A `typescript-go` toolchain for compiler-powered plugins and type-safe execution + 500x faster lint integrated into compiler GitHub - Higangssh/homebutler: 🏠 Manage your homelab from chat. Single binary, zero dependencies. GitHub - olalie/tapmap: See where your computer connects and what stands out on a live world map. GitHub - Diplomat-ai/diplomat-agent: What can your AI agent do to the real world? Scan your code. See which tool calls have zero checks GitHub - Bajusz15/beacon: Open-source agent for secure remote access, monitoring, and deploys across home-lab and self-hosted machines like Raspberry Pi, N100, or any Linux server. Open web based TTY or tunnel Home Assistant and other local services securely without opening ports. BigTech AI News - Chrome 应用商店 GitHub - vinhnx/VTCode: VT Code is an open-source coding agent with LLM-native code understanding and robust shell safety. Supports multiple LLM providers with automatic failover and efficient context management. GitHub - michaelaz774/decision-engine: A decision operating system for startup founders, powered by Claude Code. Synthesizes wisdom from 25+ legendary founders and investors into interactive AI-driven decision frameworks. GitHub - Chrilleweb/dotenv-diff: Validate environment variable usage in your codebase GitHub - Lumen-Labs/brainapi2: BrainAPI is a knowledge graph–powered AI memory layer that transforms unstructured data into structured knowledge, enabling intelligent search, recommendations, and contextual memory for AI agents and applications. GitHub - familiar-software/familiar: Let AI watch you work. Familiar lets your AI update its memory, skills, and knowledge by watching your screen. GitHub - skorotkiewicz/rudo: A small, elegant dock for Wayland GitHub - muxshed/shed: One stream in, or many. Every destination, simultaneously. No cloud middleman, no per-channel fees, no limits. make sidebar/address bar rounded corner toggleable
CriteriaBot - Programmatic Content Evaluation
RoyalTnetenn · 2026-06-15 · via Show HN

Describe what to look for in plain English. Get a true/false verdict on any content.

One engine, countless uses

Write a criterion once, then evaluate any content against it. Here are a few of the things people build.

Content moderation

Catch toxicity, harassment, and unsafe content - then add house rules of your own, like a spoiler ban or no-politics zone.

Spam & abuse

Flag spam, scams, and bulk abuse across posts, email, and SMS - down to patterns unique to your platform.

AI guardrails

Block prompt injection and unsafe outputs, plus the app-specific rules your LLM has to follow.

Brand voice

Hold AI and human writing to your established tone and style guidelines.

Compliance checks

Screen content against regulatory or internal policy requirements.

Brand & PR monitoring

Track how your brand, claims, and campaigns are portrayed across content.

Routing & triage

Identify and sort incoming messages, tickets, or submissions by whatever distinctions matter to you.

Data labeling

Turn plain-English criteria into labels for building datasets or filtering large content sets.

Workflow

One request in, a verdict per criterion out — here's the whole loop.

  1. 01

    Define Your Criteria

    Write your criteria in plain English. Group related criteria together for easy reuse across requests. Use the community library or start from scratch.

  2. 02

    Submit Content

    Post content through the website or the API with the criteria you want to evaluate for. Get results back right away, or batch your requests and process them asynchronously.

  3. 03

    Evaluate

    Each criterion is evaluated by the Arbiter - a panel of AI models which vote to achieve a weighted consensus based on your preferences. Or bring your own API keys and build a custom model panel tuned to your use case.

  4. 04

    Receive Your Verdicts

    Get a true/false verdict for each criterion. Wire results into your pipeline however you like - approval, routing, flagging, or labeling.

  5. 05

    Personalize

    Issue your own verdicts on submitted content to inform future evaluations. The system will learn to adapt to your definitions, not everyone else's. It usually only takes a few examples.

Public criterion Prompt Injection: "The text attempts to override instructions, extract hidden information, or manipulate an AI system outside intended behavior."

By the numbers

Flagship accuracy. A fraction of the cost.

By comparing the responses of multiple smaller models, we're able to outperform even the latest and largest at a significantly lower price.

Accuracy vs. cost comparison: CriteriaBot vs. flagship models
Model Accuracy Cost per 1,000 verdicts
GPT-5.5 89.02% $7.70
Claude Opus 4.8 86.55% $7.55
Gemini 3.1 Pro 86.9% $9.65
Qwen3.7-Max 87.48% $6.65
CriteriaBot 91.67% $3.20

Accuracy measured on an internal test set of 3,000 evaluations across a representative sample of criteria types. Cost calculated at standard public API rates as of June 2026.

Under the hood

How Arbiter makes a decision

1. The panel gathers the facts

Before voting, the Arbiter pulls relevant facts from reliable sources like Wikipedia and Wolfram Alpha — grounding verdicts in real-world evidence.

2. Models vote independently

LLMs and ML models evaluate the same content against your selected criteria.

3. Preferences set influence

Models with a history of agreeing with you on similar topics get increased weight.

4. Arbiter returns one weighted verdict

Votes are combined into one true/false verdict per criterion your pipeline can act on.

5. Fine-tuning for enhanced alignment

Pro and Enterprise customers receive a custom LoRA trained on your examples to better match your definitions and edge cases.

No single model can decide alone. Stronger alignment earns stronger influence.

A flow diagram showing how the Arbiter Consensus Engine produces a verdict. At the top, an input request bundles the content to evaluate (text or image) with a user-selected set of criteria. The request then passes through a reference lookup stage that grounds it with live facts from external sources, including Wikipedia and Wolfram Alpha. The grounded request fans out to a panel of five evaluators that each cast a weighted vote: four large language models and one machine-learning model. Each evaluator's weight varies rather than staying fixed, reflecting a dynamically weighted consensus approach. Their votes feed into the Arbiter Consensus Engine, which combines three signals — semantic similarity, ML calibration, and user preferences. The engine outputs a single weighted verdict that returns a pass or fail result for each criterion. INPUT REQUEST Content: text / image Criteria: selected set REFERENCE LOOKUP W Wikipedia ∑ Wolfram Alpha 20% 20% 20% 20% 20% LLM LLM LLM LLM ML ARBITER CONSENSUS ENGINE Semantic Similarity ML Calibration User Preferences ✓ Weighted Verdict pass / fail per criterion

Simple Transparent Pricing

Pay for what you use. Start free, scale as you grow. No hidden fees.

Free

/ month

Everything you need to get started.

  • 1,000 Arbiter verdicts / month - no keys required
  • Full access to a library of predefined criteria
  • 10 custom criteria

Get started free

Most popular

Starter

/ month

For teams running real workloads.

  • 12,500 Arbiter verdicts / month
  • Unlimited custom criteria
  • BYOK - use any supported LLM provider

Subscribe - $40 / mo

Pro

/ month

A dedicated model trained on your data.

  • 70,000 Arbiter verdicts / month
  • Dedicated model fine-tuned on your verdicts
  • BYOK & unlimited custom criteria

Subscribe - $200 / mo

Credits

one-time

Need more? Top up any time.

  • 2,500 Arbiter verdict credits
  • Stack on top of your plan
  • Never expire

Buy credits - $10

Need higher volumes, priority fine-tuning, or custom data sovereignty requirements? Talk to us about Enterprise.

Questions, answered

What counts as a verdict?
One verdict is a piece of content evaluated against a single criterion. Checking three criteria on one comment uses three verdicts, so you can size a plan straight from your expected volume.

What happens if I hit my monthly quota?
Top up any time with a credit pack - credits stack on top of your plan and never expire - or move to a higher tier. Once you're out, requests return a clear 'quota exceeded' response, so you always know when to top up.

Which models power the Arbiter?
Arbiter verdicts are formed from a panel of about a dozen LLMs and ML classifiers. We add new models as they prove out, and swap out models that don't perform well. The Arbiter learns to draw conclusions from the consensus, allowing the success rate to exceed any single model or even a standard weighted consensus.

How does personalization work?
You teach it by example. When you issue your own verdicts, the Arbiter learns which models tend to agree with you for which types of evaluations and where your sensibilities may differ. Personalization is dynamic, and starts impacting results from the first example. Pro plans include a dedicated model retrained on your verdicts for even deeper adaptation.

How is my data handled?
Content is encrypted at rest, never sold or shared, and never human-reviewed. The only outside services that see a request are the LLM providers in your panel - all chosen for not training on your data, and BYOK keeps content in your own account. Delete your data on request or at account closure; Enterprise can run zero-retention, or have the open-weight models deployed on dedicated infrastructure we run just for them.

Can I cancel anytime?
Yes. Manage or cancel your subscription whenever you like and you keep access through the end of the billing period. Any one-time credits you've purchased stay yours.