惯性聚合 高效追踪和阅读你感兴趣的博客、新闻、科技资讯
阅读原文 在惯性聚合中打开

推荐订阅源

Cloudbric
Cloudbric
Schneier on Security
Schneier on Security
V2EX - 技术
V2EX - 技术
cs.CV updates on arXiv.org
cs.CV updates on arXiv.org
O
OpenAI News
S
Security @ Cisco Blogs
Scott Helme
Scott Helme
Security Archives - TechRepublic
Security Archives - TechRepublic
Threat Intelligence Blog | Flashpoint
Threat Intelligence Blog | Flashpoint
cs.CL updates on arXiv.org
cs.CL updates on arXiv.org
WordPress大学
WordPress大学
云风的 BLOG
云风的 BLOG
T
Threatpost
Hacker News: Ask HN
Hacker News: Ask HN
Microsoft Azure Blog
Microsoft Azure Blog
Know Your Adversary
Know Your Adversary
博客园 - 三生石上(FineUI控件)
A
About on SuperTechFans
Forbes - Security
Forbes - Security
NISL@THU
NISL@THU
Security Latest
Security Latest
G
Google Developers Blog
D
Docker
T
Threat Research - Cisco Blogs
N
Netflix TechBlog - Medium
C
CERT Recently Published Vulnerability Notes
H
Help Net Security
B
Blog
Martin Fowler
Martin Fowler
N
News and Events Feed by Topic
Simon Willison's Weblog
Simon Willison's Weblog
Hacker News - Newest:
Hacker News - Newest: "LLM"
L
Lohrmann on Cybersecurity
Y
Y Combinator Blog
PCI Perspectives
PCI Perspectives
F
Fortinet All Blogs
MyScale Blog
MyScale Blog
Project Zero
Project Zero
爱范儿
爱范儿
Cisco Talos Blog
Cisco Talos Blog
博客园 - 聂微东
Hugging Face - Blog
Hugging Face - Blog
人人都是产品经理
人人都是产品经理
V
Vulnerabilities – Threatpost
P
Proofpoint News Feed
Cyberwarzone
Cyberwarzone
cs.AI updates on arXiv.org
cs.AI updates on arXiv.org
TaoSecurity Blog
TaoSecurity Blog
N
News | PayPal Newsroom
Recorded Future
Recorded Future

Hacker News: Show HN

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%
GitHub - aws-samples/sample-GEDD: Find what your AI agent gets wrong — before you have a rubric. Qualitative eval for PMs.
balasvce1985 · 2026-06-01 · via Hacker News: Show HN

GEDD - A Systematic Evidence Driven LLM As a Judge Framework

CI Python 3.11+ License: MIT-0 GitHub stars

GEDD is a Systematic Evidence Driven LLM As a Judge Framework for AI agents.

It is an annotation-first workflow for turning domain-owner review of AI agent behavior into release gates engineering can run.

The web app gives product managers, domain experts, and ML engineers one shared path:

  1. Define the agent and the work it is supposed to do.
  2. Collect or load representative queries and responses.
  3. Review the responses in a task-shaped workbench.
  4. Name failures in the domain owner's vocabulary.
  5. Convert the observed failures into an LLM-as-a-judge prompt.
  6. Export a validated handoff for CI, MLflow, and model regression work.

The current first-run experience ships with two 50-query PM workbench demos: an AAA game localization session and an AWS cloud GDPR auditor session. They show how a domain owner can move from raw agent traces to open codes, root-cause patterns, saturation evidence, a judge prompt, and an ML engineer implementation queue.

GEDD PM annotation walkthrough

The longer methodology essay is in METHODOLOGY.md. This README is the practical product and engineering guide.

What GEDD Produces

Output Who creates it Who uses it Why it matters
Golden queries PM or domain expert ML engineer, eval owner Defines the user situations the agent must handle
Human labels PM or domain expert Judge builder, release owner Separates acceptable, partial, and failing behavior
Failure codebook PM or domain expert ML engineer, prompt owner Names the exact domain-specific failure modes to fix
Memos and severity PM or domain expert ML engineer, reviewer Explains why the failure matters and how bad it is
Axial coding PM or domain expert Product and engineering leads Groups repeated failures into root causes and consequences
Judge prompt PM plus ML engineer CI and model evaluation Converts observed failures into automated review criteria
session.json handoff App or CLI ML engineer Carries agent spec, prompt, queries, labels, and validation state
MLflow artifacts ML engineer Release pipeline Tracks datasets, judges, evaluation runs, and regression gates

GEDD is not a generic model leaderboard. It is a way to preserve expert judgment and make it executable.

Quick Start

Start the web app:

cd grounded-evals
python -m venv .venv
source .venv/bin/activate
pip install -e ".[dev]"
grounded-evals serve --host 127.0.0.1 --port 8080

Open http://127.0.0.1:8080.

No Codex skill or plugin is required.

Local runs start in guest mode unless ADMIN_PASSWORD or Cognito environment variables are configured. If port 8080 is busy, use --port 8081.

For the fastest product tour, use one of the seeded 50-query demos. They do not require model calls:

  1. Open Home or Demos.
  2. Click Load 50-query localization demo or Load 50-query AWS Cloud GDPR demo.
  3. Open PM Workbench to review the labeled traces, failure codes, memos, and saturation state.
  4. Open Judge to inspect or revise the generated judge prompt.
  5. Open Report to review release readiness and download the ML engineer handoff.

To reset after loading a demo, use the top-right refresh action. Confirm Start Fresh to clear the loaded project data while keeping the current login session.

Current Web App

grounded-evals serve runs a NiceGUI app with a short primary navigation:

Page Purpose Main actions
Home Entry point Load the 50-query localization or AWS Cloud GDPR demo, continue active work, or start a custom agent
AI PM Coach Guided setup Capture agent definition, system prompt, runtime choice, and golden-query plan
PM Workbench Annotation surface Review responses, assign verdicts, create failure codes, set severity, write memos, and monitor saturation
Judge Release gate builder Generate and edit an LLM-as-a-judge prompt from the observed failure modes
Report Engineering handoff Review quality signals, CI gates, artifact readiness, implementation queue, and export files

The Demos page remains available for starter data. It is not the main workflow. Demos are seed sessions that help teams understand the annotation loop before they bring their own traces.

The 50-Query Localization Demo

The main demo is a synthetic but complete localization QA session for an AAA game agent called LocaleGate.

It includes:

Asset Contents
50 golden queries Runtime strings, storefront copy, subtitles, RTL input prompts, region rules, culturalization, paid-currency copy, live-event dates, and glossary consistency
Synthetic responses Baseline agent answers with realistic localization failures
PM annotations Correct, partial, and incorrect verdicts with severity and confidence
Open codes Localization-specific failure labels rather than generic quality tags
Axial coding Root causes, context, intervening conditions, action strategy, and consequence mapping
Saturation evidence Final-window evidence that new annotations repeat existing codes
Judge prompt A release-gate judge built from the localization failure modes
Report handoff CI gates, artifact status, implementation queue, and commands for an ML engineer

Example failure codes in the demo include:

Code What it catches
Placeholder And Markup Corruption The response approves a translation that drops variables, tags, markup, or runtime-safe formatting
Gameplay Meaning Reversal The localized text reverses the gameplay instruction or player action
Rating Or Disclosure Softening Marketing or regional copy weakens required rating, privacy, paid-currency, or platform disclosures
RTL Input Direction Drift Right-to-left layout or controller input language changes the intended interaction
Locale Format Ambiguity Dates, times, numbers, or currencies remain ambiguous for the target locale
Entitlement Copy Mistranslation Storefront text changes what the buyer receives or what content is included
Culturalization Risk Dismissal The response treats regional content risk as a translation-only issue

Those labels are the point of the workflow. The judge is not asked to score generic helpfulness first. It is asked to enforce the domain owner's observed release blockers.

The 50-Query AWS Cloud GDPR Demo

The second main workbench demo is a synthetic AWS cloud GDPR audit session for CloudAuditGate.

It includes 50 golden queries covering S3 and CloudWatch retention, CloudTrail and centralized logging, Bedrock prompt reuse, Rekognition and high-risk review, DSAR and deletion handling across backups and data lakes, shared responsibility, cross-region transfers, and breach escalation from AWS security incidents. The output is the same PM-owned package as the localization demo: annotations, open codes, axial coding, saturation evidence, and an audit-ready judge prompt.

The AWS Cloud GDPR demo uses plain-language tags on purpose, for example Data Used For The Wrong Job, Collecting Or Keeping Too Much Data, EU Data Moved The Wrong Way, and Trying To Work Around GDPR. The point is to make the GEDD loop easy to follow: annotate the failure in human language first, then turn that observed pattern into the judge gate.

Bring Your Own Agent

Use the app when you have a real or proposed agent and need review evidence before you automate evaluation.

Step What to do Output
1. Define Describe the agent, user, task boundary, and system prompt in AI PM Coach Agent spec and prompt
2. Build queries Generate or paste golden queries that cover normal, edge, ambiguous, adversarial, multi-turn, and recovery cases Query set
3. Get responses Run the saved prompt against Bedrock, Anthropic, or a configured runtime, or paste existing traces Response queue
4. Annotate Review each response in PM Workbench and capture verdict, code, severity, confidence, and memo Human labels and codebook
5. Pattern Use open coding and axial coding to group repeated failures and root causes Release-risk model
6. Judge Build the judge prompt from the observed codes and examples LLM-as-a-judge prompt
7. Handoff Export the session and ML handoff from Report Engineering package

If you already have production traces, use the app as an annotation surface rather than generating new responses. See Paste In Traces.

ML Engineer Handoff

The Report page contains an ML Engineer Handoff section. It is designed to be actionable, not a narrative status update.

It gives engineering:

Handoff field Why it exists
Engineering status Indicates whether the session is blocked by P0 failures, missing a judge, needs calibration, or is ready for a CI pilot
CI gates Shows current and target values for P0 failures, regression pass rate, human coverage, and judge-human agreement
Artifact status Confirms whether session handoff, golden dataset, codebook, judge prompt, and calibration evidence are ready
Implementation queue Prioritizes failure codes by severity and count, with tagged examples and definitions of done
Runbook Gives commands the ML engineer can run immediately

Typical handoff commands:

cd grounded-evals

grounded-evals validate-session --session session.json
grounded-evals export --session session.json --format jsonl --output golden_dataset.jsonl
grounded-evals judge --session session.json --output judge_prompt.md
grounded-evals mlflow --session session.json --tracking-uri $MLFLOW_TRACKING_URI --run-eval

The expected engineering loop is:

  1. Validate the session.
  2. Create one failing regression case for each P0 queue item.
  3. Patch the prompt, retrieval policy, tool policy, or runtime behavior.
  4. Rerun the judge and review disagreements.
  5. Promote the gate only after calibration is acceptable.

The default calibration target used in the handoff is kappa >= 0.80 before the judge blocks merges.

CLI Reference

The CLI supports the same workflow for repeatable runs, scripting, and CI.

Command Use
grounded-evals serve Start the web app
grounded-evals chat Run the guided PM workflow from the terminal
grounded-evals eval Run golden queries against supported models
grounded-evals annotate Add verdicts and failure codes from the terminal
grounded-evals analyze Map failure codes into legacy evaluation dimensions when needed
grounded-evals fracture Break a domain into coverage categories and candidate queries
grounded-evals compare Check whether a new query adds unique coverage
grounded-evals check-saturation Check whether the dataset is still producing new concepts
grounded-evals coverage Show coverage by category
grounded-evals judge Generate a judge prompt from the session
grounded-evals validate-session Check whether a session is ready for handoff
grounded-evals handoff Write a validated session handoff artifact
grounded-evals export Export the golden dataset as JSON, JSONL, or CSV
grounded-evals mlflow Create MLflow or SageMaker MLflow artifacts and optionally run evals
grounded-evals status Print a session summary

Run command help from the package directory:

cd grounded-evals
grounded-evals --help
grounded-evals mlflow --help

Web App And CLI

GEDD ships as a web app and a CLI. No Codex skill or plugin is required.

Interface Entry point Use
Web app grounded-evals serve Primary workflow for demos, PM annotation, judge building, and report export
CLI grounded-evals --help Repeatable validation, exports, automation, and MLflow runs

Use the web app first unless you are automating an established workflow. The CLI is the right path for CI, MLflow, scripted exports, and headless checks.

Runtime And Provider Configuration

Local demo review does not require an LLM provider because the main localization demo is preloaded.

For custom agent work, configure one provider:

Provider Configuration
Amazon Bedrock Configure AWS credentials and set AWS_REGION; optionally set BEDROCK_MODEL_ID
Anthropic API Set ANTHROPIC_API_KEY; direct Anthropic calls take priority when the key is present
AgentCore runtime Configure the AgentCore environment variables used by your deployment

See SETUP.md for a full environment variable list, Bedrock model access notes, auth options, and AWS deployment setup.

Architecture

flowchart TD
    WEB["NiceGUI web app<br/>Home, Coach, Workbench, Judge, Report"]
    DEMO["Seeded demos<br/>50-query localization + domain scenarios"]
    SESSION["session.json<br/>agent, prompt, queries, labels, codebook"]
    REPORT["ML engineer handoff<br/>gates, artifacts, queue, commands"]
    CLI["grounded-evals CLI<br/>export, judge, validate, mlflow"]
    MLFLOW["MLflow / SageMaker MLflow<br/>datasets, scorers, runs"]
    CI["CI/CD gate<br/>regression checks"]
    RUNTIME["Agent runtime<br/>Bedrock, Anthropic, AgentCore"]

    DEMO --> WEB
    WEB --> SESSION
    WEB --> REPORT
    REPORT --> CLI
    SESSION --> CLI
    CLI --> MLFLOW
    MLFLOW --> CI
    CI --> RUNTIME
    RUNTIME --> WEB
Loading

Core paths:

Path Responsibility
grounded-evals/src/grounded_evals/app.py App entry point, health endpoint, release marker
grounded-evals/src/grounded_evals/ui/ NiceGUI pages, layout, demos, workbench, judge, report
grounded-evals/src/grounded_evals/open_coding/ Domain fracturing, query comparison, saturation checks
grounded-evals/src/grounded_evals/axial_coding/ Root-cause and paradigm-model mapping
grounded-evals/src/grounded_evals/judge_builder/ Rubric, prompt generation, calibration, judge variants
grounded-evals/src/grounded_evals/guide/ Session persistence and handoff validation
grounded-evals/src/grounded_evals/cli.py Command-line workflow
grounded-evals/infra/ AWS CDK infrastructure
grounded-evals/Dockerfile Container image for the web app

Validation

Before committing app or workflow changes:

cd grounded-evals
PYTHONPATH=src pytest
PYTHONPATH=src python3 -m grounded_evals.cli --help

For local web smoke tests:

grounded-evals serve --host 127.0.0.1 --port 8080

for p in / /coding /demos /coach /judge /report /health; do
  curl -sS -o /dev/null -w "$p %{http_code}\n" "http://127.0.0.1:8080$p"
done

For README-only changes, git diff --check and stale-message scans are usually enough.

Additional Docs

Doc Use
SETUP.md Local setup, provider configuration, auth, troubleshooting, deployment
METHODOLOGY.md Grounded-theory method behind the workflow
Pipeline Guide End-to-end workflow and CI/CD shape
Domain Expert Guide PM and SME review walkthrough
PM To ML LLM Judge Turning annotated sessions into production judges
Building An LLM Judge Judge design and calibration details
Cohen's Kappa Judge-human agreement guidance
Launch Checklist Release readiness checks

License And Security

License: MIT-0. See LICENSE.

Security issue reporting: see CONTRIBUTING.md.