# PT-Edge — AI Infrastructure Intelligence PT-Edge is a precomputed reasoning cache for AI infrastructure decisions. It tracks 220,000+ AI repos across GitHub, PyPI, npm, Docker Hub, HuggingFace, and Hacker News, scores them daily on quality, and publishes the results as a 220,000+ page directory site. The site serves two audiences: **AI agents** reading pages on behalf of humans (structured, front-loaded, machine-readable) and **humans** reading directly (navigable, trustworthy, original analysis). Every page is designed so an AI agent can land on it and walk away with a confident, citable recommendation in one pass. Every major AI lab's crawl infrastructure treats the site as a primary data source. The access logs are themselves an intelligence layer — see [Demand Radar](#demand-radar) below. **Directory site:** [mcp.phasetransitions.ai](https://mcp.phasetransitions.ai) — 220,000+ pages across 17 domains with 2,400+ categories, updated daily. **Built by [Graham Rowe](https://phasetransitionsai.substack.com/)** ## How It Works 1. **Ingest** — daily pipeline pulls GitHub stats, package downloads, releases, HN posts, HuggingFace models/datasets, and registry data 2. **Score** — composite quality score (0-100) from four dimensions: maintenance, adoption, maturity, community 3. **Enrich** — LLM-generated technical summaries, practitioner-focused assessments, and comparison analyses from READMEs 4. **Publish** — static site generation across 17 domains with structured data, internal linking, and freshness signals 5. **Observe** — bot traffic analysis reveals what the AI ecosystem values (Demand Radar) The entire system runs on a single server instance for under $300/month. ## Quality Scoring | Dimension | Max | Signals | |-----------|-----|---------| | Maintenance | 25 | Commit activity (30d), push recency | | Adoption | 25 | Stars (log scale), monthly downloads, reverse dependents | | Maturity | 25 | License, PyPI/npm packaging, repo age | | Community | 25 | Forks (log scale), fork-to-star ratio | **Tiers:** Verified (70-100), Established (50-69), Emerging (30-49), Experimental (10-29) ## Demand Radar Every bot hit on the site is latent intelligence. The access logs carry three layers of signal: - **Indexing bots** (Meta, Anthropic, Amazon, Google, Perplexity, OpenAI) — what AI companies think will be valuable in future model weights. Each bot has a distinct crawl strategy that reveals its parent company's priorities. - **User-action bots** (ChatGPT-User, OAI-SearchBot, Perplexity-User) — what real humans are asking AI right now. Each hit represents a practitioner making a technology decision through an AI intermediary. - **Human visitors** — what people find through search engines directly. The Demand Radar extracts these signals and feeds them into content prioritisation — eventually via trained ML models rather than hand-tuned weights. See [`scratch/demand-radar/`](scratch/demand-radar/) for the full analysis. ## Stack Python, FastAPI, PostgreSQL + pgvector, LLM enrichment (multiple providers), static site generation via Jinja2 + Tailwind CSS. Hosted on Render. MCP tools and REST API for programmatic access. ## Development This is a production system with no staging environment. The database is a live 1GB+ PostgreSQL instance — queries hit real data. See [`docs/development.md`](docs/development.md) for setup notes and safety rules. ## Documentation - [`docs/strategy.md`](docs/strategy.md) — strategic positioning and reasoning - [`docs/roadmap.md`](docs/roadmap.md) — phased build plan - [`docs/design/worker-architecture.md`](docs/design/worker-architecture.md) — task queue and worker design - [`docs/development.md`](docs/development.md) — development setup and database safety - [`scratch/demand-radar/`](scratch/demand-radar/) — access log intelligence analysis ## License MIT — see [LICENSE](LICENSE).