7.4 KiB
Graphify — Setup & Best-Practices Guide
A practical handbook for setting up and using Graphify (safishamsi/graphify,
PyPI package graphifyy) across many projects at once — code, documents, and a personal knowledge base.
Graphify turns a folder of mixed content into a queryable knowledge graph that your AI coding assistant
reads instead of re-reading the whole corpus every session.
The guide is distilled from a creator interview (a marketing/influencer piece — see provenance below), then verified and corrected against the official GitHub repository and supplemented with independent sources.
Read in this order
- 01-overview-concepts.md — What Graphify is and the mental model: knowledge-graph-of-everything, god nodes, confidence tags, neuro-symbolic framing, why a graph beats plain file search and Obsidian. Start here.
- 02-installation-setup.md — Install (
uv tool install graphifyy), register with your assistant, firstgraphify .run, and how to avoid a first-run token blowout. - 03-ingesting-code-ast.md — Indexing code with tree-sitter AST: free, no LLM, 33 languages, multi-repo. The core rule: AST for code, save the model for documents.
- 04-ingesting-docs-knowledge.md — Indexing documents & a personal KB: PDF/docx/xlsx/images, audio/video transcription, YouTube, Google Workspace; when documents need a model.
- 05-local-models-and-backends.md — Backends: local Ollama/SLM vs. cloud (Bedrock, Claude, Gemini, OpenAI, …), env vars, privacy, and choosing on cost/quality/privacy.
- 06-querying-and-god-nodes.md — The highest-leverage skill: ask for god nodes first, then scalpel down; prompt the graph, don't make the LLM read the corpus.
- 07-token-economics-and-updates.md — Where savings really come
from (honestly), cost levers, and keeping the graph fresh with
--update(SHA-256 + dedup) and hooks. - 08-workflows-and-use-cases.md — End-to-end playbooks: onboarding, bug tracing, AI-slop audits, the cross-project "second brain," PR impact analysis.
- 09-best-practices-checklist.md — The do/don't reference card + command quick-reference + setting-up-across-many-projects mini-guide. Keep this one open while working.
- external-tips.md — Independent/community tips, gotchas with issue links, and an even-handed look at the token-savings debate.
- 10-extraction-model-options.md — Why Graphify uses a general structured-output LLM (not a purpose-built KG extractor), the architecture constraints that make drop-in specialist models (Triplex, GLiNER, REBEL) non-starters, and an honest assessment of whether the Triplex adapter route is worth experimenting with.
One-paragraph summary
Install with uv tool install graphifyy (the package is graphifyy — double-y, a temporary name — but the
command is graphify), then graphify install to register it with Claude Code (or Codex/Cursor/Gemini/OpenCode).
Run graphify . on a folder; it writes graphify-out/ containing an interactive graph.html, a GRAPH_REPORT.md
(whose top lists the god nodes — the most-connected concepts), and a graph.json. Code is parsed locally
with tree-sitter AST — free, no tokens, 33 languages. Documents, images, and media need a model backend for
semantic extraction; point that at local Ollama to keep it free and private, or at a cloud model. The retrieval
discipline that delivers the savings: ask for god nodes first, then query the graph (graphify query/path/explain)
rather than dumping the whole corpus into context. Always graphify ... --update when adding data so it merges
(SHA-256 hashing + dedup) instead of rebuilding. Fold many repos into one graph with graphify global add.
How this guide was built — provenance & honesty
This matters because you're going to run these commands. Each substantive claim in the docs is tagged inline:
| Tag | Meaning |
|---|---|
[github] |
Verified against the official repository README (see version note below) — most trustworthy |
[interview] |
Stated only in the creator interview — unconfirmed framing or claim |
[community](url) |
From an independent third-party source, with link |
[site] / [pypi] |
From graphifylabs.ai or the PyPI listing |
[unverified claim] |
Asserted (often marketing) but not confirmed against a primary source |
Sources, and how much to trust them:
- The interview (
graphify-interviewin the repo root) is a hype/marketing influencer piece with the creator (Safi Shamsi) and noisy auto-transcription. It's a good source of intent and workflow advice but a poor source of facts — names, commands, and numbers are garbled. We treated it as a starting hypothesis, not ground truth. - The GitHub repo is the authority. We anchored on the v0.8.30 release README (published 2026-06-02, the
latest published release as of 2026-06-03; a
v1.0.0tag also exists but isn't a published release). Disputed flags were settled by grepping the raw README bytes, not summaries. - The official site (https://graphifylabs.ai/) returned HTTP 403 to automated fetches, so nothing was verified directly from it; site-only claims are flagged.
Corrections we made to the interview's claims (and why they're in the docs):
- "AST for code, LLM for documents" holds — but the interview's claim that shell scripts aren't AST-supported
is outdated; v0.8.30 lists
.sh/.bash/.ps1among its 33 tree-sitter languages. - Package name is
graphifyy(double-y), notgraphify, on PyPI. - Flag set is version-dependent.
--token-budget,--max-concurrency,--api-timeout,--budget, and--forceare all real in v0.8.30 (grep-verified) but absent from the shortermain-branch README. If your build differs, confirm withgraphify --help. Note:--budgetcaps query answer size;--token-budgetsets extraction chunk size — different flags, different stages. - "Meetings / Slack / OneNote connectors" are roadmap or belong to a separate product, not shipped in Graphify today.
On the headline token-savings numbers (70x / 90x / 71.5x): treat them as corpus-dependent marketing, not a
guarantee. Independent testing (roborhythms) reproduced large-monorepo wins but measured a realistic ~1–49x,
with net-negative results on small repos (the mandatory "read the graph first" preamble can cost more than it
saves on <100-file projects — see GitHub issue #580). The creator himself says there's "no floor, no ceiling."
Measure your own with graphify benchmark. (Separately, the repo's popularity claims under-sold reality:
third-party trackers showed ~58K stars and ~1.28M downloads as of 2026-06-03 — bigger than the interview's figures.)
Caveat — Graphify moves fast. Multiple releases shipped per day during early June 2026. Commands and flags
here reflect v0.8.30; if something doesn't match, run graphify --help and prefer the latest release README.
Last updated: 2026-06-03 · anchored to Graphify v0.8.30