Match the project to your task before installing it.
Vector Retrieval and RAG · Public
graphiti
Vector retrieval project for checking embedding storage, query semantics, RAG integration, data boundaries, and rollback.
Check whether this project matches your task before installing it.
What it can doVector database setup checks, embedding model boundaries, collection management, query acceptance, and deletion guidanceReview the portable capability path.
Before continuingVerify in a sandboxDo not treat a preview pack as a proven local install.
GitHub snapshot27k stars2.7k forks · 41 contributors
Doramagic.ai Last verification date: 2026-06-01 Verification method: source evidence, semantic profile, public page gate, and static build acceptance.
Publication status · 2026-06-01
What is graphiti?
- graphiti is a vector database, retrieval, or RAG storage component for AI applications.
- Best fit: Developers connecting knowledge bases, documents, or app data to semantic retrieval or RAG workflows.
- Not for: Not for one-off model API calls or environments that cannot isolate indexed data, credentials, and persistence paths.
- Capability added to an AI workflow: Vector database setup checks, embedding model boundaries, collection management, query acceptance, and deletion guidance
- First safe verification step: Verify create, query, delete, and rollback with a small public text sample before using real data.
- Verification state: source, Quick Start, and sandbox install checks are recorded as passed.
- Top risk: May increase setup, validation, or first-run risk for the user.
- Evidence base: https://github.com/getzep/graphiti, https://github.com/getzep/graphiti#readme, Human Manual, Pitfall Log
01
Quick decision
Use this section to decide whether the project is worth a deeper read.Vector retrieval project for checking embedding storage, query semantics, RAG integration, data boundaries, and rollback.
27k stars · 2.7k forks
02
What it can do
Translate the upstream project into concrete capabilities the user can judge before installing.Introduction to Graphiti
Related topics: Temporal Context Graphs, Installation Guide
Source: https://github.com/getzep/graphiti / Human Manual
Installation Guide
This guide covers the installation, configuration, and setup of Graphiti for building temporal context graphs. Graphiti is a Python library that requires Python 3.10+ and supports multiple...
Source: https://github.com/getzep/graphiti / Human Manual
Quick Start Guide
Related topics: Introduction to Graphiti, Neo4j Driver
Source: https://github.com/getzep/graphiti / Human Manual
Temporal Context Graphs
Related topics: Data Models, Ingestion Pipeline
Source: https://github.com/getzep/graphiti / Human Manual
Data Models
Related topics: Temporal Context Graphs, Search System
Source: https://github.com/getzep/graphiti / Human Manual
Sources: https://github.com/getzep/graphiti, Human Manual, Project Pack evidence, and downstream validation signals.
03
Community Discussion Evidence
Project-level external discussion stays visible on the detail page, not only inside the manual.Community Discussion Evidence
9 source-linked itemsReview these external discussions before using graphiti with real data or production workflows. They are review inputs, not standalone proof that the project is production-ready.
-
01
Your project is ranked #16 on HVTracker — embed a trust badge?
github / github_issue
-
02
FalkorDriver.default_group_id ('\_') is rejected by validate_group_id
github / github_issue
-
03
add_episode is impractically slow for >5KB content — proposal: skip_extr
github / github_issue
-
04
Suggestion: Standardized retrieval quality benchmarks for temporal knowl
github / github_issue
-
05
NaN/Inf values from embedder silently break entity deduplication and pro
github / github_issue
-
06
Neo4jDriver.__init__:57 schedules orphan create_task without cancel/awai
github / github_issue
-
07
Security or permission risk requires verification
GitHub / issue
-
08
Capability evidence risk requires verification
GitHub / issue
-
09
Security or permission risk requires verification
GitHub / issue
04
How to start
Only source-backed commands are shown here. Verify them in an isolated environment first.Try the prompt first
Test the workflow without installing the upstream project.
previewRead the Human Manual
Understand inputs, outputs, limits, and failure modes.
manualTake context to your AI host
Use the compiled assets in your preferred AI environment.
contextRun sandbox verification
Confirm install commands and rollback before using a primary environment.
verifypip install graphiti-coreOfficial start command · https://github.com/getzep/graphiti#readme · verified: yes
05
Human Manual
The English page must expose the real manual, not a short placeholder.8+ sections · Human Manual
graphiti Manual
Graphiti uses a pluggable driver architecture to support multiple backends:
Open the full manual- https://github.com/getzep/graphiti Project Manual
- Table of Contents
- Introduction to Graphiti
- Related Pages
- Purpose and Scope
- Core Concepts
- Context Graph Architecture
- Key Components
Introduction to Graphiti
Related topics: Temporal Context Graphs, Installation Guide
Source: https://github.com/getzep/graphiti / Human Manual
Installation Guide
This guide covers the installation, configuration, and setup of Graphiti for building temporal context graphs. Graphiti is a Python library that requires Python 3.10+ and supports multiple...
Source: https://github.com/getzep/graphiti / Human Manual
Quick Start Guide
Related topics: Introduction to Graphiti, Neo4j Driver
Source: https://github.com/getzep/graphiti / Human Manual
Temporal Context Graphs
Related topics: Data Models, Ingestion Pipeline
Source: https://github.com/getzep/graphiti / Human Manual
Data Models
Related topics: Temporal Context Graphs, Search System
Source: https://github.com/getzep/graphiti / Human Manual
06
AI Context Pack and portable assets
After deciding to continue, take the project context into your own AI host.Complete pack plus user-owned assets
These files are planning and verification assets for Claude Code, Codex, Gemini, Cursor, ChatGPT, and other AI hosts.
07
Preflight checks
Treat this page as a planning asset, not proof that your local environment is ready.- The manual is generated from source-linked project files and Doramagic validation signals.
- Community evidence warnings stay visible instead of being converted into marketing claims.
- This English page is indexable because the locale quality gate passed and explicit English index approval is enabled.
- Use the upstream repository as the final authority for installation commands, license, and version-specific behavior.
08
Pitfall Log and verification risks
Doramagic surfaces high-risk items before users treat a candidate capability as verified.Configuration risk requires verification
May increase setup, validation, or first-run risk for the user.
Security or permission risk requires verification
May increase setup, validation, or first-run risk for the user.
Installation risk requires verification
May increase setup, validation, or first-run risk for the user.
Installation risk requires verification
May increase setup, validation, or first-run risk for the user.
Installation risk requires verification
May increase setup, validation, or first-run risk for the user.
Installation risk requires verification
May increase setup, validation, or first-run risk for the user.
Capability evidence risk requires verification
May increase setup, validation, or first-run risk for the user.
Maintenance risk requires verification
May increase setup, validation, or first-run risk for the user.