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Tools/Atomic Agents vs Graphiti
Atomic Agents

Atomic Agents

framework
vs
Graphiti

Graphiti

framework

Atomic Agents vs Graphiti — Comparison

Overview
What each tool does and who it's for

Atomic Agents

Building AI agents, atomically. Contribute to BrainBlend-AI/atomic-agents development by creating an account on GitHub.

There was an error while loading. Please reload this page. The Atomic Agents framework is designed around the concept of atomicity to be an extremely lightweight and modular framework for building Agentic AI pipelines and applications without sacrificing developer experience and maintainability. Think of it like building AI applications with LEGO blocks - each component (agent, tool, context provider) is: To install Atomic Agents, you can use pip: Make sure you also install the provider you want to use. Provider SDKs are available as instructor extras: OpenAI is included by default. For a full list of supported providers, see the Instructor docs. This also installs the CLI Atomic Assembler, which can be used to download Tools (and soon also Agents and Pipelines). Here's a quick snippet demonstrating how easy it is to create a powerful agent with Atomic Agents: While existing frameworks for agentic AI focus on building autonomous multi-agent systems, they often lack the control and predictability required for real-world applications. Businesses need AI systems that produce consistent, reliable outputs aligned with their brand and objectives. Atomic Agents addresses this need by providing: All logic and control flows are written in Python, enabling developers to apply familiar best practices and workflows from traditional software development without compromising flexibility or clarity. In Atomic Agents, an agent is composed of several key components: Here's a high-level architecture diagram: Atomic Agents allows you to enhance your agents with dynamic context using Context Providers. Context Providers enable you to inject additional information into the agent's system prompt at runtime, making your agents more flexible and context-aware. You can then register your Context Provider with the agent: This allows your agent to include the search results (or any other context) in its system prompt, enhancing its responses based on the latest information. Atomic Agents makes it easy to chain agents and tools together by aligning their input and output schemas. This design allows you to swap out components effortlessly, promoting modularity and reusability in your AI applications. Suppose you have an agent that generates search queries and you want to use these queries with different search tools. By aligning the agent's output schema with the input schema of the search tool, you can easily chain them together or switch between different search providers. Here's how you can achieve this: For instance, to switch to another search service: This design pattern simplifies the process of chaining agents and tools, making your AI applications more adaptable and easier to maintain. A complete list of examples can be found in the examples directory. We strive to thoroughly document each example, but if something is unclear, please don't hesitate to open an issue or pull request to improve the documentation. For full, runnable examples, pleas

Graphiti

Build Real-Time Knowledge Graphs for AI Agents. Contribute to getzep/graphiti development by creating an account on GitHub.

Based on the provided content, there are no reviews or social mentions specifically about "Graphiti." All the social media mentions are about GitHub Copilot, Figma, npm registry tools, and other development-related topics, but none reference a tool called "Graphiti." Without actual user feedback about Graphiti, I cannot provide a meaningful summary of user sentiment, strengths, complaints, or pricing opinions for this specific tool.

Key Metrics
—
Avg Rating
—
0
Mentions (30d)
33
5,827
GitHub Stars
24,254
481
GitHub Forks
2,403
—
npm Downloads/wk
—
—
PyPI Downloads/mo
—
Community Sentiment
How developers feel about each tool based on mentions and reviews

Atomic Agents

0% positive100% neutral0% negative

Graphiti

0% positive100% neutral0% negative
Pricing

Atomic Agents

tiered

Graphiti

per-seat + tiered
Use Cases
When to use each tool

Graphiti (1)

Quick Start
Features

Only in Atomic Agents (10)

CalculatorSearXNG SearchYouTube Transcript ScraperInput schemaOutput schemaUsage exampleDependenciesInstallation instructionsFork the repositoryMake your changes

Only in Graphiti (10)

Build context graphs that evolve with every interaction — tracking what's true now and what was true before.Give agents rich, structured context instead of flat document chunks or raw chat history.Query across time, meaning, and relationships with hybrid retrieval (semantic + keyword + graph traversal).Python 3.10 or higherNeo4j 5.26 / FalkorDB 1.1.2 / Kuzu 0.11.2 / Amazon Neptune Database Cluster or Neptune Analytics Graph + Amazon OpenSearch Serverless collection (serves as the full text search backend)OpenAI API key (Graphiti defaults to OpenAI for LLM inference and embedding)Google Gemini, Anthropic, or Groq API key (for alternative LLM providers)Connecting to a Neo4j, Amazon Neptune, FalkorDB, or Kuzu databaseInitializing Graphiti indices and constraintsAdding episodes to the graph (both text and structured JSON)
Developer Ecosystem
2
GitHub Repos
11
90
GitHub Followers
417
20
npm Packages
13
—
HuggingFace Models
—
—
SO Reputation
—
Product Screenshots

Atomic Agents

Atomic Agents screenshot 1Atomic Agents screenshot 2

Graphiti

Graphiti screenshot 1Graphiti screenshot 2Graphiti screenshot 3
Company Intel
information technology & services
Industry
information technology & services
6,000
Employees
6,000
$7.9B
Funding
$7.9B
Other
Stage
Other
Supported Languages & Categories

Atomic Agents

AI/MLFinTechDevOpsSecurityDeveloper Tools

Graphiti

AI/MLFinTechDevOpsSecurityAnalytics
View Atomic Agents Profile View Graphiti Profile