PayloopPayloop
CommunityVoicesToolsDiscoverLeaderboardReportsBlog
Save Up to 65% on AI
Powered by Payloop — LLM Cost Intelligence
Tools/Canopy vs Zep
Canopy

Canopy

framework
vs
Zep

Zep

framework

Canopy vs Zep — Comparison

Overview
What each tool does and who it's for

Canopy

Retrieval Augmented Generation (RAG) framework and context engine powered by Pinecone - pinecone-io/canopy

The Canopy team is no longer maintaining this repository. Thank you for your support and enthusiasm for the project! If you're looking for a high quality managed RAG solution with continued updates and improvements, please check out the Pinecone Assistant. Canopy takes on the heavy lifting for building RAG applications: from chunking and embedding your text data to chat history management, query optimization, context retrieval (including prompt engineering), and augmented generation. Canopy provides a configurable built-in server so you can effortlessly deploy a RAG-powered chat application to your existing chat UI or interface. Or you can build your own, custom RAG application using the Canopy library. Canopy lets you evaluate your RAG workflow with a CLI based chat tool. With a simple command in the Canopy CLI you can interactively chat with your text data and compare RAG vs. non-RAG workflows side-by-side. Canopy implements the full RAG workflow to prevent hallucinations and augment your LLM with your own text data. Canopy has two flows: knowledge base creation and chat. In the knowledge base creation flow, users upload their documents and transform them into meaningful representations stored in Pinecone's Vector Database. In the chat flow, incoming queries and chat history are optimized to retrieve the most relevant documents, the knowledge base is queried, and a meaningful context is generated for the LLM to answer. More information about the Core Library usage can be found in the Library Documentation More information about virtual environments can be found here These optional environment variables are used to authenticate to other supported services for embeddings and LLMs. If you configure Canopy to use any of these providers - you would need to set the relevant environment variables. Output should be similar to this: In this quickstart, we will show you how to use the Canopy to build a simple question answering system using RAG (retrieval augmented generation). As a one-time setup, Canopy needs to create a new Pinecone index that is configured to work with Canopy, just run: To learn more about Pinecone indexes and how to manage them, please refer to the following guide: Understanding indexes You can load data into your Canopy index using the command: The Canopy server exposes Canopy's functionality via a REST API. Namely, it allows you to upload documents, retrieve relevant docs for a given query, and chat with your data. The server exposes a /chat.completion endpoint that can be easily integrated with any chat application. To start the server, run: Now, you should be prompted with the following standard Uvicorn message: To stop the server, simply press CTRL+C in the terminal where you started it. Canopy's CLI comes with a built-in chat app that allows you to interactively chat with your text data and compare RAG vs. non-RAG workflows side-by-side to evaluate the results In a new terminal window, set the required enviro

Zep

Zep connects your data sources, builds a unified context graph of your users, and delivers assembled context to your agent. One pipeline. One API.

Based on the limited social mentions provided, there isn't enough substantive user feedback to properly assess Zep's reception. The mentions include several YouTube references to "Zep AI" without detailed content, and GitHub activity showing technical development work involving agent modules and commit migrations. Reddit discussions touch on AI memory management and context portability challenges that may relate to Zep's functionality, but don't explicitly evaluate the tool itself. To provide an accurate user sentiment summary, more detailed reviews and user experiences would be needed.

Key Metrics
—
Avg Rating
—
0
Mentions (30d)
5
1,030
GitHub Stars
4,316
129
GitHub Forks
597
—
npm Downloads/wk
—
—
PyPI Downloads/mo
—
Community Sentiment
How developers feel about each tool based on mentions and reviews

Canopy

0% positive100% neutral0% negative

Zep

0% positive100% neutral0% negative
Pricing

Canopy

tiered

Zep

subscription + freemium + tieredFree tier

Pricing found: $25 /month, $25 / 20, $475 /month, $125 / 100

Features

Only in Canopy (10)

set up a virtual environment (optional)install the packageSet up the environment variablesCheck that installation is successful and environment is set, run:Rate limits and pricing set by model providers apply to Canopy usage. Canopy currently works with OpenAI, Azure OpenAI, Anyscale, and Cohere models.More integrations will be supported in the near future.ExtrasMandatory Environment VariablesOptional Environment Variables2. Uploading data

Only in Zep (10)

Trusted by developers atIngestGraphAssembleEvery SourceBuilt for Real-TimeThree Lines of CodeChat MemoryStatic RAGTool Calls
Developer Ecosystem
104
GitHub Repos
11
1,684
GitHub Followers
417
20
npm Packages
13
—
HuggingFace Models
—
—
SO Reputation
—
Pain Points
Top complaints from reviews and social mentions

Canopy

No data yet

Zep

spending limit (1)
Product Screenshots

Canopy

Canopy screenshot 1

Zep

Zep screenshot 1Zep screenshot 2
Company Intel
information technology & services
Industry
information technology & services
6,000
Employees
5
$7.9B
Funding
$2.4M
Other
Stage
Seed
Supported Languages & Categories

Canopy

AI/MLFinTechDevOpsSecurityAnalytics

Zep

context engineeringagent memoryAI agentsGraph RAGcontext assembly
View Canopy Profile View Zep Profile