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

Zerox

data
vs
Neum AI

Neum AI

data

Zerox vs Neum AI — Comparison

Overview
What each tool does and who it's for

Zerox

OCR & Document Extraction using vision models. Contribute to getomni-ai/zerox development by creating an account on GitHub.

A dead simple way of OCR-ing a document for AI ingestion. Documents are meant to be a visual representation after all. With weird layouts, tables, charts, etc. The vision models just make sense! Zerox is available as both a Node and Python package. (Node.js SDK - supports vision models from different providers like OpenAI, Azure OpenAI, Anthropic, AWS Bedrock, Google Gemini, etc.) The maintainFormat option tries to return the markdown in a consistent format by passing the output of a prior page in as additional context for the next page. This requires the requests to run synchronously, so it's a lot slower. But valuable if your documents have a lot of tabular data, or frequently have tables that cross pages. Zerox supports structured data extraction from documents using a schema. This allows you to pull specific information from documents in a structured format instead of getting the full markdown conversion. Use extractPerPage to extract data per page instead of from the whole document at once. Zerox supports a wide range of models across different providers: (Python SDK - supports vision models from different providers like OpenAI, Azure OpenAI, Anthropic, AWS Bedrock, etc.) The pyzerox.zerox function is an asynchronous API that performs OCR (Optical Character Recognition) to markdown using vision models. It processes PDF files and converts them into markdown format. Make sure to set up the environment variables for the model and the model provider before using this API. Refer to the LiteLLM Documentation for setting up the environment and passing the correct model name. Note the output is manually wrapped for this documentation for better readability. This project is licensed under the MIT License. OCR Document Extraction using vision models There was an error while loading. Please reload this page. There was an error while loading. Please reload this page. There was an error while loading. Please reload this page. There was an error while loading. Please reload this page.

Neum AI

Neum AI is a best-in-class framework to build your data infrastructure for Retrieval Augmented Generation and Semantic Search. It provides a collectio

RAG-first framework to build performant, scalable and reliable data pipelines. Focused on key data transformations like loading, chunking and embedding. Choose from connectors for data sources, embedding models and vector databases. Add your own connectors using our open-source framework. Run your data pipelines locally using open-source SDKs and directly deploy those same pipelines to the Neum AI cloud. Distributed architecture optimized for embedding generation and ingestion for billions of data points. Keep your vectors in sync with built-in pipeline scheduling and real-time syncing. Monitor your data to ensure it is correctly being synced into your vector database. Built-in retrieval informed by the organization of your data and the metadata associated to it. Improve context quality by providing feedback on retrieval quality. Observe actions like searches and data movements. Follows us on social for additional content Lorem ipsum dolor sit amet, consectetur adipiscing elit. Suspendisse varius enim in eros elementum tristique. Lorem ipsum dolor sit amet, consectetur adipiscing elit. Suspendisse varius enim in eros elementum tristique. Duis cursus, mi quis viverra ornare, eros dolor interdum nulla, ut commodo diam libero vitae erat. Aenean faucibus nibh et justo cursus id rutrum lorem imperdiet. Nunc ut sem vitae risus tristique posuere. Lorem ipsum dolor sit amet, consectetur adipiscing elit. Suspendisse varius enim in eros elementum tristique. Duis cursus, mi quis viverra ornare, eros dolor interdum nulla, ut commodo diam libero vitae erat. Aenean faucibus nibh et justo cursus id rutrum lorem imperdiet. Nunc ut sem vitae risus tristique posuere. Lorem ipsum dolor sit amet, consectetur adipiscing elit. Suspendisse varius enim in eros elementum tristique. Duis cursus, mi quis viverra ornare, eros dolor interdum nulla, ut commodo diam libero vitae erat. Aenean faucibus nibh et justo cursus id rutrum lorem imperdiet. Nunc ut sem vitae risus tristique posuere. Lorem ipsum dolor sit amet, consectetur adipiscing elit. Suspendisse varius enim in eros elementum tristique. Duis cursus, mi quis viverra ornare, eros dolor interdum nulla, ut commodo diam libero vitae erat. Aenean faucibus nibh et justo cursus id rutrum lorem imperdiet. Nunc ut sem vitae risus tristique posuere. Lorem ipsum dolor sit amet, consectetur adipiscing elit. Suspendisse varius enim in eros elementum tristique. Duis cursus, mi quis viverra ornare, eros dolor interdum nulla, ut commodo diam libero vitae erat. Aenean faucibus nibh et justo cursus id rutrum lorem imperdiet. Nunc ut sem vitae risus tristique posuere.

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

Zerox

0% positive100% neutral0% negative

Neum AI

0% positive100% neutral0% negative
Pricing

Zerox

tiered

Pricing found: $50.10, $48.71, $48.71, $48.71, $9.74

Neum AI

subscription + tiered

Pricing found: $500/mo, $180 /yr, $280 /yr, $480 /yr

Features

Only in Zerox (10)

Pass in a file (PDF, DOCX, image, etc.)Convert that file into a series of imagesPass each image to GPT and ask nicely for MarkdownAggregate the responses and return MarkdownGPT-4 Vision (gpt-4o)GPT-4 Vision Mini (gpt-4o-mini)GPT-4.1 (gpt-4.1)GPT-4.1 Mini (gpt-4.1-mini)Claude 3 Haiku (2024.03, 2024.10)Claude 3 Sonnet (2024.02, 2024.06, 2024.10)

Only in Neum AI (10)

Powerful tools to configure your RAG pipelines in secondsProduction-ready cloud platformScaleObservabilitySmart RetrievalSelf-improvingGovernanceRetrieval evaluation with datasetsReal-time data embedding and indexing for RAG with Neum and SupabaseBuilding scalable RAG pipelines with Neum AI framework  -  Part 1
Developer Ecosystem
—
GitHub Repos
—
—
GitHub Followers
—
20
npm Packages
—
—
HuggingFace Models
—
—
SO Reputation
—
Product Screenshots

Zerox

Zerox screenshot 1Zerox screenshot 2

Neum AI

Neum AI screenshot 1Neum AI screenshot 2
Company Intel
information technology & services
Industry
—
6,000
Employees
—
$7.9B
Funding
—
Other
Stage
Seed
Supported Languages & Categories

Zerox

AI/MLFinTechDevOpsSecurityDeveloper Tools

Neum AI

DevOpsDeveloper ToolsData
View Zerox Profile View Neum AI Profile