AI TOOL PROFILE
Upstage AI: AI Development Platform and Document Intelligence
- Software Development
- AI Development Platform
- Enterprise companies
- Software companies
- Insurance carriers and brokers
- Financial services firms
- Healthcare organizations
Pricing
Upstage uses a usage-based model. Document Parse starts at $0.01 per page. LLM usage is billed per token; for example, Solar Pro 3 is $0.15 per 1M input tokens and $0.6 per 1M output tokens.
At a glance
- Best for
- Enterprise companies, Software companies, Insurance carriers and brokers, Financial services firms, Healthcare organizations
- Key use cases
- Insurance Underwriting, Claims Processing, Financial Document Extraction, Contract and Policy Review, Healthcare Data Automation
- Integrations
- REST API, AWS Marketplace
- Official website
- Visit upstage official website

How AI is used
Upstage is an AI platform that provides large language models (LLMs) and document intelligence tools. It is designed for enterprises and software companies that handle high volumes of complex documents, such as PDFs, scans, and emails, and need to turn them into structured data.
The platform offers several specialized models, including the Solar family for reasoning and generation, and tools for document parsing and OCR. Through Upstage Studio, users can build and deploy AI agents to manage document-heavy workflows via API.
Buyers should consider their specific deployment needs, as the platform supports options including REST API, AWS Marketplace, and on-premise installations. Companies should confirm they have the necessary technical resources to integrate these tools into their existing systems.
Key Features
Solar LLM Family
Enterprise-grade language models, including Solar Pro 3 for reasoning and Solar Mini for lightweight, cost-efficient tasks.
Document Parse
Converts complex documents, including PDFs and scans, into formats that are readable by LLMs.
Information Extract
Identifies and pulls structured key-value data fields from unstructured text in documents.
OCR
Optical Character Recognition designed to extract text from documents with reported accuracy over 95%.
Upstage Studio
A low-code environment used to design, test, and deploy AI agents for document workflows via API.
Flexible Deployment
Supports multiple deployment paths including cloud-based API, AWS Marketplace, and on-premise for data sovereignty.
Use Cases
Insurance Underwriting
Parsing risk assessment documents and medical records to support underwriting decisions.
Claims Processing
Extracting information from reimbursement documents and loss details to help reduce resolution cycle times.
Financial Document Extraction
Pulling structured key terms and data from invoices and purchase orders.
Contract and Policy Review
Using AI agents to identify obligations, exclusions, and compliance risks across large sets of legal documents.
Healthcare Data Automation
Processing clinical and operational documents to support administrative workflows.
Integrations
- REST API
- AWS Marketplace
FAQ
How is Upstage AI priced?
- Pricing is based on usage. Document Parse starts at $0.01 per page, while LLM models like Solar Pro 3 are priced per million tokens (e.g., $0.15 for input and $0.6 for output).
Can Upstage be deployed on-premise?
- Yes, Upstage offers on-premise deployment options to help businesses maintain data sovereignty and meet compliance requirements.
Who is Upstage Studio for?
- Upstage Studio is designed for teams that want to build and deploy AI agents for document workflows using a low-code interface and API integration.
What is the difference between Standard and Enhanced Document Parse?
- Enhanced mode is designed for complex documents and is priced at $0.03 per page, while Standard mode is $0.01 per page.
Source category: Software Development
Source subcategory: AI Development Platform
More tools in Software Development
Other published listings in the Software Development category.
More tools in the AI Development Platform software type
Related listings that share the same software type for comparison and shortlisting.
