
IngestAI is an AI-powered platform for enterprise knowledge management and smart assistants. Its core is training customized AI models using your own data to help build intelligent knowledge bases and accelerate internal AI tool development.
It is suitable for organizations that need to manage internal knowledge and improve information retrieval efficiency, especially technical support teams, customer service, management, and knowledge-intensive industries such as legal, medical, and finance. It is also suitable for teams looking to quickly build internal AI tools.
The platform provides no-code or low-code development environments designed to let enterprises quickly create and deploy AI tools without deep technical expertise.
The platform mentions built-in data encryption and access control features. For specifics on security measures and data handling policies, please refer to the official documentation or contact the team for details.
Based on available information, the platform uses a freemium model with basic features free; advanced features require payment. Check the latest information on the official site for exact pricing and plans.
It supports integrations with Slack, Discord, Telegram, WhatsApp, Microsoft Teams, and other popular collaboration tools, and can be embedded into your own website or application via API.
It connects to various data sources, including documents, databases, cloud storage, and claims to parse over 100 file formats.
The platform integrates multiple mainstream AI models (such as the GPT series and Cohere). Users can use or compare these models within the platform to generate text, images, and other content.

Inner AI is an enterprise-grade productivity platform that integrates multiple AI models in a unified workspace, helping users organize thinking, manage documents, and complete content creation and multimedia tasks, with a goal of boosting individual and team productivity.
Inngest AI Workflows is an event-driven, persistent execution platform that simplifies the orchestration of AI and backend workflows. By abstracting away the complexity of the underlying infrastructure, it lets developers focus on business logic and build efficient, reliable, and scalable background tasks and complex workflows.