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What does it do?

  • Data Integration
  • Access Controls
  • Semantic Search
  • Keyword Search
  • Generative AI Assistants

How is it used?

  • Access web app
  • integrate data
  • create secure AI copilots.
  • 1. Access w/ web app
  • 2. Use REST API
See more

Who is it good for?

  • Data Scientists
  • Compliance Officers
  • Business Analysts
  • Software Developers
  • IT Managers

Details & Features

  • Made By

    Credal.ai
  • Released On

    2022-10-24

Credal is a platform that enables businesses to develop secure AI-driven applications using their own data. It specializes in supporting Retrieval Augmented Generation (RAG) applications, emphasizing data privacy and compliance while providing user-friendly tools for both technical and non-technical users.

Key features:
- Data Integration: Ability to pull data from any source, providing flexibility in data access and utilization.
- Access Controls: Inheritance and enforcement of access controls for enhanced security management.
- Advanced Search: Support for semantic, keyword, or hybrid search options for precise data retrieval.
- Generative AI Copilots: Creation of AI assistants to augment human capabilities across various tasks.
- Secure API: Flexible and secure API for easy integration and deployment of applications.
- Audit and Compliance Tools: Features to audit data access and protect Personally Identifiable Information (PII) from model exposure.
- Low-Code/No-Code Tooling: Pre-built UI frameworks and tools for implementing workflows without extensive developer support.

How it works:
1. Users access Credal through a web application.
2. Developers can integrate applications using Credal's REST API.
3. Non-developers can use the point-and-click interface for setup and management.
4. Users can pull data from various sources and apply access controls.
5. AI copilots can be created to perform tasks and assist users.
6. Applications can be deployed securely using the provided API.

Integrations:
Various data sources and applications

Use of AI:
Credal utilizes Retrieval Augmented Generation (RAG), combining traditional language models with data retrieval capabilities. This allows for the generation of contextually relevant responses and insights based on specific business data.

AI foundation model:
The platform is built on RAG technology, enabling AI-driven applications that leverage both generative AI and specific business data.

Target users:
- Developers seeking to build AI-driven applications
- Businesses prioritizing data security and compliance
- Organizations looking to leverage generative AI technologies
- Non-technical users requiring AI implementation without coding expertise

How to access:
Credal is available as a web application, accessible from devices with internet connectivity. The platform is not open source, aligning with its focus on security and controlled access.

  • Supported ecosystems
    Unknown, OpenAI
  • What does it do?
    Data Integration, Access Controls, Semantic Search, Keyword Search, Generative AI Assistants
  • Who is it good for?
    Data Scientists, Compliance Officers, Business Analysts, Software Developers, IT Managers

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