Comprehensive интеграция в облако Tools for Every Need

Get access to интеграция в облако solutions that address multiple requirements. One-stop resources for streamlined workflows.

интеграция в облако

  • AI-powered GRC tool for security and compliance teams.
    0
    0
    What is Trustero?
    Trustero AI empowers Agile GRC by real-time ingestion and analysis of GRC data. It automates time-consuming tasks such as gap analysis, remediation guidance, questionnaire automation, and evidence collection to enhance productivity and compliance. Trustero integrates seamlessly with existing tools like Google Cloud, AWS, and GitHub, providing an efficient, end-to-end GRC management solution that saves teams hundreds of hours each month.
  • An AI Agent platform automating data science workflows by generating code, querying databases, and visualizing data seamlessly.
    0
    0
    What is Cognify?
    Cognify enables users to define data science goals and lets AI Agents handle the heavy lifting. Agents can write and debug code, connect to databases for querying insights, produce interactive visualizations, and even export reports. With a plugin architecture, users can extend functionality to custom APIs, scheduling systems, and cloud services. Cognify offers reproducibility, collaboration features, and logging to track agent decisions and outputs, making it suitable for rapid prototyping and production workflows.
  • Open-source end-to-end chatbot using Chainlit framework for building interactive conversational AI with context management and multi-agent flows.
    0
    0
    What is End-to-End Chainlit Chatbot?
    e2e-chainlit-chatbot is a sample project demonstrating the complete development lifecycle of a conversational AI agent using Chainlit. The repository includes end-to-end code for launching a local web server that hosts an interactive chat interface, integrating with large language models for responses, and managing conversation context across messages. It features customizable prompt templates, multi-agent workflows, and real-time streaming of responses. Developers can configure API keys, adjust model parameters, and extend the system with custom logic or integrations. With minimal dependencies and clear documentation, this project accelerates experimentation with AI-driven chatbots and provides a solid foundation for production-grade conversational assistants. It also includes examples for customizing front-end components, logging, and error handling. Designed for seamless integration with cloud platforms, it supports both prototype and production use cases.
Featured