Comprehensive architecture modulaire IA Tools for Every Need

Get access to architecture modulaire IA solutions that address multiple requirements. One-stop resources for streamlined workflows.

architecture modulaire IA

  • A Python-based toolkit for building AWS Bedrock-powered AI agents with prompt chaining, planning, and execution workflows.
    0
    0
    What is Bedrock Engineer?
    Bedrock Engineer provides developers with a structured, modular way to build AI agents leveraging AWS Bedrock foundation models like Amazon Titan and Anthropic Claude. The toolkit includes example workflows for data retrieval, document analysis, automated reasoning, and multi-step planning. It manages session context, integrates with AWS IAM for secure access, and supports customizable prompt templates. By abstracting away boilerplate code, Bedrock Engineer accelerates development of chatbots, summarization tools, and intelligent assistants, while offering scalability and cost optimization through AWS-managed infrastructure.
  • AI-Agents empowers developers to build and run customizable Python-based AI agents with memory, tool integration, and conversational abilities.
    0
    0
    What is AI-Agents?
    AI-Agents provides a modular architecture for defining and running Python-based AI agents. Developers can configure agent behaviors, integrate external APIs or tools, and manage agent memory across sessions. It leverages popular LLMs, supports multi-agent collaboration, and enables plugin-based extensions for complex workflows like data analysis, automated support, and personalized assistants.
  • Open-source Python framework to build modular generative AI agents with scalable pipelines and plugins.
    0
    0
    What is GEN_AI?
    GEN_AI provides a flexible architecture for assembling generative AI agents by defining processing pipelines, integrating large language models, and supporting custom plugins. Developers can configure text, image, or data generation workflows, manage input/output handling, and extend functionality through community or custom plugins. The framework simplifies orchestrating calls to multiple AI services, provides logging and error management, and enables rapid prototyping. With modular components and configuration files, teams can quickly deploy, monitor, and scale AI-driven applications in research, customer service, content creation, and more.
Featured