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prototypage de recherche

  • Dead-simple self-learning is a Python library providing simple APIs for building, training, and evaluating reinforcement learning agents.
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    What is dead-simple-self-learning?
    Dead-simple self-learning offers developers a dead-simple approach to create and train reinforcement learning agents in Python. The framework abstracts core RL components, such as environment wrappers, policy modules, and experience buffers, into concise interfaces. Users can quickly initialize environments, define custom policies using familiar PyTorch or TensorFlow backends, and execute training loops with built-in logging and checkpointing. The library supports on-policy and off-policy algorithms, enabling flexible experimentation with Q-learning, policy gradients, and actor-critic methods. By reducing boilerplate code, dead-simple self-learning allows practitioners, educators, and researchers to prototype algorithms, test hypotheses, and visualize agent performance with minimal configuration. Its modular design also facilitates integration with existing ML stacks and custom environments.
    dead-simple-self-learning Core Features
    • Simple environment wrappers
    • Policy and model definitions
    • Experience replay and buffers
    • Flexible training loops
    • Built-in logging and checkpointing
    dead-simple-self-learning Pro & Cons

    The Cons

    Currently feedback selection layer supports only OpenAI
    No pricing information available as it is an open-source library
    Limited direct support or information on scalability for very large datasets

    The Pros

    Allows LLM agents to self-improve without costly model retraining
    Supports multiple embedding models (OpenAI, HuggingFace)
    Local-first storage using JSON files, no external database required
    Async and sync API support for better performance
    Framework agnostic; works with any LLM provider
    Simple API with easy methods to enhance prompts and save feedback
    Integration examples with popular frameworks like LangChain and Agno
    MIT open-source license
  • HMAS is a Python framework for building hierarchical multi-agent systems with communication and policy training features.
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    What is HMAS?
    HMAS is an open-source Python framework that enables development of hierarchical multi-agent systems. It offers abstractions for defining agent hierarchies, inter-agent communication protocols, environment integration, and built-in training loops. Researchers and developers can use HMAS to prototype complex multi-agent interactions, train coordinated policies, and evaluate performance in simulated environments. Its modular design makes it easy to extend and customize agents, environments, and training strategies.
  • IRIS is an AI-powered agent that assists researchers by generating research questions, ideation prompts, literature summaries, and structured workflows.
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    What is IRIS?
    IRIS (Interactive Research Ideation System) is an AI-driven assistant that empowers researchers to rapidly prototype study ideas. Users input a research topic or domain, and IRIS produces tailored research questions, identifies key concepts, synthesizes relevant literature abstracts, and suggests experimental designs or methodological approaches. It organizes these insights into customizable workflows, supporting hypothesis development, data collection planning, and result interpretation frameworks. Through iterative chatting, IRIS refines outputs based on feedback, ensures alignment with research goals, and exports structured reports in formats like PDF, DOCX, or Markdown. By automating repetitive tasks and enhancing creative brainstorming, IRIS accelerates early-stage research across academia, R&D labs, and startups, fostering innovation and reducing time-to-insight.
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