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collaboration de recherche

  • Profundo automates research processes for streamlined data management.
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    What is Profundo?
    Profundo is a comprehensive research tool that automates various aspects of the research process, including data collection, analysis, and reporting. It provides users with a seamless platform to gather insights, making sure they can devote their time to learning and decision-making. With an intuitive interface and powerful data automation capabilities, Profundo streamlines the research experience, allowing for faster and more reliable outcomes.
    Profundo Core Features
    • Automated data collection
    • Data analysis tools
    • Customizable reporting
    • User-friendly interface
    Profundo Pro & Cons

    The Cons

    The Pros

    Automates data collection, analysis, and reporting to save time
    Uses cutting-edge AI for accurate, efficient research
    Supports a wide range of research applications including academic and industry use
    User-friendly interface suitable for novices and experts alike
    Flexible pay-as-you-go pricing model
    Profundo Pricing
    Has free planNo
    Free trial details
    Pricing modelPay-as-you-go
    Is credit card requiredNo
    Has lifetime planNo
    Billing frequency

    Details of Pricing Plan

    Individual

    • news, scholar, web search
    • edit outline and summary

    Enterprise

    • All individual plan features
    • Custom data sources integration
    For the latest prices, please visit: https://profundo.app
  • A PyTorch framework enabling agents to learn emergent communication protocols in multi-agent reinforcement learning tasks.
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    What is Learning-to-Communicate-PyTorch?
    This repository implements emergent communication in multi-agent reinforcement learning using PyTorch. Users can configure sender and receiver neural networks to play referential games or cooperative navigation, encouraging agents to develop a discrete or continuous communication channel. It offers scripts for training, evaluation, and visualization of learned protocols, along with utilities for environment creation, message encoding, and decoding. Researchers can extend it with custom tasks, modify network architectures, and analyze protocol efficiency, fostering rapid experimentation in emergent agent communication.
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